EDM: An Endurance-Aware Data Migration Scheme for Load Balancing in SSD Storage Clusters

IPDPS(2014)

引用 43|浏览14
暂无评分
摘要
Data migration schemes are critical to balance the load in storage clusters for performance improvement. However, as NAND flash based SSDs are widely deployed in storage systems, extending the lifespan of SSD storage clusters becomes a new challenge for data migration. Prior approaches designed for HDD storage clusters, however, are inefficient due to excessive write amplification during data migration, which significantly decrease the lifespan of SSD storage clusters. To overcome this problem, we propose EDM, an endurance aware data migration scheme with careful data placement and movement to minimize the data migrated, so as to limit the worn-out of SSDs while improving the performance. Based on the observation that performance degradation is dominated by the wear speed of an SSD, which is affected by both the storage utilization and the write intensity, two complementary data migration policies are designed to explore the trade-offs among throughput, response time during migration, and lifetime of SSD storage clusters. Moreover, we design an SSD wear model and quantitatively calculate the amount of data migrated as well as the sources and destinations of the migration, so as to reduce the write amplification caused by migration. Results on a real storage cluster using real-world traces show that EDM performs favorably versus existing HDD based migration techniques, reducing cluster-wide aggregate erase count by up to 40%. In the meantime, it improves the performance by 25% on average compared to the baseline system which achieves almost the same effectiveness of performance improvement as previous migration techniques.
更多
查看译文
关键词
edm,data migration,hdd based migration techniques,endurance-aware data migration scheme,performance improvement,resource allocation,performance degradation,hdd storage clusters,endurance,nand flash based ssd,storage cluster,data handling,solid state drive (ssd),performance evaluation,write amplification,ssd storage clusters,load balancing,flash memories,cluster-wide aggregate erase count,storage cluster, data migration, load balancing, solid state drive , endurance,data placement,throughput,servers,data models,mathematical model
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要