Using Learned Indexes to Improve Time Series Indexing Performance on Embedded Sensor Devices

David Ding, Ivan Carvalho, R. Lawrence
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引用次数: 1

Abstract

Efficiently querying data on embedded sensor and IoT devices is challenging given the very limited memory and CPU resources. With the increasing volumes of collected data, it is critical to process, filter, and manipulate data on the edge devices where it is collected to improve efficiency and reduce network transmissions. Existing embedded index structures do not adapt to the data distribution and characteristics. This paper demonstrates how applying learned indexes that develop space efficient summaries of the data can dramatically improve the query performance and predictability. Learned indexes based on linear approximations can reduce the query I/O by 50 to 90% and improve query throughput by a factor of 2 to 5, while only requiring a few kilobytes of RAM. Experimental results on a variety of time series data sets demonstrate the advantages of learned indexes that considerably improve over the state-of-the-art index algorithms.
利用学习索引提高嵌入式传感器设备的时间序列索引性能
鉴于内存和CPU资源非常有限,高效查询嵌入式传感器和物联网设备上的数据具有挑战性。随着收集数据量的增加,在收集数据的边缘设备上处理、过滤和操作数据对于提高效率和减少网络传输至关重要。现有的嵌入式索引结构不适应数据的分布和特点。本文演示了如何应用学习索引来开发数据的空间高效摘要,从而显著提高查询性能和可预测性。基于线性近似的学习索引可以将查询I/O减少50%到90%,并将查询吞吐量提高2到5倍,同时只需要几千字节的RAM。在各种时间序列数据集上的实验结果表明,与最先进的索引算法相比,学习索引的优势显著提高。
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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