Generally Intelligent
A podcast by Kanjun Qiu
37 Episodes
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Episode 37: Rylan Schaeffer, Stanford: On investigating emergent abilities and challenging dominant research ideas
Published: 18/09/2024 -
Episode 36: Ari Morcos, DatologyAI: On leveraging data to democratize model training
Published: 11/07/2024 -
Episode 35: Percy Liang, Stanford: On the paradigm shift and societal effects of foundation models
Published: 9/05/2024 -
Episode 34: Seth Lazar, Australian National University: On legitimate power, moral nuance, and the political philosophy of AI
Published: 12/03/2024 -
Episode 33: Tri Dao, Stanford: On FlashAttention and sparsity, quantization, and efficient inference
Published: 9/08/2023 -
Episode 32: Jamie Simon, UC Berkeley: On theoretical principles for how neural networks learn and generalize
Published: 22/06/2023 -
Episode 31: Bill Thompson, UC Berkeley, on how cultural evolution shapes knowledge acquisition
Published: 29/03/2023 -
Episode 30: Ben Eysenbach, CMU, on designing simpler and more principled RL algorithms
Published: 23/03/2023 -
Episode 29: Jim Fan, NVIDIA, on foundation models for embodied agents, scaling data, and why prompt engineering will become irrelevant
Published: 9/03/2023 -
Episode 28: Sergey Levine, UC Berkeley, on the bottlenecks to generalization in reinforcement learning, why simulation is doomed to succeed, and how to pick good research problems
Published: 1/03/2023 -
Episode 27: Noam Brown, FAIR, on achieving human-level performance in poker and Diplomacy, and the power of spending compute at inference time
Published: 9/02/2023 -
Episode 26: Sugandha Sharma, MIT, on biologically inspired neural architectures, how memories can be implemented, and control theory
Published: 17/01/2023 -
Episode 25: Nicklas Hansen, UCSD, on long-horizon planning and why algorithms don't drive research progress
Published: 16/12/2022 -
Episode 24: Jack Parker-Holder, DeepMind, on open-endedness, evolving agents and environments, online adaptation, and offline learning
Published: 6/12/2022 -
Episode 23: Celeste Kidd, UC Berkeley, on attention and curiosity, how we form beliefs, and where certainty comes from
Published: 22/11/2022 -
Episode 22: Archit Sharma, Stanford, on unsupervised and autonomous reinforcement learning
Published: 17/11/2022 -
Episode 21: Chelsea Finn, Stanford, on the biggest bottlenecks in robotics and reinforcement learning
Published: 3/11/2022 -
Episode 20: Hattie Zhou, Mila, on supermasks, iterative learning, and fortuitous forgetting
Published: 14/10/2022 -
Episode 19: Minqi Jiang, UCL, on environment and curriculum design for general RL agents
Published: 19/07/2022 -
Episode 18: Oleh Rybkin, UPenn, on exploration and planning with world models
Published: 11/07/2022
Technical discussions with deep learning researchers who study how to build intelligence. Made for researchers, by researchers.
