Lindorm TSDB:用于大规模监控系统的云原生时间序列数据库

IF 2.6 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Proceedings of the Vldb Endowment Pub Date : 2023-08-01 DOI:10.14778/3611540.3611559
Chunhui Shen, Qianyu Ouyang, Feibo Li, Zhipeng Liu, Longcheng Zhu, Yujie Zou, Qing Su, Tianhuan Yu, Yi Yi, Jianhong Hu, Cen Zheng, Bo Wen, Hanbang Zheng, Lunfan Xu, Sicheng Pan, Bin Wu, Xiao He, Ye Li, Jian Tan, Sheng Wang, Dan Pei, Wei Zhang, Feifei Li
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引用次数: 0

摘要

大规模分布式系统支持的互联网服务已经成为我们日常生活中必不可少的一部分。为了保证服务的稳定性和高质量,不断收集和管理各种度量数据,并将其保存在时间序列数据库中,以监控服务状态。然而,当指标的数量变得巨大时,现有的时间序列数据库在处理高速数据摄取和涉及多个指标的查询方面效率低下。此外,它们都缺乏机器学习功能的支持,而机器学习功能对于大规模时间序列的复杂分析至关重要。在本文中,我们提出了Lindorm TSDB,一个分布式时间序列数据库,旨在处理大规模的监控指标。它通过大量活动度量维持高写吞吐量和低查询延迟。它还允许用户直接通过SQL使用异常检测和时间序列预测算法分析数据。此外,即使在节点扩展期间,Lindorm TSDB也保持稳定的性能。我们在不同的数据规模下对Lindorm TSDB进行了评估,结果表明它在编写和查询方面都优于两种流行的开源时间序列数据库,同时有效地执行时间序列机器学习任务。
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Lindorm TSDB: A Cloud-Native Time-Series Database for Large-Scale Monitoring Systems
Internet services supported by large-scale distributed systems have become essential for our daily life. To ensure the stability and high quality of services, diverse metric data are constantly collected and managed in a time-series database to monitor the service status. However, when the number of metrics becomes massive, existing time-series databases are inefficient in handling high-rate data ingestion and queries hitting multiple metrics. Besides, they all lack the support of machine learning functions, which are crucial for sophisticated analysis of large-scale time series. In this paper, we present Lindorm TSDB, a distributed time-series database designed for handling monitoring metrics at scale. It sustains high write throughput and low query latency with massive active metrics. It also allows users to analyze data with anomaly detection and time series forecasting algorithms directly through SQL. Furthermore, Lindorm TSDB retains stable performance even during node scaling. We evaluate Lindorm TSDB under different data scales, and the results show that it outperforms two popular open-source time-series databases on both writing and query, while executing time-series machine learning tasks efficiently.
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来源期刊
Proceedings of the Vldb Endowment
Proceedings of the Vldb Endowment Computer Science-General Computer Science
CiteScore
7.70
自引率
0.00%
发文量
95
期刊介绍: The Proceedings of the VLDB (PVLDB) welcomes original research papers on a broad range of research topics related to all aspects of data management, where systems issues play a significant role, such as data management system technology and information management infrastructures, including their very large scale of experimentation, novel architectures, and demanding applications as well as their underpinning theory. The scope of a submission for PVLDB is also described by the subject areas given below. Moreover, the scope of PVLDB is restricted to scientific areas that are covered by the combined expertise on the submission’s topic of the journal’s editorial board. Finally, the submission’s contributions should build on work already published in data management outlets, e.g., PVLDB, VLDBJ, ACM SIGMOD, IEEE ICDE, EDBT, ACM TODS, IEEE TKDE, and go beyond a syntactic citation.
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