Postdoctoral Research Associate (PDRA): AI and Digital Twin Development

  • Full Time
  • York
  • Posted 3 weeks ago

University of York

Job title:

Postdoctoral Research Associate (PDRA): AI and Digital Twin Development

Company:

University of York

Job description

School of Physics, Engineering and TechnologyThe brings physicists and engineers together to push the frontiers of knowledge, foster innovation and meet the grand challenges facing society. Our aim is to deliver world-leading research in both fundamental and applied areas whilst developing new technologies that work for the public good, in an environment where everyone can thrive.As a School, equality, diversity, and inclusion are central to our culture and we strive to provide a working environment which allows all staff and students to contribute fully, to flourish, and to excel. We aim to ensure that there is a supportive and egalitarian culture at all levels and across all staff groups and offer a range of family friendly, inclusive employment policies, flexible working arrangements, staff engagement forums, campus facilities and services to support staff from different backgrounds. We are proud to hold Juno Champion and Athena Swan silver awards, which recognise our commitment to creating an equitable and fully inclusive environment in which staff and students can thrive. We aim to inspire young people to engage with science and engineering through our outreach work.You will join a dynamic interdisciplinary team advancing Digital Twin and AI innovations to transform energy access in rural Africa. Led by the University of York with partners in Kenya, Malawi, and Zambia, the project designs and deploys AI-driven Digital Twin systems for standalone solar mini-grids, empowering communities and enhancing system resilience.RoleAs a Postdoctoral Research Associate, you will develop AI-enhanced Digital Twins for solar energy systems, enabling real-time monitoring, predictive maintenance, and performance optimization. You will design modular architectures integrating IoT, edge, and cloud technologies for low-connectivity environments. Extensive travel to Kenya, Malawi, and Zambia is required to work with stakeholders, conduct deployments, and train local technical teams. You will also contribute to research dissemination, capacity building, and open-source platform development.Skills, Experience & Qualification neededYou will have:

  • A PhD (or nearing completion) in AI, Machine Learning, Data Science, Control or Energy Systems Engineering, or a related field.
  • Strong expertise in AI for real-time systems, predictive analytics, or Digital Twins.
  • Experience with IoT, edge computing, and cloud integration in rural or resource-constrained settings.
  • Proficiency in MATLAB/Simulink and AI/ML tools like TensorFlow or PyTorch.
  • Excellent programming skills (e.g., Python, C++, or embedded systems).
  • Strong interpersonal and intercultural skills, with the ability to engage rural communities.
  • Willingness and ability to travel frequently for extended fieldwork in Kenya, Malawi, and Zambia.

Desirable:

  • Knowledge of standalone solar mini-grids, battery systems, or microgrid controls.
  • Familiarity with participatory or human-centred design in energy contexts.
  • Experience designing mobile or voice-assisted interfaces in local languages.
  • Prior fieldwork experience in Africa, South Asia, or other low- and middle-income country.

Interview date: TBCFor informal enquiries: Contact Prof. Suresh Perin (suresh.perin@york.ac.uk) or pet-hr@york.ac.uk.The University strives to be diverse and inclusive – a place where we can ALL be ourselves.We particularly encourage applications from people who identify as Black, Asian or from a Minority Ethnic background, who are underrepresented at the University.We offer family friendly, flexible working arrangements, with forums and inclusive facilities to support our staff.

Expected salary

£37174 – 45413 per year

Location

York

Job date

Sun, 01 Jun 2025 01:48:10 GMT

To help us track our recruitment effort, please indicate in your email/cover letter where (vacanciesin.eu) you saw this job posting.

To apply for this job please visit jobviewtrack.com.

Job Location

Adblock Detected!

Our website is made possible by displaying online advertisements to our visitors.
Please consider supporting us by whitelisting our website.