使用轻量级运行时环境进行混合多gpu和多协处理器环境的统一开发

A. Haidar, Chongxiao Cao, A. YarKhan, P. Luszczek, S. Tomov, K. Kabir, J. Dongarra
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引用次数: 35

摘要

现代计算机可用的许多异构资源都是为不同的工作负载设计的。为了有效地使用GPU资源,工作负载必须比为多核cpu设计的工作负载具有更高程度的并行性。从概念上讲,英特尔至强协处理器能够处理介于两者之间的工作负载。如此多的可应用工作负载可能导致在多用户环境中混合使用多核cpu、gpu和Intel协处理器,这些环境必须为广泛的工作负载提供足够的计算设施。在这项工作中,我们使用轻量级运行时环境来管理特定于资源的工作负载,并在双向混合系统中控制数据流和并行执行。轻量级运行时环境使用任务超标量概念,使开发人员能够编写串行代码,同时提供并行执行。此外,我们的任务抽象支持跨所有异构资源的统一算法开发。我们提供了密集线性代数应用程序的性能结果,证明了我们的方法的有效性和各种加速器硬件的充分利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unified Development for Mixed Multi-GPU and Multi-coprocessor Environments Using a Lightweight Runtime Environment
Many of the heterogeneous resources available to modern computers are designed for different workloads. In order to efficiently use GPU resources, the workload must have a greater degree of parallelism than a workload designed for multicore-CPUs. And conceptually, the Intel Xeon Phi coprocessors are capable of handling workloads somewhere in between the two. This multitude of applicable workloads will likely lead to mixing multicore-CPUs, GPUs, and Intel coprocessors in multi-user environments that must offer adequate computing facilities for a wide range of workloads. In this work, we are using a lightweight runtime environment to manage the resource-specific workload, and to control the dataflow and parallel execution in two-way hybrid systems. The lightweight runtime environment uses task superscalar concepts to enable the developer to write serial code while providing parallel execution. In addition, our task abstractions enable unified algorithmic development across all the heterogeneous resources. We provide performance results for dense linear algebra applications, demonstrating the effectiveness of our approach and full utilization of a wide variety of accelerator hardware.
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