Abstract:
This study investigated alignment of industrial engineering curriculum
at the University of South Africa, to the skill and knowledge needs
of industry. The study developed a curriculum management system
that utilises artificial intelligence to interpret the skill/knowledge
requirements of the industry from job advertisements, and then takes
the approach of decomposed (atomic) curriculum management to
align curriculum to industry. The concept of ’atomising’ curriculum
is characterised by decomposing program courses or modules into
distinct micro-curriculum elements which although highly complex to
manipulate, provide unmatched robustness in curriculum alignment to
industry. The study contributed a blend of reforms and improvements
to the industrial engineering curriculum in the UNISA context and
developed an intelligent management system to manipulate curriculum
to better align to the needs of industry.
The main objective of the study was to develop a system to support
decision making in bridging the gap between higher education and
industry needs, in view of the graduate engineer. The problem
is misalignment of curriculum to industry needs. One reason for
misalignment is that in some cases, teachers interpret and accept
curriculum in different ways, according to the unique individual
strengths, weaknesses, experience, personality and background of the
teachers. Regardless, the result is curriculum misalignment, which was
shown to ultimately contribute to problems such as graduate youth unemployment, skill underutilisation and low innovation. In this study
therefore, the intention is to develop an intelligent and automated
system which can support the management of curriculum for improved
alignment to industry needs.
The methodology begins with a survey carried out to map the
needs of industry in terms of skill and knowledge requirement,
vi
from a graduate industrial engineer perspective. The curriculum
management system is designed to align curriculum to industry,
based on the needs presented by both the employment avenue
and the entrepreneurship avenue. Control data is obtained from
on-line job advertisement platforms, which after the necessary
preprocessing, is fed into the management system. The curriculum
management system maps industry needs to curriculum specifications
by interpreting the qualitative job advertisement information into ranked
quantitative curriculum elements by first converting job functions from
the advertisements into some curriculum molecules then from the
molecules into curriculum atoms (curriculum elements). These final
curriculum elements become the means to curriculum adjustments,
allowing curriculum manipulation across the entire program course.
The complexity of the mapping process is proportional to the volume
of control data. Results show that artificial intelligence (artificial
neural network) sufficiently delivers satisfactory control. Results show
that atomic curriculum manipulation, compared to the conventional
molecular-type manipulation, presents a more meticulous and holistic
approach to aligning engineering curriculum to industry.
It was concluded from the study, that atomic curriculum manipulation
not only improves the effectiveness of curriculum alignment, but also
promotes curriculum integrity. Atomic curriculum manipulation, as
proposed in this study, decentralises curriculum management to the
teacher level, rather than the institutional level. This encourages
improved teacher-student and teacher-teacher interaction. Further
studies will adapt the proposed solution to any particular program of
study.