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Greg Brockman describes the imminent arrival of AGI not as a singular event where AI becomes uniformly superhuman, but as a 'jagged' reality. The AI will be superhuman at most intellectual computer-based tasks while still struggling with some basic tasks a human can do, making a clear definition difficult.

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AI intelligence shouldn't be measured with a single metric like IQ. AIs exhibit "jagged intelligence," being superhuman in specific domains (e.g., mastering 200 languages) while simultaneously lacking basic capabilities like long-term planning, making them fundamentally unlike human minds.

Framing AGI as reaching human-level intelligence is a limiting concept. Unconstrained by biology, AI will rapidly surpass the best human experts in every field. The focus should be on harnessing this superhuman capability, not just achieving parity.

Instead of a single "AGI" event, AI progress is better understood in three stages. We're in the "powerful tools" era. The next is "powerful agents" that act autonomously. The final stage, "autonomous organizations" that outcompete human-led ones, is much further off due to capability "spikiness."

OpenAI's CEO believes the term "AGI" is ill-defined and its milestone may have passed without fanfare. He proposes focusing on "superintelligence" instead, defining it as an AI that can outperform the best human at complex roles like CEO or president, creating a clearer, more impactful threshold.

The popular concept of AGI as a static, all-knowing entity is flawed. A more realistic and powerful model is one analogous to a 'super intelligent 15-year-old'—a system with a foundational capacity for rapid, continual learning. Deployment would involve this AI learning on the job, not arriving with complete knowledge.

Demis Hassabis explains that current AI models have 'jagged intelligence'—performing at a PhD level on some tasks but failing at high-school level logic on others. He identifies this lack of consistency as a primary obstacle to achieving true Artificial General Intelligence (AGI).

The discourse around AGI is caught in a paradox. Either it is already emerging, in which case it's less a cataclysmic event and more an incremental software improvement, or it remains a perpetually receding future goal. This captures the tension between the hype of superhuman intelligence and the reality of software development.

Driven by rapid advances in AI agents, top tech CEOs are now publicly predicting the arrival of Artificial General Intelligence (AGI) or superintelligence within the next 2-5 years. This is a significant acceleration from previous estimates that often cited a decade or more.

A practical definition of AGI is its capacity to function as a 'drop-in remote worker,' fully substituting for a human on long-horizon tasks. Today's AI, despite genius-level abilities in narrow domains, fails this test because it cannot reliably string together multiple tasks over extended periods, highlighting the 'jagged frontier' of its abilities.

Current AI models exhibit "jagged intelligence," performing at a PhD level on some tasks but failing at simple ones. Google DeepMind's CEO identifies this inconsistency and lack of reliability as a primary barrier to achieving true, general-purpose AGI.

OpenAI President Believes AGI Will Arrive Within Years, But as a 'Jagged' Capability, Not Uniform Superintelligence | RiffOn