Data Governance Lead

Carbon 60
Fareham
2 months ago
Applications closed

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Job Title

Data Governance & Security Lead - Maritime Domain Awareness Programme (RN MDAP)

Organisation

Maritime Domain Awareness Programme (RN MDAP)

Start Date

01 April 2026

Role Purpose

The Data Governance & Security Lead will ensure the Royal Navy Maritime Domain Awareness Programme (RN MDAP) is fully compliant with UK Data Legislation, Ministry of Defence (MoD) Data Governance Policy, and all applicable data sharing agreements. The role provides policy, strategy and technical capability integration services, ensuring that RN MDAP hosting environments, systems and applications store, share and access data in a secure, compliant and effective manner.

Key Objectives

Establish and maintain a robust Data Governance framework for RN MDAP.
Ensure compliance with UK legislation, MoD policy and information sharing agreements.
Enable safe, trusted and high‑value use of data across the Maritime Domain Awareness (MDA) estate.
Provide strategic advice and assurance to senior stakeholders.Key Responsibilities

Strategy Development

Contribute as part of the RN MDA strategy team to ensure all data governance and information sharing activity aligns with RN MDAP, wider Royal Navy and MoD strategies.
Support the creation, revision and maintenance of RN MDAP strategy, policies and standards.
Develop an end‑to‑end data governance framework, including processes, operational policies and standards to support eff...

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