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[] Jonathan's preferred coffee
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[] Takeaways
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[] LM Avalanche Panel Surprise
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[] Adjunct Professor of Law
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[] Low facial recognition accuracy
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[] Automated decision making human in the loop argument
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[] Control vs. Outsourcing Concerns
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[] perpetuallineup.org
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[] Face Recognition Challenges
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[] The lottery ticket hypothesis
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[] Mosaic Role: Model Expertise
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[] Expertise Integration in Training
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[] SLURM opinions
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[] GPU Affinity
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[] Breakthroughs with QStar
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[] Deciphering the noise advice
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[] Real Conversations
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[] How to cut through the noise
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[] Research Iterations and Timelines
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[] User Interests, Model Limits
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[] Debugability
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[] Wrap up
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Dive into a thought-provoking podcast episode featuring Jonathan Frankle, Chief Scientist (Neural Networks) at Databricks, as he demystifies AI breakthroughs and shares insights on rigorous AI testing and efficient model training. Explore topics such as face recognition systems, the 'lottery ticket hypothesis,' and robust decision-making in model training. Learn about Frankle's transition to teaching law, the importance of scientific discourse, and his experiences with GPUs. Gain valuable perspectives on cutting through AI hype, understanding the realities of AI applications, and developing more efficient neural network training algorithms. Discover the challenges in facial recognition technology, the intricacies of sparse networks, and the balance between automation and human involvement in decision-making processes.

The Myth of AI Breakthroughs - Cutting Through Hype in Neural Network Research

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