Finding optimal configurations for Stream Processing Systems (SPS) is a challenging problem due to the large number of parameters that can influence their performance and the lack of analytical models to anticipate the effect of a change. To tackle this issue, we consider tuning methods where an experimenter is given a limited budget of experiments and needs to carefully allocate this budget to find optimal configurations. We propose in this setting Bayesian Optimization for Configuration Optimization (BO4CO), an auto-tuning algorithm that leverages Gaussian Processes (GPs) to iteratively capture posterior distributions of the configuration spaces and sequentially drive the experimentation. Validation based on Apache Storm demonstrates that...
In this paper, we aim to take a step toward a tighter integration of automated planning and Bayesian...
Advances in machine learning have had, and continue to have, a profound effect on scientific researc...
The complexity and diversity of today's architectures require an additional effort from the programm...
<p>The datasets in this release support the results presented in the paper</p> <blockquote> <p>P. J...
Modern distributed computing frameworks such as Apache Hadoop, Spark, or Storm distribute the worklo...
Global efforts aiming to shift towards de-carbonization give rise to remarkable challenges for power...
Due to their complexity, modern systems expose many con-figuration parameters which users must ...
Various research communities have independently arrived at stream processing as a programming model ...
Global efforts aiming to shift towards de-carbonization give rise to remarkable challenges for power...
How to sample the data in an optimization algorithm is important in an environmental monitoring prob...
We are concerned primarily with improving the practical applicability of Bayesian optimization. We m...
For the sake of precision, mid-term operation planning of hydro-thermal power systems needs a large ...
We consider the problem of selecting an optimal set of sensors, as determined, for example, by the p...
! In practice: Large amount of uncertainty possible " model mismatch " variable initial co...
Various research communities have independently arrived at stream processing as a programming model ...
In this paper, we aim to take a step toward a tighter integration of automated planning and Bayesian...
Advances in machine learning have had, and continue to have, a profound effect on scientific researc...
The complexity and diversity of today's architectures require an additional effort from the programm...
<p>The datasets in this release support the results presented in the paper</p> <blockquote> <p>P. J...
Modern distributed computing frameworks such as Apache Hadoop, Spark, or Storm distribute the worklo...
Global efforts aiming to shift towards de-carbonization give rise to remarkable challenges for power...
Due to their complexity, modern systems expose many con-figuration parameters which users must ...
Various research communities have independently arrived at stream processing as a programming model ...
Global efforts aiming to shift towards de-carbonization give rise to remarkable challenges for power...
How to sample the data in an optimization algorithm is important in an environmental monitoring prob...
We are concerned primarily with improving the practical applicability of Bayesian optimization. We m...
For the sake of precision, mid-term operation planning of hydro-thermal power systems needs a large ...
We consider the problem of selecting an optimal set of sensors, as determined, for example, by the p...
! In practice: Large amount of uncertainty possible " model mismatch " variable initial co...
Various research communities have independently arrived at stream processing as a programming model ...
In this paper, we aim to take a step toward a tighter integration of automated planning and Bayesian...
Advances in machine learning have had, and continue to have, a profound effect on scientific researc...
The complexity and diversity of today's architectures require an additional effort from the programm...