Files
wehub-resource-sync fbfefa28d3
CodeQL / Analyze (python) (push) Failing after 0s
Release / Build (push) Failing after 1s
Test Suite / Unit Tests (push) Failing after 0s
Release / Release (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 12:18:10 +08:00

129 lines
4.1 KiB
Python

"""
SmartScraperMultiCondGraph Module with ConditionalNode
"""
from copy import deepcopy
from typing import List, Optional, Type
from pydantic import BaseModel
from ..nodes import (
ConcatAnswersNode,
ConditionalNode,
GraphIteratorNode,
MergeAnswersNode,
)
from ..utils.copy import safe_deepcopy
from .abstract_graph import AbstractGraph
from .base_graph import BaseGraph
from .smart_scraper_graph import SmartScraperGraph
class SmartScraperMultiConcatGraph(AbstractGraph):
"""
SmartScraperMultiConditionalGraph is a scraping pipeline that scrapes a
list of URLs and generates answers to a given prompt.
Attributes:
prompt (str): The user prompt to search the internet.
llm_model (dict): The configuration for the language model.
embedder_model (dict): The configuration for the embedder model.
headless (bool): A flag to run the browser in headless mode.
verbose (bool): A flag to display the execution information.
model_token (int): The token limit for the language model.
Args:
prompt (str): The user prompt to search the internet.
source (List[str]): The source of the graph.
config (dict): Configuration parameters for the graph.
schema (Optional[BaseModel]): The schema for the graph output.
Example:
>>> smart_scraper_multi_concat_graph = SmartScraperMultiConcatGraph(
... "What is Chioggia famous for?",
... {"llm": {"model": "openai/gpt-3.5-turbo"}}
... )
>>> result = smart_scraper_multi_concat_graph.run()
"""
def __init__(
self,
prompt: str,
source: List[str],
config: dict,
schema: Optional[Type[BaseModel]] = None,
):
self.copy_config = safe_deepcopy(config)
self.copy_schema = deepcopy(schema)
super().__init__(prompt, config, source, schema)
def _create_graph(self) -> BaseGraph:
"""
Creates the graph of nodes representing the workflow for web scraping and searching,
including a ConditionalNode to decide between merging or concatenating the results.
Returns:
BaseGraph: A graph instance representing the web scraping and searching workflow.
"""
graph_iterator_node = GraphIteratorNode(
input="user_prompt & urls",
output=["results"],
node_config={
"graph_instance": SmartScraperGraph,
"scraper_config": self.copy_config,
},
schema=self.copy_schema,
node_name="GraphIteratorNode",
)
conditional_node = ConditionalNode(
input="results",
output=["results"],
node_name="ConditionalNode",
node_config={"key_name": "results", "condition": "len(results) > 2"},
)
merge_answers_node = MergeAnswersNode(
input="user_prompt & results",
output=["answer"],
node_config={"llm_model": self.llm_model, "schema": self.copy_schema},
node_name="MergeAnswersNode",
)
concat_node = ConcatAnswersNode(
input="results", output=["answer"], node_config={}, node_name="ConcatNode"
)
return BaseGraph(
nodes=[
graph_iterator_node,
conditional_node,
merge_answers_node,
concat_node,
],
edges=[
(graph_iterator_node, conditional_node),
# True node (len(results) > 2)
(conditional_node, merge_answers_node),
# False node (len(results) <= 2)
(conditional_node, concat_node),
],
entry_point=graph_iterator_node,
graph_name=self.__class__.__name__,
)
def run(self) -> str:
"""
Executes the web scraping and searching process.
Returns:
str: The answer to the prompt.
"""
inputs = {"user_prompt": self.prompt, "urls": self.source}
self.final_state, self.execution_info = self.graph.execute(inputs)
return self.final_state.get("answer", "No answer found.")