数据触发线程:消除冗余计算

Hung-Wei Tseng, D. Tullsen
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引用次数: 34

摘要

本文介绍了数据触发线程的概念。与传统编程模型中并行程序中的线程不同,这些线程在内存位置发生更改时启动。这增加了并行性,消除了冗余和不必要的计算。本文主要关注后者。结果表明,78%的负载获取冗余数据,导致冗余计算的发生率很高。通过通过数据触发的线程表示计算,该计算在数据更改时执行一次,在数据不更改时跳过。C SPEC基准测试显示,性能加速高达5.9X,平均为46%。
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Data-triggered threads: Eliminating redundant computation
This paper introduces the concept of data-triggered threads. Unlike threads in parallel programs in conventional programming models, these threads are initiated on a change to a memory location. This enables increased parallelism and the elimination of redundant, unnecessary computation. This paper focuses primarily on the latter. It is shown that 78% of all loads fetch redundant data, leading to a high incidence of redundant computation. By expressing computation through data-triggered threads, that computation is executed once when the data changes, and is skipped whenever the data does not change. The set of C SPEC benchmarks show performance speedup of up to 5.9X, and averaging 46%.
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