Account Director | Programmatic | London

round8 talent search
London
11 months ago
Applications closed

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Job Description

Senior Account Manager – AdTech / Programmatic

We are working exclusively with a leading AI-powered marketing technology company that helps brands identify, target, and engage high-value audiences through advanced data analytics, machine learning, and omnichannel marketing solutions.


They boast a powerful proprietary data cloud and deep expertise in audience intelligence, CTV, and programmatic media.


What You’ll Do:

  • Act as the main point of contact for brands, agencies, and trading desks.
  • Develop and maintain strong client relationships to drive retention and upsell opportunities.
  • Identify growth opportunities within existing accounts by recommending advanced audience strategies, data solutions, and cross-channel activations.
  • Work closely with clients and internal trading teams to ensure campaigns meet KPIs and deliver maximum value.
  • Analyse campaign performance data, providing strategic recommendations to improve efficiency and scale.
  • Stay informed on market trends, privacy regulations, and competitive landscape to advise clients effectively.


What We’re Looking For:

  • 3-5+ years’ commercial experience in AdTech e.g. programmatic, audience targeting, data-driven marketing, or digital media
  • Strong understanding of first-party data,...

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