3 research outputs found

    Pure functions in C: A small keyword for automatic parallelization

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    © 2017 IEEE. The need for parallel task execution has been steadily growing in recent years since manufacturers mainly improve processor performance by scaling the number of installed cores instead of the frequency of processors. To make use of this potential, an essential technique to increase the parallelism of a program is to parallelize loops. However, a main restriction of available tools for automatic loop parallelization is that the loops often have to be 'polyhedral' and that it is, e.g., not allowed to call functions from within the loops.In this paper, we present a seemingly simple extension to the C programming language which marks functions without side-effects. These functions can then basically be ignored when checking the parallelization opportunities for polyhedral loops. We extended the GCC compiler toolchain accordingly and evaluated several real-world applications showing that our extension helps to identify additional parallelization chances and, thus, to significantly enhance the performance of applications

    Pure functions in C: A small keyword for automatic parallelization

    Get PDF
    © 2020, The Author(s). The need for parallel task execution has been steadily growing in recent years since manufacturers mainly improve processor performance by increasing the number of installed cores instead of scaling the processor’s frequency. To make use of this potential, an essential technique to increase the parallelism of a program is to parallelize loops. Several automatic loop nest parallelizers have been developed in the past such as PluTo. The main restriction of these tools is that the loops must be statically analyzable which, among other things, disallows function calls within the loops. In this article, we present a seemingly simple extension to the C programming language which marks functions without side-effects. These functions can then basically be ignored when the automatic parallelizer checks the parallelizability of loops. We integrated the approach into the GCC compiler toolchain and evaluated it by running several real-world applications. Our experiments show that the C extension helps to identify additional parallelization opportunities and, thus, to significantly increase the performance of applications
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