Spaces:
Runtime error
Runtime error
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 | |
try: | |
import sklearn | |
st.write("scikit-learn is installed.") | |
except ImportError: | |
st.error("scikit-learn is not installed.") | |
# Load your emotion prediction model | |
emotion_model = load_model('lstm_model.h5') | |
# Load the KNN recommender model | |
#recommender_model = joblib.load('knn_model.pkl') | |
# Load the KNN recommender model | |
try: | |
recommender_model = joblib.load('knn_model.pkl') | |
except Exception as e: | |
st.error(f"Error loading model: {e}") | |
# Load the tokenizer (ensure it's the one used during training) | |
# tokenizer = joblib.load('tokenizer.pkl') # Update this to the correct path | |
# Load the dataset | |
df = pd.read_csv('df1.csv') # Ensure this is the correct DataFrame | |
# Set up the title of the app | |
st.title('Emotion and Audio Feature-based Song Recommendation System') | |
# Input field for lyrics | |
st.header('Enter Song Lyrics') | |
lyrics = st.text_area("Input the lyrics of the song here:") | |
# Input fields for audio features | |
st.header('Enter Audio Features') | |
audio_features = [] | |
for feature_name in df.columns: # Ensure this matches your DataFrame's structure | |
feature = st.number_input(f"Enter value for {feature_name}:", step=0.01) | |
audio_features.append(feature) | |
# Predict and Recommend button | |
if st.button('Predict Emotion and Recommend Songs'): | |
if lyrics and all(audio_features): | |
# Process the lyrics | |
sequence = tokenizer.texts_to_sequences([lyrics]) | |
padded_sequence = pad_sequences(sequence, maxlen=128) | |
emotion = emotion_model.predict(padded_sequence).flatten() | |
# Combine emotion and audio features for recommendation | |
combined_features = np.concatenate([emotion, audio_features]) # Ensure the concatenation logic matches your model's expectation | |
# Generate recommendations using the KNN model | |
distances, indices = recommender_model.kneighbors([combined_features], n_neighbors=5) | |
recommended_songs = df.iloc[indices.flatten()] | |
# Display emotion and recommendations | |
st.write("Emotion Detected:", emotion[0]) # Adjust as per your model's output | |
st.header('Recommended Songs') | |
for _, song in recommended_songs.iterrows(): | |
st.write(song) # Customize this to display relevant song info | |
else: | |
st.error("Please fill in all the fields.") |