Thinking about AGI by 2030 always sparks some fascinating questions. How will we know when we’ve truly reached it? What will that breakthrough moment actually look like? I recently came across some insights that paint a vivid picture of what these milestones might be – far beyond just more powerful computation or incremental upgrades.
Defining AGI: It’s about consistency across all cognitive domains
The first thing to tackle is defining what AGI actually means, and it turns out that’s more complicated than it seems. The bar isn’t just about excelling at one task or dominating a niche like today’s systems. Instead, true AGI is about matching the brain‘s broad cognitive capabilities consistently. Think about it: our brains didn’t just invent civilization by being great at chess or language alone—they operate as highly general “thinking machines.”
Current AI, however brilliant in specific areas, often shows glaring inconsistencies. It’s like a patchwork of sharp spots and blind spots, excelling spectacularly at some tasks but failing at others—something the experts call “jagged intelligence.” For example, a system might generate near-perfect chess moves but struggle with creative scientific insight or long-term reasoning.
Testing for AGI might involve a massive battery of tens of thousands of cognitive tasks that humans can tackle. Beyond that, imagine a panel of hundreds of the world’s top specialists — terrors in their respective fields — trying for months to find any glaring holes or weaknesses. If none are found, then maybe we’re there. But the real magic might be those rare, lighthouse moments – the “move 37” of AGI.
The elusive “move 37” and other landmark breakthroughs
The “move 37” reference comes from a stunning moment in the game of Go where AI surprised everyone with a deeply creative, non-intuitive play. What would a move 37 look like in AGI? One idea is inventing a new scientific conjecture or hypothesis, something revolutionary like Einstein did with relativity.
Imagine training an AGI only on scientific knowledge up to 1900, then seeing whether it could independently come up with special and general relativity. That kind of breakthrough would be an unmistakable sign of true general intelligence — creative, theoretical, and deep. Another marker could be inventing a brand-new game with richness and elegance comparable to Go, showing not just mastery but true innovation.
These leaps count for more than just checking boxes on cognitive tests. They demonstrate an AI that can invent brand new knowledge or culture, not just remix existing patterns. It’s about the ability to surprise even the best human experts, producing insights or moves they might initially dismiss but later come to fully appreciate.
Incremental upgrades vs breakthrough leaps: the path to AGI
We often talk about AI progress as a race of scaling up compute or training on more data. But the path to AGI seems to require a hybrid approach: both many incremental improvements and a few game-changing breakthroughs.
Systems like AlphaEvolve already showcase the power of recursive self-improvement — fine-tuning code or enhancing performance through many small steps. But whether this kind of steady hill-climbing alone can get us to AGI is dubious. We might need at least one or two major paradigm shifts, the AI equivalents of transformers or the transformer architecture revolution of 2017.
Scaling compute and data remain crucial. Interestingly, there’s still a lot of room to grow in pre-training, post-training, and inference compute, especially as billions of users worldwide demand responsive, intelligent AI. Yet, the biggest leap might come from the research bench – the creative minds who can crack new scientific or conceptual codes.
And on the data front, running out of high-quality human-like data might not be the bottleneck. Synthetic data generation and simulation offer promising ways to keep feeding AI systems the right information, sustaining progress without hitting a wall.
Practical insights for AIholics and the future
What can we take away from this perspective?
- AGI is about consistent, general cognition, not narrow prowess. True intelligence won’t just ace chess or coding, but operate robustly across domains without glaring blind spots.
- Breakthrough moments matter as much as scaling. Expect landmark achievements — like a novel scientific theory or a brand-new complex game — that showcase real creativity and insight.
- Scaling compute and data remain important, but innovation drives the hardest challenges. AI progress depends equally on deep research and system engineering, so organizations with strong research teams remain key players.
True artificial general intelligence will be marked not only by broad capability but by the rare lightning strikes of genuine invention — those “move 37” moments that shift the paradigm.
So where does this leave us in 2024? There’s a roughly 50% chance AGI could arrive by 2030, according to recent expert insights. But even when it happens, it may look more like a tapestry of steady improvements punctuated by brilliant, eye-opening leaps. We should watch closely not only for raw performance but for those breathtaking moments of original creativity that redefine what’s possible.
And as these systems evolve, so will the dynamic between human experts and AI — sometimes challenging our assumptions, sometimes elevating us to new heights of understanding. It’s an exciting journey that’s just beginning, with countless surprises ahead.


