Dear colleagues, 

We have several openings for Postdoctoral Researchers to work at the 
intersection of Machine Learning and Computational Neuroscience funded by the 
ERC Consolidator Grant “DeepCoMechTome: Using deep learning to understand 
computations in neural circuits with Connectome-constrained Mechanistic 
Models“. The goal of DeepCoMechTome is to develop simulation-based machine 
learning tools that will make it possible to build neural network models that 
are both biologically realistic and computationally powerful. Some relevant 
prior work can be found in 
https://www.biorxiv.org/content/10.1101/2023.03.11.532232v1.

We are looking for candidates with a strong quantitative background and PhD in 
a relevant discipline, ideally in computational neuroscience, machine learning 
or numerical simulation, a genuine interest in collaborative work at the 
interface of machine learning and neuroscience, and strong programming skills 
(ideally Python and relevant deep learning frameworks).

Our research group (https://www.mackelab.org <https://www.mackelab.org/>) 
develops methods in machine learning and artificial intelligence to accelerate 
scientific discovery, with a particular focus on neuroscience. We aim to 
provide an interdisciplinary, collaborative and supportive work environment 
which emphasizes diversity and inclusion.

We are embedded in Tübingen’s internationally renowned research community in 
artificial intelligence and computational neuroscience, including the Cyber 
Valley Initiative, the Tübingen AI Center, the ELLIS initiative, the 
Excellence Cluster Machine Learning, the Bernstein Center for Computational 
Neuroscience, the Hertie Institute for AI in Brain Health and dedicated MSc 
Programs in Machine Learning and Computational Neuroscience. We are situated in 
the AI Research Building, in close proximity to the Max Planck Institutes for 
Intelligent Systems and Biological Cybernetics, and participate in the two 
International Max Planck Research Schools (IMPRS) `Intelligent Systems’ 
and`Mechanisms of Mental Function and Dysfunction’.

The University of Tübingen is committed to equal opportunity, diversity and 
inclusion. In case of equal qualification and experience, physically challenged 
applicants are given preference. The University of Tübingen aims at increasing 
the share of women in science and highly encourages female scientists to apply. 
We also explicitly encourage scientists from outside Germany to apply.

Please submit your application materials to [email protected] 
<mailto:[email protected]>, including a CV with publication list, a 
statement of research interests (max. two pages), contact details of two 
referees, and a link to a code repository (or work samples). 

Application deadline is June 20, 2023. 

Candidates are encouraged to send their application material early, as we will 
start reviewing applications before the deadline. Initial fixed-term contracts 
will be for 3 years  at level E13 TV-L with possible extensions, starting date 
is flexible. Part-time positions are possible. Hiring is carried out by the 
Central Administration.

For further details and instructions, see www.mackelab.org/jobs 
<http://www.mackelab.org/jobs>.

Best, 

Jakob Macke



Prof. Dr. Jakob Macke
Machine Learning in Science; Cluster of Excellence "Machine Learning”, 
University of Tübingen
Adjunct Senior Research Scientist, Department of Empirical Inference; Max 
Planck Institute for Intelligent Systems Tübingen
Director,  Bernstein Center for Computational Neuroscience
www.mackelab.org <http://www.mackelab.org/>

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