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doi: 10.1145/3132710
handle: 11573/1656222 , 11568/875745
High-level parallel programming is an active research topic aimed at promoting parallel programming methodologies that provide the programmer with high-level abstractions to develop complex parallel software with reduced time to solution. Pattern-based parallel programming is based on a set of composable and customizable parallel patterns used as basic building blocks in parallel applications. In recent years, a considerable effort has been made in empowering this programming model with features able to overcome shortcomings of early approaches concerning flexibility and performance. In this article, we demonstrate that the approach is flexible and efficient enough by applying it on 12 out of 13 PARSEC applications. Our analysis, conducted on three different multicore architectures, demonstrates that pattern-based parallel programming has reached a good level of maturity, providing comparable results in terms of performance with respect to both other parallel programming methodologies based on pragma-based annotations (i.e., Open mp and O mp S s ) and native implementations (i.e., P threads ). Regarding the programming effort, we also demonstrate a considerable reduction in lines of code and code churn compared to P threads and comparable results with respect to other existing implementations.
Parallel patterns, algorithmic skeletons, benchmarking, multicore programming, parsec, Parallel patterns; algorithmic skeletons; benchmarking; multicore programming; parsec, Parallel Patterns, algorithmic skeletons, multicore programming
Parallel patterns, algorithmic skeletons, benchmarking, multicore programming, parsec, Parallel patterns; algorithmic skeletons; benchmarking; multicore programming; parsec, Parallel Patterns, algorithmic skeletons, multicore programming
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