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import os
import json
import numpy as np
import faiss
import torch
import torch.nn as nn
from google.cloud import storage
from transformers import AutoTokenizer, AutoModel
import openai
import textwrap
import unicodedata
import streamlit as st
from utils import setup_gcp_auth, setup_openai_auth
import gc  # Added for explicit garbage collection

# Force model to CPU for stability
os.environ["CUDA_VISIBLE_DEVICES"] = ""

# Create a function to initialize session state
def initialize_session_state():
    if 'model_initialized' not in st.session_state:
        st.session_state.model_initialized = False
        st.session_state.model = None
        st.session_state.tokenizer = None
        st.session_state.device = torch.device("cpu")
        st.session_state.data_loaded = False
        print("Initialized session state variables")

# Call the initialization function right away
initialize_session_state()

# Load GCP authentication from utility function
def setup_gcp_client():
    try:
        credentials = setup_gcp_auth()
        storage_client = storage.Client(credentials=credentials)
        bucket_name = "indian_spiritual-1"
        bucket = storage_client.bucket(bucket_name)
        print("βœ… GCP client initialized successfully")
        return bucket
    except Exception as e:
        print(f"❌ GCP client initialization error: {str(e)}")
        return None

# Setup OpenAI authentication
def setup_openai_client():
    try:
        setup_openai_auth()
        print("βœ… OpenAI client initialized successfully")
        return True
    except Exception as e:
        print(f"❌ OpenAI client initialization error: {str(e)}")
        return False

# GCS Paths
metadata_file_gcs = "metadata/metadata.jsonl"
embeddings_file_gcs = "processed/embeddings/all_embeddings.npy"
faiss_index_file_gcs = "processed/indices/faiss_index.faiss"
text_chunks_file_gcs = "processed/chunks/text_chunks.txt"

# Local Paths
local_embeddings_file = "all_embeddings.npy"
local_faiss_index_file = "faiss_index.faiss"
local_text_chunks_file = "text_chunks.txt"
local_metadata_file = "metadata.jsonl"

def load_model():
    try:
        # Check if model is already loaded
        if st.session_state.model is not None and st.session_state.tokenizer is not None:
            print("Model already loaded, reusing existing instance")
            return st.session_state.tokenizer, st.session_state.model

        # Force model to CPU - more stable than GPU for this use case
        os.environ["CUDA_VISIBLE_DEVICES"] = ""
        
        print("Loading tokenizer...")
        tokenizer = AutoTokenizer.from_pretrained("intfloat/e5-small-v2")
        
        print("Loading model...")
        model = AutoModel.from_pretrained(
            "intfloat/e5-small-v2",
            torch_dtype=torch.float16  # Use half precision
        )
        
        # Move model to CPU explicitly
        model = model.to('cpu')
        model.eval()
        torch.set_grad_enabled(False)
        
        # Store in session state
        st.session_state.tokenizer = tokenizer
        st.session_state.model = model
        st.session_state.model_initialized = True
        
        print("βœ… Model loaded successfully")
        
        return tokenizer, model
    except Exception as e:
        print(f"❌ Error loading model: {str(e)}")
        # Return None values instead of raising to avoid crashing
        return None, None

def download_file_from_gcs(bucket, gcs_path, local_path):
    """Download a file from GCS to local storage."""
    try:
        # Check if file already exists locally
        if os.path.exists(local_path):
            print(f"File already exists locally: {local_path}")
            return True
            
        blob = bucket.blob(gcs_path)
        blob.download_to_filename(local_path)
        print(f"βœ… Downloaded {gcs_path} β†’ {local_path}")
        return True
    except Exception as e:
        print(f"❌ Error downloading {gcs_path}: {str(e)}")
        return False

def load_data_files():
    # Check if already loaded in session state
    if hasattr(st.session_state, 'faiss_index') and st.session_state.faiss_index is not None:
        print("Using cached data files from session state")
        return st.session_state.faiss_index, st.session_state.text_chunks, st.session_state.metadata_dict
    
    # Initialize GCP and OpenAI clients
    bucket = setup_gcp_client()
    openai_initialized = setup_openai_client()
    
    if not bucket or not openai_initialized:
        print("Failed to initialize required services")
        return None, None, None
    
    # Download necessary files
    success = True
    success &= download_file_from_gcs(bucket, faiss_index_file_gcs, local_faiss_index_file)
    success &= download_file_from_gcs(bucket, text_chunks_file_gcs, local_text_chunks_file)
    success &= download_file_from_gcs(bucket, metadata_file_gcs, local_metadata_file)
    
    if not success:
        print("Failed to download required files")
        return None, None, None
    
    # Load FAISS index
    try:
        faiss_index = faiss.read_index(local_faiss_index_file)
    except Exception as e:
        print(f"❌ Error loading FAISS index: {str(e)}")
        return None, None, None
    
    # Load text chunks
    try:
        text_chunks = {}  # {ID -> (Title, Author, Text)}
        with open(local_text_chunks_file, "r", encoding="utf-8") as f:
            for line in f:
                parts = line.strip().split("\t")
                if len(parts) == 4:
                    text_chunks[int(parts[0])] = (parts[1], parts[2], parts[3])
    except Exception as e:
        print(f"❌ Error loading text chunks: {str(e)}")
        return None, None, None
    
    # Load metadata.jsonl for publisher information
    try:
        metadata_dict = {}
        with open(local_metadata_file, "r", encoding="utf-8") as f:
            for line in f:
                item = json.loads(line)
                metadata_dict[item["Title"]] = item  # Store for easy lookup
    except Exception as e:
        print(f"❌ Error loading metadata: {str(e)}")
        return None, None, None
    
    print(f"βœ… FAISS index and text chunks loaded. {len(text_chunks)} passages available.")
    
    # Store in session state
    st.session_state.faiss_index = faiss_index
    st.session_state.text_chunks = text_chunks
    st.session_state.metadata_dict = metadata_dict
    st.session_state.data_loaded = True
    
    return faiss_index, text_chunks, metadata_dict

def average_pool(last_hidden_states, attention_mask):
    """Average pooling for sentence embeddings."""
    last_hidden = last_hidden_states.masked_fill(~attention_mask[..., None].bool(), 0.0)
    return last_hidden.sum(dim=1) / attention_mask.sum(dim=1)[..., None]

query_embedding_cache = {}

def get_embedding(text):
    if text in query_embedding_cache:
        return query_embedding_cache[text]

    try:
        # Ensure model initialization
        if not hasattr(st.session_state, 'model') or st.session_state.model is None:
            tokenizer, model = load_model()
            if model is None:
                return np.zeros((1, 384), dtype=np.float32)
        else:
            tokenizer, model = st.session_state.tokenizer, st.session_state.model
            
        # Prepare text
        input_text = f"query: {text}" if len(text) < 512 else f"passage: {text}"
        
        # Explicitly specify truncation parameters
        inputs = tokenizer(
            input_text,
            padding=True,
            truncation=True,
            return_tensors="pt",
            max_length=512,
            return_attention_mask=True
        )
        
        # Move to CPU explicitly
        inputs = {k: v.to('cpu') for k, v in inputs.items()}
        
        with torch.no_grad():
            outputs = model(**inputs)
            embeddings = average_pool(outputs.last_hidden_state, inputs['attention_mask'])
            embeddings = nn.functional.normalize(embeddings, p=2, dim=1)
            embeddings = embeddings.detach().cpu().numpy()
            
        # Explicitly clean up
        del outputs, inputs
        gc.collect()
        torch.cuda.empty_cache() if torch.cuda.is_available() else None
        
        query_embedding_cache[text] = embeddings
        return embeddings
    except Exception as e:
        print(f"❌ Embedding error: {str(e)}")
        return np.zeros((1, 384), dtype=np.float32)

def retrieve_passages(query, faiss_index, text_chunks, metadata_dict, top_k=5, similarity_threshold=0.5):
    """Retrieve top-k most relevant passages using FAISS with metadata."""
    try:
        print(f"\nπŸ” Retrieving passages for query: {query}")
        query_embedding = get_embedding(query)
        distances, indices = faiss_index.search(query_embedding, top_k * 2)

        print(f"Found {len(distances[0])} potential matches")
        retrieved_passages = []
        retrieved_sources = []
        cited_titles = set()

        for dist, idx in zip(distances[0], indices[0]):
            print(f"Distance: {dist:.4f}, Index: {idx}")
            if idx in text_chunks and dist >= similarity_threshold:
                title_with_txt, author, text = text_chunks[idx]

                # Normalize title and remove .txt
                clean_title = title_with_txt.replace(".txt", "") if title_with_txt.endswith(".txt") else title_with_txt
                clean_title = unicodedata.normalize("NFC", clean_title)

                # Ensure unique citations
                if clean_title in cited_titles:
                    continue  

                # Get metadata safely
                metadata_entry = metadata_dict.get(clean_title, {})
                author = metadata_entry.get("Author", "Unknown")
                publisher = metadata_entry.get("Publisher", "Unknown")

                cited_titles.add(clean_title)

                retrieved_passages.append(text)
                retrieved_sources.append((clean_title, author, publisher))  

                if len(retrieved_passages) == top_k:
                    break

        print(f"Retrieved {len(retrieved_passages)} passages")
        return retrieved_passages, retrieved_sources
    except Exception as e:
        print(f"❌ Error in retrieve_passages: {str(e)}")
        return [], []

def answer_with_llm(query, context=None, word_limit=100):
    """
    Generate an answer using OpenAI GPT model with formatted citations.
    """
    try:
        if context:
            formatted_contexts = []
            total_chars = 0
            max_context_chars = 4000  

            for (title, author, publisher), text in context:
                remaining_space = max(0, max_context_chars - total_chars)
                excerpt_len = min(150, remaining_space)

                if excerpt_len > 50:
                    excerpt = text[:excerpt_len].strip() + "..." if len(text) > excerpt_len else text
                    formatted_context = f"[{title} by {author}, Published by {publisher}] {excerpt}"
                    formatted_contexts.append(formatted_context)
                    total_chars += len(formatted_context)

                if total_chars >= max_context_chars:
                    break

            formatted_context = "\n".join(formatted_contexts)
        else:
            formatted_context = "No relevant information available."

        # System message
        system_message = (
            "You are an AI specialized in Indian spiritual texts. "
            "Answer based on context, summarizing ideas rather than quoting verbatim. "
            "Ensure proper citation and do not include direct excerpts."
        )

        user_message = f"""
        Context:
        {formatted_context}
        Question:
        {query}
        """

        response = openai.chat.completions.create(
            model="gpt-3.5-turbo",
            messages=[
                {"role": "system", "content": system_message},
                {"role": "user", "content": user_message}
            ],
            max_tokens=200,
            temperature=0.7
        )

        answer = response.choices[0].message.content.strip()

        # Enforce word limit
        words = answer.split()
        if len(words) > word_limit:
            answer = " ".join(words[:word_limit])
            if not answer.endswith((".", "!", "?")):
                answer += "."

        return answer

    except Exception as e:
        print(f"❌ LLM API error: {str(e)}")
        return "I apologize, but I'm unable to answer at the moment."

def format_citations(sources):
    """Format citations to display each one on a new line with a full stop if needed."""
    formatted_citations = []
    for title, author, publisher in sources:
        # Check if the publisher already ends with a period, question mark, or exclamation mark
        if publisher.endswith(('.', '!', '?')):
            formatted_citations.append(f"πŸ“š {title} by {author}, Published by {publisher}")
        else:
            formatted_citations.append(f"πŸ“š {title} by {author}, Published by {publisher}.")
    
    return "\n".join(formatted_citations)

def process_query(query, top_k=5, word_limit=100):
    """Process a query through the RAG pipeline with proper formatting."""
    print(f"\nπŸ” Processing query: {query}")
    
    # Load data files if not already loaded
    faiss_index, text_chunks, metadata_dict = load_data_files()
    
    # Check if data loaded successfully
    if faiss_index is None or text_chunks is None or metadata_dict is None:
        return {
            "query": query, 
            "answer_with_rag": "⚠️ System error: Data files not loaded properly.", 
            "citations": "No citations available."
        }

    retrieved_context, retrieved_sources = retrieve_passages(
        query, 
        faiss_index, 
        text_chunks, 
        metadata_dict,
        top_k=top_k
    )
    
    sources = format_citations(retrieved_sources) if retrieved_sources else "No citation available."

    if retrieved_context:
        context_with_sources = list(zip(retrieved_sources, retrieved_context))
        llm_answer_with_rag = answer_with_llm(query, context_with_sources, word_limit=word_limit)
    else:
        llm_answer_with_rag = "⚠️ No relevant context found."

    return {"query": query, "answer_with_rag": llm_answer_with_rag, "citations": sources}