首页|Critique of “Productivity, Portability, Performance: Data-Centric Python” by SCC Team From Zhejiang University

Critique of “Productivity, Portability, Performance: Data-Centric Python” by SCC Team From Zhejiang University

扫码查看
In SC’21, Alexandros Nikolaos Ziogas et al. proposed a Data-Centric Python workflow in their DaCe paper. DaCe provides high productivity, performance, and portability with language extensions and automatic optimizations. We reproduce the performance evaluation results from the paper on both CPU and GPU on the Azure CycleCloud cluster. We also reproduce the scaling results with up to 32 nodes and 64 processes. Our results show that the proposed workflow in that paper has outstanding performance and scalability in the provided cluster, in accordance with the SC paper.

Graphics processing unitsBenchmark testingCodesPythonHardwareLibrariesJacobian matrices

Zihan Yang、Yi Chen、Kaiqi Chen、Xingjian Qian、Shaojun Xu、Yun Pan、Chong Zeng、Jianhai Chen、Yin Zhang、Zeke Wang

展开 >

College of Computer Science and Technology, Zhejiang University, Hangzhou, Zhejiang, China

2025

IEEE transactions on parallel and distributed systems

IEEE transactions on parallel and distributed systems

SCI
ISSN:
年,卷(期):2025.36(5)
  • 4