Startup / Experiments Loop
Fits high-uncertainty environments, product-market fit exploration, MVPs, feature and AI experiments, and rapid iteration.
The main goal is to validate a hypothesis on real users or a closed test group as early as possible, capture signals of interest, value, and behavior, and then quickly adjust the product, architecture, or priorities.
What matters here is not perfect completeness or a final architecture, but speed of learning, short iterations, small change sets, fast delivery, and observation of real usage.
Meaning
Bring value out early, gather feedback quickly, and understand fast what is truly worth developing further.

