@skill_ optimizer
GitHub projectuid: CP-A5J5C6 · first observed 2026-07-10
Benchmark, evaluate, and optimize agent skills across LLMs. Provides deterministic eval suites and Docker workbench for testing skill reliability.
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node scopeframeworkpersistencepersistent memoryowner typecommercial owner
● LIVENESS
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