Part-time Research Assistant on Enabling Rapid Adoption of Artificial Intelligence Through an Anonymised Data Protocol and Explainable Models
Applications for this vacancy closed on 29 November 2019 at 12:00PM
<div xmlns="http://www.w3.org/1999/xhtml">
<p></p><p>THIS VACANCY IS FOR INTERNAL APPLICANTS ONLY</p><br>
<p>We are looking for an experienced researcher to join an ongoing research project “Enabling Rapid Adoption of Artificial Intelligence through an Anonymised Data Protocol and Explainable Models”. The project is funded by Innovate UK and involves Genie AI, along with Withers, Barclays, The University of Oxford and Imperial College London. The aim of the project is to develop an intelligent contract editor using novel machine learning algorithms.</p><br>
<p>The postholder will become a member of Professor Marta Kwiatkowska’s research group with responsibility for carrying out research into robustness guarantees for recurrent neural networks; machine learning models for natural language processing (NLP); and application of the developed techniques to relevant case studies. The postholder will be responsible for the management of the group’s GPU cluster.</p><br>
<p>The successful candidate will be expected to hold a degree in computer science, together with relevant experience, have proven track record of publications, and possess sufficient specialist knowledge of adversarial attacks on machine learning, excellent knowledge of GPU clusters and strong coding skills in TensorFlow/PyTorch.</p><br>
<p>This is a part-time post (20% FTE).</p><br>
<p>The closing date for applications is 12.00 noon on 29 November 2019.</p><br>
<p>Our staff and students come from all over the world and we proudly promote a friendly and inclusive culture. Diversity is positively encouraged, through diversity groups and champions, for example <a rel="nofollow" href="http://www.cs.ox.ac.uk/aboutus/women-cs-oxford/index.html">www.cs.ox.ac.uk/aboutus/women-cs-oxford/index.html</a>, as well as a number of family-friendly policies, such as the right to apply for flexible working and support for staff returning from periods of extended absence, for example maternity leave.</p>
</div>
dc:spatial |
Department of Computer Science, Parks Road, Oxford.
|
---|---|
Subject | |
oo:contact | |
oo:formalOrganization | |
oo:organizationPart | |
vacancy:applicationClosingDate |
2019-11-29 12:00:00+00:00
|
vacancy:applicationOpeningDate |
2019-11-22 09:00:00+00:00
|
vacancy:furtherParticulars | |
vacancy:internalApplicationsOnly |
True
|
vacancy:salary | |
type | |
comment |
THIS VACANCY IS FOR INTERNAL APPLICANTS ONLY
We are looking for an experienced researcher to join an ongoing research project “Enabling Rapid Adoption of Artificial Intelligence through an Anonymised Data Protocol and Explainable Models”. The project is funded by Innovate UK and involves Genie AI, along with Withers, Barclays, The University of Oxford and Imperial College London. The aim of the project is to develop an intelligent contract editor using novel machine learning algorithms. The postholder will become a member of Professor Marta Kwiatkowska’s research group with responsibility for carrying out research into robustness guarantees for recurrent neural networks; machine ... THIS VACANCY IS FOR INTERNAL APPLICANTS ONLY We are looking for an experienced researcher to join an ongoing research project “Enabling Rapid Adoption of Artificial Intelligence through an Anonymised Data Protocol and Explainable Models”. The project is funded by Innovate UK and involves Genie AI, along with Withers, Barclays, The University of Oxford and Imperial College London. The aim of the project is to develop an intelligent contract editor using novel machine learning algorithms. The postholder will become a member of Professor Marta Kwiatkowska’s research group with responsibility for carrying out research into robustness guarantees for recurrent neural networks; machine ... |
label |
Part-time Research Assistant on Enabling Rapid Adoption of Artificial Intelligence Through an Anonymised Data Protocol and Explainable Models
|
notation |
144162
|
based near | |
page |