Data Quality Administrator

Carbon60
Wrexham
1 month ago
Applications closed

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ADMINISTRATOR


Carbon60 is recruiting an Administrator to support on-site operations at a manufacturing facility in Wrexham. This role is best suited to local candidates looking for a stable, office-based position with regular working hours.



Role: Administrator - On-site (Wrexham)


Pay rate: £14.42 per hour | £30,000 per annum


Contract type: 12-month Fixed Term Contract


Location: Wrexham


Working pattern: Full-time, Monday to Friday


What you’ll be doing

  • General administrative support for the on-site team
  • Updating and maintaining information on internal systems and Excel spreadsheets
  • Checking details for accuracy and completeness
  • Liaising with colleagues to confirm and update information
  • Keeping records organised and up to date


What we’re looking for

  • Previous experience in an administrative or office-based role
  • Comfortable using Excel and Microsoft Office
  • Strong attention to detail and good organisation skills
  • Reliable, proactive, and able to work on-site in Wrexham
  • No data or analyst background required - training provided


Working hours

  • 8:00am - 4:30pm, Monday to Friday
  • Flexibility available between 7:00am - 6:00pm (40 hours per week)


Please note: This is an on-site role based in Wrexham. Remote or hybrid working is not available.

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