Junior Data Analyst

La Fosse Associates
London
1 week ago
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Junior Data Analyst

Farringdon, London (Hybrid)

Salary:£28,000 - £33,000 per annum

 

My client is a leading media agency specialising in the property and travel industries, seeking a Junior Data Analyst to join their dynamic team. This is a fantastic opportunity for a detail-oriented individual to support the data team in driving data-driven marketing strategies.

 

The ideal candidate will have around a year of industry experience and a strong desire to learn and grow in a collaborative, employee-owned company. You will work with tools like Excel, Looker, and Power BI to collect, analyse, and visualise data, providing key insights for clients and internal teams.

 

Required:

  • ~ 1 year of commercial experience as a data analyst or similar
  • Proficient in Excel and familiar with SQL (or willing to learn).
  • Understanding of data visualisation tools (Looker/Power BI).
  • Strong analytical skills with the ability to communicate insights effectively.
  • Experience with Python or R for data analysis.

 

Please note: This role does not offer sponsorship.

 

If interested, please apply and submit your CV (Latest 31st March). Alternatively, email your updated CV to alex.heathlafosse.

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