Abstract. The High-Performance Linpack (HPL) benchmark is the ac-cepted standard for measuring the capacity of the world’s most powerful computers, which are ranked twice yearly in the Top 500 List. Since just a small deficit in performance can cost a computer several places, it is important to tune the benchmark to obtain the best possible result. However, the adjustment of HPL’s seventeen configuration parameters to obtain maximum performance is a time-consuming task that must be performed by hand. In a previous paper, we provided a preliminary study that proposed the tuning of HPL parameters by means of an Evo-lutionary Algorithm. The approach was validated on a small cluster. In this article, we extend this initial work by describing Ac...
The performance of supercomputers has traditionally been evaluated using the LINPACK benchmark [3], ...
Building fast software in an HPC environment raises great challenges as software used for simulation...
International audienceFinely tuning MPI applications (number of processes, granularity, collectiveop...
Abstract. The High-Performance Linpack (HPL) benchmark is the ac-cepted standard for measuring the c...
peer reviewedThe High-Performance Linpack (HPL) benchmark is the ac- cepted standard for measuring t...
UTP High Performance Computing Cluster (HPCC) is a collection of computing nodes using commercially ...
The aim of this project was to encapsulate the needs of computational science applications. Performa...
Abstract. HPL is a parallel Linpack benchmark package widely adopted in massive cluster system perfo...
In this paper after a short theoretical introduction about modern techniques used inparallel computi...
The Linpack benchmark, in particular the High-Performance Linpack (HPL) implementation, has emerged ...
High‐performance Linpack (HPL) is among the most popular benchmarks for evaluating the capabilities ...
AbstractHigh-performance computing (HPC) benchmarks are widely used to evaluate and rank system perf...
Extended abstractPerformance benchmarks are used to stress test hardware and software of large scale...
To achieve peak predictive performance, hyperparameter optimization (HPO) is a crucial component of ...
Given the complexity of modern HPC systems, achieving theoretical peak performance depends on a myri...
The performance of supercomputers has traditionally been evaluated using the LINPACK benchmark [3], ...
Building fast software in an HPC environment raises great challenges as software used for simulation...
International audienceFinely tuning MPI applications (number of processes, granularity, collectiveop...
Abstract. The High-Performance Linpack (HPL) benchmark is the ac-cepted standard for measuring the c...
peer reviewedThe High-Performance Linpack (HPL) benchmark is the ac- cepted standard for measuring t...
UTP High Performance Computing Cluster (HPCC) is a collection of computing nodes using commercially ...
The aim of this project was to encapsulate the needs of computational science applications. Performa...
Abstract. HPL is a parallel Linpack benchmark package widely adopted in massive cluster system perfo...
In this paper after a short theoretical introduction about modern techniques used inparallel computi...
The Linpack benchmark, in particular the High-Performance Linpack (HPL) implementation, has emerged ...
High‐performance Linpack (HPL) is among the most popular benchmarks for evaluating the capabilities ...
AbstractHigh-performance computing (HPC) benchmarks are widely used to evaluate and rank system perf...
Extended abstractPerformance benchmarks are used to stress test hardware and software of large scale...
To achieve peak predictive performance, hyperparameter optimization (HPO) is a crucial component of ...
Given the complexity of modern HPC systems, achieving theoretical peak performance depends on a myri...
The performance of supercomputers has traditionally been evaluated using the LINPACK benchmark [3], ...
Building fast software in an HPC environment raises great challenges as software used for simulation...
International audienceFinely tuning MPI applications (number of processes, granularity, collectiveop...