mirror of
https://github.com/VinciGit00/Scrapegraph-ai.git
synced 2026-06-28 21:01:55 +08:00
637 lines
25 KiB
Python
637 lines
25 KiB
Python
"""
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GenerateCodeNode Module
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"""
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from typing import Any, Dict, List, Optional
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from langchain.prompts import PromptTemplate
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from langchain.output_parsers import ResponseSchema, StructuredOutputParser
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from langchain_core.output_parsers import StrOutputParser
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from langchain_core.runnables import RunnableParallel
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from langchain_core.utils.pydantic import is_basemodel_subclass
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from langchain_community.chat_models import ChatOllama
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import ast
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import sys
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from io import StringIO
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from bs4 import BeautifulSoup
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import re
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from tqdm import tqdm
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from .base_node import BaseNode
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from pydantic import ValidationError
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from ..utils import transform_schema
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from jsonschema import validate, ValidationError
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import json
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import string
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class GenerateCodeNode(BaseNode):
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"""
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A node that generates Python code for a function that extracts data from HTML based on a output schema.
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Attributes:
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llm_model: An instance of a language model client, configured for generating answers.
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verbose (bool): A flag indicating whether to show print statements during execution.
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Args:
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input (str): Boolean expression defining the input keys needed from the state.
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output (List[str]): List of output keys to be updated in the state.
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node_config (dict): Additional configuration for the node.
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node_name (str): The unique identifier name for the node, defaulting to "GenerateAnswer".
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"""
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def __init__(
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self,
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input: str,
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output: List[str],
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node_config: Optional[dict] = None,
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node_name: str = "GenerateCode",
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):
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super().__init__(node_name, "node", input, output, 2, node_config)
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self.llm_model = node_config["llm_model"]
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if isinstance(node_config["llm_model"], ChatOllama):
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self.llm_model.format="json"
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self.verbose = (
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True if node_config is None else node_config.get("verbose", False)
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)
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self.force = (
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False if node_config is None else node_config.get("force", False)
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)
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self.script_creator = (
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False if node_config is None else node_config.get("script_creator", False)
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)
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self.is_md_scraper = (
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False if node_config is None else node_config.get("is_md_scraper", False)
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)
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self.additional_info = node_config.get("additional_info")
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self.max_iterations = node_config.get("max_iterations", {
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"overall": 10,
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"syntax": 3,
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"execution": 3,
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"validation": 3,
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"semantic": 3
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})
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self.output_schema = node_config.get("schema")
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def execute(self, state: dict) -> dict:
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"""
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Generates Python code for a function that extracts data from HTML based on a output schema.
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Args:
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state (dict): The current state of the graph. The input keys will be used
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to fetch the correct data from the state.
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Returns:
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dict: The updated state with the output key containing the generated answer.
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Raises:
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KeyError: If the input keys are not found in the state, indicating
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that the necessary information for generating an answer is missing.
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RuntimeError: If the maximum number of iterations is reached without obtaining the desired code.
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"""
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self.logger.info(f"--- Executing {self.node_name} Node ---")
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input_keys = self.get_input_keys(state)
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input_data = [state[key] for key in input_keys]
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user_prompt = input_data[0]
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refined_prompt = input_data[1]
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html_info = input_data[2]
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reduced_html = input_data[3]
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answer = input_data[4]
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self.raw_html = state['original_html'][0].page_content
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simplefied_schema = str(transform_schema(self.output_schema.schema()))
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reasoning_state = {
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"user_input": user_prompt,
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"json_schema": simplefied_schema,
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"initial_analysis": refined_prompt,
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"html_code": reduced_html,
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"html_analysis": html_info,
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"generated_code": "",
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"execution_result": None,
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"reference_answer": answer,
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"errors": {
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"syntax": [],
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"execution": [],
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"validation": [],
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"semantic": []
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},
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"iteration": 0
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}
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final_state = self.overall_reasoning_loop(reasoning_state)
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state.update({self.output[0]: final_state["generated_code"]})
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return state
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def overall_reasoning_loop(self, state: dict) -> dict:
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self.logger.info(f"--- (Generating Code) ---")
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state["generated_code"] = self.generate_initial_code(state)
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state["generated_code"] = self.extract_code(state["generated_code"])
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while state["iteration"] < self.max_iterations["overall"]:
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state["iteration"] += 1
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if self.verbose:
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self.logger.info(f"--- Iteration {state['iteration']} ---")
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self.logger.info(f"--- (Checking Code Syntax) ---")
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state = self.syntax_reasoning_loop(state)
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if state["errors"]["syntax"]:
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continue
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self.logger.info(f"--- (Executing the Generated Code) ---")
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state = self.execution_reasoning_loop(state)
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if state["errors"]["execution"]:
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continue
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self.logger.info(f"--- (Validate the Code Output Schema) ---")
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state = self.validation_reasoning_loop(state)
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if state["errors"]["validation"]:
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continue
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self.logger.info(f"--- (Checking if the informations exctrcated are the ones Requested) ---")
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state = self.semantic_comparison_loop(state)
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if state["errors"]["semantic"]:
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continue
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break
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if state["iteration"] == self.max_iterations["overall"] and (state["errors"]["syntax"] or state["errors"]["execution"] or state["errors"]["validation"] or state["errors"]["semantic"]):
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raise RuntimeError("Max iterations reached without obtaining the desired code.")
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self.logger.info(f"--- (Code Generated Correctly) ---")
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return state
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def syntax_reasoning_loop(self, state: dict) -> dict:
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for _ in range(self.max_iterations["syntax"]):
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syntax_valid, syntax_message = self.syntax_check(state["generated_code"])
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if syntax_valid:
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state["errors"]["syntax"] = []
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return state
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state["errors"]["syntax"] = [syntax_message]
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self.logger.info(f"--- (Synax Error Found: {syntax_message}) ---")
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analysis = self.syntax_focused_analysis(state)
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self.logger.info(f"--- (Regenerating Code to fix the Error) ---")
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state["generated_code"] = self.syntax_focused_code_generation(state, analysis)
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state["generated_code"] = self.extract_code(state["generated_code"])
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return state
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def execution_reasoning_loop(self, state: dict) -> dict:
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for _ in range(self.max_iterations["execution"]):
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execution_success, execution_result = self.create_sandbox_and_execute(state["generated_code"])
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if execution_success:
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state["execution_result"] = execution_result
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state["errors"]["execution"] = []
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return state
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state["errors"]["execution"] = [execution_result]
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self.logger.info(f"--- (Code Execution Error: {execution_result}) ---")
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analysis = self.execution_focused_analysis(state)
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self.logger.info(f"--- (Regenerating Code to fix the Error) ---")
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state["generated_code"] = self.execution_focused_code_generation(state, analysis)
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state["generated_code"] = self.extract_code(state["generated_code"])
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return state
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def validation_reasoning_loop(self, state: dict) -> dict:
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for _ in range(self.max_iterations["validation"]):
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validation, errors = self.validate_dict(state["execution_result"], self.output_schema.schema())
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if validation:
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state["errors"]["validation"] = []
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return state
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state["errors"]["validation"] = errors
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self.logger.info(f"--- (Code Output not compliant to the deisred Output Schema) ---")
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analysis = self.validation_focused_analysis(state)
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self.logger.info(f"--- (Regenerating Code to make the Output compliant to the deisred Output Schema) ---")
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state["generated_code"] = self.validation_focused_code_generation(state, analysis)
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state["generated_code"] = self.extract_code(state["generated_code"])
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return state
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def semantic_comparison_loop(self, state: dict) -> dict:
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for _ in range(self.max_iterations["semantic"]):
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comparison_result = self.semantic_comparison(state["execution_result"], state["reference_answer"])
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if comparison_result["are_semantically_equivalent"]:
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state["errors"]["semantic"] = []
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return state
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state["errors"]["semantic"] = comparison_result["differences"]
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self.logger.info(f"--- (The informations exctrcated are not the all ones requested) ---")
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analysis = self.semantic_focused_analysis(state, comparison_result)
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self.logger.info(f"--- (Regenerating Code to obtain all the infromation requested) ---")
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state["generated_code"] = self.semantic_focused_code_generation(state, analysis)
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state["generated_code"] = self.extract_code(state["generated_code"])
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return state
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def generate_initial_code(self, state: dict) -> str:
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template_code_generator = """
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**Task**: Create a Python function named `extract_data(html: str) -> dict()` using BeautifulSoup that extracts relevant information from the given HTML code string and returns it in a dictionary matching the Desired JSON Output Schema.
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**User's Request**:
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{user_input}
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**Desired JSON Output Schema**:
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```json
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{json_schema}
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```
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**Initial Task Analysis**:
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{initial_analysis}
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**HTML Code**:
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```html
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{html_code}
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```
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**HTML Structure Analysis**:
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{html_analysis}
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Based on the above analyses, generate the `extract_data(html: str) -> dict()` function that:
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1. Efficiently extracts the required data from the given HTML structure.
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2. Processes and structures the data according to the specified JSON schema.
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3. Returns the structured data as a dictionary.
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Your code should be well-commented, explaining the reasoning behind key decisions and any potential areas for improvement or customization.
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Use only the following pre-imported libraries:
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- BeautifulSoup from bs4
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- re
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**Output ONLY the Python code of the extract_data function, WITHOUT ANY IMPORTS OR ADDITIONAL TEXT.**
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In your code do not include backticks.
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**Response**:
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"""
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prompt = PromptTemplate(
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template=template_code_generator,
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partial_variables={
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"user_input": state["user_input"],
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"json_schema": state["json_schema"],
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"initial_analysis": state["initial_analysis"],
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"html_code": state["html_code"],
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"html_analysis": state["html_analysis"]
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})
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output_parser = StrOutputParser()
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chain = prompt | self.llm_model | output_parser
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generated_code = chain.invoke({})
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return generated_code
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def syntax_focused_analysis(self, state: dict) -> str:
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template = """
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The current code has encountered a syntax error. Here are the details:
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Current Code:
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```python
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{generated_code}
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```
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Syntax Error:
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{errors}
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Please analyze in detail the syntax error and suggest a fix. Focus only on correcting the syntax issue while ensuring the code still meets the original requirements.
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Provide your analysis and suggestions for fixing the error. DO NOT generate any code in your response.
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"""
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prompt = PromptTemplate(template=template, input_variables=["generated_code", "errors"])
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chain = prompt | self.llm_model | StrOutputParser()
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return chain.invoke({
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"generated_code": state["generated_code"],
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"errors": state["errors"]["syntax"]
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})
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def syntax_focused_code_generation(self, state: dict, analysis: str) -> str:
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template = """
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Based on the following analysis of a syntax error, please generate the corrected code, following the suggested fix.:
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Error Analysis:
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{analysis}
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Original Code:
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```python
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{generated_code}
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```
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Generate the corrected code, applying the suggestions from the analysis. Output ONLY the corrected Python code, WITHOUT ANY ADDITIONAL TEXT.
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"""
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prompt = PromptTemplate(template=template, input_variables=["analysis", "generated_code"])
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chain = prompt | self.llm_model | StrOutputParser()
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return chain.invoke({
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"analysis": analysis,
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"generated_code": state["generated_code"]
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})
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def execution_focused_analysis(self, state: dict) -> str:
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template = """
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The current code has encountered an execution error. Here are the details:
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**Current Code**:
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```python
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{generated_code}
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```
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**Execution Error**:
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{errors}
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**HTML Code**:
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```html
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{html_code}
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```
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**HTML Structure Analysis**:
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{html_analysis}
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Please analyze the execution error and suggest a fix. Focus only on correcting the execution issue while ensuring the code still meets the original requirements and maintains correct syntax.
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The suggested fix should address the execution error and ensure the function can successfully extract the required data from the provided HTML structure. Be sure to be precise and specific in your analysis.
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Provide your analysis and suggestions for fixing the error. DO NOT generate any code in your response.
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"""
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prompt = PromptTemplate(template=template, input_variables=["generated_code", "errors", "html_code", "html_analysis"])
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chain = prompt | self.llm_model | StrOutputParser()
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return chain.invoke({
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"generated_code": state["generated_code"],
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"errors": state["errors"]["execution"],
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"html_code": state["html_code"],
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"html_analysis": state["html_analysis"]
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})
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def execution_focused_code_generation(self, state: dict, analysis: str) -> str:
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template = """
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Based on the following analysis of an execution error, please generate the corrected code:
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Error Analysis:
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{analysis}
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Original Code:
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```python
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{generated_code}
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```
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Generate the corrected code, applying the suggestions from the analysis. Output ONLY the corrected Python code, WITHOUT ANY ADDITIONAL TEXT.
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"""
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prompt = PromptTemplate(template=template, input_variables=["analysis", "generated_code"])
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chain = prompt | self.llm_model | StrOutputParser()
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return chain.invoke({
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"analysis": analysis,
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"generated_code": state["generated_code"]
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})
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def validation_focused_analysis(self, state: dict) -> str:
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template = """
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The current code's output does not match the required schema. Here are the details:
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Current Code:
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```python
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{generated_code}
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```
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Validation Errors:
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{errors}
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Required Schema:
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```json
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{json_schema}
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```
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Current Output:
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{execution_result}
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Please analyze the validation errors and suggest fixes. Focus only on correcting the output to match the required schema while ensuring the code maintains correct syntax and execution.
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Provide your analysis and suggestions for fixing the error. DO NOT generate any code in your response.
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"""
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prompt = PromptTemplate(template=template, input_variables=["generated_code", "errors", "json_schema", "execution_result"])
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chain = prompt | self.llm_model | StrOutputParser()
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return chain.invoke({
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"generated_code": state["generated_code"],
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"errors": state["errors"]["validation"],
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"json_schema": state["json_schema"],
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"execution_result": state["execution_result"]
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})
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def validation_focused_code_generation(self, state: dict, analysis: str) -> str:
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template = """
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Based on the following analysis of a validation error, please generate the corrected code:
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Error Analysis:
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{analysis}
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Original Code:
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```python
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{generated_code}
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```
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Required Schema:
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```json
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{json_schema}
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```
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Generate the corrected code, applying the suggestions from the analysis and ensuring the output matches the required schema. Output ONLY the corrected Python code, WITHOUT ANY ADDITIONAL TEXT.
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"""
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prompt = PromptTemplate(template=template, input_variables=["analysis", "generated_code", "json_schema"])
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chain = prompt | self.llm_model | StrOutputParser()
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return chain.invoke({
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"analysis": analysis,
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"generated_code": state["generated_code"],
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"json_schema": state["json_schema"]
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})
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def semantic_comparison(self, generated_result: Any, reference_result: Any) -> Dict[str, Any]:
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reference_result_dict = self.output_schema(**reference_result).dict()
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# Check if generated result and reference result are actually equal
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if are_content_equal(generated_result, reference_result_dict):
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return {
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"are_semantically_equivalent": True,
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"differences": [],
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"explanation": "The generated result and reference result are exactly equal."
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}
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response_schemas = [
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ResponseSchema(name="are_semantically_equivalent", description="Boolean indicating if the results are semantically equivalent"),
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ResponseSchema(name="differences", description="List of semantic differences between the results, if any"),
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ResponseSchema(name="explanation", description="Detailed explanation of the comparison and reasoning")
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]
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output_parser = StructuredOutputParser.from_response_schemas(response_schemas)
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template = """
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Compare the Generated Result with the Reference Result and determine if they are semantically equivalent:
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Generated Result:
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{generated_result}
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Reference Result (Correct Output):
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{reference_result}
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Analyze the content, structure, and meaning of both results. They should be considered semantically equivalent if they convey the same information, even if the exact wording or structure differs.
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If they are not semantically equivalent, identify what are the key differences in the Generated Result. The Reference Result should be considered the correct output, you need to pinpoint the problems in the Generated Result.
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{format_instructions}
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Human: Are the generated result and reference result semantically equivalent? If not, what are the key differences?
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Assistant: Let's analyze the two results carefully:
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"""
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prompt = PromptTemplate(
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template=template,
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input_variables=["generated_result", "reference_result"],
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partial_variables={"format_instructions": output_parser.get_format_instructions()}
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)
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chain = prompt | self.llm_model | output_parser
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return chain.invoke({
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"generated_result": json.dumps(generated_result, indent=2),
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"reference_result": json.dumps(reference_result_dict, indent=2)
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})
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def semantic_focused_analysis(self, state: dict, comparison_result: Dict[str, Any]) -> str:
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template = """
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The current code's output is semantically different from the reference answer. Here are the details:
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Current Code:
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```python
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{generated_code}
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```
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Semantic Differences:
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{differences}
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Comparison Explanation:
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{explanation}
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Please analyze these semantic differences and suggest how to modify the code to produce a result that is semantically equivalent to the reference answer. Focus on addressing the key differences while maintaining the overall structure and functionality of the code.
|
|
|
|
Provide your analysis and suggestions for fixing the semantic differences. DO NOT generate any code in your response.
|
|
"""
|
|
|
|
prompt = PromptTemplate(template=template, input_variables=["generated_code", "differences", "explanation"])
|
|
chain = prompt | self.llm_model | StrOutputParser()
|
|
return chain.invoke({
|
|
"generated_code": state["generated_code"],
|
|
"differences": json.dumps(comparison_result["differences"], indent=2),
|
|
"explanation": comparison_result["explanation"]
|
|
})
|
|
|
|
def semantic_focused_code_generation(self, state: dict, analysis: str) -> str:
|
|
template = """
|
|
Based on the following analysis of semantic differences, please generate the corrected code:
|
|
|
|
Semantic Analysis:
|
|
{analysis}
|
|
|
|
Original Code:
|
|
```python
|
|
{generated_code}
|
|
```
|
|
|
|
Generated Result:
|
|
{generated_result}
|
|
|
|
Reference Result:
|
|
{reference_result}
|
|
|
|
Generate the corrected code, applying the suggestions from the analysis to make the output semantically equivalent to the reference result. Output ONLY the corrected Python code, WITHOUT ANY ADDITIONAL TEXT.
|
|
"""
|
|
|
|
prompt = PromptTemplate(template=template, input_variables=["analysis", "generated_code", "generated_result", "reference_result"])
|
|
chain = prompt | self.llm_model | StrOutputParser()
|
|
return chain.invoke({
|
|
"analysis": analysis,
|
|
"generated_code": state["generated_code"],
|
|
"generated_result": json.dumps(state["execution_result"], indent=2),
|
|
"reference_result": json.dumps(state["reference_answer"], indent=2)
|
|
})
|
|
|
|
def syntax_check(self, code):
|
|
try:
|
|
ast.parse(code)
|
|
return True, "Syntax is correct."
|
|
except SyntaxError as e:
|
|
return False, f"Syntax error: {str(e)}"
|
|
|
|
def create_sandbox_and_execute(self, function_code):
|
|
# Create a sandbox environment
|
|
sandbox_globals = {
|
|
'BeautifulSoup': BeautifulSoup,
|
|
're': re,
|
|
'__builtins__': __builtins__,
|
|
}
|
|
|
|
old_stdout = sys.stdout
|
|
sys.stdout = StringIO()
|
|
|
|
try:
|
|
exec(function_code, sandbox_globals)
|
|
|
|
extract_data = sandbox_globals.get('extract_data')
|
|
|
|
if not extract_data:
|
|
raise NameError("Function 'extract_data' not found in the generated code.")
|
|
|
|
result = extract_data(self.raw_html)
|
|
|
|
return True, result
|
|
except Exception as e:
|
|
return False, f"Error during execution: {str(e)}"
|
|
finally:
|
|
sys.stdout = old_stdout
|
|
|
|
def validate_dict(self, data: dict, schema):
|
|
try:
|
|
validate(instance=data, schema=schema)
|
|
return True, None
|
|
except ValidationError as e:
|
|
errors = e.errors()
|
|
return False, errors
|
|
|
|
def extract_code(self, code: str) -> str:
|
|
pattern = r'```(?:python)?\n(.*?)```'
|
|
|
|
match = re.search(pattern, code, re.DOTALL)
|
|
|
|
return match.group(1) if match else code
|
|
|
|
|
|
|
|
def normalize_dict(d: Dict[str, Any]) -> Dict[str, Any]:
|
|
normalized = {}
|
|
for key, value in d.items():
|
|
if isinstance(value, str):
|
|
normalized[key] = value.lower().strip()
|
|
elif isinstance(value, dict):
|
|
normalized[key] = normalize_dict(value)
|
|
elif isinstance(value, list):
|
|
normalized[key] = normalize_list(value)
|
|
else:
|
|
normalized[key] = value
|
|
return normalized
|
|
|
|
def normalize_list(lst: List[Any]) -> List[Any]:
|
|
return [
|
|
normalize_dict(item) if isinstance(item, dict)
|
|
else normalize_list(item) if isinstance(item, list)
|
|
else item.lower().strip() if isinstance(item, str)
|
|
else item
|
|
for item in lst
|
|
]
|
|
|
|
def are_content_equal(generated_result: Dict[str, Any], reference_result: Dict[str, Any]) -> bool:
|
|
"""Compare two dictionaries for semantic equality."""
|
|
return normalize_dict(generated_result) == normalize_dict(reference_result) |