Scrapegraph-ai/scrapegraphai/graphs/script_creator_graph.py

112 lines
3.5 KiB
Python

"""
ScriptCreatorGraph Module
"""
from typing import Optional
from .base_graph import BaseGraph
from .abstract_graph import AbstractGraph
from ..nodes import (
FetchNode,
ParseNode,
GenerateScraperNode
)
class ScriptCreatorGraph(AbstractGraph):
"""
ScriptCreatorGraph defines a scraping pipeline for generating web scraping scripts.
Attributes:
prompt (str): The prompt for the graph.
source (str): The source of the graph.
config (dict): Configuration parameters for the graph.
schema (str): 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.
model_token (int): The token limit for the language model.
library (str): The library used for web scraping.
Args:
prompt (str): The prompt for the graph.
source (str): The source of the graph.
config (dict): Configuration parameters for the graph.
schema (str): The schema for the graph output.
Example:
>>> script_creator = ScriptCreatorGraph(
... "List me all the attractions in Chioggia.",
... "https://en.wikipedia.org/wiki/Chioggia",
... {"llm": {"model": "gpt-3.5-turbo"}}
... )
>>> result = script_creator.run()
"""
def __init__(self, prompt: str, source: str, config: dict, schema: Optional[str] = None):
self.library = config['library']
super().__init__(prompt, config, source, schema)
self.input_key = "url" if source.startswith("http") else "local_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="url | local_dir",
output=["doc", "link_urls", "img_urls"],
)
parse_node = ParseNode(
input="doc",
output=["parsed_doc"],
node_config={"chunk_size": self.model_token,
"parse_html": False
}
)
generate_scraper_node = GenerateScraperNode(
input="user_prompt & (doc)",
output=["answer"],
node_config={
"llm_model": self.llm_model,
"schema": self.schema,
},
library=self.library,
website=self.source
)
return BaseGraph(
nodes=[
fetch_node,
parse_node,
generate_scraper_node,
],
edges=[
(fetch_node, parse_node),
(parse_node, generate_scraper_node),
],
entry_point=fetch_node
)
def run(self) -> str:
"""
Executes the web 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 ")