FACT: a framework for the application of throughput and power optimizing transformations to control-flow intensive behavioral descriptions

G. Lakshminarayana, N. Jha
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引用次数: 12

Abstract

In this paper, we present an algorithm for the application of a general class of transformations to control-flow intensive behavioral descriptions. Our algorithm is based on the observation that incorporation of scheduling information can help guide the selection and application of candidate transformations, and significantly enhance the quality of the synthesized solution. The efficacy of the selected throughput and power optimizing transformations is enhanced by the ability of our algorithm to transcend basic blocks in the behavioral description. This ability is imparted to our algorithm by a general technique we have devised. Our system currently supports associativity, commutativity, distributivity, constant propagation, code motion, and loop unrolling. It is integrated with a scheduler which performs implicit loop unrolling and functional pipelining, and has the ability to parallelize the execution of independent iterative constructs whose bodies can share resources. Other transformations can easily be incorporated within the framework. We demonstrate the efficacy of our algorithm by applying it to several commonly available benchmarks. Upon synthesis, behaviors transformed by the application of our algorithm showed up to 6-fold improvement in throughput over an existing transformation algorithm, and up to 4.5-fold improvement in power over designs produced without the benefit of our algorithm.
事实:用于吞吐量和功率优化转换的应用框架,以控制流密集型行为描述
在本文中,我们提出了一种将一类一般变换应用于控制流密集行为描述的算法。我们的算法是基于这样的观察,即纳入调度信息有助于指导候选变换的选择和应用,并显著提高综合解的质量。我们的算法能够超越行为描述中的基本块,从而提高了所选吞吐量和功率优化转换的有效性。这种能力是通过我们设计的一般技术赋予我们的算法的。我们的系统目前支持结合性、交换性、分配性、常量传播、代码移动和循环展开。它与执行隐式循环展开和功能流水线的调度器集成,并且具有并行执行独立迭代构造的能力,这些构造的主体可以共享资源。其他转换可以很容易地合并到框架中。我们通过将算法应用于几个常用的基准测试来证明算法的有效性。经过综合,应用我们的算法转换的行为比现有转换算法的吞吐量提高了6倍,比没有使用我们的算法的设计提高了4.5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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