The MAD Podcast with Matt Turck

Are We Misreading the AI Exponential? Julian Schrittwieser on Move 37 & Scaling RL (Anthropic)

157 snips
Oct 23, 2025
Julian Schrittwieser, a senior AI researcher at Anthropic and former member of DeepMind's AlphaGo team, discusses the exponential growth in AI capabilities. He highlights potential breakthroughs in AI, predicting agents could work autonomously by 2026 and possibly achieve Nobel-level discoveries by 2027-2028. Julian delves into the integration of pre-training and reinforcement learning, challenges in AI alignment, and the importance of broader access in tech. He emphasizes gradual productivity gains and the effects on jobs in various sectors.
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INSIGHT

Exponential Task-Length Growth

  • AI capabilities improve on many tasks roughly doubling task length every 3–4 months, which is hard to intuitively grasp.
  • Julian warns that this exponential trend implies large economic impact within a year or two if it continues.
ADVICE

Use Task Length As A Progress Metric

  • Measure progress by how long a model can work autonomously because longer task length enables real delegation.
  • Design benchmarks and products to track independent runtime and self-correction capabilities.
INSIGHT

Benchmarks Need Real-World Signals

  • GDPVal and other real-world benchmarks better reflect economic impact than synthetic leaderboards.
  • Julian emphasizes user adoption and sustained productivity as the ultimate test of a model's value.
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