CuTeGen: An LLM-Based Agentic Framework for Generation and Optimization of High-Performance GPU Kernels using CuTe

arXiv:2604.0148920.61 citationsh-index: 3
Predicted impact top 27% in LG · last 90 daysOriginality Incremental advance
AI Analysis

This addresses the problem of expert-driven GPU kernel development for machine learning systems, offering an incremental improvement over existing LLM-based methods by focusing on iterative refinement.

The paper tackles the challenge of automatically generating high-performance GPU kernels by introducing CuTeGen, an agentic framework that uses a structured generate-test-refine workflow with the CuTe abstraction layer, achieving functionally correct kernels and competitive performance on matrix multiplication and activation workloads.

High-performance GPU kernels are critical to modern machine learning systems, yet developing efficient implementations remains a challenging, expert-driven process due to the tight coupling between algorithmic structure, memory hierarchy usage, and hardware-specific optimizations. Recent work has explored using large language models (LLMs) to generate GPU kernels automatically, but generated implementations often struggle to maintain correctness and achieve competitive performance across iterative refinements. We present CuTeGen, an agentic framework for automated generation and optimization of GPU kernels that treats kernel development as a structured generate--test--refine workflow. Unlike approaches that rely on one-shot generation or large-scale search over candidate implementations, CuTeGen focuses on progressive refinement of a single evolving kernel through execution-based validation, structured debugging, and staged optimization. A key design choice is to generate kernels using the CuTe abstraction layer, which exposes performance-critical structures such as tiling and data movement while providing a more stable representation for iterative modification. To guide performance improvement, CuTeGen incorporates workload-aware optimization prompts and delayed integration of profiling feedback. Experimental results on matrix multiplication and activation workloads demonstrate that the framework produces functionally correct kernels and achieves competitive performance relative to optimized library implementations.

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