01 /
Fuzzy Wine Ontology
Every wine in Alko's public catalog — roughly 3,000 entries — tagged with crisp attributes (price, region, grape) and fuzzy ones: degrees of body, sweetness, acidity, tannin, oak. Not yes/no. Degree.
// step 01 — tell us
I’ll recommend a wine and explain why — the way a sommelier would. The way a fuzzy ontology does underneath.
// why this exists
In 2014, our Scientific Lead Robin Wikström defended his PhD at Åbo Akademi on “Fuzzy Ontology for Knowledge Mobilisation” — the academic ancestor of today’s Retrieval-Augmented Generation. He chose wine recommendation as the demo domain. A decade later, Alko’s open catalog and Claude make the original idea shippable as a tiny app. This is that app — one evening of work, and a working demonstration of how OOMF builds.
Read the full story// how it works
The playful sommelier surface hides a working example of fuzzy ontology — the academic ancestor of Retrieval-Augmented Generation, published eleven years before anyone said “RAG” out loud.
01 /
Every wine in Alko's public catalog — roughly 3,000 entries — tagged with crisp attributes (price, region, grape) and fuzzy ones: degrees of body, sweetness, acidity, tannin, oak. Not yes/no. Degree.
02 /
A weighted aggregation operator, descended from Robin's 2014 thesis, ranks every wine against your meal with a transparent per-dimension score. Roughly 150 lines of TypeScript. Math hasn't changed.
03 /
Claude reads your free-text question, parses it into structured intent, and after the engine ranks the candidates, writes the explanation the way an experienced sommelier would. Warm, specific, no jargon.
We use Vercel's cookieless analytics always, and Google Analytics only with your consent. No ad tracking.