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Postdoctoral Researcher – Machine Learning
KU Leuven

Postdoctoral Researcher – Machine Learning

2026-08-31 (Europe/Brussels)
Baan opslaan

Over de werkgever

KU Leuven is an autonomous university. It was founded in 1425. It was born of and has grown within the Catholic tradition.

De pagina van de werkgever bekijken

The Laboratory of Virology and Antiviral Research (professor Johan Neyts) at the Rega Institute, KU Leuven, is seeking a highly motivated postdoctoral computational biology researcher to join our team in the context of the ERC Advanced Grant project ANTIVIRMAP. The project is carried out in a close collaboration with the Bioinformatics laboratory (professor Yves Moreau) at KU Leuven ESAT-STADIUS and Leuven.AI.
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Responsibilities

Antiviral drugs are used to successfully treat infections such as with HIV and HCV. Yet, for most (life)-threatening and neglected infections, there are no such drugs. This leaves also critical gaps in epi- and pandemic preparedness. Antiviral drug discovery efforts typically focus on a few known targets. Yet, the biology of viral replication consists of many more complex processes that should harbor a wealth of undiscovered druggable targets. Thus, a large space of potential druggable biology is entirely ignored. We aim to fundamentally revolutionize antiviral target-discovery by uncovering this terra incognita. To that end, we developed high-throughput, multiplex, high-content multiparametric phenotypic antiviral assays. These allow to screen hundreds of thousands of molecules in our fully automated high biosafety screening facility CAPS-IT against multiple viruses. You will be responsible for the development and deployment of advanced machine learning models that leverage the full complexity of the imaging data and that allow the selection of molecules that will serve for in-depth virological studies. Ultimately, this will result in the establishment of the first-of-its-kind “Atlas of Druggable Antiviral Targets”.
You will join a dynamic, multidisciplinary and international virology-team with state-of-the-art infrastructure, but will at the same time also be embedded in a team with extensive expertise in AI and machine learning for computational biology and chemo-informatics. This will provide the opportunity to design novel machine learning approaches that leverage state-of-the-art AI methods (deep learning, generative AI, Bayesian modelling, active learning, etc.) to combine cellular imaging data, chemical compound structure, viral genomes and other omics data.
You will take ownership of the implementation and optimization of ML-driven models in our antiviral screening pipeline thereby unlocking the full richness of the multi‑parametric data using advanced AI. You will extract and interpret fully detailed phenotypic fingerprints at whole-well and single‑cell resolution in virus-infected cell cultures. AI models will be used to cluster compounds and infer possible mechanisms of action, identify peculiar activity signatures and integrate cellular toxicity profiles to reduce false positives and guide compound prioritization. The models will be populated and iteratively refined by converging evidence from downstream validation (such as chemo-genetics, structural modelling, functional assays, thermal proteome profiling and omni-omics), creating an adaptive and constantly evolving discovery pipeline. AI-driven interpretation will exploit the full complexity of the dataset to expand the druggable antiviral target space.

Profile

We seek a researcher with strong machine learning modelling expertise with experience in the analysis of challenging large-scale data sets. Experience with cellular imaging data or virology/immunology are a plus.
Relevant skills include:
• Experience in creating and evaluating machine learning models.
• Familiarity with deep learning framework, such as PyTorch or Tensorflow.
• Experience in data preparation, preferably in a bioinformatics context (data cleaning, filtering, etc.).
• Expertise in data fusion and relevant algorithms (deep learning, generative AI, kernel methods, Bayesian methods). 
• Preferably, experience with high-content imaging or cell imaging data (e.g., CellProfiler, convolutional neural networks).
• Knowledge of chemo-informatics and drug discovery.
• Strong practical statistical skills (batch effects, confounders, experiment design).
You hold a PhD in machine learning, computer science, bioinformatics or equivalent. You combine strong analytical skills with the ability to work independently and lead collaborative efforts. You are a team player, proactive, solution-oriented, and comfortable taking ownership of complex projects. Excellent English communication skills and a strong publication record are essential.

Offer

We offer a fully funded position with a competitive salary in a friendly and stimulating environment within one of Europe’s most innovative universities, in Leuven, a historic city at the heart of Europe, next to Brussels. You will have access to cutting-edge technologies and a broad collaborative network.
The contract offered is initially for one year, but can be extended, after a positive evaluation, for more years. 

More information

Laboratory of Virology and Antiviral Research
ESAT-STADIUS
Leuven AI

Interested?

For more information please contact Prof. dr. Johan Neyts, mail: [email protected], Dr. Hendrik Jan Thibaut, mail: [email protected] or Dr. Lotte Coelmont, mail: [email protected].

Please use the university’s job portal when applying for this position.
For this application, the following information will be considered:
• Please enclose a motivation letter with a summary of your research experience and indicate what attracts you in this position and your match with the desired experience.
• Please mention contact details of two references in the application form.
• CV
• Diploma and transcripts of records (BSc, MSc, PhD)
• Other information for consideration (e.g., a list of publications)
 

KU Leuven strives for an inclusive, respectful and socially safe environment. We embrace diversity among individuals and groups as an asset. Open dialogue and differences in perspective are essential for an ambitious research and educational environment. In our commitment to equal opportunity, we recognize the consequences of historical inequalities. We do not accept any form of discrimination based on, but not limited to, gender identity and expression, sexual orientation, age, ethnic or national background, skin colour, religious and philosophical diversity, neurodivergence, employment disability, health, or socioeconomic status. For questions about accessibility or support offered, we are happy to assist you at this email address.

Informatie over de vacature

Functienaam
Postdoctoral Researcher – Machine Learning
Werkgever
Locatie
Oude Markt 13 Leuven, België
Gepubliceerd
2026-07-13
Uiterste sollicitatiedatum
2026-08-31 23:59 (Europe/Brussels)
2026-08-31 23:59 (CET)
Soort functie
Baan opslaan

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