1. Overview
ProgramFinder scores Ontario college programs on a 1–100 scale using a five-pillar AI resilience model. The score reflects how well-positioned a program's graduates are to remain employable as AI and automation tools mature through the late 2020s.
Scores are intended as a comparative research aid — a single, structured signal to help students prioritise and shortlist programs. They are not a career guarantee, an admissions rating, or an indicator of program quality.
Neutral by design
No institution pays to influence a score. The methodology is applied identically to all 194 programs.
Fully transparent
Every pillar, weight, and data source is documented here. You can reconstruct any score from first principles.
Periodically updated
Scores are reviewed when significant labour market shifts or new NOC data are published.
For the student
Designed to be understood in 30 seconds. A higher score means a more durable career path — full stop.
2. The Five Scoring Pillars
Each program is rated 1–10 on five independent factors. The composite score is a weighted sum scaled to 100. Each factor captures a dimension of automation resistance that is supported by labour economics research.
Human Interaction
25% weightMeasures how much the role requires face-to-face human contact, empathy, relationship management, or real-time social judgment.
Rating scale
Examples: Personal Support Worker (9), Social Service Worker (8), Computer Programming (3)
Physical & Hands-On Work
20% weightAssesses the degree to which the role requires physical presence, manual dexterity, spatial reasoning, or working with physical materials, equipment, or environments.
Rating scale
Examples: Dental Assisting (9), Welding and Fabrication (9), Accounting (2)
Licensing & Regulatory Protection
20% weightRates the degree to which practice in the field is governed by statutory licensing bodies, regulated health profession acts, professional certifications, or safety-critical regulatory frameworks.
Rating scale
Examples: Respiratory Therapy (9), Practical Nursing (9), Graphic Design (2)
AI Adaptability
20% weightMeasures how well the program's graduates can leverage AI as a productivity tool rather than being replaced by it — including digital literacy, adaptable skill sets, and ability to work alongside AI systems.
Rating scale
Examples: Advanced Care Paramedic (8), Police Foundations (7), Data Entry (2)
Routine Digital Exposure
15% weightRates the degree to which the role primarily involves processing structured digital information through predictable, rule-based digital workflows — the category most susceptible to AI automation.
Rating scale
Examples: Respiratory Therapy (3 — good), Data Entry (9 — high risk), Nursing Unit Clerk (4)
3. Composite Score Formula
Interaction + 20 × Physical &
Hands-On + 20 × Licensing &
Regulation + 20 × AI
Adaptability − 15 × Routine
Digital
Each pillar is rated 1–10. Weights sum to 100. The Routine Digital Exposure pillar is subtracted (penalty factor). Maximum achievable score: 100. Minimum: 1.
Worked example: Respiratory Therapy
| Pillar | Rating (1–10) | Weight | Contribution |
|---|---|---|---|
| Human Interaction | 9 | ×25 | +22.5 |
| Physical & Hands-On | 7 | ×20 | +14.0 |
| Licensing & Regulation | 9 | ×20 | +18.0 |
| AI Adaptability | 8 | ×20 | +16.0 |
| Routine Digital Exposure | 3 | ×15 | −4.5 |
| Composite score (raw ÷ 10 × 100) | 80 / 100 | ||
4. Career Outlook Data
Source
Career outlook ratings are sourced directly from Employment and Social Development Canada (ESDC) through the Job Bank Employment Outlook for the Ottawa–Gatineau Census Metropolitan Area, covering the 2025–2027 projection period.
Job Bank Employment Outlook · Ottawa–Gatineau CMA · 2025–2027
jobbank.gc.ca ↗
Outlook star ratings
ESDC assigns a 1–5 star employment outlook to each NOC occupation code. We map these directly to the tool's star display:
| Stars | ESDC Label | What it means |
|---|---|---|
| ★★★★★ | Very Good | Significant job openings expected, employment growth above average. |
| ★★★★ | Good | Steady job openings, employment growth at or above average. |
| ★★★ | Moderate | Balanced supply and demand; some openings expected. |
| ★★ | Limited | Employment growth below average; candidate surplus likely. |
| ★ | Very Limited | Weak demand; significant candidate surplus expected. |
NOC mapping
Each college program is manually mapped to the most relevant NOC 2021 occupation code. Where a program prepares graduates for multiple NOC codes, the primary placement occupation is used. NOC codes are reviewed annually.
Important limitations
- ESDC outlook data covers the Ottawa–Gatineau region only. Conditions in Toronto, Hamilton, or London may differ materially.
- Outlook projections are based on labour force surveys and econometric modelling. They are projections, not guarantees.
- Some programs do not map cleanly to a single NOC code. These are assigned 0 stars and labelled "Undetermined".
5. Median Wage Estimates
Median wage figures displayed in the Career Outcome Analysis modal are category-level estimates derived from ESDC Job Bank wage data and Statistics Canada Labour Force Survey data for the Ottawa region.
6. What Scores Don't Measure
The AI resilience score intentionally focuses on a specific question: how automation-resistant is a graduate of this program likely to be? As a result, it does not capture:
Scores are independent of college rankings, student satisfaction, or graduate employment rates reported by the college.
A high score does not indicate a harder program or higher admission standard.
Category-level wage estimates are not a substitute for program-specific salary data from the college.
A score of 90 does not mean the program is right for you. Work style, aptitude, and passion are beyond the model's scope.
Scores reflect Ottawa-region employment outlook data. Other Canadian cities or international job markets may differ.
The model is calibrated to current AI capabilities. Rapid changes in AI — positive or negative — may shift scores significantly.
NOC data measures salaried employment. Freelance or entrepreneurial paths in a field are not captured.
7. Update & Review Process
Career outlook ratings are updated when ESDC publishes a new Employment Outlook cycle (typically every 1–2 years).
If a specific AI tool demonstrably changes the automation risk profile of a category of programs, the affected pillar ratings are reviewed.
When Ontario colleges launch new programs in our tracked categories, they are added and scored using the same methodology.
If a scoring error is identified — for example, a program that was incorrectly mapped to a NOC code — it is corrected and the version number incremented.
Every update increments the dataset version number shown in the tool header. Historical scoring versions are archived and available on request.
8. Independence Statement
No institution pays to influence scores.
ProgramFinder operates independently of all Ontario colleges and post-secondary institutions. College participation in the Growth or Premium partner programme unlocks lead routing and analytics features — it does not affect, adjust, or influence program scores in any way.
The five-pillar scoring methodology is applied identically to all 194 programs regardless of whether the college has a commercial relationship with us, whether the college is aware of the tool, or whether the college has requested changes to their scores.
If you believe a score is factually incorrect — for example, because a licensing requirement has changed — please contact us. Score corrections are welcomed and acknowledged. Contact us →