Interconnects

What comes next with open models

46 snips
Mar 16, 2026
A look at why 2025 pushed many companies to release open AI models and how one breakout win shifted strategies. A discussion of whether open models can economically compete with closed labs and the persistent performance gap. A breakdown of three future model classes and why small, specialized open models may be the most practical opportunity. Thoughts on systems, tools, and building diverse ecosystems instead of chasing frontier scale.
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INSIGHT

Open Models Buy Mindshare Fast

  • Open models give rapid mindshare and adoption with a single released model.
  • Nathan Lambert points to DeepSeek R1's breakout as accelerating many companies to release open weights despite weak direct monetization.
INSIGHT

Open Models Trail Closed By Months And Counting

  • The open-closed performance gap has historically been 6–18 months and may widen.
  • Lambert explains distillation and bench-maxing help open labs, but expensive, hidden RL environments and specialized data favor closed labs.
INSIGHT

A Three Class Taxonomy For Future Models

  • Expect three classes of models: closed frontier, open frontier, and small open specialized models.
  • Lambert names examples like GPT-OSS, Nematron 3 Super, and Minimax M2.5 as open-frontier candidates used locally.
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