Towards an improved ASUM-DM process methodology for cross-disciplinary multi-organization big data & analytics projects
Fecha
2018-01-01
Autores
Angée, S.
Lozano-Argel, S.I.
Montoya-Munera, E.N.
Ospina-Arango, J.-D.
Tabares-Betancur, M.S.
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ISSN de la revista
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Editor
Springer Verlag
Resumen
The development of big data & analytics projects with the participation of several corporate divisions and research groups within and among organizations is a non-trivial problem and requires well-defined roles and processes. Since there is no accepted standard for the implementation of big data & analytics projects, project managers have to either adapt an existing data mining process methodology or create a new one. This work presents a use case for a big data & analytics project for the banking sector. The authors found out that an adaptation of ASUM-DM, a refined CRISP-DM, with the addition of big data analysis, application prototyping, and prototype evaluation, plus a strong project management work with an emphasis in communications proved the best solution to develop a cross-disciplinary, multi-organization, geographically-distributed big data & analytics project. © 2018, Springer Nature Switzerland AG.