Fireiron: A Scheduling Language for High-Performance Linear Algebra on GPUs
March 13, 2020 Β· Declared Dead Β· π arXiv.org
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Authors
Bastian Hagedorn, Archibald Samuel Elliott, Henrik Barthels, Rastislav Bodik, Vinod Grover
arXiv ID
2003.06324
Category
cs.PL: Programming Languages
Citations
10
Venue
arXiv.org
Last Checked
3 months ago
Abstract
Achieving high-performance GPU kernels requires optimizing algorithm implementations to the targeted GPU architecture. It is of utmost importance to fully use the compute and memory hierarchy, as well as available specialised hardware. Currently, vendor libraries like cuBLAS and cuDNN provide the best performing implementations of GPU algorithms. However the task of the library programmer is incredibly challenging: for each provided algorithm, high-performance implementations have to be developed for all commonly used architectures, input sizes, and different storage formats. These implementations are generally provided as optimized assembly code because performance-critical architectural features are only exposed at this level. This prevents reuse between different implementations of even the same algorithm, as simple differences can have major effects on low-level implementation details. In this paper we introduce Fireiron, a DSL and compiler which allows the specification of high-performance GPU implementations as compositions of simple and reusable building blocks. We show how to use Fireiron to optimize matrix multiplication implementations, achieving performance matching hand-coded CUDA kernels, even when using specialised hardware such as NIVIDA Tensor Cores, and outperforming state-of-the-art implementations provided by cuBLAS by more than 2x.
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