Head of AI Strategy & Data Science Leadership

Addition
St Albans
2 weeks ago
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A forward-thinking business in St Albans is seeking a Head of AI to define and execute its AI strategy. The candidate will lead a high-performing AI and Data Science function, aligning strategic goals with practical AI solutions. Responsibilities include establishing an AI roadmap, championing AI-led innovation, and ensuring measurable outcomes. Ideal applicants should have experience shaping AI strategies and leading analytics teams. This role offers a unique opportunity to drive transformation across the organization.
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