Data Quality Manager

Stafffinders
Bexleyheath
1 week ago
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Are you a meticulous Data Quality Manager eager to shape the future of data integrity?

We have an exciting opportunity for an exceptional individual to champion our client's data quality initiatives, ensuring consistency, reliability, and accuracy across critical information assets, particularly with geospatial data.

What you will get in your new role

* Salary: £40,000 to £50,000 per annum

* Fully remote (must be UK-based)

* Generous holiday allowance of 33 days

* The opportunity to flex your working day

* Birthday day off

* Excellent health benefits cash plan

* Family-friendly benefits

Responsibilities in your new role as Data Quality Manager

In this role, you will take ownership of geospatial data quality, ensuring accuracy, consistency, and integrity across all data assets. You'll define clear data quality standards as part of a wider governance framework and work closely with data owners to embed best practices into everyday processes.

You'll monitor performance against agreed standards, identify areas for improvement, and implement the right tools to support data quality across the full lifecycle. This includes hands-on data cleansing and validation, as well as feeding insights an improvement priorities into an agile development and release process to drive continuous enhancement.

Your personality, experience and qualifications

We're looking for a technically st...

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