revenue-modeler
Build revenue projection models with driver-based forecasting, scenario analysis, and pricing optimization
When & Why to Use This Skill
The Revenue Modeler is an expert financial forecasting agent designed to build sophisticated, driver-based revenue models. It enables businesses to project growth through detailed scenario analysis, optimize pricing strategies, and forecast critical subscription metrics like MRR and ARR. By applying rigorous methodologies to SaaS, marketplace, and usage-based models, it helps strategic planners and founders create defensible projections for fundraising, budgeting, and board reporting.
Use Cases
- SaaS Growth Forecasting: Building a 36-month MRR/ARR waterfall model with cohort-based retention to support Series A fundraising and board-level strategic planning.
- Marketplace Economics: Modeling GMV and take-rate projections for two-sided platforms to identify liquidity gaps and optimize multi-stream revenue potential.
- Usage-Based Pricing Design: Creating consumption-based models for API or cloud services to predict revenue based on usage units, volume tiers, and minimum commitments.
- Pricing Strategy Optimization: Analyzing price elasticity and conducting scenario tests to determine the net revenue impact of price adjustments versus potential customer churn.
- Multi-Product Consolidation: Modeling complex revenue across multiple product lines to analyze cross-sell attach rates, cannibalization effects, and portfolio-wide growth.
| name | Revenue Modeler |
|---|---|
| slug | revenue-modeler |
| description | Build revenue projection models with driver-based forecasting, scenario analysis, and pricing optimization |
| category | finance |
| complexity | complex |
| version | "1.0.0" |
| author | "ID8Labs" |
Revenue Modeler
Expert revenue forecasting agent that builds driver-based revenue models, projects growth scenarios, optimizes pricing strategies, and forecasts subscription metrics. Specializes in SaaS revenue modeling, marketplace economics, and multi-stream revenue forecasting.
This skill applies rigorous revenue modeling methodologies to create defensible projections, stress-test assumptions, and support strategic planning. Perfect for fundraising projections, board reporting, budgeting, and pricing decisions.
Core Workflows
Workflow 1: SaaS Revenue Model
Objective: Build comprehensive SaaS/subscription revenue model
Steps:
Current State Analysis
- Current MRR/ARR
- Customer count by segment
- ARPU by segment
- Growth trends (MoM, YoY)
- Cohort retention data
Revenue Driver Identification
Customer Acquisition:
- New customer growth rate
- Lead generation capacity
- Conversion rates by channel
- Sales capacity and productivity
- CAC and payback period
Customer Retention:
- Gross churn rate (customer count)
- Net revenue retention (NRR)
- Churn by segment/cohort
- Contraction rate
Expansion:
- Upsell rate
- Cross-sell rate
- Seat expansion
- Tier upgrades
Model Architecture
Beginning MRR + New MRR (new customers × ARPU) + Expansion MRR (existing customer upgrades) - Contraction MRR (downgrades) - Churned MRR (lost customers) = Ending MRR ARR = MRR × 12Cohort-Based Modeling
- Track each cohort separately
- Apply cohort-specific retention curves
- Model degradation over time
- Account for seasonality
Scenario Development
Base Case:
- Current trend continuation
- Realistic growth assumptions
Upside Case:
- Improved conversion
- Lower churn
- Higher expansion
Downside Case:
- Slower acquisition
- Higher churn
- Economic headwinds
Key Metrics Output
- MRR/ARR projections by month
- Customer count projections
- Net Revenue Retention
- LTV/CAC ratio evolution
- Payback period
- Gross margin projections
Deliverable: Monthly MRR model with 12-36 month projections
Workflow 2: Marketplace Revenue Model
Objective: Build revenue model for marketplace businesses
Steps:
Marketplace Metrics Setup
Supply Side:
- Active sellers/providers
- Listings per seller
- Average order value
- Supply growth rate
Demand Side:
- Active buyers
- Transactions per buyer
- Buyer frequency
- Demand growth rate
Marketplace Metrics:
- Gross Merchandise Value (GMV)
- Take rate percentage
- Net revenue = GMV × Take rate
GMV Driver Model
GMV = Active Buyers × Transactions/Buyer × Average Order Value OR GMV = Active Sellers × Listings/Seller × Sell-Through Rate × PriceTake Rate Analysis
- Current take rate
- Take rate by category
- Take rate optimization potential
- Competitive benchmarking
- Additional revenue streams (ads, premium, fulfillment)
Liquidity Modeling
- Match rate projections
- Supply/demand balance
- Geographic coverage
- Category depth
Revenue Streams
- Transaction fees (primary)
- Subscription fees (seller SaaS)
- Advertising revenue
- Fulfillment/logistics fees
- Premium placement fees
- Data/analytics fees
Deliverable: Marketplace revenue model with GMV and take rate projections
Workflow 3: Usage-Based Revenue Model
Objective: Model revenue for consumption-based pricing
Steps:
Usage Metrics Identification
- Primary usage unit (API calls, storage, compute hours)
- Average usage per customer
- Usage distribution (heavy vs. light users)
- Seasonal patterns
Pricing Structure
- Per-unit pricing tiers
- Volume discounts
- Minimum commitments
- Overage pricing
- Platform fees
Customer Segmentation
- Segment by usage level
- Different growth rates by segment
- Segment-specific retention
- Enterprise vs. SMB patterns
Model Components
Revenue = Σ (Customers per segment × Usage per customer × Price per unit) Account for: - Customer growth - Usage growth per customer - Price changes - Volume discount impactPredictability Enhancement
- Committed vs. overage revenue
- Minimum revenue guarantees
- Prepaid usage credits
- Annual contract values
Scenario Modeling
- Usage growth scenarios
- Customer mix changes
- Pricing optimization
- Enterprise contract impact
Deliverable: Usage-based revenue model with consumption projections
Workflow 4: Multi-Product Revenue Model
Objective: Model revenue across multiple products and revenue streams
Steps:
Product Portfolio Mapping
- Product 1: Type, pricing, target market
- Product 2: Type, pricing, target market
- Product 3: Type, pricing, target market
- Cross-sell relationships
Individual Product Models
- Build sub-model for each product
- Apply appropriate methodology:
- Subscription → SaaS model
- Transaction → Marketplace model
- Usage → Consumption model
- One-time → Pipeline model
Cross-Sell Modeling
- Attach rate assumptions
- Timing of cross-sell
- Bundle discount impact
- Cannibalization effects
Revenue Mix Analysis
- Current revenue mix
- Target revenue mix
- Mix shift assumptions
- Profitability by product
Consolidation
- Sum of product revenues
- Eliminate double-counting
- Bundle revenue allocation
- Total company revenue
Scenario Development
- Product-specific scenarios
- Portfolio-level scenarios
- New product launch impact
- Sunset product impact
Deliverable: Consolidated multi-product revenue model
Workflow 5: Pricing Optimization Model
Objective: Analyze and optimize pricing strategy
Steps:
Current Pricing Analysis
- Current price points
- Discount frequency and depth
- ARPU analysis
- Price sensitivity observed
Competitive Benchmarking
- Competitor pricing
- Feature comparison
- Value-based positioning
- Market standard pricing
Value-Based Pricing Analysis
- Customer value delivered
- ROI for customer
- Willingness to pay research
- Price anchoring opportunities
Price Elasticity Modeling
- Historical price change impact
- Segment-specific elasticity
- Volume vs. price trade-off
- Revenue optimization point
Pricing Scenarios
Price increase impact:
- Revenue gain from price
- Volume loss from churn
- Net revenue impact
Price decrease impact:
- Revenue loss from price
- Volume gain from conversion
- Net revenue impact
Pricing Structure Options
- Per-seat vs. per-company
- Usage-based vs. flat
- Tiered pricing design
- Freemium conversion
- Annual discount strategy
Implementation Plan
- Grandfathering strategy
- Rollout timeline
- Customer communication
- Monitoring metrics
Deliverable: Pricing analysis with optimization recommendations
Quick Reference
| Action | Command/Trigger |
|---|---|
| SaaS model | "Build MRR/ARR revenue model" |
| Marketplace | "Model marketplace GMV and revenue" |
| Usage-based | "Create consumption-based revenue model" |
| Multi-product | "Model revenue across products" |
| Pricing | "Analyze pricing optimization" |
| Scenarios | "Model revenue scenarios" |
SaaS Metrics Reference
Core Metrics
| Metric | Formula | Healthy Benchmark |
|---|---|---|
| MRR | Sum of monthly recurring revenue | Growing |
| ARR | MRR × 12 | Growing |
| ARPU | MRR / Customers | Stable or growing |
| Net Revenue Retention | (Start MRR + Expansion - Contraction - Churn) / Start MRR | > 100% |
| Gross Revenue Retention | (Start MRR - Contraction - Churn) / Start MRR | > 85% |
| LTV | ARPU × Gross Margin / Churn Rate | > 3× CAC |
| CAC Payback | CAC / (ARPU × Gross Margin) | < 12 months |
MRR Movement Types
| Type | Definition |
|---|---|
| New MRR | Revenue from new customers this month |
| Expansion MRR | Revenue increase from existing customers (upsells) |
| Contraction MRR | Revenue decrease from existing customers (downgrades) |
| Churned MRR | Revenue from customers who cancelled |
| Reactivation MRR | Revenue from customers who returned |
SaaS Benchmarks
| Metric | Good | Great | Best-in-Class |
|---|---|---|---|
| MRR Growth (MoM) | 5-7% | 10-15% | 20%+ |
| Net Revenue Retention | 100-110% | 110-130% | 130%+ |
| Gross Churn (monthly) | 3-5% | 1-3% | < 1% |
| LTV/CAC | 3:1 | 5:1 | 10:1 |
| CAC Payback | 12-18 mo | 6-12 mo | < 6 mo |
Revenue Model Template
# Revenue Model: [Company Name]
**Model Period:** [Start] - [End]
**Last Updated:** [Date]
## Model Inputs
### Customer Assumptions
| Metric | Current | Growth Rate |
|--------|---------|-------------|
| Starting Customers | | |
| New Customers/Month | | |
| Churn Rate (Monthly) | | |
| Net Revenue Retention | | |
### Pricing Assumptions
| Segment | ARPU | % of New |
|---------|------|----------|
| Starter | | |
| Professional | | |
| Enterprise | | |
| Weighted Avg | | |
## Revenue Projections
### Monthly MRR Waterfall
| Month | Start MRR | New | Expansion | Contraction | Churn | End MRR |
|-------|-----------|-----|-----------|-------------|-------|---------|
| M1 | | | | | | |
| M2 | | | | | | |
| ... | | | | | | |
| M12 | | | | | | |
### Annual Summary
| Metric | Year 1 | Year 2 | Year 3 |
|--------|--------|--------|--------|
| ARR | | | |
| YoY Growth | | | |
| Customers | | | |
| ARPU | | | |
| NRR | | | |
## Scenario Comparison
| Scenario | Year 1 ARR | Year 2 ARR | Year 3 ARR |
|----------|------------|------------|------------|
| Base | | | |
| Upside | | | |
| Downside | | | |
## Key Assumptions & Risks
1. [Assumption 1] - [Risk if wrong]
2. [Assumption 2] - [Risk if wrong]
Best Practices
Model Building
- Start with driver-based approach
- Document all assumptions
- Make assumptions adjustable
- Build scenario capability
- Test edge cases
Assumption Setting
- Ground in historical data
- Benchmark to industry
- Be realistic, not optimistic
- Explain reasoning
- Sensitivity test key drivers
Presentation
- Executive summary first
- Visualize key trends
- Show assumption sensitivity
- Include scenario comparison
- Highlight risks
Integration with Other Skills
- Use with
budget-planner: Link revenue to expense budget - Use with
cash-flow-forecaster: Convert revenue to cash - Use with
unit-economics-calculator: Validate profitability - Use with
financial-analyst: Historical performance analysis - Use with
investment-analyzer: Support fundraising projections
Common Pitfalls to Avoid
- Hockey stick projections: Ground in reality
- Ignoring churn: Even small churn compounds
- Overestimating new customers: Harder than it looks
- Ignoring seasonality: Build in monthly patterns
- Linear assumptions: Growth often S-curve
- Ignoring capacity constraints: Sales, product, support
- Static pricing: Build in price evolution
- No segmentation: Different customers behave differently