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Data Quality Analyst - 9 Month FTC

Method Resourcing
London
1 month ago
Applications closed

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Data Quality Analyst (9 Month FTC) x2 | Excel | Data Governance | Data Quality | Fully remote | £35,000-£40,000

Method Resourcing have partnered exclusively with a leading construction business undergoing an exciting merger. As part of this transformation, they're looking to bring on two Data Quality Analysts on an initial 9 Month FTC basis to help shape the future of their IT service delivery.

Although this role is an FTC, they have a strong background of taking people on a permanent basis when the FTC is complete.

The role: As a Data Quality Analyst, you'll be responsible for managing property data, ensuring GDPR compliance, maintaining accurate price books, creating new contracts in the system, and inputting client information. A sharp eye for detail and a commitment to data quality are essential to ensure all records are precise and reliable.

Skills and experience they are looking for:

  • Strong Excel skills (LOOKUPs, data validation, reconciliation).
  • High attention to detail and accuracy when handling client data.
  • Experience validating and maintaining data quality.
  • Power BI desirable but not essential.
  • SQL desirable but not required.

Working pattern: This role is fully remote.

If this sounds of interest to you, then please apply or send your CV to for more information as I am likely t...

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