At a Glance
- Tasks: Use AI to crack the genetic code of weight management and develop personalised strategies.
- Company: Join AstraZeneca, a leader in innovative healthcare solutions.
- Benefits: Enjoy a competitive salary, bonus, and a benefit fund.
- Other info: Collaborate with top researchers across Europe for exciting career growth.
- Why this job: Make a real impact on health using cutting-edge AI technology.
- Qualifications: Bachelor's in Computer Science or related field; Master's in AI preferred.
The predicted salary is between 40000 - 40000 € per year.
Location: The Discovery Centre, Cambridge Biomedical Campus, Cambridge, UK
Salary: £40,000 gross (subject to deductions in line with UK policy) plus benefit fund and bonus.
AstraZeneca UK has received funding from the Marie Skłodowska-Curie Actions programme through the EU and is now pleased to offer this position.
Project: 101226456 — MLCARE — HORIZON-MSCA-2024-DN-01 1 DC 12 MSCA Doctoral Network MLCARE (Machine Learning Computational Advancements for peRsonalized mEdicine)
This PhD project will harness the power of deep learning and multi-omics to uncover the hidden genetic and biological drivers of weight regulation and associated conditions. By enhancing genome-wide association studies (GWAS) with cutting-edge machine learning, the project aims to identify genetic variants and effector transcripts that influence body weight, metabolism, and individual responses to treatment. The models will integrate genomic insights with behavioural and clinical data to develop personalized, precision-driven strategies—redefining how weight is monitored, managed, and improved over time.
PhD award entity: Universidad Carlos III Madrid. Signal Processing and Comm. Engineering department.
The position will offer secondments at:
- AstraZeneca España – AZ (Centre for Artificial Intelligence) (ES): developing big-data methods for enhanced GWAS with omics (Potentially June - Aug. 2027).
- University of Copenhagen - UCPH (Section for Computational and RNA Biology) (DK): incorporate omic FMs into enhanced (Potentially June - Aug. 2028).
- Institut Pasteur – IP (Computational Biology, Statistical Genetics group) (FR): multi-trait obesity GWAS (March - May 2029).
Please note: secondments indicated dates are tentative and may be subject to changes.
Supervisors:
- Dr Tom Diethe (AstraZeneca UK)
- Dr Dimitrios Athanasakis (AstraZeneca España)
- Dr. Pablo M. Olmos (Universidad Carlos III de Madrid - UC3M)
- Dr. Ole Winther (University of Copenhagen)
- Dr. Hanna Julienne (Institut Pasteur)
Project Objectives and Tasks:
- Build biologically inspired, hierarchical discrete deep generative models to integrate multi-omics with behavioural and clinical data for weight regulation.
- Enhance GWAS with deep learning to identify causal variants, effector transcripts, and pathways affecting body weight, metabolic rate, adiposity, and treatment response.
- Incorporate pathway-based priors, regulatory networks, and tissue-specific annotations into modelling for interpretability and robustness.
- Develop uncertainty-aware inference, quantization, and error-correcting strategies to manage missingness, heterogeneity, and batch effects across data sources.
- Construct multi-domain foundation models for behavioural data (sleep, mobility, smartphone usage) and EHR, with multi-modal tokenization and autoregressive/multiresolution backbones.
- Detect behavioural and biological change-points that signal risk of weight-related deterioration, relapse after weight-loss interventions, or metabolic decompensation.
- Validate models in clinical settings and independent cohorts; derive personalized risk scores and adaptive intervention policies for weight management.
- Collaborate within a multidisciplinary network of machine learning researchers, bioinformaticians, endocrinologists, psychiatrists, and industry partners.
Expected Results:
- Methods for learning hierarchical discrete deep generative models that fuse GWAS/TWAS with multi-omics and behavioural data to produce interpretable embeddings and causal signals.
- Identification of genetic variants, effector transcripts, and pathways linked to body weight regulation and differential treatment outcomes.
- A behavioural foundation model and change-point detection framework for early warning of weight-related relapse or metabolic complications.
- Personalized strategies for precision weight management, including risk stratification and intervention timing.
Essential criteria:
- Study records, including Bachelor in the areas of Computer Science, Maths, Physics, or a related quantitative field
- Master’s degree in the area of AI or Machine Learning within Biology as the preferred area, but not essential
- Minimum total of 300 ECTS credits at the time of application.
- Previous work & research experience
- Positive attitude, good communication skills
- English proficiency
Candidates must:
- Be - at the date of recruitment - a doctoral candidate (i.e., not already in possession of a doctoral degree).
- Be - at the date of recruitment - formally admitted to a PhD programme leading to the award of a degree in at least one EU Member State or Horizon Europe associated country.
- For that purpose, candidates must meet the national requirements for doctoral enrolment in the host country. Proof of admission must be provided prior to the start of the contract.
- For DC12, it is expected that the candidate enrols the UC3M Doctoral Program (Signal Processing and Communications Engineering or Biomedical Science and Technology)
- Not have resided or carried out their main activity (work, studies, etc.) in the UK for more than 12 months in the 36 months immediately before the recruitment date — unless as part of a compulsory national service or a procedure for obtaining refugee status under the Geneva Convention.
- Be working exclusively for the action.
If you are submitting an application to this role, please note you must also complete the programme’s central application form as well. More information about the programme can be found here: MLCARE website
Preferred starting date: June - September 2026.
Please attach to your application the following documents:
- Detailed CV
- Cover letter
- Academic records
- Proof of English proficiency
- At least two letters of recommendation
Date Posted: 14-May-2026
Closing Date: 28-May-2026
Our mission is to build an inclusive and equitable environment. We want people to feel they belong at AstraZeneca and Alexion, starting with our recruitment process. We welcome and consider applications from all qualified candidates, regardless of characteristics. We offer reasonable adjustments/accommodations to help all candidates to perform at their best. If you have a need for any adjustments/accommodations, please complete the section in the application form.
Doctoral Fellow: Cracking the genetic code of weight management with AI Weight management - 3 year fixed term contract in Cambridge employer: AstraZeneca
AstraZeneca UK is an exceptional employer, offering a dynamic work environment at the prestigious Cambridge Biomedical Campus, where innovation meets collaboration. With a strong focus on employee growth, we provide access to cutting-edge research opportunities and secondments at renowned institutions across Europe, fostering a culture of inclusivity and support. Our commitment to personal development, alongside competitive salaries and benefits, makes AstraZeneca an ideal place for those seeking meaningful and impactful careers in the field of AI and weight management.
StudySmarter Expert Advice🤫
We think this is how you could land Doctoral Fellow: Cracking the genetic code of weight management with AI Weight management - 3 year fixed term contract in Cambridge
✨Tip Number 1
Network like a pro! Reach out to current or former employees at AstraZeneca or related institutions. A friendly chat can give us insider info and maybe even a referral!
✨Tip Number 2
Prepare for the interview by diving deep into the project details. Understand how AI and genetics play a role in weight management. We want to show our passion and knowledge during those crucial moments!
✨Tip Number 3
Practice common interview questions, especially those related to teamwork and problem-solving. We need to demonstrate our ability to collaborate with a multidisciplinary team, so let’s nail those responses!
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We think you need these skills to ace Doctoral Fellow: Cracking the genetic code of weight management with AI Weight management - 3 year fixed term contract in Cambridge
Some tips for your application 🫡
Craft a Stellar CV:Your CV is your first impression, so make it count! Highlight your academic achievements, relevant experience, and skills that align with the role. Keep it clear and concise, and don’t forget to tailor it to showcase how you fit into our exciting project on weight management with AI.
Write a Compelling Cover Letter:This is your chance to shine! Use your cover letter to tell us why you're passionate about this project and how your background makes you the perfect fit. Be genuine, and let your enthusiasm for the research and collaboration come through!
Showcase Your Academic Records:We want to see your academic journey! Make sure to include your transcripts and any relevant coursework that demonstrates your expertise in AI, machine learning, or related fields. This helps us understand your foundation and readiness for the challenges ahead.
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How to prepare for a job interview at AstraZeneca
✨Know Your Stuff
Make sure you’re well-versed in the latest developments in AI and machine learning, especially as they relate to genetics and weight management. Brush up on relevant literature and be ready to discuss how your background aligns with the project objectives.
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Prepare to demonstrate your technical skills during the interview. Whether it’s coding, data analysis, or model building, have examples ready that showcase your expertise. Consider bringing a portfolio of your previous work or projects that highlight your capabilities.
✨Ask Smart Questions
Interviews are a two-way street! Prepare insightful questions about the project, the team, and the secondments. This shows your genuine interest and helps you assess if this is the right fit for you.
✨Be Yourself
While it’s important to be professional, don’t forget to let your personality shine through. The interviewers want to see who you are beyond your qualifications. Share your passion for the field and how you envision contributing to the team.