Adaptable mirroring in cluster servers

Ada Gavrilovska, K. Schwan, Van Oleson
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引用次数: 11

Abstract

This paper presents a software architecture for continuously mirroring streaming data received by one node of a cluster-based server to other cluster nodes. The intent is to distribute the load on the server generated by the data's processing and distribution to many clients. This is particularly important when the server not only processes streaming data, but also performs additional processing tasks that heavily depend on current application state. One such task is the preparation of suitable initialization state for thin clients, so that such clients can understand future data events being streamed to them. In particular, when large numbers of thin clients must be initialized at the same time, initialization must be performed without jeopardizing the quality of service offered to regular clients continuing to receive data streams. The mirroring framework presented and evaluated has several novel aspects. First, by performing mirroring at the middleware level, application semantics may be used to reduce mirroring traffic, including filtering events based on their content, by coalescing certain events, or by simply varying mirroring rates according to current application needs concerning the consistencies of mirrored vs. original data. Second, we present an adaptive algorithm that varies mirror consistency and thereby, mirroring overheads in response to changes in clients' request behavior. Third, our framework not only mirrors events, but it can also mirror the new states computed from incoming events, thus enabling dynamic tradeoffs in the communication vs. computation loads imposed on the server node receiving events and on its mirror nodes.
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集群服务器中的可适应镜像
本文提出了一种将集群服务器的一个节点接收到的流数据连续镜像到其他集群节点的软件体系结构。其目的是将由数据处理和分发生成的服务器上的负载分配给许多客户机。当服务器不仅处理流数据,而且还执行严重依赖于当前应用程序状态的附加处理任务时,这一点尤其重要。其中一项任务是为瘦客户机准备合适的初始化状态,这样这样的客户机就可以理解将来流式传输给它们的数据事件。特别是,当必须同时初始化大量瘦客户机时,初始化的执行必须不影响提供给继续接收数据流的常规客户机的服务质量。所提出和评估的镜像框架有几个新颖的方面。首先,通过在中间件级别执行镜像,可以使用应用程序语义来减少镜像流量,包括根据内容过滤事件,通过合并某些事件,或者根据当前应用程序对镜像数据与原始数据一致性的需求简单地改变镜像速率。其次,我们提出了一种自适应算法,该算法可以改变镜像一致性,从而在响应客户端请求行为的变化时镜像开销。第三,我们的框架不仅可以镜像事件,还可以镜像从传入事件中计算出的新状态,从而在通信与施加在接收事件的服务器节点及其镜像节点上的计算负载之间实现动态权衡。
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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