To achieve peak predictive performance, hyperparameter optimization (HPO) is a crucial component of machine learning and its applications. Over the last years, the number of efficient algorithms and tools for HPO grew substantially. At the same time, the community is still lacking realistic, diverse, computationally cheap, and standardized benchmarks. This is especially the case for multi-fidelity HPO methods. To close this gap, we propose HPOBench, which includes 7 existing and 5 new benchmark families, with a total of more than 100 multi-fidelity benchmark problems. HPOBench allows to run this extendable set of multi-fidelity HPO benchmarks in a reproducible way by isolating and packaging the individual benchmarks in containers. It also p...
The goal of Quality Diversity Optimization is to generate a collection of diverse yet high-performin...
peer reviewedThe High-Performance Linpack (HPL) benchmark is the ac- cepted standard for measuring t...
Hyperparameter tuning is a fundamental aspect of machine learning research. Setting up the infrastru...
When developing and analyzing new hyperparameter optimization methods, it is vital to empirically ev...
Hyperparameter optimization (HPO) is crucial for fine-tuning machine learning models but can be comp...
Most machine learning algorithms are configured by a set of hyperparameters whose values must be car...
5 pages, with extended appendicesInternational audienceHyperparameter optimization (HPO) is crucial ...
Hyperparameter optimization (HPO) is a necessary step to ensure the best possible performance of Mac...
Hyperparameter optimization (HPO) is a fundamental problem in automatic machine learning (AutoML). H...
Machine learning (ML) methods offer a wide range of configurable hyperparameters that have a signifi...
Hyperparameter optimization (HPO) and neural architecture search (NAS) are methods of choice to obta...
Hyperparameter optimization(HPO) forms a critical aspect for machine learning applications to attain...
Preprint with appendicesMachine learning (ML) methods offer a wide range of configurable hyperparame...
Machine Learning applications now span across multiple domains due to the increase in computational ...
While Weighted Lasso sparse regression has appealing statistical guarantees that would entail a majo...
The goal of Quality Diversity Optimization is to generate a collection of diverse yet high-performin...
peer reviewedThe High-Performance Linpack (HPL) benchmark is the ac- cepted standard for measuring t...
Hyperparameter tuning is a fundamental aspect of machine learning research. Setting up the infrastru...
When developing and analyzing new hyperparameter optimization methods, it is vital to empirically ev...
Hyperparameter optimization (HPO) is crucial for fine-tuning machine learning models but can be comp...
Most machine learning algorithms are configured by a set of hyperparameters whose values must be car...
5 pages, with extended appendicesInternational audienceHyperparameter optimization (HPO) is crucial ...
Hyperparameter optimization (HPO) is a necessary step to ensure the best possible performance of Mac...
Hyperparameter optimization (HPO) is a fundamental problem in automatic machine learning (AutoML). H...
Machine learning (ML) methods offer a wide range of configurable hyperparameters that have a signifi...
Hyperparameter optimization (HPO) and neural architecture search (NAS) are methods of choice to obta...
Hyperparameter optimization(HPO) forms a critical aspect for machine learning applications to attain...
Preprint with appendicesMachine learning (ML) methods offer a wide range of configurable hyperparame...
Machine Learning applications now span across multiple domains due to the increase in computational ...
While Weighted Lasso sparse regression has appealing statistical guarantees that would entail a majo...
The goal of Quality Diversity Optimization is to generate a collection of diverse yet high-performin...
peer reviewedThe High-Performance Linpack (HPL) benchmark is the ac- cepted standard for measuring t...
Hyperparameter tuning is a fundamental aspect of machine learning research. Setting up the infrastru...