Audience & Campaign Data Analyst

Digital Ad-network
City of London
5 months ago
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Job Description

Exciting career opportunity for a commercial data analyst to join a renowned UK publisher, being part of the team responsible for digital ad campaigns.

The role will be responsible for making best use of their 1st party data, supporting the commercial sales team, advising on the best audiences to select against a given campaign brief, working with their DMP, and continually monitoring and evolving their audience segmentations.

Candidates will need experience working with audience segmentations for targeting ad campaigns effectively.

Required skills include strong Excel skills and the ability to use data visualization tools such as Tableau, Looker, or Power BI. Experience with a DMP is beneficial.

Salary and Benefits: up to £45k plus 25% quarterly bonus and numerous other company benefits.


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