Data Quality Manager

Bright Purple
Musselburgh
3 days ago
Create job alert
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 world’s biggest tech organisations see the world differently.


The Role

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


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 You’ll Be Doing

  • Leading the management and improvement of geospatial data quality
  • Defining data quality objectives within the broader data governance strategy
  • Working collaboratively with data owners to embed new data quality practices
  • Establishing and monitoring data quality standards across our information assets
  • Evaluating and implementing tools and frameworks for data quality management
  • Sharing insights and recommendations with product and development teams to support agile improvements

What You’ll Bring

  • Strong experience with data quality tools or frameworks (e.g. Collibra, DAMA-DMBOK)
  • A solid understanding of data governance
  • Knowledge of regulatory environments (especially Government, Infrastructure or Utilities)
  • Excellent analytical and problem-solving skills
  • Clear communication skills — you can translate technical topics for any audience
  • Strong organisation, prioritisation and delivery focus

Bonus Points If You Have

  • Experience sourcing and maintaining data assets
  • Wider data management experience
  • A talent for making technical topics easy to understand
  • An interest or passion for the geospatial industry

What You’ll Get

We believe great work deserves great perks:



  • 33 days holiday to recharge
  • Flexible working hours to suit your day
  • Your birthday off – always 🎉
  • Health cash plan fully paid for
  • Family-friendly benefits
  • Regular social events, team shindigs and celebrations

Most importantly, you’ll be joining a friendly, collaborative and genuinely supportive team that loves solving interesting problems together.


Bright Purple is an equal opportunities employer: we are proud to work with clients who share our values of diversity and inclusion in our industry.


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