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<p>Dear all,<br>
</p>
<p>The <strong>University of Bath</strong> invites applications for
a fully-funded PhD position in <strong>Machine Learning</strong>,
as part of the prestigious <strong>URSA competition</strong>.
This project focuses on developing <strong>interpretable machine
learning methods</strong> for high-dimensional data, with an
emphasis on recognizing symmetries and incorporating them into
efficient, flexible algorithms.</p>
<p><strong>Key Details</strong></p>
<ul>
<li><strong>Supervisory Team</strong>: Dr. Georgios Exarchakis
& Prof. Michael Tipping</li>
<li><strong>Research Focus</strong>: Interpretable and deep
learning methods, feature learning, and invariant
representations</li>
<li><strong>Applications</strong>: Astronomy, quantum chemistry,
medical imaging, computer vision, and more</li>
</ul>
<p>This PhD position offers the opportunity to work within a leading
research environment, using state-of-the-art tools such as
TensorFlow, PyTorch, and Scikit-Learn. The research outcomes have
potential applications in diverse fields, and students are
encouraged to bring creative and interdisciplinary approaches to
problem-solving.</p>
<p><strong>Eligibility</strong><br>
Applicants should have a strong academic background in
Mathematics, Physics, Computer Science, or related fields (First
Class or Upper Second Honours or equivalent). A master’s degree is
advantageous. Non-UK applicants must meet the English language
requirements.</p>
<p><strong>Funding</strong><br>
The studentship covers tuition fees, a stipend of <strong>£19,237
p.a.</strong>, and access to a training support budget for 3.5
years.</p>
<p>For more information and details on how to apply, visit <a
rel="noopener" target="_new"
href="https://www.findaphd.com/phds/project/faculty-of-science-ursa-phd-project-machine-learning-methods-for-invariant-representations-of-high-dimensional-data/?p175288"
moz-do-not-send="true"><span>University</span><span> of</span><span>
Bath</span><span> PhD</span><span> Opportunities</span></a>,
or send an email to Georgios Exarchakis at <a class="moz-txt-link-abbreviated" href="mailto:ge394@bath.ac.uk">ge394@bath.ac.uk</a>.</p>
<p>Applications close on <strong>December 6, 2024.</strong></p>
<p><br>
</p>
<p>Best,</p>
<p>Georgios<strong><br>
</strong></p>
<p></p>
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