Analytics-Enabled Adaptive Business Architecture Modeling

In a changing competitive business landscape, organizations are challenged by traditional processes and static document-driven business architecture models or artifacts. This marks the need for a more adaptive and analytics-enabled approach to business architecture. This article proposes a framework...

Full description

Bibliographic Details
Main Authors: Shreya Srinivas, Asif Qumer Gill, Terry Roach
Format: Article
Language:English
Published: Riga Technical University 2020-07-01
Series:Complex Systems Informatics and Modeling Quarterly
Subjects:
Online Access:https://csimq-journals.rtu.lv/article/view/4046
id doaj-6ea56988d6aa428a9d21491db2bcbc58
record_format Article
spelling doaj-6ea56988d6aa428a9d21491db2bcbc582020-11-25T03:43:34ZengRiga Technical UniversityComplex Systems Informatics and Modeling Quarterly2255-99222020-07-01023234310.7250/csimq.2020-23.032248Analytics-Enabled Adaptive Business Architecture ModelingShreya Srinivas0Asif Qumer Gill1Terry Roach2School of Computer Science, University of Technology Sydney, 15 Broadway, Ultimo NSW 2007School of Computer Science, University of Technology Sydney, 15 Broadway, Ultimo NSW 2007Capsifi, 61 York St, Sydney 2000In a changing competitive business landscape, organizations are challenged by traditional processes and static document-driven business architecture models or artifacts. This marks the need for a more adaptive and analytics-enabled approach to business architecture. This article proposes a framework for adaptive business architecture modeling to address this critical concern. This research is conducted in an Australian business architecture organization using the action design research (ADR) method. The applicability of the proposed approach was demonstrated through its use in a health insurance business architecture case study using the Tableau and Jalapeno business architecture modeling platform. The proposed approach seems feasible to process business architecture data for generating essential insights and actions for adaptation.https://csimq-journals.rtu.lv/article/view/4046enterprise architecturebusiness architectureanalyticsdata gap analysisadaptive architecture
collection DOAJ
language English
format Article
sources DOAJ
author Shreya Srinivas
Asif Qumer Gill
Terry Roach
spellingShingle Shreya Srinivas
Asif Qumer Gill
Terry Roach
Analytics-Enabled Adaptive Business Architecture Modeling
Complex Systems Informatics and Modeling Quarterly
enterprise architecture
business architecture
analytics
data gap analysis
adaptive architecture
author_facet Shreya Srinivas
Asif Qumer Gill
Terry Roach
author_sort Shreya Srinivas
title Analytics-Enabled Adaptive Business Architecture Modeling
title_short Analytics-Enabled Adaptive Business Architecture Modeling
title_full Analytics-Enabled Adaptive Business Architecture Modeling
title_fullStr Analytics-Enabled Adaptive Business Architecture Modeling
title_full_unstemmed Analytics-Enabled Adaptive Business Architecture Modeling
title_sort analytics-enabled adaptive business architecture modeling
publisher Riga Technical University
series Complex Systems Informatics and Modeling Quarterly
issn 2255-9922
publishDate 2020-07-01
description In a changing competitive business landscape, organizations are challenged by traditional processes and static document-driven business architecture models or artifacts. This marks the need for a more adaptive and analytics-enabled approach to business architecture. This article proposes a framework for adaptive business architecture modeling to address this critical concern. This research is conducted in an Australian business architecture organization using the action design research (ADR) method. The applicability of the proposed approach was demonstrated through its use in a health insurance business architecture case study using the Tableau and Jalapeno business architecture modeling platform. The proposed approach seems feasible to process business architecture data for generating essential insights and actions for adaptation.
topic enterprise architecture
business architecture
analytics
data gap analysis
adaptive architecture
url https://csimq-journals.rtu.lv/article/view/4046
work_keys_str_mv AT shreyasrinivas analyticsenabledadaptivebusinessarchitecturemodeling
AT asifqumergill analyticsenabledadaptivebusinessarchitecturemodeling
AT terryroach analyticsenabledadaptivebusinessarchitecturemodeling
_version_ 1724519005246455808