SpotifyProject / app.py
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import streamlit as st
from tensorflow.keras.models import load_model
from tensorflow.keras.preprocessing.sequence import pad_sequences
import joblib
import pandas as pd
import numpy as np
from sklearn.preprocessing import StandardScaler
# Load the emotion prediction model
emotion_model = load_model('lstm_model.h5')
# Load the tokenizer (ensure it's the one used during training)
tokenizer = joblib.load('tokenizer.pkl')
# Load the dataset
df = pd.read_csv('df1.csv')
df = df.drop(['Unnamed: 0', 'lyrics_filename', 'analysis_url', 'track_href', "type", "id", "uri"], axis=1)
# Load the content-based recommendation module
recommend_cont_module = joblib.load('recommendation_cont_function.joblib')
# Call the function from the module
hybrid_recs = recommend_cont_module.recommend_cont(song_index=0)
# Load the hybrid recommendation function
hybrid_recommendation = joblib.load('hybrid_recommendation_function.joblib')
# Preprocess for content-based
audio_features = df[['danceability', 'energy', 'key', 'loudness', 'mode', 'speechiness',
'acousticness', 'instrumentalness', 'liveness', 'valence', 'tempo',
'duration_ms', 'time_signature']]
mood_cats = df[['mood_cats']]
scaler = StandardScaler()
audio_features_scaled = scaler.fit_transform(audio_features)
audio_features_df = pd.DataFrame(audio_features_scaled, columns=audio_features.columns)
mood_cats_df = pd.DataFrame(mood_cats)
combined_features_content = pd.concat([mood_cats_df, audio_features_df], axis=1)
# Set up the title of the app
st.title('Emotion and Audio Feature-based Song Recommendation System')
# Get data from index 0
query_data = df.iloc[0]
# Process the lyrics
sequence = tokenizer.texts_to_sequences([query_data['lyrics']])
padded_sequence = pad_sequences(sequence, maxlen=50)
emotion = emotion_model.predict(padded_sequence).flatten()
# Combine emotion and audio features for recommendation
combined_features_hybrid = np.concatenate([emotion, query_data[audio_features.columns].values])
# Generate recommendations using the hybrid model
hybrid_recs = hybrid_recommendation(song_index=0)
st.write("Emotion Detected:", emotion[0])
st.header('Recommended Songs (Hybrid)')
st.write(hybrid_recs)