Alexander Hopp
Mathematician who got into coding and enjoys it way too much. One of the three core developers of BayBE, the Bayesian Optimization Package developed at Merck KGaA, Darmstadt. Also working on antibody and retrosynthesis projects.
Interested in everything the intersection between mathematics and computer science has to offer, as well as in best practices for coding. Always curious to learn!
Session
From coffee machine settings to chemical reactions to website AB testing - iterative make-test-learn cycles are ubiquitous. The Bayesian Back End (BayBE) is an open-source experimental planner enabling users to smartly navigate such black-box optimization problems in iterative settings. This tutorial will i) introduce the core concepts enabled by combining Bayesian optimization and machine learning; ii) explain our software design choices, robust tests and open-source libraries this is built on; and iii) provide a short practical hands-on session.