Yann LeCun - Google Scholar Profile
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This is Yann LeCun's Google Scholar profile, listing his academic publications. LeCun is Meta's Chief AI Scientist and a Turing Award winner whose work on deep learning and neural networks is foundational to modern AI capabilities, with implications for AI safety discussions.
Metadata
Summary
This is the Google Scholar profile page for Yann LeCun, Chief AI Scientist at Meta and pioneer of deep learning, particularly convolutional neural networks. The page aggregates his publication record, citation counts, and co-author network. LeCun is a prominent voice in AI development debates, often arguing against certain AI existential risk framings.
Key Points
- •Yann LeCun is a Turing Award winner and one of the founding figures of modern deep learning.
- •His research on convolutional neural networks (CNNs) and self-supervised learning is foundational to current AI capabilities.
- •LeCun is a prominent public intellectual who frequently debates AI safety researchers on existential risk and AGI timelines.
- •His publication record provides a reference point for understanding the capabilities trajectory that AI safety research responds to.
- •As Meta's Chief AI Scientist, his views influence major AI development and deployment decisions.
1 FactBase fact citing this source
| Entity | Property | Value | As Of |
|---|---|---|---|
| Yann LeCun | Google Scholar | https://scholar.google.com/citations?user=WLN3QrAAAAAJ | — |
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Yann LeCun - Google Scholar
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