ProvenanceLens:云中的服务来源管理

Tao Li, Ling Liu, Xiaolong Zhang, Kai Xu, Chao Yang
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引用次数: 13

摘要

服务来源可以定义为服务执行历史的概要文件。服务来源数据的查询可以回答诸如何时以及由谁调用服务器之类的问题。哪些服务对这些数据进行操作?服务故障的根本原因是什么?今天,大多数组织都收集和管理自己的服务来源,以便跟踪服务执行失败、定位服务瓶颈、指导资源分配、检测和防止异常行为。随着服务变得无处不在,越来越多的人需要将服务来源管理作为服务来证明。本文描述了一个双层服务来源管理框架ProvenanceLens。顶层是服务来源捕获和存储子系统,下一层提供服务来源数据的分析和推断功能,这是用于服务健康诊断和补救的增值功能。这两层都是基于服务来源数据模型构建的,服务来源数据模型是ProvenanceLens的核心组件,它将所有服务来源数据分为三大类:基本来源、复合来源和应用来源。此外,ProvenanceLens提供了一套基本的来源操作,如选择、跟踪、聚合。基本的溯源数据是通过一个轻量级的服务溯源捕获子系统收集的,该子系统监视服务执行工作流,收集服务分析数据,封装服务调用依赖项。组合和应用程序的来源数据通过一系列来源操作进行聚合。我们使用目前在中国十几所大学运行的真实世界教育服务来证明ProvenanceLens的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ProvenanceLens: Service provenance management in the cloud
Service provenance can be defined as a profile of service execution history. Queries of service provenance data can answer questions such as when and by whom a server is invoked? which services operate on this data? What might be the root cause for the service failure? Most of the organizations today collect and manage their own service provenance in order to trace service execution failures, locate service bottlenecks, guide resource allocation, detect and prevent abnormal behaviors. As services become ubiquitous, there is an increasing demand for proving service provenance management as a service. This paper describes ProvenanceLens, a two-tier service provenance management framework. The top tier is the service provenance capturing and storage subsystem and the next tier provides analysis and inference capabilities of service provenance data, which are value-added functionality for service health diagnosis and remedy. Both tiers are built based on the service provenance data model, an essential and core component of ProvenanceLens, which categorizes all service provenance data into three broad categories: basic provenance, composite provenance and application provenance. In addition, ProvenanceLens provides a suite of basic provenance operations, such as select, trace, aggregate. The basic provenance data is collected through a light-weight service provenance capturing subsystem that monitors service execution workflows, collects service profiling data, encapsulates service invocation dependencies. The composite and application provenance data are aggregated through a selection of provenance operations. We demonstrate the effectiveness of ProvenanceLens using a real world educational service currently in operation for a dozen universities in China.
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