Benefits and Challenges of a Reference Architecture for Processing Statistical Data - Digital Nations – Smart Cities, Innovation, and Sustainability
Conference Papers Year : 2017

Benefits and Challenges of a Reference Architecture for Processing Statistical Data

Agung Wahyudi
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  • PersonId : 1030983
Ricardo Matheus
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  • PersonId : 995635
Marijn Janssen
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  • PersonId : 985668

Abstract

Organizations are looking for ways to gain advantage of big and open linked data (BOLD) by employing statistics, however, how these benefits can be created is often unclear. A reference architecture (RA) can capitalize experiences and facilitate the gaining of the benefits, but might encounter challenges when trying to gain the benefits of BOLD. The objective of the research to evaluate the benefits and challenges of building IT systems using a RA. We do this by investigating cases of the utilization of a RA for Linked Open Statistical Data (LOSD). Benefits of using the reference architecture include reducing project complexity, avoiding having to “reinvent the wheel”, easing the analysis of a (complex) system, preserving knowledge (e.g. proven concepts and practices), mitigating multiple risks by reusing proven building blocks, and providing users a common understanding. Challenges encountered include the need for communication and learning the ins and outs of the RA, missing features, inflexibility to add new instances as well as integrating the RA with existing implementations, and the need for support for the RA from other stakeholders.
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hal-01768525 , version 1 (17-04-2018)

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Agung Wahyudi, Ricardo Matheus, Marijn Janssen. Benefits and Challenges of a Reference Architecture for Processing Statistical Data. 16th Conference on e-Business, e-Services and e-Society (I3E), Nov 2017, Delhi, India. pp.462-473, ⟨10.1007/978-3-319-68557-1_41⟩. ⟨hal-01768525⟩
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