Big Data Pipeline with ML-Based and Crowd Sourced Dynamically Created and Maintained Columnar Data Warehouse for Structured and Unstructured Big Data

K. Ghane
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引用次数: 2

Abstract

The existing big data platforms take data through distributed processing platforms and store them in a data lake. The architectures such as Lambda and Kappa address the real-time and batch processing of data. Such systems provide real time analytics on the raw data and delayed analytics on the curated data. The data denormalization, creation and maintenance of a columnar dimensional data warehouse is usually time consuming with no or limited support for unstructured data. The system introduced in this paper automatically creates and dynamically maintains its data warehouse as a part of its big data pipeline in addition to its data lake. It creates its data warehouse on structured, semi-structured and unstructured data. It uses Machine Learning to identify and create dimensions. It also establishes relations among data from different data sources and creates the corresponding dimensions. It dynamically optimizes the dimensions based on the crowd sourced data provided by end users and also based on query analysis.
基于ml和众包的大数据管道,动态创建和维护结构化和非结构化大数据的列式数据仓库
现有的大数据平台通过分布式处理平台获取数据,存储在数据湖中。Lambda和Kappa等架构解决了数据的实时和批处理问题。这样的系统提供对原始数据的实时分析和对策划数据的延迟分析。数据非规范化、创建和维护列维数据仓库通常非常耗时,而且不支持或只支持有限的非结构化数据。本文介绍的系统除了数据湖之外,还可以自动创建和动态维护数据仓库,作为其大数据管道的一部分。它在结构化、半结构化和非结构化数据上创建数据仓库。它使用机器学习来识别和创建维度。它还建立来自不同数据源的数据之间的关系,并创建相应的维度。它根据最终用户提供的众包数据和查询分析动态优化维度。
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