PhD Students
- Ahmed Shahin : Deep Learning and Medical Image Analysis
- Julius Kunze : TBA
- Mingtian Zhang : TBA
- Alex Mansbridge : Probabilistic Deep Generative Models
- James Townsend : Lossless Compression using Deep Generative Models
- Harshil Shah : Generative Natural Language Models
- Raza Habib : TBA
- Hippolyt Ritter : Optimisation and Bayesian methods for Deep Learning
- Thomas Bird : TBA
- Benoit Gaujac : Wasserstein Distance for training Deep Generative Models
- Pau Ching Yap : Bayesian Meta Learning
Former Students
- Bowen Zheng : Natural Language Models and Deep Learning
- Zheng Tian : Deep Learning and Markov Decision Processes
- Zhen He (visiting) : Tensorised models for Deep Learning
- Marius Cobzaranco : Natural Language Models and Deep Learning.
- Thomas Anthony : Games, Monte Carlo Tree Search and Deep Learning.
- Alex Botev : Optimisation methods for Deep Learning
- Chris Bracegirdle : Bayesian Time-series models, in particular changepoint models and cointegration.
- Ed Challis : Large-scale variational inference for Bayesian Machine Learning
- Tom Furmston : Novel solution methods for Markov Decision Processes
- Joe Staines : Machine Learning models to extract meaning in joint text and time series data.
- Bertrand Mesot Graphical models for signal level analyses of speech signals, primarily for noise robust speech extraction and recognition.
- Mike Perrow -- worked on networked information distribution and text processing. Now with Google.
- Silvia Chiappa EEG analysis using temporal graphical models. Now with Microsoft Research.
- Felix Agakov Graphical model approximations and Information Theoretic approaches to machine learning.
- Machiel Westerdijk Generative Vector Quantization techniques.
- Pierre van de Laar Model pruning and approximate methods for graphical models.