LGPFMar 22

AutoKernel: Autonomous GPU Kernel Optimization via Iterative Agent-Driven Search

arXiv:2603.2133164.51 citationsh-index: 2Has Code
Predicted impact top 31% in LG · last 90 daysOriginality Incremental advance
AI Analysis

This system addresses the problem of high-performance GPU kernel development for machine learning engineers, offering an automated solution that reduces manual effort and improves performance, though it is incremental as it builds on existing optimization techniques.

AutoKernel tackles the labor-intensive task of GPU kernel optimization by using an autonomous agent loop to automatically refine kernel implementations, achieving speedups such as 5.29x over PyTorch eager on RMSNorm and 2.83x over torch.compile on an NVIDIA H100.

Writing high-performance GPU kernels is among the most labor-intensive tasks in machine learning systems engineering. We present AutoKernel, an open-source framework that applies an autonomous agent loop to GPU kernel optimization for arbitrary PyTorch models. Given a model, AutoKernel profiles it to identify computational bottlenecks, ranks them by Amdahl's law impact, and iteratively refines Triton or CUDA C++ kernel implementations through hundreds of experiments without human intervention. A five-stage correctness harness covering smoke tests, shape sweeps, numerical stability, determinism verification, and edge-case coverage ensures every candidate kernel is validated before any speedup is recorded. The system comprises over 9,000 lines of Python, 18 starter kernel implementations across two backends, a six-tier optimization playbook, and integration with the KernelBench benchmark suite. AutoKernel covers nine kernel types spanning the dominant operations in modern transformer architectures. On an NVIDIA H100, our Triton kernels outperform both PyTorch eager and torch.compile (max-autotune) on the majority of tested configurations: 5.29x over eager on RMSNorm, 2.82x on softmax, and 2.21x on cross-entropy, while beating torch.compile by 2.83x, 3.44x, and 2.94x respectively. In community deployment, an AutoKernel-optimized kernel achieved first place on the vectorsum_v2 B200 leaderboard. The full system is available at https://github.com/RightNow-AI/autokernel.

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