Data Governance Analyst - Insurance

Arthur Recruitment
Manchester
3 days ago
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Manchester (Hybrid – 2–3 days in office) | Full-time


Salary + Bonus + Benefits


We are working with a leading global specialty insurance business that is continuing to invest heavily in its data capabilities and governance framework. As part of this growth, they are looking to hire a Data Governance Analyst to support the development and implementation of data governance practices across the organisation.


This is a great opportunity for someone passionate about data quality, governance and data management to play a key role in improving how data is structured, governed and used across the business. You will work closely with both business and technical teams to ensure data is accurate, trusted and effectively managed.


The Role

As a Data Governance Analyst, you will support the delivery of data governance initiatives that improve data quality, consistency and transparency across the organisation. Working alongside senior stakeholders and data leaders, you will help establish and embed governance standards, processes and frameworks that support better decision‑making and regulatory compliance.


This role offers exposure to a wide range of data‑related initiatives, providing the opportunity to develop your expertise across governance, data management, data quality and metadata.


Key Responsibilities

  • Support the delivery of data governance initiatives and smaller data projects, helping define business outcomes, data requirements and governance standards.
  • Assist with the development of data standards, information models, data cataloguing and data quality frameworks.
  • Collaborate with stakeholders across the business to understand current data processes and identify opportunities for improvement.
  • Document business data requirements and support the design of effective data management solutions.
  • Work closely with data leadership to develop and apply governance processes, methodologies and guidance.
  • Act as a key point of contact for specific data workstreams or initiatives.
  • Ensure governance practices align with internal technical and project delivery standards.

Experience & Knowledge

  • Understanding of data governance, data management or data quality frameworks.
  • Ability to translate business requirements into structured data solutions or governance processes.
  • Exposure to areas such as data cataloguing, data standards, metadata management or information modelling.
  • Strong organisational and project coordination skills.
  • Interest in developing expertise in data governance frameworks and best practices.

Skills & Attributes

  • Strong stakeholder engagement and communication skills.
  • Ability to work independently and manage multiple priorities.
  • Analytical mindset with a proactive approach to problem‑solving.
  • Strong documentation and organisational skills.
  • A genuine interest in data governance, data quality and enterprise data management.


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