Data Analyst (Social listening) - Social/ Creative agency

The Industry Club
London
3 weeks ago
Applications closed

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Job Description

Exciting newly created role for an experienced data and insights analyst with a focus on Social listening, to join this lovely, growing and ambitious agency!


By deep diving into all things data, you will provide insights and analysis to ensure all the campaigns are relevant, impactful and even spot areas for business development!


You will work across social media channels, specifically Tiktok, youtube and Instagram, social listening and reporting back on competitor brands and social and cultural trends to aid decision making.


They have a European Prescence so there will be some very occasional travel to Europe, specifically Germany!


  • £55k-£60k
  • Hybrid working. 2-3 days in the London office
  • Working on a variety of social campaigns across numerous clients including automotive


The role:


  • Ensure the success of social-oriented campaigns
  • Performance oriented, you’ll use data to guide continued improvement and identify opportunities
  • You’ll be the client’s go-to for all things data and analytics, with the support of an excellent creative and account team around you.
  • Using your social and digital data expertise you will export data and translate them into social & cultural insights & reports and making recommendations to enhance campaign performance...

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