Constraint satisfaction in incremental placement with application to performance optimization under power constraints

Huan Ren, S. Dutt
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引用次数: 2

Abstract

We present new techniques for explicit constraint satisfaction in the incremental placement process. Our algorithm employs a Lagrangian relaxation (LR) type approach in the analytical global placement stage to solve the constrained optimization problem. We establish theoretical results that prove the optimality of this stage. In the detailed placement stage, we develop a constraint-monitoring and satisfaction mechanism in a network (n/w) flow based detailed placement framework proposed recently, and empirically show its near-optimality. We establish the effectiveness of our general constraint-satisfaction methods by applying them to the problem of timing-driven optimization under power constraints. We overlay our algorithms on a recently developed unconstrained timing-driven incremental placement method flow-place. On a large number of benchmarks with up to 210K cells, our constraint satisfaction algorithms obtain an average timing improvement of 12.4% under a 3% power increase limit (the actual average power increase incurred is only 2.1%), while the original unconstrained method gives an average power increase of 8.4% for a timing improvement of 17.3%. Our techniques thus yield a tradeoff of 75% power improvement to 28% timing deterioration for the given constraint. Our constraint-satisfying incremental placer is also quite fast, e.g., its run time for the 210 K-cell circuit ibm18 is only 1541 secs.
在功率约束下的性能优化应用中,增量布局的约束满足
我们提出了在增量放置过程中满足显式约束的新技术。该算法采用拉格朗日松弛(LR)型方法在解析全局布局阶段解决约束优化问题。建立了理论结果,证明了这一阶段的最优性。在详细安置阶段,我们在最近提出的基于网络(n/w)流的详细安置框架中建立了约束监测和满意度机制,并实证证明了其接近最优性。将一般约束满足方法应用于功率约束下的时间驱动优化问题,验证了其有效性。我们将我们的算法覆盖在最近开发的无约束时间驱动的增量放置方法流放置上。在多达210K单元的大量基准测试中,我们的约束满足算法在3%的功率增长限制下获得了12.4%的平均时间改进(实际平均功率增长仅为2.1%),而原始的无约束方法在17.3%的时间改进下平均功率增加了8.4%。因此,在给定的约束条件下,我们的技术产生了75%的功率改进和28%的时间退化的折衷。我们的满足约束的增量放置器也非常快,例如,它在210 k单元电路ibm18上的运行时间仅为1541秒。
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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