The MAD Podcast with Matt Turck

DeepMind Gemini 3 Lead: What Comes After "Infinite Data"

280 snips
Dec 18, 2025
In his first podcast interview, Sebastian Borgeaud, a pre-training lead at Google DeepMind, shares insights from the groundbreaking Gemini 3 project. He discusses the shift from an 'infinite data' approach to a data-limited era, emphasizing the importance of curation and evaluation. Sebastian highlights how scaling laws are evolving and why continual learning is crucial for future AI advancements. He also touches on the challenges of benchmarks, the complexities of multimodal data, and advocates for a full-stack understanding in AI research.
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INSIGHT

System Over Model

  • Progress in large models now comes from integrating many small improvements across pre-training, post-training, infra, and engineering.
  • Sebastian Borgeaud argues we no longer just train models but build full systems to drive capability gains.
INSIGHT

Usage Beats Benchmarks

  • Benchmarks are improving and getting harder, but real confidence comes from increased productive internal use.
  • Sebastian Borgeaud cites day-to-day usefulness as a key signal that models are truly getting smarter.
ANECDOTE

Surprised By The Pace

  • Sebastian Borgeaud says he started in LLMs around 2019–2020 and was surprised by how far capabilities scaled.
  • He admits he would have underbet the realized progress despite scaling-law signals.
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