| import ctypes |
| import enum |
| import os |
|
|
| |
| CPU0 = (1 << 0) |
| CPU1 = (1 << 1) |
| CPU2 = (1 << 2) |
| CPU3 = (1 << 3) |
| CPU4 = (1 << 4) |
| CPU5 = (1 << 5) |
| CPU6 = (1 << 6) |
| CPU7 = (1 << 7) |
|
|
| |
| class LLMCallState(enum.IntEnum): |
| RKLLM_RUN_NORMAL = 0 |
| RKLLM_RUN_WAITING = 1 |
| RKLLM_RUN_FINISH = 2 |
| RKLLM_RUN_ERROR = 3 |
|
|
| class RKLLMInputType(enum.IntEnum): |
| RKLLM_INPUT_PROMPT = 0 |
| RKLLM_INPUT_TOKEN = 1 |
| RKLLM_INPUT_EMBED = 2 |
| RKLLM_INPUT_MULTIMODAL = 3 |
|
|
| class RKLLMInferMode(enum.IntEnum): |
| RKLLM_INFER_GENERATE = 0 |
| RKLLM_INFER_GET_LAST_HIDDEN_LAYER = 1 |
| RKLLM_INFER_GET_LOGITS = 2 |
|
|
| |
| class RKLLMExtendParam(ctypes.Structure): |
| base_domain_id: ctypes.c_int32 |
| embed_flash: ctypes.c_int8 |
| enabled_cpus_num: ctypes.c_int8 |
| enabled_cpus_mask: ctypes.c_uint32 |
| n_batch: ctypes.c_uint8 |
| use_cross_attn: ctypes.c_int8 |
| reserved: ctypes.c_uint8 * 104 |
|
|
| _fields_ = [ |
| ("base_domain_id", ctypes.c_int32), |
| ("embed_flash", ctypes.c_int8), |
| ("enabled_cpus_num", ctypes.c_int8), |
| ("enabled_cpus_mask", ctypes.c_uint32), |
| ("n_batch", ctypes.c_uint8), |
| ("use_cross_attn", ctypes.c_int8), |
| ("reserved", ctypes.c_uint8 * 104) |
| ] |
|
|
| class RKLLMParam(ctypes.Structure): |
| model_path: ctypes.c_char_p |
| max_context_len: ctypes.c_int32 |
| max_new_tokens: ctypes.c_int32 |
| top_k: ctypes.c_int32 |
| n_keep: ctypes.c_int32 |
| top_p: ctypes.c_float |
| temperature: ctypes.c_float |
| repeat_penalty: ctypes.c_float |
| frequency_penalty: ctypes.c_float |
| presence_penalty: ctypes.c_float |
| mirostat: ctypes.c_int32 |
| mirostat_tau: ctypes.c_float |
| mirostat_eta: ctypes.c_float |
| skip_special_token: ctypes.c_bool |
| is_async: ctypes.c_bool |
| img_start: ctypes.c_char_p |
| img_end: ctypes.c_char_p |
| img_content: ctypes.c_char_p |
| extend_param: RKLLMExtendParam |
|
|
| _fields_ = [ |
| ("model_path", ctypes.c_char_p), |
| ("max_context_len", ctypes.c_int32), |
| ("max_new_tokens", ctypes.c_int32), |
| ("top_k", ctypes.c_int32), |
| ("n_keep", ctypes.c_int32), |
| ("top_p", ctypes.c_float), |
| ("temperature", ctypes.c_float), |
| ("repeat_penalty", ctypes.c_float), |
| ("frequency_penalty", ctypes.c_float), |
| ("presence_penalty", ctypes.c_float), |
| ("mirostat", ctypes.c_int32), |
| ("mirostat_tau", ctypes.c_float), |
| ("mirostat_eta", ctypes.c_float), |
| ("skip_special_token", ctypes.c_bool), |
| ("is_async", ctypes.c_bool), |
| ("img_start", ctypes.c_char_p), |
| ("img_end", ctypes.c_char_p), |
| ("img_content", ctypes.c_char_p), |
| ("extend_param", RKLLMExtendParam) |
| ] |
|
|
| class RKLLMLoraAdapter(ctypes.Structure): |
| lora_adapter_path: ctypes.c_char_p |
| lora_adapter_name: ctypes.c_char_p |
| scale: ctypes.c_float |
|
|
| _fields_ = [ |
| ("lora_adapter_path", ctypes.c_char_p), |
| ("lora_adapter_name", ctypes.c_char_p), |
| ("scale", ctypes.c_float) |
| ] |
|
|
| class RKLLMEmbedInput(ctypes.Structure): |
| embed: ctypes.POINTER(ctypes.c_float) |
| n_tokens: ctypes.c_size_t |
|
|
| _fields_ = [ |
| ("embed", ctypes.POINTER(ctypes.c_float)), |
| ("n_tokens", ctypes.c_size_t) |
| ] |
|
|
| class RKLLMTokenInput(ctypes.Structure): |
| input_ids: ctypes.POINTER(ctypes.c_int32) |
| n_tokens: ctypes.c_size_t |
|
|
| _fields_ = [ |
| ("input_ids", ctypes.POINTER(ctypes.c_int32)), |
| ("n_tokens", ctypes.c_size_t) |
| ] |
|
|
| class RKLLMMultiModelInput(ctypes.Structure): |
| prompt: ctypes.c_char_p |
| image_embed: ctypes.POINTER(ctypes.c_float) |
| n_image_tokens: ctypes.c_size_t |
| n_image: ctypes.c_size_t |
| image_width: ctypes.c_size_t |
| image_height: ctypes.c_size_t |
|
|
| _fields_ = [ |
| ("prompt", ctypes.c_char_p), |
| ("image_embed", ctypes.POINTER(ctypes.c_float)), |
| ("n_image_tokens", ctypes.c_size_t), |
| ("n_image", ctypes.c_size_t), |
| ("image_width", ctypes.c_size_t), |
| ("image_height", ctypes.c_size_t) |
| ] |
|
|
| class RKLLMCrossAttnParam(ctypes.Structure): |
| """ |
| 交叉注意力参数结构体 |
| |
| 该结构体用于在解码器中执行交叉注意力时使用。 |
| 它提供编码器输出(键/值缓存)、位置索引和注意力掩码。 |
| |
| - encoder_k_cache必须存储在连续内存中,布局为: |
| [num_layers][num_tokens][num_kv_heads][head_dim] |
| - encoder_v_cache必须存储在连续内存中,布局为: |
| [num_layers][num_kv_heads][head_dim][num_tokens] |
| """ |
| encoder_k_cache: ctypes.POINTER(ctypes.c_float) |
| encoder_v_cache: ctypes.POINTER(ctypes.c_float) |
| encoder_mask: ctypes.POINTER(ctypes.c_float) |
| encoder_pos: ctypes.POINTER(ctypes.c_int32) |
| num_tokens: ctypes.c_int |
|
|
| _fields_ = [ |
| ("encoder_k_cache", ctypes.POINTER(ctypes.c_float)), |
| ("encoder_v_cache", ctypes.POINTER(ctypes.c_float)), |
| ("encoder_mask", ctypes.POINTER(ctypes.c_float)), |
| ("encoder_pos", ctypes.POINTER(ctypes.c_int32)), |
| ("num_tokens", ctypes.c_int) |
| ] |
|
|
| class RKLLMPerfStat(ctypes.Structure): |
| """ |
| 性能统计结构体 |
| |
| 用于保存预填充和生成阶段的性能统计信息。 |
| """ |
| prefill_time_ms: ctypes.c_float |
| prefill_tokens: ctypes.c_int |
| generate_time_ms: ctypes.c_float |
| generate_tokens: ctypes.c_int |
| memory_usage_mb: ctypes.c_float |
|
|
| _fields_ = [ |
| ("prefill_time_ms", ctypes.c_float), |
| ("prefill_tokens", ctypes.c_int), |
| ("generate_time_ms", ctypes.c_float), |
| ("generate_tokens", ctypes.c_int), |
| ("memory_usage_mb", ctypes.c_float) |
| ] |
|
|
| class _RKLLMInputUnion(ctypes.Union): |
| prompt_input: ctypes.c_char_p |
| embed_input: RKLLMEmbedInput |
| token_input: RKLLMTokenInput |
| multimodal_input: RKLLMMultiModelInput |
|
|
| _fields_ = [ |
| ("prompt_input", ctypes.c_char_p), |
| ("embed_input", RKLLMEmbedInput), |
| ("token_input", RKLLMTokenInput), |
| ("multimodal_input", RKLLMMultiModelInput) |
| ] |
|
|
| class RKLLMInput(ctypes.Structure): |
| """ |
| LLM输入结构体 |
| |
| 通过联合体表示不同类型的LLM输入。 |
| """ |
| role: ctypes.c_char_p |
| enable_thinking: ctypes.c_bool |
| input_type: ctypes.c_int |
| _union_data: _RKLLMInputUnion |
|
|
| _fields_ = [ |
| ("role", ctypes.c_char_p), |
| ("enable_thinking", ctypes.c_bool), |
| ("input_type", ctypes.c_int), |
| ("_union_data", _RKLLMInputUnion) |
| ] |
| |
| @property |
| def prompt_input(self) -> bytes: |
| if self.input_type == RKLLMInputType.RKLLM_INPUT_PROMPT: |
| return self._union_data.prompt_input |
| raise AttributeError("Not a prompt input") |
| @prompt_input.setter |
| def prompt_input(self, value: bytes): |
| if self.input_type == RKLLMInputType.RKLLM_INPUT_PROMPT: |
| self._union_data.prompt_input = value |
| else: |
| raise AttributeError("Not a prompt input") |
| @property |
| def embed_input(self) -> RKLLMEmbedInput: |
| if self.input_type == RKLLMInputType.RKLLM_INPUT_EMBED: |
| return self._union_data.embed_input |
| raise AttributeError("Not an embed input") |
| @embed_input.setter |
| def embed_input(self, value: RKLLMEmbedInput): |
| if self.input_type == RKLLMInputType.RKLLM_INPUT_EMBED: |
| self._union_data.embed_input = value |
| else: |
| raise AttributeError("Not an embed input") |
|
|
| @property |
| def token_input(self) -> RKLLMTokenInput: |
| if self.input_type == RKLLMInputType.RKLLM_INPUT_TOKEN: |
| return self._union_data.token_input |
| raise AttributeError("Not a token input") |
| @token_input.setter |
| def token_input(self, value: RKLLMTokenInput): |
| if self.input_type == RKLLMInputType.RKLLM_INPUT_TOKEN: |
| self._union_data.token_input = value |
| else: |
| raise AttributeError("Not a token input") |
|
|
| @property |
| def multimodal_input(self) -> RKLLMMultiModelInput: |
| if self.input_type == RKLLMInputType.RKLLM_INPUT_MULTIMODAL: |
| return self._union_data.multimodal_input |
| raise AttributeError("Not a multimodal input") |
| @multimodal_input.setter |
| def multimodal_input(self, value: RKLLMMultiModelInput): |
| if self.input_type == RKLLMInputType.RKLLM_INPUT_MULTIMODAL: |
| self._union_data.multimodal_input = value |
| else: |
| raise AttributeError("Not a multimodal input") |
|
|
| class RKLLMLoraParam(ctypes.Structure): |
| lora_adapter_name: ctypes.c_char_p |
|
|
| _fields_ = [ |
| ("lora_adapter_name", ctypes.c_char_p) |
| ] |
|
|
| class RKLLMPromptCacheParam(ctypes.Structure): |
| save_prompt_cache: ctypes.c_int |
| prompt_cache_path: ctypes.c_char_p |
|
|
| _fields_ = [ |
| ("save_prompt_cache", ctypes.c_int), |
| ("prompt_cache_path", ctypes.c_char_p) |
| ] |
|
|
| class RKLLMInferParam(ctypes.Structure): |
| mode: ctypes.c_int |
| lora_params: ctypes.POINTER(RKLLMLoraParam) |
| prompt_cache_params: ctypes.POINTER(RKLLMPromptCacheParam) |
| keep_history: ctypes.c_int |
|
|
| _fields_ = [ |
| ("mode", ctypes.c_int), |
| ("lora_params", ctypes.POINTER(RKLLMLoraParam)), |
| ("prompt_cache_params", ctypes.POINTER(RKLLMPromptCacheParam)), |
| ("keep_history", ctypes.c_int) |
| ] |
|
|
| class RKLLMResultLastHiddenLayer(ctypes.Structure): |
| hidden_states: ctypes.POINTER(ctypes.c_float) |
| embd_size: ctypes.c_int |
| num_tokens: ctypes.c_int |
|
|
| _fields_ = [ |
| ("hidden_states", ctypes.POINTER(ctypes.c_float)), |
| ("embd_size", ctypes.c_int), |
| ("num_tokens", ctypes.c_int) |
| ] |
|
|
| class RKLLMResultLogits(ctypes.Structure): |
| logits: ctypes.POINTER(ctypes.c_float) |
| vocab_size: ctypes.c_int |
| num_tokens: ctypes.c_int |
|
|
| _fields_ = [ |
| ("logits", ctypes.POINTER(ctypes.c_float)), |
| ("vocab_size", ctypes.c_int), |
| ("num_tokens", ctypes.c_int) |
| ] |
|
|
| class RKLLMResult(ctypes.Structure): |
| """ |
| LLM推理结果结构体 |
| |
| 表示LLM推理的结果,包含生成的文本、token ID、隐藏层状态、logits和性能统计。 |
| """ |
| text: ctypes.c_char_p |
| token_id: ctypes.c_int32 |
| last_hidden_layer: RKLLMResultLastHiddenLayer |
| logits: RKLLMResultLogits |
| perf: RKLLMPerfStat |
|
|
| _fields_ = [ |
| ("text", ctypes.c_char_p), |
| ("token_id", ctypes.c_int32), |
| ("last_hidden_layer", RKLLMResultLastHiddenLayer), |
| ("logits", RKLLMResultLogits), |
| ("perf", RKLLMPerfStat) |
| ] |
|
|
| |
| LLMHandle = ctypes.c_void_p |
|
|
| |
| LLMResultCallback = ctypes.CFUNCTYPE( |
| ctypes.c_int, |
| ctypes.POINTER(RKLLMResult), |
| ctypes.c_void_p, |
| ctypes.c_int |
| ) |
| """ |
| 回调函数类型定义 |
| |
| 用于处理LLM结果的回调函数。 |
| |
| 参数: |
| - result: 指向LLM结果的指针 |
| - userdata: 回调的用户数据指针 |
| - state: LLM调用状态(例如:完成、错误) |
| |
| 返回值: |
| - 0: 正常继续推理 |
| - 1: 暂停推理。如果用户想要修改或干预结果(例如编辑输出、注入新提示), |
| 返回1以暂停当前推理。稍后,使用更新的内容调用rkllm_run来恢复推理。 |
| """ |
|
|
| class RKLLMRuntime: |
| def __init__(self, library_path="./librkllmrt.so"): |
| try: |
| self.lib = ctypes.CDLL(library_path) |
| except OSError as e: |
| raise OSError(f"Failed to load RKLLM library from {library_path}. " |
| f"Ensure it's in your LD_LIBRARY_PATH or provide the full path. Error: {e}") |
| self._setup_functions() |
| self.llm_handle = LLMHandle() |
| self._c_callback = None |
|
|
| def _setup_functions(self): |
| |
| self.lib.rkllm_createDefaultParam.restype = RKLLMParam |
| self.lib.rkllm_createDefaultParam.argtypes = [] |
|
|
| |
| self.lib.rkllm_init.restype = ctypes.c_int |
| self.lib.rkllm_init.argtypes = [ |
| ctypes.POINTER(LLMHandle), |
| ctypes.POINTER(RKLLMParam), |
| LLMResultCallback |
| ] |
|
|
| |
| self.lib.rkllm_load_lora.restype = ctypes.c_int |
| self.lib.rkllm_load_lora.argtypes = [LLMHandle, ctypes.POINTER(RKLLMLoraAdapter)] |
|
|
| |
| self.lib.rkllm_load_prompt_cache.restype = ctypes.c_int |
| self.lib.rkllm_load_prompt_cache.argtypes = [LLMHandle, ctypes.c_char_p] |
|
|
| |
| self.lib.rkllm_release_prompt_cache.restype = ctypes.c_int |
| self.lib.rkllm_release_prompt_cache.argtypes = [LLMHandle] |
|
|
| |
| self.lib.rkllm_destroy.restype = ctypes.c_int |
| self.lib.rkllm_destroy.argtypes = [LLMHandle] |
|
|
| |
| self.lib.rkllm_run.restype = ctypes.c_int |
| self.lib.rkllm_run.argtypes = [ |
| LLMHandle, |
| ctypes.POINTER(RKLLMInput), |
| ctypes.POINTER(RKLLMInferParam), |
| ctypes.c_void_p |
| ] |
|
|
| |
| |
| self.lib.rkllm_run_async.restype = ctypes.c_int |
| self.lib.rkllm_run_async.argtypes = [ |
| LLMHandle, |
| ctypes.POINTER(RKLLMInput), |
| ctypes.POINTER(RKLLMInferParam), |
| ctypes.c_void_p |
| ] |
|
|
| |
| self.lib.rkllm_abort.restype = ctypes.c_int |
| self.lib.rkllm_abort.argtypes = [LLMHandle] |
|
|
| |
| self.lib.rkllm_is_running.restype = ctypes.c_int |
| self.lib.rkllm_is_running.argtypes = [LLMHandle] |
|
|
| |
| self.lib.rkllm_clear_kv_cache.restype = ctypes.c_int |
| self.lib.rkllm_clear_kv_cache.argtypes = [ |
| LLMHandle, |
| ctypes.c_int, |
| ctypes.POINTER(ctypes.c_int), |
| ctypes.POINTER(ctypes.c_int) |
| ] |
|
|
| |
| self.lib.rkllm_get_kv_cache_size.restype = ctypes.c_int |
| self.lib.rkllm_get_kv_cache_size.argtypes = [LLMHandle, ctypes.POINTER(ctypes.c_int)] |
|
|
| |
| self.lib.rkllm_set_chat_template.restype = ctypes.c_int |
| self.lib.rkllm_set_chat_template.argtypes = [ |
| LLMHandle, |
| ctypes.c_char_p, |
| ctypes.c_char_p, |
| ctypes.c_char_p |
| ] |
|
|
| |
| self.lib.rkllm_set_function_tools.restype = ctypes.c_int |
| self.lib.rkllm_set_function_tools.argtypes = [ |
| LLMHandle, |
| ctypes.c_char_p, |
| ctypes.c_char_p, |
| ctypes.c_char_p |
| ] |
|
|
| |
| self.lib.rkllm_set_cross_attn_params.restype = ctypes.c_int |
| self.lib.rkllm_set_cross_attn_params.argtypes = [LLMHandle, ctypes.POINTER(RKLLMCrossAttnParam)] |
|
|
| def create_default_param(self) -> RKLLMParam: |
| """Creates a default RKLLMParam structure.""" |
| return self.lib.rkllm_createDefaultParam() |
|
|
| def init(self, param: RKLLMParam, callback_func) -> int: |
| """ |
| Initializes the LLM. |
| :param param: RKLLMParam structure. |
| :param callback_func: A Python function that matches the signature: |
| def my_callback(result_ptr, userdata_ptr, state_enum): |
| result = result_ptr.contents # RKLLMResult |
| # Process result |
| # userdata can be retrieved if passed during run, or ignored |
| # state = LLMCallState(state_enum) |
| :return: 0 for success, non-zero for failure. |
| """ |
| if not callable(callback_func): |
| raise ValueError("callback_func must be a callable Python function.") |
|
|
| |
| self._c_callback = LLMResultCallback(callback_func) |
| |
| ret = self.lib.rkllm_init(ctypes.byref(self.llm_handle), ctypes.byref(param), self._c_callback) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_init failed with error code {ret}") |
| return ret |
|
|
| def load_lora(self, lora_adapter: RKLLMLoraAdapter) -> int: |
| """Loads a Lora adapter.""" |
| ret = self.lib.rkllm_load_lora(self.llm_handle, ctypes.byref(lora_adapter)) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_load_lora failed with error code {ret}") |
| return ret |
|
|
| def load_prompt_cache(self, prompt_cache_path: str) -> int: |
| """Loads a prompt cache from a file.""" |
| c_path = prompt_cache_path.encode('utf-8') |
| ret = self.lib.rkllm_load_prompt_cache(self.llm_handle, c_path) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_load_prompt_cache failed for {prompt_cache_path} with error code {ret}") |
| return ret |
|
|
| def release_prompt_cache(self) -> int: |
| """Releases the prompt cache from memory.""" |
| ret = self.lib.rkllm_release_prompt_cache(self.llm_handle) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_release_prompt_cache failed with error code {ret}") |
| return ret |
|
|
| def destroy(self) -> int: |
| """Destroys the LLM instance and releases resources.""" |
| if self.llm_handle and self.llm_handle.value: |
| ret = self.lib.rkllm_destroy(self.llm_handle) |
| self.llm_handle = LLMHandle() |
| if ret != 0: |
| |
| print(f"Warning: rkllm_destroy failed with error code {ret}") |
| return ret |
| return 0 |
|
|
| def run(self, rkllm_input: RKLLMInput, rkllm_infer_params: RKLLMInferParam, userdata=None) -> int: |
| """Runs an LLM inference task synchronously.""" |
| |
| |
| if userdata is not None: |
| |
| self._userdata_ref = userdata |
| c_userdata = ctypes.cast(ctypes.pointer(ctypes.py_object(userdata)), ctypes.c_void_p) |
| else: |
| c_userdata = None |
| ret = self.lib.rkllm_run(self.llm_handle, ctypes.byref(rkllm_input), ctypes.byref(rkllm_infer_params), c_userdata) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_run failed with error code {ret}") |
| return ret |
|
|
| def run_async(self, rkllm_input: RKLLMInput, rkllm_infer_params: RKLLMInferParam, userdata=None) -> int: |
| """Runs an LLM inference task asynchronously.""" |
| if userdata is not None: |
| |
| self._userdata_ref = userdata |
| c_userdata = ctypes.cast(ctypes.pointer(ctypes.py_object(userdata)), ctypes.c_void_p) |
| else: |
| c_userdata = None |
| ret = self.lib.rkllm_run_async(self.llm_handle, ctypes.byref(rkllm_input), ctypes.byref(rkllm_infer_params), c_userdata) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_run_async failed with error code {ret}") |
| return ret |
|
|
| def abort(self) -> int: |
| """Aborts an ongoing LLM task.""" |
| ret = self.lib.rkllm_abort(self.llm_handle) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_abort failed with error code {ret}") |
| return ret |
|
|
| def is_running(self) -> bool: |
| """Checks if an LLM task is currently running. Returns True if running.""" |
| |
| |
| return self.lib.rkllm_is_running(self.llm_handle) == 0 |
|
|
| def clear_kv_cache(self, keep_system_prompt: bool, start_pos: list = None, end_pos: list = None) -> int: |
| """ |
| 清除键值缓存 |
| |
| 此函数用于清除部分或全部KV缓存。 |
| |
| 参数: |
| - keep_system_prompt: 是否在缓存中保留系统提示(True保留,False清除) |
| 如果提供了特定范围[start_pos, end_pos),此标志将被忽略 |
| - start_pos: 要清除的KV缓存范围的起始位置数组(包含),每个批次一个 |
| - end_pos: 要清除的KV缓存范围的结束位置数组(不包含),每个批次一个 |
| 如果start_pos和end_pos都设置为None,将清除整个缓存,keep_system_prompt将生效 |
| 如果start_pos[i] < end_pos[i],只有指定的范围会被清除,keep_system_prompt将被忽略 |
| |
| 注意:start_pos或end_pos只有在keep_history == 0且生成已通过在回调中返回1暂停时才有效 |
| |
| 返回:0表示缓存清除成功,非零表示失败 |
| """ |
| |
| c_start_pos = None |
| c_end_pos = None |
| |
| if start_pos is not None and end_pos is not None: |
| if len(start_pos) != len(end_pos): |
| raise ValueError("start_pos和end_pos数组长度必须相同") |
| |
| |
| c_start_pos = (ctypes.c_int * len(start_pos))(*start_pos) |
| c_end_pos = (ctypes.c_int * len(end_pos))(*end_pos) |
| |
| ret = self.lib.rkllm_clear_kv_cache( |
| self.llm_handle, |
| ctypes.c_int(1 if keep_system_prompt else 0), |
| c_start_pos, |
| c_end_pos |
| ) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_clear_kv_cache失败,错误代码:{ret}") |
| return ret |
|
|
| def set_chat_template(self, system_prompt: str, prompt_prefix: str, prompt_postfix: str) -> int: |
| """Sets the chat template for the LLM.""" |
| c_system = system_prompt.encode('utf-8') if system_prompt else b"" |
| c_prefix = prompt_prefix.encode('utf-8') if prompt_prefix else b"" |
| c_postfix = prompt_postfix.encode('utf-8') if prompt_postfix else b"" |
| |
| ret = self.lib.rkllm_set_chat_template(self.llm_handle, c_system, c_prefix, c_postfix) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_set_chat_template failed with error code {ret}") |
| return ret |
|
|
| def get_kv_cache_size(self, n_batch: int) -> list: |
| """ |
| 获取给定LLM句柄的键值缓存当前大小 |
| |
| 此函数返回当前存储在模型KV缓存中的位置总数。 |
| |
| 参数: |
| - n_batch: 批次数量,用于确定返回数组的大小 |
| |
| 返回: |
| - list: 每个批次的缓存大小列表 |
| """ |
| |
| cache_sizes = (ctypes.c_int * n_batch)() |
| |
| ret = self.lib.rkllm_get_kv_cache_size(self.llm_handle, cache_sizes) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_get_kv_cache_size失败,错误代码:{ret}") |
| |
| |
| return [cache_sizes[i] for i in range(n_batch)] |
|
|
| def set_function_tools(self, system_prompt: str, tools: str, tool_response_str: str) -> int: |
| """ |
| 为LLM设置函数调用配置,包括系统提示、工具定义和工具响应token |
| |
| 参数: |
| - system_prompt: 定义语言模型上下文或行为的系统提示 |
| - tools: JSON格式的字符串,定义可用的函数,包括它们的名称、描述和参数 |
| - tool_response_str: 用于识别对话中函数调用结果的唯一标签。它作为标记标签, |
| 允许分词器将工具输出与正常对话轮次分开识别 |
| |
| 返回:0表示配置设置成功,非零表示错误 |
| """ |
| c_system = system_prompt.encode('utf-8') if system_prompt else b"" |
| c_tools = tools.encode('utf-8') if tools else b"" |
| c_tool_response = tool_response_str.encode('utf-8') if tool_response_str else b"" |
| |
| ret = self.lib.rkllm_set_function_tools(self.llm_handle, c_system, c_tools, c_tool_response) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_set_function_tools失败,错误代码:{ret}") |
| return ret |
|
|
| def set_cross_attn_params(self, cross_attn_params: RKLLMCrossAttnParam) -> int: |
| """ |
| 为LLM解码器设置交叉注意力参数 |
| |
| 参数: |
| - cross_attn_params: 包含用于交叉注意力的编码器相关输入数据的结构体 |
| (详见RKLLMCrossAttnParam说明) |
| |
| 返回:0表示参数设置成功,非零表示错误 |
| """ |
| ret = self.lib.rkllm_set_cross_attn_params(self.llm_handle, ctypes.byref(cross_attn_params)) |
| if ret != 0: |
| raise RuntimeError(f"rkllm_set_cross_attn_params失败,错误代码:{ret}") |
| return ret |
|
|
| def __enter__(self): |
| return self |
|
|
| def __exit__(self, exc_type, exc_val, exc_tb): |
| self.destroy() |
|
|
| def __del__(self): |
| self.destroy() |
|
|
| |
| if __name__ == "__main__": |
| |
| |
|
|
| |
| results_buffer = [] |
|
|
| def my_python_callback(result_ptr, userdata_ptr, state_enum): |
| """ |
| 回调函数,由C库调用来处理LLM结果 |
| |
| 参数: |
| - result_ptr: 指向LLM结果的指针 |
| - userdata_ptr: 用户数据指针 |
| - state_enum: LLM调用状态枚举值 |
| |
| 返回: |
| - 0: 继续推理 |
| - 1: 暂停推理 |
| """ |
| global results_buffer |
| state = LLMCallState(state_enum) |
| result = result_ptr.contents |
|
|
| current_text = "" |
| if result.text: |
| current_text = result.text.decode('utf-8', errors='ignore') |
| |
| print(f"回调: State={state.name}, TokenID={result.token_id}, Text='{current_text}'") |
| |
| |
| if result.perf.prefill_tokens > 0 or result.perf.generate_tokens > 0: |
| print(f" 性能统计: 预填充={result.perf.prefill_tokens}tokens/{result.perf.prefill_time_ms:.1f}ms, " |
| f"生成={result.perf.generate_tokens}tokens/{result.perf.generate_time_ms:.1f}ms, " |
| f"内存={result.perf.memory_usage_mb:.1f}MB") |
| |
| results_buffer.append(current_text) |
|
|
| if state == LLMCallState.RKLLM_RUN_FINISH: |
| print("推理完成。") |
| elif state == LLMCallState.RKLLM_RUN_ERROR: |
| print("推理错误。") |
| |
| |
| return 0 |
|
|
| |
| try: |
| print("Initializing RKLLMRuntime...") |
| |
| |
| rk_llm = RKLLMRuntime() |
|
|
| print("Creating default parameters...") |
| params = rk_llm.create_default_param() |
|
|
| |
| |
| |
| |
| model_file = "dummy_model.rkllm" |
| if not os.path.exists(model_file): |
| print(f"Warning: Model file '{model_file}' does not exist. Init will likely fail.") |
| |
| |
| with open(model_file, "w") as f: |
| f.write("dummy content") |
|
|
| params.model_path = model_file.encode('utf-8') |
| params.max_context_len = 512 |
| params.max_new_tokens = 128 |
| params.top_k = 1 |
| params.temperature = 0.7 |
| params.repeat_penalty = 1.1 |
| |
|
|
| print(f"Initializing LLM with model: {params.model_path.decode()}...") |
| |
| try: |
| rk_llm.init(params, my_python_callback) |
| print("LLM Initialized.") |
| except RuntimeError as e: |
| print(f"Error during LLM initialization: {e}") |
| print("This is expected if 'dummy_model.rkllm' is not a valid model.") |
| print("Replace 'dummy_model.rkllm' with a real model path to test further.") |
| exit() |
|
|
|
|
| |
| print("准备输入...") |
| rk_input = RKLLMInput() |
| rk_input.role = b"user" |
| rk_input.enable_thinking = False |
| rk_input.input_type = RKLLMInputType.RKLLM_INPUT_PROMPT |
| |
| prompt_text = "将以下英文文本翻译成中文:'Hello, world!'" |
| c_prompt = prompt_text.encode('utf-8') |
| rk_input._union_data.prompt_input = c_prompt |
|
|
| |
| print("Preparing inference parameters...") |
| infer_params = RKLLMInferParam() |
| infer_params.mode = RKLLMInferMode.RKLLM_INFER_GENERATE |
| infer_params.keep_history = 1 |
| |
| |
|
|
| |
| print(f"Running inference with prompt: '{prompt_text}'") |
| results_buffer.clear() |
| try: |
| rk_llm.run(rk_input, infer_params) |
| print("\n--- Full Response ---") |
| print("".join(results_buffer)) |
| print("---------------------\n") |
| except RuntimeError as e: |
| print(f"Error during LLM run: {e}") |
|
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| |
| except OSError as e: |
| print(f"OSError: {e}. Could not load the RKLLM library.") |
| print("Please ensure 'librkllmrt.so' is in your LD_LIBRARY_PATH or provide the full path.") |
| except Exception as e: |
| print(f"An unexpected error occurred: {e}") |
| finally: |
| if 'rk_llm' in locals() and rk_llm.llm_handle and rk_llm.llm_handle.value: |
| print("Destroying LLM instance...") |
| rk_llm.destroy() |
| print("LLM instance destroyed.") |
| if os.path.exists(model_file) and model_file == "dummy_model.rkllm": |
| os.remove(model_file) |
|
|
| print("Example finished.") |