KernelEvolve: Scaling Agentic Kernel Coding for Heterogeneous AI Accelerators at Meta
Gang Liao, Hongsen Qin, Ying Wang, Alicia Golden, Michael Kuchnik, Yavuz Yetim, Jia Jiunn Ang, Chunli Fu, Yihan He, Samuel Hsia, Zewei Jiang, Dianshi Li, Uladzimir Pashkevich, Varna Puvvada, Feng Shi, Matt Steiner, Ruichao Xiao, Nathan Yan, Xiayu Yu, Zhou Fang, Roman Levenstein

TL;DR
KernelEvolve is an automated framework that optimizes deep learning recommendation model kernels across diverse hardware, reducing development time and improving performance on heterogeneous AI accelerators.
Contribution
It introduces an agentic kernel coding framework that automates kernel generation and optimization across multiple programming abstractions and hardware architectures.
Findings
Achieved 100% correctness on KernelBench suite and PyTorch operators across hardware platforms.
Reduced kernel development time from weeks to hours.
Demonstrated performance improvements over PyTorch baselines.
Abstract
Making deep learning recommendation model (DLRM) training and inference fast and efficient is important. However, this presents three key system challenges - model architecture diversity, kernel primitive diversity, and hardware generation and architecture heterogeneity. This paper presents KernelEvolve-an agentic kernel coding framework-to tackle heterogeneity at-scale for DLRM. KernelEvolve is designed to take kernel specifications as input and automate the process of kernel generation and optimization for recommendation model across heterogeneous hardware architectures. KernelEvolve does so by operating at multiple programming abstractions, from Triton and CuTe DSL to low-level hardware agnostic languages, spanning the full hardware-software optimization stack. The kernel optimization process is described as graph-based search with selection policy, universal operator, fitness…
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Taxonomy
TopicsAdvanced Neural Network Applications · Parallel Computing and Optimization Techniques · Big Data and Digital Economy
