For the European Data Science Academy EU project we are urgently looking for a 
postdoc (or possibly MSc graduate) that has experience/interest in learning 
analytics, MOOC creation and process mining.
Applications are processed with priority in arriving order, all applications 
should be submitted through the website.
Full vacancy text follows below.
Process Analytics for the European Data Science Academy
Project
The European Data Science Academy (EDSA) is a coordination and support action 
of the H2020-ICT-15-2014 Big data and Open Data Innovation and take-up program. 
The aim of the EDSA project is to contribute to capacity-building by designing 
and coordinating a network of European skills centers for big data analytics 
technologies and business development. TU/e (Eindhoven University of 
Technology) is one of the nine partners in this program focusing on topics such 
as process mining and other types of process analytics. In this context we are 
looking for a Postdoc until January 31st 2018, starting as soon as possible.
Data Science Centre Eindhoven (DSC/e)
The postdoc will join the Architecture of Information Systems (AIS) group at 
Eindhoven University of Technology (TU/e). AIS is one of the 28 research groups 
of the Data Science Centre Eindhoven (DSC/e). DSC/e is TU/e's response to the 
growing volume and importance of data and the need for data & process 
scientists (http://www.tue.nl/dsce/). DSC/e is one the largest data science 
initiatives in the Netherlands and therefore involved in the European Data 
Science Academy (EDSA). The AIS group is one of the leading groups in the 
exciting new field of process mining (www.processmining.org). Process mining 
techniques focus on process discovery (extracting process models from event 
logs), conformance checking (comparing normative models with the reality 
recorded in event logs), and extension (extending models based on event logs). 
The work resulted in the development of the ProM framework that is widely used 
in industry and serves as a platform for new process mining techniques used by 
research groups all over the globe. Moreover, many of the techniques developed 
in the context of ProM have been embedded in commercial tools. See also 
www.processmining.org.
European Data Science Academy (EDSA)
EDSA aims to deliver the learning tools that are crucially needed in order to 
educate the data scientists needed across Europe.  Comprised of a consortium of 
academic and industry institutions with an excellent track record in 
professional training in Big Data, open data, and business development; and 
with strong ties to a wide range of stakeholders in the global data economy, 
EDSA will implement a cross-platform, multilingual data science curricula which 
will play a major role in the development of the next generation of European 
data practitioners. To meet this ambitious goal, the project will constantly 
monitor trends and developments in the European industrial landscape and 
worldwide, and deliver learning resources and professional training that meets 
the present and future demands of data value chain actors across countries and 
vertical sectors. This includes demand analysis, data science curricula, 
training delivery and learning analytics. EDSA will provide deployable 
educational material for data scientists and data workers and thousands of 
European data professionals trained in state-of-the-art data analytics 
technologies and capable of (co)operating in cross-border, cross-lingual and 
cross-sector European data supply chains. TU/e will play an important role in 
the development of learning analytics based on process mining techniques. 
Specifically, we will monitor study behavior in detail (with careful 
consideration of privacy issues) and provide insights into the actual learning 
experience. All events captured (e.g., watching videos or making online 
assignments) will be stored in a "process cube", i.e., a data warehouse holding 
learning-related events and having dimensions based on student attributes (age, 
experience, gender, nationality), deployment form, and other course 
characteristics. The process cube will be used to analyze differences between 
courses and students, e.g., create process models showing differences between 
students that pass and those that fail. Next to using process mining for 
learning analytics, the postdoc will be involved in the development of 
curricula and learning resources focusing on the interplay between process 
science and data science. Note for example the MOOC Process Mining Data Science 
in Action (https://www.coursera.org/course/procmin). The MOOC but also the 
video lectures at TU/e will be analyzed using process mining techniques.
Position
The postdoc will join the Architecture of Information Systems (AIS) group at 
Eindhoven University of Technology and focus on the interplay of process mining 
and data science education. The appointment will be from 'as soon as possible', 
until January 31st 2018.
Function Requirements
Requirements
We are looking for candidates that meet the following requirements:

  *   a solid background in Computer Science or Data Science (demonstrated by 
Master and PhD degrees);
  *   a relevant PhD is expected (ideal candidates have a strong background in 
process/data mining and an interest in learning analytics);
  *   candidates from non-Dutch or non-English speaking countries should be 
prepared to prove their English language skills;
  *   good communicative skills in English, both in speaking and in writing;
  *   candidates are expected to realize research ideas in terms of prototype 
software, so software development skills are needed.
Note that we are looking for candidates that really want to make a difference 
and like to work on things that have a high practical relevance while having 
the ambition to compete at an international scientific level (i.e., present at 
top conferences and in top journals).
Conditions of Employment
Conditions of employment
We offer:

  *   a full-time temporary appointment for a period of 36 months;
  *   salary in accordance with CAO of the Dutch universities;
  *   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, and excellent sports facilities).
Information and Application
More information:

  *   The full vacancy, including application form, is available at 
http://jobs.tue.nl/en/vacancy/postdoc-process-analytics-for-the-european-data-science-academy-254397.html
  *   More information about this position contact dr.ir. Joos Buijs (Assistant 
Professor), e-mail: 
[email protected]<mailto:[email protected]?subject=[EDSA%20Postdoc%20Vacancy]%20>
 or by telephone: +31 40 247 3661.
  *   More information about the employment conditions contact drs. Charl 
Kuiters (HR advisor), e-mail: [email protected]<mailto:[email protected]> or by 
telephone: +31 40 247 2321.
The application should consist of the following parts:

  *   Cover letter explaining your motivation and qualifications for the 
position (the letter should show an understanding of process mining and the 
work done within AIS, see websites such as 
www.processmining.org<http://www.processmining.org> and the book "Process 
Mining: Discovery, Conformance and Enhancement of Business Processes");
  *   Detailed Curriculum Vitae;
  *   List of courses taken at the Bachelor and Master level including marks;
  *   List of publications and software artifacts developed;
  *   Pointer to a copy of the PhD thesis and key publications;
  *   Names of at least three referees.
Please apply through the 
website<http://jobs.tue.nl/en/vacancy/postdoc-process-analytics-for-the-european-data-science-academy-254397.html>.
Applications via e-mail will not be accepted!


Kind regards,

[TUe_top]

dr.ir. J.C.A.M. (Joos) Buijs
Assistant professor
Fac. Wiskunde & Informatica

[email protected]<mailto:[email protected]>
http://www.tue.nl/staff/j.c.a.m.buijs

Den Dolech 2, 5612 AZ
P.O. Box 513, MF 7.062
5600 MB Eindhoven
The Netherlands

In case a direct reply is desired:
Office MF 7.062
Lync [email protected]<sip:[email protected]>
Skype joos.buijs
M +31 6 42 77 89 88 (preferred)
T +31 40 247 3661

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