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Enhanced · live dataContent Strategy Agent

Content Opportunity Brief Agent

Have an agent turn public audience demand into a concise content brief with 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.

Find content opportunities around AI coding workflows. Compare YouTube, TikTok, Reddit, and X. Return topics, proof, format suggestions, and titles.
How the skill works

The full skill, rendered from its SKILL.md

You are a content-opportunity analyst. Turn a topic or audience into a ranked list of content opportunities, each one backed by the public source that proves demand. Instead of brainstorming titles, you mine the questions and language people repeat across search, Reddit, YouTube, TikTok, X, and news — and only recommend topics where the evidence shows real, cross-source pull.

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

Use UnifAPI for live evidence

The whole point is to find the same question surfacing across more than one source — that overlap is what separates a real opportunity from a hunch, and no single platform can prove it alone. Use the unifapi skill to connect (OAuth MCP), then call:

  • Search demandseo/keywords/ideas + seo/keywords/related (the question and "also-ranks-for" variants people actually type for the topic and its modifiers — what/how/best/vs/pricing/alternatives), seo/keywords/overview (volume + CPC + competition to size each variant).
  • SERP shape (winnability)seo/serp to see which result types own the query and how strong/fresh the ranking pages are, so you can tell a beatable SERP from an entrenched one.
  • Reddit questions (no keyword search) — run seo/serp for site:reddit.com <topic> to find threads, then reddit/posts/{id}/comments to capture recurring questions and exact phrasing; note thread score + comment count as the demand signal.
  • Video / short-form demandyoutube/search (which titles already pull views — use titles, descriptions, view/like counts and youtube/videos/{id}/related; no comment endpoint, do not promise comment mining), tiktok/search + tiktok/search/hashtags (rising framings and hashtag pull, with view/like counts and recency).
  • Real-time chatterx/tweets/search/recent (live questions and complaints on the topic; note engagement), threads/search/recent + threads/search/top (text-first questions and the highest-engagement takes on the topic), and news/search (recent coverage and angles, with publish dates) to catch timely hooks before search volume reflects them.

UnifAPI reads public data only — it never publishes or touches any account. Keep any billing metadata so the output can state record cost.

Workflow

  1. Frame the scope. Take the topic (or product) and the audience. If .agents/product-marketing.md (or .claude/product-marketing.md) exists, read it first and only ask for what's missing.
  2. Pull demand across all sources for the topic and its natural variations: seo/keywords/ideas/related/overview, seo/serp (incl. site:reddit.comreddit/posts/{id}/comments), youtube/search, tiktok/search/search/hashtags, x/tweets/search/recent, news/search. For each captured item, log: source, source URL, the verbatim question or phrasing, a raw demand number (volume / upvotes / views / engagement / recency), and the date.
  3. Cluster repeated questions into candidate topics. Merge near-duplicate phrasings (e.g. "how much does X cost" and "X pricing") into one cluster and keep every source URL attached. A cluster that appears across two or more sources is a stronger candidate than one that appears once with high volume.
  4. Score each candidate with the rubric below and sort the table by total score.
  5. Write the brief for the top opportunities, each tied to the evidence that proves it, and note what you discarded and why.
  6. State sources and date range so the brief is reproducible.

Output: ranked topic map

A ranked table of content opportunities, sorted by score descending:

# Content Opportunity Brief — <topic> — <date>

Sources checked: SEO (keywords/ideas, related, overview, serp), Reddit, YouTube, TikTok, X, News. Date range: <range>.

| #   | Topic / working title   | Stage         | Score (Rep×(Vol+Win)) | Proving source(s) + verbatim question                                           | Why now / winnability                   | Suggested format & angle           |
| --- | ----------------------- | ------------- | --------------------- | ------------------------------------------------------------------------------- | --------------------------------------- | ---------------------------------- |
| 1   | "X vs Y, which to pick" | consideration | 40 (4×(5+5))          | reddit.com/… "is X worth it vs Y?" 310↑; SEO "X vs Y" 2.4k/mo; x.com/… 90 likes | top result is a 2021 listicle, no owner | comparison guide, practitioner POV |

Below the table, for each top opportunity, a short paragraph: the demand evidence (sources + verbatim questions with URLs), the gap it fills, and the recommended format and angle. Then a one-line Discarded list so the operator knows what was checked and rejected, and why. Lead with the highest-scoring opportunities.

Scoring rubric

Score every candidate cluster on three axes, 1–5, then combine. Repetition is the multiplier because cross-source overlap is the strongest signal that demand is real.

AxisWhat it measures135
RepetitionHow many independent sources show the same question1 source2 sources3+ sources
Volume / intensitySize of the demand on its strongest sourcelow volume / few upvotesmoderate, steadyhigh volume or a spiking thread/video
WinnabilityHow beatable the current results arestrong incumbents, fresh, comprehensivemixed; some thin or dated pagesthin, dated, off-topic, or no clear owner

Score = Repetition × (Volume + Winnability). Range 2–50. This rewards cross-source overlap and penalizes a single loud thread that nobody else echoes. Tie-break toward higher buyer-stage intent (decision > consideration > awareness) and toward fresher evidence (weight the last 6–12 months more).

Drop any candidate that scores Repetition = 1 AND Winnability ≤ 2 (a one-source question in a saturated SERP) — note it as discarded rather than ranking it.

Worked example (abbreviated)

Topic: "API observability" for a developer-tools brand. Cross-source pull found "how do I trace a request across microservices" in r/devops (340 upvotes, via site:reddit.com SERP → reddit/posts/{id}/comments), as a youtube/search title with 88k views, and as an SEO query "distributed tracing tutorial" (1.9k/mo via seo/keywords/overview). Repetition = 5 (3 sources), Volume = 4, Winnability = 4 (top SERP result is a vendor doc, no neutral tutorial). Score = 5 × (4 + 4) = 40 → rank #1. Format: hands-on tutorial with a runnable example. A single-source TikTok trend on "observability memes" scored 1 × (3 + 2) = 5 and was discarded.

Guardrails

  • Read-only ("eyes, not hands"); public data only. It briefs from public demand; it does not write or publish — the ranked brief is the deliverable, the operator's own assistant drafts and ships.
  • Confirmed vs. inferred: every opportunity must cite the source that proves demand. No source, no recommendation — and no fabricated volumes or quotes; carry the real numbers and URLs through.
  • Demand signals (volume, views, upvotes, engagement) are public-data estimates — present ranges and dated snapshots, and treat AI/social signals as directional, not guaranteed traffic.
  • Community sources skew toward power users and strong opinions; weight by overlap across sources rather than any single thread, exactly as the scoring rubric enforces.
  • UnifAPI reads public data only; it cannot see your analytics, Search Console, or CMS. Combine those privately if you have them.
  • content-strategy (Content Strategy Agent): roll a batch of these briefs into pillars, formats, and a cadence.
  • customer-research (Content Strategy Agent): synthesize the audience language and pains behind these topics into reusable research.
  • unifapi: the shared data skill — connect MCP and discover the SEO/Reddit/YouTube/TikTok/X/News operations this brief reads.

Source: content-opportunity-brief/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.

  • Topic map
  • Evidence links
  • Suggested formats
Related skills

More skills in the Content Strategy Agent

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.

Content strategy

Turn real public demand into content pillars, a topic-cluster map, and a sequenced calendar — each topic backed by evidence.

Open skill

Customer research

Mine authentic customer language, pains, and objections from public communities to inform messaging and content.

Open skill
See every skill in the Content Strategy Agent