BEAN ON BAR INTELLIGENCE

Better coffee starts with
data people trust.

Bean On Bar can become more than an app: a structured, transparent, community-updated map of what beans exist, where they are sold, how they score, how roasters recommend brewing them, and what drinkers actually experience.

01Bean graph

Roaster, origin, producer, process, variety, price, freshness, evidence, cafe availability, and brew outcomes connected to one record.

02Local discovery

Country and city-aware “cool beans near you” with purchase links, cafe reports, and future stock verification.

03Recipe graph

Official roaster recipes, community brew attempts, dose changes, grinder notes, and taste outcomes attached to each bean.

04Trust engine

Transparent scoring that shows the label signals and cited evidence instead of pretending to be a fabricated review score.

SCORING METHODOLOGY

A score that
shows its work.

The methodology is intentionally explainable. The app should reward disclosed provenance, freshness, specificity, and trusted evidence while warning users when the label is vague.

EXAMPLE SCORE

Kenya Kiambu AA

88Strong buy

This is not a review claim. It is a visible-signal score based on what the bag and cited sources disclose.

+6

Origin country

Basic traceability starts with country-level disclosure.

+5

Region named

Specific growing regions make comparison and discovery more useful.

+8

Producer or farm

Named farms, producers, washing stations, or co-ops signal stronger provenance.

+7

Process disclosed

Washed, natural, honey, anaerobic, and other process details affect buying and brewing.

+12–22

Evidence support

SCA-style scores, Coffee Review, Cup of Excellence, WCR context, and pasted evidence can boost confidence when cited.

-10

Missing roast date

Freshness matters. Missing roast dates should reduce buyer confidence.

BEAN INTELLIGENCE DIRECTORY

From scanned bag to
market map.

These prototype records reuse the community bean dataset. A future backend would turn scans, cafe reports, roaster submissions, and purchase links into a living specialty coffee graph.

PRICE BENCHMARKS

Make value visible,
not mysterious.

Price intelligence can become a valuable layer for drinkers, travelers, cafes, and roasters: compare price per gram by origin, process, availability, and score band.

Prototype estimates use sample prices for demonstration. Future backend integration would calculate this from scanned labels, roaster feeds, and verified seller links.

COMMUNITY SIGNALS

Every participant improves
the next coffee decision.

Coffee drinkers, travelers, cafes, and roasters each add a different kind of signal: what was scanned, brewed, served, sold, and enjoyed.

01

Drinkers scan and brew

Each scan improves bean coverage. Each saved brew adds taste outcome data that generic search engines do not have.

02

Travelers report availability

City-level reports answer the high-intent question: “What is worth buying near me today?”

03

Cafes claim what is on bar

Cafe profiles can become lightweight inventory pages for guest beans, retail shelves, and brew methods.

04

Roasters submit recipes

Official recipes travel with the bean, improving first-cup success and strengthening roaster visibility.

COMMUNITY HEALTH

Signals that show
the product is useful.

As the community grows, these signals can show whether people are using Bean On Bar to identify beans, brew better, discover cafes, and find coffees worth buying.

Beans scannedActivation

Shows whether users repeatedly use the core wedge.

Beans savedRetention

Shows whether Bean On Bar becomes a coffee memory, not just a one-time scanner.

Recipes startedHabit

Shows brew guidance is useful at the moment of making coffee.

Cafe reportsCommunity

Shows the local discovery graph is being built by users.

Roaster recipesSupply

Shows roasters see value in attaching official guidance.

Purchase clicksCommerce

Shows potential for affiliate revenue, stock checks, and partner tools.