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The expert inside view is that RSI will likely manifest as another significant acceleration in AI capabilities—a "kink" in the progress curve—rather than a sudden, discontinuous singularity. This informs a more measured, though still urgent, approach to planning.

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The AI development cycle of experimentation and bottleneck-solving is already a form of recursive self-improvement. Kyle Corbitt argues this loop is currently constrained by human intelligence. Once AIs become better at directing this process, progress will accelerate rapidly.

The discourse often presents a binary: AI plateaus below human level or undergoes a runaway singularity. A plausible but overlooked alternative is a "superhuman plateau," where AI is vastly superior to humans but still constrained by physical limits, transforming society without becoming omnipotent.

Fears of AI's 'recursive self-improvement' should be contextualized. Every major general-purpose technology, from iron to computers, has been used to improve itself. While AI's speed may differ, this self-catalyzing loop is a standard characteristic of transformative technologies and has not previously resulted in runaway existential threats.

The vague concept of AGI is being replaced by Recursive Self-Improvement (RSI)—AI models creating their own successors. This is seen as a more specific and potentially nearer-term threshold that could trigger an uncontrolled explosion in AI progress, moving humans "out of the loop entirely."

The most transformative aspect of AI may be its ability to automate its own research and development. This creates a recursive improvement cycle—an "intelligence explosion"—where progress accelerates exponentially, compressing decades of innovation into a much shorter period.

The concept that AIs can build better AIs, creating an accelerating feedback loop, is no longer theoretical. Leaders from Anthropic, OpenAI, and Google DeepMind have publicly confirmed they are actively using current AI models to develop the next generation, making RSI a practical engineering pursuit.

Silicon Valley insiders, including former Google CEO Eric Schmidt, believe AI capable of improving itself without human instruction is just 2-4 years away. This shift in focus from the abstract concept of superintelligence to a specific research goal signals an imminent acceleration in AI capabilities and associated risks.

Karpathy pushes back against the idea of an AI-driven economic singularity. He argues that transformative technologies like computers and the internet were absorbed into the existing GDP exponential curve without creating a visible discontinuity. AI will act similarly, fueling the existing trend of recursive self-improvement rather than breaking it.

Artificial General Intelligence—AI surpassing humans in most tasks—will be a gradual process, not a sudden, announced moment. It will "sneak in on us" as capabilities incrementally improve, without a clear before-and-after societal shift.

Top AI labs see the race ending not with an IPO, but with "recursive self-improvement"—the moment a model can code its own next version, causing progress to "go vertical." One lab leader believes this will happen by 2028. The strategy is to maintain a lead for just a few more years to win the race permanently.