Demystifying SaaS Revenue: A Hierarchy for Predictability & Valuation
In episode #343 of SaaS Metrics School, Ben Murray demystifies SaaS revenue by breaking down the core revenue types that software, SaaS, and AI companies should be modeling on their P&L. Rather than focusing on labels, Ben explains why pricing models and revenue streams are the real drivers of financial clarity.
He walks through the most common revenue categories—subscriptions, variable usage-based revenue, professional services, managed services, hardware, and other emerging models—and shows how proper revenue segmentation becomes the foundation for accurate retention metrics, forecasting, unit economics, and due diligence readiness.
Resources Mentioned
- SaaS Metrics School framework: https://www.thesaascfo.com/scaling-with-confidence-the-ultimate-saas-metrics-playbook/
- Concepts covered in Ben’s SaaS Metrics course: https://www.thesaasacademy.com/the-saas-metrics-foundation
- MRR schedules & MRR waterfalls: https://www.thesaasacademy.com/offers/rJhZ6VdM/checkout
What You’ll Learn
- The core revenue categories every SaaS, software, and AI company should track
- How subscription and usage-based revenue differ financially
- Why overages must be separated from subscription revenue
- How revenue segmentation enables accurate MRR schedules and waterfalls
- Why retention should be calculated separately by revenue stream
- How revenue structure impacts forecasting accuracy
- How different revenue streams change CAC payback and LTV to CAC calculations
- Why clean revenue categorization simplifies due diligence
Why It Matters
- Revenue segmentation is the foundation of accurate SaaS metrics
- MRR schedules and retention calculations depend on clean revenue data
- Forecasts are more reliable when built from revenue waterfalls
- Mixed revenue streams require adjusted CAC payback calculations
- Clear revenue structure improves investor and acquirer confidence
- Proper setup reduces friction during fundraising and exits