Mobile App Marketing Data Analyst

TEAM
London
2 weeks ago
Applications closed

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A global iGaming organisation that cultivates a fast-paced, collaborative environment where innovation drives everything they do is looking for a Mobile App Marketing Data Analyst to support the delivery of campaign insight and recommendations to the global teams to drive campaign optimisation, improve efficiencies and highlight crucial trends.

Benefits

  • 24 days of annual leave, with additional days awarded after 3 years of service.
  • Hybrid work model 3 days in the office, 2 days working from home.
  • Competitive salary plus an annual bonus (eligible after completing probation).
  • Private healthcare and life insurance provided upon successful completion of probation.
  • Participation in the company pension scheme.
  • Exciting company activities including monthly lunches, corporate gatherings and many other activities
  • A chance to advance professionally inside one of the world's largest iGaming organisations

Key Responsibilities as a Mobile App Marketing Data Analyst:

  • Identify trends, insights, and opportunities for optimising Mobile and In App strategies at a campaign level across mainly digital performance channels for all GEOs. Support the team to use existing Mobile and In App campaign data to identify and build sophisticated profitable optimisations to enable better future targeting, and lead the data elements of annual budgeting an...

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