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| from langchain_core.prompts import ChatPromptTemplate | |
| from langchain_openai import ChatOpenAI | |
| from langchain_core.messages import HumanMessage | |
| import os | |
| import pandas as pd | |
| # Load OpenRouter API Key | |
| #openrouter_api_key = os.getenv("API_MV") | |
| model = ChatOpenAI( | |
| openai_api_key="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", # Use OpenRouter API key | |
| model="google/gemini-2.0-flash-exp:free", # Specify Qwen VL Plus model | |
| base_url="https://openrouter.ai/api/v1" # OpenRouter API URL | |
| ) | |
| # Create a chat prompt template | |
| template = ( | |
| "You are tasked with extracting specific information from the following text content: {dom_content}. " | |
| "Please follow these instructions carefully:\n\n" | |
| "1. **Task:** Extract data from the provided text that matches the description: {parse_description}.\n" | |
| "2. **Output Format:** Return the extracted data ONLY as one or more Markdown tables. Each table MUST be correctly formatted.\n" | |
| "3. **Markdown Table Format:** Each table must adhere to the following Markdown format:\n" | |
| " - Start with a header row, clearly labeling each column, separated by pipes (|).\n" | |
| " - Follow the header row with an alignment row, using hyphens (-) to indicate column alignment (e.g., --- for left alignment).\n" | |
| " - Subsequent rows should contain the data, with cells aligned according to the alignment row.\n" | |
| " - Use pipes (|) to separate columns in each data row.\n" | |
| "4. **No Explanations:** Do not include any introductory or explanatory text before or after the table(s).\n" | |
| "5. **Empty Response:** If no information matches the description, return an empty string ('').\n" | |
| "6. **Multiple Tables:** If the text contains multiple tables matching the description, return each table separately, following the Markdown format for each.\n" | |
| "7. **Accuracy:** The extracted data must be accurate and reflect the information in the provided text.\n" | |
| ) | |
| # Function to parse and extract information from the chunks | |
| def parse(dom_chunks, parse_description): | |
| prompt = ChatPromptTemplate.from_template(template) | |
| chain = prompt | model | |
| parsed_results = [] | |
| # Loop through the chunks and parse | |
| for i, chunk in enumerate(dom_chunks, start=1): | |
| response = chain.invoke({"dom_content": chunk, "parse_description": parse_description}) | |
| # Extract the content from AIMessage and add it to the results | |
| print(f"Parsed batch {i} of {len(dom_chunks)}") | |
| parsed_results.append(response.content) # Ensure content is extracted properly | |
| # Return the parsed results as a single string | |
| return "\n".join(parsed_results) | |
| def merge_tables_with_llm(tables, parse_description): | |
| """Merges a list of Pandas DataFrames into a single Markdown table using LLM.""" | |
| from langchain_core.prompts import ChatPromptTemplate | |
| from langchain_openai import ChatOpenAI | |
| # Convert DataFrames to Markdown strings | |
| table_strings = [table.to_markdown(index=False) for table in tables] | |
| # Create a prompt for the LLM | |
| merge_prompt = ( | |
| "You are tasked with merging the following Markdown tables into a single, comprehensive Markdown table.\n" | |
| "The tables contain information related to: {parse_description}.\n" | |
| "Please follow these instructions carefully:\n\n" | |
| "1. **Task:** Merge the data from the following tables into a single table that matches the description: {parse_description}.\n" | |
| "2. **Output Format:** Return the merged data ONLY as a single Markdown table. The table MUST be correctly formatted.\n" | |
| "3. **Markdown Table Format:** The table must adhere to the following Markdown format:\n" | |
| " - Start with a header row, clearly labeling each column, separated by pipes (|).\n" | |
| " - Follow the header row with an alignment row, using hyphens (-) to indicate column alignment (e.g., --- for left alignment).\n" | |
| " - Subsequent rows should contain the data, with cells aligned according to the alignment row.\n" | |
| " - Use pipes (|) to separate columns in each data row.\n" | |
| "4. **No Explanations:** Do not include any introductory or explanatory text before or after the table.\n" | |
| "5. **Empty Response:** If no information matches the description, return an empty string ('') if no data can be merged.\n" | |
| "6. **Duplicate Columns:** If there are duplicate columns, rename them to be unique.\n" | |
| "7. **Missing Values:** If there are missing values, fill them with 'N/A'.\n\n" | |
| "Here are the tables:\n\n" + "\n\n".join(table_strings) + | |
| "\n\nReturn the merged table in Markdown format:" | |
| ) | |
| # Invoke the LLM | |
| message = HumanMessage(content=merge_prompt) | |
| response = model.invoke([message]) | |
| return response.content |