BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20260523T093225EDT-7235u0HN2S@132.216.98.100 DTSTAMP:20260523T133225Z DESCRIPTION:Abstract\n\nEfficient learning is a hallmark of human intellige nce\; from infancy\, we have the remarkable ability to learn novel concept s from very few examples\, using a brain that runs on the energy equivalen t to an electric razor. Replicating such behaviour in computers is a long- standing challenge of machine learning research with the potential to yiel d material benefits for society.\n\nThis thesis improves the efficiency of learning by producing algorithmic advances in several directions. The fir st part of this thesis presents theoretical and empirical advances in nume rical optimization that enable more efficient training of large-scale mach ine learning models on distributed computing devices\, while the second pa rt of this thesis presents theoretical and empirical advances in represent ation learning that improve the label-efficiency of learning. Indeed\, the ability of humans to quickly acquire new concepts from few examples depen ds greatly on the many previously constructed abstractions and prior exper iences\, and one way for an agent to encode prior knowledge and experience is by learning to represent data in ways that facilitate processing.\n\nT ogether\, Parts I and II provide progress towards learning methods that ca n more efficiently utilize distributed training hardware and training data \, so as to build more efficient learning machines. The development of mor e efficient learning frameworks presents the potential to democratize the practice of machine learning by reducing the computational burden of model training and enabling more effective learning in low-resource settings. F undamental advances in learning efficiency may also turn out to be chiefly important for longer term goals towards advancing machine intelligence.\n DTSTART:20230323T163000Z DTEND:20230323T183000Z LOCATION:Room 603\, McConnell Engineering Building\, CA\, QC\, Montreal\, H 3A 0E9\, 3480 rue University SUMMARY:PhD defence of Mido Assran – “Algorithmic Advances Towards Efficien t Learning Machines” URL:/ece/channels/event/phd-defence-mido-assran-algori thmic-advances-towards-efficient-learning-machines-347190 END:VEVENT END:VCALENDAR