Data Science Journal
Online ISSN : 1683-1470

This article has now been updated. Please use the final version.

Report from the 5th Workshop on Extremely Large Databases
Jacek BeclaDaniel Liwei WangKian-Tat Lim
Author information
JOURNAL FREE ACCESS Advance online publication

Article ID: 012-010

Details
Abstract
The 5th XLDB workshop brought together scientific and industrial users, developers, and researchers of extremely large data and focused on emerging challenges in the healthcare and genomics communities, spreadsheet-based large scale analysis, and challenges in applying statistics to large scale analysis, including machine learning. Major problems discussed were the lack of scalable applications, the lack of expertise in developing solutions, the lack of respect for or attention to big data problems, data volume growth exceeding Moore's Law, poorly scaling algorithms, and poor data quality and integration. More communication between users, developers, and researchers is sorely needed. A variety of future work to help all three groups was discussed, ranging from collecting challenge problems to connecting with particular industrial or academic sectors.
Content from these authors

This article cannot obtain the latest cited-by information.

feedback
Top