""" This module implements the Document Scraper Graph for the ScrapeGraphAI application. """ from typing import Optional import logging from pydantic import BaseModel from .base_graph import BaseGraph from .abstract_graph import AbstractGraph from ..nodes import FetchNode, ParseNode, GenerateAnswerNode class DocumentScraperGraph(AbstractGraph): """ DocumentScraperGraph is a scraping pipeline that automates the process of extracting information from web pages using a natural language model to interpret and answer prompts. Attributes: prompt (str): The prompt for the graph. source (str): The source of the graph. config (dict): Configuration parameters for the graph. schema (BaseModel): The schema for the graph output. llm_model: An instance of a language model client, configured for generating answers. embedder_model: An instance of an embedding model client, configured for generating embeddings. verbose (bool): A flag indicating whether to show print statements during execution. headless (bool): A flag indicating whether to run the graph in headless mode. Args: prompt (str): The prompt for the graph. source (str): The source of the graph. config (dict): Configuration parameters for the graph. schema (BaseModel): The schema for the graph output. Example: >>> smart_scraper = DocumentScraperGraph( ... "List me all the attractions in Chioggia.", ... "https://en.wikipedia.org/wiki/Chioggia", ... {"llm": {"model": "openai/gpt-3.5-turbo"}} ... ) >>> result = smart_scraper.run() """ def __init__( self, prompt: str, source: str, config: dict, schema: Optional[BaseModel] = None ): super().__init__(prompt, config, source, schema) self.input_key = "md" if source.endswith("md") else "md_dir" def _create_graph(self) -> BaseGraph: """ Creates the graph of nodes representing the workflow for web scraping. Returns: BaseGraph: A graph instance representing the web scraping workflow. """ fetch_node = FetchNode( input="md | md_dir", output=["doc"], node_config={ "loader_kwargs": self.config.get("loader_kwargs", {}), "storage_state": self.config.get("storage_state", None), }, ) parse_node = ParseNode( input="doc", output=["parsed_doc"], node_config={ "parse_html": False, "chunk_size": self.model_token, "llm_model": self.llm_model, }, ) generate_answer_node = GenerateAnswerNode( input="user_prompt & (relevant_chunks | parsed_doc | doc)", output=["answer"], node_config={ "llm_model": self.llm_model, "additional_info": self.config.get("additional_info"), "schema": self.schema, "is_md_scraper": True, }, ) return BaseGraph( nodes=[ fetch_node, parse_node, generate_answer_node, ], edges=[(fetch_node, parse_node), (parse_node, generate_answer_node)], entry_point=fetch_node, graph_name=self.__class__.__name__, ) def run(self) -> str: """ Executes the scraping process and returns the answer to the prompt. Returns: str: The answer to the prompt. """ inputs = {"user_prompt": self.prompt, self.input_key: self.source} self.final_state, self.execution_info = self.graph.execute(inputs) return self.final_state.get("answer", "No answer found.")