Work in Progress paper: Experiment Planning for Heterogeneous Programmable Networks

Nik Sultana
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引用次数: 1

Abstract

Private and publicly-funded cloud infrastructure and testbeds increasingly feature programmable network hardware. Programmable network cards and switches support the execution of increasingly-complex in-network programs that can operate independently of end-hosts to improve the network’s performance, resilience and utilisation. Reasoning about in-network programs, their placement, and workloads is needed to plan jobs on programmable networks. On programmable testbed networks, this reasoning feeds into resource allocation, fairness and reproducible research. But this reasoning is made challenging by the performance and resource diversity of hardware and by the failure modes that can arise in a distributed system.Flightplanner is currently the most comprehensive reasoning system for distributed and heterogeneous in-network programs but it uses a custom formalism and tool implementation, making it difficult to understand, extend, and scale.This paper describes Lightplanner, a generalisation of Flight-planner’s reasoning system that has been implemented on Prolog. It provides an executable formalisation in a well-understood logic. By relying on Prolog’s proof search, Lightplanner is 10 smaller than Flightplanner’s implementation in C++, making×it better suited for others to understand, extend, and scale. A benchmark of publicly-available in-network programs is used to evaluate Lightplanner against Flightplanner. Though the time overhead is slightly larger, Lightplanner can find better allocations than the original, more complex C++ implementation.Lightplanner is being incubated to plan experiments in a local programmable network testbed at Illinois Tech, and as a future step it will be extended to work across federated networks such as FABRIC.
工作进展论文:异构可编程网络的实验计划
私有和公共资助的云基础设施和测试平台越来越多地采用可编程网络硬件。可编程网卡和交换机支持执行日益复杂的网络内程序,这些程序可以独立于终端主机运行,以提高网络的性能、弹性和利用率。在规划可编程网络上的作业时,需要对网络内程序、它们的位置和工作负载进行推理。在可编程的测试平台网络上,这种推理有助于资源分配、公平性和可重复性研究。但是,由于硬件的性能和资源多样性以及分布式系统中可能出现的故障模式,这种推理变得具有挑战性。Flightplanner是目前针对分布式和异构网络内程序最全面的推理系统,但它使用自定义的形式和工具实现,这使得它难以理解、扩展和扩展。Lightplanner是Flight-planner推理系统在Prolog上的推广。它以易于理解的逻辑提供了可执行的形式化。依靠Prolog的证明搜索,Lightplanner比Flightplanner在c++中的实现小10倍,making×it更适合其他人理解,扩展和扩展。使用网络内公开可用程序的基准来评估Lightplanner和Flightplanner。虽然时间开销稍微大一些,但Lightplanner可以找到比原始的、更复杂的c++实现更好的分配。Lightplanner正在伊利诺伊理工大学的一个本地可编程网络测试平台上进行孵化,未来它将扩展到跨联邦网络(如FABRIC)的工作。
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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