Data and Insight Analyst

Talent Hub Resourcing Solutions Ltd
Brighton
1 month ago
Applications closed

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Senior Data Analyst - Customer DataSalary up to £50,000HybridBrighton and Hove, Sussex

Talent Hub are looking for an experienced Customer Data Analyst to join a thriving business based in Central Brighton. You will play a key part of their Customer Data strategy at an exciting time for this successful company.

Key responsibilities for this Senior Data Analyst job include:

  1. Lead the reporting, insight, and analytics for the organisation, focusing on customer data and storytelling, providing pro-active reporting and actionable insights with a strong emphasis on customer acquisition and engagement and optimising lifetime member value.
  2. Regular monitoring and reporting on key customer data metrics.
  3. Support and provide guidance on the development of campaign and overall performance reporting, actionable insight and data-driven models for use across the customer lifecycle (e.g., engagement, attrition, life-time value, segmentation and recommendations/next best action modelling).
  4. Produce data visualizations to help support and communicate important learnings.
  5. Where possible, incorporate qualitative findings into quantitative reporting.

What you will need for this Senior Data Analyst job:

  1. At least 4 years experience in a Data Analytics and Customer insight position.
  2. Membership or Customer Services, B2C, Travel or Leisure sector background.
  3. Experience of working with CRM's.
  4. Strong oral and written communication skills, with experience presenting data interpretation and insights to non-technical audiences.
  5. Experience in using data storytelling techniques.
  6. Knowledge of other data platforms such as Microsoft Customer Insights, Microsoft Customer Data, Microsoft Fabric, social marketing insights, and email marketing analytics would be beneficial.
  7. Experience in SQL, SAS, Python, or R programming.
  8. Knowledge of web analytics tools would be helpful but not essential.
  9. Some exposure to AI tools such as CoPilot.
  10. Line management or mentoring skills.

Benefits include:

  1. 2 days office based
  2. 24 days holiday plus bank holidays
  3. Healthcare
  4. Hybrid working
  5. Plus lots of other perks!

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