Computational Biologist – Immuno-Oncology
Overview:
This is a unique opportunity for a driven computational biologist to shape the future of antigen discovery in a cutting-edge biotech environment. You\’ll play a key role in the development of unsupervised machine learning models using transcriptomic datasets to support target identification and product development.
As the team grows, this position offers a clear path into leadershiP, ideal for someone ready to expand their impact both scientifically and strategically.
Key Responsibilities:
- Develop and refine unsupervised machine learning approaches to analyse multi-omics data, with a focus on transcriptomics
- Collaborate closely with experimental scientists and bioinformaticians to integrate data and guide research direction
- Support internal and external teams with in-house tools such as CrytoMAP and BamQuery
- Contribute to antigen discovery pipelines and help define computational strategy
- Help grow and mentor the computational biology function as the team expands
- Stay current with emerging methods in computational immunology, machine learning, and applied bioinformatics
Ideal Background:
- PhD in Computational Biology, Bioinformatics, Machine Learning, or a related field
- Strong experience with multi-omics data integration, ideally within immunology or oncology
- Hands-on expertise in Python and/or R, and familiarity with common bioinformatics workflows
- Track record of developing ML-based models, in an unsupervised context
- Excellent problem-solving, communication and collaboration skills
- Experience in a biotech or translational research setting is highly desirable
Contact Detail:
Nexia Life Sciences Recruiting Team