Key Open Challenges in Machine Learning πŸš€ | Insights from Amazon Science

Explore the biggest open problems in machine learning and the latest research insights from Amazon Science, presented by Rama Chellapa. Discover what’s next for AI innovation!

Key Open Challenges in Machine Learning πŸš€ | Insights from Amazon Science
Amazon Science
1.1K views β€’ Oct 22, 2021
Key Open Challenges in Machine Learning πŸš€ | Insights from Amazon Science

About this video

October 2021, Rama Chellapa, a Bloomberg Distinguished Professor in the Departments of Electrical and Computer Engineering and Biomedical Engineering at Johns Hopkins University, gave a keynote presentation at Amazon's annual machine learning conference. Learn more: https://www.amazon.science/videos-webinars/amazons-annual-machine-learning-conference-featured-presentations-from-thought-leaders-within-academia

Rama discusses his group's recent works on building operational systems for face recognition and action recognition using deep learning. While reasonable success can be claimed, many open problems still remain to be addressed. These include bias detection and mitigation, domain adaptation and generalization, learning from unlabeled data, handling adversarial attacks, and selecting the best subsets of training data in mini-batch learning. Some of Rama's recent works addressing these challenges will be summarized.

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35:28

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Oct 22, 2021

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