At a Glance
- Tasks: Drive innovative ML solutions for drug discovery and tackle complex structural biology challenges.
- Company: Leading biotech firm revolutionising drug discovery with cutting-edge technology.
- Benefits: Up to £160,000 salary, stock options, remote work, and flexible hours.
- Other info: Fully remote role with excellent growth opportunities in a dynamic startup environment.
- Why this job: Make a real-world impact in healthcare while advancing your ML expertise.
- Qualifications: Experience in ML models for protein structure prediction and strong problem-solving skills.
The predicted salary is between 130000 - 130000 £ per year.
A leading organization in the drug discovery field is currently looking for a client facing Senior Machine Learning Engineer to drive the development of foundational models that directly impact real-world drug discovery workflows. This hands-on, high-impact role offers the opportunity to advance the application of foundational models to complex structural biology challenges.
The successful candidate will work closely with the leadership team, serving as the technical authority on machine learning modeling, architecture, and experimentation in this domain. While this role does not involve people management, the candidate will be expected to provide mentorship and guidance to engineers and researchers on technical content.
The ideal candidate brings deep expertise in training and deploying state-of-the-art models for protein structure prediction. Beyond technical proficiency, you must understand how these models integrate into broader drug discovery pipelines and possess the strategic mindset needed to break down complex problems into actionable, impactful ML solutions.
Requirements:- Proven experience building and training contemporary models (e.g., AlphaFold, OpenFold, Boltz) at scale in a production environment.
- A strong track record of applying ML to real-world protein structure prediction or drug discovery problems.
- Comfortable in a fast-paced startup environment, with the ability to break down complex technical problems into impactful ML systems.
- Experience in Federated Learning, privacy-preserving ML, or a portfolio of publications in top-tier journals/conferences like NeurIPS, ICML, or Nature Methods.
- Work with our customers and academic partners to define data, preprocessing, selection, and benchmarking strategies for novel training tasks involving protein structures, complexes, and multimodal biological data.
- Carry out case-studies associated with the above, providing scientific and technical expertise to our customers. You will be involved in the full project pipeline, from scoping through to results delivery and dissemination.
- Advance the state-of-the-art by fine-tuning and customizing foundational architectures such as OpenFold, ESMFold, and Boltz-2 for specialized structural biology challenges.
- Architect model extensions tailored for binding affinity and protein complex prediction, overseeing everything from data distillation to rigorous benchmarking.
- Partner with leading academic and industry stakeholders to engineer data selection and preprocessing strategies for complex, multimodal biological datasets.
- Lead comprehensive technical case studies, managing the entire lifecycle from initial project scoping to the final dissemination of results.
- Develop and sustain high-scale ML pipelines that support efficient training, inference, and production-grade deployment.
- Work across internal teams to ensure all model development is anchored in solving genuine drug discovery hurdles.
- Drive external impact through high-quality open-source contributions and scientific publications.
- Fully Remote Working Culture
- Up to £160,000 Base Salary
- Attractive Stock Options
- B2B & Full time employee options
- Flexible hours + - 3 hours of CET time zone
If you think you are a good match for the Machine Learning Engineer role, ping us over your CV and we will give you a call if we think you are a good match!
Senior Machine Learning Engineer, Structural Biology | Pharma/BioTech | Series A - Drug discovery B2B Platform | EU Remote | | Salary Up to £130,000K, plus early equity+benefits in Liverpool employer: Owen Thomas | B Corp™
Contact Detail:
Owen Thomas | B Corp™ Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Senior Machine Learning Engineer, Structural Biology | Pharma/BioTech | Series A - Drug discovery B2B Platform | EU Remote | | Salary Up to £130,000K, plus early equity+benefits in Liverpool
✨Network Like a Pro
Get out there and connect with folks in the industry! Attend meetups, webinars, or even online forums related to machine learning and drug discovery. You never know who might have the inside scoop on job openings or can put in a good word for you.
✨Show Off Your Skills
Create a portfolio showcasing your projects, especially those related to protein structure prediction or ML models. Share it on platforms like GitHub or your personal website. This gives potential employers a taste of what you can do and how you tackle real-world problems.
✨Ace the Interview
Prepare for technical interviews by brushing up on your knowledge of foundational models and their applications in structural biology. Practice explaining complex concepts in simple terms, as you'll need to communicate effectively with both technical and non-technical stakeholders.
✨Apply Through Us!
Don't forget to apply through our website! We’re always on the lookout for talented individuals like you. Plus, applying directly can sometimes give you an edge over other candidates. So, get your CV ready and let’s make it happen!
We think you need these skills to ace Senior Machine Learning Engineer, Structural Biology | Pharma/BioTech | Series A - Drug discovery B2B Platform | EU Remote | | Salary Up to £130,000K, plus early equity+benefits in Liverpool
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights your experience with machine learning models, especially in structural biology. We want to see how your skills align with the role, so don’t be shy about showcasing relevant projects and achievements!
Craft a Compelling Cover Letter: Your cover letter is your chance to shine! Use it to explain why you’re passionate about drug discovery and how your expertise can contribute to our mission. Keep it engaging and personal – we love to see your personality come through.
Showcase Your Technical Skills: Be specific about the tools and technologies you’ve used in your previous roles. Mention any experience with foundational models like AlphaFold or OpenFold, as well as your understanding of ML integration in drug discovery workflows. We’re keen to see your technical prowess!
Apply Through Our Website: We encourage you to apply directly through our website for a smoother process. It helps us keep track of applications and ensures you get the attention you deserve. Plus, it’s super easy – just upload your CV and cover letter!
How to prepare for a job interview at Owen Thomas | B Corp™
✨Know Your Models Inside Out
Make sure you can discuss your experience with models like AlphaFold and OpenFold in detail. Be ready to explain how you've applied these models to real-world protein structure prediction problems, as this will show your deep technical expertise.
✨Understand the Bigger Picture
It's crucial to demonstrate how your machine learning solutions fit into broader drug discovery pipelines. Prepare examples of how you've broken down complex problems into actionable ML strategies that have had a tangible impact on drug discovery workflows.
✨Showcase Your Collaborative Spirit
Since this role involves working closely with customers and academic partners, be prepared to discuss your experience in defining data strategies and collaborating on projects. Highlight any case studies where you’ve led technical discussions or provided mentorship.
✨Be Ready for Technical Challenges
Expect to face some technical questions or challenges during the interview. Brush up on federated learning and privacy-preserving ML concepts, and be ready to discuss how you would approach specific structural biology challenges using these techniques.