Supporting Scalable and Adaptive Metadata Management in Ultralarge-Scale File Systems
2010; Institute of Electrical and Electronics Engineers; Volume: 22; Issue: 4 Linguagem: Inglês
10.1109/tpds.2010.116
ISSN2161-9883
AutoresYu Hua, Yifeng Zhu, Hong Jiang, Dan Feng, Lei Tian,
Tópico(s)Peer-to-Peer Network Technologies
ResumoThis paper presents a scalable and adaptive decentralized metadata lookup scheme for ultralarge-scale file systems (more than Petabytes or even Exabytes). Our scheme logically organizes metadata servers (MDSs) into a multilayered query hierarchy and exploits grouped Bloom filters to efficiently route metadata requests to desired MDSs through the hierarchy. This metadata lookup scheme can be executed at the network or memory speed, without being bounded by the performance of slow disks. An effective workload balance method is also developed in this paper for server reconfigurations. This scheme is evaluated through extensive trace-driven simulations and a prototype implementation in Linux. Experimental results show that this scheme can significantly improve metadata management scalability and query efficiency in ultralarge-scale storage systems.
Referência(s)