Machine Learning
Machine learning uses data to teach AI systems to imitate the way that humans learn. They can find the signal in the noise of big data, helping businesses improve their operations. We've been in the field since since the beginning: IBMer Arthur Samuel even coined the term “Machine Learning” back in 1959.
Our work
In search of AI algorithms that mimic the brain
Q & AKim MartineauHow open source paved the way for computing from anywhere
Q & AKim MartineauAI transformers shed light on the brain’s mysterious astrocytes
ResearchKim MartineauWhat is prompt-tuning?
NewsKim MartineauSaška Mojsilović wants to channel AI for good. She may also make you rethink sour cabbage
NewsKim MartineauWhat is synthetic data?
ExplainerKim Martineau and Rogerio Feris- See more of our work on Machine Learning
Publications
An Online, Probabilistic Distributed Tracing System
- Mert Toslali
- Syed Qasim
- et al.
- 2024
- IC2E 2024
MDLab: AI frameworks for Carbon Capture and Battery Materials
- Bruce Elmegreen
- Hendrik Hamann
- et al.
- 2025
- Frontiers in Environmental Science
Vertical Federated Learning with Missing Features During Training and Inference
- Pedro Valdeira
- Shiqiang Wang
- et al.
- 2025
- ICLR 2025
Revisiting Mode Connectivity in Neural Networks with Bezier Surface
- Jie Ren
- Pin-Yu Chen
- 2025
- ICLR 2025
A new framework for evaluating model out-of-distribution generalisation for the biochemical domain
- 2025
- ICLR 2025
The Case for Cleaner Biosignals: High-fidelity Neural Compressor Enables Transfer from Cleaner iEEG to Noisier EEG
- Francesco Carzaniga
- Gary Hoppeler
- et al.
- 2025
- ICLR 2025