GoPlace: chip placement like playing go

Jianguo Hu, Shengzhi Shen, Yanyu Ding, Yuhe Wang, Jiakai Pan, Wenjun Huang, Deming Wang
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Abstract

As a critical stage in modern Very-Large-Scale Integrated (VLSI) design, placement plays a crucial role in positioning numerous circuit modules of varying sizes onto a 2D chip canvas to achieve optimal performance. In recent years, applying machine learning methods to placement has emerged as a promising solution for significantly enhancing efficiency and achieving superior results. However, machine learning-driven methods are still in their early stages, facing challenges such as exploration and convergence difficulties. In addition, it is challenging to integrate netlist data with the placement information. This paper proposes a novel approach leveraging deep reinforcement learning to address these challenges. First, a multi-layer chip canvas state representation method is proposed to tackle the challenges of storing and using the placement information. Additionally, a graph neural network is used to assist in generating placement information. Second, this paper proposed a semi-shared policy and value network, and to accommodate the scale and complexity of chip placement, a residual-like neural network is proposed. Third, extensive experiments on eight circuits of public benchmarks show that GoPlace achieves 10% ~ 25% wirelength reduction compared to other reinforcement learning-based methods, lowest congestion, and guarantees zero overlap.
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GoPlace:像下围棋一样放置筹码
作为现代超大规模集成电路(VLSI)设计的关键阶段,贴装在将众多不同尺寸的电路模块定位到二维芯片画布上以实现最佳性能方面发挥着至关重要的作用。近年来,将机器学习方法应用于贴片设计已成为一种很有前途的解决方案,可显著提高效率并获得卓越的效果。然而,机器学习驱动的方法仍处于早期阶段,面临着探索和收敛困难等挑战。此外,将网表数据与贴片信息整合在一起也具有挑战性。本文提出了一种利用深度强化学习来应对这些挑战的新方法。首先,本文提出了一种多层芯片画布状态表示方法,以应对存储和使用贴装信息的挑战。此外,还使用了图神经网络来辅助生成贴片信息。其次,本文提出了一种半共享策略和值网络,并为适应芯片贴装的规模和复杂性,提出了一种类残差神经网络。第三,在公共基准的八个电路上进行的大量实验表明,与其他基于强化学习的方法相比,GoPlace 可以减少 10% ~ 25% 的线长,拥塞最低,并保证零重叠。
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