ML & AI Engineering Lead: Generative AI & MLOps

Royal Canin SAS
City of London
1 day ago
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A leading pet nutrition company in the United Kingdom is seeking a Machine Learning and AI Engineering Lead to oversee ML and AI solution development. The successful candidate will work collaboratively with data science teams, design innovative ML products and define KPIs for operational performance. Candidates should have 5-7 years of experience in a quantitative role, particularly in the CPG or retail sector, alongside strong communication skills and a customer-centric mindset.
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