Post by pepo on Aug 31, 2014 21:38:28 GMT -4
Data science, and process mining in particular, is growing in importance.
Therefore, we have several PhD vacancies for people with a strong background
in data mining, machine learning, process analytics, predictive analytics,
or Big Data. Currently, we are looking for:
***** PhDs working on Process Mining in Collaboration with DSC/e and Philips *****
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.
The Data Science Centre Eindhoven (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/). The DSC/e has recently started
a long-term strategic cooperation with Philips Research Eindhoven
on three topics: data science, health and lighting. As a first concrete action,
70 PhD students are being hired for these three topics using joint funding
from the TU/e and Philips, of which 18 PhD students will work on the
data science topic. These students will together with researchers from
the TU/e and Philips form a strong research community working together
on scientific and industrial challenges.
=========== PhD positions on process mining ==============
The following four PhD positions will be related to the topic of process mining:
1) Product-centric Consumer Data Analytics: Product Usage Lifecycle Analysis
[part of the >>Data Driven Value Proposition<< theme]
Digital components are being added to Philips lifestyle products. The data from
these products as well as from Philips touch points must be combined to
optimize user experience and maintain customer satisfaction. Process mining
techniques will be used to analyze the usage of products over a longer period
of time.
2) Transforming Event Data into Predictive Models
[part of the >>Healthcare Smart Maintenance<< theme]
Philips has strong leadership positions in healthcare imaging and patient
monitoring systems. In the healthcare domain, reducing equipment downtime
and cost of ownership for hospitals is of vital importance. Smart maintenance
exploits that professional equipment is connected to the internet and aims to
use event and sensor data for overall cost reduction. Process mining
techniques will be used to learn dynamic models that can be used for prediction
and optimization.
3) Predictive Analytics for Healthcare Workflows
4) Radiology Workflow Optimization and Orchestration
[both part of the >> Optimizing Healthcare Workflows << theme]
The delivery of patient care in hospital is a complex workflow based on fixed protocols.
Optimization of patient care at reduced cost requires the orchestration of multiple clinical
workflows. Timely getting the imaging/lab tests done and getting the results back to
physicians can help quickly diagnose/treat the patient, and save lives. The rapid
digitization of diagnostics in radiology and pathology calls for a data-driven optimization
of the workflows. Process mining will be used to learn models for the as-is situation.
However, process technology will also be used to improve the processes. Hence, people
With a background in operations research, simulation and/or BPM are encouraged to apply.
=========== How to apply ==============
The Data Science Center Eindhoven (DSC/e) is looking for in total 18 PhDs in the area
of data science. The entire project is divided into 5 themes. Within three themes there
is a need for process mining (see above). If you are interested in a PhD on process mining
please clearly indicate so in your application!
Apply via jobs.tue.nl/nl/job/18-phd-positions-on-data-science-joint-project-data-science-center-philips-190316.html.
=========== Job qualifications ==============
Candidates should:
- have an MSc in Computer Science or a related discipline (e.g., Statistics or Operations Research)
- have a strong interest in data science research and in process mining in particular
- be highly motivated
- able to develop software to allow for experimentation
- be a fast learner, autonomous and creative, show dedication and be hard working
- possess good communication capabilities and be an efficient team worker
- be fluent in English, both spoken and written
PhD students are expected to:
- perform scientific research in the domain described
- collaborate with other researchers in this project
- present results at (international) conferences
- publish results in scientific journals
- participate in activities of the group and department, at both sites
- assist in teaching undergraduate/graduate courses
- participate in EIT doctoral training on entrepreneurship and related topics
- be willing to work at two locations (TU/e campus and Philips High Tech Campus)
Appointment and salary
We offer:
- a full-time temporary appointment for a period of 4 years, with an intermediate evaluation after 9 months
- a gross salary of € 2,083 per month in the first year increasing up to € 2,664 per month in the fourth year
- a holiday allowance of 8% and an end-of-year bonus of 8.3% (annually)
- assistance in finding accommodation (for foreign employees)
- the opportunity to perform research in a large-scale joint project from a leading technical university and a leading high-tech company
- support for your personal development and career planning including participation in the EIT doctoral training, courses, summer schools, conference visits, research visits to other institutes (both academic and industrial), etc.
- a broad package of fringe benefits (including excellent technical infrastructure, child day care, savings schemes and excellent sport facilities).
Selection procedure
Candidates must apply using the web form on this page, providing a detailed CV and a motivation letter that indicates one or more of the PhD projects that the candidate wishes to apply for. Selection will be on-going in the period July 1, 2014 - November 1, 2014. This means that suitable candidates will be interviewed and if deemed fit, be hired immediately without waiting for applications of other candidates.
More information:
For more information about the project, please contact Wil van der Aalst (http://wwwis.win.tue.nl/~wvdaalst/).
Before asking very general questions, please make sure to have a good overview of the process mining work done at AIS.
For example, visit www.processmining.org, read wwwis.win.tue.nl/~wvdaalst/cover_process_mining_book.pdf,
and play with the ProM software. Also visit wwwis.win.tue.nl/~wvdaalst/ and www.win.tue.nl/ais/.
There is no detailed description of each PhD position. The process mining techniques
to be applied and developed are/should be generic and will be used in different projects within Philips.
For information about employment conditions please contact Mrs. C.M. van Dam, HR advisor TU/e, email: pzwin@tue.nl, telephone +31 40 247 2735, or Mr. C.M. Kuiters, HR advisor TU/e, email: pzwin@tue.nl, telephone +31 40 247 2321.