Lead Machine Learning Engineer
Machine Learning Team Lead - Foundation Models & Probabilistic AI
📍 London, UK (Hybrid) | 💰 £145,000+ & Significant Equity
🧬 AI Drug Discovery Startup | Full-time
About Us
We’re an AI-native biotech company building foundation models for biology to transform how new medicines are discovered. By combining large-scale multimodal biological datasets with probabilistic machine learning and generative AI, we’re developing systems capable of predicting complex biological behaviour at unprecedented scale.
Our mission is to create general-purpose biological intelligence that accelerates therapeutic discovery across oncology, immunology, and rare diseases.
Backed by top-tier investors and leading scientific advisors, we’ve recently secured major funding to expand our ML platform and research capabilities globally.
The Role
We’re looking for a Machine Learning Team Lead to lead a high-performing team working on foundation models and probabilistic ML systems for drug discovery.
You’ll sit at the intersection of research and engineering - driving technical direction, mentoring senior engineers and researchers, and helping scale both our platform and team as we push toward state-of-the-art biological modelling.
This is a hands-on leadership role for someone excited by frontier AI, scientific impact, and building exceptional ML organisations.
What You’ll Be Doing
- Leading a team of ML engineers and applied researchers building large-scale foundation models for biological data
- Defining technical strategy across probabilistic modelling, representation learning, and generative AI systems
- Architecting scalable distributed training infrastructure for multi-billion parameter models
- Driving productionisation of research systems into robust internal discovery platforms
- Collaborating with computational biologists, cheminformaticians, and leadership on long-term research initiatives
- Establishing engineering standards, experimentation workflows, and model evaluation practices
- Mentoring and growing a world-class ML engineering team
- Helping shape hiring strategy and technical roadmap as the company scales
What We’re Looking For
Essential
- Proven experience leading ML engineering or applied research teams
- Strong background building and scaling deep learning systems in production
- Deep understanding of foundation model architectures and modern generative AI techniques
- Experience with probabilistic ML approaches such as Bayesian inference, latent variable models, or uncertainty-aware systems
- Strong software engineering and distributed systems experience
- Ability to balance research innovation with engineering execution
- Excellent communication and stakeholder management skills
Nice to Have
- Experience in biotech, computational biology, or AI for science
- Familiarity with molecular modelling, protein representation learning, or biological datasets
- Publications or contributions in advanced ML research
- Experience scaling ML organisations in startup environments
Why Join?
- Lead one of the most technically ambitious AI teams in biotech
- Work on frontier AI problems with direct impact on human health
- Significant ownership, autonomy, and influence over technical direction
- Competitive compensation and meaningful equity package
- Access to cutting-edge compute infrastructure and proprietary datasets
- Collaborative culture built around scientific curiosity and engineering excellence
Please apply directly through this job advert.