Senior Research Engineer, ML Systems

Basecamp Research
Location
London
Job Type
Full-time
Posted
July 14, 2026
Views
5

Job Description

Full-time · Head Office (Farringdon, London)

About Us

Basecamp Research is dedicated to solving major challenges in the life sciences by exploring Beyond Known Biology. Our teams build frontier AI models using BaseData, the world's largest ethically-sourced and globally representative biological dataset. Our Global Research Team collects and curates our own biological data through partnerships with more than 152 organizations in 28 countries, giving its AI access to genetic diversity that doesn't exist for models trained on public database sources. This enables Basecamp Research to design novel protein sequences and biological systems that can accelerate therapeutic research and development.

In October 2024 we closed Series B and in January 2026 finalised pre-Series C investment from NVIDIA. With hubs both in London, UK as well as Boston Massachusetts, USA and partners with biopharma companies and academic institutions worldwide, our work has been recognized with honors including Fast Company's Top 10 Most Innovative Companies in Biotech and the FT-backed Sifted AI100 list of Europe's leading AI startups.

At Basecamp Research, we pride ourselves on being a diverse, exciting, fun, and flexible place to work. Our team of biologists, engineers, ML scientists, field explorers, and operations specialists are united by a sense of adventure and the belief that nature has already designed the solutions to our planet's greatest challenges. If you feel passionate about the power of biology, data, and AI to build a better world, we'd love to hear from you.

The Role

We are looking for a Senior Research Engineer to join our AI Research team in London. You will work on the the technology, systems and infrastructure that power our frontier research, from accelerators and distributed training pipelines to experiment frameworks and the tooling that lets a small team operate at scale.

You will sit within the research team, understand the science, and make decisions that directly shape what research is possible and how we run it. The best research engineers shape what can be done and how fast ideas move from whiteboard to result.

We train large-scale models on the world's richest biological datasets. The scale we work at unique and the engineering challenges are too: custom architectures on novel data modalities, training runs that push hardware limits, and a pace of experimentation that demands robust and flexible tooling. You will be the person who makes all of that work reliably, and who figures out how to make it work better.

You'll report to the Head of AI Research and work closely with researchers covering genomics, computational biology, and large-scale deep learning. You'll also collaborate with the broader platform engineering and data teams across the company.

About You

PhD in computer science, physics, mathematics, or a related field, or equivalent depth of experience gained through building AI systems at scale.

You have worked at a frontier AI research lab where research engineers are treated as first-class contributors. You know how to run large-scale experiments and you've been part of making that actually happen at scale.

You are comfortable across the full stack: distributed training frameworks, GPU/accelerator optimization, data pipelines, experiment tracking, and making research reproducible and reliable. You have experience down to the level of CUDA kernels or XLA.

You have contributed to open source projects like PyTorch, JAX, MLX or similar.

You care about research outcomes as much as system uptime. You form opinions about what experiments to run and how to design them. You can read papers and research reports and figure out what it would take to implement them as efficiently as possible.

A backround in mathematics or physics is strongly preferred. The best research engineers bring quantitative intuition to system design decisions.

You have strong software engineering practices: clean code, good testing habits, focus on performance, and an instinct for building systems that other people can actually use. In a small team everyone depends on what you build.

You are genuinely curious about biology. The data you'll work with encodes billions of years of evolution, drawn from ecosystems most datasets never touch. You should find that interesting and not incidental.

Full-time · Head Office (Farringdon, London)

About Us

Basecamp Research is dedicated to solving major challenges in the life sciences by exploring Beyond Known Biology. Our teams build frontier AI models using BaseData, the world's largest ethically-sourced and globally representative biological dataset. Our Global Research Team collects and curates our own biological data through partnerships with more than 152 organizations in 28 countries, giving its AI access to genetic diversity that doesn't exist for models trained on public database sources. This enables Basecamp Research to design novel protein sequences and biological systems that can accelerate therapeutic research and development.

In October 2024 we closed Series B and in January 2026 finalised pre-Series C investment from NVIDIA. With hubs both in London, UK as well as Boston Massachusetts, USA and partners with biopharma companies and academic institutions worldwide, our work has been recognized with honors including Fast Company's Top 10 Most Innovative Companies in Biotech and the FT-backed Sifted AI100 list of Europe's leading AI startups.

At Basecamp Research, we pride ourselves on being a diverse, exciting, fun, and flexible place to work. Our team of biologists, engineers, ML scientists, field explorers, and operations specialists are united by a sense of adventure and the belief that nature has already designed the solutions to our planet's greatest challenges. If you feel passionate about the power of biology, data, and AI to build a better world, we'd love to hear from you.

The Role

We are looking for a Senior Research Engineer to join our AI Research team in London. You will work on the the technology, systems and infrastructure that power our frontier research, from accelerators and distributed training pipelines to experiment frameworks and the tooling that lets a small team operate at scale.

You will sit within the research team, understand the science, and make decisions that directly shape what research is possible and how we run it. The best research engineers shape what can be done and how fast ideas move from whiteboard to result.

We train large-scale models on the world's richest biological datasets. The scale we work at unique and the engineering challenges are too: custom architectures on novel data modalities, training runs that push hardware limits, and a pace of experimentation that demands robust and flexible tooling. You will be the person who makes all of that work reliably, and who figures out how to make it work better.

You'll report to the Head of AI Research and work closely with researchers covering genomics, computational biology, and large-scale deep learning. You'll also collaborate with the broader platform engineering and data teams across the company.

About You

PhD in computer science, physics, mathematics, or a related field, or equivalent depth of experience gained through building AI systems at scale.

You have worked at a frontier AI research lab where research engineers are treated as first-class contributors. You know how to run large-scale experiments and you've been part of making that actually happen at scale.

You are comfortable across the full stack: distributed training frameworks, GPU/accelerator optimization, data pipelines, experiment tracking, and making research reproducible and reliable. You have experience down to the level of CUDA kernels or XLA.

You have contributed to open source projects like PyTorch, JAX, MLX or similar.

You care about research outcomes as much as system uptime. You form opinions about what experiments to run and how to design them. You can read papers and research reports and figure out what it would take to implement them as efficiently as possible.

A backround in mathematics or physics is strongly preferred. The best research engineers bring quantitative intuition to system design decisions.

You have strong software engineering practices: clean code, good testing habits, focus on performance, and an instinct for building systems that other people can actually use. In a small team everyone depends on what you build.

You are genuinely curious about biology. The data you'll work with encodes billions of years of evolution, drawn from ecosystems most datasets never touch. You should find that interesting and not incidental.

Low ego, collaborative instincts, and a startup mentality. You're comfortable with ambiguity and happy to wear multiple hats in a team where everyone contributes beyond their job description.

Nice to Have

Experience with biological data: genomic sequences, protein structures, molecular data, or similar.

Familiarity with our broader tech stack: Kubernetes, Dagster, or similar orchestration and infrastructure tools.

Contributions to open-source ML frameworks or research codebases.

Publications at major venues (e.g., NeurIPS, ICML, ICLR, or JMLR)

What we offer in return

  • Impactful Mission: This is a rare chance to do work that genuinely matters. You'll join a talented, fast-moving team, access unique biological datasets at scale, and see your contributions shape real breakthroughs in AI and curative therapeutics..
  • Collaborative Culture: You'll be surrounded by world-class engineers, scientists, and researchers who care deeply about their work and about each other. With offices in London and Boston, we've built a flexible, cross-functional environment where personal development and real ownership aren't just talking points.
  • High Growth: We truly believe in investing our people we make coaching available to team members during steep growth journeys and we have twice yearly promotion opportunities. People who are really successful here own it and go directly to solve problems at pace and we ensure reward increases with impact.
  • Comprehensive Benefits: We've built a benefits package people value. That means competitive salary, equity, and private healthcare with no medical history exclusions so strong that means most employees' family members opt into our plan over their own. We also offer Carrot Fertility with IVF stipend, salary sacrifice pension, bike to work scheme, life insurance, and more.

We are committed to equal opportunity employment regardless of ethnic or national origin, race, religion, sex, age, citizenship, sexual orientation, marital status, disability, gender identity or any other basis. If you have a disability or additional need that needs accommodating do let us know.

Frequently Asked Questions

Where is the job located, and is it remote/hybrid/on-site?
The job is located in London, UK, and is a full-time position based at the Head Office in Farringdon, London.
What are the key responsibilities of this role?
You will work on the technology, systems, and infrastructure powering frontier research, including accelerators, distributed training pipelines, experiment frameworks, and scaling tools. You will make large-scale training runs work reliably and optimize performance.
What are the required qualifications and experience level?
You need a PhD in computer science, physics, mathematics, or a related field (or equivalent experience building AI systems at scale). Experience at a frontier AI research lab, full-stack comfort (distributed training, GPU optimization, CUDA/XLA), and strong software engineering practices are required. A background in math or physics is strongly preferred.
Who will I report to and work with?
You will report to the Head of AI Research. You will work closely with researchers in genomics, computational biology, and large-scale deep learning, while collaborating with the broader platform engineering and data teams.
What benefits and compensation are offered?
Benefits include a competitive salary, equity, private healthcare (with no medical history exclusions), a Carrot Fertility IVF stipend, a salary sacrifice pension, a bike-to-work scheme, life insurance, twice-yearly promotion opportunities, and coaching.

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Job Information

Source: manual
AI Relevance: 88/100 (Highly relevant)
Remote Type: onsite
Allowed Locations: Worldwide
Skills & Tags:
basecamp research deep learning computational biology genomics protein

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