Supporting Location-Based Services in a Main-Memory Database

S. Ray, Rolando Blanco, Anil K. Goel
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引用次数: 19

Abstract

With the proliferation of mobile devices and explosive growth of spatio-temporal data, Location-Based Services (LBS) have become an indispensable technology in our daily lives. The key characteristics of the LBS applications include a high rate of time-stamped location updates, and many concurrent historical, present and predictive queries. The commercial providers of LBS must support all three kinds of queries and address the high update rates. While they employ relational databases for this purpose, traditional databases are unable to cope with the growing demands of many LBS systems. Support for spatio-temporal indexes within these databases are limited to R-tree based approaches. Although a number of advanced spatio-temporal indexes have been proposed by the research community, only a few of them support historical queries. These indexing techniques, with support for historical queries, are unable to sustain high update and query throughput typical in LBS. Technological trends involving increasingly large main memory and core footprints offer opportunities to address some of these issues. We present several key ideas to support high performance commercial LBS by exploiting in-memory database techniques. Taking advantage of very large memory available in modern machines, our system maintains the location data and index for the past N days in memory. Older data and index are kept in disk. We propose an in-memory storage organization for high insert performance. We also introduce a novel spatio-temporal index that maintains partial temporal indexes in a versioned-grid structure. The partial temporal indexes are organized as compressed bitmaps. With extensive evaluation, we demonstrate that our system supports high insert and query throughputs and it outperforms the leading LBS system by a significant margin.
在主存数据库中支持基于位置的服务
随着移动设备的普及和时空数据的爆炸式增长,基于位置的服务(LBS)已经成为我们日常生活中不可或缺的一项技术。LBS应用程序的关键特征包括高频率的时间戳位置更新,以及许多并发的历史、当前和预测查询。LBS的商业提供者必须支持所有三种查询,并解决高更新率的问题。虽然他们为此目的使用关系数据库,但传统数据库无法满足许多LBS系统不断增长的需求。在这些数据库中对时空索引的支持仅限于基于r树的方法。虽然学术界已经提出了许多先进的时空索引,但只有少数索引支持历史查询。这些索引技术虽然支持历史查询,但无法维持LBS中典型的高更新和查询吞吐量。涉及越来越大的主存储器和核心占用空间的技术趋势为解决其中的一些问题提供了机会。我们提出了几个关键思想,通过利用内存数据库技术来支持高性能商业LBS。我们的系统利用现代机器中可用的非常大的内存,在内存中维护过去N天的位置数据和索引。旧的数据和索引保存在磁盘中。为了提高插入性能,我们提出了一种内存存储组织。我们还介绍了一种新的时空索引,该索引在版本网格结构中维护部分时间索引。部分时间索引被组织为压缩的位图。通过广泛的评估,我们证明了我们的系统支持高插入和查询吞吐量,并且在性能上大大优于领先的LBS系统。
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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