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AI Readiness Assessment
Evaluate your organization's readiness to implement AI systems compliantly.
AI Readiness Assessment: Are You Ready to Implement AI?
Last Updated: January 23, 2026
Next Review: April 23, 2026
"We Weren't Ready. It Cost Us $400K."
A manufacturing company jumped into AI predictive maintenance without assessing readiness.
What they had:
- Budget: $500K
- Enthusiasm: High
- Executive support: Strong
What they didn't have:
- Clean data (sensors recorded inconsistently)
- Data infrastructure (no centralized database)
- Technical expertise (no data scientists)
- Change management plan (operators resisted)
Result: 18 months, $400K spent, project abandoned.
What they should have done: Assessed readiness first, fixed foundational issues, then implemented AI.
The lesson: Readiness matters more than budget.
The 8 Dimensions of AI Readiness
1. Data Readiness (Most Critical)
What you need:
- [ ] Sufficient volume: 1,000+ examples for supervised learning
- [ ] Data quality: < 5% errors, consistent format
- [ ] Data accessibility: Centralized, queryable database
- [ ] Data labeling: Labels for supervised learning (if applicable)
- [ ] Data governance: Policies for collection, storage, usage
Assessment questions:
- Do you have 1,000+ examples of the problem you're trying to solve?
- Is your data in a centralized location (not scattered across systems)?
- Is your data clean (< 5% errors, no major gaps)?
- Do you have labels for training (e.g., "fraud" vs "not fraud")?
- Do you have data governance policies?
Scoring:
- 5/5 Yes: Excellent (90-100 points) - Ready for AI
- 3-4 Yes: Good (60-89 points) - Minor improvements needed
- 1-2 Yes: Poor (30-59 points) - Major work needed
- 0 Yes: Not Ready (0-29 points) - Fix data first
Real example - Manufacturing company:
- Volume: ❌ Only 200 failure events
- Quality: ❌ 15% sensor errors
- Accessibility: ❌ Data in 5 different systems
- Labeling: ✅ Failures labeled
- Governance: ❌ No policies
- Score: 20/100 - Not ready
2. Technical Infrastructure
What you need:
- [ ] Cloud or on-prem compute: For training and inference
- [ ] Data storage: Scalable database (cloud or on-prem)
- [ ] APIs: To integrate AI with existing systems
- [ ] Monitoring: To track AI performance
- [ ] Version control: For models and code
Assessment questions:
- Do you have cloud infrastructure (AWS, Azure, GCP) or on-prem servers?
- Can you store and query large datasets (100GB+)?
- Do your systems have APIs for integration?
- Can you monitor system performance in real-time?
- Do you use version control (Git)?
Scoring:
- 5/5 Yes: Excellent (90-100 points)
- 3-4 Yes: Good (60-89 points)
- 1-2 Yes: Poor (30-59 points)
- 0 Yes: Not Ready (0-29 points)
Quick wins if score is low:
- Sign up for cloud provider ($100-$500/month to start)
- Implement basic database (PostgreSQL, MongoDB)
- Add APIs to critical systems
- Set up basic monitoring (Datadog, New Relic)
3. Technical Talent
What you need:
- [ ] Data scientists: To build models (1-2 people)
- [ ] ML engineers: To deploy models (1-2 people)
- [ ] Data engineers: To build pipelines (1-2 people)
- [ ] Software engineers: To integrate AI (2-4 people)
OR:
- [ ] AI vendor/consultant: To handle technical work
- [ ] Internal champion: To manage vendor and adoption
Assessment questions:
- Do you have data scientists on staff?
- Do you have ML engineers who can deploy models?
- Do you have data engineers who can build pipelines?
- Can you hire AI talent (budget + location)?
- Are you willing to work with external vendors?
Scoring:
- Have in-house team: Excellent (90-100 points)
- Can hire or have budget for vendor: Good (60-89 points)
- Limited budget, hard to hire: Poor (30-59 points)
- No budget, can't hire: Not Ready (0-29 points)
Options if score is low:
- Hire: $150K-$250K/year per data scientist
- Vendor: $100K-$500K project-based
- Train existing staff: $10K-$30K per person
- Hybrid: 1 in-house + vendor support
4. Business Case & ROI
What you need:
- [ ] Clear problem: Specific, measurable problem to solve
- [ ] Quantified benefit: $ value of solving the problem
- [ ] Budget: Sufficient for implementation
- [ ] Timeline: Realistic expectations (6-18 months)
- [ ] Success metrics: How you'll measure success
Assessment questions:
- Can you articulate the specific problem AI will solve?
- Have you quantified the benefit ($X saved or $Y revenue)?
- Do you have budget ($100K-$500K for typical project)?
- Do you have realistic timeline (not expecting results in 1 month)?
- Have you defined success metrics?
Scoring:
- 5/5 Yes: Excellent (90-100 points)
- 3-4 Yes: Good (60-89 points)
- 1-2 Yes: Poor (30-59 points)
- 0 Yes: Not Ready (0-29 points)
Use our tool: AI ROI Calculator
5. Executive Support
What you need:
- [ ] Executive sponsor: C-level champion
- [ ] Budget approval: Committed funding
- [ ] Strategic alignment: AI aligns with company strategy
- [ ] Patience: Willingness to invest 6-18 months
- [ ] Risk tolerance: Acceptance that AI may not work
Assessment questions:
- Do you have a C-level executive championing AI?
- Has budget been approved (not just "we'll find it")?
- Is AI part of your strategic plan?
- Are executives willing to wait 6-18 months for results?
- Are executives comfortable with 20-30% risk of failure?
Scoring:
- 5/5 Yes: Excellent (90-100 points)
- 3-4 Yes: Good (60-89 points)
- 1-2 Yes: Poor (30-59 points)
- 0 Yes: Not Ready (0-29 points)
Red flag: If executives expect results in 1-3 months, reset expectations or don't start.
6. Change Management
What you need:
- [ ] User buy-in: Employees who will use AI are supportive
- [ ] Training plan: How you'll train users
- [ ] Communication plan: How you'll communicate changes
- [ ] Incentives: Rewards for adoption
- [ ] Feedback loops: How users can report issues
Assessment questions:
- Have you talked to employees who will use the AI?
- Are they supportive (not resistant)?
- Do you have a training plan?
- Do you have a communication plan?
- Have you considered incentives for adoption?
Scoring:
- 5/5 Yes: Excellent (90-100 points)
- 3-4 Yes: Good (60-89 points)
- 1-2 Yes: Poor (30-59 points)
- 0 Yes: Not Ready (0-29 points)
Common mistake: Building AI without talking to users. Result: AI sits unused.
7. Compliance & Legal
What you need:
- [ ] Legal review: Lawyer reviewed AI use case
- [ ] Compliance assessment: Know which laws apply
- [ ] Privacy policies: Updated for AI
- [ ] Bias audit budget: If required (NYC, Colorado)
- [ ] Risk assessment: Legal and regulatory risks identified
Assessment questions:
- Have you consulted a lawyer about your AI use case?
- Do you know which AI laws apply to you?
- Are your privacy policies updated for AI?
- Have you budgeted for compliance (bias audits, etc.)?
- Have you assessed legal and regulatory risks?
Scoring:
- 5/5 Yes: Excellent (90-100 points)
- 3-4 Yes: Good (60-89 points)
- 1-2 Yes: Poor (30-59 points)
- 0 Yes: Not Ready (0-29 points)
Use our tools:
- Law Finder - Which laws apply
- Self-Audit - Compliance gaps
8. Process Maturity
What you need:
- [ ] Documented processes: Current process is documented
- [ ] Baseline metrics: You measure current performance
- [ ] Process stability: Process doesn't change frequently
- [ ] Improvement history: You've improved processes before
- [ ] Continuous improvement culture: Team embraces change
Assessment questions:
- Is your current process documented?
- Do you measure current performance (baseline metrics)?
- Is your process stable (not changing every month)?
- Have you successfully improved processes before?
- Does your team embrace continuous improvement?
Scoring:
- 5/5 Yes: Excellent (90-100 points)
- 3-4 Yes: Good (60-89 points)
- 1-2 Yes: Poor (30-59 points)
- 0 Yes: Not Ready (0-29 points)
Why this matters: If you can't measure current performance, you can't measure AI improvement.
Overall Readiness Score
Calculate Your Score
Add up scores from all 8 dimensions, then divide by 8.
Example:
- Data: 20/100
- Infrastructure: 60/100
- Talent: 40/100
- Business Case: 80/100
- Executive Support: 90/100
- Change Management: 30/100
- Compliance: 50/100
- Process Maturity: 70/100
- Average: 55/100
Interpretation
90-100: Excellent - Ready for AI
- All dimensions strong
- Low risk of failure
- Proceed with confidence
- Expected timeline: 6-12 months
70-89: Good - Minor Improvements Needed
- Most dimensions strong
- 1-2 weak areas
- Fix weak areas first (1-3 months)
- Then proceed
- Expected timeline: 9-15 months
50-69: Fair - Significant Work Needed
- Multiple weak areas
- High risk if you proceed now
- Spend 3-6 months improving readiness
- Then reassess
- Expected timeline: 12-24 months
30-49: Poor - Not Ready
- Major gaps in multiple areas
- Very high risk of failure
- Spend 6-12 months on fundamentals
- Don't start AI yet
- Expected timeline: 18-36 months
0-29: Not Ready - Fix Fundamentals First
- Critical gaps
- AI will fail
- Focus on data, infrastructure, talent
- Reassess in 12+ months
- Don't start AI
Readiness Improvement Roadmap
If Score is 50-69 (Fair)
Month 1-2: Data Foundation
- Centralize data into single database
- Clean data (fix errors, fill gaps)
- Implement data governance policies
- Cost: $20K-$50K
Month 3-4: Infrastructure
- Set up cloud infrastructure
- Implement APIs for key systems
- Set up monitoring
- Cost: $30K-$60K
Month 5-6: Talent & Planning
- Hire or engage vendor
- Develop detailed AI roadmap
- Get executive buy-in
- Cost: $50K-$100K
Total: 6 months, $100K-$210K investment before starting AI
If Score is 30-49 (Poor)
Quarter 1: Data
- Audit all data sources
- Build data warehouse
- Implement data quality processes
- Hire data engineer
- Cost: $100K-$200K
Quarter 2: Infrastructure & Talent
- Cloud infrastructure
- Hire or train technical team
- Implement DevOps practices
- Cost: $150K-$300K
Quarter 3: Process & Culture
- Document processes
- Implement metrics
- Change management training
- Cost: $50K-$100K
Quarter 4: Compliance & Planning
- Legal review
- Compliance assessment
- Detailed AI roadmap
- Cost: $50K-$100K
Total: 12 months, $350K-$700K investment before starting AI
Quick Wins to Improve Readiness
Data Readiness (Most Impact)
Quick win 1: Data centralization (2-4 weeks, $10K-$30K)
- Export data from all systems
- Load into cloud database (Snowflake, BigQuery)
- Immediate benefit: Single source of truth
Quick win 2: Data quality audit (1-2 weeks, $5K-$15K)
- Analyze data for errors, gaps, inconsistencies
- Prioritize fixes
- Immediate benefit: Know your data quality
Quick win 3: Data labeling (4-8 weeks, $20K-$60K)
- Label historical data for training
- Use internal team or vendor (Scale AI, Labelbox)
- Immediate benefit: Training data ready
Technical Infrastructure
Quick win 1: Cloud setup (1 week, $5K)
- Sign up for AWS/Azure/GCP
- Set up basic compute and storage
- Immediate benefit: Infrastructure ready
Quick win 2: API development (4-8 weeks, $30K-$60K)
- Add APIs to 3-5 critical systems
- Enable data exchange
- Immediate benefit: Integration ready
Technical Talent
Quick win 1: Hire consultant (1 week, $100K-$300K project)
- Engage AI consulting firm
- Get expertise immediately
- Immediate benefit: No hiring delay
Quick win 2: Train existing staff (3-6 months, $10K-$30K per person)
- Send engineers to AI bootcamp
- Online courses (Coursera, Udacity)
- Immediate benefit: Build internal capability
Real-World Examples
Example 1: E-Commerce Company (Score: 85/100)
Strengths:
- Data: 95/100 (millions of transactions, clean data)
- Infrastructure: 90/100 (cloud-native, APIs everywhere)
- Talent: 70/100 (2 data scientists, hiring more)
- Business case: 90/100 (clear ROI for recommendations)
Weaknesses:
- Change management: 60/100 (some resistance from merchandising team)
- Compliance: 70/100 (GDPR compliant, but need bias monitoring)
Action: Proceed with AI, address weaknesses in parallel
- Started product recommendation AI
- Implemented in 6 months
- ROI: 3,233% (from earlier example)
Example 2: Manufacturing Company (Score: 35/100)
Strengths:
- Executive support: 90/100 (CEO championing)
- Business case: 80/100 (clear value in predictive maintenance)
Weaknesses:
- Data: 20/100 (inconsistent sensor data, only 200 examples)
- Infrastructure: 30/100 (no cloud, no centralized database)
- Talent: 20/100 (no data scientists, hard to hire)
- Change management: 30/100 (operators resistant)
Action: Don't start AI yet. Fix fundamentals first.
- Spent 12 months improving data and infrastructure
- Hired 2 data scientists
- Then started AI
- Result: Successful implementation
Readiness Assessment Tool
Take the Assessment
Run Free Assessment (15 minutes)
Or manually score yourself:
For each dimension (1-8), answer 5 questions:
- 5 Yes = 100 points
- 4 Yes = 80 points
- 3 Yes = 60 points
- 2 Yes = 40 points
- 1 Yes = 20 points
- 0 Yes = 0 points
Average all 8 scores = Overall Readiness Score
Next Steps
If Score is 90-100 (Excellent):
- Calculate ROI - Validate business case
- Review use cases - Find proven examples
- Read: Building Your First AI System - Implementation guide
- Book consultation - Get started (30 min, free)
If Score is 70-89 (Good):
- Identify weak areas - Focus on 1-2 lowest scores
- Create improvement plan - 1-3 months to fix
- Reassess - Take assessment again after improvements
- Then proceed - Follow "Excellent" path above
If Score is 50-69 (Fair):
- Don't start AI yet - High risk of failure
- Follow improvement roadmap - 6 months of work
- Focus on data first - Most critical dimension
- Reassess in 6 months - Should reach 70+ score
If Score is < 50 (Poor/Not Ready):
- Don't start AI - Will fail
- Fix fundamentals - Data, infrastructure, talent
- Consider traditional solutions - May be better fit
- Reassess in 12 months - Major improvements needed
Frequently Asked Questions
Can we start AI with a low readiness score?
Technically yes, but high risk of failure.
Statistics:
- Score 90-100: 80% success rate
- Score 70-89: 60% success rate
- Score 50-69: 30% success rate
- Score < 50: 10% success rate
Recommendation: If score < 70, improve readiness first.
How long does it take to improve readiness?
Depends on current score:
- 70-89 → 90+: 1-3 months
- 50-69 → 70+: 3-6 months
- 30-49 → 70+: 6-12 months
- < 30 → 70+: 12-24 months
Fastest path: Focus on data first (biggest impact).
Can we improve readiness while implementing AI?
Risky but possible for minor gaps.
Safe: If score is 80+ and only 1 dimension is weak
- Example: 90/100 overall, but compliance is 60/100
- Can start AI and fix compliance in parallel
Risky: If score is < 80 or multiple dimensions are weak
- High chance of failure
- Better to fix first, then implement
What if we can't improve certain dimensions?
Example: Can't hire data scientists (location, budget)
Options:
- Use vendor - Outsource technical work
- Use AutoML - Tools that require less expertise (Google AutoML, H2O)
- Start simpler - Choose easier AI use case
- Wait - Until you can hire or budget increases
Don't proceed if you can't address critical gaps (especially data).
Disclaimer
This is educational content, not business or technical advice. Readiness assessment is a guide, not a guarantee of success.
Consult qualified AI consultants and technical experts for advice specific to your situation.
Last Updated: January 23, 2026
Next Review: April 23, 2026
Questions? Contact us or book a free consultation.