The Data Mining and Machine Learning group (http://dmml.ch/) at the University 
of Applied Sciences in Geneva has an opening for a full-time post-doc position. 
The research target is to develop grey-box (hybrid) machine learning methods 
that combine data-driven models such as deep neural nets and theory-driven, 
physical and/or causal models [e.g., 1,2,3]. By combining these two regimes of 
modeling, we expect to improve not only the performance but also the 
interpretability of the outputs of machine learning. Learning such grey-box 
models causes a number of technical challenges. For example, empirical risk 
minimization may result in a meaningless combination of the two models with 
theory-driven components being ignored and overwritten by deep neural nets, 
which necessitates constraining or regularizing the model [1,3]. Moreover, 
combining non-differentiable theory models with neural nets can hardly be done 
with standard tools of optimization. We will focus on such technical challenges 
 in learning grey-box models and related problems, building upon our recent 
work on deep grey-box models [3,4].

The position is funded by a 3-year project of the Swiss National Science 
Foundation (SNSF) in the frame of the Strategic Japanese-Swiss Science and 
Technology Programme (SJSSTP). The project is for developing interpretable 
condition monitoring methods for complex engineering systems. The 
aforementioned grey-box machine learning methods will be utilized as building 
blocks of a condition monitoring (e.g., anomaly detection) framework that 
should hold a certain extent of interpretability. The research will be 
conducted in close collaboration between the DMML group and a Japanese 
counterpart, the Artificial Intelligence Lab at RCAST, the University of Tokyo 
(https://sites.google.com/g.ecc.u-tokyo.ac.jp/ailab/top-english), who will 
mainly work on the implementation of a condition monitoring framework and its 
deployment on real-world systems.

We seek strongly motivated candidates dedicated to high-quality research. 
Candidates should have (or be close to obtaining) a PhD in machine learning or 
related areas and a strong research track record attested by high-quality 
publications in relevant machine learning venues such as ICML, NeurIPS, ICLR, 
AISTATS, UAI, etc. The selected candidate is expected to demonstrate a high 
degree of independence and autonomy, drive their own research, and actively 
contribute to the scientific development of the group through their knowledge 
and expertise as well as by proposing and contributing to group activities such 
as readings, schools, workshops, etc. There is also a possibility to 
participate in supervising a PhD student working on the same or related 
projects and in teaching activities.

The DMML group consists of around ten researchers at the PhD and post-doc 
levels, working in different areas of machine learning, such as generative 
models, simulation-based inference, and imitation learning. The team 
collaborates closely with the VIPER group (https://viper.unige.ch) from the 
Computer Science Department of the University of Geneva headed by Prof. 
Stephane Marchand-Maillet. In addition, the group is involved in a number of 
national and international research projects. We offer ample opportunities and 
support for scientific development, e.g. providing funding for conferences, 
schools, research visits, exchanges, etc. We strive to provide a research 
environment in which researchers can focus on their research and allow for 
space and time to develop solid ideas.  

If interested, please send the following both to Prof. Alexandros Kalousis 
(alexandros.kalou...@hesge.ch) and Dr. Naoya Takeishi (naoya.takei...@hesge.ch) 
with the email subject being “SJSSTP Postdoc Application”.

- academic CV (max 2 pages)
- pointers to the candidate’s two most important publications
- one-page motivation letter explaining why the candidate is suitable for the 
position and what they can bring to the DMML group
- 1000-word research proposal on the research topic of grey-box machine learning
- contact details of three referees (please do not send reference letters)
- copies of diplomas (PhD, MSc, BSc) and academic transcripts

Deadline for applications: 28 February 2023

In case of any further questions, please contact
alexandros.kalou...@hesge.ch and/or naoya.takei...@hesge.ch.

[1] Y. Yin et al., Augmenting physical models with deep networks for complex 
dynamics forecasting, in ICLR 2021.
[2] Z. Qian et al., Integrating expert ODEs into neural ODEs: Pharmacology and 
disease progression, in NeurIPS 2021.
[3] N. Takeishi and A. Kalousis, Physics-integrated variational autoencoders 
for robust and interpretable generative modeling, in NeurIPS 2021.
[4] N. Takeishi and A. Kalousis, Deep grey-box modeling with adaptive 
data-driven models toward trustworthy estimation of theory-driven models, 
arXiv:2210.13103, to appear in AISTATS 2023.

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