Data Governance Officer

Harnham - Data & Analytics Recruitment
London
1 month ago
Applications closed

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Data Governance Officer - 4 days per week

Location: London- 2 days onsite Contract: 6 monthsIR35: Outside (TBC)Rate: Up to £410 per dayStart: ASAP

OverviewReporting into the Head of Operations, this role has been created due to a gap in internal Information Governance capability. The programme spans multiple stakeholders and delivery partners, with complex and shared datasets.

The focus is to establish strong governance foundations and support the rollout of a secure, centralised digital platform that will act as a single source of truth for operational and customer data.

Key Responsibilities* Review and assess existing data governance practices and controls* Design and implement a practical, fit-for-purpose data governance framework* Deliver full data mapping and visibility across the data ecosystem (flows, owners, risks)* Define and embed governance tooling, standards and processes* Lead on DPIAs, DSARs and Data Protection Act compliance* Support the rollout of a secure centralised platform used by internal teams and external partners* Advise stakeholders on best practice, risk mitigation and compliance* Ensure data integrity, consistency and appropriate controls across multiple projects

Day-to-Day Focus* Data mapping and data flow analysis* Governance advisory and hands-on delivery* Supporting multiple concurrent digital/data initiatives* Translating requirements into practical governance controls

Requ...

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