Measuring Agentic AI ROI: Introducing The Triad ROI Framework

Introduction 

In this series, I outline the critical steps for achieving success with Agentic AI.  My previous article explored the importance of rigorous evaluation and presented a four-step evaluation methodology.  This article explores the next step, ROI to achieve Agentic AI results. You’ll learn a simple, practical framework for evaluating whether your Agentic AI initiatives are delivering real business impact. 

Table of Contents

Data and Trends in Agentic AI ROI 

Agentic AI has emerged as the breakthrough technology finally unlocking enterprise AI’s elusive ROI, with McKinsey estimating it will add $2.6–4.4 trillion in value beyond traditional AI capabilities.  

While nearly 80% of companies still report no material earnings impact from most AI projects, top performers are seeing extraordinary returns: IBM’s Forrester study reveals 337% Agentic AI ROI over three years and $24 million in benefits , BCG finds “future-built” companies achieve 5x the revenue increases and 3x the cost reductions of competitors , and Accenture’s implementations deliver 25–35% reductions in manual work and 30–40% productivity gains .  

Adoption momentum is unprecedented: PwC reports 88% of executives plan to increase AI budgets for agentic AI, 79% are deploying agents, and 66% have seen measurable productivity improvements . 

However, results hinge on strategic execution, as the gap between leaders and laggards widens rapidly. Gartner forecasts a third of enterprise software will embed agentic AI by 2028, but warns over 40% of agentic AI projects will be cancelled by 2027 due to cost overruns and unclear value. Meanwhile, BCG finds that just 4% of companies presently reap full AI value, despite widespread investment. 

The race is intensifying: Deloitte projects 25% of enterprises will launch agentic AI pilots in 2025, doubling by 2027. Early movers are already capturing the outsized returns that define leadership in the $2.6 trillion agentic AI revolution.). 

The Triad ROI Tramework Overview 

In this article, I propose a new framework, called the triad ROI framework that enterprises can use to decide whether the Agentic AI project is worth spending time on. The triad framework provides a streamlined approach to measuring agentic AI ROI through three core dimensions. 

Dimension 1: Value Types (What to Measure) 

Cost Savings (Direct Impact) 

Key Metric: Labor hours saved × hourly cost – AI investment 
Example: Automating 100 hours/week × $50/hour = $260K annual savings 

Revenue Growth (Business Impact) 

Key Metric: New revenue from AI capabilities + conversion improvements 
Example: 24/7 service adds $500K revenue + 15% higher close rates 

Risk Reduction (Protection Impact) 

Key Metric: Prevented errors × cost per error + compliance savings 
Example: 90% error reduction × $1K per error × 1000 transactions = $900K saved

Measuring Agentic AI ROI: Introducing The Triad ROI Framework

 

Dimension 2: Time Horizons (When Value Appears) 

 

Quick Wins (1-6 months) 

Focus: Process automation and immediate productivity gains 
Target: 30% of expected benefits, break-even on pilot projects 

Scale Benefits (6-18 months) 

Focus: Organisation-wide efficiency and cost optimisation 
Target: 80% of expected benefits, positive ROI achieved 

Strategic Value (18+ months) 

Focus: Competitive advantage and new business capabilities 
Target: 120%+ of projections through compound effects 

Dimension 3: Measurement Approach (How to Track) 

Leading Indicators (Predictive) 

  • Adoption Rate: % of target users actively using Agentic AI capabilities weekly. The definition of what counts as a minimum ‘AI use’ is company specific. 
  • Task Success Rate: % of AI tasks completed without human help 
  • User Satisfaction: Net Promoter Score from AI users 

Financial Results (Confirmatory) 

  • Cost per Transaction: Total costs ÷ transactions processed 
  • Productivity Gain: Output increase per employee hour 
  • Revenue Attribution: Direct revenue tied to AI capabilities 

Strategic Metrics (Long-term) 

  • Market Position: Competitive advantage duration in months 
  • Innovation Speed: Time to deploy new AI-enabled services 
  • Organisational Learning: Rate of AI capability expansion 

Simple ROI Calculation 

Total ROI = (Annual Savings + Annual New Revenue + Annual Risk Savings – Annual AI Costs) ÷ Annual AI Costs 

Example: 

  • Annual Savings: $800K (labor automation) 
  • Annual New Revenue: $600K (new capabilities) 
  • Annual Risk Savings: $400K (error prevention) 
  • Annual AI Costs: $500K (platform + support) 

ROI = ($800K + $600K + $400K – $500K) ÷ $500K = 260% 

 

Applying the Triad ROI Framework  

Here are a few mechanisms for implementing the triad ROI framework 

Measuring Agentic AI ROI: Introducing The Triad ROI Framework

Essential Tracking Dashboard 

Executive View (Monthly) 

  • Total ROI: Current percentage return 
  • Payback Period: Months to break-even (target: <12 months) 
  • Value Realised: Actual vs. projected benefits 

Operational View (Weekly) 

  • Automation Rate: % of target processes fully automated 
  • Quality Score: Accuracy of AI decisions vs. human baseline 
  • Adoption Progress: User engagement and utilisation trend 

Success Benchmarks 

Minimum Success 

  • 100% ROI within 12 months 
  • 25% productivity improvement in target areas 
  • 6-month payback on initial investment 

Target Success 

  • 200% ROI within 18 months 
  • 50% productivity improvement with quality maintenance 
  • Measurable competitive advantage in market 

Exceptional Success 

  • 300%+ ROI within 24 months 
  • Business model transformation enabled 
  • Market leadership position achieved 

Common Pitfalls to Avoid 

  • Over-complexity: Keep metrics simple and actionable 
  • Under-measurement: Track enough to prove value but not everything 
  • Impatience: Allow 9-12 months for full ROI realisation 

Summary and Next Steps 

The simplified framework focuses on three value types, three time horizons, and three measurement approaches—creating a 3×3×3 model that captures 90% of agentic AI value with 50% of the measurement complexity. 

Success Formula: Start with cost savings (easiest to measure), scale to revenue growth (highest impact), evolve to strategic advantage (longest duration). Track leading indicators to predict success, financial results to confirm it, and strategic metrics to sustain it. 

The goal is not perfect measurement but actionable insight that drives better AI investment decisions and superior business outcomes. 

 

To ensure your next step is informed and valuable, let us help you implement the ROI framework as part of our AI Studio offering.  

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