Algorithm 1025: PARyOpt: A Software for P arallel A synchronous R emote Ba y esian Opt imization

Author:

Pokuri Balaji Sesha Sarath1ORCID,Lofquist Alec2ORCID,Risko Chad3ORCID,Ganapathysubramanian Baskar1ORCID

Affiliation:

1. Department of Mechanical Engineering, Iowa State University, Ames, Iowa, USA

2. Department of Computer Engineering, Iowa State University, Ames, Iowa, USA

3. Department of Chemistry, University of Kentucky, Lexington, Kentucky, USA

Abstract

PARyOpt 1 is a Python based implementation of the Bayesian optimization routine designed for remote and asynchronous function evaluations. Bayesian optimization is especially attractive for computational optimization due to its low cost function footprint as well as the ability to account for uncertainties in data. A key challenge to efficiently deploy any optimization strategy on distributed computing systems is the synchronization step, where data from multiple function calls is assimilated to identify the next campaign of function calls. Bayesian optimization provides an elegant approach to overcome this issue via asynchronous updates. We formulate, develop and implement a parallel, asynchronous variant of Bayesian optimization. The framework is robust and resilient to external failures. We show how such asynchronous evaluations help reduce the total optimization wall clock time for a suite of test problems. Additionally, we show how the software design of the framework allows easy extension to response surface reconstruction (Kriging), providing a high performance software for autonomous exploration. The software is available on PyPI, with examples and documentation.

Publisher

Association for Computing Machinery (ACM)

Subject

Applied Mathematics,Software

Reference24 articles.

1. Robust Gaussian Process-Based Global Optimization Using a Fully Bayesian Expected Improvement Criterion

2. E. Brochu V. M. Cora and N. De Freitas. 2010. A tutorial on Bayesian optimization of expensive cost functions with application to active user modeling and hierarchical reinforcement learning. (2010) 49 pages.

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4. GAUSSIAN PROCESSES FOR MACHINE LEARNING

5. David Ginsbourger, Rodolphe Le Riche, and Laurent Carraro. 2010. Kriging is well-suited to parallelize optimization. In Computational Intelligence in Expensive Optimization Problems. Springer, 131–162.

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