Business Intelligence Manager Contract 3 Months

Omnicom Media Group
City of London
6 months ago
Applications closed

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WHO WE’RE LOOKING FOR

Looking for a smart confident candidate, responsible for guiding successful reception for one of our biggest reporting platforms. Working with a variety of different disciplines and gaining exposure to all thing’s media. Delivering products and services that support clients as well as internal teams to improve the media efficiency of our clients marketing budget.

Communication skills and the ability to prioritize tasks across projects to meet deadlines are important and we need someone with a logical approach to problem solving and strong attention to detail. An independent self-starter you will be able to quickly establish credible relationships within the team.


The ability to collaborate and optimize delivery is crucial for the success of this role as is the ability to prioritise initiatives that drive most value and impact.


A bit about what you'll get involved in...

  • Development of training material
  • Supporting documentation
  • Cross skilled development
  • Supporting the delivery of our reporting tool
  • Feedback any highlights/concerns to the team.
  • Working day to day in a team of talented data professionals including Analytics, Measurement and Technical directors, visualisation specialists, Analysts, Data Managers, Data engineers and Data architects.
  • This is a hands-on role


Nice to Have’s

  • Experience in Media agency preferred
  • Hands on experience with Power BI, DAX and MQuery
  • Highly organized and able to manage their own time to meet deadlines across multiple work streams
  • At ease working to fast turnaround times
  • Accurate and numerate – a thorough grounding in statistics
  • Clear communicator in English: verbal and written
  • Comfortable working in diverse and multi skilled teams
  • Curious / investigative nature


This is a 3 month Contract, please be ready to apply if you have a Ltd company set up.

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