All topics / AI evolution
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AI evolution
2
episodes
2
thinkers
3h
of conversation
7
books & papers
5
terms defined
The neighbourhood: AI evolution and the ideas it travels with. Drag to roam, click a star for the episode, click a neighbour to travel.
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The lexicon
Every term the guests lean on, in plain language. Read one in full, or filter to find it.
What the corpus says
The throughline across every conversation that touches this idea.
Michael I. Jordan argues AI is still a proto-field, akin to early chemical engineering, not yet achieving true intelligence.
Michael I. Jordan · Michael I. Jordan: Machine Learning, Recommender Systems, and Future of AI
Jordan critiques the term 'AI' as misleading, advocating for 'machine learning' to better reflect the field's current capabilities.
Michael I. Jordan · Michael I. Jordan: Machine Learning, Recommender Systems, and Future of AI
Recommender systems, though not magical, have become a billion-dollar industry crucial for consumer markets.
Michael I. Jordan · Michael I. Jordan: Machine Learning, Recommender Systems, and Future of AI
Jordan emphasizes decision-making over prediction in AI, challenging the notion that AI's primary value lies in predictive accuracy.
Michael I. Jordan · Michael I. Jordan: Machine Learning, Recommender Systems, and Future of AI
Jordan highlights the intelligence of markets as a distinct form of intelligence, separate from human cognition.
Michael I. Jordan · Michael I. Jordan: Machine Learning, Recommender Systems, and Future of AI
Peter Norvig highlights that achieving equal error rates across protected classes in AI systems is theoretically impossible, necessitating trade-offs.
Peter Norvig · Peter Norvig: Artificial Intelligence: A Modern Approach
Inverse reinforcement learning can infer utility functions from observed actions but struggles with potential self-destructive actions.
Peter Norvig · Peter Norvig: Artificial Intelligence: A Modern Approach
Norvig notes that AI's evolution has shifted from Boolean logic to probability and machine learning, with deep learning and big data as key drivers.
Peter Norvig · Peter Norvig: Artificial Intelligence: A Modern Approach
Programming education now emphasizes problem-solving and modeling over syntax mastery, reflecting a broader application beyond professional software engineering.
Peter Norvig · Peter Norvig: Artificial Intelligence: A Modern Approach
Voices on AI evolution
2 standout quotes from across the corpus.
Go read
7 books and papers cited across these episodes.
For the specialist
What experts find new
5 expert-level takeaways for a specialist reader.
At the frontier
Still unresolved
3 open questions flagged across these conversations.
The thinkers
Who takes this idea on, by how often they return to it.