buyer-list
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npx mdskill add anthropics/financial-services/buyer-listIdentify and prioritize potential acquirers for sell-side M&A deals.
- Maps company data to strategic and financial buyer profiles.
- Integrates market research databases and valuation analytics engines.
- Scores targets against fit criteria and synergy potential.
- Outputs ranked prospect lists with outreach readiness flags.
SKILL.md
.github/skills/buyer-listView on GitHub ↗
--- name: buyer-list description: Build and organize a universe of potential acquirers for sell-side M&A processes. Identifies strategic and financial buyers, assesses fit, and prioritizes outreach. Use when preparing for a sell-side mandate, building a buyer universe, or evaluating potential partners. Triggers on "buyer list", "buyer universe", "potential acquirers", "who would buy this", "strategic buyers", or "financial sponsors". --- # Buyer List ## Workflow ### Step 1: Understand the Target - Company description, sector, and business model - Revenue, EBITDA, and growth profile - Key assets and capabilities (IP, customer relationships, geographic footprint, team) - Expected valuation range - Seller preferences (strategic vs. financial, management continuity, timeline) ### Step 2: Strategic Buyers Identify strategic acquirers across categories: **Direct Competitors** - Companies in the same space that would gain market share - Rationale: Revenue synergies, eliminate competitor, scale **Adjacent Players** - Companies in adjacent markets that could expand into the target's space - Rationale: Product extension, cross-sell, new market entry **Vertical Integrators** - Customers or suppliers that could integrate vertically - Rationale: Supply chain control, margin capture, strategic lock-in **Platform Builders** - Large companies building a platform in the space through M&A - Rationale: Tuck-in acquisition, fill capability gap For each strategic buyer, assess: | Buyer | Sector | Revenue | Strategic Fit | Financial Capacity | M&A Track Record | Likelihood | Priority | |-------|--------|---------|--------------|-------------------|------------------|------------|----------| | | | | High/Med/Low | | Active/Moderate/None | | A/B/C | ### Step 3: Financial Sponsors Identify PE/financial buyers: **Platform Investors** - Sponsors looking for a new platform in this sector - Criteria: Fund size, sector focus, deal size range **Add-on Buyers** - Sponsors with existing portfolio companies that could acquire the target as a bolt-on - Identify the specific portfolio company and synergy rationale **Growth Equity** - For earlier-stage or high-growth targets - Minority vs. majority preference For each sponsor: | Sponsor | Fund Size | Sector Focus | Portfolio Overlap | Recent Activity | Priority | |---------|-----------|-------------|-------------------|-----------------|----------| | | | | | | A/B/C | ### Step 4: Prioritization Tier the buyer list: - **Tier 1 (5-10)**: Highest strategic fit, proven acquirers, clear rationale — contact first - **Tier 2 (10-15)**: Good fit but less obvious — contact in second wave - **Tier 3 (10-20)**: Possible but lower probability — contact if process needs broadening ### Step 5: Contact Mapping For each Tier 1 buyer: - Key decision maker (CEO, Corp Dev head, Partner) - Relationship status (existing relationship, cold outreach, need introduction) - Known preferences or constraints (size, geography, structure) - Best approach channel ### Step 6: Output - Excel workbook with: - Strategic buyers tab (sorted by tier) - Financial sponsors tab (sorted by tier) - Contact mapping for Tier 1 - Summary statistics (total buyers by tier, by type) - One-page buyer universe summary for the engagement letter or pitch ## Important Notes - Quality over quantity — a focused list of 30-40 well-researched buyers beats a list of 200 names - Research recent M&A activity — buyers who just did a deal in the space are either hungry for more or tapped out - Check for antitrust concerns with direct competitors — flag any that might face regulatory issues - Financial sponsors: check fund vintage and deployment pace — a fund nearing end of investment period may be more motivated - Always ask the seller if there are buyers they want included or excluded - Update the list as the process progresses — move buyers between tiers based on feedback
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