逻辑合成中嵌入对齐单元的批量顺序黑盒优化

Chang Feng, Wenlong Lyu, Zhitang Chen, Junjie Ye, M. Yuan, Jianye Hao
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引用次数: 5

摘要

在EDA的逻辑合成流程中,对电路应用了一系列图变换算子,使得电路的结果质量(QoR)高度依赖于所选择的算子及其序列中的特定参数,使得搜索空间与算子相关且呈指数增长。本文将逻辑综合设计空间探索问题表述为一个条件序列优化问题,在每个变换步骤中选择一个优化算子并确定其相应的参数。为了解决这一问题,我们提出了一种无需人工干预的顺序黑盒优化方法:1)针对变长算子序列的条件和顺序结构,我们构建了一个基于嵌入对齐单元的递归神经网络作为代理模型来估计具有历史数据的逻辑综合流的QoR。2)使用代理模型,我们构建获取函数来平衡QoR的每个度量的勘探和开发。3)利用多目标优化算法找到采集函数的Pareto前沿,在计算资源预算下,随机选取一批参数化算子序列供用户评价。我们重复以上三个步骤,直到收敛或时间限制。公共EPFL基准测试的实验结果表明,我们的方法优于专家制作的优化流程和其他基于机器学习的方法。与resyn2相比,我们在不牺牲关卡值的情况下实现了11.8%的LUT-6计数下降改进。
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Batch Sequential Black-box Optimization with Embedding Alignment Cells for Logic Synthesis
During the logic synthesis flow of EDA, a sequence of graph transformation operators are applied to the circuits so that the Quality of Results (QoR) of the circuits highly depends on the chosen operators and their specific parameters in the sequence, making the search space operator-dependent and increasingly exponential. In this paper, we formulate the logic synthesis design space exploration as a conditional sequence optimization problem, where at each transformation step, an optimization operator is selected and its corresponding parameters are decided. To solve this problem, we propose a novel sequential black-box optimization approach without human intervention: 1) Due to the conditional and sequential structure of operator sequence with variable length, we build an embedding alignment cells based recurrent neural network as a surrogate model to estimate the QoR of the logic synthesis flow with historical data. 2) With the surrogate model, we construct acquisition function to balance exploration and exploitation with respect to each metric of the QoR. 3) We use multi-objective optimization algorithm to find the Pareto front of the acquisition functions, along which a batch of sequences, consisting of parameterized operators, are (randomly) selected to users for evaluation under the budget of computing resource. We repeat the above three steps until convergence or time limit. Experimental results on public EPFL benchmarks demonstrate the superiority of our approach over the expert-crafted optimization flows and other machine learning based methods. Compared to resyn2, we achieve 11.8% LUT-6 count descent improvements without sacrificing level values.
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