Webinar

What’s Next for AI in 2026: From LLM Limits to Image Models

Tuesday, March 31, 2026

Session 1: 11 AM SGT (Singapore)
Session 2: 11 AM CET (Amsterdam)
Session 3: 11 AM EST (New York)
Session 4: 11 AM PST (Los Angeles) 

By:

Senior Director and Principal Analyst

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AI is entering its next phase — and the economics are getting harder to ignore. 

As model performance plateaus and capital spending accelerates toward trillions of dollars, critical questions are emerging: 

  • Are AI models becoming commodified? 
  • Can hyperscale data center investments deliver acceptable returns? 
  • Will business value creation keep pace with infrastructure spending? 
  • What happens if efficiency gains reduce compute demand? 

 

In this session, we explore: 

  • How AI model development is shifting — from frontier LLM scaling to miniature and world models 
  • Why image models may drive the next wave of commercial applications 
  • The real economics of AI data center buildout — including GPU life, utilization rates, and pricing sensitivity 
  • Four potential futures for AI adoption 

 

This webinar provides a grounded, data-driven assessment of where AI is headed by 2026 — and what business leaders, investors, and technology strategists should do now to manage risk while positioning for upside. 

Please Note:

  • You will receive a confirmation email with your personalized log-in instructions after you register above.
  • A copy of the presentation slides and the webinar recording will be sent to all registrants after the webinar.

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What’s Next for AI in 2026: From LLM Limits to Image Models

By:

Senior Director and Principal Analyst

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