Content area
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.
Details
1 North University of China, School of Computer Science & Technology, Taiyuan, China (GRID:grid.440581.c) (ISNI:0000 0001 0372 1100); University of Helsinki, Department of Computer Science, Helsinki, Finland (GRID:grid.7737.4) (ISNI:0000 0004 0410 2071)
2 Tsinghua University, Department of Computer Science, Beijing, China (GRID:grid.12527.33) (ISNI:0000 0001 0662 3178)
3 University of Helsinki, Department of Computer Science, Helsinki, Finland (GRID:grid.7737.4) (ISNI:0000 0004 0410 2071)