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Apr 26, 2026 - Jupyter Notebook
IEEE Published | ML model for Aircraft Engine RUL prediction using XGBoost & Random Forest on NASA C-MAPSS dataset. RMSE: 23.8, R²: 0.67. Flask web app + PostgreSQL. ICMCSI 2025 (Paper ID: ICMCSI-472)
XGBoost wear state classifier + RUL regressor for CNC milling tool fleets. 96.8% accuracy, ~18-cut MAE. Streamlit fleet dashboard.
🚀 Predictive maintenance for NASA turbofan engines — RUL estimation using ML & deep learning
A predictive maintenance model for estimating machine remaining useful life (RUL) with uncertainty. Instead of predicting a single value, the model outputs a range of plausible outcomes, enabling more informed maintenance decisions.
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