If a model eventually scores perfectly on every benchmark yet ends up practically useless, what’s the next step?
Benchmarks measure competence inside a predefined problem space, but real scientific and engineering work isn’t bounded — it keeps changing underneath you.
At some point we don’t just need a system that knows how to solve problems in theory; we need one that can actually do something with that ability.
The equivalent of making the coffee when we want coffee, not just getting a perfect score on a coffee-theory exam.