SaleFore AI: Ultra-accurate sales forecasting using ensemble ML (XGBoost, LightGBM, CatBoost) with RTX 4060 GPU optimization. Achieves 88-95% accuracy with advanced hyperparameter tuning.
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Updated
Aug 22, 2025 - Python
SaleFore AI: Ultra-accurate sales forecasting using ensemble ML (XGBoost, LightGBM, CatBoost) with RTX 4060 GPU optimization. Achieves 88-95% accuracy with advanced hyperparameter tuning.
Kaggle Playground Series - Season 5, Episode 5
A modular AutoML framework for text classification using the IMDB dataset. The project compares CNN and RNN architectures for sentiment analysis and leverages Optuna for hyperparameter optimization. Built with TensorFlow/Keras, the pipeline is designed to be reusable, and extensible.
Kaggle Playground Series - Season 5, Episode 7
A comprehensive framework for developing and backtesting quantitative trading strategies.
Optimizer for trading indicators with Optuna (RSI demo, backtest, risk profiles)
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