Gisperg, F., Klausser, R., Elshazly, M., Kopp, J., Přáda Brichtová, E., & Spadiut, O. (2025). Bayesian Optimization in Bioprocess Engineering—Where Do We Stand Today? Biotechnology and Bioengineering, 122(6), 1313–1325. https://doi.org/10.1002/bit.28960
Bayesian optimization is a stochastic, global black-box optimization algorithm. By combining Machine Learning with decision-making, the algorithm can optimally utilize information gained during experimentation to plan further experiments-while balancing exploration and exploitation. Although Design of Experiments has traditionally been the preferred method for optimizing bioprocesses, AI-driven tools have recently drawn increasing attention to Bayesian optimization within bioprocess engineering. This review presents the principles and methodologies of Bayesian optimization and focuses on its application to various stages of bioprocess engineering in upstream and downstream processing.
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Project title:
CD Labor für Inclusion Body Prozessierung 4.0: CDL IB4.0 (Christian Doppler Forschungsgesells)
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Research Areas:
Mathematical and Algorithmic Foundations: 10% Modeling and Simulation: 50% Computational System Design: 40%