Global Account Manager for Data Strategy

Digital Ad-network
City of London
1 month ago
Applications closed

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Location: Central London (with WFH options)

Job Type: permanent

Company: Consultancy/ Mar-tech solutions/ Data

Job Description

My client is a leading consultancy business, partnering with brands, helping build a 1st party data strategy. Covering everything from best practice, and tactics, to collection, enrichment, activation, and measurement of consumer data.

This role will focus on managing the relationship with their largest global account. Developing and delivering a bespoke client solution for their mar-tech/ ad-tech needs for their data. You would take on day-to-day management and delivery of global and local projects.

Key responsibilities include contributing to identify cross-selling opportunities across the plethora of products and services offered.

Requirements:

  • Strategic thinker, able to solve problems
  • Experience in the programmatic advertising space
  • Knowledge of working with data and using it to build audiences
  • Experienced with DMP’s/ CDP’s/ Ad-servers/ DSP’s

Salary £50k plus 20% bonus & great benefits.


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