Process Model for Digital Transformation of University Knowledge
Transfer
Claudia Doering
a
, Finn Reiche
b
and Holger Timinger
c
Institute of Data and Process Science, University of Applied Sciences, Landshut, Germany
Keywords: Digitalization, Digital Transformation, Knowledge Management, Transfer, Higher Education Institution,
Universities, Modeling for Digitalization.
Abstract: The digital transformation is still a volatile concept with different understandings between researchers and
practitioners. Nevertheless, digital technologies and concepts are finding their way into all areas of life, be it
private or professional life. Even universities are not spared from digital transformation. They need to
incorporate innovations not only within their curricula, but also in their inner structures and administration to
ensure up to date research and transfer. Therefore, a structured model for the digital transformation of transfer
in universities was created. The main purpose of this paper is to provide practical support and break down
barriers in the digital transformation of knowledge transfer in and out of universities.
1 INTRODUCTION
Economy, society and research are currently
experiencing a global surge in digitization, which is
partly due to the pandemic, or at least reinforced by
it. Processes, procedures and production steps are
being digitized, just as meetings, schooling and
studying.
At the same time, the importance of knowledge
transfer is continuously increasing due to various
stakeholder groups. Companies, society, universities
and other research institutions, as well as politicians,
are recognizing this importance and are promoting
transfer and calling for it to be intensified. For
example, in Germany, a Higher Education Innovation
Act is planned, which is expected to be passed this
year or next year and which emphasizes a central role
of transfer (Bavarian Ministry of Science and Art,
2021). Knowledge and Technology Transfer, is one
of the central tasks of universities, like research and
teaching (Bavarian Ministry of Science and Art,
2021).
Digitization in the context of universities affects
all areas of higher education institutions. Research is
already in the transformation process through an
increasing establishment of research information
a
https://orcid.org/0000-0002-3727-8773
b
https://orcid.org/0000-0003-2066-7323
c
https://orcid.org/0000-0001-7992-0392
systems, and teaching is also in the process of this
transformation. In addition to pandemic online
teaching, MOOCs (massive open online courses)
have already gained attention for themselves in recent
years. These are online courses, mostly free of charge
or accessible for small fees, which students from all
over the world can use to educate themselves in a
wide variety of topics.
However, the knowledge and technology transfer
of universities has not yet been sufficiently digitized
(Doering and Timinger, 2020).
Transfer often takes place “via heads”, which
means that people spread knowledge and technology,
for example as part of a student's thesis in a company
(Liyanage et al., 2009). Such knowledge is called tacit
knowledge, which is non-codified knowledge that is
acquired through informal behavior and procedures
(Howells, 1996). In this case, knowledge from
academia is brought into the company, but on the
other hand, practical application cases are also
brought from the company via the student into the
university (Roessler, 2015). Other types of transfer
include cooperation projects between companies and
universities, patents, or presentations and workshops.
For successful tacit knowledge transfer, universities
Doering, C., Reiche, F. and Timinger, H.
Process Model for Digital Transformation of University Knowledge Transfer.
DOI: 10.5220/0010672700003064
In Proceedings of the 13th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management (IC3K 2021) - Volume 3: KMIS, pages 153-160
ISBN: 978-989-758-533-3; ISSN: 2184-3228
Copyright
c
2021 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
153
need to address the human, social and organizational
culture factors (Joia and Lemos, 2010).
In order to intensify the transfer between
companies and universities, target group-specific
information is needed. Target groups are in this case,
collaborating partners from society and industry, but
also employees of universities, in knowledge transfer
departments. Furthermore, studies have shown that
the geographical proximity between companies and
universities influences the intensity of transfer
(Arundel and Geuna, 2001; Laursen et al., 2011). If
project consortia are made up of various specialists
from different sectors of the economy, it can be
assumed that the physical distance between these
specialists and the universities is large. In most cases,
the distances are not limited to individual regions or
countries; in many cases, the parties are even
distributed globally. The proximity needed for
satisfactory knowledge transfer is missing. In order to
establish this, a way often chosen is the digitization
of the transfer process in all its facets. In this context
the term digitization means the transformation of a
process from analogous to digital data, whereas
digitalization is to use digital technologies to
transform business processes and business models
and create new revenue and value opportunities. It is
the process of using digital technologies and
information to transform business operations. The
often used term digital transformation refers to a
strategic transformation that requires both,
organizational change, and the implementation of
digital technologies.
By means of this digitalization, continuous
dissemination of research results and thus, transfer
of knowledge and technology is possible. The
advantage of digital transfer is that dissemination can
take place globally and continuously.
Universities must use digitalization in order to be
able to exploit the digital transformation for their own
benefit. Many universities are active in the area of
teaching and research in the subject area of
digitization, although some internal procedures and
processes are not digitized. Digitalization is being
taught by universities but not applied in their own
structures and processes (Doering and Timinger,
2020).
In order to give universities an impulse for
digitalization, a generic process model is necessary
which describes the various steps and stages of the
digitalization of a transfer process. Digital platforms
for knowledge transfer can be considered as an
enabler for innovation and problem solving within
transfer projects (Hossain and Lassen, 2017).
Therefore, this paper proposes an approach for a
process model for digital transformation of university
transfer processes in order to qualitatively and
quantitatively increase knowledge transfer with the
economy and society.
RQ1. How can the process of the digitalization of
university transfer processes be displayed in a
structured process model?
RQ2. What are possible challenges in the digital
transformation in universities and in which ways can
digitalization of university transfer processes be
initiated?
This article is divided in the following sections: at
first, the relevant research design is summarized. The
framework for digital transformation is then outlined
in the following section to answer RQ1. The next
sections cover RQ2 and outlines several challenges in
the digital transformation within universities.
An overview of the evaluation of the results with
a theoretical case study and an outlook completes this
contribution.
2 RESEARCH DESIGN
A comprehensive research method is needed to
ensure a high degree of quality of research. Therefore,
Design Science Research according to H
EVNER and
CHATTERJEE is used within the scope of this research
(Hevner and Chatterjee, 2010). They describe two
approaches, the Design Science and the Behavioural
Science. Whereas the latter aims at the construction
and validation of hypothesis, Design Science
Research focuses on the creation and evaluation of
IT-artefacts, which are build and evaluated in
alternating and iterative phases. In this context the
presented model is the artefact of research. H
EVNER
and CHATTERJEE present seven guidelines for the
rigorous research.
As this research method aims at solving an
essential business problems, a systematic literature
review according to the guidelines of V
OM BROCKE
was conducted to prove the relevance and fulfil the
request for rigorousness and support the research as a
search process (Vom Brocke et al., 2009). To
disseminate the information and the related model as
well as to fulfil the seventh guideline of H
EVNER and
CHATTERJEE, it will be published in this conference
and in an accompanying doctoral thesis.
To evaluate the process model for digital
transformation, expert interviews were conducted.
All expert interviews were executed as semi-
structured interviews according to the principles of
KMIS 2021 - 13th International Conference on Knowledge Management and Information Systems
154
Figure 1: Overview of Roles of Experts.
M
EUSER AND
N
AGEL
(Meuser and Nagel, 2009).
According to these guidelines an expert is a person
with special knowledge which is accepted by society
as relevant expert knowledge. In order to be able to
select the experts on the basis of specific criteria, the
guidelines of M
EUSER
and N
AGEL
were applied
(Meuser and Nagel, 2009). According to these
guidelines, an expert is a person with specialized
knowledge, which can often have been acquired
through the specific position in the company or in the
university. In total 13 experts, all situated in
Germany, were surveyed with a length of at least 30
minutes up to 90 minutes. They were carried out in
2021 using the online platform Zoom. The first
questions dealt with the experience and the
background of the experts (Figure 1). More than half
of the experts, namely seven, are employed in transfer
administrations of higher education institutions. Two
are researchers in universities, and two experts are
researchers in a company. Two of the experts are Vice
Presidents of Research and Transfer of a university.
The types of higher educational institutions, in which
the experts are employed, ranges from universities,
universities of applied sciences and technical
universities. Furthermore quality criteria according to
M
AYER
were considered (Mayer, 2013). The
objectivity of the interviews is ensured by the
independence of the experts. The data acquisition was
conducted under equal conditions, with concrete
specifications for the provision, evaluation and
interpretation of the interviews. Reliability
guarantees that the same results appear at the end of
the research, if it was conducted under the same
conditions. This quality criterion was ensured through
the conduction of pre-interviews. Validity ensures
that a suitable research design was chosen according
to the specific research questions. As the results of the
interviews can be generalized for knowledge transfer
situations for all kinds of transfer possibilities, the
validity of the interviews is ensured.
3 PROCESS MODEL FOR
DIGITAL TRANSFORMATION
IN UNIVERSITIES
The model consists of four phases, three of them
consisting of several views each. The phases are
shown in ascending order of the maturity level to the
right; the different views symbolize that there are
several potential processes or possibilities in these
phases (Figure 3).
The first phase is to elicit the current status in
relation to the existing analogous and digital
structures and data. This is exemplified by the Design
Thinking process, but the other views also indicate
other possible variations of the elicitation. The
following phase is the Enabling Phase, in which the
data is already available digitally, but is not linked to
each other. Furthermore, the processes are not
modeled or captured. Here, too, different views are
possible. The initiation of process changes or general
changes in the course of digitization can take place in
different ways, also represented by different views
(cf. RQ2). The Development & Implementation
Phase is the first phase in which steps backward, i.e.,
iterations, are possible. First, the structures and data
are available digitally, which means that processes
have already been differentiated, process owners have
been selected and named, and digital process
management is already in place. This means that the
Development and Implementation Phase is therefore
firstly characterized by a basic digitization level.
Within departments process management systems
can be used, but there are no service-oriented or
cloud-based approaches for cross-department tasks
within transfer activities.
The next step, but still in this third phase, is
process automation, which involves, for example, the
rollout of automated workflow. When moving on to a
process automation approach cross-department
digitization can occur, when process are implemented
in e.g. a research information system.
The last phase is the Sustaining & Systematic
Change Phase, which contains new business models.
In this case, this means that new areas and ideas can
be addressed and dealt with. A digital transfer process
has therefore been achieved and a new business
model or a new strategy can be implemented. Phase
two, three and four are underpinned by a foundation,
it is the Research Information System, starting partly
integrated in the Enabling Phase.
The roof is filled with different gears implying
different initiation ways of the digital transformation.
Depending on the current circumstances, the gears
Process Model for Digital Transformation of University Knowledge Transfer
155
rotate around the Organizational Culture gear and
digitization processes are initiated via different
participants – symbolized by the different gears.
The gears act as a unified and closed system.
Some of these areas have an influence on areas
outside the university. At the same time, these areas
also have an influence on the university. In
collaborations with the economy, the areas influence
each other, and the digital transformation can take
place from the university to the economy or vice
versa. Organizational culture is presented as the
largest gear in the middle and connects all others. In
this aspect, culture refers exclusively to the culture
within the organization and not to country-specific
cultures. It is a key position that can be both, an
obstacle, and an enabler of digital transformation.
However, the organizational culture gear is always at
the center, and the others are moving around, which
determines the translation and thus, the power
transmission of the changes. If the organizational
culture is very entrepreneurial and focused on quickly
changing processes, it acts as an accelerator of
change. If the internal culture is focused on
maintaining the status quo, it can act as an inhibitor.
The whole process model embodies the idea on
continuous learning and adapting. Therefore, not only
the steps backward are included, but also the whole
digital transformation process maintains the idea of a
PDCA-cycle (Figure
2). PDCA stands for Plan-Do-
Check-Act and illustrates that the process of digital
transformation will never finalize. Not only technical
solution and processes will always develop over time
and need to be evaluated over again, but also new
ideas or even business models can change the whole
previous process steps.
Figure 2: Continuous improvement process of the digital
transformation process.
Figure 3: Process Model for Digital Transformation in Universities (cf. RQ1).
KMIS 2021 - 13th International Conference on Knowledge Management and Information Systems
156
4 CHALLENGES IN DIGITAL
TRANSFORMATION IN
UNIVERSITIES
The implementation of a process model for digital
transformation in universities faces some limitations
and challenges, which were assessed through the
expert interviews (RQ2). Having presented our
definition of digital transformation and a brief
description of the process model, the experts were
asked to name challenges, which they emphasized
with digital transformation. In the following, the most
commonly named challenges are presented (Figure
4).
4.1 Lack of Long-term Strategy
All the interviewees agree that digital transformation
is a strategic issue for universities. As stated by the
experts, often only short-term digital initiatives, like
the implementation of new software, are conducted
without establishing or communicating a long-term
strategy.
The strategic impetus for this change should come
from the university management and its governance,
which should not only advocate digitization, but also
be an example for it. This is seen as the only way to
promote an openness to change the way of working,
according to all experts.
4.2 Lack of Resources
The lack of resources as a limitation for digital trans-
transformation relates, according to the experts,
mainly to lack of resources in the IT departments of
universities. These departments are often
understaffed and are not able to support a digital
transformation besides their daily business.
4.3 Investment Costs
Investment costs for passing through the process of
digital transformation were not seen as a major
challenge. Process modelling tools or research
information systems are normally totally free of
charge or quite cheap. For example the Camunda
Modeler, where users can model processes in BPMN
2.0 or create decision-tables in DMN, is free of charge
(Camunda, 2019).
4.4 Lack of or Insufficient Know-how
The lack of sufficient know-how within the university
administration was assessed as the other main
challenge of digitalization besides the lack of a long-
term strategy. Employees in the university
administration are often not involved or enabled in
processual, tool or strategic changes, which can result
in a lack of understanding. For example, modelling
tools can be quite hard to understand in first place,
without any explanation. Three experts mentioned
that digitalization needs tools and processes, which
are usable without being an IT-expert.
Therefore, the employees might see problems in
the transformation, because they were not explained
target-group oriented to them.
Figure 4: Challenges in Digital Transformation in Universities (cf. RQ2).
01234567
No Challenges
Availability of suitable solutions
Uncertainty of data security or legal issues
Lack of acceptance of employees
Lack of or insufficient know-how
Investment costs too high
Lack of human/time resources
Lack of long-term strategy
Process Model for Digital Transformation of University Knowledge Transfer
157
4.5 Lack of Acceptance
The lack of acceptance of this change relates also to
the lack of or insufficient know-how of the employees
in university administrations. According to the
experts, the fear of change or the fear of losing the
personal impact are major challenges, which need to
be addressed by a university management.
4.6 Uncertainty of Data Security/Legal
Issues
The experts mentioned, that there are often
reservations with the implementation of new
tools/processes concerning data security or legal
issues concerning cyber security. But all these
reservations can be disproved, as the changes are
conducted internally within a university and can be
solved with legal support.
4.7 Availability of Solutions
The availability of suitable solutions for digitalization
was not considered as a major obstacle by the experts.
One expert even stated that this point is only used as
an “excuse for not changing anything”.
Another expert suggested the usage of internal
expertise by the researchers, as they often have a very
deep understanding of the processes and possibilities
of digitalization. Nevertheless, a lack of networking
possibilities for all university departments, in current
solutions, was assessed as a possible limitation in
digitalization.
5 EVALUATION
The digital transformation of the field of transfer and
the underlying processes at universities primarily
addresses internal university processes and structures,
as well as those of some experts from other fields. In
order to adequately capture this situation, expert
interviews were conducted, on the one hand with
experts within universities and on the other hand with
experts from external, for example from a company,
which conducts transfer projects (e.g. research
projects and thesis from students) on a regular basis
with universities (Figure 1).
5.1 Evaluation Design
The evaluation includes a case study in which the
digitalization of a single process is explained as an
example. The process is the "application of funded
research and development projects". In order to
illustrate this, the various phases of the Process Model
will be stepped through in the context of the
digitization of this university transfer process.
5.2 Case Study
The target of this case study is to demonstrate the
capability of the process model for its application in
the digital transformation of a transfer process in a
university. To this end, the process of the application
of funded research and development projects is
considered exemplarily and theoretically.
This process is initiated through the different
gears (Figure 3). For example, it can be initiate as a
result of the fact that public funding agencies require
a purely digital submission of the application, which
requires a digital application instead of an analog
application, for example in paper form. This gear
(external funding agencies) thus drives the
“Organizational Culture” gear and thus, “Initiation
and Purpose”.
The Elicitation Phase concerns a survey of the
current status in all departments involved and affected
by this process. This includes the identification of all
relevant stakeholders within the university. The
design thinking methodology can be used to capture
all data necessary for this process and form a joint
vision of this transformation process.
In the Enabling Phase all processes (digital and
analogous) are brought together from their isolated
form (from for example research information
systems).
When moving from Enabling to the Development
& Implementation Phase, this process is modelled, for
example with the BPMN2.0 modelling language.
This is a formal modelling language maintained by
the Object Management Group (Object Management
Group, 2010). This modelling language has its
benefits in its syntactic clarity and its prevalence. The
modelling involves all concerned departments, so that
they are integrated as a whole.
In the Development & Implementation Phase, the
interfaces between the departments are implemented
by the research information system. It is also possible
to automate parts of the process, in this case for
example the pre-filling or partially automated filling
in of applications. Keywords can also be marked in
tender texts or parts can be transferred to the
corresponding application.
The last phase describes a final, digital and
automated process. The capacities of employees that
are freed up by automation and digitization can be
KMIS 2021 - 13th International Conference on Knowledge Management and Information Systems
158
used for other activities, such as in a deeper support
in the initiation of other transfer projects. This means
that more work can be done with the same utilization
of resources and capacities. This new process can
serve as a starting point for the redesign of other and
similar processes such as the application of non-
public research and development projects.
6 CONCLUSION AND
OUTLOOK
Digitalization and the provision of digital processes
and platforms have been seen as an enabler for
knowledge transfer, as they offer innovative
possibilities for collaboration and further
development of organizations (Hossain and Lassen,
2017).
In this article, the two research questions RQ1 and
RQ2 have been answered. The first question dealt
with the design of a structured process model to
display the reality of the digitalization of university
transfer processes adequately. The target of research
was to design an adaptive process model, which
displays possible ways and methods of a digital
transformation within a university. When using the
process model, the users may customize the model
and only use the processes or methods, which are
relevant to them. With its iterative approach the
model supports the concept of a learning organization
and allows for setback to continuously improve itself.
Also, the various possibilities to initiate a
digitalization of university transfer processes are
displayed through different views and gears in the
process model (cf. RQ2).
To evaluate if the process models is suitable for
the digital transformation in universities, in-depth
expert interviews were conducted. It was found that
multiple challenges and limitations exits in the digital
transformation in universities (cf. RQ2). The experts
assigned the “Lack of long-term strategy” and “Lack
of or insufficient know-how” as the most challenging
aspects.
The use of automatized or even a whole digital
transformation has multiple benefits for universities,
e.g. a faster and enhanced availability of internal
services or an improved external image of universities
(Doering and Timinger, 2020).
The individual components of the process model
will be further evaluated in an international
perspective, as the current solution was only
evaluated within the scope of German universities.
Furthermore, aspects from other types of higher
educational institutions need to be taken into account
to evaluate whether the model is also suitable for all
types of universities, for example for private
universities, vocational academies or teacher training
colleges.
ACKNOWLEDGEMENTS
The transfer project "Transfer and Innovation East-
Bavaria" is funded by the "Innovative University of
Applied Sciences" East-Bavaria 2018 2022
(03IHS078D).
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