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| import pytest |
| import torch |
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| from megablocks import ops |
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| _HISTOGRAM_TESTS = ( |
| (1, 32, torch.int16, 128), |
| (1, 1024, torch.int16, 128), |
| (1, 16384, torch.int16, 128), |
| (1, 32, torch.int32, 128), |
| (1, 1024, torch.int32, 128), |
| (1, 16384, torch.int32, 128), |
| (1, 32, torch.int64, 128), |
| (1, 1024, torch.int64, 128), |
| (1, 16384, torch.int64, 128), |
| (1, 32, torch.int16, 1024), |
| (1, 1024, torch.int16, 1024), |
| (1, 16384, torch.int16, 1024), |
| (1, 32, torch.int32, 1024), |
| (1, 1024, torch.int32, 1024), |
| (1, 16384, torch.int32, 1024), |
| (1, 32, torch.int64, 1024), |
| (1, 1024, torch.int64, 1024), |
| (1, 16384, torch.int64, 1024), |
| (2, 32, torch.int16, 128), |
| (2, 1024, torch.int16, 128), |
| (2, 16384, torch.int16, 128), |
| (2, 32, torch.int32, 128), |
| (2, 1024, torch.int32, 128), |
| (2, 16384, torch.int32, 128), |
| (2, 32, torch.int64, 128), |
| (2, 1024, torch.int64, 128), |
| (2, 16384, torch.int64, 128), |
| (2, 32, torch.int16, 1024), |
| (2, 1024, torch.int16, 1024), |
| (2, 16384, torch.int16, 1024), |
| (2, 32, torch.int32, 1024), |
| (2, 1024, torch.int32, 1024), |
| (2, 16384, torch.int32, 1024), |
| (2, 32, torch.int64, 1024), |
| (2, 1024, torch.int64, 1024), |
| (2, 16384, torch.int64, 1024), |
| (8, 32, torch.int16, 128), |
| (8, 1024, torch.int16, 128), |
| (8, 16384, torch.int16, 128), |
| (8, 32, torch.int32, 128), |
| (8, 1024, torch.int32, 128), |
| (8, 16384, torch.int32, 128), |
| (8, 32, torch.int64, 128), |
| (8, 1024, torch.int64, 128), |
| (8, 16384, torch.int64, 128), |
| (8, 32, torch.int16, 1024), |
| (8, 1024, torch.int16, 1024), |
| (8, 16384, torch.int16, 1024), |
| (8, 32, torch.int32, 1024), |
| (8, 1024, torch.int32, 1024), |
| (8, 16384, torch.int32, 1024), |
| (8, 32, torch.int64, 1024), |
| (8, 1024, torch.int64, 1024), |
| (8, 16384, torch.int64, 1024), |
| ) |
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| |
| |
| @pytest.fixture() |
| def seed_all(): |
| torch.use_deterministic_algorithms(False) |
| return |
|
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|
|
| @pytest.mark.gpu |
| @pytest.mark.parametrize(('m', 'n', 'dtype', 'max_val'), _HISTOGRAM_TESTS) |
| def test_histogram(m: int, n: int, dtype: torch.dtype, max_val: int): |
| x = torch.randint(0, max_val, (m, n)).cuda().to(dtype) |
|
|
| out = ops.histogram(x, max_val) |
| expected_out = torch.stack([torch.histc(y, max_val, 0, max_val - 1) for y in torch.split(x, 1)]) |
| assert torch.all(torch.eq(out, expected_out)) |
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|