Agile Data Architecture in Mining Industry for Continuously Business-IT Alignment: EA Perspective

Authors

  • Rika Yuliana
  • Budi Rahardjo Institut Teknologi Bandung Bandung, West Java, Indonesia, Indonesia

DOI:

https://doi.org/10.15575/join.v3i1.213

Keywords:

data architecture, reference model, agile, enterprise architecture, alignment

Abstract

Data plays a vital role particularly in mining enterprises to foster innovation and business performance through precise decision-making. Scientists have created many kinds of database technology to support them, such as big data, data cloud, etc. Meanwhile business is always facing a fluctuant situation in using those various database technologies. Unfortunately, there is still hard to use database technology in a proper way because there are no model rules in making a perfect planning so that they can choose suitable tools for its own case. Therefore, this paper aims to design an agile enterprise data architecture model rules (blueprint) in mining company based on various frameworks, tools and methods/techniques so that managers can govern their data asset for sustainably business-IT alignment. This data architecture reference models can be easily adopted by CIOs in order to move toward an integrated mining enterprises as well as guide user in producing a precise decision-making.

References

Berikut adalah daftar pustaka yang telah dirapikan tanpa mengubah urutan penulisan nama:

J. Jenkins, *Bounding ahead: IT maturity takes the mining industry from laggard to leader*, 2015.

ABB Research Survey, *The data core driving utility operational excellence through data integration*. USA, 2016.

C. Tupper, *Data Architecture, “From zen to reality”*. MA, USA: Elsevier, 2011.

R. Yuliana and B. Rahardjo, “Designing an agile enterprise architecture for mining company by using TOGAF framework,” in *4th International Conference on Cyber and IT Service Management*, 2016.

R. Yuliana and B. Rahardjo, “Designing business architecture reference model for the mining industry by using TOGAF framework,” in *International Conference on Quality in Research*, 2015.

J. Bloomberg, *The Agile Architecture Revolution: How Cloud Computing, REST-Based SOA, and Mobile Computing Are Changing Enterprise IT*. Hoboken, New Jersey: John Wiley & Sons, 2013.

W. H. Inmon and D. Linstedt, *Data Architecture: A Primer for the Data Scientist*. USA: Elsevier, 2015.

S. Aier, S. Kurpjuweit, J. Saat, and R. Winter, “Enterprise Architecture Design as an Engineering Discipline,” vol. 1, pp. 36–43, 2009.

J. Saat, U. Franke, R. Lagerström, and M. Ekstedt, “Enterprise Architecture Meta Models for IT / Business Alignment Situations.”

X. Li and S. Zhong, “Data integration based on mining value chain,” in *International Conference on E-Product, E-Services and E-Entertainment (ICEEE)*, 2010.

*The Open Group*, 2011. [Online]. Available: http://pubs.opengroup.org/architecture/chap10.

C. Coronel and S. Morris, *Database systems: design, implementation, and management*. USA: Cengage Learning, 2015.

M. Vogt and K. Hales, “Strategic Alignment of ICT Projects with Community Values in Local Government,” in *43rd Hawaii International Conference on System Sciences*, 2010.

J. Ladley, *Data governance: how to design, deploy, and sustain an effective data governance program*. USA: Elsevier, 2012.

R. Yuliana, “Designing enterprise architecture for the mining industry by using Togaf framework,” Institut Teknologi Bandung, 2011.

K. Peffers, T. Tuunanen, M. Rothenberger, and S. Chatterjee, “A design science research methodology for information systems research,” *Manag. Inf. Syst.*, vol. 24, no. 3, pp. 45–77, 2007.

Downloads

Published

2018-06-30

Issue

Section

Article

Citation Check