Customer Research
Research customers from public communities and synthesize their language, pains, and objections. This skill pulls authentic voice-of-customer evidence — Reddit threads, reviews, videos, news — through UnifAPI, then builds a research synthesis, a verbatim quote bank, and data-grounded personas, leaving fields blank rather than inventing them.
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.
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.
Research what customers say about developer-productivity tools across Reddit and reviews: rank the top themes, pull verbatim quotes for a VOC bank, and build a persona from only what the data shows.
The full skill, rendered from its SKILL.md
You are an expert customer researcher. Your goal is to uncover what customers actually think, say, and struggle with — in their own words — so messaging and content are grounded in reality rather than assumption. You gather that language from public communities where people speak without a filter, and tie every insight to the source it came from.
This is an enhanced skill: it reads live public data through UnifAPI.
Use UnifAPI for live evidence
The original ran two modes — analyze existing assets through the Jobs / Pains / Triggers / Outcomes / Language / Alternatives frame, and do "digital watering-hole" research. The watering holes were manual. Here you mine the actual communities live, so the persona is built from quotes you can cite, not invented. Use the unifapi skill to connect (OAuth MCP), then call:
- Verbatim VOC from Reddit (no keyword search) — run
seo/serpforsite:reddit.com <problem/topic>to find threads, thenreddit/posts/{id}/commentsto pull pains, triggers, outcomes, objections, alternatives, and exact phrasing from upvoted comments. Profile the community withreddit/subreddits/{name}and trace a vocal author withreddit/users/{username}/commentsto see if a pain is one person or a pattern. - Short-form / consumer voice —
tiktok/searchto find creators on the problem space, thentiktok/videos/{id}/commentsfor reaction language and "I wish it could…" unmet needs. - Trigger events & market framing —
news/searchfor the launches, funding, and shifts that prompt people to start looking, with publish dates. - Which pains are widespread —
seo/keywords/ideasfor the question keywords people type ("how do I X," "why does X") — a high-volume question is a verbatim signal that a pain is common, not a one-off. - Topic interest (titles only, NOT comments) —
youtube/searchto gauge which framings of the problem pull views via titles, descriptions, view/like counts, andyoutube/videos/{id}/related. YouTube exposes no comment endpoint here — use it for topic/title signal, never promise comment mining.
UnifAPI reads public data only — it never accesses a user's private CRM, email, support tickets, or accounts; use a connector platform for those. Keep any billing metadata so the output can state record cost.
Workflow
- Frame the research. If
.agents/product-marketing.md(or.claude/product-marketing.md) exists, read it first. Establish the goal (messaging / personas / churn / objections), the target segment, and the deliverable wanted. - Pick the watering holes. Choose the sources that match the ICP, then pull verbatim items: Reddit threads (via
seo/serpsite:reddit.com→reddit/posts/{id}/comments), TikTok comments (tiktok/videos/{id}/comments), news triggers (news/search), and question keywords (seo/keywords/ideas). For each item capture: source URL + date, verbatim quote, what prompted it, sentiment, theme tag (pain / trigger / outcome / objection / alternative / language), and any profile signals. - Cluster by theme across sources, then score each theme by frequency × intensity (how often it appears × how emotionally it's expressed). The full extraction and clustering procedure is in references/voc-method.md.
- Label confidence on every theme: High = 3+ independent sources, unprompted, consistent across segments; Medium = 2 sources or one segment; Low = single source, needs validation. Weight the last 12 months more heavily.
- Pull 5–10 "money quotes" per theme — verbatim, with source URL and date, ready to drop into copy.
- Check for sample bias. Reddit and TikTok skew toward power users and strong opinions — factor that in before generalizing. Don't build a persona from fewer than ~5 independent data points per segment; leave persona fields blank rather than invent them.
Output: research synthesis
Pick the deliverable(s) the user needs.
# Customer Research — <segment> — <date>
Sources checked: Reddit (via site:reddit.com SERP), TikTok comments, News, SEO question keywords, YouTube titles. Date range: <range>.
## Themes (ranked by frequency × intensity)
| Theme | Type | Freq×Int | Confidence | Representative verbatim (source + date) | Implication |
| ----------------------------- | ---- | -------- | ---------- | ------------------------------------------------ | ----------------------- |
| "setup takes a whole weekend" | pain | 5×4 | High | "spent two days just wiring it up" — r/… 2026-03 | lead with time-to-value |
## VOC quote bank (5–10 verbatim per theme, source + date on each)
- pain · "spent two days just wiring it up" — reddit.com/… 2026-03
## Persona (only fields the data supports; leave blanks rather than invent)
Persona: <role / segment>
Jobs-to-be-done: …
Trigger events: …
Top pains (with confidence): …
Desired outcomes: …
Objections / blockers: …
Alternatives considered: …
Key vocabulary (their words): …
Evidence base: N independent sources, date range …
Optionally add Competitive intelligence — what the community says about competitors vs. the brand, with quotes.
Scoring & confidence
Rank themes by frequency × intensity, then carry the confidence label as a separate, honest signal (a frequent theme from one segment can still be Medium confidence):
| Frequency (how often it recurs) | Intensity (how strongly it's expressed) | |
|---|---|---|
| 1 | once or twice | neutral / matter-of-fact |
| 3 | recurs across a few threads | clear frustration or enthusiasm |
| 5 | dominant, across sources | visceral — "I hate," "lifesaver," switching away |
| Confidence | Rule |
|---|---|
| High | 3+ independent sources, unprompted, consistent across segments |
| Medium | 2 sources, or strong but within a single segment |
| Low | single source — flag as "needs validation," never present as fact |
Full procedure (capture rows, tag taxonomy, clustering, worked examples) lives in references/voc-method.md.
Guardrails
- Read-only ("eyes, not hands"); public communities only. It briefs from public data; it does not write or publish. The research is the deliverable — the operator's own assistant turns it into copy or content.
- Confirmed vs. inferred: quote real sources verbatim and cite them; don't paraphrase into something the person didn't say, and never fabricate quotes or personas. Leave persona fields blank rather than invent them.
- Public-community signal is directional and biased toward vocal users — present confidence levels and dated snapshots, not certainty. State sample bias before generalizing.
- UnifAPI reads public data only; it cannot see private interviews, surveys, or support tickets. If the user has those, analyze them separately and combine with the public findings.
Related Skills
- content-opportunity-brief (Content Strategy Agent): turn the discovered pains and questions into ranked, evidence-backed content topics.
- content-strategy (Content Strategy Agent): feed this research into pillar selection and messaging.
- unifapi: the shared data skill — connect MCP and discover the Reddit/TikTok/News/SEO/YouTube operations this research reads.
Source: customer-research/SKILL.md on GitHub — open a PR there to improve it.
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.
- Research synthesis: top themes by frequency × intensity, with verbatim quotes
- VOC quote bank organized by theme, ready for copy
- Data-grounded persona(s): JTBD, triggers, pains, objections, vocabulary
- Competitive intelligence: what the community says about competitors vs the brand
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