Research Scientist, Material Intelligence

Research Scientist, Material Intelligence

Full-Time 70000 - 90000 £ / year (est.) No working from home possible
Google DeepMind

At a Glance

  • Tasks: Lead a team in computational materials science to drive innovative research and discovery.
  • Company: Join Google DeepMind, a leader in AI-driven scientific advancements.
  • Benefits: Competitive salary, inclusive culture, and opportunities for professional growth.
  • Other info: Collaborative environment with a focus on diversity and inclusion.
  • Why this job: Make a real impact on groundbreaking materials research using cutting-edge technology.
  • Qualifications: Post-PhD experience in Computational Materials Science and strong leadership skills.

The predicted salary is between 70000 - 90000 £ per year.

Snapshot Science is at the heart of everything we do at Google DeepMind. From the beginning, we took inspiration from science to build better algorithms, and now, we want to use our toolkit to accelerate scientific discovery. By bringing together specialists with backgrounds in machine learning, computer science, physics, chemistry, biology and more, we’re optimistic that we can build new methods that will push the boundaries of what is possible and help solve the biggest problems facing humanity.

About Us

Google DeepMind (GDM) is pursuing a ground-breaking research program in materials, aiming to accelerate the discovery of new functional materials by combining the predictive power of artificial intelligence (AI) and computational simulation with automated experimentation. The team is establishing experimental capacity to create a closed-loop, AI-driven discovery engine. Computational simulation is critical for grounding the AI and providing quick in silico feedback before materials are sent off to the lab for experimental validation.

The Role

We are seeking an exceptional and highly motivated expert in computational materials science, with broad expertise simulating diverse material classes, to help drive our in-silico discovery efforts. This is a senior position with a unique role blending scientific leadership, hands‑on modeling, strategic input, and mentorship. You will be instrumental in guiding the computational team, supervising junior researchers, and refining the critical in-silico feedback loop that is at the heart of our mission.

Key responsibilities:

  • Computational Leadership & Supervision: Lead and mentor a team of computational materials scientists, guiding project roadmaps, fostering scientific growth, and ensuring high-quality research output.
  • Modeling Strategy & Execution: Design and execute large‑scale computational screening campaigns using DFT, molecular dynamics, and other simulation methods to predict novel materials with desired properties.
  • Broad Materials Expertise: Apply deep physical and chemical intuition across diverse material classes to identify promising avenues for discovery.
  • Method & Workflow Development: Review, integrate, and develop state‑of‑the‑art computational tools and automated, high‑throughput workflows on Google's large‑scale compute infrastructure that can be tightly integrated with AI search methods.
  • Data Integrity & Feedback Loop: Ensure the generation of high‑quality, reproducible computational data. Play a key role in structuring and curating simulation databases to train next‑generation AI models.
  • Cross‑functional Collaboration: Work closely with AI researchers and software engineers to translate AI‑generated hypotheses into scalable simulation pipelines and to troubleshoot the simulation‑to‑reality gap.
  • Reporting & Communication: Clearly and efficiently report on computational progress, new material predictions, and challenges to the wider Material Intelligence team and key stakeholders.

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:

  • Significant post‑PhD experience in Computational Materials Science, Solid‑State Chemistry, Condensed Matter Physics, or a related field.
  • Proven track record of supervising and mentoring junior computational researchers, postdocs, or students.
  • Broad knowledge across multiple material classes and their relevant properties (e.g., electronic, magnetic, optical, mechanical).
  • Deep, recognized expertise in first‑principles simulation methods for materials (e.g., DFT, DFPT, MD) and a strong understanding of their application and limitations.
  • Extensive hands‑on experience using computational packages like VASP, Quantum ESPRESSO, LAMMPS, or similar.
  • Strong programming skills (e.g., Python) for workflow management, data analysis, and tool automation.
  • Demonstrated ability to independently lead and manage complex computational research projects, from conception to data analysis and communication.
  • Excellent teamwork and communication skills, with proven experience in interdisciplinary collaboration, especially bridging the gap between computational/theory and experimental groups.

In addition, the following would be an advantage:

  • Experience in developing or applying machine learning models for materials property prediction (e.g., GNNs, ML‑derived interatomic potentials).
  • Expertise in high‑throughput computational workflows and managing large‑scale simulation campaigns on HPC or cloud infrastructure.
  • A significant track record of high‑impact research, reflected in publications, patents, or deployed technologies.
  • Experience in strategic planning for a research group, including hiring and resource allocation.

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.

Research Scientist, Material Intelligence employer: Google DeepMind

At Google DeepMind, we are dedicated to fostering a collaborative and innovative work environment where scientific discovery thrives. Our London-based team offers exceptional opportunities for professional growth, mentorship, and the chance to lead cutting-edge research in computational materials science. With a commitment to diversity and inclusion, we empower our employees to push the boundaries of technology while making a meaningful impact on global challenges.

Google DeepMind

Contact Details:

Google DeepMind Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Research Scientist, Material Intelligence

Tip Number 1

Network like a pro! Reach out to professionals in the field of computational materials science on LinkedIn or at conferences. A friendly chat can lead to opportunities that aren’t even advertised yet.

Tip Number 2

Show off your skills! Create a portfolio showcasing your projects, especially those involving DFT or molecular dynamics. This will give potential employers a taste of what you can bring to the table.

Tip Number 3

Prepare for interviews by brushing up on your knowledge of AI and computational tools. Be ready to discuss how you’ve used them in past projects and how they can be applied to new material discoveries.

Tip Number 4

Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining our team at Google DeepMind.

We think you need these skills to ace Research Scientist, Material Intelligence

Computational Materials Science
Solid-State Chemistry
Condensed Matter Physics
Supervision and Mentoring
First-Principles Simulation Methods
Density Functional Theory (DFT)
Molecular Dynamics (MD)

Some tips for your application 🫡

Tailor Your CV:Make sure your CV reflects the specific skills and experiences mentioned in the job description. Highlight your expertise in computational materials science and any relevant projects you've led or contributed to.

Craft a Compelling Cover Letter:Use your cover letter to tell us why you're passionate about the role and how your background aligns with our mission at Google DeepMind. Share specific examples of your work that demonstrate your leadership and mentoring abilities.

Showcase Your Technical Skills:Don’t forget to mention your hands-on experience with computational packages and programming languages. We want to see how you’ve applied these skills in real-world scenarios, so be specific!

Apply Through Our Website:We encourage you to apply directly through our website for the best chance of getting noticed. It’s the easiest way for us to keep track of your application and ensure it reaches the right people!

How to prepare for a job interview at Google DeepMind

Know Your Stuff

Make sure you brush up on your knowledge of computational materials science and the specific simulation methods mentioned in the job description. Be ready to discuss your hands-on experience with tools like VASP or Quantum ESPRESSO, as well as any relevant projects you've led.

Showcase Your Leadership Skills

Since this role involves mentoring junior researchers, prepare examples of how you've successfully supervised teams in the past. Highlight your approach to fostering scientific growth and ensuring high-quality research output.

Prepare for Technical Questions

Expect to dive deep into technical discussions about first-principles simulation methods and their applications. Practise explaining complex concepts clearly, as you'll need to communicate effectively with both computational and experimental teams.

Demonstrate Collaboration

This position requires cross-functional collaboration, so think of examples where you've worked closely with AI researchers or software engineers. Be ready to discuss how you bridged gaps between different disciplines and contributed to successful project outcomes.