""" GenerateAnswerNode Module """ from typing import List, Optional from langchain.prompts import PromptTemplate from langchain_core.output_parsers import JsonOutputParser from langchain_core.runnables import RunnableParallel from langchain_openai import ChatOpenAI, AzureChatOpenAI from langchain_aws import ChatBedrock from langchain_mistralai import ChatMistralAI from langchain_community.chat_models import ChatOllama from tqdm import tqdm from .base_node import BaseNode from ..utils.output_parser import get_structured_output_parser, get_pydantic_output_parser from ..prompts import ( TEMPLATE_CHUNKS, TEMPLATE_NO_CHUNKS, TEMPLATE_MERGE, TEMPLATE_CHUNKS_MD, TEMPLATE_NO_CHUNKS_MD, TEMPLATE_MERGE_MD ) class GenerateAnswerNode(BaseNode): """ Initializes the GenerateAnswerNode class. Args: input (str): The input data type for the node. output (List[str]): The output data type(s) for the node. node_config (Optional[dict]): Configuration dictionary for the node, which includes the LLM model, verbosity, schema, and other settings. Defaults to None. node_name (str): The name of the node. Defaults to "GenerateAnswer". Attributes: llm_model: The language model specified in the node configuration. verbose (bool): Whether verbose mode is enabled. force (bool): Whether to force certain behaviors, overriding defaults. script_creator (bool): Whether the node is in script creation mode. is_md_scraper (bool): Whether the node is scraping markdown data. additional_info (Optional[str]): Any additional information to be included in the prompt templates. """ def __init__( self, input: str, output: List[str], node_config: Optional[dict] = None, node_name: str = "GenerateAnswer", ): super().__init__(node_name, "node", input, output, 2, node_config) self.llm_model = node_config["llm_model"] if isinstance(node_config["llm_model"], ChatOllama): self.llm_model.format = "json" self.verbose = node_config.get("verbose", False) self.force = node_config.get("force", False) self.script_creator = node_config.get("script_creator", False) self.is_md_scraper = node_config.get("is_md_scraper", False) self.additional_info = node_config.get("additional_info") def execute(self, state: dict) -> dict: """ Executes the GenerateAnswerNode. Args: state (dict): The current state of the graph. The input keys will be used to fetch the correct data from the state. Returns: dict: The updated state with the output key containing the generated answer. """ self.logger.info(f"--- Executing {self.node_name} Node ---") input_keys = self.get_input_keys(state) input_data = [state[key] for key in input_keys] user_prompt = input_data[0] doc = input_data[1] if self.node_config.get("schema", None) is not None: if isinstance(self.llm_model, (ChatOpenAI, ChatMistralAI)): self.llm_model = self.llm_model.with_structured_output( schema=self.node_config["schema"] ) output_parser = get_structured_output_parser(self.node_config["schema"]) format_instructions = "NA" else: if not isinstance(self.llm_model, ChatBedrock): output_parser = get_pydantic_output_parser(self.node_config["schema"]) format_instructions = output_parser.get_format_instructions() else: output_parser = None format_instructions = "" else: if not isinstance(self.llm_model, ChatBedrock): output_parser = JsonOutputParser() format_instructions = output_parser.get_format_instructions() else: output_parser = None format_instructions = "" if isinstance(self.llm_model, (ChatOpenAI, AzureChatOpenAI)) \ and not self.script_creator \ or self.force \ and not self.script_creator or self.is_md_scraper: template_no_chunks_prompt = TEMPLATE_NO_CHUNKS_MD template_chunks_prompt = TEMPLATE_CHUNKS_MD template_merge_prompt = TEMPLATE_MERGE_MD else: template_no_chunks_prompt = TEMPLATE_NO_CHUNKS template_chunks_prompt = TEMPLATE_CHUNKS template_merge_prompt = TEMPLATE_MERGE if self.additional_info is not None: template_no_chunks_prompt = self.additional_info + template_no_chunks_prompt template_chunks_prompt = self.additional_info + template_chunks_prompt template_merge_prompt = self.additional_info + template_merge_prompt if len(doc) == 1: prompt = PromptTemplate( template=template_no_chunks_prompt, input_variables=["question"], partial_variables={"context": doc, "format_instructions": format_instructions} ) chain = prompt | self.llm_model if output_parser: chain = chain | output_parser answer = chain.invoke({"question": user_prompt}) state.update({self.output[0]: answer}) return state chains_dict = {} for i, chunk in enumerate(tqdm(doc, desc="Processing chunks", disable=not self.verbose)): prompt = PromptTemplate( template=template_chunks_prompt, input_variables=["question"], partial_variables={"context": chunk, "chunk_id": i + 1, "format_instructions": format_instructions} ) chain_name = f"chunk{i+1}" chains_dict[chain_name] = prompt | self.llm_model if output_parser: chains_dict[chain_name] = chains_dict[chain_name] | output_parser async_runner = RunnableParallel(**chains_dict) batch_results = async_runner.invoke({"question": user_prompt}) merge_prompt = PromptTemplate( template=template_merge_prompt, input_variables=["context", "question"], partial_variables={"format_instructions": format_instructions} ) merge_chain = merge_prompt | self.llm_model if output_parser: merge_chain = merge_chain | output_parser answer = merge_chain.invoke({"context": batch_results, "question": user_prompt}) state.update({self.output[0]: answer}) return state