Mathematics for our Future Climate: Theory, Data and Simulation (MFC CDT)

A dynamic and interdisciplinary PhD programme that harnesses the power of mathematics to address the urgent issues presented by climate change.

The MFC CDT will train 90 highly skilled mathematicians to become future leaders in innovative research, developing environmental prediction technologies, interpreting very large datasets relating to the Earth system, and modelling the risk associated with extreme weather and climate change.

Further, they will translate their research into applications in the public and industrial sectors dealing with risk and uncertainty quantification for weather, oceans and climate.

Programme run by

Highlights:

  • Innovative Research Opportunities
  • Interdisciplinary Collaboration
  • Cohort Culture
  • Tailored Internships
  • State-of-the-Art Facilities
  • Mentorship from Renowned Faculty

Fully Funded Studentships

Study while receiving a full stipend (with London weighting), PhD fees paid for 4 years, and a generous allowance for research-related travel.

Our programme will focus on four areas

Fundamental mathematical advances needed to understand and anticipate the climate crisis, and to quantify and mitigate the risks associated with extreme events and cascading impacts of a changing climate

Solutions to tackle climate change, enhance sustainability, and ensure economic prosperity and fairness by optimizing the effectiveness of renewable energy and the trade-off between mitigation and adaptation actions

Methods needed to exploit large-scale computing and big data

Tools to enable transparent, accessible, scalable, user- relevant and user-friendly analysis of real-time data

Loading...
Skip to content
Privacy Overview

This website uses cookies so that we can provide you with the best user experience possible. Cookie information is stored in your browser and performs functions such as recognising you when you return to our website and helping our team to understand which sections of the website you find most interesting and useful.