Group Data Governance Lead

Spirax Sarco
Cheltenham
1 day ago
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The Group data governance lead is responsible for ensuring data accuracy, quality and compliance to prevent potential risks associated with inaccurate or mishandled data. Ensures data is trusted and used responsibly across the organisation. This role involves working closely with a community of data stewards to coordinate data and analytics stewardship activities for consistency and leverage. The Group data governance lead also plays a critical role in managing data-related risks (such as those pertaining to security, access and privacy) and collaborates with leaders such as the DPO and Head of Infosec to uphold data confidentiality, integrity and availability within the organization.


Responsibilities

  • Lead Data Governance Programme: Design, implement, and oversee a global data governance framework to improve data quality and consistency across the Spirax Group and enable key projects such as ERP consolidation to be successful.
  • Drive Data Quality Initiatives: Establish KPIs, baseline measurements, and lead projects to monitor, report, and enhance data quality.
  • Governance Leadership: Chair the Data Governance Council and provide guidance to Data Owners, Stewards, and Custodians; define roles, responsibilities, and training needs.
  • Policy and Standards Enforcement: Ensure compliance with governance policies, regulatory requirements, and data privacy/security standards globally.
  • Stakeholder Engagement: Build strong relationships with business units to promote data literacy and embed governance practices.
  • Platform and Process Implementation: Roll out data governance tools and MDM‑making forums, escalation paths, and issue resolution processes.
  • Enterprise Data Model Development: Collaborate to identify critical data entities for mastering and quality improvement.
  • Risk Management: Track and mitigate data‑related risks, ensuring integrity and compliance across geographies.
  • Collaboration: Work closely with Enterprise Data Architect, Heads of Data, DPO, and Infosec teams to uphold data integrity and security.
  • Continuous Improvement: Identify opportunities for data augmentation, manage multilingual data standards, and lead data literacy programs.
  • Develop KPIs: Develop KPIs and reports to measure governance maturity and data quality.

Your previous experience is likely to include…

  • Experience in designing and implementing enterprise‑wide data governance frameworks, policies and standards in global, complex organisations.
  • Experience in defining governance roles and responsibilities and identifying training needs.
  • Previous experience leading cross‑functional governance committees.
  • Experience of integrating MDM tools or services into a data platform to create and maintain golden records, and establishing and managing MDM Operations.
  • Strong technical knowledge in measuring and tracking data quality, with the ability to communicate these concepts to colleagues at various levels.
  • Experience collaborating with data architects and engineering teams.
  • Familiarity with EDM and identification of critical data entities.
  • Understanding of global data privacy, residency, retention and compliance requirements.
  • A bachelor's degree in Computer Science, IT, information management, analytics, business administration, or another relevant field is preferred.
  • At least 7 years of experience working with data, including 4 or more years focused on data governance.

To be successful in this role you will…

  • Demonstrate Company Core Values at all times.
  • Familiarity with Azure Databricks is an advantage.
  • Hands‑on deep competency with at least one data governance platform and MDM tool, for example Ataccama, Profisee or CluedIn.
  • Experience creating Power BI reports is desirable; proficiency with Excel is mandatory.
  • Ability to set up data catalogues, glossaries, and data governance tools.
  • Analytical and keen problem‑solver: ability to identify and establish appropriate KPIs for data quality.
  • Analytical skills for understanding data formats, masks, and designing appropriate approaches for multilingual data management.
  • Curiosity and problem‑solving abilities to identify root causes of issues.
  • Skills in assessing and managing data quality and data management risks.
  • Influencing and people management: ability to influence stakeholders to adopt data governance practices.
  • Ability to champion the importance of data quality and standards to colleagues.
  • Ability to lead DG teams in a matrix organisation.
  • Ability to structure and phase the project management of DQ/DG projects.
  • Ability to juggle multiple priorities and make pragmatic decisions regarding the time allocation of DG teams.

Company Overview

Spirax Group is a FTSE100 and FTSE4Good multi‑national industrial engineering Group with expertise in the control and management of steam, electric thermal solutions, peristaltic pumping and associated fluid technologies. Our Purpose is to create sustainable value for all our stakeholders as we engineer a more efficient, safer and sustainable world. Our technologies play an essential role in critical industrial processes and industrial equipment across industries as diverse as Food & Beverage, Pharmaceutical & Biotechnology, Power Generation, Semiconductors and Healthcare. With customers in 165 countries, we provide the solutions that sit behind the production of many items used in daily life, from baked beans to mobile phones!


Our Purpose, supported by our inclusive culture and Values, unites us, guides our decisions and inspires us everywhere that we operate. We support our colleagues to make their difference for each other as well as customers, communities, suppliers, our planet and shareholders by creating a truly equitable working environment where everyone feels included.


Benefits

You will receive a competitive salary (and a discretionary bonus), flexible working and excellent benefits including 27 days holiday allowance (before bank holidays), 3 days’ paid volunteering leave, comprehensive private healthcare, enhanced pension plan, life assurance, optional participation in a Share Ownership Plan, free onsite parking, flexible benefits, and access to a personal discounts’ portal. We also offer a range of additional support and benefits through our Everyone is Included Group Inclusion Plan, detailed below.


Everyone is Included at Spirax Group

We are passionate about creating inclusive and equitable working cultures where everyone can be themselves and achieve their full potential. For us, that means supportive teams and strong relationships where everyone’s contribution is valued - across social and cultural backgrounds, ethnicities, ages, genders, gender identities, abilities, neurodiversity, sexual orientation, religious beliefs, and everything else that makes us human and unique.


We want everyone to be able to make their difference here, so we will always consider requests for flexible working.


We know that everyone needs some extra help from time to time too, so we have introduced a range of additional benefits through our Group Inclusion Commitments. These include gender‑neutral parental leave, 15 days of extra paid caregiver leave, paid time off and support for anyone experiencing pregnancy loss or domestic abuse, menopause‑friendly workplace principles and more. Learn more at www.spiraxgroup.com/en/life-at-spirax/our-inclusive-group/our-inclusion-commitments.


We are also a Disability Confident Committed Employer. If you would like to apply using this scheme, please select this option in our application form or notify our recruitment partners.


Seniority level

Mid‑Senior level


Employment type

Full‑time


Job function

Information Technology and Other


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