关联企业数据模型及其在实时分析和上下文驱动数据发现中的应用

Kunal Taneja, Qian Zhu, Desmond Duggan, Teresa Tung
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引用次数: 9

摘要

管理企业数据的传统方法围绕着批处理驱动的Extract Transform Load过程、一刀切的存储方法以及与底层数据基础设施紧密耦合的应用程序体系结构。大数据技术的出现导致了传统方法的替代实例的创建,其中存储系统已经从关系数据库转移到像HDFS这样的NoSQL技术。随着企业开始处理复杂和异构的数据,特别是在物联网(IoT)领域,这种数据管理方法已经被发现存在不足。物联网环境的特点是数据生产者和数据处理需求。在本文中,我们阐明了物联网背景下传统数据管理方法的缺点。我们确定了由于内容异构、规模需求和ETL流程的健壮性以及快速加载和支持多个应用程序(如分析)的需求而带来的挑战。我们的方法引入了关联企业数据模型(LEDM),这是一种源自关联数据的知识表示方法,用于对数据基础设施的不同方面进行建模和链接。我们利用这个模型来开发一个可伸缩的、健壮的ETL框架。该框架采用Lambda架构方法,支持传入数据的流处理和批处理。我们为Lambda架构的流分支构建了这种能力,该架构包括Amazon Kinesis、Apache Spark streaming和Amazon Dynamo。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linked Enterprise Data Model and Its Use in Real Time Analytics and Context-Driven Data Discovery
Traditional approaches for managing enterprise data revolve around a batch driven Extract Transform Load process, a one size fits all approach for storage, and an application architecture that is tightly coupled to the underlying data infrastructure. The emergence of Big Data technologies have led to the creation of alternate instantiations of the traditional approach, one where the storage systems have moved from relational databases to NoSQL technologies like HDFS. This approach to data management has been found wanting as enterprises begin to deal with complex and heterogeneous data, especially in the area of Internet of Things (IoT). IoT environments are characterized by data producers and data processing requirements. In this paper, we articulate the shortcomings of traditional approaches to data management in the context of IoT. We identify the challenges brought forth due to content heterogeneity, requirements of scale, and robustness of ETL processes, and the need to rapidly onboard and support multiple applications such as analytics. Our approach introduces the Linked Enterprise Data Model (LEDM), a knowledge representation approach derived from Linked Data for modeling and linking the disparate aspects of data infrastructure. We leverage this model in developing a scalable and robust ETL framework. The framework adopts the Lambda architecture approach and supports both stream and batch processing of incoming data. We build this capability for the streaming leg of the Lambda architecture comprising of Amazon Kinesis, Apache Spark Streaming, and Amazon Dynamo.
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