Areas of Expertise
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C2D3 has the widest reach within the University of Cambridge, in terms of network and academic collaborations in the space of AI & Data Science. We can support and deliver projects within a large academic areas of expertise across all six Schools. Please find below our areas of expertise:
AI, Machine Learning, and Data Science
- AI policy and AI governance
- Bayesian deep learning
- Bayesian inference
- Bayesian optimization
- Data-efficient machine learning
- Data management, security, and privacy
- Data protection, including GDPR
- Deep generative models
- Emulation
- Graph neural networks
- High-performance computing
- Image analysis
- Image compression
- Image processing and inverse imaging problems
- Interpretable machine learning
- Machine learning
- Machine learning and AI for social data
- Meta-learning
- Molecule generation and optimization
- Natural language processing
- Neural network compression
- Public perception
- Reinforcement learning and causal inference
- Responsible AI
- Simulation-based inference
- Technology, law, and policy
Climate, Energy, and Environment
- Climate communication
- Climate justice
- Decarbonisation and public health
- Decarbonisation of buildings and infrastructure—including heat loss from UK buildings, building retrofit strategies, indoor overheating
- Energy justice
- Energy modelling
- Environmental change
- Environmental policy
- Environmental science
- Geospatial science
- Heatwave mitigation
- Low carbon technology
- Negative emissions technology
- Public perception (listed under AI as well)
- Remote sensing
- Satellite/Earth Observation
- Terrestrial carbon
Engineering, Physics, and Mechanics
- Fluid mechanics
- Geophysics and environmental modelling
- Industrial modelling
- Mechanics of granular media
- Mechanics of porous media
- Non-Newtonian fluid dynamics
- Rheology
Applications and Interdisciplinary Fields
- Applications of Data Sciences in the area of energy systems and Built Environment, pertaining to model calibration and decision-making under uncertainty
- Human behaviour modelling