Data Analytics and Reporting Manager

Fdo Consulting
Gloucester
3 weeks ago
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Data Analytics and Reporting Manager, Gloucester, Gloucestershire

Expanding and successful client based in the Cheltenham/ Gloucester area are looking for a hands-on Data Operations professional who is passionate about Data and who can transform and visualise data into stories that drive engagement, insight and action. As part of the global Operations Excellence team you will play a key role in defining, creating and maintaining data models, reports and visualisations across all sites. Working with cross functional teams you will help define metric definitions, create a common terminology, align key attribute sets and serve as a data owner and steward. The role requires strong technical skills and stakeholder engagement skills as you will be the link between supply chain and the global data team.

Responsibilities include -

  • Build datasets and reports for key operations processes.
  • Translate processes into technical requirements.
  • Perform data analysis on a range of business problems.
  • Develop dash boards and reports
  • Translate data into valuable insights that allow informed data decisions
  • Maintain accuracy of the supply chain data dictionary
  • Manage stakeholders across the business.

Knowledge Required -

  • Knowledge of operations and supply chain centric KPI calculations methods
  • Experience buildin...

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