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Business Product Owner, Data Analytics, Azure, Data Engineering, AI ML

Carrington Recruitment Solutions Ltd
London
3 weeks ago
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Business Product Owner, Data Analytics, Azure, Data Engineering, AI, ML, Azure, Mainly Remote

Product Owner (Technical and Business) required to join a global Professional Services business based in Central London. However, this is practically a remote role, but when travel is required (to London, Europe and the States on occasions.

We need someone who has worked on LARGE and SIGNIFICANT products for large enterprise businesses. If you have come from the Big 4 on the Professional Services circuit, even better!

The platform primarily serves two key personas:

  • Data and Intelligence Delivery specialists, who manage data ingestion, transformation, and orchestration processes, and
  • Assurance professionals, who use the analysers to enhance audit quality and client service.

This being said, we need DATA HEAVY Product Owners who have managed complex, Global products. Read on for more details…

Experience required:

  • Technical proficiency:Familiarity with Azure services (e.g., Data Lake, Synapse, Fabric) and Databricks for data engineering, analytics, performance optimisation, and governance. Experience with implementing and optimising scalable cloud infrastructure is highly valued.
  • Backlog management:Demonstrated expertise in maintaining and priori...

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