Data Scientist / Data Science Associate
Data Scientist / Data Science Associate
Data Scientist / Data Science Associate
Data Scientist / Data Science Associate
Botnar Institute of Immune Engineering - BIIE
Bio- und Nanotechnologie
Basel
- Verifizierte Job-Anzeige
- Art der Anstellung: Vollzeit
- 95.000 CHF – 124.500 CHF (von XING geschätzt)
- Vor Ort
- Zu den Ersten gehören

Data Scientist / Data Science Associate
Über diesen Job
Intro
The Botnar Institute of Immune Engineering (BIIE) is a newly founded research institute in Basel that serves as a hub for multidisciplinary science, uniting experts in immunology, bioengineering, computational biology, and AI. Our mission is to develop cutting-edge immune-based therapeutics and diagnostics by leveraging advanced computational tools. Within the BIIE, the DeepIR group focuses on computational design of antibodies and T-cell receptors (TCRs), applying modern machine learning methods to design immune receptors from scratch.
We are seeking a Data Scientist or Data Science Associate (0–4 years experience) to join the DeepIR computational team and support machine learning model development and inference for novel antibody and TCR design. In this role, you will develop and apply advanced computational models, including graph neural networks (GNNs), protein language models (pLMs), and structural modeling of protein–protein interactions. These computational workflows will be used to understand patterns of antibody-antigen specificity or TCR-pMHC binding. You will work in close partnership with experimental scientists, using real-world data to validate and refine computational designs.
This position is based in Basel, Switzerland, and is mostly in-person (with the opportunity to work remotely up to two days per week). If you are passionate about applying AI to immunology and excited to collaborate in a diverse, cutting-edge environment, we encourage you to apply.
Tasks
- Develop and optimize ML models: Design, train, and fine-tune machine learning models (e.g. GNNs, deep neural networks, protein language models) to predict and design protein–protein interactions, such as antibody-antigen and TCR-peptide binding.
- Model inference and deployment: Support the inference pipeline by implementing robust code to apply trained models for virtual screening and de novo protein design predictions. Ensure efficient deployment of models on HPC or cloud infrastructure for large-scale runs.
- Data analysis and integration: Work with high-throughput datasets (e.g. sequence data, structural data from PDB) to construct protein interaction graphs and featurize molecules. Analyze model outputs to identify promising antibody/TCR candidates and generate insights into key interaction features.
- Collaboration with experimental team: Interact closely with laboratory scientists to incorporate experimental feedback. Plan in silico experiments in tandem with wet-lab validation – for example, use experimental binding or structural data to improve models, and suggest new designs for lab testing.
- Research and innovation: Stay up-to-date with the latest computational immunology and protein design research. Prototype novel approaches (such as protein language models, diffusion models, or improved GNN architectures) and assess their potential to enhance the DeepIR design platform.
- Communication: Present findings and progress in team meetings. Contribute to publications or reports as needed, clearly communicating complex computational results to interdisciplinary team members.
Requirements
- Education & Experience: Master’s degree or PhD in Data Science, Computer Science, Computational Biology, Bioinformatics, or a related field. 0–4 years of relevant experience (industry or research).
- Machine Learning Expertise: Hands-on experience with machine learning/deep learning, including proficiency in Python and libraries such as PyTorch or TensorFlow. Ability to develop and debug models and data pipelines.
- Graph Neural Networks: Familiarity with graph-based learning techniques. Ideally experience using GNN frameworks (e.g. PyTorch Geometric, DGL) for structural biology or network data, and understanding of how GNNs can model molecular interactions.
- Computational Biology Knowledge: Basic understanding of protein biology and structural modeling (e.g. concepts of antibodies, TCRs, amino acid properties, PDB files). Experience in handling biological datasets or working on problems like protein structure prediction, molecular dynamics, or sequence analysis.
Closing
At BIIE, you will be an integral part of a mission to accelerate immunology breakthroughs. This role offers the opportunity to shape how cutting-edge research data is captured and utilized, by building a digital foundation for our labs. You will work in a highly collaborative and interdisciplinary setting. We offer a competitive salary and benefits package, opportunities for professional development (including Benchling certification programs), and the chance to make a tangible impact on scientific discovery by empowering researchers with effective technology.
Gehalts-Prognose
Unternehmens-Details

Botnar Institute of Immune Engineering - BIIE
Bio- und Nanotechnologie