How to Use These Prompts

Each prompt includes:

When to use it: The situation or analysis need

Required inputs: Information you must provide

AI prompt: Copy, customise, and paste into your preferred AI tool

Global AI Safety Line

Paste the following instruction at the start of every revenue analysis prompt:

“If unsure about any claim, calculation, or financial assumption, write ‘VERIFY:’ next to it. Do not invent financial data, projections, or benchmarks. Flag any assumptions made. This analysis is for internal decision-making and is not financial, legal, or investment advice.”

Terminology note: Use “revenue” for GAAP or total bookings, and “MRR/ARR” for recurring subscription run rate. These prompts distinguish between the two where it matters.

Before you start:

Gather accurate, up-to-date financial data before running any analysis

Verify all AI-generated calculations independently

Consult qualified financial professionals for significant business decisions

Treat AI outputs as starting points for analysis, not final conclusions

Performance Analysis Prompts

Monthly and Quarterly Reviews

When to use: Understanding short-term performance against your goals. These highlight top products and underperforming channels.

AI Prompt:

Required inputs: [current revenue], [previous period data], [targets], [segment breakdowns]

AI PROMPT

“[Global AI Safety Line] analyse revenue performance for [Month/Quarter].
Performance data:
Actual revenue: [amount] Target revenue: [amount] Previous period revenue: [amount] Same period last year: [amount] Segment breakdowns:
By product/service: [data] By channel: [data] By customer segment: [data] Provide:
Performance vs. target analysis
Top three growth drivers
Three headwinds or underperforming areas
Key questions for further investigation
Present findings in a management review format.”

Year-Over-Year Comparison

When to use: Identifying seasonal patterns and long-term growth trajectories. This helps you see if your business is accelerating or slowing down.

AI Prompt:

Required inputs: [monthly revenue for current year], [monthly revenue for prior year]

AI PROMPT

“[Global AI Safety Line] analyse year-over-year revenue performance for [business name].
Revenue data:
Current year monthly revenue: [list by month] Prior year monthly revenue: [list by month] Additional prior years (if available): [data] Provide:
Annual comparison:
Total revenue change (amount and percentage)
Average monthly revenue comparison
Best and worst performing months
Monthly trend analysis:
Months with strongest YoY growth
Months with YoY decline
Seasonal patterns identified
Growth trajectory:
Is growth accelerating, stable, or decelerating?
Comparison to prior year growth rate
Anomalies and outliers:
Unusual months requiring investigation
Potential explanations (mark as ‘VERIFY:’)
Keep analysis factual. Flag any interpretations that require additional data to confirm.”

Revenue Concentration Analysis

When to use: Assessing customer revenue risk and diversification. High concentration in one or two customers is a risk factor that should be monitored.

AI Prompt:

Required inputs: [revenue by customer], [customer count], [historical concentration data]

AI PROMPT

“[Global AI Safety Line] analyse customer revenue concentration for [business name].
Customer revenue data:
Total revenue: [amount] Number of customers: [number] Top 10 customers by revenue: [list with amounts] Provide:
Concentration metrics:
Revenue from top customer (amount and percentage)
Revenue from top 5 customers (amount and percentage)
Revenue from top 10 customers (amount and percentage)
Risk assessment:
Customers representing >10% of revenue (flag as concentration risk)
Contract status and renewal dates for top customers (if known)
Trend analysis:
Is concentration increasing or decreasing?
New customer contribution to revenue
Recommendations:
Diversification opportunities
Risk mitigation strategies”

Forecasting and Planning

Bottom-Up Revenue Forecast

When to use: Building projections based on real sales activities. This includes leads, conversion rates, and average deal sizes.

AI Prompt:

Required inputs: [leads], [conversion rates], [deal size], [sales cycle length]

AI PROMPT

“[Global AI Safety Line] Create a monthly revenue forecast for the next [X] months.
Sales activity data:
Expected leads per month: [number] Historical conversion rate: [percentage] Average deal size: [amount] Sales cycle length: [days/weeks] For recurring revenue (if applicable):
Current customer count: [number] Expected new customers: [number] Historical churn rate: [percentage] Average revenue per customer: [amount] Provide:
Forecast model:
Monthly revenue projections
Quarterly totals
Key assumptions listed
Sensitivity analysis:
Impact if conversion rate varies by +/- 10%
Impact if average deal size varies by +/- 10%
Confidence assessment:
Which inputs have highest uncertainty?
What additional data would improve accuracy?
Mark all assumptions as ‘VERIFY:'”

Scenario-Based Forecast

When to use: Planning for multiple possible outcomes when uncertainty is high.

AI Prompt:

Required inputs: [baseline assumptions], [variables to test], [historical data], [forecast period]

AI PROMPT

“[Global AI Safety Line] Create a scenario-based revenue forecast for [forecast period].
Baseline data:
Current revenue run rate: [amount] Historical growth rate: [percentage] Key revenue drivers: [list] Variables to model:[Variable 1]: baseline value [X], range [low-high] [Variable 2]: baseline value [X], range [low-high] Provide three scenarios:
Conservative scenario:
Assumptions and projections
Key risks this scenario reflects
Base case scenario:
Assumptions and projections
Confidence level
Optimistic scenario:
Assumptions and projections
What would need to happen to achieve this
Scenario comparison:
Revenue range across scenarios
Leading indicators to monitor
Mark all assumptions as ‘VERIFY:'”

Break-Even Analysis

When to use: Determining the exact point where your revenue covers all costs. Essential for pricing and resource planning.

AI Prompt:

Required inputs: [fixed costs], [variable costs], [price per unit or average revenue]

AI PROMPT

“[Global AI Safety Line] Conduct a break-even analysis for [product/service/business].
Cost structure:
Fixed costs (monthly/annual): [amount] Variable cost per unit: [amount] Or variable cost as percentage of revenue: [percentage] Revenue:
Price per unit: [amount] Or average revenue per transaction: [amount] Current volume: [units or transactions] Provide:
Break-even calculations:
Break-even point in units
Break-even point in revenue
Contribution margin per unit
Contribution margin ratio
Current position:
Units/revenue above or below break-even
Margin of safety (percentage)
Sensitivity analysis:
Break-even if price changes by 10%
Break-even if variable costs change by 10%
Assumptions and limitations:
List all assumptions made
Note that break-even analysis assumes linear relationships”

Customer and Subscription Metrics

Customer Lifetime Value (CLV)

When to use: CLV measures the total revenue a customer generates during their entire relationship with you. It helps you decide how much you can spend to acquire new customers (CAC).

AI Prompt:

Required inputs: [average revenue per user], [lifespan], [retention rate], [gross margin]

AI PROMPT

“[Global AI Safety Line] Calculate and analyse customer lifetime value for [business name].
Customer data:
Average revenue per customer (monthly/annual): [amount] Average customer lifespan: [months/years] Customer retention rate: [percentage] Gross margin: [percentage] Acquisition data:
Customer acquisition cost (CAC): [amount] Number of customers acquired: [number] Provide:
CLV calculations:
Simple CLV (revenue x lifespan)
Gross margin-adjusted CLV
Show calculation methodology
CLV to CAC analysis:
CLV:CAC ratio
Payback period (months to recover CAC)
Assessment vs. benchmarks (mark ‘VERIFY:’)
Improvement levers:
Impact of improving retention by X%
Impact of increasing average revenue by X%
Impact of reducing CAC by X%
Note that CLV calculations involve significant assumptions. Historical data may not predict future behavior.”

MRR/ARR Analysis

When to use: For subscription models, tracking Monthly Recurring Revenue (MRR) is critical. You must monitor new, expansion, and churned MRR. Note: MRR/ARR measures recurring subscription run rate, not total GAAP revenue.

AI Prompt:

Required inputs: [MRR/ARR current], [MRR components], [customer counts]

AI PROMPT

“[Global AI Safety Line] analyse Monthly Recurring Revenue (MRR) performance for [business name].
Current MRR data:
Total MRR: [amount] Total ARR: [amount] Active subscribers: [number] MRR components:
New MRR (new customers): [amount] Expansion MRR (upgrades, add-ons): [amount] Contraction MRR (downgrades): [amount] Churned MRR (cancellations): [amount] Provide:
MRR movement analysis:
Net new MRR
MRR growth rate
MRR composition breakdown
Key metrics:
ARPU (Average Revenue Per User)
Gross MRR churn rate
Net MRR retention rate
Quick ratio (New + Expansion) / (Contraction + Churn)
Health assessment:
Strengths in the MRR profile
Areas of concern
Metrics to monitor closely
All benchmark comparisons should be marked ‘VERIFY:'”

Churn and Retention Analysis

When to use: Understanding customer and revenue retention patterns.

AI Prompt:

Required inputs: [customer counts start/end], [churned customers], [revenue churn data]

AI PROMPT

“[Global AI Safety Line] analyse churn and retention for [business name].
Customer data:
Starting customers: [number] New customers: [number] Churned customers: [number] Ending customers: [number] Period: [timeframe] Revenue data:
Starting MRR from cohort: [amount] Churned MRR: [amount] Contraction MRR: [amount] Expansion MRR: [amount] Provide:
Churn calculations:
Customer churn rate (gross)
Revenue churn rate (gross)
Net revenue retention rate
Segment analysis:
Highest churn segments
Lowest churn segments
Patterns and potential causes (mark as ‘VERIFY:’)
Churn impact:
Revenue impact of current churn rate
Growth rate needed to offset churn
Impact of reducing churn by X%
Note: Churn analysis identifies patterns but additional research is needed to confirm causes.”

Quick Reference: Revenue Metrics

Core Revenue Metrics

SaaS and Subscription Metrics

Note: These benchmarks are common rules of thumb, but they vary significantly by industry, ACV, company stage, and market. Always verify against relevant peer data and current benchmark reports.

Sales Metrics

Reporting and Communication

Board Revenue Report

When to use: Preparing clear updates for stakeholders. Focus on high-level trends and variances from budget.

AI Prompt:

Required inputs: [revenue data], [forecast vs. actual], [key metrics], [narrative context]

AI PROMPT

“[Global AI Safety Line] Prepare a board-ready revenue report for [period].
Financial data:
Revenue actual: [amount] Revenue budget/forecast: [amount] Revenue prior year: [amount] Key metrics:[List relevant metrics with values] Context:
Major wins or losses: [describe] Market conditions: [describe] Provide:
Executive summary:
3-4 sentences on overall performance
Performance vs. plan:
Variance analysis
Explanation of material variances
Outlook:
Forward-looking indicators
Key risks and opportunities
Format:
Structure for a 5-10 minute revenue discussion
Highlight what requires board attention
Separate facts from projections clearly
All forward-looking statements should be clearly marked as projections with stated assumptions.”

Revenue Narrative

When to use: Explaining the “why” behind the numbers. Use this to build trust with investors or your internal team.

AI Prompt:

Required inputs: [revenue results], [context and drivers], [audience], [key messages]

AI PROMPT

“[Global AI Safety Line] Create a revenue performance narrative for [audience].
Results:
Revenue outcome: [amount] Comparison to target: [amount and percentage] Comparison to prior period: [amount and percentage] Context and drivers:
Positive factors: [list] Negative factors: [list] One-time items: [list] Key messages to convey:[Message 1] [Message 2] Provide:
Narrative options:
Two-paragraph summary (for written reports)
Bullet point summary (for presentations)
Talking points (for verbal updates)
For each version:
Lead with the headline result
Provide appropriate context
Explain key drivers
Acknowledge challenges honestly
End with forward-looking perspective
Ensure all claims are supportable by the data provided.”

Best Practices for Revenue Analysis

Data Quality

Verify data accuracy before analysis, AI cannot check if your initial data is correct

Use verified financial statements as your source

Understand how metrics are calculated in your systems

Reconcile to financial statements where possible

Risk Identification

High revenue concentration in one or two customers is a risk factor

Track customer dependency and diversification

Monitor leading indicators, not just lagging results

Forecasting Discipline

Document all assumptions explicitly

Use ranges rather than single-point forecasts

Update forecasts regularly, they should be rolling

Update as soon as monthly actuals are available

Track forecast accuracy to improve over time

Using AI for Analysis

Provide accurate, complete data

Verify all calculations independently

Treat AI outputs as drafts requiring review

Add context AI cannot know

Do not rely on AI for financial decisions without expert validation

Limitations and Cautions

What AI Can Help With

Structuring analysis frameworks

Calculating standard metrics

Identifying patterns in data you provide

Generating report templates

Suggesting questions to investigate

What AI Cannot Do

Verify your data is accurate

Know your business context

Provide reliable industry benchmarks without sources

Make financial recommendations

Replace financial expertise

When to Consult Professionals

Major business decisions

Investor communications

Financial reporting and compliance

Tax and legal implications

Complex valuation questions

Metric Formula Use Case
Revenue Growth Rate (Current – Prior) / Prior × 100 Tracks trajectory
MRR (Monthly Recurring Revenue) Sum of all monthly subscriptions Subscription run rate
ARR (Annual Recurring Revenue) MRR × 12 Annual run rate
ARPU (Average Revenue Per User) Total Revenue / Active Users Customer value
Gross Margin (Revenue – COGS) / Revenue × 100 Measures profitability
Metric Formula Benchmark Guidance (VERIFY)
Net Revenue Retention (Starting MRR + Expansion – Contraction – Churn) / Starting MRR >100% often cited for growth. VERIFY for your segment.
Gross Revenue Retention (Starting MRR – Churn – Contraction) / Starting MRR Often cited as healthy at 85%+. Many B2B datasets show medians near 90%+. VERIFY by ACV and market.
Customer Churn Rate Churned Customers / Starting Customers Median monthly churn varies strongly by ARPA and segment, often ranging from about 2% to 6% in SaaS datasets. VERIFY for your peer set.
MRR Churn Rate Churned MRR / Starting MRR Varies significantly by segment. VERIFY against peers.
Quick Ratio (New MRR + Expansion MRR) / (Churned MRR + Contraction MRR) >4 commonly cited as healthy. VERIFY for your stage.
LTV:CAC Ratio Customer Lifetime Value / Customer Acquisition Cost >3:1 widely cited rule of thumb. VERIFY for your model.
CAC Payback CAC / (ARPU × Gross Margin) Best-in-class can be <12 months. Many frameworks label 12-18 months as good. VERIFY for your segment.
Metric Formula Purpose
Pipeline Coverage Pipeline Value / Revenue Target Forecast sufficiency
Win Rate Won Deals / Total Closed Deals Sales effectiveness
Average Deal Size Total Revenue / Number of Deals Deal quality
Sales Cycle Length Average days from opportunity to close Process efficiency
Revenue per Employee Total Revenue / Number of Employees Productivity (varies heavily by model)