Probabilistic Sequential Consistency in Social Networks

Priyanka Singla, Shubhankar Suman Singh, Krishnamoorthy Gopinath, S. Sarangi
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引用次数: 4

Abstract

Researchers have proposed numerous consistency models in distributed systems that offer higher performance than classical sequential consistency (SC). Even though these models do not guarantee sequential consistency; they either behave like an SC model under certain restrictive scenarios, or ensure SC behavior for a part of the system. We propose a different line of thinking where we try to accurately estimate the number of SC violations, and then try to adapt our system to optimally tradeoff performance, resource usage, and the number of SC violations. In this paper, we propose a generic theoretical model that can be used to analyze systems that are comprised of multiple sub-domains – each sequentially consistent. It is validated with real world measurements. Next, we use this model to propose a new form of consistency called social consistency, where socially connected users perceive an SC execution, whereas the rest of the users need not. We create a prototype social network application and implement it on the Cassandra key-value store. We show that our system has 2.4× more throughput than Cassandra and provides 37% better quality-of-experience.
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社会网络中的概率顺序一致性
研究人员在分布式系统中提出了许多一致性模型,这些模型提供了比经典顺序一致性(SC)更高的性能。即使这些模型不能保证顺序的一致性;它们要么在某些限制场景下表现得像SC模型,要么确保系统一部分的SC行为。我们提出了一种不同的思路,我们尝试准确地估计SC违规的数量,然后尝试调整我们的系统,以最佳地权衡性能、资源使用和SC违规的数量。在本文中,我们提出了一个通用的理论模型,可用于分析由多个子域组成的系统-每个子域顺序一致。它通过实际测量得到验证。接下来,我们使用这个模型提出了一种新的一致性形式,称为社会一致性,其中社会连接的用户感知到SC的执行,而其他用户则不需要。我们创建了一个原型社交网络应用程序,并在Cassandra键值存储上实现它。我们的系统比Cassandra的吞吐量高2.4倍,体验质量提高37%。
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