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- Metadata Systems for Data Lakes: Models and Features hal link

Auteur(s): Sawadogo P., Scholly E., Favre C., Ferey Eric, Loudcher S., Darmont J.

Conference: 1st International Workshop on BI and Big Data Applications (BBIGAP@ADBIS 2019) (Bled, SI, 2019-09-08)


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Résumé:

Over the past decade, the data lake concept has emerged as an alternative to data warehouses for storing and analyzing big data. A data lake allows storing data without any predefined schema. Therefore, data querying and analysis depend on a metadata system that must be efficient and comprehensive. However, metadata management in data lakes remains a current issue and the criteria for evaluating its effectiveness are more or less nonexistent.In this paper, we introduce MEDAL, a generic, graph-based model for metadata management in data lakes. We also propose evaluation criteria for data lake metadata systems through a list of expected features. Eventually, we show that our approach is more comprehensive than existing metadata systems.