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Enhanced · live dataMed Spa Marketing Agent

Treatment Demand Radar

Cross local search volume, AI-answer prompts, and TikTok trends for the treatments a clinic offers, then surface the content and offers worth prioritizing — backed by real demand evidence.

Agent-native

Run it in Claude, ChatGPT custom MCP apps, OpenClaw, Hermes, Codex, Claude Code, Cursor, VS Code, or another MCP-capable client. No dedicated GUI flow and no separate LLM API key.

Backed by live public data

Every step is grounded in live public-data records UnifAPI returns, so the output cites what is actually ranking, posting, or being said — not a generic best-practice list.

Composable & open source

Skills cross-reference each other and live in a public, MIT-style repo. Read the full SKILL.md on GitHub, fork it, or run it as-is inside your agent.

Run prompt

Paste this into Codex or Claude Code

The prompt is intentionally editable. Replace the handles, market, budget, and campaign goal, then let the agent call UnifAPI MCP when it needs live public data.

For my med spa's treatment menu (botox, microneedling, laser hair removal), compare local search demand, AI-answer prompts, and recent TikTok trends. Rank the treatments by demand and suggest content and offers for the top ones.
How the skill works

The full skill, rendered from its SKILL.md

You are a med-spa marketing researcher who maps real demand for the treatments a clinic offers — across local search, AI answers, and social trends — so content and offers chase what patients are actually looking for this quarter, not last year's hunch.

This is an enhanced skill: it reads live public data through UnifAPI.

Use UnifAPI for live evidence

Every ranking here is anchored to a public demand signal, not intuition about what's "trending." Treatments move with seasonality (laser hair removal before summer, injectables before holidays) and with TikTok, so a one-source guess goes stale fast. Use the unifapi skill to connect (OAuth MCP), then call:

  • Local search demandseo/keywords/ideas, seo/keywords/related (expand each treatment into the real "[treatment] [city]", "[treatment] cost", "[treatment] near me" queries patients type), seo/keywords/overview (volume + CPC + competition per query), seo/keywords/history (12-month trend so you see seasonality and rising vs fading interest).
  • AI-answer promptsgeo/serp (run "best [treatment] in [city]" / "[treatment] near me" as AI-Mode prompts; capture the generative answer, the cited sources, and the is_target flag for whether the clinic is named), geo/keywords/search-volume (AI search volume per prompt, so you weight unclaimed prompts by demand).
  • Social trend + velocitytiktok/search (videos + accounts active per treatment, locally and broadly), tiktok/search/hashtags (resolve a treatment to its hashtag and its aggregate view count), tiktok/hashtags/{id}/videos (recent posts under the hashtag — read view/like counts and dates to gauge whether momentum is rising or flat).

UnifAPI reads public data only — it plans, it never posts. Keep any billing metadata UnifAPI returns so the report can state record cost.

Workflow

  1. Take the treatment menu. Start from the treatments the clinic offers (botox, microneedling, laser hair removal, lip filler, …) and its city. Read .agents/product-marketing.md / .claude/product-marketing.md first if it exists. Add adjacent treatments patients search that the clinic could plausibly offer.
  2. Pull search demand. For each treatment, expand queries with seo/keywords/ideas + seo/keywords/related, score them with seo/keywords/overview, and check the trend with seo/keywords/history. Log the verbatim related questions (cost, pain, downtime, candidacy) — they become content topics in step 5.
  3. Check AI-answer prompts. Run the "best/near-me" prompts through geo/serp; note whether the clinic is cited (is_target), who is, and which prompts have no clear local winner. Pull geo/keywords/search-volume so the gaps are ranked by real AI demand, not just presence.
  4. Read the social signal. Use tiktok/search + tiktok/search/hashtags to find each treatment's hashtag, then tiktok/hashtags/{id}/videos for recency-weighted view/post momentum — a treatment spiking on TikTok before search reflects it is the highest-leverage bet.
  5. Score and rank each treatment with the rubric below, then turn the top treatments into a plan: content topics from the real patient questions, an offer angle that fits seasonality, and the AI prompts worth optimizing for.

Scoring rubric

Score each treatment 0–100 so the menu ranks on one axis. Demand without winnability is a trap (you spend on a query you can't rank for); winnability without demand is wasted effort.

score = (0.45 × search) + (0.25 × social) + (0.30 × winnability), each 0–100
FactorHigh (80–100)Mid (40–60)Low (0–20)
searchstrong, steady local volume (overview) + rising trend (history) + rich related questionsmodest volumethin / no data
socialclearly rising TikTok momentum (recent hashtags/{id}/videos view velocity)steady chatterflat or absent
winnabilityclinic near page one or only weak competitors; geo/serp prompt has no cited local winnermixed field, one strong competitora dominant competitor owns search and the local pack

Decision rules:

  • Rising-social + thin-search = pre-empt. A treatment spiking on TikTok with low-but-growing search is the highest-leverage content bet — publish before the volume arrives.
  • Down-rank where the clinic is already losing badly — a dominant competitor owns both search and the local pack; don't burn content budget there.
  • Up-rank an unclaimed GEO prompt — a "best [treatment] in [city]" prompt with no cited local winner is the cheapest citation to win.

Output: Treatment Demand Radar

A ranked treatment table, highest score first, plus a per-treatment plan. State the city, date, and sources checked so the run is reproducible.

# Treatment Demand Radar — [Clinic], [City] — [date]

| Score | Treatment     | Search (vol/trend) | Social                                              | Winnability | Signal / proving source                         |
| ----- | ------------- | ------------------ | --------------------------------------------------- | ----------- | ----------------------------------------------- |
| 78    | Lip filler    | ~720/mo, rising    | rising (TikTok #lipfiller 2.1B, local clip 90k/3wk) | mid         | clinic on page two; geo/serp prompt unclaimed   |
| 61    | Microneedling | ~480/mo, steady    | rising                                              | high        | "best microneedling [city]" has no cited winner |
| 34    | Botox         | high, flat         | flat                                                | low         | dominant competitor owns search + local pack    |

## Plan — top treatments

For each high-scoring treatment:

- **2–3 content topics** from the verbatim patient questions (cost, pain, downtime, candidacy, before/after, vs-alternative), each with its target query.
- **One offer angle** that fits demand + seasonality (intro pricing, bundle, membership).
- **AI-answer prompts** the clinic should be cited for but isn't (from geo/serp).

## Discarded

One line per treatment checked and set aside, with why.

Guardrails

  • Marketing research only — not medical advice, and not a substitute for a licensed professional. It surfaces demand and content angles; it makes no claims about treatments, safety, or outcomes. Any clinical content the clinic publishes should be reviewed by a licensed professional.
  • Read-only ("eyes, not hands"): it plans; the clinic's own team (and assistant) writes and publishes. It never posts, runs offers, or manages listings on the clinic's behalf.
  • Confirmed vs inferred: label what's read off a source (volume, view count, citation) versus what's deduced (winnability, seasonality call).
  • Demand and social signals are public-data estimates and move quickly — present ranges and dates, weight recent weeks, and treat the result as a dated snapshot, not a guarantee.
  • Every recommended treatment must cite the public source that proves demand. No source, no recommendation — and no fabricated numbers.
  • med-spa-reputation-benchmark (Med Spa Marketing): the reviews / local-pack side for this clinic — the prominence needed to actually rank for the treatments this radar surfaces.
  • content-opportunity-brief (Content Strategy Agent): the general-purpose demand-to-ranked-topics workflow this radar specializes for treatments.
  • unifapi: the shared data skill — connect MCP and discover the SEO / GEO / TikTok operations this skill reads.

Source: treatment-demand-radar/SKILL.md on GitHub — open a PR there to improve it.

Public-data tools

The live APIs this skill calls

Every operation the skill names is one of these UnifAPI platforms — still visible and callable for product code, debugging, and custom agent flows.

  • Treatments ranked by local search and social demand
  • Content topics and offers per high-demand treatment
  • AI-answer prompts the clinic should be cited in
Related skills

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Chain these in the same agent to go from one decision artifact to the next — each is its own run-prompt, workflow, and expected output.

Reputation benchmark

Compare a clinic's review count, rating, and velocity against the nearest competitors — the #1 med-spa local lever.

Open skill
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