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    <title>Jobs at the University of Nottingham | Mathematical Sciences</title>
    <link>https://jobs.nottingham.ac.uk/Vacancies.aspx?cat=818&amp;type=6</link>
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          <title><![CDATA[PhD Studentship: A Unified Framework for Reservoir Computing: From Theory to Real-World Systems (SCI3064)]]></title>
          <link>https://jobs.nottingham.ac.uk/rss/click.aspx?ref=SCI3064</link>
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          <description><![CDATA[
            <p id="isPasted"><strong><u>Location:</u></strong><strong>&nbsp;</strong>Faculty of Science and Faculty of Engineering, University of Nottingham, UK</p><p><strong><u>Start Date:</u></strong><strong>&nbsp;</strong>1 October 2026 &nbsp;&nbsp;</p><p><em>This PhD offers an exciting opportunity to explore reservoir computing, a new approach towards artificial intelligence that uses the natural dynamic behaviour of physical systems (such as light and electronics) to process information efficiently.</em></p><p><em>You will work at the intersection of mathematics, physics, electrical engineering and AI, helping to develop a theory that explains how and why these systems work &mdash; and how to design better ones.&nbsp;</em></p><p><strong><u>Why apply for this PhD?</u></strong></p><ul><li>Work on the next-generation AI hardware beyond traditional computing architectures.&nbsp;</li><li>Gain a unique combination of skills in mathematics, machine learning, and photonics.</li><li>Be part of a multidisciplinary research team spanning science and engineering.</li><li>Access state-of-the-art laboratories and high-performance computing facilities.&nbsp;</li><li>Gain experience by attending international conferences and training events.</li><li>Develop skills highly valued in both academia and industry.</li></ul><p><strong><u>Project description</u></strong></p><p>Modern AI computing systems require large amounts of energy and computational power. Reservoir computing offers a promising alternative by using complex physical systems to perform tasks such as prediction, classification, and signal processing.</p><p>However, one major challenge remains: <em>We still do not fully understand what makes a reservoir computing system perform well.</em></p><p>This PhD project aims to answer this question.</p><p>You will develop a unified mathematical theory and framework to study and explain how different reservoir systems work and how to design them for specific tasks. The project will combine:</p><ol><li>Mathematical modelling of dynamical systems;</li><li>Computational photonics simulations;</li><li>Comparison with real physical systems (especially photonic systems using light).</li></ol><p>Facilities and research environment:</p><ol><li>High-performance computing facilities;</li><li>Photonics and electromagnetics laboratories;</li><li>Experimental platforms for optical (light-based) computing;</li><li>A collaborative research environment across mathematics and engineering.</li></ol><p><strong><u>Candidate profile</u></strong></p><p>You do not need experience in all the areas below; additional training will be provided. Enthusiasm and willingness to learn are essential.</p><p><strong>Essential:</strong></p><ol><li>A first-class undergraduate degree or a master&rsquo;s degree in <strong>Physics, Applied Physics, Electrical and Electronic Engineering, Mathematical Sciences</strong>, or a closely related subject from a recognised institution.</li><li>A background in at least one of the following:</li><li>Dynamical systems</li><li>Photonics/Electromagnetics theory, design and simulations</li><li>Machine<strong>&nbsp;</strong>learning mathematics and algorithms</li><li>Numerical methods</li><li>Programming skills (Python, MATLAB, or similar)</li><li>Strong analytical and problem-solving skills.</li><li>Good written and spoken English.</li></ol><p><strong>Desirable:</strong></p><ul><li>Experience with photonic/electromagnetics design software.</li><li>Familiarity with <strong>deep learning platforms</strong> (e.g. TensorFlow, PyTorch).</li></ul><p><strong><u>Funding and eligibility</u></strong></p><p>The project is fully funded by DSTL, due to funding requirement this studentship is only available for UK (home) candidates.</p><p>An UKRI rate studentship is available for this project, covering home tuition fees plus a tax-free stipend.&nbsp;</p><p><strong><u>How to apply</u></strong></p><p>Send the following documents to&nbsp;<a href="mailto:sendy.phang@nottingham.ac.uk">sendy.phang@nottingham.ac.uk</a></p><ol><li>CV</li><li>Cover letter explaining your research interests, relevant skills and experience, and why you are interested in this PhD project</li><li>Academic transcripts (for both undergraduate and postgraduate degrees, if applicable)</li><li>Copies of any publications (if applicable)&nbsp;</li></ol><p><strong>Please use &ldquo;PhD-RC-Framework application &ndash; [Your Full Name]&rdquo; as email subject matter.</strong></p><p>Shortlisted candidates will be invited for an interview to assess their suitability.&nbsp;</p><p><strong><u>Supervisors:</u></strong></p><p>Professor Gregor Tanner &ndash; School of Mathematical Sciences,&nbsp;<a href="mailto:gregor.tanner@nottingham.ac.uk">gregor.tanner@nottingham.ac.uk</a>&nbsp;</p><p>Dr Sendy Phang &ndash; Faculty of Engineering,&nbsp;<a href="mailto:sendy.phang@nottingham.ac.uk">sendy.phang@nottingham.ac.uk</a></p>
            <p>
              Closing Date: 01 Jun 2026<br />
              Category: Studentships
            </p>
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          <category><![CDATA[Studentships]]></category>
          <pubDate>Tue, 21 Apr 2026 00:00:00 GMT</pubDate>
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