MAGMA templates for scalable linear algebra on emerging architectures

Author:

Al Farhan Mohammed1ORCID,Abdelfattah Ahmad1,Tomov Stanimire1,Gates Mark1,Sukkari Dalal1,Haidar Azzam2,Rosenberg Robert3,Dongarra Jack145

Affiliation:

1. The University of Tennessee, Knoxville, TN, USA

2. Nvidia Corporation, Santa Clara, CA, USA

3. Naval Research Laboratory, Washington, DC, USA

4. Oak Ridge National Laboratory, Oak Ridge, TN, USA

5. University of Manchester, Manchester, England, UK

Abstract

With the acquisition and widespread use of more resources that rely on accelerator/wide vector–based computing, there has been a strong demand for science and engineering applications to take advantage of these latest assets. This, however, has been extremely challenging due to the diversity of systems to support their extreme concurrency, complex memory hierarchies, costly data movement, and heterogeneous node architectures. To address these challenges, we design a programming model and describe its ease of use in the development of a new MAGMA Templates library that delivers high-performance scalable linear algebra portable on current and emerging architectures. MAGMA Templates derives its performance and portability by (1) building on existing state-of-the-art linear algebra libraries, like MAGMA, SLATE, Trilinos, and vendor-optimized math libraries, and (2) providing access (seamlessly to the users) to the latest algorithms and architecture-specific optimizations through a single, easy-to-use C++-based API.

Publisher

SAGE Publications

Subject

Hardware and Architecture,Theoretical Computer Science,Software

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