The Bazhenov Lab at the University of California, San Diego, is currently 
seeking to fill a postdoctoral position to study mechanisms of plasticity and 
learning in the insect olfactory system. This exciting project involves close 
collaboration with several experimental labs. The ultimate goals of the work 
are to advance our understanding of how olfactory information is encoded, how 
animals learn from limited experience, and to develop novel AI algorithms 
inspired by principles learned from nature.

The successful candidate will be responsible for: (a) Designing anatomically 
realistic computational network models of the olfactory system based on 
experimental data; (b) Developing and training machine learning models using 
empirical data. These models will be instrumental in uncovering network 
dynamics involved in processing and learning olfactory inputs.

Additionally, depending on the candidate's interests and experience, there may 
be opportunities to participate in other related lab projects, such as modeling 
sleep or applying principles learned from neuroscience to artificial 
intelligence for continuous learning, knowledge generalization, and adaptation 
to novel situations and contexts.

An ideal candidate should have a background in computational/theoretical 
neuroscience and neural modeling. Programming experience with C/C++ is 
required, and knowledge of Python and PyTorch is a significant plus.

The University of California offers excellent benefits, and the salary will be 
based on research experience. Applicants should send a brief statement of 
research interests, a CV, and the names of three references to Maxim Bazhenov 
at mbazhe...@ucsd.edu<mailto:mbazhe...@ucsd.edu>

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