Bayesian optimization (BO) is an approach to globally optimizing black-box objective functions that are expensive to evaluate. BO-powered experimental design has found wide application in materials science, chemistry, experimental physics, drug development, etc. This work aims to bring attention to the benefits of applying BO in designing experiments and to provide a BO manual, covering both methodology and software, for the convenience of anyone who wants to apply or learn BO. In particular, we briefly explain the BO technique, review all the applications of BO in additive manufacturing, compare and exemplify the features of different open BO libraries, unlock new potential applications of BO to other types of data (e.g., preferential output). This article is aimed at readers with some understanding of Bayesian methods, but not necessarily with knowledge of additive manufacturing; the software performance overview and implementation instructions are instrumental for any experimental-design practitioner. Moreover, our review in the field of additive manufacturing highlights the current knowledge and technological trends of BO.
翻译:BO的实验设计发现,在材料科学、化学、实验物理、药物开发等方面广泛应用BO的实验设计。 这项工作旨在提请注意在设计实验时应用BO的好处,并提供BO手册,包括方法和软件,以便利任何希望应用或学习BO的人。我们特别简要地解释BO技术,审查BO在添加剂制造方面的所有应用,比较和示范BO不同开放的BO图书馆的特征,释放BO对其他类型数据(例如优惠产出)的新的潜在应用。这一文章旨在读者了解BO的方法,但不一定了解添加剂制造的知识;软件性能概览和执行指示对于任何实验性设计者都是有用的。此外,我们在添加剂制造领域的审查突出了BO目前的知识和技术趋势。