Full-time PhD studentship (Lasso Group) in London

Full-time PhD studentship (Lasso Group) in London

London Full-Time 24643 - 24643 £ / year (est.) No working from home possible
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At a Glance

  • Tasks: Develop AI-driven methods to predict pathogen-host protein interactions in viral infections.
  • Company: Join a leading lab at UCL focused on computational biology and virology.
  • Benefits: Fully funded 3-year PhD with a stipend of £24,643 and tuition coverage.
  • Other info: Collaborative environment with access to cutting-edge computational resources and mentorship.
  • Why this job: Make a real impact in understanding viral infections and advance your skills in AI and bioinformatics.
  • Qualifications: STEM background with programming experience; passion for machine learning and structural biology.

The predicted salary is between 24643 - 24643 £ per year.

The Lassolab works at the intersection of computational biology and virology. The lab applies computational approaches—including structural bioinformatics, network biology, and machine learning—to study sequence‑to‑structure‑to‑function relationships in viral and host proteins that drive infection by (re)emerging zoonotic viruses. The laboratory thrives on collaboration, working closely with both experimental and computational groups within the UK and globally to drive multidisciplinary discoveries. We are committed to fostering an inclusive, supportive, and intellectually stimulating environment.

About the role

How do viruses rewire host cells during infection, and can AI help us predict these interactions at scale? This PhD project will develop next‑generation computational approaches to identify pathogen‑host protein‑protein interactions (PPIs) using advances in machine learning and structural biology.

Recent advancements in machine learning and AI have revolutionized structural bioinformatics, significantly improving protein and protein complex structure prediction. However, predicting pathogen‑host protein‑protein interactions (PPIs) remains a challenge due, partly, to limited data and conflicting evolutionary pressures. This, however, contrasts with the importance of such interactions as they mediate essential steps during infection. This is particularly relevant in viral infectious diseases, where viral proteins interact with host proteins to co‑opt cellular processes that are essential for the viral replication cycle. In this regard, knowledge of pathogen‑host PPIs is critical for understanding the biology underpinning infection and for designing novel therapeutic approaches.

This project will develop a new computational method to predict pathogen‑host protein‑protein interactions (PPIs) by integrating recent developments on AI and structural bioinformatics. The student will implement computational tools, analyse large‑scale biological datasets, and collaborate with other computational and experimental researchers. While focusing on pathogen‑host PPIs, the framework developed will have broad applications across biology.

About you

The project offers an opportunity to gain research training in AI, structural bioinformatics and computational biology, one of the fastest growing areas in biology today. We are looking for a motivated and committed individual who is excited to contribute to advances in structural bioinformatics and computational biology. We will consider students from a STEM discipline (e.g. computer science, physics, biochemistry, chemistry…) and provide training as necessary to work in the interdisciplinary environment required. However, willingness to engage in advanced computational methods is essential. Experience with programming and Linux/Unix environment would be advantageous.

  • Programming experience (Python, or similar)
  • Experience working in Linux/Unix environments
  • Familiarity with biological data analysis
  • Interest in machine learning and structural biology
  • Strong quantitative and problem‑solving skills

Applicants must meet the eligibility requirements for Home fee status. You must have (or about to be awarded) a First or Upper Second (2.1) Bachelor and/or Masters level degree in a relevant subject.

What we offer

This is a fully funded 3‑year PhD studentship funded by the Institute of Infection, Immunity and Transplantation at UCL. The studentship covers tuition fees at home rate, and a non‑taxable annual stipend of £24,643 per year.

The student will join a growing and collaborative research group and will have opportunities to interact with research across UCL, and other national and international collaborators. The successful candidate will receive training in structural bioinformatics, machine learning, scientific programming, high‑performance computing, and reproducible research practices. We offer a collaborative, inclusive, and multidisciplinary environment with access to advanced computational resources, including GPU‑enabled HPC clusters and high‑end workstations. This setting emphasizes innovation, teamwork and mentorship, providing an ideal platform to carry out the proposed project while developing transferable skills in programming, data science, protein modelling, and machine learning. This PhD project will equip you with a versatile skill set suited for careers in academia, biotechnology, or pharmaceutical research.

Our commitment to Equality, Diversity and Inclusion

As London’s Global University, we know diversity fosters creativity and innovation, and we want our community to represent the diversity of the world’s talent. We are committed to equality of opportunity, to being fair and inclusive, and to being a place where we all belong. We therefore particularly encourage applications from candidates who are likely to be underrepresented in UCL’s workforce. These include people from Black, Asian and ethnic minority backgrounds; disabled people; LGBTQI+ people; and for our Grade 9 and 10 roles, women.

Our department holds an Athena SWAN Silver award, in recognition of our commitment and demonstrable impact in advancing gender equality.

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Contact Details:

UK Dementia Research Institute Recruitment Team

We think you need these skills to ace Full-time PhD studentship (Lasso Group) in London

Machine Learning
Structural Bioinformatics
Computational Biology
Programming (Python or similar)
Linux/Unix Environment
Biological Data Analysis
Quantitative Skills