Towards Cold-Start Drafting and Continual Refining: A Value-Driven Memory Approach with Application to NPU Kernel Synthesis
arXiv cs.LG / 3/12/2026
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Key Points
- EvoKernel is introduced as a self-evolving agentic framework that automates the lifecycle of kernel synthesis from initial drafting to continual refining in data-scarce NPU programming environments.
- It formulates kernel synthesis as a memory-based reinforcement learning task with a novel value-driven retrieval mechanism that prioritizes experiences by their contribution to the current objective, such as bootstrapping a feasible draft or refining latency.
- The approach enables cross-task memory sharing, allowing insights to transfer from simple to complex operators, and includes an NPU-specific variant of KernelBench for evaluation.
- Results show frontier models' correctness improving from 11.0% to 83.0% and a median speedup of 3.60x over initial drafts, demonstrating effective learning for kernel synthesis on niche hardware ecosystems.
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