Data Quality Administrator

Carbon60
Wrexham
3 days ago
Create job alert
DATA QUALITY ADMINISTRATOR

Carbon60 is looking for a Data Quality Administrator to support on‑site operations at a large manufacturing facility in Wrexham.


ROLE

Data Quality Administrator


PAY RATE

£14.42 per hour / £30,000 per annum


CONTRACT TYPE

12-month temporary contract (FTC)


LOCATION

Wrexham


WORKING PATTERN

Full-time, Monday to Friday
8:00am - 4:30pm (flexibility available between 7:00am - 6:00pm, 40 hours per week)
30‑minute unpaid lunch break


THE ROLE

The Data Quality Administrator will play a key role in supporting on‑site operations by ensuring the accuracy, completeness, and consistency of product and pricing data.


Working closely with internal teams and suppliers, you will identify data gaps, source missing information, and maintain high‑quality records within core systems. This role supports efficient supply of engineering components and helps maintain strong operational and commercial performance.


KEY RESPONSIBILITIES

  • Maintain, review, and update product and pricing data across SAP, Excel, and internal systems
  • Conduct regular data audits to identify and correct missing or inaccurate information
  • Collaborate with on‑site teams, customers, and suppliers to validate product details
  • Standardise product descriptions and search terms for consistency and accessibility
  • Support data enrichment initiatives aligned with operational and commercial objectives
  • Analyse product usage and sales trends to identify improvement opportunities
  • Produce data quality reports and insights to support performance reviews
  • Ensure all data meets agreed service levels and audit standards

KPIs

  • Reduction in product data gaps and errors
  • Completion of scheduled data audits on time and to standard
  • Improved data completeness and enrichment
  • Timely creation and updating of product data
  • Improved sales and product usage through enhanced data accuracy

SKILLS & EXPERIENCE REQUIRED

  • Strong experience using Microsoft Office, particularly Excel
  • Previous experience in data entry, administration, or product data management
  • High attention to detail with a passion for data accuracy
  • Analytical mindset with the ability to spot trends and improvements
  • Strong communication and collaboration skills
  • Well organised, proactive, and able to meet deadlines
  • Experience with SAP or ERP systems desirable (training provided if required)
  • Exposure to industrial, technical, or manufacturing environments desirable

ADDITIONAL INFORMATION

  • Opportunity to receive counterbalance forklift training
  • No driving or vehicle use required
  • Intermediate Excel skills preferred (or strong basics with willingness to upskill)
  • This is a newly created role to support improved data management at site


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