The Role of Marketplaces for the Transformation from Robotic Process
Automation to Intelligent Process Automation
Thomas Neifer
1,2,3
, Paul Bossauer
1,2,3
, Dennis Lawo
1,2
, Robert Volkening
3
and Andreas Gadatsch
2,3
1
Information Systems, University of Siegen, Siegen, Germany
2
Institute for Digital Consumption, Bonn-Rhein-Sieg University of Applied Sciences, Sankt Augustin, Germany
3
Management Sciences, Bonn-Rhein-Sieg University of Applied Sciences, Sankt Augustin, Germany
Keywords:
Intelligent Process Automation, Robotic Process Automation, Marketplaces, Adoption Factors.
Abstract:
The corporate landscape is experiencing an increasing change in business models due to digitization. An in-
creasing availability of data along the business processes enhance the opportunities for process automation.
Technologies such as Robotic Process Automation (RPA) are widely used for business process optimization,
but as a side effect an increase in stand-alone solutions and a lack of holistic approaches can be observed. In-
telligent Process Automation (IPA) is said to support more complex processes and enable automated decision-
making, but due to the lack of connectors makes the implementation difficult. RPA marketplaces can be a
bridging technology to help companies implement Intelligent Process Automation. This paper explores the
drivers and challenges for the adoption of RPA marketplaces to realize IPA. For this purpose, we conducted
ten expert interviews with decision makers and IT staff from the process automation sector.
1 INTRODUCTION
Digitalization is bringing profound changes to organi-
zations and business models (Bouwman et al., 2018;
Neifer et al., 2021b). Due to the increasing availabil-
ity and utility of data along business processes, their
automation is also undergoing a major transformation
(Chakraborti et al., 2020). Traditional approaches to
process automation focus primarily on processes that
occur frequently and repeatedly in the same flow pat-
tern. However, if repetitive processes do not occur
frequently enough, their automation is usually con-
sidered too cost-intensive, especially if integrations
of different systems and their data have to take place
(Van der Aalst et al., 2018). In this case, Robotic
Process Automation (RPA) technology is often dis-
cussed in companies (Neifer et al., 2021a). For exam-
ple, Van der Aalst et al. (2018) highlight the question
”What should be automated and what should be done
by humans?” when implementing RPA technologies.
There is no uniform definition of RPA in the liter-
ature. In its original form, RPA refers to a technology
for automating manual activities in processes that are
structured, rule-based and repetitive by digital soft-
ware robots, simply called bots (Kleehaupt-Roither
and Unger, 2018). RPA offers many benefits, such
as it allows accuracy, reliability, uniformity, and con-
sistency by processing routine tasks in the exact same
way without interruption, with a reduced susceptibil-
ity to error. This is ensured through regulatory com-
pliance as well as work history revision control. Fur-
thermore, productivity can be increased in two ways:
First, through faster process cycle times due to au-
tomation, and second, by shifting the focus of em-
ployees on important and value-added work. Further-
more, because it is a non-invasive technology with
low technical barriers, the burden on IT and the barri-
ers to adoption are reduced (Madakam et al., 2019).
Besides the advantages, RPA also introduces new
challenges. Among other things, RPA focuses on
highly structured routine tasks. Further, the low im-
plementation hurdles ensure the possibility of the use
of this technology by the business departments inde-
pendently of the IT department, which may promote
shadow IT structures as well as IT security violations
(Willcocks et al., 2015; Gadatsch and Mangiapane,
2017; Matthews and Greenspan, 2020).
Due to the primary reduction to highly structured
tasks, the question about the differentiation of au-
tomation and human activities is answered by this
technical limitation. Wherever unstructured data,
complex tasks and decisions occur, a human must in-
tervene. This is particularly problematic, since only
about 30% of the enterprise data is structured (e.g.,
customer IDs, addresses, account details, etc.) the re-
maining 70% represents unstructured data (e.g., PDF
documents, emails, images, etc.) (Taulli, 2020b).
To overcome this barrier, there is an increasing re-
Neifer, T., Bossauer, P., Lawo, D., Volkening, R. and Gadatsch, A.
The Role of Marketplaces for the Transformation from Robotic Process Automation to Intelligent Process Automation.
DOI: 10.5220/0011146200003280
In Proceedings of the 19th International Conference on Smart Business Technologies (ICSBT 2022), pages 15-25
ISBN: 978-989-758-587-6; ISSN: 2184-772X
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
15
liance on the use of Artificial Intelligence (AI) meth-
ods. This manifests itself in the term Intelligent
Process Automation (IPA, also Intelligent Automa-
tion or Cognitive Automation) and marks a change
from rule-based to intelligent process automation
(Chakraborti et al., 2020). This should result in self-
learning software robots that are robust and flexible
in the face of complex process dynamics and have
autonomous decision-making capabilities (Czarnecki
and Auth, 2018).
However, this transformation is still at an early
stage, which is why RPA vendors are reaching their
limits with regard to the further development of their
RPA tools into an all-encompassing, intelligent holis-
tic solution, as these require a variety of technolo-
gies and functions (Taulli, 2020a) as well as an
ecosystemic approach (Neifer et al., 2021a). Further-
more, for an efficient training of machine learning
(ML) methods regarding the decision making of these
bots, this requires an integration of (un)structured
data from different sources in order to benefit from
synergy effects (Dong and Rekatsinas, 2018). Cur-
rently, it does not seem possible for an RPA vendor
to provide all these challenges from a single source
(T
¨
urkoglu, 2020). This problem gave rise to RPA
platforms, which in their function as a marketplace
offer modular components from RPA providers, third-
party vendors or individual developers (Mullakara,
2020).
For these marketplaces, the problem of user ac-
ceptance and trust in the provider and platform
emerges, which is central to the platform econ-
omy (Clement et al., 2019). Scientific research on
the transformation to intelligent process automation,
however, focuses here mainly on the differentiation
of RPA/IPA development stages (Lacity and Will-
cocks, 2018; Stoudt-Hansen et al., 2019; Ferreira
et al., 2020) and providers (Le Clair et al., 2019),
the strategic framework (Mohanty and Vyas, 2018;
Scheer, 2020), potentials and risks (Smeets et al.,
2019; Agostinelli et al., 2019), and the explanation of
IPA technology and derivation of use cases (Berruti
et al., 2017; Lacity and Willcocks, 2018; Burgess,
2017; Smeets et al., 2019; Taulli, 2020b; Ferreira
et al., 2020; Moiseeva et al., 2020; Engel et al., 2021).
Therefore, we see a research gap in the exploratory re-
search of RPA marketplaces as a bridging technology
towards IPA.
This work aims to analyze drivers and challenges
for the adoption of RPA marketplaces to realize IPA.
For this purpose, we conducted ten expert interviews
with decision-makers and IT staff from RPA and pro-
cess automation departments to address both a tech-
nical and strategic perspective. The identified factors
contribute to the scientific discourse about RPA mar-
ketplaces and can be used as a basis for companies
to decide whether to use RPA marketplaces. In the
following, we delineate the terms RPA and IPA, pro-
vide insight into the state of the research, describe
our methodological approach and then present and
discuss our findings on the drivers and challenges of
adopting RPA marketplaces to realize IPA.
2 ROBOTIC AND INTELLIGENT
PROCESS AUTOMATION
In literature, Robotic Process Automation is pre-
dominantly defined by its functionality (Smeets et al.,
2019). While Van der Aalst et al. (2018) define
RPA as a collective term for tools that operate com-
puter systems via user interfaces in the way a hu-
man would, Allweyer (2016) distinguishes RPA from
physical machines as a type of personal assistant to
support or replace employees. The basic idea of RPA
is the exact imitation of manual user input by a soft-
ware bot. In doing so, the underlying system does
not recognize that it is being operated by software in-
stead of a human (Smeets et al., 2019). Furthermore,
the implementation and realization of RPA does not
require any programming skills, there is only a con-
figuration of rules or recordings of manual user inter-
actions (Willcocks et al., 2015; Czarnecki and Auth,
2018). This promotes a detachment from the IT de-
partment (Czarnecki and Auth, 2018) and a tendency
towards shadow IT (Gadatsch and Mangiapane, 2017;
Matthews and Greenspan, 2020). Overall, RPA is
focused on rule-based and stable processes with re-
peated execution, a low need for change, and highly
structured input data (Allweyer, 2016).
Further, RPA follows an outside-in approach,
whereby no changes are made to existing application
systems as part of the automation process (Van der
Aalst et al., 2018). While classical automation ap-
proaches access the system via an application pro-
gramming interface (API), RPA usually uses the
graphical user interface (GUI) (Smeets et al., 2019).
This already results in the initial problem that RPA
does not directly access the integration of multiple
systems via the GUI (Taulli, 2020a). This would re-
quire major adjustments to the IT infrastructure and
the existing processes (Czarnecki and Auth, 2018).
Intelligent Process Automation on the other
hand describes the further development of RPA into a
cognitive, self-learning overall solution (Smeets et al.,
2019). This allows processes to be fully automated
and enable human decision-making behavior as well
as unstructured data (e.g. text, speech) and complex
ICSBT 2022 - 19th International Conference on Smart Business Technologies
16
Figure 1: Account Opening Process in Transition from RPA to IPA.
issues to be mapped in the form of forecasts and anal-
yses (Langmann and Turi, 2020). Accordingly, IPA is
an RPA-based ecosystem of AI and other digitization
technologies that take automation to the next level
through the interaction of technologies (Berruti et al.,
2017; Mohanty and Vyas, 2018; Zhang, 2019). Key
technologies to enable IPA include Smart Workflow
(Smeets et al., 2019), Machine Learning (ML) (Al-
paydin, 2020; Smeets et al., 2019; Mohanty and Vyas,
2018), Natural Language Processing (NLP) (Mohanty
and Vyas, 2018; Smeets et al., 2019; Sarkar, 2019),
Natural Language Generation (NLG) (Celikyilmaz
et al., 2018), Optical Character Recognition (OCR)
(Langmann and Turi, 2020), Process Mining (Scheer,
2020), and Cognitive Assistants (Allweyer, 2016).
The relevance of the transformation from RPA
to IPA can be seen in Figure 1, which shows an ex-
ample account opening process. Without RPA, not
only the process steps with a decision-making func-
tion (e.g., determining credit limit and additional of-
fers) but also repetitive steps (e.g., creating an ac-
count, creating documents) are performed manually.
The staff must perform routine activities with a pre-
dominantly high structural component.
RPA can be used to automate the process steps
with a high degree of structure and repetitive char-
acter. Process steps with a decision-making func-
tion (e.g., determine credit limit) or unstructured data
bases (e.g., validate documents), on the other hand,
must still be performed manually.
Unstructured or semistructured data, e.g., in the
form of e-mails, is a major problem in customer data
acquisition. Since an RPA bot requires structured in-
put, Natural Language Processing (NLP) in conjunc-
tion with a learning algorithm must be used to create
an intelligent model that can also process this data in a
meaningful way. In addition, clustering methods can
be used to make a decision regarding the credit limit
based on features within the customer data. Docu-
ment validation could also be addressed by an NLP
model trained on these documents. Regarding the de-
cision on additional offers, data mining methods as
well as recommendation systems can be used, which
derive customer preferences based on the customer
data and provide personalized recommendations for
additional offers. By implementing such an IPA so-
lution in conjunction with an integrated data architec-
ture (Neifer et al., 2021a), it is possible to digitally
map the account opening process in its entirety. Hu-
man intervention would only be necessary in excep-
tional cases.
Holistic IPA solutions in the form of a one tool do
not yet exist. Thus, the dilemma prevails that com-
plementary technologies of different suppliers have
to be connected with each other. Thereby, the selec-
tion, as well as specific configuration represent a great
challenge to the users (Taulli, 2020c). RPA mar-
ketplaces could enable more holistic IPA solutions,
which offer pre-built bots, plugins, connectors, or
even individual components and capabilities of soft-
The Role of Marketplaces for the Transformation from Robotic Process Automation to Intelligent Process Automation
17
ware robots (Taulli, 2020a) developed by platform
providers, third-party vendors, or even individual de-
velopers (Mullakara, 2020). In this context, Schep-
pler and Weber (2020) highlight that there is a need
for research in evaluating the ability of RPA market-
places to integrate solutions through pre-built compo-
nents and simplified development of bots. This goes
hand in hand with the evaluation need for acceptance
and trust on the part of users in both the platform and
the specific providers (Clement et al., 2019).
3 RELATED WORK
The scientific literature on the shift from rule-based
to intelligent automation as well as on RPA market-
places is still relatively scarce, but recently experi-
ences an increasing interest. Berruti et al. (2017) con-
sider IPA under a platform idea, consisting of the five
core technologies RPA, Smart Workflow, Machine
Learning, NLG, as well as Coginitive Assistants,
which aims at a fundamental redesign of processes.
Leading platforms in this space include UiPath, Au-
tomation Anywhere, and Blue Prism (Taulli, 2020a).
According to Mohanty and Vyas (2018), compa-
nies are increasingly recognizing the potential ben-
efits of IPA and experimenting with intelligent au-
tomation in various functional areas. According to
them, RPA represents the basic building block on the
path to IPA, where considering ML and RPA sepa-
rately would be a step backward. While some soft-
ware vendors and startups are making progress in de-
veloping applications with image and speech recogni-
tion as well as information extraction, the focus here
is on complementing RPA (Burgess, 2017). Burgess
(2017) argues that combining RPA and ML can en-
able automation of end-to-end processes, and both
technologies benefit from each other: If the data is
unstructured or semistructured, or if judgment is re-
quired, ML can support the RPA bots. RPA, on the
other hand, can map the extraction and assembly of
data from various sources, thereby acting as a data
provider for ML. Smeets et al. (2019) found out that
companies see more potential in combining RPA with
other technologies (such as process mining and work-
flow management systems) than in moving RPA itself
toward IPA. Stoudt-Hansen et al. (2019) observed a
shift from RPA to a holistic approach of automation,
which they refer to as hyperautomation. However, the
dilemma here is that all the necessary technologies are
not easy to link, because they often come from differ-
ent vendors.
Le Clair et al. (2019) therefore see the decisive
success factor in the integration of artificial intelli-
gence (AI). For this reason, most RPA providers are
trying to develop their tools in-house or with external
partners. On some marketplaces, such as Automation
Anywhere, companies can source suitable solutions
from third-party vendors for their automation prob-
lem. Credibility and trust in the vendors therefore
play a key role. Many vendors make bold claims re-
garding the capabilities of their respective products,
which is referred to as ”RPA washing” (Lacity and
Willcocks, 2018). Further, in terms of identifying
suitable process candidates and providing the neces-
sary scale, vendors must ensure that their automation
solutions are user-friendly and easy to implement and
deploy. Thus, supporting analytics to find the right
process candidates, scalability of the bots, and cen-
tralized coordination and openness of the IPA plat-
form have become more important (Le Clair et al.,
2019).
Taulli (2020c) recommends the use of RPA mar-
ketplaces due to a non-existent end-to-end solution, as
they can help shorten development times on the user
side and provide a new revenue stream on the vendor
side. Automation should be seen from a holistic per-
spective and be realized through end-to-end automa-
tion platforms or programs. These statements are con-
sistent with those of Le Clair et al. (2019) and Burgess
(2017). Mullakara (2020) agree that RPA market-
places have great potential as part of the evolution
of RPA toward hyperautomation, because these mar-
ketplaces enable the integration of a variety of new
technologies. However, this integration should be as
simple as possible, e.g., via drag-and-drop interfaces.
They expect higher participation in the future as well
as a wide range of prefabricated components.
4 EXPERT INTERVIEWS
To explore the drivers and challenges for RPA mar-
ketplace adoption and factors to support the transfor-
mation from RPA to IPA, we conducted ten semi-
structured expert interviews (see Table 1) within an
interpretive research stance (Collis and Hussey, 2013;
Bell et al., 2018; Themistocleous and Morabito, 2012;
Depietro et al., 1990). We chose semi-structured in-
terviews because of the exploratory nature of the re-
search question. While there is already some litera-
ture on RPA and IPA, we wanted to keep the inter-
views very open to give the experts more room to for-
mulate requirements and opinions that have not been
captured by the literature so far. In fact, while con-
ducting the interviews, new aspects kept coming up
that were incorporated in the follow-up interviews,
which is a great advantage of qualitative surveys in
ICSBT 2022 - 19th International Conference on Smart Business Technologies
18
Table 1: Overview of participants.
ID Sector Job Department
E01 Telecommunications Head of Department Service IT Conception & Automation Control
E02 Insurance Head of Department RPA Competence Center
E03 Insurance RPA Expert Organization & Coordination of Automation
E04 Retail Team Leader Inhouse Consulting, Process Digitization & Automation
E05 Conglomerate Product Owner Process Automation & API Strategy
E06 Consulting Team Leader Data Transparency & Efficiency
E07 Consulting RPA Expert Process Automation Consulting
E08 IT Head of Department Business Intelligence & Cognitive Automation
E09 IT Team Leader Process Automation
E10 IT Head of Department Business Intelligence
the form of interviews.
The experts were selected primarily based on their
function in the company. The interviewees were RPA
or process automation managers and IT staff from
different large companies in Germany in order to in-
clude both a strategic and technical perspective. Fur-
thermore, the aim was to ensure an across-industry
overview. Therefore, the management consultancies
provided an additional perspective through their ex-
perience with the requirements of companies for RPA
marketplaces resulting from their consultancy ser-
vices. The interviews lasted on average 49 minutes
and followed a semi-structured guideline with the fol-
lowing topics:
Practices and Experiences with RPA marketplaces
to derive insights about drivers and challenges as
well as to develop a common understanding of
RPA, IPA and RPA marketplaces.
Acceptance and usage of RPA marketplaces with
respect to the development of IPA.
Perception of the future impact of RPA market-
places on IPA.
The interviews were transcribed with MAXQDA and
analyzed using the inductive approach of thematic
analysis according to Braun and Clarke (2006). Based
on the previous experiences with RPA marketplaces,
both the drivers and the challenges with regard to the
use as well as the feature supporting the transforma-
tion from RPA to IPA were focused on. Two authors
undertook the coding of the interview material inde-
pendently and then combined the resulting code sys-
tem (Berends and Johnston, 2005).
5 RESULTS
The following chapters describe the results of the in-
terviews conducted, which are summarized as drivers
and challenges for the adoption of RPA marketplaces
to realize IPA in Figure 2. The results were differen-
tiated into organizational and technical factors.
5.1 Organizational Drivers
Nine out of ten experts stated that RPA marketplaces
can contribute to a democratization of development
of RPA or IPA solutions. In principle, RPA market-
places can simplify the development of RPA skills and
lower the barrier to entry. RPA marketplaces can also
provide insights into the topic of IPA, which can be
used as orientation. For example, according to E06,
“standard modules or functionalities for data extrac-
tion and data classification, in particular OCR func-
tionalities, are very interesting”.
”[...] smaller and medium-sized companies
can benefit from RPA marketplaces, especially
if they find it more difficult to get started with
RPA due to a lack of resources.– [E05]
Further potential strategic benefits are identified in
a cost reduction (eight experts) and time savings
(six experts). The more ready-to-use components
are reused to develop the bot solutions, the more
the development costs decrease. According to E02,
”through standardized development, the bots can be
scaled with low costs”. However, E04 and E05 refer
to the high training effort of AI models. According
to E04, the training effort and thus the resulting costs
could be ”reduced by ready-to-use AI models” and
”IPA solutions could be implemented faster”. The
reuse of ready-to-use automation modules via plug &
play can also significantly reduce development time.
Thus, a significant increase in efficiency in bot devel-
The Role of Marketplaces for the Transformation from Robotic Process Automation to Intelligent Process Automation
19
opment is achieved through reuse and avoidance of
multiple developments.
”If I apply a meta-bot in 25 bots, that’s just
great, [...] maybe an hour of development time
[...] and you can plug & play that meta-bot
back in and you saved a lot of time.– [E05]
Five experts find RPA marketplaces useful for idea
generation. For example, E03 is interested in basic
frameworks of objects that provide ideas for develop-
ing solutions for company-specific systems and can
be adapted accordingly. According to E05, business
departments often find it difficult to identify suitable
use cases, which is why ”they can use an RPA mar-
ketplace to generate ideas for suitable process candi-
dates”.
5.2 Technical Drivers
According to nine out of ten experts, RPA market-
places can be useful for the development of IPA so-
lutions through the provision of ready-to-use intelli-
gent automation solutions. For example, E02 states
that RPA marketplaces could ”offer additional fea-
tures, such as OCR, that are not included in standard
RPA solutions”. Contrary to the promises of some
RPA vendors, according to E03, E06 and E10, RPA
software products have so far been only partially suit-
able for the development of intelligent bots. There-
fore, according to E06, extending the capabilities of
RPA with cognitive components is difficult, and they
”use a dedicated OCR system where the process al-
lows it. However, this does not apply well in practice
because we would then have to switch to a completely
different system in a process”. Accordingly, standard-
ized intelligent components provided via RPA mar-
ketplaces are perceived as an improvement.
”If there were OCR functionalities that could
be integrated into workflow modeling under
UiPath, for example, that would be much more
attractive.-– [E06]
Six experts see an opportunity for quality improve-
ments in the development of IPA solutions on a tech-
nical level. The reuse of ready-to-use components
makes it easier to identify error sources and thus
reduce them during bot development. Further, ac-
cording to E02 and E07, the participation of various
providers in RPA marketplaces within the framework
of direct network effects ensures an increase in the
quality of solutions and of IPA in particular, since ”a
broad positioning increases the pressure on the in-
dividual providers and thus the quality of the solu-
tions”.
5.3 Organizational Challenges
All experts agree that integration into the IT in-
frastructure has a significant influence on the use-
fulness of RPA marketplaces. In this context, E01,
E03, E04 and E08 criticize the fact that the range of
marketplaces is currently ”too focused on standard
software”, but the “system landscape of companies is
characterized by a large number of in-house devel-
oped systems” and ”[...] the modules are not suitable
for automation on in-house developed systems”. Ac-
cording to the experts, this is also the main reason for
the low use of external RPA marketplaces and the de-
cision to build an internal RPA marketplace. E03 sees
the capabilities of AI as crucial for successful integra-
tion, explicitly to what extent ”intelligent components
are customizable for specific companies”. E04 also
sees the integration of off-the-shelf AI solutions, pro-
cess mining, and chatbots from RPA marketplaces as
promising, but it depends on how ”standardized the
use cases need to be”. It appears difficult to use in-
telligent ready-to-use modules in a company-specific
way, as the modules have to be trained on a use-case-
specific basis and are correspondingly costly.
”That’s where I think you run into limits very
quickly in these marketplaces, because it’s re-
ally difficult to offer ready-to-use models, or
if they’re trained models, they’re utopian in
price.-– [E05]
Additionally, eight out of ten experts classify data
protection and security as relevant factors influenc-
ing the perceived benefits of RPA marketplaces. E04
and E05 accordingly describe that the companies de-
cided against using external RPA marketplaces due to
”internal regulations and security checks and the as-
sociated costs”. According to the experts, security
must be guaranteed by the operators of the market-
place and could be confirmed, for example, by com-
pliance of industry-standard IT security certifications
for the offered services.
”The listings on the marketplace should have
gone through security checks and be certified
by the operator, so you can be sure there’s no
malicious code in there.-– [E04]
Four experts highlight the guarantee of support as a
further influencing factor for the acceptance and on-
going use of the marketplace. The providers are seen
as having a responsibility to adapt the modules and
keep them up to date.
”[...] is there support at all the same as with
official packages from UiPath or not, because
that would be a problem if we unleash a lot
ICSBT 2022 - 19th International Conference on Smart Business Technologies
20
of robots on different activities and then those
activities don’t work anymore.-– [E02]
Profitability is another factor that must be given ac-
cording to four experts. E01 expects in this regard that
the ”offer on the marketplaces must be more favor-
able than in-house development and its operation”.
Currently, this does not yet seem to be the case, since
adaptation and testing of the components involves a
very high level of effort compared with in-house de-
velopment.
E02 and E09 further emphasize that the num-
ber of users has a direct influence on the usefulness
of RPA marketplaces. With an increasing number
of users, ”technical and innovation limits could be
lifted”.
Another aspect represents for four experts is the
risk of dependency. Thus, the increased purchase
of prefabricated components brings knowledge losses
with itself. However, the maintenance effort remains,
so there is more dependence on module suppliers, es-
pecially for intelligent modules.
5.4 Technical Challenges
All ten experts interviewed express expectations for
the usability of the RPA marketplaces in order to pos-
itively influence the perceived ease of use. For E04, a
”very good documentation of the solutions by means
of process flow charts and videos” is important in or-
der to enable a quick and simple basis for decision-
making for the specialist department and the devel-
opers. Thus, it is basically possible to transfer IPA
development to the business departments if the solu-
tions from the RPA marketplaces are very well docu-
mented and easy to adapt. For E09, too, ”good and
detailed descriptions of the modules are important, as
well as easy downloading and integration of the solu-
tions into the internally used RPA tool”. For E05, the
most important factors in achieving a high user expe-
rience in the company’s internal RPA marketplace are
”transparency and create easy searchability and list
contacts”. Thus, filtering by bot solutions should be
possible ”technology-based by system and technical
by functional area”. Furthermore, a detailed text de-
scription and flowcharts should explain the use case
in more detail and the corresponding process experts
should be specified as contact persons. Furthermore,
according to E08, a ”possibility to categorize the so-
lutions according to industries on the external RPA
marketplaces” has been missing so far.
Five experts also agree that the quality and matu-
rity of solutions on RPA marketplaces can still be im-
proved in order to increase their usefulness. Although
the range of products on offer in the RPA market-
places is extensive, some solutions are of insufficient
quality, which means that the maturity level of the so-
lutions needs to be increased. For example, the cur-
rently offered services are not attractive enough and
plug & play modules are not yet mature.
”I think the construct behind the marketplaces
and the reputation is very good. I see a per-
spective there, but we are still quite far away
from usable modules or bots that can be down-
loaded and used plug & play.-– [E03]
5.5 Adoption of RPA Marketplaces to
Realize IPA
Only three of the ten companies interviewed currently
use an external RPA marketplace to develop IPA solu-
tions. According to E02, this is used to source ”com-
ponents for data recognition and preparation, smaller
loops, automatism or algorithms for specific process-
ing” which can also interact with older systems. One
company plans to expand further, as it sees RPA mar-
ketplaces as very promising in terms of IPA. In Fig. 2
we have summarized the most important drivers and
challenges from the interviews and sorted them ac-
cording to the assigned relevance in descending order
in the associated category. According to the experts,
these factors play a significant role in the adoption of
RPA marketplaces.
Six experts are open to using an external RPA mar-
ketplace to develop IPA solutions in the future. At the
same time, the establishment of an internal market-
place for the development of classic RPA solutions
is being pursued. E04 sees great potential in build-
ing modules that can be flexibly incorporated into
bots and states that especially ”standard AI solutions,
OCR capabilities, process mining, chatbots and pre-
trained algorithms are of interest”. Thus, a solution is
developed once for a department and ”made available
to the departments across countries in each case”.
For E06, in the context of IPA, standardized building
modules for decision making, data recognition, and
extraction are of interest, but only to gain insight. In
the long term, the goal is to develop or enhance the
modules themselves. E10 also sees the future use of
RPA marketplaces as useful, especially with regard to
the development of IPA.
”The world is kind of crying out to be able to
buy in these kinds of solutions and reuse them,
and that’s [...] where we’ve put the priority
now.– [E05]
The Role of Marketplaces for the Transformation from Robotic Process Automation to Intelligent Process Automation
21
Figure 2: Summary of Drivers and Challenges for the Adoption of RPA Marketplaces.
6 DISCUSSION
6.1 The Role of RPA Marketplaces as
Bridging Technology
According to the experts, RPA marketplaces can con-
tribute to the transformation from RPA to IPA in the
future. This will be made possible in particular by the
provision of ready-to-use intelligent automation so-
lutions, as RPA marketplaces can provide additional
functionalities that are not included in an RPA stan-
dard solution and there will probably also be no holis-
tic approaches (Taulli, 2020a). In addition, RPA mar-
ketplaces can in principle lead to a democratization
of development by enabling the use of AI compo-
nents. Developing these components in-house is seen
as complex, which is why a broad range of know-
how is required for this purpose (Burgess, 2017). By
making them available via a marketplace, the barrier
to entry into the topic of IPA can thus also be low-
ered. Given that IPA solutions should also be imple-
mentable by users without an IT background (Le Clair
et al., 2019; Ito et al., 2020), the aspect of lowering the
barrier to entry seems particularly relevant. However,
the application of IPA is associated with a high level
of required know-how (Scheer, 2020; Ito et al., 2020).
The experts point out that RPA marketplaces address
this dilemma as a bridge technology and that IPA de-
velopments could come from the specialist depart-
ments. In this regard, the business departments can
benefit from the attributed ability to generate ideas
via RPA marketplaces to derive meaningful use cases.
Furthermore, companies with a lack of touchpoints to
RPA can find an easier entry into both RPA and IPA
via the use of external marketplaces (Mohanty and
Vyas, 2018).
The experts believe that competition between
providers on a marketplace can improve the quality of
IPA solutions due to the high degree of transparency
and comparability of different solutions. In addition,
RPA marketplaces offer potential for cost reduction
and time savings in the development, which can be
achieved through the possibility of using existing au-
tomation modules by searching for the best fitting au-
tomation modules on the marketplace.
6.2 Drivers and Challenges of RPA
Adoption
Nevertheless, there is a discrepancy between the pos-
itive attitude towards and the actual use of RPA mar-
ketplaces. While the use of external marketplaces is
essentially limited to the implementation of intelli-
gent building modules for data recognition and prepa-
ration, the (planned) development and use of internal
marketplaces is focused on the use of classic RPA so-
lutions. This is consistent with Taulli’s view that AI
is currently limited to form interpretation and intelli-
gent data transfer (Taulli, 2020b). Furthermore, it can
be assumed that the development of an internal RPA
marketplace does not appear lucrative for small and
medium-sized enterprises due to a lack of application
ICSBT 2022 - 19th International Conference on Smart Business Technologies
22
scenarios for automation as well as a lack of financial
and human resources.
The low level of actual use is explained by the ex-
perts as a result of the existing challenges in regard
to RPA marketplaces. The integration of the solutions
into the IT infrastructure is a key factor in the deci-
sion to adopt RPA marketplaces. This results from
the extent to which a company-specific adaptation of
the modules can take place and how high this adapta-
tion effort turns out to be. Here, a dissent between the
experts’ opinion and the literature can be observed.
Mullakara (2020), for example, refers to the simple
configuration of RPA components, while the expert
whose company already uses an external RPA mar-
ketplace point out a high development effort. This is
consistent with the literature on integration platforms,
according to which data model matching is an essen-
tial problem for a holistic intelligent process automa-
tion approach (Neifer et al., 2021a). In addition, the
integration of solutions is influenced by the quality
and maturity of the solutions. These factors are rated
as insufficient in RPA marketplaces by the experts.
Other factors that represent a hurdle to adoption
are data privacy and data security of the components
offered on the marketplaces and the guarantee of sup-
port. The experts have judged the guarantee of ade-
quate support to be questionable, particularly in the
case of services from third-party providers. In gen-
eral, cost-effectiveness must also be ensured com-
pared to in-house development, which is associated
with additional costs due to the challenges mentioned.
In addition, the risk of dependence on the module
manufacturers also plays a role for the providers, es-
pecially when it comes to intelligent components,
which are difficult to understand for inexperienced
departments in particular. There is a fear that pro-
cess failures could occur due to a lack of know-how
about the functionality of the purchased components
and poor support. To address the required data pro-
tection and data security aspects, RPA marketplaces
should continue to certify and verify the offering to
further promote acceptance among companies and re-
duce the fear of process failures by ensuring appropri-
ate support.
The experts would like RPA marketplaces to be
intuitive to use and clearly presented. This should be
supported by suitable text and video descriptions of
the components as well as categorization and filtering
options. Furthermore, the IPA components should be
easy to integrate into existing RPA tools. A broad po-
sitioning of the RPA marketplaces and their presenta-
tion through descriptions of the solutions and filtering
by applications, processes as well as categories addi-
tionally support and simplify the generation of ideas.
According to one expert, this contributes to the fact
that with good documentation and simple adaptabil-
ity, IPA development could also be transferred to the
specialist departments. A possibility of categorization
according to the specific application scenarios can ad-
ditionally support the generation of ideas in the spe-
cialist departments. Furthermore, the ’Cognitive Au-
tomation Use Case Assessment Model’ developed by
Engel et al. (2021), for example, offers the possibil-
ity to ”make more informed decisions about selecting
use cases for cognitive automation or planning their
implementation.
Overall, it can be stated that the experts perceive
RPA marketplaces as a promising solution for the
transformation from RPA to IPA. This is also reflected
in the finding that three companies were open to a fu-
ture use of external RPA marketplaces for the devel-
opment of IPA solutions and one company wants to
increase future use strongly.
6.3 Limitations
With regard to the limitations, no cross-industry state-
ment can be made due to the sample size of ten ex-
perts, as different industries may also have additional
requirements for such RPA marketplaces. The experts
were also selected by contacting them via existing
networks, which can certainly have an influence on
the findings obtained. Nevertheless, care was taken to
ensure high quality in the selection of the experts and
their suitability, as the selected companies and experts
deal intensively with the topics of RPA and IPA.
As far as the transferability of the results is con-
cerned, there will be a wide variety of requirements
in the corporate landscape with regard to compliance
and IT security. In SMEs, other requirements might
arise, especially with regard to the development of
IPA solutions against the background of scarce finan-
cial and human resources and the implementation of
internal RPA marketplaces. In areas with sensitive
information, in-house developments are likely to re-
main dominant. However, it was also not the goal
of this work to develop generally applicable recom-
mendations for action for the adoption of RPA mar-
ketplaces. The purpose of this work was to identify
drivers and challenges in order to better understand
the adoption of RPA to realize IPA. Nonetheless, an
overlap of the findings with the existing literature can
be observed, suggesting that the findings are not lim-
ited only to the sample and that implications for SMEs
have also been incorporated through the participating
management consultancies. For this reason, it would
be useful to validate the drivers and challenges iden-
tified in this paper for a follow-up study in a larger-
The Role of Marketplaces for the Transformation from Robotic Process Automation to Intelligent Process Automation
23
scale quantitative study.
7 CONCLUSION
This paper has dealt with the exploration of drivers
and challenges for and the investigation of the po-
tential of RPA marketplaces to support the transfor-
mation from rule-based to intelligent process automa-
tion. It is shown that RPA marketplaces can drive the
transformation of RPA and IPA primarily by provid-
ing intelligent modules, since it can be assumed that
there will be no holistic IPA standard solution. Fur-
thermore, the development of IPA solutions can be de-
mocratized by lowering the barriers to entry through
a simplified and user-friendly development environ-
ment. On the business side, this is also supported
by the fact that RPA marketplaces can contribute to
the generation of ideas, since, according to the ex-
perts, many small and medium-sized companies in
particular lack suitable ideas for use cases. In addi-
tion, RPA marketplaces can contribute to cost reduc-
tion, time savings and increased quality of solutions
through their platform structure and associated scal-
ing effects.
However, there are also some challenges, which
are mainly determined by the integration of the com-
ponents into the existing IT infrastructure of the
companies, the user-friendliness of the platform and
its guarantee of data security and data protection.
This results in an area of conflict between compo-
nents that are as individual as possible and there-
fore not standardized, the simple development and
use of these components, and corresponding cost-
effectiveness and security for the companies. In their
statements, the experts refer to a number of design
suggestions to meet some of the challenges. For ex-
ample, detailed documentation consisting of text and
video descriptions as well as adequate categoriza-
tion and filtering options for the components on offer
should be provided for simple and user-friendly de-
velopment. This would also positively influence the
aspect of democratization of development for com-
panies by reducing the complexity of implementing
RPA and IPA. Furthermore, RPA marketplaces should
ensure good support with regard to integration into the
existing IT landscape of companies, as well as meet
the demands for data protection and data security via
trustworthy certificates and verification of their offer-
ings.
The drivers and challenges identified can thus
serve as a basis for decision-making in the adoption
of RPA marketplaces by companies on the one hand,
and as a guide for RPA marketplace operators in the
design of their platforms on the other. Nevertheless,
our results are limited by the sample size consisting of
ten experts and the business composition. Therefore,
future research should on the one hand deal with the
quantitative validation of the identified factors and on
the other hand investigate them for specific sectors as
well as in small and medium-sized enterprises.
ACKNOWLEDGEMENTS
This research was funded by Federal Ministry
for Economic Affairs and Energy; grant number
01MT20003D. The authors declare no conflict of in-
terest. The authors would like to thank the reviewers
whose comments and suggestions helped to improve
this work.
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