alvaro-frank/wms-forecast
WMS Forecast is a production-grade MLOps pipeline for warehouse demand. It implements XGBoost and LSTM models with automated feature engineering. Fully containerized with Docker, it serves real-time predictions via a FastAPI REST interface, using DVC and MLflow to ensure robust, reproducible, and scalable forecasting.
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Python
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MIT
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Last pushed
Mar 15, 2026
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