Director of ML Research – AI Applications in Switzerland at Jobgether
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Job Description
This position is posted by Jobgether on behalf of a partner company. We are currently looking for a Director of ML Research – AI Applications in Switzerland.
This is a senior technical leadership role at the forefront of applying machine learning to pharmaceutical R&D, with a strong focus on structural biology and drug discovery. You will be responsible for building and leading a newly created ML Research function within an AI Applications organization, shaping its scientific direction while remaining deeply hands-on in model development and experimentation. The role combines cutting-edge research, team leadership, and real-world deployment of production-grade AI models. You will work across federated data networks, collaborating with engineering, product, and academic partners to translate scientific breakthroughs into scalable solutions. A key focus will be improving co-folding models and advancing their generalization across complex biological datasets. This is a player-coach position for a leader who thrives at the intersection of research excellence and applied impact in drug discovery.
- Establish and lead the dedicated ML Research team within the AI Applications organization, defining its scientific vision, research mandate, and long-term direction.
- Drive the design, training, and improvement of large-scale foundation models for structural biology, with a focus on co-folding and protein interaction modeling.
- Develop and refine data pipelines and model architectures using large proprietary datasets, incorporating geometric and physical priors for improved biological accuracy.
- Translate cutting-edge research in machine learning and structural biology into practical, production-ready modeling approaches for drug discovery applications.
- Lead hands-on experimentation, model evaluation, and applied research workstreams, particularly around co-folding model generalization and regularization.
- Collaborate closely with engineering, product, privacy, and domain teams to ensure seamless integration of research outputs into production systems.
- Partner with academic institutions and research labs, contributing to publications and presenting findings at leading scientific conferences.
- Represent the organization in customer discussions and scientific forums, addressing complex modeling challenges across pharma partners.
- Build, mentor, and grow a high-performing ML research team over time.
Requirements:
- PhD or MSc in Computer Science, Machine Learning, Computational Biology, or a related field, with 7+ years of relevant experience including 3+ years in technical leadership.
- Strong expertise in applying machine learning to biological problems, particularly structural biology (e.g., co-folding, protein modeling) or related domains such as ADMET.
- Proven publication record in top-tier ML or computational biology venues (e.g., NeurIPS, ICML, ICLR, ISMB, RECOMB, or equivalent).
- Hands-on experience with modern ML frameworks such as Python and PyTorch, and familiarity with large-scale models (e.g., OpenFold, Boltz, or similar).
- Proven ability to operate as a player-coach, combining technical leadership with direct contribution to modeling and experimentation.
- Strong experience working across cross-functional and customer-facing environments, translating complex scientific problems into actionable technical approaches.
- Ability to thrive in ambiguous, research-driven environments with a strong applied focus.
- Nice to have: experience in early-stage biotech, building ML research functions from scratch, or working with distributed training across GPU/cloud platforms (AWS, Azure, Lambda).
- Experience with ML infrastructure and MLOps, including Kubernetes-based workflows.
- Familiarity with QSAR modeling approaches, Triton kernel optimization, or system-level ML performance tuning.
- Exposure to federated learning, privacy-preserving ML, or multi-party training environments.
Benefits:
- Competitive industry compensation package, including early-stage virtual share options.
- Remote-first working model with flexibility to work from anywhere.
- Wellbeing budget, mental health support, home office allowance, co-working stipend, and learning budget.
- Generous holiday entitlement.
- Regular in-person company gatherings at Berlin HQ or other European locations (approximately three times per year).
- Opportunity to work with a highly experienced, execution-focused team from leading organizations.
- Exposure to cutting-edge AI research applied directly to pharmaceutical drug discovery challenges.