Multi-model query languages: taming the variety of big data


연구 분야: Databases



학회: Distributed and Parallel Databases


초록

A critical issue in Big Data management is to address the variety of data–data are produced by disparate sources, presented in various formats, and hence inherently involves multiple data models. Multi-Model DataBases (MMDBs) have emerged as a promising approach for dealing with this task as they are capable of accommodating multi-model data in a single system and querying across them with a unified query language. This article aims to offer a comprehensive survey of a wide range of multi-model query languages of MMDBs. In particular, we first present the SQL-based extensions toward multi-model data, including the standard SQL extensions such as SQL/XML, SQL/JSON, and GQL, and the non-standard SQL extensions such as SQL++ and SPASQL. We then study the manners in which document-based and graph-based query languages can be extended to support multi-model data. We also investigate the query languages that provide native support on multi-model data. Finally, this article provides insights into the open challenges and problems of multi-model query languages.


Author Profile
Qingsong Guo

School of Computer Science & Technology North University of China No.3 of Xueyuan Road Taiyuan 030051 Shanxi China

China
Author Profile
Chao Zhang

Department of Computer Science University of Helsinki P.O. Box 68 Pietari Kalmin katu 5 00560 Helsinki Finland

Finland
Author Profile
Shuxun Zhang

Department of Computer Science Tsinghua University 30 Shuangqing Road Beijing 100084 China

China

📄 논문 정보

발행 연도 2023년
인용수 17
출판 국가 Finland, China
사이트 Springer
좋아요 수 0

연관 논문 목록 (367건)