From meta-skills
Generates original surveys, benchmarks, and aggregated data for proprietary content moats. Automates data collection frameworks triggered by research and survey requests.
npx claudepluginhub affitor/affiliate-skills --plugin meta-skillsThis skill uses the workspace's default tool permissions.
Create original surveys, benchmarks, and aggregated data that nobody else has. Proprietary data is the ultimate content moat — competitors can copy your writing style but they can't copy YOUR data. Automates the design and execution framework for data collection that feeds unique content angles.
Guides structured market research: sizes markets with TAM/SAM/SOM, analyzes competitors, designs customer surveys, segments audiences, synthesizes insights for product strategy.
Analyzes customer research from transcripts, surveys, tickets; mines Reddit, G2, forums for pains, personas, JTBD, sentiment, churn reasons.
Researches topics by collecting 5-10 source articles, auto-tagging by theme, extracting key data points, and generating structured research briefs for content creation.
Share bugs, ideas, or general feedback.
Create original surveys, benchmarks, and aggregated data that nobody else has. Proprietary data is the ultimate content moat — competitors can copy your writing style but they can't copy YOUR data. Automates the design and execution framework for data collection that feeds unique content angles.
S7: Automation & Scale — Generating data at scale requires automation. This skill designs the collection system, not just one data point. Creates repeatable data assets that compound over time.
content-moat-calculator identifies the need for differentiated contentniche: string # REQUIRED — topic area for data collection
# e.g., "AI video tools", "affiliate marketing"
data_type: string # OPTIONAL — "survey" | "benchmark" | "aggregation" | "case_study"
# Default: recommend based on niche and resources
audience_access: string # OPTIONAL — how you can reach respondents
# e.g., "email list of 500", "Reddit community", "Twitter followers"
# Default: suggest options
budget: string # OPTIONAL — "zero" | "low" ($0-100) | "medium" ($100-500) | "high" ($500+)
# Default: "zero"
goal: string # OPTIONAL — "content_moat" | "backlink_magnet" | "authority" | "lead_gen"
# Default: "content_moat"
Chaining from S3 content-moat-calculator: Use competitive_advantages to identify data moat opportunities.
Analyze the niche for data gaps:
web_search: "[niche] statistics 2025" OR "[niche] survey" OR "[niche] benchmark" — what data already exists?web_search: "[niche] reddit" "I wish I knew" OR "does anyone know" — find unmet data needsBased on data_type (or recommend the best fit):
Survey Design:
Benchmark Study:
Data Aggregation:
Case Study Collection:
Produce ready-to-use assets:
Create a repeatable system:
output_schema_version: "1.0.0"
proprietary_data:
niche: string
data_type: string
data_gap: string # What data doesn't exist yet
headline_potential: string # The "surprising finding" angle
collection:
method: string
sample_target: number
tools: string[]
timeline: string
budget_needed: string
assets:
survey_questions: object[] # If survey type
collection_template: string # Template description
outreach_template: string # Recruitment message
analysis_plan: string
content_outputs: # Content to create from the data
- type: string # "blog" | "infographic" | "report" | "social"
title: string
skill_to_use: string # Which skill creates this content
data_assets: string[] # Moat strengtheners for chaining
chain_metadata:
skill_slug: "proprietary-data-generator"
stage: "automation"
timestamp: string
suggested_next:
- "affiliate-blog-builder"
- "content-pillar-atomizer"
- "content-moat-calculator"
## Proprietary Data Plan: [Niche]
### The Data Gap
**Nobody has answered:** [the question]
**Why it matters:** [why people care]
**Headline potential:** "[Surprising finding template]"
### Collection Design
**Type:** [Survey / Benchmark / Aggregation / Case Study]
**Target sample:** XX responses
**Timeline:** X weeks
**Budget:** $XX
**Tools:** [tools list]
### Survey Questions (or Collection Template)
1. [Question] — [answer type] — [why this question]
2. [Question] — [answer type] — [why this question]
...
### Outreach Template
Subject: [subject line]
[email/message body]
### Content Plan (what to publish from this data)
1. **Blog post:** "[Title]" → build with `affiliate-blog-builder`
2. **Social thread:** Key findings → atomize with `content-pillar-atomizer`
3. **Lead magnet:** Full report PDF → distribute with `squeeze-page-builder`
### Automation Schedule
- **Collection:** [frequency]
- **Analysis:** [when after collection]
- **Publication:** [when after analysis]
- **Update:** [when to re-run with fresh data]
Example 1: "I want original data about AI video tools" → Design survey: "AI Video Tools Usage Survey 2025" — 10 questions about which tools, satisfaction, spend, use cases. Distribute on Reddit r/aivideo, Twitter, LinkedIn. Target 150 responses. Content plan: "State of AI Video 2025" blog post + infographic.
Example 2: "Create a benchmark for affiliate marketing earnings" → Aggregate public data from case studies, combine with original survey. Monthly recurring data collection. "Affiliate Marketing Earnings Benchmark Q1 2025."
Example 3: "Data moat for my content strategy" (after content-moat-calculator) → Identify that competitors have generic content but NO original data. Design case study collection: "How 50 Affiliate Marketers Made Their First $1,000." Instant authority.
After data collection: publish the findings as a blog post with affiliate-blog-builder. After 30 days: how many backlinks did the data post earn? After 90 days: did organic traffic to your money pages increase? If yes, plan your next data collection round — proprietary data compounds.
Next step — copy-paste this prompt: "Write a blog post presenting my original research findings about [topic]" → runs
affiliate-blog-builder
affiliate-blog-builder (S3) — unique data angles for articles nobody else can writecontent-pillar-atomizer (S2) — data findings to atomize across platformscontent-moat-calculator (S3) — proprietary data IS a moat strengthenercontent-moat-calculator (S3) — identifies need for differentiated contentperformance-report (S6) — performance data to aggregateshared/references/case-studies.md — Real data-driven success examplesshared/references/flywheel-connections.md — Master connection map