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The transition from the AI "middle game" to the "endgame" is marked by a critical shift: when top human research talent ceases to be a differentiating factor. At this point, AI progress becomes a function of an organization's existing AI capabilities and its access to compute, because the AIs themselves become the primary researchers.
As AI models democratize access to information and analysis, traditional data advantages will disappear. The only durable competitive advantage will be an organization's ability to learn and adapt. The speed of the "breakthrough -> implementation -> behavior change" loop will separate winners from losers.
As foundational AI models become more accessible, the key to winning the market is shifting from having the most advanced model to creating the best user experience. This "age of productization" means skilled product managers who can effectively package AI capabilities are becoming as crucial as the researchers themselves.
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."
The era of guaranteed progress by simply scaling up compute and data for pre-training is ending. With massive compute now available, the bottleneck is no longer resources but fundamental ideas. The AI field is re-entering a period where novel research, not just scaling existing recipes, will drive the next breakthroughs.
As AI agents eliminate the time and skill needed for technical execution, the primary constraint on output is no longer the ability to build, but the quality of ideas. Human value shifts entirely from execution to creative ideation, making it the key driver of progress.
Companies like OpenAI and Anthropic are not just building better models; their strategic goal is an "automated AI researcher." The ability for an AI to accelerate its own development is viewed as the key to getting so far ahead that no competitor can catch up.
Zvi Maschewitz frames the current AI era not as the endgame, but as the "beginning of the middle game." The true endgame will only begin when AI advances are driven by AIs themselves, making human researchers and operators irrelevant to the progress loop. Until humans are out of control of the process, we are still in the middle stages of development.
The ultimate goal for leading labs isn't just creating AGI, but automating the process of AI research itself. By replacing human researchers with millions of "AI researchers," they aim to trigger a "fast takeoff" or recursive self-improvement. This makes automating high-level programming a key strategic milestone.
For entire countries or industries, aggregate compute power is the primary constraint on AI progress. However, for individual organizations, success hinges not on having the most capital for compute, but on the strategic wisdom to select the right research bets and build a culture that sustains them.
OpenAI CEO Sam Altman has publicly stated a timeline for AI to conduct AI research autonomously, aiming for an intern-level researcher by 2026 and a fully automated one by 2028. This could massively accelerate AI progress and lead to an intelligence explosion.