Finding optimal parameter configurations for tunable GPU kernels is a non-Trivial exercise for large search spaces, even when automated. This poses an optimization task on a nonconvex search space, using an expensive to evaluate function with unknown derivative. These characteristics make a good candidate for Bayesian Optimization, which has not been applied to this problem before. However, the application of Bayesian Optimization to this problem is challenging. We demonstrate how to deal with the rough, discrete, constrained search spaces, containing invalid configurations. We introduce a novel contextual variance exploration factor, as well as new acquisition functions with improved scalability, combined with an informed acquisition funct...
Tuning hyperparameters of machine learning models is important for their performance. Bayesian optim...
International audienceBayesian Optimization (BO) is a surrogate-based global optimization strategy t...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
Recent years have witnessed phenomenal growth in the application, and capabilities of Graphical Proc...
Bayesian Optimization has been widely used along with Gaussian Processes for solving expensive-to-ev...
Bayesian optimization forms a set of powerful tools that allows efficient blackbox optimization and...
This thesis introduces the concept of Bayesian optimization, primarly used in optimizing costly blac...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
We present an information-theoretic framework for solving global black-box optimization problems tha...
International audienceBayesian optimization is known to be a method of choice when it comes to solvi...
Nearest Neighbour Search in high-dimensional spaces is a common problem in Computer Vision. Although...
Abstract Despite the success of kernel-based nonparametric methods, kernel selection still requires ...
Bayesian optimization is an approach for globally optimizing black-box functions that are expensive ...
Bayesian optimization has recently been proposed as a framework for automati-cally tuning the hyperp...
Tuning hyperparameters of machine learning models is important for their performance. Bayesian optim...
International audienceBayesian Optimization (BO) is a surrogate-based global optimization strategy t...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...
Recent years have witnessed phenomenal growth in the application, and capabilities of Graphical Proc...
Bayesian Optimization has been widely used along with Gaussian Processes for solving expensive-to-ev...
Bayesian optimization forms a set of powerful tools that allows efficient blackbox optimization and...
This thesis introduces the concept of Bayesian optimization, primarly used in optimizing costly blac...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
We present an information-theoretic framework for solving global black-box optimization problems tha...
International audienceBayesian optimization is known to be a method of choice when it comes to solvi...
Nearest Neighbour Search in high-dimensional spaces is a common problem in Computer Vision. Although...
Abstract Despite the success of kernel-based nonparametric methods, kernel selection still requires ...
Bayesian optimization is an approach for globally optimizing black-box functions that are expensive ...
Bayesian optimization has recently been proposed as a framework for automati-cally tuning the hyperp...
Tuning hyperparameters of machine learning models is important for their performance. Bayesian optim...
International audienceBayesian Optimization (BO) is a surrogate-based global optimization strategy t...
Bayesian optimization has recently emerged in the machine learning community as a very effective aut...