利用数据模式感知垂直分区实现快速、低成本的云日志存储

IF 2.1 3区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Junyu Wei, Guangyan Zhang, Junchao Chen, Yang Wang, Weimin Zheng, Tingtao Sun, Jiesheng Wu, Jiangwei Jiang
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引用次数: 0

摘要

根据访问频率,云日志可分为在线日志、离线日志和近线日志。其中,近线日志主要用于调试,这意味着它们更倾向于低查询延迟,以获得更好的用户体验。此外,近线日志的存储系统希望总体成本低,包括存储压缩日志的存储成本,以及压缩日志和执行查询的计算成本。这些要求对实现快速、廉价的云日志存储提出了挑战。本文提出的 LogGrep 是第一款日志压缩和查询工具,它利用静态和运行时模式,以细粒度单元对日志数据进行适当的结构化和组织。LogGrep 的关键理念是 "垂直分区":它首先根据静态模式将日志解析为变量向量,然后在每个变量向量中自动提取运行时模式,从而将每个日志条目存储为多个分区。根据这些运行时模式,LogGrep 进一步将变量向量分解成称为 "胶囊 "的细粒度单元,并为每个胶囊打上其值摘要的印记。在查询过程中,LogGrep 可以借助提取的运行时模式和 Capsule 标记,避免解压缩和扫描与关键字不匹配的 Capsules。我们进一步证明,交互式调试能很好地利用基于垂直分区方法的优势,同时也能减轻其弱点。为此,LogGrep 集成了增量定位和部分重建功能,以减轻基于垂直分区方法的读取放大。我们在阿里云生产环境的 37 个云日志和公共数据集上对 LogGrep 进行了评估。结果表明,与最先进的方法相比,LogGrep 可以将查询延迟和总体成本降低一个数量级。这些结果证实,值得采用更复杂的基于垂直分区的方法来加速压缩云日志的查询。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploiting Data-pattern-aware Vertical Partitioning to Achieve Fast and Low-cost Cloud Log Storage

Cloud logs can be categorized into on-line, off-line, and near-line logs based on the access frequency. Among them, near-line logs are mainly used for debugging, which means they prefer a low query latency for better user experience. Besides, the storage system for near-line logs prefers a low overall cost including the storage cost to store compressed logs, and the computation cost to compress logs and execute queries. These requirements pose challenges to achieving fast and cheap cloud log storage.

This paper proposes LogGrep, the first log compression and query tool that exploits both static and runtime patterns to properly structurize and organize log data in fine-grained units. The key idea of LogGrep is “vertical partitioning”: it stores each log entry into multiple partitions by first parsing logs into variable vectors according to static patterns and then extracting runtime pattern(s) automatically within each variable vector. Based on such runtime patterns, LogGrep further decomposes the variable vectors into fine-grained units called “Capsules” and stamps each Capsule with a summary of its values. During the query process, LogGrep can avoid decompressing and scanning Capsules that cannot match the keywords, with the help of the extracted runtime patterns and the Capsule stamps. We further show that the interactive debugging can well utilize the advantages of the vertical-partitioning-based method and mitigate its weaknesses as well. To this end, LogGrep integrates incremental locating and partial reconstruction to mitigate the read amplification incurred by vertical-partitioning-based method.

We evaluate LogGrep on 37 cloud logs from the production environment of Alibaba Cloud and the public datasets. The results show that LogGrep can reduce the query latency and the overall cost by an order of magnitude compared with state-of-the-art works. Such results have confirmed that it is worthwhile applying a more sophisticated vertical-partitioning-based method to accelerate queries on compressed cloud logs.

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来源期刊
ACM Transactions on Storage
ACM Transactions on Storage COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-COMPUTER SCIENCE, SOFTWARE ENGINEERING
CiteScore
4.20
自引率
5.90%
发文量
33
审稿时长
>12 weeks
期刊介绍: The ACM Transactions on Storage (TOS) is a new journal with an intent to publish original archival papers in the area of storage and closely related disciplines. Articles that appear in TOS will tend either to present new techniques and concepts or to report novel experiences and experiments with practical systems. Storage is a broad and multidisciplinary area that comprises of network protocols, resource management, data backup, replication, recovery, devices, security, and theory of data coding, densities, and low-power. Potential synergies among these fields are expected to open up new research directions.
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