Big data, organizational learning, and sensemaking: Theorizing interpretive challenges under conditions of dynamic complexity

In this conceptual article, the relations between sensemaking, learning, and big data in organizations are explored. The availability and usage of big data by organizations is an issue of emerging importance, raising new and old themes for diverse commentators and researchers to investigate. Drawing...

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Veröffentlicht in:Management learning 2016-02, Vol.47 (1), p.65-82
1. Verfasser: Calvard, Thomas Stephen
Format: Artikel
Sprache:eng
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Zusammenfassung:In this conceptual article, the relations between sensemaking, learning, and big data in organizations are explored. The availability and usage of big data by organizations is an issue of emerging importance, raising new and old themes for diverse commentators and researchers to investigate. Drawing on sensemaking, learning, and complexity perspectives, this article highlights four key challenges to be addressed if organizations are to engage the phenomenon of big data effectively and reflexively: responding to the dynamic complexity of big data in terms of “simplexity,” analyzing big data using interdisciplinary processes, responsible reflection on ideologies of learning and knowledge production when handling big data, and mutually aligning sensemaking with big data topics to map domains of application. This article concludes with additional implications arising from considering sensemaking in conjunction with big data analytics as a critical way of understanding unique aspects of learning and technology in the 21st century.
ISSN:1350-5076
1461-7307
DOI:10.1177/1350507615592113