Several PhD opportunities are available in our Scalable Scientific Machine Learning Lab at Imperial College London. These projects are eligible for Imperial PhD scholarships (open to both home and overseas students, with application deadlines between Nov–Jan).
Current topics include:
🔬 Multi-scale simulation with physics-informed neural networks
🧠 Brain ultrasound imaging with diffusion-guided full-waveform inversion
🌍 Learning fast and generalizable climate models with neural differential equations
🌀 Learning dynamics on manifolds with neural geodesic flows
I also welcome new project proposals related to scientific machine learning.
Full details and how to apply here.

We’re hiring PhD students!
—
by
More news
-

Our research featured in Imperial Magazine
Our group’s research has been featured in Imperial Magazine (Issue 59) as part of the article “The science machines come of age,” which highlights how… Read more →
-

3 papers accepted at Differentiable Systems and Scientific Machine Learning workshop @EurIPS 2025
We are excited to announce we have 3 workshop papers accepted at the Differentiable Systems and Scientific Machine Learning workshop at EurIPS on December 6,… Read more →
-

Dr. Ben Moseley gives workshop on scalable physics-informed neural networks at CWI Amsterdam
Dr. Ben Moseley taught students how to design scalable physics-informed neural networks at Centrum Wiskunde & Informatica in Amsterdam during their Autumn School on Scientific… Read more →
-

Welcome, Davide Staub!
We are very excited to welcome Davide Staub to the lab as a PhD student! Davide brings a strong interdisciplinary background at the interface of… Read more →
-

We’re hiring PhD students!
Several PhD opportunities are available in our Scalable Scientific Machine Learning Lab at Imperial College London. These projects are eligible for Imperial PhD scholarships (open… Read more →
-

Ardan Suphi visits University of Bern
One of our PhD students, Ardan Suphi, will be visiting the University of Bern to collaborate on improving multispectral imaging of Mars using SciML. He… Read more →
