from abc import abstractmethod from typing import Any, Optional, Protocol, Sequence, runtime_checkable from langchain_core.callbacks import ( AsyncCallbackManagerForToolRun, CallbackManagerForToolRun, ) from langchain_core.pydantic_v1 import Field from langchain_core.tools import BaseTool from langchain_community.llms.gradient_ai import TrainResult @runtime_checkable class TrainableLLM(Protocol): @abstractmethod def train_unsupervised( self, inputs: Sequence[str], **kwargs: Any, ) -> TrainResult: ... @abstractmethod async def atrain_unsupervised( self, inputs: Sequence[str], **kwargs: Any, ) -> TrainResult: ... class Memorize(BaseTool): name: str = "Memorize" description: str = ( "Useful whenever you observed novel information " "from previous conversation history, " "i.e., another tool's action outputs or human comments. " "The action input should include observed information in detail, " "then the tool will fine-tune yourself to remember it." ) llm: TrainableLLM = Field() def _run( self, information_to_learn: str, run_manager: Optional[CallbackManagerForToolRun] = None, ) -> str: train_result = self.llm.train_unsupervised((information_to_learn,)) return f"Train complete. Loss: {train_result['loss']}" async def _arun( self, information_to_learn: str, run_manager: Optional[AsyncCallbackManagerForToolRun] = None, ) -> str: train_result = await self.llm.atrain_unsupervised((information_to_learn,)) return f"Train complete. Loss: {train_result['loss']}"