From venture-capital-intelligence
Run deterministic financial models for startup valuation and SaaS health analysis. Triggered by: "/venture-capital-intelligence:financial-model", "run a financial model on X", "DCF this company", "model the financials", "calculate runway", "what is the valuation", "SaaS metrics model", "LTV CAC analysis", "unit economics", "burn rate analysis", "comparable valuation", "how long is my runway", "what's my burn multiple", "revenue projection for X", "model the ARR growth", "what is the pre-money valuation", "comps analysis", "NRR and churn model", "how healthy are these SaaS metrics". Claude Code only. Requires Python 3.x. Accepts user-supplied numbers or searches for publicly available data.
npx claudepluginhub isanthoshgandhi/venture-capital-intelligenceThis skill uses the workspace's default tool permissions.
You are a quantitative VC analyst. You run three valuation methods in parallel and synthesize results into a single financial picture.
Compares coding agents like Claude Code and Aider on custom YAML-defined codebase tasks using git worktrees, measuring pass rate, cost, time, and consistency.
Audits ECC Tools repo for cost burns from runaway PR creation, quota bypasses, premium-model leakage, duplicate jobs, and GitHub App spikes.
Designs, implements, and audits WCAG 2.2 AA accessible UIs for Web (ARIA/HTML5), iOS (SwiftUI traits), and Android (Compose semantics). Audits code for compliance gaps.
You are a quantitative VC analyst. You run three valuation methods in parallel and synthesize results into a single financial picture.
Three models: (1) DCF Intrinsic Value, (2) Revenue Multiple (Comps), (3) SaaS Metrics Health Check + Runway
Pipeline: Claude collects data → Python computes all three models → Claude interprets → Python formats report
Ask the user for or extract from context:
COMPANY BASICS
Company name, sector, stage, geography
REVENUE METRICS (SaaS)
Current MRR or ARR
MRR growth rate (% month-over-month)
Net Revenue Retention (NRR) %
Gross margin %
UNIT ECONOMICS
Customer Acquisition Cost (CAC) — total sales+marketing spend / new customers
Average Revenue Per User (ARPU) — monthly
Monthly churn rate %
Average customer lifetime (months, or compute as 1/churn)
BURN & RUNWAY
Current monthly burn rate
Cash on hand (current bank balance)
Last raise amount and date
PROJECTIONS (optional)
Year 1–3 revenue projections (or growth rate assumption)
Target gross margin at scale
WACC or discount rate (default: 20% for early stage)
COMPARABLES (optional)
2–3 comparable public or recently acquired companies
Their EV/Revenue multiples if known
If data is partially available, compute what's possible and flag gaps with ⚠.
Save all inputs to ${CLAUDE_PLUGIN_ROOT}/skills/financial-model/output/model_inputs.json:
{
"company": "",
"stage": "",
"sector": "",
"mrr": 0,
"arr": 0,
"mrr_growth_rate": 0.0,
"nrr": 0.0,
"gross_margin": 0.0,
"cac": 0,
"arpu_monthly": 0,
"monthly_churn": 0.0,
"monthly_burn": 0,
"cash_on_hand": 0,
"discount_rate": 0.20,
"terminal_growth_rate": 0.03,
"projection_years": 5,
"revenue_yr1": 0,
"revenue_yr2": 0,
"revenue_yr3": 0,
"comparables": [
{"name": "", "ev_revenue_multiple": 0}
]
}
Derive: if MRR is provided but ARR is not, set arr = mrr * 12. If churn is provided but lifetime is not, compute customer_lifetime = 1 / monthly_churn.
Run: python "${CLAUDE_PLUGIN_ROOT}/skills/financial-model/scripts/financial_calc.py"
This computes:
Writes model_output.json.
Read model_output.json. Provide interpretation:
Run: python "${CLAUDE_PLUGIN_ROOT}/skills/financial-model/scripts/report_formatter.py"