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Davidad estimates that the most rigorous AI safety approach—using a boxed superintelligence to solve problems with provably unique answers—is only applicable to tasks that constitute 5-12% of GDP. This quantifies the limited economic scope of this safety paradigm, highlighting the need for other alignment methods for the broader economy.

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The plan to use AI to solve its own safety risks has a critical failure mode: an unlucky ordering of capabilities. If AI becomes a savant at accelerating its own R&D long before it becomes useful for complex tasks like alignment research or policy design, we could be locked into a rapid, uncontrollable takeoff.

If society gets an early warning of an intelligence explosion, the primary strategy should be to redirect the nascent superintelligent AI 'labor' away from accelerating AI capabilities. Instead, this powerful new resource should be immediately tasked with solving the safety, alignment, and defense problems that it creates, such as patching vulnerabilities or designing biodefenses.

Instead of building a single, monolithic AGI, the "Comprehensive AI Services" model suggests safety comes from creating a buffered ecosystem of specialized AIs. These agents can be superhuman within their domain (e.g., protein folding) but are fundamentally limited, preventing runaway, uncontrollable intelligence.

The view that safety measures hinder AI performance is a false dichotomy. A model's economic usefulness and profitability are directly tied to its controllability and predictability, making safety and alignment core product features rather than constraints.

A key failure mode for using AI to solve AI safety is an 'unlucky' development path where models become superhuman at accelerating AI R&D before becoming proficient at safety research or other defensive tasks. This could create a period where we know an intelligence explosion is imminent but are powerless to use the precursor AIs to prepare for it.

AI's economic impact is far more benign if it automates a small fraction of tasks across many professions rather than entire jobs. If AI handles 10% of everyone's workload, it results in a direct 10% productivity increase for the whole economy, making society wealthier with virtually no job displacement.

With no single silver bullet for AI alignment, the most realistic approach is a multi-layered strategy. This combines technical solutions like intentional design and AI control with societal safeguards like improved cybersecurity and pandemic preparedness to collectively keep society on track amidst rapid AI advancement.

The hype around future model improvements overshadows a key reality: current models are already "sufficiently intelligent" for countless valuable tasks. Even if all AI innovation stopped today, we could still unlock trillions in economic value just by integrating existing technology across the economy.

The AI safety community fears losing control of AI. However, achieving perfect control of a superintelligence is equally dangerous. It grants godlike power to flawed, unwise humans. A perfectly obedient super-tool serving a fallible master is just as catastrophic as a rogue agent.

Recognizing the limits of purely pragmatic safety measures, the AISI is funding research in areas like complexity and game theory. The goal isn't a definitive proof of safety, but to build theoretical models with plausible assumptions that can offer stronger guarantees and new algorithmic insights for alignment.