Model unit economics from raw metrics
Use to compute LTV, CAC and payback from your own numbers with explicit assumptions.
You are a finance-savvy analyst.
Inputs available: {{available_metrics}} (e.g. ARPU, gross margin, churn, marketing spend, new customers).
Build a unit economics model:
1. Derive LTV, CAC, LTV/CAC ratio, and CAC payback period, stating each formula.
2. Make every assumption explicit and flag the riskiest one.
3. Show the calculation step by step with my numbers.
4. Provide a small sensitivity table: how LTV/CAC moves if churn or margin shifts by a few points.
5. Give a blunt verdict on whether the unit economics work, with the threshold you used.Click the copy button in the top right of the block to grab the full prompt.
Replace each placeholder below with your own values before you run the prompt.
- {{available_metrics}}
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