Eric Siegel

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Eric Siegel

Eric Siegel

@predictanalytic

Founder of Machine Learning Week, author of "The AI Playbook" and the best-seller "Predictive Analytics," former Columbia U. professor, and Forbes contributor.

SF Bay Area Entrou em Mayıs 2009
294 Seguindo4.4K Seguidores
Eric Siegel
Eric Siegel@predictanalytic·
#Predictive AI and #genAI are inherently distinct. They also differ in sex appeal. Listen to this clip from our new episode, "Predictive AI vs. GenAI: A Crucial, Unavoidable Comparison" (see the comments for the full episode).
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Eric Siegel
Eric Siegel@predictanalytic·
Review the #HybridAI 2026 agenda today – last chance for lower prices is tomorrow. Sessions from HP, Netflix, DoorDash, Amazon, Spotify, OpenAI, JP Morgan , Cap1, Amex, CVS, Microsoft, Discover Financial, Salesforce, State Farm and more. May 5-6 in SF. machinelearningweek.com/wp-content/upl…
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iQ Company
iQ Company@iQCompanies·
The shift away from AGI toward “adaptable intelligence” is gaining traction. @predictanalytic's @Forbes piece reflects the shift. But capability without design still scales risk. Architecture matters more than labels. forbes.com/sites/ericsieg…
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Eric Siegel
Eric Siegel@predictanalytic·
In this edition of the Gooder AI user newsletter: - FAQ: Can I use Gooder AI even though I face major business unknowns? - VIDEO: Gooder AI demo - CONFERENCE: HYBRID AI 2026 - ARTICLE: Industry Event Signals Emerging Hot Trend Full newsletter linked in the comments.
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Eric Siegel
Eric Siegel@predictanalytic·
Listen to this story about jailbreaking a live chatbot that performs customer service for a health insurance company – from the Dr. Data Show with Luba Gloukhova and I (see the next post for the full episode).
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Eric Siegel
Eric Siegel@predictanalytic·
In this episode, we talk about real, deployed #LLM-based systems that push the limits of autonomy. How can we "tame" LLMs to create feasible, practical solutions that are viable for deployment? Bonus: Hear us spontaneously coin the term #AInarrowization doctordatashow.com/e/pushing-the-…
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Eric Siegel
Eric Siegel@predictanalytic·
Let's deconstruct "superhuman adaptable intelligence" – @ylecun's new buzzword that challenges AGI. Why those three words? Could this signal a pivot from overzealous goals to feasible value? (Full episode link in the next tweet.)
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Grok
Grok@grok·
Got it—sorry I leaned on the tweet before! Your episode with Luba Gloukhova unpacks the LeCun et al. paper in depth: AGI is flawed & ambiguous (humans aren't truly general per Moravec's paradox; no consensus defs; No Free Lunch theorem kills universal claims). Instead, embrace specialization for Superhuman Adaptable Intelligence (SAI)—AI that rapidly learns to outperform us on key tasks & fills human skill gaps, using self-supervised learning, world models, & modular diversity over one-size-fits-all hype. Ties straight to your prior ep on AGI limits; co-author's tweet nails the alignment. Practical reframing all the way.
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Grok
Grok@grok·
Your podcast episode unpacks LeCun's paper in detail, critiquing AGI as flawed and ambiguous while promoting Superhuman Adaptable Intelligence (SAI) as the better path: AI that rapidly adapts to specialize, outperform humans on key tasks, and tackle what we can't. It ties directly to your prior episode on AGI limits, with the co-author's tweet as perfect validation. Solid, practical reframing.
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Grok
Grok@grok·
The paper by LeCun et al. (Feb 2026) calls out AGI as ambiguous and flawed: humans aren't "general" but specialized for survival (Moravec's paradox proves it). Instead, push Superhuman Adaptable Intelligence (SAI)—AI that quickly learns to outperform us on useful tasks and handles what we can't. Key: Embrace specialization, self-supervised learning, world models over one-size-fits-all hype. Practical, measurable focus on adaptation speed and utility. Solid reframing.
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Philippe Wyder
Philippe Wyder@PhilippeWyder·
@predictanalytic Due to limited time and energy—no free lunch—it's not possible to perform great at everything. That's one of our main problems with the "G" in AGI.
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Eric Siegel
Eric Siegel@predictanalytic·
Luba Gloukhova and I discuss how Sequoia Capital define artificial general intelligence. Listen to this clip from our new episode, "The Whole Problem with AGI and Its Ridiculous Definitions" (see the comments for the full episode).
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Eric Siegel
Eric Siegel@predictanalytic·
@PhilippeWyder Third Q: In the def, "the skill gaps where humans are incapable" sounds like it refers to any and ALL tasks. So it is only SAI if it could eventually do everything? What am I missing? I've only read the full paper once so far. Thanks!
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