Implementing Multifrontal Sparse Solvers for Multicore Architectures with Sequential Task Flow Runtime Systems

Author:

Agullo Emmanuel1,Buttari Alfredo2,Guermouche Abdou3,Lopez Florent4

Affiliation:

1. Inria-LaBRI, Talence cedex, France

2. CNRS-IRIT, Toulouse, France

3. Université de Bordeaux

4. UPS-IRIT, Toulouse, France

Abstract

To face the advent of multicore processors and the ever increasing complexity of hardware architectures, programming models based on DAG parallelism regained popularity in the high performance, scientific computing community. Modern runtime systems offer a programming interface that complies with this paradigm and powerful engines for scheduling the tasks into which the application is decomposed. These tools have already proved their effectiveness on a number of dense linear algebra applications. This article evaluates the usability and effectiveness of runtime systems based on the Sequential Task Flow model for complex applications, namely, sparse matrix multifrontal factorizations that feature extremely irregular workloads, with tasks of different granularities and characteristics and with a variable memory consumption. Most importantly, it shows how this parallel programming model eases the development of complex features that benefit the performance of sparse, direct solvers as well as their memory consumption. We illustrate our discussion with the multifrontal QR factorization running on top of the StarPU runtime system.

Funder

Agence Nationale de la Recherche

Publisher

Association for Computing Machinery (ACM)

Subject

Applied Mathematics,Software

Reference38 articles.

1. Multifrontal QR Factorization for Multicore Architectures over Runtime Systems

2. Numerical linear algebra on emerging architectures: The PLASMA and MAGMA projects

3. Randy Allen and Ken Kennedy. 2002. Optimizing Compilers for Modern Architectures: A Dependence-Based Approach. Morgan Kaufmann. Randy Allen and Ken Kennedy. 2002. Optimizing Compilers for Modern Architectures: A Dependence-Based Approach. Morgan Kaufmann.

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