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@ -27,6 +27,7 @@ from core.model_runtime.entities.message_entities import (
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PromptMessage,
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PromptMessageTool,
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SystemPromptMessage,
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ToolPromptMessage,
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UserPromptMessage,
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)
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from core.model_runtime.entities.model_entities import (
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@ -57,7 +58,7 @@ class LocalAILanguageModel(LargeLanguageModel):
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stream: bool = True, user: str | None = None) \
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-> LLMResult | Generator:
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return self._generate(model=model, credentials=credentials, prompt_messages=prompt_messages,
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model_parameters=model_parameters, tools=tools, stop=stop, stream=stream, user=user)
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model_parameters=model_parameters, tools=tools, stop=stop, stream=stream, user=user)
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def get_num_tokens(self, model: str, credentials: dict, prompt_messages: list[PromptMessage],
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tools: list[PromptMessageTool] | None = None) -> int:
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@ -69,6 +70,7 @@ class LocalAILanguageModel(LargeLanguageModel):
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Calculate num tokens for baichuan model
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LocalAI does not supports
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"""
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def tokens(text: str):
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"""
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We cloud not determine which tokenizer to use, cause the model is customized.
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@ -133,6 +135,7 @@ class LocalAILanguageModel(LargeLanguageModel):
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:param tools: tools for tool calling
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:return: number of tokens
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"""
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def tokens(text: str):
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return self._get_num_tokens_by_gpt2(text)
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@ -247,8 +250,8 @@ class LocalAILanguageModel(LargeLanguageModel):
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return entity
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def _generate(self, model: str, credentials: dict, prompt_messages: list[PromptMessage],
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model_parameters: dict, tools: list[PromptMessageTool] | None = None,
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stop: list[str] | None = None, stream: bool = True, user: str | None = None) \
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model_parameters: dict, tools: list[PromptMessageTool] | None = None,
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stop: list[str] | None = None, stream: bool = True, user: str | None = None) \
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-> LLMResult | Generator:
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kwargs = self._to_client_kwargs(credentials)
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@ -351,6 +354,17 @@ class LocalAILanguageModel(LargeLanguageModel):
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elif isinstance(message, SystemPromptMessage):
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message = cast(SystemPromptMessage, message)
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message_dict = {"role": "system", "content": message.content}
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elif isinstance(message, ToolPromptMessage):
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# copy from core/model_runtime/model_providers/anthropic/llm/llm.py
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message = cast(ToolPromptMessage, message)
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message_dict = {
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"role": "user",
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"content": [{
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"type": "tool_result",
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"tool_use_id": message.tool_call_id,
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"content": message.content
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}]
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}
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else:
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raise ValueError(f"Unknown message type {type(message)}")
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@ -377,10 +391,10 @@ class LocalAILanguageModel(LargeLanguageModel):
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return prompts
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def _handle_completion_generate_response(self, model: str,
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prompt_messages: list[PromptMessage],
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credentials: dict,
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response: Completion,
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) -> LLMResult:
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prompt_messages: list[PromptMessage],
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credentials: dict,
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response: Completion,
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) -> LLMResult:
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"""
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Handle llm chat response
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@ -407,7 +421,8 @@ class LocalAILanguageModel(LargeLanguageModel):
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)
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completion_tokens = self._num_tokens_from_messages(messages=[assistant_prompt_message], tools=[])
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usage = self._calc_response_usage(model=model, credentials=credentials, prompt_tokens=prompt_tokens, completion_tokens=completion_tokens)
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usage = self._calc_response_usage(model=model, credentials=credentials, prompt_tokens=prompt_tokens,
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completion_tokens=completion_tokens)
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response = LLMResult(
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model=model,
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@ -452,7 +467,8 @@ class LocalAILanguageModel(LargeLanguageModel):
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prompt_tokens = self._num_tokens_from_messages(messages=prompt_messages, tools=tools)
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completion_tokens = self._num_tokens_from_messages(messages=[assistant_prompt_message], tools=tools)
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usage = self._calc_response_usage(model=model, credentials=credentials, prompt_tokens=prompt_tokens, completion_tokens=completion_tokens)
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usage = self._calc_response_usage(model=model, credentials=credentials, prompt_tokens=prompt_tokens,
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completion_tokens=completion_tokens)
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response = LLMResult(
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model=model,
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@ -465,10 +481,10 @@ class LocalAILanguageModel(LargeLanguageModel):
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return response
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def _handle_completion_generate_stream_response(self, model: str,
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prompt_messages: list[PromptMessage],
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credentials: dict,
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response: Stream[Completion],
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tools: list[PromptMessageTool]) -> Generator:
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prompt_messages: list[PromptMessage],
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credentials: dict,
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response: Stream[Completion],
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tools: list[PromptMessageTool]) -> Generator:
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full_response = ''
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for chunk in response:
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