National AI Awards 2025Discover AI's trailblazers! Join us to celebrate innovation and nominate industry leaders.

Nominate & Attend

Principal Machine Learning Engineer, Structural Biology | Pharma/BioTech | Series A - Drug discovery B2B Platform | Fully Remote, EU | £ 850-1200pd, Outside IR35 | 6-12 months Contract Length

Owen Thomas | Pending B Corp
united kingdom, united kingdom
2 months ago
Applications closed

Related Jobs

View all jobs

Principal Machine Learning Engineer

Principal Engineer

Principal Data Engineer

Principal Data Engineer

Senior MLOps/GenAI Infrastructure Engineer

Principal Product Manager – Data Science & Machine Learning

Principal Machine Learning Engineer, Structural Biology | Pharma/BioTech | Series A - Drug discovery B2B Platform | Fully Remote, EU | £ 850-1200pd, Outside IR35 | 6-12 months Contract Length


The Client:

A leading organization in the drug discovery field is currently looking for aPrincipal ML Engineerto spearhead the technical direction for their structural biology models. 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 will have deep expertise in training and deploying transformer-based models for protein structure prediction and related tasks. Additionally, they should have a strong understanding of how these models are applied within drug discovery workflows. A proven track record in setting strategy, solving complex technical problems, and delivering impactful ML systems is essential.


Principal Machine Learning Engineer, Structural Biology | Pharma/BioTech expertise | Series A - Drug discovery B2B Platform | Fully Remote, EU || £ 850 - 1200pd, Outside IR35 | 6 - 12 months Contract Length


  • Define approaches for data preprocessing, selection, and benchmarking for new training tasks involving protein structures, complexes, and multimodal biological datasets.
  • Design and implement extensions to models tailored to specific challenges, such as predicting protein complex interactions and binding affinities, including data processing, benchmarking, and evaluation pipelines.
  • Provide mentorship and guidance to team members, assisting with the planning and execution of complex projects related to structural biology modeling.
  • Lead the technical strategy for machine learning applications in structural biology, focusing on adapting and expanding foundational models such as those for protein folding and related tasks.
  • Influence key decisions regarding model architecture, data infrastructure, and model deployment strategies.
  • Work collaboratively with other teams to ensure models address practical needs in scientific discovery.
  • Contribute to scientific publications or open-source projects where applicable.
  • Develop and maintain scalable, production-ready machine learning systems, including pipelines for training, inference, and deployment.


Expected Milestones

  • By month 3: Take charge of a structural biology modeling project. Create a strategy and experiment plan for adapting foundational models to a key high-value application.
  • By month 6: Deliver the initial functional model extension (e.g., binding affinity prediction head), complete with a clear benchmarking framework and a replicable pipeline.
  • By month 12: Oversee multiple ML initiatives in structural biology, showcasing significant improvements in model accuracy and practical impact. Provide mentorship to peers and set the strategic direction for the area.nd practical impact. Provide mentorship to peers and set the strategic direction for the area.


Principal Machine Learning Engineer, Structural Biology | Pharma/BioTech expertise | Series A - Drug discovery B2B Platform | Fully Remote, EU || Fully Remote, EU | £ 850 - 1200pd, Outside IR35 | 6 - 12 months Contract Length


  • You hold a PhD (or equivalent experience) in machine learning, computational biology, or structural biology, with a proven track record of applying machine learning to real-world protein structure or drug discovery challenges.
  • You have extensive experience in building and training transformer-based models (e.g., protein folding models) using frameworks like PyTorch, PyTorch Lightning, or similar.
  • You understand the data challenges in structural biology and are capable of designing scalable preprocessing, training, and evaluation workflows.
  • You have experience delivering machine learning systems at scale, including CI/CD pipelines, model versioning, and distributed GPU-based training.
  • You are proficient with modern MLOps tools and infrastructure, such as Docker, Kubernetes, cloud platforms, and orchestration tools.
  • You are adept at navigating complex technical environments and can deconstruct and execute ambitious modeling initiatives.
  • You understand how structural biology models contribute to the drug discovery process and can align your work with real-world applications.


If you think you are a good match for the Principal Machine Learning Engineer, ADMET | Pharma/BioTech expertise, ping us over your CV and we will give you a call if we think you are a good match!

National AI Awards 2025

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

LinkedIn Profile Checklist for Machine Learning Jobs: 10 Tweaks to Drive Recruiter Interest

The machine learning landscape is rapidly evolving, with demand soaring for experts in modelling, algorithm tuning and data-driven insights. Recruiters hunt for candidates proficient in Python, TensorFlow, PyTorch and MLOps processes. A generic profile simply won’t cut it. Our step-by-step LinkedIn for machine learning jobs checklist covers 10 targeted tweaks to ensure your profile ranks in searches and communicates your technical impact. Whether launching your ML career or seeking leadership roles, these optimisations will sharpen your professional narrative and boost recruiter engagement.

Part-Time Study Routes That Lead to Machine Learning Jobs: Evening Courses, Bootcamps & Online Masters

Machine learning—a subset of artificial intelligence—enables computers to learn from data and improve over time without explicit programming. From predictive maintenance in manufacturing to recommendation engines in e-commerce and diagnostic tools in healthcare, machine learning (ML) underpins many of today’s most innovative applications. In the UK, demand for ML professionals—engineers, data scientists, research scientists and ML operations specialists—is growing rapidly, with roles projected to increase by over 50% in the next five years. However, many aspiring ML practitioners cannot step away from work or personal commitments for full-time study. Thankfully, a rich ecosystem of part-time learning pathways—Evening Courses, Intensive Bootcamps and Flexible Online Master’s Programmes—empowers you to learn machine learning while working. This comprehensive guide examines each route: foundational CPD units, immersive bootcamps, accredited online MSc programmes, funding options, planning strategies and a real-world case study. Whether you’re a software developer branching into ML, a statistician aiming to upskill, or a professional exploring AI-driven innovation, you’ll discover how to build in-demand ML expertise on your own schedule.

The Ultimate Assessment-Centre Survival Guide for Machine Learning Jobs in the UK

Assessment centres for machine learning positions in the UK are designed to reflect the complexity and collaboration required in real-world ML projects. From psychometric assessments and live model-building tasks to group data science challenges and behavioural interviews, recruiters evaluate your statistical understanding, coding skills, communication and teamwork. Whether you specialise in deep learning, reinforcement learning or NLP, this guide offers a step-by-step approach to excel at every stage and secure your next ML role.