Data Quality Manager

Bright Purple Resourcing
Bristol
4 days ago
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Data Quality Manager
Remote UK
Salary up to £55,000

Love data? Obsessed with getting the details right?

I am currently recruiting for a fast-growing global geospatial data company helping some of the worlds biggest tech organisations see the world differently

As we continue to grow, were looking for a Data Quality Manager who thrives on turning messy, complex datasets into reliable, high-quality information that teams can trust.

The Role
This is a chance to play a key role in shaping the quality of the data that powers our products and supports decision-making across the business.
You will lead the way in defining what great data quality looks like, embedding strong governance practices and collaborating with teams across the organisation to make sure our data is accurate, consistent and ready for action. You will also work alongside major international tech companies while helping drive improvements to our data products during an exciting period of growth.

What Youll Be Doing
  • Leading the management and improvement of geospatial data quality
  • Defining data quality objectives within the broader data governance strategy
  • Working collaborative...

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