Computational Protein Scientist (gn) - ML & Protein Design @ Biotech Venture, Cambridge (UK)
Computational Protein Scientist (gn) - ML & Protein Design @ Biotech Venture, Cambridge (UK)

Computational Protein Scientist (gn) - ML & Protein Design @ Biotech Venture, Cambridge (UK)

Full-Time 48000 - 72000 £ / year (est.) No home office possible
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At a Glance

  • Tasks: Lead machine learning and protein modelling efforts to revolutionise protein function prediction.
  • Company: Join a cutting-edge biotech venture in Cambridge, transforming biological engineering.
  • Benefits: Competitive salary, innovative work environment, and opportunities for professional growth.
  • Why this job: Make a real impact in protein design with groundbreaking technology and data.
  • Qualifications: PhD or equivalent experience in machine learning or computational biology required.
  • Other info: Collaborative team culture focused on scientific urgency and innovation.

The predicted salary is between 48000 - 72000 £ per year.

About DropCode

DropCode is building the data engine for protein function. Starting with enzymes, we use our patented droplet microfluidics platform to capture exponentially more data on protein function than conventional methods, linking genotype to phenotype at per-droplet resolution, making every droplet a micro test tube. This data fuels machine learning models that learn in ever greater detail how sequence determines function. Our wedge is enzyme engineering for biocatalysis and industrial biotechnology, but our ambition is to make DropCode the definitive platform for protein function prediction. We are Cambridge PhDs with deep expertise across microfluidics, biochemistry, machine learning, optics, and engineering. We believe the language of biology is machine learning, and that the fastest path to transformative models is not just better AI, it is better inputs.

The Role

We are looking for an exceptional computational scientist to lead our machine learning and protein modelling efforts. You will own the sequence–function modelling stack end to end: from processing large-scale functional datasets generated in our microfluidic runs, to training and deploying generative and predictive models that drive the next round of experiments. You will work in a tight loop with the biology and engineering teams, turning quantitative phenotypic data into closed-loop active learning systems that continuously improve our models. This is a foundational role. You will be building the ML infrastructure from the ground up, and your architectural choices will shape DropCode for years.

What You'll Do

  • Design and train sequence–function models on deep mutational scanning datasets and high-throughput screening outputs from our microfluidics platform
  • Develop and iterate generative models (transformers, diffusion models, or equivalent) for enzyme sequence design and optimisation
  • Build closed-loop active learning pipelines that couple ML predictions with experimental design, shortening the design–build–test–learn cycle
  • Model protein fitness landscapes, including epistatic interactions, to navigate high-dimensional sequence space intelligently
  • Partner with the biology team to define the data collection strategy and ensure experimental outputs are ML-ready
  • Establish best practices for model evaluation, benchmarking, and uncertainty quantification in the context of functional prediction
  • Own and grow the computational stack as the team scales

What We're Looking For

  • Demonstrated contribution to a meaningful breakthrough in protein design or sequence–function modelling
  • Proven hands‑on experience with protein language models or generative models applied to biological sequences
  • Deep familiarity with deep mutational scanning, large-scale functional datasets, or comparable high-throughput data modalities
  • Strong understanding of fitness landscape theory and epistasis in the context of sequence optimisation
  • Experience building active learning or Bayesian optimisation systems that integrate ML with experimental feedback
  • Excitement at the prospect of working with large volumes of proprietary, quantitative functional data unavailable anywhere else
  • Comfortable operating in the ambiguity of early‑stage R&D and motivated by the challenge of building foundational infrastructure
  • PhD in machine learning, computational biology, biophysics, or a related field (or equivalent depth of experience)

Who You Are

You are frustrated by the slow, artisanal nature of current biological engineering and believe the field needs a step‑change in data scale and quality. You think quantitatively, treat every experiment as a data point for a model, and have strong opinions about what it takes to build the best protein design systems in the world. You thrive in collaborative, fast‑moving environments where the pace is set by scientific urgency, not process.

Computational Protein Scientist (gn) - ML & Protein Design @ Biotech Venture, Cambridge (UK) employer: Atlantic Food Labs GmbH

At DropCode, we pride ourselves on being at the forefront of protein function research, offering a dynamic and innovative work environment in the heart of Cambridge. Our collaborative culture fosters creativity and growth, providing employees with unique opportunities to lead groundbreaking projects in machine learning and protein design. With access to cutting-edge technology and a team of passionate experts, you will play a pivotal role in shaping the future of biotechnology while enjoying a supportive atmosphere that values your contributions.
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Contact Detail:

Atlantic Food Labs GmbH Recruiting Team

StudySmarter Expert Advice 🤫

We think this is how you could land Computational Protein Scientist (gn) - ML & Protein Design @ Biotech Venture, Cambridge (UK)

✨Tip Number 1

Network like a pro! Reach out to people in the industry, especially those at DropCode or similar companies. Attend relevant meetups or conferences and don’t be shy about introducing yourself. You never know who might have a lead on your dream job!

✨Tip Number 2

Show off your skills! Create a portfolio showcasing your projects related to protein design or machine learning. This could be anything from research papers to GitHub repositories. When you apply through our website, include links to your work to make your application stand out.

✨Tip Number 3

Prepare for the interview like it’s a scientific experiment! Research DropCode thoroughly, understand their technology, and think about how your skills can contribute to their mission. Practice common interview questions and be ready to discuss your past experiences in detail.

✨Tip Number 4

Follow up after applying! A quick email expressing your enthusiasm for the role can go a long way. It shows initiative and keeps you on their radar. Remember, we love candidates who are genuinely excited about what we do at DropCode!

We think you need these skills to ace Computational Protein Scientist (gn) - ML & Protein Design @ Biotech Venture, Cambridge (UK)

Machine Learning
Protein Modelling
Deep Mutational Scanning
Generative Models
Transformers
Diffusion Models
Active Learning Pipelines
Bayesian Optimisation
Fitness Landscape Theory
Epistasis
Data Collection Strategy
Model Evaluation
Benchmarking
Uncertainty Quantification
Computational Biology

Some tips for your application 🫡

Tailor Your CV: Make sure your CV reflects the skills and experiences that align with the role of Computational Protein Scientist. Highlight any relevant projects or research that showcase your expertise in machine learning and protein design.

Craft a Compelling Cover Letter: Use your cover letter to tell us why you're excited about the role and how your background fits with our mission at DropCode. Be specific about your contributions to protein design or sequence-function modelling, and let your passion shine through!

Showcase Your Technical Skills: Don’t forget to mention your hands-on experience with protein language models and deep mutational scanning. We want to see how you’ve applied these skills in real-world scenarios, so include examples that demonstrate your problem-solving abilities.

Apply Through Our Website: We encourage you to submit your application directly through our website. This way, we can ensure your application gets the attention it deserves, and you’ll be one step closer to joining our innovative team at DropCode!

How to prepare for a job interview at Atlantic Food Labs GmbH

✨Know Your Stuff

Make sure you brush up on your knowledge of protein design and machine learning. Familiarise yourself with deep mutational scanning and the latest trends in generative models. Being able to discuss these topics confidently will show that you're not just a candidate, but a potential leader in the field.

✨Showcase Your Experience

Prepare specific examples from your past work that demonstrate your hands-on experience with protein language models or active learning systems. Highlight any breakthroughs you've contributed to in protein design or sequence-function modelling, as this will resonate well with the team at DropCode.

✨Collaborate and Communicate

Since the role involves working closely with biology and engineering teams, practice articulating your ideas clearly and concisely. Think about how you can convey complex concepts in a way that’s accessible to those outside your field. This will be key in showing that you can thrive in their collaborative environment.

✨Embrace the Challenge

DropCode is looking for someone who thrives in ambiguity and is excited about building foundational infrastructure. Be ready to discuss how you approach challenges in early-stage R&D and share your thoughts on what it takes to scale data quality and volume in biological engineering.

Computational Protein Scientist (gn) - ML & Protein Design @ Biotech Venture, Cambridge (UK)
Atlantic Food Labs GmbH
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