Head of Data Compliance

CBSbutler Holdings Limited trading as CBSbutler
Gloucester
4 weeks ago
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Technology organisation is hiring for a permanent Head of Data Governance (Data Protection & Data Privacy) to lead all aspects of data protection, GDPR compliance, data risk and wider data governance. This is a permanent role based in Gloucester on a hybrid basis (2 days per week). You will need to undergo SC Clearance, so will need to be eligible. Salary ranges between £70K - £80K.

Responsibilities include:

* Lead and own GDPR and data protection compliance across the business, acting as the
primary point of contact.
* Advise and influence senior stakeholders, building strong relationships across
multidisciplinary teams.
* Develop, implement and maintain data protection strategies, policies, controls and
statutory records.
* Monitor regulatory developments and ensure ongoing compliance, including management
of DSARs and DPIAs.
* Lead data breach investigations and work closely with Security to ensure robust data
protection and cyber security practices.
* Review and advise on data protection aspects of contracts and oversee third-party
compliance with Supply and Commercial teams.
* Define KPIs, conduct audits, report on compliance and support engagement with
regulators, including the ICO.
* Assess data, privacy and AI-related risks, supporting the responsible use of
emerging technologies.
* Apply knowledge of cyber security principles and re...

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