地理空间大数据Java序列化框架性能评价

Filip Ricov, K. Pripužić
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摘要

地理空间大数据是指超出当前计算系统容量的空间数据集。这些数据集通常包含数百万个矢量几何(如点、多边形和线串),用于表示地理特征的空间组成部分。每个几何图形由一个或多个相互连接的顶点组成,其中每个顶点描述一个地理位置。由于地理空间大数据量大、生成频率高,必须采用分布式方式存储和处理,通常采用开源大数据平台,如Apache Spark。这通常需要在分布式计算机之间发送和接收几何图形时对它们进行序列化和反序列化。因此,序列化和反序列化的性能对地理空间大数据的整体处理性能有着重要的影响。在本文中,我们首先简要介绍了七个流行的Java序列化框架,它们可以处理几何图形,然后通过实验评估和比较它们在地理空间大数据上的序列化和反序列化性能。
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Perfomance Evaluation of Java Serialization Frameworks on Geospatial Big Data
Geospatial Big Data refers to spatial datasets exceeding the capacity of current computing systems. These datasets usually contain millions of vector geometries (such as points, polygons and linestrings) that are used to represent the spatial component of geographic features. Each geometry consists of one or more interconnected vertices, where each vertex describes a geographic location. Due to its large volume or high frequency of generation, Geospatial Big Data must be stored and processed in a distributed manner, usually using an open-source Big Data platform such as Apache Spark. This often requires serialization and deserialization of geometries when sending and receiving them among distributed computers. Therefore, the performance of serialization and deserialization has a significant impact on the overall processing performance of Geospatial Big Data. In this paper, we first briefly present seven popular Java serialization frameworks that can work with geometries and then experimentally evaluate and compare their serialization and deserialization performance on Geospatial Big Data.
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