Loop Engineering: Designing loops that prompt coding agents(addyosmani.com) |
Loop Engineering: Designing loops that prompt coding agents(addyosmani.com) |
Perhaps for toy projects or research, but for a production system you're accountable for understanding, maintaining and continuing to develop?
In reality, production systems will be released without inner depth of knowledge anymore, because no humans will touch tomorrow's codebases, solely AI, so everything has to be designed for AIs, not for humans at this stage, same for documentations.
Documentations don't need to be done ahead as well as they can be prompted live, docs should be just pointers to assist AI to help you gen the docs. In my team we stopped having dashboards pre-made entirely and if we need to know how many people signed-up today (just an example), then agent hit prod data directly (with read-only instant snapshots), we kept having this discussion and we ended-up understanding that inventing "tools" that we aren't even sure we need is useless in this era, you'd rather prompt everything (in loops, adversarial with the model zoo and so-on to reach 99% accuracy).
And surely cost plays a part here. This is giving you such productivity gains to boost revenue enough to outweigh what must be huge token costs?
I've been building projects mostly by forcing the llm to use a more modular approach, so when it does get stuck or break something, it's isolated. This happens to be a often promoted means to an end. Additionally, I've gotten into building and inspecting tests/ that allow it to break problems into functional blocks.
but tl;dr: you're seeing AI psychosis because token gen is through the roof leading to sprawling code bases that no one's competent in being responsible for. But if you tweak how fast these things operate, you can manageably come along for the ride even if you still dont need to know everything. Think of it like a new form of boilerplate, but extended to a lot of banal ritual magic.