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  4. Business value of in-memory technology - multiple-case study insights
 
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2014
Journal Article
Title

Business value of in-memory technology - multiple-case study insights

Abstract
Purpose - The purpose of this paper is to assess the business value of in-memory computing (IMC) technology by analyzing its organizational impact in different application scenarios. Design/methodology/approach - This research applies a multiple-case study methodology analyzing five cases of IMC application scenarios in five large European industrial and service-sector companies. Findings - Results show that IMC can deliver business value in various applications ranging from advanced analytic insights to support of real-time processes. This enables higher-level organizational advantages like data-driven decision making, superior transparency of operations, and experience with Big Data technology. The findings are summarized in a business value generation model which captures the business benefits along with preceding enabling changes in the organizational environment. Practical implications - Results aid managers in identifying different application scenarios where IMC technology may generate value for their organizations from business and IT management perspectives. The research also sheds light on the socio-technical factors that influence the ikelihood of success or failure of IMC initiatives. Originality/value - This research is among the first to model the business value creation process of in-memory technology based on insights from multiple implemented applications in different industries.
Author(s)
Bärenfänger, Rieke
Institute of Information Management, University of St Gallen
Otto, Boris
LogistikCampus der TU Dortmund
Österle, Hubert
Institute of Information Management, University of St Gallen
Journal
Industrial management & data systems  
DOI
10.1108/IMDS-07-2014-0212
Language
English
Fraunhofer-Institut für Materialfluss und Logistik IML  
Keyword(s)
  • Big Data

  • business value

  • case study

  • In-memory computing

  • In-memory data management

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