Junior Analyst

Harnham - Data & Analytics Recruitment
London
11 months ago
Applications closed

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JUNIOR ANALYST

£28,000 - £35,000

HYBRID - LONDON - 2X A WEEK

*Please note, this company is unable to offer sponsorship at this time and you must be a UK resident*

THE COMPANY

This small but growing Digital agency works with brands to transform their data, making it accessible for the wider business. They provide meaningful and commercially viable insights through reports and dashboards.

THE ROLE

You'll provide insight into the Digital performance for brands; monitoring, reporting and dashboarding. You'll be supported in your learning and development and get the chance to be client-facing.

SKILLS + EXPERIENCE

Must haves:

  • Web analytics experience - Google Analytics 4 or Adobe Analytics
  • Some SQL or Python experience in a working environment
  • Dashboarding/reporting experience - any tool, e.g. Power BI, Tableau, Looker or equivalent
  • An interest in statistics or data science techniques

HOW TO APPLY

If this sounds like the role for you, swiftly send over your CV to Izzi at Harnham by using the link below.

KEY TERMS

IBM, Coremetrics, Google Analytics, GA, Omniture, SiteCatalyst, Adobe Analytics, Analyst, Web, Digital, Online, Website, Financial Services, Finance, A/B, Test, Split, Multivariate, MVT, Tracking, Cod...

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