From automation-skills
Estimates total pages needed for topical authority by analyzing competitor content volume and quality. Provides go/no-go decision for content investment. Triggers on content moat, topical authority, SEO feasibility queries.
How this skill is triggered — by the user, by Claude, or both
Slash command
/automation-skills:content-moat-calculatorThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Estimate the total content investment needed to establish topical authority in a niche. Analyzes competitors' content volume and quality to give you a go/no-go decision before investing months of work. Answers the question: "How many pages do I need to dominate this topic?"
Estimate the total content investment needed to establish topical authority in a niche. Analyzes competitors' content volume and quality to give you a go/no-go decision before investing months of work. Answers the question: "How many pages do I need to dominate this topic?"
S3: Blog & SEO — This decides what blog content to build. It's the feasibility check that saves you from starting a content strategy you can't finish.
keyword-cluster-architect to estimate effort for the planned clustersniche: string # REQUIRED — the topic to analyze
# e.g., "AI video tools", "email marketing for SaaS"
hub_keyword: string # OPTIONAL — main keyword to analyze competitors for
# Default: inferred from niche
your_current_pages: number # OPTIONAL — how many pages you already have on this topic
# Default: 0
publishing_capacity: string # OPTIONAL — "1/week" | "2/week" | "3/week" | "5/week"
# Default: "2/week"
Chaining from S3 keyword-cluster-architect: Use keyword_clusters.total_clusters and keyword_clusters.hub.keyword.
Read shared/references/seo-strategy.md for moat calculation methodology.
web_search for [hub_keyword] or main niche keywordweb_search: site:[competitor.com] [niche topic] — count pages on this topicAverage competitor pages = sum(competitor_pages) / number_of_competitors
Your moat target = Average × 1.5 (need MORE than average to break through)
Content gap = Moat target - your_current_pages
Based on moat target and publishing capacity:
Weeks to moat = Content gap / publishing_capacity_per_week
| Moat Target | Assessment | Recommendation |
|---|---|---|
| < 20 pages | GREEN — Achievable | Go for it. 2-3 months at 2/week. |
| 20-50 pages | YELLOW — Significant | Commit or don't. 3-6 months at 2/week. |
| 50-100 pages | ORANGE — Major investment | Consider narrowing niche. 6-12 months. |
| 100+ pages | RED — Very high barrier | Find a sub-niche or different angle. |
Identify ways to build moat FASTER:
proprietary-data-generator)Create realistic timeline:
output_schema_version: "1.0.0"
content_moat:
niche: string
hub_keyword: string
competitors_analyzed: number
average_competitor_pages: number
moat_target: number
your_current_pages: number
content_gap: number
feasibility: string # "green" | "yellow" | "orange" | "red"
weeks_to_moat: number
assessment: string # Go/no-go summary
competitors:
- domain: string
pages_on_topic: number
content_quality: string # "thin" | "average" | "deep"
freshness: string # "stale" | "recent" | "actively updated"
authority_gaps: string[] # What competitors have that you don't
competitive_advantages: string[] # Ways to build moat faster
chain_metadata:
skill_slug: "content-moat-calculator"
stage: "blog"
timestamp: string
suggested_next:
- "affiliate-blog-builder"
- "keyword-cluster-architect"
- "proprietary-data-generator"
- "content-decay-detector"
## Content Moat Analysis: [Niche]
### Competitor Landscape
| Competitor | Pages on Topic | Quality | Freshness |
|---|---|---|---|
| [domain] | XX | [thin/average/deep] | [stale/recent/active] |
### Moat Calculation
- **Average competitor pages:** XX
- **Your moat target (1.5x):** XX pages
- **Your current pages:** XX
- **Content gap:** XX pages
- **At [X]/week:** XX weeks to moat
### Feasibility: [GREEN/YELLOW/ORANGE/RED]
[Assessment paragraph — honest, actionable]
### Competitive Advantages
1. [How to build moat faster]
2. [What competitors are missing]
### Timeline
| Phase | Content | Pages | Weeks |
|---|---|---|---|
| Foundation | Hub + core spokes | XX | X |
| Supporting | Long-tail, tutorials | XX | X |
| Authority | Original research, data | XX | X |
| **Total** | | **XX** | **X** |
### Recommendation
[Clear go/no-go with reasoning]
monopoly-niche-finder first."Example 1: "How much content do I need to dominate AI video tools?" → Analyze top 5 sites ranking for "best AI video tools". Average 35 pages. Moat = 53 pages. At 2/week = 27 weeks. YELLOW — significant but doable.
Example 2: "Can I compete in email marketing?" → Analyze competitors. Average 200+ pages. Moat = 300 pages. RED — too broad. Suggest: "email marketing for Shopify stores" (moat = 25 pages, GREEN).
Example 3: "Content moat for my keyword clusters" (after keyword-cluster-architect) → Use cluster data to estimate pages needed per cluster. Compare against competitors per cluster. Identify which clusters are GREEN vs RED.
affiliate-blog-builder (S3) — how many articles and what type to writegrand-slam-offer (S4) — authority gaps inform what to emphasize in offersproprietary-data-generator (S7) — identifies data moat opportunitieskeyword-cluster-architect (S3) — cluster count informs moat estimationseo-audit (S6) — current content performance dataperformance-report (S6) — content performance metricsperformance-report (S6) tracks progress toward moat target → celebrate milestones, adjust strategy if falling behindBefore delivering output, verify:
Any NO → rewrite before delivering.
shared/references/seo-strategy.md — Topical authority model, moat calculation formulashared/references/case-studies.md — Real content strategy examplesshared/references/flywheel-connections.md — Master connection mapnpx claudepluginhub affitor/affiliate-skills --plugin research-skillsMines longtail keywords, question keywords, and related terms for a topic to surface niche content opportunities. Outputs a content tier plan with template, URL pattern, sample pages, and quality gates for programmatic or editorial publishing.
Builds topical authority maps with pillar pages, 8-15 prioritized cluster articles, content types, internal link maps, and AEO content gap analysis. Use for content clusters, topic maps, or SEO strategies.
Plans data-driven content strategies by analyzing search demand, community questions, and shareable formats via UnifAPI. Helps decide what to write about based on public demand.