LAWS: Learning from Actual Workloads Symbolically — A Self-Certifying Parametrized Cache Architecture for Neural Inference, Robotics, and Edge Deployment
arXiv:2605.04069v1 Announce Type: new Abstract: We introduce LAWS (Learning from Actual Workloads Symbolically), a self-certifying inference caching architecture that builds a growing library of certified expert functions from deployment observations. Each expert covers a region of input space defined by…
