Mobile App Marketing Data Analyst

GNB Partnership
London
2 months ago
Applications closed

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Our Client

Our client is a global igaming organisation which cultivates a fast-paced, collaborative environment where innovation drives everything they do. Their teams are passionate about delivering top-tier gaming experiences, leveraging data-driven insights, and staying ahead in an ever-evolving industry. As they grow, theyre looking for talented professionals to join them - driving performance, creativity, and excellence across all areas of the business.

The Role of Mobile App Marketing Data Analyst

They are seeking a Mobile App Marketing Data Analyst to join their Marketing Data & Analytics team. In this role, you will support the Senior Marketing Analyst and the Head of Mobile on the delivery of Mobile campaign insight and marketing recommendations to the global marketing teams to drive marketing campaign optimisation, improve marketing efficiencies and highlight crucial trends.

This role has a strong focus on In-App Marketing data analytics. This requires you to be an adept communicator with the ability to prioritise multiple projects and managing stakeholder expectations, and significant subject-specific knowledge of App Marketing. We are looking for a proactive individual with strong technical skills in data analysis, experience of multi-channel ...

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