PhD position in AI-driven Discovery of New Cancer Genes
As a PhD student, you will:
You will receive close supervision and training in both machine learning and functional genomics, and work in a highly collaborative, interdisciplinary environment.
For decades, cancer genomics has concentrated on somatic mutations in only ~2% of the genome the protein-coding regions, while the vast non-coding majority of the genome was largely inaccessible. We have very recently developed sequence-based AI models that allow us to systematically study this previously ignored 98% of the genome, uncovering many new genes in which somatic promoter mutations play an important role in cancer development.
In this project, you will help improve these state-of-the-art deep learning models (including PARM and Borzoi) to distinguish actionable regulatory mutations—those with downstream molecular consequences—from variants with only local or negligible effects.
The project combines large-scale cancer whole-genome sequencing data with functional genomics and machine learning.
The PhD student will be embedded in the Franke group (https://functionalgenomics.org), an internationally leading group in functional genomics and eQTL analysis, and will collaborate closely with partners at NKI, Prinses Maxima Centre, and international consortia
Required:
Nice to have:
This position is best suited for candidates who enjoy working independently on open-ended research questions and who are comfortable combining machine learning with biological interpretation.
The Franke group values open scientific discussion, frequent interaction, and independence. PhD students are expected to actively present unfinished work, ask questions, and contribute to collaborative problem solving.
Application process:
For us it would be very valuable if you can provide the following types of information. This will help us strongly in our selection process.
1. Curriculum Vitae (max. 2–3 pages):
Education and relevant coursework
Research experience and/or internships
Technical skills (programming languages, ML frameworks, genomics experience)
Publications, preprints, or software contributions (if applicable)
2. Motivation letter (max. 1 page):
The motivation letter should explicitly address the following points:
Why you are interested in this PhD position and in applying AI to cancer
Your prior experience with machine learning, data analysis, or computational research
Which aspects of the project you expect to be able to work on independently at the start of the PhD
What you hope to learn during the PhD
3. Evidence of technical experience:
Please include at least one of the following:
A link to a GitHub/GitLab/Bitbucket repository
A short technical report, preprint, or undergraduate thesis chapter
Code or supplementary material associated with a publication or project
If code is not public, applicants may briefly describe their contribution and tools used.
4. Names and contact details of at least two referees:
Referees should be:
Direct supervisors (e.g. MSc thesis supervisor, internship mentor)
Able to comment on the applicant’s technical skills, independence, and collaboration style
Recommendation letters are not required at the application stage but may be requested later.
Applications that do not explicitly address all points listed above will not be considered. Shortlisted candidates may be asked to complete a brief technical screening exercise prior to the interview.
More information on our research group can be found on www.functionalgenomics.org
Any questions? Do contact us.
Please use the the digital application form at the bottom of this page - only these will be processed.
You can apply until 22 February 2026.
Within half an hour after sending the digital application form you will receive an email- confirmation with further information.
Check if an open application is possible for you.
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