Accelerating Graph and Machine Learning Workloads Using a Shared Memory Multicore Architecture with Auxiliary Support for In-hardware Explicit Messaging

H. Dogan, Farrukh Hijaz, Masab Ahmad, B. Kahne, Peter Wilson, O. Khan
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引用次数: 21

Abstract

Shared Memory stands out as a sine qua non for parallel programming of many commercial and emerging multicore processors. It optimizes patterns of communication that benefit common programming styles. As parallel programming is now mainstream, those common programming styles are challenged with emerging applications that communicate often and involve large amount of data. Such applications include graph analytics and machine learning, and this paper focuses on these domains. We retain the shared memory model and introduce a set of lightweight in-hardware explicit messaging instructions in the instruction set architecture (ISA). A set of auxiliary communication models are proposed that utilize explicit messages to accelerate synchronization primitives, and efficiently move computation towards data. The results on a 256-core simulated multicore demonstrate that the proposed communication models improve performance and dynamic energy by an average of 4x and 42% respectively over traditional shared memory.
使用共享内存多核架构加速图形和机器学习工作负载,并辅助支持硬件内显式消息传递
共享内存作为许多商业和新兴多核处理器并行编程的必要条件而脱颖而出。它优化了有利于通用编程风格的通信模式。由于并行编程现在是主流,这些常见的编程风格受到了新兴应用程序的挑战,这些应用程序经常进行通信并且涉及大量数据。这些应用包括图分析和机器学习,本文主要关注这些领域。我们保留了共享内存模型,并在指令集体系结构(ISA)中引入了一组轻量级的硬件内显式消息传递指令。提出了一套辅助通信模型,利用显式消息来加速同步原语,并有效地将计算转移到数据。在256核模拟多核上的结果表明,所提出的通信模型比传统共享内存的性能和动态能量平均分别提高了4倍和42%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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