finance/wealth-management/client-review/SKILL.md
# Client Review Prep description: Prepare for client review meetings with portfolio performance summary, allocation analysis, talking points, and action items. Pulls together account data into a concise meeting-ready format. Use before quarterly reviews, annual checkups, or ad-hoc client meetings. Triggers on "client review", "meeting prep for [client]", "quarterly review", "prep for [client name]", or "client meeting". ## Workflow ### Step 1: Client Context Gather or look up: - **Client nam
npx skillsauth add harsh040506/claude-code-unified-skill-plugin-library finance/wealth-management/client-reviewInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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description: Prepare for client review meetings with portfolio performance summary, allocation analysis, talking points, and action items. Pulls together account data into a concise meeting-ready format. Use before quarterly reviews, annual checkups, or ad-hoc client meetings. Triggers on "client review", "meeting prep for [client]", "quarterly review", "prep for [client name]", or "client meeting".
Gather or look up:
For each account and the household aggregate:
| Metric | QTD | YTD | 1-Year | 3-Year | Since Inception | |--------|-----|-----|--------|--------|----------------| | Portfolio return | | | | | | | Benchmark return | | | | | | | Alpha | | | | | |
Performance Attribution:
Current vs. target allocation:
| Asset Class | Target | Current | Drift | Action | |------------|--------|---------|-------|--------| | US Large Cap | | | | | | US Mid/Small | | | | | | International Developed | | | | | | Emerging Markets | | | | | | Fixed Income | | | | | | Alternatives | | | | | | Cash | | | | |
Flag any drift exceeding the IPS rebalancing threshold (typically 3-5%).
Generate a meeting agenda:
Based on the review, suggest:
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