使用遗传算法将任务图映射到网络处理器上

N. Weng, N. Kumar, S. Dechu, B. Soewito
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引用次数: 6

摘要

网络处理器(NPs)是嵌入式片上系统多处理器,经过优化,可以以每秒几千兆字节的数据速率执行简单的数据包处理任务。它们是构建性能可扩展、功能灵活的网络系统的关键组件。为了满足不断提高的链路速度和更复杂的网络应用的性能需求,NPs由几十个处理器内核实现,并并行运行多个数据包处理应用。这种趋势使得应用程序开发人员越来越难以编写高性能的np。本文提出了一种自动任务调度技术来解决并行编程的复杂性。我们提出的技术是基于遗传算法的。遗传算法通过将任务依赖关系合并到调度列表中,并将任务调度列表编码为染色体,可以快速去除无效映射,进化出高质量的解决方案。该技术利用任务级和应用程序级并行性来最大化给定np体系结构的系统性能。仿真结果表明,与其他启发式方法相比,该方法可以生成高质量的映射。这项工作还将使研究人员和工程师能够系统地评估和定量地了解NPs系统问题,包括应用程序分区、架构组织、工作负载映射和运行时操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping task graphs onto Network Processors using genetic algorithm
Network processors (NPs) are embedded system-on-a- chip multiprocessors that are optimized to perform simple packet processing tasks at data rates of several Gigabytes per second. They are the key components to build a performance-scalable and function-flexible network systems. To meet the performance demands of increasing link speeds and more complex network applications, NPs are implemented with several dozen of processor cores and run multiple packet processing applications in parallel. This trend makes it increasingly difficult for application developers to program NPs for high performance. This paper presents an automated task scheduling technique to address this parallel programming complexity. Our proposed technique is based on GA. By incorporating tasks dependency into scheduling list and encoding task scheduling list as a chromosome, GA can quickly remove the invalid mappings and evolve to the high quality solutions. This technique takes advantage of task-level and application-level parallelism to maximize system performance for a given NPs architecture. The simulation results show that this proposed technique can generate high quality mapping comparing to other heuristics by mapping some sample network applications. This work will also enable researchers and engineers to systematically evaluate and quantitatively understand the NPs system issues including application partitioning, architecture organizing, workload mapping and run-time operating.
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