Data Governance Manager

The Citation Group
Wilmslow
4 days ago
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Location: Wilmslow/Remote – Flexible Working Full-Time

Hours of Work: 09:00 – 17:30 or in line with business needs

The Role

This is an exciting opportunity for a creative and passionate Data Governance Manager to become part of a best-in-class data and analytics team supporting an ever-growing business. We are seeking a detail-oriented Data Governance Manager to lead the development, implementation, and management of data governance frameworks within our organization. This is a brand-new role and key to this will be promoting data governance around the business.

Responsibilities
  • Develop and implement a group-wide data governance framework, including policies, standards, and guidelines.
  • Establish metrics to measure the effectiveness of the data governance program.
  • Define and oversee processes for data quality management, including data quality metrics, issue remediation and data cleansing.
  • Engage and motivate data stewards and owners to ensure data accuracy and reliability.
  • Act as a liaison between data, business units, and other stakeholders to foster alignment on data governance initiatives.
  • Evaluate and advise on tools to support data governance, such as data cataloging, metadata management, and data lineage tracking.
  • Report on data governance progress, challenges, and achievements to senior management.
The Person
  • Bachelors degree 3+ years of experience in data governance, data management, or a related role.
  • Strong understanding of data governance principles and frameworks (DAMA etc), and regulatory requirements (eg GDPR).
  • Experience of data governance tools (e.g., Collibra, Informatica, Alation) and data management technologies.
  • Familiarity with data architecture, databases, and ETL processes.
  • Exceptional communication and interpersonal skills, with the ability to engage and influence stakeholders.
  • Strong analytical and problem-solving abilities.
  • Ability to interrogate data using SQL and reporting tools.
About Us

We are Citation. We are far from your average service provider. Our colleagues bring their brilliant selves to work every day and we create an environment where they can shine. We are a nice bunch. We don’t do office politics or “that’s not my job”. We listen, support and take ownership.

We have been proudly delivering valuable HR and Health and Safety services to SME’s across the UK for over 20 years. Passionate about service, we’re on a mission to revolutionise our colleague’s and client’s experience by employing brilliant people who are experts at what they do and smile whilst they are doing it.

Working for Citation you will have access to 25 days holiday, plus your birthday off work, gym membership discount, healthcare, childcare vouchers, the opportunity to purchase extra leave, pension contributions and more.

It’s a great place to work because of the people we employ. Fun and professional, we want likeminded individuals who love to love their job (no ‘mood hoovers’ here thanks!) and want the Company to succeed.

So, if our culture sounds like a good fit for you and you want to be part of our success story, then send us your details.


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