Title
Adaptive metadata rebalance in exascale file system.
Abstract
This paper presents an effective method of metadata rebalance in exascale distributed file systems. Exponential data growth has led to the need for an adaptive and robust distributed file system whose typical architecture is composed of a large cluster of metadata servers and data servers. Though each metadata server can have an equally divided subset from the entire metadata set at first, there will eventually be a global imbalance in the placement of metadata among metadata servers, and this imbalance worsens over time. To ensure that disproportionate metadata placement will not have a negative effect on the intrinsic performance of a metadata server cluster, it is necessary to recover the balanced performance of the cluster periodically. However, this cannot be easily done because rebalancing seriously hampers the normal operation of a file system. This situation continues to get worse with both an ever-present heavy workload on the file system and frequent failures of server components at exascale. As one of the primary reasons for such a degraded performance, file system clients frequently fail to look up metadata from the metadata server cluster during the period of metadata rebalance; thus, metadata operations cannot proceed at their normal speed. We propose a metadata rebalance model that minimizes failures of metadata operations during the metadata rebalance period and validate the proposed model through a cost analysis. The analysis results demonstrate that our model supports the feasibility of online metadata rebalance without the normal operation obstruction and increases the chances of maintaining balance in a huge cluster of metadata servers.
Year
DOI
Venue
2017
10.1007/s11227-016-1812-x
The Journal of Supercomputing
Keywords
Field
DocType
Exascale,Metadata,Rebalance,Distributed file system
Distributed File System,Metadata repository,Metadata,File system,Computer science,Server,Parallel computing,Computer network,Journaling file system,Data file,Computer cluster,Distributed computing
Journal
Volume
Issue
ISSN
73
4
0920-8542
Citations 
PageRank 
References 
1
0.34
19
Authors
4
Name
Order
Citations
PageRank
Myung-Hoon Cha131.66
Dong-Oh Kim2156.72
Hongyeon Kim344.76
Youngkyun Kim4338.68