Asynchronous Batch Constrained Multi-Objective Bayesian Optimization for Analog Circuit Sizing

2024 29th Asia and South Pacific Design Automation Conference (ASP-DAC)(2024)

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摘要
For analog circuit sizing, constrained multi-objective optimization is an important and practical problem. With the popularity of multi-core machines and cloud computing, parallel/batch computing can significantly improve the efficiency of optimization algorithms. In this paper, we propose an Asynchronous Batch Constrained Multi-Objective Bayesian Optimization algorithm (ABCMOBO). Since the performances below the specifications are worthless, we adopt a dynamic reference point selection on the expected hypervolume improvement acquisition function for constraint handling. To save the time of waiting for all the simulations in the same batch to complete, ABCMOBO asynchronously evaluates the next candidate point if there is an idle worker. The experimental results quantitatively demonstrate that our proposed algorithms can reach 3.49 ~ $8.18 \times$ speed-up with comparable optimization results compared to the state-of-the-art asynchronous/synchronous batch multi-objective optimization methods.
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关键词
Multi-objective Optimization,Constrained Optimization,Bayesian Optimization,Constrained Multi-objective Optimization,Multi-objective Bayesian Optimization,Optimization Algorithm,Cloud Computing,Acquisition Function,Dynamic Selection,Dynamic Point,Multi-objective Optimization Algorithm,Candidate Points,Multi-objective Optimization Method,Constraint Handling,Alternative Models,Batch Size,Performance Metrics,Batch Mode,Figure Of Merit,Kriging,Gaussian Process Regression Model,Pareto Front,Synchronization Method,Circuit Performance,Large Batch Size,Metrics Of Interest,Integrated Circuit Design,Constrained Optimization Problem,Amplifier Circuit,Inclusion Exclusion
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