F1: the fault-tolerant distributed RDBMS supporting google's ad business

J. Shute, Mircea Oancea, Stephan Ellner, B. Handy, Eric Rollins, Bart Samwel, Radek Vingralek, Chad Whipkey, Xin Chen, Beat Jegerlehner, Kyle Littlefield, Phoenix Tong
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引用次数: 60

Abstract

Many of the services that are critical to Google's ad business have historically been backed by MySQL. We have recently migrated several of these services to F1, a new RDBMS developed at Google. F1 implements rich relational database features, including a strictly enforced schema, a powerful parallel SQL query engine, general transactions, change tracking and notification, and indexing, and is built on top of a highly distributed storage system that scales on standard hardware in Google data centers. The store is dynamically sharded, supports transactionally-consistent replication across data centers, and is able to handle data center outages without data loss. The strong consistency properties of F1 and its storage system come at the cost of higher write latencies compared to MySQL. Having successfully migrated a rich customer-facing application suite at the heart of Google's ad business to F1, with no downtime, we will describe how we restructured schema and applications to largely hide this increased latency from external users. The distributed nature of F1 also allows it to scale easily and to support significantly higher throughput for batch workloads than a traditional RDBMS. With F1, we have built a novel hybrid system that combines the scalability, fault tolerance, transparent sharding, and cost benefits so far available only in "NoSQL" systems with the usability, familiarity, and transactional guarantees expected from an RDBMS.
F1:支持b谷歌广告业务的容错分布式RDBMS
许多对b谷歌广告业务至关重要的服务在历史上都是由MySQL支持的。我们最近将其中几个服务迁移到F1,这是b谷歌开发的一种新的RDBMS。F1实现了丰富的关系数据库特性,包括严格执行的模式、强大的并行SQL查询引擎、一般事务、更改跟踪和通知以及索引,并构建在一个高度分布式的存储系统之上,该存储系统可在谷歌数据中心的标准硬件上扩展。该存储是动态分片的,支持跨数据中心的事务一致复制,并且能够处理数据中心中断而不会丢失数据。与MySQL相比,F1及其存储系统的强一致性是以更高的写延迟为代价的。在成功地将b谷歌广告业务核心的富客户应用程序套件迁移到F1之后,我们将描述如何重组模式和应用程序,以在很大程度上向外部用户隐藏这种增加的延迟。F1的分布式特性还允许它轻松扩展,并支持比传统RDBMS更高的批处理工作负载吞吐量。通过F1,我们构建了一个新的混合系统,它结合了迄今为止只有在“NoSQL”系统中才有的可伸缩性、容错性、透明分片和成本优势,以及RDBMS所期望的可用性、熟悉性和事务保证。
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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