TOAST: Automatic tiling for iterative stencil computations on GPUs.

CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE(2017)

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摘要
The stencil pattern is important in many scientific and engineering domains, spurring great interest from researchers and industry. In recent years, various optimizations have been proposed for parallel stencil applications running on graphics processing units GPUs. In particular, tiling is a technique that can significantly enhance application performance by improving data locality and by reducing the volume of communication between host memory and GPU. In addition, tiling enables stencil applications to process inputs that are larger than the physical GPU memory. However, implementing tiling efficiently is complex, time-consuming, and error-prone. In this paper, we propose transparently optimized automatic stencil tiling TOAST, an automatic tiling mechanism for iterative stencil computations running on GPUs; TOAST has 3 main benefits: 1 It incorporates an optimization model that seeks to maximize data reuse within tiles while respecting the amount of dynamically available GPU memory; 2 it offers a virtualized GPU memory for stencil computations, allowing for large input data; and 3 it performs optimal tiling transparently to the developer of the parallel stencil application. The current implementation of TOAST augments the PSkel framework with an internal solver based on genetic algorithms. Our experimental results show that TOAST improves the performance of iterative stencil applications by up to 13﾿×﾿ compared with their multithreaded central processing unit-based optimized versions and up to 48﾿×﾿ compared with a naive tiling approach on GPU. The TOAST mechanism is able to automatically achieve a low percentual overhead of data management compared with actual stencil computation.
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关键词
autotuning,GPU,optimization model,parallel skeletons,stencil computation,tiling
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