Research Scientist, Reinforcement Learning

DeepMind
London, United Kingdom
3 months ago
Job Type
Permanent
Work Pattern
Full-time
Work Location
On-site
Seniority
Mid
Education
Phd
Visa Sponsorship
Available
Posted
14 Mar 2026 (3 months ago)

At Google DeepMind, we value diversity of experience, knowledge, backgrounds and perspectives and harness these qualities to create extraordinary impact. We are committed to equal employment opportunity regardless of sex, race, religion or belief, ethnic or national origin, disability, age, citizenship, marital, domestic or civil partnership status, sexual orientation, gender identity, pregnancy, or related condition (including breastfeeding) or any other basis as protected by applicable law. If you have a disability or additional need that requires accommodation, please do not hesitate to let us know.

Snapshot

We're looking for talented Research Scientists to push forward fundamental research and technology in Artificial Intelligence, as part of our interdisciplinary and collaborative Reinforcement Learning team.

About Us

DeepMind’s RL team is a long-standing and tight-knit team of collaborative scientists and engineers, led by Tom Schaul. We tackle large scale research challenges in reinforcement learning. We design, refine, and scale RL algorithms and deliver meaningful scientific or product impact. Over the past decade, members of the RL team have been instrumental in building DQN, AlphaGo, Rainbow, AlphaZero, MuZero, AlphaStar, AlphaProof and Gemini. Join us to build the next big thing!

The Role

As a Research Scientist, you'll use machine learning knowledge and technical know-how to innovate, drive research projects, as well as apply research to impactful problems. You will be expected to implement code, run experiments, own results end-to-end, communicate them internally or externally, as well as collaborate with and empower others.

Your work may involve:

  • Initiating or pursuing novel research directions, by proposing and testing research hypotheses.
  • Implementing algorithm ideas and run end-to-end experiments, including setup, execution, analysis, and iteration.
  • Sharing your skills and knowledge with other researchers.
  • Building or improving infrastructure for research at scale.
  • Designing evaluations and ablations that answer real questions and change minds.
  • Analyzing results carefully, including debugging and failure analysis.
  • Communicating clearly through plots, writeups, and paper-ready narratives and figures.
  • Contributing to a culture of first-principles thinking, high standards, and direct, constructive feedback.

Our projects span the full range of state-of-the-art machine learning and AI fields, including large language models, distributed machine learning techniques, and much more, but with an emphasis on reinforcement learning.

We take a holistic view of people's backgrounds, and do not expect you to be an expert in all areas. We do expect you to proactively and quickly adopt new technologies and systems, but we also invest a lot of time in training and helping people to continually learn as part of their role.

About You

In order to set you up for success as a Research Scientist at Google DeepMind, we look for the following skills and experience:

  • A passion for reinforcement learning
  • A research track record in RL, including peer-reviewed publications.
  • Strong implementation ability and comfort working in research codebases.
  • Evidence of owning experiments end-to-end, including analysis and interpretation.
  • Strong communication skills and a bias toward clarity and honesty regarding results.
  • High agency and drive: You push projects forward, prioritize effectively, and take initiative.
  • PhD in ML preferred, or equivalent practical experience.

In addition, the following would be an advantage:

  • Experience with RL for sequence models, post-training, preference-based learning, or agentic systems.
  • Experience with modern research stacks (e.g., JAX/Flax or PyTorch) and scaling experiments.
  • Strong experimental taste: Good judgment regarding baselines, ablations, and what is worth testing.
  • Comfort with scaling, evaluation methodologies, and diagnosing complex failure modes.
  • A focus on craft: You care about doing excellent work while maintaining a high velocity.

Related Jobs

View all jobs
Spotlight

Senior ML Compiler Engineer

Fractile Bristol, United Kingdom
Spotlight

Senior ML Runtime Engineer

Fractile London, United Kingdom

Research Scientist, Wayve Labs

Wayve London, United Kingdom
On-site

Research Scientist (Applied LLMs), London

Isomorphic Labs London, United Kingdom

Research Engineer / Scientist, Alignment Science - London

Anthropic London, United Kingdom
£260,000 – £370,000 pa Hybrid

Research Engineer, Science of Scaling

Anthropic London, United Kingdom
£260,000 – £630,000 pa Hybrid

Machine Learning Scientist – Reasoning Systems & RL (LLMs / Agents)

Relation Therapeutics London, United Kingdom
On-site

Applied Scientist II, Strategic Account Services (SAS)

Amazon London, United Kingdom
On-site

Industry Insights

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

Where to Advertise Machine Learning Jobs in the UK (2026 Guide)

Where to advertise machine learning jobs UK in 2026: the specialist boards and communities that reach ML, MLOps and deep learning engineering talent. The candidate pool is small, highly specialised and in demand across AI labs, financial services, healthcare, autonomous systems and consumer technology simultaneously. Machine learning engineers and researchers move between roles through professional networks, conference communities and specialist platforms — not general job boards where ML roles compete with unrelated software engineering positions for the same audience. This guide, published by MachineLearningJobs.co.uk, covers where to advertise machine learning roles in the UK in 2026, how the main platforms compare, what employers should expect to pay, and what the data says about hiring across different role types.