Foundation model predicts machine failures across any factory asset without
Researchers open-sourced HEPA, a 2.16M-parameter foundation model that predicts equipment failures across stamping presses, chemical reactors, and robot arms by learning shared industrial dynamics from raw sensor
A research team has published HEPA, a self-supervised foundation model designed to predict equipment failures and process anomalies across any factory asset without requiring labeled training data. The model earned a Spotlight at the FMSD workshop at ICML 2026 and represents a shift away from the cu...
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- Primary publication (lab/vendor blog) — our analysis + implication
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- r/ai-agents
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