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OpenBox: A Generalized Black-box Optimization Service (2106.00421v3)

Published 1 Jun 2021 in cs.LG and cs.AI

Abstract: Black-box optimization (BBO) has a broad range of applications, including automatic machine learning, engineering, physics, and experimental design. However, it remains a challenge for users to apply BBO methods to their problems at hand with existing software packages, in terms of applicability, performance, and efficiency. In this paper, we build OpenBox, an open-source and general-purpose BBO service with improved usability. The modular design behind OpenBox also facilitates flexible abstraction and optimization of basic BBO components that are common in other existing systems. OpenBox is distributed, fault-tolerant, and scalable. To improve efficiency, OpenBox further utilizes "algorithm agnostic" parallelization and transfer learning. Our experimental results demonstrate the effectiveness and efficiency of OpenBox compared to existing systems.

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Authors (12)
  1. Yang Li (1142 papers)
  2. Yu Shen (56 papers)
  3. Wentao Zhang (261 papers)
  4. Yuanwei Chen (2 papers)
  5. Huaijun Jiang (8 papers)
  6. Mingchao Liu (26 papers)
  7. Jiawei Jiang (47 papers)
  8. Jinyang Gao (35 papers)
  9. Wentao Wu (43 papers)
  10. Zhi Yang (188 papers)
  11. Ce Zhang (215 papers)
  12. Bin Cui (165 papers)
Citations (70)

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