Usability Evaluation of Cloud for HPC Applications
By: Vanessa Sochat , Daniel Milroy , Abhik Sarkar and more
Potential Business Impact:
Tests if cloud computers work for science.
The rise of AI and the economic dominance of cloud computing have created a new nexus of innovation for high performance computing (HPC), which has a long history of driving scientific discovery. In addition to performance needs, scientific workflows increasingly demand capabilities of cloud environments: portability, reproducibility, dynamism, and automation. As converged cloud environments emerge, there is growing need to study their fit for HPC use cases. Here we present a cross-platform usability study that assesses 11 different HPC proxy applications and benchmarks across three clouds (Microsoft Azure, Amazon Web Services, and Google Cloud), six environments, and two compute configurations (CPU and GPU) against on-premises HPC clusters at a major center. We perform scaling tests of applications in all environments up to 28,672 CPUs and 256 GPUs. We present methodology and results to guide future study and provide a foundation to define best practices for running HPC workloads in cloud.
Similar Papers
An Analysis of HPC and Edge Architectures in the Cloud
Distributed, Parallel, and Cluster Computing
Reveals real cloud designs for fast computing
Evaluating HPC-Style CPU Performance and Cost in Virtualized Cloud Infrastructures
Distributed, Parallel, and Cluster Computing
Finds cheapest, fastest cloud computers for tasks.
Cloud Revolution: Tracing the Origins and Rise of Cloud Computing
Distributed, Parallel, and Cluster Computing
Makes powerful computers available to everyone.