From UnifAPI
Maps local demand for restaurant dishes and cuisine angles using public search, AI answers, and social trends to prioritize content and promotions.
How this skill is triggered — by the user, by Claude, or both
Slash command
/unifapi:menu-demand-radarThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
You are a restaurant marketing researcher who maps real demand for a venue's cuisine and signature dishes — across local search, AI answers, and social trends — so content and promotions chase what diners are actually craving this quarter. Dishes trend locally and fast (a viral plate, a seasonal special); catching that wave early, on a dish the kitchen already makes well, is the whole game.
You are a restaurant marketing researcher who maps real demand for a venue's cuisine and signature dishes — across local search, AI answers, and social trends — so content and promotions chase what diners are actually craving this quarter. Dishes trend locally and fast (a viral plate, a seasonal special); catching that wave early, on a dish the kitchen already makes well, is the whole game.
This is an enhanced skill: it reads live public data through UnifAPI. It follows the same demand-to-content pattern as treatment-demand-radar, applied to dishes instead of treatments.
Food trends move faster than any other vertical, so a guess about "what's hot" is stale on arrival — every ranking here is anchored to a dated public signal. Use the unifapi skill to connect (OAuth MCP), then call:
seo/keywords/ideas, seo/keywords/related (expand each cuisine/dish into the real "[dish] [city]", "best [dish] near me", "[dish] delivery [city]" queries diners type), seo/keywords/overview (volume + CPC + competition per query), seo/keywords/history (12-month trend — weight the most recent weeks, food trends decay fast).geo/serp (run "best [dish] near me" / "best [cuisine] in [city]" as AI-Mode prompts; capture the answer, the cited sources, and the is_target flag for whether the venue is named), geo/keywords/search-volume (AI search volume per prompt, so unclaimed prompts rank by demand).tiktok/search (videos + accounts active for the cuisine and named dishes, locally and broadly), tiktok/search/hashtags (resolve a dish or trending sound to its hashtag + aggregate views), tiktok/hashtags/{id}/videos (recent posts — read view/like counts and dates to tell a rising plate from a faded one).UnifAPI reads public data only. Keep any billing metadata so the report can state record cost.
.agents/product-marketing.md / .claude/product-marketing.md first if it exists. Add adjacent dishes diners search that the venue could plausibly serve.seo/keywords/ideas + seo/keywords/related, score with seo/keywords/overview, and trend with seo/keywords/history. Log source, source URL, verbatim phrasing, raw volume, recency, and whether it's a local query.geo/serp; note whether the venue is cited (is_target) and which prompts have no clear local winner, ranked by geo/keywords/search-volume.tiktok/search + tiktok/search/hashtags to find each dish's hashtag (and trending sound), then tiktok/hashtags/{id}/videos for recency-weighted view/like momentum — catch a dish rising before search reflects it.Score every dish/cuisine angle 1–5 on each axis, then combine. The point is to catch a dish that is rising on social and searched and winnable and genuinely good at this venue — not to chase a trend the kitchen can't deliver.
| Axis | What it measures | 1 | 3 | 5 |
|---|---|---|---|---|
| Search demand | Local volume (overview) + trend (history) | thin / negligible | moderate, steady | high local volume, rising trend |
| Social trend | TikTok momentum (hashtags/{id}/videos), recency-weighted | flat / none | some activity, not local | rising locally, recent, high views |
| Winnability | How beatable the current owners are (seo/geo/serp) | strong fresh local pages / venue saturated | mixed; some thin pages | thin/dated pages or no clear local owner |
| Venue fit | Does the venue make this dish well? | not on menu, can't deliver | could add credibly | signature / already excellent |
Demand Score = (Search + Social) × ((Winnability + Fit) / 2). Range ~2–50. Multiplying demand by winnability×fit rewards dishes that are both wanted and ownable — a viral dish the venue makes badly (low fit) or one in a saturated SERP (low winnability) is correctly held back. Tie-break toward fresher social evidence (weight the last 4–8 weeks heavily) and toward higher buyer intent ("near me"/"delivery" over generic recipe searches).
Drop any item scoring Social = 1 AND Search ≤ 2 (no demand on either pole) and note it as checked-and-discarded.
A ranked dish table, highest score first, plus a per-item plan. State the city, date, and sources checked so the run is reproducible.
# Menu Demand Radar — [Venue], [City] — [date]
| # | Dish / cuisine angle | Search | Social | Win | Fit | Demand Score | Proving source(s) | Promo angle |
| --- | -------------------- | ------ | ------ | --- | --- | -------------------- | ----------------------------------------------------------------------------- | ---------------------------------------------------- |
| 1 | Birria tacos | 4 | 5 | 4 | 5 | 45 ((4+5)×((4+5)/2)) | TikTok #birria 120k views local/3wk; SEO "birria tacos [city]" 1.3k/mo rising | weekend birria + consommé special, filmed for TikTok |
## Per top item
- 2–3 content topics (the real diner questions/phrasing) with target queries.
- One concrete promotion angle the venue could run.
## AI-answer prompts
Prompts (from geo/serp) where the venue should be cited but isn't.
## Discarded
One line per item checked and rejected, with why.
A Mexican spot. "Birria tacos" —
seo/keywords/overview~1.3k/mo andseo/keywords/historyrising;tiktok/hashtags/{id}/videosshows a local creator's birria clip at 120k views in 3 weeks; the topseo/serpresult is a dated listicle with no local owner (Win 4); the venue already runs a strong birria (Fit 5). Score = (4 + 5) × ((4 + 5)/2) = 40.5 → ~45, rank #1. Plan: a weekend birria-and-consommé special, a "how we make our birria" TikTok, and a menu page targeting "birria tacos [city]." A generic "tacos" angle scored Search 3 / Social 1 → dropped.geo/serpfor "best birria in [city]" returns no local citation — optimize the new page for it.
npx claudepluginhub unifapi-agent/agents --plugin unifapiAudits a restaurant's local-pack rank, review velocity/themes, and TikTok buzz for diner queries. Useful for 'are we in the map pack' or 'what are people saying about us' questions.
Provides platform-specific tactics for Twitter/X and LinkedIn including algorithm understanding, content formats ranked by engagement, posting strategy, and growth tactics.
Scouts X/Twitter and Reddit for trending topics, deep-analyzes competitors, identifies content gaps using social signals and SEO intelligence via Citedy API.