Senior Sustainability Data Analyst – London/Bristol

Hanson Search
London
2 weeks ago
Create job alert

New Senior Sustainability Data Analyst role based in London or Bristol, working for a super impressive, ethical b-corp. This role requires someone with data and analytics experience specifically working across PPC, paid social, SEO, and having extensive experience with Google Analytics, as well as experience with website optimisation.

Key responsibilities:

  1. Oversee campaign performance management and the team who deliver this work.
  2. Lead on the development of data driven processes to optimise our campaigns for impact.
  3. In-depth understanding of how to maximise impact through optimisation and strategize improvement based on data findings and insight.
  4. Input into integrated campaign plans and strategies to create the most impactful solutions for clients.
  5. Experience creating data visualisations and dashboards to measure impact.

Key requirements:

  1. Advanced digital analytics experience (Google Analytics/Google Tag Manager/Social listening).
  2. Strategic understanding of data and analytics.
  3. Solid understanding of different digital channels/social media platforms – including SEM, SEO, paid social, website and display, email etc.
  4. Passion for sustainability and social purpose/responsibility.
  5. Technical skills – including experience with building dashboards and website building.
  6. Food sector experience – beneficial but not essential.
  7. Excellent communication skills.

If you have the relevant experience and this opportunity sounds interesting to you, please get in touch with our team including a copy of your CV as soon as possible via the form below.


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