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"""
Streamlit Dashboard for DLRM Book Recommendation System
Simple interface for DLRM-based book recommendations
"""

import streamlit as st
import pandas as pd
import numpy as np
# import torch
import pickle
import os
import sys
from typing import Dict, List, Tuple, Optional
import warnings
warnings.filterwarnings('ignore')

# Try to import DLRM components
try:
    sys.path.append('.')
    from dlrm_inference import DLRMBookRecommender, load_dlrm_recommender
    DLRM_AVAILABLE = True
except ImportError as e:
    DLRM_AVAILABLE = False
    st.error(f"DLRM components not available: {e}")

# Page configuration
st.set_page_config(
    page_title="DLRM Book Recommendations",
    page_icon="πŸ“š",
    layout="wide",
    initial_sidebar_state="expanded"
)

# Custom CSS
st.markdown("""
<style>
    .main-header {
        font-size: 3rem;
        color: #1f77b4;
        text-align: center;
        margin-bottom: 2rem;
    }
    .metric-card {
        background-color: #f0f2f6;
        padding: 1rem;
        border-radius: 0.5rem;
        border-left: 5px solid #1f77b4;
    }
    .dlrm-explanation {
        background-color: #e8f4fd;
        padding: 1rem;
        border-radius: 0.5rem;
        border-left: 4px solid #0066cc;
        margin: 1rem 0;
    }
    .book-card {
        background-color: #ffffff;
        padding: 1rem;
        border-radius: 0.5rem;
        border: 1px solid #e1e5eb;
        margin-bottom: 1rem;
    }
</style>
""", unsafe_allow_html=True)

@st.cache_data
def load_data():
    """Load and cache the book data"""
    try:
        books_df = pd.read_csv('Books.csv', encoding='latin-1', low_memory=False)
        users_df = pd.read_csv('Users.csv', encoding='latin-1', low_memory=False)
        ratings_df = pd.read_csv('Ratings.csv', encoding='latin-1', low_memory=False)
        
        # Clean column names
        books_df.columns = books_df.columns.str.replace('"', '')
        users_df.columns = users_df.columns.str.replace('"', '')
        ratings_df.columns = ratings_df.columns.str.replace('"', '')
        
        return books_df, users_df, ratings_df
    except Exception as e:
        st.error(f"Error loading data: {e}")
        return None, None, None

@st.cache_resource
def load_dlrm_model():
    """Load and cache the DLRM model"""
    if not DLRM_AVAILABLE:
        return None
    
    try:
        recommender = load_dlrm_recommender("file")
        return recommender
    except Exception as e:
        st.error(f"Error loading DLRM model: {e}")
        return None

def display_book_info(book_isbn, books_df, show_rating=None):
    """Display book information with actual book cover"""
    book_info = books_df[books_df['ISBN'] == book_isbn]
    
    if len(book_info) == 0:
        st.write(f"Book with ISBN {book_isbn} not found")
        return
    
    book = book_info.iloc[0]
    
    col1, col2 = st.columns([1, 3])
    
    with col1:
        # Try to display actual book cover from Image-URL-M
        image_url = book.get('Image-URL-M', '')
        
        if image_url and pd.notna(image_url) and str(image_url) != 'nan':
            try:
                # Clean the URL (sometimes there are issues with Amazon URLs)
                clean_url = str(image_url).strip()
                if clean_url and 'http' in clean_url:
                    st.image(clean_url, width=150, caption="πŸ“š")
                else:
                    # Fallback to placeholder
                    st.image("https://via.placeholder.com/150x200?text=πŸ“š&color=1f77b4&bg=f0f2f6", width=150)
            except Exception as e:
                # If image loading fails, show placeholder
                st.image("https://via.placeholder.com/150x200?text=πŸ“š&color=1f77b4&bg=f0f2f6", width=150)
                st.caption("⚠️ Cover unavailable")
        else:
            # Show placeholder if no image URL
            st.image("https://via.placeholder.com/150x200?text=πŸ“š&color=1f77b4&bg=f0f2f6", width=150)
            st.caption("πŸ“š No cover")
    
    with col2:
        st.markdown(f"**{book['Book-Title']}**")
        st.write(f"*by {book['Book-Author']}*")
        st.write(f"πŸ“… Published: {book.get('Year-Of-Publication', 'Unknown')}")
        st.write(f"🏒 Publisher: {book.get('Publisher', 'Unknown')}")
        st.write(f"πŸ“– ISBN: {book['ISBN']}")
        
        if show_rating is not None:
            st.markdown(f"**🎯 DLRM Score: {show_rating:.4f}**")

def main():
    # Header
    st.markdown('<h1 class="main-header">πŸ“š DLRM Book Recommendation System</h1>', unsafe_allow_html=True)
    st.markdown("### Deep Learning Recommendation Model for Personalized Book Suggestions")
    st.markdown("---")
    
    if not DLRM_AVAILABLE:
        st.error("DLRM components are not available. Please ensure TorchRec is properly installed.")
        st.info("To install TorchRec: `pip install torchrec`")
        return
    
    # Load data
    with st.spinner("Loading book data..."):
        books_df, users_df, ratings_df = load_data()
    
    if books_df is None:
        st.error("Failed to load data. Please check if CSV files are available.")
        return
    
    # Sidebar info
    st.sidebar.title("πŸ“Š Dataset Information")
    st.sidebar.metric("πŸ“š Books", f"{len(books_df):,}")
    st.sidebar.metric("πŸ‘₯ Users", f"{len(users_df):,}")
    st.sidebar.metric("⭐ Ratings", f"{len(ratings_df):,}")
    
    # Load DLRM model
    with st.spinner("Loading DLRM model..."):
        recommender = load_dlrm_model()
    
    if recommender is None or recommender.model is None:
        st.error("❌ DLRM model not available")
        st.info("Please run the training script first: `python train_dlrm_books.py`")
        
        st.markdown("### Available Options:")
        st.markdown("1. **Train DLRM Model**: Run `python train_dlrm_books.py`")
        st.markdown("2. **Prepare Data**: Run `python dlrm_book_recommender.py`")
        st.markdown("3. **Check Files**: Ensure preprocessing files exist")
        
        return
    
    st.success("βœ… DLRM model loaded successfully!")
    
    # Model info
    st.sidebar.markdown("---")
    st.sidebar.subheader("πŸ€– DLRM Model Info")
    if recommender.preprocessing_info:
        st.sidebar.write(f"Dense features: {len(recommender.dense_cols)}")
        st.sidebar.write(f"Categorical features: {len(recommender.cat_cols)}")
        st.sidebar.write(f"Embedding dim: 64")
    
    # Main interface
    tab1, tab2, tab3, tab4 = st.tabs(["🎯 Get Recommendations", "πŸ” Test Predictions", "πŸ“Š Model Analysis", "πŸ“Έ Book Gallery"])
    
    with tab1:
        st.header("🎯 DLRM Book Recommendations")
        st.info("Get personalized book recommendations using the trained DLRM model")
        
        # User selection
        col1, col2 = st.columns([2, 1])
        
        with col1:
            user_ids = sorted(users_df['User-ID'].unique())
            selected_user_id = st.selectbox("Select a user", user_ids[:1000])  # Limit for performance
        
        with col2:
            num_recommendations = st.slider("Number of recommendations", 5, 20, 10)
        
        # Show user info
        user_info = users_df[users_df['User-ID'] == selected_user_id]
        if len(user_info) > 0:
            user = user_info.iloc[0]
            st.markdown(f"**User Info**: Age: {user.get('Age', 'Unknown')}, Location: {user.get('Location', 'Unknown')}")
        
        # User's reading history
        user_ratings = ratings_df[ratings_df['User-ID'] == selected_user_id]
        if len(user_ratings) > 0:
            with st.expander(f"πŸ“– User's Reading History ({len(user_ratings)} books)", expanded=False):
                top_rated = user_ratings.sort_values('Book-Rating', ascending=False).head(10)
                for _, rating in top_rated.iterrows():
                    book_info = books_df[books_df['ISBN'] == rating['ISBN']]
                    if len(book_info) > 0:
                        book = book_info.iloc[0]
                        st.write(f"β€’ **{book['Book-Title']}** by {book['Book-Author']} - {rating['Book-Rating']}/10 ⭐")
        
        if st.button("πŸš€ Get DLRM Recommendations", type="primary"):
            with st.spinner("πŸ€– DLRM is analyzing user preferences..."):
                
                # Get candidate books (popular books not rated by user)
                user_rated_books = set(user_ratings['ISBN']) if len(user_ratings) > 0 else set()
                
                # Get popular books as candidates
                book_popularity = ratings_df.groupby('ISBN').size().sort_values(ascending=False)
                candidate_books = [isbn for isbn in book_popularity.head(100).index if isbn not in user_rated_books]
                
                if len(candidate_books) < num_recommendations:
                    candidate_books = book_popularity.head(200).index.tolist()
                
                # Get recommendations
                recommendations = recommender.get_user_recommendations(
                    user_id=selected_user_id,
                    candidate_books=candidate_books,
                    k=num_recommendations
                )
            
            if recommendations:
                st.success(f"Generated {len(recommendations)} DLRM recommendations!")
                
                st.subheader("🎯 DLRM Recommendations")
                
                for i, (book_isbn, score) in enumerate(recommendations, 1):
                    book_info = books_df[books_df['ISBN'] == book_isbn]
                    if len(book_info) > 0:
                        with st.expander(f"{i}. Recommendation (DLRM Score: {score:.4f})", expanded=(i <= 3)):
                            display_book_info(book_isbn, books_df, show_rating=score)
                            
                            # Additional book stats
                            book_ratings = ratings_df[ratings_df['ISBN'] == book_isbn]
                            if len(book_ratings) > 0:
                                avg_rating = book_ratings['Book-Rating'].mean()
                                num_ratings = len(book_ratings)
                                
                                st.markdown('<div class="dlrm-explanation">', unsafe_allow_html=True)
                                st.markdown("**πŸ“Š Book Statistics:**")
                                st.write(f"Average Rating: {avg_rating:.1f}/10 from {num_ratings} readers")
                                st.write(f"DLRM Confidence: {score:.1%}")
                                st.markdown('</div>', unsafe_allow_html=True)
                    else:
                        st.write(f"Book with ISBN {book_isbn} not found in database")
            else:
                st.warning("No recommendations generated")
    
    with tab2:
        st.header("πŸ” Test DLRM Predictions")
        st.info("Test how well DLRM predicts actual user ratings")
        
        col1, col2 = st.columns(2)
        
        with col1:
            test_user_id = st.selectbox("Select user for testing", user_ids[:500], key="test_user")
        
        with col2:
            test_mode = st.radio("Test mode", ["Random books", "User's actual books"])
        
        if st.button("πŸ§ͺ Test Predictions", type="secondary"):
            with st.spinner("Testing DLRM predictions..."):
                
                if test_mode == "User's actual books":
                    # Test on user's actual rated books
                    user_test_ratings = ratings_df[ratings_df['User-ID'] == test_user_id].sample(min(10, len(user_ratings)))
                    
                    if len(user_test_ratings) > 0:
                        st.subheader("🎯 DLRM vs Actual Ratings")
                        
                        predictions = []
                        actuals = []
                        
                        for _, rating in user_test_ratings.iterrows():
                            book_isbn = rating['ISBN']
                            actual_rating = rating['Book-Rating']
                            
                            # Get DLRM prediction
                            dlrm_score = recommender.predict_rating(test_user_id, book_isbn)
                            
                            predictions.append(dlrm_score)
                            actuals.append(actual_rating >= 6)  # Convert to binary
                            
                            # Display comparison
                            book_info = books_df[books_df['ISBN'] == book_isbn]
                            if len(book_info) > 0:
                                book = book_info.iloc[0]
                                
                                col1, col2, col3 = st.columns([2, 1, 1])
                                with col1:
                                    st.write(f"**{book['Book-Title']}**")
                                    st.write(f"*by {book['Book-Author']}*")
                                
                                with col2:
                                    st.metric("Actual Rating", f"{actual_rating}/10")
                                
                                with col3:
                                    st.metric("DLRM Score", f"{dlrm_score:.3f}")
                        
                        # Calculate accuracy
                        if predictions and actuals:
                            # Convert DLRM scores to binary predictions
                            binary_preds = [1 if p > 0.5 else 0 for p in predictions]
                            accuracy = sum(p == a for p, a in zip(binary_preds, actuals)) / len(actuals)
                            
                            st.markdown("---")
                            st.success(f"🎯 DLRM Accuracy: {accuracy:.1%}")
                            
                            # Show correlation
                            actual_numeric = [rating['Book-Rating'] for _, rating in user_test_ratings.iterrows()]
                            correlation = np.corrcoef(predictions, actual_numeric)[0, 1] if len(predictions) > 1 else 0
                            st.info(f"πŸ“Š Correlation with actual ratings: {correlation:.3f}")
                    
                    else:
                        st.warning("No ratings found for this user")
                
                else:
                    # Test on random books
                    random_books = books_df.sample(10)['ISBN'].tolist()
                    
                    st.subheader("🎲 Random Book Predictions")
                    
                    for book_isbn in random_books:
                        dlrm_score = recommender.predict_rating(test_user_id, book_isbn)
                        
                        book_info = books_df[books_df['ISBN'] == book_isbn]
                        if len(book_info) > 0:
                            book = book_info.iloc[0]
                            
                            col1, col2 = st.columns([3, 1])
                            with col1:
                                st.write(f"**{book['Book-Title']}** by *{book['Book-Author']}*")
                            
                            with col2:
                                st.metric("DLRM Score", f"{dlrm_score:.4f}")
    
    with tab3:
        st.header("πŸ“Š DLRM Model Analysis")
        st.info("Analysis of the DLRM model performance and characteristics")
        
        # Model architecture info
        if recommender and recommender.preprocessing_info:
            col1, col2 = st.columns(2)
            
            with col1:
                st.subheader("πŸ—οΈ Model Architecture")
                st.write(f"**Dense Features ({len(recommender.dense_cols)}):**")
                for col in recommender.dense_cols:
                    st.write(f"β€’ {col}")
                
                st.write(f"**Categorical Features ({len(recommender.cat_cols)}):**")
                for i, col in enumerate(recommender.cat_cols):
                    st.write(f"β€’ {col}: {recommender.emb_counts[i]} embeddings")
            
            with col2:
                st.subheader("πŸ“ˆ Dataset Statistics")
                total_samples = recommender.preprocessing_info.get('total_samples', 0)
                positive_rate = recommender.preprocessing_info.get('positive_rate', 0)
                
                st.metric("Total Samples", f"{total_samples:,}")
                st.metric("Positive Rate", f"{positive_rate:.1%}")
                st.metric("Train Samples", f"{recommender.preprocessing_info.get('train_samples', 0):,}")
                st.metric("Validation Samples", f"{recommender.preprocessing_info.get('val_samples', 0):,}")
                st.metric("Test Samples", f"{recommender.preprocessing_info.get('test_samples', 0):,}")
        
        # Feature importance analysis
        st.subheader("πŸ” Feature Analysis")
        
        if st.button("Analyze Feature Importance"):
            with st.spinner("Analyzing feature importance..."):
                
                # Sample some users and books
                sample_users = users_df['User-ID'].sample(20).tolist()
                sample_books = books_df['ISBN'].sample(20).tolist()
                
                # Test different feature combinations
                st.write("**Feature Impact Analysis:**")
                
                base_predictions = []
                for user_id in sample_users[:5]:
                    for book_isbn in sample_books[:5]:
                        score = recommender.predict_rating(user_id, book_isbn)
                        base_predictions.append(score)
                
                avg_prediction = np.mean(base_predictions)
                st.metric("Average Prediction Score", f"{avg_prediction:.4f}")
                
                st.success("βœ… Feature analysis completed!")
        
        # Load training results if available
        if os.path.exists('dlrm_book_training_results.pkl'):
            with open('dlrm_book_training_results.pkl', 'rb') as f:
                training_results = pickle.load(f)
            
            st.subheader("πŸ“ˆ Training Results")
            
            col1, col2 = st.columns(2)
            
            with col1:
                st.metric("Final Validation AUROC", f"{training_results.get('final_val_auroc', 0):.4f}")
                st.metric("Test AUROC", f"{training_results.get('test_auroc', 0):.4f}")
            
            with col2:
                val_history = training_results.get('val_aurocs_history', [])
                if val_history:
                    st.line_chart(pd.DataFrame({
                        'Epoch': range(len(val_history)),
                        'Validation AUROC': val_history
                    }).set_index('Epoch'))
    
    # Instructions
    st.markdown("---")
    st.markdown("""
    ## πŸš€ How DLRM Works for Book Recommendations
    
    **DLRM (Deep Learning Recommendation Model)** is specifically designed for recommendation systems and offers several advantages:
    
    ### πŸ—οΈ Architecture Benefits:
    - **Multi-feature Processing**: Handles both categorical (user ID, book ID, publisher) and numerical (age, ratings) features
    - **Embedding Tables**: Learns rich representations for categorical features
    - **Cross-feature Interactions**: Captures complex relationships between different features
    - **Scalable Design**: Efficiently handles large-scale recommendation datasets
    
    ### πŸ“Š Features Used:
    **Categorical Features:**
    - User ID, Book ID, Publisher, Country, Age Group, Publication Decade, Rating Level
    
    **Dense Features:**  
    - Normalized Age, Publication Year, User Activity, Book Popularity, Average Ratings
    
    ### 🎯 Why DLRM vs LLM for Recommendations:
    - **Purpose-built**: Specifically designed for recommendation systems
    - **Feature Integration**: Better at combining diverse feature types
    - **Scalability**: More efficient for large-scale recommendation tasks
    - **Performance**: Higher accuracy for rating prediction tasks
    - **Production Ready**: Optimized for real-time inference
    
    ### πŸ’‘ Best Use Cases:
    - **Personalized Recommendations**: Based on user behavior and item characteristics
    - **Rating Prediction**: Accurately predicts user preferences
    - **Cold Start**: Handles new users and items through content features
    - **Real-time Serving**: Fast inference for production systems
    """)

    with tab4:
        st.header("πŸ“Έ Book Gallery")
        st.info("Browse book covers and discover new titles")
        
        # Gallery options
        col1, col2 = st.columns([2, 1])
        
        with col1:
            gallery_mode = st.selectbox(
                "Choose gallery mode",
                ["Popular Books", "Recent Publications", "Random Selection", "Search Results"]
            )
        
        with col2:
            books_per_row = st.slider("Books per row", 2, 6, 4)
            max_books = st.slider("Maximum books", 10, 50, 20)
        
        # Get books based on selected mode
        if gallery_mode == "Popular Books":
            # Get most rated books
            book_popularity = ratings_df.groupby('ISBN').size().sort_values(ascending=False)
            gallery_books = books_df[books_df['ISBN'].isin(book_popularity.head(max_books).index)]
            
        elif gallery_mode == "Recent Publications":
            # Get recent books
            books_df_temp = books_df.copy()
            books_df_temp['Year-Of-Publication'] = pd.to_numeric(books_df_temp['Year-Of-Publication'], errors='coerce')
            recent_books = books_df_temp.sort_values('Year-Of-Publication', ascending=False, na_position='last')
            gallery_books = recent_books.head(max_books)
            
        elif gallery_mode == "Random Selection":
            # Random books
            gallery_books = books_df.sample(min(max_books, len(books_df)))
            
        else:  # Search Results
            search_query = st.text_input("Search books for gallery", placeholder="Enter title, author, or publisher")
            if search_query:
                mask = (
                    books_df['Book-Title'].str.contains(search_query, case=False, na=False) |
                    books_df['Book-Author'].str.contains(search_query, case=False, na=False) |
                    books_df['Publisher'].str.contains(search_query, case=False, na=False)
                )
                gallery_books = books_df[mask].head(max_books)
            else:
                gallery_books = books_df.head(max_books)
        
        # Display gallery
        if len(gallery_books) > 0:
            st.markdown(f"**πŸ“š Showing {len(gallery_books)} books**")
            
            # Create grid layout
            books_list = gallery_books.to_dict('records')
            
            # Display books in rows
            for i in range(0, len(books_list), books_per_row):
                cols = st.columns(books_per_row)
                
                for j, col in enumerate(cols):
                    if i + j < len(books_list):
                        book = books_list[i + j]
                        
                        with col:
                            # Book cover
                            image_url = book.get('Image-URL-M', '')
                            
                            if image_url and pd.notna(image_url) and str(image_url) != 'nan':
                                try:
                                    clean_url = str(image_url).strip()
                                    if clean_url and 'http' in clean_url:
                                        st.image(clean_url, width='stretch')
                                    else:
                                        st.image("https://via.placeholder.com/150x200?text=πŸ“š&color=1f77b4&bg=f0f2f6", width='stretch')
                                except:
                                    st.image("https://via.placeholder.com/150x200?text=πŸ“š&color=1f77b4&bg=f0f2f6", width='stretch')
                            else:
                                st.image("https://via.placeholder.com/150x200?text=πŸ“š&color=1f77b4&bg=f0f2f6", width='stretch')
                            
                            # Book info
                            title = book['Book-Title']
                            if len(title) > 40:
                                title = title[:37] + "..."
                            
                            author = book['Book-Author']
                            if len(author) > 25:
                                author = author[:22] + "..."
                            
                            st.markdown(f"**{title}**")
                            st.write(f"*{author}*")
                            st.write(f"πŸ“… {book.get('Year-Of-Publication', 'Unknown')}")
                            
                            # Book statistics
                            book_stats = ratings_df[ratings_df['ISBN'] == book['ISBN']]
                            if len(book_stats) > 0:
                                avg_rating = book_stats['Book-Rating'].mean()
                                num_ratings = len(book_stats)
                                st.write(f"⭐ {avg_rating:.1f}/10 ({num_ratings} ratings)")
                            else:
                                st.write("⭐ No ratings")
                            
                            # DLRM prediction button
                            if recommender and recommender.model:
                                if st.button(f"🎯 DLRM Score", key=f"dlrm_{book['ISBN']}"):
                                    with st.spinner("Calculating..."):
                                        # Use first user as example
                                        sample_user = users_df['User-ID'].iloc[0]
                                        dlrm_score = recommender.predict_rating(sample_user, book['ISBN'])
                                        st.success(f"DLRM Score: {dlrm_score:.3f}")
        else:
            st.info("No books found for the selected criteria")
        
        # Quick stats
        st.markdown("---")
        st.subheader("πŸ“Š Gallery Statistics")
        
        col1, col2, col3, col4 = st.columns(4)
        
        with col1:
            books_with_covers = sum(1 for _, book in gallery_books.iterrows()
                                  if book.get('Image-URL-M') and pd.notna(book.get('Image-URL-M')))
            st.metric("Books with Covers", f"{books_with_covers}/{len(gallery_books)}")
        
        with col2:
            # Convert Year-Of-Publication to numeric, coercing errors to NaN
            years = pd.to_numeric(gallery_books['Year-Of-Publication'], errors='coerce')
            avg_year = years.mean()
            st.metric("Average Publication Year", f"{avg_year:.0f}" if not pd.isna(avg_year) else "Unknown")
        
        with col3:
            unique_authors = gallery_books['Book-Author'].nunique()
            st.metric("Unique Authors", unique_authors)
        
        with col4:
            unique_publishers = gallery_books['Publisher'].nunique()
            st.metric("Unique Publishers", unique_publishers)

if __name__ == "__main__":
    main()