Thank you.
Chair, vice-chairs and members of the committee, thank you for the invitation to appear today.
My remarks focus on one central message: Canada is not falling behind in artificial intelligence, research or talent, but we are at risk of falling behind in AI execution and productivity impact.
Canada remains a global leader in foundational AI research, ethics and graduate-level talent. We produce world-class ideas, models and researchers. The gap is not in invention but in translation, turning research excellence into large-scale deployment, productivity gains and sustained economic impact.
Over the next decade, countries that lead in AI will not be those that publish the most papers. They will be those that embed AI most effectively into the real economy, influencing finance, energy, health, logistics, public services and critical infrastructure.
The single biggest obstacle to AI adoption in Canada is not technology; it is institutional capability. Canada produces excellent engineers and data scientists. What we lack at scale are AI-literate executives, AI-capable boards, and AI-trained regulators and senior public servants. Without this leadership layer, AI remains siloed, risk-averse and under-scaled, even when funding and technical talent are available.
On employment, the core risk is not mass unemployment but uneven transition. AI primarily displaces tasks rather than entire occupations. The real risks are job polarization, widening productivity gaps across firms and sectors, and skill obsolescence, particularly among mid-career workers. The policy response should not be to slow AI adoption. It should be to align AI deployment with workforce transition, re-skilling and executive training so that productivity gains are broadly shared.
With respect to regulation, Canada should focus on regulating AI systems and outcomes, not just models. Effective governance emphasizes explainability, bias monitoring, auditability, data governance and cyber-resilience. This approach allows innovation to continue, while ensuring accountability where real-world risk occurs.
This leads to Canada's strategic opportunity. Canada does not need to out-scale the United States or China in AI platforms. Our opportunity is to outperform in trusted, regulated, large-scale AI deployment. Canada can lead globally in regulated and trustworthy AI, privacy-preserving AI, and AI deployment in finance, infrastructure and public systems. In these domains, institutional trust is not a constraint; it is a competitive advantage.
From a federal policy perspective, three priorities matter the most: first, executive and public sector capability building, including AI literacy at the board, deputy minister and regulator levels; second, shared national data and AI infrastructure to move beyond fragmented pilots toward scalable platforms; and third, clear deployable standards for trustworthy AI so that organizations can operationalize, certify and scale AI responsibly.
In closing, the biggest policy mistake Canada could make is treating AI as only an innovation issue rather than a national infrastructure issue. AI now underpins economic security, payment systems, energy grids, public services and cyber-resilience. Governing it accordingly through capability, coordination and accountability will shape Canada's productivity and competitiveness over the next decade.
Thank you. I look forward to your questions.