At a Glance
- Tasks: Join us to develop cutting-edge causal models for cellular behaviour and therapeutic strategies.
- Company: Relation is a pioneering biotech firm focused on transformative medicines and innovative technology.
- Benefits: Enjoy a collaborative environment, access to advanced resources, and the chance to impact patient lives.
- Why this job: Be part of a dynamic team redefining drug discovery with real-world applications in health.
- Qualifications: PhD in ML or related field; expertise in causal inference and strong Python skills required.
- Other info: We value diversity and inclusion, empowering every team member to excel and innovate.
The predicted salary is between 72000 - 108000 £ per year.
Senior/Principal Machine Learning Scientist – Causality
London
About Relation
Relation is an end-to-end biotech company developing transformational medicines, with technology at our core. Our ambition is to understand human biology in unprecedented ways, discovering therapies to treat some of life’s most devastating diseases. We leverage single-cell multi-omics directly from patient tissue, functional assays, and machine learning (ML) to drive disease understanding – from cause to cure.
This year, we embarked on an exciting dual collaboration with GSK to tackle fibrosis and osteoarthritis, while also advancing our own internal osteoporosis programme. By combining our cutting-edge ML capabilities with GSK’s deep expertise in drug discovery, this partnership underscores our commitment to pioneering science and delivering impactful therapies to patients.
We are rapidly scaling our technology and discovery teams, offering a unique opportunity to join one of the most innovative TechBio companies. Be part of our dynamic, interdisciplinary teams, collaborating closely to redefine the boundaries of possibility in drug discovery. Our state-of-the-art wet and dry laboratories, located in the heart of London, provide an exceptional environment to foster interdisciplinarity and turn groundbreaking ideas into impactful therapies for patients.
We are committed to building diverse and inclusive teams. Relation is an equal opportunities employer and does not discriminate on the grounds of gender, sexual orientation, marital or civil partner status, gender reassignment, race, colour, nationality, ethnic or national origin, religion or belief, disability, or age. We cultivate innovation through collaboration, empowering every team member to do their best work and reach their highest potential.
By joining Relation, you will become part of an exceptionally talented team with extraordinary leverage to advance the field of drug discovery. Your work will shape our culture, strategic direction, and, most importantly, impact patients’ lives.
Opportunity
We are seeking an exceptional Machine Learning Scientist with expertise in causal inference to help build the next generation of predictive, mechanism-aware models of cellular behaviour. Your work will be central to our mission to understand and control cellular decision-making, enabling novel therapeutic strategies grounded in causal and interpretable models. You’ll be joining a team with access to cutting-edge multiomic and interventional datasets, advanced computational infrastructure, and deep interdisciplinary expertise. This is an opportunity to push the boundaries of what causal modelling can achieve in complex, high-dimensional, and noisy real-world systems, and to see your work tested directly in experimental biology.
Your responsibilities
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Collaborate with domain experts to translate biological hypotheses into formal causal modelling problems.
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Design and implement causal learning approaches that capture regulatory logic, cell fate trajectories, and intervention effects from diverse biological data, including single-cell perturbation experiments.
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Develop models that go beyond correlation, focusing on generalisation, counterfactual prediction, and experimental design.
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Collaborate with experimental teams to design and validate computational hypotheses via iterative strategies that inform or guide the next experiment (lab-in-the-loop).
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Evaluate models not just for fit, but for causal coherence, mechanistic fidelity, and utility in guiding real-world interventions.
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Communicate findings clearly across disciplinary boundaries, and contribute to high-impact publications.
Professionally, you have
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PhD in ML, statistics, computer science or a related quantitative field.
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Deep expertise in causal inference, such as causal graphical models, counterfactual reasoning, or invariant representation learning.
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Strong background in one or more of probabilistic modelling, time series analysis, or dynamical systems.
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Proficiency in Python and familiarity with scalable ML tooling and high-performance computing.
Desirable knowledge or experiences
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Familiarity with biological datasets, particularly single cell and perturbational data.
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Track record of impactful publications or open-source contributions in ML.
Experience working in interdisciplinary teams or applying ML in real world settings.
Personally, you are
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Inclusive leader and team player.
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Clear communicator.
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Driven by impact.
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Humble and hungry to learn.
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Motivated and curious.
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Passionate about making a difference in patients’ lives.
Join us in this exciting role, where your contributions will directly impact advancing our understanding of genetics and disease risk, supporting our mission to deliver transformative medicines to patients. Together, we’re not just conducting research—we’re setting new standards in the fields of ML and genetics. The patient is waiting!
Relation is a committed equal opportunities employer.
RECRUITMENT AGENCIES: Please note that Relation does not accept unsolicited resumes from agencies. Resumes should not be forwarded to our job aliases or employees. Relation will not be liable for any fees associated with unsolicited CVs.
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Senior/Principal Machine Learning Scientist - Causality (London) employer: Relation Therapeutics Limited
Contact Detail:
Relation Therapeutics Limited Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Senior/Principal Machine Learning Scientist - Causality (London)
✨Tip Number 1
Familiarise yourself with the latest advancements in causal inference and machine learning. Being well-versed in current research will not only help you during interviews but also demonstrate your genuine interest in the field.
✨Tip Number 2
Network with professionals in the biotech and machine learning sectors. Attend relevant conferences or webinars to connect with potential colleagues and learn more about the industry, which can give you an edge in understanding the company culture.
✨Tip Number 3
Prepare to discuss your previous projects that involved causal modelling or machine learning applications. Be ready to explain your thought process, challenges faced, and how your work contributed to real-world outcomes, as this aligns with Relation's mission.
✨Tip Number 4
Showcase your collaborative skills by highlighting experiences where you worked in interdisciplinary teams. Relation values teamwork, so demonstrating your ability to communicate and collaborate effectively will be crucial.
We think you need these skills to ace Senior/Principal Machine Learning Scientist - Causality (London)
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights your relevant experience in machine learning, causal inference, and any interdisciplinary work. Emphasise your PhD and any impactful publications or contributions to open-source projects.
Craft a Compelling Cover Letter: In your cover letter, express your passion for the role and how your skills align with Relation's mission. Mention specific experiences that demonstrate your expertise in causal modelling and collaboration with domain experts.
Showcase Your Technical Skills: Clearly outline your proficiency in Python and any scalable ML tools you have used. If you have experience with biological datasets, particularly single-cell data, make sure to include that as well.
Highlight Your Soft Skills: Relation values inclusivity and clear communication. In your application, provide examples of how you've worked effectively in teams and communicated complex ideas across disciplines.
How to prepare for a job interview at Relation Therapeutics Limited
✨Showcase Your Expertise in Causal Inference
Make sure to highlight your deep understanding of causal inference techniques during the interview. Be prepared to discuss specific projects where you've applied causal graphical models or counterfactual reasoning, as this is a key requirement for the role.
✨Demonstrate Collaboration Skills
Since the role involves working closely with domain experts and experimental teams, share examples of how you've successfully collaborated in interdisciplinary settings. Emphasise your ability to communicate complex ideas clearly across different fields.
✨Prepare for Technical Questions
Expect technical questions related to machine learning, particularly around probabilistic modelling and time series analysis. Brush up on your Python skills and be ready to discuss scalable ML tooling and high-performance computing, as these are crucial for the position.
✨Express Your Passion for Impact
Convey your motivation for making a difference in patients' lives. Share personal stories or experiences that illustrate your commitment to advancing drug discovery and how you see your work contributing to transformative medicines.