使用多读卡器缓冲的数据流网络并行实现的吞吐量和内存优化

Martín Letras, J. Falk, Jürgen Teich
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引用次数: 1

摘要

在本文中,我们介绍了多阅读器缓冲区(mrb)的概念,用于数据流应用的高吞吐量和内存效率实现。我们的工作是由需要处理的大量数据驱动的,通常以先进先出的方式访问,特别是在图像和视频处理应用中。在这里,目前已知的多播、分叉和合并操作符实现通过存储和通信相同数据的副本而产生巨大的内存开销。作为补救措施,我们首先引入mrb作为缓冲区,为相同数据的有限数量的读取器保留FIFO语义,同时仅存储每个数据项一次。其次,我们提出了一种通过用mrb取代所有多播参与者和连接的fifo来最小化数据流网络内存的方法。第三,我们提出了一种设计空间探索方法,有选择地用mrb取代多角色,以探索内存、吞吐量和处理器资源分配的权衡。我们的结果表明,我们的方法的探索帕累托前沿提高解决方案的质量比参考平均78%的六个基准应用程序在一个超容量指标
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Throughput and Memory Optimization for Parallel Implementations of Dataflow Networks Using Multi-Reader Buffers
In this paper, we introduce the concept of Multi-Reader Buffers (MRBs) for high throughput and memory-efficient implementation of dataflow applications. Our work is motivated by the huge amount of data that needs to be processed and typically accessed in a FIFO manner, particularly in image and video processing applications. Here, multi-cast, fork, and merge operator implementations known today produce huge memory overheads by storing and communicating copies of the same data. As a remedy, we first introduce MRBs as buffers preserving FIFO semantics for a finite number of readers of the same data while storing each data item only once. Second, we present an approach for memory minimization of data flow networks by replacing all multi-cast actors and connected FIFOs with MRBs. Third, we present a Design Space Exploration approach to selectively replace multi-cast actors with MRBs in order to explore memory, throughput, and processor resource allocation tradeoffs. Our results show that the explored Pareto fronts of our approach improve the solution quality over a reference by 78 % in average for six benchmark applications in terms of a hypervolume indicator
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