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Leadership Article Review Podcast
The Article Review
510 episodes
2 days ago
Want to listen to your favorite articles on the go?! We’ve got you covered! Catch all of your favorites right here in your podcast feed!
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Management
Business,
Non-Profit
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All content for Leadership Article Review Podcast is the property of The Article Review and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
Want to listen to your favorite articles on the go?! We’ve got you covered! Catch all of your favorites right here in your podcast feed!
Show more...
Management
Business,
Non-Profit
https://is1-ssl.mzstatic.com/image/thumb/Podcasts221/v4/33/01/64/33016468-ebe5-b1d2-53c9-272290fc3277/mza_3646783018545562928.jpg/600x600bb.jpg
Nested Learning: A New Paradigm for Adaptive AI Systems, by Jonathan H. Westover PhD
Leadership Article Review Podcast
36 minutes
4 days ago
Nested Learning: A New Paradigm for Adaptive AI Systems, by Jonathan H. Westover PhD
Abstract: This article examines Nested Learning (NL), a novel framework that reconceptualizes neural networks as hierarchical systems of interconnected optimization problems operating at multiple temporal scales. Drawing from neuroscientific principles of memory consolidation and Google Research's recent theoretical work, we explore how NL addresses fundamental limitations in current deep learning systems—particularly their static nature after deployment and inability to continually acquire new capabilities. The framework reveals that existing architectures like Transformers and optimizers such as Adam are special cases of nested associative memory systems, each compressing information within distinct "context flows." We analyze NL's implications for organizational AI strategy, examining three core innovations: deep optimizers with enhanced memory architectures, self-modifying sequence models, and continuum memory systems. Through practitioner-oriented analysis of experimental results and architectural patterns, we demonstrate how NL principles enable more adaptive, efficient, and cognitively plausible AI systems. This synthesis connects theoretical advances to practical deployment considerations for enterprises navigating the evolving landscape of foundation models and continuous learning requirements. Learn more about your ad choices. Visit megaphone.fm/adchoices Learn more about your ad choices. Visit megaphone.fm/adchoices
Leadership Article Review Podcast
Want to listen to your favorite articles on the go?! We’ve got you covered! Catch all of your favorites right here in your podcast feed!