The concept of fully automated AI R&D could dramatically accelerate technological progress, potentially compressing years of advancement into months. This thought experiment about research pace offers a framework for understanding how AI automation might fundamentally reshape innovation timelines—with significant implications for how quickly superintelligent systems could emerge once development becomes self-sustaining and operates at machine speeds rather than human ones.
The big picture: The authors present an intuition pump using three hypothetical companies with varying research timeframes and workforces to illustrate potential acceleration from AI R&D automation.
Key details: The comparison suggests that automating AI research could accelerate progress by at least 10x, with the authors’ best estimate around 20x over current development speeds.
Why this matters: If AI research becomes fully automated and achieves the projected acceleration multipliers, we could enter a super-exponential improvement loop where AI systems rapidly upgrade themselves.
Between the lines: The intuition pump deliberately simplifies many complex factors to highlight the core logic: if having fewer researchers and less time hinders progress, then having vastly more researchers working at much higher speeds should correspondingly accelerate it.