PhD position on Stream Mining for Real Time Compliance Checking

In the context of the EU H2020 project BPR4GDPR (Business Process 
Re-engineering and functional toolkit for GDPR compliance), a PhD position is 
open at the Analytics for Information System (AIS) group 
(www.win.tue.nl/ais/<http://www.win.tue.nl/ais/>) in TU/e’s Department for 
Mathematics and Computer Science in the domain of Stream Process Mining.
The broader scope of the BPR4GDPR project
In the last two decades the focus on process-orientation (e.g., process-aware 
information systems or BPM systems) has increased, while, with the incredible 
growth of event data (cf. “Big Data”), it has become possible to use process 
mining, i.e., a posteriori analysis technique exploiting the information 
recorded in event logs, to discover models and check the conformance of 
existing ones. Indeed, most organisations have very limited knowledge about the 
reality happening throughout their day-to-day operation; process mining focuses 
on this kind of problem, with a view to assessing the organisational reality 
and reduce the gap between what is supposed to happen and what actually 
happens. The key facets of process mining are discovery, monitoring and 
improvement of real processes by extracting knowledge from the organisation’s 
available data. Previous research has pointed large discrepancies between the 
idealized model and the process in reality. Moreover, process mining has shown 
that different models are possible for different and particular views on the 
process at hand.
The goal of BPR4GDPR is to support the implementation of a Privacy-Aware 
Process Mining Framework, seeking to meet requirements related to: 
transparency, being able to discover and integrate interpretable business 
procedures into a process model, i.e., to generate process models reflecting, 
as precisely as possible, an organisation’s current modus operandi; compliance, 
automatically identifying “business rules” for different perspectives; and 
accountability, spotting non-conformant executions. While checking the 
conformance between a process model and events in reality, two main concepts 
should be considered: real-time data and concept drift.
Additionally, advanced stream mining techniques will be implemented within the 
framework of this project to support real-time, single-passage mining of 
sensitive data such that businesses can fulfill the new requirements of GDPR 
(General Data Protection Regulation).
Privacy-Aware Stream Mining
For the position, the PhD candidate is expected to work on stream process and 
data mining and will be supervised by dr.ing. Marwan Hassani and dr.ir. 
Boudewijn van Dongen. In the domains of today’s evolving, IoT-based 
organisations, business rules (forming the de jure model) can easily get less 
fulfilled over the time. This is observed through deviations of the real 
process (reflecting the de facto model) as collected from the event data from 
the de jure model. Such deviations can be either intended or accidental. In 
both cases, one is interested in a real-time detection of these concept drifts 
and in an online reporting of their severity. In a similar setting, new 
requirements may arise, such that the process model discovered from the 
underlying event data will be outdated and in need to be continuously 
updated/adapted.
Furthermore, to respect the requirements of EU’s GDPR (put into effect from the 
end of May 2018), businesses are not allowed to store user sensitive data 
unless clearly authorized by end users. Even in cases when an authorization is 
obtained, users will always keep the right of their profile data “to be 
forgotten”.
Position
In the light of the above description, both (i) stream process mining and (ii) 
stream data mining solutions should be provided during the period of this 
position. The former should define concept drift detection and stream process 
mining novel techniques that update the statistics about the data-related 
behaviours. They should establish patterns to efficiently integrate recent 
information to improve the model with continuous update of discovered models 
and to report concept drifts from a given reference model or from the 
previously discovered models. The latter should advance efficient, 
single-passage privacy-aware stream data mining approaches that are able to 
extract useful insights of the data on the fly without compromising any privacy 
regulations.
The Analytics for Information Systems (AIS) group provides its long running 
expertise and experience across all challenges of BPM, stream data mining and 
process mining.
Requirements
We are looking for a candidate that meets the following requirements:

•         a solid background in Computer Science, Data Science, Machine 
Learning, Mathematics or Information Systems (demonstrated by a relevant 
Master);

•         has a strong background in at least one of the following domains: 
data mining, machine learning, process mining, data privacy, and/or databases 
(in particular data modeling and query construction);

•         has a strong interest in streaming data mining and data science 
research;

•         has the ability to realize research ideas in terms of prototype 
software, so software development skills are needed.

•         is highly motivated, rigorous, and disciplined when developing 
algorithms and software according to high quality standards;

•         good communication skills in English, both in speaking and in writing 
(candidates from non-Dutch or non-English speaking countries should be prepared 
to prove their English language skills);

•         possesses good communication capabilities and be an efficient team 
worker.
A PhD candidate is expected to:
•     perform scientific research in the domain described
•     collaborate with other researchers in this project and be ready to 
perform project-related business travels
•     present results at (international) conferences
•     publish results in scientific journals
•     participate in activities of the group and department
•     assist in teaching undergraduate/graduate courses
•     participate in doctoral training on relevant topics
Conditions of employment
We offer:

•        A full-time temporary appointment for a period of 4 years, with an 
intermediate evaluation after 9 months;

•        A gross salary of € (2.222) per month in the first year increasing up 
to  € (2.840) in the fourth year;

•        Strong collaboration ties with several research groups in Europe and 
world-wide

•        Healthy travel funding for presenting your work at the leading 
conferences, for project meetings with multiple European partners and for 
visiting research.

•        Support for your personal development and career planning including 
courses, summer schools, conference visits etc.;

•        A broad package of fringe benefits (e.g. excellent technical 
infrastructure, child daycare, excellent sports facilities, extra holiday 
allowance [8%, May], and end-of-year bonus [8.3%, December]).

More information

•       For more information about this position contact dr. ing. Marwan 
Hassani (Assistant Professor) http://www.win.tue.nl/~mhassani/ , e-mail: 
[email protected]<mailto:[email protected]> or by telephone: +31 40 247 3887

•        For more information about the employment conditions contact the 
department HR advisor, e-mail: [email protected]<mailto:[email protected]>

Application
The application should consist of the following parts:
•         Cover letter explaining your motivation and qualifications for the 
position (the letter should also show an understanding of process mining and 
the work done within AIS, see websites such as 
www.processmining.org<https://research.cs.wisc.edu/AppData/Local/Microsoft/Windows/Temporary%20Internet%20Files/Content.Outlook/M1LAKQHS/www.processmining.org>and
 the book "Process Mining: Discovery, Conformance and Enhancement of Business 
Processes");
•         Detailed Curriculum Vitae;

  *   A copy or a link to your MSc thesis. If you have not completed it yet, 
please explain your current situation;
•         List of courses taken at the Bachelor and Master level including 
marks;

•      List of publications and software artefacts developed (if applicable);

•      Names of at least three referees.

APPLY 
HERE<https://jobs.tue.nl/en/vacancy/phd-position-on-stream-mining-for-real-time-compliance-checking-340532.html>
The selection process with start in June 2018 and will continue until the 
position gets filled. The position is fully funded and immediately available. 
The successful candidates are expected to start ASAP.


Dr. ing. M. (Marwan) Hassani
Assistant professor
Faculty of Mathematics and Computer Science
Eindhoven University of Technology
Groene Loper 5, 5612 AE
P.O. Box 513, MF 7.097a
5600 MB Eindhoven
The Netherlands

[email protected]<mailto:[email protected]>
http://www.win.tue.nl/~mhassani/
T  +31 40-247 3887

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