People
INFORMED-AI is an inclusive, evolving research programme, building collaborations between information theorists and researchers in AI, control and robotics across the UK. We are also expanding our network with affiliates from other institutions.
Jonathan Lawry
Research interests
- Social learning
- Collective decision making
- Approximate reasoning
Hub role
Work package: Cooperation in Heterogeneous Teams

Jianhong Wang
Research interests
- Multi-Agent Reinforcement Learning
- Cooperative Game Theory (coalition formation and credit assignment)
- Multi-Agent System modelling for real-world problems (e.g., smart grids, robotics, etc.)
Hub role
Work package: Cooperation in Heterogeneous Teams, working with Jonathan Lawry

Yiannis Demiris
Research interests
- Assistive Robotics and Human–Robot Interaction
- Human action understanding and human-centred robot behaviour adaptation
- Multimodal learning and fusion
- Distributed learning and in particular human-in-the-loop learning with privacy
Hub role
Work package: Cooperation in Heterogeneous Teams

Fernando Estévez Casado
Research interests
- Distributed/federated learning and privacy in robotics
- Assistive robots and trustworthy HRI (focus on mobility aids)
- User-centred robot learning, personalisation, and adaptation over time
- Deployment on real-world applications, platforms, and human participants
Hub role
Work package: Cooperation in Heterogeneous Teams, working with Yiannis Demiris and Deniz Gündüz

Amanda Prorok
Research interests
- Collective intelligence
- Robotics
- Multi-agent and muti-robot systems
- Applications such as:
- Automated transport and logistics
- Environmental monitoring
- Surveillance
- Search
Hub role
Work package: Cooperation in Heterogeneous Teams

Ioannis Kontoyiannis
Research interests
Information theory
- Communication and compression at pragmatic rates
- Truly high-SNR channel capacity
- Compression of truly sparse data
Statistics
- Bayesian causal discovery
- Regression and estimation for the Levy state space model
Machine learning and AI
- Bayesian/MDL neural network inference
- Sparse Gaussian processes
- Design and analysis of efficient Reinforcement Learning
- Stochastic Approximation algorithms
Hub role
Work package: Learning to Compress and Communicate

Lampros Gavalakis
Research interests
- Information theory
- Fundamental limits
- Entropy
- Inequalities
- De Finetti’s theorem
- Sampling bounds
- Entropic CLT and applications
- Entropy of Gaussian mixtures and applications
Hub role
Work package: Learning to Compress and Communicate, working with Ioannis Kontoyiannis

Deniz Gündüz
Research interests: Information Processing and Communications Laboratory (IPC-Lab)
Machine learning (ML) for data compression and communication
- ML-based channel code design
- ML-based image/video compression
- ML-based channel estimation and channel state compression
Distributed/ federated learning (FL)
- Communication-efficient FL
- Over-the-air computation for FL
Semantic communications
- Deep–learning aided wireless video transmission and intelligence
Privacy and security in learning
- Byzantine attacks in federated learning
- Private data sharing
Hub role
Work package: Learning to Compress and Communicate

Arpan Mukherjee
Research interests:
- problems at the intersection of signal processing, statistics, and machine learning.
- sequential decision-making paradigms such as bandits and reinforcement learning
- theoretical underpinnings of foundation models
Hub role
Work package: Learning to Compress and Communicate

Haotian Wu
Research interests:
-
Deep learning for source transmission and edge intelligence
-
Efficient communication and compression
-
Implicit representation and communication”
Hub role
Work package: Learning to Compress and Communicate

Ioannis Papageorgiou
Research interests:
- interface between Bayesian Statistics, Machine Learning and Information Theory
- combining modern machine learning techniques with ideas from information theory
- modelling and inference of time series (both discrete-valued and real-valued)
- developing tree-based methods that are inspired by information-theoretic ideas and algorithms
Hub role
Work package: Learning to Compress and Communicate

Nilanjana Datta
Research interests
- Quantum entropies and divergences
- Quantum hypothesis testing
- Entanglement theory
- Quantum communication
Hub role
Work package: Quantum Information and Computing

Bjarne Bergh
Research interests
- Quantum hypothesis testing
- Quantum machine learning
- Distributed quantum algorithms
Hub role
Work package: Quantum Information and Computing, working with Nilanjana Datta

Neil Walton
Research interests
- Queueing
- Congestion
- Networks
- Probability
- Optimization
Hub role
Work package: Quantum Information and Computing

Thiru Vasantam
Research interests
- Applied probability and queueing theory
- Internet of Things
- Performance modeling and analysis of communication networks
- Quantum networking
- Sequential analysis and changepoint detection
Hub role
Work package: Quantum Information and Computing

Sanidhay Bhambay
Research interests
- Performance analysis of complex networks
- Stochastic modelling
- Quantum networks
- Optimal schemes for entanglement distribution in Quantum Switches
- Fusion based quantum computing using graph states
Hub role
Work package: Quantum Information and Computing, working with Neil Walton and Thirupathaiah Vasantam

Ayalvadi Ganesh
Research interests
Random graphs and processes
- Connectivity
- Epidemics
- Opinion dynamics
Decentralised algorithms
- Information dissemination
- Collective decision-making and coordination
Stochastic optimisation
- Resource allocation
- Load balancing
- Multi-armed bandits
Hub roles
- Deputy Director
- Work package: Trustworthy Decentralised Learning

Guru Ganeshan
Research interests
- Using probabilistic and algebraic techniques to design and analyze codes/methodologies for smart data storage/retrieval with feature selection
- Analysis of classification and dynamic evolution; for example: random forest classifier, under independent and identically distributed (i.i.d.) conditions
Hub role
- Work package: Trustworthy Decentralised Learning, working with Ayalvadi Ganesh

Po-Ling Loh
Research interests
- Theoretical statistics
- Random graphs and networks
- Robustness
- Differential privacy
Hub role
- Management committee and EDI lead
- Work package: Trustworthy Decentralised Learning

Sidharth Jaggi
Research interests
- Adversarial information-processing
- Stealthy/covert communication
- Group testing
- Network Coding
Hub roles
- Hub Director
- Work package: Trustworthy Decentralised Learning
