Robotics and automation offer massive accelerations for solving intractable, multivariate scientific problems such as materials discovery, but the available search spaces can be dauntingly large. Bayesian optimization (BO) has emerged as a popular sample-efficient optimization engine, thriving in tasks where no analytic form of the target function/property is known. Here we exploit expert human knowledge in the form of hypotheses to direct Bayesian searches more quickly to promising regions of chemical space. Previous methods have used underlying distributions derived from existing experimental measurements, which is unfeasible for new, unexplored scientific tasks. Also, such distributions cannot capture intricate hypotheses. Our proposed m...
Chemical space is so large that brute force searches for new interesting molecules are infeasible. H...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
Bayesian optimization (BO) is one of the most effective methods for closed-loop experimental design ...
Humans excel at confronting problems with little to no prior information about, and with few interac...
Humans excel at confronting problems with little to no prior information about, and with few interac...
Humans excel at confronting problems with little to no prior information about, and with few interac...
Reaction optimization is challenging and traditionally delegated to domain experts who iteratively p...
Optimization strategies driven by machine learning, such as Bayesian optimization, are being explore...
Tailoring a hybrid surface or any complex material to have functional properties that meet the needs...
Sample efficiency is one of the key factors when applying policy search to real-world problems. In r...
Machine learning methods usually depend on internal parameters-so called hyperparameters-that need t...
Optimizing reaction conditions depends on expert chemistry knowledge and laborious exploration of re...
PHYSBO (optimization tools for PHYSics based on Bayesian Optimization) is a Python library for fast ...
While additive manufacturing (AM) has facilitated the production of complex structures, it has also ...
Bayesian optimisation (BO) is an increasingly popular strategy for optimising functions with substan...
Chemical space is so large that brute force searches for new interesting molecules are infeasible. H...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
Bayesian optimization (BO) is one of the most effective methods for closed-loop experimental design ...
Humans excel at confronting problems with little to no prior information about, and with few interac...
Humans excel at confronting problems with little to no prior information about, and with few interac...
Humans excel at confronting problems with little to no prior information about, and with few interac...
Reaction optimization is challenging and traditionally delegated to domain experts who iteratively p...
Optimization strategies driven by machine learning, such as Bayesian optimization, are being explore...
Tailoring a hybrid surface or any complex material to have functional properties that meet the needs...
Sample efficiency is one of the key factors when applying policy search to real-world problems. In r...
Machine learning methods usually depend on internal parameters-so called hyperparameters-that need t...
Optimizing reaction conditions depends on expert chemistry knowledge and laborious exploration of re...
PHYSBO (optimization tools for PHYSics based on Bayesian Optimization) is a Python library for fast ...
While additive manufacturing (AM) has facilitated the production of complex structures, it has also ...
Bayesian optimisation (BO) is an increasingly popular strategy for optimising functions with substan...
Chemical space is so large that brute force searches for new interesting molecules are infeasible. H...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
Bayesian optimization (BO) is one of the most effective methods for closed-loop experimental design ...