强化学习驱动物理合成:(特邀论文)

Zhuolun He, Lu Zhang, Peiyu Liao, Yuzhe Ma, Bei Yu
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引用次数: 0

摘要

物理合成已成为现代电路设计流程的核心组成部分。在此过程中经常涉及大规模的优化问题,需要大量的努力来解决,并且不能保证最优性。强化学习通过经验自动获取知识,为解决上述问题提供了一个方向,在各种应用中都取得了巨大的成功。本文介绍了强化学习的基础和研究进展,综述了近年来将强化学习应用于物理合成的一些方法。我们希望在这个领域激发更多的工作,看到更多有才华的想法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement Learning Driven Physical Synthesis : (Invited Paper)
Physical synthesis has emerged as a core component in a modern circuit design flow. Large-scale optimization problem is often involved in the process, which requires substantial efforts to solve and no optimality is guaranteed. Reinforcement learning provides one direction to deal with the above issue by automatically acquiring knowledge through experience, which has shown great success in various applications. In this paper, we introduce the foundation of and the progress in reinforcement learning, and review some recent approaches in applying reinforcement learning to physical synthesis. We hope to inspire more work and to see more talented ideas in this field.
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