Mapping Strategies in Data Parallel Programming Models; the Projection Methods

نویسنده

  • N. Emad
چکیده

We Analyze data parallel programming of some general purpose methods in linear algebra. Specifically , the projection methods to solve very large linear system and/or eigenproblem. The expensive parts of these methods are their projection phases. This portion of these algorithms has generally, a very simple structure for such a programming model. It is composed essentially of matrix-vector multiplications and inner-products. Then, we simply need to nd a good data distribution in order to obtain a well adapted communication pattern and not loose too much storage space. We begin with a survey of data parallel behavior of some projection methods such as Arnoldi, GMRES, Lanczos, PRR, After analyzing some methods of data mapping onto virtual processors we point out that for a xed number of physical processors, the performances are a function of the mapping method. We will see also that the maximum size of the problems which can be solved on the architectures supporting the data parallel programming model is a function of the data mapping method. In conclusion we present the performances obtained on a Connection Machine 5 (CM5).

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عنوان ژورنال:
  • Scalable Computing: Practice and Experience

دوره 2  شماره 

صفحات  -

تاریخ انتشار 1999