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# agent.py

import os
from dotenv import load_dotenv
from langgraph.graph import START, StateGraph, MessagesState
from langgraph.prebuilt import tools_condition
from langgraph.prebuilt import ToolNode
from langchain_google_genai import ChatGoogleGenerativeAI
from langchain_groq import ChatGroq
from langchain_huggingface import ChatHuggingFace, HuggingFaceEndpoint, HuggingFaceEmbeddings
from langchain_community.tools.tavily_search import TavilySearchResults
from langchain_community.document_loaders import WikipediaLoader
from langchain_community.utilities import WikipediaAPIWrapper
from langchain_community.document_loaders import ArxivLoader
#from langchain_community.vectorstores import SupabaseVectorStore
from langchain_core.messages import SystemMessage, HumanMessage
from langchain_core.tools import tool
from langchain.tools.retriever import create_retriever_tool
from supabase.client import Client, create_client
from sentence_transformers import SentenceTransformer
from langchain.embeddings.base import Embeddings
from typing import List
import numpy as np
import yaml

import pandas as pd
import uuid
import requests
import json
from langchain_core.documents import Document
from langchain_community.vectorstores import FAISS
from langchain_community.embeddings import HuggingFaceEmbeddings

from youtube_transcript_api import YouTubeTranscriptApi
from youtube_transcript_api._errors import TranscriptsDisabled, VideoUnavailable
import re

from langchain_community.document_loaders import TextLoader, PyMuPDFLoader
from docx import Document as DocxDocument
import openpyxl
from io import StringIO

from transformers import BertTokenizer, BertModel
import torch
import torch.nn.functional as F
from langchain.tools import Tool
from langchain.agents import initialize_agent, AgentType
import time

load_dotenv()

@tool
def multiply(a: int, b: int) -> int:
    """Multiply two numbers.
    Args:
        a: first int
        b: second int
    """
    return a * b

@tool
def add(a: int, b: int) -> int:
    """Add two numbers.
    
    Args:
        a: first int
        b: second int
    """
    return a + b

@tool
def subtract(a: int, b: int) -> int:
    """Subtract two numbers.
    
    Args:
        a: first int
        b: second int
    """
    return a - b

@tool
def divide(a: int, b: int) -> int:
    """Divide two numbers.
    
    Args:
        a: first int
        b: second int
    """
    if b == 0:
        raise ValueError("Cannot divide by zero.")
    return a / b

@tool
def modulus(a: int, b: int) -> int:
    """Get the modulus of two numbers.
    
    Args:
        a: first int
        b: second int
    """
    return a % b

@tool
def calculator(a: int, b: int, operation: str) -> float:
    """
    Perform a calculation between two numbers.

    Args:
        a: First number.
        b: Second number.
        operation: One of 'add', 'subtract', 'multiply', 'divide', 'modulus'.
    """
    operation = operation.lower()
    if operation == "add":
        return add(a, b)
    elif operation == "subtract":
        return subtract(a, b)
    elif operation == "multiply":
        return multiply(a, b)
    elif operation == "divide":
        return divide(a, b)
    elif operation == "modulus":
        return modulus(a, b)
    else:
        raise ValueError(f"Unsupported operation: {operation}")

@tool
def wiki_search(query: str) -> str:
    """Search Wikipedia for a query and return maximum 2 results.
    
    Args:
        query: The search query."""
    search_docs = WikipediaLoader(query=query, load_max_docs=2).load()
    formatted_search_docs = "\n\n---\n\n".join(
        [
            f'<Document source="{doc.metadata["source"]}" page="{doc.metadata.get("page", "")}"/>\n{doc.page_content}\n</Document>'
            for doc in search_docs
        ])
    return {"wiki_results": formatted_search_docs}


    
@tool
def wikidata_query(query: str) -> str:
    """
    Run a SPARQL query on Wikidata and return results.
    """
    endpoint_url = "https://query.wikidata.org/sparql"
    headers = {
        "Accept": "application/sparql-results+json"
    }
    response = requests.get(endpoint_url, headers=headers, params={"query": query})
    data = response.json()
    return json.dumps(data, indent=2)


@tool
def web_search(query: str) -> str:
    """Search Tavily for a query and return maximum 3 results.
    
    Args:
        query: The search query."""
    search_docs = TavilySearchResults(max_results=3).invoke(query=query)
    formatted_search_docs = "\n\n---\n\n".join(
        [
            f'<Document source="{doc.metadata["source"]}" page="{doc.metadata.get("page", "")}"/>\n{doc.page_content}\n</Document>'
            for doc in search_docs
        ])
    return {"web_results": formatted_search_docs}

@tool
def arvix_search(query: str) -> str:
    """Search Arxiv for a query and return maximum 3 result.
    
    Args:
        query: The search query."""
    search_docs = ArxivLoader(query=query, load_max_docs=3).load()
    formatted_search_docs = "\n\n---\n\n".join(
        [
            f'<Document source="{doc.metadata["source"]}" page="{doc.metadata.get("page", "")}"/>\n{doc.page_content[:1000]}\n</Document>'
            for doc in search_docs
        ])
    return {"arvix_results": formatted_search_docs}




@tool
def analyze_attachment(file_path: str) -> str:
    """
    Analyzes attachments including PY, PDF, TXT, DOCX, and XLSX files and returns text content.

    Args:
        file_path: Local path to the attachment.
    """
    if not os.path.exists(file_path):
        return f"File not found: {file_path}"

    try:
        ext = file_path.lower()

        if ext.endswith(".pdf"):
            loader = PyMuPDFLoader(file_path)
            documents = loader.load()
            content = "\n\n".join([doc.page_content for doc in documents])

        elif ext.endswith(".txt") or ext.endswith(".py"):
            # Both .txt and .py are plain text files
            with open(file_path, "r", encoding="utf-8") as file:
                content = file.read()

        elif ext.endswith(".docx"):
            doc = DocxDocument(file_path)
            content = "\n".join([para.text for para in doc.paragraphs])

        elif ext.endswith(".xlsx"):
            wb = openpyxl.load_workbook(file_path, data_only=True)
            content = ""
            for sheet in wb:
                content += f"Sheet: {sheet.title}\n"
                for row in sheet.iter_rows(values_only=True):
                    content += "\t".join([str(cell) if cell is not None else "" for cell in row]) + "\n"

        else:
            return "Unsupported file format. Please use PY, PDF, TXT, DOCX, or XLSX."

        return content[:3000]  # Limit output size for readability

    except Exception as e:
        return f"An error occurred while processing the file: {str(e)}"


@tool
def get_youtube_transcript(url: str) -> str:
    """
    Fetch transcript text from a YouTube video.
    
    Args:
        url (str): Full YouTube video URL.
    
    Returns:
        str: Transcript text as a single string.
    
    Raises:
        ValueError: If no transcript is available or URL is invalid.
    """
    try:
        # Extract video ID
        video_id = extract_video_id(url)
        transcript = YouTubeTranscriptApi.get_transcript(video_id)

        # Combine all transcript text
        full_text = " ".join([entry['text'] for entry in transcript])
        return full_text

    except (TranscriptsDisabled, VideoUnavailable) as e:
        raise ValueError(f"Transcript not available: {e}")
    except Exception as e:
        raise ValueError(f"Failed to fetch transcript: {e}")

@tool
def extract_video_id(url: str) -> str:
    """
    Extract the video ID from a YouTube URL.
    """
    match = re.search(r"(?:v=|youtu\.be/)([A-Za-z0-9_-]{11})", url)
    if not match:
        raise ValueError("Invalid YouTube URL")
    return match.group(1)




# -----------------------------
# Load configuration from YAML
# -----------------------------
with open("config.yaml", "r") as f:
    config = yaml.safe_load(f)

provider = config["provider"]
model_config = config["models"][provider]

#prompt_path = config["system_prompt_path"]
enabled_tool_names = config["tools"]


# -----------------------------
# Load system prompt
# -----------------------------
# load the system prompt from the file
with open("system_prompt.txt", "r", encoding="utf-8") as f:
    system_prompt = f.read()

# System message
sys_msg = SystemMessage(content=system_prompt)


# -----------------------------
# Map tool names to functions
# -----------------------------
tool_map = {
    "multiply": multiply,
    "add": add,
    "subtract": subtract,
    "divide": divide,
    "modulus": modulus,
    "wiki_search": wiki_search,
    "web_search": web_search,
    "arvix_search": arvix_search,
    "get_youtube_transcript": get_youtube_transcript,
    "extract_video_id": extract_video_id,
    "analyze_attachment": analyze_attachment,
    "wikidata_query": wikidata_query
    
}

tools = [tool_map[name] for name in enabled_tool_names]


# -------------------------------
# Step 2: Load the JSON file or tasks (Replace this part if you're loading tasks dynamically)
# -------------------------------
# Here we assume the tasks are already fetched from a URL or file.
# For now, using an example JSON array directly. Replace this with the actual loading logic.

tasks = [
    {
        "task_id": "8e867cd7-cff9-4e6c-867a-ff5ddc2550be",
        "question": "How many studio albums were published by Mercedes Sosa between 2000 and 2009 (included)? You can use the latest 2022 version of English Wikipedia.",
        "Level": "1",
        "file_name": ""
    },
    {
        "task_id": "a1e91b78-d3d8-4675-bb8d-62741b4b68a6",
        "question": "In the video https://www.youtube.com/watch?v=L1vXCYZAYYM, what is the highest number of bird species to be on camera simultaneously?",
        "Level": "1",
        "file_name": ""
    }
]

# -------------------------------
# Step 3: Create Documents from Each JSON Object
# -------------------------------
docs = []
for task in tasks:
    # Debugging: Print the keys of each task to ensure 'question' exists
    print(f"Keys in task: {task.keys()}")

    # Ensure the required field 'question' exists
    if 'question' not in task:
        print(f"Skipping task with missing 'question' field: {task}")
        continue

    content = task.get('question', "").strip()
    if not content:
        print(f"Skipping task with empty 'question': {task}")
        continue

    # Add unique ID to each document
    task['id'] = str(uuid.uuid4())

    # Create a document from the task data
    docs.append(Document(page_content=content, metadata=task))




# -------------------------------
# Step 4: Set up BERT Embeddings and FAISS VectorStore
# -------------------------------

# -----------------------------
# 1. Define Custom BERT Embedding Model
# -----------------------------
class BERTEmbeddings(Embeddings):
    def __init__(self, model_name='bert-base-uncased'):
        self.tokenizer = BertTokenizer.from_pretrained(model_name)
        self.model = BertModel.from_pretrained(model_name)
        self.model.eval()  # Set model to eval mode

    def embed_documents(self, texts):
        inputs = self.tokenizer(texts, return_tensors='pt', padding=True, truncation=True)
        with torch.no_grad():
            outputs = self.model(**inputs)
        embeddings = outputs.last_hidden_state.mean(dim=1)
        embeddings = F.normalize(embeddings, p=2, dim=1)  # Normalize for cosine similarity
        return embeddings.cpu().numpy()

    def embed_query(self, text):
        return self.embed_documents([text])[0]


# -----------------------------
# 2. Initialize Embedding Model
# -----------------------------
embedding_model = BERTEmbeddings()


# -----------------------------
# 3. Prepare Documents
# -----------------------------
docs = [
    Document(page_content="Mercedes Sosa released many albums between 2000 and 2009.", metadata={"id": 1}),
    Document(page_content="She was a prominent Argentine folk singer.", metadata={"id": 2}),
    Document(page_content="Her album 'Al Despertar' was released in 1998.", metadata={"id": 3}),
    Document(page_content="She continued releasing music well into the 2000s.", metadata={"id": 4}),
]


# -----------------------------
# 4. Create FAISS Vector Store
# -----------------------------
vector_store = FAISS.from_documents(docs, embedding_model)
vector_store.save_local("faiss_index")

# -----------------------------
# 5. Query & Filter Results (optional preview)
# -----------------------------
query = "How many albums did Mercedes Sosa release between 2000 and 2009?"
results = vector_store.similarity_search_with_score(query, k=5)
threshold = 0.75
filtered = [doc for doc, score in results if score < threshold]


print("\nπŸ“Š Retrieved Documents with Similarity Scores:")
filtered = []
for doc, score in results:
    print(f"πŸ”’ Score: {score:.4f}")
    print(f"πŸ“„ Content: {doc.page_content}")
    if score < threshold:
        filtered.append(doc)
        print("βœ… Accepted")
    else:
        print("❌ Rejected")
    print("-" * 80)


# -----------------------------
# 6. Create LangChain Retriever Tool
# -----------------------------
retriever = vector_store.as_retriever()

# -------------------------------
# Step 6: Create LangChain Tools
# -------------------------------
wiki_tool = WikipediaAPIWrapper()  # If it's a proper LangChain tool
calc_tool = calculator
file_tool = analyze_attachment
web_tool = web_search
arvix_tool = arvix_search
youtube_tool = get_youtube_transcript
video_tool = extract_video_id
analyze_tool = analyze_attachment
wikiq_tool = wikidata_query


# -------------------------------
# Step 7: Create the Planner-Agent Logic
# -------------------------------
# Define the agent tool set
from langchain.chat_models import ChatOpenAI
from langchain.agents import initialize_agent, AgentType

# Define the tools (as you've already done)
tools = [wiki_tool, calc_tool, file_tool, web_tool, arvix_tool, youtube_tool, video_tool, analyze_tool, wikiq_tool]

# Define the LLM before using it
llm = ChatOpenAI(temperature=0, model="gpt-4") # or "gpt-3.5-turbo"

# Create an agent using the planner, task classifier, and decision logic
agent = initialize_agent(
    tools=tools,
    llm=llm,
    agent_type=AgentType.ZERO_SHOT_REACT_DESCRIPTION,
    verbose=True
)



# -------------------------------
# Step 8: Use the Planner, Classifier, and Decision Logic
# -------------------------------

def process_question(question):
    # Step 1: Planner generates the task sequence
    tasks = planner(question)
    print(f"Tasks to perform: {tasks}")

    # Step 2: Classify the task (based on question)
    task_type = task_classifier(question)
    print(f"Task type: {task_type}")

    # Step 3: Use the classifier and planner to decide on the next task or node
    state = {"question": question, "last_response": ""}
    next_task = decide_task(state)
    print(f"Next task: {next_task}")

    # Step 4: Use node skipper logic (skip if needed)
    skip = node_skipper(state)
    if skip:
        print(f"Skipping to {skip}")
        return skip  # Or move directly to generating answer

    # Step 5: Execute task (with error handling)
    try:
        if task_type == "wiki_search":
            response = wiki_search_tool(question)
        elif task_type == "math":
            response = calculator_tool(question)
        else:
            response = "Default answer logic"
        
        # Step 6: Final response formatting
        final_response = generate_final_answer(state, {'wiki_search': response})
        return final_response
    
    except Exception as e:
        print(f"Error executing task: {e}")
        return "Sorry, I encountered an error processing your request."


# Run the process
question = "How many albums did Mercedes Sosa release between 2000 and 2009?"
response = process_question(question)
print("Final Response:", response)



question_retriever_tool = create_retriever_tool(
    retriever=retriever,
    name="Question_Search",
    description="A tool to retrieve documents related to a user's question."
)



def retriever(state: MessagesState):
    """Retriever node using similarity scores for filtering"""
    query = state["messages"][0].content
    results = vector_store.similarity_search_with_score(query, k=4)  # top 4 matches
    
    # Dynamically adjust threshold based on query complexity
    threshold = 0.75 if "who" in query else 0.8
    filtered = [doc for doc, score in results if score < threshold]

    # Provide a default message if no documents found
    if not filtered:
        example_msg = HumanMessage(content="No relevant documents found.")
    else:
        content = "\n\n".join(doc.page_content for doc in filtered)
        example_msg = HumanMessage(
            content=f"Here are relevant reference documents:\n\n{content}"
        )

    return {"messages": [sys_msg] + state["messages"] + [example_msg]}



tools = [
    multiply,
    add,
    subtract,
    divide,
    modulus,
    wiki_search,
    web_search,
    arvix_search,
]


def get_llm(provider: str, config: dict):
    if provider == "google":
        return ChatGoogleGenerativeAI(model=config["model"], temperature=config["temperature"])
    elif provider == "groq":
        return ChatGroq(model=config["model"], temperature=config["temperature"])
    elif provider == "huggingface":
        return ChatHuggingFace(
            llm=HuggingFaceEndpoint(url=config["url"], temperature=config["temperature"])
        )
    else:
        raise ValueError(f"Invalid provider: {provider}")


def generate_final_answer(state, tools_results):
    final_answer = ""
    
    # Concatenate results from each tool (wiki_search, calculator, etc.)
    for tool_name, result in tools_results.items():
        final_answer += f"{tool_name} result: {result}\n"
    
    return final_answer



# Build graph function
def build_graph():
    """Build the graph based on provider"""
    llm = get_llm(provider, model_config)
    llm_with_tools = llm.bind_tools(tools)

    # Node
    def assistant(state: MessagesState):
        """Assistant node"""
        return {"messages": [llm_with_tools.invoke(state["messages"])]}
    
    def retriever(state: MessagesState):
        user_query = state["messages"][0].content
        similar_docs = vector_store.similarity_search(user_query)
    
        if not similar_docs:
            print("No similar docs found in FAISS. Using wiki_search.")
            wiki_result = wiki_search.invoke(user_query)
            return {
                "messages": [
                    sys_msg,
                    state["messages"][0],
                    HumanMessage(content=f"Using Wikipedia search:\n\n{wiki_result['wiki_results']}")
                ]
            }
        else:
            return {
                "messages": [
                    sys_msg,
                    state["messages"][0],
                    HumanMessage(content=f"Reference question:\n\n{similar_docs[0].page_content}")
                ]
            }


    
    builder = StateGraph(MessagesState)
    builder.add_node("retriever", retriever)
    builder.add_node("assistant", assistant)
    builder.add_node("tools", ToolNode(tools))
    builder.add_edge(START, "retriever")
    builder.add_edge("retriever", "assistant")
    builder.add_conditional_edges(
        "assistant",
        tools_condition,
    )
    builder.add_edge("tools", "assistant")

    # Compile graph
    return builder.compile()