GenAI & MLOps Architect for Enterprise AI

Capgemini Invent
Manchester
2 days ago
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A leading technology consultancy in Manchester is seeking an AI engineer to design and operationalize advanced AI solutions. This role focuses on bridging the gap between AI prototypes and embedding these solutions within businesses. Responsibilities include developing MLOps frameworks and collaborating with various stakeholders to ensure impactful AI implementations. Candidates should have proven experience in consultancy and deep knowledge of Generative AI technologies. Join a dynamic team passionate about innovation and technology transformation.
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