Postdoctoral Researcher in Machine Learning and Cancer
Applications for this vacancy closed on 5 August 2024 at 12:00PM
<div xmlns="http://www.w3.org/1999/xhtml">
<p></p><div>The Nuffield Department of Women's & Reproductive Health is seeking a Postdoctoral Researcher in Machine Learning and Cancer to join Professor Christopher Yau's group at the Big Data Institute at the University of Oxford. </div><br>
<div> </div><br>
<div>The position is embedded within a research programme funded as part of a <a rel="nofollow" href="https://www.ukri.org/news/new-turing-ai-fellows-to-deliver-world-class-ai-research/">UKRI Turing AI Fellowship</a>. The role will focus on the development of state-of-the-art machine learning approaches for the analysis of spatial sequencing data of cancers in collaboration with the <a rel="nofollow" href="https://www.spatiallab.org/our-team">Jamieson Group</a> at the University of Glasgow. This is a unique opportunity to develop and apply AI to tackle key questions in cancer research, and is an ideal opportunity for a soon-to-complete or recent doctoral graduate seeking to switch disciplines into machine learning. An interest in biology or medicine is essential. The postholder should also be self-motivated, diligent and able to work individually or collaboratively. </div><br>
<div> </div><br>
<div>The successful candidate will have a PhD in a quantitative subject (e.g. mathematics, physics, computer science, engineering) and possess experience of developing computational models.</div><br>
<div> </div><br>
<div>Please note:  this post is fixed-term for 12 months but must end by 31st December 2025. The post is available from 1st October 2024.</div><br>
<div> </div><br>
<div>Applications for flexible working arrangements are welcomed and will be considered in line with business needs.</div><br>
<div> </div><br>
<div>You will be required to upload a CV and Supporting Statement as part of your online application.  <a rel="nofollow" href="https://www.jobs.ox.ac.uk/cv-and-supporting-statement">Click here</a> for information and advice on writing an effective Supporting Statement.</div><br>
<div> </div><br>
<div>The closing date for applications is 12.00 noon on Monday 5th August 2024. Interviews will be held in mid-August.</div>
</div>
dc:spatial |
Nuffield Department of Women's & Reproductive Health, Big Data Institute, Li Ka Shing Centre for Health Information and Discovery, Old Road Campus, OX3 7LF
|
---|---|
Subject | |
oo:contact | |
oo:formalOrganization | |
oo:organizationPart | |
vacancy:applicationClosingDate |
2024-08-05 12:00:00+01:00
|
vacancy:applicationOpeningDate |
2024-07-15 09:00:00+01:00
|
vacancy:furtherParticulars | |
vacancy:internalApplicationsOnly |
False
|
vacancy:salary | |
type | |
comment |
The Nuffield Department of Women's & Reproductive Health is seeking a Postdoctoral Researcher in Machine Learning and Cancer to join Professor Christopher Yau's group at the Big Data Institute at the University of Oxford. The position is embedded within a research programme funded as part of a UKRI Turing AI Fellowship. The role will focus on the development of state-of-the-art machine learning approaches for the analysis of spatial sequencing data of cancers in collaboration with the Jamieson Group at the University of Glasgow. This is a unique opportunity to develop and apply AI to tackle key questions in ... The Nuffield Department of Women's & Reproductive Health is seeking a
Postdoctoral Researcher in Machine Learning and Cancer to join Professor Christopher Yau's group at the Big Data Institute at the University of Oxford. The position is embedded within a research programme funded as part of a UKRI Turing AI Fellowship. The role will focus on the development of state-of-the- art machine learning approaches for the analysis of spatial sequencing data of cancers in collaboration with the Jamieson Group at the University of Glasgow. This is a unique opportunity to develop and apply AI to tackle key questions in cancer ... |
label |
Postdoctoral Researcher in Machine Learning and Cancer
|
notation |
173663
|
based near | |
page |