GMaglev:分布式社交图分区的图友好一致哈希

Miaomiao Cheng, Jiahui Zhang, Shuibing Long
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引用次数: 0

摘要

一致性哈希在分布式系统和分布式图系统中起着重要的作用。它承担了系统扩展和收缩时的负载平衡和数据迁移的角色。许多分布式图系统都采用了图分区,图分区可以提高系统的性能。在分布式系统中,扩展和收缩会导致数据重新定位。迁移数据会消耗CPU资源,导致在线业务不可靠。采用图划分算法优化数据分布的系统性能随着数据的迁移而不可避免地下降。扩容导致的数据迁移是偶然的,系统效率是一个长期的指标。为了找到一种平衡数据迁移和扇出优化的方法,我们提出了GMaglev。在多个数据集上的实验证明了GMaglev算法的有效性。在数据重定位无线电仅增加5%的情况下,扇出减少20%。
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GMaglev: Graph-friendly Consistent Hashing for Distributed Social Graph Partition
Consistent hashing plays an important role in distributed systems as well as in distributed graph systems. It assumes the role of load balancing and data relocation for system expansion and contraction. Graph partitioning is used by many distributed graph systems, which can improve the system’s performance. In distributed systems, expansion and contraction cause data relocation. Data relocation consumes CPU and leads to the unreliability of online services.The system’s performance using the graph partition algorithm to optimize data distribution will inevitably decline with data relocation. Data migration due to capacity expansion is accidental, and system efficiency is a long-term indicator. We present GMaglev to find a way to balance the data migration and the fanout optimization. Experiments on multiple datasets show the effectiveness of GMaglev algorithm. In the case of only 5% increase in data relocation radio, fanout is reduced by 20%.
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