Data Analyst - AdTech - Publisher Audiences (12 months FTC leading to Permanent)

Diagonal recruitment
Greater London
1 month ago
Applications closed

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Overview


Join a team of industry leading AdTech experts that are shaping the future of online advertising & audience targeting. Their award-winning solutions serve both the demand and supply side.


We are now seeking an Analyst to maximise yield, performance and margin with our publisher / supply partners that are central to our solutions.


Skills & Qualifications: MUST HAVE


  • Understanding of the supply-side of the ad technology / programmatic ecosystem
  • Proficiency in SQL (intermediate level is fine but you will be tested)
  • Advanced level knowledge of data analysis and reporting
  • Use of Google Cloud Platform, Big Query and Google Data Studio
  • BI / Data Visualisation tools


About you:


  • A natural communicator with the ability to 'tell a story' not just present the data
  • Intellectual curiosity and proactivity in abundance!
  • A proven track-record of building & executing test frameworks which deliver tangible business value


Responsibilities


  • Use data to demonstrate why supply side partners should increase our client's share of their inventory
  • Improving yield for supply partners
  • Analyse the programmatic bid-stream for continuous improvement
  • Identify margin opportunity
  • Forecast revenue
  • Develop clear visualisations to convey complicated data in a straightforward manner to both technical and non-technical audiences
  • Drive change via new insights uncovered


Preferred:


  • you will join from a publisher, SSP or Ad Exchange
  • or have exposure to the supply-side within an agency


Remuneration, Culture and Extras!


  • An atmosphere of excellence
  • Autonomy
  • Hybrid work patterns ongoing
  • learn from the very best and help shape the future of advertising
  • healthcare, medical & wellness support through insurance, schemes and partnerships
  • life assurance
  • generous annual leave
  • pension scheme
  • plenty of socials


...if the above sounds like you, apply now!

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