Democratising Deep Learning: The Data Delusion

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Neil Lawrence is Senior Principal Scientist at Amazon, and Professor of Machine Learning at the University of Sheffield. His main technical research interest is machine learning through probabilistic models, with focuses on both the algorithmic side of these models as well as their application. He has a particular interest on applications in personalized health and the developing world.

At the 2016 Deep Learning Summit in London, Neil presented The Data Delusion: Challenges for Democratising Deep Learning. In this talk, Neil shares expertise on fundamental changes in the deep learning field, data efficiency, privacy, and the challenges we face moving forward. View the presentation with slides below.

View more video presentations and interviews from the 2016 Deep Learning Summit in London on the RE•WORK video hub.

Neil Lawrence will be speaking at the next Deep Learning in Healthcare Summit, in London on 28 February & 1 March. Other speakers include Oladimeji Farri, Senior Research Scientist, Philips Research; Polina Mamoshina, Research Scientist, Insilico Medicine; Marzieh Nabi, Research Scientist, PARC; and Anastasia Georgievskaya, Research Scientist, Beauty.AI. Book your ticket here.

See the full events list here for events focused on AI, Deep Learning and Machine Intelligence taking place in London, Amsterdam, Boston, San Francisco, New York, Hong Kong and Singapore. 

Big Data Open Data Neural Networks Healthcare Deep Learning Summit Deep Learning in Healthcare Summit MedTech Deep Learning Algorithms


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