LordSpudnik/Deep-Space-Sentinel
AI-powered anomaly detection and autonomous decision support system for deep space missions — combining Isolation Forest, One-Class SVM, PyTorch Autoencoder, and LSTM models on NASA's CMAPSS turbofan dataset to predict engine failures and generate mission-critical risk decisions.
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Apr 06, 2026
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