Episode 08: Giancarlo Kerg, Mila, on approaching deep learning from mathematical foundations

Generally Intelligent - A podcast by Kanjun Qiu

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Giancarlo Kerg (Google Scholar) is a PhD student at Mila, supervised by Yoshua Bengio and Guillaume Lajoie.  He is working on out-of-distribution generalization and modularity in memory-augmented neural networks.  Highlights from our conversation: 🧮 Pure math foundations as an approach to progress and structural understanding in deep learning research 🧠 How a formal proof on the way self-attention mitigates gradient vanishing when capturing long-term dependencies in RNNs led to a relevancy screening mechanism resembling human memory consolidation 🎯 Out-of-distribution generalization through modularity and inductive biases