CLJan 19

A Two-Stage GPU Kernel Tuner Combining Semantic Refactoring and Search-Based Optimization

arXiv:2601.12698v12 citations
Originality Incremental advance
AI Analysis

This addresses performance bottlenecks in HPC and large-model training/inference workloads, representing an incremental improvement over existing LLM-agent-based methods.

The paper tackles the problem of unstable performance gains in GPU kernel optimization by introducing a two-stage approach that combines semantic refactoring into parameterizable templates with search-based autotuning, achieving speedups exceeding 3x in best cases on real-world kernels.

GPU code optimization is a key performance bottleneck for HPC workloads as well as large-model training and inference. Although compiler optimizations and hand-written kernels can partially alleviate this issue, achieving near-hardware-limit performance still relies heavily on manual code refactoring and parameter tuning. Recent progress in LLM-agent-based kernel generation and optimization has been reported, yet many approaches primarily focus on direct code rewriting, where parameter choices are often implicit and hard to control, or require human intervention, leading to unstable performance gains. This paper introduces a template-based rewriting layer on top of an agent-driven iterative loop: kernels are semantically refactored into explicitly parameterizable templates, and template parameters are then optimized via search-based autotuning, yielding more stable and higher-quality speedups. Experiments on a set of real-world kernels demonstrate speedups exceeding 3x in the best case. We extract representative CUDA kernels from SGLang as evaluation targets; the proposed agentic tuner iteratively performs templating, testing, analysis, and planning, and leverages profiling feedback to execute constrained parameter search under hardware resource limits. Compared to agent-only direct rewriting, the template-plus-search design significantly reduces the randomness of iterative optimization, making the process more interpretable and enabling a more systematic approach toward high-performance configurations. The proposed method can be further extended to OpenCL, HIP, and other backends to deliver automated performance optimization for real production workloads.

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