Associate Professorship (or Professorship) of Statistical Quantitative Finance/Financial Econom[...]

University of Oxford
Oxford
3 days ago
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Associate Professorship (or Professorship) of Statistical Quantitative Finance/Financial Econometrics

Department of Statistics, University of Oxford 24-29 St Giles', Oxford, OX1 3LB

About the Position

Two Associate Professors (or Professors) will be appointed in September 2026, with departmental time split approximately 50/50 between the Department of Statistics and the Oxford Man Institute of Quantitative Finance (OMI). The appointments are formally held in the Department of Statistics and will be held under a coterminous Fellowship by Special Election at Reuben College.

Responsibilities
  • Lead an independent research programme in statistical quantitative finance/financial econometrics, with a focus on data science and machine learning applied to quantitative finance.
  • Attract research funding and contribute to the teaching and administration of the Department of Statistics and the OMI.
Qualifications
  • Doctorate in a relevant area of statistical quantitative finance/financial econometrics.
  • Outstanding research record and potential to attract funding.
Application Process

All applications must be submitted as a single PDF document, containing:
• Full CV with publication list, teaching and research experience, career details to date, and awards received.
• Supporting statement related to the above responsibilities and qualifications.

Address the PDF as “184064_Surname_Initials.pdf” and do not attach additional material.

Provide details of two referees who will send supporting reference letters directly to , quoting reference number 184064 and the job title on the subject line. Referees may be contacted now or later.

All applications must be received by 12:00 noon on Monday, 9 February 2026.

Salary and Benefits

£58,265 to £77,645 per annum, plus additional college benefits. An additional allowance of £3,199 per annum will be awarded upon the award of the title of Professor.


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