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Optimizing PyTorch Inference with LLM-Based Multi-Agent Systems

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Maximizing performance on available GPU hardware is an ongoing challenge for modern AI inference systems. Traditional approaches include writing custom GPU kernels and using specialized model compilers to tune high-level code for specific GPU targets. Recent work shows that LLM-based multi-agent systems can effectively perform such tuning, often outperforming existing compilers and eliminating the need for manual kernel development. However, the dynamics of multi-agent systems for this task remain unexplored. In this work, we present a logical framework for comparing multi-agent PyTorch optimization systems. Our evaluation shows that exploit-heavy strategies perform best when paired with error-fixing agents, and that performance correlates with the granularity of optimization steps. The best implementation achieves an average 2.88x speedup over PyTorch Eager (1.85x over torch.compile) on an H100 GPU across diverse tasks in KernelBench, a benchmark suite covering a range of machine learning architectures in PyTorch. Code is publicly available at: https://github.com/pike-project/pike

Kirill Nagaitsev, Luka Grbcic, Samuel Williams, Costin Iancu• 2025

Related benchmarks

TaskDatasetResultRank
GPU Kernel OptimizationKernelBench Level 5 v1
RWKVTorch1
5
Inference OptimizationLevel 3-pike
SwinMLP Score1.5
5
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