AI Readiness Assessment
Run a structured AI readiness audit for any organization. Scores 8 dimensions, identifies gaps, produces a prioritized 90-day action plan with budget ranges.
When to Use
- Before investing in AI/automation tools
- Board or leadership requesting AI strategy
- Evaluating build vs buy decisions
- Annual technology planning
How It Works
Score each dimension 1-5 (1=not started, 5=optimized):
1. Data Infrastructure (Weight: 3x)
- Centralized data warehouse or lakehouse operational
- Data quality monitoring automated (freshness, completeness, accuracy)
- API-first architecture for core systems
- Data governance policy documented and enforced
- PII/PHI classification and access controls active
Score 1: Spreadsheets and siloed databases Score 3: Warehouse exists, some pipelines automated Score 5: Real-time streaming, quality >99%, full lineage
2. Process Documentation (Weight: 2x)
- Top 20 revenue-impacting processes mapped end-to-end
- Decision trees documented for each process
- Exception handling paths defined
- Time-per-task benchmarks established
- Process owners assigned
Score 1: Tribal knowledge, nothing written down Score 3: Major processes documented, some outdated Score 5: Living documentation, updated quarterly, covers 80%+ of operations
3. Technical Talent (Weight: 2x)
- At least 1 person understands ML/AI concepts at implementation level
- Engineering team comfortable with APIs and integrations
- DevOps/infrastructure person can deploy and monitor services
- Data analyst can query and interpret model outputs
- Security team understands AI-specific attack surfaces
Score 1: No technical staff beyond basic IT Score 3: Good engineering team, AI knowledge is theoretical Score 5: Dedicated AI/ML engineer, cross-functional AI literacy program
4. Budget & ROI Framework (Weight: 2x)
- AI budget allocated (not pulled from "innovation" slush fund)
- ROI measurement criteria defined before project starts
- Kill criteria established (when to stop a failing project)
- Total cost of ownership model includes maintenance, retraining, monitoring
- Benchmarks set against current manual process costs
Budget Reality by Company Size:
| Company Size | Year 1 Investment | Expected ROI Timeline |
|---|---|---|
| 15-50 employees | $24K-$80K | 4-8 months |
| 50-200 employees | $80K-$300K | 3-6 months |
| 200-1000 employees | $300K-$1.2M | 6-12 months |
| 1000+ employees | $1.2M-$5M+ | 8-18 months |
5. Change Management (Weight: 1.5x)
- Executive sponsor identified and actively involved
- Communication plan for affected teams drafted
- Training budget allocated
- Pilot team identified (volunteers, not voluntolds)
- Success metrics shared openly with organization
Score 1: Leadership says "just do AI" with no plan Score 3: Exec sponsor exists, some team buy-in Score 5: Change management playbook active, regular town halls, feedback loops
6. Security & Compliance (Weight: 2.5x)
- AI-specific data handling policy written
- Vendor security assessment process includes AI criteria
- Model output logging and audit trail planned
- Regulatory requirements mapped (GDPR, HIPAA, SOX, SOC 2, EU AI Act)
- Incident response plan covers AI failures
Score 1: No AI-specific security considerations Score 3: General security strong, AI gaps identified Score 5: AI governance framework active, regular audits, compliance automated
7. Integration Readiness (Weight: 1.5x)
- Core systems have APIs (CRM, ERP, HRIS, etc.)
- Authentication/authorization supports service accounts
- Webhook or event-driven architecture available
- Test/staging environment mirrors production
- Rollback procedures documented
Score 1: Legacy systems, no APIs, manual data entry Score 3: Major systems have APIs, some manual bridges Score 5: API-first architecture, event-driven, CI/CD for integrations
8. Strategic Alignment (Weight: 1x)
- AI initiatives map to specific business objectives (not "innovation")
- 3-year technology roadmap includes AI milestones
- Competitive landscape analysis includes AI adoption by rivals
- Board/leadership educated on AI capabilities and limitations
- Failure tolerance defined (acceptable experiment failure rate)
Score 1: AI is a buzzword, no concrete strategy Score 3: Strategy exists, loosely connected to business goals Score 5: AI embedded in strategic plan, quarterly reviews, competitive moat building
Scoring
Weighted Total = Sum of (Score × Weight) / Max Possible × 100
| Range | Rating | Recommendation |
|---|---|---|
| 0-25 | 🔴 Not Ready | Fix foundations first. 6-12 months of groundwork before AI projects. |
| 26-50 | 🟡 Early Stage | Pick ONE high-impact, low-risk pilot. Build muscle. |
| 51-75 | 🟢 Ready | Deploy 2-3 agents in validated use cases. Scale what works. |
| 76-100 | 🔵 Advanced | Multi-agent deployment, autonomous operations, competitive moat. |
90-Day Action Plan Template
Days 1-30: Foundation
- Complete this assessment with honest scores
- Document top 5 processes by time spent × error rate
- Audit data infrastructure gaps
- Set budget and kill criteria
Days 31-60: Pilot
- Select highest-scoring use case (high data readiness + clear ROI)
- Deploy single agent or automation
- Measure daily: time saved, error rate, cost
- Weekly review with stakeholders
Days 61-90: Scale or Kill
- If pilot ROI > 2x: plan 2 more deployments
- If pilot ROI < 1x: diagnose root cause, pivot or kill
- Document learnings regardless of outcome
- Update 3-year roadmap based on reality
7 Assessment Mistakes
- Scoring yourself too high — External validation beats internal optimism
- Ignoring data quality — AI on bad data = faster wrong answers
- Skipping change management — Technical success + team rejection = failure
- No kill criteria — Zombie projects drain budget and credibility
- Buying before understanding — Tool purchases before process documentation = shelfware
- Ignoring security until audit — Retrofitting AI security costs 3-5x more than building it in
- Comparing to tech companies — Your readiness bar is YOUR industry, not Silicon Valley
Industry Benchmarks (2026)
| Industry | Avg Score | Top Quartile | First AI Win |
|---|---|---|---|
| Fintech | 62 | 78+ | Fraud detection, KYC |
| Healthcare | 41 | 58+ | Clinical documentation, scheduling |
| Legal | 38 | 52+ | Contract review, research |
| Construction | 29 | 44+ | Safety monitoring, estimation |
| Ecommerce | 58 | 74+ | Personalization, inventory |
| SaaS | 65 | 82+ | Support, onboarding, churn prediction |
| Real Estate | 35 | 48+ | Lead scoring, valuation |
| Recruitment | 45 | 62+ | Screening, outreach |
| Manufacturing | 42 | 56+ | QC, predictive maintenance |
| Professional Services | 48 | 64+ | Proposal generation, time tracking |
Get your industry-specific context pack ($47) → https://afrexai-cto.github.io/context-packs/
Calculate your AI revenue leak → https://afrexai-cto.github.io/ai-revenue-calculator/
Set up your first AI agent → https://afrexai-cto.github.io/agent-setup/
Bundles: Pick 3 for $97 | All 10 for $197 | Everything Pack $247