Data Strategy- Client Account Lead- Data Monetisation (first-party data/Ad tech/DSP/ CRM)

Moriati Digital Recruitment
London
1 day ago
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We are currently working on a senior Client Account Lead/ Data Strategy, Data Monetisation role.


You would be leading a major first-party data commercialisation programme for a large UK brand.


Salary up to £120,000 + Bonus.


You Will:


  • Be part of the Senior Client Leadership, owning senior stakeholder relationships.
  • Be the day-to-day strategic lead.
  • Identify and unlock off-site data monetisation opportunities.
  • Proactively take first-party data to market.
  • Develop commercial models, deals and scalable frameworks.
  • Work closely with platforms like The Trade Desk and other DSPs.
  • Scaling off-site data revenue stream, taking rich customer data to market.


Ideal for someone with strong first-party data, CRM and ad tech experience who wants real commercial ownership.


They are looking for strong experience in:


  • First-party data strategy
  • CRM and audience segmentation
  • Ad tech ecosystems
  • DSP activation
  • Commerce / retail media
  • Data supply vs demand side dynamics

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