78.1% of Canadian non-adopters say AI is “not relevant.”
Ottawa has created a Ministry of Artificial Intelligence and Digital Innovation to accelerate adoption and competitiveness.
Canada’s per-capita GDP and productivity are sliding while the U.S. grows—because U.S. firms are re-wiring workflows with AI, even if imperfectly.
This isn’t a tech gap; it’s a mindset gap—concentrated among older owner cohorts slow to change, holding back their own firms’ growth.
Survey snapshot (Q3 2025). Only a small minority plan to use AI in the next 12 months, a clear majority have no plans, and among the non-adopters the #1 reason is “not relevant.” Not cost. Not skills. Relevance. That should set off alarms—because relevance is exactly where AI is winning across routine, repeatable work.
Where adopters actually start. The planned use cases aren’t exotic R&D; they’re the horizontal functions every firm runs:
Virtual/voice agents to answer, route, book, and follow up 24/7.
Analytics copilots to surface trends, forecasts, and exceptions in minutes.
Text/NLP/LLMs to draft emails, proposals, reports, and knowledge base content at scale.
Why “not relevant” is the most dangerous answer.
Calling AI “not relevant” does three kinds of damage:
It freezes process change. If leaders misframe AI as a new product line instead of operations infrastructure, they never audit the workflows where the gains live (inbound calls, scheduling, collections, documentation).
It compounds the productivity gap. Every month without AI in core workflows pays a “relevance tax”—lost time, slower quotes, higher abandonment, and lower utilisation that competitors are already clawing back.
It disguises capability as preference. “Too costly” or “no skills” can be solved with scoped pilots, training hours, and vendor templates; “not relevant” ends the conversation before it starts.
Bottom line. The data don’t show a country priced out of AI—they show a country that doesn’t believe AI touches its day-to-day work. That belief—not budgets—is what’s holding Canadian firms back.
What Ottawa is doing. The new federal mandate is unapologetically pro-adoption:
Accelerate adoption across public services and the private sector.
Build Canadian compute and core infrastructure to lower barriers for AI workloads.
Modernize guardrails (privacy, consent, auditability) so pilots don’t stall on compliance theatre.
Seed SME pilots with incentives, templates, and procurement pathways that reward measurable outcomes.
The contradiction. We have a policy tailwind—but inside too many boardrooms, executives still say AI is “not relevant.” Ottawa is pressing the gas while Main Street rides the brake. That gap turns national strategy into zero lift.
What this really reveals. The blocker isn’t regulation or tools; it’s leadership conviction.
If owners won’t audit sales, service, scheduling, dispatch, collections, and documentation for AI leverage, no amount of policy will move KPIs.
If pilots aren’t given targets (answer time, FCR, quote TAT) and runway, guardrails become excuses instead of enablers.
If leaders equate AI with a “new product line” instead of operations infrastructure, they’ll keep losing on speed, cost, and customer experience.
Bottom line. Ottawa is building the runway. Canadian business owners must decide whether to take off—or keep taxiing in circles while competitors clear the sky.
The U.S. pulse. Overall AI use keeps broadening. Yes, some large enterprises wobble quarter to quarter on reported usage or ROI, but underneath the headlines, teams are re-wiring workflows—contact centres, finance ops, marketing ops, forecasting, and internal knowledge—so value keeps compounding even when pilots are imperfect.
Canada’s macro picture. Per-capita GDP is sliding and productivity is stagnant. That’s exactly the terrain where AI-driven cycle-time cuts, higher first-contact resolution, and better scheduling/forecasting should be pulling weight—if firms were deploying them at scale.
The U.S. macro backdrop. Real GDP is growing, giving firms confidence to keep investing in process change. Even with governance noise and model churn, managers are moving ahead with ops-first integrations because they see measurable lift in weeks, not years.
What this means. The U.S. isn’t “winning” because it likes AI more; it’s winning because it ships workflow changes. Canada is arguing about relevance while American teams are shortening queues, speeding quotes, reducing no-shows, and closing the loop on follow-ups. Output follows operations.
What the tax is. It’s the monthly cost of doing nothing—leaving scheduling, dispatch, inbound calls, follow-ups, status updates, and reporting un-automated. It shows up as longer queues, slower quotes, avoidable no-shows, overtime, and missed callbacks. You don’t line-item it in the budget, but it leaks from your margins every single day.
Where it bites (and how to see it).
Scheduling & dispatch: manual juggling → idle gaps and overtime.
Inbound calls: long hold times → abandonment and lost bookings.
Follow-ups: late or never → cold leads, unclaimed service revenue.
Status updates: humans chasing info → context switching, delays, unhappy customers.
Reporting: managers cobbling spreadsheets → stale decisions.
The compounding you’re ignoring. Small wins stack fast:
Cycle time –10–15% → more jobs per tech/rep per week.
First-contact resolution (FCR) +10–15% → fewer reopens, fewer escalations, happier customers.
Quote turn-around time (TAT) –10–15% → higher close rates while intent is hot.
Simple math: Trim 12% off cycle time and 12% off quote TAT, and lift FCR 12%. On the same headcount, many teams see ~8–15% more completed jobs and ~3–7% higher close rates—translating into margin (less overtime, fewer callbacks) and wage capacity (room to pay people better without price hikes).
Why “we’re too small / too local” is the most expensive sentence in Canadian business.
Small firms feel every leak more. A few missed calls or slow quotes a day is thousands per month in lost work.
Local markets magnify reputation. Faster answers and proactive updates earn reviews and referrals—slow shops don’t just lose today’s job; they lose tomorrow’s pipeline.
AI isn’t a product line; it’s ops infrastructure. Refusing to automate the boring parts keeps you paying the relevance tax while your competitor compounds small advantages into a moat.
Bottom line. The relevance tax is a self-inflicted margin cut. Automate the routine, measure the lifts weekly, and bank the gains—or keep paying for inaction, month after month.
Ownership reality. Canada’s business owner base skews older, and the most persistent resistance to AI shows up in 45–64 cohorts—leaders who built their companies in a pre-AI playbook and still trust muscle memory more than measurable pilots. That experience built the firm; it’s also what’s now blocking the next efficiency curve.
Governance theatre vs. delivery. Too many leadership teams are:
Over-indexing on risk memos (privacy, consent, “what if” committees)
Under-indexing on pilots (no KPI targets, no 30-day sprints, no rollback plans)
Translation: lots of paper, no throughput change.
Operational symptoms you can spot:
Quarterly talk about “responsible AI,” zero weekly KPI reviews from actual AI workflows
Pilot proposals stuck behind procurement gauntlets not sized for <$25K, 30-day experiments
“Center of Excellence” slides… but the contact centre queue still looks the same as last year
The hard truth. If you’re steering a firm and calling AI “not relevant,” you are the risk, not the regulator. Regulators are increasingly enabling responsible trials; leadership disbelief is what keeps phones on hold, quotes slow, and reports late.
What decisive leadership looks like (at any age):
Green-light two tightly scoped pilots tied to 3–5 KPIs (answer time, FCR, quote TAT, no-show rate, hours per report)
Allocate training hours on the calendar, not in theory
Demand a Week-4 decision: scale what clears +10% improvement; sunset what doesn’t
Keep governance light but real: consent language, data minimization, audit logs, escalation thresholds
Bottom line. Experience should be an accelerator, not an anchor. If your playbook predates AI and you refuse to test relevance, you’re not protecting the business—you’re capping its future.
Narrative 1: “AI will take all the jobs.”
What’s true: The near-term impact is task-mix shift, not mass layoffs. Routine cognitive tasks compress; higher-leverage tasks expand (exception handling, relationship work, QA).
What the data indicate: Headcount outlook is mostly neutral among Canadian firms that plan to adopt—leaders expect role redesign more than staff cuts.
What to do: Budget retraining hours per role and re-scope job descriptions. Measure task-level outcomes (tickets/hour, quotes/rep, FCR), not just headcount.
Narrative 2: “AI winter is here.”
What’s true: Some large enterprises show quarter-to-quarter wobble on usage/ROI.
What the data indicate: Wobble ≠ stall. Workflow integration keeps expanding in contact centres, revenue ops, finance, scheduling, and reporting because lifts appear within weeks.
What to do: Run 30-day pilots tied to 3–5 KPIs. Keep what clears +10%; sunset the rest.
Narrative 3: “We tried a bot in 2020.”
What’s true: Early chatbots were brittle; voice quality was poor.
What the data indicate: 2025 capabilities are different—far better speech, routing, retrieval, analytics, and HITL escalation. Winning plays are voice agents (inbound/outbound) and analytics copilots, not gimmick chats.
What to do: Treat AI as ops infrastructure. Pilot voice for booking/follow-ups and analytics for weekly reviews; ship the boring, bankable wins first.
Narrative 4: “AI is a threat to human safety.”
What’s true: Frontier misuse and model errors are legitimate concerns; guardrails matter.
What the data indicate: The operational use cases most SMEs need (call routing, reminders, document drafting, analytics) are low-risk when properly governed—with consent, audit logs, escalation, and clear fail-safes.
What to do: Implement minimum viable safety: role-based access, rate limits, red-teaming of prompts, human-in-the-loop for sensitive actions, and kill switches for live voice agents. Treat this like workplace safety: procedures + drills, not paralysis.
Narrative 5: “Privacy and data security make AI unusable.”
What’s true: Privacy laws and vendor data handling must be respected; PHI/PII needs special care.
What the data indicate: You can deploy AI with data minimization, encryption, consent capture, and strict retention. Many workflows run on metadata or non-sensitive transcripts; sensitive fields can be masked, tokenized, or processed in controlled environments.
What to do:
Design for least data: collect only what the task needs; mask sensitive fields.
Contract for accountability: no training on your data, auditable logs, breach notification SLAs.
Segment by risk: start with low-sensitivity use cases (inbound triage, reminders, status lookups), then expand with DLP and access controls.
Consent & notices: clear scripts for voice agents; store proof of consent alongside call records.
Bottom line: These narratives aren’t just wrong—they’re expensive. While we debate hypotheticals, competitors shave minutes off queues, days off quotes, and points off churn—advantages that stack into margins, wages, and market share.
Healthcare & clinics
24/7 voice reception routes, books, and screens without holds; overflow and after-hours become captured appointments, not voicemail.
Recall/reminders reduce no-shows and fill cancellations automatically.
Consent capture scripted into calls with timestamped records; after-hours answering handles urgent triage and next-day booking.
KPI lift to expect: no-shows ↓, time-to-answer ↓, bookings/agent ↑, staff overtime ↓.
Trades & HVAC
Outbound service reminders and lead follow-up revive dormant quotes and maintenance plans.
Quote/booking handled by voice agent from first call; status calls deflected with automated updates.
KPI lift to expect: quote TAT ↓, close rate ↑, first-call booking ↑, truck-roll utilisation ↑.
Manufacturing & logistics
Order-status lines give customers self-serve updates; ETA announcements reduce “where’s my order?” calls.
Procurement copilots consolidate supplier data and draft POs; QC documentation pre-drafted from checklists and sensor notes.
KPI lift to expect: customer calls ↓, late-shipment claims ↓, buyer hours/report ↓, audit readiness ↑.
Hospitality & venues
Guest assistance for FAQs, amenities, and room/service requests.
Queue/routing prioritizes high-value guests; event notifications push timely updates.
Multilingual handling broadens service without extra headcount.
KPI lift to expect: wait time ↓, upsell conversion ↑, review scores ↑, staff churn ↓.
Municipal & utilities
Outage lines scale during spikes with real-time updates.
Permit/status lookups without human agents; payment reminders reduce arrears.
IVR deflection routes complex cases to humans while clearing routine calls.
KPI lift to expect: call abandonment ↓, first-contact resolution ↑, arrears ↓, citizen satisfaction ↑.
Bottom line: None of this is flashy. It’s the unglamorous 60–80% of work that eats hours. Automate it, measure weekly, and bank the gains.
When did a hold time, a missed call, or a late quote last cost you a customer? If you can picture the moment, you already know where to start fixing.
Are you tracking performance like it’s 2015—or like someone who plans to hand this business to the next generation? What will your successors measure that you aren’t?
What’s harder to defend: the small cost of a 30-day pilot, or telling your team and customers you let competitors beat you on speed and service?
Bottom line: If it isn’t measured weekly, it isn’t managed. Pick the 3–5 metrics that actually move revenue and loyalty—and make them impossible to ignore.
If you had 30 days to prove AI can smooth operations, where would you start?
Circle the two chokepoints that reliably slow you down (e.g., phone queues, follow-ups, quotes). Commit to fixing those first—nothing else.
Which five repetitive tasks waste the most time—and what happens if you free that time?
Write them down. Think calls answered, reminders sent, status updates, data entry, report drafting. If you reclaimed even 30 minutes per person per day, what would you redeploy that time into?
When your staff go home exhausted, are you leaving them the same broken processes—or evolving them now?
Your team doesn’t need pep talks; they need fewer manual handoffs, fewer callbacks, and fewer spreadsheets. That’s what pilots are for.
What kind of company will you pass on: one that “waited and worried,” or one that tested, measured, and grew?
Legacy isn’t nostalgia—it’s systems that work for the next owner.
Your 30-day proof plan (keep it simple):
Week 1 — Pick & Baseline: Choose two workflows. Capture 3–5 metrics (answer time, FCR, quote TAT, no-show rate, hours-to-report).
Weeks 2–3 — Pilot: Swap in lightweight AI where it hurts: voice for inbound/outbound and an analytics copilot for weekly reviews. Keep humans in the loop.
Week 4 — Decide: If you see ≥10% improvement on any metric, keep and scale. If not, sunset and test the next workflow.
Bottom line: In 30 days, you can prove AI is relevant inside your four walls—or you can keep guessing while competitors measure and move.
Ottawa built a ministry to accelerate adoption—so why are you still saying “not relevant”?
If national policy is moving to fast-track AI, “not relevant” reads less like prudence and more like willful denial.
If government treats AI as a national priority, can you afford to ignore it in your own business?
Priorities signal where advantages and incentives will accrue. Those who move first capture them; spectators don’t.
When subsidies, procurement lanes, and infrastructure open, are you ready—or will competitors collect the benefits?
Do you have a pilot packet (KPIs, consent language, data plan) ready to submit, or are you starting from zero when programs launch?
If the country is preparing for the next economy, why is your firm still running on the last one?
Legacy systems aren’t a badge of honour—they’re a drag on service, margins, and succession value.
Bottom line: Ottawa is lowering the barriers. Your job is to walk through the door—with a pilot ready, KPIs set, and the conviction to scale what works.
When typewriters gave way to computers, leaders retrained. What’s your training plan for the AI era?
List the roles, list the tasks, and assign hours on the calendar—not intentions—to learn the tools that will live in their workflow.
If some tasks disappear, which new ones appear—and who owns them?
Expect more exception handling, QA, prompt design, routing, analytics review, and escalation. Who’s being prepared to do that work well?
Do you want to be remembered for shielding staff from change—or equipping them for the future?
Protection without preparation is a false kindness. Set up role redesigns and laddered skill paths so people can step up, not out.
Have you set aside hours—not just words—for learning?
Commit to 2–3 hours/week per person for real practice: sandbox calls, prompt libraries, failure reviews, and HITL drills.
Minimum viable plan (start this quarter):
Map tasks → skills: For each role, tag 3 routine tasks to automate and 2 new tasks to learn.
Schedule training time: Put recurring calendar blocks for hands-on practice and shadowing.
Assess weekly: Track task-level metrics (tickets/hour, quote TAT, FCR) to show progress and adjust coaching.
Celebrate upgrades: Make promotions and pay bumps follow the skills, not the job titles.
Bottom line: The future won’t wait for your comfort. Train people now, on the work they’ll actually do next—so your team, and your business, move forward together.
Remember digitizing records, moving payroll online, trusting cloud email?
Each shift carried risk—and you adapted. Why is AI different? Treat it like any other operational upgrade: plan, pilot, monitor, improve.
Are you writing memos about what might go wrong while competitors build safeguards and keep moving?
Progress isn’t luck; it’s controls plus cadence. Document risks, then implement practical guardrails and run the pilot anyway.
You measure employees on accuracy, speed, reliability. Why not hold AI to the same standards?
Define clear thresholds—accuracy targets, latency ceilings, coverage goals, escalation rules—and audit them weekly.
Is “we’ll wait until it’s 100% safe” just code for standing still?
Nothing in operations is 100%. The winning posture is safe enough to start, structured enough to learn.
Minimum viable guardrails (put these in your pilot packet):
Least-data design: collect only what the task needs; mask sensitive fields.
Consent & notice: plain-language scripts for voice/web; log consent with timestamps.
Access controls: role-based permissions; encrypt at rest/in transit; DLP on transcripts.
Audit & review: immutable logs; weekly failure reviews; red-team prompts for edge cases.
HITL & kill switch: auto-escalate on low confidence/sensitive intents; one-click rollback if metrics or errors breach thresholds.
Bottom line: Risk management should unlock progress, not postpone it. Build guardrails that let you move—and insist on the same performance discipline from AI that you expect from your people.
“We’ll wait for regulation.”
Rebuttal: You’ll miss the learning curve and the data flywheel. Competitors will already have scripts, prompts, guardrails, and team muscle memory when you start. Regulation won’t reward latecomers.
“Our customers want humans.”
Rebuttal: Hybrid models get customers to a human faster by clearing routine calls and triage. Time-to-human drops, abandonment drops, churn drops. Keep humans for edge cases; let AI handle the queue.
“We don’t have skills.”
Rebuttal: Pick vendors with HITL (human-in-the-loop) and ops-first templates. Train on your real workflows (inbound, follow-ups, quotes) for 2–3 hours/week. Skills emerge from usage, not slide decks.
“We tried this in 2020; it failed.”
Rebuttal: 2025 voice, routing, retrieval, and analytics are not the 2020 product. Treat the pilot like any tool upgrade: tighter scope, clearer KPIs, better escalation rules—and a four-week go/no-go gate.
“We’re too small / too local.”
Rebuttal: Small firms feel every leak more. A handful of missed calls or slow quotes per day is thousands per month. AI here is ops plumbing, not a moonshot.
“It’s too risky.”
Rebuttal: Risk is managed, not avoided: least-data design, consent scripts, access controls, audit logs, kill switch, escalation thresholds. If you can run payroll online, you can run a governed pilot.
“Show me guaranteed ROI first.”
Rebuttal: Pilots exist to measure ROI in your context. Set 3–5 KPIs (answer time, FCR, quote TAT, no-show rate, hours-to-report). Keep what clears +10%; sunset the rest. That is your guarantee.
“Our team is already overloaded.”
Rebuttal: Exactly why you start. Automate the boring 60–80% (triage, reminders, status lookups, drafts) to give people back time. Overload won’t fix itself.
“Privacy and data security will block us.”
Rebuttal: Start with low-sensitivity workflows, mask fields, forbid model training on your data by contract, and log everything. Privacy doesn’t stop pilots; it structures them.
“This will replace jobs.”
Rebuttal: The near-term change is task mix, not mass cuts. Your choice: redeploy people to higher-value work or watch them drown in manual tasks while competitors redeploy theirs.
Boardroom bottom line: Objections are solvable. Inaction isn’t. Define a four-week pilot with hard KPIs, light guardrails, and a real scale plan—then decide on evidence, not anxiety.
You look like the world you sell into. Frontline teams use AI-augmented voice and analytics as naturally as email. Customers feel the new norm—fast answers, proactive updates, smooth handoffs—because that’s what global leaders already provide.
You’ve joined the bigger tide, not fought it. Your operations align with the global shift toward AI-powered service, the same wave being accelerated by massive U.S. public/private investment. You’re no longer an outlier; you’re compatible with where supply chains and partner expectations are heading.
Habits have changed—permanently.
Staff reach for AI tools first for triage, summaries, and updates.
Managers run weekly AI-assisted reviews to spot bottlenecks and decide next experiments.
Execs ask, “Which workflow do we modernize next?” not “Should we?”
You’ve moved from “pilot” to a repeatable play. The pieces—voice scripts, prompts, routing rules, consent language—are templated and reusable across teams. New use cases plug into the same shared components instead of starting from scratch.
Vendors and partners take you seriously. You speak their language: data boundaries, escalation paths, fallbacks. You’re ready to plug into larger ecosystems—distribution, platforms, and marketplaces—because you operate on modern rails.
People strategy is future-facing. Roles are evolving: more exception handling, QA, analytics review, and customer stewardship. You’ve carved out learning time and can recruit younger operators who expect these tools at work.
Governance enables acceleration. Guardrails exist (consent, access controls, audit logs), not as paperwork but as routines. Risk isn’t a blocker; it’s managed the same way you manage safety or finance.
Your story to stakeholders has flipped. Instead of defending inaction, you can tell customers, lenders, and boards:
“We modernized core workflows, aligned with global practices, and we’re expanding what works next quarter.”
Bottom line: By Day 90, success isn’t a spreadsheet—it’s culture, compatibility, and momentum. You’re operating on the same trajectory as the markets shaping your future, and you’ve built a simple engine to keep moving with them.
Ottawa is pushing the gas; too many owners are riding the brake. The country is reorganizing around AI because that’s where competitiveness is going. If you’re still workshopping excuses, you’re not cautious—you’re out of step.
If you’re not actively piloting AI, you’re choosing lower wages, slower growth, and lost exports. Markets reward faster answers, cleaner handoffs, and proactive service. Those don’t appear by accident; they come from tools you refuse to test.
Treat AI as operations infrastructure, not a shiny side project—then scale what works. Modernize the boring, repeatable work first, make the new habits weekly, and keep moving. The firms that do this won’t just survive the shift; they’ll set the standard everyone else has to meet.
Every business is a living story. Some chapters are written in long nights and old routines; the next ones will be written with new tools and quieter effort. Whether you’re a small shop, a growing mid-market team, a transit system keeping a city moving, or a public service caring for citizens—we’re here to help you take the next gentle step.
We believe AI isn’t about replacing people; it’s about giving them time back—so the work feels lighter, service feels kinder, and the future feels a little closer. If you’re just starting, we’ll walk with you. If you’ve already begun, we’ll help you keep going. No pressure, no jargon—just thoughtful progress at a pace that fits your people and the community you serve.
Ready to explore the next chapter?
Book a discovery call to start your journey. We’ll listen first, map a simple path forward, and build only what helps—nothing more, nothing less.
Analysis on expected use of artificial intelligence by businesses in Canada, Q3 2025
https://www150.statcan.gc.ca/n1/pub/11-621-m/11-621-m2025011-eng.htm
Analysis on artificial intelligence use by businesses in Canada, Q2 2024 (methods, early baselines)
https://www150.statcan.gc.ca/n1/pub/11-621-m/11-621-m2024008-eng.htm
Analysis on expected use of AI by businesses in Canada, Q3 2024 (PDF)
https://publications.gc.ca/collections/collection_2024/statcan/11-621-m/11-621-m2024013-eng.pdf
MNP: Canada’s New Ministry of AI: Key Impacts for Innovators (overview of mandate and implications)
https://www.mnp.ca/en/insights/directory/what-it-means-for-canadian-innovators
U.S. Census Bureau: BTOS AI Supplement announcement
https://www.census.gov/newsroom/press-releases/2024/business-trends-outlook-survey-artificial-intelligence-supplement.html
U.S. Census Bureau Working Paper: Tracking Firm Use of AI in Real Time (BTOS)
https://www.census.gov/library/working-papers/2024/adrm/CES-WP-24-16.html
BEA GDP landing page (latest quarterly U.S. real GDP estimates, incl. Q2 2025 +3.3%)
https://www.bea.gov/data/gdp/gross-domestic-product
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https://www.bea.gov/sites/default/files/2025-01/gdp4q24-adv.pdf
Statistics Canada: Gross domestic product per capita — returning to trend is no small task (per-capita GDP decline & productivity discussion)
https://www150.statcan.gc.ca/n1/pub/36-28-0001/2024004/article/00001-eng.htm
Government of Canada: 2024 Fall Economic Statement (context on incomes/productivity; PDF)
https://budget.canada.ca/update-miseajour/2024/report-rapport/FES-EEA-2024-en.pdf
Pew Research Center: Workers’ views of AI use in the workplace (Feb 25, 2025)
https://www.pewresearch.org/social-trends/2025/02/25/workers-views-of-ai-use-in-the-workplace/
Pew Research Center hub — AI topics & reports (context and follow-ups)
https://www.pewresearch.org/topic/internet-technology/emerging-technology/artificial-intelligence/
Washington Post: Why it’s the toughest time to be searching for work in America in years (automation cited among factors)
https://www.washingtonpost.com/business/2025/09/07/layoffs-hiring-slowdown/
Statistics Canada: Business Ownership Diversity Dashboard (with links to age tables)
https://www150.statcan.gc.ca/n1/pub/71-607-x/71-607-x2024026-eng.htm
StatCan Table 33-10-0844-01 — Number of enterprises in Canada, by revenue group and age of owner (interactive table)
https://www150.statcan.gc.ca/t1/tbl1/en/tv.action?pid=3310084401
Open Government Portal entry for 33-10-0844-01 (dataset & downloads)
https://ouvert.canada.ca/data/dataset/1570cc15-4376-4d32-bdc3-73c0e7b7b059
McKinsey (2025): The State of AI — How organizations are rewiring to capture value (PDF)
https://www.mckinsey.com/~/media/mckinsey/business%20functions/quantumblack/our%20insights/the%20state%20of%20ai/2025/the-state-of-ai-how-organizations-are-rewiring-to-capture-value_final.pdf
McKinsey (2025): Superagency in the workplace: Empowering people to unlock AI’s full potential
https://www.mckinsey.com/capabilities/mckinsey-digital/our-insights/superagency-in-the-workplace-empowering-people-to-unlock-ais-full-potential-at-work
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