×
Make AI boring, like the electric grid, say Princeton researchers
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

Princeton AI researchers argue that our current view of artificial intelligence as an exceptional technology is misguided, suggesting instead we should consider it a “normal” general-purpose technology similar to electricity or the internet. This perspective offers a grounding counterbalance to both utopian and dystopian AI narratives, emphasizing practical considerations of how AI will integrate into society rather than speculative fears about superintelligence.

The big picture: Princeton researchers Arvind Narayanan and Sayash Kapoor have published a 40-page essay challenging the widespread tendency to view AI as an extraordinary, potentially autonomous entity requiring exceptional governance.

  • They argue AI should be treated as a general-purpose technology more comparable to electricity or the internet than to nuclear weapons, though they acknowledge limitations in this analogy.
  • This view counters popular narratives from tech leaders like OpenAI‘s Sam Altman, who has compared AI’s impact to the Renaissance, and former Google CEO Eric Schmidt, who suggested AI models should be controlled like nuclear materials.

Why this matters: The researchers’ perspective shifts focus from speculative long-term fears to immediate concerns about how AI will affect existing social problems and institutions.

  • Over half of Americans report being more concerned than excited about AI’s future, indicating widespread anxiety about the technology’s trajectory.
  • By reframing AI as “normal,” the researchers aim to guide attention toward practical governance approaches rather than science fiction scenarios.

Key arguments: Narayanan and Kapoor present several provocative positions that challenge current AI discourse.

  • They argue terms like “superintelligence” are too incoherent and speculative to be useful in serious policy discussions.
  • Rather than complete automation, they predict AI will create a new category of human labor focused on monitoring, verifying, and supervising AI systems.
  • They emphasize AI’s potential to exacerbate existing societal problems rather than create entirely new ones.

Reading between the lines: The essay distinguishes between AI’s laboratory capabilities and its real-world applications, suggesting a significant gap between the two.

  • Kapoor specifically notes that AI methods develop rapidly in research settings, but their practical applications typically lag behind by decades, similar to other general-purpose technologies.
  • This perspective suggests many current fears about imminent AI transformation may be premature.

What they’re saying: The researchers emphasize AI’s relationship to existing economic and social systems rather than its standalone potential.

  • “AI supercharges capitalism,” Narayanan explains, highlighting how the technology could either help or harm inequality, labor markets, free press, and democratic institutions depending on implementation.
  • Instead of planning around speculative fears, Kapoor advocates for “strengthening democratic institutions, increasing technical expertise in government, improving AI literacy, and incentivizing defenders to adopt AI.”
Is AI “normal”?

Recent News

Nvidia launches AI tool to generate images from 3D scenes

Nvidia's new tool enables precise control over AI-generated images through 3D scene layouts, addressing the spatial limitations of traditional text-prompt systems.

SaaStr 2025 unites top cloud, B2B and AI leaders in SF Bay

Featuring over 15,000 attendees and 500 speakers, the three-day event will highlight proven strategies from executives who have built successful cloud businesses rather than theoretical AI discussions.

Visa develops AI-powered cards for seamless automated purchases

Visa's platform allows AI assistants to execute transactions using tokenized credentials within user-defined parameters, eliminating payment friction in automated shopping.