import os import gradio as gr import tensorflow as tf import joblib import numpy as np import pandas as pd from huggingface_hub import hf_hub_download os.environ['CUDA_VISIBLE_DEVICES'] = '-1' MODEL_REPO = "munem420/stock-forecaster-lstm" MODEL_FILENAME = "model_lstm.h5" SCALER_FILENAME = "scalers.joblib" print("--- Downloading model and scalers ---") try: model_path = hf_hub_download(repo_id=MODEL_REPO, filename=MODEL_FILENAME) scalers_path = hf_hub_download(repo_id=MODEL_REPO, filename=SCALER_FILENAME) print("✅ Files downloaded successfully.") except Exception as e: print(f"❌ Error downloading files: {e}") model_path, scalers_path = None, None loaded_model_lstm = None loaded_scalers = None if model_path and os.path.exists(model_path): try: loaded_model_lstm = tf.keras.models.load_model( model_path, custom_objects={"mse": tf.keras.losses.MeanSquaredError()} ) print("✅ Model loaded successfully.") except Exception as e: print(f"❌ Error loading model: {e}") if scalers_path and os.path.exists(scalers_path): try: loaded_scalers = joblib.load(scalers_path) print("✅ Scalers loaded successfully.") except Exception as e: print(f"❌ Error loading scalers: {e}") ticker_to_name = {'ZURVY': 'Zurich Insurance Group AG'} def get_ticker_from_input(input_name): return input_name.upper() def forecast_stock(input_name, model, scalers_dict, input_width=60): if not model or not scalers_dict: return "Error: Model or scalers not loaded. The backend may have failed to start." ticker = get_ticker_from_input(input_name) if not ticker: return "Error: Invalid stock ticker." print(f"\n--- Generating forecast for {ticker} ---") if len(data_df) < input_width: return f"Error: Not enough historical data. Need {input_width} days, but only have {len(data_df)}." recent_data = data_df.tail(input_width) close_prices = recent_data['Close'].values.reshape(-input, 1) scaler = scalers_dict.get(ticker) if not scaler: print(f"Warning: No specific scaler found for {ticker}. Using ZURVY's scaler as a fallback.") scaler = scalers_dict.get('ZURVY') if not scaler: return "Error: Default scaler 'ZURVY' not found." scaled_data = scaler.transform(close_prices) X_pred = scaled_data.reshape(1, input_width, 1) prediction_scaled = model.predict(X_pred, verbose=0)[0][0] prediction_actual = scaler.inverse_transform(np.array([[prediction_scaled]]))[0][0] last_close = recent_data['Close'].iloc[-1] result = ( f"Last known close for {ticker}: ${last_close:.2f}\n" f"Predicted next day's close price: ${prediction_actual:.2f}" ) print(result) return result def predict_api(ticker_symbol): return forecast_stock(ticker_symbol, loaded_model_lstm, loaded_scalers) with gr.Blocks() as app: gr.Markdown("This is the backend for the React Stock Forecaster App.") ticker_input = gr.Textbox(label="Stock Ticker", visible=False) output_text = gr.Textbox(label="Forecast", visible=False) ticker_input.submit(predict_api, inputs=[ticker_input], outputs=[output_text], api_name="predict") app = gr.mount_static_directory(app, "build") if __name__ == "__main__": app.launch()