Data Analyst

Hays Specialist Recruitment Limited
Barnsley
3 days ago
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Your New Company

A confidential, market-leading organisation within the automotive sector is seeking a talented Data Analyst to join their Administration team. This is an exciting opportunity to combine data analytics, administration, and project coordination in a role that directly supports business performance.

Key Vacancy Information Permanent jobTo start ASAPFull time hours Monday - Friday 9am -5pm35 hours£30,000 -£35,000Free parkingModern Office facilitiesOffice location - Barnsley - Successful candidates will need to live locally as the role is office based with 1-2 days wfh after probation1-2 Days Hybrid work from home after probationary period.Excellent Data Analysis experience required.Your New Role

This position will report to the Department Controller and you will play a vital role in supporting vehicle sales through proactive data reporting and advanced data analysis. Additionally, you will initially support the Department Controller with the implementation of a new system in the UK. This will involve producing data reports and arranging meetings for the projects and following up on agendas and project actions.

Duties of the role will include;

  • Capturing and processing details of returning vehicles information, managing recharge workflows.
  • Preparing monthly stock reports in Excel
  • Calculating late return fees, ...

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