使用自适应方法提高日志结构文件系统的性能

Jeanna Neefe Matthews, D. Roselli, Adam M. Costello, Randolph Y. Wang, T. Anderson
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引用次数: 200

摘要

文件系统设计者现在面临着一个两难的境地。日志结构文件系统(LFS)可以为许多常见的工作负载提供卓越的性能,例如那些经常有小的写操作、读取流量主要被缓存吸收、有足够的空闲时间来清理日志的工作负载。但是,LFS对于其他工作负载的性能很差,例如随机更新到一个完整的磁盘,几乎没有空闲时间进行清理。在本文中,我们将展示如何使用自适应算法使LFS能够在更广泛的工作负载范围内提供高性能。首先,我们将展示如何通过三种方式提高LFS写性能:通过选择段大小来匹配磁盘和工作负载特征,通过修改LFS清理策略来适应磁盘利用率的变化,以及通过使用缓存数据来降低清理成本。其次,我们展示了如何通过重新组织数据以匹配读取模式来提高LFS读取性能。通过对合成工作负载和测量工作负载的跟踪驱动模拟,我们证明了LFS的这些扩展可以显著提高其性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the performance of log-structured file systems with adaptive methods
File system designers today face a dilemma. A log-structured file system (LFS) can offer superior performance for many common workloads such as those with frequent small writes, read traffic that is predominantly absorbed by the cache, and sufficient idle time to clean the log. However, an LFS has poor performance for other workloads, such as random updates to a full disk with little idle time to clean. In this paper, we show how adaptive algorithms can be used to enable LFS to provide high performance across a wider range of workloads. First, we show how to improve LFS write performance in three ways: by choosing the segment size to match disk and workload characteristics, by modifying the LFS cleaning policy to adapt to changes in disk utilization, and by using cached data to lower cleaning costs. Second, we show how to improve LFS read performance by reorganizing data to match read patterns. Using trace-driven simulations on a combination of synthetic and measured workloads, we demonstrate that these extensions to LFS can significantly improve its performance.
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