University of Warwick Jobs

University of Warwick

Applications Close:

Coventry CV4 7AL, UK

3 Star Employer Ranking

"PhD Studentship: Machine Learning Approaches to Whole-particle Modelling of Pt Nanoparticles for Fuel Cells"

Academic Connect
Applications Close

PhD Studentship: Machine Learning Approaches to Whole-particle Modelling of Pt Nanoparticles for Fuel Cells

University of Warwick - Centre for Doctoral Training in the Modelling of Heterogeneous Materials (HetSys), School of Engineering

Qualification Type:PhD
Location:Coventry, University of Warwick
Funding for:UK Students, EU Students, International Students
Funding amount:£20,780
Hours:Full Time
Placed On:22nd January 2026
Closes:28th January 2026
Reference:HP-2026-026

About the project:

Supervisor: Professor Nicholas Hine, University of Warwick

This project uses cutting-edge computational and machine learning methods to accelerate catalyst discovery for fuel cell technology. Hydrogen fuel cells can produce clean electricity from hydrogen and oxygen, but their performance and cost are limited by platinum-based catalysts. This project will use advanced computational methods to accelerate the discovery of better catalysts that use less platinum and have improved long-term stability.
By combining large-scale density functional theory with machine-learned interatomic potentials and automated reaction discovery, we will reveal how nanoparticle composition, geometry and electronic structure govern electrochemical reaction rates, helping design efficient, low-cost materials for sustainable hydrogen technologies.

This PhD position is affiliated with the EPSRC Centre for Doctoral Training (CDT) in Modelling of Heterogeneous Systems (HetSys). It is funded as part of an Industrial Doctoral Landscape Awards (IDLA) programme and is in partnership with Johnson Matthey.

About HetSys: Harnessing Data, Modelling and Simulation for Real‑World Impact

HetSys (Centre for Doctoral Training in Modelling of Heterogeneous Systems) at the University of Warwick is an innovative, interdisciplinary fully funded PhD programme that brings together science, engineering, and mathematics to tackle some of the most pressing challenges of our time.

  • Big Questions, Real Impact – From climate modelling and sustainable energy to advanced materials and biomedical systems, HetSys projects apply cutting‑edge computational and mathematical techniques to problems with global significance.
  • Interdisciplinary Training – Students gain expertise across physics, engineering, computer science, and applied mathematics, developing versatile skills that open doors to both academia and industry.
  • Collaborative Environment – Work alongside leading researchers and industry partners in a supportive, vibrant community that values curiosity, creativity, and collaboration.
  • Future‑Focused Careers – HetSys graduates are equipped with highly sought‑after skills in modelling, simulation, and data science, preparing them for impactful careers in research, technology, and beyond.

If you’re excited by the idea of using advanced modelling and simulation to solve complex, real‑world problems, HetSys offers the perfect environment to push boundaries and make a difference.

Additional Funding Information

Awards for UK, EU, International applicants cover full University fees, give a research training budget and a tax-free stipend to cover living costs (standard UKRI rate £20780 in 25/26 - equivalent to national living wage)

Closing Date:28/01/2026

10

Unlock this job opportunity


View more options below

View full job details

See the complete job description, requirements, and application process

Stay on their radar

Join the talent pool for University of Warwick

Join Talent Pool

Express interest in this position

Let University of Warwick know you're interested in PhD Studentship: Machine Learning Approaches to Whole-particle Modelling of Pt Nanoparticles for Fuel Cells

Add this Job Post to FavoritesExpress Interest

Get similar job alerts

Receive notifications when similar positions become available

Share this opportunity

Send this job to colleagues or friends who might be interested

250 Jobs Found
View More