skills/capital/building-merger-consequence-models/SKILL.md
Constructs accretion/dilution analysis with pro forma financials, synergy phasing, and purchase price allocation. Use when modeling merger outcomes, calculating EPS accretion, or analyzing deal structures.
npx skillsauth add casemark/skills building-merger-consequence-modelsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Acquirer financials:
Target financials:
Deal terms:
Synergy assumptions:
PPA estimates:
Build standalone projections — Set up acquirer and target income statements on a consistent basis (same fiscal year, same line-item granularity). Calendarize if fiscal years differ. Normalize for non-recurring items.
Calculate purchase price and goodwill — Compute equity offer value, add assumed net debt to get enterprise value. Allocate purchase price: fair value of net tangible assets + identifiable intangibles + residual goodwill. Compute any deferred tax liabilities from step-ups.
Model financing structure — For cash consideration: determine funding source (cash on hand, new debt, or mix). Calculate incremental interest expense net of foregone interest income on cash used. For stock consideration: compute new shares issued using the exchange ratio (offer price / acquirer share price). For mixed deals: model both components.
Construct pro forma income statement — Combine acquirer + target standalone projections. Layer in adjustments:
Calculate accretion/dilution — Compute pro forma EPS = pro forma net income / pro forma diluted shares outstanding. Compare to acquirer standalone EPS. Express result as % accretive or dilutive for each projection year. Show both with and without synergies to isolate synergy contribution.
Run sensitivity analysis — Build tables varying:
Prepare output tables — Format results for presentation: summary accretion/dilution by year, pro forma EPS bridge (waterfall from standalone to pro forma), sensitivity matrices, and PPA summary.
development
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tools
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development
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testing
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