Chief Artificial Intelligence Officer

PropRec Search
Nottingham
3 months ago
Applications closed

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Chief Artificial Intelligence Officer


Location: Hybrid – United Kingdom

Salary: £175 - £250 + Executive benefits package

Job type: Permanent, full-time

Reference: CAIO


About the opportunity


Our client, a pioneering organisation at the forefront of digital innovation, is seeking a Chief Artificial Intelligence Officer (CAIO) to lead the development and implementation of its AI strategy. This is a newly created executive-level position, offering a rare opportunity to shape the organisation’s AI vision, infrastructure and governance from the ground up.


As the appointed recruitment partner, Proprec Search is supporting our client in identifying an exceptional leader who can translate cutting-edge AI capabilities into meaningful business outcomes, driving innovation, operational efficiency, and competitive advantage across the enterprise.


The role


Reporting directly to the Chief Executive Officer, the Chief Artificial Intelligence Officer will take full ownership of the organisation’s AI roadmap from strategy to delivery. You will provide thought leadership on emerging technologies, establish frameworks for responsible AI governance, and lead the integration of AI solutions into core business operations.


Key responsibilities


• Define and execute a comprehensive AI strategy aligned with corporate objectives and growth targets.

• Oversee the design, development, and deployment of AI/ML solutions across business functions to optimise processes and enhance customer experience.

• Establish ethical and compliant AI governance, ensuring transparency, fairness, and regulatory adherence.

• Lead, inspire and grow a multidisciplinary AI team, fostering collaboration between technical, operational and commercial divisions.

• Develop clear performance metrics and report on AI impact to executive stakeholders and the Board.

• Stay ahead of emerging trends, tools, and regulatory changes in the AI landscape.

• Represent the organisation as an AI thought leader in external forums, industry groups, and with strategic partners.


About you


The successful candidate will be a visionary and commercially astute leader, equally comfortable in the boardroom and the lab. You will combine deep technical expertise in AI and machine learning with the strategic foresight to turn complex data capabilities into tangible business value.


Essential skills and experience:


• Proven experience (10+ years) in AI, data science, or related disciplines, including leadership of enterprise-scale AI initiatives.

• Demonstrable success in creating and executing AI strategies that deliver measurable business results.

• In-depth understanding of AI/ML technologies, including generative AI, automation, analytics, and predictive modelling.

• Experience establishing AI governance, ethics, and compliance frameworks.

• Strong leadership and stakeholder engagement skills with the ability to influence C-suite executives.

• Excellent communication and presentation skills, capable of translating technical concepts into strategic insight.

• Advanced academic qualifications (e.g. MSc/PhD in Computer Science, Data Science, AI, or related field) preferred.


What’s on offer


• Executive-level role with significant strategic impact and autonomy.

• The opportunity to build and lead a world-class AI function.

• Competitive remuneration and benefits package commensurate with senior leadership responsibility.

• Hybrid working environment and progressive organisational culture committed to innovation and ethical technology.

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