Data warehouse schema for monitoring key performance indicators (KPIs) for university teaching and learning using goal oriented approach
The growth and development of universities, just as other organisations, depend on their abilities to strategically plan and implement development blueprints which are in line with their vision and mission statements. The actualizations of these statements –which are often abstracted into goals a...
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Ta'a, Azman Abu Bakar, Muhamad Shahbani |
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T58.6-58.62 Management information systems Abdullah, Mohammed Thajeel Data warehouse schema for monitoring key performance indicators (KPIs) for university teaching and learning using goal oriented approach |
description |
The growth and development of universities, just as other organisations, depend on
their abilities to strategically plan and implement development blueprints which are
in line with their vision and mission statements. The actualizations of these
statements –which are often abstracted into goals and sub-goals and linked to their
respective actors –are better measured by defined key performance indicators (KPIs).
And in universities that handle modestly large and heterogeneous data, development
of data warehouse is important. Specifically, Universiti Utara Malaysia (UUM) is yet
to have a data warehouse for monitoring its organisational KPIs. This study therefore
proposes a data warehouse schema for university’s KPIs for teaching and learning
KPIs using a Requirement Goal Analysis for Data Warehouse
KPI(ReGADaK)approach which is an extension of goal-oriented requirement
analysis and design (GRAnD). The proposed schema highlights the facts,
dimensions, attributes and measures of UUM’s teaching and learning unit. The
measures from the goal analysis of this unit serve as basis of developing the related
university’s KPIs. The proposed data warehouse schema is evaluated through expert
review, prototyping and usability evaluation. The findings from the evaluation
processes suggest that the proposed data warehouse schema is suitable for
university’s KPIs for teaching and learning KPIs monitoring and practicable. |
format |
Thesis |
qualification_name |
masters |
qualification_level |
Master's degree |
author |
Abdullah, Mohammed Thajeel |
author_facet |
Abdullah, Mohammed Thajeel |
author_sort |
Abdullah, Mohammed Thajeel |
title |
Data warehouse schema for monitoring key performance indicators (KPIs) for university teaching and learning using goal oriented approach |
title_short |
Data warehouse schema for monitoring key performance indicators (KPIs) for university teaching and learning using goal oriented approach |
title_full |
Data warehouse schema for monitoring key performance indicators (KPIs) for university teaching and learning using goal oriented approach |
title_fullStr |
Data warehouse schema for monitoring key performance indicators (KPIs) for university teaching and learning using goal oriented approach |
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Data warehouse schema for monitoring key performance indicators (KPIs) for university teaching and learning using goal oriented approach |
title_sort |
data warehouse schema for monitoring key performance indicators (kpis) for university teaching and learning using goal oriented approach |
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Universiti Utara Malaysia |
granting_department |
Awang Had Salleh Graduate School of Arts & Sciences |
publishDate |
2016 |
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https://etd.uum.edu.my/5640/1/s813668_01.pdf https://etd.uum.edu.my/5640/2/s813668_02.pdf |
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my-uum-etd.56402021-04-05T01:35:27Z Data warehouse schema for monitoring key performance indicators (KPIs) for university teaching and learning using goal oriented approach 2016 Abdullah, Mohammed Thajeel Ta'a, Azman Abu Bakar, Muhamad Shahbani Awang Had Salleh Graduate School of Arts & Sciences Awang Had Salleh Graduate School of Arts and Sciences T58.6-58.62 Management information systems The growth and development of universities, just as other organisations, depend on their abilities to strategically plan and implement development blueprints which are in line with their vision and mission statements. The actualizations of these statements –which are often abstracted into goals and sub-goals and linked to their respective actors –are better measured by defined key performance indicators (KPIs). And in universities that handle modestly large and heterogeneous data, development of data warehouse is important. Specifically, Universiti Utara Malaysia (UUM) is yet to have a data warehouse for monitoring its organisational KPIs. This study therefore proposes a data warehouse schema for university’s KPIs for teaching and learning KPIs using a Requirement Goal Analysis for Data Warehouse KPI(ReGADaK)approach which is an extension of goal-oriented requirement analysis and design (GRAnD). The proposed schema highlights the facts, dimensions, attributes and measures of UUM’s teaching and learning unit. The measures from the goal analysis of this unit serve as basis of developing the related university’s KPIs. The proposed data warehouse schema is evaluated through expert review, prototyping and usability evaluation. The findings from the evaluation processes suggest that the proposed data warehouse schema is suitable for university’s KPIs for teaching and learning KPIs monitoring and practicable. 2016 Thesis https://etd.uum.edu.my/5640/ https://etd.uum.edu.my/5640/1/s813668_01.pdf text eng public https://etd.uum.edu.my/5640/2/s813668_02.pdf text eng public masters masters Universiti Utara Malaysia Abdullah, H.A. (2010). Business Intelligence Model For A Student Data Warehouse in UUM Environment. A MSc project paper of Universiti Utara Malaysia. Albert, S. (2014). Leadership, Strategic Planning and Strategic Management for Higher Education Institutions in Developing Countries Paper prepared for the World Business and Economics Research Conference, 24-25 February 2014, Rendezvous Hotel, Auckland, New Zealand. Altbach, P. G., Reisberg, L., & Rumbley, L. E. (2009). Trends in global higher education: Tracking an academic revolution. Ali, R., Dalpiaz, F., &Giorgini, P. 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