In: Datenbanksysteme für Business, Technologie und Web (BTW 2015), pp. 15.Klettke, M., Störl, U., Scherzinger, S.: Schema extraction and structural outlier detection for JSON-based NoSQL data stores.13.JavaScript Object Notation (JSON) (2013).Holubová I Svoboda M Lu J Laender AHF Pernici B Lim E-P de Oliveira JPM Unified management of multi-model data Conceptual Modeling 2019 Cham Springer 439 447 10.1007/978-3-5_36 Google Scholar Digital Library Gallinucci E Golfarelli M Rizzi S Abelló A Romero O Interactive multidimensional modeling of linked data for exploratory OLAP Inf. 10.Frozza, A.A., dos Santos Mello, R., da Costa, F.d.S.: An approach for schema extraction of JSON and extended JSON document collections.
thesis, Universidad de Murcia (2017) Google Scholar
9.Feliciano Morales, S.: Inferring NoSQL data schemas with model-driven engineering techniques.8.DiScala, M., Abadi, D.J.: Automatic generation of normalized relational schemas from nested key-value data.Dean J Ghemawat S MapReduce: simplified data processing on large clusters Commun. Cánovas Izquierdo JL Cabot J Daniel F Dolog P Li Q Discovering implicit schemas in JSON data Web Engineering 2013 Heidelberg Springer 68 83 10.1007/978-0-9_8 Google Scholar Digital Library 4.Bouhamoum, R., Kellou-Menouer, K., Lopes, S., Kedad, Z.: Scaling up schema discovery for RDF datasets.Bex GJ Neven F Schwentick T Vansummeren S Inference of concise regular expressions and DTDs ACM Trans. Baazizi M-A Colazzo D Ghelli G Sartiani C Parametric schema inference for massive JSON datasets VLDB J. 1.Baazizi, M.A., Colazzo, D., Ghelli, G., Sartiani, C.: A type system for interactive JSON schema inference.We believe that without adequately tackling their disadvantages we identified, uniform schema inference and modeling of the multi-model data simply cannot be pursued straightforwardly. Although they are often based on similar principles, their features, support for the detection of references, union types, or required and optional properties differ greatly. In the context of document NoSQL databases, namely those assuming the JSON data format, we focus on several representatives of the existing inference approaches and provide their thorough comparison. In certain situations, however, the presence of an explicit schema is still necessary, and so it makes sense to propose methods capable of schema inference just from the structure of the available data. Nevertheless, application developers must maintain at least the so-called implicit schema. It is not an exception for such systems not to require an explicit schema for the data they store. Since the traditional relational database systems are not capable of following the contemporary requirements on Big Data processing, a family of NoSQL databases emerged.