Show HN: MicroSafe-RL – Deterministic 1.18µs safety layer for Edge AI (github.com)
I built MicroSafe-RL to solve the "hardware destruction" problem during Reinforcement Learning and Edge LLM deployment.
The Tech: It’s a bare-metal C++ interceptor using an EMA+MAD stability metric derived from Control Lyapunov Functions. Performance: 1.18 microseconds worst-case execution time (WCET). No heap, no dynamic allocation, just 24 bytes of state. The "Bridge": The latest update includes a Python-C++ bridge to use local LLMs (like Gemma 4 via Ollama) as robotic controllers while keeping them physically safe.
Currently under review at IEEE Transactions on Aerospace and Electronic Systems.
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