*Oxford Brookes University*

*Faculty of Technology Design and Environment*

*School of Engineering, Computing and Mathematics*



1 three-year full-time funded PhD Studentship



*Eligibility:* all students

*Bursary:* £16,540 per year

*Fees:* Tuition fees will be paid by the university

*Deadline for applying:* 10th October 2021

*Start date:* Earliest January 2022



The Faculty of TDE at Oxford Brookes University is pleased to offer a
three-year full-time PhD studentship to a student commencing January 2022,
funded by the European Union’s Horizon 2020 research and innovation
programme under grant agreement No 964505 “Epistemic AI”.

The successful candidate will join the Visual Artificial Intelligence
Laboratory <https://cms.brookes.ac.uk/staff/FabioCuzzolin/> under the
supervision of Professor Fabio Cuzzolin
<https://www.brookes.ac.uk/templates/pages/staff.aspx?uid=p0075479>. It is
a fully-funded PhD studentship with annual bursary of £16,540.



*Project description*

The Visual Artificial Intelligence Laboratory
<http://cms.brookes.ac.uk/staff/FabioCuzzolin/> is a fast-growing research
unit currently running on a budget of £3 million from nine live projects
funded by the EU (2), Innovate UK (2), the Leverhulme Trust and others. Our
research interests span artificial intelligence, uncertainty theory,
machine learning, computer vision, autonomous driving, surgical and mobile
robotics, AI for healthcare. The Lab is currently pioneering frontier
topics in AI such as machine theory of mind, self-supervised learning,
continual learning and future event prediction.

The PhD student will join the Lab’s work towards a new Horizon 2020 FET
(Future Emerging Technologies) project “Epistemic AI
<https://sites.google.com/brookes.ac.uk/epistemic-ai/home>” coordinated by
Prof Cuzzolin and whose other partners are TU Delft (Netherlands) and KU
Leuven (Belgium). The project started in March 2021 and has a duration of 4
years.

The project’s overarching objective is to develop a new paradigm for a
next-generation artificial intelligence providing worst-case guarantees on
its predictions thanks to a proper modelling of real-world uncertainties.
The project re-imagines AI from the foundations, with the aim of providing
a proper treatment of the ‘epistemic’ uncertainty stemming from a machine’s
forcibly partial knowledge of the world by means of advanced uncertainty
theory. All new algorithms and learning paradigms are to be tested in the
context of autonomous driving.



*Requirements*



We seek a highly competent candidate to submit their thesis within 3 years.
Candidates should have a strong mathematical background, specifically in
optimisation, probability and statistics, and a good first degree in
Machine Learning, Artificial Intelligence or related fields. Applicants are
also expected to have Research experience in Machine Learning or Artificial
Intelligence, and good coding skills in Python and/or C++. Knowledge of
uncertainty theory, including belief functions, random sets or imprecise
probabilities is desirable, as is experience of coding in Torch, PyTorch,
Tensorflow or Caffe, and experience of work in autonomous driving



*How to apply*

To apply, please please go directly to the university here:
https://www.brookes.ac.uk/studying-at-brookes/how-to-apply/applying-direct/,
quoting “*PhD Studentships in Epistemic Artificial Intelligence**”.*

Fully completed applications must be submitted online by *10th October
2021.* As part of the application process you must submit your CV, a
Research Proposal (two pages), copies of your current degrees and
transcripts, IELTS (if applicable), and a supporting statement (2-page
maximum) which explains why you believe you are the best candidate for this
studentship. Please be advised that the selection process may involve an
interview.

For informal requests contact Prof Fabio Cuzzolin (
fabio.cuzzo...@brookes.ac.uk), and Dominic Maitland (
tdestudentsh...@brookes.ac.uk) should you have any questions about the
application process.
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