Apache IoTDB 中的时间序列数据编码:比较分析和建议

Tianrui Xia, Jinzhao Xiao, Yuxiang Huang, Changyu Hu, Shaoxu Song, Xiangdong Huang, Jianmin Wang
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引用次数: 0

摘要

时间序列数据不仅应用广泛,而且特征鲜明,这刺激了时间序列数据库管理系统的蓬勃发展,如 Apache IoTDB、InfluxDB、OpenTSDB 等。几乎所有这些系统都采用列式存储,对时间序列数据进行有效编码。鉴于各种时间序列数据的不同特点,不同的编码策略可能会有不同的表现。在本研究中,我们首先总结了可能影响编码性能的时间序列数据特征。我们还介绍了针对这些特征的最新特征提取结果。然后,我们介绍了典型时间序列数据库 Apache IoTDB 的存储方案,规定了在系统中实施编码算法的限制。然后,对所研究算法的编码效果进行定性分析。为此,我们开发了一个评估编码算法的基准,包括一个数据生成器和几个真实世界的数据集。此外,我们还进行了广泛的实验评估。值得注意的是,我们在 Apache IoTDB 中对数据特征的编码效果进行了定量分析。最后,我们针对不同时间序列的数据特征推荐了最佳编码算法。我们训练了机器学习模型来进行推荐,并在真实世界数据集上进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Time series data encoding in Apache IoTDB: comparative analysis and recommendation

Not only the vast applications but also the distinct features of time series data stimulate the booming growth of time series database management systems, such as Apache IoTDB, InfluxDB, OpenTSDB and so on. Almost all these systems employ columnar storage, with effective encoding of time series data. Given the distinct features of various time series data, different encoding strategies may perform variously. In this study, we first summarize the features of time series data that may affect encoding performance. We also introduce the latest feature extraction results in these features. Then, we introduce the storage scheme of a typical time series database, Apache IoTDB, prescribing the limits to implementing encoding algorithms in the system. A qualitative analysis of encoding effectiveness is then presented for the studied algorithms. To this end, we develop a benchmark for evaluating encoding algorithms, including a data generator and several real-world datasets. Also, we present an extensive experimental evaluation. Remarkably, a quantitative analysis of encoding effectiveness regarding to data features is conducted in Apache IoTDB. Finally, we recommend the best encoding algorithm for different time series referring to their data features. Machine learning models are trained for the recommendation and evaluated over real-world datasets.

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