基于迁移学习和多目标贝叶斯优化的快速参数整定框架

Zheng Zhang, Tinghuan Chen, Jiaxin Huang, Meng Zhang
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引用次数: 3

摘要

设计空间探索(DSE)可以自动有效地确定设计参数,以实现超大规模集成电路(VLSI)设计中的最佳性能、功耗和面积(PPA)。由于缺乏先验知识,导致搜索效率低下。本文提出了一种基于迁移学习和多目标贝叶斯优化的快速参数整定框架,以快速找到最优设计参数。利用高斯Copula建立了所实现技术之间的相关性。通过将PPA数据转化为残差观测值,将先验知识整合到多目标贝叶斯优化中。利用不确定性感知搜索获取功能,有效地探索设计空间。在CPU设计上的实验表明,与最先进的方法相比,该框架可以以更少的设计流程运行实现更高质量的帕累托边界。
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A fast parameter tuning framework via transfer learning and multi-objective bayesian optimization
Design space exploration (DSE) can automatically and effectively determine design parameters to achieve the optimal performance, power and area (PPA) in very large-scale integration (VLSI) design. The lack of prior knowledge causes low efficient exploration. In this paper, a fast parameter tuning framework via transfer learning and multi-objective Bayesian optimization is proposed to quickly find the optimal design parameters. Gaussian Copula is utilized to establish the correlation of the implemented technology. The prior knowledge is integrated into multi-objective Bayesian optimization through transforming the PPA data to residual observation. The uncertainty-aware search acquisition function is employed to explore design space efficiently. Experiments on a CPU design show that this framework can achieve a higher quality of Pareto frontier with less design flow running than state-of-the-art methodologies.
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