""" Gradio app for House Price Prediction Model Deploy this to Hugging Face Spaces for interactive inference """ import gradio as gr # type: ignore import joblib # type: ignore import pandas as pd from huggingface_hub import hf_hub_download # type: ignore from typing import Any print("🔄 Downloading model files...") # Download model files try: model_path: str = hf_hub_download( # type: ignore repo_id="niru-nny/house-price-prediction", filename="house_price_model.joblib" ) print(f"✅ Model downloaded: {model_path}") pipeline_path: str = hf_hub_download( # type: ignore repo_id="niru-nny/house-price-prediction", filename="preprocessing_pipeline.joblib" ) print(f"✅ Pipeline downloaded: {pipeline_path}") # Load model and pipeline print("🔄 Loading model and pipeline...") model: Any = joblib.load(model_path) # type: ignore pipeline: Any = joblib.load(pipeline_path) # type: ignore print("✅ Model and pipeline loaded successfully!") except Exception as e: print(f"❌ Error loading model: {e}") raise def predict_price( longitude: float, latitude: float, housing_median_age: int, total_rooms: int, total_bedrooms: int, population: int, households: int, median_income: float, ocean_proximity: str ) -> str: """Predict house price based on input features""" # Create input dataframe input_data = pd.DataFrame({ 'longitude': [longitude], 'latitude': [latitude], 'housing_median_age': [housing_median_age], 'total_rooms': [total_rooms], 'total_bedrooms': [total_bedrooms], 'population': [population], 'households': [households], 'median_income': [median_income], 'ocean_proximity': [ocean_proximity] }) # Preprocess and predict processed_data: Any = pipeline.transform(input_data) # type: ignore prediction: float = model.predict(processed_data)[0] # type: ignore return f"${prediction:,.2f}" # Create Gradio interface demo: Any = gr.Interface( # type: ignore fn=predict_price, inputs=[ gr.Slider(-124.5, -114.0, value=-122.23, label="Longitude"), gr.Slider(32.5, 42.0, value=37.88, label="Latitude"), gr.Slider(0, 52, value=41, step=1, label="Housing Median Age"), gr.Slider(0, 40000, value=880, step=10, label="Total Rooms"), gr.Slider(0, 6500, value=129, step=1, label="Total Bedrooms"), gr.Slider(0, 35000, value=322, step=1, label="Population"), gr.Slider(0, 6000, value=126, step=1, label="Households"), gr.Slider(0, 15, value=8.3252, step=0.1, label="Median Income (in $10,000s)"), gr.Dropdown( choices=["NEAR BAY", "INLAND", "<1H OCEAN", "NEAR OCEAN", "ISLAND"], value="NEAR BAY", label="Ocean Proximity" ) ], outputs=gr.Textbox(label="Predicted House Price"), title="🏠 California House Price Prediction", description="Predict California house prices based on location and features", examples=[ [-122.23, 37.88, 41, 880, 129, 322, 126, 8.3252, "NEAR BAY"], [-121.22, 39.43, 7, 1430, 244, 515, 226, 3.8462, "INLAND"], ] ) if __name__ == "__main__": demo.launch()