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From private-equity
Scans a portfolio of companies for high-leverage AI opportunities, ranks quick wins, and produces a single action list. Use during quarterly reviews, annual planning, or when deciding which portcos get AI investment first.
npx claudepluginhub anthropics/financial-services --plugin private-equityHow this skill is triggered — by the user, by Claude, or both
Slash command
/private-equity:ai-readinessThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
description: Scan the portfolio for the highest-leverage AI opportunities and rank where to deploy operating-partner time. Ingests quarterly updates and financials across multiple portfolio companies, identifies quick wins at each, and stacks them into a single ranked action list. Use during quarterly portfolio reviews, annual planning, or when deciding which companies get AI investment first. ...
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Share bugs, ideas, or general feedback.
description: Scan the portfolio for the highest-leverage AI opportunities and rank where to deploy operating-partner time. Ingests quarterly updates and financials across multiple portfolio companies, identifies quick wins at each, and stacks them into a single ranked action list. Use during quarterly portfolio reviews, annual planning, or when deciding which companies get AI investment first. Triggers on "AI readiness", "AI opportunity scan", "where should we deploy AI", "AI across the portfolio", "AI quick wins", or "which portcos are ready for AI".
First, ask the user where the portfolio materials live. Don't assume — offer the options:
Once connected, pull quarterly updates, board decks, and financials for the portfolio (or a subset). For each company, extract: sector, revenue, headcount by function, tech stack mentioned, and any AI/automation initiatives already in flight.
If the user provides a single company, still run the scan but skip the cross-portfolio ranking.
Ask up front if not obvious from materials:
For each company, answer three gate questions. All three yes → Go. Any no → Wait with a note on what unblocks it.
Then identify the top 2-3 leverage points. Look for these patterns in the cost structure and operations:
Back Office (usually fastest to pilot)
Revenue / Front Office
Operations (sector-dependent)
For each leverage point, capture in one line: what it replaces, FTE-hours/week saved (assume 30-50%, not 100%), and whether it's buy-off-the-shelf or needs a light build.
Stack every leverage point from every company into one list. Rank by:
Tiebreaker: favor opportunities with <18 months of hold period remaining — those need to move now or not at all.
Output the stack:
| Rank | Company | Opportunity | Est. EBITDA ($) | Months to Value | Gate | First Step |
|---|---|---|---|---|---|---|
| 1 | Go | |||||
| 2 | Go | |||||
| 3 | Wait — [blocker] |
The highest-leverage move in a portfolio is running one successful play at multiple companies. Scan for:
List each replay with the lead company (who proves it) and follower companies (who copy it).
One page for the operating partner, structured for a portfolio review: