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Chloë Ryan, Katherine Beaulieu & Kussil Oumedjbeur: Generative AI & Art

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The advent of powerful generative AI models - particularly in the art space - has enabled limitless creative opportunities. In this episode, we discuss both the usage benefits and the importance of regulating generative AI in this space from a diverse stakeholder perspective. Chloë Ryan, CEO and founder of Acrylic Robotics - a fast-growing pre-seed art-tech startup, Katherine Beaulieu, a BCL/JD Candidate at the McGill Faculty of Law & member of Tech Law, and Dr. Kussil Oumedjbeur, a current MSc candidate in experimental surgery at McGill and popular digital artist, join us in a panel to discuss the ethical and regulatory challenges involved in the usage of generative AI in the art space.

Dan Cervone: Machine Learning in Sports

Dr. Dan Cervone is the principal data scientist at Zelus Analytics where they are building the world leading sports analytics platform. Prior to this, Dan spent three seasons with the Los Angeles Dodgers, most recently as Director of Quantitative Research. He completed his PhD in Statistics at Harvard University, and was then a Moore-Sloan Data Science Fellow at NYU. His work focuses on spatiotemporal data and hierarchical models, with particular application to sports analytics and player tracking data. Dan joins us today to talk about the field of sports analytics, his own research using machine learning in sports, and the future of sports analytics.

Doina Precup: Exploring Frontiers of Reinforcement Learning

Embark on an enlightening journey into the world of reinforcement learning with Prof. Doina Precup in this captivating podcast episode. As a distinguished professor at McGill University and the Head of DeepMind Montreal, Prof. Precup brings a wealth of expertise to our discussion. Join us as we delve into the intricacies of hierarchical reinforcement learning, navigating the complexities of decision-making processes. Explore the realm of continual reinforcement learning, where adaptability harmonizes with efficiency, and gain invaluable insights into new possibilities and challenges posed by large models. Whether you’re an AI aficionado or newcomer, this episode promises an illuminating expedition into the forefront of reinforcement learning, guided by a true trailblazer in the field.

Su Lin Blodgett & Fenwick McKelvey: Interdisciplinary Perspectives on AI Ethics

What does it mean for an artificial intelligence model to do the right thing? What are researchers and governments doing to ensure that the use of AI technologies does not infringe on human rights? These are two of the questions that we touch on in this conversation with Dr. Su Lin Blodgett and Prof. Fenwick McKelvey. The world of AI has seen an explosion of progress in recent years and this has opened up exciting new applications for these models. However, the issue of reflecting human biases, which has long been plaguing these models, is far from solved. On top of this, the applications in which such models can be used remain poorly regulated, at least within Canada. In this episode, spanning across fields like computer science, media, and technology policy, we try to understand why these questions are essential to address, and how we can start thinking about solutions that take into account a plurality of perspectives.

Yoshua Bengio: Towards Achieving Human-Level AI

Yoshua Bengio, co-laureate of the 2018 ACM AM Turing Award for his pioneering contributions in deep learning and recognized worldwide as one of the leading experts in artificial intelligence, joins us on the McGill AI Podcast to discuss his experience in pioneering deep learning, the work towards achieving human-level artificial intelligence, and advice to students wanting to do research in AI.

teaching

Teaching experience 1

Undergraduate course, University 1, Department, 2014

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Teaching experience 2

Workshop, University 1, Department, 2015

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