Data Privacy & Compliance Manager

Harraby
2 months ago
Applications closed

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Data Privacy & Compliance Manager – Penrith – Hybrid - £45-55k
GDPR, Data Protection, CIPP/E, CIPM, CIPT, Compliance – Penrith

This advanced team based in Penrith are looking to add a Data Privacy & Compliance Manager to their delivery team. You will be responsible for overseeing the maintenance and delivery of a compliant Data Privacy operation model. You will ensure Operation Standards and Data Privacy and Protection Policies are implemented properly.

They offer a clearly defined career path with an excellent benefits package. You will have strong experience delivering and owning change into production by defining and enforcing Agile ways of working. The role will involve you leading sprint planning and working with internal and external stakeholders to ensure there is a sufficient backlog of work for development.

Core skills & experience including:

Excellent understanding of GDPR and other data protection regulations.
Ideally obtained professional certifications in data protection (CIPP/E, CIPM, CIPT)
Previous experience supporting the provision of training and guidance to support the data governance framework.
Acted as the escalation point for any data privacy breach incidents
Must stay up to date with changes in data privacy laws and relevant regulations
This is an excellent opportunity for a Data Privacy & Compliance Manager looking to take the next step up in their development career with an organisation that will fully support and encourage your career aspirations. Please send your cv for consideration as they are looking to move quickly.

Please follow us on twitter @erinassociates for similar roles. Erin Associates Ltd is acting as an Employment Agency in relation to this vacancy. Contact – Alex Palmer

If you have not heard back from us within 5 working days, please assume that your application has been unsuccessful on this occasion. Your profile may be considered for other suitable vacancies that arise within the next 12 weeks.

Erin Associates welcomes applications from people of all ethnicities, genders, sexual orientations, and disabilities. Please inform us if you require any reasonable adjustments at any stage of the application process.

Keywords - GDPR, Data Protection, CIPP/E, CIPM, CIPT, Compliance – Penrith

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