Technology & Data Governance Manager

Fairmont Recruitment Technology
Manchester
1 week ago
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This is a senior, high-impact role sitting at the intersection of IT, data, security and regulatory compliance, with real ownership of how frameworks, controls and governance operate across the business.


What you’ll be doing

  • Owning the organisation’s IT & data compliance framework across GDPR, ISO 27001, SOC 2 and related standards
  • Leading risk assessments, controls and monitoring across systems, data and third-party suppliers
  • Acting as the go-to person for audits, regulators and internal stakeholders
  • Defining and maintaining policies, standards and training for data protection and IT governance
  • Supporting incident response, breach management and regulatory reporting

What we’re looking for

  • Strong background in IT compliance, data governance, or technology risk
  • Solid knowledge of GDPR, security and compliance frameworks
  • Comfortable working with IT, security, legal and senior stakeholders
  • Someone who can combine detail, judgement and authority to improve how things really work

This is an opportunity to take ownership of how a modern organisation governs its technology and data, with the backing and visibility to make real change.


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