"Should we build our own AI or buy a solution?" It's the most common question I hear from enterprise leaders. And the most common answer — "it depends" — is accurate but unhelpful.
After guiding dozens of organizations through this decision, I've developed a framework that makes the build-vs-buy trade-off concrete and quantifiable.
Why Traditional Analysis Fails
Most build-vs-buy analyses compare upfront costs: developer salaries vs. license fees. This misses 60-80% of the total cost of ownership.
Building AI has massive hidden costs: infrastructure, MLOps, monitoring, maintenance, retraining, talent retention, and opportunity cost. Buying has its own hidden costs: customization, integration, vendor lock-in, data migration, and capability gaps.
The TCO Framework
Cost Category 1: Initial Investment
Build: Hiring (3-6 months), infrastructure setup, initial development (6-12 months). Buy: License fees, implementation partner costs, integration development.
Cost Category 2: Ongoing Operations
Build: Infrastructure costs, engineer salaries, model monitoring, retraining cycles, security patching. Buy: Annual licenses, usage-based fees, vendor management overhead, integration maintenance.
Cost Category 3: Hidden Costs
Build: Talent retention risk (AI engineers change jobs every 18-24 months), knowledge silos, technical debt accumulation, evaluation framework development. Buy: Vendor lock-in (switching costs increase 3x after year 2), data portability limitations, customization constraints, dependency on vendor roadmap.
Cost Category 4: Opportunity Cost
Build: Time to value (12-18 months for custom AI vs. 2-4 months for purchased solutions). What revenue or efficiency gains are delayed? Buy: Competitive differentiation loss. If everyone uses the same vendor, where's your edge?
The Decision Matrix
The build-vs-buy decision should be based on two dimensions:
Strategic Differentiation (High vs. Low)
Does this AI capability create competitive advantage? If a customer chooses you partly because of this AI feature, it's high differentiation. If it's a commodity capability (like spam filtering), it's low.
Data Uniqueness (High vs. Low)
Do you have proprietary data that makes a custom model significantly better than a general solution? If so, building captures more value.
High Differentiation + Unique Data → BUILD. This is your competitive moat. Invest in building and maintaining it.
High Differentiation + Generic Data → HYBRID. Buy the foundation, customize heavily.
Low Differentiation + Unique Data → BUY + CUSTOMIZE. Use your data advantage within a purchased framework.
Low Differentiation + Generic Data → BUY. Pure commodity. Don't waste engineering time.
Real-World Examples
Build: Custom Fraud Detection (Financial Services)
A European bank built a custom fraud detection system using proprietary transaction data. The model outperformed vendor solutions by 40% on their specific fraud patterns. TCO over 3 years: €1.2M. Value captured: €8M in prevented fraud. Clear build.
Buy: Internal Search (Professional Services)
A consulting firm considered building a custom knowledge search system. After TCO analysis, purchasing an enterprise search solution with AI features cost 60% less and delivered results in 3 months vs. 12 months for custom development. Clear buy.
Hybrid: Customer Support AI (E-commerce)
A retailer used a commercial LLM platform but fine-tuned it on their product catalog and support history. The hybrid approach cost 40% less than full custom development while achieving 90% of the accuracy.
The 90-Day Decision Process
- Week 1-2: Inventory all AI use cases. Score each on differentiation and data uniqueness.
- Week 3-4: TCO analysis for top 5 use cases across all four cost categories.
- Week 5-8: Small-scale POC for the top 1-2 build candidates. Vendor evaluation for top 1-2 buy candidates.
- Week 9-12: Decision, procurement, and implementation kickoff.
Get Help With the Decision
Our AI Strategy Sprint includes a comprehensive build-vs-buy analysis as a standard deliverable. We've done this dozens of times and can save you months of analysis paralysis.
If you decide to build, our guide on why most AI POCs never reach production covers the structural pitfalls to avoid. And for teams implementing RAG systems, our RAG optimization best practices provides battle-tested production patterns.
Use our ROI Calculator to estimate the financial impact of both paths before we talk.
