Interpreting India

Beyond Superintelligence: A Realist's Guide to AI

Jul 10, 2025
Sayash Kapoor, a Ph.D. candidate at Princeton's Center for Information Technology Policy, delves into the realities of AI's societal impact. He reveals the flawed predictions in civil war models, illustrating AI's limited capabilities. Kapoor critiques the hype cycle around AI, arguing its actual adoption is slower and more fragmented than media portrayals. He introduces the idea of 'AI as normal technology,' dismissing notions of impending superintelligence. The discussion also emphasizes skepticism and the need for informed policy decisions as AI reshapes industries.
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ANECDOTE

PhD Discovery That Sparked The Book

  • Sayash Kapoor recounts his PhD research discovering errors in civil war prediction ML papers that negated claimed gains over regressions.
  • He and Arvind Narayanan then found similar methodological failures across hundreds of papers in many fields.
INSIGHT

Capabilities ≠ Instant Adoption

  • Kapoor emphasizes a gap between AI capability research and real-world adoption bottlenecks in organisations and workflows.
  • He shows radiology as an example where AI augments rather than replaces specialists despite technical improvements.
INSIGHT

Existential Debate Elevated Near-Term Issues

  • Kapoor notes discussions on existential risk spurred broader attention to labor and surveillance harms rather than suppressing them.
  • He says the policy conversation is gradually widening to include climate, labor, and surveillance impacts.
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