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  1. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/ATen.h +37 -0
  2. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/AccumulateType.h +173 -0
  3. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/ArrayRef.h +2 -0
  4. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Backend.h +2 -0
  5. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Backtrace.h +2 -0
  6. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/BlasBackend.h +31 -0
  7. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUApplyUtils.h +352 -0
  8. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUFixedAllocator.h +33 -0
  9. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUFunctions.h +29 -0
  10. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUFunctions_inl.h +544 -0
  11. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUGeneratorImpl.h +49 -0
  12. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CUDAFunctions.h +29 -0
  13. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CUDAFunctions_inl.h +634 -0
  14. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CachedTensorUtils.h +24 -0
  15. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CollapseDims.h +94 -0
  16. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeExplicitAutogradFunctions.h +29 -0
  17. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeExplicitAutogradFunctions_inl.h +560 -0
  18. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeExplicitAutogradNonFunctionalFunctions.h +29 -0
  19. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeExplicitAutogradNonFunctionalFunctions_inl.h +324 -0
  20. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeImplicitAutogradFunctions.h +29 -0
  21. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeImplicitAutogradFunctions_inl.h +503 -0
  22. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeImplicitAutogradNestedTensorFunctions.h +29 -0
  23. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeImplicitAutogradNestedTensorFunctions_inl.h +25 -0
  24. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Config.h +23 -0
  25. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Context.h +688 -0
  26. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DLConvertor.h +69 -0
  27. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DTensorState.h +34 -0
  28. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Device.h +2 -0
  29. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DeviceAccelerator.h +103 -0
  30. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DeviceGuard.h +41 -0
  31. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DimVector.h +2 -0
  32. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Dimname.h +1 -0
  33. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Dispatch.h +807 -0
  34. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Dispatch_v2.h +202 -0
  35. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DynamicLibrary.h +36 -0
  36. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/EmptyTensor.h +166 -0
  37. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/ExpandBase.h +30 -0
  38. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/ExpandUtils.h +535 -0
  39. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Formatting.h +1 -0
  40. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/FuncTorchTLS.h +46 -0
  41. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/FunctionalStorageImpl.h +269 -0
  42. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/FunctionalTensorWrapper.h +471 -0
  43. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/FunctionalizeFallbackKernel.h +58 -0
  44. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Functions.h +1469 -0
  45. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Generator.h +2 -0
  46. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/InferSize.h +104 -0
  47. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/InitialTensorOptions.h +15 -0
  48. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Layout.h +2 -0
  49. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/LegacyBatchedFallback.h +25 -0
  50. Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/LegacyBatchedTensorImpl.h +161 -0
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/ATen.h ADDED
@@ -0,0 +1,37 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #if !defined(_MSC_VER) && __cplusplus < 201703L
4
+ #error C++17 or later compatible compiler is required to use ATen.
5
+ #endif
6
+
7
+ #include <ATen/Context.h>
8
+ #include <ATen/Device.h>
9
+ #include <ATen/DeviceGuard.h>
10
+ #include <ATen/DimVector.h>
11
+ #include <ATen/Dispatch.h>
12
+ #include <ATen/Formatting.h>
13
+ #include <ATen/Functions.h>
14
+ #include <ATen/NamedTensor.h>
15
+ #include <ATen/ScalarOps.h>
16
+ #include <ATen/Tensor.h>
17
+ #include <ATen/TensorGeometry.h>
18
+ #include <ATen/TensorIndexing.h>
19
+ #include <ATen/TensorOperators.h>
20
+ #include <ATen/Version.h>
21
+ #include <ATen/core/ATenGeneral.h>
22
+ #include <ATen/core/Generator.h>
23
+ #include <ATen/core/Reduction.h>
24
+ #include <ATen/core/Scalar.h>
25
+ #include <ATen/core/UnsafeFromTH.h>
26
+ #include <ATen/core/ivalue.h>
27
+ #include <ATen/core/jit_type.h>
28
+ #include <c10/core/Allocator.h>
29
+ #include <c10/core/InferenceMode.h>
30
+ #include <c10/core/Layout.h>
31
+ #include <c10/core/Storage.h>
32
+ #include <c10/core/TensorOptions.h>
33
+ #include <c10/util/Exception.h>
34
+
35
+ // TODO: try to remove this
36
+ // There is some back story, see https://github.com/pytorch/pytorch/issues/48684
37
+ #include <ATen/NativeFunctions.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/AccumulateType.h ADDED
@@ -0,0 +1,173 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+ #include <ATen/Config.h>
3
+ #include <c10/core/DeviceType.h>
4
+ #include <c10/core/ScalarType.h>
5
+ #include <c10/util/BFloat16.h>
6
+ #include <c10/util/Float8_e4m3fn.h>
7
+ #include <c10/util/Float8_e4m3fnuz.h>
8
+ #include <c10/util/Float8_e5m2.h>
9
+ #include <c10/util/Float8_e5m2fnuz.h>
10
+ #include <c10/util/Half.h>
11
+
12
+ // Defines the accumulation type for a scalar type.
13
+ // Example:
14
+ // using accscalar_t = acc_type<scalar_t, /*is_cuda*/true>;
15
+ //
16
+ // Accumulation types are an important concept in numeric computing
17
+ // because you frequently want to perform intermediate computations
18
+ // at a higher precision than the input and output precision, to avoid
19
+ // compounding internal rounding errors. Accumulation is the most
20
+ // well-known intermediate computation (it is of great importance for
21
+ // sum reduction and matrix multiply, for example), but in PyTorch
22
+ // acc_type ends up getting used for all sorts of other intermediate
23
+ // computations, so it perhaps would be more accurately (ahem) called an
24
+ // "accurate" type. acc_type is especially important for reduced
25
+ // precision operations like float16 and bfloat16, where relatively
26
+ // benign looking inputs can easily end up overflowing/underflowing.
27
+ //
28
+ // acc_type is parametrized by whether or not you are running on CUDA
29
+ // or not, because on CUDA double precision operations are expensive
30
+ // and so by default, we don't actually want to use double as an
31
+ // acc_type on CUDA. A lot of things are typed out below, but
32
+ // basically, the table is generated by a few rules:
33
+ //
34
+ // If bool:
35
+ // Use 'bool' as acc_type.
36
+ // If floating point:
37
+ // If CUDA, use 'float' as acc_type (unless scalar_t is double),
38
+ // otherwise (CPU) use 'double'
39
+ // If integral:
40
+ // Use 'int64_t' as acc_type
41
+ //
42
+ // You're not forced to use this template; if you happen to know
43
+ // something specific about your use case, you can specify your own
44
+ // desired behavior. This template, however, will give you a reasonable
45
+ // default that will work for all dtypes supported in PyTorch.
46
+
47
+ #if defined(__CUDACC__)
48
+ #include <cuda.h>
49
+ #include <cuda_fp16.h>
50
+ #elif defined(__HIPCC__)
51
+ #include <hip/hip_fp16.h>
52
+ #include <hip/hip_runtime.h>
53
+ #endif
54
+
55
+ namespace at {
56
+
57
+ template <typename T, c10::DeviceType D>
58
+ struct AccumulateTypeDevice {};
59
+
60
+ template <typename T, bool>
61
+ struct AccumulateType {};
62
+
63
+ template <typename T>
64
+ struct AccumulateType<T, false> {
65
+ using type = typename AccumulateTypeDevice<T, c10::DeviceType::CPU>::type;
66
+ };
67
+
68
+ template <typename T>
69
+ struct AccumulateType<T, true> {
70
+ using type = typename AccumulateTypeDevice<T, c10::DeviceType::CUDA>::type;
71
+ };
72
+
73
+ template <typename T, c10::DeviceType device>
74
+ using acc_type_device = typename AccumulateTypeDevice<T, device>::type;
75
+
76
+ template <typename T, bool is_cuda>
77
+ using acc_type = typename AccumulateType<T, is_cuda>::type;
78
+
79
+ #define ACC_TYPE(t, acc_t, device_type) \
80
+ template <> \
81
+ struct AccumulateTypeDevice<t, device_type> { \
82
+ using type = acc_t; \
83
+ };
84
+ #define MPS_ACC_TYPE(t, acc_t) ACC_TYPE(t, acc_t, c10::DeviceType::MPS)
85
+ #define XPU_ACC_TYPE(t, acc_t) ACC_TYPE(t, acc_t, c10::DeviceType::XPU)
86
+ #define CUDA_ACC_TYPE(t, acc_t) ACC_TYPE(t, acc_t, c10::DeviceType::CUDA)
87
+ #define CPU_ACC_TYPE(t, acc_t) ACC_TYPE(t, acc_t, c10::DeviceType::CPU)
88
+
89
+ MPS_ACC_TYPE(BFloat16, float)
90
+ MPS_ACC_TYPE(Half, float)
91
+ MPS_ACC_TYPE(Float8_e5m2, float)
92
+ MPS_ACC_TYPE(Float8_e4m3fn, float)
93
+ MPS_ACC_TYPE(Float8_e5m2fnuz, float)
94
+ MPS_ACC_TYPE(Float8_e4m3fnuz, float)
95
+ MPS_ACC_TYPE(float, float)
96
+ MPS_ACC_TYPE(double, float)
97
+ MPS_ACC_TYPE(int8_t, int64_t)
98
+ MPS_ACC_TYPE(uint8_t, int64_t)
99
+ MPS_ACC_TYPE(char, int64_t)
100
+ MPS_ACC_TYPE(int16_t, int64_t)
101
+ MPS_ACC_TYPE(int32_t, int64_t)
102
+ MPS_ACC_TYPE(int64_t, int64_t)
103
+ MPS_ACC_TYPE(bool, bool)
104
+ MPS_ACC_TYPE(c10::complex<Half>, c10::complex<float>)
105
+ MPS_ACC_TYPE(c10::complex<float>, c10::complex<float>)
106
+ MPS_ACC_TYPE(c10::complex<double>, c10::complex<float>)
107
+
108
+ XPU_ACC_TYPE(BFloat16, float)
109
+ XPU_ACC_TYPE(Half, float)
110
+ XPU_ACC_TYPE(Float8_e5m2, float)
111
+ XPU_ACC_TYPE(Float8_e4m3fn, float)
112
+ XPU_ACC_TYPE(Float8_e5m2fnuz, float)
113
+ XPU_ACC_TYPE(Float8_e4m3fnuz, float)
114
+ XPU_ACC_TYPE(float, float)
115
+ XPU_ACC_TYPE(double, double)
116
+ XPU_ACC_TYPE(int8_t, int64_t)
117
+ XPU_ACC_TYPE(uint8_t, int64_t)
118
+ XPU_ACC_TYPE(char, int64_t)
119
+ XPU_ACC_TYPE(int16_t, int64_t)
120
+ XPU_ACC_TYPE(int32_t, int64_t)
121
+ XPU_ACC_TYPE(int64_t, int64_t)
122
+ XPU_ACC_TYPE(bool, bool)
123
+ XPU_ACC_TYPE(c10::complex<Half>, c10::complex<float>)
124
+ XPU_ACC_TYPE(c10::complex<float>, c10::complex<float>)
125
+ XPU_ACC_TYPE(c10::complex<double>, c10::complex<double>)
126
+
127
+ #if defined(__CUDACC__) || defined(__HIPCC__)
128
+ CUDA_ACC_TYPE(half, float)
129
+ #endif
130
+ CUDA_ACC_TYPE(BFloat16, float)
131
+ CUDA_ACC_TYPE(Half, float)
132
+ CUDA_ACC_TYPE(Float8_e5m2, float)
133
+ CUDA_ACC_TYPE(Float8_e4m3fn, float)
134
+ CUDA_ACC_TYPE(Float8_e5m2fnuz, float)
135
+ CUDA_ACC_TYPE(Float8_e4m3fnuz, float)
136
+ CUDA_ACC_TYPE(float, float)
137
+ CUDA_ACC_TYPE(double, double)
138
+ CUDA_ACC_TYPE(int8_t, int64_t)
139
+ CUDA_ACC_TYPE(uint8_t, int64_t)
140
+ CUDA_ACC_TYPE(char, int64_t)
141
+ CUDA_ACC_TYPE(int16_t, int64_t)
142
+ CUDA_ACC_TYPE(int32_t, int64_t)
143
+ CUDA_ACC_TYPE(int64_t, int64_t)
144
+ CUDA_ACC_TYPE(bool, bool)
145
+ CUDA_ACC_TYPE(c10::complex<Half>, c10::complex<float>)
146
+ CUDA_ACC_TYPE(c10::complex<float>, c10::complex<float>)
147
+ CUDA_ACC_TYPE(c10::complex<double>, c10::complex<double>)
148
+
149
+ CPU_ACC_TYPE(BFloat16, float)
150
+ CPU_ACC_TYPE(Half, float)
151
+ CPU_ACC_TYPE(Float8_e5m2, float)
152
+ CPU_ACC_TYPE(Float8_e4m3fn, float)
153
+ CPU_ACC_TYPE(Float8_e5m2fnuz, float)
154
+ CPU_ACC_TYPE(Float8_e4m3fnuz, float)
155
+ CPU_ACC_TYPE(float, double)
156
+ CPU_ACC_TYPE(double, double)
157
+ CPU_ACC_TYPE(int8_t, int64_t)
158
+ CPU_ACC_TYPE(uint8_t, int64_t)
159
+ CPU_ACC_TYPE(char, int64_t)
160
+ CPU_ACC_TYPE(int16_t, int64_t)
161
+ CPU_ACC_TYPE(int32_t, int64_t)
162
+ CPU_ACC_TYPE(int64_t, int64_t)
163
+ CPU_ACC_TYPE(bool, bool)
164
+ CPU_ACC_TYPE(c10::complex<Half>, c10::complex<float>)
165
+ CPU_ACC_TYPE(c10::complex<float>, c10::complex<double>)
166
+ CPU_ACC_TYPE(c10::complex<double>, c10::complex<double>)
167
+
168
+ TORCH_API c10::ScalarType toAccumulateType(
169
+ c10::ScalarType type,
170
+ c10::DeviceType device);
171
+ TORCH_API c10::ScalarType toAccumulateType(c10::ScalarType type, bool is_cuda);
172
+
173
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/ArrayRef.h ADDED
@@ -0,0 +1,2 @@
 
 
 
1
+ #pragma once
2
+ #include <c10/util/ArrayRef.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Backend.h ADDED
@@ -0,0 +1,2 @@
 
 
 
1
+ #pragma once
2
+ #include <c10/core/Backend.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Backtrace.h ADDED
@@ -0,0 +1,2 @@
 
 
 
1
+ #pragma once
2
+ #include <ATen/core/Backtrace.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/BlasBackend.h ADDED
@@ -0,0 +1,31 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <c10/util/Exception.h>
4
+
5
+ #include <ostream>
6
+ #include <string>
7
+
8
+ namespace at {
9
+
10
+ enum class BlasBackend : int8_t { Default, Cublas, Cublaslt, Ck };
11
+
12
+ inline std::string BlasBackendToString(at::BlasBackend backend) {
13
+ switch (backend) {
14
+ case BlasBackend::Default:
15
+ return "at::BlasBackend::Default";
16
+ case BlasBackend::Cublas:
17
+ return "at::BlasBackend::Cublas";
18
+ case BlasBackend::Cublaslt:
19
+ return "at::BlasBackend::Cublaslt";
20
+ case BlasBackend::Ck:
21
+ return "at::BlasBackend::Ck";
22
+ default:
23
+ TORCH_CHECK(false, "Unknown blas backend");
24
+ }
25
+ }
26
+
27
+ inline std::ostream& operator<<(std::ostream& stream, at::BlasBackend backend) {
28
+ return stream << BlasBackendToString(backend);
29
+ }
30
+
31
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUApplyUtils.h ADDED
@@ -0,0 +1,352 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/CollapseDims.h>
4
+ #include <ATen/Parallel.h>
5
+ #include <ATen/TensorUtils.h>
6
+ #include <c10/util/irange.h>
7
+ #include <cstring>
8
+ #include <limits>
9
+
10
+ namespace at {
11
+
12
+ /*
13
+ * The basic strategy for apply is as follows:
14
+ *
15
+ * 1. Starting with the outermost index, loop until we reach a dimension where
16
+ * the data is no longer contiguous, i.e. the stride at that dimension is not
17
+ * equal to the size of the tensor defined by the outer dimensions. Let's call
18
+ * this outer (contiguous) tensor A. Note that if the Tensor is contiguous, then
19
+ * A is equal to the entire Tensor. Let's call the inner tensor B.
20
+ *
21
+ * 2. We loop through the indices in B, starting at its outermost dimension. For
22
+ * example, if B is a 2x2 matrix, then we do:
23
+ *
24
+ * B[0][0]
25
+ * B[0][1]
26
+ * B[1][0]
27
+ * B[1][1]
28
+ *
29
+ * We set the offset into the underlying storage as (storageOffset + stride_B *
30
+ * index_B), i.e. basically we compute the offset into the storage as we would
31
+ * normally for a Tensor. But because we are guaranteed the subsequent data is
32
+ * contiguous in memory, we can simply loop for sizeof(A) iterations and perform
33
+ * the operation, without having to follow the order described by the strides of
34
+ * A.
35
+ *
36
+ * 3. As an optimization, we merge dimensions of A that are contiguous in
37
+ * memory. For example, if A is a 3x3x3x3 tensor narrowed from a 3x3x4x3 tensor,
38
+ * then the first two dimensions can be merged for the purposes of APPLY,
39
+ * reducing the number of nested loops.
40
+ */
41
+
42
+ inline Tensor sort_strides(Tensor& tensor_) {
43
+ IntArrayRef strides = tensor_.strides();
44
+ std::vector<int64_t> indices;
45
+ indices.reserve(tensor_.ndimension());
46
+ for (const auto i : c10::irange(tensor_.ndimension())) {
47
+ indices.push_back(i);
48
+ }
49
+ std::sort(indices.begin(), indices.end(), [&strides](int64_t i1, int64_t i2) {
50
+ return strides[i1] > strides[i2];
51
+ });
52
+ Tensor tensor = tensor_.permute(indices);
53
+ return tensor;
54
+ }
55
+
56
+ template <typename T, int N>
57
+ struct strided_tensor_iter_fixed {
58
+ public:
59
+ T* data_ = NULL;
60
+ int64_t dim_ = 0;
61
+
62
+ // NOLINTNEXTLINE(*array*)
63
+ int64_t counter_[N] = {0};
64
+ // NOLINTNEXTLINE(*array*)
65
+ int64_t sizes_[N] = {0};
66
+ // NOLINTNEXTLINE(*array*)
67
+ int64_t strides_[N] = {0};
68
+
69
+ strided_tensor_iter_fixed(strided_tensor_iter_fixed const&) = delete;
70
+ strided_tensor_iter_fixed& operator=(strided_tensor_iter_fixed const& x) =
71
+ delete;
72
+ strided_tensor_iter_fixed(strided_tensor_iter_fixed&&) noexcept = default;
73
+ strided_tensor_iter_fixed& operator=(strided_tensor_iter_fixed&& x) noexcept =
74
+ default;
75
+ ~strided_tensor_iter_fixed() noexcept = default;
76
+ strided_tensor_iter_fixed(
77
+ Tensor& tensor,
78
+ [[maybe_unused]] bool sort_strides = false)
79
+ : data_(tensor.data_ptr<T>()) {
80
+ std::memset(counter_, 0, sizeof(int64_t) * N);
81
+ if (tensor.dim() > 0) {
82
+ std::memcpy(
83
+ sizes_, tensor.sizes().data(), tensor.dim() * sizeof(int64_t));
84
+ std::memcpy(
85
+ strides_, tensor.strides().data(), tensor.dim() * sizeof(int64_t));
86
+ }
87
+ dim_ = std::get<1>(collapse_dims(sizes_, strides_, tensor.ndimension()));
88
+ }
89
+ };
90
+
91
+ template <typename T>
92
+ struct strided_tensor_iter {
93
+ private:
94
+ public:
95
+ T* data_ = NULL;
96
+ int64_t dim_;
97
+
98
+ std::vector<int64_t> counter_;
99
+ std::vector<int64_t> sizes_;
100
+ std::vector<int64_t> strides_;
101
+
102
+ strided_tensor_iter(strided_tensor_iter const&) = delete;
103
+ strided_tensor_iter& operator=(strided_tensor_iter const& x) = delete;
104
+ strided_tensor_iter(strided_tensor_iter&&) noexcept = default;
105
+ strided_tensor_iter& operator=(strided_tensor_iter&&) noexcept = default;
106
+ ~strided_tensor_iter() noexcept = default;
107
+ strided_tensor_iter(Tensor& tensor)
108
+ : data_(tensor.data_ptr<T>()),
109
+ dim_(tensor.ndimension()),
110
+ counter_(dim_, 0),
111
+ sizes_(tensor.sizes().vec()),
112
+ strides_(tensor.strides().vec()) {
113
+ dim_ = std::get<1>(collapse_dims(sizes_.data(), strides_.data(), dim_));
114
+ }
115
+ };
116
+
117
+ inline bool _all_equal_numel(at::ArrayRef<Tensor> tensors) {
118
+ if (tensors.empty())
119
+ return true;
120
+ int64_t all_numel = tensors[0].numel();
121
+ for (const auto i : c10::irange(1, tensors.size())) {
122
+ if (tensors[i].numel() != all_numel)
123
+ return false;
124
+ }
125
+ return true;
126
+ }
127
+
128
+ inline std::string _all_equal_numel_error(at::ArrayRef<Tensor> tensors) {
129
+ std::ostringstream oss;
130
+ oss << "inconsistent tensor size, expected ";
131
+ for (size_t i = 0; i < tensors.size() - 1; i++) {
132
+ oss << tensors[i].sizes() << ", ";
133
+ }
134
+ oss << "and " << tensors[tensors.size() - 1].sizes()
135
+ << " to have the same number of elements, but got ";
136
+ for (size_t i = 0; i < tensors.size() - 1; i++) {
137
+ oss << tensors[i].numel() << ", ";
138
+ }
139
+ oss << "and " << tensors[tensors.size() - 1].numel()
140
+ << " elements respectively";
141
+ return oss.str();
142
+ }
143
+
144
+ inline bool _apply_preamble(ArrayRef<Tensor> tensors) {
145
+ checkDeviceType("CPU_tensor_apply", tensors, kCPU);
146
+ checkLayout("CPU_tensor_apply", tensors, kStrided);
147
+ if (!_all_equal_numel(tensors))
148
+ TORCH_CHECK(false, _all_equal_numel_error(tensors));
149
+ // An empty tensor has no elements
150
+ for (auto& t : tensors)
151
+ if (t.numel() == 0)
152
+ return false;
153
+ return true;
154
+ }
155
+
156
+ inline int64_t _max_dim_tensors(ArrayRef<Tensor> tensors) {
157
+ int64_t dim = 0;
158
+ for (auto& t : tensors)
159
+ dim = std::max(dim, t.ndimension());
160
+ return dim;
161
+ }
162
+
163
+ inline void iterate(int64_t /*size*/) {}
164
+
165
+ template <typename Arg, typename... Args>
166
+ inline void iterate(int64_t size, Arg& iter, Args&... iter_tail) {
167
+ iter.counter_[iter.dim_ - 1] += size;
168
+ iter.data_ = iter.data_ + size * iter.strides_[iter.dim_ - 1];
169
+ iterate(size, iter_tail...);
170
+ }
171
+
172
+ inline bool iterate_continue() {
173
+ return true;
174
+ }
175
+
176
+ template <typename Arg, typename... Args>
177
+ inline bool iterate_continue(Arg& iter, Args&... iter_tail) {
178
+ return iter.counter_[iter.dim_ - 1] < iter.sizes_[iter.dim_ - 1] &&
179
+ iterate_continue(iter_tail...);
180
+ }
181
+
182
+ inline int64_t max_iterate_size() {
183
+ return std::numeric_limits<int64_t>::max();
184
+ }
185
+
186
+ template <typename Arg, typename... Args>
187
+ inline int64_t max_iterate_size(Arg& iter, Args&... iter_tail) {
188
+ return std::min(
189
+ (iter.sizes_[iter.dim_ - 1] - iter.counter_[iter.dim_ - 1]),
190
+ max_iterate_size(iter_tail...));
191
+ }
192
+
193
+ inline void iterate_overflow() {}
194
+
195
+ template <typename Arg, typename... Args>
196
+ inline void iterate_overflow(Arg& iter, Args&... iter_tail) {
197
+ if (iter.counter_[iter.dim_ - 1] == iter.sizes_[iter.dim_ - 1]) {
198
+ for (int64_t i = iter.dim_ - 1; i > 0; i--) {
199
+ if (iter.counter_[i] == iter.sizes_[i]) {
200
+ iter.counter_[i] = 0;
201
+ iter.counter_[i - 1]++;
202
+ iter.data_ = iter.data_ - (iter.sizes_[i] * iter.strides_[i]) +
203
+ iter.strides_[i - 1];
204
+ }
205
+ }
206
+ }
207
+ iterate_overflow(iter_tail...);
208
+ }
209
+
210
+ inline void forward(int64_t /*offset*/) {}
211
+
212
+ template <typename Arg, typename... Args>
213
+ inline void forward(int64_t offset, Arg& iter, Args&... iter_tail) {
214
+ int64_t multi = offset;
215
+ for (int64_t i = iter.dim_ - 1; i >= 0; i--) {
216
+ int64_t inc = multi % iter.sizes_[i];
217
+ multi = multi / iter.sizes_[i];
218
+ iter.data_ = iter.data_ + inc * iter.strides_[i];
219
+ iter.counter_[i] += inc;
220
+ }
221
+ forward(offset, iter_tail...);
222
+ }
223
+
224
+ inline int64_t max_dim() {
225
+ return 0;
226
+ }
227
+
228
+ template <typename Arg, typename... Args>
229
+ inline int64_t max_dim(Arg& iter, Args&... iter_tail) {
230
+ return std::max(iter.dim_, max_dim(iter_tail...));
231
+ }
232
+
233
+ inline void apply_op() {}
234
+
235
+ template <typename Op, typename... Args>
236
+ inline void apply_op(
237
+ int64_t numel,
238
+ int64_t offset,
239
+ const Op& op,
240
+ Args... iters) {
241
+ // For 0-dim tensors
242
+ if (numel == 1 && max_dim(iters...) == 0) {
243
+ op(*iters.data_...);
244
+ return;
245
+ }
246
+ if (offset > 0)
247
+ forward(offset, iters...);
248
+ // Splitting this into chunks helps the compiler create faster assembly
249
+ for (int64_t i = 0; i < numel;) {
250
+ for (; iterate_continue(iters...) && i < numel;) {
251
+ op(*iters.data_...);
252
+ iterate(1, iters...);
253
+ i++;
254
+ }
255
+ iterate_overflow(iters...);
256
+ }
257
+ }
258
+
259
+ /*
260
+ Apply a pointwise operator to sequence of tensors
261
+
262
+ The calling convention for op is a function/functor that takes the same
263
+ number of pointers of type scalar as the number of given tensors. For example,
264
+ to compute a = b * c, op would be of the form:
265
+ [](scalar* a_val, const scalar* b_val, const scalar* c_val) { a_val[0] =
266
+ b_val[0] * c_val[0]; };
267
+ */
268
+
269
+ template <typename scalar1, typename scalar2, typename Op>
270
+ inline void CPU_tensor_apply2(Tensor tensor1, Tensor tensor2, const Op op) {
271
+ if (!_apply_preamble({tensor1, tensor2}))
272
+ return;
273
+ if (_max_dim_tensors({tensor1, tensor2}) <= 8) {
274
+ apply_op(
275
+ tensor1.numel(),
276
+ 0,
277
+ op,
278
+ strided_tensor_iter_fixed<scalar1, 8>(tensor1),
279
+ strided_tensor_iter_fixed<scalar2, 8>(tensor2));
280
+ } else {
281
+ apply_op(
282
+ tensor1.numel(),
283
+ 0,
284
+ op,
285
+ strided_tensor_iter<scalar1>(tensor1),
286
+ strided_tensor_iter<scalar2>(tensor2));
287
+ }
288
+ }
289
+
290
+ template <typename scalar1, typename scalar2, typename scalar3, typename Op>
291
+ inline void CPU_tensor_apply3(
292
+ Tensor tensor1,
293
+ Tensor tensor2,
294
+ Tensor tensor3,
295
+ const Op op) {
296
+ if (!_apply_preamble({tensor1, tensor2, tensor3}))
297
+ return;
298
+ if (_max_dim_tensors({tensor1, tensor2, tensor3}) <= 8) {
299
+ apply_op(
300
+ tensor1.numel(),
301
+ 0,
302
+ op,
303
+ strided_tensor_iter_fixed<scalar1, 8>(tensor1),
304
+ strided_tensor_iter_fixed<scalar2, 8>(tensor2),
305
+ strided_tensor_iter_fixed<scalar3, 8>(tensor3));
306
+ } else {
307
+ apply_op(
308
+ tensor1.numel(),
309
+ 0,
310
+ op,
311
+ strided_tensor_iter<scalar1>(tensor1),
312
+ strided_tensor_iter<scalar2>(tensor2),
313
+ strided_tensor_iter<scalar3>(tensor3));
314
+ }
315
+ }
316
+
317
+ template <
318
+ typename scalar1,
319
+ typename scalar2,
320
+ typename scalar3,
321
+ typename scalar4,
322
+ typename Op>
323
+ inline void CPU_tensor_apply4(
324
+ Tensor tensor1,
325
+ Tensor tensor2,
326
+ Tensor tensor3,
327
+ Tensor tensor4,
328
+ const Op op) {
329
+ if (!_apply_preamble({tensor1, tensor2, tensor3, tensor4}))
330
+ return;
331
+ if (_max_dim_tensors({tensor1, tensor2, tensor3, tensor4}) <= 8) {
332
+ apply_op(
333
+ tensor1.numel(),
334
+ 0,
335
+ op,
336
+ strided_tensor_iter_fixed<scalar1, 8>(tensor1),
337
+ strided_tensor_iter_fixed<scalar2, 8>(tensor2),
338
+ strided_tensor_iter_fixed<scalar3, 8>(tensor3),
339
+ strided_tensor_iter_fixed<scalar4, 8>(tensor4));
340
+ } else {
341
+ apply_op(
342
+ tensor1.numel(),
343
+ 0,
344
+ op,
345
+ strided_tensor_iter<scalar1>(tensor1),
346
+ strided_tensor_iter<scalar2>(tensor2),
347
+ strided_tensor_iter<scalar3>(tensor3),
348
+ strided_tensor_iter<scalar4>(tensor4));
349
+ }
350
+ }
351
+
352
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUFixedAllocator.h ADDED
@@ -0,0 +1,33 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <c10/core/Allocator.h>
4
+ #include <c10/util/Exception.h>
5
+
6
+ // This file creates a fake allocator that just throws exceptions if
7
+ // it is actually used.
8
+
9
+ // state passed to the allocator is the std::function<void(void*)> called
10
+ // when the blob is release by ATen
11
+
12
+ namespace at {
13
+
14
+ static void* cpu_fixed_malloc(void*, ptrdiff_t) {
15
+ TORCH_CHECK(false, "attempting to resize a tensor view of an external blob");
16
+ }
17
+
18
+ static void* cpu_fixed_realloc(void*, void*, ptrdiff_t) {
19
+ TORCH_CHECK(false, "attempting to resize a tensor view of an external blob");
20
+ }
21
+
22
+ static void cpu_fixed_free(void* state, void* allocation) {
23
+ auto on_release = static_cast<std::function<void(void*)>*>(state);
24
+ (*on_release)(allocation);
25
+ delete on_release;
26
+ }
27
+
28
+ static Allocator CPU_fixed_allocator = {
29
+ cpu_fixed_malloc,
30
+ cpu_fixed_realloc,
31
+ cpu_fixed_free};
32
+
33
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUFunctions.h ADDED
@@ -0,0 +1,29 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #include <ATen/core/TensorBody.h>
2
+
3
+ // TODO Undo all logic introduced for Note [Avoiding Include Cycles In Static Dispatch]
4
+ // Code introduced to avoid cyclic dependency in static dispatch is no longer
5
+ // needed as static dispatch logic is moved from TensorBody.h, which caused cycles in the first place,
6
+ // to Operators.cpp for supporting multiple backends with multiple kernels.
7
+ //
8
+ // Note [Avoiding Include Cycles In Static Dispatch]
9
+ // In order to avoid #include cycles in the static dispatch build, we've carefully split out
10
+ // the static function definition files into {DispatchKey}Functions.h and {DispatchKey}Functions_inl.h.
11
+ //
12
+ // Without this split, the include cycle looks like TensorBody.h -> CPUFunctions.h -> TensorBody.h.
13
+ // - TensorBody.h #includes CPUFunctions.h in the static dispatch build, because the tensor methods
14
+ // all need to call into the fastpath C++ API defined in CPUFunctions.h. The methods are also all
15
+ // directly inlined into TensorBody.h.
16
+ // - CPUFunctions.h #includes TensorBody.h because it contains function declarations for the entire C++ API,
17
+ // which include functions that have defaultable std::optional<Tensor> arguments.
18
+ // That requires knowing the full Tensor class definition.
19
+ //
20
+ // We break the cycle by doing the following:
21
+ // - Split out CPUFunction.h into two files: CPUFunctions.h and CPUFunctions_inl.h
22
+ // - CPUFunction.h is a dummy file that just includes the Tensor class and includes CPUFunctions_inl.,
23
+ // - CPUFunctions_inl.h includes everything else
24
+ // - (only in the static dispatch build) TensorBody.h makes sure to finish defining the Tensor class,
25
+ // and then it includes CPUFunctions_inl.h.
26
+ // - All other files that want the cpu fastpath functions can include CPUFunctions.h directly.
27
+ // - This also means that static dispatch build, CPUFunctions.h only needs to
28
+ // #include TensorBody.h, and it will automatically bring in CPUFunctions_inl.h.
29
+ #include <ATen/CPUFunctions_inl.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUFunctions_inl.h ADDED
@@ -0,0 +1,544 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+ // @generated by torchgen/gen.py from DispatchKeyFunctions_inl.h
3
+
4
+ // NB: The implementing C++ file is RegisterDispatchKey.cpp
5
+
6
+ // The only #includes we need are for custom classes that have defaults in the C++ API
7
+ #include <c10/core/MemoryFormat.h>
8
+ #include <c10/core/Scalar.h>
9
+ #include <ATen/core/Reduction.h>
10
+
11
+ #if defined(AT_PER_OPERATOR_HEADERS) && defined(TORCH_ASSERT_ONLY_METHOD_OPERATORS)
12
+ #error This change adds a dependency on all pytorch operators, meaning the \
13
+ file will need to be re-compiled every time an operator is changed or added. \
14
+ Consider including a specific operator from \
15
+ <ATen/ops/{my_operator}_cpu_dispatch.h>. \
16
+ See NOTE [TORCH_ASSERT_ONLY_METHOD_OPERATORS].
17
+ #endif
18
+
19
+ #include <ATen/ops/_adaptive_avg_pool2d_cpu_dispatch.h>
20
+ #include <ATen/ops/_adaptive_avg_pool2d_backward_cpu_dispatch.h>
21
+ #include <ATen/ops/_adaptive_avg_pool3d_cpu_dispatch.h>
22
+ #include <ATen/ops/_adaptive_avg_pool3d_backward_cpu_dispatch.h>
23
+ #include <ATen/ops/_add_relu_cpu_dispatch.h>
24
+ #include <ATen/ops/_addmm_activation_cpu_dispatch.h>
25
+ #include <ATen/ops/_aminmax_cpu_dispatch.h>
26
+ #include <ATen/ops/_amp_foreach_non_finite_check_and_unscale_cpu_dispatch.h>
27
+ #include <ATen/ops/_amp_update_scale_cpu_dispatch.h>
28
+ #include <ATen/ops/_assert_async_cpu_dispatch.h>
29
+ #include <ATen/ops/_batch_norm_with_update_cpu_dispatch.h>
30
+ #include <ATen/ops/_cdist_backward_cpu_dispatch.h>
31
+ #include <ATen/ops/_cdist_forward_cpu_dispatch.h>
32
+ #include <ATen/ops/_cholesky_solve_helper_cpu_dispatch.h>
33
+ #include <ATen/ops/_compute_linear_combination_cpu_dispatch.h>
34
+ #include <ATen/ops/_convert_indices_from_coo_to_csr_cpu_dispatch.h>
35
+ #include <ATen/ops/_convert_indices_from_csr_to_coo_cpu_dispatch.h>
36
+ #include <ATen/ops/_convert_weight_to_int4pack_for_cpu_cpu_dispatch.h>
37
+ #include <ATen/ops/_ctc_loss_cpu_dispatch.h>
38
+ #include <ATen/ops/_ctc_loss_backward_cpu_dispatch.h>
39
+ #include <ATen/ops/_cummax_helper_cpu_dispatch.h>
40
+ #include <ATen/ops/_cummin_helper_cpu_dispatch.h>
41
+ #include <ATen/ops/_dirichlet_grad_cpu_dispatch.h>
42
+ #include <ATen/ops/_dyn_quant_matmul_4bit_cpu_dispatch.h>
43
+ #include <ATen/ops/_dyn_quant_pack_4bit_weight_cpu_dispatch.h>
44
+ #include <ATen/ops/_efficientzerotensor_cpu_dispatch.h>
45
+ #include <ATen/ops/_embedding_bag_cpu_dispatch.h>
46
+ #include <ATen/ops/_embedding_bag_backward_cpu_dispatch.h>
47
+ #include <ATen/ops/_embedding_bag_dense_backward_cpu_dispatch.h>
48
+ #include <ATen/ops/_embedding_bag_forward_only_cpu_dispatch.h>
49
+ #include <ATen/ops/_embedding_bag_per_sample_weights_backward_cpu_dispatch.h>
50
+ #include <ATen/ops/_empty_affine_quantized_cpu_dispatch.h>
51
+ #include <ATen/ops/_empty_per_channel_affine_quantized_cpu_dispatch.h>
52
+ #include <ATen/ops/_fake_quantize_learnable_per_channel_affine_cpu_dispatch.h>
53
+ #include <ATen/ops/_fake_quantize_learnable_per_channel_affine_backward_cpu_dispatch.h>
54
+ #include <ATen/ops/_fake_quantize_learnable_per_tensor_affine_cpu_dispatch.h>
55
+ #include <ATen/ops/_fake_quantize_learnable_per_tensor_affine_backward_cpu_dispatch.h>
56
+ #include <ATen/ops/_fake_quantize_per_tensor_affine_cachemask_tensor_qparams_cpu_dispatch.h>
57
+ #include <ATen/ops/_fft_c2c_cpu_dispatch.h>
58
+ #include <ATen/ops/_fft_c2r_cpu_dispatch.h>
59
+ #include <ATen/ops/_fft_r2c_cpu_dispatch.h>
60
+ #include <ATen/ops/_foobar_cpu_dispatch.h>
61
+ #include <ATen/ops/_functional_assert_async_cpu_dispatch.h>
62
+ #include <ATen/ops/_fused_adagrad_cpu_dispatch.h>
63
+ #include <ATen/ops/_fused_adam_cpu_dispatch.h>
64
+ #include <ATen/ops/_fused_adamw_cpu_dispatch.h>
65
+ #include <ATen/ops/_fused_moving_avg_obs_fq_helper_cpu_dispatch.h>
66
+ #include <ATen/ops/_fused_sdp_choice_cpu_dispatch.h>
67
+ #include <ATen/ops/_fused_sgd_cpu_dispatch.h>
68
+ #include <ATen/ops/_histogramdd_bin_edges_cpu_dispatch.h>
69
+ #include <ATen/ops/_histogramdd_from_bin_cts_cpu_dispatch.h>
70
+ #include <ATen/ops/_histogramdd_from_bin_tensors_cpu_dispatch.h>
71
+ #include <ATen/ops/_index_put_impl_cpu_dispatch.h>
72
+ #include <ATen/ops/_int_mm_cpu_dispatch.h>
73
+ #include <ATen/ops/_jagged_to_padded_dense_forward_cpu_dispatch.h>
74
+ #include <ATen/ops/_linalg_det_cpu_dispatch.h>
75
+ #include <ATen/ops/_linalg_eigh_cpu_dispatch.h>
76
+ #include <ATen/ops/_linalg_eigvals_cpu_dispatch.h>
77
+ #include <ATen/ops/_linalg_slogdet_cpu_dispatch.h>
78
+ #include <ATen/ops/_linalg_solve_ex_cpu_dispatch.h>
79
+ #include <ATen/ops/_linalg_svd_cpu_dispatch.h>
80
+ #include <ATen/ops/_local_scalar_dense_cpu_dispatch.h>
81
+ #include <ATen/ops/_log_softmax_cpu_dispatch.h>
82
+ #include <ATen/ops/_log_softmax_backward_data_cpu_dispatch.h>
83
+ #include <ATen/ops/_logcumsumexp_cpu_dispatch.h>
84
+ #include <ATen/ops/_make_dep_token_cpu_dispatch.h>
85
+ #include <ATen/ops/_make_per_channel_quantized_tensor_cpu_dispatch.h>
86
+ #include <ATen/ops/_make_per_tensor_quantized_tensor_cpu_dispatch.h>
87
+ #include <ATen/ops/_masked_softmax_cpu_dispatch.h>
88
+ #include <ATen/ops/_masked_softmax_backward_cpu_dispatch.h>
89
+ #include <ATen/ops/_native_batch_norm_legit_cpu_dispatch.h>
90
+ #include <ATen/ops/_native_multi_head_attention_cpu_dispatch.h>
91
+ #include <ATen/ops/_nested_compute_contiguous_strides_offsets_cpu_dispatch.h>
92
+ #include <ATen/ops/_nested_from_padded_cpu_dispatch.h>
93
+ #include <ATen/ops/_nested_tensor_from_mask_cpu_dispatch.h>
94
+ #include <ATen/ops/_nested_tensor_from_mask_left_aligned_cpu_dispatch.h>
95
+ #include <ATen/ops/_nested_view_from_buffer_cpu_dispatch.h>
96
+ #include <ATen/ops/_padded_dense_to_jagged_forward_cpu_dispatch.h>
97
+ #include <ATen/ops/_pdist_backward_cpu_dispatch.h>
98
+ #include <ATen/ops/_pdist_forward_cpu_dispatch.h>
99
+ #include <ATen/ops/_prelu_kernel_cpu_dispatch.h>
100
+ #include <ATen/ops/_prelu_kernel_backward_cpu_dispatch.h>
101
+ #include <ATen/ops/_reshape_alias_cpu_dispatch.h>
102
+ #include <ATen/ops/_sample_dirichlet_cpu_dispatch.h>
103
+ #include <ATen/ops/_scaled_dot_product_flash_attention_for_cpu_cpu_dispatch.h>
104
+ #include <ATen/ops/_scaled_dot_product_flash_attention_for_cpu_backward_cpu_dispatch.h>
105
+ #include <ATen/ops/_scaled_mm_cpu_dispatch.h>
106
+ #include <ATen/ops/_segment_reduce_backward_cpu_dispatch.h>
107
+ #include <ATen/ops/_slow_conv2d_backward_cpu_dispatch.h>
108
+ #include <ATen/ops/_slow_conv2d_forward_cpu_dispatch.h>
109
+ #include <ATen/ops/_softmax_cpu_dispatch.h>
110
+ #include <ATen/ops/_softmax_backward_data_cpu_dispatch.h>
111
+ #include <ATen/ops/_spdiags_cpu_dispatch.h>
112
+ #include <ATen/ops/_stack_cpu_dispatch.h>
113
+ #include <ATen/ops/_standard_gamma_cpu_dispatch.h>
114
+ #include <ATen/ops/_standard_gamma_grad_cpu_dispatch.h>
115
+ #include <ATen/ops/_test_functorch_fallback_cpu_dispatch.h>
116
+ #include <ATen/ops/_test_optional_filled_intlist_cpu_dispatch.h>
117
+ #include <ATen/ops/_test_optional_floatlist_cpu_dispatch.h>
118
+ #include <ATen/ops/_test_optional_intlist_cpu_dispatch.h>
119
+ #include <ATen/ops/_to_sparse_cpu_dispatch.h>
120
+ #include <ATen/ops/_to_sparse_bsc_cpu_dispatch.h>
121
+ #include <ATen/ops/_to_sparse_bsr_cpu_dispatch.h>
122
+ #include <ATen/ops/_to_sparse_csc_cpu_dispatch.h>
123
+ #include <ATen/ops/_to_sparse_csr_cpu_dispatch.h>
124
+ #include <ATen/ops/_transform_bias_rescale_qkv_cpu_dispatch.h>
125
+ #include <ATen/ops/_transformer_encoder_layer_fwd_cpu_dispatch.h>
126
+ #include <ATen/ops/_unique_cpu_dispatch.h>
127
+ #include <ATen/ops/_unique2_cpu_dispatch.h>
128
+ #include <ATen/ops/_upsample_bicubic2d_aa_cpu_dispatch.h>
129
+ #include <ATen/ops/_upsample_bicubic2d_aa_backward_cpu_dispatch.h>
130
+ #include <ATen/ops/_upsample_bilinear2d_aa_cpu_dispatch.h>
131
+ #include <ATen/ops/_upsample_bilinear2d_aa_backward_cpu_dispatch.h>
132
+ #include <ATen/ops/_upsample_nearest_exact1d_cpu_dispatch.h>
133
+ #include <ATen/ops/_upsample_nearest_exact1d_backward_cpu_dispatch.h>
134
+ #include <ATen/ops/_upsample_nearest_exact2d_cpu_dispatch.h>
135
+ #include <ATen/ops/_upsample_nearest_exact2d_backward_cpu_dispatch.h>
136
+ #include <ATen/ops/_upsample_nearest_exact3d_cpu_dispatch.h>
137
+ #include <ATen/ops/_upsample_nearest_exact3d_backward_cpu_dispatch.h>
138
+ #include <ATen/ops/_validate_compressed_sparse_indices_cpu_dispatch.h>
139
+ #include <ATen/ops/_weight_int4pack_mm_for_cpu_cpu_dispatch.h>
140
+ #include <ATen/ops/_weight_int8pack_mm_cpu_dispatch.h>
141
+ #include <ATen/ops/_weight_norm_interface_cpu_dispatch.h>
142
+ #include <ATen/ops/_weight_norm_interface_backward_cpu_dispatch.h>
143
+ #include <ATen/ops/abs_cpu_dispatch.h>
144
+ #include <ATen/ops/acos_cpu_dispatch.h>
145
+ #include <ATen/ops/acosh_cpu_dispatch.h>
146
+ #include <ATen/ops/adaptive_avg_pool2d_cpu_dispatch.h>
147
+ #include <ATen/ops/adaptive_avg_pool3d_cpu_dispatch.h>
148
+ #include <ATen/ops/adaptive_avg_pool3d_backward_cpu_dispatch.h>
149
+ #include <ATen/ops/adaptive_max_pool2d_cpu_dispatch.h>
150
+ #include <ATen/ops/adaptive_max_pool2d_backward_cpu_dispatch.h>
151
+ #include <ATen/ops/adaptive_max_pool3d_cpu_dispatch.h>
152
+ #include <ATen/ops/adaptive_max_pool3d_backward_cpu_dispatch.h>
153
+ #include <ATen/ops/add_cpu_dispatch.h>
154
+ #include <ATen/ops/addbmm_cpu_dispatch.h>
155
+ #include <ATen/ops/addcdiv_cpu_dispatch.h>
156
+ #include <ATen/ops/addcmul_cpu_dispatch.h>
157
+ #include <ATen/ops/addmm_cpu_dispatch.h>
158
+ #include <ATen/ops/addmv_cpu_dispatch.h>
159
+ #include <ATen/ops/addr_cpu_dispatch.h>
160
+ #include <ATen/ops/all_cpu_dispatch.h>
161
+ #include <ATen/ops/amax_cpu_dispatch.h>
162
+ #include <ATen/ops/amin_cpu_dispatch.h>
163
+ #include <ATen/ops/aminmax_cpu_dispatch.h>
164
+ #include <ATen/ops/angle_cpu_dispatch.h>
165
+ #include <ATen/ops/any_cpu_dispatch.h>
166
+ #include <ATen/ops/arange_cpu_dispatch.h>
167
+ #include <ATen/ops/argmax_cpu_dispatch.h>
168
+ #include <ATen/ops/argmin_cpu_dispatch.h>
169
+ #include <ATen/ops/as_strided_cpu_dispatch.h>
170
+ #include <ATen/ops/asin_cpu_dispatch.h>
171
+ #include <ATen/ops/asinh_cpu_dispatch.h>
172
+ #include <ATen/ops/atan_cpu_dispatch.h>
173
+ #include <ATen/ops/atan2_cpu_dispatch.h>
174
+ #include <ATen/ops/atanh_cpu_dispatch.h>
175
+ #include <ATen/ops/avg_pool2d_cpu_dispatch.h>
176
+ #include <ATen/ops/avg_pool2d_backward_cpu_dispatch.h>
177
+ #include <ATen/ops/avg_pool3d_cpu_dispatch.h>
178
+ #include <ATen/ops/avg_pool3d_backward_cpu_dispatch.h>
179
+ #include <ATen/ops/baddbmm_cpu_dispatch.h>
180
+ #include <ATen/ops/batch_norm_backward_cpu_dispatch.h>
181
+ #include <ATen/ops/batch_norm_update_stats_cpu_dispatch.h>
182
+ #include <ATen/ops/bernoulli_cpu_dispatch.h>
183
+ #include <ATen/ops/binary_cross_entropy_cpu_dispatch.h>
184
+ #include <ATen/ops/binary_cross_entropy_backward_cpu_dispatch.h>
185
+ #include <ATen/ops/bincount_cpu_dispatch.h>
186
+ #include <ATen/ops/binomial_cpu_dispatch.h>
187
+ #include <ATen/ops/bitwise_and_cpu_dispatch.h>
188
+ #include <ATen/ops/bitwise_left_shift_cpu_dispatch.h>
189
+ #include <ATen/ops/bitwise_not_cpu_dispatch.h>
190
+ #include <ATen/ops/bitwise_or_cpu_dispatch.h>
191
+ #include <ATen/ops/bitwise_right_shift_cpu_dispatch.h>
192
+ #include <ATen/ops/bitwise_xor_cpu_dispatch.h>
193
+ #include <ATen/ops/bmm_cpu_dispatch.h>
194
+ #include <ATen/ops/bucketize_cpu_dispatch.h>
195
+ #include <ATen/ops/cat_cpu_dispatch.h>
196
+ #include <ATen/ops/cauchy_cpu_dispatch.h>
197
+ #include <ATen/ops/ceil_cpu_dispatch.h>
198
+ #include <ATen/ops/channel_shuffle_cpu_dispatch.h>
199
+ #include <ATen/ops/cholesky_cpu_dispatch.h>
200
+ #include <ATen/ops/cholesky_inverse_cpu_dispatch.h>
201
+ #include <ATen/ops/clamp_cpu_dispatch.h>
202
+ #include <ATen/ops/clamp_max_cpu_dispatch.h>
203
+ #include <ATen/ops/clamp_min_cpu_dispatch.h>
204
+ #include <ATen/ops/col2im_cpu_dispatch.h>
205
+ #include <ATen/ops/complex_cpu_dispatch.h>
206
+ #include <ATen/ops/conj_physical_cpu_dispatch.h>
207
+ #include <ATen/ops/copysign_cpu_dispatch.h>
208
+ #include <ATen/ops/cos_cpu_dispatch.h>
209
+ #include <ATen/ops/cosh_cpu_dispatch.h>
210
+ #include <ATen/ops/count_nonzero_cpu_dispatch.h>
211
+ #include <ATen/ops/cumprod_cpu_dispatch.h>
212
+ #include <ATen/ops/cumsum_cpu_dispatch.h>
213
+ #include <ATen/ops/dequantize_cpu_dispatch.h>
214
+ #include <ATen/ops/digamma_cpu_dispatch.h>
215
+ #include <ATen/ops/div_cpu_dispatch.h>
216
+ #include <ATen/ops/dot_cpu_dispatch.h>
217
+ #include <ATen/ops/elu_cpu_dispatch.h>
218
+ #include <ATen/ops/elu_backward_cpu_dispatch.h>
219
+ #include <ATen/ops/embedding_dense_backward_cpu_dispatch.h>
220
+ #include <ATen/ops/embedding_renorm_cpu_dispatch.h>
221
+ #include <ATen/ops/empty_cpu_dispatch.h>
222
+ #include <ATen/ops/empty_strided_cpu_dispatch.h>
223
+ #include <ATen/ops/eq_cpu_dispatch.h>
224
+ #include <ATen/ops/equal_cpu_dispatch.h>
225
+ #include <ATen/ops/erf_cpu_dispatch.h>
226
+ #include <ATen/ops/erfc_cpu_dispatch.h>
227
+ #include <ATen/ops/erfinv_cpu_dispatch.h>
228
+ #include <ATen/ops/exp_cpu_dispatch.h>
229
+ #include <ATen/ops/exp2_cpu_dispatch.h>
230
+ #include <ATen/ops/expm1_cpu_dispatch.h>
231
+ #include <ATen/ops/exponential_cpu_dispatch.h>
232
+ #include <ATen/ops/eye_cpu_dispatch.h>
233
+ #include <ATen/ops/fake_quantize_per_channel_affine_cachemask_cpu_dispatch.h>
234
+ #include <ATen/ops/fake_quantize_per_tensor_affine_cachemask_cpu_dispatch.h>
235
+ #include <ATen/ops/fill_cpu_dispatch.h>
236
+ #include <ATen/ops/flip_cpu_dispatch.h>
237
+ #include <ATen/ops/floor_cpu_dispatch.h>
238
+ #include <ATen/ops/floor_divide_cpu_dispatch.h>
239
+ #include <ATen/ops/fmax_cpu_dispatch.h>
240
+ #include <ATen/ops/fmin_cpu_dispatch.h>
241
+ #include <ATen/ops/fmod_cpu_dispatch.h>
242
+ #include <ATen/ops/frac_cpu_dispatch.h>
243
+ #include <ATen/ops/fractional_max_pool2d_cpu_dispatch.h>
244
+ #include <ATen/ops/fractional_max_pool2d_backward_cpu_dispatch.h>
245
+ #include <ATen/ops/fractional_max_pool3d_cpu_dispatch.h>
246
+ #include <ATen/ops/fractional_max_pool3d_backward_cpu_dispatch.h>
247
+ #include <ATen/ops/frexp_cpu_dispatch.h>
248
+ #include <ATen/ops/from_file_cpu_dispatch.h>
249
+ #include <ATen/ops/gather_cpu_dispatch.h>
250
+ #include <ATen/ops/gcd_cpu_dispatch.h>
251
+ #include <ATen/ops/ge_cpu_dispatch.h>
252
+ #include <ATen/ops/gelu_cpu_dispatch.h>
253
+ #include <ATen/ops/gelu_backward_cpu_dispatch.h>
254
+ #include <ATen/ops/geometric_cpu_dispatch.h>
255
+ #include <ATen/ops/geqrf_cpu_dispatch.h>
256
+ #include <ATen/ops/glu_cpu_dispatch.h>
257
+ #include <ATen/ops/glu_backward_cpu_dispatch.h>
258
+ #include <ATen/ops/glu_backward_jvp_cpu_dispatch.h>
259
+ #include <ATen/ops/glu_jvp_cpu_dispatch.h>
260
+ #include <ATen/ops/grid_sampler_2d_cpu_dispatch.h>
261
+ #include <ATen/ops/grid_sampler_2d_backward_cpu_dispatch.h>
262
+ #include <ATen/ops/grid_sampler_3d_cpu_dispatch.h>
263
+ #include <ATen/ops/grid_sampler_3d_backward_cpu_dispatch.h>
264
+ #include <ATen/ops/gt_cpu_dispatch.h>
265
+ #include <ATen/ops/hardshrink_cpu_dispatch.h>
266
+ #include <ATen/ops/hardshrink_backward_cpu_dispatch.h>
267
+ #include <ATen/ops/hardsigmoid_cpu_dispatch.h>
268
+ #include <ATen/ops/hardsigmoid_backward_cpu_dispatch.h>
269
+ #include <ATen/ops/hardswish_cpu_dispatch.h>
270
+ #include <ATen/ops/hardswish_backward_cpu_dispatch.h>
271
+ #include <ATen/ops/hardtanh_cpu_dispatch.h>
272
+ #include <ATen/ops/hardtanh_backward_cpu_dispatch.h>
273
+ #include <ATen/ops/hash_tensor_cpu_dispatch.h>
274
+ #include <ATen/ops/heaviside_cpu_dispatch.h>
275
+ #include <ATen/ops/histc_cpu_dispatch.h>
276
+ #include <ATen/ops/histogram_cpu_dispatch.h>
277
+ #include <ATen/ops/huber_loss_cpu_dispatch.h>
278
+ #include <ATen/ops/huber_loss_backward_cpu_dispatch.h>
279
+ #include <ATen/ops/hypot_cpu_dispatch.h>
280
+ #include <ATen/ops/i0_cpu_dispatch.h>
281
+ #include <ATen/ops/igamma_cpu_dispatch.h>
282
+ #include <ATen/ops/igammac_cpu_dispatch.h>
283
+ #include <ATen/ops/im2col_cpu_dispatch.h>
284
+ #include <ATen/ops/index_cpu_dispatch.h>
285
+ #include <ATen/ops/index_add_cpu_dispatch.h>
286
+ #include <ATen/ops/index_copy_cpu_dispatch.h>
287
+ #include <ATen/ops/index_fill_cpu_dispatch.h>
288
+ #include <ATen/ops/index_reduce_cpu_dispatch.h>
289
+ #include <ATen/ops/index_select_cpu_dispatch.h>
290
+ #include <ATen/ops/is_set_to_cpu_dispatch.h>
291
+ #include <ATen/ops/isin_cpu_dispatch.h>
292
+ #include <ATen/ops/isnan_cpu_dispatch.h>
293
+ #include <ATen/ops/isneginf_cpu_dispatch.h>
294
+ #include <ATen/ops/isposinf_cpu_dispatch.h>
295
+ #include <ATen/ops/kthvalue_cpu_dispatch.h>
296
+ #include <ATen/ops/lcm_cpu_dispatch.h>
297
+ #include <ATen/ops/le_cpu_dispatch.h>
298
+ #include <ATen/ops/leaky_relu_cpu_dispatch.h>
299
+ #include <ATen/ops/leaky_relu_backward_cpu_dispatch.h>
300
+ #include <ATen/ops/lerp_cpu_dispatch.h>
301
+ #include <ATen/ops/lgamma_cpu_dispatch.h>
302
+ #include <ATen/ops/linalg_cholesky_ex_cpu_dispatch.h>
303
+ #include <ATen/ops/linalg_cross_cpu_dispatch.h>
304
+ #include <ATen/ops/linalg_eig_cpu_dispatch.h>
305
+ #include <ATen/ops/linalg_eigvals_cpu_dispatch.h>
306
+ #include <ATen/ops/linalg_householder_product_cpu_dispatch.h>
307
+ #include <ATen/ops/linalg_inv_ex_cpu_dispatch.h>
308
+ #include <ATen/ops/linalg_ldl_factor_ex_cpu_dispatch.h>
309
+ #include <ATen/ops/linalg_ldl_solve_cpu_dispatch.h>
310
+ #include <ATen/ops/linalg_lstsq_cpu_dispatch.h>
311
+ #include <ATen/ops/linalg_lu_cpu_dispatch.h>
312
+ #include <ATen/ops/linalg_lu_factor_ex_cpu_dispatch.h>
313
+ #include <ATen/ops/linalg_lu_solve_cpu_dispatch.h>
314
+ #include <ATen/ops/linalg_matrix_exp_cpu_dispatch.h>
315
+ #include <ATen/ops/linalg_qr_cpu_dispatch.h>
316
+ #include <ATen/ops/linalg_solve_triangular_cpu_dispatch.h>
317
+ #include <ATen/ops/linalg_vector_norm_cpu_dispatch.h>
318
+ #include <ATen/ops/linspace_cpu_dispatch.h>
319
+ #include <ATen/ops/log_cpu_dispatch.h>
320
+ #include <ATen/ops/log10_cpu_dispatch.h>
321
+ #include <ATen/ops/log1p_cpu_dispatch.h>
322
+ #include <ATen/ops/log2_cpu_dispatch.h>
323
+ #include <ATen/ops/log_normal_cpu_dispatch.h>
324
+ #include <ATen/ops/log_sigmoid_backward_cpu_dispatch.h>
325
+ #include <ATen/ops/log_sigmoid_forward_cpu_dispatch.h>
326
+ #include <ATen/ops/logaddexp_cpu_dispatch.h>
327
+ #include <ATen/ops/logaddexp2_cpu_dispatch.h>
328
+ #include <ATen/ops/logical_and_cpu_dispatch.h>
329
+ #include <ATen/ops/logical_not_cpu_dispatch.h>
330
+ #include <ATen/ops/logical_or_cpu_dispatch.h>
331
+ #include <ATen/ops/logical_xor_cpu_dispatch.h>
332
+ #include <ATen/ops/logit_cpu_dispatch.h>
333
+ #include <ATen/ops/logit_backward_cpu_dispatch.h>
334
+ #include <ATen/ops/logspace_cpu_dispatch.h>
335
+ #include <ATen/ops/lshift_cpu_dispatch.h>
336
+ #include <ATen/ops/lt_cpu_dispatch.h>
337
+ #include <ATen/ops/lu_unpack_cpu_dispatch.h>
338
+ #include <ATen/ops/masked_fill_cpu_dispatch.h>
339
+ #include <ATen/ops/masked_scatter_cpu_dispatch.h>
340
+ #include <ATen/ops/masked_select_cpu_dispatch.h>
341
+ #include <ATen/ops/max_cpu_dispatch.h>
342
+ #include <ATen/ops/max_pool2d_with_indices_cpu_dispatch.h>
343
+ #include <ATen/ops/max_pool2d_with_indices_backward_cpu_dispatch.h>
344
+ #include <ATen/ops/max_pool3d_with_indices_cpu_dispatch.h>
345
+ #include <ATen/ops/max_pool3d_with_indices_backward_cpu_dispatch.h>
346
+ #include <ATen/ops/max_unpool2d_cpu_dispatch.h>
347
+ #include <ATen/ops/max_unpool3d_cpu_dispatch.h>
348
+ #include <ATen/ops/maximum_cpu_dispatch.h>
349
+ #include <ATen/ops/mean_cpu_dispatch.h>
350
+ #include <ATen/ops/median_cpu_dispatch.h>
351
+ #include <ATen/ops/min_cpu_dispatch.h>
352
+ #include <ATen/ops/minimum_cpu_dispatch.h>
353
+ #include <ATen/ops/mish_cpu_dispatch.h>
354
+ #include <ATen/ops/mish_backward_cpu_dispatch.h>
355
+ #include <ATen/ops/mkldnn_rnn_layer_cpu_dispatch.h>
356
+ #include <ATen/ops/mkldnn_rnn_layer_backward_cpu_dispatch.h>
357
+ #include <ATen/ops/mm_cpu_dispatch.h>
358
+ #include <ATen/ops/mode_cpu_dispatch.h>
359
+ #include <ATen/ops/mse_loss_cpu_dispatch.h>
360
+ #include <ATen/ops/mse_loss_backward_cpu_dispatch.h>
361
+ #include <ATen/ops/mul_cpu_dispatch.h>
362
+ #include <ATen/ops/multi_margin_loss_cpu_dispatch.h>
363
+ #include <ATen/ops/multi_margin_loss_backward_cpu_dispatch.h>
364
+ #include <ATen/ops/multilabel_margin_loss_backward_cpu_dispatch.h>
365
+ #include <ATen/ops/multilabel_margin_loss_forward_cpu_dispatch.h>
366
+ #include <ATen/ops/multinomial_cpu_dispatch.h>
367
+ #include <ATen/ops/mvlgamma_cpu_dispatch.h>
368
+ #include <ATen/ops/nan_to_num_cpu_dispatch.h>
369
+ #include <ATen/ops/nanmedian_cpu_dispatch.h>
370
+ #include <ATen/ops/nansum_cpu_dispatch.h>
371
+ #include <ATen/ops/narrow_copy_cpu_dispatch.h>
372
+ #include <ATen/ops/native_batch_norm_cpu_dispatch.h>
373
+ #include <ATen/ops/native_batch_norm_backward_cpu_dispatch.h>
374
+ #include <ATen/ops/native_channel_shuffle_cpu_dispatch.h>
375
+ #include <ATen/ops/native_dropout_cpu_dispatch.h>
376
+ #include <ATen/ops/native_dropout_backward_cpu_dispatch.h>
377
+ #include <ATen/ops/native_group_norm_cpu_dispatch.h>
378
+ #include <ATen/ops/native_group_norm_backward_cpu_dispatch.h>
379
+ #include <ATen/ops/native_layer_norm_cpu_dispatch.h>
380
+ #include <ATen/ops/native_layer_norm_backward_cpu_dispatch.h>
381
+ #include <ATen/ops/ne_cpu_dispatch.h>
382
+ #include <ATen/ops/neg_cpu_dispatch.h>
383
+ #include <ATen/ops/nextafter_cpu_dispatch.h>
384
+ #include <ATen/ops/nll_loss2d_backward_cpu_dispatch.h>
385
+ #include <ATen/ops/nll_loss2d_forward_cpu_dispatch.h>
386
+ #include <ATen/ops/nll_loss_backward_cpu_dispatch.h>
387
+ #include <ATen/ops/nll_loss_forward_cpu_dispatch.h>
388
+ #include <ATen/ops/nonzero_cpu_dispatch.h>
389
+ #include <ATen/ops/nonzero_static_cpu_dispatch.h>
390
+ #include <ATen/ops/norm_cpu_dispatch.h>
391
+ #include <ATen/ops/normal_cpu_dispatch.h>
392
+ #include <ATen/ops/ormqr_cpu_dispatch.h>
393
+ #include <ATen/ops/pixel_shuffle_cpu_dispatch.h>
394
+ #include <ATen/ops/pixel_unshuffle_cpu_dispatch.h>
395
+ #include <ATen/ops/poisson_cpu_dispatch.h>
396
+ #include <ATen/ops/polar_cpu_dispatch.h>
397
+ #include <ATen/ops/polygamma_cpu_dispatch.h>
398
+ #include <ATen/ops/pow_cpu_dispatch.h>
399
+ #include <ATen/ops/prod_cpu_dispatch.h>
400
+ #include <ATen/ops/put_cpu_dispatch.h>
401
+ #include <ATen/ops/quantize_per_channel_cpu_dispatch.h>
402
+ #include <ATen/ops/quantize_per_tensor_cpu_dispatch.h>
403
+ #include <ATen/ops/quantize_per_tensor_dynamic_cpu_dispatch.h>
404
+ #include <ATen/ops/random_cpu_dispatch.h>
405
+ #include <ATen/ops/randperm_cpu_dispatch.h>
406
+ #include <ATen/ops/range_cpu_dispatch.h>
407
+ #include <ATen/ops/reciprocal_cpu_dispatch.h>
408
+ #include <ATen/ops/reflection_pad1d_cpu_dispatch.h>
409
+ #include <ATen/ops/reflection_pad1d_backward_cpu_dispatch.h>
410
+ #include <ATen/ops/reflection_pad2d_cpu_dispatch.h>
411
+ #include <ATen/ops/reflection_pad2d_backward_cpu_dispatch.h>
412
+ #include <ATen/ops/reflection_pad3d_cpu_dispatch.h>
413
+ #include <ATen/ops/reflection_pad3d_backward_cpu_dispatch.h>
414
+ #include <ATen/ops/relu_cpu_dispatch.h>
415
+ #include <ATen/ops/remainder_cpu_dispatch.h>
416
+ #include <ATen/ops/renorm_cpu_dispatch.h>
417
+ #include <ATen/ops/repeat_interleave_cpu_dispatch.h>
418
+ #include <ATen/ops/replication_pad1d_cpu_dispatch.h>
419
+ #include <ATen/ops/replication_pad1d_backward_cpu_dispatch.h>
420
+ #include <ATen/ops/replication_pad2d_cpu_dispatch.h>
421
+ #include <ATen/ops/replication_pad2d_backward_cpu_dispatch.h>
422
+ #include <ATen/ops/replication_pad3d_cpu_dispatch.h>
423
+ #include <ATen/ops/replication_pad3d_backward_cpu_dispatch.h>
424
+ #include <ATen/ops/resize_cpu_dispatch.h>
425
+ #include <ATen/ops/roll_cpu_dispatch.h>
426
+ #include <ATen/ops/round_cpu_dispatch.h>
427
+ #include <ATen/ops/rrelu_with_noise_cpu_dispatch.h>
428
+ #include <ATen/ops/rshift_cpu_dispatch.h>
429
+ #include <ATen/ops/rsqrt_cpu_dispatch.h>
430
+ #include <ATen/ops/rsub_cpu_dispatch.h>
431
+ #include <ATen/ops/scatter_cpu_dispatch.h>
432
+ #include <ATen/ops/scatter_add_cpu_dispatch.h>
433
+ #include <ATen/ops/scatter_reduce_cpu_dispatch.h>
434
+ #include <ATen/ops/searchsorted_cpu_dispatch.h>
435
+ #include <ATen/ops/segment_reduce_cpu_dispatch.h>
436
+ #include <ATen/ops/set_cpu_dispatch.h>
437
+ #include <ATen/ops/sgn_cpu_dispatch.h>
438
+ #include <ATen/ops/sigmoid_cpu_dispatch.h>
439
+ #include <ATen/ops/sigmoid_backward_cpu_dispatch.h>
440
+ #include <ATen/ops/sign_cpu_dispatch.h>
441
+ #include <ATen/ops/signbit_cpu_dispatch.h>
442
+ #include <ATen/ops/silu_cpu_dispatch.h>
443
+ #include <ATen/ops/silu_backward_cpu_dispatch.h>
444
+ #include <ATen/ops/sin_cpu_dispatch.h>
445
+ #include <ATen/ops/sinc_cpu_dispatch.h>
446
+ #include <ATen/ops/sinh_cpu_dispatch.h>
447
+ #include <ATen/ops/slow_conv3d_forward_cpu_dispatch.h>
448
+ #include <ATen/ops/slow_conv_dilated2d_cpu_dispatch.h>
449
+ #include <ATen/ops/slow_conv_dilated3d_cpu_dispatch.h>
450
+ #include <ATen/ops/slow_conv_transpose2d_cpu_dispatch.h>
451
+ #include <ATen/ops/slow_conv_transpose3d_cpu_dispatch.h>
452
+ #include <ATen/ops/smooth_l1_loss_cpu_dispatch.h>
453
+ #include <ATen/ops/smooth_l1_loss_backward_cpu_dispatch.h>
454
+ #include <ATen/ops/softplus_cpu_dispatch.h>
455
+ #include <ATen/ops/softplus_backward_cpu_dispatch.h>
456
+ #include <ATen/ops/softshrink_cpu_dispatch.h>
457
+ #include <ATen/ops/softshrink_backward_cpu_dispatch.h>
458
+ #include <ATen/ops/sort_cpu_dispatch.h>
459
+ #include <ATen/ops/special_airy_ai_cpu_dispatch.h>
460
+ #include <ATen/ops/special_bessel_j0_cpu_dispatch.h>
461
+ #include <ATen/ops/special_bessel_j1_cpu_dispatch.h>
462
+ #include <ATen/ops/special_bessel_y0_cpu_dispatch.h>
463
+ #include <ATen/ops/special_bessel_y1_cpu_dispatch.h>
464
+ #include <ATen/ops/special_chebyshev_polynomial_t_cpu_dispatch.h>
465
+ #include <ATen/ops/special_chebyshev_polynomial_u_cpu_dispatch.h>
466
+ #include <ATen/ops/special_chebyshev_polynomial_v_cpu_dispatch.h>
467
+ #include <ATen/ops/special_chebyshev_polynomial_w_cpu_dispatch.h>
468
+ #include <ATen/ops/special_entr_cpu_dispatch.h>
469
+ #include <ATen/ops/special_erfcx_cpu_dispatch.h>
470
+ #include <ATen/ops/special_hermite_polynomial_h_cpu_dispatch.h>
471
+ #include <ATen/ops/special_hermite_polynomial_he_cpu_dispatch.h>
472
+ #include <ATen/ops/special_i0e_cpu_dispatch.h>
473
+ #include <ATen/ops/special_i1_cpu_dispatch.h>
474
+ #include <ATen/ops/special_i1e_cpu_dispatch.h>
475
+ #include <ATen/ops/special_laguerre_polynomial_l_cpu_dispatch.h>
476
+ #include <ATen/ops/special_legendre_polynomial_p_cpu_dispatch.h>
477
+ #include <ATen/ops/special_log_ndtr_cpu_dispatch.h>
478
+ #include <ATen/ops/special_modified_bessel_i0_cpu_dispatch.h>
479
+ #include <ATen/ops/special_modified_bessel_i1_cpu_dispatch.h>
480
+ #include <ATen/ops/special_modified_bessel_k0_cpu_dispatch.h>
481
+ #include <ATen/ops/special_modified_bessel_k1_cpu_dispatch.h>
482
+ #include <ATen/ops/special_ndtri_cpu_dispatch.h>
483
+ #include <ATen/ops/special_scaled_modified_bessel_k0_cpu_dispatch.h>
484
+ #include <ATen/ops/special_scaled_modified_bessel_k1_cpu_dispatch.h>
485
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_t_cpu_dispatch.h>
486
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_u_cpu_dispatch.h>
487
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_v_cpu_dispatch.h>
488
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_w_cpu_dispatch.h>
489
+ #include <ATen/ops/special_spherical_bessel_j0_cpu_dispatch.h>
490
+ #include <ATen/ops/special_xlog1py_cpu_dispatch.h>
491
+ #include <ATen/ops/special_zeta_cpu_dispatch.h>
492
+ #include <ATen/ops/sqrt_cpu_dispatch.h>
493
+ #include <ATen/ops/sspaddmm_cpu_dispatch.h>
494
+ #include <ATen/ops/std_cpu_dispatch.h>
495
+ #include <ATen/ops/std_mean_cpu_dispatch.h>
496
+ #include <ATen/ops/sub_cpu_dispatch.h>
497
+ #include <ATen/ops/sum_cpu_dispatch.h>
498
+ #include <ATen/ops/take_cpu_dispatch.h>
499
+ #include <ATen/ops/tan_cpu_dispatch.h>
500
+ #include <ATen/ops/tanh_cpu_dispatch.h>
501
+ #include <ATen/ops/tanh_backward_cpu_dispatch.h>
502
+ #include <ATen/ops/threshold_cpu_dispatch.h>
503
+ #include <ATen/ops/threshold_backward_cpu_dispatch.h>
504
+ #include <ATen/ops/to_mkldnn_cpu_dispatch.h>
505
+ #include <ATen/ops/topk_cpu_dispatch.h>
506
+ #include <ATen/ops/trace_cpu_dispatch.h>
507
+ #include <ATen/ops/triangular_solve_cpu_dispatch.h>
508
+ #include <ATen/ops/tril_cpu_dispatch.h>
509
+ #include <ATen/ops/tril_indices_cpu_dispatch.h>
510
+ #include <ATen/ops/triu_cpu_dispatch.h>
511
+ #include <ATen/ops/triu_indices_cpu_dispatch.h>
512
+ #include <ATen/ops/trunc_cpu_dispatch.h>
513
+ #include <ATen/ops/unfold_cpu_dispatch.h>
514
+ #include <ATen/ops/unfold_backward_cpu_dispatch.h>
515
+ #include <ATen/ops/uniform_cpu_dispatch.h>
516
+ #include <ATen/ops/unique_consecutive_cpu_dispatch.h>
517
+ #include <ATen/ops/unique_dim_cpu_dispatch.h>
518
+ #include <ATen/ops/unique_dim_consecutive_cpu_dispatch.h>
519
+ #include <ATen/ops/upsample_bicubic2d_cpu_dispatch.h>
520
+ #include <ATen/ops/upsample_bicubic2d_backward_cpu_dispatch.h>
521
+ #include <ATen/ops/upsample_bilinear2d_cpu_dispatch.h>
522
+ #include <ATen/ops/upsample_bilinear2d_backward_cpu_dispatch.h>
523
+ #include <ATen/ops/upsample_linear1d_cpu_dispatch.h>
524
+ #include <ATen/ops/upsample_linear1d_backward_cpu_dispatch.h>
525
+ #include <ATen/ops/upsample_nearest1d_cpu_dispatch.h>
526
+ #include <ATen/ops/upsample_nearest1d_backward_cpu_dispatch.h>
527
+ #include <ATen/ops/upsample_nearest2d_cpu_dispatch.h>
528
+ #include <ATen/ops/upsample_nearest2d_backward_cpu_dispatch.h>
529
+ #include <ATen/ops/upsample_nearest3d_cpu_dispatch.h>
530
+ #include <ATen/ops/upsample_nearest3d_backward_cpu_dispatch.h>
531
+ #include <ATen/ops/upsample_trilinear3d_cpu_dispatch.h>
532
+ #include <ATen/ops/upsample_trilinear3d_backward_cpu_dispatch.h>
533
+ #include <ATen/ops/var_cpu_dispatch.h>
534
+ #include <ATen/ops/var_mean_cpu_dispatch.h>
535
+ #include <ATen/ops/vdot_cpu_dispatch.h>
536
+ #include <ATen/ops/view_cpu_dispatch.h>
537
+ #include <ATen/ops/view_as_complex_cpu_dispatch.h>
538
+ #include <ATen/ops/view_as_real_cpu_dispatch.h>
539
+ #include <ATen/ops/where_cpu_dispatch.h>
540
+ #include <ATen/ops/xlogy_cpu_dispatch.h>
541
+ #include <ATen/ops/zero_cpu_dispatch.h>
542
+
543
+
544
+
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CPUGeneratorImpl.h ADDED
@@ -0,0 +1,49 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/core/Generator.h>
4
+ #include <ATen/core/MT19937RNGEngine.h>
5
+ #include <c10/core/GeneratorImpl.h>
6
+ #include <optional>
7
+
8
+ namespace at {
9
+
10
+ struct TORCH_API CPUGeneratorImpl : public c10::GeneratorImpl {
11
+ // Constructors
12
+ CPUGeneratorImpl(uint64_t seed_in = default_rng_seed_val);
13
+ ~CPUGeneratorImpl() override = default;
14
+
15
+ // CPUGeneratorImpl methods
16
+ std::shared_ptr<CPUGeneratorImpl> clone() const;
17
+ void set_current_seed(uint64_t seed) override;
18
+ void set_offset(uint64_t offset) override;
19
+ uint64_t get_offset() const override;
20
+ uint64_t current_seed() const override;
21
+ uint64_t seed() override;
22
+ void set_state(const c10::TensorImpl& new_state) override;
23
+ c10::intrusive_ptr<c10::TensorImpl> get_state() const override;
24
+ static c10::DeviceType device_type();
25
+ uint32_t random();
26
+ uint64_t random64();
27
+ std::optional<float> next_float_normal_sample();
28
+ std::optional<double> next_double_normal_sample();
29
+ void set_next_float_normal_sample(std::optional<float> randn);
30
+ void set_next_double_normal_sample(std::optional<double> randn);
31
+ at::mt19937 engine();
32
+ void set_engine(at::mt19937 engine);
33
+
34
+ private:
35
+ CPUGeneratorImpl* clone_impl() const override;
36
+ at::mt19937 engine_;
37
+ std::optional<float> next_float_normal_sample_;
38
+ std::optional<double> next_double_normal_sample_;
39
+ };
40
+
41
+ namespace detail {
42
+
43
+ TORCH_API const Generator& getDefaultCPUGenerator();
44
+ TORCH_API Generator
45
+ createCPUGenerator(uint64_t seed_val = default_rng_seed_val);
46
+
47
+ } // namespace detail
48
+
49
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CUDAFunctions.h ADDED
@@ -0,0 +1,29 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #include <ATen/core/TensorBody.h>
2
+
3
+ // TODO Undo all logic introduced for Note [Avoiding Include Cycles In Static Dispatch]
4
+ // Code introduced to avoid cyclic dependency in static dispatch is no longer
5
+ // needed as static dispatch logic is moved from TensorBody.h, which caused cycles in the first place,
6
+ // to Operators.cpp for supporting multiple backends with multiple kernels.
7
+ //
8
+ // Note [Avoiding Include Cycles In Static Dispatch]
9
+ // In order to avoid #include cycles in the static dispatch build, we've carefully split out
10
+ // the static function definition files into {DispatchKey}Functions.h and {DispatchKey}Functions_inl.h.
11
+ //
12
+ // Without this split, the include cycle looks like TensorBody.h -> CPUFunctions.h -> TensorBody.h.
13
+ // - TensorBody.h #includes CPUFunctions.h in the static dispatch build, because the tensor methods
14
+ // all need to call into the fastpath C++ API defined in CPUFunctions.h. The methods are also all
15
+ // directly inlined into TensorBody.h.
16
+ // - CPUFunctions.h #includes TensorBody.h because it contains function declarations for the entire C++ API,
17
+ // which include functions that have defaultable std::optional<Tensor> arguments.
18
+ // That requires knowing the full Tensor class definition.
19
+ //
20
+ // We break the cycle by doing the following:
21
+ // - Split out CPUFunction.h into two files: CPUFunctions.h and CPUFunctions_inl.h
22
+ // - CPUFunction.h is a dummy file that just includes the Tensor class and includes CPUFunctions_inl.,
23
+ // - CPUFunctions_inl.h includes everything else
24
+ // - (only in the static dispatch build) TensorBody.h makes sure to finish defining the Tensor class,
25
+ // and then it includes CPUFunctions_inl.h.
26
+ // - All other files that want the cpu fastpath functions can include CPUFunctions.h directly.
27
+ // - This also means that static dispatch build, CPUFunctions.h only needs to
28
+ // #include TensorBody.h, and it will automatically bring in CPUFunctions_inl.h.
29
+ #include <ATen/CUDAFunctions_inl.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CUDAFunctions_inl.h ADDED
@@ -0,0 +1,634 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+ // @generated by torchgen/gen.py from DispatchKeyFunctions_inl.h
3
+
4
+ // NB: The implementing C++ file is RegisterDispatchKey.cpp
5
+
6
+ // The only #includes we need are for custom classes that have defaults in the C++ API
7
+ #include <c10/core/MemoryFormat.h>
8
+ #include <c10/core/Scalar.h>
9
+ #include <ATen/core/Reduction.h>
10
+
11
+ #if defined(AT_PER_OPERATOR_HEADERS) && defined(TORCH_ASSERT_ONLY_METHOD_OPERATORS)
12
+ #error This change adds a dependency on all pytorch operators, meaning the \
13
+ file will need to be re-compiled every time an operator is changed or added. \
14
+ Consider including a specific operator from \
15
+ <ATen/ops/{my_operator}_cuda_dispatch.h>. \
16
+ See NOTE [TORCH_ASSERT_ONLY_METHOD_OPERATORS].
17
+ #endif
18
+
19
+ #include <ATen/ops/_adaptive_avg_pool2d_cuda_dispatch.h>
20
+ #include <ATen/ops/_adaptive_avg_pool2d_backward_cuda_dispatch.h>
21
+ #include <ATen/ops/_adaptive_avg_pool3d_cuda_dispatch.h>
22
+ #include <ATen/ops/_adaptive_avg_pool3d_backward_cuda_dispatch.h>
23
+ #include <ATen/ops/_addmm_activation_cuda_dispatch.h>
24
+ #include <ATen/ops/_aminmax_cuda_dispatch.h>
25
+ #include <ATen/ops/_amp_foreach_non_finite_check_and_unscale_cuda_dispatch.h>
26
+ #include <ATen/ops/_amp_update_scale_cuda_dispatch.h>
27
+ #include <ATen/ops/_assert_async_cuda_dispatch.h>
28
+ #include <ATen/ops/_batch_norm_with_update_cuda_dispatch.h>
29
+ #include <ATen/ops/_cdist_backward_cuda_dispatch.h>
30
+ #include <ATen/ops/_cdist_forward_cuda_dispatch.h>
31
+ #include <ATen/ops/_cholesky_solve_helper_cuda_dispatch.h>
32
+ #include <ATen/ops/_chunk_cat_cuda_dispatch.h>
33
+ #include <ATen/ops/_compute_linear_combination_cuda_dispatch.h>
34
+ #include <ATen/ops/_conv_depthwise2d_cuda_dispatch.h>
35
+ #include <ATen/ops/_convert_indices_from_coo_to_csr_cuda_dispatch.h>
36
+ #include <ATen/ops/_convert_indices_from_csr_to_coo_cuda_dispatch.h>
37
+ #include <ATen/ops/_convert_weight_to_int4pack_cuda_dispatch.h>
38
+ #include <ATen/ops/_cslt_compress_cuda_dispatch.h>
39
+ #include <ATen/ops/_cslt_sparse_mm_cuda_dispatch.h>
40
+ #include <ATen/ops/_cslt_sparse_mm_search_cuda_dispatch.h>
41
+ #include <ATen/ops/_ctc_loss_cuda_dispatch.h>
42
+ #include <ATen/ops/_ctc_loss_backward_cuda_dispatch.h>
43
+ #include <ATen/ops/_cudnn_attention_backward_cuda_dispatch.h>
44
+ #include <ATen/ops/_cudnn_attention_forward_cuda_dispatch.h>
45
+ #include <ATen/ops/_cudnn_ctc_loss_cuda_dispatch.h>
46
+ #include <ATen/ops/_cudnn_init_dropout_state_cuda_dispatch.h>
47
+ #include <ATen/ops/_cudnn_rnn_cuda_dispatch.h>
48
+ #include <ATen/ops/_cudnn_rnn_backward_cuda_dispatch.h>
49
+ #include <ATen/ops/_cudnn_rnn_flatten_weight_cuda_dispatch.h>
50
+ #include <ATen/ops/_cummax_helper_cuda_dispatch.h>
51
+ #include <ATen/ops/_cummin_helper_cuda_dispatch.h>
52
+ #include <ATen/ops/_dirichlet_grad_cuda_dispatch.h>
53
+ #include <ATen/ops/_efficient_attention_backward_cuda_dispatch.h>
54
+ #include <ATen/ops/_efficient_attention_forward_cuda_dispatch.h>
55
+ #include <ATen/ops/_efficientzerotensor_cuda_dispatch.h>
56
+ #include <ATen/ops/_embedding_bag_cuda_dispatch.h>
57
+ #include <ATen/ops/_embedding_bag_backward_cuda_dispatch.h>
58
+ #include <ATen/ops/_embedding_bag_dense_backward_cuda_dispatch.h>
59
+ #include <ATen/ops/_embedding_bag_forward_only_cuda_dispatch.h>
60
+ #include <ATen/ops/_embedding_bag_per_sample_weights_backward_cuda_dispatch.h>
61
+ #include <ATen/ops/_fake_quantize_learnable_per_channel_affine_cuda_dispatch.h>
62
+ #include <ATen/ops/_fake_quantize_learnable_per_channel_affine_backward_cuda_dispatch.h>
63
+ #include <ATen/ops/_fake_quantize_learnable_per_tensor_affine_cuda_dispatch.h>
64
+ #include <ATen/ops/_fake_quantize_learnable_per_tensor_affine_backward_cuda_dispatch.h>
65
+ #include <ATen/ops/_fake_quantize_per_tensor_affine_cachemask_tensor_qparams_cuda_dispatch.h>
66
+ #include <ATen/ops/_fft_c2c_cuda_dispatch.h>
67
+ #include <ATen/ops/_fft_c2r_cuda_dispatch.h>
68
+ #include <ATen/ops/_fft_r2c_cuda_dispatch.h>
69
+ #include <ATen/ops/_fill_mem_eff_dropout_mask_cuda_dispatch.h>
70
+ #include <ATen/ops/_flash_attention_backward_cuda_dispatch.h>
71
+ #include <ATen/ops/_flash_attention_forward_cuda_dispatch.h>
72
+ #include <ATen/ops/_foreach_abs_cuda_dispatch.h>
73
+ #include <ATen/ops/_foreach_acos_cuda_dispatch.h>
74
+ #include <ATen/ops/_foreach_add_cuda_dispatch.h>
75
+ #include <ATen/ops/_foreach_addcdiv_cuda_dispatch.h>
76
+ #include <ATen/ops/_foreach_addcmul_cuda_dispatch.h>
77
+ #include <ATen/ops/_foreach_asin_cuda_dispatch.h>
78
+ #include <ATen/ops/_foreach_atan_cuda_dispatch.h>
79
+ #include <ATen/ops/_foreach_ceil_cuda_dispatch.h>
80
+ #include <ATen/ops/_foreach_clamp_max_cuda_dispatch.h>
81
+ #include <ATen/ops/_foreach_clamp_min_cuda_dispatch.h>
82
+ #include <ATen/ops/_foreach_copy_cuda_dispatch.h>
83
+ #include <ATen/ops/_foreach_cos_cuda_dispatch.h>
84
+ #include <ATen/ops/_foreach_cosh_cuda_dispatch.h>
85
+ #include <ATen/ops/_foreach_div_cuda_dispatch.h>
86
+ #include <ATen/ops/_foreach_erf_cuda_dispatch.h>
87
+ #include <ATen/ops/_foreach_erfc_cuda_dispatch.h>
88
+ #include <ATen/ops/_foreach_exp_cuda_dispatch.h>
89
+ #include <ATen/ops/_foreach_expm1_cuda_dispatch.h>
90
+ #include <ATen/ops/_foreach_floor_cuda_dispatch.h>
91
+ #include <ATen/ops/_foreach_frac_cuda_dispatch.h>
92
+ #include <ATen/ops/_foreach_lerp_cuda_dispatch.h>
93
+ #include <ATen/ops/_foreach_lgamma_cuda_dispatch.h>
94
+ #include <ATen/ops/_foreach_log_cuda_dispatch.h>
95
+ #include <ATen/ops/_foreach_log10_cuda_dispatch.h>
96
+ #include <ATen/ops/_foreach_log1p_cuda_dispatch.h>
97
+ #include <ATen/ops/_foreach_log2_cuda_dispatch.h>
98
+ #include <ATen/ops/_foreach_max_cuda_dispatch.h>
99
+ #include <ATen/ops/_foreach_maximum_cuda_dispatch.h>
100
+ #include <ATen/ops/_foreach_minimum_cuda_dispatch.h>
101
+ #include <ATen/ops/_foreach_mul_cuda_dispatch.h>
102
+ #include <ATen/ops/_foreach_neg_cuda_dispatch.h>
103
+ #include <ATen/ops/_foreach_norm_cuda_dispatch.h>
104
+ #include <ATen/ops/_foreach_pow_cuda_dispatch.h>
105
+ #include <ATen/ops/_foreach_reciprocal_cuda_dispatch.h>
106
+ #include <ATen/ops/_foreach_round_cuda_dispatch.h>
107
+ #include <ATen/ops/_foreach_rsqrt_cuda_dispatch.h>
108
+ #include <ATen/ops/_foreach_sigmoid_cuda_dispatch.h>
109
+ #include <ATen/ops/_foreach_sign_cuda_dispatch.h>
110
+ #include <ATen/ops/_foreach_sin_cuda_dispatch.h>
111
+ #include <ATen/ops/_foreach_sinh_cuda_dispatch.h>
112
+ #include <ATen/ops/_foreach_sqrt_cuda_dispatch.h>
113
+ #include <ATen/ops/_foreach_sub_cuda_dispatch.h>
114
+ #include <ATen/ops/_foreach_tan_cuda_dispatch.h>
115
+ #include <ATen/ops/_foreach_tanh_cuda_dispatch.h>
116
+ #include <ATen/ops/_foreach_trunc_cuda_dispatch.h>
117
+ #include <ATen/ops/_foreach_zero_cuda_dispatch.h>
118
+ #include <ATen/ops/_fused_adagrad_cuda_dispatch.h>
119
+ #include <ATen/ops/_fused_adam_cuda_dispatch.h>
120
+ #include <ATen/ops/_fused_adamw_cuda_dispatch.h>
121
+ #include <ATen/ops/_fused_dropout_cuda_dispatch.h>
122
+ #include <ATen/ops/_fused_moving_avg_obs_fq_helper_cuda_dispatch.h>
123
+ #include <ATen/ops/_fused_rms_norm_cuda_dispatch.h>
124
+ #include <ATen/ops/_fused_rms_norm_backward_cuda_dispatch.h>
125
+ #include <ATen/ops/_fused_sdp_choice_cuda_dispatch.h>
126
+ #include <ATen/ops/_fused_sgd_cuda_dispatch.h>
127
+ #include <ATen/ops/_grouped_mm_cuda_dispatch.h>
128
+ #include <ATen/ops/_index_put_impl_cuda_dispatch.h>
129
+ #include <ATen/ops/_int_mm_cuda_dispatch.h>
130
+ #include <ATen/ops/_jagged_to_padded_dense_forward_cuda_dispatch.h>
131
+ #include <ATen/ops/_linalg_det_cuda_dispatch.h>
132
+ #include <ATen/ops/_linalg_eigh_cuda_dispatch.h>
133
+ #include <ATen/ops/_linalg_eigvals_cuda_dispatch.h>
134
+ #include <ATen/ops/_linalg_slogdet_cuda_dispatch.h>
135
+ #include <ATen/ops/_linalg_solve_ex_cuda_dispatch.h>
136
+ #include <ATen/ops/_linalg_svd_cuda_dispatch.h>
137
+ #include <ATen/ops/_local_scalar_dense_cuda_dispatch.h>
138
+ #include <ATen/ops/_log_softmax_cuda_dispatch.h>
139
+ #include <ATen/ops/_log_softmax_backward_data_cuda_dispatch.h>
140
+ #include <ATen/ops/_logcumsumexp_cuda_dispatch.h>
141
+ #include <ATen/ops/_make_per_channel_quantized_tensor_cuda_dispatch.h>
142
+ #include <ATen/ops/_make_per_tensor_quantized_tensor_cuda_dispatch.h>
143
+ #include <ATen/ops/_masked_scale_cuda_dispatch.h>
144
+ #include <ATen/ops/_masked_softmax_cuda_dispatch.h>
145
+ #include <ATen/ops/_masked_softmax_backward_cuda_dispatch.h>
146
+ #include <ATen/ops/_mixed_dtypes_linear_cuda_dispatch.h>
147
+ #include <ATen/ops/_native_batch_norm_legit_cuda_dispatch.h>
148
+ #include <ATen/ops/_native_multi_head_attention_cuda_dispatch.h>
149
+ #include <ATen/ops/_nested_compute_contiguous_strides_offsets_cuda_dispatch.h>
150
+ #include <ATen/ops/_nested_from_padded_cuda_dispatch.h>
151
+ #include <ATen/ops/_nested_tensor_from_mask_cuda_dispatch.h>
152
+ #include <ATen/ops/_nested_tensor_from_mask_left_aligned_cuda_dispatch.h>
153
+ #include <ATen/ops/_nested_view_from_buffer_cuda_dispatch.h>
154
+ #include <ATen/ops/_padded_dense_to_jagged_forward_cuda_dispatch.h>
155
+ #include <ATen/ops/_pdist_backward_cuda_dispatch.h>
156
+ #include <ATen/ops/_pdist_forward_cuda_dispatch.h>
157
+ #include <ATen/ops/_prelu_kernel_cuda_dispatch.h>
158
+ #include <ATen/ops/_prelu_kernel_backward_cuda_dispatch.h>
159
+ #include <ATen/ops/_reshape_alias_cuda_dispatch.h>
160
+ #include <ATen/ops/_sample_dirichlet_cuda_dispatch.h>
161
+ #include <ATen/ops/_scaled_dot_product_cudnn_attention_cuda_dispatch.h>
162
+ #include <ATen/ops/_scaled_dot_product_cudnn_attention_backward_cuda_dispatch.h>
163
+ #include <ATen/ops/_scaled_dot_product_efficient_attention_cuda_dispatch.h>
164
+ #include <ATen/ops/_scaled_dot_product_efficient_attention_backward_cuda_dispatch.h>
165
+ #include <ATen/ops/_scaled_dot_product_flash_attention_cuda_dispatch.h>
166
+ #include <ATen/ops/_scaled_dot_product_flash_attention_backward_cuda_dispatch.h>
167
+ #include <ATen/ops/_scaled_grouped_mm_cuda_dispatch.h>
168
+ #include <ATen/ops/_scaled_mm_cuda_dispatch.h>
169
+ #include <ATen/ops/_segment_reduce_backward_cuda_dispatch.h>
170
+ #include <ATen/ops/_slow_conv2d_backward_cuda_dispatch.h>
171
+ #include <ATen/ops/_slow_conv2d_forward_cuda_dispatch.h>
172
+ #include <ATen/ops/_softmax_cuda_dispatch.h>
173
+ #include <ATen/ops/_softmax_backward_data_cuda_dispatch.h>
174
+ #include <ATen/ops/_sparse_semi_structured_addmm_cuda_dispatch.h>
175
+ #include <ATen/ops/_sparse_semi_structured_apply_cuda_dispatch.h>
176
+ #include <ATen/ops/_sparse_semi_structured_apply_dense_cuda_dispatch.h>
177
+ #include <ATen/ops/_sparse_semi_structured_linear_cuda_dispatch.h>
178
+ #include <ATen/ops/_sparse_semi_structured_mm_cuda_dispatch.h>
179
+ #include <ATen/ops/_sparse_semi_structured_tile_cuda_dispatch.h>
180
+ #include <ATen/ops/_standard_gamma_cuda_dispatch.h>
181
+ #include <ATen/ops/_standard_gamma_grad_cuda_dispatch.h>
182
+ #include <ATen/ops/_thnn_fused_gru_cell_cuda_dispatch.h>
183
+ #include <ATen/ops/_thnn_fused_gru_cell_backward_cuda_dispatch.h>
184
+ #include <ATen/ops/_thnn_fused_lstm_cell_cuda_dispatch.h>
185
+ #include <ATen/ops/_thnn_fused_lstm_cell_backward_impl_cuda_dispatch.h>
186
+ #include <ATen/ops/_to_sparse_cuda_dispatch.h>
187
+ #include <ATen/ops/_to_sparse_bsc_cuda_dispatch.h>
188
+ #include <ATen/ops/_to_sparse_bsr_cuda_dispatch.h>
189
+ #include <ATen/ops/_to_sparse_csc_cuda_dispatch.h>
190
+ #include <ATen/ops/_to_sparse_csr_cuda_dispatch.h>
191
+ #include <ATen/ops/_to_sparse_semi_structured_cuda_dispatch.h>
192
+ #include <ATen/ops/_transform_bias_rescale_qkv_cuda_dispatch.h>
193
+ #include <ATen/ops/_transformer_encoder_layer_fwd_cuda_dispatch.h>
194
+ #include <ATen/ops/_triton_multi_head_attention_cuda_dispatch.h>
195
+ #include <ATen/ops/_triton_scaled_dot_attention_cuda_dispatch.h>
196
+ #include <ATen/ops/_unique_cuda_dispatch.h>
197
+ #include <ATen/ops/_unique2_cuda_dispatch.h>
198
+ #include <ATen/ops/_upsample_bicubic2d_aa_cuda_dispatch.h>
199
+ #include <ATen/ops/_upsample_bicubic2d_aa_backward_cuda_dispatch.h>
200
+ #include <ATen/ops/_upsample_bilinear2d_aa_cuda_dispatch.h>
201
+ #include <ATen/ops/_upsample_bilinear2d_aa_backward_cuda_dispatch.h>
202
+ #include <ATen/ops/_upsample_nearest_exact1d_cuda_dispatch.h>
203
+ #include <ATen/ops/_upsample_nearest_exact1d_backward_cuda_dispatch.h>
204
+ #include <ATen/ops/_upsample_nearest_exact2d_cuda_dispatch.h>
205
+ #include <ATen/ops/_upsample_nearest_exact2d_backward_cuda_dispatch.h>
206
+ #include <ATen/ops/_upsample_nearest_exact3d_cuda_dispatch.h>
207
+ #include <ATen/ops/_upsample_nearest_exact3d_backward_cuda_dispatch.h>
208
+ #include <ATen/ops/_use_cudnn_ctc_loss_cuda_dispatch.h>
209
+ #include <ATen/ops/_validate_compressed_sparse_indices_cuda_dispatch.h>
210
+ #include <ATen/ops/_weight_int4pack_mm_cuda_dispatch.h>
211
+ #include <ATen/ops/_weight_int8pack_mm_cuda_dispatch.h>
212
+ #include <ATen/ops/_weight_norm_interface_cuda_dispatch.h>
213
+ #include <ATen/ops/_weight_norm_interface_backward_cuda_dispatch.h>
214
+ #include <ATen/ops/abs_cuda_dispatch.h>
215
+ #include <ATen/ops/acos_cuda_dispatch.h>
216
+ #include <ATen/ops/acosh_cuda_dispatch.h>
217
+ #include <ATen/ops/adaptive_avg_pool2d_cuda_dispatch.h>
218
+ #include <ATen/ops/adaptive_avg_pool3d_cuda_dispatch.h>
219
+ #include <ATen/ops/adaptive_avg_pool3d_backward_cuda_dispatch.h>
220
+ #include <ATen/ops/adaptive_max_pool2d_cuda_dispatch.h>
221
+ #include <ATen/ops/adaptive_max_pool2d_backward_cuda_dispatch.h>
222
+ #include <ATen/ops/adaptive_max_pool3d_cuda_dispatch.h>
223
+ #include <ATen/ops/adaptive_max_pool3d_backward_cuda_dispatch.h>
224
+ #include <ATen/ops/add_cuda_dispatch.h>
225
+ #include <ATen/ops/addbmm_cuda_dispatch.h>
226
+ #include <ATen/ops/addcdiv_cuda_dispatch.h>
227
+ #include <ATen/ops/addcmul_cuda_dispatch.h>
228
+ #include <ATen/ops/addmm_cuda_dispatch.h>
229
+ #include <ATen/ops/addmv_cuda_dispatch.h>
230
+ #include <ATen/ops/addr_cuda_dispatch.h>
231
+ #include <ATen/ops/all_cuda_dispatch.h>
232
+ #include <ATen/ops/amax_cuda_dispatch.h>
233
+ #include <ATen/ops/amin_cuda_dispatch.h>
234
+ #include <ATen/ops/aminmax_cuda_dispatch.h>
235
+ #include <ATen/ops/angle_cuda_dispatch.h>
236
+ #include <ATen/ops/any_cuda_dispatch.h>
237
+ #include <ATen/ops/arange_cuda_dispatch.h>
238
+ #include <ATen/ops/argmax_cuda_dispatch.h>
239
+ #include <ATen/ops/argmin_cuda_dispatch.h>
240
+ #include <ATen/ops/as_strided_cuda_dispatch.h>
241
+ #include <ATen/ops/asin_cuda_dispatch.h>
242
+ #include <ATen/ops/asinh_cuda_dispatch.h>
243
+ #include <ATen/ops/atan_cuda_dispatch.h>
244
+ #include <ATen/ops/atan2_cuda_dispatch.h>
245
+ #include <ATen/ops/atanh_cuda_dispatch.h>
246
+ #include <ATen/ops/avg_pool2d_cuda_dispatch.h>
247
+ #include <ATen/ops/avg_pool2d_backward_cuda_dispatch.h>
248
+ #include <ATen/ops/avg_pool3d_cuda_dispatch.h>
249
+ #include <ATen/ops/avg_pool3d_backward_cuda_dispatch.h>
250
+ #include <ATen/ops/baddbmm_cuda_dispatch.h>
251
+ #include <ATen/ops/batch_norm_backward_cuda_dispatch.h>
252
+ #include <ATen/ops/batch_norm_backward_elemt_cuda_dispatch.h>
253
+ #include <ATen/ops/batch_norm_backward_reduce_cuda_dispatch.h>
254
+ #include <ATen/ops/batch_norm_elemt_cuda_dispatch.h>
255
+ #include <ATen/ops/batch_norm_gather_stats_cuda_dispatch.h>
256
+ #include <ATen/ops/batch_norm_gather_stats_with_counts_cuda_dispatch.h>
257
+ #include <ATen/ops/batch_norm_stats_cuda_dispatch.h>
258
+ #include <ATen/ops/batch_norm_update_stats_cuda_dispatch.h>
259
+ #include <ATen/ops/bernoulli_cuda_dispatch.h>
260
+ #include <ATen/ops/binary_cross_entropy_cuda_dispatch.h>
261
+ #include <ATen/ops/binary_cross_entropy_backward_cuda_dispatch.h>
262
+ #include <ATen/ops/bincount_cuda_dispatch.h>
263
+ #include <ATen/ops/binomial_cuda_dispatch.h>
264
+ #include <ATen/ops/bitwise_and_cuda_dispatch.h>
265
+ #include <ATen/ops/bitwise_left_shift_cuda_dispatch.h>
266
+ #include <ATen/ops/bitwise_not_cuda_dispatch.h>
267
+ #include <ATen/ops/bitwise_or_cuda_dispatch.h>
268
+ #include <ATen/ops/bitwise_right_shift_cuda_dispatch.h>
269
+ #include <ATen/ops/bitwise_xor_cuda_dispatch.h>
270
+ #include <ATen/ops/bmm_cuda_dispatch.h>
271
+ #include <ATen/ops/bucketize_cuda_dispatch.h>
272
+ #include <ATen/ops/cat_cuda_dispatch.h>
273
+ #include <ATen/ops/cauchy_cuda_dispatch.h>
274
+ #include <ATen/ops/ceil_cuda_dispatch.h>
275
+ #include <ATen/ops/channel_shuffle_cuda_dispatch.h>
276
+ #include <ATen/ops/cholesky_cuda_dispatch.h>
277
+ #include <ATen/ops/cholesky_inverse_cuda_dispatch.h>
278
+ #include <ATen/ops/clamp_cuda_dispatch.h>
279
+ #include <ATen/ops/clamp_max_cuda_dispatch.h>
280
+ #include <ATen/ops/clamp_min_cuda_dispatch.h>
281
+ #include <ATen/ops/col2im_cuda_dispatch.h>
282
+ #include <ATen/ops/complex_cuda_dispatch.h>
283
+ #include <ATen/ops/conj_physical_cuda_dispatch.h>
284
+ #include <ATen/ops/conv_depthwise3d_cuda_dispatch.h>
285
+ #include <ATen/ops/convolution_backward_cuda_dispatch.h>
286
+ #include <ATen/ops/copysign_cuda_dispatch.h>
287
+ #include <ATen/ops/cos_cuda_dispatch.h>
288
+ #include <ATen/ops/cosh_cuda_dispatch.h>
289
+ #include <ATen/ops/count_nonzero_cuda_dispatch.h>
290
+ #include <ATen/ops/cudnn_affine_grid_generator_cuda_dispatch.h>
291
+ #include <ATen/ops/cudnn_affine_grid_generator_backward_cuda_dispatch.h>
292
+ #include <ATen/ops/cudnn_batch_norm_cuda_dispatch.h>
293
+ #include <ATen/ops/cudnn_batch_norm_backward_cuda_dispatch.h>
294
+ #include <ATen/ops/cudnn_convolution_cuda_dispatch.h>
295
+ #include <ATen/ops/cudnn_convolution_add_relu_cuda_dispatch.h>
296
+ #include <ATen/ops/cudnn_convolution_relu_cuda_dispatch.h>
297
+ #include <ATen/ops/cudnn_convolution_transpose_cuda_dispatch.h>
298
+ #include <ATen/ops/cudnn_grid_sampler_cuda_dispatch.h>
299
+ #include <ATen/ops/cudnn_grid_sampler_backward_cuda_dispatch.h>
300
+ #include <ATen/ops/cumprod_cuda_dispatch.h>
301
+ #include <ATen/ops/cumsum_cuda_dispatch.h>
302
+ #include <ATen/ops/dequantize_cuda_dispatch.h>
303
+ #include <ATen/ops/digamma_cuda_dispatch.h>
304
+ #include <ATen/ops/div_cuda_dispatch.h>
305
+ #include <ATen/ops/dot_cuda_dispatch.h>
306
+ #include <ATen/ops/elu_cuda_dispatch.h>
307
+ #include <ATen/ops/elu_backward_cuda_dispatch.h>
308
+ #include <ATen/ops/embedding_dense_backward_cuda_dispatch.h>
309
+ #include <ATen/ops/embedding_renorm_cuda_dispatch.h>
310
+ #include <ATen/ops/empty_cuda_dispatch.h>
311
+ #include <ATen/ops/empty_strided_cuda_dispatch.h>
312
+ #include <ATen/ops/eq_cuda_dispatch.h>
313
+ #include <ATen/ops/equal_cuda_dispatch.h>
314
+ #include <ATen/ops/erf_cuda_dispatch.h>
315
+ #include <ATen/ops/erfc_cuda_dispatch.h>
316
+ #include <ATen/ops/erfinv_cuda_dispatch.h>
317
+ #include <ATen/ops/exp_cuda_dispatch.h>
318
+ #include <ATen/ops/exp2_cuda_dispatch.h>
319
+ #include <ATen/ops/expm1_cuda_dispatch.h>
320
+ #include <ATen/ops/exponential_cuda_dispatch.h>
321
+ #include <ATen/ops/eye_cuda_dispatch.h>
322
+ #include <ATen/ops/fake_quantize_per_channel_affine_cachemask_cuda_dispatch.h>
323
+ #include <ATen/ops/fake_quantize_per_tensor_affine_cachemask_cuda_dispatch.h>
324
+ #include <ATen/ops/fill_cuda_dispatch.h>
325
+ #include <ATen/ops/flip_cuda_dispatch.h>
326
+ #include <ATen/ops/floor_cuda_dispatch.h>
327
+ #include <ATen/ops/floor_divide_cuda_dispatch.h>
328
+ #include <ATen/ops/fmax_cuda_dispatch.h>
329
+ #include <ATen/ops/fmin_cuda_dispatch.h>
330
+ #include <ATen/ops/fmod_cuda_dispatch.h>
331
+ #include <ATen/ops/frac_cuda_dispatch.h>
332
+ #include <ATen/ops/fractional_max_pool2d_cuda_dispatch.h>
333
+ #include <ATen/ops/fractional_max_pool2d_backward_cuda_dispatch.h>
334
+ #include <ATen/ops/fractional_max_pool3d_cuda_dispatch.h>
335
+ #include <ATen/ops/fractional_max_pool3d_backward_cuda_dispatch.h>
336
+ #include <ATen/ops/frexp_cuda_dispatch.h>
337
+ #include <ATen/ops/gather_cuda_dispatch.h>
338
+ #include <ATen/ops/gcd_cuda_dispatch.h>
339
+ #include <ATen/ops/ge_cuda_dispatch.h>
340
+ #include <ATen/ops/gelu_cuda_dispatch.h>
341
+ #include <ATen/ops/gelu_backward_cuda_dispatch.h>
342
+ #include <ATen/ops/geometric_cuda_dispatch.h>
343
+ #include <ATen/ops/geqrf_cuda_dispatch.h>
344
+ #include <ATen/ops/glu_cuda_dispatch.h>
345
+ #include <ATen/ops/glu_backward_cuda_dispatch.h>
346
+ #include <ATen/ops/glu_backward_jvp_cuda_dispatch.h>
347
+ #include <ATen/ops/glu_jvp_cuda_dispatch.h>
348
+ #include <ATen/ops/grid_sampler_2d_cuda_dispatch.h>
349
+ #include <ATen/ops/grid_sampler_2d_backward_cuda_dispatch.h>
350
+ #include <ATen/ops/grid_sampler_3d_cuda_dispatch.h>
351
+ #include <ATen/ops/grid_sampler_3d_backward_cuda_dispatch.h>
352
+ #include <ATen/ops/gt_cuda_dispatch.h>
353
+ #include <ATen/ops/hardshrink_cuda_dispatch.h>
354
+ #include <ATen/ops/hardshrink_backward_cuda_dispatch.h>
355
+ #include <ATen/ops/hardsigmoid_cuda_dispatch.h>
356
+ #include <ATen/ops/hardsigmoid_backward_cuda_dispatch.h>
357
+ #include <ATen/ops/hardswish_cuda_dispatch.h>
358
+ #include <ATen/ops/hardswish_backward_cuda_dispatch.h>
359
+ #include <ATen/ops/hardtanh_cuda_dispatch.h>
360
+ #include <ATen/ops/hardtanh_backward_cuda_dispatch.h>
361
+ #include <ATen/ops/hash_tensor_cuda_dispatch.h>
362
+ #include <ATen/ops/heaviside_cuda_dispatch.h>
363
+ #include <ATen/ops/histc_cuda_dispatch.h>
364
+ #include <ATen/ops/huber_loss_cuda_dispatch.h>
365
+ #include <ATen/ops/huber_loss_backward_cuda_dispatch.h>
366
+ #include <ATen/ops/hypot_cuda_dispatch.h>
367
+ #include <ATen/ops/i0_cuda_dispatch.h>
368
+ #include <ATen/ops/igamma_cuda_dispatch.h>
369
+ #include <ATen/ops/igammac_cuda_dispatch.h>
370
+ #include <ATen/ops/im2col_cuda_dispatch.h>
371
+ #include <ATen/ops/index_cuda_dispatch.h>
372
+ #include <ATen/ops/index_add_cuda_dispatch.h>
373
+ #include <ATen/ops/index_copy_cuda_dispatch.h>
374
+ #include <ATen/ops/index_fill_cuda_dispatch.h>
375
+ #include <ATen/ops/index_reduce_cuda_dispatch.h>
376
+ #include <ATen/ops/index_select_cuda_dispatch.h>
377
+ #include <ATen/ops/is_set_to_cuda_dispatch.h>
378
+ #include <ATen/ops/isin_cuda_dispatch.h>
379
+ #include <ATen/ops/isnan_cuda_dispatch.h>
380
+ #include <ATen/ops/isneginf_cuda_dispatch.h>
381
+ #include <ATen/ops/isposinf_cuda_dispatch.h>
382
+ #include <ATen/ops/kthvalue_cuda_dispatch.h>
383
+ #include <ATen/ops/lcm_cuda_dispatch.h>
384
+ #include <ATen/ops/le_cuda_dispatch.h>
385
+ #include <ATen/ops/leaky_relu_cuda_dispatch.h>
386
+ #include <ATen/ops/leaky_relu_backward_cuda_dispatch.h>
387
+ #include <ATen/ops/lerp_cuda_dispatch.h>
388
+ #include <ATen/ops/lgamma_cuda_dispatch.h>
389
+ #include <ATen/ops/linalg_cholesky_ex_cuda_dispatch.h>
390
+ #include <ATen/ops/linalg_cross_cuda_dispatch.h>
391
+ #include <ATen/ops/linalg_eig_cuda_dispatch.h>
392
+ #include <ATen/ops/linalg_eigvals_cuda_dispatch.h>
393
+ #include <ATen/ops/linalg_householder_product_cuda_dispatch.h>
394
+ #include <ATen/ops/linalg_inv_ex_cuda_dispatch.h>
395
+ #include <ATen/ops/linalg_ldl_factor_ex_cuda_dispatch.h>
396
+ #include <ATen/ops/linalg_ldl_solve_cuda_dispatch.h>
397
+ #include <ATen/ops/linalg_lstsq_cuda_dispatch.h>
398
+ #include <ATen/ops/linalg_lu_cuda_dispatch.h>
399
+ #include <ATen/ops/linalg_lu_factor_ex_cuda_dispatch.h>
400
+ #include <ATen/ops/linalg_lu_solve_cuda_dispatch.h>
401
+ #include <ATen/ops/linalg_matrix_exp_cuda_dispatch.h>
402
+ #include <ATen/ops/linalg_qr_cuda_dispatch.h>
403
+ #include <ATen/ops/linalg_solve_triangular_cuda_dispatch.h>
404
+ #include <ATen/ops/linalg_vector_norm_cuda_dispatch.h>
405
+ #include <ATen/ops/linspace_cuda_dispatch.h>
406
+ #include <ATen/ops/log_cuda_dispatch.h>
407
+ #include <ATen/ops/log10_cuda_dispatch.h>
408
+ #include <ATen/ops/log1p_cuda_dispatch.h>
409
+ #include <ATen/ops/log2_cuda_dispatch.h>
410
+ #include <ATen/ops/log_normal_cuda_dispatch.h>
411
+ #include <ATen/ops/log_sigmoid_backward_cuda_dispatch.h>
412
+ #include <ATen/ops/log_sigmoid_forward_cuda_dispatch.h>
413
+ #include <ATen/ops/logaddexp_cuda_dispatch.h>
414
+ #include <ATen/ops/logaddexp2_cuda_dispatch.h>
415
+ #include <ATen/ops/logical_and_cuda_dispatch.h>
416
+ #include <ATen/ops/logical_not_cuda_dispatch.h>
417
+ #include <ATen/ops/logical_or_cuda_dispatch.h>
418
+ #include <ATen/ops/logical_xor_cuda_dispatch.h>
419
+ #include <ATen/ops/logit_cuda_dispatch.h>
420
+ #include <ATen/ops/logit_backward_cuda_dispatch.h>
421
+ #include <ATen/ops/logspace_cuda_dispatch.h>
422
+ #include <ATen/ops/lshift_cuda_dispatch.h>
423
+ #include <ATen/ops/lt_cuda_dispatch.h>
424
+ #include <ATen/ops/lu_unpack_cuda_dispatch.h>
425
+ #include <ATen/ops/masked_fill_cuda_dispatch.h>
426
+ #include <ATen/ops/masked_scatter_cuda_dispatch.h>
427
+ #include <ATen/ops/masked_select_cuda_dispatch.h>
428
+ #include <ATen/ops/max_cuda_dispatch.h>
429
+ #include <ATen/ops/max_pool2d_with_indices_cuda_dispatch.h>
430
+ #include <ATen/ops/max_pool2d_with_indices_backward_cuda_dispatch.h>
431
+ #include <ATen/ops/max_pool3d_with_indices_cuda_dispatch.h>
432
+ #include <ATen/ops/max_pool3d_with_indices_backward_cuda_dispatch.h>
433
+ #include <ATen/ops/max_unpool2d_cuda_dispatch.h>
434
+ #include <ATen/ops/max_unpool3d_cuda_dispatch.h>
435
+ #include <ATen/ops/maximum_cuda_dispatch.h>
436
+ #include <ATen/ops/mean_cuda_dispatch.h>
437
+ #include <ATen/ops/median_cuda_dispatch.h>
438
+ #include <ATen/ops/min_cuda_dispatch.h>
439
+ #include <ATen/ops/minimum_cuda_dispatch.h>
440
+ #include <ATen/ops/miopen_batch_norm_cuda_dispatch.h>
441
+ #include <ATen/ops/miopen_batch_norm_backward_cuda_dispatch.h>
442
+ #include <ATen/ops/miopen_convolution_cuda_dispatch.h>
443
+ #include <ATen/ops/miopen_convolution_add_relu_cuda_dispatch.h>
444
+ #include <ATen/ops/miopen_convolution_relu_cuda_dispatch.h>
445
+ #include <ATen/ops/miopen_convolution_transpose_cuda_dispatch.h>
446
+ #include <ATen/ops/miopen_depthwise_convolution_cuda_dispatch.h>
447
+ #include <ATen/ops/miopen_rnn_cuda_dispatch.h>
448
+ #include <ATen/ops/miopen_rnn_backward_cuda_dispatch.h>
449
+ #include <ATen/ops/mish_cuda_dispatch.h>
450
+ #include <ATen/ops/mish_backward_cuda_dispatch.h>
451
+ #include <ATen/ops/mm_cuda_dispatch.h>
452
+ #include <ATen/ops/mode_cuda_dispatch.h>
453
+ #include <ATen/ops/mse_loss_cuda_dispatch.h>
454
+ #include <ATen/ops/mse_loss_backward_cuda_dispatch.h>
455
+ #include <ATen/ops/mul_cuda_dispatch.h>
456
+ #include <ATen/ops/multi_margin_loss_cuda_dispatch.h>
457
+ #include <ATen/ops/multi_margin_loss_backward_cuda_dispatch.h>
458
+ #include <ATen/ops/multilabel_margin_loss_backward_cuda_dispatch.h>
459
+ #include <ATen/ops/multilabel_margin_loss_forward_cuda_dispatch.h>
460
+ #include <ATen/ops/multinomial_cuda_dispatch.h>
461
+ #include <ATen/ops/mvlgamma_cuda_dispatch.h>
462
+ #include <ATen/ops/nan_to_num_cuda_dispatch.h>
463
+ #include <ATen/ops/nanmedian_cuda_dispatch.h>
464
+ #include <ATen/ops/nansum_cuda_dispatch.h>
465
+ #include <ATen/ops/native_batch_norm_cuda_dispatch.h>
466
+ #include <ATen/ops/native_batch_norm_backward_cuda_dispatch.h>
467
+ #include <ATen/ops/native_dropout_cuda_dispatch.h>
468
+ #include <ATen/ops/native_dropout_backward_cuda_dispatch.h>
469
+ #include <ATen/ops/native_group_norm_cuda_dispatch.h>
470
+ #include <ATen/ops/native_group_norm_backward_cuda_dispatch.h>
471
+ #include <ATen/ops/native_layer_norm_cuda_dispatch.h>
472
+ #include <ATen/ops/native_layer_norm_backward_cuda_dispatch.h>
473
+ #include <ATen/ops/ne_cuda_dispatch.h>
474
+ #include <ATen/ops/neg_cuda_dispatch.h>
475
+ #include <ATen/ops/nextafter_cuda_dispatch.h>
476
+ #include <ATen/ops/nll_loss2d_backward_cuda_dispatch.h>
477
+ #include <ATen/ops/nll_loss2d_forward_cuda_dispatch.h>
478
+ #include <ATen/ops/nll_loss_backward_cuda_dispatch.h>
479
+ #include <ATen/ops/nll_loss_forward_cuda_dispatch.h>
480
+ #include <ATen/ops/nonzero_cuda_dispatch.h>
481
+ #include <ATen/ops/nonzero_static_cuda_dispatch.h>
482
+ #include <ATen/ops/norm_cuda_dispatch.h>
483
+ #include <ATen/ops/normal_cuda_dispatch.h>
484
+ #include <ATen/ops/ormqr_cuda_dispatch.h>
485
+ #include <ATen/ops/poisson_cuda_dispatch.h>
486
+ #include <ATen/ops/polar_cuda_dispatch.h>
487
+ #include <ATen/ops/polygamma_cuda_dispatch.h>
488
+ #include <ATen/ops/pow_cuda_dispatch.h>
489
+ #include <ATen/ops/prod_cuda_dispatch.h>
490
+ #include <ATen/ops/put_cuda_dispatch.h>
491
+ #include <ATen/ops/quantize_per_channel_cuda_dispatch.h>
492
+ #include <ATen/ops/quantize_per_tensor_cuda_dispatch.h>
493
+ #include <ATen/ops/quantize_per_tensor_dynamic_cuda_dispatch.h>
494
+ #include <ATen/ops/random_cuda_dispatch.h>
495
+ #include <ATen/ops/randperm_cuda_dispatch.h>
496
+ #include <ATen/ops/range_cuda_dispatch.h>
497
+ #include <ATen/ops/reciprocal_cuda_dispatch.h>
498
+ #include <ATen/ops/record_stream_cuda_dispatch.h>
499
+ #include <ATen/ops/reflection_pad1d_cuda_dispatch.h>
500
+ #include <ATen/ops/reflection_pad1d_backward_cuda_dispatch.h>
501
+ #include <ATen/ops/reflection_pad2d_cuda_dispatch.h>
502
+ #include <ATen/ops/reflection_pad2d_backward_cuda_dispatch.h>
503
+ #include <ATen/ops/reflection_pad3d_cuda_dispatch.h>
504
+ #include <ATen/ops/reflection_pad3d_backward_cuda_dispatch.h>
505
+ #include <ATen/ops/relu_cuda_dispatch.h>
506
+ #include <ATen/ops/remainder_cuda_dispatch.h>
507
+ #include <ATen/ops/renorm_cuda_dispatch.h>
508
+ #include <ATen/ops/repeat_interleave_cuda_dispatch.h>
509
+ #include <ATen/ops/replication_pad1d_cuda_dispatch.h>
510
+ #include <ATen/ops/replication_pad1d_backward_cuda_dispatch.h>
511
+ #include <ATen/ops/replication_pad2d_cuda_dispatch.h>
512
+ #include <ATen/ops/replication_pad2d_backward_cuda_dispatch.h>
513
+ #include <ATen/ops/replication_pad3d_cuda_dispatch.h>
514
+ #include <ATen/ops/replication_pad3d_backward_cuda_dispatch.h>
515
+ #include <ATen/ops/resize_cuda_dispatch.h>
516
+ #include <ATen/ops/roll_cuda_dispatch.h>
517
+ #include <ATen/ops/round_cuda_dispatch.h>
518
+ #include <ATen/ops/rrelu_with_noise_cuda_dispatch.h>
519
+ #include <ATen/ops/rshift_cuda_dispatch.h>
520
+ #include <ATen/ops/rsqrt_cuda_dispatch.h>
521
+ #include <ATen/ops/rsub_cuda_dispatch.h>
522
+ #include <ATen/ops/scatter_cuda_dispatch.h>
523
+ #include <ATen/ops/scatter_add_cuda_dispatch.h>
524
+ #include <ATen/ops/scatter_reduce_cuda_dispatch.h>
525
+ #include <ATen/ops/searchsorted_cuda_dispatch.h>
526
+ #include <ATen/ops/segment_reduce_cuda_dispatch.h>
527
+ #include <ATen/ops/set_cuda_dispatch.h>
528
+ #include <ATen/ops/sgn_cuda_dispatch.h>
529
+ #include <ATen/ops/sigmoid_cuda_dispatch.h>
530
+ #include <ATen/ops/sigmoid_backward_cuda_dispatch.h>
531
+ #include <ATen/ops/sign_cuda_dispatch.h>
532
+ #include <ATen/ops/signbit_cuda_dispatch.h>
533
+ #include <ATen/ops/silu_cuda_dispatch.h>
534
+ #include <ATen/ops/silu_backward_cuda_dispatch.h>
535
+ #include <ATen/ops/sin_cuda_dispatch.h>
536
+ #include <ATen/ops/sinc_cuda_dispatch.h>
537
+ #include <ATen/ops/sinh_cuda_dispatch.h>
538
+ #include <ATen/ops/slow_conv_dilated2d_cuda_dispatch.h>
539
+ #include <ATen/ops/slow_conv_dilated3d_cuda_dispatch.h>
540
+ #include <ATen/ops/slow_conv_transpose2d_cuda_dispatch.h>
541
+ #include <ATen/ops/slow_conv_transpose3d_cuda_dispatch.h>
542
+ #include <ATen/ops/smooth_l1_loss_cuda_dispatch.h>
543
+ #include <ATen/ops/smooth_l1_loss_backward_cuda_dispatch.h>
544
+ #include <ATen/ops/softplus_cuda_dispatch.h>
545
+ #include <ATen/ops/softplus_backward_cuda_dispatch.h>
546
+ #include <ATen/ops/softshrink_cuda_dispatch.h>
547
+ #include <ATen/ops/softshrink_backward_cuda_dispatch.h>
548
+ #include <ATen/ops/sort_cuda_dispatch.h>
549
+ #include <ATen/ops/special_airy_ai_cuda_dispatch.h>
550
+ #include <ATen/ops/special_bessel_j0_cuda_dispatch.h>
551
+ #include <ATen/ops/special_bessel_j1_cuda_dispatch.h>
552
+ #include <ATen/ops/special_bessel_y0_cuda_dispatch.h>
553
+ #include <ATen/ops/special_bessel_y1_cuda_dispatch.h>
554
+ #include <ATen/ops/special_chebyshev_polynomial_t_cuda_dispatch.h>
555
+ #include <ATen/ops/special_chebyshev_polynomial_u_cuda_dispatch.h>
556
+ #include <ATen/ops/special_chebyshev_polynomial_v_cuda_dispatch.h>
557
+ #include <ATen/ops/special_chebyshev_polynomial_w_cuda_dispatch.h>
558
+ #include <ATen/ops/special_entr_cuda_dispatch.h>
559
+ #include <ATen/ops/special_erfcx_cuda_dispatch.h>
560
+ #include <ATen/ops/special_hermite_polynomial_h_cuda_dispatch.h>
561
+ #include <ATen/ops/special_hermite_polynomial_he_cuda_dispatch.h>
562
+ #include <ATen/ops/special_i0e_cuda_dispatch.h>
563
+ #include <ATen/ops/special_i1_cuda_dispatch.h>
564
+ #include <ATen/ops/special_i1e_cuda_dispatch.h>
565
+ #include <ATen/ops/special_laguerre_polynomial_l_cuda_dispatch.h>
566
+ #include <ATen/ops/special_legendre_polynomial_p_cuda_dispatch.h>
567
+ #include <ATen/ops/special_log_ndtr_cuda_dispatch.h>
568
+ #include <ATen/ops/special_modified_bessel_i0_cuda_dispatch.h>
569
+ #include <ATen/ops/special_modified_bessel_i1_cuda_dispatch.h>
570
+ #include <ATen/ops/special_modified_bessel_k0_cuda_dispatch.h>
571
+ #include <ATen/ops/special_modified_bessel_k1_cuda_dispatch.h>
572
+ #include <ATen/ops/special_ndtri_cuda_dispatch.h>
573
+ #include <ATen/ops/special_scaled_modified_bessel_k0_cuda_dispatch.h>
574
+ #include <ATen/ops/special_scaled_modified_bessel_k1_cuda_dispatch.h>
575
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_t_cuda_dispatch.h>
576
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_u_cuda_dispatch.h>
577
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_v_cuda_dispatch.h>
578
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_w_cuda_dispatch.h>
579
+ #include <ATen/ops/special_spherical_bessel_j0_cuda_dispatch.h>
580
+ #include <ATen/ops/special_xlog1py_cuda_dispatch.h>
581
+ #include <ATen/ops/special_zeta_cuda_dispatch.h>
582
+ #include <ATen/ops/split_with_sizes_copy_cuda_dispatch.h>
583
+ #include <ATen/ops/sqrt_cuda_dispatch.h>
584
+ #include <ATen/ops/sspaddmm_cuda_dispatch.h>
585
+ #include <ATen/ops/std_cuda_dispatch.h>
586
+ #include <ATen/ops/std_mean_cuda_dispatch.h>
587
+ #include <ATen/ops/sub_cuda_dispatch.h>
588
+ #include <ATen/ops/sum_cuda_dispatch.h>
589
+ #include <ATen/ops/take_cuda_dispatch.h>
590
+ #include <ATen/ops/tan_cuda_dispatch.h>
591
+ #include <ATen/ops/tanh_cuda_dispatch.h>
592
+ #include <ATen/ops/tanh_backward_cuda_dispatch.h>
593
+ #include <ATen/ops/threshold_cuda_dispatch.h>
594
+ #include <ATen/ops/threshold_backward_cuda_dispatch.h>
595
+ #include <ATen/ops/topk_cuda_dispatch.h>
596
+ #include <ATen/ops/trace_cuda_dispatch.h>
597
+ #include <ATen/ops/triangular_solve_cuda_dispatch.h>
598
+ #include <ATen/ops/tril_cuda_dispatch.h>
599
+ #include <ATen/ops/tril_indices_cuda_dispatch.h>
600
+ #include <ATen/ops/triu_cuda_dispatch.h>
601
+ #include <ATen/ops/triu_indices_cuda_dispatch.h>
602
+ #include <ATen/ops/trunc_cuda_dispatch.h>
603
+ #include <ATen/ops/unfold_cuda_dispatch.h>
604
+ #include <ATen/ops/unfold_backward_cuda_dispatch.h>
605
+ #include <ATen/ops/uniform_cuda_dispatch.h>
606
+ #include <ATen/ops/unique_consecutive_cuda_dispatch.h>
607
+ #include <ATen/ops/unique_dim_cuda_dispatch.h>
608
+ #include <ATen/ops/unique_dim_consecutive_cuda_dispatch.h>
609
+ #include <ATen/ops/upsample_bicubic2d_cuda_dispatch.h>
610
+ #include <ATen/ops/upsample_bicubic2d_backward_cuda_dispatch.h>
611
+ #include <ATen/ops/upsample_bilinear2d_cuda_dispatch.h>
612
+ #include <ATen/ops/upsample_bilinear2d_backward_cuda_dispatch.h>
613
+ #include <ATen/ops/upsample_linear1d_cuda_dispatch.h>
614
+ #include <ATen/ops/upsample_linear1d_backward_cuda_dispatch.h>
615
+ #include <ATen/ops/upsample_nearest1d_cuda_dispatch.h>
616
+ #include <ATen/ops/upsample_nearest1d_backward_cuda_dispatch.h>
617
+ #include <ATen/ops/upsample_nearest2d_cuda_dispatch.h>
618
+ #include <ATen/ops/upsample_nearest2d_backward_cuda_dispatch.h>
619
+ #include <ATen/ops/upsample_nearest3d_cuda_dispatch.h>
620
+ #include <ATen/ops/upsample_nearest3d_backward_cuda_dispatch.h>
621
+ #include <ATen/ops/upsample_trilinear3d_cuda_dispatch.h>
622
+ #include <ATen/ops/upsample_trilinear3d_backward_cuda_dispatch.h>
623
+ #include <ATen/ops/var_cuda_dispatch.h>
624
+ #include <ATen/ops/var_mean_cuda_dispatch.h>
625
+ #include <ATen/ops/vdot_cuda_dispatch.h>
626
+ #include <ATen/ops/view_cuda_dispatch.h>
627
+ #include <ATen/ops/view_as_complex_cuda_dispatch.h>
628
+ #include <ATen/ops/view_as_real_cuda_dispatch.h>
629
+ #include <ATen/ops/where_cuda_dispatch.h>
630
+ #include <ATen/ops/xlogy_cuda_dispatch.h>
631
+ #include <ATen/ops/zero_cuda_dispatch.h>
632
+
633
+
634
+
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CachedTensorUtils.h ADDED
@@ -0,0 +1,24 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/ATen.h>
4
+
5
+ namespace at::caching {
6
+
7
+ // Some systems (just cudagraphs currently) will persist a static tensor output
8
+ // whose TensorImpl does not change across iterations. For these tensors caching
9
+ // dtype conversions is invalid. Additionally, there will be an extra reference
10
+ // count to these cached tensors that would prevent buffer inplacing and other
11
+ // checks on tensor uniqueness. If we are not using these systems the enabled
12
+ // flag will be false and we will avoid the hash lookup.
13
+
14
+ TORCH_API bool is_cached_tensor(const at::Tensor& t);
15
+ TORCH_API void add_cached_tensor(const at::Tensor& t);
16
+ TORCH_API void remove_cached_tensor(const at::Tensor& t);
17
+ TORCH_API void set_cached_tensors_enabled(bool enable);
18
+
19
+ // For gradient buffer stealing we will adjust the use count of tensors
20
+ // which are persisted by cudagraphs, just as we need to adjust reference
21
+ // count of tensors with hooks.
22
+ TORCH_API size_t adjusted_use_count(const at::Tensor& t);
23
+
24
+ } // namespace at::caching
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CollapseDims.h ADDED
@@ -0,0 +1,94 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #include <c10/util/Exception.h>
2
+ #include <utility>
3
+
4
+ namespace at {
5
+
6
+ /*
7
+ [collapse dims] Updates sizes, and strides to reflect a "collapse" of
8
+ the info, possibly excluding the optional excludeDim. A "collapsed" version
9
+ of the info is the fewest dims that order the tensor's elements in the same
10
+ way as the original info. If excludeDim is specified, the collapse is the
11
+ fewest dims that order the tensor's elements as the original and preserve the
12
+ excluded dimension, unless the tensor collapses to a point.
13
+
14
+ This function returns a pair of values.
15
+
16
+ 1) The (new) index of the preserved dimension if excludeDim is
17
+ specified. 0 if the tensor is collapsed to a point. -1
18
+ otherwise.
19
+
20
+ 2) The new number of dimensions.
21
+ */
22
+ template <typename T>
23
+ inline std::pair<int64_t, int64_t> collapse_dims(
24
+ T* sizes,
25
+ T* strides,
26
+ int64_t dims,
27
+ const int excludeDim = -1) {
28
+ TORCH_CHECK(
29
+ excludeDim >= -1 && excludeDim < dims,
30
+ "expected excluded dim between -1 and dims - 1");
31
+
32
+ int64_t stopDim = (excludeDim == -1) ? dims : excludeDim;
33
+ int64_t newIndex = -1;
34
+ int64_t oldIndex = 0;
35
+ int64_t remappedExcludedDim = -1;
36
+
37
+ while (oldIndex < dims) {
38
+ // Finds a dimension to collapse into
39
+ for (; oldIndex < stopDim; ++oldIndex) {
40
+ if (sizes[oldIndex] == 1) {
41
+ continue;
42
+ }
43
+
44
+ ++newIndex;
45
+ sizes[newIndex] = sizes[oldIndex];
46
+ strides[newIndex] = strides[oldIndex];
47
+ ++oldIndex;
48
+ break;
49
+ }
50
+
51
+ // Collapses dims
52
+ for (; oldIndex < stopDim; ++oldIndex) {
53
+ if (sizes[oldIndex] == 1) {
54
+ continue;
55
+ }
56
+
57
+ if (strides[newIndex] == sizes[oldIndex] * strides[oldIndex]) {
58
+ sizes[newIndex] *= sizes[oldIndex];
59
+ strides[newIndex] = strides[oldIndex];
60
+ } else {
61
+ ++newIndex;
62
+ sizes[newIndex] = sizes[oldIndex];
63
+ strides[newIndex] = strides[oldIndex];
64
+ }
65
+ }
66
+
67
+ // Handles excludeDim being set (oldIndex == excludeDim)
68
+ if (oldIndex != dims) {
69
+ // Preserves excluded dimension
70
+ ++newIndex;
71
+ sizes[newIndex] = sizes[oldIndex];
72
+ strides[newIndex] = strides[oldIndex];
73
+ remappedExcludedDim = newIndex;
74
+
75
+ // Restarts iteration after excludeDim
76
+ ++oldIndex;
77
+ stopDim = dims;
78
+ }
79
+ }
80
+
81
+ // Handles special case of all dims size 1
82
+ if (newIndex == -1 || (newIndex == 0 && sizes[0] == 1)) {
83
+ dims = 1;
84
+ sizes[0] = 1;
85
+ strides[0] = 1;
86
+
87
+ return std::pair<int64_t, int64_t>(0, 1);
88
+ }
89
+
90
+ dims = newIndex + 1;
91
+ return std::pair<int64_t, int64_t>(remappedExcludedDim, dims);
92
+ }
93
+
94
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeExplicitAutogradFunctions.h ADDED
@@ -0,0 +1,29 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #include <ATen/core/TensorBody.h>
2
+
3
+ // TODO Undo all logic introduced for Note [Avoiding Include Cycles In Static Dispatch]
4
+ // Code introduced to avoid cyclic dependency in static dispatch is no longer
5
+ // needed as static dispatch logic is moved from TensorBody.h, which caused cycles in the first place,
6
+ // to Operators.cpp for supporting multiple backends with multiple kernels.
7
+ //
8
+ // Note [Avoiding Include Cycles In Static Dispatch]
9
+ // In order to avoid #include cycles in the static dispatch build, we've carefully split out
10
+ // the static function definition files into {DispatchKey}Functions.h and {DispatchKey}Functions_inl.h.
11
+ //
12
+ // Without this split, the include cycle looks like TensorBody.h -> CPUFunctions.h -> TensorBody.h.
13
+ // - TensorBody.h #includes CPUFunctions.h in the static dispatch build, because the tensor methods
14
+ // all need to call into the fastpath C++ API defined in CPUFunctions.h. The methods are also all
15
+ // directly inlined into TensorBody.h.
16
+ // - CPUFunctions.h #includes TensorBody.h because it contains function declarations for the entire C++ API,
17
+ // which include functions that have defaultable std::optional<Tensor> arguments.
18
+ // That requires knowing the full Tensor class definition.
19
+ //
20
+ // We break the cycle by doing the following:
21
+ // - Split out CPUFunction.h into two files: CPUFunctions.h and CPUFunctions_inl.h
22
+ // - CPUFunction.h is a dummy file that just includes the Tensor class and includes CPUFunctions_inl.,
23
+ // - CPUFunctions_inl.h includes everything else
24
+ // - (only in the static dispatch build) TensorBody.h makes sure to finish defining the Tensor class,
25
+ // and then it includes CPUFunctions_inl.h.
26
+ // - All other files that want the cpu fastpath functions can include CPUFunctions.h directly.
27
+ // - This also means that static dispatch build, CPUFunctions.h only needs to
28
+ // #include TensorBody.h, and it will automatically bring in CPUFunctions_inl.h.
29
+ #include <ATen/CompositeExplicitAutogradFunctions_inl.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeExplicitAutogradFunctions_inl.h ADDED
@@ -0,0 +1,560 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+ // @generated by torchgen/gen.py from DispatchKeyFunctions_inl.h
3
+
4
+ // NB: The implementing C++ file is RegisterDispatchKey.cpp
5
+
6
+ // The only #includes we need are for custom classes that have defaults in the C++ API
7
+ #include <c10/core/MemoryFormat.h>
8
+ #include <c10/core/Scalar.h>
9
+ #include <ATen/core/Reduction.h>
10
+
11
+ #if defined(AT_PER_OPERATOR_HEADERS) && defined(TORCH_ASSERT_ONLY_METHOD_OPERATORS)
12
+ #error This change adds a dependency on all pytorch operators, meaning the \
13
+ file will need to be re-compiled every time an operator is changed or added. \
14
+ Consider including a specific operator from \
15
+ <ATen/ops/{my_operator}_compositeexplicitautograd_dispatch.h>. \
16
+ See NOTE [TORCH_ASSERT_ONLY_METHOD_OPERATORS].
17
+ #endif
18
+
19
+ #include <ATen/ops/_adaptive_avg_pool2d_compositeexplicitautograd_dispatch.h>
20
+ #include <ATen/ops/_adaptive_avg_pool2d_backward_compositeexplicitautograd_dispatch.h>
21
+ #include <ATen/ops/_adaptive_avg_pool3d_compositeexplicitautograd_dispatch.h>
22
+ #include <ATen/ops/_adaptive_avg_pool3d_backward_compositeexplicitautograd_dispatch.h>
23
+ #include <ATen/ops/_add_relu_compositeexplicitautograd_dispatch.h>
24
+ #include <ATen/ops/_aminmax_compositeexplicitautograd_dispatch.h>
25
+ #include <ATen/ops/_amp_foreach_non_finite_check_and_unscale_compositeexplicitautograd_dispatch.h>
26
+ #include <ATen/ops/_amp_update_scale_compositeexplicitautograd_dispatch.h>
27
+ #include <ATen/ops/_assert_scalar_compositeexplicitautograd_dispatch.h>
28
+ #include <ATen/ops/_assert_tensor_metadata_compositeexplicitautograd_dispatch.h>
29
+ #include <ATen/ops/_batch_norm_no_update_compositeexplicitautograd_dispatch.h>
30
+ #include <ATen/ops/_batch_norm_with_update_compositeexplicitautograd_dispatch.h>
31
+ #include <ATen/ops/_cdist_backward_compositeexplicitautograd_dispatch.h>
32
+ #include <ATen/ops/_cdist_forward_compositeexplicitautograd_dispatch.h>
33
+ #include <ATen/ops/_cholesky_solve_helper_compositeexplicitautograd_dispatch.h>
34
+ #include <ATen/ops/_chunk_cat_compositeexplicitautograd_dispatch.h>
35
+ #include <ATen/ops/_coalesce_compositeexplicitautograd_dispatch.h>
36
+ #include <ATen/ops/_coalesced_compositeexplicitautograd_dispatch.h>
37
+ #include <ATen/ops/_conj_compositeexplicitautograd_dispatch.h>
38
+ #include <ATen/ops/_conj_copy_compositeexplicitautograd_dispatch.h>
39
+ #include <ATen/ops/_conj_physical_compositeexplicitautograd_dispatch.h>
40
+ #include <ATen/ops/_convolution_compositeexplicitautograd_dispatch.h>
41
+ #include <ATen/ops/_copy_from_compositeexplicitautograd_dispatch.h>
42
+ #include <ATen/ops/_copy_from_and_resize_compositeexplicitautograd_dispatch.h>
43
+ #include <ATen/ops/_ctc_loss_compositeexplicitautograd_dispatch.h>
44
+ #include <ATen/ops/_ctc_loss_backward_compositeexplicitautograd_dispatch.h>
45
+ #include <ATen/ops/_cudnn_ctc_loss_compositeexplicitautograd_dispatch.h>
46
+ #include <ATen/ops/_cudnn_init_dropout_state_compositeexplicitautograd_dispatch.h>
47
+ #include <ATen/ops/_cudnn_rnn_compositeexplicitautograd_dispatch.h>
48
+ #include <ATen/ops/_cudnn_rnn_backward_compositeexplicitautograd_dispatch.h>
49
+ #include <ATen/ops/_cudnn_rnn_flatten_weight_compositeexplicitautograd_dispatch.h>
50
+ #include <ATen/ops/_dirichlet_grad_compositeexplicitautograd_dispatch.h>
51
+ #include <ATen/ops/_efficientzerotensor_compositeexplicitautograd_dispatch.h>
52
+ #include <ATen/ops/_embedding_bag_compositeexplicitautograd_dispatch.h>
53
+ #include <ATen/ops/_embedding_bag_dense_backward_compositeexplicitautograd_dispatch.h>
54
+ #include <ATen/ops/_embedding_bag_forward_only_compositeexplicitautograd_dispatch.h>
55
+ #include <ATen/ops/_embedding_bag_per_sample_weights_backward_compositeexplicitautograd_dispatch.h>
56
+ #include <ATen/ops/_empty_affine_quantized_compositeexplicitautograd_dispatch.h>
57
+ #include <ATen/ops/_empty_per_channel_affine_quantized_compositeexplicitautograd_dispatch.h>
58
+ #include <ATen/ops/_euclidean_dist_compositeexplicitautograd_dispatch.h>
59
+ #include <ATen/ops/_fake_quantize_learnable_per_channel_affine_compositeexplicitautograd_dispatch.h>
60
+ #include <ATen/ops/_fake_quantize_learnable_per_tensor_affine_compositeexplicitautograd_dispatch.h>
61
+ #include <ATen/ops/_fake_quantize_per_tensor_affine_cachemask_tensor_qparams_compositeexplicitautograd_dispatch.h>
62
+ #include <ATen/ops/_foobar_compositeexplicitautograd_dispatch.h>
63
+ #include <ATen/ops/_foreach_abs_compositeexplicitautograd_dispatch.h>
64
+ #include <ATen/ops/_foreach_acos_compositeexplicitautograd_dispatch.h>
65
+ #include <ATen/ops/_foreach_add_compositeexplicitautograd_dispatch.h>
66
+ #include <ATen/ops/_foreach_addcdiv_compositeexplicitautograd_dispatch.h>
67
+ #include <ATen/ops/_foreach_addcmul_compositeexplicitautograd_dispatch.h>
68
+ #include <ATen/ops/_foreach_asin_compositeexplicitautograd_dispatch.h>
69
+ #include <ATen/ops/_foreach_atan_compositeexplicitautograd_dispatch.h>
70
+ #include <ATen/ops/_foreach_ceil_compositeexplicitautograd_dispatch.h>
71
+ #include <ATen/ops/_foreach_clamp_max_compositeexplicitautograd_dispatch.h>
72
+ #include <ATen/ops/_foreach_clamp_min_compositeexplicitautograd_dispatch.h>
73
+ #include <ATen/ops/_foreach_copy_compositeexplicitautograd_dispatch.h>
74
+ #include <ATen/ops/_foreach_cos_compositeexplicitautograd_dispatch.h>
75
+ #include <ATen/ops/_foreach_cosh_compositeexplicitautograd_dispatch.h>
76
+ #include <ATen/ops/_foreach_div_compositeexplicitautograd_dispatch.h>
77
+ #include <ATen/ops/_foreach_erf_compositeexplicitautograd_dispatch.h>
78
+ #include <ATen/ops/_foreach_erfc_compositeexplicitautograd_dispatch.h>
79
+ #include <ATen/ops/_foreach_exp_compositeexplicitautograd_dispatch.h>
80
+ #include <ATen/ops/_foreach_expm1_compositeexplicitautograd_dispatch.h>
81
+ #include <ATen/ops/_foreach_floor_compositeexplicitautograd_dispatch.h>
82
+ #include <ATen/ops/_foreach_frac_compositeexplicitautograd_dispatch.h>
83
+ #include <ATen/ops/_foreach_lerp_compositeexplicitautograd_dispatch.h>
84
+ #include <ATen/ops/_foreach_lgamma_compositeexplicitautograd_dispatch.h>
85
+ #include <ATen/ops/_foreach_log_compositeexplicitautograd_dispatch.h>
86
+ #include <ATen/ops/_foreach_log10_compositeexplicitautograd_dispatch.h>
87
+ #include <ATen/ops/_foreach_log1p_compositeexplicitautograd_dispatch.h>
88
+ #include <ATen/ops/_foreach_log2_compositeexplicitautograd_dispatch.h>
89
+ #include <ATen/ops/_foreach_max_compositeexplicitautograd_dispatch.h>
90
+ #include <ATen/ops/_foreach_maximum_compositeexplicitautograd_dispatch.h>
91
+ #include <ATen/ops/_foreach_minimum_compositeexplicitautograd_dispatch.h>
92
+ #include <ATen/ops/_foreach_mul_compositeexplicitautograd_dispatch.h>
93
+ #include <ATen/ops/_foreach_neg_compositeexplicitautograd_dispatch.h>
94
+ #include <ATen/ops/_foreach_norm_compositeexplicitautograd_dispatch.h>
95
+ #include <ATen/ops/_foreach_pow_compositeexplicitautograd_dispatch.h>
96
+ #include <ATen/ops/_foreach_reciprocal_compositeexplicitautograd_dispatch.h>
97
+ #include <ATen/ops/_foreach_round_compositeexplicitautograd_dispatch.h>
98
+ #include <ATen/ops/_foreach_rsqrt_compositeexplicitautograd_dispatch.h>
99
+ #include <ATen/ops/_foreach_sigmoid_compositeexplicitautograd_dispatch.h>
100
+ #include <ATen/ops/_foreach_sign_compositeexplicitautograd_dispatch.h>
101
+ #include <ATen/ops/_foreach_sin_compositeexplicitautograd_dispatch.h>
102
+ #include <ATen/ops/_foreach_sinh_compositeexplicitautograd_dispatch.h>
103
+ #include <ATen/ops/_foreach_sqrt_compositeexplicitautograd_dispatch.h>
104
+ #include <ATen/ops/_foreach_sub_compositeexplicitautograd_dispatch.h>
105
+ #include <ATen/ops/_foreach_tan_compositeexplicitautograd_dispatch.h>
106
+ #include <ATen/ops/_foreach_tanh_compositeexplicitautograd_dispatch.h>
107
+ #include <ATen/ops/_foreach_trunc_compositeexplicitautograd_dispatch.h>
108
+ #include <ATen/ops/_foreach_zero_compositeexplicitautograd_dispatch.h>
109
+ #include <ATen/ops/_functional_assert_scalar_compositeexplicitautograd_dispatch.h>
110
+ #include <ATen/ops/_functional_sym_constrain_range_compositeexplicitautograd_dispatch.h>
111
+ #include <ATen/ops/_functional_sym_constrain_range_for_size_compositeexplicitautograd_dispatch.h>
112
+ #include <ATen/ops/_fused_adagrad_compositeexplicitautograd_dispatch.h>
113
+ #include <ATen/ops/_fused_adam_compositeexplicitautograd_dispatch.h>
114
+ #include <ATen/ops/_fused_adamw_compositeexplicitautograd_dispatch.h>
115
+ #include <ATen/ops/_fused_dropout_compositeexplicitautograd_dispatch.h>
116
+ #include <ATen/ops/_fused_moving_avg_obs_fq_helper_compositeexplicitautograd_dispatch.h>
117
+ #include <ATen/ops/_fused_sgd_compositeexplicitautograd_dispatch.h>
118
+ #include <ATen/ops/_fw_primal_compositeexplicitautograd_dispatch.h>
119
+ #include <ATen/ops/_fw_primal_copy_compositeexplicitautograd_dispatch.h>
120
+ #include <ATen/ops/_grid_sampler_2d_cpu_fallback_compositeexplicitautograd_dispatch.h>
121
+ #include <ATen/ops/_grouped_mm_compositeexplicitautograd_dispatch.h>
122
+ #include <ATen/ops/_has_same_storage_numel_compositeexplicitautograd_dispatch.h>
123
+ #include <ATen/ops/_histogramdd_bin_edges_compositeexplicitautograd_dispatch.h>
124
+ #include <ATen/ops/_histogramdd_from_bin_cts_compositeexplicitautograd_dispatch.h>
125
+ #include <ATen/ops/_histogramdd_from_bin_tensors_compositeexplicitautograd_dispatch.h>
126
+ #include <ATen/ops/_index_put_impl_compositeexplicitautograd_dispatch.h>
127
+ #include <ATen/ops/_indices_copy_compositeexplicitautograd_dispatch.h>
128
+ #include <ATen/ops/_is_all_true_compositeexplicitautograd_dispatch.h>
129
+ #include <ATen/ops/_is_any_true_compositeexplicitautograd_dispatch.h>
130
+ #include <ATen/ops/_lazy_clone_compositeexplicitautograd_dispatch.h>
131
+ #include <ATen/ops/_linalg_check_errors_compositeexplicitautograd_dispatch.h>
132
+ #include <ATen/ops/_lstm_mps_compositeexplicitautograd_dispatch.h>
133
+ #include <ATen/ops/_make_dual_compositeexplicitautograd_dispatch.h>
134
+ #include <ATen/ops/_make_dual_copy_compositeexplicitautograd_dispatch.h>
135
+ #include <ATen/ops/_make_per_channel_quantized_tensor_compositeexplicitautograd_dispatch.h>
136
+ #include <ATen/ops/_make_per_tensor_quantized_tensor_compositeexplicitautograd_dispatch.h>
137
+ #include <ATen/ops/_masked_scale_compositeexplicitautograd_dispatch.h>
138
+ #include <ATen/ops/_masked_softmax_compositeexplicitautograd_dispatch.h>
139
+ #include <ATen/ops/_masked_softmax_backward_compositeexplicitautograd_dispatch.h>
140
+ #include <ATen/ops/_mkldnn_reshape_compositeexplicitautograd_dispatch.h>
141
+ #include <ATen/ops/_mkldnn_transpose_compositeexplicitautograd_dispatch.h>
142
+ #include <ATen/ops/_mps_convolution_compositeexplicitautograd_dispatch.h>
143
+ #include <ATen/ops/_mps_convolution_transpose_compositeexplicitautograd_dispatch.h>
144
+ #include <ATen/ops/_native_batch_norm_legit_compositeexplicitautograd_dispatch.h>
145
+ #include <ATen/ops/_native_batch_norm_legit_no_training_compositeexplicitautograd_dispatch.h>
146
+ #include <ATen/ops/_native_multi_head_attention_compositeexplicitautograd_dispatch.h>
147
+ #include <ATen/ops/_neg_view_compositeexplicitautograd_dispatch.h>
148
+ #include <ATen/ops/_neg_view_copy_compositeexplicitautograd_dispatch.h>
149
+ #include <ATen/ops/_nested_from_padded_compositeexplicitautograd_dispatch.h>
150
+ #include <ATen/ops/_nested_from_padded_and_nested_example_compositeexplicitautograd_dispatch.h>
151
+ #include <ATen/ops/_nested_get_values_copy_compositeexplicitautograd_dispatch.h>
152
+ #include <ATen/ops/_nested_tensor_from_mask_compositeexplicitautograd_dispatch.h>
153
+ #include <ATen/ops/_nested_tensor_from_tensor_list_compositeexplicitautograd_dispatch.h>
154
+ #include <ATen/ops/_nested_tensor_size_compositeexplicitautograd_dispatch.h>
155
+ #include <ATen/ops/_nested_tensor_storage_offsets_compositeexplicitautograd_dispatch.h>
156
+ #include <ATen/ops/_nested_tensor_strides_compositeexplicitautograd_dispatch.h>
157
+ #include <ATen/ops/_nested_view_from_buffer_copy_compositeexplicitautograd_dispatch.h>
158
+ #include <ATen/ops/_nested_view_from_jagged_copy_compositeexplicitautograd_dispatch.h>
159
+ #include <ATen/ops/_new_zeros_with_same_feature_meta_compositeexplicitautograd_dispatch.h>
160
+ #include <ATen/ops/_nnpack_spatial_convolution_compositeexplicitautograd_dispatch.h>
161
+ #include <ATen/ops/_pack_padded_sequence_compositeexplicitautograd_dispatch.h>
162
+ #include <ATen/ops/_pdist_backward_compositeexplicitautograd_dispatch.h>
163
+ #include <ATen/ops/_pdist_forward_compositeexplicitautograd_dispatch.h>
164
+ #include <ATen/ops/_pin_memory_compositeexplicitautograd_dispatch.h>
165
+ #include <ATen/ops/_print_compositeexplicitautograd_dispatch.h>
166
+ #include <ATen/ops/_reshape_alias_copy_compositeexplicitautograd_dispatch.h>
167
+ #include <ATen/ops/_reshape_copy_compositeexplicitautograd_dispatch.h>
168
+ #include <ATen/ops/_resize_output_compositeexplicitautograd_dispatch.h>
169
+ #include <ATen/ops/_safe_softmax_compositeexplicitautograd_dispatch.h>
170
+ #include <ATen/ops/_sample_dirichlet_compositeexplicitautograd_dispatch.h>
171
+ #include <ATen/ops/_scaled_dot_product_fused_attention_overrideable_compositeexplicitautograd_dispatch.h>
172
+ #include <ATen/ops/_scaled_dot_product_fused_attention_overrideable_backward_compositeexplicitautograd_dispatch.h>
173
+ #include <ATen/ops/_segment_reduce_backward_compositeexplicitautograd_dispatch.h>
174
+ #include <ATen/ops/_slow_conv2d_backward_compositeexplicitautograd_dispatch.h>
175
+ #include <ATen/ops/_sparse_addmm_compositeexplicitautograd_dispatch.h>
176
+ #include <ATen/ops/_sparse_broadcast_to_copy_compositeexplicitautograd_dispatch.h>
177
+ #include <ATen/ops/_sparse_compressed_tensor_with_dims_compositeexplicitautograd_dispatch.h>
178
+ #include <ATen/ops/_sparse_coo_tensor_with_dims_compositeexplicitautograd_dispatch.h>
179
+ #include <ATen/ops/_sparse_coo_tensor_with_dims_and_tensors_compositeexplicitautograd_dispatch.h>
180
+ #include <ATen/ops/_sparse_csr_prod_compositeexplicitautograd_dispatch.h>
181
+ #include <ATen/ops/_sparse_csr_sum_compositeexplicitautograd_dispatch.h>
182
+ #include <ATen/ops/_sparse_log_softmax_compositeexplicitautograd_dispatch.h>
183
+ #include <ATen/ops/_sparse_log_softmax_backward_data_compositeexplicitautograd_dispatch.h>
184
+ #include <ATen/ops/_sparse_mask_projection_compositeexplicitautograd_dispatch.h>
185
+ #include <ATen/ops/_sparse_softmax_compositeexplicitautograd_dispatch.h>
186
+ #include <ATen/ops/_sparse_softmax_backward_data_compositeexplicitautograd_dispatch.h>
187
+ #include <ATen/ops/_sparse_sparse_matmul_compositeexplicitautograd_dispatch.h>
188
+ #include <ATen/ops/_sparse_sum_compositeexplicitautograd_dispatch.h>
189
+ #include <ATen/ops/_sparse_sum_backward_compositeexplicitautograd_dispatch.h>
190
+ #include <ATen/ops/_spdiags_compositeexplicitautograd_dispatch.h>
191
+ #include <ATen/ops/_stack_compositeexplicitautograd_dispatch.h>
192
+ #include <ATen/ops/_standard_gamma_compositeexplicitautograd_dispatch.h>
193
+ #include <ATen/ops/_standard_gamma_grad_compositeexplicitautograd_dispatch.h>
194
+ #include <ATen/ops/_test_autograd_multiple_dispatch_compositeexplicitautograd_dispatch.h>
195
+ #include <ATen/ops/_test_autograd_multiple_dispatch_view_compositeexplicitautograd_dispatch.h>
196
+ #include <ATen/ops/_test_autograd_multiple_dispatch_view_copy_compositeexplicitautograd_dispatch.h>
197
+ #include <ATen/ops/_test_functorch_fallback_compositeexplicitautograd_dispatch.h>
198
+ #include <ATen/ops/_test_optional_filled_intlist_compositeexplicitautograd_dispatch.h>
199
+ #include <ATen/ops/_test_optional_floatlist_compositeexplicitautograd_dispatch.h>
200
+ #include <ATen/ops/_test_optional_intlist_compositeexplicitautograd_dispatch.h>
201
+ #include <ATen/ops/_test_parallel_materialize_compositeexplicitautograd_dispatch.h>
202
+ #include <ATen/ops/_test_warn_in_autograd_compositeexplicitautograd_dispatch.h>
203
+ #include <ATen/ops/_thnn_fused_gru_cell_compositeexplicitautograd_dispatch.h>
204
+ #include <ATen/ops/_thnn_fused_gru_cell_backward_compositeexplicitautograd_dispatch.h>
205
+ #include <ATen/ops/_thnn_fused_lstm_cell_compositeexplicitautograd_dispatch.h>
206
+ #include <ATen/ops/_thnn_fused_lstm_cell_backward_impl_compositeexplicitautograd_dispatch.h>
207
+ #include <ATen/ops/_to_copy_compositeexplicitautograd_dispatch.h>
208
+ #include <ATen/ops/_to_dense_compositeexplicitautograd_dispatch.h>
209
+ #include <ATen/ops/_to_sparse_compositeexplicitautograd_dispatch.h>
210
+ #include <ATen/ops/_to_sparse_bsc_compositeexplicitautograd_dispatch.h>
211
+ #include <ATen/ops/_to_sparse_bsr_compositeexplicitautograd_dispatch.h>
212
+ #include <ATen/ops/_to_sparse_csc_compositeexplicitautograd_dispatch.h>
213
+ #include <ATen/ops/_to_sparse_csr_compositeexplicitautograd_dispatch.h>
214
+ #include <ATen/ops/_transform_bias_rescale_qkv_compositeexplicitautograd_dispatch.h>
215
+ #include <ATen/ops/_transformer_encoder_layer_fwd_compositeexplicitautograd_dispatch.h>
216
+ #include <ATen/ops/_trilinear_compositeexplicitautograd_dispatch.h>
217
+ #include <ATen/ops/_triton_multi_head_attention_compositeexplicitautograd_dispatch.h>
218
+ #include <ATen/ops/_triton_scaled_dot_attention_compositeexplicitautograd_dispatch.h>
219
+ #include <ATen/ops/_unique_compositeexplicitautograd_dispatch.h>
220
+ #include <ATen/ops/_unique2_compositeexplicitautograd_dispatch.h>
221
+ #include <ATen/ops/_unsafe_index_compositeexplicitautograd_dispatch.h>
222
+ #include <ATen/ops/_unsafe_index_put_compositeexplicitautograd_dispatch.h>
223
+ #include <ATen/ops/_unsafe_masked_index_compositeexplicitautograd_dispatch.h>
224
+ #include <ATen/ops/_unsafe_masked_index_put_accumulate_compositeexplicitautograd_dispatch.h>
225
+ #include <ATen/ops/_unsafe_view_compositeexplicitautograd_dispatch.h>
226
+ #include <ATen/ops/_values_copy_compositeexplicitautograd_dispatch.h>
227
+ #include <ATen/ops/_weight_norm_interface_compositeexplicitautograd_dispatch.h>
228
+ #include <ATen/ops/_weight_norm_interface_backward_compositeexplicitautograd_dispatch.h>
229
+ #include <ATen/ops/abs_compositeexplicitautograd_dispatch.h>
230
+ #include <ATen/ops/adaptive_avg_pool1d_compositeexplicitautograd_dispatch.h>
231
+ #include <ATen/ops/add_compositeexplicitautograd_dispatch.h>
232
+ #include <ATen/ops/addr_compositeexplicitautograd_dispatch.h>
233
+ #include <ATen/ops/affine_grid_generator_compositeexplicitautograd_dispatch.h>
234
+ #include <ATen/ops/alias_compositeexplicitautograd_dispatch.h>
235
+ #include <ATen/ops/alias_copy_compositeexplicitautograd_dispatch.h>
236
+ #include <ATen/ops/all_compositeexplicitautograd_dispatch.h>
237
+ #include <ATen/ops/allclose_compositeexplicitautograd_dispatch.h>
238
+ #include <ATen/ops/any_compositeexplicitautograd_dispatch.h>
239
+ #include <ATen/ops/arange_compositeexplicitautograd_dispatch.h>
240
+ #include <ATen/ops/as_strided_copy_compositeexplicitautograd_dispatch.h>
241
+ #include <ATen/ops/as_strided_scatter_compositeexplicitautograd_dispatch.h>
242
+ #include <ATen/ops/avg_pool1d_compositeexplicitautograd_dispatch.h>
243
+ #include <ATen/ops/bartlett_window_compositeexplicitautograd_dispatch.h>
244
+ #include <ATen/ops/batch_norm_backward_elemt_compositeexplicitautograd_dispatch.h>
245
+ #include <ATen/ops/batch_norm_backward_reduce_compositeexplicitautograd_dispatch.h>
246
+ #include <ATen/ops/batch_norm_gather_stats_compositeexplicitautograd_dispatch.h>
247
+ #include <ATen/ops/batch_norm_gather_stats_with_counts_compositeexplicitautograd_dispatch.h>
248
+ #include <ATen/ops/batch_norm_stats_compositeexplicitautograd_dispatch.h>
249
+ #include <ATen/ops/batch_norm_update_stats_compositeexplicitautograd_dispatch.h>
250
+ #include <ATen/ops/bernoulli_compositeexplicitautograd_dispatch.h>
251
+ #include <ATen/ops/binary_cross_entropy_with_logits_compositeexplicitautograd_dispatch.h>
252
+ #include <ATen/ops/bincount_compositeexplicitautograd_dispatch.h>
253
+ #include <ATen/ops/binomial_compositeexplicitautograd_dispatch.h>
254
+ #include <ATen/ops/bitwise_and_compositeexplicitautograd_dispatch.h>
255
+ #include <ATen/ops/bitwise_left_shift_compositeexplicitautograd_dispatch.h>
256
+ #include <ATen/ops/bitwise_or_compositeexplicitautograd_dispatch.h>
257
+ #include <ATen/ops/bitwise_right_shift_compositeexplicitautograd_dispatch.h>
258
+ #include <ATen/ops/bitwise_xor_compositeexplicitautograd_dispatch.h>
259
+ #include <ATen/ops/blackman_window_compositeexplicitautograd_dispatch.h>
260
+ #include <ATen/ops/block_diag_compositeexplicitautograd_dispatch.h>
261
+ #include <ATen/ops/bucketize_compositeexplicitautograd_dispatch.h>
262
+ #include <ATen/ops/cauchy_compositeexplicitautograd_dispatch.h>
263
+ #include <ATen/ops/ccol_indices_compositeexplicitautograd_dispatch.h>
264
+ #include <ATen/ops/ccol_indices_copy_compositeexplicitautograd_dispatch.h>
265
+ #include <ATen/ops/celu_compositeexplicitautograd_dispatch.h>
266
+ #include <ATen/ops/channel_shuffle_compositeexplicitautograd_dispatch.h>
267
+ #include <ATen/ops/cholesky_solve_compositeexplicitautograd_dispatch.h>
268
+ #include <ATen/ops/clone_compositeexplicitautograd_dispatch.h>
269
+ #include <ATen/ops/col_indices_compositeexplicitautograd_dispatch.h>
270
+ #include <ATen/ops/col_indices_copy_compositeexplicitautograd_dispatch.h>
271
+ #include <ATen/ops/complex_compositeexplicitautograd_dispatch.h>
272
+ #include <ATen/ops/conj_physical_compositeexplicitautograd_dispatch.h>
273
+ #include <ATen/ops/constant_pad_nd_compositeexplicitautograd_dispatch.h>
274
+ #include <ATen/ops/conv_depthwise3d_compositeexplicitautograd_dispatch.h>
275
+ #include <ATen/ops/conv_tbc_compositeexplicitautograd_dispatch.h>
276
+ #include <ATen/ops/convolution_compositeexplicitautograd_dispatch.h>
277
+ #include <ATen/ops/convolution_backward_compositeexplicitautograd_dispatch.h>
278
+ #include <ATen/ops/convolution_backward_overrideable_compositeexplicitautograd_dispatch.h>
279
+ #include <ATen/ops/convolution_overrideable_compositeexplicitautograd_dispatch.h>
280
+ #include <ATen/ops/copy_compositeexplicitautograd_dispatch.h>
281
+ #include <ATen/ops/copy_sparse_to_sparse_compositeexplicitautograd_dispatch.h>
282
+ #include <ATen/ops/copysign_compositeexplicitautograd_dispatch.h>
283
+ #include <ATen/ops/count_nonzero_compositeexplicitautograd_dispatch.h>
284
+ #include <ATen/ops/crow_indices_compositeexplicitautograd_dispatch.h>
285
+ #include <ATen/ops/crow_indices_copy_compositeexplicitautograd_dispatch.h>
286
+ #include <ATen/ops/cudnn_affine_grid_generator_compositeexplicitautograd_dispatch.h>
287
+ #include <ATen/ops/cudnn_affine_grid_generator_backward_compositeexplicitautograd_dispatch.h>
288
+ #include <ATen/ops/cudnn_batch_norm_backward_compositeexplicitautograd_dispatch.h>
289
+ #include <ATen/ops/cudnn_convolution_add_relu_compositeexplicitautograd_dispatch.h>
290
+ #include <ATen/ops/cudnn_convolution_relu_compositeexplicitautograd_dispatch.h>
291
+ #include <ATen/ops/cudnn_convolution_transpose_compositeexplicitautograd_dispatch.h>
292
+ #include <ATen/ops/cudnn_grid_sampler_compositeexplicitautograd_dispatch.h>
293
+ #include <ATen/ops/cudnn_grid_sampler_backward_compositeexplicitautograd_dispatch.h>
294
+ #include <ATen/ops/cummax_compositeexplicitautograd_dispatch.h>
295
+ #include <ATen/ops/cummin_compositeexplicitautograd_dispatch.h>
296
+ #include <ATen/ops/deg2rad_compositeexplicitautograd_dispatch.h>
297
+ #include <ATen/ops/dense_dim_compositeexplicitautograd_dispatch.h>
298
+ #include <ATen/ops/dequantize_compositeexplicitautograd_dispatch.h>
299
+ #include <ATen/ops/detach_compositeexplicitautograd_dispatch.h>
300
+ #include <ATen/ops/detach_copy_compositeexplicitautograd_dispatch.h>
301
+ #include <ATen/ops/diag_embed_compositeexplicitautograd_dispatch.h>
302
+ #include <ATen/ops/diagonal_compositeexplicitautograd_dispatch.h>
303
+ #include <ATen/ops/diagonal_backward_compositeexplicitautograd_dispatch.h>
304
+ #include <ATen/ops/diagonal_copy_compositeexplicitautograd_dispatch.h>
305
+ #include <ATen/ops/diagonal_scatter_compositeexplicitautograd_dispatch.h>
306
+ #include <ATen/ops/dist_compositeexplicitautograd_dispatch.h>
307
+ #include <ATen/ops/div_compositeexplicitautograd_dispatch.h>
308
+ #include <ATen/ops/dot_compositeexplicitautograd_dispatch.h>
309
+ #include <ATen/ops/embedding_compositeexplicitautograd_dispatch.h>
310
+ #include <ATen/ops/embedding_dense_backward_compositeexplicitautograd_dispatch.h>
311
+ #include <ATen/ops/embedding_renorm_compositeexplicitautograd_dispatch.h>
312
+ #include <ATen/ops/empty_compositeexplicitautograd_dispatch.h>
313
+ #include <ATen/ops/empty_like_compositeexplicitautograd_dispatch.h>
314
+ #include <ATen/ops/empty_permuted_compositeexplicitautograd_dispatch.h>
315
+ #include <ATen/ops/empty_quantized_compositeexplicitautograd_dispatch.h>
316
+ #include <ATen/ops/empty_strided_compositeexplicitautograd_dispatch.h>
317
+ #include <ATen/ops/expand_compositeexplicitautograd_dispatch.h>
318
+ #include <ATen/ops/expand_copy_compositeexplicitautograd_dispatch.h>
319
+ #include <ATen/ops/exponential_compositeexplicitautograd_dispatch.h>
320
+ #include <ATen/ops/eye_compositeexplicitautograd_dispatch.h>
321
+ #include <ATen/ops/fake_quantize_per_channel_affine_cachemask_compositeexplicitautograd_dispatch.h>
322
+ #include <ATen/ops/fake_quantize_per_tensor_affine_cachemask_compositeexplicitautograd_dispatch.h>
323
+ #include <ATen/ops/fft_fftfreq_compositeexplicitautograd_dispatch.h>
324
+ #include <ATen/ops/fft_rfftfreq_compositeexplicitautograd_dispatch.h>
325
+ #include <ATen/ops/fill_compositeexplicitautograd_dispatch.h>
326
+ #include <ATen/ops/flip_compositeexplicitautograd_dispatch.h>
327
+ #include <ATen/ops/floor_divide_compositeexplicitautograd_dispatch.h>
328
+ #include <ATen/ops/fmod_compositeexplicitautograd_dispatch.h>
329
+ #include <ATen/ops/frexp_compositeexplicitautograd_dispatch.h>
330
+ #include <ATen/ops/from_file_compositeexplicitautograd_dispatch.h>
331
+ #include <ATen/ops/full_compositeexplicitautograd_dispatch.h>
332
+ #include <ATen/ops/full_like_compositeexplicitautograd_dispatch.h>
333
+ #include <ATen/ops/geometric_compositeexplicitautograd_dispatch.h>
334
+ #include <ATen/ops/glu_backward_jvp_compositeexplicitautograd_dispatch.h>
335
+ #include <ATen/ops/glu_jvp_compositeexplicitautograd_dispatch.h>
336
+ #include <ATen/ops/grid_sampler_2d_compositeexplicitautograd_dispatch.h>
337
+ #include <ATen/ops/grid_sampler_2d_backward_compositeexplicitautograd_dispatch.h>
338
+ #include <ATen/ops/grid_sampler_3d_compositeexplicitautograd_dispatch.h>
339
+ #include <ATen/ops/grid_sampler_3d_backward_compositeexplicitautograd_dispatch.h>
340
+ #include <ATen/ops/hamming_window_compositeexplicitautograd_dispatch.h>
341
+ #include <ATen/ops/hann_window_compositeexplicitautograd_dispatch.h>
342
+ #include <ATen/ops/hardswish_backward_compositeexplicitautograd_dispatch.h>
343
+ #include <ATen/ops/huber_loss_backward_compositeexplicitautograd_dispatch.h>
344
+ #include <ATen/ops/index_fill_compositeexplicitautograd_dispatch.h>
345
+ #include <ATen/ops/index_put_compositeexplicitautograd_dispatch.h>
346
+ #include <ATen/ops/indices_compositeexplicitautograd_dispatch.h>
347
+ #include <ATen/ops/indices_copy_compositeexplicitautograd_dispatch.h>
348
+ #include <ATen/ops/int_repr_compositeexplicitautograd_dispatch.h>
349
+ #include <ATen/ops/is_coalesced_compositeexplicitautograd_dispatch.h>
350
+ #include <ATen/ops/is_pinned_compositeexplicitautograd_dispatch.h>
351
+ #include <ATen/ops/is_same_size_compositeexplicitautograd_dispatch.h>
352
+ #include <ATen/ops/isinf_compositeexplicitautograd_dispatch.h>
353
+ #include <ATen/ops/isnan_compositeexplicitautograd_dispatch.h>
354
+ #include <ATen/ops/kaiser_window_compositeexplicitautograd_dispatch.h>
355
+ #include <ATen/ops/kthvalue_compositeexplicitautograd_dispatch.h>
356
+ #include <ATen/ops/lift_compositeexplicitautograd_dispatch.h>
357
+ #include <ATen/ops/lift_fresh_compositeexplicitautograd_dispatch.h>
358
+ #include <ATen/ops/lift_fresh_copy_compositeexplicitautograd_dispatch.h>
359
+ #include <ATen/ops/linalg_lstsq_compositeexplicitautograd_dispatch.h>
360
+ #include <ATen/ops/linalg_matrix_exp_compositeexplicitautograd_dispatch.h>
361
+ #include <ATen/ops/linalg_pinv_compositeexplicitautograd_dispatch.h>
362
+ #include <ATen/ops/linear_compositeexplicitautograd_dispatch.h>
363
+ #include <ATen/ops/linear_backward_compositeexplicitautograd_dispatch.h>
364
+ #include <ATen/ops/linspace_compositeexplicitautograd_dispatch.h>
365
+ #include <ATen/ops/log_normal_compositeexplicitautograd_dispatch.h>
366
+ #include <ATen/ops/log_softmax_compositeexplicitautograd_dispatch.h>
367
+ #include <ATen/ops/logcumsumexp_compositeexplicitautograd_dispatch.h>
368
+ #include <ATen/ops/logical_and_compositeexplicitautograd_dispatch.h>
369
+ #include <ATen/ops/logical_not_compositeexplicitautograd_dispatch.h>
370
+ #include <ATen/ops/logical_or_compositeexplicitautograd_dispatch.h>
371
+ #include <ATen/ops/logical_xor_compositeexplicitautograd_dispatch.h>
372
+ #include <ATen/ops/logspace_compositeexplicitautograd_dispatch.h>
373
+ #include <ATen/ops/logsumexp_compositeexplicitautograd_dispatch.h>
374
+ #include <ATen/ops/lshift_compositeexplicitautograd_dispatch.h>
375
+ #include <ATen/ops/lstm_mps_backward_compositeexplicitautograd_dispatch.h>
376
+ #include <ATen/ops/masked_fill_compositeexplicitautograd_dispatch.h>
377
+ #include <ATen/ops/masked_scatter_compositeexplicitautograd_dispatch.h>
378
+ #include <ATen/ops/masked_scatter_backward_compositeexplicitautograd_dispatch.h>
379
+ #include <ATen/ops/matmul_backward_compositeexplicitautograd_dispatch.h>
380
+ #include <ATen/ops/max_pool2d_backward_compositeexplicitautograd_dispatch.h>
381
+ #include <ATen/ops/mean_compositeexplicitautograd_dispatch.h>
382
+ #include <ATen/ops/median_compositeexplicitautograd_dispatch.h>
383
+ #include <ATen/ops/miopen_batch_norm_compositeexplicitautograd_dispatch.h>
384
+ #include <ATen/ops/miopen_batch_norm_backward_compositeexplicitautograd_dispatch.h>
385
+ #include <ATen/ops/miopen_convolution_compositeexplicitautograd_dispatch.h>
386
+ #include <ATen/ops/miopen_convolution_transpose_compositeexplicitautograd_dispatch.h>
387
+ #include <ATen/ops/miopen_depthwise_convolution_compositeexplicitautograd_dispatch.h>
388
+ #include <ATen/ops/miopen_rnn_compositeexplicitautograd_dispatch.h>
389
+ #include <ATen/ops/miopen_rnn_backward_compositeexplicitautograd_dispatch.h>
390
+ #include <ATen/ops/mkldnn_adaptive_avg_pool2d_backward_compositeexplicitautograd_dispatch.h>
391
+ #include <ATen/ops/mkldnn_convolution_compositeexplicitautograd_dispatch.h>
392
+ #include <ATen/ops/mkldnn_linear_compositeexplicitautograd_dispatch.h>
393
+ #include <ATen/ops/mkldnn_linear_backward_compositeexplicitautograd_dispatch.h>
394
+ #include <ATen/ops/mkldnn_linear_backward_input_compositeexplicitautograd_dispatch.h>
395
+ #include <ATen/ops/mkldnn_linear_backward_weights_compositeexplicitautograd_dispatch.h>
396
+ #include <ATen/ops/mkldnn_max_pool2d_compositeexplicitautograd_dispatch.h>
397
+ #include <ATen/ops/mkldnn_max_pool2d_backward_compositeexplicitautograd_dispatch.h>
398
+ #include <ATen/ops/mkldnn_max_pool3d_compositeexplicitautograd_dispatch.h>
399
+ #include <ATen/ops/mkldnn_max_pool3d_backward_compositeexplicitautograd_dispatch.h>
400
+ #include <ATen/ops/mkldnn_reorder_conv2d_weight_compositeexplicitautograd_dispatch.h>
401
+ #include <ATen/ops/mkldnn_reorder_conv3d_weight_compositeexplicitautograd_dispatch.h>
402
+ #include <ATen/ops/mkldnn_rnn_layer_compositeexplicitautograd_dispatch.h>
403
+ #include <ATen/ops/mkldnn_rnn_layer_backward_compositeexplicitautograd_dispatch.h>
404
+ #include <ATen/ops/mode_compositeexplicitautograd_dispatch.h>
405
+ #include <ATen/ops/mps_convolution_backward_compositeexplicitautograd_dispatch.h>
406
+ #include <ATen/ops/mps_convolution_transpose_backward_compositeexplicitautograd_dispatch.h>
407
+ #include <ATen/ops/mul_compositeexplicitautograd_dispatch.h>
408
+ #include <ATen/ops/mv_compositeexplicitautograd_dispatch.h>
409
+ #include <ATen/ops/mvlgamma_compositeexplicitautograd_dispatch.h>
410
+ #include <ATen/ops/nan_to_num_compositeexplicitautograd_dispatch.h>
411
+ #include <ATen/ops/nanmedian_compositeexplicitautograd_dispatch.h>
412
+ #include <ATen/ops/native_batch_norm_backward_compositeexplicitautograd_dispatch.h>
413
+ #include <ATen/ops/native_dropout_compositeexplicitautograd_dispatch.h>
414
+ #include <ATen/ops/native_dropout_backward_compositeexplicitautograd_dispatch.h>
415
+ #include <ATen/ops/native_group_norm_compositeexplicitautograd_dispatch.h>
416
+ #include <ATen/ops/native_group_norm_backward_compositeexplicitautograd_dispatch.h>
417
+ #include <ATen/ops/native_layer_norm_compositeexplicitautograd_dispatch.h>
418
+ #include <ATen/ops/native_layer_norm_backward_compositeexplicitautograd_dispatch.h>
419
+ #include <ATen/ops/native_norm_compositeexplicitautograd_dispatch.h>
420
+ #include <ATen/ops/new_empty_compositeexplicitautograd_dispatch.h>
421
+ #include <ATen/ops/new_empty_strided_compositeexplicitautograd_dispatch.h>
422
+ #include <ATen/ops/new_full_compositeexplicitautograd_dispatch.h>
423
+ #include <ATen/ops/new_ones_compositeexplicitautograd_dispatch.h>
424
+ #include <ATen/ops/new_zeros_compositeexplicitautograd_dispatch.h>
425
+ #include <ATen/ops/norm_compositeexplicitautograd_dispatch.h>
426
+ #include <ATen/ops/normal_compositeexplicitautograd_dispatch.h>
427
+ #include <ATen/ops/ones_compositeexplicitautograd_dispatch.h>
428
+ #include <ATen/ops/ones_like_compositeexplicitautograd_dispatch.h>
429
+ #include <ATen/ops/permute_compositeexplicitautograd_dispatch.h>
430
+ #include <ATen/ops/permute_copy_compositeexplicitautograd_dispatch.h>
431
+ #include <ATen/ops/pixel_shuffle_compositeexplicitautograd_dispatch.h>
432
+ #include <ATen/ops/pixel_unshuffle_compositeexplicitautograd_dispatch.h>
433
+ #include <ATen/ops/poisson_compositeexplicitautograd_dispatch.h>
434
+ #include <ATen/ops/polar_compositeexplicitautograd_dispatch.h>
435
+ #include <ATen/ops/polygamma_compositeexplicitautograd_dispatch.h>
436
+ #include <ATen/ops/prod_compositeexplicitautograd_dispatch.h>
437
+ #include <ATen/ops/put_compositeexplicitautograd_dispatch.h>
438
+ #include <ATen/ops/q_per_channel_scales_compositeexplicitautograd_dispatch.h>
439
+ #include <ATen/ops/q_per_channel_zero_points_compositeexplicitautograd_dispatch.h>
440
+ #include <ATen/ops/quantize_per_channel_compositeexplicitautograd_dispatch.h>
441
+ #include <ATen/ops/quantize_per_tensor_compositeexplicitautograd_dispatch.h>
442
+ #include <ATen/ops/quantize_per_tensor_dynamic_compositeexplicitautograd_dispatch.h>
443
+ #include <ATen/ops/quantized_batch_norm_compositeexplicitautograd_dispatch.h>
444
+ #include <ATen/ops/quantized_max_pool1d_compositeexplicitautograd_dispatch.h>
445
+ #include <ATen/ops/quantized_max_pool2d_compositeexplicitautograd_dispatch.h>
446
+ #include <ATen/ops/quantized_max_pool3d_compositeexplicitautograd_dispatch.h>
447
+ #include <ATen/ops/rad2deg_compositeexplicitautograd_dispatch.h>
448
+ #include <ATen/ops/rand_compositeexplicitautograd_dispatch.h>
449
+ #include <ATen/ops/rand_like_compositeexplicitautograd_dispatch.h>
450
+ #include <ATen/ops/randint_compositeexplicitautograd_dispatch.h>
451
+ #include <ATen/ops/randint_like_compositeexplicitautograd_dispatch.h>
452
+ #include <ATen/ops/randn_compositeexplicitautograd_dispatch.h>
453
+ #include <ATen/ops/randn_like_compositeexplicitautograd_dispatch.h>
454
+ #include <ATen/ops/random_compositeexplicitautograd_dispatch.h>
455
+ #include <ATen/ops/randperm_compositeexplicitautograd_dispatch.h>
456
+ #include <ATen/ops/range_compositeexplicitautograd_dispatch.h>
457
+ #include <ATen/ops/relu_compositeexplicitautograd_dispatch.h>
458
+ #include <ATen/ops/remainder_compositeexplicitautograd_dispatch.h>
459
+ #include <ATen/ops/repeat_compositeexplicitautograd_dispatch.h>
460
+ #include <ATen/ops/repeat_interleave_compositeexplicitautograd_dispatch.h>
461
+ #include <ATen/ops/resize_compositeexplicitautograd_dispatch.h>
462
+ #include <ATen/ops/resize_as_compositeexplicitautograd_dispatch.h>
463
+ #include <ATen/ops/resize_as_sparse_compositeexplicitautograd_dispatch.h>
464
+ #include <ATen/ops/roll_compositeexplicitautograd_dispatch.h>
465
+ #include <ATen/ops/rot90_compositeexplicitautograd_dispatch.h>
466
+ #include <ATen/ops/row_indices_compositeexplicitautograd_dispatch.h>
467
+ #include <ATen/ops/row_indices_copy_compositeexplicitautograd_dispatch.h>
468
+ #include <ATen/ops/rrelu_with_noise_compositeexplicitautograd_dispatch.h>
469
+ #include <ATen/ops/rrelu_with_noise_backward_compositeexplicitautograd_dispatch.h>
470
+ #include <ATen/ops/rshift_compositeexplicitautograd_dispatch.h>
471
+ #include <ATen/ops/rsub_compositeexplicitautograd_dispatch.h>
472
+ #include <ATen/ops/scalar_tensor_compositeexplicitautograd_dispatch.h>
473
+ #include <ATen/ops/segment_reduce_compositeexplicitautograd_dispatch.h>
474
+ #include <ATen/ops/select_compositeexplicitautograd_dispatch.h>
475
+ #include <ATen/ops/select_backward_compositeexplicitautograd_dispatch.h>
476
+ #include <ATen/ops/select_copy_compositeexplicitautograd_dispatch.h>
477
+ #include <ATen/ops/select_scatter_compositeexplicitautograd_dispatch.h>
478
+ #include <ATen/ops/set_compositeexplicitautograd_dispatch.h>
479
+ #include <ATen/ops/slice_compositeexplicitautograd_dispatch.h>
480
+ #include <ATen/ops/slice_backward_compositeexplicitautograd_dispatch.h>
481
+ #include <ATen/ops/slice_copy_compositeexplicitautograd_dispatch.h>
482
+ #include <ATen/ops/slice_inverse_compositeexplicitautograd_dispatch.h>
483
+ #include <ATen/ops/slice_scatter_compositeexplicitautograd_dispatch.h>
484
+ #include <ATen/ops/slow_conv_dilated2d_compositeexplicitautograd_dispatch.h>
485
+ #include <ATen/ops/slow_conv_dilated3d_compositeexplicitautograd_dispatch.h>
486
+ #include <ATen/ops/smooth_l1_loss_backward_compositeexplicitautograd_dispatch.h>
487
+ #include <ATen/ops/soft_margin_loss_compositeexplicitautograd_dispatch.h>
488
+ #include <ATen/ops/soft_margin_loss_backward_compositeexplicitautograd_dispatch.h>
489
+ #include <ATen/ops/softmax_compositeexplicitautograd_dispatch.h>
490
+ #include <ATen/ops/sort_compositeexplicitautograd_dispatch.h>
491
+ #include <ATen/ops/sparse_compressed_tensor_compositeexplicitautograd_dispatch.h>
492
+ #include <ATen/ops/sparse_coo_tensor_compositeexplicitautograd_dispatch.h>
493
+ #include <ATen/ops/sparse_dim_compositeexplicitautograd_dispatch.h>
494
+ #include <ATen/ops/sparse_mask_compositeexplicitautograd_dispatch.h>
495
+ #include <ATen/ops/sparse_resize_compositeexplicitautograd_dispatch.h>
496
+ #include <ATen/ops/sparse_resize_and_clear_compositeexplicitautograd_dispatch.h>
497
+ #include <ATen/ops/special_chebyshev_polynomial_t_compositeexplicitautograd_dispatch.h>
498
+ #include <ATen/ops/special_chebyshev_polynomial_u_compositeexplicitautograd_dispatch.h>
499
+ #include <ATen/ops/special_chebyshev_polynomial_v_compositeexplicitautograd_dispatch.h>
500
+ #include <ATen/ops/special_chebyshev_polynomial_w_compositeexplicitautograd_dispatch.h>
501
+ #include <ATen/ops/special_hermite_polynomial_h_compositeexplicitautograd_dispatch.h>
502
+ #include <ATen/ops/special_hermite_polynomial_he_compositeexplicitautograd_dispatch.h>
503
+ #include <ATen/ops/special_laguerre_polynomial_l_compositeexplicitautograd_dispatch.h>
504
+ #include <ATen/ops/special_legendre_polynomial_p_compositeexplicitautograd_dispatch.h>
505
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_t_compositeexplicitautograd_dispatch.h>
506
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_u_compositeexplicitautograd_dispatch.h>
507
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_v_compositeexplicitautograd_dispatch.h>
508
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_w_compositeexplicitautograd_dispatch.h>
509
+ #include <ATen/ops/special_xlog1py_compositeexplicitautograd_dispatch.h>
510
+ #include <ATen/ops/special_zeta_compositeexplicitautograd_dispatch.h>
511
+ #include <ATen/ops/split_compositeexplicitautograd_dispatch.h>
512
+ #include <ATen/ops/split_copy_compositeexplicitautograd_dispatch.h>
513
+ #include <ATen/ops/split_with_sizes_compositeexplicitautograd_dispatch.h>
514
+ #include <ATen/ops/split_with_sizes_copy_compositeexplicitautograd_dispatch.h>
515
+ #include <ATen/ops/squeeze_compositeexplicitautograd_dispatch.h>
516
+ #include <ATen/ops/squeeze_copy_compositeexplicitautograd_dispatch.h>
517
+ #include <ATen/ops/stack_compositeexplicitautograd_dispatch.h>
518
+ #include <ATen/ops/std_mean_compositeexplicitautograd_dispatch.h>
519
+ #include <ATen/ops/sub_compositeexplicitautograd_dispatch.h>
520
+ #include <ATen/ops/sum_compositeexplicitautograd_dispatch.h>
521
+ #include <ATen/ops/sym_constrain_range_compositeexplicitautograd_dispatch.h>
522
+ #include <ATen/ops/sym_constrain_range_for_size_compositeexplicitautograd_dispatch.h>
523
+ #include <ATen/ops/t_compositeexplicitautograd_dispatch.h>
524
+ #include <ATen/ops/t_copy_compositeexplicitautograd_dispatch.h>
525
+ #include <ATen/ops/to_mkldnn_compositeexplicitautograd_dispatch.h>
526
+ #include <ATen/ops/to_padded_tensor_compositeexplicitautograd_dispatch.h>
527
+ #include <ATen/ops/trace_compositeexplicitautograd_dispatch.h>
528
+ #include <ATen/ops/transpose_compositeexplicitautograd_dispatch.h>
529
+ #include <ATen/ops/transpose_copy_compositeexplicitautograd_dispatch.h>
530
+ #include <ATen/ops/tril_indices_compositeexplicitautograd_dispatch.h>
531
+ #include <ATen/ops/triu_indices_compositeexplicitautograd_dispatch.h>
532
+ #include <ATen/ops/unbind_compositeexplicitautograd_dispatch.h>
533
+ #include <ATen/ops/unbind_copy_compositeexplicitautograd_dispatch.h>
534
+ #include <ATen/ops/unfold_backward_compositeexplicitautograd_dispatch.h>
535
+ #include <ATen/ops/unfold_copy_compositeexplicitautograd_dispatch.h>
536
+ #include <ATen/ops/uniform_compositeexplicitautograd_dispatch.h>
537
+ #include <ATen/ops/unique_consecutive_compositeexplicitautograd_dispatch.h>
538
+ #include <ATen/ops/unique_dim_compositeexplicitautograd_dispatch.h>
539
+ #include <ATen/ops/unique_dim_consecutive_compositeexplicitautograd_dispatch.h>
540
+ #include <ATen/ops/unsafe_split_compositeexplicitautograd_dispatch.h>
541
+ #include <ATen/ops/unsafe_split_with_sizes_compositeexplicitautograd_dispatch.h>
542
+ #include <ATen/ops/unsqueeze_compositeexplicitautograd_dispatch.h>
543
+ #include <ATen/ops/unsqueeze_copy_compositeexplicitautograd_dispatch.h>
544
+ #include <ATen/ops/upsample_bilinear2d_compositeexplicitautograd_dispatch.h>
545
+ #include <ATen/ops/upsample_nearest2d_compositeexplicitautograd_dispatch.h>
546
+ #include <ATen/ops/values_compositeexplicitautograd_dispatch.h>
547
+ #include <ATen/ops/values_copy_compositeexplicitautograd_dispatch.h>
548
+ #include <ATen/ops/var_mean_compositeexplicitautograd_dispatch.h>
549
+ #include <ATen/ops/vdot_compositeexplicitautograd_dispatch.h>
550
+ #include <ATen/ops/view_compositeexplicitautograd_dispatch.h>
551
+ #include <ATen/ops/view_as_complex_copy_compositeexplicitautograd_dispatch.h>
552
+ #include <ATen/ops/view_as_real_copy_compositeexplicitautograd_dispatch.h>
553
+ #include <ATen/ops/view_copy_compositeexplicitautograd_dispatch.h>
554
+ #include <ATen/ops/xlogy_compositeexplicitautograd_dispatch.h>
555
+ #include <ATen/ops/zero_compositeexplicitautograd_dispatch.h>
556
+ #include <ATen/ops/zeros_compositeexplicitautograd_dispatch.h>
557
+ #include <ATen/ops/zeros_like_compositeexplicitautograd_dispatch.h>
558
+
559
+
560
+
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeExplicitAutogradNonFunctionalFunctions.h ADDED
@@ -0,0 +1,29 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #include <ATen/core/TensorBody.h>
2
+
3
+ // TODO Undo all logic introduced for Note [Avoiding Include Cycles In Static Dispatch]
4
+ // Code introduced to avoid cyclic dependency in static dispatch is no longer
5
+ // needed as static dispatch logic is moved from TensorBody.h, which caused cycles in the first place,
6
+ // to Operators.cpp for supporting multiple backends with multiple kernels.
7
+ //
8
+ // Note [Avoiding Include Cycles In Static Dispatch]
9
+ // In order to avoid #include cycles in the static dispatch build, we've carefully split out
10
+ // the static function definition files into {DispatchKey}Functions.h and {DispatchKey}Functions_inl.h.
11
+ //
12
+ // Without this split, the include cycle looks like TensorBody.h -> CPUFunctions.h -> TensorBody.h.
13
+ // - TensorBody.h #includes CPUFunctions.h in the static dispatch build, because the tensor methods
14
+ // all need to call into the fastpath C++ API defined in CPUFunctions.h. The methods are also all
15
+ // directly inlined into TensorBody.h.
16
+ // - CPUFunctions.h #includes TensorBody.h because it contains function declarations for the entire C++ API,
17
+ // which include functions that have defaultable std::optional<Tensor> arguments.
18
+ // That requires knowing the full Tensor class definition.
19
+ //
20
+ // We break the cycle by doing the following:
21
+ // - Split out CPUFunction.h into two files: CPUFunctions.h and CPUFunctions_inl.h
22
+ // - CPUFunction.h is a dummy file that just includes the Tensor class and includes CPUFunctions_inl.,
23
+ // - CPUFunctions_inl.h includes everything else
24
+ // - (only in the static dispatch build) TensorBody.h makes sure to finish defining the Tensor class,
25
+ // and then it includes CPUFunctions_inl.h.
26
+ // - All other files that want the cpu fastpath functions can include CPUFunctions.h directly.
27
+ // - This also means that static dispatch build, CPUFunctions.h only needs to
28
+ // #include TensorBody.h, and it will automatically bring in CPUFunctions_inl.h.
29
+ #include <ATen/CompositeExplicitAutogradNonFunctionalFunctions_inl.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeExplicitAutogradNonFunctionalFunctions_inl.h ADDED
@@ -0,0 +1,324 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+ // @generated by torchgen/gen.py from DispatchKeyFunctions_inl.h
3
+
4
+ // NB: The implementing C++ file is RegisterDispatchKey.cpp
5
+
6
+ // The only #includes we need are for custom classes that have defaults in the C++ API
7
+ #include <c10/core/MemoryFormat.h>
8
+ #include <c10/core/Scalar.h>
9
+ #include <ATen/core/Reduction.h>
10
+
11
+ #if defined(AT_PER_OPERATOR_HEADERS) && defined(TORCH_ASSERT_ONLY_METHOD_OPERATORS)
12
+ #error This change adds a dependency on all pytorch operators, meaning the \
13
+ file will need to be re-compiled every time an operator is changed or added. \
14
+ Consider including a specific operator from \
15
+ <ATen/ops/{my_operator}_compositeexplicitautogradnonfunctional_dispatch.h>. \
16
+ See NOTE [TORCH_ASSERT_ONLY_METHOD_OPERATORS].
17
+ #endif
18
+
19
+ #include <ATen/ops/_addmm_activation_compositeexplicitautogradnonfunctional_dispatch.h>
20
+ #include <ATen/ops/_conj_copy_compositeexplicitautogradnonfunctional_dispatch.h>
21
+ #include <ATen/ops/_convert_indices_from_coo_to_csr_compositeexplicitautogradnonfunctional_dispatch.h>
22
+ #include <ATen/ops/_convert_indices_from_csr_to_coo_compositeexplicitautogradnonfunctional_dispatch.h>
23
+ #include <ATen/ops/_fw_primal_copy_compositeexplicitautogradnonfunctional_dispatch.h>
24
+ #include <ATen/ops/_indices_copy_compositeexplicitautogradnonfunctional_dispatch.h>
25
+ #include <ATen/ops/_linalg_det_compositeexplicitautogradnonfunctional_dispatch.h>
26
+ #include <ATen/ops/_linalg_eigh_compositeexplicitautogradnonfunctional_dispatch.h>
27
+ #include <ATen/ops/_linalg_slogdet_compositeexplicitautogradnonfunctional_dispatch.h>
28
+ #include <ATen/ops/_linalg_solve_ex_compositeexplicitautogradnonfunctional_dispatch.h>
29
+ #include <ATen/ops/_linalg_svd_compositeexplicitautogradnonfunctional_dispatch.h>
30
+ #include <ATen/ops/_log_softmax_compositeexplicitautogradnonfunctional_dispatch.h>
31
+ #include <ATen/ops/_log_softmax_backward_data_compositeexplicitautogradnonfunctional_dispatch.h>
32
+ #include <ATen/ops/_make_dual_copy_compositeexplicitautogradnonfunctional_dispatch.h>
33
+ #include <ATen/ops/_neg_view_copy_compositeexplicitautogradnonfunctional_dispatch.h>
34
+ #include <ATen/ops/_nested_get_values_copy_compositeexplicitautogradnonfunctional_dispatch.h>
35
+ #include <ATen/ops/_nested_view_from_buffer_copy_compositeexplicitautogradnonfunctional_dispatch.h>
36
+ #include <ATen/ops/_nested_view_from_jagged_copy_compositeexplicitautogradnonfunctional_dispatch.h>
37
+ #include <ATen/ops/_reshape_alias_copy_compositeexplicitautogradnonfunctional_dispatch.h>
38
+ #include <ATen/ops/_softmax_compositeexplicitautogradnonfunctional_dispatch.h>
39
+ #include <ATen/ops/_softmax_backward_data_compositeexplicitautogradnonfunctional_dispatch.h>
40
+ #include <ATen/ops/_sparse_broadcast_to_copy_compositeexplicitautogradnonfunctional_dispatch.h>
41
+ #include <ATen/ops/_test_autograd_multiple_dispatch_view_copy_compositeexplicitautogradnonfunctional_dispatch.h>
42
+ #include <ATen/ops/_trilinear_compositeexplicitautogradnonfunctional_dispatch.h>
43
+ #include <ATen/ops/_upsample_bicubic2d_aa_compositeexplicitautogradnonfunctional_dispatch.h>
44
+ #include <ATen/ops/_upsample_bicubic2d_aa_backward_compositeexplicitautogradnonfunctional_dispatch.h>
45
+ #include <ATen/ops/_upsample_bilinear2d_aa_compositeexplicitautogradnonfunctional_dispatch.h>
46
+ #include <ATen/ops/_upsample_bilinear2d_aa_backward_compositeexplicitautogradnonfunctional_dispatch.h>
47
+ #include <ATen/ops/_upsample_nearest_exact1d_compositeexplicitautogradnonfunctional_dispatch.h>
48
+ #include <ATen/ops/_upsample_nearest_exact1d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
49
+ #include <ATen/ops/_upsample_nearest_exact2d_compositeexplicitautogradnonfunctional_dispatch.h>
50
+ #include <ATen/ops/_upsample_nearest_exact2d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
51
+ #include <ATen/ops/_upsample_nearest_exact3d_compositeexplicitautogradnonfunctional_dispatch.h>
52
+ #include <ATen/ops/_upsample_nearest_exact3d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
53
+ #include <ATen/ops/_values_copy_compositeexplicitautogradnonfunctional_dispatch.h>
54
+ #include <ATen/ops/acos_compositeexplicitautogradnonfunctional_dispatch.h>
55
+ #include <ATen/ops/acosh_compositeexplicitautogradnonfunctional_dispatch.h>
56
+ #include <ATen/ops/adaptive_max_pool2d_compositeexplicitautogradnonfunctional_dispatch.h>
57
+ #include <ATen/ops/adaptive_max_pool2d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
58
+ #include <ATen/ops/adaptive_max_pool3d_compositeexplicitautogradnonfunctional_dispatch.h>
59
+ #include <ATen/ops/adaptive_max_pool3d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
60
+ #include <ATen/ops/add_compositeexplicitautogradnonfunctional_dispatch.h>
61
+ #include <ATen/ops/addcdiv_compositeexplicitautogradnonfunctional_dispatch.h>
62
+ #include <ATen/ops/addcmul_compositeexplicitautogradnonfunctional_dispatch.h>
63
+ #include <ATen/ops/addmm_compositeexplicitautogradnonfunctional_dispatch.h>
64
+ #include <ATen/ops/addmv_compositeexplicitautogradnonfunctional_dispatch.h>
65
+ #include <ATen/ops/alias_copy_compositeexplicitautogradnonfunctional_dispatch.h>
66
+ #include <ATen/ops/all_compositeexplicitautogradnonfunctional_dispatch.h>
67
+ #include <ATen/ops/amax_compositeexplicitautogradnonfunctional_dispatch.h>
68
+ #include <ATen/ops/amin_compositeexplicitautogradnonfunctional_dispatch.h>
69
+ #include <ATen/ops/aminmax_compositeexplicitautogradnonfunctional_dispatch.h>
70
+ #include <ATen/ops/any_compositeexplicitautogradnonfunctional_dispatch.h>
71
+ #include <ATen/ops/argmax_compositeexplicitautogradnonfunctional_dispatch.h>
72
+ #include <ATen/ops/argmin_compositeexplicitautogradnonfunctional_dispatch.h>
73
+ #include <ATen/ops/as_strided_compositeexplicitautogradnonfunctional_dispatch.h>
74
+ #include <ATen/ops/as_strided_copy_compositeexplicitautogradnonfunctional_dispatch.h>
75
+ #include <ATen/ops/as_strided_scatter_compositeexplicitautogradnonfunctional_dispatch.h>
76
+ #include <ATen/ops/asin_compositeexplicitautogradnonfunctional_dispatch.h>
77
+ #include <ATen/ops/asinh_compositeexplicitautogradnonfunctional_dispatch.h>
78
+ #include <ATen/ops/atan_compositeexplicitautogradnonfunctional_dispatch.h>
79
+ #include <ATen/ops/atan2_compositeexplicitautogradnonfunctional_dispatch.h>
80
+ #include <ATen/ops/atanh_compositeexplicitautogradnonfunctional_dispatch.h>
81
+ #include <ATen/ops/avg_pool2d_compositeexplicitautogradnonfunctional_dispatch.h>
82
+ #include <ATen/ops/avg_pool2d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
83
+ #include <ATen/ops/avg_pool3d_compositeexplicitautogradnonfunctional_dispatch.h>
84
+ #include <ATen/ops/avg_pool3d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
85
+ #include <ATen/ops/baddbmm_compositeexplicitautogradnonfunctional_dispatch.h>
86
+ #include <ATen/ops/bernoulli_compositeexplicitautogradnonfunctional_dispatch.h>
87
+ #include <ATen/ops/bitwise_and_compositeexplicitautogradnonfunctional_dispatch.h>
88
+ #include <ATen/ops/bitwise_left_shift_compositeexplicitautogradnonfunctional_dispatch.h>
89
+ #include <ATen/ops/bitwise_not_compositeexplicitautogradnonfunctional_dispatch.h>
90
+ #include <ATen/ops/bitwise_or_compositeexplicitautogradnonfunctional_dispatch.h>
91
+ #include <ATen/ops/bitwise_right_shift_compositeexplicitautogradnonfunctional_dispatch.h>
92
+ #include <ATen/ops/bitwise_xor_compositeexplicitautogradnonfunctional_dispatch.h>
93
+ #include <ATen/ops/bmm_compositeexplicitautogradnonfunctional_dispatch.h>
94
+ #include <ATen/ops/cat_compositeexplicitautogradnonfunctional_dispatch.h>
95
+ #include <ATen/ops/ccol_indices_copy_compositeexplicitautogradnonfunctional_dispatch.h>
96
+ #include <ATen/ops/ceil_compositeexplicitautogradnonfunctional_dispatch.h>
97
+ #include <ATen/ops/clamp_compositeexplicitautogradnonfunctional_dispatch.h>
98
+ #include <ATen/ops/clamp_max_compositeexplicitautogradnonfunctional_dispatch.h>
99
+ #include <ATen/ops/clamp_min_compositeexplicitautogradnonfunctional_dispatch.h>
100
+ #include <ATen/ops/col_indices_copy_compositeexplicitautogradnonfunctional_dispatch.h>
101
+ #include <ATen/ops/copy_compositeexplicitautogradnonfunctional_dispatch.h>
102
+ #include <ATen/ops/copysign_compositeexplicitautogradnonfunctional_dispatch.h>
103
+ #include <ATen/ops/cos_compositeexplicitautogradnonfunctional_dispatch.h>
104
+ #include <ATen/ops/cosh_compositeexplicitautogradnonfunctional_dispatch.h>
105
+ #include <ATen/ops/crow_indices_copy_compositeexplicitautogradnonfunctional_dispatch.h>
106
+ #include <ATen/ops/cumprod_compositeexplicitautogradnonfunctional_dispatch.h>
107
+ #include <ATen/ops/cumsum_compositeexplicitautogradnonfunctional_dispatch.h>
108
+ #include <ATen/ops/detach_copy_compositeexplicitautogradnonfunctional_dispatch.h>
109
+ #include <ATen/ops/diag_embed_compositeexplicitautogradnonfunctional_dispatch.h>
110
+ #include <ATen/ops/diagonal_copy_compositeexplicitautogradnonfunctional_dispatch.h>
111
+ #include <ATen/ops/diagonal_scatter_compositeexplicitautogradnonfunctional_dispatch.h>
112
+ #include <ATen/ops/digamma_compositeexplicitautogradnonfunctional_dispatch.h>
113
+ #include <ATen/ops/div_compositeexplicitautogradnonfunctional_dispatch.h>
114
+ #include <ATen/ops/elu_compositeexplicitautogradnonfunctional_dispatch.h>
115
+ #include <ATen/ops/elu_backward_compositeexplicitautogradnonfunctional_dispatch.h>
116
+ #include <ATen/ops/eq_compositeexplicitautogradnonfunctional_dispatch.h>
117
+ #include <ATen/ops/erf_compositeexplicitautogradnonfunctional_dispatch.h>
118
+ #include <ATen/ops/erfc_compositeexplicitautogradnonfunctional_dispatch.h>
119
+ #include <ATen/ops/erfinv_compositeexplicitautogradnonfunctional_dispatch.h>
120
+ #include <ATen/ops/exp_compositeexplicitautogradnonfunctional_dispatch.h>
121
+ #include <ATen/ops/exp2_compositeexplicitautogradnonfunctional_dispatch.h>
122
+ #include <ATen/ops/expand_copy_compositeexplicitautogradnonfunctional_dispatch.h>
123
+ #include <ATen/ops/expm1_compositeexplicitautogradnonfunctional_dispatch.h>
124
+ #include <ATen/ops/floor_compositeexplicitautogradnonfunctional_dispatch.h>
125
+ #include <ATen/ops/fmax_compositeexplicitautogradnonfunctional_dispatch.h>
126
+ #include <ATen/ops/fmin_compositeexplicitautogradnonfunctional_dispatch.h>
127
+ #include <ATen/ops/fmod_compositeexplicitautogradnonfunctional_dispatch.h>
128
+ #include <ATen/ops/frac_compositeexplicitautogradnonfunctional_dispatch.h>
129
+ #include <ATen/ops/fractional_max_pool2d_compositeexplicitautogradnonfunctional_dispatch.h>
130
+ #include <ATen/ops/fractional_max_pool2d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
131
+ #include <ATen/ops/fractional_max_pool3d_compositeexplicitautogradnonfunctional_dispatch.h>
132
+ #include <ATen/ops/gather_compositeexplicitautogradnonfunctional_dispatch.h>
133
+ #include <ATen/ops/gcd_compositeexplicitautogradnonfunctional_dispatch.h>
134
+ #include <ATen/ops/ge_compositeexplicitautogradnonfunctional_dispatch.h>
135
+ #include <ATen/ops/gelu_compositeexplicitautogradnonfunctional_dispatch.h>
136
+ #include <ATen/ops/gelu_backward_compositeexplicitautogradnonfunctional_dispatch.h>
137
+ #include <ATen/ops/glu_compositeexplicitautogradnonfunctional_dispatch.h>
138
+ #include <ATen/ops/gt_compositeexplicitautogradnonfunctional_dispatch.h>
139
+ #include <ATen/ops/hardshrink_compositeexplicitautogradnonfunctional_dispatch.h>
140
+ #include <ATen/ops/hardshrink_backward_compositeexplicitautogradnonfunctional_dispatch.h>
141
+ #include <ATen/ops/hardsigmoid_compositeexplicitautogradnonfunctional_dispatch.h>
142
+ #include <ATen/ops/hardsigmoid_backward_compositeexplicitautogradnonfunctional_dispatch.h>
143
+ #include <ATen/ops/hash_tensor_compositeexplicitautogradnonfunctional_dispatch.h>
144
+ #include <ATen/ops/heaviside_compositeexplicitautogradnonfunctional_dispatch.h>
145
+ #include <ATen/ops/hypot_compositeexplicitautogradnonfunctional_dispatch.h>
146
+ #include <ATen/ops/i0_compositeexplicitautogradnonfunctional_dispatch.h>
147
+ #include <ATen/ops/igamma_compositeexplicitautogradnonfunctional_dispatch.h>
148
+ #include <ATen/ops/igammac_compositeexplicitautogradnonfunctional_dispatch.h>
149
+ #include <ATen/ops/index_compositeexplicitautogradnonfunctional_dispatch.h>
150
+ #include <ATen/ops/index_add_compositeexplicitautogradnonfunctional_dispatch.h>
151
+ #include <ATen/ops/index_copy_compositeexplicitautogradnonfunctional_dispatch.h>
152
+ #include <ATen/ops/index_reduce_compositeexplicitautogradnonfunctional_dispatch.h>
153
+ #include <ATen/ops/indices_copy_compositeexplicitautogradnonfunctional_dispatch.h>
154
+ #include <ATen/ops/isin_compositeexplicitautogradnonfunctional_dispatch.h>
155
+ #include <ATen/ops/isneginf_compositeexplicitautogradnonfunctional_dispatch.h>
156
+ #include <ATen/ops/isposinf_compositeexplicitautogradnonfunctional_dispatch.h>
157
+ #include <ATen/ops/lcm_compositeexplicitautogradnonfunctional_dispatch.h>
158
+ #include <ATen/ops/le_compositeexplicitautogradnonfunctional_dispatch.h>
159
+ #include <ATen/ops/leaky_relu_compositeexplicitautogradnonfunctional_dispatch.h>
160
+ #include <ATen/ops/leaky_relu_backward_compositeexplicitautogradnonfunctional_dispatch.h>
161
+ #include <ATen/ops/lerp_compositeexplicitautogradnonfunctional_dispatch.h>
162
+ #include <ATen/ops/lgamma_compositeexplicitautogradnonfunctional_dispatch.h>
163
+ #include <ATen/ops/lift_fresh_copy_compositeexplicitautogradnonfunctional_dispatch.h>
164
+ #include <ATen/ops/linalg_cholesky_ex_compositeexplicitautogradnonfunctional_dispatch.h>
165
+ #include <ATen/ops/linalg_cross_compositeexplicitautogradnonfunctional_dispatch.h>
166
+ #include <ATen/ops/linalg_inv_ex_compositeexplicitautogradnonfunctional_dispatch.h>
167
+ #include <ATen/ops/linalg_ldl_factor_ex_compositeexplicitautogradnonfunctional_dispatch.h>
168
+ #include <ATen/ops/linalg_ldl_solve_compositeexplicitautogradnonfunctional_dispatch.h>
169
+ #include <ATen/ops/linalg_lu_compositeexplicitautogradnonfunctional_dispatch.h>
170
+ #include <ATen/ops/linalg_lu_factor_ex_compositeexplicitautogradnonfunctional_dispatch.h>
171
+ #include <ATen/ops/linalg_lu_solve_compositeexplicitautogradnonfunctional_dispatch.h>
172
+ #include <ATen/ops/linalg_pinv_compositeexplicitautogradnonfunctional_dispatch.h>
173
+ #include <ATen/ops/linalg_qr_compositeexplicitautogradnonfunctional_dispatch.h>
174
+ #include <ATen/ops/linalg_vector_norm_compositeexplicitautogradnonfunctional_dispatch.h>
175
+ #include <ATen/ops/log_compositeexplicitautogradnonfunctional_dispatch.h>
176
+ #include <ATen/ops/log10_compositeexplicitautogradnonfunctional_dispatch.h>
177
+ #include <ATen/ops/log1p_compositeexplicitautogradnonfunctional_dispatch.h>
178
+ #include <ATen/ops/log2_compositeexplicitautogradnonfunctional_dispatch.h>
179
+ #include <ATen/ops/logaddexp_compositeexplicitautogradnonfunctional_dispatch.h>
180
+ #include <ATen/ops/logaddexp2_compositeexplicitautogradnonfunctional_dispatch.h>
181
+ #include <ATen/ops/logit_backward_compositeexplicitautogradnonfunctional_dispatch.h>
182
+ #include <ATen/ops/logsumexp_compositeexplicitautogradnonfunctional_dispatch.h>
183
+ #include <ATen/ops/lt_compositeexplicitautogradnonfunctional_dispatch.h>
184
+ #include <ATen/ops/lu_unpack_compositeexplicitautogradnonfunctional_dispatch.h>
185
+ #include <ATen/ops/max_compositeexplicitautogradnonfunctional_dispatch.h>
186
+ #include <ATen/ops/max_pool2d_with_indices_compositeexplicitautogradnonfunctional_dispatch.h>
187
+ #include <ATen/ops/max_pool2d_with_indices_backward_compositeexplicitautogradnonfunctional_dispatch.h>
188
+ #include <ATen/ops/maximum_compositeexplicitautogradnonfunctional_dispatch.h>
189
+ #include <ATen/ops/mean_compositeexplicitautogradnonfunctional_dispatch.h>
190
+ #include <ATen/ops/min_compositeexplicitautogradnonfunctional_dispatch.h>
191
+ #include <ATen/ops/minimum_compositeexplicitautogradnonfunctional_dispatch.h>
192
+ #include <ATen/ops/mish_compositeexplicitautogradnonfunctional_dispatch.h>
193
+ #include <ATen/ops/mm_compositeexplicitautogradnonfunctional_dispatch.h>
194
+ #include <ATen/ops/mse_loss_compositeexplicitautogradnonfunctional_dispatch.h>
195
+ #include <ATen/ops/mul_compositeexplicitautogradnonfunctional_dispatch.h>
196
+ #include <ATen/ops/narrow_copy_compositeexplicitautogradnonfunctional_dispatch.h>
197
+ #include <ATen/ops/ne_compositeexplicitautogradnonfunctional_dispatch.h>
198
+ #include <ATen/ops/neg_compositeexplicitautogradnonfunctional_dispatch.h>
199
+ #include <ATen/ops/new_empty_strided_compositeexplicitautogradnonfunctional_dispatch.h>
200
+ #include <ATen/ops/nextafter_compositeexplicitautogradnonfunctional_dispatch.h>
201
+ #include <ATen/ops/nll_loss_backward_compositeexplicitautogradnonfunctional_dispatch.h>
202
+ #include <ATen/ops/nll_loss_forward_compositeexplicitautogradnonfunctional_dispatch.h>
203
+ #include <ATen/ops/norm_compositeexplicitautogradnonfunctional_dispatch.h>
204
+ #include <ATen/ops/permute_copy_compositeexplicitautogradnonfunctional_dispatch.h>
205
+ #include <ATen/ops/pixel_shuffle_compositeexplicitautogradnonfunctional_dispatch.h>
206
+ #include <ATen/ops/pixel_unshuffle_compositeexplicitautogradnonfunctional_dispatch.h>
207
+ #include <ATen/ops/polygamma_compositeexplicitautogradnonfunctional_dispatch.h>
208
+ #include <ATen/ops/pow_compositeexplicitautogradnonfunctional_dispatch.h>
209
+ #include <ATen/ops/prod_compositeexplicitautogradnonfunctional_dispatch.h>
210
+ #include <ATen/ops/reciprocal_compositeexplicitautogradnonfunctional_dispatch.h>
211
+ #include <ATen/ops/reflection_pad1d_compositeexplicitautogradnonfunctional_dispatch.h>
212
+ #include <ATen/ops/reflection_pad1d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
213
+ #include <ATen/ops/reflection_pad3d_compositeexplicitautogradnonfunctional_dispatch.h>
214
+ #include <ATen/ops/reflection_pad3d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
215
+ #include <ATen/ops/remainder_compositeexplicitautogradnonfunctional_dispatch.h>
216
+ #include <ATen/ops/renorm_compositeexplicitautogradnonfunctional_dispatch.h>
217
+ #include <ATen/ops/replication_pad1d_compositeexplicitautogradnonfunctional_dispatch.h>
218
+ #include <ATen/ops/replication_pad1d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
219
+ #include <ATen/ops/replication_pad2d_compositeexplicitautogradnonfunctional_dispatch.h>
220
+ #include <ATen/ops/replication_pad3d_compositeexplicitautogradnonfunctional_dispatch.h>
221
+ #include <ATen/ops/round_compositeexplicitautogradnonfunctional_dispatch.h>
222
+ #include <ATen/ops/row_indices_copy_compositeexplicitautogradnonfunctional_dispatch.h>
223
+ #include <ATen/ops/rsqrt_compositeexplicitautogradnonfunctional_dispatch.h>
224
+ #include <ATen/ops/scatter_compositeexplicitautogradnonfunctional_dispatch.h>
225
+ #include <ATen/ops/scatter_add_compositeexplicitautogradnonfunctional_dispatch.h>
226
+ #include <ATen/ops/scatter_reduce_compositeexplicitautogradnonfunctional_dispatch.h>
227
+ #include <ATen/ops/select_backward_compositeexplicitautogradnonfunctional_dispatch.h>
228
+ #include <ATen/ops/select_copy_compositeexplicitautogradnonfunctional_dispatch.h>
229
+ #include <ATen/ops/select_scatter_compositeexplicitautogradnonfunctional_dispatch.h>
230
+ #include <ATen/ops/sgn_compositeexplicitautogradnonfunctional_dispatch.h>
231
+ #include <ATen/ops/sigmoid_compositeexplicitautogradnonfunctional_dispatch.h>
232
+ #include <ATen/ops/sigmoid_backward_compositeexplicitautogradnonfunctional_dispatch.h>
233
+ #include <ATen/ops/sign_compositeexplicitautogradnonfunctional_dispatch.h>
234
+ #include <ATen/ops/signbit_compositeexplicitautogradnonfunctional_dispatch.h>
235
+ #include <ATen/ops/silu_compositeexplicitautogradnonfunctional_dispatch.h>
236
+ #include <ATen/ops/silu_backward_compositeexplicitautogradnonfunctional_dispatch.h>
237
+ #include <ATen/ops/sin_compositeexplicitautogradnonfunctional_dispatch.h>
238
+ #include <ATen/ops/sinc_compositeexplicitautogradnonfunctional_dispatch.h>
239
+ #include <ATen/ops/sinh_compositeexplicitautogradnonfunctional_dispatch.h>
240
+ #include <ATen/ops/slice_copy_compositeexplicitautogradnonfunctional_dispatch.h>
241
+ #include <ATen/ops/slice_scatter_compositeexplicitautogradnonfunctional_dispatch.h>
242
+ #include <ATen/ops/slow_conv_transpose2d_compositeexplicitautogradnonfunctional_dispatch.h>
243
+ #include <ATen/ops/smooth_l1_loss_compositeexplicitautogradnonfunctional_dispatch.h>
244
+ #include <ATen/ops/softplus_compositeexplicitautogradnonfunctional_dispatch.h>
245
+ #include <ATen/ops/softplus_backward_compositeexplicitautogradnonfunctional_dispatch.h>
246
+ #include <ATen/ops/softshrink_compositeexplicitautogradnonfunctional_dispatch.h>
247
+ #include <ATen/ops/softshrink_backward_compositeexplicitautogradnonfunctional_dispatch.h>
248
+ #include <ATen/ops/sort_compositeexplicitautogradnonfunctional_dispatch.h>
249
+ #include <ATen/ops/special_airy_ai_compositeexplicitautogradnonfunctional_dispatch.h>
250
+ #include <ATen/ops/special_bessel_j0_compositeexplicitautogradnonfunctional_dispatch.h>
251
+ #include <ATen/ops/special_bessel_j1_compositeexplicitautogradnonfunctional_dispatch.h>
252
+ #include <ATen/ops/special_bessel_y0_compositeexplicitautogradnonfunctional_dispatch.h>
253
+ #include <ATen/ops/special_bessel_y1_compositeexplicitautogradnonfunctional_dispatch.h>
254
+ #include <ATen/ops/special_chebyshev_polynomial_t_compositeexplicitautogradnonfunctional_dispatch.h>
255
+ #include <ATen/ops/special_chebyshev_polynomial_u_compositeexplicitautogradnonfunctional_dispatch.h>
256
+ #include <ATen/ops/special_chebyshev_polynomial_v_compositeexplicitautogradnonfunctional_dispatch.h>
257
+ #include <ATen/ops/special_chebyshev_polynomial_w_compositeexplicitautogradnonfunctional_dispatch.h>
258
+ #include <ATen/ops/special_entr_compositeexplicitautogradnonfunctional_dispatch.h>
259
+ #include <ATen/ops/special_erfcx_compositeexplicitautogradnonfunctional_dispatch.h>
260
+ #include <ATen/ops/special_hermite_polynomial_h_compositeexplicitautogradnonfunctional_dispatch.h>
261
+ #include <ATen/ops/special_hermite_polynomial_he_compositeexplicitautogradnonfunctional_dispatch.h>
262
+ #include <ATen/ops/special_i0e_compositeexplicitautogradnonfunctional_dispatch.h>
263
+ #include <ATen/ops/special_i1_compositeexplicitautogradnonfunctional_dispatch.h>
264
+ #include <ATen/ops/special_i1e_compositeexplicitautogradnonfunctional_dispatch.h>
265
+ #include <ATen/ops/special_laguerre_polynomial_l_compositeexplicitautogradnonfunctional_dispatch.h>
266
+ #include <ATen/ops/special_legendre_polynomial_p_compositeexplicitautogradnonfunctional_dispatch.h>
267
+ #include <ATen/ops/special_log_ndtr_compositeexplicitautogradnonfunctional_dispatch.h>
268
+ #include <ATen/ops/special_modified_bessel_i0_compositeexplicitautogradnonfunctional_dispatch.h>
269
+ #include <ATen/ops/special_modified_bessel_i1_compositeexplicitautogradnonfunctional_dispatch.h>
270
+ #include <ATen/ops/special_modified_bessel_k0_compositeexplicitautogradnonfunctional_dispatch.h>
271
+ #include <ATen/ops/special_modified_bessel_k1_compositeexplicitautogradnonfunctional_dispatch.h>
272
+ #include <ATen/ops/special_ndtri_compositeexplicitautogradnonfunctional_dispatch.h>
273
+ #include <ATen/ops/special_scaled_modified_bessel_k0_compositeexplicitautogradnonfunctional_dispatch.h>
274
+ #include <ATen/ops/special_scaled_modified_bessel_k1_compositeexplicitautogradnonfunctional_dispatch.h>
275
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_t_compositeexplicitautogradnonfunctional_dispatch.h>
276
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_u_compositeexplicitautogradnonfunctional_dispatch.h>
277
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_v_compositeexplicitautogradnonfunctional_dispatch.h>
278
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_w_compositeexplicitautogradnonfunctional_dispatch.h>
279
+ #include <ATen/ops/special_spherical_bessel_j0_compositeexplicitautogradnonfunctional_dispatch.h>
280
+ #include <ATen/ops/special_xlog1py_compositeexplicitautogradnonfunctional_dispatch.h>
281
+ #include <ATen/ops/special_zeta_compositeexplicitautogradnonfunctional_dispatch.h>
282
+ #include <ATen/ops/split_copy_compositeexplicitautogradnonfunctional_dispatch.h>
283
+ #include <ATen/ops/split_with_sizes_copy_compositeexplicitautogradnonfunctional_dispatch.h>
284
+ #include <ATen/ops/sqrt_compositeexplicitautogradnonfunctional_dispatch.h>
285
+ #include <ATen/ops/squeeze_copy_compositeexplicitautogradnonfunctional_dispatch.h>
286
+ #include <ATen/ops/sub_compositeexplicitautogradnonfunctional_dispatch.h>
287
+ #include <ATen/ops/sum_compositeexplicitautogradnonfunctional_dispatch.h>
288
+ #include <ATen/ops/t_copy_compositeexplicitautogradnonfunctional_dispatch.h>
289
+ #include <ATen/ops/tan_compositeexplicitautogradnonfunctional_dispatch.h>
290
+ #include <ATen/ops/tanh_compositeexplicitautogradnonfunctional_dispatch.h>
291
+ #include <ATen/ops/tanh_backward_compositeexplicitautogradnonfunctional_dispatch.h>
292
+ #include <ATen/ops/threshold_compositeexplicitautogradnonfunctional_dispatch.h>
293
+ #include <ATen/ops/threshold_backward_compositeexplicitautogradnonfunctional_dispatch.h>
294
+ #include <ATen/ops/topk_compositeexplicitautogradnonfunctional_dispatch.h>
295
+ #include <ATen/ops/transpose_copy_compositeexplicitautogradnonfunctional_dispatch.h>
296
+ #include <ATen/ops/triangular_solve_compositeexplicitautogradnonfunctional_dispatch.h>
297
+ #include <ATen/ops/tril_compositeexplicitautogradnonfunctional_dispatch.h>
298
+ #include <ATen/ops/triu_compositeexplicitautogradnonfunctional_dispatch.h>
299
+ #include <ATen/ops/trunc_compositeexplicitautogradnonfunctional_dispatch.h>
300
+ #include <ATen/ops/unbind_copy_compositeexplicitautogradnonfunctional_dispatch.h>
301
+ #include <ATen/ops/unfold_copy_compositeexplicitautogradnonfunctional_dispatch.h>
302
+ #include <ATen/ops/unsqueeze_copy_compositeexplicitautogradnonfunctional_dispatch.h>
303
+ #include <ATen/ops/upsample_bicubic2d_compositeexplicitautogradnonfunctional_dispatch.h>
304
+ #include <ATen/ops/upsample_bicubic2d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
305
+ #include <ATen/ops/upsample_bilinear2d_compositeexplicitautogradnonfunctional_dispatch.h>
306
+ #include <ATen/ops/upsample_bilinear2d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
307
+ #include <ATen/ops/upsample_linear1d_compositeexplicitautogradnonfunctional_dispatch.h>
308
+ #include <ATen/ops/upsample_linear1d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
309
+ #include <ATen/ops/upsample_nearest1d_compositeexplicitautogradnonfunctional_dispatch.h>
310
+ #include <ATen/ops/upsample_nearest1d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
311
+ #include <ATen/ops/upsample_nearest2d_compositeexplicitautogradnonfunctional_dispatch.h>
312
+ #include <ATen/ops/upsample_nearest2d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
313
+ #include <ATen/ops/upsample_nearest3d_compositeexplicitautogradnonfunctional_dispatch.h>
314
+ #include <ATen/ops/upsample_nearest3d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
315
+ #include <ATen/ops/upsample_trilinear3d_compositeexplicitautogradnonfunctional_dispatch.h>
316
+ #include <ATen/ops/upsample_trilinear3d_backward_compositeexplicitautogradnonfunctional_dispatch.h>
317
+ #include <ATen/ops/values_copy_compositeexplicitautogradnonfunctional_dispatch.h>
318
+ #include <ATen/ops/view_as_complex_copy_compositeexplicitautogradnonfunctional_dispatch.h>
319
+ #include <ATen/ops/view_as_real_copy_compositeexplicitautogradnonfunctional_dispatch.h>
320
+ #include <ATen/ops/view_copy_compositeexplicitautogradnonfunctional_dispatch.h>
321
+ #include <ATen/ops/xlogy_compositeexplicitautogradnonfunctional_dispatch.h>
322
+
323
+
324
+
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeImplicitAutogradFunctions.h ADDED
@@ -0,0 +1,29 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #include <ATen/core/TensorBody.h>
2
+
3
+ // TODO Undo all logic introduced for Note [Avoiding Include Cycles In Static Dispatch]
4
+ // Code introduced to avoid cyclic dependency in static dispatch is no longer
5
+ // needed as static dispatch logic is moved from TensorBody.h, which caused cycles in the first place,
6
+ // to Operators.cpp for supporting multiple backends with multiple kernels.
7
+ //
8
+ // Note [Avoiding Include Cycles In Static Dispatch]
9
+ // In order to avoid #include cycles in the static dispatch build, we've carefully split out
10
+ // the static function definition files into {DispatchKey}Functions.h and {DispatchKey}Functions_inl.h.
11
+ //
12
+ // Without this split, the include cycle looks like TensorBody.h -> CPUFunctions.h -> TensorBody.h.
13
+ // - TensorBody.h #includes CPUFunctions.h in the static dispatch build, because the tensor methods
14
+ // all need to call into the fastpath C++ API defined in CPUFunctions.h. The methods are also all
15
+ // directly inlined into TensorBody.h.
16
+ // - CPUFunctions.h #includes TensorBody.h because it contains function declarations for the entire C++ API,
17
+ // which include functions that have defaultable std::optional<Tensor> arguments.
18
+ // That requires knowing the full Tensor class definition.
19
+ //
20
+ // We break the cycle by doing the following:
21
+ // - Split out CPUFunction.h into two files: CPUFunctions.h and CPUFunctions_inl.h
22
+ // - CPUFunction.h is a dummy file that just includes the Tensor class and includes CPUFunctions_inl.,
23
+ // - CPUFunctions_inl.h includes everything else
24
+ // - (only in the static dispatch build) TensorBody.h makes sure to finish defining the Tensor class,
25
+ // and then it includes CPUFunctions_inl.h.
26
+ // - All other files that want the cpu fastpath functions can include CPUFunctions.h directly.
27
+ // - This also means that static dispatch build, CPUFunctions.h only needs to
28
+ // #include TensorBody.h, and it will automatically bring in CPUFunctions_inl.h.
29
+ #include <ATen/CompositeImplicitAutogradFunctions_inl.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeImplicitAutogradFunctions_inl.h ADDED
@@ -0,0 +1,503 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+ // @generated by torchgen/gen.py from DispatchKeyFunctions_inl.h
3
+
4
+ // NB: The implementing C++ file is RegisterDispatchKey.cpp
5
+
6
+ // The only #includes we need are for custom classes that have defaults in the C++ API
7
+ #include <c10/core/MemoryFormat.h>
8
+ #include <c10/core/Scalar.h>
9
+ #include <ATen/core/Reduction.h>
10
+
11
+ #if defined(AT_PER_OPERATOR_HEADERS) && defined(TORCH_ASSERT_ONLY_METHOD_OPERATORS)
12
+ #error This change adds a dependency on all pytorch operators, meaning the \
13
+ file will need to be re-compiled every time an operator is changed or added. \
14
+ Consider including a specific operator from \
15
+ <ATen/ops/{my_operator}_compositeimplicitautograd_dispatch.h>. \
16
+ See NOTE [TORCH_ASSERT_ONLY_METHOD_OPERATORS].
17
+ #endif
18
+
19
+ #include <ATen/ops/_add_batch_dim_compositeimplicitautograd_dispatch.h>
20
+ #include <ATen/ops/_autocast_to_full_precision_compositeimplicitautograd_dispatch.h>
21
+ #include <ATen/ops/_autocast_to_reduced_precision_compositeimplicitautograd_dispatch.h>
22
+ #include <ATen/ops/_backward_compositeimplicitautograd_dispatch.h>
23
+ #include <ATen/ops/_batch_norm_impl_index_compositeimplicitautograd_dispatch.h>
24
+ #include <ATen/ops/_batch_norm_impl_index_backward_compositeimplicitautograd_dispatch.h>
25
+ #include <ATen/ops/_cast_Byte_compositeimplicitautograd_dispatch.h>
26
+ #include <ATen/ops/_cast_Char_compositeimplicitautograd_dispatch.h>
27
+ #include <ATen/ops/_cast_Double_compositeimplicitautograd_dispatch.h>
28
+ #include <ATen/ops/_cast_Float_compositeimplicitautograd_dispatch.h>
29
+ #include <ATen/ops/_cast_Half_compositeimplicitautograd_dispatch.h>
30
+ #include <ATen/ops/_cast_Int_compositeimplicitautograd_dispatch.h>
31
+ #include <ATen/ops/_cast_Long_compositeimplicitautograd_dispatch.h>
32
+ #include <ATen/ops/_cast_Short_compositeimplicitautograd_dispatch.h>
33
+ #include <ATen/ops/_choose_qparams_per_tensor_compositeimplicitautograd_dispatch.h>
34
+ #include <ATen/ops/_convolution_compositeimplicitautograd_dispatch.h>
35
+ #include <ATen/ops/_convolution_double_backward_compositeimplicitautograd_dispatch.h>
36
+ #include <ATen/ops/_convolution_mode_compositeimplicitautograd_dispatch.h>
37
+ #include <ATen/ops/_cufft_clear_plan_cache_compositeimplicitautograd_dispatch.h>
38
+ #include <ATen/ops/_cufft_get_plan_cache_max_size_compositeimplicitautograd_dispatch.h>
39
+ #include <ATen/ops/_cufft_get_plan_cache_size_compositeimplicitautograd_dispatch.h>
40
+ #include <ATen/ops/_cufft_set_plan_cache_max_size_compositeimplicitautograd_dispatch.h>
41
+ #include <ATen/ops/_debug_has_internal_overlap_compositeimplicitautograd_dispatch.h>
42
+ #include <ATen/ops/_dim_arange_compositeimplicitautograd_dispatch.h>
43
+ #include <ATen/ops/_embedding_bag_sparse_backward_compositeimplicitautograd_dispatch.h>
44
+ #include <ATen/ops/_fused_rms_norm_compositeimplicitautograd_dispatch.h>
45
+ #include <ATen/ops/_gather_sparse_backward_compositeimplicitautograd_dispatch.h>
46
+ #include <ATen/ops/_grid_sampler_2d_cpu_fallback_backward_compositeimplicitautograd_dispatch.h>
47
+ #include <ATen/ops/_has_compatible_shallow_copy_type_compositeimplicitautograd_dispatch.h>
48
+ #include <ATen/ops/_is_zerotensor_compositeimplicitautograd_dispatch.h>
49
+ #include <ATen/ops/_lu_with_info_compositeimplicitautograd_dispatch.h>
50
+ #include <ATen/ops/_nnpack_available_compositeimplicitautograd_dispatch.h>
51
+ #include <ATen/ops/_pack_padded_sequence_backward_compositeimplicitautograd_dispatch.h>
52
+ #include <ATen/ops/_pad_circular_compositeimplicitautograd_dispatch.h>
53
+ #include <ATen/ops/_pad_enum_compositeimplicitautograd_dispatch.h>
54
+ #include <ATen/ops/_pad_packed_sequence_compositeimplicitautograd_dispatch.h>
55
+ #include <ATen/ops/_propagate_xla_data_compositeimplicitautograd_dispatch.h>
56
+ #include <ATen/ops/_remove_batch_dim_compositeimplicitautograd_dispatch.h>
57
+ #include <ATen/ops/_reshape_from_tensor_compositeimplicitautograd_dispatch.h>
58
+ #include <ATen/ops/_rowwise_prune_compositeimplicitautograd_dispatch.h>
59
+ #include <ATen/ops/_saturate_weight_to_fp16_compositeimplicitautograd_dispatch.h>
60
+ #include <ATen/ops/_scaled_dot_product_attention_math_compositeimplicitautograd_dispatch.h>
61
+ #include <ATen/ops/_shape_as_tensor_compositeimplicitautograd_dispatch.h>
62
+ #include <ATen/ops/_sobol_engine_draw_compositeimplicitautograd_dispatch.h>
63
+ #include <ATen/ops/_sobol_engine_ff_compositeimplicitautograd_dispatch.h>
64
+ #include <ATen/ops/_sobol_engine_initialize_state_compositeimplicitautograd_dispatch.h>
65
+ #include <ATen/ops/_sobol_engine_scramble_compositeimplicitautograd_dispatch.h>
66
+ #include <ATen/ops/_sparse_bsc_tensor_unsafe_compositeimplicitautograd_dispatch.h>
67
+ #include <ATen/ops/_sparse_bsr_tensor_unsafe_compositeimplicitautograd_dispatch.h>
68
+ #include <ATen/ops/_sparse_compressed_tensor_unsafe_compositeimplicitautograd_dispatch.h>
69
+ #include <ATen/ops/_sparse_coo_tensor_unsafe_compositeimplicitautograd_dispatch.h>
70
+ #include <ATen/ops/_sparse_csc_tensor_unsafe_compositeimplicitautograd_dispatch.h>
71
+ #include <ATen/ops/_sparse_csr_tensor_unsafe_compositeimplicitautograd_dispatch.h>
72
+ #include <ATen/ops/_sparse_log_softmax_compositeimplicitautograd_dispatch.h>
73
+ #include <ATen/ops/_sparse_mm_compositeimplicitautograd_dispatch.h>
74
+ #include <ATen/ops/_sparse_softmax_compositeimplicitautograd_dispatch.h>
75
+ #include <ATen/ops/_sparse_sum_compositeimplicitautograd_dispatch.h>
76
+ #include <ATen/ops/_test_ambiguous_defaults_compositeimplicitautograd_dispatch.h>
77
+ #include <ATen/ops/_test_autograd_multiple_dispatch_compositeimplicitautograd_dispatch.h>
78
+ #include <ATen/ops/_test_check_tensor_compositeimplicitautograd_dispatch.h>
79
+ #include <ATen/ops/_test_serialization_subcmul_compositeimplicitautograd_dispatch.h>
80
+ #include <ATen/ops/_test_string_default_compositeimplicitautograd_dispatch.h>
81
+ #include <ATen/ops/_thnn_differentiable_gru_cell_backward_compositeimplicitautograd_dispatch.h>
82
+ #include <ATen/ops/_thnn_differentiable_lstm_cell_backward_compositeimplicitautograd_dispatch.h>
83
+ #include <ATen/ops/_thnn_fused_lstm_cell_backward_compositeimplicitautograd_dispatch.h>
84
+ #include <ATen/ops/_to_cpu_compositeimplicitautograd_dispatch.h>
85
+ #include <ATen/ops/_unpack_dual_compositeimplicitautograd_dispatch.h>
86
+ #include <ATen/ops/_upsample_bicubic2d_aa_compositeimplicitautograd_dispatch.h>
87
+ #include <ATen/ops/_upsample_bilinear2d_aa_compositeimplicitautograd_dispatch.h>
88
+ #include <ATen/ops/_upsample_nearest_exact1d_compositeimplicitautograd_dispatch.h>
89
+ #include <ATen/ops/_upsample_nearest_exact2d_compositeimplicitautograd_dispatch.h>
90
+ #include <ATen/ops/_upsample_nearest_exact3d_compositeimplicitautograd_dispatch.h>
91
+ #include <ATen/ops/_use_cudnn_rnn_flatten_weight_compositeimplicitautograd_dispatch.h>
92
+ #include <ATen/ops/_validate_sparse_bsc_tensor_args_compositeimplicitautograd_dispatch.h>
93
+ #include <ATen/ops/_validate_sparse_bsr_tensor_args_compositeimplicitautograd_dispatch.h>
94
+ #include <ATen/ops/_validate_sparse_compressed_tensor_args_compositeimplicitautograd_dispatch.h>
95
+ #include <ATen/ops/_validate_sparse_coo_tensor_args_compositeimplicitautograd_dispatch.h>
96
+ #include <ATen/ops/_validate_sparse_csc_tensor_args_compositeimplicitautograd_dispatch.h>
97
+ #include <ATen/ops/_validate_sparse_csr_tensor_args_compositeimplicitautograd_dispatch.h>
98
+ #include <ATen/ops/_version_compositeimplicitautograd_dispatch.h>
99
+ #include <ATen/ops/_weight_norm_compositeimplicitautograd_dispatch.h>
100
+ #include <ATen/ops/_weight_norm_differentiable_backward_compositeimplicitautograd_dispatch.h>
101
+ #include <ATen/ops/_wrapped_linear_prepack_compositeimplicitautograd_dispatch.h>
102
+ #include <ATen/ops/_wrapped_quantized_linear_prepacked_compositeimplicitautograd_dispatch.h>
103
+ #include <ATen/ops/absolute_compositeimplicitautograd_dispatch.h>
104
+ #include <ATen/ops/adaptive_avg_pool1d_compositeimplicitautograd_dispatch.h>
105
+ #include <ATen/ops/adaptive_avg_pool2d_compositeimplicitautograd_dispatch.h>
106
+ #include <ATen/ops/adaptive_avg_pool3d_compositeimplicitautograd_dispatch.h>
107
+ #include <ATen/ops/adaptive_max_pool1d_compositeimplicitautograd_dispatch.h>
108
+ #include <ATen/ops/adjoint_compositeimplicitautograd_dispatch.h>
109
+ #include <ATen/ops/affine_grid_generator_backward_compositeimplicitautograd_dispatch.h>
110
+ #include <ATen/ops/align_as_compositeimplicitautograd_dispatch.h>
111
+ #include <ATen/ops/align_tensors_compositeimplicitautograd_dispatch.h>
112
+ #include <ATen/ops/align_to_compositeimplicitautograd_dispatch.h>
113
+ #include <ATen/ops/all_compositeimplicitautograd_dispatch.h>
114
+ #include <ATen/ops/alpha_dropout_compositeimplicitautograd_dispatch.h>
115
+ #include <ATen/ops/and_compositeimplicitautograd_dispatch.h>
116
+ #include <ATen/ops/any_compositeimplicitautograd_dispatch.h>
117
+ #include <ATen/ops/arccos_compositeimplicitautograd_dispatch.h>
118
+ #include <ATen/ops/arccosh_compositeimplicitautograd_dispatch.h>
119
+ #include <ATen/ops/arcsin_compositeimplicitautograd_dispatch.h>
120
+ #include <ATen/ops/arcsinh_compositeimplicitautograd_dispatch.h>
121
+ #include <ATen/ops/arctan_compositeimplicitautograd_dispatch.h>
122
+ #include <ATen/ops/arctan2_compositeimplicitautograd_dispatch.h>
123
+ #include <ATen/ops/arctanh_compositeimplicitautograd_dispatch.h>
124
+ #include <ATen/ops/argsort_compositeimplicitautograd_dispatch.h>
125
+ #include <ATen/ops/argwhere_compositeimplicitautograd_dispatch.h>
126
+ #include <ATen/ops/atleast_1d_compositeimplicitautograd_dispatch.h>
127
+ #include <ATen/ops/atleast_2d_compositeimplicitautograd_dispatch.h>
128
+ #include <ATen/ops/atleast_3d_compositeimplicitautograd_dispatch.h>
129
+ #include <ATen/ops/avg_pool1d_compositeimplicitautograd_dispatch.h>
130
+ #include <ATen/ops/batch_norm_compositeimplicitautograd_dispatch.h>
131
+ #include <ATen/ops/bilinear_compositeimplicitautograd_dispatch.h>
132
+ #include <ATen/ops/broadcast_tensors_compositeimplicitautograd_dispatch.h>
133
+ #include <ATen/ops/broadcast_to_compositeimplicitautograd_dispatch.h>
134
+ #include <ATen/ops/can_cast_compositeimplicitautograd_dispatch.h>
135
+ #include <ATen/ops/cartesian_prod_compositeimplicitautograd_dispatch.h>
136
+ #include <ATen/ops/cat_compositeimplicitautograd_dispatch.h>
137
+ #include <ATen/ops/cdist_compositeimplicitautograd_dispatch.h>
138
+ #include <ATen/ops/chain_matmul_compositeimplicitautograd_dispatch.h>
139
+ #include <ATen/ops/chalf_compositeimplicitautograd_dispatch.h>
140
+ #include <ATen/ops/choose_qparams_optimized_compositeimplicitautograd_dispatch.h>
141
+ #include <ATen/ops/chunk_compositeimplicitautograd_dispatch.h>
142
+ #include <ATen/ops/clip_compositeimplicitautograd_dispatch.h>
143
+ #include <ATen/ops/coalesce_compositeimplicitautograd_dispatch.h>
144
+ #include <ATen/ops/column_stack_compositeimplicitautograd_dispatch.h>
145
+ #include <ATen/ops/combinations_compositeimplicitautograd_dispatch.h>
146
+ #include <ATen/ops/concat_compositeimplicitautograd_dispatch.h>
147
+ #include <ATen/ops/concatenate_compositeimplicitautograd_dispatch.h>
148
+ #include <ATen/ops/conj_compositeimplicitautograd_dispatch.h>
149
+ #include <ATen/ops/conj_physical_compositeimplicitautograd_dispatch.h>
150
+ #include <ATen/ops/contiguous_compositeimplicitautograd_dispatch.h>
151
+ #include <ATen/ops/conv1d_compositeimplicitautograd_dispatch.h>
152
+ #include <ATen/ops/conv2d_compositeimplicitautograd_dispatch.h>
153
+ #include <ATen/ops/conv3d_compositeimplicitautograd_dispatch.h>
154
+ #include <ATen/ops/conv_tbc_backward_compositeimplicitautograd_dispatch.h>
155
+ #include <ATen/ops/conv_transpose1d_compositeimplicitautograd_dispatch.h>
156
+ #include <ATen/ops/conv_transpose2d_compositeimplicitautograd_dispatch.h>
157
+ #include <ATen/ops/conv_transpose3d_compositeimplicitautograd_dispatch.h>
158
+ #include <ATen/ops/corrcoef_compositeimplicitautograd_dispatch.h>
159
+ #include <ATen/ops/cosine_embedding_loss_compositeimplicitautograd_dispatch.h>
160
+ #include <ATen/ops/cosine_similarity_compositeimplicitautograd_dispatch.h>
161
+ #include <ATen/ops/cov_compositeimplicitautograd_dispatch.h>
162
+ #include <ATen/ops/cross_compositeimplicitautograd_dispatch.h>
163
+ #include <ATen/ops/cross_entropy_loss_compositeimplicitautograd_dispatch.h>
164
+ #include <ATen/ops/ctc_loss_compositeimplicitautograd_dispatch.h>
165
+ #include <ATen/ops/cudnn_is_acceptable_compositeimplicitautograd_dispatch.h>
166
+ #include <ATen/ops/cummax_compositeimplicitautograd_dispatch.h>
167
+ #include <ATen/ops/cummaxmin_backward_compositeimplicitautograd_dispatch.h>
168
+ #include <ATen/ops/cummin_compositeimplicitautograd_dispatch.h>
169
+ #include <ATen/ops/cumprod_compositeimplicitautograd_dispatch.h>
170
+ #include <ATen/ops/cumprod_backward_compositeimplicitautograd_dispatch.h>
171
+ #include <ATen/ops/cumsum_compositeimplicitautograd_dispatch.h>
172
+ #include <ATen/ops/cumulative_trapezoid_compositeimplicitautograd_dispatch.h>
173
+ #include <ATen/ops/data_compositeimplicitautograd_dispatch.h>
174
+ #include <ATen/ops/det_compositeimplicitautograd_dispatch.h>
175
+ #include <ATen/ops/diag_compositeimplicitautograd_dispatch.h>
176
+ #include <ATen/ops/diagflat_compositeimplicitautograd_dispatch.h>
177
+ #include <ATen/ops/diagonal_compositeimplicitautograd_dispatch.h>
178
+ #include <ATen/ops/diff_compositeimplicitautograd_dispatch.h>
179
+ #include <ATen/ops/divide_compositeimplicitautograd_dispatch.h>
180
+ #include <ATen/ops/dropout_compositeimplicitautograd_dispatch.h>
181
+ #include <ATen/ops/dsplit_compositeimplicitautograd_dispatch.h>
182
+ #include <ATen/ops/dstack_compositeimplicitautograd_dispatch.h>
183
+ #include <ATen/ops/einsum_compositeimplicitautograd_dispatch.h>
184
+ #include <ATen/ops/embedding_backward_compositeimplicitautograd_dispatch.h>
185
+ #include <ATen/ops/embedding_bag_compositeimplicitautograd_dispatch.h>
186
+ #include <ATen/ops/embedding_sparse_backward_compositeimplicitautograd_dispatch.h>
187
+ #include <ATen/ops/empty_compositeimplicitautograd_dispatch.h>
188
+ #include <ATen/ops/expand_as_compositeimplicitautograd_dispatch.h>
189
+ #include <ATen/ops/fake_quantize_per_channel_affine_compositeimplicitautograd_dispatch.h>
190
+ #include <ATen/ops/fake_quantize_per_channel_affine_cachemask_backward_compositeimplicitautograd_dispatch.h>
191
+ #include <ATen/ops/fake_quantize_per_tensor_affine_compositeimplicitautograd_dispatch.h>
192
+ #include <ATen/ops/fake_quantize_per_tensor_affine_cachemask_backward_compositeimplicitautograd_dispatch.h>
193
+ #include <ATen/ops/fbgemm_linear_fp16_weight_compositeimplicitautograd_dispatch.h>
194
+ #include <ATen/ops/fbgemm_linear_fp16_weight_fp32_activation_compositeimplicitautograd_dispatch.h>
195
+ #include <ATen/ops/fbgemm_linear_int8_weight_compositeimplicitautograd_dispatch.h>
196
+ #include <ATen/ops/fbgemm_linear_int8_weight_fp32_activation_compositeimplicitautograd_dispatch.h>
197
+ #include <ATen/ops/fbgemm_linear_quantize_weight_compositeimplicitautograd_dispatch.h>
198
+ #include <ATen/ops/fbgemm_pack_gemm_matrix_fp16_compositeimplicitautograd_dispatch.h>
199
+ #include <ATen/ops/fbgemm_pack_quantized_matrix_compositeimplicitautograd_dispatch.h>
200
+ #include <ATen/ops/feature_alpha_dropout_compositeimplicitautograd_dispatch.h>
201
+ #include <ATen/ops/feature_dropout_compositeimplicitautograd_dispatch.h>
202
+ #include <ATen/ops/fft_fft_compositeimplicitautograd_dispatch.h>
203
+ #include <ATen/ops/fft_fft2_compositeimplicitautograd_dispatch.h>
204
+ #include <ATen/ops/fft_fftn_compositeimplicitautograd_dispatch.h>
205
+ #include <ATen/ops/fft_fftshift_compositeimplicitautograd_dispatch.h>
206
+ #include <ATen/ops/fft_hfft_compositeimplicitautograd_dispatch.h>
207
+ #include <ATen/ops/fft_hfft2_compositeimplicitautograd_dispatch.h>
208
+ #include <ATen/ops/fft_hfftn_compositeimplicitautograd_dispatch.h>
209
+ #include <ATen/ops/fft_ifft_compositeimplicitautograd_dispatch.h>
210
+ #include <ATen/ops/fft_ifft2_compositeimplicitautograd_dispatch.h>
211
+ #include <ATen/ops/fft_ifftn_compositeimplicitautograd_dispatch.h>
212
+ #include <ATen/ops/fft_ifftshift_compositeimplicitautograd_dispatch.h>
213
+ #include <ATen/ops/fft_ihfft_compositeimplicitautograd_dispatch.h>
214
+ #include <ATen/ops/fft_ihfft2_compositeimplicitautograd_dispatch.h>
215
+ #include <ATen/ops/fft_ihfftn_compositeimplicitautograd_dispatch.h>
216
+ #include <ATen/ops/fft_irfft_compositeimplicitautograd_dispatch.h>
217
+ #include <ATen/ops/fft_irfft2_compositeimplicitautograd_dispatch.h>
218
+ #include <ATen/ops/fft_irfftn_compositeimplicitautograd_dispatch.h>
219
+ #include <ATen/ops/fft_rfft_compositeimplicitautograd_dispatch.h>
220
+ #include <ATen/ops/fft_rfft2_compositeimplicitautograd_dispatch.h>
221
+ #include <ATen/ops/fft_rfftn_compositeimplicitautograd_dispatch.h>
222
+ #include <ATen/ops/fill_diagonal_compositeimplicitautograd_dispatch.h>
223
+ #include <ATen/ops/fix_compositeimplicitautograd_dispatch.h>
224
+ #include <ATen/ops/flatten_compositeimplicitautograd_dispatch.h>
225
+ #include <ATen/ops/flatten_dense_tensors_compositeimplicitautograd_dispatch.h>
226
+ #include <ATen/ops/fliplr_compositeimplicitautograd_dispatch.h>
227
+ #include <ATen/ops/flipud_compositeimplicitautograd_dispatch.h>
228
+ #include <ATen/ops/float_power_compositeimplicitautograd_dispatch.h>
229
+ #include <ATen/ops/frobenius_norm_compositeimplicitautograd_dispatch.h>
230
+ #include <ATen/ops/fused_moving_avg_obs_fake_quant_compositeimplicitautograd_dispatch.h>
231
+ #include <ATen/ops/gather_compositeimplicitautograd_dispatch.h>
232
+ #include <ATen/ops/gather_backward_compositeimplicitautograd_dispatch.h>
233
+ #include <ATen/ops/ger_compositeimplicitautograd_dispatch.h>
234
+ #include <ATen/ops/gradient_compositeimplicitautograd_dispatch.h>
235
+ #include <ATen/ops/greater_compositeimplicitautograd_dispatch.h>
236
+ #include <ATen/ops/greater_equal_compositeimplicitautograd_dispatch.h>
237
+ #include <ATen/ops/grid_sampler_compositeimplicitautograd_dispatch.h>
238
+ #include <ATen/ops/group_norm_compositeimplicitautograd_dispatch.h>
239
+ #include <ATen/ops/gru_compositeimplicitautograd_dispatch.h>
240
+ #include <ATen/ops/gru_cell_compositeimplicitautograd_dispatch.h>
241
+ #include <ATen/ops/hinge_embedding_loss_compositeimplicitautograd_dispatch.h>
242
+ #include <ATen/ops/histogramdd_compositeimplicitautograd_dispatch.h>
243
+ #include <ATen/ops/hsplit_compositeimplicitautograd_dispatch.h>
244
+ #include <ATen/ops/hstack_compositeimplicitautograd_dispatch.h>
245
+ #include <ATen/ops/imag_compositeimplicitautograd_dispatch.h>
246
+ #include <ATen/ops/index_add_compositeimplicitautograd_dispatch.h>
247
+ #include <ATen/ops/index_copy_compositeimplicitautograd_dispatch.h>
248
+ #include <ATen/ops/index_fill_compositeimplicitautograd_dispatch.h>
249
+ #include <ATen/ops/index_select_compositeimplicitautograd_dispatch.h>
250
+ #include <ATen/ops/index_select_backward_compositeimplicitautograd_dispatch.h>
251
+ #include <ATen/ops/infinitely_differentiable_gelu_backward_compositeimplicitautograd_dispatch.h>
252
+ #include <ATen/ops/inner_compositeimplicitautograd_dispatch.h>
253
+ #include <ATen/ops/instance_norm_compositeimplicitautograd_dispatch.h>
254
+ #include <ATen/ops/inverse_compositeimplicitautograd_dispatch.h>
255
+ #include <ATen/ops/is_complex_compositeimplicitautograd_dispatch.h>
256
+ #include <ATen/ops/is_conj_compositeimplicitautograd_dispatch.h>
257
+ #include <ATen/ops/is_distributed_compositeimplicitautograd_dispatch.h>
258
+ #include <ATen/ops/is_floating_point_compositeimplicitautograd_dispatch.h>
259
+ #include <ATen/ops/is_inference_compositeimplicitautograd_dispatch.h>
260
+ #include <ATen/ops/is_leaf_compositeimplicitautograd_dispatch.h>
261
+ #include <ATen/ops/is_neg_compositeimplicitautograd_dispatch.h>
262
+ #include <ATen/ops/is_nonzero_compositeimplicitautograd_dispatch.h>
263
+ #include <ATen/ops/is_signed_compositeimplicitautograd_dispatch.h>
264
+ #include <ATen/ops/is_vulkan_available_compositeimplicitautograd_dispatch.h>
265
+ #include <ATen/ops/isclose_compositeimplicitautograd_dispatch.h>
266
+ #include <ATen/ops/isfinite_compositeimplicitautograd_dispatch.h>
267
+ #include <ATen/ops/isreal_compositeimplicitautograd_dispatch.h>
268
+ #include <ATen/ops/istft_compositeimplicitautograd_dispatch.h>
269
+ #include <ATen/ops/item_compositeimplicitautograd_dispatch.h>
270
+ #include <ATen/ops/kl_div_compositeimplicitautograd_dispatch.h>
271
+ #include <ATen/ops/kron_compositeimplicitautograd_dispatch.h>
272
+ #include <ATen/ops/kthvalue_compositeimplicitautograd_dispatch.h>
273
+ #include <ATen/ops/l1_loss_compositeimplicitautograd_dispatch.h>
274
+ #include <ATen/ops/layer_norm_compositeimplicitautograd_dispatch.h>
275
+ #include <ATen/ops/ldexp_compositeimplicitautograd_dispatch.h>
276
+ #include <ATen/ops/less_compositeimplicitautograd_dispatch.h>
277
+ #include <ATen/ops/less_equal_compositeimplicitautograd_dispatch.h>
278
+ #include <ATen/ops/linalg_cholesky_compositeimplicitautograd_dispatch.h>
279
+ #include <ATen/ops/linalg_cond_compositeimplicitautograd_dispatch.h>
280
+ #include <ATen/ops/linalg_det_compositeimplicitautograd_dispatch.h>
281
+ #include <ATen/ops/linalg_diagonal_compositeimplicitautograd_dispatch.h>
282
+ #include <ATen/ops/linalg_eigh_compositeimplicitautograd_dispatch.h>
283
+ #include <ATen/ops/linalg_eigvals_compositeimplicitautograd_dispatch.h>
284
+ #include <ATen/ops/linalg_eigvalsh_compositeimplicitautograd_dispatch.h>
285
+ #include <ATen/ops/linalg_inv_compositeimplicitautograd_dispatch.h>
286
+ #include <ATen/ops/linalg_ldl_factor_compositeimplicitautograd_dispatch.h>
287
+ #include <ATen/ops/linalg_lu_factor_compositeimplicitautograd_dispatch.h>
288
+ #include <ATen/ops/linalg_matmul_compositeimplicitautograd_dispatch.h>
289
+ #include <ATen/ops/linalg_matrix_norm_compositeimplicitautograd_dispatch.h>
290
+ #include <ATen/ops/linalg_matrix_power_compositeimplicitautograd_dispatch.h>
291
+ #include <ATen/ops/linalg_matrix_rank_compositeimplicitautograd_dispatch.h>
292
+ #include <ATen/ops/linalg_multi_dot_compositeimplicitautograd_dispatch.h>
293
+ #include <ATen/ops/linalg_norm_compositeimplicitautograd_dispatch.h>
294
+ #include <ATen/ops/linalg_pinv_compositeimplicitautograd_dispatch.h>
295
+ #include <ATen/ops/linalg_slogdet_compositeimplicitautograd_dispatch.h>
296
+ #include <ATen/ops/linalg_solve_compositeimplicitautograd_dispatch.h>
297
+ #include <ATen/ops/linalg_solve_ex_compositeimplicitautograd_dispatch.h>
298
+ #include <ATen/ops/linalg_svd_compositeimplicitautograd_dispatch.h>
299
+ #include <ATen/ops/linalg_svdvals_compositeimplicitautograd_dispatch.h>
300
+ #include <ATen/ops/linalg_tensorinv_compositeimplicitautograd_dispatch.h>
301
+ #include <ATen/ops/linalg_tensorsolve_compositeimplicitautograd_dispatch.h>
302
+ #include <ATen/ops/linalg_vander_compositeimplicitautograd_dispatch.h>
303
+ #include <ATen/ops/linalg_vecdot_compositeimplicitautograd_dispatch.h>
304
+ #include <ATen/ops/linear_compositeimplicitautograd_dispatch.h>
305
+ #include <ATen/ops/log_sigmoid_compositeimplicitautograd_dispatch.h>
306
+ #include <ATen/ops/log_softmax_compositeimplicitautograd_dispatch.h>
307
+ #include <ATen/ops/logcumsumexp_compositeimplicitautograd_dispatch.h>
308
+ #include <ATen/ops/logdet_compositeimplicitautograd_dispatch.h>
309
+ #include <ATen/ops/logsumexp_compositeimplicitautograd_dispatch.h>
310
+ #include <ATen/ops/lstm_compositeimplicitautograd_dispatch.h>
311
+ #include <ATen/ops/lstm_cell_compositeimplicitautograd_dispatch.h>
312
+ #include <ATen/ops/lu_solve_compositeimplicitautograd_dispatch.h>
313
+ #include <ATen/ops/mH_compositeimplicitautograd_dispatch.h>
314
+ #include <ATen/ops/mT_compositeimplicitautograd_dispatch.h>
315
+ #include <ATen/ops/margin_ranking_loss_compositeimplicitautograd_dispatch.h>
316
+ #include <ATen/ops/masked_select_backward_compositeimplicitautograd_dispatch.h>
317
+ #include <ATen/ops/matmul_compositeimplicitautograd_dispatch.h>
318
+ #include <ATen/ops/matrix_H_compositeimplicitautograd_dispatch.h>
319
+ #include <ATen/ops/matrix_exp_compositeimplicitautograd_dispatch.h>
320
+ #include <ATen/ops/matrix_exp_backward_compositeimplicitautograd_dispatch.h>
321
+ #include <ATen/ops/matrix_power_compositeimplicitautograd_dispatch.h>
322
+ #include <ATen/ops/max_compositeimplicitautograd_dispatch.h>
323
+ #include <ATen/ops/max_pool1d_compositeimplicitautograd_dispatch.h>
324
+ #include <ATen/ops/max_pool1d_with_indices_compositeimplicitautograd_dispatch.h>
325
+ #include <ATen/ops/max_pool2d_compositeimplicitautograd_dispatch.h>
326
+ #include <ATen/ops/max_pool3d_compositeimplicitautograd_dispatch.h>
327
+ #include <ATen/ops/mean_compositeimplicitautograd_dispatch.h>
328
+ #include <ATen/ops/median_compositeimplicitautograd_dispatch.h>
329
+ #include <ATen/ops/meshgrid_compositeimplicitautograd_dispatch.h>
330
+ #include <ATen/ops/min_compositeimplicitautograd_dispatch.h>
331
+ #include <ATen/ops/mish_backward_compositeimplicitautograd_dispatch.h>
332
+ #include <ATen/ops/mode_compositeimplicitautograd_dispatch.h>
333
+ #include <ATen/ops/moveaxis_compositeimplicitautograd_dispatch.h>
334
+ #include <ATen/ops/movedim_compositeimplicitautograd_dispatch.h>
335
+ #include <ATen/ops/msort_compositeimplicitautograd_dispatch.h>
336
+ #include <ATen/ops/multilabel_margin_loss_compositeimplicitautograd_dispatch.h>
337
+ #include <ATen/ops/multiply_compositeimplicitautograd_dispatch.h>
338
+ #include <ATen/ops/nanmean_compositeimplicitautograd_dispatch.h>
339
+ #include <ATen/ops/nanmedian_compositeimplicitautograd_dispatch.h>
340
+ #include <ATen/ops/nanquantile_compositeimplicitautograd_dispatch.h>
341
+ #include <ATen/ops/narrow_compositeimplicitautograd_dispatch.h>
342
+ #include <ATen/ops/native_channel_shuffle_compositeimplicitautograd_dispatch.h>
343
+ #include <ATen/ops/negative_compositeimplicitautograd_dispatch.h>
344
+ #include <ATen/ops/nested_to_padded_tensor_compositeimplicitautograd_dispatch.h>
345
+ #include <ATen/ops/nll_loss_compositeimplicitautograd_dispatch.h>
346
+ #include <ATen/ops/nll_loss2d_compositeimplicitautograd_dispatch.h>
347
+ #include <ATen/ops/nll_loss_nd_compositeimplicitautograd_dispatch.h>
348
+ #include <ATen/ops/nonzero_numpy_compositeimplicitautograd_dispatch.h>
349
+ #include <ATen/ops/norm_compositeimplicitautograd_dispatch.h>
350
+ #include <ATen/ops/norm_except_dim_compositeimplicitautograd_dispatch.h>
351
+ #include <ATen/ops/not_equal_compositeimplicitautograd_dispatch.h>
352
+ #include <ATen/ops/nuclear_norm_compositeimplicitautograd_dispatch.h>
353
+ #include <ATen/ops/numpy_T_compositeimplicitautograd_dispatch.h>
354
+ #include <ATen/ops/one_hot_compositeimplicitautograd_dispatch.h>
355
+ #include <ATen/ops/or_compositeimplicitautograd_dispatch.h>
356
+ #include <ATen/ops/orgqr_compositeimplicitautograd_dispatch.h>
357
+ #include <ATen/ops/outer_compositeimplicitautograd_dispatch.h>
358
+ #include <ATen/ops/output_nr_compositeimplicitautograd_dispatch.h>
359
+ #include <ATen/ops/pad_compositeimplicitautograd_dispatch.h>
360
+ #include <ATen/ops/pad_sequence_compositeimplicitautograd_dispatch.h>
361
+ #include <ATen/ops/pairwise_distance_compositeimplicitautograd_dispatch.h>
362
+ #include <ATen/ops/pdist_compositeimplicitautograd_dispatch.h>
363
+ #include <ATen/ops/pin_memory_compositeimplicitautograd_dispatch.h>
364
+ #include <ATen/ops/pinverse_compositeimplicitautograd_dispatch.h>
365
+ #include <ATen/ops/poisson_nll_loss_compositeimplicitautograd_dispatch.h>
366
+ #include <ATen/ops/positive_compositeimplicitautograd_dispatch.h>
367
+ #include <ATen/ops/prelu_compositeimplicitautograd_dispatch.h>
368
+ #include <ATen/ops/prod_compositeimplicitautograd_dispatch.h>
369
+ #include <ATen/ops/promote_types_compositeimplicitautograd_dispatch.h>
370
+ #include <ATen/ops/qr_compositeimplicitautograd_dispatch.h>
371
+ #include <ATen/ops/quantile_compositeimplicitautograd_dispatch.h>
372
+ #include <ATen/ops/quantized_gru_cell_compositeimplicitautograd_dispatch.h>
373
+ #include <ATen/ops/quantized_lstm_cell_compositeimplicitautograd_dispatch.h>
374
+ #include <ATen/ops/quantized_rnn_relu_cell_compositeimplicitautograd_dispatch.h>
375
+ #include <ATen/ops/quantized_rnn_tanh_cell_compositeimplicitautograd_dispatch.h>
376
+ #include <ATen/ops/rand_compositeimplicitautograd_dispatch.h>
377
+ #include <ATen/ops/randn_compositeimplicitautograd_dispatch.h>
378
+ #include <ATen/ops/ravel_compositeimplicitautograd_dispatch.h>
379
+ #include <ATen/ops/real_compositeimplicitautograd_dispatch.h>
380
+ #include <ATen/ops/refine_names_compositeimplicitautograd_dispatch.h>
381
+ #include <ATen/ops/relu6_compositeimplicitautograd_dispatch.h>
382
+ #include <ATen/ops/rename_compositeimplicitautograd_dispatch.h>
383
+ #include <ATen/ops/repeat_interleave_compositeimplicitautograd_dispatch.h>
384
+ #include <ATen/ops/requires_grad_compositeimplicitautograd_dispatch.h>
385
+ #include <ATen/ops/reshape_compositeimplicitautograd_dispatch.h>
386
+ #include <ATen/ops/reshape_as_compositeimplicitautograd_dispatch.h>
387
+ #include <ATen/ops/resolve_conj_compositeimplicitautograd_dispatch.h>
388
+ #include <ATen/ops/resolve_neg_compositeimplicitautograd_dispatch.h>
389
+ #include <ATen/ops/result_type_compositeimplicitautograd_dispatch.h>
390
+ #include <ATen/ops/retain_grad_compositeimplicitautograd_dispatch.h>
391
+ #include <ATen/ops/retains_grad_compositeimplicitautograd_dispatch.h>
392
+ #include <ATen/ops/rms_norm_compositeimplicitautograd_dispatch.h>
393
+ #include <ATen/ops/rnn_relu_compositeimplicitautograd_dispatch.h>
394
+ #include <ATen/ops/rnn_relu_cell_compositeimplicitautograd_dispatch.h>
395
+ #include <ATen/ops/rnn_tanh_compositeimplicitautograd_dispatch.h>
396
+ #include <ATen/ops/rnn_tanh_cell_compositeimplicitautograd_dispatch.h>
397
+ #include <ATen/ops/row_stack_compositeimplicitautograd_dispatch.h>
398
+ #include <ATen/ops/rrelu_compositeimplicitautograd_dispatch.h>
399
+ #include <ATen/ops/scaled_dot_product_attention_compositeimplicitautograd_dispatch.h>
400
+ #include <ATen/ops/scatter_compositeimplicitautograd_dispatch.h>
401
+ #include <ATen/ops/scatter_add_compositeimplicitautograd_dispatch.h>
402
+ #include <ATen/ops/select_compositeimplicitautograd_dispatch.h>
403
+ #include <ATen/ops/selu_compositeimplicitautograd_dispatch.h>
404
+ #include <ATen/ops/set_compositeimplicitautograd_dispatch.h>
405
+ #include <ATen/ops/set_data_compositeimplicitautograd_dispatch.h>
406
+ #include <ATen/ops/silu_backward_compositeimplicitautograd_dispatch.h>
407
+ #include <ATen/ops/size_compositeimplicitautograd_dispatch.h>
408
+ #include <ATen/ops/slogdet_compositeimplicitautograd_dispatch.h>
409
+ #include <ATen/ops/slow_conv3d_compositeimplicitautograd_dispatch.h>
410
+ #include <ATen/ops/smm_compositeimplicitautograd_dispatch.h>
411
+ #include <ATen/ops/softmax_compositeimplicitautograd_dispatch.h>
412
+ #include <ATen/ops/sort_compositeimplicitautograd_dispatch.h>
413
+ #include <ATen/ops/sparse_bsc_tensor_compositeimplicitautograd_dispatch.h>
414
+ #include <ATen/ops/sparse_bsr_tensor_compositeimplicitautograd_dispatch.h>
415
+ #include <ATen/ops/sparse_coo_tensor_compositeimplicitautograd_dispatch.h>
416
+ #include <ATen/ops/sparse_csc_tensor_compositeimplicitautograd_dispatch.h>
417
+ #include <ATen/ops/sparse_csr_tensor_compositeimplicitautograd_dispatch.h>
418
+ #include <ATen/ops/special_digamma_compositeimplicitautograd_dispatch.h>
419
+ #include <ATen/ops/special_erf_compositeimplicitautograd_dispatch.h>
420
+ #include <ATen/ops/special_erfc_compositeimplicitautograd_dispatch.h>
421
+ #include <ATen/ops/special_erfinv_compositeimplicitautograd_dispatch.h>
422
+ #include <ATen/ops/special_exp2_compositeimplicitautograd_dispatch.h>
423
+ #include <ATen/ops/special_expit_compositeimplicitautograd_dispatch.h>
424
+ #include <ATen/ops/special_expm1_compositeimplicitautograd_dispatch.h>
425
+ #include <ATen/ops/special_gammainc_compositeimplicitautograd_dispatch.h>
426
+ #include <ATen/ops/special_gammaincc_compositeimplicitautograd_dispatch.h>
427
+ #include <ATen/ops/special_gammaln_compositeimplicitautograd_dispatch.h>
428
+ #include <ATen/ops/special_i0_compositeimplicitautograd_dispatch.h>
429
+ #include <ATen/ops/special_log1p_compositeimplicitautograd_dispatch.h>
430
+ #include <ATen/ops/special_log_softmax_compositeimplicitautograd_dispatch.h>
431
+ #include <ATen/ops/special_logit_compositeimplicitautograd_dispatch.h>
432
+ #include <ATen/ops/special_logsumexp_compositeimplicitautograd_dispatch.h>
433
+ #include <ATen/ops/special_multigammaln_compositeimplicitautograd_dispatch.h>
434
+ #include <ATen/ops/special_ndtr_compositeimplicitautograd_dispatch.h>
435
+ #include <ATen/ops/special_polygamma_compositeimplicitautograd_dispatch.h>
436
+ #include <ATen/ops/special_psi_compositeimplicitautograd_dispatch.h>
437
+ #include <ATen/ops/special_round_compositeimplicitautograd_dispatch.h>
438
+ #include <ATen/ops/special_sinc_compositeimplicitautograd_dispatch.h>
439
+ #include <ATen/ops/special_softmax_compositeimplicitautograd_dispatch.h>
440
+ #include <ATen/ops/special_xlogy_compositeimplicitautograd_dispatch.h>
441
+ #include <ATen/ops/split_compositeimplicitautograd_dispatch.h>
442
+ #include <ATen/ops/square_compositeimplicitautograd_dispatch.h>
443
+ #include <ATen/ops/squeeze_compositeimplicitautograd_dispatch.h>
444
+ #include <ATen/ops/sspaddmm_compositeimplicitautograd_dispatch.h>
445
+ #include <ATen/ops/std_compositeimplicitautograd_dispatch.h>
446
+ #include <ATen/ops/std_mean_compositeimplicitautograd_dispatch.h>
447
+ #include <ATen/ops/stft_compositeimplicitautograd_dispatch.h>
448
+ #include <ATen/ops/stride_compositeimplicitautograd_dispatch.h>
449
+ #include <ATen/ops/subtract_compositeimplicitautograd_dispatch.h>
450
+ #include <ATen/ops/sum_compositeimplicitautograd_dispatch.h>
451
+ #include <ATen/ops/sum_to_size_compositeimplicitautograd_dispatch.h>
452
+ #include <ATen/ops/svd_compositeimplicitautograd_dispatch.h>
453
+ #include <ATen/ops/swapaxes_compositeimplicitautograd_dispatch.h>
454
+ #include <ATen/ops/swapdims_compositeimplicitautograd_dispatch.h>
455
+ #include <ATen/ops/sym_is_contiguous_compositeimplicitautograd_dispatch.h>
456
+ #include <ATen/ops/sym_numel_compositeimplicitautograd_dispatch.h>
457
+ #include <ATen/ops/sym_size_compositeimplicitautograd_dispatch.h>
458
+ #include <ATen/ops/sym_storage_offset_compositeimplicitautograd_dispatch.h>
459
+ #include <ATen/ops/sym_stride_compositeimplicitautograd_dispatch.h>
460
+ #include <ATen/ops/take_along_dim_compositeimplicitautograd_dispatch.h>
461
+ #include <ATen/ops/tensor_split_compositeimplicitautograd_dispatch.h>
462
+ #include <ATen/ops/tensordot_compositeimplicitautograd_dispatch.h>
463
+ #include <ATen/ops/thnn_conv2d_compositeimplicitautograd_dispatch.h>
464
+ #include <ATen/ops/tile_compositeimplicitautograd_dispatch.h>
465
+ #include <ATen/ops/to_compositeimplicitautograd_dispatch.h>
466
+ #include <ATen/ops/to_dense_compositeimplicitautograd_dispatch.h>
467
+ #include <ATen/ops/to_dense_backward_compositeimplicitautograd_dispatch.h>
468
+ #include <ATen/ops/to_mkldnn_backward_compositeimplicitautograd_dispatch.h>
469
+ #include <ATen/ops/to_sparse_compositeimplicitautograd_dispatch.h>
470
+ #include <ATen/ops/to_sparse_bsc_compositeimplicitautograd_dispatch.h>
471
+ #include <ATen/ops/to_sparse_bsr_compositeimplicitautograd_dispatch.h>
472
+ #include <ATen/ops/to_sparse_csc_compositeimplicitautograd_dispatch.h>
473
+ #include <ATen/ops/to_sparse_csr_compositeimplicitautograd_dispatch.h>
474
+ #include <ATen/ops/trace_backward_compositeimplicitautograd_dispatch.h>
475
+ #include <ATen/ops/transpose_compositeimplicitautograd_dispatch.h>
476
+ #include <ATen/ops/trapezoid_compositeimplicitautograd_dispatch.h>
477
+ #include <ATen/ops/trapz_compositeimplicitautograd_dispatch.h>
478
+ #include <ATen/ops/triplet_margin_loss_compositeimplicitautograd_dispatch.h>
479
+ #include <ATen/ops/true_divide_compositeimplicitautograd_dispatch.h>
480
+ #include <ATen/ops/type_as_compositeimplicitautograd_dispatch.h>
481
+ #include <ATen/ops/unbind_compositeimplicitautograd_dispatch.h>
482
+ #include <ATen/ops/unflatten_compositeimplicitautograd_dispatch.h>
483
+ #include <ATen/ops/unflatten_dense_tensors_compositeimplicitautograd_dispatch.h>
484
+ #include <ATen/ops/unsafe_chunk_compositeimplicitautograd_dispatch.h>
485
+ #include <ATen/ops/upsample_bicubic2d_compositeimplicitautograd_dispatch.h>
486
+ #include <ATen/ops/upsample_bilinear2d_compositeimplicitautograd_dispatch.h>
487
+ #include <ATen/ops/upsample_linear1d_compositeimplicitautograd_dispatch.h>
488
+ #include <ATen/ops/upsample_nearest1d_compositeimplicitautograd_dispatch.h>
489
+ #include <ATen/ops/upsample_nearest2d_compositeimplicitautograd_dispatch.h>
490
+ #include <ATen/ops/upsample_nearest3d_compositeimplicitautograd_dispatch.h>
491
+ #include <ATen/ops/upsample_trilinear3d_compositeimplicitautograd_dispatch.h>
492
+ #include <ATen/ops/value_selecting_reduction_backward_compositeimplicitautograd_dispatch.h>
493
+ #include <ATen/ops/vander_compositeimplicitautograd_dispatch.h>
494
+ #include <ATen/ops/var_compositeimplicitautograd_dispatch.h>
495
+ #include <ATen/ops/var_mean_compositeimplicitautograd_dispatch.h>
496
+ #include <ATen/ops/view_as_compositeimplicitautograd_dispatch.h>
497
+ #include <ATen/ops/vsplit_compositeimplicitautograd_dispatch.h>
498
+ #include <ATen/ops/vstack_compositeimplicitautograd_dispatch.h>
499
+ #include <ATen/ops/where_compositeimplicitautograd_dispatch.h>
500
+ #include <ATen/ops/xor_compositeimplicitautograd_dispatch.h>
501
+
502
+
503
+
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeImplicitAutogradNestedTensorFunctions.h ADDED
@@ -0,0 +1,29 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #include <ATen/core/TensorBody.h>
2
+
3
+ // TODO Undo all logic introduced for Note [Avoiding Include Cycles In Static Dispatch]
4
+ // Code introduced to avoid cyclic dependency in static dispatch is no longer
5
+ // needed as static dispatch logic is moved from TensorBody.h, which caused cycles in the first place,
6
+ // to Operators.cpp for supporting multiple backends with multiple kernels.
7
+ //
8
+ // Note [Avoiding Include Cycles In Static Dispatch]
9
+ // In order to avoid #include cycles in the static dispatch build, we've carefully split out
10
+ // the static function definition files into {DispatchKey}Functions.h and {DispatchKey}Functions_inl.h.
11
+ //
12
+ // Without this split, the include cycle looks like TensorBody.h -> CPUFunctions.h -> TensorBody.h.
13
+ // - TensorBody.h #includes CPUFunctions.h in the static dispatch build, because the tensor methods
14
+ // all need to call into the fastpath C++ API defined in CPUFunctions.h. The methods are also all
15
+ // directly inlined into TensorBody.h.
16
+ // - CPUFunctions.h #includes TensorBody.h because it contains function declarations for the entire C++ API,
17
+ // which include functions that have defaultable std::optional<Tensor> arguments.
18
+ // That requires knowing the full Tensor class definition.
19
+ //
20
+ // We break the cycle by doing the following:
21
+ // - Split out CPUFunction.h into two files: CPUFunctions.h and CPUFunctions_inl.h
22
+ // - CPUFunction.h is a dummy file that just includes the Tensor class and includes CPUFunctions_inl.,
23
+ // - CPUFunctions_inl.h includes everything else
24
+ // - (only in the static dispatch build) TensorBody.h makes sure to finish defining the Tensor class,
25
+ // and then it includes CPUFunctions_inl.h.
26
+ // - All other files that want the cpu fastpath functions can include CPUFunctions.h directly.
27
+ // - This also means that static dispatch build, CPUFunctions.h only needs to
28
+ // #include TensorBody.h, and it will automatically bring in CPUFunctions_inl.h.
29
+ #include <ATen/CompositeImplicitAutogradNestedTensorFunctions_inl.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/CompositeImplicitAutogradNestedTensorFunctions_inl.h ADDED
@@ -0,0 +1,25 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+ // @generated by torchgen/gen.py from DispatchKeyFunctions_inl.h
3
+
4
+ // NB: The implementing C++ file is RegisterDispatchKey.cpp
5
+
6
+ // The only #includes we need are for custom classes that have defaults in the C++ API
7
+ #include <c10/core/MemoryFormat.h>
8
+ #include <c10/core/Scalar.h>
9
+ #include <ATen/core/Reduction.h>
10
+
11
+ #if defined(AT_PER_OPERATOR_HEADERS) && defined(TORCH_ASSERT_ONLY_METHOD_OPERATORS)
12
+ #error This change adds a dependency on all pytorch operators, meaning the \
13
+ file will need to be re-compiled every time an operator is changed or added. \
14
+ Consider including a specific operator from \
15
+ <ATen/ops/{my_operator}_compositeimplicitautogradnestedtensor_dispatch.h>. \
16
+ See NOTE [TORCH_ASSERT_ONLY_METHOD_OPERATORS].
17
+ #endif
18
+
19
+ #include <ATen/ops/randn_like_compositeimplicitautogradnestedtensor_dispatch.h>
20
+ #include <ATen/ops/reshape_compositeimplicitautogradnestedtensor_dispatch.h>
21
+ #include <ATen/ops/reshape_as_compositeimplicitautogradnestedtensor_dispatch.h>
22
+ #include <ATen/ops/zeros_like_compositeimplicitautogradnestedtensor_dispatch.h>
23
+
24
+
25
+
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Config.h ADDED
@@ -0,0 +1,23 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ // Test these using #if AT_MKL_ENABLED(), not #ifdef, so that it's
4
+ // obvious if you forgot to include Config.h
5
+ // c.f. https://stackoverflow.com/questions/33759787/generating-an-error-if-checked-boolean-macro-is-not-defined
6
+ //
7
+ // DO NOT put the macros for CUDA libraries in this file; they belong in cuda/CUDAConfig.h
8
+
9
+ #define AT_MKLDNN_ENABLED() 1
10
+ #define AT_MKLDNN_ACL_ENABLED() 0
11
+ #define AT_MKL_ENABLED() 1
12
+ #define AT_MKL_SEQUENTIAL() 0
13
+ #define AT_POCKETFFT_ENABLED() 0
14
+ #define AT_NNPACK_ENABLED() 1
15
+ #define CAFFE2_STATIC_LINK_CUDA() 0
16
+ #define AT_BUILD_WITH_BLAS() 1
17
+ #define AT_BUILD_WITH_LAPACK() 1
18
+ #define AT_PARALLEL_OPENMP 1
19
+ #define AT_PARALLEL_NATIVE 0
20
+ #define AT_BLAS_F2C() 0
21
+ #define AT_BLAS_USE_CBLAS_DOT() 0
22
+ #define AT_KLEIDIAI_ENABLED() 0
23
+ #define AT_USE_EIGEN_SPARSE() 0
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Context.h ADDED
@@ -0,0 +1,688 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/BlasBackend.h>
4
+ #include <ATen/CPUGeneratorImpl.h>
5
+ #include <ATen/DeviceAccelerator.h>
6
+ #include <ATen/LinalgBackend.h>
7
+ #include <ATen/ROCmFABackend.h>
8
+ #include <ATen/SDPBackend.h>
9
+ #include <ATen/core/ATenGeneral.h>
10
+ #include <ATen/core/DeprecatedTypeProperties.h>
11
+ #include <ATen/core/Generator.h>
12
+ #include <ATen/core/LegacyTypeDispatch.h>
13
+ #include <ATen/detail/AcceleratorHooksInterface.h>
14
+ #include <ATen/detail/CUDAHooksInterface.h>
15
+ #include <ATen/detail/HIPHooksInterface.h>
16
+ #include <ATen/detail/HPUHooksInterface.h>
17
+ #include <ATen/detail/IPUHooksInterface.h>
18
+ #include <ATen/detail/MAIAHooksInterface.h>
19
+ #include <ATen/detail/MPSHooksInterface.h>
20
+ #include <ATen/detail/MTIAHooksInterface.h>
21
+ #include <ATen/detail/PrivateUse1HooksInterface.h>
22
+ #include <ATen/detail/XPUHooksInterface.h>
23
+ #include <c10/core/QEngine.h>
24
+ #include <c10/core/impl/DeviceGuardImplInterface.h>
25
+ #include <c10/util/CallOnce.h>
26
+ #include <c10/util/Exception.h>
27
+ #include <c10/util/env.h>
28
+ #include <c10/util/irange.h>
29
+
30
+ #include <cstdint>
31
+ #include <map>
32
+ #include <mutex>
33
+
34
+ namespace at {
35
+
36
+ class Tensor;
37
+
38
+ enum class TORCH_API Float32MatmulPrecision { HIGHEST, HIGH, MEDIUM };
39
+
40
+ class TORCH_API Context {
41
+ public:
42
+ Context();
43
+
44
+ const Generator& defaultGenerator(Device device) {
45
+ c10::DeviceType device_type = device.type();
46
+ lazyInitDevice(device_type);
47
+
48
+ if (device_type == at::kCPU) {
49
+ return at::detail::getDefaultCPUGenerator();
50
+ } else {
51
+ return getAcceleratorHooksInterface(device_type)
52
+ .getDefaultGenerator(device.index());
53
+ }
54
+ }
55
+
56
+ const AcceleratorHooksInterface& getAcceleratorHooksInterface(
57
+ std::optional<c10::DeviceType> opt_device_type = std::nullopt) {
58
+ if (!opt_device_type.has_value()) {
59
+ opt_device_type = at::getAccelerator(true);
60
+ }
61
+ if (opt_device_type == at::kCUDA) {
62
+ return at::detail::getCUDAHooks();
63
+ } else if (opt_device_type == at::kXPU) {
64
+ return at::detail::getXPUHooks();
65
+ } else if (opt_device_type == at::kMPS) {
66
+ return at::detail::getMPSHooks();
67
+ } else if (opt_device_type == at::kPrivateUse1) {
68
+ return at::detail::getPrivateUse1Hooks();
69
+ } else if (opt_device_type == at::kMTIA) {
70
+ return at::detail::getMTIAHooks();
71
+ } else if (opt_device_type == at::kHIP) {
72
+ return at::detail::getHIPHooks();
73
+ } else if (opt_device_type == at::kHPU) {
74
+ return at::detail::getHPUHooks();
75
+ } else {
76
+ TORCH_CHECK(
77
+ false,
78
+ opt_device_type.has_value()
79
+ ? c10::DeviceTypeName(opt_device_type.value())
80
+ : "None",
81
+ " device type not an accelerator.");
82
+ }
83
+ }
84
+
85
+ Device getDeviceFromPtr(void* data, c10::DeviceType device_type) {
86
+ lazyInitDevice(device_type);
87
+
88
+ if (device_type == at::kCPU) {
89
+ return c10::DeviceType::CPU;
90
+ } else {
91
+ return getAcceleratorHooksInterface(device_type).getDeviceFromPtr(data);
92
+ }
93
+ }
94
+
95
+ bool isPinnedPtr(
96
+ const void* data,
97
+ std::optional<c10::DeviceType> device_type = std::nullopt) {
98
+ auto opt_device_type =
99
+ device_type.has_value() ? device_type : at::getAccelerator();
100
+ if (!opt_device_type.has_value() || // there is no accelerator
101
+ !at::isAccelerator(
102
+ opt_device_type.value())) { // passed device not an accelerator
103
+ return false;
104
+ }
105
+ if (!init_[static_cast<int8_t>(opt_device_type.value())].test_once()) {
106
+ // If the device is not initialized, no pointer can be pinned for it
107
+ return false;
108
+ }
109
+ return getAcceleratorHooksInterface(opt_device_type).isPinnedPtr(data);
110
+ }
111
+
112
+ Allocator* getPinnedMemoryAllocator(
113
+ std::optional<c10::DeviceType> device_type = std::nullopt) {
114
+ auto opt_device_type =
115
+ device_type.has_value() ? device_type : at::getAccelerator();
116
+ if (opt_device_type) {
117
+ lazyInitDevice(opt_device_type.value());
118
+ }
119
+ return getAcceleratorHooksInterface(device_type).getPinnedMemoryAllocator();
120
+ }
121
+
122
+ void lazyInitDevice(c10::DeviceType device_type) {
123
+ if (device_type != at::kCPU) {
124
+ c10::call_once(init_[static_cast<int8_t>(device_type)], [&] {
125
+ getAcceleratorHooksInterface(device_type).init();
126
+ });
127
+ }
128
+ }
129
+
130
+ static bool hasOpenMP();
131
+ static bool hasMKL();
132
+ static bool hasKleidiAI();
133
+ static bool hasLAPACK();
134
+ static bool hasMKLDNN();
135
+ static bool ckSupported();
136
+ static bool hasEigenSparse();
137
+ static bool hasMAGMA() {
138
+ return detail::getCUDAHooks().hasMAGMA();
139
+ }
140
+ static bool hasCUDA() {
141
+ return detail::getCUDAHooks().hasCUDA();
142
+ }
143
+ static bool hasMTIA() {
144
+ return detail::getMTIAHooks().hasMTIA();
145
+ }
146
+ static bool hasCUDART() {
147
+ return detail::getCUDAHooks().hasCUDART();
148
+ }
149
+ static long versionCUDART() {
150
+ return detail::getCUDAHooks().versionCUDART();
151
+ }
152
+ static bool hasCuDNN() {
153
+ return detail::getCUDAHooks().hasCuDNN();
154
+ }
155
+ static long versionCuDNN() {
156
+ return detail::getCUDAHooks().versionCuDNN();
157
+ }
158
+ static bool hasCuSOLVER() {
159
+ return detail::getCUDAHooks().hasCuSOLVER();
160
+ }
161
+ static bool hasCuBLASLt() {
162
+ return detail::getCUDAHooks().hasCuBLASLt();
163
+ }
164
+ static bool hasROCM() {
165
+ return detail::getCUDAHooks().hasROCM();
166
+ }
167
+ static bool hasCKSDPA() {
168
+ return detail::getCUDAHooks().hasCKSDPA();
169
+ }
170
+ static bool hasCKGEMM() {
171
+ return detail::getCUDAHooks().hasCKGEMM();
172
+ }
173
+ static bool hasHIP() {
174
+ return detail::getHIPHooks().hasHIP();
175
+ }
176
+ static bool hasMPS() {
177
+ return detail::getMPSHooks().hasMPS();
178
+ }
179
+ static bool hasIPU() {
180
+ return c10::impl::hasDeviceGuardImpl(c10::DeviceType::IPU);
181
+ }
182
+ static bool hasXLA() {
183
+ return c10::impl::hasDeviceGuardImpl(c10::DeviceType::XLA);
184
+ }
185
+ static bool hasXPU() {
186
+ return detail::getXPUHooks().hasXPU();
187
+ }
188
+ static bool hasLazy() {
189
+ return c10::impl::hasDeviceGuardImpl(c10::DeviceType::Lazy);
190
+ }
191
+ static bool hasMAIA() {
192
+ return c10::impl::hasDeviceGuardImpl(c10::DeviceType::MAIA);
193
+ }
194
+ static bool hasHPU() {
195
+ return detail::getHPUHooks().hasHPU();
196
+ }
197
+
198
+ static const at::cuda::NVRTC& getNVRTC() {
199
+ return detail::getCUDAHooks().nvrtc();
200
+ }
201
+
202
+ static bool setFlushDenormal(bool on);
203
+
204
+ // NB: This method is *purely* whether or not a user requested
205
+ // that CuDNN was enabled, it doesn't actually say anything about
206
+ // whether or not CuDNN is actually usable. Use cudnn_is_acceptable
207
+ // to test this instead
208
+ bool userEnabledCuDNN() const;
209
+ void setUserEnabledCuDNN(bool e);
210
+ bool userEnabledMkldnn() const;
211
+ void setUserEnabledMkldnn(bool e);
212
+ bool benchmarkCuDNN() const;
213
+ void setBenchmarkCuDNN(bool);
214
+ int benchmarkLimitCuDNN() const;
215
+ void setBenchmarkLimitCuDNN(int);
216
+ bool immediateMiopen() const;
217
+ void setImmediateMiopen(bool);
218
+ bool deterministicCuDNN() const;
219
+ void setDeterministicCuDNN(bool);
220
+ bool deterministicMkldnn() const;
221
+ void setDeterministicMkldnn(bool);
222
+ bool userEnabledNNPACK() const;
223
+ void setUserEnabledNNPACK(bool e);
224
+
225
+ // Note [Disabling Fused SDP Kernels]
226
+ // ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
227
+ // Flash and Memory Efficient SDP kernels are enabled by default.
228
+ // However, they can be disabled by setting
229
+ // at::globalContext().setUserEnabledFlashSDP(false) flag.
230
+ // This is useful for debugging purposes. For example, if you want to
231
+ // compare the performance of the flash SDP kernels with the unfused
232
+ // kernel, you can disable the flash SDP kernels. By disabling
233
+ // the math SDP kernel, you can force your code to use flash kernels.
234
+ // The math SDP kernel can be disabled by setting
235
+ // at::globalContext().setUserEnabledMathSDP(false) flag.
236
+ void setSDPPriorityOrder(const std::vector<int64_t>& order);
237
+ std::array<at::SDPBackend, at::num_sdp_backends> sDPPriorityOrder();
238
+
239
+ void setSDPUseFlash(bool);
240
+ bool userEnabledFlashSDP() const;
241
+
242
+ void setSDPUseMemEfficient(bool);
243
+ bool userEnabledMemEfficientSDP() const;
244
+
245
+ void setSDPUseMath(bool);
246
+ bool userEnabledMathSDP() const;
247
+
248
+ void setSDPUseCuDNN(bool);
249
+ bool userEnabledCuDNNSDP() const;
250
+
251
+ void setAllowFP16BF16ReductionMathSDP(bool);
252
+ bool allowFP16BF16ReductionMathSDP() const;
253
+
254
+ void setSDPUseOverrideable(bool);
255
+ bool userEnabledOverrideableSDP() const;
256
+
257
+ at::LinalgBackend linalgPreferredBackend() const;
258
+ void setLinalgPreferredBackend(at::LinalgBackend);
259
+
260
+ at::BlasBackend blasPreferredBackend();
261
+ void setBlasPreferredBackend(at::BlasBackend);
262
+
263
+ at::ROCmFABackend getROCmFAPreferredBackend();
264
+ void setROCmFAPreferredBackend(at::ROCmFABackend);
265
+
266
+ // Note [Enabling Deterministic Operations]
267
+ // ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
268
+ // Operations in PyTorch that normally act nondeterministically, but have an
269
+ // alternate deterministic implementation, should satisfy the following
270
+ // requirements:
271
+ //
272
+ // * Include this comment: "See Note [Enabling Deterministic Operations]"
273
+ //
274
+ // * Check the value of `at::globalContext().deterministicAlgorithms()` to
275
+ // toggle
276
+ // between nondeterministic and deterministic implementations.
277
+ //
278
+ // * Have an entry in the list of PyTorch operations that toggle between
279
+ // nondeterministic
280
+ // and deterministic implementations, in the docstring of
281
+ // `use_deterministic_algorithms()` in torch/__init__.py
282
+ //
283
+ // `example_func()` below shows an example of toggling between
284
+ // nondeterministic and deterministic implementations:
285
+ //
286
+ // void example_func() {
287
+ // // See Note [Enabling Deterministic Operations]
288
+ // if (at::globalContext().deterministicAlgorithms()) {
289
+ // example_func_deterministic();
290
+ // } else {
291
+ // example_func_nondeterministic();
292
+ // }
293
+ // }
294
+
295
+ bool deterministicAlgorithms() const;
296
+ bool deterministicAlgorithmsWarnOnly() const;
297
+ void setDeterministicAlgorithms(bool, bool);
298
+ bool deterministicFillUninitializedMemory() const;
299
+ void setDeterministicFillUninitializedMemory(bool);
300
+
301
+ // Note [Writing Nondeterministic Operations]
302
+ // ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
303
+ // Operations in PyTorch that act nondeterministically and do not have an
304
+ // alternate deterministic implementation should satisfy the following
305
+ // requirements:
306
+ //
307
+ // * Include this comment: "See Note [Writing Nondeterministic Operations]"
308
+ //
309
+ // * Include a comment explaining why the operation is nondeterministic.
310
+ //
311
+ // * Throw an error when `Context::deterministicAlgorithms()` is true. Most
312
+ // of the time, this should be accomplished by calling
313
+ // `at::globalContext().alertNotDeterminstic()`. However, if the
314
+ // nondeterministic behavior is caused by the CuBLAS workspace
315
+ // configuration in CUDA >= 10.2,
316
+ // `at::globalContext().alertCuBLASConfigNotDeterministic()` should be
317
+ // called instead (in this case, a comment explaining why the operation is
318
+ // nondeterministic is not necessary). See below for details on these
319
+ // methods.
320
+ //
321
+ // * Have an entry in the list of nondeterministic PyTorch operations in the
322
+ // docstring of `use_deterministic_algorithms()` in torch/__init__.py
323
+ //
324
+ // * Have a test function in `test/test_torch.py` whose name begins with
325
+ // `test_nondeterministic_alert_`. Alternatively, if CuBLAS workspace
326
+ // configuration is the reason for nondeterminism, the operation should be
327
+ // included in the `test_cublas_config_nondeterministic_alert` test. Any new
328
+ // tests should ideally follow a pattern similar to the existing ones.
329
+ //
330
+ // `example_func()` below shows an example of the comments and error-throwing
331
+ // code for a nondeterministic operation:
332
+ //
333
+ // void example_func() {
334
+ // // See Note [Writing Nondeterministic Operations]
335
+ // // Nondeterministic because <reason>
336
+ // at::globalContext().alertNondeterministic("example_func");
337
+ // ...
338
+ // }
339
+
340
+ // Throws an error if `Context::deterministicAlgorithms()` is true
341
+ static void alertNotDeterministic(std::string_view const& caller);
342
+
343
+ // Throws an error if `Context::deterministicAlgorithms()` is true, CUDA
344
+ // >= 10.2, and CUBLAS_WORKSPACE_CONFIG is not set to either ":16:8" or
345
+ // ":4096:8". For more details:
346
+ // https://docs.nvidia.com/cuda/cublas/index.html#results-reproducibility
347
+ void alertCuBLASConfigNotDeterministic() const;
348
+
349
+ void setFloat32MatmulPrecision(const std::string& s);
350
+ void setFloat32Precision(
351
+ const std::string& backend,
352
+ const std::string& op,
353
+ const std::string& s);
354
+ bool allowTF32CuDNN(const std::string& op = std::string()) const;
355
+ void setAllowTF32CuDNN(bool);
356
+ bool allowTF32OneDNN() const;
357
+ void setAllowTF32OneDNN(bool);
358
+ bool allowTF32CuBLAS() const;
359
+ void setAllowTF32CuBLAS(bool);
360
+ Float32MatmulPrecision float32MatmulPrecision() const;
361
+ std::string float32Precision(
362
+ const std::string& backend,
363
+ const std::string& op) const;
364
+ bool allowFP16ReductionCuBLAS() const;
365
+ void setAllowFP16ReductionCuBLAS(bool);
366
+ bool allowBF16ReductionCuBLAS() const;
367
+ void setAllowBF16ReductionCuBLAS(bool);
368
+ bool allowFP16AccumulationCuBLAS() const;
369
+ void setAllowFP16AccumulationCuBLAS(bool);
370
+
371
+ // Matmuls can use a so-called "persistent" kernel which launches one CUDA
372
+ // block for each SM on the GPU, and each block then iterates over multiple
373
+ // output tiles. This allows to use software pipelining to hide the begin/end
374
+ // latencies (e.g., epilogue), especially when only one tile fits per SM.
375
+ // However, if some SMs are busy (e.g., with a background NCCL kernel), the
376
+ // matmul's blocks will be scheduled in two waves and, in the absence of some
377
+ // smart load balancing, the kernel will take twice as long. This flag allows
378
+ // to make matmuls target only a subset of the SMs, so they can fully schedule
379
+ // even next to a comms kernel, and only be a few percent slower.
380
+ std::optional<int32_t> _SMCarveout_EXPERIMENTAL() const;
381
+ void _setSMCarveout_EXPERIMENTAL(std::optional<int32_t>);
382
+
383
+ at::QEngine qEngine() const;
384
+ void setQEngine(at::QEngine e);
385
+ static const std::vector<at::QEngine>& supportedQEngines();
386
+ static bool isXNNPACKAvailable();
387
+ void setCheckSparseTensorInvariants(bool e);
388
+ bool checkSparseTensorInvariants() const;
389
+ // This method is used to release the original weight after pre-packing.
390
+ // It should be called once before loading/running the model.
391
+ // NB: By default it is set to true for mobile builds.
392
+ void setReleaseWeightsWhenPrepacking(bool e);
393
+ bool releaseWeightsWhenPrepacking() const;
394
+
395
+ void setDisplayVmapFallbackWarnings(bool enabled);
396
+ bool areVmapFallbackWarningsEnabled() const;
397
+
398
+ bool isDefaultMobileCPUAllocatorSet();
399
+ void setDefaultMobileCPUAllocator();
400
+ void unsetDefaultMobileCPUAllocator();
401
+ bool allowFP16ReductionCPU() const;
402
+ void setAllowFP16ReductionCPU(bool);
403
+
404
+ // Preserved for BC
405
+ void lazyInitCUDA() {
406
+ TORCH_WARN_DEPRECATION(
407
+ "lazyInitCUDA is deprecated. Please use lazyInitDevice(at::kCUDA) instead.")
408
+ lazyInitDevice(at::kCUDA);
409
+ }
410
+ void lazyInitHIP() {
411
+ TORCH_WARN_DEPRECATION(
412
+ "lazyInitHIP is deprecated. Please use lazyInitDevice(at::kHIP) instead.")
413
+ lazyInitDevice(at::kHIP);
414
+ }
415
+ void lazyInitXPU() {
416
+ TORCH_WARN_DEPRECATION(
417
+ "lazyInitXPU is deprecated. Please use lazyInitDevice(at::kXPU) instead.")
418
+ lazyInitDevice(at::kXPU);
419
+ }
420
+ void lazyInitMTIA() {
421
+ TORCH_WARN_DEPRECATION(
422
+ "lazyInitMTIA is deprecated. Please use lazyInitDevice(at::kMTIA) instead.")
423
+ lazyInitDevice(at::kMTIA);
424
+ }
425
+ void lazyInitPrivateUse1() {
426
+ TORCH_WARN_DEPRECATION(
427
+ "lazyInitPrivateUse1 is deprecated. Please use lazyInitDevice(at::kPrivateUse1) instead.")
428
+ lazyInitDevice(at::kPrivateUse1);
429
+ }
430
+
431
+ private:
432
+ static bool checkCuBLASConfigDeterministic();
433
+ std::array<c10::once_flag, at::COMPILE_TIME_MAX_DEVICE_TYPES> init_;
434
+ bool enabled_cudnn = true;
435
+ bool deterministic_cudnn = false;
436
+ bool deterministic_mkldnn = false;
437
+ bool _deterministic_algorithms = false;
438
+ bool _deterministic_algorithms_warn_only = false;
439
+ bool _deterministic_fill_uninitialized_memory = true;
440
+ std::array<at::SDPBackend, at::num_sdp_backends> sdp_priority_order = {
441
+ at::SDPBackend::flash_attention,
442
+ at::SDPBackend::efficient_attention,
443
+ at::SDPBackend::math,
444
+ at::SDPBackend::cudnn_attention,
445
+ at::SDPBackend::overrideable};
446
+ bool enabled_flashSDP = true;
447
+ bool enabled_mem_efficientSDP = true;
448
+ bool enabled_mathSDP = true;
449
+ bool enabled_cudnnSDP = true;
450
+ bool enabled_overrideable = true;
451
+ bool allow_fp16_bf16_reduction_mathSDP = false;
452
+ bool benchmark_cudnn = false;
453
+ bool immediate_miopen = false;
454
+ Float32MatmulPrecision float32_matmul_precision =
455
+ c10::utils::check_env("TORCH_ALLOW_TF32_CUBLAS_OVERRIDE") == true
456
+ ? at::Float32MatmulPrecision::HIGH
457
+ : at::Float32MatmulPrecision::HIGHEST;
458
+ int benchmark_limit_cudnn = 10;
459
+ bool allow_tf32_cudnn = true;
460
+ bool allow_fp16_reduction_cublas = true;
461
+ bool allow_bf16_reduction_cublas = true;
462
+ bool allow_fp16_accumulation_cublas = false;
463
+ std::optional<int32_t> sm_carveout = std::nullopt;
464
+ bool enabled_mkldnn = true;
465
+ bool allow_tf32_onednn = false;
466
+ bool enabled_nnpack = true;
467
+ at::LinalgBackend linalg_preferred_backend =
468
+ (c10::utils::check_env("TORCH_LINALG_PREFER_CUSOLVER") == true ||
469
+ c10::utils::check_env("TORCH_LINALG_PREFER_HIPSOLVER") == true) // alias
470
+ ? at::LinalgBackend::Cusolver
471
+ : at::LinalgBackend::Default;
472
+ at::BlasBackend blas_preferred_backend =
473
+ (c10::utils::check_env("TORCH_BLAS_PREFER_CUBLASLT") == true ||
474
+ c10::utils::check_env("TORCH_BLAS_PREFER_HIPBLASLT") == true) // alias
475
+ ? at::BlasBackend::Cublaslt
476
+ : at::BlasBackend::Default;
477
+ at::ROCmFABackend rocm_fa_preferred_backend =
478
+ c10::utils::check_env("TORCH_ROCM_FA_PREFER_CK") == true
479
+ ? at::ROCmFABackend::Ck
480
+ : at::ROCmFABackend::Default;
481
+ #ifdef C10_MOBILE
482
+ bool release_original_weights = true;
483
+ #else
484
+ bool release_original_weights = false;
485
+ #endif
486
+ bool display_vmap_fallback_warnings_ = false;
487
+ std::atomic<at::QEngine> quantized_engine = at::QEngine::NoQEngine;
488
+ bool enable_sparse_tensor_invariant_checks = false;
489
+ bool allow_fp16_reduction_cpu = false;
490
+
491
+ std::map<std::string, std::map<std::string, std::string>> fp32_precision = {
492
+ {"generic", {{"all", "none"}}},
493
+ {"mkldnn",
494
+ {{"matmul", "none"},
495
+ {"conv", "none"},
496
+ {"rnn", "none"},
497
+ {"all", "none"}}},
498
+ {"cuda",
499
+ {{"matmul",
500
+ float32_matmul_precision == at::Float32MatmulPrecision::HIGHEST
501
+ ? "none"
502
+ : "tf32"},
503
+ {"conv", "tf32"},
504
+ {"rnn", "tf32"},
505
+ {"all", "none"}}},
506
+ };
507
+
508
+ Allocator* prev_allocator_ptr_{nullptr};
509
+ };
510
+
511
+ TORCH_API Context& globalContext();
512
+
513
+ inline void init() {
514
+ globalContext();
515
+ }
516
+
517
+ TORCH_API Allocator* getCPUAllocator();
518
+
519
+ inline DeprecatedTypeProperties& getDeprecatedTypeProperties(
520
+ Backend p,
521
+ ScalarType s) {
522
+ return globalDeprecatedTypePropertiesRegistry().getDeprecatedTypeProperties(
523
+ p, s);
524
+ }
525
+
526
+ inline DeprecatedTypeProperties& CPU(ScalarType s) {
527
+ return globalDeprecatedTypePropertiesRegistry().getDeprecatedTypeProperties(
528
+ Backend::CPU, s);
529
+ }
530
+
531
+ inline DeprecatedTypeProperties& CUDA(ScalarType s) {
532
+ return globalDeprecatedTypePropertiesRegistry().getDeprecatedTypeProperties(
533
+ Backend::CUDA, s);
534
+ }
535
+
536
+ inline DeprecatedTypeProperties& HIP(ScalarType s) {
537
+ return globalDeprecatedTypePropertiesRegistry().getDeprecatedTypeProperties(
538
+ Backend::HIP, s);
539
+ }
540
+
541
+ inline DeprecatedTypeProperties& MPS(ScalarType s) {
542
+ return globalDeprecatedTypePropertiesRegistry().getDeprecatedTypeProperties(
543
+ Backend::MPS, s);
544
+ }
545
+
546
+ inline bool hasCUDA() {
547
+ return globalContext().hasCUDA();
548
+ }
549
+
550
+ inline bool hasMTIA() {
551
+ return globalContext().hasMTIA();
552
+ }
553
+
554
+ inline bool hasHIP() {
555
+ return globalContext().hasHIP();
556
+ }
557
+
558
+ inline bool hasIPU() {
559
+ return globalContext().hasIPU();
560
+ }
561
+
562
+ inline bool hasXLA() {
563
+ return globalContext().hasXLA();
564
+ }
565
+
566
+ inline bool hasMPS() {
567
+ return globalContext().hasMPS();
568
+ }
569
+
570
+ inline bool hasMAIA() {
571
+ return globalContext().hasMAIA();
572
+ }
573
+
574
+ inline bool hasXPU() {
575
+ return globalContext().hasXPU();
576
+ }
577
+
578
+ inline bool hasHPU() {
579
+ return globalContext().hasHPU();
580
+ }
581
+
582
+ // Despite its name, this function returns the number of *CUDA* GPUs.
583
+ inline size_t getNumGPUs() {
584
+ // WARNING: DO NOT ADD LOGIC TO HANDLE OTHER DEVICE TYPES TO THIS
585
+ // FUNCTION. If you are interested in interrogating the number of
586
+ // devices for a specific device type, add that function to the
587
+ // relevant library (e.g., similar to at::cuda::device_count())
588
+ if (hasCUDA() && hasHIP()) {
589
+ TORCH_CHECK(
590
+ false,
591
+ "Enabling both CUDA and HIP in ATen is not supported, as HIP masquerades "
592
+ "to be CUDA (e.g., when you say CUDA, on a HIP build of ATen, this actually "
593
+ "means HIP. Rebuild PyTorch with one or the other disabled.");
594
+ } else if (hasCUDA()) {
595
+ return detail::getCUDAHooks().deviceCount();
596
+ } else if (hasHIP()) {
597
+ return detail::getHIPHooks().getNumGPUs();
598
+ } else {
599
+ return 0;
600
+ }
601
+ }
602
+
603
+ inline bool hasOpenMP() {
604
+ return globalContext().hasOpenMP();
605
+ }
606
+
607
+ inline bool hasMKL() {
608
+ return globalContext().hasMKL();
609
+ }
610
+
611
+ inline bool hasKleidiAI() {
612
+ return globalContext().hasKleidiAI();
613
+ }
614
+
615
+ inline bool hasLAPACK() {
616
+ return globalContext().hasLAPACK();
617
+ }
618
+
619
+ inline bool hasEigenSparse() {
620
+ return globalContext().hasEigenSparse();
621
+ }
622
+
623
+ inline bool hasMAGMA() {
624
+ return globalContext().hasMAGMA();
625
+ }
626
+
627
+ inline bool hasMKLDNN() {
628
+ return globalContext().hasMKLDNN();
629
+ }
630
+
631
+ inline void manual_seed(uint64_t seed) {
632
+ {
633
+ auto gen = globalContext().defaultGenerator(c10::DeviceType::CPU);
634
+ // See Note [Acquire lock when using random generators]
635
+ std::lock_guard<std::mutex> lock(gen.mutex());
636
+ gen.set_current_seed(seed);
637
+ }
638
+
639
+ const auto opt_device_type = at::getAccelerator();
640
+ if (!opt_device_type.has_value()) {
641
+ return;
642
+ }
643
+ const auto num_gpus = globalContext()
644
+ .getAcceleratorHooksInterface(opt_device_type)
645
+ .deviceCount();
646
+ for (const auto i : c10::irange(num_gpus)) {
647
+ auto gen = globalContext().defaultGenerator(
648
+ Device(opt_device_type.value(), static_cast<c10::DeviceIndex>(i)));
649
+ {
650
+ // See Note [Acquire lock when using random generators]
651
+ std::lock_guard<std::mutex> lock(gen.mutex());
652
+ gen.set_current_seed(seed);
653
+ }
654
+ }
655
+ }
656
+
657
+ // When the global flag `allow_tf32` is set to true, cuBLAS handles are
658
+ // automatically configured to use math mode CUBLAS_TF32_TENSOR_OP_MATH.
659
+ // For some operators, such as addmv, TF32 offers no performance improvement
660
+ // but causes precision loss. To help this case, this class implements
661
+ // a RAII guard that can be used to quickly disable TF32 within its scope.
662
+ //
663
+ // Usage:
664
+ // NoTF32Guard disable_tf32;
665
+ struct TORCH_API NoTF32Guard {
666
+ NoTF32Guard();
667
+ NoTF32Guard(NoTF32Guard&& other) = delete;
668
+ NoTF32Guard(const NoTF32Guard&) = delete;
669
+ NoTF32Guard& operator=(const NoTF32Guard&) = delete;
670
+ NoTF32Guard& operator=(NoTF32Guard&&) = delete;
671
+ ~NoTF32Guard();
672
+ static bool should_disable_tf32();
673
+
674
+ private:
675
+ bool changed = false;
676
+ };
677
+
678
+ struct TORCH_API ROCmBackwardPassGuard {
679
+ ROCmBackwardPassGuard();
680
+ ROCmBackwardPassGuard(ROCmBackwardPassGuard&& other) = delete;
681
+ ROCmBackwardPassGuard(const ROCmBackwardPassGuard&) = delete;
682
+ ROCmBackwardPassGuard& operator=(const ROCmBackwardPassGuard&) = delete;
683
+ ROCmBackwardPassGuard& operator=(ROCmBackwardPassGuard&&) = delete;
684
+ ~ROCmBackwardPassGuard();
685
+ static bool is_backward_pass();
686
+ };
687
+
688
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DLConvertor.h ADDED
@@ -0,0 +1,69 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/ATen.h>
4
+ #include <ATen/Tensor.h>
5
+ #include <ATen/dlpack.h>
6
+
7
+ // this converter will:
8
+ // 1) take a Tensor object and wrap it in the DLPack tensor
9
+ // 2) take a dlpack tensor and convert it to the ATen Tensor
10
+
11
+ namespace at {
12
+
13
+ TORCH_API ScalarType toScalarType(const DLDataType& dtype);
14
+ TORCH_API DLManagedTensor* toDLPack(const Tensor& src);
15
+ TORCH_API struct DLManagedTensorVersioned* toDLPackVersioned(const Tensor& src);
16
+ TORCH_API Tensor
17
+ fromDLPack(DLManagedTensor* src, std::function<void(void*)> deleter = {});
18
+ TORCH_API Tensor fromDLPackVersioned(
19
+ DLManagedTensorVersioned* src,
20
+ std::function<void(void*)> deleter = {});
21
+ TORCH_API DLDataType getDLDataType(const Tensor& t);
22
+ TORCH_API DLDevice getDLContext(const Tensor& tensor, const int64_t& device_id);
23
+
24
+ // Copies the Tensor if there's a device mismatch or copy is forced.
25
+ // This should be used before actually creating the DLPack capsule.
26
+ TORCH_API Tensor maybeCopyTensor(
27
+ const Tensor& data,
28
+ std::optional<DLDevice> optional_dl_device,
29
+ std::optional<bool> copy);
30
+
31
+ // Converts the given at::Device into a DLDevice.
32
+ TORCH_API DLDevice torchDeviceToDLDevice(at::Device device);
33
+
34
+ // This trait class is used for retrieving different attributes, such as the
35
+ // PyCapsule names and conversion functions for both DLPack tensor classes:
36
+ // `DLManagedTensor` and `DLManagedTensorVersioned`.
37
+ //
38
+ // Each specialization should contain the following 2 traits:
39
+ // - `capsule`: actual name of the capsule
40
+ // - `used`: name of the capsule after using it
41
+ // - `toDLPack`: function for converting a tensor into a DLPack capsule
42
+ // - `fromDLPack`: function for creating a tensor from a DLPack capsule
43
+ //
44
+ // While `toDLPack` is the directly exposed to Python, `fromDLPack` is not.
45
+ // Although it contains the core implementation, it lacks the required book
46
+ // keeping logic contained in its caller `tensor_fromDLPack`.
47
+ //
48
+ // That said, `fromDLPack` is used directly in a few DLPack tests that live
49
+ // inside ATen (no Python available).
50
+ template <class T>
51
+ struct DLPackTraits {};
52
+
53
+ template <>
54
+ struct DLPackTraits<DLManagedTensor> {
55
+ inline static const char* capsule = "dltensor";
56
+ inline static const char* used = "used_dltensor";
57
+ inline static auto toDLPack = at::toDLPack;
58
+ inline static auto fromDLPack = at::fromDLPack;
59
+ };
60
+
61
+ template <>
62
+ struct DLPackTraits<DLManagedTensorVersioned> {
63
+ inline static const char* capsule = "dltensor_versioned";
64
+ inline static const char* used = "used_dltensor_versioned";
65
+ inline static auto toDLPack = at::toDLPackVersioned;
66
+ inline static auto fromDLPack = at::fromDLPackVersioned;
67
+ };
68
+
69
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DTensorState.h ADDED
@@ -0,0 +1,34 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <c10/macros/Macros.h>
4
+
5
+ namespace at {
6
+
7
+ TORCH_API bool get_dtensor_allow_implicit_replication();
8
+ TORCH_API void set_dtensor_allow_implicit_replication(bool enabled);
9
+
10
+ struct DTensorAllowImplicitReplication {
11
+ DTensorAllowImplicitReplication()
12
+ : prev_dtensor_allow_implicit_replication_(
13
+ get_dtensor_allow_implicit_replication()) {
14
+ set_dtensor_allow_implicit_replication(true);
15
+ }
16
+
17
+ DTensorAllowImplicitReplication(const DTensorAllowImplicitReplication&) =
18
+ delete;
19
+ DTensorAllowImplicitReplication& operator=(
20
+ const DTensorAllowImplicitReplication&) = delete;
21
+ DTensorAllowImplicitReplication(DTensorAllowImplicitReplication&&) = delete;
22
+ DTensorAllowImplicitReplication& operator=(
23
+ DTensorAllowImplicitReplication&&) = delete;
24
+
25
+ ~DTensorAllowImplicitReplication() {
26
+ set_dtensor_allow_implicit_replication(
27
+ prev_dtensor_allow_implicit_replication_);
28
+ }
29
+
30
+ private:
31
+ bool prev_dtensor_allow_implicit_replication_;
32
+ };
33
+
34
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Device.h ADDED
@@ -0,0 +1,2 @@
 
 
 
1
+ #pragma once
2
+ #include <c10/core/Device.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DeviceAccelerator.h ADDED
@@ -0,0 +1,103 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <c10/core/CachingDeviceAllocator.h>
4
+ #include <c10/core/DeviceType.h>
5
+ #include <c10/macros/Macros.h>
6
+
7
+ #include <ATen/detail/MTIAHooksInterface.h>
8
+ #include <optional>
9
+
10
+ namespace at::accelerator {
11
+
12
+ // Note [Accelerator Concept]
13
+ // This file defines the top level Accelerator concept for PyTorch.
14
+ // A device is an accelerator per the definition here if:
15
+ // - It is mutually exclusive with all other accelerators
16
+ // - It performs asynchronous compute via a Stream/Event system
17
+ // - It provides a set of common APIs as defined by AcceleratorHooksInterface
18
+ //
19
+ // As of today, accelerator devices are (in no particular order):
20
+ // CUDA, MTIA, XPU, HIP, MPS, PrivateUse1
21
+
22
+ // Ensures that only one accelerator is available (at
23
+ // compile time if possible) and return it.
24
+ // When checked is true, the returned optional always has a value.
25
+ TORCH_API std::optional<c10::DeviceType> getAccelerator(bool checked = false);
26
+
27
+ // Check if the given device type is an accelerator.
28
+ TORCH_API bool isAccelerator(c10::DeviceType device_type);
29
+
30
+ // Check if the given device type is an accelerator, not the excluded ones.
31
+ template <
32
+ typename... T,
33
+ typename = std::enable_if_t<(std::is_same_v<T, c10::DeviceType> && ...)>>
34
+ inline bool isAcceleratorExcluded(
35
+ c10::DeviceType device_type,
36
+ c10::DeviceType first_excluded,
37
+ T... rest_excluded) {
38
+ if constexpr (sizeof...(rest_excluded) > 0) {
39
+ return device_type != first_excluded &&
40
+ isAcceleratorExcluded(device_type, rest_excluded...);
41
+ } else {
42
+ return device_type != first_excluded && isAccelerator(device_type);
43
+ }
44
+ }
45
+
46
+ // Return the number of the device available. Note that this is *REQUIRED* to
47
+ // not raise any exception.
48
+ TORCH_API c10::DeviceIndex deviceCount();
49
+
50
+ // Set the current device index to the given device index.
51
+ TORCH_API void setDeviceIndex(c10::DeviceIndex device_index);
52
+
53
+ // Get the current device index.
54
+ TORCH_API c10::DeviceIndex getDeviceIndex();
55
+
56
+ // Set the current stream to a given stream. Note that this API doesn't change
57
+ // the current device index.
58
+ TORCH_API void setCurrentStream(c10::Stream stream);
59
+
60
+ // Get the current stream of the given device index.
61
+ TORCH_API c10::Stream getCurrentStream(c10::DeviceIndex device_index);
62
+
63
+ // Wait (by blocking the calling thread) until all the work previously enqueued
64
+ // on the given device index has been completed.
65
+ TORCH_API void synchronizeDevice(c10::DeviceIndex device_index);
66
+
67
+ // Set the current device index to the given device_index and return the
68
+ // original device index that was active before the change.
69
+ TORCH_API c10::DeviceIndex exchangeDevice(c10::DeviceIndex device_index);
70
+
71
+ // Set the current device index to the given device_index. Avoid creating a new
72
+ // context if the context for device_index is not initialized. Return the
73
+ // original device index that was active before the change.
74
+ TORCH_API c10::DeviceIndex maybeExchangeDevice(c10::DeviceIndex device_index);
75
+
76
+ TORCH_API inline void emptyCache() {
77
+ const auto device_type = getAccelerator(true).value();
78
+ at::getDeviceAllocator(device_type)->emptyCache();
79
+ }
80
+
81
+ TORCH_API inline at::CachingDeviceAllocator::DeviceStats getDeviceStats(
82
+ c10::DeviceIndex device_index) {
83
+ const auto device_type = getAccelerator(true).value();
84
+ return at::getDeviceAllocator(device_type)->getDeviceStats(device_index);
85
+ }
86
+
87
+ TORCH_API inline void resetAccumulatedStats(c10::DeviceIndex device_index) {
88
+ const auto device_type = getAccelerator(true).value();
89
+ at::getDeviceAllocator(device_type)->resetAccumulatedStats(device_index);
90
+ }
91
+
92
+ TORCH_API inline void resetPeakStats(c10::DeviceIndex device_index) {
93
+ const auto device_type = getAccelerator(true).value();
94
+ at::getDeviceAllocator(device_type)->resetPeakStats(device_index);
95
+ }
96
+
97
+ } // namespace at::accelerator
98
+
99
+ namespace at {
100
+ // Keep BC only
101
+ using at::accelerator::getAccelerator;
102
+ using at::accelerator::isAccelerator;
103
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DeviceGuard.h ADDED
@@ -0,0 +1,41 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/core/IListRef.h>
4
+ #include <ATen/core/Tensor.h>
5
+ #include <c10/core/DeviceGuard.h>
6
+ #include <c10/core/ScalarType.h> // TensorList whyyyyy
7
+
8
+ namespace at {
9
+
10
+ // Are you here because you're wondering why DeviceGuard(tensor) no
11
+ // longer works? For code organization reasons, we have temporarily(?)
12
+ // removed this constructor from DeviceGuard. The new way to
13
+ // spell it is:
14
+ //
15
+ // OptionalDeviceGuard guard(device_of(tensor));
16
+
17
+ /// Return the Device of a Tensor, if the Tensor is defined.
18
+ inline std::optional<Device> device_of(const Tensor& t) {
19
+ if (t.defined()) {
20
+ return t.device();
21
+ } else {
22
+ return std::nullopt;
23
+ }
24
+ }
25
+
26
+ inline std::optional<Device> device_of(const std::optional<Tensor>& t) {
27
+ return t.has_value() ? device_of(t.value()) : std::nullopt;
28
+ }
29
+
30
+ /// Return the Device of a TensorList, if the list is non-empty and
31
+ /// the first Tensor is defined. (This function implicitly assumes
32
+ /// that all tensors in the list have the same device.)
33
+ inline std::optional<Device> device_of(ITensorListRef t) {
34
+ if (!t.empty()) {
35
+ return device_of(t.front());
36
+ } else {
37
+ return std::nullopt;
38
+ }
39
+ }
40
+
41
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DimVector.h ADDED
@@ -0,0 +1,2 @@
 
 
 
1
+ #pragma once
2
+ #include <ATen/core/DimVector.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Dimname.h ADDED
@@ -0,0 +1 @@
 
 
1
+ #include <ATen/core/Dimname.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Dispatch.h ADDED
@@ -0,0 +1,807 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <c10/core/ScalarType.h>
4
+ #include <c10/macros/Macros.h>
5
+ #include <c10/util/Exception.h>
6
+ #include <c10/util/Half.h>
7
+ #include <c10/util/Metaprogramming.h>
8
+ #include <c10/util/complex.h>
9
+
10
+ #ifdef __CUDACC__
11
+ #include <cuda.h> // For CUDA_VERSION
12
+ #endif
13
+
14
+ #ifdef TEMPLATE_SELECTIVE_BUILD
15
+ #include <ATen/selected_mobile_ops.h>
16
+ #else
17
+ namespace at {
18
+ /**
19
+ * The method should_include_kernel_dtype() returns true/false
20
+ * based on whether the switching code for a specific dtype should be
21
+ * included based on build time constants generated from tracing model
22
+ * execution. This method will be implemented via code-generation and
23
+ * included in this file when code-gen is ready.
24
+ */
25
+ inline constexpr bool should_include_kernel_dtype(
26
+ const char* /*kernel_tag_str*/,
27
+ at::ScalarType /*scalar_type*/
28
+ ) {
29
+ return true;
30
+ }
31
+ } // namespace at
32
+ #endif
33
+
34
+ /**
35
+ * In the Facebook internal build (using BUCK), this macro is enabled by
36
+ * passing in -c pt.enable_record_kernel_dtype=1 when building the tracer
37
+ * binary.
38
+ */
39
+ #if defined ENABLE_RECORD_KERNEL_FUNCTION_DTYPE
40
+ namespace at::detail {
41
+ TORCH_API void record_kernel_function_dtype(std::string name);
42
+ } // namespace at::detail
43
+
44
+ #define RECORD_KERNEL_FUNCTION_DTYPE(NAME, enum_type) \
45
+ at::detail::record_kernel_function_dtype( \
46
+ std::string(NAME) + "$" + toString(enum_type));
47
+ #else
48
+ #define RECORD_KERNEL_FUNCTION_DTYPE(NAME, enum_type)
49
+ #endif
50
+
51
+ #define AT_PRIVATE_CHECK_SELECTIVE_BUILD(enum_type) \
52
+ do { \
53
+ if constexpr (!at::should_include_kernel_dtype( \
54
+ at_dispatch_name, enum_type)) { \
55
+ TORCH_CHECK( \
56
+ false, \
57
+ "dtype '", \
58
+ toString(enum_type), \
59
+ "' not selected for kernel tag ", \
60
+ at_dispatch_name); \
61
+ } \
62
+ } while (0)
63
+
64
+ #define AT_PRIVATE_CASE_TYPE_USING_HINT(enum_type, HINT, ...) \
65
+ case enum_type: { \
66
+ AT_PRIVATE_CHECK_SELECTIVE_BUILD(enum_type); \
67
+ using HINT [[maybe_unused]] = c10::impl::ScalarTypeToCPPTypeT<enum_type>; \
68
+ return __VA_ARGS__(); \
69
+ }
70
+
71
+ #define AT_DISPATCH_CASE(enum_type, ...) \
72
+ AT_PRIVATE_CASE_TYPE_USING_HINT(enum_type, scalar_t, __VA_ARGS__)
73
+
74
+ #define AT_DISPATCH_CASE_QINT(enum_type, scalar_type, ...) \
75
+ case enum_type: { \
76
+ AT_PRIVATE_CHECK_SELECTIVE_BUILD(enum_type); \
77
+ using scalar_t = scalar_type; \
78
+ using underlying_t [[maybe_unused]] = typename scalar_t::underlying; \
79
+ [[maybe_unused]] const auto& SCALAR_TYPE = enum_type; \
80
+ [[maybe_unused]] const auto& UNDERLYING_TYPE = toUnderlying(enum_type); \
81
+ return __VA_ARGS__(); \
82
+ }
83
+
84
+ #define AT_QINT_SUB_BYTE_PRIVATE_CASE_TYPE( \
85
+ enum_type, scalar_type, bitwidth, qmin, qmax, ...) \
86
+ case enum_type: { \
87
+ AT_PRIVATE_CHECK_SELECTIVE_BUILD(enum_type); \
88
+ using scalar_t = scalar_type; \
89
+ using underlying_t [[maybe_unused]] = typename scalar_t::underlying; \
90
+ [[maybe_unused]] const auto& SCALAR_TYPE = enum_type; \
91
+ [[maybe_unused]] const auto& UNDERLYING_TYPE = toUnderlying(enum_type); \
92
+ [[maybe_unused]] int bit_width = bitwidth; \
93
+ [[maybe_unused]] int64_t quant_min = qmin; \
94
+ [[maybe_unused]] int64_t quant_max = qmax; \
95
+ return __VA_ARGS__(); \
96
+ }
97
+
98
+ namespace detail {
99
+
100
+ inline at::ScalarType scalar_type(at::ScalarType s) {
101
+ return s;
102
+ }
103
+
104
+ } // namespace detail
105
+
106
+ // The AT_DISPATCH_* family of macros provides the ability to
107
+ // conveniently generate specializations of a kernel over all of the
108
+ // dtypes we care about in PyTorch. We call it "dispatch" because
109
+ // we are "dispatching" to the correct, dtype-specific kernel.
110
+ //
111
+ // A standard usage looks like:
112
+ //
113
+ // AT_DISPATCH_ALL_TYPES(self.scalar_type(), "op_name", [&] {
114
+ // // Your code here, with 'scalar_t' now defined to
115
+ // // be the dtype in question
116
+ // });
117
+ //
118
+ // There are many variations of this macro, so it's important to
119
+ // understand exactly /which/ dtypes you want to get instantiated, as
120
+ // well as what the "default" set is.
121
+ //
122
+ // The default set of dtypes that are instantiated (e.g., by
123
+ // AT_DISPATCH_ALL_TYPES) are floating point types (float, double),
124
+ // and integral types (int32_t, int64_t, int16_t, int8_t, uint8_t),
125
+ // but NOT booleans (bool), half-precision floats (Half) or
126
+ // complex number (c10::complex<float>, c10::complex<double>).
127
+ // This "cut" is somewhat historical (the default types are the
128
+ // ones that TH historically supported), but it also reflects the
129
+ // fact that the non-default types are "poorly" behaved (booleans
130
+ // are NOT integers mod 2, half precision operations ~essentially
131
+ // don't exist on CPU, complex numbers are an experimental application).
132
+ //
133
+ // Here are the questions you should generally ask to decide which
134
+ // dispatch you want:
135
+ //
136
+ // 1. Is this an integral or floating point specific operation?
137
+ // (If so, you'll want one of the FLOATING or INTEGRAL macros.)
138
+ //
139
+ // 2. Should half be supported? (If you're on CPU, the answer is almost
140
+ // definitely no. If you do want support, use one of the AND_HALF
141
+ // macros)
142
+ //
143
+ // Much rarer situations:
144
+ //
145
+ // 3. Should bool be supported? (You often have to write your kernel
146
+ // differently if arithmetic operations are involved.) If so,
147
+ // Use AT_DISPATCH_ALL_TYPES_AND along with ScalarType::Bool
148
+ //
149
+ // 4. Should complex be supported? The answer is almost always no,
150
+ // unless you are working on "generic" code that should work on
151
+ // all dtypes.
152
+ //
153
+ // Parameters:
154
+ // -----------
155
+ //
156
+ // 1. The NAME argument is a "tag" that is used to trace and then
157
+ // conditionally compile fragments of the case statements such
158
+ // that the kernel functions are specialized only for the dtypes
159
+ // that are needed. The NAME parameter *must* be a build time
160
+ // const char* (can't be std::string, etc...)
161
+ //
162
+ // Please ensure that the NAME is unique for every implementation
163
+ // or you run the risk of over-including code for the kernel
164
+ // functions. There is no risk of missing out on any code, so
165
+ // it's mostly a risk of a Type-2 error, and not a Type-1 error.
166
+ //
167
+ // Switch-like syntax:
168
+ // -------------------
169
+ // There is also a switch-case like syntax which is useful if a kernel
170
+ // needs to be specialized for particular scalar types
171
+ //
172
+ // AT_DISPATCH_SWITCH(self.scalar_type(), "op_name",
173
+ // AT_DISPATCH_CASE_INTEGRAL_TYPES([&] {
174
+ // op_integral<scalar_t>(iter);
175
+ // })
176
+ // AT_DISPATCH_CASE_FLOATING_TYPES([&] {
177
+ // op_floating<scalar_t>(iter);
178
+ // })
179
+ // AT_DISPATCH_CASE(kBool, [&] {
180
+ // op_bool(iter);
181
+ // })
182
+ // );
183
+ //
184
+ // For each AT_DISPATCH_FOO macro, there is a corresponding
185
+ // AT_DISPATCH_CASE_FOO macro which can be used inside of an
186
+ // AT_DISPATCH_SWITCH block.
187
+
188
+ // NB: the the_type variable is not used, but we have kept it for
189
+ // backwards compatibility. It's probably not used by anyone though;
190
+ // but we're just being safe (and it doesn't hurt.) Note we must
191
+ // use it to shut up warnings about unused store.
192
+
193
+ #define AT_DISPATCH_SWITCH(TYPE, NAME, ...) \
194
+ [&] { \
195
+ const auto& the_type = TYPE; \
196
+ constexpr const char* at_dispatch_name = NAME; \
197
+ /* don't use TYPE again in case it is an expensive or side-effect op */ \
198
+ at::ScalarType _st = ::detail::scalar_type(the_type); \
199
+ RECORD_KERNEL_FUNCTION_DTYPE(at_dispatch_name, _st); \
200
+ switch (_st) { \
201
+ __VA_ARGS__ \
202
+ default: \
203
+ TORCH_CHECK_NOT_IMPLEMENTED( \
204
+ false, \
205
+ '"', \
206
+ at_dispatch_name, \
207
+ "\" not implemented for '", \
208
+ toString(_st), \
209
+ "'"); \
210
+ } \
211
+ }()
212
+
213
+ #define AT_DISPATCH_CASE_FLOATING_TYPES(...) \
214
+ AT_DISPATCH_CASE(at::ScalarType::Double, __VA_ARGS__) \
215
+ AT_DISPATCH_CASE(at::ScalarType::Float, __VA_ARGS__)
216
+
217
+ #define AT_DISPATCH_FLOATING_TYPES(TYPE, NAME, ...) \
218
+ AT_DISPATCH_SWITCH(TYPE, NAME, AT_DISPATCH_CASE_FLOATING_TYPES(__VA_ARGS__))
219
+
220
+ #define AT_DISPATCH_CASE_FLOATING_TYPES_AND_HALF(...) \
221
+ AT_DISPATCH_CASE(at::ScalarType::Double, __VA_ARGS__) \
222
+ AT_DISPATCH_CASE(at::ScalarType::Float, __VA_ARGS__) \
223
+ AT_DISPATCH_CASE(at::ScalarType::Half, __VA_ARGS__)
224
+
225
+ #define AT_DISPATCH_FLOATING_TYPES_AND_HALF(TYPE, NAME, ...) \
226
+ AT_DISPATCH_SWITCH( \
227
+ TYPE, NAME, AT_DISPATCH_CASE_FLOATING_TYPES_AND_HALF(__VA_ARGS__))
228
+
229
+ #define AT_DISPATCH_CASE_REDUCED_FLOATING_TYPES(...) \
230
+ AT_DISPATCH_CASE(at::ScalarType::Half, __VA_ARGS__) \
231
+ AT_DISPATCH_CASE(at::ScalarType::BFloat16, __VA_ARGS__)
232
+
233
+ #define AT_DISPATCH_REDUCED_FLOATING_TYPES(TYPE, NAME, ...) \
234
+ AT_DISPATCH_SWITCH( \
235
+ TYPE, NAME, AT_DISPATCH_CASE_REDUCED_FLOATING_TYPES(__VA_ARGS__))
236
+
237
+ #define AT_DISPATCH_CASE_FLOATING_TYPES_AND(SCALARTYPE, ...) \
238
+ AT_DISPATCH_CASE_FLOATING_TYPES(__VA_ARGS__) \
239
+ AT_DISPATCH_CASE(SCALARTYPE, __VA_ARGS__)
240
+
241
+ #define AT_DISPATCH_FLOATING_TYPES_AND(SCALARTYPE, TYPE, NAME, ...) \
242
+ AT_DISPATCH_SWITCH( \
243
+ TYPE, \
244
+ NAME, \
245
+ AT_DISPATCH_CASE_FLOATING_TYPES_AND(SCALARTYPE, __VA_ARGS__))
246
+
247
+ #define AT_DISPATCH_CASE_FLOATING_TYPES_AND2(SCALARTYPE1, SCALARTYPE2, ...) \
248
+ AT_DISPATCH_CASE_FLOATING_TYPES(__VA_ARGS__) \
249
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
250
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__)
251
+
252
+ #define AT_DISPATCH_FLOATING_TYPES_AND2( \
253
+ SCALARTYPE1, SCALARTYPE2, TYPE, NAME, ...) \
254
+ AT_DISPATCH_SWITCH( \
255
+ TYPE, \
256
+ NAME, \
257
+ AT_DISPATCH_CASE_FLOATING_TYPES_AND2( \
258
+ SCALARTYPE1, SCALARTYPE2, __VA_ARGS__))
259
+
260
+ #define AT_DISPATCH_CASE_FLOATING_TYPES_AND3( \
261
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, ...) \
262
+ AT_DISPATCH_CASE_FLOATING_TYPES(__VA_ARGS__) \
263
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
264
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
265
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__)
266
+
267
+ #define AT_DISPATCH_FLOATING_TYPES_AND3( \
268
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, TYPE, NAME, ...) \
269
+ AT_DISPATCH_SWITCH( \
270
+ TYPE, \
271
+ NAME, \
272
+ AT_DISPATCH_CASE_FLOATING_TYPES_AND3( \
273
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, __VA_ARGS__))
274
+
275
+ #define AT_DISPATCH_CASE_FLOATING_TYPES_AND4( \
276
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, ...) \
277
+ AT_DISPATCH_CASE_FLOATING_TYPES(__VA_ARGS__) \
278
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
279
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
280
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
281
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__)
282
+
283
+ #define AT_DISPATCH_CASE_FLOATING_TYPES_AND5( \
284
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, SCALARTYPE5, ...) \
285
+ AT_DISPATCH_CASE_FLOATING_TYPES(__VA_ARGS__) \
286
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
287
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
288
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
289
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__) \
290
+ AT_DISPATCH_CASE(SCALARTYPE5, __VA_ARGS__)
291
+
292
+ #define AT_DISPATCH_FLOATING_TYPES_AND4( \
293
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, TYPE, NAME, ...) \
294
+ AT_DISPATCH_SWITCH( \
295
+ TYPE, \
296
+ NAME, \
297
+ AT_DISPATCH_CASE_FLOATING_TYPES_AND4( \
298
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, __VA_ARGS__))
299
+
300
+ #define AT_DISPATCH_FLOATING_TYPES_AND5( \
301
+ SCALARTYPE1, \
302
+ SCALARTYPE2, \
303
+ SCALARTYPE3, \
304
+ SCALARTYPE4, \
305
+ SCALARTYPE5, \
306
+ TYPE, \
307
+ NAME, \
308
+ ...) \
309
+ AT_DISPATCH_SWITCH( \
310
+ TYPE, \
311
+ NAME, \
312
+ AT_DISPATCH_CASE_FLOATING_TYPES_AND5( \
313
+ SCALARTYPE1, \
314
+ SCALARTYPE2, \
315
+ SCALARTYPE3, \
316
+ SCALARTYPE4, \
317
+ SCALARTYPE5, \
318
+ __VA_ARGS__))
319
+
320
+ #define AT_DISPATCH_CASE_COMPLEX_TYPES(...) \
321
+ AT_DISPATCH_CASE(at::ScalarType::ComplexDouble, __VA_ARGS__) \
322
+ AT_DISPATCH_CASE(at::ScalarType::ComplexFloat, __VA_ARGS__)
323
+
324
+ #define AT_DISPATCH_COMPLEX_TYPES(TYPE, NAME, ...) \
325
+ AT_DISPATCH_SWITCH(TYPE, NAME, AT_DISPATCH_CASE_COMPLEX_TYPES(__VA_ARGS__))
326
+
327
+ #define AT_DISPATCH_CASE_COMPLEX_TYPES_AND(SCALARTYPE, ...) \
328
+ AT_DISPATCH_CASE_COMPLEX_TYPES(__VA_ARGS__) \
329
+ AT_DISPATCH_CASE(SCALARTYPE, __VA_ARGS__)
330
+
331
+ #define AT_DISPATCH_COMPLEX_TYPES_AND(SCALARTYPE, TYPE, NAME, ...) \
332
+ AT_DISPATCH_SWITCH( \
333
+ TYPE, NAME, AT_DISPATCH_CASE_COMPLEX_TYPES_AND(SCALARTYPE, __VA_ARGS__))
334
+
335
+ #define AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES(...) \
336
+ AT_DISPATCH_CASE_FLOATING_TYPES(__VA_ARGS__) \
337
+ AT_DISPATCH_CASE_COMPLEX_TYPES(__VA_ARGS__)
338
+
339
+ #define AT_DISPATCH_FLOATING_AND_COMPLEX_TYPES(TYPE, NAME, ...) \
340
+ AT_DISPATCH_SWITCH( \
341
+ TYPE, NAME, AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES(__VA_ARGS__))
342
+
343
+ #define AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND1(SCALARTYPE, ...) \
344
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES(__VA_ARGS__) \
345
+ AT_DISPATCH_CASE(SCALARTYPE, __VA_ARGS__)
346
+
347
+ #define AT_DISPATCH_FLOATING_AND_COMPLEX_TYPES_AND1( \
348
+ SCALARTYPE, TYPE, NAME, ...) \
349
+ AT_DISPATCH_SWITCH( \
350
+ TYPE, \
351
+ NAME, \
352
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND1( \
353
+ SCALARTYPE, __VA_ARGS__))
354
+
355
+ #define AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND2( \
356
+ SCALARTYPE1, SCALARTYPE2, ...) \
357
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES(__VA_ARGS__) \
358
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
359
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__)
360
+
361
+ #define AT_DISPATCH_FLOATING_AND_COMPLEX_TYPES_AND2( \
362
+ SCALARTYPE1, SCALARTYPE2, TYPE, NAME, ...) \
363
+ AT_DISPATCH_SWITCH( \
364
+ TYPE, \
365
+ NAME, \
366
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND2( \
367
+ SCALARTYPE1, SCALARTYPE2, __VA_ARGS__))
368
+
369
+ #define AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND3( \
370
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, ...) \
371
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES(__VA_ARGS__) \
372
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
373
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
374
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__)
375
+
376
+ #define AT_DISPATCH_FLOATING_AND_COMPLEX_TYPES_AND3( \
377
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, TYPE, NAME, ...) \
378
+ AT_DISPATCH_SWITCH( \
379
+ TYPE, \
380
+ NAME, \
381
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND3( \
382
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, __VA_ARGS__))
383
+
384
+ #define AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND4( \
385
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, ...) \
386
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES(__VA_ARGS__) \
387
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
388
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
389
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
390
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__)
391
+
392
+ #define AT_DISPATCH_FLOATING_AND_COMPLEX_TYPES_AND4( \
393
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, TYPE, NAME, ...) \
394
+ AT_DISPATCH_SWITCH( \
395
+ TYPE, \
396
+ NAME, \
397
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND4( \
398
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, __VA_ARGS__))
399
+
400
+ #define AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND5( \
401
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, SCALARTYPE5, ...) \
402
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES(__VA_ARGS__) \
403
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
404
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
405
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
406
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__) \
407
+ AT_DISPATCH_CASE(SCALARTYPE5, __VA_ARGS__)
408
+
409
+ #define AT_DISPATCH_FLOATING_AND_COMPLEX_TYPES_AND5( \
410
+ SCALARTYPE1, \
411
+ SCALARTYPE2, \
412
+ SCALARTYPE3, \
413
+ SCALARTYPE4, \
414
+ SCALARTYPE5, \
415
+ TYPE, \
416
+ NAME, \
417
+ ...) \
418
+ AT_DISPATCH_SWITCH( \
419
+ TYPE, \
420
+ NAME, \
421
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND5( \
422
+ SCALARTYPE1, \
423
+ SCALARTYPE2, \
424
+ SCALARTYPE3, \
425
+ SCALARTYPE4, \
426
+ SCALARTYPE5, \
427
+ __VA_ARGS__))
428
+
429
+ #define AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND6( \
430
+ SCALARTYPE1, \
431
+ SCALARTYPE2, \
432
+ SCALARTYPE3, \
433
+ SCALARTYPE4, \
434
+ SCALARTYPE5, \
435
+ SCALARTYPE6, \
436
+ ...) \
437
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES(__VA_ARGS__) \
438
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
439
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
440
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
441
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__) \
442
+ AT_DISPATCH_CASE(SCALARTYPE5, __VA_ARGS__) \
443
+ AT_DISPATCH_CASE(SCALARTYPE6, __VA_ARGS__)
444
+
445
+ #define AT_DISPATCH_FLOATING_AND_COMPLEX_TYPES_AND6( \
446
+ SCALARTYPE1, \
447
+ SCALARTYPE2, \
448
+ SCALARTYPE3, \
449
+ SCALARTYPE4, \
450
+ SCALARTYPE5, \
451
+ SCALARTYPE6, \
452
+ TYPE, \
453
+ NAME, \
454
+ ...) \
455
+ AT_DISPATCH_SWITCH( \
456
+ TYPE, \
457
+ NAME, \
458
+ AT_DISPATCH_CASE_FLOATING_AND_COMPLEX_TYPES_AND6( \
459
+ SCALARTYPE1, \
460
+ SCALARTYPE2, \
461
+ SCALARTYPE3, \
462
+ SCALARTYPE4, \
463
+ SCALARTYPE5, \
464
+ SCALARTYPE6, \
465
+ __VA_ARGS__))
466
+
467
+ #define AT_DISPATCH_CASE_INTEGRAL_TYPES(...) \
468
+ AT_DISPATCH_CASE(at::ScalarType::Byte, __VA_ARGS__) \
469
+ AT_DISPATCH_CASE(at::ScalarType::Char, __VA_ARGS__) \
470
+ AT_DISPATCH_CASE(at::ScalarType::Int, __VA_ARGS__) \
471
+ AT_DISPATCH_CASE(at::ScalarType::Long, __VA_ARGS__) \
472
+ AT_DISPATCH_CASE(at::ScalarType::Short, __VA_ARGS__)
473
+
474
+ #define AT_DISPATCH_INTEGRAL_TYPES(TYPE, NAME, ...) \
475
+ AT_DISPATCH_SWITCH(TYPE, NAME, AT_DISPATCH_CASE_INTEGRAL_TYPES(__VA_ARGS__))
476
+
477
+ #define AT_DISPATCH_CASE_INTEGRAL_TYPES_AND(SCALARTYPE, ...) \
478
+ AT_DISPATCH_CASE_INTEGRAL_TYPES(__VA_ARGS__) \
479
+ AT_DISPATCH_CASE(SCALARTYPE, __VA_ARGS__)
480
+
481
+ #define AT_DISPATCH_INTEGRAL_TYPES_AND(SCALARTYPE, TYPE, NAME, ...) \
482
+ AT_DISPATCH_SWITCH( \
483
+ TYPE, \
484
+ NAME, \
485
+ AT_DISPATCH_CASE_INTEGRAL_TYPES_AND(SCALARTYPE, __VA_ARGS__))
486
+
487
+ #define AT_DISPATCH_CASE_ALL_TYPES(...) \
488
+ AT_DISPATCH_CASE_INTEGRAL_TYPES(__VA_ARGS__) \
489
+ AT_DISPATCH_CASE_FLOATING_TYPES(__VA_ARGS__)
490
+
491
+ #define AT_DISPATCH_ALL_TYPES(TYPE, NAME, ...) \
492
+ AT_DISPATCH_SWITCH(TYPE, NAME, AT_DISPATCH_CASE_ALL_TYPES(__VA_ARGS__))
493
+
494
+ #define AT_DISPATCH_CASE_QINT_TYPES(...) \
495
+ AT_DISPATCH_CASE_QINT(at::kQInt8, at::qint8, __VA_ARGS__) \
496
+ AT_DISPATCH_CASE_QINT(at::kQUInt8, at::quint8, __VA_ARGS__) \
497
+ AT_DISPATCH_CASE_QINT(at::kQInt32, at::qint32, __VA_ARGS__)
498
+
499
+ #define AT_DISPATCH_QINT_TYPES(TYPE, NAME, ...) \
500
+ AT_DISPATCH_SWITCH(TYPE, NAME, AT_DISPATCH_CASE_QINT_TYPES(__VA_ARGS__))
501
+
502
+ #define AT_DISPATCH_CASE_QINT_TYPES_AND(SCALARTYPE, ...) \
503
+ AT_DISPATCH_CASE_QINT_TYPES(__VA_ARGS__) \
504
+ AT_DISPATCH_CASE(SCALARTYPE, __VA_ARGS__)
505
+
506
+ #define AT_DISPATCH_QINT_TYPES_AND(SCALARTYPE, TYPE, NAME, ...) \
507
+ AT_DISPATCH_SWITCH( \
508
+ TYPE, NAME, AT_DISPATCH_CASE_QINT_TYPES_AND(SCALARTYPE, __VA_ARGS__))
509
+
510
+ #define AT_DISPATCH_CASE_QINT_BYTE_TYPES(...) \
511
+ AT_DISPATCH_CASE_QINT(at::kQInt8, at::qint8, __VA_ARGS__) \
512
+ AT_DISPATCH_CASE_QINT(at::kQUInt8, at::quint8, __VA_ARGS__)
513
+
514
+ #define AT_DISPATCH_QINT_BYTE_TYPES(TYPE, NAME, ...) \
515
+ AT_DISPATCH_SWITCH(TYPE, NAME, AT_DISPATCH_CASE_QINT_BYTE_TYPES(__VA_ARGS__))
516
+
517
+ #define AT_DISPATCH_CASE_QINT_AND_SUB_BYTE_TYPES(...) \
518
+ AT_QINT_SUB_BYTE_PRIVATE_CASE_TYPE( \
519
+ at::kQInt8, at::qint8, CHAR_BIT, SCHAR_MIN, SCHAR_MAX, __VA_ARGS__) \
520
+ AT_QINT_SUB_BYTE_PRIVATE_CASE_TYPE( \
521
+ at::kQUInt8, at::quint8, CHAR_BIT, 0, UCHAR_MAX, __VA_ARGS__) \
522
+ AT_QINT_SUB_BYTE_PRIVATE_CASE_TYPE( \
523
+ at::kQInt32, \
524
+ at::qint32, \
525
+ CHAR_BIT * sizeof(int), \
526
+ INT_MIN, \
527
+ INT_MAX, \
528
+ __VA_ARGS__) \
529
+ AT_QINT_SUB_BYTE_PRIVATE_CASE_TYPE( \
530
+ at::kQUInt4x2, at::quint4x2, 4, 0, 15, __VA_ARGS__) \
531
+ AT_QINT_SUB_BYTE_PRIVATE_CASE_TYPE( \
532
+ at::kQUInt2x4, at::quint2x4, 2, 0, 3, __VA_ARGS__)
533
+
534
+ #define AT_DISPATCH_QINT_AND_SUB_BYTE_TYPES(TYPE, NAME, ...) \
535
+ AT_DISPATCH_SWITCH( \
536
+ TYPE, NAME, AT_DISPATCH_CASE_QINT_AND_SUB_BYTE_TYPES(__VA_ARGS__))
537
+
538
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(...) \
539
+ AT_DISPATCH_CASE_ALL_TYPES(__VA_ARGS__) \
540
+ AT_DISPATCH_CASE_COMPLEX_TYPES(__VA_ARGS__)
541
+
542
+ #define AT_DISPATCH_ALL_TYPES_AND_COMPLEX(TYPE, NAME, ...) \
543
+ AT_DISPATCH_SWITCH( \
544
+ TYPE, NAME, AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(__VA_ARGS__))
545
+
546
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND(SCALARTYPE, ...) \
547
+ AT_DISPATCH_CASE_ALL_TYPES(__VA_ARGS__) \
548
+ AT_DISPATCH_CASE(SCALARTYPE, __VA_ARGS__)
549
+
550
+ #define AT_DISPATCH_ALL_TYPES_AND(SCALARTYPE, TYPE, NAME, ...) \
551
+ AT_DISPATCH_SWITCH( \
552
+ TYPE, NAME, AT_DISPATCH_CASE_ALL_TYPES_AND(SCALARTYPE, __VA_ARGS__))
553
+
554
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND(SCALARTYPE, ...) \
555
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(__VA_ARGS__) \
556
+ AT_DISPATCH_CASE(SCALARTYPE, __VA_ARGS__)
557
+
558
+ #define AT_DISPATCH_ALL_TYPES_AND_COMPLEX_AND(SCALARTYPE, TYPE, NAME, ...) \
559
+ AT_DISPATCH_SWITCH( \
560
+ TYPE, \
561
+ NAME, \
562
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND(SCALARTYPE, __VA_ARGS__))
563
+
564
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND2(SCALARTYPE1, SCALARTYPE2, ...) \
565
+ AT_DISPATCH_CASE_ALL_TYPES(__VA_ARGS__) \
566
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
567
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__)
568
+
569
+ #define AT_DISPATCH_ALL_TYPES_AND2(SCALARTYPE1, SCALARTYPE2, TYPE, NAME, ...) \
570
+ AT_DISPATCH_SWITCH( \
571
+ TYPE, \
572
+ NAME, \
573
+ AT_DISPATCH_CASE_ALL_TYPES_AND2(SCALARTYPE1, SCALARTYPE2, __VA_ARGS__))
574
+
575
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND2( \
576
+ SCALARTYPE1, SCALARTYPE2, ...) \
577
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(__VA_ARGS__) \
578
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
579
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__)
580
+
581
+ #define AT_DISPATCH_ALL_TYPES_AND_COMPLEX_AND2( \
582
+ SCALARTYPE1, SCALARTYPE2, TYPE, NAME, ...) \
583
+ AT_DISPATCH_SWITCH( \
584
+ TYPE, \
585
+ NAME, \
586
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND2( \
587
+ SCALARTYPE1, SCALARTYPE2, __VA_ARGS__))
588
+
589
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND3( \
590
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, ...) \
591
+ AT_DISPATCH_CASE_ALL_TYPES(__VA_ARGS__) \
592
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
593
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
594
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__)
595
+
596
+ #define AT_DISPATCH_ALL_TYPES_AND3( \
597
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, TYPE, NAME, ...) \
598
+ AT_DISPATCH_SWITCH( \
599
+ TYPE, \
600
+ NAME, \
601
+ AT_DISPATCH_CASE_ALL_TYPES_AND3( \
602
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, __VA_ARGS__))
603
+
604
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND3( \
605
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, ...) \
606
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(__VA_ARGS__) \
607
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
608
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
609
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__)
610
+
611
+ #define AT_DISPATCH_ALL_TYPES_AND_COMPLEX_AND3( \
612
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, TYPE, NAME, ...) \
613
+ AT_DISPATCH_SWITCH( \
614
+ TYPE, \
615
+ NAME, \
616
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND3( \
617
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, __VA_ARGS__))
618
+
619
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND4( \
620
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, ...) \
621
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(__VA_ARGS__) \
622
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
623
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
624
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
625
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__)
626
+
627
+ #define AT_DISPATCH_ALL_TYPES_AND_COMPLEX_AND4( \
628
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, TYPE, NAME, ...) \
629
+ AT_DISPATCH_SWITCH( \
630
+ TYPE, \
631
+ NAME, \
632
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND4( \
633
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, __VA_ARGS__))
634
+
635
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND5( \
636
+ SCALARTYPE1, SCALARTYPE2, SCALARTYPE3, SCALARTYPE4, SCALARTYPE5, ...) \
637
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(__VA_ARGS__) \
638
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
639
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
640
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
641
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__) \
642
+ AT_DISPATCH_CASE(SCALARTYPE5, __VA_ARGS__)
643
+
644
+ #define AT_DISPATCH_ALL_TYPES_AND_COMPLEX_AND5( \
645
+ SCALARTYPE1, \
646
+ SCALARTYPE2, \
647
+ SCALARTYPE3, \
648
+ SCALARTYPE4, \
649
+ SCALARTYPE5, \
650
+ TYPE, \
651
+ NAME, \
652
+ ...) \
653
+ AT_DISPATCH_SWITCH( \
654
+ TYPE, \
655
+ NAME, \
656
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND5( \
657
+ SCALARTYPE1, \
658
+ SCALARTYPE2, \
659
+ SCALARTYPE3, \
660
+ SCALARTYPE4, \
661
+ SCALARTYPE5, \
662
+ __VA_ARGS__))
663
+
664
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND6( \
665
+ SCALARTYPE1, \
666
+ SCALARTYPE2, \
667
+ SCALARTYPE3, \
668
+ SCALARTYPE4, \
669
+ SCALARTYPE5, \
670
+ SCALARTYPE6, \
671
+ ...) \
672
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(__VA_ARGS__) \
673
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
674
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
675
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
676
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__) \
677
+ AT_DISPATCH_CASE(SCALARTYPE5, __VA_ARGS__) \
678
+ AT_DISPATCH_CASE(SCALARTYPE6, __VA_ARGS__)
679
+
680
+ #define AT_DISPATCH_ALL_TYPES_AND_COMPLEX_AND6( \
681
+ SCALARTYPE1, \
682
+ SCALARTYPE2, \
683
+ SCALARTYPE3, \
684
+ SCALARTYPE4, \
685
+ SCALARTYPE5, \
686
+ SCALARTYPE6, \
687
+ TYPE, \
688
+ NAME, \
689
+ ...) \
690
+ AT_DISPATCH_SWITCH( \
691
+ TYPE, \
692
+ NAME, \
693
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND6( \
694
+ SCALARTYPE1, \
695
+ SCALARTYPE2, \
696
+ SCALARTYPE3, \
697
+ SCALARTYPE4, \
698
+ SCALARTYPE5, \
699
+ SCALARTYPE6, \
700
+ __VA_ARGS__))
701
+
702
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND7( \
703
+ SCALARTYPE1, \
704
+ SCALARTYPE2, \
705
+ SCALARTYPE3, \
706
+ SCALARTYPE4, \
707
+ SCALARTYPE5, \
708
+ SCALARTYPE6, \
709
+ SCALARTYPE7, \
710
+ ...) \
711
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(__VA_ARGS__) \
712
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
713
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
714
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
715
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__) \
716
+ AT_DISPATCH_CASE(SCALARTYPE5, __VA_ARGS__) \
717
+ AT_DISPATCH_CASE(SCALARTYPE6, __VA_ARGS__) \
718
+ AT_DISPATCH_CASE(SCALARTYPE7, __VA_ARGS__)
719
+
720
+ #define AT_DISPATCH_ALL_TYPES_AND_COMPLEX_AND7( \
721
+ SCALARTYPE1, \
722
+ SCALARTYPE2, \
723
+ SCALARTYPE3, \
724
+ SCALARTYPE4, \
725
+ SCALARTYPE5, \
726
+ SCALARTYPE6, \
727
+ SCALARTYPE7, \
728
+ TYPE, \
729
+ NAME, \
730
+ ...) \
731
+ AT_DISPATCH_SWITCH( \
732
+ TYPE, \
733
+ NAME, \
734
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND7( \
735
+ SCALARTYPE1, \
736
+ SCALARTYPE2, \
737
+ SCALARTYPE3, \
738
+ SCALARTYPE4, \
739
+ SCALARTYPE5, \
740
+ SCALARTYPE6, \
741
+ SCALARTYPE7, \
742
+ __VA_ARGS__))
743
+
744
+ #define AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND8( \
745
+ SCALARTYPE1, \
746
+ SCALARTYPE2, \
747
+ SCALARTYPE3, \
748
+ SCALARTYPE4, \
749
+ SCALARTYPE5, \
750
+ SCALARTYPE6, \
751
+ SCALARTYPE7, \
752
+ SCALARTYPE8, \
753
+ ...) \
754
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX(__VA_ARGS__) \
755
+ AT_DISPATCH_CASE(SCALARTYPE1, __VA_ARGS__) \
756
+ AT_DISPATCH_CASE(SCALARTYPE2, __VA_ARGS__) \
757
+ AT_DISPATCH_CASE(SCALARTYPE3, __VA_ARGS__) \
758
+ AT_DISPATCH_CASE(SCALARTYPE4, __VA_ARGS__) \
759
+ AT_DISPATCH_CASE(SCALARTYPE5, __VA_ARGS__) \
760
+ AT_DISPATCH_CASE(SCALARTYPE6, __VA_ARGS__) \
761
+ AT_DISPATCH_CASE(SCALARTYPE7, __VA_ARGS__) \
762
+ AT_DISPATCH_CASE(SCALARTYPE8, __VA_ARGS__)
763
+
764
+ #define AT_DISPATCH_ALL_TYPES_AND_COMPLEX_AND8( \
765
+ SCALARTYPE1, \
766
+ SCALARTYPE2, \
767
+ SCALARTYPE3, \
768
+ SCALARTYPE4, \
769
+ SCALARTYPE5, \
770
+ SCALARTYPE6, \
771
+ SCALARTYPE7, \
772
+ SCALARTYPE8, \
773
+ TYPE, \
774
+ NAME, \
775
+ ...) \
776
+ AT_DISPATCH_SWITCH( \
777
+ TYPE, \
778
+ NAME, \
779
+ AT_DISPATCH_CASE_ALL_TYPES_AND_COMPLEX_AND8( \
780
+ SCALARTYPE1, \
781
+ SCALARTYPE2, \
782
+ SCALARTYPE3, \
783
+ SCALARTYPE4, \
784
+ SCALARTYPE5, \
785
+ SCALARTYPE6, \
786
+ SCALARTYPE7, \
787
+ SCALARTYPE8, \
788
+ __VA_ARGS__))
789
+
790
+ #define AT_DISPATCH_CASE_BIT_TYPES(...) \
791
+ AT_DISPATCH_CASE(at::ScalarType::Bits1x8, __VA_ARGS__) \
792
+ AT_DISPATCH_CASE(at::ScalarType::Bits2x4, __VA_ARGS__) \
793
+ AT_DISPATCH_CASE(at::ScalarType::Bits4x2, __VA_ARGS__) \
794
+ AT_DISPATCH_CASE(at::ScalarType::Bits8, __VA_ARGS__) \
795
+ AT_DISPATCH_CASE(at::ScalarType::Bits16, __VA_ARGS__)
796
+
797
+ #define AT_DISPATCH_BIT_TYPES(TYPE, NAME, ...) \
798
+ AT_DISPATCH_SWITCH(TYPE, NAME, AT_DISPATCH_CASE_BIT_TYPES(__VA_ARGS__))
799
+
800
+ #define AT_DISPATCH_INDEX_TYPES(TYPE, NAME, ...) \
801
+ AT_DISPATCH_SWITCH( \
802
+ TYPE, \
803
+ NAME, \
804
+ AT_PRIVATE_CASE_TYPE_USING_HINT( \
805
+ at::ScalarType::Int, index_t, __VA_ARGS__) \
806
+ AT_PRIVATE_CASE_TYPE_USING_HINT( \
807
+ at::ScalarType::Long, index_t, __VA_ARGS__))
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Dispatch_v2.h ADDED
@@ -0,0 +1,202 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #include <ATen/Dispatch.h>
2
+
3
+ // This is a new implementation of the AT_DISPATCH macro family from
4
+ // ATen/Dispatch.h
5
+ //
6
+ // The intended usage is:
7
+ //
8
+ // ScalarType scalar_type;
9
+ //
10
+ // AT_DISPATCH_V2(
11
+ // scalar_type,
12
+ // "debug string",
13
+ // AT_WRAP([&] {
14
+ // ... code to specialize with scalar_t ...
15
+ // }),
16
+ // kHalf,
17
+ // AT_EXPAND(AT_ALL_TYPES),
18
+ // ... as many types arguments as needed ...
19
+ // )
20
+ //
21
+ // For example, given an old style:
22
+ //
23
+ // AT_DISPATCH_ALL_TYPES_AND_COMPLEX_AND2(
24
+ // kComplexHalf,
25
+ // kHalf,
26
+ // self.scalar_type(),
27
+ // "_local_scalar_dense_cpu",
28
+ // [&] {
29
+ // scalar_t value = *self.data_ptr<scalar_t>();
30
+ // r = Scalar(value);
31
+ // }
32
+ // )
33
+ //
34
+ // You now write:
35
+ //
36
+ // AT_DISPATCH_V2(
37
+ // self.scalar_type(),
38
+ // "_local_scalar_dense_cpu",
39
+ // AT_WRAP([&] {
40
+ // scalar_t value = *self.data_ptr<scalar_t>();
41
+ // r = Scalar(value);
42
+ // }),
43
+ // AT_EXPAND(AT_ALL_TYPES),
44
+ // AT_EXPAND(AT_COMPLEX_TYPES),
45
+ // kComplexHalf,
46
+ // kHalf,
47
+ // )
48
+ //
49
+ // Notably, it sports the following improvements:
50
+ //
51
+ // - It is not necessary to specify the arity (e.g.,
52
+ // AT_DISPATCH_FLOATING_AND_COMPLEX_TYPES_AND{2,3,4,...})
53
+ // when using the macro
54
+ //
55
+ // - It is not necessary to specify each dtype individually; if
56
+ // there is a set of related dtypes and you want to dispatch
57
+ // over all of them, you can simply say, e.g., AT_EXPAND(AT_INTEGRAL_TYPES)
58
+ // in your argument list.
59
+ //
60
+ // However, you must remember to wrap the payload body in AT_WRAP, or commas
61
+ // inside your lambda will be improperly handled. Furthermore, if you more
62
+ // entries to ScalarType than can be supported by this macro, it will fail
63
+ // with an obscure error (due to attempting to concatenate AT_AP with
64
+ // something that is not a number).
65
+ //
66
+ // The implementation strategy is to use the count arguments trick
67
+ // (e.g., as described in https://stackoverflow.com/a/2124385/23845)
68
+ // to discover how many dtypes have been passed, and then dispatch to a
69
+ // hand-written macro for each arity that applies as many DISPATCH_CASE as
70
+ // necessary. The hand-written macros can be regenerated for other arities
71
+ // with the script below.
72
+ //
73
+ // There is some delicacy in the implementation in controlling when
74
+ // macro expansion occurs, mediated with AT_EXPAND and AT_GUARD. I mostly
75
+ // relied on GPT4 to help me get it right.
76
+
77
+ // Public API macros
78
+
79
+ // See documentation above
80
+ #define AT_DISPATCH_V2(TYPE, NAME, BODY, ...) \
81
+ AT_DISPATCH_SWITCH(TYPE, NAME, AT_AP_VAR(AT_WRAP(BODY), TYPE, __VA_ARGS__))
82
+
83
+ // This macro lets you pass an arbitrary expression that may contain internal
84
+ // commas to another macro without having the commas causing the expression
85
+ // to be interpreted as being multiple arguments
86
+ #define AT_WRAP(...) __VA_ARGS__
87
+
88
+ #define AT_FLOAT8_TYPES \
89
+ c10::kFloat8_e5m2, c10::kFloat8_e5m2fnuz, c10::kFloat8_e4m3fn, \
90
+ c10::kFloat8_e4m3fnuz, c10::kFloat8_e8m0fnu
91
+
92
+ #define AT_INTEGRAL_TYPES \
93
+ c10::kByte, c10::kChar, c10::kInt, c10::kLong, c10::kShort
94
+ #define AT_FLOATING_TYPES c10::kDouble, c10::kFloat
95
+ #define AT_BAREBONES_UNSIGNED_TYPES c10::kUInt16, c10::kUInt32, c10::kUInt64
96
+ #define AT_INTEGRAL_TYPES_V2 \
97
+ AT_EXPAND(AT_INTEGRAL_TYPES), AT_EXPAND(AT_BAREBONES_UNSIGNED_TYPES)
98
+ #define AT_COMPLEX_TYPES c10::kComplexDouble, c10::kComplexFloat
99
+ #define AT_QINT_TYPES c10::kQInt8, c10::kQUInt8, c10::kQInt32
100
+ // NB: not *actually* all types
101
+ #define AT_ALL_TYPES AT_EXPAND(AT_INTEGRAL_TYPES), AT_EXPAND(AT_FLOATING_TYPES)
102
+ #define AT_ALL_TYPES_AND_COMPLEX \
103
+ AT_EXPAND(AT_ALL_TYPES), AT_EXPAND(AT_COMPLEX_TYPES)
104
+
105
+ // Helper macros
106
+
107
+ #define AT_AP_VAR(N, T, ...) \
108
+ AT_EXPAND(AT_CONCAT(AT_AP, AT_NUM_ARGS(__VA_ARGS__))(AT_WRAP(N), __VA_ARGS__))
109
+ #define AT_CONCAT(a, b) AT_CONCAT_AUX(a, b)
110
+ #define AT_CONCAT_AUX(a, b) a##b
111
+ #define AT_EXPAND(X) X
112
+
113
+ // Ensure we never have too many scalar types for the expansion here to
114
+ // support. To bump this, you must regenerate the macros below.
115
+ static_assert(static_cast<int>(c10::ScalarType::NumOptions) < 60);
116
+
117
+ // Python code to regenerate generate code below:
118
+ #if 0
119
+
120
+ num_args = 60
121
+
122
+ nums = ', '.join(str(i) for i in reversed(range(num_args+1)))
123
+ args = ', '.join(f'_{i}' for i in range(1, num_args+1))
124
+
125
+ print(f'#define AT_NUM_ARGS(...) AT_EXPAND(AT_NUM_ARGS_AUX(__VA_ARGS__, {nums}))')
126
+ print(f'#define AT_NUM_ARGS_AUX({args}, N, ...) N')
127
+
128
+ for i in range(1, num_args+1):
129
+ args = ', '.join(f'_{i}' for i in range(1, i+1))
130
+ cases = ' '.join([f'AT_DISPATCH_CASE(_{j}, N)' for j in range(1, i+1)])
131
+ print(f'#define AT_AP{i}(N, {args}) {cases}')
132
+
133
+ #endif
134
+
135
+ // Begin generated code
136
+ // clang-format off
137
+
138
+ #define AT_NUM_ARGS(...) AT_EXPAND(AT_NUM_ARGS_AUX(__VA_ARGS__, 60, 59, 58, 57, 56, 55, 54, 53, 52, 51, 50, 49, 48, 47, 46, 45, 44, 43, 42, 41, 40, 39, 38, 37, 36, 35, 34, 33, 32, 31, 30, 29, 28, 27, 26, 25, 24, 23, 22, 21, 20, 19, 18, 17, 16, 15, 14, 13, 12, 11, 10, 9, 8, 7, 6, 5, 4, 3, 2, 1, 0))
139
+ #define AT_NUM_ARGS_AUX(_1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53, _54, _55, _56, _57, _58, _59, _60, N, ...) N
140
+ #define AT_AP1(N, _1) AT_DISPATCH_CASE(_1, N)
141
+ #define AT_AP2(N, _1, _2) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N)
142
+ #define AT_AP3(N, _1, _2, _3) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N)
143
+ #define AT_AP4(N, _1, _2, _3, _4) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N)
144
+ #define AT_AP5(N, _1, _2, _3, _4, _5) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N)
145
+ #define AT_AP6(N, _1, _2, _3, _4, _5, _6) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N)
146
+ #define AT_AP7(N, _1, _2, _3, _4, _5, _6, _7) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N)
147
+ #define AT_AP8(N, _1, _2, _3, _4, _5, _6, _7, _8) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N)
148
+ #define AT_AP9(N, _1, _2, _3, _4, _5, _6, _7, _8, _9) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N)
149
+ #define AT_AP10(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N)
150
+ #define AT_AP11(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N)
151
+ #define AT_AP12(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N)
152
+ #define AT_AP13(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N)
153
+ #define AT_AP14(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N)
154
+ #define AT_AP15(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N)
155
+ #define AT_AP16(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N)
156
+ #define AT_AP17(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N)
157
+ #define AT_AP18(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N)
158
+ #define AT_AP19(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N)
159
+ #define AT_AP20(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N)
160
+ #define AT_AP21(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N)
161
+ #define AT_AP22(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N)
162
+ #define AT_AP23(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N)
163
+ #define AT_AP24(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N)
164
+ #define AT_AP25(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N)
165
+ #define AT_AP26(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N)
166
+ #define AT_AP27(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N)
167
+ #define AT_AP28(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N)
168
+ #define AT_AP29(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N)
169
+ #define AT_AP30(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N)
170
+ #define AT_AP31(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N)
171
+ #define AT_AP32(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N)
172
+ #define AT_AP33(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N)
173
+ #define AT_AP34(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N)
174
+ #define AT_AP35(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N)
175
+ #define AT_AP36(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N)
176
+ #define AT_AP37(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N)
177
+ #define AT_AP38(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N)
178
+ #define AT_AP39(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N)
179
+ #define AT_AP40(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N)
180
+ #define AT_AP41(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N)
181
+ #define AT_AP42(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N)
182
+ #define AT_AP43(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N)
183
+ #define AT_AP44(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N)
184
+ #define AT_AP45(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N)
185
+ #define AT_AP46(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N)
186
+ #define AT_AP47(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N)
187
+ #define AT_AP48(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N)
188
+ #define AT_AP49(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N)
189
+ #define AT_AP50(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N)
190
+ #define AT_AP51(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N)
191
+ #define AT_AP52(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N) AT_DISPATCH_CASE(_52, N)
192
+ #define AT_AP53(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N) AT_DISPATCH_CASE(_52, N) AT_DISPATCH_CASE(_53, N)
193
+ #define AT_AP54(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53, _54) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N) AT_DISPATCH_CASE(_52, N) AT_DISPATCH_CASE(_53, N) AT_DISPATCH_CASE(_54, N)
194
+ #define AT_AP55(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53, _54, _55) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N) AT_DISPATCH_CASE(_52, N) AT_DISPATCH_CASE(_53, N) AT_DISPATCH_CASE(_54, N) AT_DISPATCH_CASE(_55, N)
195
+ #define AT_AP56(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53, _54, _55, _56) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N) AT_DISPATCH_CASE(_52, N) AT_DISPATCH_CASE(_53, N) AT_DISPATCH_CASE(_54, N) AT_DISPATCH_CASE(_55, N) AT_DISPATCH_CASE(_56, N)
196
+ #define AT_AP57(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53, _54, _55, _56, _57) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N) AT_DISPATCH_CASE(_52, N) AT_DISPATCH_CASE(_53, N) AT_DISPATCH_CASE(_54, N) AT_DISPATCH_CASE(_55, N) AT_DISPATCH_CASE(_56, N) AT_DISPATCH_CASE(_57, N)
197
+ #define AT_AP58(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53, _54, _55, _56, _57, _58) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N) AT_DISPATCH_CASE(_52, N) AT_DISPATCH_CASE(_53, N) AT_DISPATCH_CASE(_54, N) AT_DISPATCH_CASE(_55, N) AT_DISPATCH_CASE(_56, N) AT_DISPATCH_CASE(_57, N) AT_DISPATCH_CASE(_58, N)
198
+ #define AT_AP59(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53, _54, _55, _56, _57, _58, _59) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N) AT_DISPATCH_CASE(_52, N) AT_DISPATCH_CASE(_53, N) AT_DISPATCH_CASE(_54, N) AT_DISPATCH_CASE(_55, N) AT_DISPATCH_CASE(_56, N) AT_DISPATCH_CASE(_57, N) AT_DISPATCH_CASE(_58, N) AT_DISPATCH_CASE(_59, N)
199
+ #define AT_AP60(N, _1, _2, _3, _4, _5, _6, _7, _8, _9, _10, _11, _12, _13, _14, _15, _16, _17, _18, _19, _20, _21, _22, _23, _24, _25, _26, _27, _28, _29, _30, _31, _32, _33, _34, _35, _36, _37, _38, _39, _40, _41, _42, _43, _44, _45, _46, _47, _48, _49, _50, _51, _52, _53, _54, _55, _56, _57, _58, _59, _60) AT_DISPATCH_CASE(_1, N) AT_DISPATCH_CASE(_2, N) AT_DISPATCH_CASE(_3, N) AT_DISPATCH_CASE(_4, N) AT_DISPATCH_CASE(_5, N) AT_DISPATCH_CASE(_6, N) AT_DISPATCH_CASE(_7, N) AT_DISPATCH_CASE(_8, N) AT_DISPATCH_CASE(_9, N) AT_DISPATCH_CASE(_10, N) AT_DISPATCH_CASE(_11, N) AT_DISPATCH_CASE(_12, N) AT_DISPATCH_CASE(_13, N) AT_DISPATCH_CASE(_14, N) AT_DISPATCH_CASE(_15, N) AT_DISPATCH_CASE(_16, N) AT_DISPATCH_CASE(_17, N) AT_DISPATCH_CASE(_18, N) AT_DISPATCH_CASE(_19, N) AT_DISPATCH_CASE(_20, N) AT_DISPATCH_CASE(_21, N) AT_DISPATCH_CASE(_22, N) AT_DISPATCH_CASE(_23, N) AT_DISPATCH_CASE(_24, N) AT_DISPATCH_CASE(_25, N) AT_DISPATCH_CASE(_26, N) AT_DISPATCH_CASE(_27, N) AT_DISPATCH_CASE(_28, N) AT_DISPATCH_CASE(_29, N) AT_DISPATCH_CASE(_30, N) AT_DISPATCH_CASE(_31, N) AT_DISPATCH_CASE(_32, N) AT_DISPATCH_CASE(_33, N) AT_DISPATCH_CASE(_34, N) AT_DISPATCH_CASE(_35, N) AT_DISPATCH_CASE(_36, N) AT_DISPATCH_CASE(_37, N) AT_DISPATCH_CASE(_38, N) AT_DISPATCH_CASE(_39, N) AT_DISPATCH_CASE(_40, N) AT_DISPATCH_CASE(_41, N) AT_DISPATCH_CASE(_42, N) AT_DISPATCH_CASE(_43, N) AT_DISPATCH_CASE(_44, N) AT_DISPATCH_CASE(_45, N) AT_DISPATCH_CASE(_46, N) AT_DISPATCH_CASE(_47, N) AT_DISPATCH_CASE(_48, N) AT_DISPATCH_CASE(_49, N) AT_DISPATCH_CASE(_50, N) AT_DISPATCH_CASE(_51, N) AT_DISPATCH_CASE(_52, N) AT_DISPATCH_CASE(_53, N) AT_DISPATCH_CASE(_54, N) AT_DISPATCH_CASE(_55, N) AT_DISPATCH_CASE(_56, N) AT_DISPATCH_CASE(_57, N) AT_DISPATCH_CASE(_58, N) AT_DISPATCH_CASE(_59, N) AT_DISPATCH_CASE(_60, N)
200
+
201
+ // End generated code
202
+ // clang-format on
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/DynamicLibrary.h ADDED
@@ -0,0 +1,36 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/Utils.h>
4
+ #include <c10/macros/Export.h>
5
+ #include <c10/util/Exception.h>
6
+
7
+ namespace c10 {
8
+
9
+ class DynamicLibraryError : public Error {
10
+ using Error::Error;
11
+ };
12
+
13
+ } // namespace c10
14
+
15
+ namespace at {
16
+
17
+ struct DynamicLibrary {
18
+ AT_DISALLOW_COPY_AND_ASSIGN(DynamicLibrary);
19
+ DynamicLibrary(DynamicLibrary&& other) = delete;
20
+ DynamicLibrary& operator=(DynamicLibrary&&) = delete;
21
+
22
+ TORCH_API DynamicLibrary(
23
+ const char* name,
24
+ const char* alt_name = nullptr,
25
+ bool leak_handle = false);
26
+
27
+ TORCH_API void* sym(const char* name);
28
+
29
+ TORCH_API ~DynamicLibrary();
30
+
31
+ private:
32
+ bool leak_handle;
33
+ void* handle = nullptr;
34
+ };
35
+
36
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/EmptyTensor.h ADDED
@@ -0,0 +1,166 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+ #include <ATen/core/TensorBase.h>
3
+
4
+ namespace at::detail {
5
+
6
+ inline void check_size_nonnegative(ArrayRef<int64_t> size) {
7
+ for (const auto& x : size) {
8
+ TORCH_CHECK(
9
+ x >= 0,
10
+ "Trying to create tensor with negative dimension ",
11
+ x,
12
+ ": ",
13
+ size);
14
+ }
15
+ }
16
+
17
+ inline void check_size_nonnegative(ArrayRef<c10::SymInt> size) {
18
+ for (const auto& x : size) {
19
+ TORCH_CHECK(
20
+ x.expect_size(__FILE__, __LINE__),
21
+ "Trying to create tensor with negative dimension ",
22
+ x,
23
+ ": ",
24
+ size);
25
+ }
26
+ }
27
+
28
+ TORCH_API size_t computeStorageNbytesContiguous(
29
+ IntArrayRef sizes,
30
+ size_t itemsize,
31
+ size_t storage_offset = 0);
32
+ TORCH_API SymInt computeStorageNbytesContiguous(
33
+ SymIntArrayRef sizes,
34
+ const SymInt& itemsize,
35
+ const SymInt& storage_offset = 0);
36
+ TORCH_API size_t computeStorageNbytes(
37
+ IntArrayRef sizes,
38
+ IntArrayRef strides,
39
+ size_t itemsize,
40
+ size_t storage_offset = 0);
41
+ TORCH_API SymInt computeStorageNbytes(
42
+ SymIntArrayRef sizes,
43
+ SymIntArrayRef strides,
44
+ const SymInt& itemsize,
45
+ const SymInt& storage_offset = 0);
46
+
47
+ TORCH_API TensorBase empty_generic(
48
+ IntArrayRef size,
49
+ c10::Allocator* allocator,
50
+ c10::DispatchKeySet ks,
51
+ ScalarType scalar_type,
52
+ std::optional<c10::MemoryFormat> memory_format_opt);
53
+
54
+ TORCH_API TensorBase empty_generic_symint(
55
+ SymIntArrayRef size,
56
+ c10::Allocator* allocator,
57
+ c10::DispatchKeySet ks,
58
+ ScalarType scalar_type,
59
+ std::optional<c10::MemoryFormat> memory_format_opt);
60
+
61
+ TORCH_API TensorBase empty_strided_generic(
62
+ IntArrayRef size,
63
+ IntArrayRef stride,
64
+ c10::Allocator* allocator,
65
+ c10::DispatchKeySet ks,
66
+ ScalarType scalar_type);
67
+
68
+ TORCH_API TensorBase empty_strided_symint_generic(
69
+ SymIntArrayRef size,
70
+ SymIntArrayRef stride,
71
+ c10::Allocator* allocator,
72
+ c10::DispatchKeySet ks,
73
+ ScalarType scalar_type);
74
+
75
+ TORCH_API TensorBase empty_cpu(
76
+ IntArrayRef size,
77
+ ScalarType dtype,
78
+ bool pin_memory = false,
79
+ std::optional<c10::MemoryFormat> memory_format_opt = std::nullopt);
80
+
81
+ TORCH_API TensorBase empty_cpu(
82
+ IntArrayRef size,
83
+ std::optional<ScalarType> dtype_opt,
84
+ std::optional<Layout> layout_opt,
85
+ std::optional<Device> device_opt,
86
+ std::optional<bool> pin_memory_opt,
87
+ std::optional<c10::MemoryFormat> memory_format_opt);
88
+
89
+ TORCH_API TensorBase empty_cpu(IntArrayRef size, const TensorOptions& options);
90
+
91
+ TORCH_API TensorBase empty_strided_cpu(
92
+ IntArrayRef size,
93
+ IntArrayRef stride,
94
+ ScalarType dtype,
95
+ bool pin_memory = false);
96
+
97
+ TORCH_API TensorBase empty_strided_cpu(
98
+ IntArrayRef size,
99
+ IntArrayRef stride,
100
+ std::optional<ScalarType> dtype_opt,
101
+ std::optional<Layout> layout_opt,
102
+ std::optional<Device> device_opt,
103
+ std::optional<bool> pin_memory_opt);
104
+
105
+ TORCH_API TensorBase empty_strided_cpu(
106
+ IntArrayRef size,
107
+ IntArrayRef stride,
108
+ const TensorOptions& options);
109
+
110
+ TORCH_API TensorBase empty_meta(
111
+ IntArrayRef size,
112
+ ScalarType dtype,
113
+ std::optional<c10::MemoryFormat> memory_format_opt = std::nullopt);
114
+
115
+ TORCH_API TensorBase empty_meta(
116
+ IntArrayRef size,
117
+ std::optional<ScalarType> dtype_opt,
118
+ std::optional<Layout> layout_opt,
119
+ std::optional<Device> device_opt,
120
+ std::optional<bool> pin_memory_opt,
121
+ std::optional<c10::MemoryFormat> memory_format_opt);
122
+
123
+ TORCH_API TensorBase empty_symint_meta(
124
+ SymIntArrayRef size,
125
+ std::optional<ScalarType> dtype_opt,
126
+ std::optional<Layout> layout_opt,
127
+ std::optional<Device> device_opt,
128
+ std::optional<bool> pin_memory_opt,
129
+ std::optional<c10::MemoryFormat> memory_format_opt);
130
+
131
+ TORCH_API TensorBase empty_meta(IntArrayRef size, const TensorOptions& options);
132
+
133
+ TORCH_API TensorBase
134
+ empty_strided_meta(IntArrayRef size, IntArrayRef stride, ScalarType dtype);
135
+
136
+ TORCH_API TensorBase empty_strided_meta(
137
+ IntArrayRef size,
138
+ IntArrayRef stride,
139
+ std::optional<ScalarType> dtype_opt,
140
+ std::optional<Layout> layout_opt,
141
+ std::optional<Device> device_opt,
142
+ std::optional<bool> pin_memory_opt);
143
+
144
+ TORCH_API TensorBase empty_strided_meta(
145
+ IntArrayRef size,
146
+ IntArrayRef stride,
147
+ const TensorOptions& options);
148
+
149
+ TORCH_API TensorBase empty_strided_symint_meta(
150
+ SymIntArrayRef size,
151
+ SymIntArrayRef stride,
152
+ ScalarType dtype);
153
+
154
+ TORCH_API TensorBase empty_strided_symint_meta(
155
+ SymIntArrayRef size,
156
+ SymIntArrayRef stride,
157
+ std::optional<ScalarType> dtype_opt,
158
+ std::optional<Layout> layout_opt,
159
+ std::optional<Device> device_opt);
160
+
161
+ TORCH_API TensorBase empty_strided_symint_meta(
162
+ SymIntArrayRef size,
163
+ SymIntArrayRef stride,
164
+ const TensorOptions& options);
165
+
166
+ } // namespace at::detail
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/ExpandBase.h ADDED
@@ -0,0 +1,30 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #include <ATen/core/TensorBase.h>
2
+
3
+ // Broadcasting utilities for working with TensorBase
4
+ namespace at {
5
+ namespace internal {
6
+ TORCH_API TensorBase expand_slow_path(const TensorBase& self, IntArrayRef size);
7
+ } // namespace internal
8
+
9
+ inline c10::MaybeOwned<TensorBase> expand_size(
10
+ const TensorBase& self,
11
+ IntArrayRef size) {
12
+ if (size.equals(self.sizes())) {
13
+ return c10::MaybeOwned<TensorBase>::borrowed(self);
14
+ }
15
+ return c10::MaybeOwned<TensorBase>::owned(
16
+ at::internal::expand_slow_path(self, size));
17
+ }
18
+ c10::MaybeOwned<TensorBase> expand_size(TensorBase&& self, IntArrayRef size) =
19
+ delete;
20
+
21
+ inline c10::MaybeOwned<TensorBase> expand_inplace(
22
+ const TensorBase& tensor,
23
+ const TensorBase& to_expand) {
24
+ return expand_size(to_expand, tensor.sizes());
25
+ }
26
+ c10::MaybeOwned<TensorBase> expand_inplace(
27
+ const TensorBase& tensor,
28
+ TensorBase&& to_expand) = delete;
29
+
30
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/ExpandUtils.h ADDED
@@ -0,0 +1,535 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #ifndef AT_PER_OPERATOR_HEADERS
4
+ #include <ATen/Functions.h>
5
+ #else
6
+ #include <ATen/ops/view.h>
7
+ #include <ATen/ops/view_copy.h>
8
+ #endif
9
+
10
+ #include <ATen/Tensor.h>
11
+ #include <ATen/core/DimVector.h>
12
+ #include <c10/util/Exception.h>
13
+ #include <c10/util/MaybeOwned.h>
14
+ #include <c10/util/irange.h>
15
+
16
+ #include <functional>
17
+ #include <tuple>
18
+ #include <utility>
19
+
20
+ namespace at {
21
+
22
+ TORCH_API std::vector<int64_t> infer_size(IntArrayRef a, IntArrayRef b);
23
+ TORCH_API std::vector<SymInt> infer_size_symint(
24
+ SymIntArrayRef a,
25
+ SymIntArrayRef b);
26
+ TORCH_API DimVector infer_size_dimvector(IntArrayRef a, IntArrayRef b);
27
+ TORCH_API SymDimVector
28
+ infer_size_symdimvector(SymIntArrayRef a, SymIntArrayRef b);
29
+
30
+ // Named type instead of a pair/tuple so that we can be sure to
31
+ // construct the vectors in place and get NRVO.
32
+ template <typename Container>
33
+ struct InferExpandGeometryResult {
34
+ Container sizes;
35
+ Container strides;
36
+ explicit InferExpandGeometryResult(size_t ndim)
37
+ : sizes(ndim), strides(ndim) {}
38
+ explicit InferExpandGeometryResult(IntArrayRef sizes_, size_t ndim)
39
+ : sizes(sizes_.begin(), sizes_.end()), strides(ndim) {}
40
+ };
41
+
42
+ TORCH_API std::tuple<std::vector<int64_t>, std::vector<int64_t>>
43
+ inferExpandGeometry(
44
+ IntArrayRef tensor_sizes,
45
+ IntArrayRef tensor_strides,
46
+ IntArrayRef sizes);
47
+
48
+ TORCH_API InferExpandGeometryResult<DimVector> inferExpandGeometry_dimvector(
49
+ IntArrayRef tensor_sizes,
50
+ IntArrayRef tensor_strides,
51
+ IntArrayRef sizes);
52
+
53
+ TORCH_API std::vector<int64_t> infer_dense_strides(
54
+ IntArrayRef tensor_sizes,
55
+ IntArrayRef tensor_strides);
56
+
57
+ // True if input shapes are expandable
58
+ // NOTE: infer_size did a similar check, please keep them sync if change is
59
+ // needed
60
+ inline bool are_expandable(IntArrayRef shape1, IntArrayRef shape2) {
61
+ size_t ndim1 = shape1.size();
62
+ size_t ndim2 = shape2.size();
63
+ size_t ndim = ndim1 < ndim2 ? ndim1 : ndim2;
64
+
65
+ for (int64_t i = static_cast<int64_t>(ndim) - 1; i >= 0; --i) {
66
+ if (shape1[--ndim1] == shape2[--ndim2] || shape1[ndim1] == 1 ||
67
+ shape2[ndim2] == 1) {
68
+ continue;
69
+ }
70
+ return false;
71
+ }
72
+ return true;
73
+ }
74
+
75
+ // avoid copy-construction of Tensor by using a reference_wrapper.
76
+ inline void check_defined(
77
+ std::initializer_list<std::reference_wrapper<const Tensor>> tensors,
78
+ const char* api_name) {
79
+ for (auto& t : tensors) {
80
+ if (!t.get().defined()) {
81
+ TORCH_CHECK(false, api_name, "(...) called with an undefined Tensor");
82
+ }
83
+ }
84
+ }
85
+
86
+ // NOTE [ ExpandUtils Borrowing ]
87
+ //
88
+ // Functions in ExpandUtils return `c10::MaybeOwned<Tensor>` because
89
+ // expansion may not actually be needed, in which case we can improve
90
+ // efficiency by returning
91
+ // `c10::MaybeOwned<Tensor>::borrowed(to_expand)`. However, this means
92
+ // that you need to be careful: the returned `c10::MaybeOwned<Tensor>`
93
+ // must not outlive the original `Tensor` object that `to_expand`
94
+ // referred to! The deleted rvalue reference overloads of these
95
+ // functions help with this by preventing trivial use of a temporary
96
+ // resulting from a function call, but it is still possible to make a
97
+ // mistake.
98
+
99
+ inline c10::MaybeOwned<Tensor> expand_inplace(
100
+ const Tensor& tensor,
101
+ const Tensor& to_expand) {
102
+ if (tensor.sym_sizes().equals(to_expand.sym_sizes())) {
103
+ return c10::MaybeOwned<Tensor>::borrowed(to_expand);
104
+ }
105
+ return c10::MaybeOwned<Tensor>::owned(
106
+ to_expand.expand_symint(tensor.sym_sizes()));
107
+ }
108
+
109
+ inline c10::MaybeOwned<Tensor> expand_inplace(
110
+ const Tensor& tensor,
111
+ Tensor&& to_expand) = delete;
112
+
113
+ inline c10::MaybeOwned<Tensor> expand_inplace(
114
+ const Tensor& tensor,
115
+ const Tensor& to_expand,
116
+ const char* api_name) {
117
+ check_defined({tensor, to_expand}, api_name);
118
+ return expand_inplace(tensor, to_expand);
119
+ }
120
+
121
+ inline c10::MaybeOwned<Tensor> expand_inplace(
122
+ const Tensor& tensor,
123
+ Tensor&& to_expand,
124
+ const char* api_name) = delete;
125
+
126
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
127
+ expand_inplace(
128
+ const Tensor& tensor,
129
+ const Tensor& to_expand1,
130
+ const Tensor& to_expand2) {
131
+ if (tensor.sizes().equals(to_expand1.sizes()) &&
132
+ tensor.sizes().equals((to_expand2.sizes()))) {
133
+ return std::make_tuple(
134
+ c10::MaybeOwned<Tensor>::borrowed(to_expand1),
135
+ c10::MaybeOwned<Tensor>::borrowed(to_expand2));
136
+ }
137
+
138
+ return std::make_tuple(
139
+ c10::MaybeOwned<Tensor>::owned(to_expand1.expand(tensor.sizes())),
140
+ c10::MaybeOwned<Tensor>::owned(to_expand2.expand(tensor.sizes())));
141
+ }
142
+
143
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
144
+ expand_inplace(
145
+ const Tensor& tensor,
146
+ Tensor&& to_expand1,
147
+ const Tensor& to_expand2) = delete;
148
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
149
+ expand_inplace(
150
+ const Tensor& tensor,
151
+ const Tensor& to_expand1,
152
+ Tensor&& to_expand2) = delete;
153
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
154
+ expand_inplace(const Tensor& tensor, Tensor&& to_expand1, Tensor&& to_expand2) =
155
+ delete;
156
+
157
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
158
+ expand_inplace(
159
+ const Tensor& tensor,
160
+ const Tensor& to_expand1,
161
+ const Tensor& to_expand2,
162
+ const char* api_name) {
163
+ check_defined({tensor, to_expand1, to_expand2}, api_name);
164
+ return expand_inplace(tensor, to_expand1, to_expand2);
165
+ }
166
+
167
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
168
+ expand_inplace(
169
+ const Tensor& tensor,
170
+ Tensor&& to_expand1,
171
+ const Tensor& to_expand2,
172
+ const char* api_name) = delete;
173
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
174
+ expand_inplace(
175
+ const Tensor& tensor,
176
+ const Tensor& to_expand1,
177
+ Tensor&& to_expand2,
178
+ const char* api_name) = delete;
179
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
180
+ expand_inplace(
181
+ const Tensor& tensor,
182
+ Tensor&& to_expand1,
183
+ Tensor&& to_expand2,
184
+ const char* api_name) = delete;
185
+
186
+ // See NOTE [ ExpandUtils Borrowing ] above for `MaybeOwned` explanation.
187
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
188
+ expand_outplace(const Tensor& to_expand1, const Tensor& to_expand2) {
189
+ auto s1 = to_expand1.sym_sizes();
190
+ auto s2 = to_expand2.sym_sizes();
191
+ if (s1.equals(s2)) {
192
+ return std::make_tuple(
193
+ c10::MaybeOwned<Tensor>::borrowed(to_expand1),
194
+ c10::MaybeOwned<Tensor>::borrowed(to_expand2));
195
+ }
196
+
197
+ auto expanded_size = infer_size_symdimvector(s1, s2);
198
+ return std::make_tuple(
199
+ c10::MaybeOwned<Tensor>::owned(to_expand1.expand_symint(expanded_size)),
200
+ c10::MaybeOwned<Tensor>::owned(to_expand2.expand_symint(expanded_size)));
201
+ }
202
+
203
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
204
+ expand_outplace(Tensor&& to_expand1, const Tensor& to_expand2) = delete;
205
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
206
+ expand_outplace(const Tensor& to_expand1, Tensor&& to_expand2) = delete;
207
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
208
+ expand_outplace(Tensor&& to_expand1, Tensor&& to_expand2) = delete;
209
+
210
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
211
+ expand_outplace(
212
+ const Tensor& to_expand1,
213
+ const Tensor& to_expand2,
214
+ const char* api_name) {
215
+ check_defined({to_expand1, to_expand2}, api_name);
216
+ return expand_outplace(to_expand1, to_expand2);
217
+ }
218
+
219
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
220
+ expand_outplace(
221
+ Tensor&& to_expand1,
222
+ const Tensor& to_expand2,
223
+ const char* api_name) = delete;
224
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
225
+ expand_outplace(
226
+ const Tensor& to_expand1,
227
+ Tensor&& to_expand2,
228
+ const char* api_name) = delete;
229
+ inline std::tuple<c10::MaybeOwned<Tensor>, c10::MaybeOwned<Tensor>>
230
+ expand_outplace(
231
+ Tensor&& to_expand1,
232
+ Tensor&& to_expand2,
233
+ const char* api_name) = delete;
234
+
235
+ inline std::tuple<
236
+ c10::MaybeOwned<Tensor>,
237
+ c10::MaybeOwned<Tensor>,
238
+ c10::MaybeOwned<Tensor>>
239
+ expand_outplace(
240
+ const Tensor& to_expand1,
241
+ const Tensor& to_expand2,
242
+ const Tensor& to_expand3) {
243
+ if (to_expand1.sizes().equals(to_expand2.sizes()) &&
244
+ to_expand1.sizes().equals(to_expand3.sizes())) {
245
+ return std::make_tuple(
246
+ c10::MaybeOwned<Tensor>::borrowed(to_expand1),
247
+ c10::MaybeOwned<Tensor>::borrowed(to_expand2),
248
+ c10::MaybeOwned<Tensor>::borrowed(to_expand3));
249
+ }
250
+
251
+ auto expanded_size12 =
252
+ infer_size_dimvector(to_expand1.sizes(), to_expand2.sizes());
253
+ auto expanded_size =
254
+ infer_size_dimvector(expanded_size12, to_expand3.sizes());
255
+ return std::make_tuple(
256
+ c10::MaybeOwned<Tensor>::owned(to_expand1.expand(expanded_size)),
257
+ c10::MaybeOwned<Tensor>::owned(to_expand2.expand(expanded_size)),
258
+ c10::MaybeOwned<Tensor>::owned(to_expand3.expand(expanded_size)));
259
+ }
260
+
261
+ inline std::tuple<
262
+ c10::MaybeOwned<Tensor>,
263
+ c10::MaybeOwned<Tensor>,
264
+ c10::MaybeOwned<Tensor>>
265
+ expand_outplace(
266
+ Tensor&& to_expand1,
267
+ const Tensor& to_expand2,
268
+ const Tensor& to_expand3) = delete;
269
+ inline std::tuple<
270
+ c10::MaybeOwned<Tensor>,
271
+ c10::MaybeOwned<Tensor>,
272
+ c10::MaybeOwned<Tensor>>
273
+ expand_outplace(
274
+ const Tensor& to_expand1,
275
+ Tensor&& to_expand2,
276
+ const Tensor& to_expand3) = delete;
277
+ inline std::tuple<
278
+ c10::MaybeOwned<Tensor>,
279
+ c10::MaybeOwned<Tensor>,
280
+ c10::MaybeOwned<Tensor>>
281
+ expand_outplace(
282
+ Tensor&& to_expand1,
283
+ Tensor&& to_expand2,
284
+ const Tensor& to_expand3) = delete;
285
+ inline std::tuple<
286
+ c10::MaybeOwned<Tensor>,
287
+ c10::MaybeOwned<Tensor>,
288
+ c10::MaybeOwned<Tensor>>
289
+ expand_outplace(
290
+ const Tensor& to_expand1,
291
+ const Tensor& to_expand2,
292
+ Tensor&& to_expand3) = delete;
293
+ inline std::tuple<
294
+ c10::MaybeOwned<Tensor>,
295
+ c10::MaybeOwned<Tensor>,
296
+ c10::MaybeOwned<Tensor>>
297
+ expand_outplace(
298
+ Tensor&& to_expand1,
299
+ const Tensor& to_expand2,
300
+ Tensor&& to_expand3) = delete;
301
+ inline std::tuple<
302
+ c10::MaybeOwned<Tensor>,
303
+ c10::MaybeOwned<Tensor>,
304
+ c10::MaybeOwned<Tensor>>
305
+ expand_outplace(
306
+ const Tensor& to_expand1,
307
+ Tensor&& to_expand2,
308
+ Tensor&& to_expand3) = delete;
309
+ inline std::tuple<
310
+ c10::MaybeOwned<Tensor>,
311
+ c10::MaybeOwned<Tensor>,
312
+ c10::MaybeOwned<Tensor>>
313
+ expand_outplace(Tensor&& to_expand1, Tensor&& to_expand2, Tensor&& to_expand3) =
314
+ delete;
315
+
316
+ inline std::tuple<
317
+ c10::MaybeOwned<Tensor>,
318
+ c10::MaybeOwned<Tensor>,
319
+ c10::MaybeOwned<Tensor>>
320
+ expand_outplace(
321
+ const Tensor& to_expand1,
322
+ const Tensor& to_expand2,
323
+ const Tensor& to_expand3,
324
+ const char* api_name) {
325
+ check_defined({to_expand1, to_expand2, to_expand3}, api_name);
326
+ return expand_outplace(to_expand1, to_expand2, to_expand3);
327
+ }
328
+
329
+ inline std::tuple<
330
+ c10::MaybeOwned<Tensor>,
331
+ c10::MaybeOwned<Tensor>,
332
+ c10::MaybeOwned<Tensor>>
333
+ expand_outplace(
334
+ Tensor&& to_expand1,
335
+ const Tensor& to_expand2,
336
+ const Tensor& to_expand3,
337
+ const char* api_name) = delete;
338
+ inline std::tuple<
339
+ c10::MaybeOwned<Tensor>,
340
+ c10::MaybeOwned<Tensor>,
341
+ c10::MaybeOwned<Tensor>>
342
+ expand_outplace(
343
+ const Tensor& to_expand1,
344
+ Tensor&& to_expand2,
345
+ const Tensor& to_expand3,
346
+ const char* api_name) = delete;
347
+ inline std::tuple<
348
+ c10::MaybeOwned<Tensor>,
349
+ c10::MaybeOwned<Tensor>,
350
+ c10::MaybeOwned<Tensor>>
351
+ expand_outplace(
352
+ Tensor&& to_expand1,
353
+ Tensor&& to_expand2,
354
+ const Tensor& to_expand3,
355
+ const char* api_name) = delete;
356
+ inline std::tuple<
357
+ c10::MaybeOwned<Tensor>,
358
+ c10::MaybeOwned<Tensor>,
359
+ c10::MaybeOwned<Tensor>>
360
+ expand_outplace(
361
+ const Tensor& to_expand1,
362
+ const Tensor& to_expand2,
363
+ Tensor&& to_expand3,
364
+ const char* api_name) = delete;
365
+ inline std::tuple<
366
+ c10::MaybeOwned<Tensor>,
367
+ c10::MaybeOwned<Tensor>,
368
+ c10::MaybeOwned<Tensor>>
369
+ expand_outplace(
370
+ Tensor&& to_expand1,
371
+ const Tensor& to_expand2,
372
+ Tensor&& to_expand3,
373
+ const char* api_name) = delete;
374
+ inline std::tuple<
375
+ c10::MaybeOwned<Tensor>,
376
+ c10::MaybeOwned<Tensor>,
377
+ c10::MaybeOwned<Tensor>>
378
+ expand_outplace(
379
+ const Tensor& to_expand1,
380
+ Tensor&& to_expand2,
381
+ Tensor&& to_expand3,
382
+ const char* api_name) = delete;
383
+ inline std::tuple<
384
+ c10::MaybeOwned<Tensor>,
385
+ c10::MaybeOwned<Tensor>,
386
+ c10::MaybeOwned<Tensor>>
387
+ expand_outplace(
388
+ Tensor&& to_expand1,
389
+ Tensor&& to_expand2,
390
+ Tensor&& to_expand3,
391
+ const char* api_name) = delete;
392
+
393
+ inline c10::MaybeOwned<Tensor> expand_size(
394
+ const Tensor& to_expand,
395
+ IntArrayRef sizes) {
396
+ if (to_expand.sizes().equals(sizes)) {
397
+ return c10::MaybeOwned<Tensor>::borrowed(to_expand);
398
+ }
399
+
400
+ return c10::MaybeOwned<Tensor>::owned(to_expand.expand(sizes));
401
+ }
402
+
403
+ inline c10::MaybeOwned<Tensor> expand_size(
404
+ Tensor&& to_expand,
405
+ IntArrayRef sizes) = delete;
406
+
407
+ inline c10::MaybeOwned<Tensor> expand_size(
408
+ const Tensor& to_expand,
409
+ IntArrayRef sizes,
410
+ const char* api_name) {
411
+ check_defined({to_expand}, api_name);
412
+ return expand_size(to_expand, sizes);
413
+ }
414
+
415
+ inline c10::MaybeOwned<Tensor> expand_size(
416
+ Tensor&& to_expand,
417
+ IntArrayRef sizes,
418
+ const char* api_name) = delete;
419
+
420
+ inline std::vector<Tensor> expand_outplace(TensorList to_expand) {
421
+ // expands a list of Tensors; ignores undefined (null) tensors
422
+ bool first = true;
423
+ SymDimVector sizes;
424
+ for (const auto i : c10::irange(to_expand.size())) {
425
+ if (!to_expand[i].defined()) {
426
+ continue;
427
+ } else if (first) {
428
+ sizes = to_expand[i].sym_sizes();
429
+ first = false;
430
+ } else {
431
+ sizes = infer_size_symdimvector(sizes, to_expand[i].sym_sizes());
432
+ }
433
+ }
434
+
435
+ std::vector<Tensor> result(to_expand.size());
436
+ for (const auto i : c10::irange(to_expand.size())) {
437
+ if (!to_expand[i].defined()) {
438
+ continue;
439
+ } else if (to_expand[i].sym_sizes().equals(sizes)) {
440
+ result[i] = to_expand[i];
441
+ } else {
442
+ result[i] = to_expand[i].expand_symint(sizes);
443
+ }
444
+ }
445
+ return result;
446
+ }
447
+
448
+ template <typename T>
449
+ inline Tensor _sum_to(
450
+ Tensor tensor,
451
+ const c10::ArrayRef<T> shape,
452
+ bool always_return_non_view = false) {
453
+ if (shape.size() == 0) {
454
+ return tensor.sum();
455
+ }
456
+
457
+ auto sizes = at::symint::sizes<T>(tensor);
458
+ c10::SmallVector<int64_t, 8> reduce_dims;
459
+ const int64_t leading_dims = sizes.size() - shape.size();
460
+ for (const auto i : c10::irange(leading_dims)) {
461
+ reduce_dims.push_back(i);
462
+ }
463
+ for (int64_t i = leading_dims; i < static_cast<int64_t>(sizes.size()); ++i) {
464
+ if (TORCH_GUARD_OR_FALSE(sym_eq(shape[i - leading_dims], 1)) &&
465
+ TORCH_GUARD_OR_TRUE(sym_ne(sizes[i], 1))) {
466
+ reduce_dims.push_back(i);
467
+ } else {
468
+ // if we assume no reduction due to unbacked we ensure that at runtime.
469
+ TORCH_MAYBE_SYM_CHECK(
470
+ sym_eq(shape[i - leading_dims], sizes[i]),
471
+ "non-reduction path was assumed due to unabcked symbols expected those two sizes to be the same:",
472
+ shape[i - leading_dims],
473
+ ", ",
474
+ sizes[i])
475
+ }
476
+ }
477
+
478
+ if (!reduce_dims.empty()) {
479
+ tensor = tensor.sum(reduce_dims, /*keepdim=*/true);
480
+ }
481
+
482
+ if (always_return_non_view) {
483
+ // This is only actually used by the functionalization pass.
484
+ // We want to be able to guarantee that this function doesn't return a view
485
+ // of the input.
486
+ return leading_dims > 0 ? at::symint::view_copy<T>(tensor, shape)
487
+ : tensor.clone();
488
+ } else {
489
+ return leading_dims > 0 ? at::symint::view<T>(tensor, shape) : tensor;
490
+ }
491
+ }
492
+
493
+ inline Tensor sum_to(
494
+ Tensor tensor,
495
+ const c10::SymIntArrayRef shape,
496
+ bool always_return_non_view = false) {
497
+ return _sum_to(std::move(tensor), shape, always_return_non_view);
498
+ }
499
+
500
+ // Sums `tensor` repeatedly to produce a tensor of shape `shape`.
501
+ // Precondition: is_expandable_to(shape, tensor.sizes()) must be true
502
+ inline Tensor sum_to(
503
+ Tensor tensor,
504
+ const IntArrayRef shape,
505
+ bool always_return_non_view = false) {
506
+ return _sum_to(std::move(tensor), shape, always_return_non_view);
507
+ }
508
+
509
+ inline bool is_expandable_to(
510
+ SymIntArrayRef shape,
511
+ c10::SymIntArrayRef desired) {
512
+ size_t ndim = shape.size();
513
+ size_t target_dim = desired.size();
514
+ if (ndim > target_dim) {
515
+ return false;
516
+ }
517
+ for (const auto i : c10::irange(ndim)) {
518
+ const auto& size = shape[ndim - i - 1];
519
+ const auto& target = desired[target_dim - i - 1];
520
+ if (size != target && size != 1) {
521
+ return false;
522
+ }
523
+ }
524
+ return true;
525
+ }
526
+
527
+ inline bool is_expandable_to(IntArrayRef shape, IntArrayRef desired) {
528
+ auto sym_shape = c10::SymIntArrayRef(
529
+ reinterpret_cast<const c10::SymInt*>(shape.data()), shape.size());
530
+ auto sym_desired = c10::SymIntArrayRef(
531
+ reinterpret_cast<const c10::SymInt*>(desired.data()), desired.size());
532
+ return is_expandable_to(sym_shape, sym_desired);
533
+ }
534
+
535
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Formatting.h ADDED
@@ -0,0 +1 @@
 
 
1
+ #include <ATen/core/Formatting.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/FuncTorchTLS.h ADDED
@@ -0,0 +1,46 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <c10/macros/Macros.h>
4
+ #include <memory>
5
+
6
+ namespace at::functorch {
7
+
8
+ // NOTE [functorch TLS in pytorch/pytorch]
9
+ //
10
+ // functorch lives out-of-tree. However, it has some TLS that needs to be
11
+ // propagated. The solution for that is we store a pointer to the TLS
12
+ // inside pytorch/pytorch and extend FuncTorchTLSBase inside functorch to
13
+ // include whatever functorch needs.
14
+ //
15
+ // We need to store a pointer due to the indirection:
16
+ // inside functorch, we will create a subclass of FunctorchTLSBase called
17
+ // FuncTorchTLSImpl that actually contains metadata, like the DynamicLayerStack.
18
+ // FuncTorchTLSBase doesn't have any metadata because it hasn't been defined
19
+ // yet.
20
+ //
21
+ // Here in pytorch/pytorch, we will pass around FuncTorchTLSBase*, but inside
22
+ // functorch, we will assign a FuncTorchTLSImpl* to the FunctorchTLSBase*.
23
+ // We can't directly pass around FunctorchTLSBase (without a pointer) because
24
+ // FuncTorchTLSImpl does not fit inside a FuncTorchTLSBase by virtue of having
25
+ // more elements.
26
+ struct TORCH_API FuncTorchTLSBase {
27
+ virtual ~FuncTorchTLSBase() = default;
28
+ virtual std::unique_ptr<FuncTorchTLSBase> deepcopy() const = 0;
29
+
30
+ virtual int64_t checkSupportsSingleLevelAutogradFunction() const = 0;
31
+ virtual void checkSupportsCppAutogradFunction() const = 0;
32
+ virtual void checkSupportsInplaceRequiresGrad() const = 0;
33
+ virtual void checkSupportsRetainGrad() const = 0;
34
+ };
35
+
36
+ // returns deepcopy of the functorch tls
37
+ TORCH_API std::unique_ptr<FuncTorchTLSBase> getCopyOfFuncTorchTLS();
38
+
39
+ // sets the functorch tls. always does a deep copy.
40
+ TORCH_API void setFuncTorchTLS(
41
+ const std::shared_ptr<const FuncTorchTLSBase>& state);
42
+
43
+ // get a mutable reference to the functorch tls
44
+ TORCH_API std::unique_ptr<FuncTorchTLSBase>& functorchTLSAccessor();
45
+
46
+ } // namespace at::functorch
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/FunctionalStorageImpl.h ADDED
@@ -0,0 +1,269 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/Tensor.h>
4
+
5
+ #include <utility>
6
+
7
+ namespace at::functionalization {
8
+
9
+ // See Note [Functionalization Pass In Core]
10
+
11
+ enum class InverseReturnMode {
12
+ /// Specifies that functional inverses should always return a view.
13
+ AlwaysView,
14
+ /// Specifies that functional inverses should always return a non-view / copy.
15
+ NeverView,
16
+ /// Specifies that functional inverses should return a view unless a (copying)
17
+ /// scatter
18
+ /// inverse exists, in which case that will be used instead.
19
+ /// This avoids as_strided() calls that can be difficult for subclasses to
20
+ /// handle.
21
+ ViewOrScatterInverse,
22
+ };
23
+
24
+ #define FUNCTIONALIZATION_VIEWMETA_NAME(TYPE) \
25
+ static const char* name() { \
26
+ return #TYPE; \
27
+ }
28
+
29
+ #define FUNCTIONALIZATION_VIEWMETA_SERIALIZABLE_TUPLE(...) \
30
+ using SerializableTuple = std::tuple<__VA_ARGS__>
31
+
32
+ // ViewMeta is a class used by the functionalization pass to navigate between
33
+ // a base tensor and a view tensor.
34
+ // For example, if I call `b = a.view1(...)`
35
+ // the functionalization pass will generate and store a ViewMeta specialization
36
+ // for `view1` operation on b that looks like:
37
+ //
38
+ // struct TORCH_API view1_ViewMeta : public ViewMeta {
39
+ // FUNCTIONALIZATION_VIEWMETA_NAME(view1_ViewMeta);
40
+ // FUNCTIONALIZATION_VIEWMETA_SERIALIZABLE_TUPLE(
41
+ // bool /* reapply_views */,
42
+ // const std::vector<int64_t>&);
43
+ //
44
+ // view1_ViewMeta(const SerializableTuple& tpl)
45
+ // : view1_ViewMeta(std::get<0>(tpl), std::get<1>(tpl)) {}
46
+ //
47
+ // view1_ViewMeta(bool reapply_views, const std::vector<int64_t>& size)
48
+ // : ViewMeta(/*has_symbolic_inputs=*/false),
49
+ // reapply_views(reapply_views),
50
+ // size(size) {}
51
+ //
52
+ // Tensor forward(const Tensor& base) override {
53
+ // return base.view1(...);
54
+ // }
55
+ //
56
+ // Tensor reverse(const Tensor& base, const Tensor& mutated_view) override {
57
+ // return at::functionalization::impl::view1_inverse(base, mutated_view,
58
+ // ...);
59
+ // }
60
+ //
61
+ // SerializableTuple to_serializable_tuple() {
62
+ // return std::make_tuple(reapply_views, size);
63
+ // }
64
+ //
65
+ // bool reapply_views;
66
+ // std::vector<int64_t> size;
67
+ // };
68
+ //
69
+ // The forward function describes how to replay view1 on a tensor.
70
+ //
71
+ // The reverse function describes how, given a tensor that is already a view,
72
+ // how to get the corresponding base tensor. See Note [Functionalization Pass:
73
+ // View Inverses] for details.
74
+ //
75
+ // `SerializedTuple` is a typedef that defines an `std::tuple<...>` type
76
+ // representing the `ViewMeta` instance state. Methods that take in/return such
77
+ // a type are used for supporting pickle serialization.
78
+ struct ViewMeta {
79
+ ViewMeta(
80
+ bool has_symbolic_inputs,
81
+ bool is_multi_output = false,
82
+ bool is_as_strided = false,
83
+ int64_t out_idx = 0)
84
+ : out_index(out_idx),
85
+ is_multi_output(is_multi_output),
86
+ is_as_strided(is_as_strided),
87
+ has_symbolic_inputs(has_symbolic_inputs) {}
88
+
89
+ virtual ~ViewMeta() = default;
90
+
91
+ virtual Tensor forward(const Tensor& base) = 0;
92
+ virtual Tensor reverse(const Tensor& base, const Tensor& mutated_view) = 0;
93
+
94
+ // See Note [out_idx in ViewMeta]
95
+ int64_t out_index;
96
+
97
+ // Tells us if this is a multi-output view
98
+ bool is_multi_output;
99
+
100
+ bool is_as_strided;
101
+
102
+ // Tells us if this view operation has any symbolic inputs
103
+ bool has_symbolic_inputs;
104
+
105
+ // Returns a new ViewMeta with the same forward/reverse
106
+ // functions, but a new out index.
107
+ //
108
+ // This method should be implemented by those `ViewMeta` that have more than
109
+ // one output.
110
+ virtual std::shared_ptr<ViewMeta> to_out_index(int64_t out_index) {
111
+ TORCH_CHECK_NOT_IMPLEMENTED(
112
+ false,
113
+ "ViewMeta::to_out_index not implemented. ",
114
+ "Likely because there's only one output.");
115
+ }
116
+ };
117
+
118
+ // FunctionalStorageImpl is a subclass of StorageImpl used by the
119
+ // functionalization pass. It has no underlying data (similar to meta storage).
120
+ // It also knows how to reflect mutations to tensors in the absence of a valid
121
+ // data pointer.
122
+ //
123
+ // A storage represents the state shared by (potentially multiple) views of the
124
+ // same tensor. For example, in the following code:
125
+ //
126
+ // b = a.view1(...)
127
+ // c = b.view2(...)
128
+ // b.add_(1)
129
+ // --> storage.add_update(b, {view1_meta})
130
+ //
131
+ // The call to add_(1) will result in a call to alias.add_update(b,
132
+ // {view1_meta}), queueing up the mutation from b onto the alias. Later, suppose
133
+ // c is used in an expression (e.g. you try to print c, or pass it to an
134
+ // operator). Doing so will involve "syncing" c. First we apply any pending
135
+ // updates to the alias, and then we regenerate c by replaying its views off of
136
+ // the updated alias. E.g:
137
+ //
138
+ // print(str(c))
139
+ // --> c.sync_()
140
+ // --> alias.apply_updates() // after this, the alias will be updated to
141
+ // reflect the mutation to b
142
+ struct TORCH_API FunctionalStorageImpl : public c10::StorageImpl {
143
+ public:
144
+ struct Update {
145
+ // NOLINTNEXTLINE(cppcoreguidelines-avoid-const-or-ref-data-members)
146
+ const at::Tensor new_val;
147
+ // NOLINTNEXTLINE(cppcoreguidelines-avoid-const-or-ref-data-members)
148
+ const std::vector<std::shared_ptr<ViewMeta>> view_metas;
149
+ };
150
+
151
+ explicit FunctionalStorageImpl(const Tensor& value);
152
+
153
+ void add_update(
154
+ const Tensor& updated_val,
155
+ const std::vector<std::shared_ptr<ViewMeta>>& view_metas);
156
+ bool apply_updates();
157
+ const Tensor& base() {
158
+ return base_;
159
+ }
160
+ size_t generation() const {
161
+ return generation_;
162
+ }
163
+ void freeze() {
164
+ frozen_ = true;
165
+ }
166
+
167
+ c10::SymInt get_storage_size(bool before) {
168
+ if (before) {
169
+ return original_storage_size_;
170
+ } else {
171
+ return curr_storage_size_;
172
+ }
173
+ }
174
+
175
+ ~FunctionalStorageImpl() override = default;
176
+
177
+ uint64_t mutation_counter() {
178
+ return mutation_counter_;
179
+ }
180
+ void mark_mutation() {
181
+ mutation_counter_++;
182
+ }
183
+ void mark_mutation_during_no_grad_or_inference_mode() {
184
+ mutation_counter_during_no_grad_or_inference_mode_++;
185
+ }
186
+ void mark_mutation_hidden_from_autograd() {
187
+ mutation_counter_hidden_from_autograd_++;
188
+ }
189
+
190
+ bool are_all_mutations_under_no_grad_or_inference_mode() const {
191
+ auto non_autograd_mutations =
192
+ mutation_counter_during_no_grad_or_inference_mode_ +
193
+ mutation_counter_hidden_from_autograd_;
194
+ // The <= is because both counters will technically be incremented, if we
195
+ // perform e.g. a triton kernel mutation under no_grad
196
+ return mutation_counter_ <= non_autograd_mutations;
197
+ }
198
+
199
+ bool are_all_mutations_hidden_from_autograd() const {
200
+ // mutations under no_grad / inference_mode are technically not hidden from
201
+ // autograd - they change the version counter
202
+ return mutation_counter_ <= mutation_counter_hidden_from_autograd_;
203
+ }
204
+
205
+ void mark_inductor_storage_resize(c10::SymInt new_size) {
206
+ inductor_storage_resized_ = true;
207
+ curr_storage_size_ = std::move(new_size);
208
+ inductor_storage_resized_counter_++;
209
+ }
210
+
211
+ bool was_inductor_storage_resized() {
212
+ return inductor_storage_resized_;
213
+ }
214
+
215
+ uint64_t inductor_storage_resized_counter() {
216
+ return inductor_storage_resized_counter_;
217
+ }
218
+
219
+ private:
220
+ // NB: base_ should always point to a tensor BELOW the current
221
+ // functionalization layer. This is mainly to avoid reference cycles. e.g.
222
+ // given `b = a.view(...)` Both a.storage_ and b.storage_ are a
223
+ // FunctionStorageImpl containing an Walualias, with contains a Tensor
224
+ // `base_`. In this case (where a and b are FunctionalTensorWrapper's), base_
225
+ // should point not to a, but to a's unwrapped value, a.value_` See Note
226
+ // [Functionalization: Walualias Removal] for a diagram that shows this
227
+ // visually.
228
+ at::Tensor base_;
229
+ std::vector<Update> updates_;
230
+ // generation_ gets incremented every time a mutation is queued onto the
231
+ // alias. It is used to determine if a given tensor is "up to date", or if it
232
+ // needs to be regenerated from the alias.
233
+ size_t generation_ = 0;
234
+ // If frozen, no more mutations are allowed on this storage. Once frozen, a
235
+ // storage cannot be unfrozen.
236
+ bool frozen_ = false;
237
+
238
+ // These mutation counters are bumped on the storage
239
+ // whenever a FunctionalTensorWrapper experiences a mutation.
240
+ // When the mutation is under no_grad, or comes from a triton kernel, we also
241
+ // bump the corresponding during_no_grad or hidden_from_autograd counters. Why
242
+ // do we need to detect these two situations separately from "normal" input
243
+ // mutations? (1) "normal" input mutations can mutate autograd metadata like
244
+ // .grad_fn,
245
+ // in which case they need to be replayed outside of the compiled graph
246
+ // (2) "no_grad" input mutations are generally safe to keep in the graph (and
247
+ // compile),
248
+ // but they bump the tensor's VC, so we need to mark_dirty() on the inputs
249
+ // in torch.compile
250
+ // (3) mutations that are fully hidden from autograd (e.g. from a triton
251
+ // kernel)
252
+ // do not mutate any autograd state, and be fully kept in the graph
253
+ // When we detect that an input was mutated, we need to be able to tell if:
254
+ // (1) all of the mutations were from triton kernels
255
+ // (2) all of the mutations were under no_grad
256
+ uint64_t mutation_counter_during_no_grad_or_inference_mode_ = 0;
257
+ uint64_t mutation_counter_ = 0;
258
+ uint64_t mutation_counter_hidden_from_autograd_ = 0;
259
+
260
+ // Used to tell if:
261
+ // (1) There were any storage resizes on a graph input
262
+ // (2) The original/curr storage size tell us if these resizes result in a nop
263
+ bool inductor_storage_resized_ = false;
264
+ uint64_t inductor_storage_resized_counter_ = 0;
265
+ c10::SymInt original_storage_size_;
266
+ c10::SymInt curr_storage_size_;
267
+ };
268
+
269
+ } // namespace at::functionalization
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/FunctionalTensorWrapper.h ADDED
@@ -0,0 +1,471 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+
2
+ #pragma once
3
+
4
+ #include <ATen/ArrayRef.h>
5
+ #include <ATen/FunctionalStorageImpl.h>
6
+ #include <ATen/core/IListRef.h>
7
+ #include <ATen/core/List.h>
8
+ #include <ATen/core/boxing/BoxedKernel.h>
9
+ #include <ATen/core/boxing/impl/boxing.h>
10
+ #include <ATen/core/dispatch/Dispatcher.h>
11
+
12
+ #include <c10/core/DispatchKey.h>
13
+
14
+ namespace at {
15
+
16
+ // Note [Functionalization Pass In Core]
17
+ // The Functionalization pass is used to remove aliasing from a pytorch program.
18
+ //
19
+ // This is useful for backends that don't support aliasing, like XLA and Vulkan.
20
+ // It's also necessary in order to remove mutation from a program, which is
21
+ // needed in Functorch.
22
+ //
23
+ // Consider this program:
24
+ // a = torch.ones(...)
25
+ // b = a.view(...)
26
+ // b.add_(1)
27
+ //
28
+ // In this program, b is meant to alias with a due to the use of view(). At the
29
+ // end of the program, both a and b are full of 2's. However, backends that
30
+ // don't support aliasing aren't able to correctly implement the view()
31
+ // operator. Instead, they can opt into the Functionalization pass, which will
32
+ // sit between the user and the backend, and provide the necessary aliasing
33
+ // logic.
34
+ //
35
+ // The functionalization pass will turn the above program into a slightly
36
+ // different program that has the same semantics, transparently to the user,
37
+ // that backends like XLA/Vulkan are able to implement a = torch.ones(...) b =
38
+ // a.view_copy(...) # view() replaced with view_copy(). Backends like
39
+ // XLA/Vulkan can implement this! b.add_(1) a.add_(1) # Our functionalization
40
+ // pass machinery knows that a and b are aliased - it applies b's mutation to a
41
+ // too.
42
+ //
43
+ // So, how does the functionalization pass keep track of which tensors are
44
+ // aliased? The pass works by wrapping EVERY tensor in the program inside of a
45
+ // FunctionalTensorWrapper, which knows about its alias'd tensors.
46
+ //
47
+ // See Note [Functionalization: Alias Removal] for details on the aliasing
48
+ // machinery. See Note [Functionalization: Mutation Removal] for details on
49
+ // mutation removal.
50
+ struct TORCH_API FunctionalTensorWrapper : public c10::TensorImpl {
51
+ explicit FunctionalTensorWrapper(const Tensor& value);
52
+ // Additional constructor to create a FunctionalTensorWrapper directly from an
53
+ // underlying tensor that was created from a view. For example, the code b =
54
+ // a.view1() will generate a constructor call to FunctionalTensorWrapper(b, a,
55
+ // view1_meta)
56
+ explicit FunctionalTensorWrapper(
57
+ const Tensor& view_value,
58
+ const FunctionalTensorWrapper* base,
59
+ const std::shared_ptr<functionalization::ViewMeta>& meta);
60
+
61
+ // Get the underlying, actual tensor, that doesn't know anything about
62
+ // functionalization.
63
+ const Tensor& value() const {
64
+ return value_;
65
+ }
66
+ // The concept of "level" is only ever important to functorch; it's exposed
67
+ // here as more of a hook for functorch to use.
68
+ int64_t level() const {
69
+ return level_;
70
+ }
71
+ void set_level(int64_t level) {
72
+ level_ = level;
73
+ }
74
+ bool has_metadata_mutation() const {
75
+ return has_metadata_mutation_;
76
+ }
77
+ uint64_t mutation_counter() const {
78
+ return functional_storage_impl()->mutation_counter();
79
+ }
80
+ void mark_mutation() {
81
+ functional_storage_impl()->mark_mutation();
82
+ }
83
+ // Denotes a mutation that's hidden from autograd,
84
+ // e.g. for the purposes of passing a tensor to a triton kernel
85
+ void mark_mutation_hidden_from_autograd() {
86
+ functional_storage_impl()->mark_mutation_hidden_from_autograd();
87
+ }
88
+ void mark_mutation_during_no_grad_or_inference_mode() {
89
+ functional_storage_impl()->mark_mutation_during_no_grad_or_inference_mode();
90
+ }
91
+ // Are all the mutations happening to the tensor hidden from autograd
92
+ bool are_all_mutations_hidden_from_autograd() const {
93
+ return functional_storage_impl()->are_all_mutations_hidden_from_autograd();
94
+ }
95
+ // Did all mutations happen under no_grad or inference_mode
96
+ // (We also need to ignore mutations fully hidden from autograd here)
97
+ bool are_all_mutations_under_no_grad_or_inference_mode() const {
98
+ return functional_storage_impl()
99
+ ->are_all_mutations_under_no_grad_or_inference_mode();
100
+ }
101
+
102
+ void maybe_mark_symbolic(functionalization::ViewMeta* meta) {
103
+ is_symbolic_ = is_symbolic_ | meta->has_symbolic_inputs;
104
+ }
105
+
106
+ bool is_symbolic() const {
107
+ return is_symbolic_;
108
+ }
109
+
110
+ // Retrieves the ViewMeta sequence of this tensor.
111
+ const std::vector<std::shared_ptr<functionalization::ViewMeta>>& view_metas()
112
+ const;
113
+
114
+ // Sync's the underlying tensor with its alias, if it's out of date. This
115
+ // involves two steps: 1) Apply any pending updates/mutations to the alias 2)
116
+ // Replay the views (if any) to regenerate the current tensor off of the
117
+ // updated alias.
118
+ void sync_();
119
+ // Performs step (1) of the sync. This is its own public API because it's
120
+ // needed by view_inplace ops like transpose_. See Note [Functionalization
121
+ // Pass - Inplace View Ops]
122
+ void regenerate_from_base();
123
+ // Performs step (2) of the sync. This is its own public API because it's
124
+ // needed by functorch. functorch wants to make sure that all input tensors to
125
+ // a functionalized program have been properly synced so it can properly
126
+ // propagate mutations to inputs. It can't just call sync_(), because the
127
+ // FunctionalTensorWrapper will look like it has no aliases and sync_ will be
128
+ // a noop. We use the reference count on storage_ to determine if the wrapper
129
+ // is aliased, and by the time functorch is ready to propagate updates to
130
+ // inputs, any intermediate views of the input created by the program will
131
+ // have been deallocated. This function also returns whether or not the base
132
+ // actually had any updates to apply.
133
+ bool apply_updates();
134
+ // Takes the current state of value_ and snapshots it, sending it as a pending
135
+ // update to the alias.
136
+ void commit_update();
137
+ // When any tensor is mutated, the tensor increments its alias's "generation".
138
+ // Separately, each tensor maintains its own "generation" counter, which is
139
+ // used to determine if it's up-to-date with its alias. The act of syncing a
140
+ // tensor will set a tensor's generation equal to its alias's generation.
141
+ bool is_up_to_date() const;
142
+ // Freezes the storage of this tensor, preventing subsequent mutations
143
+ void freeze_storage() const;
144
+ // Every FunctionalTensorWrapper contains a vector<ViewMeta> objects
145
+ // describing the series of view ops that ran to generate the current tensor
146
+ // from the base tensor. This method is used by inplace-view ops like
147
+ // transpose_. It appends a ViewMeta to the existing stack, and refreshes the
148
+ // tensor by replaying the views off of the alias.
149
+ void mutate_view_meta(
150
+ const std::shared_ptr<at::functionalization::ViewMeta>& meta);
151
+
152
+ // Custom implementation of self.set_(src)
153
+ void set__impl(const FunctionalTensorWrapper* other);
154
+
155
+ // Custom implementation of resize_storage_bytes_(self, new_size)
156
+ void storage_resize_(const c10::SymInt& new_size);
157
+
158
+ // Returns whether the current tensor's data was ever mutated
159
+ bool has_data_mutation();
160
+ //
161
+ // Returns whether the current FunctionalTensorWrapper
162
+ // experienced a set_() call.
163
+ bool was_storage_changed() {
164
+ return was_storage_changed_;
165
+ }
166
+
167
+ void mark_storage_changed() {
168
+ was_storage_changed_ = true;
169
+ storage_changed_counter_++;
170
+ }
171
+
172
+ uint64_t storage_changed_counter() {
173
+ return storage_changed_counter_;
174
+ }
175
+
176
+ // A FunctionalTensor is considered a base if its not a view of another
177
+ // tensor.
178
+ bool isBaseTensor() const {
179
+ return view_metas_.empty();
180
+ }
181
+
182
+ c10::SymInt get_storage_size(bool before) {
183
+ return functional_storage_impl()->get_storage_size(before);
184
+ }
185
+
186
+ // Returns whether the FunctionalTensor experienced an
187
+ // untyped_storage().resize_() call
188
+ bool was_inductor_storage_resized() {
189
+ return functional_storage_impl()->was_inductor_storage_resized();
190
+ }
191
+
192
+ bool inductor_storage_resized_counter() {
193
+ return functional_storage_impl()->inductor_storage_resized_counter();
194
+ }
195
+ // The functionalization pass can be used to remove mutations.
196
+ // It does so by replacing any mutation op with it's corresponding
197
+ // out-of-place op, followed by a call to replace_(). e.g:
198
+ //
199
+ // a.add_(1)
200
+ //
201
+ // will turn into:
202
+ //
203
+ // tmp = a.add(1)
204
+ // a.replace_(tmp)
205
+ //
206
+ // replace_() swaps out the wrapped tensor, value_, with tmp.
207
+ void replace_(const Tensor& other, bool from_lazy_regenerate = false);
208
+
209
+ bool is_multi_output_view() {
210
+ return is_multi_output_view_;
211
+ }
212
+
213
+ // See Note[resize_() in functionalization pass]
214
+ void maybe_replace_storage(const Tensor& other);
215
+
216
+ // Replaces the storage with a new functional storage,
217
+ // and clears the view_metas_ stack.
218
+ // WARNING: Calling this function will sever the aliasing relationship between
219
+ // the current FunctionalTensorWrapper and any of its outstanding aliases.
220
+ // Please only call if you know what you're doing.
221
+ void _unsafe_reset_storage();
222
+
223
+ c10::intrusive_ptr<TensorImpl> shallow_copy_and_detach(
224
+ const c10::VariableVersion& version_counter,
225
+ bool allow_tensor_metadata_change) const override;
226
+
227
+ c10::intrusive_ptr<TensorImpl> shallow_copy_and_detach(
228
+ c10::VariableVersion&& version_counter,
229
+ bool allow_tensor_metadata_change) const override;
230
+
231
+ ~FunctionalTensorWrapper() override = default;
232
+
233
+ // FunctionalTensorWrapper overrides all custom size/stride function,
234
+ // so that if the inner tensor has a custom implementation
235
+ // we make sure to call that implementation.
236
+ at::IntArrayRef sizes_custom() const override;
237
+ at::IntArrayRef strides_custom() const override;
238
+ int64_t dim_custom() const override;
239
+ int64_t numel_custom() const override;
240
+ c10::SymBool sym_is_contiguous_custom(
241
+ at::MemoryFormat memory_format) const override;
242
+ c10::SymIntArrayRef sym_sizes_custom() const override;
243
+ c10::SymInt sym_size_custom(int64_t d) const override;
244
+ c10::SymIntArrayRef sym_strides_custom() const override;
245
+ c10::SymInt sym_storage_offset_custom() const override;
246
+ c10::Device device_custom() const override;
247
+ c10::Layout layout_impl() const override;
248
+
249
+ private:
250
+ const char* tensorimpl_type_name() const override;
251
+ void set_constructor_metadata();
252
+ functionalization::FunctionalStorageImpl* functional_storage_impl() const;
253
+
254
+ // This is used to re-implement shallow_copy_and_detach for
255
+ // FunctionalTensorWrapper. The implementation is identical, but we just need
256
+ // to return a subclass instead of a plain TensorImpl.
257
+ // TODO: maybe it's possible to arrange for that to happen automatically
258
+ // without an override here?
259
+ template <typename VariableVersion>
260
+ c10::intrusive_ptr<TensorImpl> shallow_copy_and_detach_core(
261
+ VariableVersion&& version_counter,
262
+ bool allow_tensor_metadata_change) const;
263
+
264
+ void shallow_copy_from(const c10::intrusive_ptr<TensorImpl>& impl) override;
265
+ void copy_tensor_metadata_and_refresh(
266
+ const FunctionalTensorWrapper* src_impl,
267
+ FunctionalTensorWrapper* dest_impl,
268
+ const c10::VariableVersion& version_counter,
269
+ bool allow_tensor_metadata_change) const;
270
+
271
+ // Note that value is not taken by reference: internally, the wrapper will
272
+ // change the value tensor that it points to over time.
273
+ Tensor value_;
274
+ int64_t level_{};
275
+ // These two counters are used for identifying
276
+ // whether all the mutations on a given tensor are hidden from autograd or
277
+ // not. If we have an input mutation that is hidden from autograd, then once
278
+ // we convert the input mutation to a copy_() we know it will be safe to hide
279
+ // the copy_() from autograd as well.
280
+ bool has_metadata_mutation_ = false;
281
+ bool is_multi_output_view_ = false;
282
+ // Did the tensor experience a set_() call.
283
+ bool was_storage_changed_ = false;
284
+ uint64_t storage_changed_counter_ = 0;
285
+ // Did the tensor experience any view operation with symbolic int.
286
+ bool is_symbolic_ = false;
287
+
288
+ size_t generation_ = 0;
289
+ std::vector<std::shared_ptr<at::functionalization::ViewMeta>> view_metas_;
290
+
291
+ protected:
292
+ static void copy_tensor_metadata(
293
+ const FunctionalTensorWrapper* src_impl,
294
+ FunctionalTensorWrapper* dest_impl,
295
+ const c10::VariableVersion& version_counter,
296
+ bool allow_tensor_metadata_change);
297
+ };
298
+
299
+ // Utility functions for the functionalization pass.
300
+
301
+ namespace functionalization {
302
+ namespace impl {
303
+
304
+ inline FunctionalTensorWrapper* unsafeGetFunctionalWrapper(
305
+ const Tensor& tensor) {
306
+ auto functional_impl =
307
+ static_cast<FunctionalTensorWrapper*>(tensor.unsafeGetTensorImpl());
308
+ TORCH_INTERNAL_ASSERT_DEBUG_ONLY(functional_impl != nullptr);
309
+ return functional_impl;
310
+ }
311
+
312
+ TORCH_API bool isBaseTensor(const at::Tensor& tensor);
313
+
314
+ TORCH_API bool isFunctionalTensor(const at::Tensor& tensor);
315
+ TORCH_API bool isFunctionalTensor(const std::optional<Tensor>& t);
316
+ TORCH_API bool isFunctionalTensor(
317
+ const c10::List<std::optional<Tensor>>& t_list);
318
+ TORCH_API bool isFunctionalTensor(ITensorListRef list);
319
+
320
+ TORCH_API Tensor to_functional_tensor(const Tensor& tensor);
321
+ TORCH_API std::optional<Tensor> to_functional_tensor(
322
+ const std::optional<Tensor>& tensor);
323
+ TORCH_API c10::List<std::optional<Tensor>> to_functional_tensor(
324
+ const c10::List<std::optional<Tensor>>& t_list);
325
+ TORCH_API std::vector<Tensor> to_functional_tensor(ITensorListRef t_list);
326
+
327
+ TORCH_API void freeze_functional_tensor(const Tensor& tensor);
328
+
329
+ TORCH_API Tensor
330
+ from_functional_tensor(const Tensor& tensor, bool assert_functional = true);
331
+ TORCH_API std::optional<Tensor> from_functional_tensor(
332
+ const std::optional<Tensor>& t,
333
+ bool assert_functional = true);
334
+ TORCH_API c10::List<std::optional<Tensor>> from_functional_tensor(
335
+ const c10::List<std::optional<Tensor>>& t_list);
336
+ TORCH_API std::vector<Tensor> from_functional_tensor(ITensorListRef t_list);
337
+
338
+ TORCH_API void sync(const at::Tensor& t);
339
+ TORCH_API void sync(const std::optional<Tensor>& t);
340
+ TORCH_API void sync(const c10::List<std::optional<Tensor>>& t_list);
341
+ TORCH_API void sync(ITensorListRef t_list);
342
+
343
+ TORCH_API void replace_(const Tensor& functional_tensor, const Tensor& other);
344
+ TORCH_API void replace_(
345
+ const ITensorListRef functional_tensor,
346
+ ITensorListRef other);
347
+
348
+ TORCH_API void commit_update(const Tensor& functional_tensor);
349
+ TORCH_API void commit_update(ITensorListRef functional_tensor);
350
+
351
+ TORCH_API void unsafe_reset_storage(const Tensor& functional_tensor);
352
+
353
+ TORCH_API void mark_mutation_hidden_from_autograd(
354
+ const Tensor& functional_tensor);
355
+
356
+ TORCH_API bool are_all_mutations_hidden_from_autograd(
357
+ const Tensor& functional_tensor);
358
+
359
+ TORCH_API bool are_all_mutations_under_no_grad_or_inference_mode(
360
+ const Tensor& functional_tensor);
361
+
362
+ // These two methods are XLA-specific logic and are no-ops
363
+ // for the normal functionalization flow.
364
+ TORCH_API void propagate_xla_data(
365
+ const Tensor& functional_tensor,
366
+ const Tensor& other);
367
+ TORCH_API void propagate_xla_data(
368
+ const ITensorListRef functional_tensor,
369
+ ITensorListRef other);
370
+
371
+ TORCH_API void propagate_xla_data_direct(
372
+ const Tensor& tensor,
373
+ const Tensor& other);
374
+ TORCH_API void propagate_xla_data_direct(
375
+ const ITensorListRef tensor,
376
+ ITensorListRef other);
377
+
378
+ Tensor create_functional_tensor_with_view_meta(
379
+ const Tensor& view_to_wrap,
380
+ const Tensor& base,
381
+ const std::shared_ptr<functionalization::ViewMeta>& meta,
382
+ int64_t out_idx = 0);
383
+ std::vector<Tensor> create_functional_tensor_with_view_meta(
384
+ ITensorListRef view_to_wrap,
385
+ const Tensor& base,
386
+ const std::shared_ptr<functionalization::ViewMeta>& meta);
387
+
388
+ void mutate_view_meta(
389
+ const Tensor& self,
390
+ const std::shared_ptr<functionalization::ViewMeta>& meta);
391
+
392
+ TORCH_API Tensor apply_view_meta_sequence(
393
+ const Tensor& base,
394
+ const std::vector<std::shared_ptr<functionalization::ViewMeta>>& sequence);
395
+
396
+ void set_sizes_strides_offset(const Tensor& out, const Tensor& meta_out);
397
+ void set_sizes_strides_offset(
398
+ const std::vector<Tensor>& outs,
399
+ const std::vector<Tensor>& meta_outs);
400
+
401
+ // ~~~~~ TLS used in functionalization ~~~~~
402
+
403
+ TORCH_API bool getFunctionalizationReapplyViewsTLS();
404
+ TORCH_API void setFunctionalizationReapplyViewsTLS(bool reapply_views);
405
+
406
+ class TORCH_API FunctionalizationReapplyViewsGuard {
407
+ public:
408
+ FunctionalizationReapplyViewsGuard(bool reapply_views)
409
+ : prev_(getFunctionalizationReapplyViewsTLS()) {
410
+ setFunctionalizationReapplyViewsTLS(reapply_views);
411
+ }
412
+
413
+ ~FunctionalizationReapplyViewsGuard() {
414
+ setFunctionalizationReapplyViewsTLS(prev_);
415
+ }
416
+
417
+ FunctionalizationReapplyViewsGuard(
418
+ const FunctionalizationReapplyViewsGuard&) = delete;
419
+ FunctionalizationReapplyViewsGuard operator=(
420
+ const FunctionalizationReapplyViewsGuard&) = delete;
421
+ FunctionalizationReapplyViewsGuard(FunctionalizationReapplyViewsGuard&&) =
422
+ delete;
423
+ FunctionalizationReapplyViewsGuard operator=(
424
+ FunctionalizationReapplyViewsGuard&&) = delete;
425
+
426
+ private:
427
+ bool prev_;
428
+ };
429
+
430
+ } // namespace impl
431
+
432
+ // Helper function to call an out-of-place composite aten kernel that may use
433
+ // mutations / views internally, and functionalize them.
434
+ TORCH_API void functionalize_op_helper(
435
+ const c10::OperatorHandle& op,
436
+ torch::jit::Stack* stack);
437
+
438
+ template <class Op, bool symint, class ReturnType, class... ParameterTypes>
439
+ struct _functionalize_aten_op final {};
440
+
441
+ template <class Op, bool symint, class ReturnType, class... ParameterTypes>
442
+ struct _functionalize_aten_op<Op, symint, ReturnType(ParameterTypes...)> final {
443
+ static ReturnType call(
444
+ typename c10::maybe_keep_symint<symint, ParameterTypes>::type... args) {
445
+ using FuncType = ReturnType(
446
+ typename c10::maybe_keep_symint<symint, ParameterTypes>::type...);
447
+ auto op = c10::Dispatcher::singleton()
448
+ .findSchemaOrThrow(
449
+ (const char*)Op::name, (const char*)Op::overload_name)
450
+ .typed<FuncType>();
451
+
452
+ return c10::impl::BoxedKernelWrapper<FuncType>::call(
453
+ c10::BoxedKernel::makeFromFunction<functionalize_op_helper>(),
454
+ op,
455
+ // BoxedKernelWrapper knows to ignore this keyset argument,
456
+ // because functionalize_op_helper doesn't take in a DispatchKeySet
457
+ c10::DispatchKeySet(),
458
+ args...);
459
+ }
460
+ };
461
+
462
+ template <class Op>
463
+ using functionalize_aten_op =
464
+ _functionalize_aten_op<Op, false, typename Op::schema>;
465
+
466
+ template <class Op>
467
+ using functionalize_aten_op_symint =
468
+ _functionalize_aten_op<Op, true, typename Op::schema>;
469
+
470
+ } // namespace functionalization
471
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/FunctionalizeFallbackKernel.h ADDED
@@ -0,0 +1,58 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/FunctionalStorageImpl.h>
4
+
5
+ namespace at::functionalization {
6
+
7
+ // `ViewMeta` implementation for `resize_` operation.
8
+ struct TORCH_API resize__ViewMeta : public ViewMeta {
9
+ FUNCTIONALIZATION_VIEWMETA_NAME(resize__ViewMeta)
10
+ FUNCTIONALIZATION_VIEWMETA_SERIALIZABLE_TUPLE(
11
+ bool /* reapply_views */,
12
+ const std::vector<int64_t>&);
13
+
14
+ resize__ViewMeta(const SerializableTuple& tpl)
15
+ : resize__ViewMeta(std::get<0>(tpl), std::get<1>(tpl)) {}
16
+
17
+ resize__ViewMeta(bool reapply_views, const std::vector<int64_t>& size)
18
+ : ViewMeta(/*has_symbolic_inputs=*/false),
19
+ reapply_views(reapply_views),
20
+ size(size) {}
21
+
22
+ Tensor forward(const Tensor& base) override;
23
+ Tensor reverse(const Tensor& base, const Tensor& mutated_view) override;
24
+
25
+ SerializableTuple to_serializable_tuple() {
26
+ return std::make_tuple(reapply_views, size);
27
+ }
28
+
29
+ bool reapply_views;
30
+ std::vector<int64_t> size;
31
+ };
32
+
33
+ // `ViewMeta` implementation for `_unsafe_view` operation.
34
+ struct TORCH_API _unsafe_view_ViewMeta : public ViewMeta {
35
+ FUNCTIONALIZATION_VIEWMETA_NAME(_unsafe_view_ViewMeta)
36
+ FUNCTIONALIZATION_VIEWMETA_SERIALIZABLE_TUPLE(
37
+ bool /* has_symbolic_inputs */,
38
+ const std::vector<c10::SymInt>&);
39
+
40
+ _unsafe_view_ViewMeta(const SerializableTuple& tpl)
41
+ : _unsafe_view_ViewMeta(std::get<0>(tpl), std::get<1>(tpl)) {}
42
+
43
+ _unsafe_view_ViewMeta(
44
+ bool has_symbolic_inputs,
45
+ const std::vector<c10::SymInt>& size)
46
+ : ViewMeta(has_symbolic_inputs), size(size) {}
47
+
48
+ Tensor forward(const Tensor& base) override;
49
+ Tensor reverse(const Tensor& base, const Tensor& mutated_view) override;
50
+
51
+ SerializableTuple to_serializable_tuple() {
52
+ return std::make_tuple(has_symbolic_inputs, size);
53
+ }
54
+
55
+ std::vector<c10::SymInt> size;
56
+ };
57
+
58
+ } // namespace at::functionalization
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Functions.h ADDED
@@ -0,0 +1,1469 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ // @generated by torchgen/gen.py from Functions.h
4
+
5
+ #ifdef TORCH_ASSERT_NO_OPERATORS
6
+ #error This change adds a dependency on native_functions.yaml, \
7
+ meaning the file will need to be re-compiled every time an operator \
8
+ is changed or added. Consider if your change would be better placed in \
9
+ another file, or if a more specific header might achieve the same goal. \
10
+ See NOTE: [Tensor vs. TensorBase]
11
+ #endif
12
+
13
+ #if defined(AT_PER_OPERATOR_HEADERS) && defined(TORCH_ASSERT_ONLY_METHOD_OPERATORS)
14
+ #error This change adds a dependency on all pytorch operators, meaning the \
15
+ file will need to be re-compiled every time an operator is changed or added. \
16
+ Consider including a specific operator from <ATen/ops/{my_operator}.h> and \
17
+ see NOTE [TORCH_ASSERT_ONLY_METHOD_OPERATORS].
18
+ #endif
19
+
20
+ // NOTE: [TORCH_ASSERT_ONLY_METHOD_OPERATORS]
21
+ //
22
+ // In ATen, certain generated headers files include the definitions of
23
+ // every single operator in PyTorch. Unfortunately this means every
24
+ // time an operator signature is updated or changed in
25
+ // native_functions.yaml, you (and every other PyTorch developer) need
26
+ // to recompile every source file that includes any of these headers.
27
+ //
28
+ // To break up these header dependencies, and improve incremental
29
+ // build times for all PyTorch developers. These headers are split
30
+ // into per-operator headers in the `ATen/ops` folder. This limits
31
+ // incremental builds to only changes to methods of `Tensor`, or files
32
+ // that use the specific operator being changed. With `at::sum` as an
33
+ // example, you should include
34
+ //
35
+ // <ATen/ops/sum.h> // instead of ATen/Functions.h
36
+ // <ATen/ops/sum_native.h> // instead of ATen/NativeFunctions.h
37
+ // <ATen/ops/sum_ops.h> // instead of ATen/Operators.h
38
+ // <ATen/ops/sum_cpu_dispatch.h> // instead of ATen/CPUFunctions.h
39
+ //
40
+ // However, even if you're careful to use this in your own code.
41
+ // `Functions.h` might be included indirectly through another header
42
+ // without you realising. To avoid this, you can add
43
+ //
44
+ // #define TORCH_ASSERT_ONLY_METHOD_OPERATORS
45
+ //
46
+ // to the top of your source file. This way any time the non-specific
47
+ // headers are included, the compiler will error out.
48
+ //
49
+ // Also, be aware that `ops` are not available in all build
50
+ // configurations (namely fb-internal) so you must guard these
51
+ // includes with `#ifdef AT_PER_OPERATOR_HEADERS`. e.g.
52
+ //
53
+ // #ifndef AT_PER_OPERATOR_HEADERS
54
+ // #include <ATen/Functions.h>
55
+ // #else
56
+ // #include <ATen/ops/sum.h>
57
+ // #endif
58
+
59
+ #include <ATen/Context.h>
60
+ #include <ATen/DeviceGuard.h>
61
+ #include <ATen/TensorUtils.h>
62
+ #include <ATen/TracerMode.h>
63
+ #include <ATen/core/Generator.h>
64
+ #include <ATen/core/Reduction.h>
65
+ #include <c10/core/SymInt.h>
66
+ #include <ATen/core/Tensor.h>
67
+ #include <c10/core/Scalar.h>
68
+ #include <c10/core/Storage.h>
69
+ #include <c10/core/TensorOptions.h>
70
+ #include <c10/util/Deprecated.h>
71
+ #include <optional>
72
+ #include <c10/util/OptionalArrayRef.h>
73
+
74
+ #include <ATen/ops/from_blob.h>
75
+ #include <ATen/ops/tensor.h>
76
+
77
+ #include <ATen/ops/_adaptive_avg_pool2d.h>
78
+ #include <ATen/ops/_adaptive_avg_pool2d_backward.h>
79
+ #include <ATen/ops/_adaptive_avg_pool3d.h>
80
+ #include <ATen/ops/_adaptive_avg_pool3d_backward.h>
81
+ #include <ATen/ops/_add_batch_dim.h>
82
+ #include <ATen/ops/_add_relu.h>
83
+ #include <ATen/ops/_addmm_activation.h>
84
+ #include <ATen/ops/_aminmax.h>
85
+ #include <ATen/ops/_amp_foreach_non_finite_check_and_unscale.h>
86
+ #include <ATen/ops/_amp_update_scale.h>
87
+ #include <ATen/ops/_assert_async.h>
88
+ #include <ATen/ops/_assert_scalar.h>
89
+ #include <ATen/ops/_assert_tensor_metadata.h>
90
+ #include <ATen/ops/_autocast_to_full_precision.h>
91
+ #include <ATen/ops/_autocast_to_reduced_precision.h>
92
+ #include <ATen/ops/_backward.h>
93
+ #include <ATen/ops/_batch_norm_impl_index.h>
94
+ #include <ATen/ops/_batch_norm_impl_index_backward.h>
95
+ #include <ATen/ops/_batch_norm_no_update.h>
96
+ #include <ATen/ops/_batch_norm_with_update.h>
97
+ #include <ATen/ops/_cast_Byte.h>
98
+ #include <ATen/ops/_cast_Char.h>
99
+ #include <ATen/ops/_cast_Double.h>
100
+ #include <ATen/ops/_cast_Float.h>
101
+ #include <ATen/ops/_cast_Half.h>
102
+ #include <ATen/ops/_cast_Int.h>
103
+ #include <ATen/ops/_cast_Long.h>
104
+ #include <ATen/ops/_cast_Short.h>
105
+ #include <ATen/ops/_cdist_backward.h>
106
+ #include <ATen/ops/_cdist_forward.h>
107
+ #include <ATen/ops/_cholesky_solve_helper.h>
108
+ #include <ATen/ops/_choose_qparams_per_tensor.h>
109
+ #include <ATen/ops/_chunk_cat.h>
110
+ #include <ATen/ops/_coalesce.h>
111
+ #include <ATen/ops/_coalesced.h>
112
+ #include <ATen/ops/_compute_linear_combination.h>
113
+ #include <ATen/ops/_conj.h>
114
+ #include <ATen/ops/_conj_copy.h>
115
+ #include <ATen/ops/_conj_physical.h>
116
+ #include <ATen/ops/_conv_depthwise2d.h>
117
+ #include <ATen/ops/_convert_indices_from_coo_to_csr.h>
118
+ #include <ATen/ops/_convert_indices_from_csr_to_coo.h>
119
+ #include <ATen/ops/_convert_weight_to_int4pack.h>
120
+ #include <ATen/ops/_convert_weight_to_int4pack_for_cpu.h>
121
+ #include <ATen/ops/_convolution.h>
122
+ #include <ATen/ops/_convolution_double_backward.h>
123
+ #include <ATen/ops/_convolution_mode.h>
124
+ #include <ATen/ops/_copy_from.h>
125
+ #include <ATen/ops/_copy_from_and_resize.h>
126
+ #include <ATen/ops/_cslt_compress.h>
127
+ #include <ATen/ops/_cslt_sparse_mm.h>
128
+ #include <ATen/ops/_cslt_sparse_mm_search.h>
129
+ #include <ATen/ops/_ctc_loss.h>
130
+ #include <ATen/ops/_ctc_loss_backward.h>
131
+ #include <ATen/ops/_cudnn_attention_backward.h>
132
+ #include <ATen/ops/_cudnn_attention_forward.h>
133
+ #include <ATen/ops/_cudnn_ctc_loss.h>
134
+ #include <ATen/ops/_cudnn_init_dropout_state.h>
135
+ #include <ATen/ops/_cudnn_rnn.h>
136
+ #include <ATen/ops/_cudnn_rnn_backward.h>
137
+ #include <ATen/ops/_cudnn_rnn_flatten_weight.h>
138
+ #include <ATen/ops/_cufft_clear_plan_cache.h>
139
+ #include <ATen/ops/_cufft_get_plan_cache_max_size.h>
140
+ #include <ATen/ops/_cufft_get_plan_cache_size.h>
141
+ #include <ATen/ops/_cufft_set_plan_cache_max_size.h>
142
+ #include <ATen/ops/_cummax_helper.h>
143
+ #include <ATen/ops/_cummin_helper.h>
144
+ #include <ATen/ops/_debug_has_internal_overlap.h>
145
+ #include <ATen/ops/_dimI.h>
146
+ #include <ATen/ops/_dimV.h>
147
+ #include <ATen/ops/_dim_arange.h>
148
+ #include <ATen/ops/_dirichlet_grad.h>
149
+ #include <ATen/ops/_dyn_quant_matmul_4bit.h>
150
+ #include <ATen/ops/_dyn_quant_pack_4bit_weight.h>
151
+ #include <ATen/ops/_efficient_attention_backward.h>
152
+ #include <ATen/ops/_efficient_attention_forward.h>
153
+ #include <ATen/ops/_efficientzerotensor.h>
154
+ #include <ATen/ops/_embedding_bag.h>
155
+ #include <ATen/ops/_embedding_bag_backward.h>
156
+ #include <ATen/ops/_embedding_bag_dense_backward.h>
157
+ #include <ATen/ops/_embedding_bag_forward_only.h>
158
+ #include <ATen/ops/_embedding_bag_per_sample_weights_backward.h>
159
+ #include <ATen/ops/_embedding_bag_sparse_backward.h>
160
+ #include <ATen/ops/_empty_affine_quantized.h>
161
+ #include <ATen/ops/_empty_per_channel_affine_quantized.h>
162
+ #include <ATen/ops/_euclidean_dist.h>
163
+ #include <ATen/ops/_fake_quantize_learnable_per_channel_affine.h>
164
+ #include <ATen/ops/_fake_quantize_learnable_per_channel_affine_backward.h>
165
+ #include <ATen/ops/_fake_quantize_learnable_per_tensor_affine.h>
166
+ #include <ATen/ops/_fake_quantize_learnable_per_tensor_affine_backward.h>
167
+ #include <ATen/ops/_fake_quantize_per_tensor_affine_cachemask_tensor_qparams.h>
168
+ #include <ATen/ops/_fft_c2c.h>
169
+ #include <ATen/ops/_fft_c2r.h>
170
+ #include <ATen/ops/_fft_r2c.h>
171
+ #include <ATen/ops/_fill_mem_eff_dropout_mask.h>
172
+ #include <ATen/ops/_flash_attention_backward.h>
173
+ #include <ATen/ops/_flash_attention_forward.h>
174
+ #include <ATen/ops/_foobar.h>
175
+ #include <ATen/ops/_foreach_abs.h>
176
+ #include <ATen/ops/_foreach_acos.h>
177
+ #include <ATen/ops/_foreach_add.h>
178
+ #include <ATen/ops/_foreach_addcdiv.h>
179
+ #include <ATen/ops/_foreach_addcmul.h>
180
+ #include <ATen/ops/_foreach_asin.h>
181
+ #include <ATen/ops/_foreach_atan.h>
182
+ #include <ATen/ops/_foreach_ceil.h>
183
+ #include <ATen/ops/_foreach_clamp_max.h>
184
+ #include <ATen/ops/_foreach_clamp_min.h>
185
+ #include <ATen/ops/_foreach_copy.h>
186
+ #include <ATen/ops/_foreach_cos.h>
187
+ #include <ATen/ops/_foreach_cosh.h>
188
+ #include <ATen/ops/_foreach_div.h>
189
+ #include <ATen/ops/_foreach_erf.h>
190
+ #include <ATen/ops/_foreach_erfc.h>
191
+ #include <ATen/ops/_foreach_exp.h>
192
+ #include <ATen/ops/_foreach_expm1.h>
193
+ #include <ATen/ops/_foreach_floor.h>
194
+ #include <ATen/ops/_foreach_frac.h>
195
+ #include <ATen/ops/_foreach_lerp.h>
196
+ #include <ATen/ops/_foreach_lgamma.h>
197
+ #include <ATen/ops/_foreach_log.h>
198
+ #include <ATen/ops/_foreach_log10.h>
199
+ #include <ATen/ops/_foreach_log1p.h>
200
+ #include <ATen/ops/_foreach_log2.h>
201
+ #include <ATen/ops/_foreach_max.h>
202
+ #include <ATen/ops/_foreach_maximum.h>
203
+ #include <ATen/ops/_foreach_minimum.h>
204
+ #include <ATen/ops/_foreach_mul.h>
205
+ #include <ATen/ops/_foreach_neg.h>
206
+ #include <ATen/ops/_foreach_norm.h>
207
+ #include <ATen/ops/_foreach_pow.h>
208
+ #include <ATen/ops/_foreach_reciprocal.h>
209
+ #include <ATen/ops/_foreach_round.h>
210
+ #include <ATen/ops/_foreach_rsqrt.h>
211
+ #include <ATen/ops/_foreach_sigmoid.h>
212
+ #include <ATen/ops/_foreach_sign.h>
213
+ #include <ATen/ops/_foreach_sin.h>
214
+ #include <ATen/ops/_foreach_sinh.h>
215
+ #include <ATen/ops/_foreach_sqrt.h>
216
+ #include <ATen/ops/_foreach_sub.h>
217
+ #include <ATen/ops/_foreach_tan.h>
218
+ #include <ATen/ops/_foreach_tanh.h>
219
+ #include <ATen/ops/_foreach_trunc.h>
220
+ #include <ATen/ops/_foreach_zero.h>
221
+ #include <ATen/ops/_functional_assert_async.h>
222
+ #include <ATen/ops/_functional_assert_scalar.h>
223
+ #include <ATen/ops/_functional_sym_constrain_range.h>
224
+ #include <ATen/ops/_functional_sym_constrain_range_for_size.h>
225
+ #include <ATen/ops/_fused_adagrad.h>
226
+ #include <ATen/ops/_fused_adam.h>
227
+ #include <ATen/ops/_fused_adamw.h>
228
+ #include <ATen/ops/_fused_dropout.h>
229
+ #include <ATen/ops/_fused_moving_avg_obs_fq_helper.h>
230
+ #include <ATen/ops/_fused_rms_norm.h>
231
+ #include <ATen/ops/_fused_rms_norm_backward.h>
232
+ #include <ATen/ops/_fused_sdp_choice.h>
233
+ #include <ATen/ops/_fused_sgd.h>
234
+ #include <ATen/ops/_fw_primal.h>
235
+ #include <ATen/ops/_fw_primal_copy.h>
236
+ #include <ATen/ops/_gather_sparse_backward.h>
237
+ #include <ATen/ops/_grid_sampler_2d_cpu_fallback.h>
238
+ #include <ATen/ops/_grid_sampler_2d_cpu_fallback_backward.h>
239
+ #include <ATen/ops/_grouped_mm.h>
240
+ #include <ATen/ops/_has_compatible_shallow_copy_type.h>
241
+ #include <ATen/ops/_has_same_storage_numel.h>
242
+ #include <ATen/ops/_histogramdd_bin_edges.h>
243
+ #include <ATen/ops/_histogramdd_from_bin_cts.h>
244
+ #include <ATen/ops/_histogramdd_from_bin_tensors.h>
245
+ #include <ATen/ops/_index_put_impl.h>
246
+ #include <ATen/ops/_indices.h>
247
+ #include <ATen/ops/_indices_copy.h>
248
+ #include <ATen/ops/_int_mm.h>
249
+ #include <ATen/ops/_is_all_true.h>
250
+ #include <ATen/ops/_is_any_true.h>
251
+ #include <ATen/ops/_is_zerotensor.h>
252
+ #include <ATen/ops/_jagged_to_padded_dense_forward.h>
253
+ #include <ATen/ops/_lazy_clone.h>
254
+ #include <ATen/ops/_linalg_check_errors.h>
255
+ #include <ATen/ops/_linalg_det.h>
256
+ #include <ATen/ops/_linalg_eigh.h>
257
+ #include <ATen/ops/_linalg_eigvals.h>
258
+ #include <ATen/ops/_linalg_slogdet.h>
259
+ #include <ATen/ops/_linalg_solve_ex.h>
260
+ #include <ATen/ops/_linalg_svd.h>
261
+ #include <ATen/ops/_local_scalar_dense.h>
262
+ #include <ATen/ops/_log_softmax.h>
263
+ #include <ATen/ops/_log_softmax_backward_data.h>
264
+ #include <ATen/ops/_logcumsumexp.h>
265
+ #include <ATen/ops/_lstm_mps.h>
266
+ #include <ATen/ops/_lu_with_info.h>
267
+ #include <ATen/ops/_make_dep_token.h>
268
+ #include <ATen/ops/_make_dual.h>
269
+ #include <ATen/ops/_make_dual_copy.h>
270
+ #include <ATen/ops/_make_per_channel_quantized_tensor.h>
271
+ #include <ATen/ops/_make_per_tensor_quantized_tensor.h>
272
+ #include <ATen/ops/_masked_scale.h>
273
+ #include <ATen/ops/_masked_softmax.h>
274
+ #include <ATen/ops/_masked_softmax_backward.h>
275
+ #include <ATen/ops/_mixed_dtypes_linear.h>
276
+ #include <ATen/ops/_mkldnn_reshape.h>
277
+ #include <ATen/ops/_mkldnn_transpose.h>
278
+ #include <ATen/ops/_mps_convolution.h>
279
+ #include <ATen/ops/_mps_convolution_transpose.h>
280
+ #include <ATen/ops/_native_batch_norm_legit.h>
281
+ #include <ATen/ops/_native_batch_norm_legit_no_training.h>
282
+ #include <ATen/ops/_native_multi_head_attention.h>
283
+ #include <ATen/ops/_neg_view.h>
284
+ #include <ATen/ops/_neg_view_copy.h>
285
+ #include <ATen/ops/_nested_compute_contiguous_strides_offsets.h>
286
+ #include <ATen/ops/_nested_from_padded.h>
287
+ #include <ATen/ops/_nested_from_padded_and_nested_example.h>
288
+ #include <ATen/ops/_nested_from_padded_tensor.h>
289
+ #include <ATen/ops/_nested_get_jagged_dummy.h>
290
+ #include <ATen/ops/_nested_get_lengths.h>
291
+ #include <ATen/ops/_nested_get_max_seqlen.h>
292
+ #include <ATen/ops/_nested_get_min_seqlen.h>
293
+ #include <ATen/ops/_nested_get_offsets.h>
294
+ #include <ATen/ops/_nested_get_ragged_idx.h>
295
+ #include <ATen/ops/_nested_get_values.h>
296
+ #include <ATen/ops/_nested_get_values_copy.h>
297
+ #include <ATen/ops/_nested_select_backward.h>
298
+ #include <ATen/ops/_nested_sum_backward.h>
299
+ #include <ATen/ops/_nested_tensor_from_mask.h>
300
+ #include <ATen/ops/_nested_tensor_from_mask_left_aligned.h>
301
+ #include <ATen/ops/_nested_tensor_from_tensor_list.h>
302
+ #include <ATen/ops/_nested_tensor_size.h>
303
+ #include <ATen/ops/_nested_tensor_softmax_with_shape.h>
304
+ #include <ATen/ops/_nested_tensor_storage_offsets.h>
305
+ #include <ATen/ops/_nested_tensor_strides.h>
306
+ #include <ATen/ops/_nested_view_from_buffer.h>
307
+ #include <ATen/ops/_nested_view_from_buffer_copy.h>
308
+ #include <ATen/ops/_nested_view_from_jagged.h>
309
+ #include <ATen/ops/_nested_view_from_jagged_copy.h>
310
+ #include <ATen/ops/_new_zeros_with_same_feature_meta.h>
311
+ #include <ATen/ops/_nnpack_available.h>
312
+ #include <ATen/ops/_nnpack_spatial_convolution.h>
313
+ #include <ATen/ops/_nnz.h>
314
+ #include <ATen/ops/_pack_padded_sequence.h>
315
+ #include <ATen/ops/_pack_padded_sequence_backward.h>
316
+ #include <ATen/ops/_pad_circular.h>
317
+ #include <ATen/ops/_pad_enum.h>
318
+ #include <ATen/ops/_pad_packed_sequence.h>
319
+ #include <ATen/ops/_padded_dense_to_jagged_forward.h>
320
+ #include <ATen/ops/_pdist_backward.h>
321
+ #include <ATen/ops/_pdist_forward.h>
322
+ #include <ATen/ops/_pin_memory.h>
323
+ #include <ATen/ops/_prelu_kernel.h>
324
+ #include <ATen/ops/_prelu_kernel_backward.h>
325
+ #include <ATen/ops/_print.h>
326
+ #include <ATen/ops/_propagate_xla_data.h>
327
+ #include <ATen/ops/_remove_batch_dim.h>
328
+ #include <ATen/ops/_reshape_alias.h>
329
+ #include <ATen/ops/_reshape_alias_copy.h>
330
+ #include <ATen/ops/_reshape_copy.h>
331
+ #include <ATen/ops/_reshape_from_tensor.h>
332
+ #include <ATen/ops/_resize_output.h>
333
+ #include <ATen/ops/_rowwise_prune.h>
334
+ #include <ATen/ops/_safe_softmax.h>
335
+ #include <ATen/ops/_sample_dirichlet.h>
336
+ #include <ATen/ops/_saturate_weight_to_fp16.h>
337
+ #include <ATen/ops/_scaled_dot_product_attention_math.h>
338
+ #include <ATen/ops/_scaled_dot_product_attention_math_for_mps.h>
339
+ #include <ATen/ops/_scaled_dot_product_cudnn_attention.h>
340
+ #include <ATen/ops/_scaled_dot_product_cudnn_attention_backward.h>
341
+ #include <ATen/ops/_scaled_dot_product_efficient_attention.h>
342
+ #include <ATen/ops/_scaled_dot_product_efficient_attention_backward.h>
343
+ #include <ATen/ops/_scaled_dot_product_flash_attention.h>
344
+ #include <ATen/ops/_scaled_dot_product_flash_attention_backward.h>
345
+ #include <ATen/ops/_scaled_dot_product_flash_attention_for_cpu.h>
346
+ #include <ATen/ops/_scaled_dot_product_flash_attention_for_cpu_backward.h>
347
+ #include <ATen/ops/_scaled_dot_product_fused_attention_overrideable.h>
348
+ #include <ATen/ops/_scaled_dot_product_fused_attention_overrideable_backward.h>
349
+ #include <ATen/ops/_scaled_grouped_mm.h>
350
+ #include <ATen/ops/_scaled_mm.h>
351
+ #include <ATen/ops/_segment_reduce_backward.h>
352
+ #include <ATen/ops/_shape_as_tensor.h>
353
+ #include <ATen/ops/_slow_conv2d_backward.h>
354
+ #include <ATen/ops/_slow_conv2d_forward.h>
355
+ #include <ATen/ops/_sobol_engine_draw.h>
356
+ #include <ATen/ops/_sobol_engine_ff.h>
357
+ #include <ATen/ops/_sobol_engine_initialize_state.h>
358
+ #include <ATen/ops/_sobol_engine_scramble.h>
359
+ #include <ATen/ops/_softmax.h>
360
+ #include <ATen/ops/_softmax_backward_data.h>
361
+ #include <ATen/ops/_sparse_addmm.h>
362
+ #include <ATen/ops/_sparse_broadcast_to.h>
363
+ #include <ATen/ops/_sparse_broadcast_to_copy.h>
364
+ #include <ATen/ops/_sparse_bsc_tensor_unsafe.h>
365
+ #include <ATen/ops/_sparse_bsr_tensor_unsafe.h>
366
+ #include <ATen/ops/_sparse_compressed_tensor_unsafe.h>
367
+ #include <ATen/ops/_sparse_compressed_tensor_with_dims.h>
368
+ #include <ATen/ops/_sparse_coo_tensor_unsafe.h>
369
+ #include <ATen/ops/_sparse_coo_tensor_with_dims.h>
370
+ #include <ATen/ops/_sparse_coo_tensor_with_dims_and_tensors.h>
371
+ #include <ATen/ops/_sparse_csc_tensor_unsafe.h>
372
+ #include <ATen/ops/_sparse_csr_prod.h>
373
+ #include <ATen/ops/_sparse_csr_sum.h>
374
+ #include <ATen/ops/_sparse_csr_tensor_unsafe.h>
375
+ #include <ATen/ops/_sparse_log_softmax.h>
376
+ #include <ATen/ops/_sparse_log_softmax_backward_data.h>
377
+ #include <ATen/ops/_sparse_mask_projection.h>
378
+ #include <ATen/ops/_sparse_mm.h>
379
+ #include <ATen/ops/_sparse_mm_reduce_impl.h>
380
+ #include <ATen/ops/_sparse_mm_reduce_impl_backward.h>
381
+ #include <ATen/ops/_sparse_semi_structured_addmm.h>
382
+ #include <ATen/ops/_sparse_semi_structured_apply.h>
383
+ #include <ATen/ops/_sparse_semi_structured_apply_dense.h>
384
+ #include <ATen/ops/_sparse_semi_structured_linear.h>
385
+ #include <ATen/ops/_sparse_semi_structured_mm.h>
386
+ #include <ATen/ops/_sparse_semi_structured_tile.h>
387
+ #include <ATen/ops/_sparse_softmax.h>
388
+ #include <ATen/ops/_sparse_softmax_backward_data.h>
389
+ #include <ATen/ops/_sparse_sparse_matmul.h>
390
+ #include <ATen/ops/_sparse_sum.h>
391
+ #include <ATen/ops/_sparse_sum_backward.h>
392
+ #include <ATen/ops/_spdiags.h>
393
+ #include <ATen/ops/_spsolve.h>
394
+ #include <ATen/ops/_stack.h>
395
+ #include <ATen/ops/_standard_gamma.h>
396
+ #include <ATen/ops/_standard_gamma_grad.h>
397
+ #include <ATen/ops/_test_ambiguous_defaults.h>
398
+ #include <ATen/ops/_test_autograd_multiple_dispatch.h>
399
+ #include <ATen/ops/_test_autograd_multiple_dispatch_view.h>
400
+ #include <ATen/ops/_test_autograd_multiple_dispatch_view_copy.h>
401
+ #include <ATen/ops/_test_check_tensor.h>
402
+ #include <ATen/ops/_test_functorch_fallback.h>
403
+ #include <ATen/ops/_test_optional_filled_intlist.h>
404
+ #include <ATen/ops/_test_optional_floatlist.h>
405
+ #include <ATen/ops/_test_optional_intlist.h>
406
+ #include <ATen/ops/_test_parallel_materialize.h>
407
+ #include <ATen/ops/_test_serialization_subcmul.h>
408
+ #include <ATen/ops/_test_string_default.h>
409
+ #include <ATen/ops/_test_warn_in_autograd.h>
410
+ #include <ATen/ops/_thnn_differentiable_gru_cell_backward.h>
411
+ #include <ATen/ops/_thnn_differentiable_lstm_cell_backward.h>
412
+ #include <ATen/ops/_thnn_fused_gru_cell.h>
413
+ #include <ATen/ops/_thnn_fused_gru_cell_backward.h>
414
+ #include <ATen/ops/_thnn_fused_lstm_cell.h>
415
+ #include <ATen/ops/_thnn_fused_lstm_cell_backward.h>
416
+ #include <ATen/ops/_thnn_fused_lstm_cell_backward_impl.h>
417
+ #include <ATen/ops/_to_copy.h>
418
+ #include <ATen/ops/_to_cpu.h>
419
+ #include <ATen/ops/_to_dense.h>
420
+ #include <ATen/ops/_to_sparse.h>
421
+ #include <ATen/ops/_to_sparse_bsc.h>
422
+ #include <ATen/ops/_to_sparse_bsr.h>
423
+ #include <ATen/ops/_to_sparse_csc.h>
424
+ #include <ATen/ops/_to_sparse_csr.h>
425
+ #include <ATen/ops/_to_sparse_semi_structured.h>
426
+ #include <ATen/ops/_transform_bias_rescale_qkv.h>
427
+ #include <ATen/ops/_transformer_encoder_layer_fwd.h>
428
+ #include <ATen/ops/_trilinear.h>
429
+ #include <ATen/ops/_triton_multi_head_attention.h>
430
+ #include <ATen/ops/_triton_scaled_dot_attention.h>
431
+ #include <ATen/ops/_unique.h>
432
+ #include <ATen/ops/_unique2.h>
433
+ #include <ATen/ops/_unpack_dual.h>
434
+ #include <ATen/ops/_unsafe_index.h>
435
+ #include <ATen/ops/_unsafe_index_put.h>
436
+ #include <ATen/ops/_unsafe_masked_index.h>
437
+ #include <ATen/ops/_unsafe_masked_index_put_accumulate.h>
438
+ #include <ATen/ops/_unsafe_view.h>
439
+ #include <ATen/ops/_upsample_bicubic2d_aa.h>
440
+ #include <ATen/ops/_upsample_bicubic2d_aa_backward.h>
441
+ #include <ATen/ops/_upsample_bilinear2d_aa.h>
442
+ #include <ATen/ops/_upsample_bilinear2d_aa_backward.h>
443
+ #include <ATen/ops/_upsample_nearest_exact1d.h>
444
+ #include <ATen/ops/_upsample_nearest_exact1d_backward.h>
445
+ #include <ATen/ops/_upsample_nearest_exact2d.h>
446
+ #include <ATen/ops/_upsample_nearest_exact2d_backward.h>
447
+ #include <ATen/ops/_upsample_nearest_exact3d.h>
448
+ #include <ATen/ops/_upsample_nearest_exact3d_backward.h>
449
+ #include <ATen/ops/_use_cudnn_ctc_loss.h>
450
+ #include <ATen/ops/_use_cudnn_rnn_flatten_weight.h>
451
+ #include <ATen/ops/_validate_compressed_sparse_indices.h>
452
+ #include <ATen/ops/_validate_sparse_bsc_tensor_args.h>
453
+ #include <ATen/ops/_validate_sparse_bsr_tensor_args.h>
454
+ #include <ATen/ops/_validate_sparse_compressed_tensor_args.h>
455
+ #include <ATen/ops/_validate_sparse_coo_tensor_args.h>
456
+ #include <ATen/ops/_validate_sparse_csc_tensor_args.h>
457
+ #include <ATen/ops/_validate_sparse_csr_tensor_args.h>
458
+ #include <ATen/ops/_values.h>
459
+ #include <ATen/ops/_values_copy.h>
460
+ #include <ATen/ops/_version.h>
461
+ #include <ATen/ops/_weight_int4pack_mm.h>
462
+ #include <ATen/ops/_weight_int4pack_mm_for_cpu.h>
463
+ #include <ATen/ops/_weight_int4pack_mm_with_scales_and_zeros.h>
464
+ #include <ATen/ops/_weight_int8pack_mm.h>
465
+ #include <ATen/ops/_weight_norm.h>
466
+ #include <ATen/ops/_weight_norm_differentiable_backward.h>
467
+ #include <ATen/ops/_weight_norm_interface.h>
468
+ #include <ATen/ops/_weight_norm_interface_backward.h>
469
+ #include <ATen/ops/_wrapped_linear_prepack.h>
470
+ #include <ATen/ops/_wrapped_quantized_linear_prepacked.h>
471
+ #include <ATen/ops/abs.h>
472
+ #include <ATen/ops/absolute.h>
473
+ #include <ATen/ops/acos.h>
474
+ #include <ATen/ops/acosh.h>
475
+ #include <ATen/ops/adaptive_avg_pool1d.h>
476
+ #include <ATen/ops/adaptive_avg_pool2d.h>
477
+ #include <ATen/ops/adaptive_avg_pool3d.h>
478
+ #include <ATen/ops/adaptive_avg_pool3d_backward.h>
479
+ #include <ATen/ops/adaptive_max_pool1d.h>
480
+ #include <ATen/ops/adaptive_max_pool2d.h>
481
+ #include <ATen/ops/adaptive_max_pool2d_backward.h>
482
+ #include <ATen/ops/adaptive_max_pool3d.h>
483
+ #include <ATen/ops/adaptive_max_pool3d_backward.h>
484
+ #include <ATen/ops/add.h>
485
+ #include <ATen/ops/addbmm.h>
486
+ #include <ATen/ops/addcdiv.h>
487
+ #include <ATen/ops/addcmul.h>
488
+ #include <ATen/ops/addmm.h>
489
+ #include <ATen/ops/addmv.h>
490
+ #include <ATen/ops/addr.h>
491
+ #include <ATen/ops/adjoint.h>
492
+ #include <ATen/ops/affine_grid_generator.h>
493
+ #include <ATen/ops/affine_grid_generator_backward.h>
494
+ #include <ATen/ops/alias.h>
495
+ #include <ATen/ops/alias_copy.h>
496
+ #include <ATen/ops/align_as.h>
497
+ #include <ATen/ops/align_tensors.h>
498
+ #include <ATen/ops/align_to.h>
499
+ #include <ATen/ops/all.h>
500
+ #include <ATen/ops/allclose.h>
501
+ #include <ATen/ops/alpha_dropout.h>
502
+ #include <ATen/ops/amax.h>
503
+ #include <ATen/ops/amin.h>
504
+ #include <ATen/ops/aminmax.h>
505
+ #include <ATen/ops/and.h>
506
+ #include <ATen/ops/angle.h>
507
+ #include <ATen/ops/any.h>
508
+ #include <ATen/ops/arange.h>
509
+ #include <ATen/ops/arccos.h>
510
+ #include <ATen/ops/arccosh.h>
511
+ #include <ATen/ops/arcsin.h>
512
+ #include <ATen/ops/arcsinh.h>
513
+ #include <ATen/ops/arctan.h>
514
+ #include <ATen/ops/arctan2.h>
515
+ #include <ATen/ops/arctanh.h>
516
+ #include <ATen/ops/argmax.h>
517
+ #include <ATen/ops/argmin.h>
518
+ #include <ATen/ops/argsort.h>
519
+ #include <ATen/ops/argwhere.h>
520
+ #include <ATen/ops/as_strided.h>
521
+ #include <ATen/ops/as_strided_copy.h>
522
+ #include <ATen/ops/as_strided_scatter.h>
523
+ #include <ATen/ops/asin.h>
524
+ #include <ATen/ops/asinh.h>
525
+ #include <ATen/ops/atan.h>
526
+ #include <ATen/ops/atan2.h>
527
+ #include <ATen/ops/atanh.h>
528
+ #include <ATen/ops/atleast_1d.h>
529
+ #include <ATen/ops/atleast_2d.h>
530
+ #include <ATen/ops/atleast_3d.h>
531
+ #include <ATen/ops/avg_pool1d.h>
532
+ #include <ATen/ops/avg_pool2d.h>
533
+ #include <ATen/ops/avg_pool2d_backward.h>
534
+ #include <ATen/ops/avg_pool3d.h>
535
+ #include <ATen/ops/avg_pool3d_backward.h>
536
+ #include <ATen/ops/baddbmm.h>
537
+ #include <ATen/ops/bartlett_window.h>
538
+ #include <ATen/ops/batch_norm.h>
539
+ #include <ATen/ops/batch_norm_backward.h>
540
+ #include <ATen/ops/batch_norm_backward_elemt.h>
541
+ #include <ATen/ops/batch_norm_backward_reduce.h>
542
+ #include <ATen/ops/batch_norm_elemt.h>
543
+ #include <ATen/ops/batch_norm_gather_stats.h>
544
+ #include <ATen/ops/batch_norm_gather_stats_with_counts.h>
545
+ #include <ATen/ops/batch_norm_stats.h>
546
+ #include <ATen/ops/batch_norm_update_stats.h>
547
+ #include <ATen/ops/bernoulli.h>
548
+ #include <ATen/ops/bilinear.h>
549
+ #include <ATen/ops/binary_cross_entropy.h>
550
+ #include <ATen/ops/binary_cross_entropy_backward.h>
551
+ #include <ATen/ops/binary_cross_entropy_with_logits.h>
552
+ #include <ATen/ops/bincount.h>
553
+ #include <ATen/ops/binomial.h>
554
+ #include <ATen/ops/bitwise_and.h>
555
+ #include <ATen/ops/bitwise_left_shift.h>
556
+ #include <ATen/ops/bitwise_not.h>
557
+ #include <ATen/ops/bitwise_or.h>
558
+ #include <ATen/ops/bitwise_right_shift.h>
559
+ #include <ATen/ops/bitwise_xor.h>
560
+ #include <ATen/ops/blackman_window.h>
561
+ #include <ATen/ops/block_diag.h>
562
+ #include <ATen/ops/bmm.h>
563
+ #include <ATen/ops/broadcast_tensors.h>
564
+ #include <ATen/ops/broadcast_to.h>
565
+ #include <ATen/ops/bucketize.h>
566
+ #include <ATen/ops/can_cast.h>
567
+ #include <ATen/ops/cartesian_prod.h>
568
+ #include <ATen/ops/cat.h>
569
+ #include <ATen/ops/cauchy.h>
570
+ #include <ATen/ops/ccol_indices.h>
571
+ #include <ATen/ops/ccol_indices_copy.h>
572
+ #include <ATen/ops/cdist.h>
573
+ #include <ATen/ops/ceil.h>
574
+ #include <ATen/ops/celu.h>
575
+ #include <ATen/ops/chain_matmul.h>
576
+ #include <ATen/ops/chalf.h>
577
+ #include <ATen/ops/channel_shuffle.h>
578
+ #include <ATen/ops/cholesky.h>
579
+ #include <ATen/ops/cholesky_inverse.h>
580
+ #include <ATen/ops/cholesky_solve.h>
581
+ #include <ATen/ops/choose_qparams_optimized.h>
582
+ #include <ATen/ops/chunk.h>
583
+ #include <ATen/ops/clamp.h>
584
+ #include <ATen/ops/clamp_max.h>
585
+ #include <ATen/ops/clamp_min.h>
586
+ #include <ATen/ops/clip.h>
587
+ #include <ATen/ops/clone.h>
588
+ #include <ATen/ops/coalesce.h>
589
+ #include <ATen/ops/col2im.h>
590
+ #include <ATen/ops/col_indices.h>
591
+ #include <ATen/ops/col_indices_copy.h>
592
+ #include <ATen/ops/column_stack.h>
593
+ #include <ATen/ops/combinations.h>
594
+ #include <ATen/ops/complex.h>
595
+ #include <ATen/ops/concat.h>
596
+ #include <ATen/ops/concatenate.h>
597
+ #include <ATen/ops/conj.h>
598
+ #include <ATen/ops/conj_physical.h>
599
+ #include <ATen/ops/constant_pad_nd.h>
600
+ #include <ATen/ops/contiguous.h>
601
+ #include <ATen/ops/conv1d.h>
602
+ #include <ATen/ops/conv2d.h>
603
+ #include <ATen/ops/conv3d.h>
604
+ #include <ATen/ops/conv_depthwise3d.h>
605
+ #include <ATen/ops/conv_tbc.h>
606
+ #include <ATen/ops/conv_tbc_backward.h>
607
+ #include <ATen/ops/conv_transpose1d.h>
608
+ #include <ATen/ops/conv_transpose2d.h>
609
+ #include <ATen/ops/conv_transpose3d.h>
610
+ #include <ATen/ops/convolution.h>
611
+ #include <ATen/ops/convolution_backward.h>
612
+ #include <ATen/ops/convolution_backward_overrideable.h>
613
+ #include <ATen/ops/convolution_overrideable.h>
614
+ #include <ATen/ops/copy.h>
615
+ #include <ATen/ops/copy_sparse_to_sparse.h>
616
+ #include <ATen/ops/copysign.h>
617
+ #include <ATen/ops/corrcoef.h>
618
+ #include <ATen/ops/cos.h>
619
+ #include <ATen/ops/cosh.h>
620
+ #include <ATen/ops/cosine_embedding_loss.h>
621
+ #include <ATen/ops/cosine_similarity.h>
622
+ #include <ATen/ops/count_nonzero.h>
623
+ #include <ATen/ops/cov.h>
624
+ #include <ATen/ops/cross.h>
625
+ #include <ATen/ops/cross_entropy_loss.h>
626
+ #include <ATen/ops/crow_indices.h>
627
+ #include <ATen/ops/crow_indices_copy.h>
628
+ #include <ATen/ops/ctc_loss.h>
629
+ #include <ATen/ops/cudnn_affine_grid_generator.h>
630
+ #include <ATen/ops/cudnn_affine_grid_generator_backward.h>
631
+ #include <ATen/ops/cudnn_batch_norm.h>
632
+ #include <ATen/ops/cudnn_batch_norm_backward.h>
633
+ #include <ATen/ops/cudnn_convolution.h>
634
+ #include <ATen/ops/cudnn_convolution_add_relu.h>
635
+ #include <ATen/ops/cudnn_convolution_relu.h>
636
+ #include <ATen/ops/cudnn_convolution_transpose.h>
637
+ #include <ATen/ops/cudnn_grid_sampler.h>
638
+ #include <ATen/ops/cudnn_grid_sampler_backward.h>
639
+ #include <ATen/ops/cudnn_is_acceptable.h>
640
+ #include <ATen/ops/cummax.h>
641
+ #include <ATen/ops/cummaxmin_backward.h>
642
+ #include <ATen/ops/cummin.h>
643
+ #include <ATen/ops/cumprod.h>
644
+ #include <ATen/ops/cumprod_backward.h>
645
+ #include <ATen/ops/cumsum.h>
646
+ #include <ATen/ops/cumulative_trapezoid.h>
647
+ #include <ATen/ops/data.h>
648
+ #include <ATen/ops/deg2rad.h>
649
+ #include <ATen/ops/dense_dim.h>
650
+ #include <ATen/ops/dequantize.h>
651
+ #include <ATen/ops/det.h>
652
+ #include <ATen/ops/detach.h>
653
+ #include <ATen/ops/detach_copy.h>
654
+ #include <ATen/ops/diag.h>
655
+ #include <ATen/ops/diag_embed.h>
656
+ #include <ATen/ops/diagflat.h>
657
+ #include <ATen/ops/diagonal.h>
658
+ #include <ATen/ops/diagonal_backward.h>
659
+ #include <ATen/ops/diagonal_copy.h>
660
+ #include <ATen/ops/diagonal_scatter.h>
661
+ #include <ATen/ops/diff.h>
662
+ #include <ATen/ops/digamma.h>
663
+ #include <ATen/ops/dist.h>
664
+ #include <ATen/ops/div.h>
665
+ #include <ATen/ops/divide.h>
666
+ #include <ATen/ops/dot.h>
667
+ #include <ATen/ops/dropout.h>
668
+ #include <ATen/ops/dsplit.h>
669
+ #include <ATen/ops/dstack.h>
670
+ #include <ATen/ops/einsum.h>
671
+ #include <ATen/ops/elu.h>
672
+ #include <ATen/ops/elu_backward.h>
673
+ #include <ATen/ops/embedding.h>
674
+ #include <ATen/ops/embedding_backward.h>
675
+ #include <ATen/ops/embedding_bag.h>
676
+ #include <ATen/ops/embedding_dense_backward.h>
677
+ #include <ATen/ops/embedding_renorm.h>
678
+ #include <ATen/ops/embedding_sparse_backward.h>
679
+ #include <ATen/ops/empty.h>
680
+ #include <ATen/ops/empty_like.h>
681
+ #include <ATen/ops/empty_permuted.h>
682
+ #include <ATen/ops/empty_quantized.h>
683
+ #include <ATen/ops/empty_strided.h>
684
+ #include <ATen/ops/eq.h>
685
+ #include <ATen/ops/equal.h>
686
+ #include <ATen/ops/erf.h>
687
+ #include <ATen/ops/erfc.h>
688
+ #include <ATen/ops/erfinv.h>
689
+ #include <ATen/ops/exp.h>
690
+ #include <ATen/ops/exp2.h>
691
+ #include <ATen/ops/expand.h>
692
+ #include <ATen/ops/expand_as.h>
693
+ #include <ATen/ops/expand_copy.h>
694
+ #include <ATen/ops/expm1.h>
695
+ #include <ATen/ops/exponential.h>
696
+ #include <ATen/ops/eye.h>
697
+ #include <ATen/ops/fake_quantize_per_channel_affine.h>
698
+ #include <ATen/ops/fake_quantize_per_channel_affine_cachemask.h>
699
+ #include <ATen/ops/fake_quantize_per_channel_affine_cachemask_backward.h>
700
+ #include <ATen/ops/fake_quantize_per_tensor_affine.h>
701
+ #include <ATen/ops/fake_quantize_per_tensor_affine_cachemask.h>
702
+ #include <ATen/ops/fake_quantize_per_tensor_affine_cachemask_backward.h>
703
+ #include <ATen/ops/fbgemm_linear_fp16_weight.h>
704
+ #include <ATen/ops/fbgemm_linear_fp16_weight_fp32_activation.h>
705
+ #include <ATen/ops/fbgemm_linear_int8_weight.h>
706
+ #include <ATen/ops/fbgemm_linear_int8_weight_fp32_activation.h>
707
+ #include <ATen/ops/fbgemm_linear_quantize_weight.h>
708
+ #include <ATen/ops/fbgemm_pack_gemm_matrix_fp16.h>
709
+ #include <ATen/ops/fbgemm_pack_quantized_matrix.h>
710
+ #include <ATen/ops/feature_alpha_dropout.h>
711
+ #include <ATen/ops/feature_dropout.h>
712
+ #include <ATen/ops/fft_fft.h>
713
+ #include <ATen/ops/fft_fft2.h>
714
+ #include <ATen/ops/fft_fftfreq.h>
715
+ #include <ATen/ops/fft_fftn.h>
716
+ #include <ATen/ops/fft_fftshift.h>
717
+ #include <ATen/ops/fft_hfft.h>
718
+ #include <ATen/ops/fft_hfft2.h>
719
+ #include <ATen/ops/fft_hfftn.h>
720
+ #include <ATen/ops/fft_ifft.h>
721
+ #include <ATen/ops/fft_ifft2.h>
722
+ #include <ATen/ops/fft_ifftn.h>
723
+ #include <ATen/ops/fft_ifftshift.h>
724
+ #include <ATen/ops/fft_ihfft.h>
725
+ #include <ATen/ops/fft_ihfft2.h>
726
+ #include <ATen/ops/fft_ihfftn.h>
727
+ #include <ATen/ops/fft_irfft.h>
728
+ #include <ATen/ops/fft_irfft2.h>
729
+ #include <ATen/ops/fft_irfftn.h>
730
+ #include <ATen/ops/fft_rfft.h>
731
+ #include <ATen/ops/fft_rfft2.h>
732
+ #include <ATen/ops/fft_rfftfreq.h>
733
+ #include <ATen/ops/fft_rfftn.h>
734
+ #include <ATen/ops/fill.h>
735
+ #include <ATen/ops/fill_diagonal.h>
736
+ #include <ATen/ops/fix.h>
737
+ #include <ATen/ops/flatten.h>
738
+ #include <ATen/ops/flatten_dense_tensors.h>
739
+ #include <ATen/ops/flip.h>
740
+ #include <ATen/ops/fliplr.h>
741
+ #include <ATen/ops/flipud.h>
742
+ #include <ATen/ops/float_power.h>
743
+ #include <ATen/ops/floor.h>
744
+ #include <ATen/ops/floor_divide.h>
745
+ #include <ATen/ops/fmax.h>
746
+ #include <ATen/ops/fmin.h>
747
+ #include <ATen/ops/fmod.h>
748
+ #include <ATen/ops/frac.h>
749
+ #include <ATen/ops/fractional_max_pool2d.h>
750
+ #include <ATen/ops/fractional_max_pool2d_backward.h>
751
+ #include <ATen/ops/fractional_max_pool3d.h>
752
+ #include <ATen/ops/fractional_max_pool3d_backward.h>
753
+ #include <ATen/ops/frexp.h>
754
+ #include <ATen/ops/frobenius_norm.h>
755
+ #include <ATen/ops/from_file.h>
756
+ #include <ATen/ops/full.h>
757
+ #include <ATen/ops/full_like.h>
758
+ #include <ATen/ops/fused_moving_avg_obs_fake_quant.h>
759
+ #include <ATen/ops/gather.h>
760
+ #include <ATen/ops/gather_backward.h>
761
+ #include <ATen/ops/gcd.h>
762
+ #include <ATen/ops/ge.h>
763
+ #include <ATen/ops/gelu.h>
764
+ #include <ATen/ops/gelu_backward.h>
765
+ #include <ATen/ops/geometric.h>
766
+ #include <ATen/ops/geqrf.h>
767
+ #include <ATen/ops/ger.h>
768
+ #include <ATen/ops/glu.h>
769
+ #include <ATen/ops/glu_backward.h>
770
+ #include <ATen/ops/glu_backward_jvp.h>
771
+ #include <ATen/ops/glu_jvp.h>
772
+ #include <ATen/ops/gradient.h>
773
+ #include <ATen/ops/greater.h>
774
+ #include <ATen/ops/greater_equal.h>
775
+ #include <ATen/ops/grid_sampler.h>
776
+ #include <ATen/ops/grid_sampler_2d.h>
777
+ #include <ATen/ops/grid_sampler_2d_backward.h>
778
+ #include <ATen/ops/grid_sampler_3d.h>
779
+ #include <ATen/ops/grid_sampler_3d_backward.h>
780
+ #include <ATen/ops/group_norm.h>
781
+ #include <ATen/ops/gru.h>
782
+ #include <ATen/ops/gru_cell.h>
783
+ #include <ATen/ops/gt.h>
784
+ #include <ATen/ops/hamming_window.h>
785
+ #include <ATen/ops/hann_window.h>
786
+ #include <ATen/ops/hardshrink.h>
787
+ #include <ATen/ops/hardshrink_backward.h>
788
+ #include <ATen/ops/hardsigmoid.h>
789
+ #include <ATen/ops/hardsigmoid_backward.h>
790
+ #include <ATen/ops/hardswish.h>
791
+ #include <ATen/ops/hardswish_backward.h>
792
+ #include <ATen/ops/hardtanh.h>
793
+ #include <ATen/ops/hardtanh_backward.h>
794
+ #include <ATen/ops/hash_tensor.h>
795
+ #include <ATen/ops/heaviside.h>
796
+ #include <ATen/ops/hinge_embedding_loss.h>
797
+ #include <ATen/ops/histc.h>
798
+ #include <ATen/ops/histogram.h>
799
+ #include <ATen/ops/histogramdd.h>
800
+ #include <ATen/ops/hsplit.h>
801
+ #include <ATen/ops/hspmm.h>
802
+ #include <ATen/ops/hstack.h>
803
+ #include <ATen/ops/huber_loss.h>
804
+ #include <ATen/ops/huber_loss_backward.h>
805
+ #include <ATen/ops/hypot.h>
806
+ #include <ATen/ops/i0.h>
807
+ #include <ATen/ops/igamma.h>
808
+ #include <ATen/ops/igammac.h>
809
+ #include <ATen/ops/im2col.h>
810
+ #include <ATen/ops/imag.h>
811
+ #include <ATen/ops/index.h>
812
+ #include <ATen/ops/index_add.h>
813
+ #include <ATen/ops/index_copy.h>
814
+ #include <ATen/ops/index_fill.h>
815
+ #include <ATen/ops/index_put.h>
816
+ #include <ATen/ops/index_reduce.h>
817
+ #include <ATen/ops/index_select.h>
818
+ #include <ATen/ops/index_select_backward.h>
819
+ #include <ATen/ops/indices.h>
820
+ #include <ATen/ops/indices_copy.h>
821
+ #include <ATen/ops/infinitely_differentiable_gelu_backward.h>
822
+ #include <ATen/ops/inner.h>
823
+ #include <ATen/ops/instance_norm.h>
824
+ #include <ATen/ops/int_repr.h>
825
+ #include <ATen/ops/inverse.h>
826
+ #include <ATen/ops/is_coalesced.h>
827
+ #include <ATen/ops/is_complex.h>
828
+ #include <ATen/ops/is_conj.h>
829
+ #include <ATen/ops/is_distributed.h>
830
+ #include <ATen/ops/is_floating_point.h>
831
+ #include <ATen/ops/is_inference.h>
832
+ #include <ATen/ops/is_leaf.h>
833
+ #include <ATen/ops/is_neg.h>
834
+ #include <ATen/ops/is_nonzero.h>
835
+ #include <ATen/ops/is_pinned.h>
836
+ #include <ATen/ops/is_same_size.h>
837
+ #include <ATen/ops/is_set_to.h>
838
+ #include <ATen/ops/is_signed.h>
839
+ #include <ATen/ops/is_vulkan_available.h>
840
+ #include <ATen/ops/isclose.h>
841
+ #include <ATen/ops/isfinite.h>
842
+ #include <ATen/ops/isin.h>
843
+ #include <ATen/ops/isinf.h>
844
+ #include <ATen/ops/isnan.h>
845
+ #include <ATen/ops/isneginf.h>
846
+ #include <ATen/ops/isposinf.h>
847
+ #include <ATen/ops/isreal.h>
848
+ #include <ATen/ops/istft.h>
849
+ #include <ATen/ops/item.h>
850
+ #include <ATen/ops/kaiser_window.h>
851
+ #include <ATen/ops/kl_div.h>
852
+ #include <ATen/ops/kron.h>
853
+ #include <ATen/ops/kthvalue.h>
854
+ #include <ATen/ops/l1_loss.h>
855
+ #include <ATen/ops/layer_norm.h>
856
+ #include <ATen/ops/lcm.h>
857
+ #include <ATen/ops/ldexp.h>
858
+ #include <ATen/ops/le.h>
859
+ #include <ATen/ops/leaky_relu.h>
860
+ #include <ATen/ops/leaky_relu_backward.h>
861
+ #include <ATen/ops/lerp.h>
862
+ #include <ATen/ops/less.h>
863
+ #include <ATen/ops/less_equal.h>
864
+ #include <ATen/ops/lgamma.h>
865
+ #include <ATen/ops/lift.h>
866
+ #include <ATen/ops/lift_fresh.h>
867
+ #include <ATen/ops/lift_fresh_copy.h>
868
+ #include <ATen/ops/linalg_cholesky.h>
869
+ #include <ATen/ops/linalg_cholesky_ex.h>
870
+ #include <ATen/ops/linalg_cond.h>
871
+ #include <ATen/ops/linalg_cross.h>
872
+ #include <ATen/ops/linalg_det.h>
873
+ #include <ATen/ops/linalg_diagonal.h>
874
+ #include <ATen/ops/linalg_eig.h>
875
+ #include <ATen/ops/linalg_eigh.h>
876
+ #include <ATen/ops/linalg_eigvals.h>
877
+ #include <ATen/ops/linalg_eigvalsh.h>
878
+ #include <ATen/ops/linalg_householder_product.h>
879
+ #include <ATen/ops/linalg_inv.h>
880
+ #include <ATen/ops/linalg_inv_ex.h>
881
+ #include <ATen/ops/linalg_ldl_factor.h>
882
+ #include <ATen/ops/linalg_ldl_factor_ex.h>
883
+ #include <ATen/ops/linalg_ldl_solve.h>
884
+ #include <ATen/ops/linalg_lstsq.h>
885
+ #include <ATen/ops/linalg_lu.h>
886
+ #include <ATen/ops/linalg_lu_factor.h>
887
+ #include <ATen/ops/linalg_lu_factor_ex.h>
888
+ #include <ATen/ops/linalg_lu_solve.h>
889
+ #include <ATen/ops/linalg_matmul.h>
890
+ #include <ATen/ops/linalg_matrix_exp.h>
891
+ #include <ATen/ops/linalg_matrix_norm.h>
892
+ #include <ATen/ops/linalg_matrix_power.h>
893
+ #include <ATen/ops/linalg_matrix_rank.h>
894
+ #include <ATen/ops/linalg_multi_dot.h>
895
+ #include <ATen/ops/linalg_norm.h>
896
+ #include <ATen/ops/linalg_pinv.h>
897
+ #include <ATen/ops/linalg_qr.h>
898
+ #include <ATen/ops/linalg_slogdet.h>
899
+ #include <ATen/ops/linalg_solve.h>
900
+ #include <ATen/ops/linalg_solve_ex.h>
901
+ #include <ATen/ops/linalg_solve_triangular.h>
902
+ #include <ATen/ops/linalg_svd.h>
903
+ #include <ATen/ops/linalg_svdvals.h>
904
+ #include <ATen/ops/linalg_tensorinv.h>
905
+ #include <ATen/ops/linalg_tensorsolve.h>
906
+ #include <ATen/ops/linalg_vander.h>
907
+ #include <ATen/ops/linalg_vecdot.h>
908
+ #include <ATen/ops/linalg_vector_norm.h>
909
+ #include <ATen/ops/linear.h>
910
+ #include <ATen/ops/linear_backward.h>
911
+ #include <ATen/ops/linspace.h>
912
+ #include <ATen/ops/log.h>
913
+ #include <ATen/ops/log10.h>
914
+ #include <ATen/ops/log1p.h>
915
+ #include <ATen/ops/log2.h>
916
+ #include <ATen/ops/log_normal.h>
917
+ #include <ATen/ops/log_sigmoid.h>
918
+ #include <ATen/ops/log_sigmoid_backward.h>
919
+ #include <ATen/ops/log_sigmoid_forward.h>
920
+ #include <ATen/ops/log_softmax.h>
921
+ #include <ATen/ops/logaddexp.h>
922
+ #include <ATen/ops/logaddexp2.h>
923
+ #include <ATen/ops/logcumsumexp.h>
924
+ #include <ATen/ops/logdet.h>
925
+ #include <ATen/ops/logical_and.h>
926
+ #include <ATen/ops/logical_not.h>
927
+ #include <ATen/ops/logical_or.h>
928
+ #include <ATen/ops/logical_xor.h>
929
+ #include <ATen/ops/logit.h>
930
+ #include <ATen/ops/logit_backward.h>
931
+ #include <ATen/ops/logspace.h>
932
+ #include <ATen/ops/logsumexp.h>
933
+ #include <ATen/ops/lshift.h>
934
+ #include <ATen/ops/lstm.h>
935
+ #include <ATen/ops/lstm_cell.h>
936
+ #include <ATen/ops/lstm_mps_backward.h>
937
+ #include <ATen/ops/lt.h>
938
+ #include <ATen/ops/lu_solve.h>
939
+ #include <ATen/ops/lu_unpack.h>
940
+ #include <ATen/ops/mH.h>
941
+ #include <ATen/ops/mT.h>
942
+ #include <ATen/ops/margin_ranking_loss.h>
943
+ #include <ATen/ops/masked_fill.h>
944
+ #include <ATen/ops/masked_scatter.h>
945
+ #include <ATen/ops/masked_scatter_backward.h>
946
+ #include <ATen/ops/masked_select.h>
947
+ #include <ATen/ops/masked_select_backward.h>
948
+ #include <ATen/ops/matmul.h>
949
+ #include <ATen/ops/matmul_backward.h>
950
+ #include <ATen/ops/matrix_H.h>
951
+ #include <ATen/ops/matrix_exp.h>
952
+ #include <ATen/ops/matrix_exp_backward.h>
953
+ #include <ATen/ops/matrix_power.h>
954
+ #include <ATen/ops/max.h>
955
+ #include <ATen/ops/max_pool1d.h>
956
+ #include <ATen/ops/max_pool1d_with_indices.h>
957
+ #include <ATen/ops/max_pool2d.h>
958
+ #include <ATen/ops/max_pool2d_backward.h>
959
+ #include <ATen/ops/max_pool2d_with_indices.h>
960
+ #include <ATen/ops/max_pool2d_with_indices_backward.h>
961
+ #include <ATen/ops/max_pool3d.h>
962
+ #include <ATen/ops/max_pool3d_with_indices.h>
963
+ #include <ATen/ops/max_pool3d_with_indices_backward.h>
964
+ #include <ATen/ops/max_unpool2d.h>
965
+ #include <ATen/ops/max_unpool3d.h>
966
+ #include <ATen/ops/maximum.h>
967
+ #include <ATen/ops/mean.h>
968
+ #include <ATen/ops/median.h>
969
+ #include <ATen/ops/meshgrid.h>
970
+ #include <ATen/ops/min.h>
971
+ #include <ATen/ops/minimum.h>
972
+ #include <ATen/ops/miopen_batch_norm.h>
973
+ #include <ATen/ops/miopen_batch_norm_backward.h>
974
+ #include <ATen/ops/miopen_convolution.h>
975
+ #include <ATen/ops/miopen_convolution_add_relu.h>
976
+ #include <ATen/ops/miopen_convolution_relu.h>
977
+ #include <ATen/ops/miopen_convolution_transpose.h>
978
+ #include <ATen/ops/miopen_depthwise_convolution.h>
979
+ #include <ATen/ops/miopen_rnn.h>
980
+ #include <ATen/ops/miopen_rnn_backward.h>
981
+ #include <ATen/ops/mish.h>
982
+ #include <ATen/ops/mish_backward.h>
983
+ #include <ATen/ops/mkldnn_adaptive_avg_pool2d.h>
984
+ #include <ATen/ops/mkldnn_adaptive_avg_pool2d_backward.h>
985
+ #include <ATen/ops/mkldnn_convolution.h>
986
+ #include <ATen/ops/mkldnn_linear.h>
987
+ #include <ATen/ops/mkldnn_linear_backward.h>
988
+ #include <ATen/ops/mkldnn_linear_backward_input.h>
989
+ #include <ATen/ops/mkldnn_linear_backward_weights.h>
990
+ #include <ATen/ops/mkldnn_max_pool2d.h>
991
+ #include <ATen/ops/mkldnn_max_pool2d_backward.h>
992
+ #include <ATen/ops/mkldnn_max_pool3d.h>
993
+ #include <ATen/ops/mkldnn_max_pool3d_backward.h>
994
+ #include <ATen/ops/mkldnn_reorder_conv2d_weight.h>
995
+ #include <ATen/ops/mkldnn_reorder_conv3d_weight.h>
996
+ #include <ATen/ops/mkldnn_rnn_layer.h>
997
+ #include <ATen/ops/mkldnn_rnn_layer_backward.h>
998
+ #include <ATen/ops/mm.h>
999
+ #include <ATen/ops/mode.h>
1000
+ #include <ATen/ops/moveaxis.h>
1001
+ #include <ATen/ops/movedim.h>
1002
+ #include <ATen/ops/mps_convolution_backward.h>
1003
+ #include <ATen/ops/mps_convolution_transpose_backward.h>
1004
+ #include <ATen/ops/mse_loss.h>
1005
+ #include <ATen/ops/mse_loss_backward.h>
1006
+ #include <ATen/ops/msort.h>
1007
+ #include <ATen/ops/mul.h>
1008
+ #include <ATen/ops/multi_margin_loss.h>
1009
+ #include <ATen/ops/multi_margin_loss_backward.h>
1010
+ #include <ATen/ops/multilabel_margin_loss.h>
1011
+ #include <ATen/ops/multilabel_margin_loss_backward.h>
1012
+ #include <ATen/ops/multilabel_margin_loss_forward.h>
1013
+ #include <ATen/ops/multinomial.h>
1014
+ #include <ATen/ops/multiply.h>
1015
+ #include <ATen/ops/mv.h>
1016
+ #include <ATen/ops/mvlgamma.h>
1017
+ #include <ATen/ops/nan_to_num.h>
1018
+ #include <ATen/ops/nanmean.h>
1019
+ #include <ATen/ops/nanmedian.h>
1020
+ #include <ATen/ops/nanquantile.h>
1021
+ #include <ATen/ops/nansum.h>
1022
+ #include <ATen/ops/narrow.h>
1023
+ #include <ATen/ops/narrow_copy.h>
1024
+ #include <ATen/ops/native_batch_norm.h>
1025
+ #include <ATen/ops/native_batch_norm_backward.h>
1026
+ #include <ATen/ops/native_channel_shuffle.h>
1027
+ #include <ATen/ops/native_dropout.h>
1028
+ #include <ATen/ops/native_dropout_backward.h>
1029
+ #include <ATen/ops/native_group_norm.h>
1030
+ #include <ATen/ops/native_group_norm_backward.h>
1031
+ #include <ATen/ops/native_layer_norm.h>
1032
+ #include <ATen/ops/native_layer_norm_backward.h>
1033
+ #include <ATen/ops/native_norm.h>
1034
+ #include <ATen/ops/ne.h>
1035
+ #include <ATen/ops/neg.h>
1036
+ #include <ATen/ops/negative.h>
1037
+ #include <ATen/ops/nested_to_padded_tensor.h>
1038
+ #include <ATen/ops/new_empty.h>
1039
+ #include <ATen/ops/new_empty_strided.h>
1040
+ #include <ATen/ops/new_full.h>
1041
+ #include <ATen/ops/new_ones.h>
1042
+ #include <ATen/ops/new_zeros.h>
1043
+ #include <ATen/ops/nextafter.h>
1044
+ #include <ATen/ops/nll_loss.h>
1045
+ #include <ATen/ops/nll_loss2d.h>
1046
+ #include <ATen/ops/nll_loss2d_backward.h>
1047
+ #include <ATen/ops/nll_loss2d_forward.h>
1048
+ #include <ATen/ops/nll_loss_backward.h>
1049
+ #include <ATen/ops/nll_loss_forward.h>
1050
+ #include <ATen/ops/nll_loss_nd.h>
1051
+ #include <ATen/ops/nonzero.h>
1052
+ #include <ATen/ops/nonzero_numpy.h>
1053
+ #include <ATen/ops/nonzero_static.h>
1054
+ #include <ATen/ops/norm.h>
1055
+ #include <ATen/ops/norm_except_dim.h>
1056
+ #include <ATen/ops/normal.h>
1057
+ #include <ATen/ops/not_equal.h>
1058
+ #include <ATen/ops/nuclear_norm.h>
1059
+ #include <ATen/ops/numpy_T.h>
1060
+ #include <ATen/ops/one_hot.h>
1061
+ #include <ATen/ops/ones.h>
1062
+ #include <ATen/ops/ones_like.h>
1063
+ #include <ATen/ops/or.h>
1064
+ #include <ATen/ops/orgqr.h>
1065
+ #include <ATen/ops/ormqr.h>
1066
+ #include <ATen/ops/outer.h>
1067
+ #include <ATen/ops/output_nr.h>
1068
+ #include <ATen/ops/pad.h>
1069
+ #include <ATen/ops/pad_sequence.h>
1070
+ #include <ATen/ops/pairwise_distance.h>
1071
+ #include <ATen/ops/pdist.h>
1072
+ #include <ATen/ops/permute.h>
1073
+ #include <ATen/ops/permute_copy.h>
1074
+ #include <ATen/ops/pin_memory.h>
1075
+ #include <ATen/ops/pinverse.h>
1076
+ #include <ATen/ops/pixel_shuffle.h>
1077
+ #include <ATen/ops/pixel_unshuffle.h>
1078
+ #include <ATen/ops/poisson.h>
1079
+ #include <ATen/ops/poisson_nll_loss.h>
1080
+ #include <ATen/ops/polar.h>
1081
+ #include <ATen/ops/polygamma.h>
1082
+ #include <ATen/ops/positive.h>
1083
+ #include <ATen/ops/pow.h>
1084
+ #include <ATen/ops/prelu.h>
1085
+ #include <ATen/ops/prod.h>
1086
+ #include <ATen/ops/promote_types.h>
1087
+ #include <ATen/ops/put.h>
1088
+ #include <ATen/ops/q_per_channel_axis.h>
1089
+ #include <ATen/ops/q_per_channel_scales.h>
1090
+ #include <ATen/ops/q_per_channel_zero_points.h>
1091
+ #include <ATen/ops/q_scale.h>
1092
+ #include <ATen/ops/q_zero_point.h>
1093
+ #include <ATen/ops/qr.h>
1094
+ #include <ATen/ops/qscheme.h>
1095
+ #include <ATen/ops/quantile.h>
1096
+ #include <ATen/ops/quantize_per_channel.h>
1097
+ #include <ATen/ops/quantize_per_tensor.h>
1098
+ #include <ATen/ops/quantize_per_tensor_dynamic.h>
1099
+ #include <ATen/ops/quantized_batch_norm.h>
1100
+ #include <ATen/ops/quantized_gru_cell.h>
1101
+ #include <ATen/ops/quantized_lstm_cell.h>
1102
+ #include <ATen/ops/quantized_max_pool1d.h>
1103
+ #include <ATen/ops/quantized_max_pool2d.h>
1104
+ #include <ATen/ops/quantized_max_pool3d.h>
1105
+ #include <ATen/ops/quantized_rnn_relu_cell.h>
1106
+ #include <ATen/ops/quantized_rnn_tanh_cell.h>
1107
+ #include <ATen/ops/rad2deg.h>
1108
+ #include <ATen/ops/rand.h>
1109
+ #include <ATen/ops/rand_like.h>
1110
+ #include <ATen/ops/randint.h>
1111
+ #include <ATen/ops/randint_like.h>
1112
+ #include <ATen/ops/randn.h>
1113
+ #include <ATen/ops/randn_like.h>
1114
+ #include <ATen/ops/random.h>
1115
+ #include <ATen/ops/randperm.h>
1116
+ #include <ATen/ops/range.h>
1117
+ #include <ATen/ops/ravel.h>
1118
+ #include <ATen/ops/real.h>
1119
+ #include <ATen/ops/reciprocal.h>
1120
+ #include <ATen/ops/record_stream.h>
1121
+ #include <ATen/ops/refine_names.h>
1122
+ #include <ATen/ops/reflection_pad1d.h>
1123
+ #include <ATen/ops/reflection_pad1d_backward.h>
1124
+ #include <ATen/ops/reflection_pad2d.h>
1125
+ #include <ATen/ops/reflection_pad2d_backward.h>
1126
+ #include <ATen/ops/reflection_pad3d.h>
1127
+ #include <ATen/ops/reflection_pad3d_backward.h>
1128
+ #include <ATen/ops/relu.h>
1129
+ #include <ATen/ops/relu6.h>
1130
+ #include <ATen/ops/remainder.h>
1131
+ #include <ATen/ops/rename.h>
1132
+ #include <ATen/ops/renorm.h>
1133
+ #include <ATen/ops/repeat.h>
1134
+ #include <ATen/ops/repeat_interleave.h>
1135
+ #include <ATen/ops/replication_pad1d.h>
1136
+ #include <ATen/ops/replication_pad1d_backward.h>
1137
+ #include <ATen/ops/replication_pad2d.h>
1138
+ #include <ATen/ops/replication_pad2d_backward.h>
1139
+ #include <ATen/ops/replication_pad3d.h>
1140
+ #include <ATen/ops/replication_pad3d_backward.h>
1141
+ #include <ATen/ops/requires_grad.h>
1142
+ #include <ATen/ops/reshape.h>
1143
+ #include <ATen/ops/reshape_as.h>
1144
+ #include <ATen/ops/resize.h>
1145
+ #include <ATen/ops/resize_as.h>
1146
+ #include <ATen/ops/resize_as_sparse.h>
1147
+ #include <ATen/ops/resolve_conj.h>
1148
+ #include <ATen/ops/resolve_neg.h>
1149
+ #include <ATen/ops/result_type.h>
1150
+ #include <ATen/ops/retain_grad.h>
1151
+ #include <ATen/ops/retains_grad.h>
1152
+ #include <ATen/ops/rms_norm.h>
1153
+ #include <ATen/ops/rnn_relu.h>
1154
+ #include <ATen/ops/rnn_relu_cell.h>
1155
+ #include <ATen/ops/rnn_tanh.h>
1156
+ #include <ATen/ops/rnn_tanh_cell.h>
1157
+ #include <ATen/ops/roll.h>
1158
+ #include <ATen/ops/rot90.h>
1159
+ #include <ATen/ops/round.h>
1160
+ #include <ATen/ops/row_indices.h>
1161
+ #include <ATen/ops/row_indices_copy.h>
1162
+ #include <ATen/ops/row_stack.h>
1163
+ #include <ATen/ops/rrelu.h>
1164
+ #include <ATen/ops/rrelu_with_noise.h>
1165
+ #include <ATen/ops/rrelu_with_noise_backward.h>
1166
+ #include <ATen/ops/rshift.h>
1167
+ #include <ATen/ops/rsqrt.h>
1168
+ #include <ATen/ops/rsub.h>
1169
+ #include <ATen/ops/scalar_tensor.h>
1170
+ #include <ATen/ops/scaled_dot_product_attention.h>
1171
+ #include <ATen/ops/scatter.h>
1172
+ #include <ATen/ops/scatter_add.h>
1173
+ #include <ATen/ops/scatter_reduce.h>
1174
+ #include <ATen/ops/searchsorted.h>
1175
+ #include <ATen/ops/segment_reduce.h>
1176
+ #include <ATen/ops/select.h>
1177
+ #include <ATen/ops/select_backward.h>
1178
+ #include <ATen/ops/select_copy.h>
1179
+ #include <ATen/ops/select_scatter.h>
1180
+ #include <ATen/ops/selu.h>
1181
+ #include <ATen/ops/set.h>
1182
+ #include <ATen/ops/set_data.h>
1183
+ #include <ATen/ops/sgn.h>
1184
+ #include <ATen/ops/sigmoid.h>
1185
+ #include <ATen/ops/sigmoid_backward.h>
1186
+ #include <ATen/ops/sign.h>
1187
+ #include <ATen/ops/signbit.h>
1188
+ #include <ATen/ops/silu.h>
1189
+ #include <ATen/ops/silu_backward.h>
1190
+ #include <ATen/ops/sin.h>
1191
+ #include <ATen/ops/sinc.h>
1192
+ #include <ATen/ops/sinh.h>
1193
+ #include <ATen/ops/size.h>
1194
+ #include <ATen/ops/slice.h>
1195
+ #include <ATen/ops/slice_backward.h>
1196
+ #include <ATen/ops/slice_copy.h>
1197
+ #include <ATen/ops/slice_inverse.h>
1198
+ #include <ATen/ops/slice_scatter.h>
1199
+ #include <ATen/ops/slogdet.h>
1200
+ #include <ATen/ops/slow_conv3d.h>
1201
+ #include <ATen/ops/slow_conv3d_forward.h>
1202
+ #include <ATen/ops/slow_conv_dilated2d.h>
1203
+ #include <ATen/ops/slow_conv_dilated3d.h>
1204
+ #include <ATen/ops/slow_conv_transpose2d.h>
1205
+ #include <ATen/ops/slow_conv_transpose3d.h>
1206
+ #include <ATen/ops/smm.h>
1207
+ #include <ATen/ops/smooth_l1_loss.h>
1208
+ #include <ATen/ops/smooth_l1_loss_backward.h>
1209
+ #include <ATen/ops/soft_margin_loss.h>
1210
+ #include <ATen/ops/soft_margin_loss_backward.h>
1211
+ #include <ATen/ops/softmax.h>
1212
+ #include <ATen/ops/softplus.h>
1213
+ #include <ATen/ops/softplus_backward.h>
1214
+ #include <ATen/ops/softshrink.h>
1215
+ #include <ATen/ops/softshrink_backward.h>
1216
+ #include <ATen/ops/sort.h>
1217
+ #include <ATen/ops/sparse_bsc_tensor.h>
1218
+ #include <ATen/ops/sparse_bsr_tensor.h>
1219
+ #include <ATen/ops/sparse_compressed_tensor.h>
1220
+ #include <ATen/ops/sparse_coo_tensor.h>
1221
+ #include <ATen/ops/sparse_csc_tensor.h>
1222
+ #include <ATen/ops/sparse_csr_tensor.h>
1223
+ #include <ATen/ops/sparse_dim.h>
1224
+ #include <ATen/ops/sparse_mask.h>
1225
+ #include <ATen/ops/sparse_resize.h>
1226
+ #include <ATen/ops/sparse_resize_and_clear.h>
1227
+ #include <ATen/ops/sparse_sampled_addmm.h>
1228
+ #include <ATen/ops/special_airy_ai.h>
1229
+ #include <ATen/ops/special_bessel_j0.h>
1230
+ #include <ATen/ops/special_bessel_j1.h>
1231
+ #include <ATen/ops/special_bessel_y0.h>
1232
+ #include <ATen/ops/special_bessel_y1.h>
1233
+ #include <ATen/ops/special_chebyshev_polynomial_t.h>
1234
+ #include <ATen/ops/special_chebyshev_polynomial_u.h>
1235
+ #include <ATen/ops/special_chebyshev_polynomial_v.h>
1236
+ #include <ATen/ops/special_chebyshev_polynomial_w.h>
1237
+ #include <ATen/ops/special_digamma.h>
1238
+ #include <ATen/ops/special_entr.h>
1239
+ #include <ATen/ops/special_erf.h>
1240
+ #include <ATen/ops/special_erfc.h>
1241
+ #include <ATen/ops/special_erfcx.h>
1242
+ #include <ATen/ops/special_erfinv.h>
1243
+ #include <ATen/ops/special_exp2.h>
1244
+ #include <ATen/ops/special_expit.h>
1245
+ #include <ATen/ops/special_expm1.h>
1246
+ #include <ATen/ops/special_gammainc.h>
1247
+ #include <ATen/ops/special_gammaincc.h>
1248
+ #include <ATen/ops/special_gammaln.h>
1249
+ #include <ATen/ops/special_hermite_polynomial_h.h>
1250
+ #include <ATen/ops/special_hermite_polynomial_he.h>
1251
+ #include <ATen/ops/special_i0.h>
1252
+ #include <ATen/ops/special_i0e.h>
1253
+ #include <ATen/ops/special_i1.h>
1254
+ #include <ATen/ops/special_i1e.h>
1255
+ #include <ATen/ops/special_laguerre_polynomial_l.h>
1256
+ #include <ATen/ops/special_legendre_polynomial_p.h>
1257
+ #include <ATen/ops/special_log1p.h>
1258
+ #include <ATen/ops/special_log_ndtr.h>
1259
+ #include <ATen/ops/special_log_softmax.h>
1260
+ #include <ATen/ops/special_logit.h>
1261
+ #include <ATen/ops/special_logsumexp.h>
1262
+ #include <ATen/ops/special_modified_bessel_i0.h>
1263
+ #include <ATen/ops/special_modified_bessel_i1.h>
1264
+ #include <ATen/ops/special_modified_bessel_k0.h>
1265
+ #include <ATen/ops/special_modified_bessel_k1.h>
1266
+ #include <ATen/ops/special_multigammaln.h>
1267
+ #include <ATen/ops/special_ndtr.h>
1268
+ #include <ATen/ops/special_ndtri.h>
1269
+ #include <ATen/ops/special_polygamma.h>
1270
+ #include <ATen/ops/special_psi.h>
1271
+ #include <ATen/ops/special_round.h>
1272
+ #include <ATen/ops/special_scaled_modified_bessel_k0.h>
1273
+ #include <ATen/ops/special_scaled_modified_bessel_k1.h>
1274
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_t.h>
1275
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_u.h>
1276
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_v.h>
1277
+ #include <ATen/ops/special_shifted_chebyshev_polynomial_w.h>
1278
+ #include <ATen/ops/special_sinc.h>
1279
+ #include <ATen/ops/special_softmax.h>
1280
+ #include <ATen/ops/special_spherical_bessel_j0.h>
1281
+ #include <ATen/ops/special_xlog1py.h>
1282
+ #include <ATen/ops/special_xlogy.h>
1283
+ #include <ATen/ops/special_zeta.h>
1284
+ #include <ATen/ops/split.h>
1285
+ #include <ATen/ops/split_copy.h>
1286
+ #include <ATen/ops/split_with_sizes.h>
1287
+ #include <ATen/ops/split_with_sizes_copy.h>
1288
+ #include <ATen/ops/sqrt.h>
1289
+ #include <ATen/ops/square.h>
1290
+ #include <ATen/ops/squeeze.h>
1291
+ #include <ATen/ops/squeeze_copy.h>
1292
+ #include <ATen/ops/sspaddmm.h>
1293
+ #include <ATen/ops/stack.h>
1294
+ #include <ATen/ops/std.h>
1295
+ #include <ATen/ops/std_mean.h>
1296
+ #include <ATen/ops/stft.h>
1297
+ #include <ATen/ops/stride.h>
1298
+ #include <ATen/ops/sub.h>
1299
+ #include <ATen/ops/subtract.h>
1300
+ #include <ATen/ops/sum.h>
1301
+ #include <ATen/ops/sum_to_size.h>
1302
+ #include <ATen/ops/svd.h>
1303
+ #include <ATen/ops/swapaxes.h>
1304
+ #include <ATen/ops/swapdims.h>
1305
+ #include <ATen/ops/sym_constrain_range.h>
1306
+ #include <ATen/ops/sym_constrain_range_for_size.h>
1307
+ #include <ATen/ops/sym_is_contiguous.h>
1308
+ #include <ATen/ops/sym_numel.h>
1309
+ #include <ATen/ops/sym_size.h>
1310
+ #include <ATen/ops/sym_storage_offset.h>
1311
+ #include <ATen/ops/sym_stride.h>
1312
+ #include <ATen/ops/t.h>
1313
+ #include <ATen/ops/t_copy.h>
1314
+ #include <ATen/ops/take.h>
1315
+ #include <ATen/ops/take_along_dim.h>
1316
+ #include <ATen/ops/tan.h>
1317
+ #include <ATen/ops/tanh.h>
1318
+ #include <ATen/ops/tanh_backward.h>
1319
+ #include <ATen/ops/tensor_split.h>
1320
+ #include <ATen/ops/tensordot.h>
1321
+ #include <ATen/ops/thnn_conv2d.h>
1322
+ #include <ATen/ops/threshold.h>
1323
+ #include <ATen/ops/threshold_backward.h>
1324
+ #include <ATen/ops/tile.h>
1325
+ #include <ATen/ops/to.h>
1326
+ #include <ATen/ops/to_dense.h>
1327
+ #include <ATen/ops/to_dense_backward.h>
1328
+ #include <ATen/ops/to_mkldnn.h>
1329
+ #include <ATen/ops/to_mkldnn_backward.h>
1330
+ #include <ATen/ops/to_padded_tensor.h>
1331
+ #include <ATen/ops/to_sparse.h>
1332
+ #include <ATen/ops/to_sparse_bsc.h>
1333
+ #include <ATen/ops/to_sparse_bsr.h>
1334
+ #include <ATen/ops/to_sparse_csc.h>
1335
+ #include <ATen/ops/to_sparse_csr.h>
1336
+ #include <ATen/ops/topk.h>
1337
+ #include <ATen/ops/trace.h>
1338
+ #include <ATen/ops/trace_backward.h>
1339
+ #include <ATen/ops/transpose.h>
1340
+ #include <ATen/ops/transpose_copy.h>
1341
+ #include <ATen/ops/trapezoid.h>
1342
+ #include <ATen/ops/trapz.h>
1343
+ #include <ATen/ops/triangular_solve.h>
1344
+ #include <ATen/ops/tril.h>
1345
+ #include <ATen/ops/tril_indices.h>
1346
+ #include <ATen/ops/triplet_margin_loss.h>
1347
+ #include <ATen/ops/triu.h>
1348
+ #include <ATen/ops/triu_indices.h>
1349
+ #include <ATen/ops/true_divide.h>
1350
+ #include <ATen/ops/trunc.h>
1351
+ #include <ATen/ops/type_as.h>
1352
+ #include <ATen/ops/unbind.h>
1353
+ #include <ATen/ops/unbind_copy.h>
1354
+ #include <ATen/ops/unflatten.h>
1355
+ #include <ATen/ops/unflatten_dense_tensors.h>
1356
+ #include <ATen/ops/unfold.h>
1357
+ #include <ATen/ops/unfold_backward.h>
1358
+ #include <ATen/ops/unfold_copy.h>
1359
+ #include <ATen/ops/uniform.h>
1360
+ #include <ATen/ops/unique_consecutive.h>
1361
+ #include <ATen/ops/unique_dim.h>
1362
+ #include <ATen/ops/unique_dim_consecutive.h>
1363
+ #include <ATen/ops/unsafe_chunk.h>
1364
+ #include <ATen/ops/unsafe_split.h>
1365
+ #include <ATen/ops/unsafe_split_with_sizes.h>
1366
+ #include <ATen/ops/unsqueeze.h>
1367
+ #include <ATen/ops/unsqueeze_copy.h>
1368
+ #include <ATen/ops/upsample_bicubic2d.h>
1369
+ #include <ATen/ops/upsample_bicubic2d_backward.h>
1370
+ #include <ATen/ops/upsample_bilinear2d.h>
1371
+ #include <ATen/ops/upsample_bilinear2d_backward.h>
1372
+ #include <ATen/ops/upsample_linear1d.h>
1373
+ #include <ATen/ops/upsample_linear1d_backward.h>
1374
+ #include <ATen/ops/upsample_nearest1d.h>
1375
+ #include <ATen/ops/upsample_nearest1d_backward.h>
1376
+ #include <ATen/ops/upsample_nearest2d.h>
1377
+ #include <ATen/ops/upsample_nearest2d_backward.h>
1378
+ #include <ATen/ops/upsample_nearest3d.h>
1379
+ #include <ATen/ops/upsample_nearest3d_backward.h>
1380
+ #include <ATen/ops/upsample_trilinear3d.h>
1381
+ #include <ATen/ops/upsample_trilinear3d_backward.h>
1382
+ #include <ATen/ops/value_selecting_reduction_backward.h>
1383
+ #include <ATen/ops/values.h>
1384
+ #include <ATen/ops/values_copy.h>
1385
+ #include <ATen/ops/vander.h>
1386
+ #include <ATen/ops/var.h>
1387
+ #include <ATen/ops/var_mean.h>
1388
+ #include <ATen/ops/vdot.h>
1389
+ #include <ATen/ops/view.h>
1390
+ #include <ATen/ops/view_as.h>
1391
+ #include <ATen/ops/view_as_complex.h>
1392
+ #include <ATen/ops/view_as_complex_copy.h>
1393
+ #include <ATen/ops/view_as_real.h>
1394
+ #include <ATen/ops/view_as_real_copy.h>
1395
+ #include <ATen/ops/view_copy.h>
1396
+ #include <ATen/ops/vsplit.h>
1397
+ #include <ATen/ops/vstack.h>
1398
+ #include <ATen/ops/where.h>
1399
+ #include <ATen/ops/xlogy.h>
1400
+ #include <ATen/ops/xor.h>
1401
+ #include <ATen/ops/zero.h>
1402
+ #include <ATen/ops/zeros.h>
1403
+ #include <ATen/ops/zeros_like.h>
1404
+
1405
+ namespace at {
1406
+
1407
+
1408
+
1409
+ // Special C++ only overloads for std()-like functions (See gh-40287)
1410
+ // These are needed because int -> bool conversion takes precedence over int -> IntArrayRef
1411
+ // So, for example std(0) would select the std(unbiased=False) overload
1412
+ inline Tensor var(const Tensor& self, int dim) {
1413
+ return at::var(self, IntArrayRef{dim});
1414
+ }
1415
+ inline std::tuple<Tensor, Tensor> var_mean(const Tensor& self, int dim) {
1416
+ return at::var_mean(self, IntArrayRef{dim});
1417
+ }
1418
+ inline Tensor std(const Tensor& self, int dim) {
1419
+ return at::std(self, IntArrayRef{dim});
1420
+ }
1421
+ inline std::tuple<Tensor, Tensor> std_mean(const Tensor& self, int dim) {
1422
+ return at::std_mean(self, IntArrayRef{dim});
1423
+ }
1424
+
1425
+ inline int64_t numel(const Tensor& tensor) {
1426
+ return tensor.numel();
1427
+ }
1428
+
1429
+ inline int64_t size(const Tensor& tensor, int64_t dim) {
1430
+ return tensor.size(dim);
1431
+ }
1432
+
1433
+ inline int64_t stride(const Tensor& tensor, int64_t dim) {
1434
+ return tensor.stride(dim);
1435
+ }
1436
+
1437
+ inline bool is_complex(const Tensor& tensor) {
1438
+ return tensor.is_complex();
1439
+ }
1440
+
1441
+ inline bool is_floating_point(const Tensor& tensor) {
1442
+ return tensor.is_floating_point();
1443
+ }
1444
+
1445
+ inline bool is_signed(const Tensor& tensor) {
1446
+ return tensor.is_signed();
1447
+ }
1448
+
1449
+ inline bool is_inference(const Tensor& tensor) {
1450
+ return tensor.is_inference();
1451
+ }
1452
+
1453
+ inline bool _is_zerotensor(const Tensor& tensor) {
1454
+ return tensor._is_zerotensor();
1455
+ }
1456
+
1457
+ inline bool is_conj(const Tensor& tensor) {
1458
+ return tensor.is_conj();
1459
+ }
1460
+
1461
+ inline Tensor conj(const Tensor& tensor) {
1462
+ return tensor.conj();
1463
+ }
1464
+
1465
+ inline bool is_neg(const Tensor& tensor) {
1466
+ return tensor.is_neg();
1467
+ }
1468
+
1469
+ }
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Generator.h ADDED
@@ -0,0 +1,2 @@
 
 
 
1
+ #pragma once
2
+ #include <ATen/core/Generator.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/InferSize.h ADDED
@@ -0,0 +1,104 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <ATen/DimVector.h>
4
+ #include <c10/core/ScalarType.h>
5
+ #include <c10/core/SymIntArrayRef.h>
6
+ #include <c10/util/DimVector.h>
7
+ #include <optional>
8
+ #include <sstream>
9
+ #include <vector>
10
+
11
+ namespace at {
12
+
13
+ // Infers the size of a dim with size -1, if it exists. Also checks that new
14
+ // shape is compatible with the number of elements.
15
+ //
16
+ // templated to handle std::vector<int64_t> and DimVector use cases, see
17
+ // below
18
+ //
19
+ template <typename InputArrayRef, typename NumelType, typename ResultVec>
20
+ inline void infer_size_impl(
21
+ InputArrayRef shape,
22
+ NumelType numel,
23
+ ResultVec& res) {
24
+ NumelType newsize = 1;
25
+ // N.B. this is an index, not a sym dim!
26
+ std::optional<int64_t> infer_dim;
27
+ for (int64_t dim = 0, ndim = shape.size(); dim != ndim; dim++) {
28
+ if (TORCH_GUARD_OR_FALSE(sym_eq(shape[dim], -1))) {
29
+ if (infer_dim) {
30
+ throw std::runtime_error("only one dimension can be inferred");
31
+ }
32
+ infer_dim = dim;
33
+ } else {
34
+ // in case of unbacked shape[dim] we assume it's not -1 and add a runtime
35
+ // assertion.
36
+ TORCH_MAYBE_SYM_CHECK(
37
+ sym_gt(shape[dim], -1),
38
+ "invalid shape dimension ",
39
+ shape[dim],
40
+ " at index ",
41
+ dim,
42
+ " of shape ",
43
+ shape);
44
+ newsize *= shape[dim];
45
+ }
46
+ }
47
+
48
+ auto set_infer_dim = [&]() {
49
+ // We have a degree of freedom here to select the dimension size; follow
50
+ // NumPy semantics and just bail. However, a nice error message is needed
51
+ // because users often use `view` as a way to flatten & unflatten
52
+ // dimensions and will otherwise be confused why
53
+ // empty_tensor.view( 0, 0)
54
+ // works yet
55
+ // empty_tensor.view(-1, 0)
56
+ // doesn't.
57
+ TORCH_CHECK(
58
+ newsize != 0,
59
+ "cannot reshape tensor of 0 elements into shape ",
60
+ shape,
61
+ " because the unspecified dimension size -1 can be any "
62
+ "value and is ambiguous");
63
+ res[*infer_dim] = numel / newsize;
64
+ return;
65
+ };
66
+
67
+ if (infer_dim && newsize > 0 && numel % newsize == 0) {
68
+ set_infer_dim();
69
+ return;
70
+ }
71
+
72
+ TORCH_MAYBE_SYM_CHECK(
73
+ sym_eq(numel, newsize),
74
+ "shape '",
75
+ shape,
76
+ "' is invalid for input of size ",
77
+ numel);
78
+ if (infer_dim) {
79
+ set_infer_dim();
80
+ }
81
+ }
82
+
83
+ inline std::vector<int64_t> infer_size(IntArrayRef shape, int64_t numel) {
84
+ auto res = shape.vec();
85
+ infer_size_impl(shape, numel, res);
86
+ return res;
87
+ }
88
+
89
+ inline at::DimVector infer_size_dv(IntArrayRef shape, int64_t numel) {
90
+ auto res = at::DimVector(shape);
91
+ infer_size_impl(shape, numel, res);
92
+ return res;
93
+ }
94
+
95
+ inline at::SymDimVector infer_size_dv(
96
+ c10::SymIntArrayRef shape,
97
+ c10::SymInt numel) {
98
+ auto res = at::SymDimVector(shape);
99
+ infer_size_impl<c10::SymIntArrayRef, c10::SymInt, at::SymDimVector>(
100
+ shape, std::move(numel), res);
101
+ return res;
102
+ }
103
+
104
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/InitialTensorOptions.h ADDED
@@ -0,0 +1,15 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <c10/core/TensorOptions.h>
4
+
5
+ namespace at {
6
+
7
+ // Represents the initial TensorOptions, before the "defaults" are ever changed.
8
+ // This is designed to be used in library code, where the explicit devices,
9
+ // dtypes, etc. are known. NOTE: this is not a stable API.
10
+ inline TensorOptions initialTensorOptions() {
11
+ return TensorOptions(kCPU).dtype(kFloat).layout(kStrided).requires_grad(
12
+ false);
13
+ }
14
+
15
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/Layout.h ADDED
@@ -0,0 +1,2 @@
 
 
 
1
+ #pragma once
2
+ #include <c10/core/Layout.h>
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/LegacyBatchedFallback.h ADDED
@@ -0,0 +1,25 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+ #include <ATen/ATen.h>
3
+ #include <ATen/core/op_registration/op_registration.h>
4
+ #include <torch/library.h>
5
+
6
+ namespace at {
7
+
8
+ // If an operator doesn't have a batching rule implemented then we fallback
9
+ // to this implementation. The fallback only works on out-of-place operators
10
+ // that return only tensors with new memory. (e.g., no in-place operators, no
11
+ // view operations).
12
+ //
13
+ // The fallback effectively takes all of the BatchedTensors in `stack`, slices
14
+ // them, and runs `op` on all of the corresponding slices to produce slices
15
+ // of the outputs. The output slices then get `torch.stack`ed to create the
16
+ // final returns.
17
+ //
18
+ // The performance of the fallback is not very good because it introduces an
19
+ // extra copy from stacking the sliced outputs. Because of this, we prefer to
20
+ // write batching rules for operators whenever possible.
21
+ void batchedTensorForLoopFallback(
22
+ const c10::OperatorHandle& op,
23
+ torch::jit::Stack* stack);
24
+
25
+ } // namespace at
Scripts_Climate_n_LAI_to_Yield/.venv/lib/python3.10/site-packages/torch/include/ATen/LegacyBatchedTensorImpl.h ADDED
@@ -0,0 +1,161 @@
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
1
+ #pragma once
2
+
3
+ #include <bitset>
4
+
5
+ #include <ATen/ArrayRef.h>
6
+ #include <ATen/SmallVector.h>
7
+ #include <ATen/Tensor.h>
8
+
9
+ namespace at {
10
+
11
+ // We assume this in a few other places in the codebase,
12
+ // but there isn't a centralized definition.
13
+ constexpr int64_t kVmapMaxTensorDims = 64;
14
+
15
+ // The valid vmap levels range from [0, 64). This effectively means that we
16
+ // support a maximum of 64 nested vmaps.
17
+ constexpr int64_t kVmapNumLevels = 64;
18
+
19
+ // Store this number of elements of BatchDims on the stack. Most people will
20
+ // probably use <= 5 nested vmaps, but adjust this number as necessary.
21
+ constexpr int64_t kBatchDimsStackSize = 5;
22
+
23
+ // a BatchDim represents a "private" dimension on a Tensor created inside of
24
+ // vmap. It is a (level, dim) tuple, with the `dim` indicating which dimension
25
+ // is being vmap'ed over and the `level` being an identifier for which vmap
26
+ // said dimension was created inside. The `dim` corresponds to a "physical
27
+ // dim" - it is a dimension index on the underlying physical tensor that is
28
+ // being vmapped over.
29
+ struct BatchDim {
30
+ BatchDim(int64_t level, int64_t dim) : dim_(dim), level_(level) {}
31
+ int64_t dim() const {
32
+ return dim_;
33
+ }
34
+ int64_t level() const {
35
+ return level_;
36
+ }
37
+
38
+ private:
39
+ int64_t dim_;
40
+ int64_t level_;
41
+ };
42
+
43
+ using BatchDims = SmallVector<BatchDim, kBatchDimsStackSize>;
44
+ using BatchDimsRef = ArrayRef<BatchDim>;
45
+
46
+ // A BatchedTensorImpl holds an underlying Tensor and a list of BatchDim
47
+ // NB: We use the term "BatchedTensor" to mean a Tensor that is backed with a
48
+ // BatchedTensorImpl.
49
+ //
50
+ // The batch dimensions are treated as being "private"; they are not
51
+ // user-visible. For example, in the following Tensor,
52
+ // bt = BatchedTensorImpl(ones(2, 3, 5, 7), [(lvl=1, dim=0), (lvl=2, dim=1)])
53
+ // dimensions 0 and 1 are batch dimensions.
54
+ //
55
+ // bt.sizes() returns (5, 7); bt.sum(0) performs a reduction over the (public)
56
+ // dim 0, which is equivalent to dim 3 in the underlying ones(2, 3, 5, 7)
57
+ // tensor.
58
+ struct TORCH_API BatchedTensorImpl : public c10::TensorImpl {
59
+ explicit BatchedTensorImpl(Tensor value, BatchDims bdims);
60
+
61
+ // Returns a reference to BatchDims that represent which dimensions of this
62
+ // tensor are private.
63
+ BatchDimsRef bdims() const {
64
+ return bdims_;
65
+ }
66
+
67
+ // BatchedTensorImpl wraps a Tensor
68
+ const Tensor& value() const {
69
+ return value_;
70
+ }
71
+
72
+ // Given a public dimension index, return the dimension index in the
73
+ // underlying value() tensor. For example, if we have
74
+ // bt = BatchedTensorImpl(ones(2, 3, 5, 7), [(lvl=1, dim=0), (lvl=2,
75
+ // dim=2)])
76
+ // bt.actualDim(0) -> 1
77
+ // bt.actualDim(1) -> 3
78
+ // bt.actualDim(2) -> Error
79
+ int64_t actualDim(int64_t dim, bool wrap_dim = true) const;
80
+
81
+ // We have to override this because we opted into CustomStrides
82
+ IntArrayRef strides_custom() const override;
83
+ // Override a bunch of methods inherited from TensorImpl to return error
84
+ // messages.
85
+ c10::SymBool sym_is_contiguous_custom(
86
+ at::MemoryFormat memory_format) const override;
87
+ void set_size(int64_t dim, int64_t new_size) override;
88
+ void set_stride(int64_t dim, int64_t new_stride) override;
89
+ void set_storage_offset(int64_t storage_offset) override;
90
+ #ifdef DEBUG
91
+ bool has_storage() const override;
92
+ #endif
93
+
94
+ private:
95
+ // see NOTE: [BatchedTensorImpl levels invariant]
96
+ void checkInvariants() const;
97
+ const char* tensorimpl_type_name() const override;
98
+
99
+ Tensor value_;
100
+
101
+ // Note: [BatchedTensorImpl levels invariant]
102
+ // There is an invariant that the BatchDims must be stored in increasing
103
+ // `level` order. That is, for i < j, bdims_[i].level must be less than
104
+ // bdims_[j].level.
105
+ BatchDims bdims_;
106
+ };
107
+
108
+ // NB: We use the term "BatchedTensor" to mean a Tensor that is backed with a
109
+ // BatchedTensorImpl.
110
+ inline bool isBatchedTensor(const Tensor& tensor) {
111
+ return tensor.unsafeGetTensorImpl()->key_set().has(DispatchKey::Batched);
112
+ }
113
+
114
+ // It is unsafe to call this on a Tensor that is not backed by a
115
+ // BatchedTensorImpl. Please use `maybeGetBatchedImpl` whenever possible.
116
+ inline BatchedTensorImpl* unsafeGetBatchedImpl(const Tensor& tensor) {
117
+ return static_cast<BatchedTensorImpl*>(tensor.unsafeGetTensorImpl());
118
+ }
119
+
120
+ inline BatchedTensorImpl* maybeGetBatchedImpl(const Tensor& tensor) {
121
+ if (!isBatchedTensor(tensor)) {
122
+ return nullptr;
123
+ }
124
+ return unsafeGetBatchedImpl(tensor);
125
+ }
126
+
127
+ // Returns a bitset. If bit i is set, then that means dim i is a batchdim.
128
+ inline std::bitset<kVmapMaxTensorDims> createBatchDimBitset(
129
+ BatchDimsRef bdims) {
130
+ std::bitset<kVmapMaxTensorDims> is_bdim;
131
+ for (const auto& bdim : bdims) {
132
+ is_bdim.set(bdim.dim());
133
+ }
134
+ return is_bdim;
135
+ }
136
+
137
+ // Creates a bitset for all of the levels present in `bdims`
138
+ inline std::bitset<kVmapNumLevels> createVmapLevelsBitset(BatchDimsRef bdims) {
139
+ std::bitset<kVmapNumLevels> result;
140
+ for (const auto& bdim : bdims) {
141
+ result.set(bdim.level());
142
+ }
143
+ return result;
144
+ }
145
+
146
+ inline std::ostream& operator<<(std::ostream& out, const BatchDim& bdim) {
147
+ out << "(lvl=" << bdim.level() << ", dim=" << bdim.dim() << ")";
148
+ return out;
149
+ }
150
+
151
+ // Use this to construct a BatchedTensor from a regular Tensor
152
+ TORCH_API Tensor makeBatched(Tensor tensor, BatchDims bdims);
153
+
154
+ // Adds a batch dim to `tensor`, returning a BatchedTensor
155
+ TORCH_API Tensor addBatchDim(Tensor tensor, int64_t level, int64_t dim);
156
+
157
+ // Checks if an inplace operation on self and other is "vmap compatible".
158
+ // See NOTE: [vmap-incompatible in-place operations] for the definition of this.
159
+ TORCH_API bool inplaceIsVmapCompatible(const Tensor& self, const Tensor& other);
160
+
161
+ } // namespace at