Ambry: LinkedIn的可伸缩地理分布式对象存储

S. Noghabi, Sriram Ganapathi Subramanian, Priyesh Narayanan, Sivabalan Narayanan, G. Holla, M. Zadeh, Tianwei Li, Indranil Gupta, R. Campbell
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引用次数: 29

摘要

全球社交网络下的基础设施必须持续地为数十亿不同大小的媒体对象(如照片、视频和音频剪辑)提供服务。这些对象必须通过地理分布、高度可扩展和负载均衡的系统以低延迟和高吞吐量进行存储和服务。现有的文件系统和对象存储在服务如此大的对象时面临几个挑战。我们介绍Ambry,一个用于存储大型不可变数据(称为blob)的生产质量系统。Ambry以分散的方式设计,并利用了逻辑blob分组、异步复制、再平衡机制、零成本故障检测和操作系统缓存等技术。Ambry已经在LinkedIn的生产环境中运行了两年,为超过4亿用户提供每秒1万次请求的服务。我们的实验评估表明,Ambry提供了高效率(利用高达88%的网络带宽)、低延迟(1 MB对象的延迟小于50 ms)和负载平衡(将磁盘间请求率的不平衡改善了8 -10倍)。
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Ambry: LinkedIn's Scalable Geo-Distributed Object Store
The infrastructure beneath a worldwide social network has to continually serve billions of variable-sized media objects such as photos, videos, and audio clips. These objects must be stored and served with low latency and high throughput by a system that is geo-distributed, highly scalable, and load-balanced. Existing file systems and object stores face several challenges when serving such large objects. We present Ambry, a production-quality system for storing large immutable data (called blobs). Ambry is designed in a decentralized way and leverages techniques such as logical blob grouping, asynchronous replication, rebalancing mechanisms, zero-cost failure detection, and OS caching. Ambry has been running in LinkedIn's production environment for the past 2 years, serving up to 10K requests per second across more than 400 million users. Our experimental evaluation reveals that Ambry offers high efficiency (utilizing up to 88% of the network bandwidth), low latency (less than 50 ms latency for a 1 MB object), and load balancing (improving imbalance of request rate among disks by 8x-10x).
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