Senior AI & Data Strategy Consultant

EY
Manchester
5 days ago
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A leading global consulting firm in Manchester is seeking an AI and Data Strategist to drive enterprise-wide AI transformation initiatives. The ideal candidate will define comprehensive AI strategies, support industry analysis, and contribute to organizational AI maturity. Applicants should have a strong STEM background, experience in enterprise-level AI strategies, and excellent communication skills. This role offers opportunities to work collaboratively in a diverse team and to contribute significantly to transformative projects.
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