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Understanding Equilibria in Multi-Agent Systems - Michael Wooldridge, University of Oxford
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Michael Wooldridge is a Professor of Computer Science and Head of Department of Computer Science at the University of Oxford, and a programme director for AI at the Alan Turing Institute. He has been an AI researcher for more than 30 years, and has published more than 400 scientific articles on the subject, including nine books. He is a Fellow of the Association for Computing Machinery (ACM), the Association for the Advancement of AI (AAAI), and the European Association for AI (EurAI). From 2014-16, he was President of the European Association for AI, and from 2015-17 he was President of the International Joint Conference on AI (IJCAI). In 2021, Wooldridge was announced as a recipient of a five year £4m Turing AI World Leading Research Fellowship from UKRI.
Understanding Equilibria in Multi-Agent Systems - Michael Wooldridge, University of Oxford
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