Project Summary: Energy Recommendation System
LSTM-based forecasting plus recommendation logic to support sustainable grid operations.
This project combines short-term load forecasting with policy-aware recommendation rules to reduce curtailment and improve renewable integration. A modular data pipeline ingests load, weather, and calendar signals; a sequence-to-sequence LSTM delivers multi-horizon forecasts; and production serving is powered by a containerized FastAPI service.
Highlights
- Multi-horizon LSTM improves RMSE vs. ARIMA/XGBoost baselines.
- Robust under synthetic weather perturbations with clear feature attributions.
- Serving-ready: versioned artifacts, drift monitoring, and canary updates.
Explore
- Overview: Energy Recommendation System
- Technical deep-dive: Model & pipeline
- Management perspective: Delivery & risks
- Product strategy: Personas, KPIs, roadmap
Repo links and details available in page references.
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