We have several PhD openings in machine learning research for exploring methods 
to combine learning with process-driven modeling and simulations.

The successful candidate will enroll as a PhD student in the Computer Science 
department of the University of Geneva (under the co-direction of myself and 
Prof. Stephane Marchand-Maillet)  and, at the same time, will become a member 
of the Data Mining and Machine Learning group (http://dmml.ch) as a research 
and teaching assistant at HES-SO, Geneva. The positions shall be filled in as 
soon as possible.

The interaction and cooperation between a simulator and a machine learning 
model can be exploited in a number of areas where data are expensive or 
difficult to obtain, and/or where domain knowledge within the process-driven 
models can back the inductive biases factored into the machine learning models.
In the medical domain, machine learning methods can be combined with 
neuromechanical simulators to develop models of human locomotion that shall 
support critical medical decisions related to surgical interventions treating 
pathological gait patterns. In industrial manufacturing, simulations and 
physical modeling of realistic or extreme operational conditions can support 
the learning of rare faulty behaviours in order to trigger early alerts. In 
chemoinformatics, an external system (e.g. RDKit) can provide relevant 
constraints for generating valid new molecules with specific required 
characteristics.

Related literature:
- Battaglia, Peter, et al. "Interaction networks for learning about objects, 
relations and physics." Advances in neural information processing systems. 2016.
- Lionel Blondé, Alexandros Kalousis "Sample-Efficient Imitation Learning via 
Generative Adversarial Nets." AISTATS 2019: 3138-3148
- Narayanaswamy, Siddharth, et al. "Learning disentangled representations with 
semi-supervised deep generative models." Advances in Neural Information 
Processing Systems. 2017.

We seek strongly motivated candidates prepared to dedicate to high quality 
research in the above domains for a number of years (the expected time to PhD 
graduation is 4-5 years). The candidate should have (or be close to obtaining) 
a Master's degree or equivalent in computer science, statistics, applied 
mathematics, electrical engineering or other related field with strong 
background in as many as possible (but at least some) of these: machine 
learning, probability and statistical modeling, mathematical optimization, 
programming and software development (preferably Pytorch and/or Tensorflow).

If interested, please send the following to 
alexandros.kalou...@hesge.ch<mailto:alexandros.kalou...@hesge.ch>
- academic CV (max 2 pages)
- academic transcript of the study results
- one page motivation letter explaining why the candidate is suitable for the 
position
- 500 word research proposal on one of the topics described above
- contact details of three referees (do not send reference letters)

The applications will be processed as they come as of now until the positions 
are filled. The status of the openings will be update here: 
http://dmml.ch/recruitment/

In case of any further questions, please contact 
alexandros.kalou...@hesge.ch<mailto:alexandros.kalou...@hesge.ch>. I will also 
be in NeurIPS/Vancouver so ping me if you are around.


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