Business Intelligence Manager

IQVIA
Reading
7 months ago
Applications closed

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Business Intelligence Manager


IQVIA is proud to be working with an exciting client in the pharmaceutical and dermo-cosmetic space


Are you passionate about transforming data into strategic insights? We’re looking for a Business Intelligence Manager to lead the design, development, and implementation of BI solutions that drive business performance and innovation.


About the Role


As the Business Intelligence Manager, you will collaborate across departments to understand business insight needs, ensure data integrity, and deliver actionable intelligence. You’ll play a key role in supporting marketing and medical teams, enhancing planning processes, and championing the integration of AI technologies.


What You’ll Do


  • Lead the development of BI strategies that drive business growth.
  • Collaborate with cross-functional teams to deliver actionable insights.
  • Design and maintain dashboards and reports using Power BI & Tableau
  • Forecast revenue and supply, evaluate new assets, and support digital marketing.
  • Champion AI integration across teams as our AI Ambassador
  • Ensure data governance, accuracy, and security across all BI platforms.


What We’re Looking For


  • Experience in pharma or dermo-cosmetics within multinational environments is essential.
  • Degree in Science or Business
  • Strong analytical skills and strategic vision
  • Excellent communicator with a knack for simplifying complex data.
  • Advanced skills in MS Office, Power BI, Tableau
  • Knowledge of ABPI Code of Practice and UK market dynamics


Why Join Us?


  • Be part of a purpose-driven team shaping healthcare and wellness
  • Work in a collaborative, innovative, and ethical environment.
  • Enjoy opportunities for growth, development, and global impact.



Sponsorship is not available for this opportunity.

Candidates attend interviews at their own cost. Unfortunately, expenses incurred to attend an interview are not covered by IQVIA.

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