bladerrunner:流处理在边缘的后端数据变化的实时视图的规模

Q3 Computer Science Operating Systems Review (ACM) Pub Date : 2021-10-26 DOI:10.1145/3477132.3483572
Jeffrey A. Barber, Ximing Yu, Laney Kuenzel Zamore, Jerry Lin, Vahid Jazayeri, Shie S. Erlich, T. Savor, M. Stumm
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引用次数: 2

摘要

考虑一个随时拥有数亿在线用户的社交媒体平台,利用一个拥有数十亿节点和边的社交图。本文所要解决的问题是如何为每个用户提供他们当前感兴趣的社交图谱部分的持续新鲜,最新的视图,从而提供积极的交互式用户体验。这个问题是具有挑战性的,因为社交图谱的变异率很高,用户经常改变他们的兴趣焦点,有些变异是许多在线用户感兴趣的。我们描述了bladerrunner,这是我们在Facebook使用的一个系统,它可以高效、快速地向用户设备发送相关的社交图谱更新。bladerrunner的核心是一组后端流处理器,它们获取社交图谱更新流,并在将选定的更新推送到用户设备之前,以每个应用程序和每个用户为基础对其进行处理。每个应用程序使用单独的流处理器,以支持特定于应用程序的定制、复杂的过滤、聚合和其他基于每个用户的消息传递操作。这一策略最大限度地减少了设备处理开销和最后一英里带宽的使用,考虑到用户主要使用移动设备,这一点至关重要。
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Bladerunner: Stream Processing at Scale for a Live View of Backend Data Mutations at the Edge
Consider a social media platform with hundreds of millions of online users at any time, utilizing a social graph that has many billions of nodes and edges. The problem this paper addresses is how to provide each user a continuously fresh, up-to-date view of the parts of the social graph they are currently interested in, so as to provide a positive interactive user experience. The problem is challenging because the social graph mutates at a high rate, users change their focus of interest frequently, and some mutations are of interest to many online users. We describe Bladerunner, a system we use at Facebook to deliver relevant social graph updates to user devices efficiently and quickly. The heart of Bladerunner is a set of back-end stream processors that obtain streams of social graph updates and process them on a per application and per-user basis before pushing selected updates to user devices. Separate stream processors are used for each application to enable application-specific customization, complex filtering, aggregation and other message delivery operations on a per-user basis. This strategy minimizes device processing overhead and last-mile bandwidth usage, which are critical given that users are mostly on mobile devices.
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来源期刊
Operating Systems Review (ACM)
Operating Systems Review (ACM) Computer Science-Computer Networks and Communications
CiteScore
2.80
自引率
0.00%
发文量
10
期刊介绍: Operating Systems Review (OSR) is a publication of the ACM Special Interest Group on Operating Systems (SIGOPS), whose scope of interest includes: computer operating systems and architecture for multiprogramming, multiprocessing, and time sharing; resource management; evaluation and simulation; reliability, integrity, and security of data; communications among computing processors; and computer system modeling and analysis.
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