We are looking for a motivated intern in AI & Computational Biology to support the development and application of machine learning methods on large-scale biological datasets. This role is ideal for students or recent graduates in computational biology, bioinformatics, AI/ML, or data science who are passionate about applying their skills to real-world biomedical problems.
As part of the Computational Biology team, you’ll work alongside experienced scientists and engineers, gaining hands-on experience with high-dimensional omics data and the opportunity to contribute to projects that impact drug discovery in oncology.
Support development of ML models for biological data analysis, with guidance from senior team members.
Process and integrate multi-modal datasets such as transcriptomics, genomics, and phenotypic screens from PDOs.
Contribute to exploratory data analysis, visualization, and preprocessing pipelines to uncover patterns and validate hypotheses.
Assist in prototype implementations of generative and predictive models under supervision.
Participate in weekly team meetings and project updates, contributing ideas and presenting your findings.
A student or recent graduate in computational biology, bioinformatics, machine learning, data science, or related fields.
Curious about cancer biology and excited by the idea of translating data into real therapeutic impact.
A strong team player who is proactive, detail-oriented, and thrives in a collaborative and fast-paced research environment.
Very comfortable with coding in Python.
Familiar with machine learning libraries (e.g., scikit-learn, PyTorch, TensorFlow) and have a strong understanding of ML fundamentals.
Exposure to RNA-seq or other omics data and tools like scanpy, anndata, or Bioconductor packages.
Familiarity with deep learning or generative models.
Interest in oncology, organoids, or translational research.