Research Associate / Postdoctoral position in machine learning and
knowledge representation at the University of Edinburgh



Data science provides many opportunities to improve private and public
life, and it has enjoyed significant investment in the UK, EU and
elsewhere. Discovering patterns and structures in large troves of data
in an automated manner — that is, machine learning — is a core
component of data science. It currently drives applications in
computational biology, natural language processing and robotics.


However, such a highly positive impact is coupled to a significant
challenge: how can we incorporate realistic constraints when training
the model? How we can leverage the relational structure of the world?


Such questions are clearly vital for appreciating the benefits of AI.
In the context of a recent Royal Society Fellowship on probabilistic
relational models, we would like to advertise an opportunity to be a
postdoc position on a research project, ideally starting April 1,
2020, full-time and spanning 12 months. In particular, the project is
in the context of unifying logical methods (SAT, SMT, model counting)
and probabilistic modelling and learning techniques, including deep
learning. The outcome of this research would connect to topics such as
explainable AI.


This full-time post is fixed-term for one year.

Closing date is 2 March 2020 at 5pm GMT


Enquiries should be directed to: Vaishak Belle (vais...@ed.ac.uk)

Information about the university and group can be found at
https://www.ed.ac.uk/informatics/ and https://vaishakbelle.com


Apply here: 
https://www.vacancies.ed.ac.uk/pls/corehrrecruit/erq_jobspec_version_4.jobspec?p_id=051292
-- 
The University of Edinburgh is a charitable body, registered in
Scotland, with registration number SC005336.


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