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Data Analytics & Automation Lead (Power Platform)

Lloyds Banking Group
Edinburgh
1 day ago
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A leading banking institution in the UK is seeking a Data Analytics & Automation Manager to provide insights and develop data solutions across various platforms. This hybrid role requires expertise in Power Platform development and significant interaction with Legal and Governance teams. The ideal candidate will have excellent communication skills, project management experience, and a commitment to promoting diversity and inclusion within the workplace.
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