The AI world isn't slowing down. Since 2012, the compute power fueling the largest AI training runs has grown at a staggering pace. We're talking about a 3.4-month doubling time. How does that stack up against the tech world's darling metric, Moore's Law? It leaves it eating dust with its comparatively snail-paced 2-year doubling period.

Exponential Growth in Compute

Let's put some numbers on it. Since 2012, the compute used in training AI has skyrocketed more than 300,000 times. Compare that to the paltry 7x increase if we stuck with the Moore's Law trajectory. It's not just about numbers, though. This kind of growth is shaping AI into something beyond today's imagination.

Why This Matters

With this kind of exponential growth, where does it leave us? Should we prepare to harness AI systems that could operate on levels we can barely comprehend today? The answer is yes. Consider the implications of systems capable of outperforming current benchmarks by such massive margins. The speed difference isn't theoretical. You feel it.

Time to Brace for Impact

If you think AI’s growth can just keep going unchecked, think again. While it sounds thrilling, it also raises pressing questions. Can our infrastructure keep up? Do we've the right policies in place to manage such powerful tools? With compute like this, Solana doesn't wait for permission, and neither should the AI industry. The time to prepare is now.

Another week, another mind-bending leap in what AI can achieve. But are we ready for it?