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Position: Postdoctoral Researcher Assistant in Computer Vision x4
Institution: University of Oxford
Location: Oxford, Oxfordshire, United Kingdom
Duties: We are seeking four full-time Postdoctoral Research Assistants in Computer Vision to join the Visual Geometry Group (Central Oxford) or Biomedical Image Analysis Group (Old Road Campus). The posts are funded by ERC, EPSRC or Continental AG and are fixed-term for 2 years with possible extension. Reporting to the Principal Investigator(s), the post-holders will help ensure a healthy and vibrant research environment within the Visual Geometry Group (Central Oxford) or Biomedical Image Analysis Group (Old Road Campus). This will involve conducting projects in computer vision research and/or health care applications of computer vision, including the work involved in the collaborations with project partners
Requirements: You should hold a relevant PhD/DPhil (or near completion*) in Computer Vision or Machine Learning or Biomedical Image Analysis (for the healthcare post).You should have a strong publication record at the principal international computer vision and machine learning conferences, or if applying for the healthcare applications post principal medical image conference/journal publications and should hold Sufficient theoretical and practical knowledge of methodologies such as deep and statistical learning
   
Text: Postdoctoral Researcher Assistant in Computer Vision x4 Information Engineering Building & Central Oxford Institute of Biomedical Engineering, Headington We are seeking four full-time Postdoctoral Research Assistants in Computer Vision to join the Visual Geometry Group (Central Oxford) or Biomedical Image Analysis Group (Old Road Campus). The posts are funded by ERC, EPSRC or Continental AG and are fixed-term for 2 years with possible extension. Reporting to the Principal Investigator(s), the post-holders will help ensure a healthy and vibrant research environment within the Visual Geometry Group (Central Oxford) or Biomedical Image Analysis Group (Old Road Campus). This will involve conducting projects in computer vision research and/or health care applications of computer vision, including the work involved in the collaborations with project partners. You should hold a relevant PhD/DPhil (or near completion*) in Computer Vision or Machine Learning or Biomedical Image Analysis (for the healthcare post).You should have a strong publication record at the principal international computer vision and machine learning conferences, or if applying for the healthcare applications post principal medical image conference/journal publications and should hold Sufficient theoretical and practical knowledge of methodologies such as deep and statistical learning. Informal enquiries may be addressed to Prof Andrew Zisserman (email: andrew.zisserman@eng.ox.ac.uk), or Prof. Alison Noble for Biomedical Image Analysis (email:alison.noble@eng.ox.ac.uk) For more information about working at the Department, see www.eng.ox.ac.uk/about/work-with-us/ Only online applications received before midday on the 30th June 2022 can be considered. You will be required to upload a covering letter/supporting statement, including a brief statement of research interests (describing how past experience and future plans fit with the advertised position), CV and the details of two referees as part of your online application. The Department holds an Athena Swan Bronze award, highlighting its commitment to promoting women in Science, Engineering and Technology. Contact Person : Prof Andrew Zisserman Vacancy ID : 157931 Contact Phone : Closing Date & Time : 30-Jun-2022 12:00 Pay Scale : STANDARD GRADE 7 Contact Email : andrew.zisserman@eng.ox.ac.uk Salary (£) : Grade 7: £33,309 - £40,927 per annum Click on the link(s) below to view documents Filesize Job description & Selection criteria 397.8
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