十倍杠杆软件是什么-股票配资帐户是什么意思-【东方资本】,配资炒股交易软件哪个好一点,杠杆投资就是赌博,如何买股票新手入门视频

Scalable Bayesian Optimization Accelerates Process Optimization of Penicillin Production

Scalable Bayesian Optimization Accelerates Process Optimization of Penicillin Production

2 min read
分享鏈接

Advances in Neural Information Processing Systems 35, AI for Science Workshop
期刊:NeurIPS 2021 AI for Science Workshop
作者:Qiaohao Liang and Lipeng Lai
時間:2021-12-13

While Bayesian Optimization (BO) has emerged as sample-efficient optimization method for accelerating drug discovery, it has rarely been applied to the process optimization of pharmaceutical manufacturing, which traditionally has relied on human-intuition, along with trial-and-error and slow cycles of learning. The combinatorial and hierarchical complexity of such process control also introduce challenges related to high-dimensional design spaces and requirements of larger scale observations, in which BO has typically scaled poorly. In this paper, we use penicillin production as a case study to demonstrate the efficacy of BO in accelerating the optimization of typical pharmaceutical manufacturing processes. To overcome the challenges raised by high dimensionality, we apply a trust region BO approach (TuRBO) for global optimization of penicillin yield and empirically show that it outperforms other BO and random baselines. We also extend the study by leveraging BO in the context of multi-objective optimization, allowing us to further evaluate the trade-offs between penicillin yield, production time, and CO emission as by-product. Through quantifying the performance of BO across high-dimensional and multi-objective drug production optimization processes, we hope to popularize application of BO in this field, and encourage closer collaboration between machine learning and broader scientific communities.

人工智能 + 機器人
技術(shù)平臺驅(qū)動行業(yè)創(chuàng)新

推薦閱讀

Avibactam Tomilopil Form 1: A Rare Pharmaceutical Mesophase
Templated Nucleation of Clotrimazole and Ketoprofen on Polymer Substrates
Tale of Two Polymorphs: Investigating the Structural Differences and Dynamic Relationship between Nirmatrelvir Solid Forms (Paxlovid)
WUREN: Whole-modal union representation for epitope prediction