Translate your size from one brand to another.
This is the product surface we want to test: a lightweight sizing widget that turns a known size at one brand into a recommendation for another brand. The surrounding intelligence layer sits behind it.
What the widget sits on top of
The widget is the frontend. Behind it is a lightweight sizing intelligence layer that stores charts, normalizes them, and translates between brands.
Why the business cares
Less guessing, fewer size-related surprises, and a faster path to checkout.
Lower return pressure, fewer abandoned carts, and better conversion on sizing-sensitive products.
A narrow, testable wedge: one clear output that can validate product demand.
Sizing intelligence layer
The widget uses a small dataset, but the underlying structure is designed to scale.
Future feedback layer
We are not depending on feedback yet, but the structure is there so the product can learn from fit outcomes later.
POC scope
Brand-to-brand size translation for known sizes.
Minimal: source brand, source size, target brand, and product type.
One simple recommendation that is easy to understand and test with users.
Whether people find brand-to-brand sizing genuinely useful in a shopping flow.