Customer Data Analyst

Method-Resourcing
Somerset
5 days ago
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Customer Data Analyst | Customer Data | SQL | Hybrid working 2/3 days per week South Somerset | £40,000 + benefits + up to a 20% discretionary bonus

Method Resourcing have partnered with an established retail business who are looking to add a Customer Data Analyst into the Data team as they continue to go from strength-to-strength.

The role: Using mainly SQL, you will be responsible for analysing customer data to provide actionable insights that improve decision making to enhance their commercial performance. This company has 97% of clean data which allows for detailed data analysis, meaning more accurate, reliable, and efficient results!

Skills and experience they are looking for:

  • Strong SQL skills (core requirement this person will need to interrogate the data to provide more insights).
  • Experience working with customer data.
  • Excellent stakeholder engagement and communication skills, both written and oral.
  • Experience with reporting using Power BI ideally but can look at Tableau or Looker.
  • Preferred (not required): background in retail or related customer-focused environments.

Team culture is really important here, and recently, internal surveys scored the team a 10/10 in peer relationship! So if you're looking to improve your work culture - this is the one for you.

Benefits:

  • 28 days' ho...

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