DISTAL: the distributed tensor algebra compiler

Rohan Yadav, A. Aiken, Fredrik Kjolstad
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引用次数: 13

Abstract

We introduce DISTAL, a compiler for dense tensor algebra that targets modern distributed and heterogeneous systems. DISTAL lets users independently describe how tensors and computation map onto target machines through separate format and scheduling languages. The combination of choices for data and computation distribution creates a large design space that includes many algorithms from both the past (e.g., Cannon’s algorithm) and the present (e.g., COSMA). DISTAL compiles a tensor algebra domain specific language to a distributed task-based runtime system and supports nodes with multi-core CPUs and multiple GPUs. Code generated by is competitive with optimized codes for matrix multiply on 256 nodes of the Lassen supercomputer and outperforms existing systems by between 1.8x to 3.7x (with a 45.7x outlier) on higher order tensor operations.
末梢:分布式张量代数编译器
我们介绍了远端,密集张量代数的编译器,针对现代分布式和异构系统。远端允许用户独立描述张量和计算如何通过单独的格式和调度语言映射到目标机器上。数据和计算分布的选择组合创造了一个巨大的设计空间,其中包括过去(例如Cannon的算法)和现在(例如COSMA)的许多算法。远端编译一个张量代数领域特定的语言到一个分布式的基于任务的运行时系统,支持多核cpu和多gpu的节点。它生成的代码与Lassen超级计算机256个节点上矩阵乘法的优化代码竞争,并且在高阶张量操作上优于现有系统1.8到3.7倍(异常值为45.7倍)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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