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Symbiosis in Scale Out Networking and Data Management

机译:扩展网络和数据管理中的共生

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This talk highlights the symbiotic relationship between data management and networking through a study of two seemingly independent trends in the traditionally separate communities: large-scale data processing and software defined networking. First, data processing at scale increasingly runs across hundreds or thousands of servers. We show that balancing network performance with computation aud storage is a prerequisite to both efficient and scalable data processing. We illustrate the need for scale out networking in support of data management through a case study of TritonSort, currently the record holder for several sorting benchmarks, including GraySort and JouleSort. Our TritonSort experience shows that disk-bound workloads require 1.0 Gb/s provisioned bandwidth to keep up with modern processors while emerging flash workloads require 40 Gb/s fabrics at scale. We next argue for the need to apply data management techniques to enable Software Defined Networking (SDN) and Scale. Out Networking. SDN promises the abstraction of a single logical network fabric rather than a collection of thousands of individual boxes. In turn, scale out net- working allows network capacity (ports, bandwidth) to be expanded incrementally, rather than by wholesale fabric replacement. However, SDN requires an extensible model of both static and dynamic network properties and the ability to deliver dynamic updates to a range of network applications in a fault tolerant and low latency manner. Doing so in networking environments where updates are typically performed by timer-based broadcasts and models are specified as comma-separated text files processed by one-off scripts presents interesting challenges. For example, consider an environment where applications from routing to traffic engineering to monitoring to intrusion/anomaly detection all essentially boil down to inserting, triggering and retrieving updates to/from a shared, extensible data store.
机译:这次谈判通过研究传统上单独的社区中的两个看似独立趋势来突出数据管理和网络之间的共生关系:大规模数据处理和软件定义网络。首先,尺度的数据处理越来越多地运行数百或数千个服务器。我们表明,使用计算AUD存储的平衡网络性能是有效和可扩展的数据处理的先决条件。我们通过Tritonoror的案例研究说明了对数据管理来支持数据管理的需求,目前是几个分拣基准的记录持有者,包括Graysort和JouleSort。我们的Tritonorort经验表明,磁盘绑定的工作负载需要1.0 GB / S配置带宽,以跟上现代处理器,同时新兴闪光工作负载需要40 GB / S的织物。我们接下来争辩旨在应用数据管理技术来启用软件定义的网络(SDN)和比例。 out网络。 SDN承诺对单个逻辑网络结构的抽象而不是数千个单独的盒子的抽象。反过来,缩放网络允许逐步扩展网络容量(端口,带宽),而不是通过批发面料更换。然而,SDN需要一个可扩展模型的静态和动态网络属性,并且能够以容错和低延迟方式向一系列网络应用提供动态更新。在网络环境中执行此操作,其中更新通常由基于定时器的广播和模型执行为由一次性脚本处理的逗号分隔的文本文件提供了有趣的挑战。例如,考虑一个环境从路由到流量工程到监视到入侵/异常检测的环境基本上沸腾以插入,触发和从共享可扩展数据存储中检索更新。

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