Computational Vaccinology Postdoc: ML‑Driven Immunology in Oxford

Computational Vaccinology Postdoc: ML‑Driven Immunology in Oxford

Oxford Full-Time 39424 - 47779 £ / year (est.) No working from home possible
University of Oxford

At a Glance

  • Tasks: Analyse immunological data and develop frameworks for vaccine trial design.
  • Company: Join the prestigious University of Oxford's Pandemic Science Institute.
  • Benefits: Competitive salary, plus additional benefits and opportunities for research advancement.
  • Other info: Full-time position with excellent career growth potential in a dynamic research environment.
  • Why this job: Make a real impact in vaccine development using cutting-edge machine learning techniques.
  • Qualifications: PhD/DPhil and strong data analysis skills in machine learning required.

The predicted salary is between 39424 - 47779 £ per year.

University of Oxford is seeking a Postdoctoral Research Scientist in Computational Vaccinology to contribute to the Pandemic Science Institute's efforts in vaccine trial design. The role involves analysing immunological data and developing frameworks to interpret immune markers.

Ideal candidates will have a PhD/DPhil and strong data analysis skills using machine learning. This full-time position offers a salary between £39,424 and £47,779, plus additional benefits.

Computational Vaccinology Postdoc: ML‑Driven Immunology in Oxford employer: University of Oxford

The University of Oxford is an exceptional employer, renowned for its commitment to research excellence and innovation in the field of immunology. With a collaborative work culture that fosters intellectual growth and access to cutting-edge resources, employees are encouraged to develop their skills and contribute to impactful scientific advancements. Located in the historic city of Oxford, this role offers not only competitive salaries but also a vibrant academic community that supports meaningful and rewarding careers.

University of Oxford

Contact Details:

University of Oxford Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Computational Vaccinology Postdoc: ML‑Driven Immunology in Oxford

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We think you need these skills to ace Computational Vaccinology Postdoc: ML‑Driven Immunology in Oxford

Data Analysis
Machine Learning
Immunological Data Analysis
Framework Development
PhD/DPhil
Vaccine Trial Design
Interpretation of Immune Markers

Some tips for your application 🫡

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