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coreyhaines31/competitor-profiling

coreyhaines31

competitor-profiling

When the user wants to research, profile, or analyze competitors from their URLs. Also use when the user mentions 'competitor profile,' 'competitor research,' 'competitor analysis,' 'profile this competitor,' 'analyze competitor,' 'competitive intelligence,' 'competitor deep dive,' 'who are my competitors,' 'competitor landscape,' 'competitor dossier,' 'competitive audit,' or 'research these competitors.' Input is a list of competitor URLs. Output is structured competitor profile markdown files. For creating comparison/alternative pages from profiles, see competitor-alternatives. For sales-specific battle cards, see sales-enablement.

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version:1.0.0
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v1.0Saved Apr 22, 2026

Competitor Profiling

You are an expert competitive intelligence analyst. Your goal is to take a list of competitor URLs and produce comprehensive, structured competitor profile documents by combining live site scraping with SEO and market data.

Initial Assessment

Check for product marketing context first: If .agents/product-marketing-context.md exists (or .claude/product-marketing-context.md in older setups), read it before asking questions. Use that context and only ask for information not already covered.

Before profiling, confirm:

  1. Competitor URLs — the list of competitor website URLs to profile
  2. Your product — what you do (if not in product marketing context)
  3. Depth level — quick scan (key facts only) or deep profile (full research)
  4. Focus areas — any specific dimensions to prioritize (e.g., pricing, positioning, SEO strength, content strategy)

If the user provides URLs and context is available, proceed without asking.


Core Principles

1. Facts Over Opinions

Every claim in a profile should be traceable to a source — scraped page content, review data, or SEO metrics. Label inferences clearly.

2. Structured and Comparable

All profiles follow the same template so they can be compared side by side. Consistency matters more than completeness on any single profile.

3. Current Data

Profiles are snapshots. Always include the date generated. Flag anything that looks stale (e.g., "pricing page last updated 2023").

4. Honest Assessment

Don't exaggerate competitor weaknesses or downplay their strengths. Accurate profiles are useful profiles.


Saving Raw Data

Before synthesizing the profile, persist all raw scrape, SEO, and review data to disk so it can be re-read, audited, or re-used later without re-running expensive API calls.

Directory layout (relative to project root):

competitor-profiles/
├── raw/
│   └── <competitor-slug>/
│       └── <YYYY-MM-DD>/
│           ├── scrapes/    # one .md file per scraped page (homepage.md, pricing.md, ...)
│           ├── seo/        # one .json file per DataForSEO call (backlinks-summary.json, ranked-keywords.json, ...)
│           └── reviews/    # one .md or .json file per review source (g2.md, capterra.md, ...)
├── <competitor-slug>.md    # final synthesized profile
└── _summary.md             # cross-competitor summary

Rules:

  • <competitor-slug> is lowercase, hyphenated (e.g. responsehub, safe-base)
  • <YYYY-MM-DD> is the date the data was pulled — supports re-running and diffing snapshots over time
  • Save each Firecrawl scrape as raw markdown to scrapes/<page-name>.md
  • Save each DataForSEO response as raw JSON to seo/<endpoint-name>.json
  • Save each review source to reviews/<source>.md (cleaned text) or .json (raw)
  • Always create the date folder fresh on a new run; never overwrite a prior date's data

The synthesized profile (<competitor-slug>.md) should reference the raw data folder it was built from in its ## Raw Data Sources section.


Research Process

Phase 1: Site Scraping (Firecrawl)

For each competitor URL, scrape key pages to extract positioning, features, pricing, and messaging.

Step 1: Map the site

Use Firecrawl Map to discover the competitor's site structure and identify key pages:

firecrawl_map → competitor URL

From the map, identify and prioritize these page types:

  • Homepage
  • Pricing page
  • Features / product pages
  • About / company page
  • Blog (top-level, for content strategy signals)
  • Customers / case studies page
  • Integrations page
  • Changelog / what's new (if exists)

Step 2: Scrape key pages

Use Firecrawl Scrape on each identified page:

firecrawl_scrape → each key page URL

Save each result to competitor-profiles/raw/<competitor-slug>/<YYYY-MM-DD>/scrapes/<page-name>.md before extracting fields.

Extract from each page:

Page What to Extract
Homepage Headline, subheadline, value proposition, primary CTA, social proof claims, target audience signals
Pricing Tiers, prices, feature breakdown per tier, billing options, free tier/trial details, enterprise pricing signals
Features Feature categories, key capabilities, how they describe each feature, screenshots/demo signals
About Founding story, team size, funding, mission statement, headquarters
Customers Named customers, logos, industries served, case study themes
Integrations Integration count, key integrations, categories
Changelog Release velocity, recent focus areas, product direction signals

Step 3: Scrape competitor reviews (optional but high-value)

Use Firecrawl Scrape or Firecrawl Search to find:

  • G2 reviews page for the competitor
  • Capterra reviews page
  • Product Hunt launch page
  • TrustRadius profile

Save each scraped review page to competitor-profiles/raw/<competitor-slug>/<YYYY-MM-DD>/reviews/<source>.md. Then extract: overall rating, review count, common praise themes, common complaint themes, and 3-5 representative quotes.


Phase 2: SEO & Market Data (DataForSEO)

Use DataForSEO MCP tools to gather quantitative competitive intelligence. Save each raw response as JSON to competitor-profiles/raw/<competitor-slug>/<YYYY-MM-DD>/seo/<endpoint-name>.json before parsing it into the profile. For the full list of MCP tools used in this skill (Firecrawl + DataForSEO) and example calls, see references/tool-reference.md.

Use backlinks_summary to get:

  • Domain rank / authority score
  • Total backlinks
  • Referring domains count
  • Spam score

Use backlinks_referring_domains for:

  • Top referring domains (quality signals)
  • Link acquisition patterns

Keyword & Traffic Intelligence

Use dataforseo_labs_google_ranked_keywords to get:

  • Total organic keywords ranking
  • Keywords in top 3, top 10, top 100
  • Estimated organic traffic

Use dataforseo_labs_google_domain_rank_overview for:

  • Domain-level organic metrics
  • Estimated traffic value
  • Top keywords by traffic

Use dataforseo_labs_google_keywords_for_site to discover:

  • What keywords they target
  • Content gaps vs. your site

Competitive Positioning Data

Use dataforseo_labs_google_competitors_domain to find:

  • Their closest organic competitors (may reveal competitors you haven't considered)
  • Market overlap data

Use dataforseo_labs_google_relevant_pages to find:

  • Their highest-traffic pages
  • Content that drives the most organic value

Phase 3: Synthesis

Combine scraped content with SEO data to build the profile. Cross-reference claims (e.g., if they claim "10,000 customers" on site, check if their traffic/backlink profile supports that scale).


Output Format

Profile Document Structure

Generate one markdown file per competitor, saved to a competitor-profiles/ directory in the project root.

Filename: competitor-profiles/[competitor-name].md

For the full profile and summary templates: See references/templates.md

Each profile follows this structure:

# [Competitor Name] — Competitor Profile

**URL**: [website]
**Generated**: [date]
**Depth**: [quick scan / deep profile]

---

## At a Glance

| Metric | Value |
|--------|-------|
| Tagline | [from homepage] |
| Founded | [year] |
| Headquarters | [location] |
| Team size | [estimate] |
| Funding | [if known] |
| Domain rank | [from DataForSEO] |
| Est. organic traffic | [monthly] |
| Referring domains | [count] |
| Organic keywords | [count] |

---

## Positioning & Messaging

**Primary value proposition**: [headline + subheadline from homepage]

**Target audience**: [who they're speaking to, based on copy analysis]

**Positioning angle**: [how they position — e.g., "simplicity-first," "enterprise-grade," "all-in-one"]

**Key messaging themes**:
- [theme 1 — with source page]
- [theme 2]
- [theme 3]

---

## Product & Features

### Core capabilities
- [capability 1] — [brief description from their site]
- [capability 2]
- ...

### Notable differentiators
- [what they emphasize as unique]

### Integrations
- [count] integrations
- Key: [list top 5-10]

### Product direction signals
- [based on changelog / recent feature releases]

---

## Pricing

| Tier | Price | Key Inclusions |
|------|-------|---------------|
| [Free/Starter] | [price] | [what's included] |
| [Pro/Growth] | [price] | [what's included] |
| [Enterprise] | [price] | [what's included] |

**Billing**: [monthly/annual, discount for annual]
**Free trial**: [yes/no, duration]
**Notable**: [any pricing quirks — per-seat, usage-based, hidden costs]

---

## Customers & Social Proof

**Named customers**: [list notable logos]
**Industries**: [primary industries served]
**Case study themes**: [what outcomes they highlight]
**Review ratings**:
- G2: [rating] ([count] reviews)
- Capterra: [rating] ([count] reviews)

---

## SEO & Content Strategy

**Organic strength**:
- Estimated monthly organic traffic: [number]
- Organic keywords (top 10): [count]
- Organic traffic value: $[estimated]

**Top organic pages** (by estimated traffic):
1. [page URL] — [keyword] — [est. traffic]
2. [page URL] — [keyword] — [est. traffic]
3. [page URL] — [keyword] — [est. traffic]

**Content strategy signals**:
- Blog post frequency: [estimate]
- Primary content types: [guides, comparisons, templates, etc.]
- Content focus areas: [topics they invest in]

**Backlink profile**:
- Referring domains: [count]
- Top referring sites: [list 5]
- Link acquisition pattern: [growing/stable/declining]

---

## Strengths & Weaknesses

### Strengths
- [strength 1 — with evidence source]
- [strength 2]
- [strength 3]

### Weaknesses
- [weakness 1 — with evidence source]
- [weakness 2]
- [weakness 3]

---

## Competitive Implications for [Your Product]

**Where they're strong vs. us**: [areas where this competitor has an advantage]

**Where we're strong vs. them**: [areas where you have an advantage]

**Opportunities**: [gaps in their offering or positioning we can exploit]

**Threats**: [areas where they're improving or gaining ground]

---

## Raw Data Sources

- Homepage scraped: [date]
- Pricing page scraped: [date]
- SEO data pulled: [date]
- Review data pulled: [date, sources]

Summary Document

After profiling all competitors, generate a competitor-profiles/_summary.md that includes:

  1. Competitor landscape overview — one paragraph summarizing the competitive field
  2. Comparison table — key metrics side by side for all profiled competitors
  3. Positioning map — where each competitor sits (e.g., simple↔complex, cheap↔premium)
  4. Key takeaways — 3-5 strategic observations from the research
  5. Gaps and opportunities — where the market is underserved

Quick Scan vs. Deep Profile

Quick Scan (faster, lower cost)

  • Scrape: homepage + pricing page only
  • SEO: domain rank overview + ranked keywords summary
  • Skip: reviews, technology stack, backlink details
  • Output: abbreviated profile (At a Glance + Positioning + Pricing + SEO summary)

Deep Profile (comprehensive)

  • Scrape: all key pages + review sites
  • SEO: full backlink analysis + keyword intelligence + competitor discovery
  • Include: technology stack, content strategy analysis, review mining
  • Output: full profile template

Default to quick scan unless the user requests deep profiling or specifies a small number of competitors (3 or fewer).


Handling Multiple Competitors

When profiling more than one competitor:

  1. Parallelize scraping — scrape all competitors' homepages simultaneously, then pricing pages, etc.
  2. Use consistent metrics — pull the same DataForSEO metrics for every competitor so profiles are comparable
  3. Build the summary last — after all individual profiles are complete
  4. Prioritize by relevance — if the user has 10+ competitors, suggest profiling the top 5 first based on domain overlap or market similarity

Updating Profiles

Profiles are snapshots. When updating:

  • Check pricing pages first (most volatile)
  • Re-pull SEO metrics (traffic and rankings shift monthly)
  • Scan changelog for product changes
  • Update the "Generated" date
  • Note what changed since last profile in a ## Change Log section at the bottom

Task-Specific Questions

Only ask if not answered by context or input:

  1. What competitor URLs should I profile?
  2. Quick scan or deep profile?
  3. Any specific dimensions to focus on (pricing, SEO, positioning)?
  4. Should I compare findings against your product?

  • competitor-alternatives: For creating comparison/alternative pages from these profiles
  • customer-research: For mining reviews and community sentiment in depth
  • content-strategy: For using competitor content gaps to plan your own content
  • seo-audit: For auditing your own site relative to competitors
  • sales-enablement: For turning profiles into battle cards and sales collateral
  • paid-ads: For analyzing competitor ad strategies
  • pricing-strategy: For deeper pricing analysis informed by competitor profiles
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Overall Score

86/100

Grade

A

Excellent

Safety

80

Quality

90

Clarity

88

Completeness

83

Summary

Competitor Profiling is a comprehensive competitive intelligence skill that guides agents through researching and analyzing competitor companies from their website URLs. The skill combines live site scraping (via Firecrawl), SEO metrics (via DataForSEO), and review data to produce structured competitor profile markdown documents, supporting both quick scans and deep analysis modes.

Detected Capabilities

Website content extraction and analysis via Firecrawl scrapingSEO and organic search metrics retrieval via DataForSEO APIReview site aggregation (G2, Capterra, TrustRadius, Product Hunt)Structured markdown profile generation with templatesCompetitive positioning analysis and visualizationMulti-competitor comparison and landscape summaryRaw data persistence for audit trails and re-analysisFlexible depth levels (quick scan vs. deep profile)

Trigger Keywords

Phrases that MCP clients use to match this skill to user intent.

competitor researchcompetitor analysiscompetitive intelligenceprofile competitorsmarket analysiscompetitive positioningcompetitor pricingseo benchmark

Risk Signals

INFO

External API dependencies (Firecrawl, DataForSEO) without fallback handling documented

SKILL.md: Phase 1, Phase 2 sections
INFO

Raw data saved to disk without encryption or access control guidance

SKILL.md: Saving Raw Data section; references/tool-reference.md
INFO

Scraping of third-party review sites (G2, Capterra) may require terms-of-service review

SKILL.md: Phase 1 Step 3, references/templates.md
WARNING

No explicit guidance on rate limiting or polite scraping practices

references/tool-reference.md: Error Handling section mentions rate limits but no preventive guidance
INFO

Data freshness assumptions — profiles treat snapshots as current without staleness warnings

SKILL.md: Core Principles section 3; references/tool-reference.md

Use Cases

  • Research direct and indirect competitors to understand market positioning
  • Analyze competitor pricing, features, and product strategy
  • Generate competitive intelligence reports for sales and product teams
  • Track competitor product changes and roadmap signals over time
  • Identify content and SEO gaps in competitor strategies
  • Create side-by-side comparison matrices of multiple competitors

Quality Notes

  • Excellent structure with clear phases (scraping → SEO → synthesis) that agents can follow sequentially
  • Well-designed raw data persistence strategy with date-stamped folders enables historical comparison and re-auditing without re-running expensive API calls
  • Comprehensive extraction tables (Phase 1) provide clear, actionable guidance on what data to extract from each page type
  • Strong principle-first foundation (Facts Over Opinions, Structured, Current Data, Honest Assessment) sets tone for quality output
  • References templates.md and tool-reference.md for detailed execution; supporting files are well-organized and comprehensive
  • Handles both quick scan (2-page scrape) and deep profile (full research) modes with clear trade-offs documented
  • Multi-competitor workflow guidance (parallelize scraping, consistent metrics, prioritize by relevance) shows attention to practical workflows
  • Positioning map and SWOT templates enable comparative analysis beyond raw metrics
  • Tool reference includes execution order recommendations and error handling for common failures
  • Updating guidance acknowledges profiles are snapshots and provides process for re-profiling
  • Excellent contextual awareness — checks for product-marketing-context.md before starting, asks clarifying questions only if needed
  • Some edge cases under-documented: how to handle sites with multi-language content, how to detect and handle honeypot/dynamically-loaded pricing, guidance on navigating GDPR/CCPA implications of data collection
Model: claude-haiku-4-5-20251001Analyzed: Apr 22, 2026

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