SKILL·228025

company-intel

deanpeters
Updated 12 days ago
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Metageneral

About

The company-intel skill researches companies, industries, or competitors using web search and seven structured analytical lenses. It produces stable, structured outputs for downstream tasks like battlecards and SWOT analyses. Developers should use it when they need foundational market intelligence to feed other product management workflows.

Quick Install

Claude Code

Recommended
Primary
npx skills add deanpeters/Product-Manager-Skills -a claude-code
Plugin CommandAlternative
/plugin add https://github.com/deanpeters/Product-Manager-Skills
Git CloneAlternative
git clone https://github.com/deanpeters/Product-Manager-Skills.git ~/.claude/skills/company-intel

Copy and paste this command in Claude Code to install this skill

Documentation

Purpose

Research engine that builds deep, structured understanding of companies, industries, and competitor sets. Produces a stable output format that you can hand off to other skills and agents to generate battlecards, SWOT analyses, positioning statements, PESTEL assessments, market sizing, and workshop content.

This is not a generic encyclopedia lookup. Every section pushes toward commercial understanding, product implications, and actionable intelligence. The output is a research primitive — structured data other skills consume — not a final deliverable.

Key Concepts

Four Entry Points

The skill auto-detects entry point from the user's input. If ambiguous, ask one clarifying question: "Is this about a specific company, an industry, or a set of competitors?"

Single Company — User names a company (e.g., "Parker Hannifin," "Novo Nordisk"). Produce the full 11-section output for that company.

Industry/Sector — User names an industry, sector, or niche (e.g., "clinical data management," "embedded finance," "upstream oil and gas"). Establish broad industry context, narrow into the segment, and connect findings to PM implications. Use the same 11-section structure adapted for sector-level analysis.

Named Competitor Set — User names 2-5 companies (e.g., "Compare Emerson, Honeywell, and Parker Hannifin"). Produce individual 11-section outputs for each company, then add a Section 12: Cross-Company Comparison that synthesizes across the set.

Discover Competitors — User names a company plus the word "competitors" (e.g., "productside.com competitors" or "Parker Hannifin competitors"). The skill:

  1. Researches the named company first — enough to understand what it does, who it serves, and what market it plays in (a lightweight pass through Lenses 1-4)
  2. Identifies 3-5 likely competitors based on that research, citing why each is a competitor (direct, adjacent, substitute, or emerging disruptor)
  3. Presents the list for confirmation: "Based on my research, [Company]'s closest competitors appear to be [A, B, C, D, E]. Want me to run the full competitor set on these, or adjust the list first?"
  4. Once confirmed, proceeds with the Named Competitor Set flow — full 11-section output for each company plus Section 12 cross-company comparison

The user can also provide a URL instead of a company name (e.g., "productside.com"). The skill should resolve the URL to the company, research accordingly, and proceed.


Seven Research Lenses

These lenses structure all analysis. Apply every lens to every entry point.

Lens 1 — Financial Landscape and Business Outcomes How the entity makes money. Major revenue streams and cost drivers, margin pressures, growth levers, retention and expansion dynamics, capital intensity, seasonal or cyclical patterns, major risks to performance.

Lens 2 — Market Offer and Business Model How the entity creates and captures value. Target markets, buyers, users, influencers, administrators, and blockers. How segments differ. Multi-sided or multi-stakeholder dynamics.

Lens 3 — Product Portfolio and Product Outcomes Major offers, product families, services, platforms, channels. Bundled solutions, ecosystem plays. Digital versus human-assisted components. Legacy versus emerging offers. Distinction between business line, offer, product, feature set, service layer, and enabling platform.

Lens 4 — Competitive Dynamics Direct competitors, adjacent competitors, substitutes, emerging disruptors. Where differentiation is won or lost.

Lens 5 — Rising Trends and Strategic Concerns Market trends, regulatory forces, technology shifts (especially AI and automation), operational constraints, buyer expectation changes, threats from consolidation or commoditization.

Lens 6 — How Product Management Works Here Product-led vs sales-led vs service-led behavior. Centralized vs federated product structures. Platform vs solution orientation. Roadmap and innovation posture. Compliance or governance overhead. Discovery maturity, data maturity, experimentation maturity, AI maturity. Cross-functional friction. Label inferences clearly.

Lens 7 — Strategic Signals Three signal types — always check all three:

  • Patent activity: Recent filings and grants via patent databases. Technology domains, R&D clusters, gaps between patent activity and public product narrative.
  • Hiring signals: Roles open in volume, skills and tools in job descriptions, seniority being hired, language that reveals product culture (discovery, outcomes, AI-native, regulatory, experimentation).
  • Leadership changes: C-suite and product leadership arrivals or departures in the last 12-18 months. Origin of new leaders (platform companies, consulting, competitors). New CPO, CTO, or CDO roles created, eliminated, or restructured. Board-level changes.

Key Distinctions to Maintain

Always be disciplined about these — collapsing them produces shallow analysis:

  • market vs segment
  • buyer vs user
  • product vs service
  • business outcome vs product outcome vs output
  • strategy vs tactics
  • discovery vs delivery
  • platform vs application
  • signal vs assumption
  • revenue growth vs market share growth vs customer lifetime value improvement vs cost reduction

Tensions Worth Surfacing

Highlight conflicts and tradeoffs wherever they appear:

  • growth vs compliance
  • scale vs customization
  • digital self-service vs high-touch service
  • standardization vs domain-specific workflow
  • innovation vs legacy burden
  • AI ambition vs governance reality
  • customer value vs internal efficiency
  • short-term revenue vs long-term platform investment

Why This Works

  • Web-grounded: Uses live search, not training-data recall — output includes citations
  • PM-native: Every section connects to product management implications, not just business facts
  • Composable: Stable output format that downstream skills can parse and consume
  • Repeatable: Same input next quarter produces fresh intel — the delta is the story
  • Signal-driven: Strategic signals (patents, hiring, leadership) are often the most honest data available — they reveal what a company is actually doing, not what it says it's doing

Anti-Patterns

  • Not a Wikipedia summary: Push past "what they do" to "what this means for product decisions"
  • Not financial analysis: Focus is product strategy and commercial dynamics, not valuation or stock picks
  • Not a prompt generator: The output is actual research with citations, not prompts for a future session
  • Not a one-time exercise: Design for quarterly refresh — run it again, compare the delta

Research Expectations

Use web search actively. This skill requires live data gathering, not recall from training data. Search for and cite:

  • Investor relations materials, annual reports, earnings transcripts
  • Company product pages and official strategy pages
  • Regulatory disclosures and filings
  • Patent databases (Google Patents, USPTO)
  • Company careers pages and job aggregators (LinkedIn, Indeed, Glassdoor)
  • Executive appointment announcements and leadership change coverage
  • Industry analysts (Gartner, Forrester, IDC) and reputable news coverage

Cite sources. Every factual claim should include a source. Separate fact from inference. When you're inferring — especially on Lens 6 (PM culture) and Lens 7 (strategic signals) — label it clearly: "Inference based on [evidence]."

Recency matters. Prioritize sources from the last 12-24 months. Flag anything older.

Application

Step 1: Detect Entry Point

Determine from user input:

  • Single company → proceed to Step 2 with one entity
  • Industry/sector → proceed to Step 2, adapt sections for sector-level analysis
  • Named competitor set (2-5 companies listed) → proceed to Step 2 for each company, then Step 3
  • Discover competitors (one company + "competitors") → proceed to Step 1b, then Step 2 for each, then Step 3
  • URL provided (e.g., "productside.com") → resolve to company name, then detect entry point from any additional context

If ambiguous, ask one question: "Is this about a specific company, an industry, or a set of competitors?"

If the user provides additional context (e.g., "I'm preparing for a client engagement with them" or "we compete with them in the SMB segment"), use that context to weight which lenses get deeper treatment.


Step 1b: Discover Competitors (when entry point is "discover competitors")

  1. Research the named company using web search. Do a lightweight pass through Lenses 1-4 — enough to understand what the company does, who it serves, what market it plays in, and how it creates value.

  2. Identify 3-5 likely competitors based on that research. For each, state:

    • Company name
    • Why it's a competitor (direct, adjacent, substitute, or emerging disruptor)
    • One-sentence description of how it competes
  3. Present the list for confirmation:

    "Based on my research, [Company] is [brief description — what it does and who it serves].

    Its closest competitors appear to be:

    1. [Competitor A] — [relationship: direct/adjacent/substitute/disruptor]. [Why.]
    2. [Competitor B] — [relationship]. [Why.]
    3. [Competitor C] — [relationship]. [Why.]
    4. [Competitor D] — [relationship]. [Why.]
    5. [Competitor E] — [relationship]. [Why.]

    Want me to run the full competitor set analysis on these? You can also add, remove, or swap any before I proceed."

  4. Once confirmed, proceed to Step 2 for each company (including the original), then Step 3 (cross-company comparison).


Step 2: Research and Produce Output

Use web search to gather data across all seven lenses. Produce the following 11-section output:

## 1. What This Entity Is
[Business definition, founding, market position, scale. What makes it distinct.]

## 2. How It Makes Money
[Revenue streams, cost structure, margin dynamics, financial logic.
Seasonal or cyclical patterns. Growth levers and risks.]

## 3. Who It Serves
[Buyers, users, influencers, administrators, blockers.
Segment differences. Multi-stakeholder complexity.]

## 4. What It Sells or Delivers
[Core value propositions. Key offers in plain language.
How the offer creates value for the customer.]

## 5. Key Product Lines or Offers
[Mapped by product family, platform, service, channel.
Digital vs human-assisted. Legacy vs emerging.
Distinguish: business line, offer, product, feature set,
service layer, enabling platform.]

## 6. Business and Market Pressures
[Competitive forces, regulatory pressure, technology shifts,
operational constraints. Name the tensions.]

## 7. Competitors and Alternatives
[Direct competitors, adjacent competitors, substitutes,
emerging disruptors. Where differentiation is won or lost.]

## 8. Important Trends and Risks
[Macro forces, buyer expectation shifts, AI and automation impact,
consolidation or commoditization threats.]

## 9. Strategic Signals
[Patent activity: recent filings, technology domains, R&D bets.
Hiring signals: volume roles, skills language, seniority patterns.
Leadership changes: arrivals, departures, origins, new roles created.
Include sources for each signal.]

## 10. What This Means for Product Management
[PM implications: org dynamics, discovery maturity, delivery model,
cross-functional friction, AI readiness. Product-led vs sales-led.
Likely PM challenges. Domain-specific skills PMs would need.
Label inferences.]

## 11. Sources and Confidence
[List all sources used, organized by section.
Flag assumptions and inferences explicitly.
Note any sections where data was thin or unavailable.]

Quality checks for every section:

  • Does it push past description to implication?
  • Does it name specific tensions, not just facts?
  • Are sources cited?
  • Is inference labeled?

Step 3: Cross-Company Comparison (Competitor Set Only)

When the entry point is a competitor set, produce individual Section 1-11 outputs for each company, then add:

## 12. Cross-Company Comparison

### Where They're Betting Differently
[Patent clusters, hiring patterns, leadership hires that diverge.
Which companies are investing in AI, which in services,
which in platform plays.]

### Where They're Converging
[Same platform moves, same market pivots, same talent profiles.
When everyone zigs together, that's table stakes — not differentiation.]

### Gaps and White Space
[What none of them are covering. Segments underserved.
Capabilities nobody is building. Buyer needs unaddressed.]

### Tensions That Play Out Differently
[e.g., Company A chose scale over customization;
Company B chose the opposite. Who's winning, and for whom?]

### PM Implications Across the Set
[What a PM at each company would face differently.
Which org is better set up for discovery?
Which is most constrained by legacy?]

Step 4: Handoff Menu

After producing the output, offer the user a handoff menu. Each option names what gets built and which skill or agent consumes the research:

"Your research is ready. What do you want to build from it?

  1. Competitive battlecard — I'll structure a head-to-head comparison for your sales or strategy team
  2. SWOT analysis — I'll run strengths, weaknesses, opportunities, and threats using the research as input
  3. Positioning statement — Use positioning-statement skill with this company/market context loaded
  4. PESTEL assessment — Use pestel-analysis skill with the trends and pressures from Sections 6 and 8
  5. Market sizing (TAM/SAM/SOM) — Use tam-sam-som-calculator skill with the market and segment data from Sections 2-3
  6. Research prompts for deeper investigation — Generate 3-5 targeted research prompts per lens for a follow-up session
  7. PM briefing memo — Condense the 11 sections into a 1-page executive summary for a PM audience
  8. Workshop discussion guide — Extract teachable tensions and case study angles for training use

Select a number, combine them (e.g., '1 and 4'), or describe what you need."


Rerun Pattern

When the user reruns the skill on a previously researched entity:

  • Focus web search on recent developments (last 90 days)
  • Lead the output with a "What's Changed" summary before the full 11 sections
  • In Section 9 (Strategic Signals), highlight delta from prior run: new hires, new patents, leadership moves
  • Flag sections where nothing material changed: "No significant change since [prior date]"

The user does not need to say "refresh" — if the agent has prior output in context, it should default to delta-first reporting.

Examples

Example: Single Company — Parker Hannifin

Trigger: "Run company-intel on Parker Hannifin"

Entry point: Single Company

Section 1 excerpt: Parker Hannifin is a Fortune 250 diversified industrial manufacturer headquartered in Cleveland, Ohio, specializing in motion and control technologies. Founded in 1917, it operates across two segments: Diversified Industrial (~85% of revenue) and Aerospace Systems (~15%). The 2023 acquisition of Meggitt for $8.8B significantly expanded its aerospace portfolio.

Section 9 excerpt:

  • Patents: Clustering in electro-hydraulic controls and hydrogen fuel cell components. R&D investment in electrification outpacing public product announcements — signals a bet on industrial decarbonization. (Source: Google Patents, 2024-2025 filings)
  • Hiring: Volume hiring for "digital twin" engineers and IoT platform architects in the Diversified Industrial segment. Job descriptions reference AWS IoT and Azure Digital Twins. (Source: LinkedIn, Indeed — June 2026)
  • Leadership: New VP of Digital Transformation hired from Rockwell Automation (2025). New Group President for Engineered Materials from Honeywell (2024). Pattern: importing talent from platform-oriented industrials. (Source: company press releases)

Section 10 excerpt: PMs at Parker face the classic industrial tension: long product lifecycles (10-20 years) vs. pressure to digitize and create recurring-revenue service layers. Product management is historically engineering-led, not customer-led. Discovery is constrained by the fact that customers (OEMs, utilities, defense contractors) have long procurement cycles and low tolerance for experimentation. The hiring signals suggest a push toward platform thinking, but the org structure (segment-based P&Ls) creates incentives to optimize locally rather than build horizontal platforms. Inference: the digital twin hiring is likely ahead of organizational readiness to consume it.


Example: Competitor Set — Industrial Motion Control

Trigger: "Compare Parker Hannifin, Emerson Electric, and Honeywell on company-intel"

Entry point: Competitor Set (3 companies)

Section 12 excerpt (Cross-Company Comparison):

Where They're Betting Differently:

  • Parker is investing heavily in electrification and hydrogen (patent evidence). Emerson is betting on software-defined automation (Aspen Technology acquisition). Honeywell is splitting into three companies and doubling down on aerospace autonomy.

Gaps and White Space:

  • None of the three have a credible PLG motion for their digital products — all rely on enterprise sales. A startup that cracks self-serve industrial IoT tooling could undercut all three on adoption speed.

PM Implications Across the Set:

  • Parker PM = engineer-first, platform-curious but segment-siloed
  • Emerson PM = software-led post-AspenTech, navigating legacy OT culture
  • Honeywell PM = post-split identity crisis, aerospace PMs and industrial PMs now in different companies

Anti-Pattern Example

Weak: "Parker Hannifin makes industrial equipment and has strong financials."

Strong: Identifies the tension between Parker's motion-and-control platform business (recurring revenue, long service cycles) and its push into intelligent manufacturing and IIoT — and explains why that tension creates specific PM challenges around build-vs-partner decisions, aftermarket monetization, and the pace of digital product adoption in asset-intensive industries.

Common Pitfalls

Pitfall 1: Surface-Level Description Without Implications

Symptom: Summary reads like a Wikipedia article or press release. Consequence: No actionable intelligence. Downstream skills get nothing useful. Fix: Push every section toward "what does this mean for product decisions?" If a fact doesn't connect to a tension, tradeoff, or PM implication, it's not pulling its weight.

Pitfall 2: Skipping Strategic Signals

Symptom: Analysis draws only from press releases and About pages. Sections 1-8 are solid; Section 9 is empty or generic. Consequence: You're seeing what the company says it's doing, not what it's actually doing. Patents, hiring, and leadership changes are often the most honest signals available. Fix: Always search patents, hiring, and leadership as a required step — even if the results are thin. "No significant patent activity found" is a signal too.

Pitfall 3: Confusing Outputs With Outcomes

Symptom: Listing features or products without explaining what results they produce for customers or the business. Consequence: Section 5 becomes a product catalog instead of strategic intelligence. Fix: For every offer, answer: what problem does it solve, for whom, what outcome does it improve, and what behavioral change does it create?

Pitfall 4: No Citations

Symptom: "The CEO said the company is focused on AI." No source, no date, no context. Consequence: Unverifiable claims. Downstream consumers can't trust the research. Fix: Cite source and date. "CEO Jane Doe stated X in Q1 2026 earnings call (Source: Seeking Alpha transcript, Feb 2026)."

Pitfall 5: Treating All Industries as Identical

Symptom: Generic PM frameworks applied without domain calibration. "They should do more discovery" without acknowledging that discovery in defense contracting looks nothing like discovery in consumer SaaS. Consequence: Section 10 is useless to anyone who actually works in the domain. Fix: Identify what makes PM different in this specific domain — regulatory overhead, buyer/user separation, capital intensity, sales cycle length, service dependency.

Pitfall 6: One-Time Exercise, Never Refreshed

Symptom: Intel gathered once, never updated. Decisions made on 18-month-old hiring signals. Consequence: Stale intelligence is worse than no intelligence — it creates false confidence. Fix: Set a rerun cadence (quarterly for active competitors, annually for industry context). When rerunning, lead with "What's Changed."

Downstream Composition Guide

This section is for other skill authors and agent builders who want to consume company-intel output.

What This Skill Produces

A structured markdown document with 11 numbered sections (12 for competitor sets). Each section has a stable heading and defined content type:

SectionContent TypeDownstream Use
1. What This Entity IsEntity definition, scale, market positionContext setting for any downstream skill
2. How It Makes MoneyRevenue, costs, margins, financial logicbusiness-health-diagnostic, feature-investment-advisor
3. Who It ServesBuyers, users, segments, stakeholder mapproto-persona, jobs-to-be-done, positioning-statement
4. What It Sells or DeliversValue propositions, core offerspositioning-statement, battlecards
5. Key Product LinesProduct families, platforms, servicesCompetitive analysis, portfolio mapping
6. Business and Market PressuresCompetitive, regulatory, technology forcespestel-analysis, derisk-measurement-advisor
7. Competitors and AlternativesDirect, adjacent, substitutes, disruptorsBattlecards, competitive positioning
8. Important Trends and RisksMacro forces, AI impact, consolidationpestel-analysis, derisk-measurement-advisor
9. Strategic SignalsPatents, hiring, leadership changesCompetitive intelligence, trend analysis
10. What This Means for PMOrg dynamics, discovery maturity, PM challengesWorkshop content, coaching, engagement prep
11. Sources and ConfidenceCitations, assumptions, data quality flagsQuality assurance for all downstream use
12. Cross-Company ComparisonDivergence, convergence, gaps, tensionsBattlecards, SWOT, competitive strategy

How to Reference This Skill

In your skill's References section:

- **[company-intel](../company-intel/SKILL.md)** (Workflow) — Run first to generate structured company/industry research; this skill consumes Sections [X, Y, Z] as input

Passing Output to Downstream Skills

When handing off to a downstream skill, pass the relevant sections explicitly:

  • Battlecard → Sections 4, 5, 7, 9, 12
  • SWOT → Sections 2, 6, 7, 8, 9
  • Positioning → Sections 3, 4, 7
  • PESTEL → Sections 6, 8, 9
  • TAM/SAM/SOM → Sections 2, 3, 5
  • Business health → Sections 2, 5, 8
  • PM briefing → Sections 1, 5, 9, 10
  • Workshop guide → Sections 6, 9, 10 (tensions and PM implications)

References

Related Skills

Research Sources

  • Company investor relations pages — Annual reports, earnings transcripts, forward-looking statements
  • Patent databases — Google Patents, USPTO
  • Job aggregators — LinkedIn, Indeed, Glassdoor (hiring signals)
  • Industry analysts — Gartner, Forrester, IDC
  • Regulatory filings — SEC (US), Companies House (UK), relevant sector regulators
  • News coverage — Reuters, Bloomberg, industry-specific publications

Provenance

  • Adapted from Dean Peters' company-profile-executive-insights-research prompt and TAM-SAM-SOM prompt generator in the product-manager-prompts repo
  • Incorporates the Seven Research Lenses framework developed for Productside enterprise PM training

GitHub Repository

deanpeters/Product-Manager-Skills
Path: skills/company-intel
0
ai-agentsai-product-managementclaude-skillspm-frameworksproduct-management
FAQ

Frequently asked questions

What is the company-intel skill?

company-intel is a Claude Skill by deanpeters. Skills package instructions and resources that Claude loads on demand, so Claude can perform company-intel-related tasks without extra prompting.

How do I install company-intel?

Use the install commands on this page: add company-intel to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.

What category does company-intel belong to?

company-intel is in the Meta category, tagged general.

Is company-intel free to use?

Yes. company-intel is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.

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