Data Product Manager

La Fosse
London
11 months ago
Applications closed

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Data Product Manager - London - £800 per day (Outside)

A Data Product Manager is needed to join a global construction company headquartered in London. In this role, you will oversee the entire lifecycle of BI and data products, playing a key role in driving enterprise digital transformation and maximizing the value of the company's data assets.


You will have a global responsibility and will be working closely with the executive team, therefore having great communication skills will be vital in this role.


The Role

  • Lead the entire product management lifecycle for BI and data products, including analytics, data democratization, and AI-driven solutions.
  • Work closely with the Head of Data and key business stakeholders, including the Digital Transformation, data teams, and senior executives, to define the vision, strategy, and governance for data products.
  • Define and track key product metrics, evaluate product performance, and continuously optimise and iterate based on stakeholder feedback and engineering data insights.

Your Profile

  • Demonstrated success in a senior Product Management role within a data-driven environment, overseeing a portfolio of data products that deliver significant business value.
  • Experience with Power BI, Azure and Databricks.

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