Junior Data Analyst - Online Media & Technology

Diagonal recruitment
London
1 month ago
Applications closed

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Senior Data Scientist

Software Engineer

  • London based - hybrid (ideally 3 days per week in the office)
  • £35k - £45k
  • SQL proficiency is required


Company overview


Join a formidable team that is shaping the future of online advertising and advertising technology (Ad Tech). Our client (circa 80 staff) is well-funded and growing fast, with innovative solutions and an exciting product roadmap.


Their offering helps major advertisers (brands) and media agencies reach their current and future customers online; across desktop, mobile and TV.


Role overview


We are now seeking a Data Analyst to work alongside other experienced Senior Data Analysts to identify new insights across our client's advertising technology and their media campaigns - and drive revenue.


Responsibilities


  • Use your analytical skills to query, manipulate and transform datasets.
  • Convert analytical findings into actionable insights that translate into revenue opportunities
  • Collaborate with data stakeholders to develop and maintain data models and performance metrics


About you - must have


  • Data analytical experience (gained either at University, during internships or in post graduation employment).
  • A desire to learn and continuously develop your analytical skills, building on SQL and related technical language skills and tools.
  • Curious and problem-solving mindset.


Tech & Skills requirements - must have


  • Intermediate level SQL or equivalent
  • Computer Science, Stats or Mathematics related degree


Tools you'll have access to in the role and can be trained / up-skilled on


  • Looker and Looker Studio (equivalent to Power BI, Tableau)
  • Google Data Studio
  • Google Cloud Platform (GCP)
  • ...plus more depending on your technical area of interest


What’s on offer?


  • Hybrid home/office flexibility
  • Genuine and guided career progression to support your learning and growth
  • Extensive benefits including, but not limited to medical, health & wellness coaching, cycle to work, lifestyle benefits, retailer discounts, company pension, critical health cover + much more
  • Active social calendar full of entertainment, rooftop events, sports-related, charitable and competitions

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