Data Governance Analyst

Diligenta - a subsidiary of Tata Consultancy Services
Edinburgh
1 month ago
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Data Governance Analyst

Who are Diligenta?

Diligenta's vision is to be acknowledged as a best-in-class platform-based life and pensions administration service provider. Customer service is central to our operations, and we aim to transform our clients' processes. Known as a 'home' by our employees, we foster a culture rooted in positive change and development.

Summary of the role

The Data Governance Analyst will work with the Data Governance Manager to design and implement processes, policies, controls, and systems guiding data use within the company. They will contribute to building and implementing data governance frameworks ensuring proper data storage, processing, analysis, and retention across the organization.

They will also collaborate closely with Information Security, Internal Audit, and the DPO office to ensure our governance remains relevant and observable.

Benefits include:

  • 33 days off including Bank Holidays
  • Eligibility for an annual discretionary bonus scheme
  • Opportunities for personal and career development within the company and through our global parent, Tata Consultancy Services
  • Access to Perks at Work for discounts on goods and services
  • Cycle to Work Scheme & Interest-free Season Ticket loans
  • Wellbeing programs, including Employee Assistance and other support resources
  • Moments that Matter policies such as Carer’s Leave, Foster Leave, and Retirement Leave
  • Contributory pension scheme with up to 6% matching, Group Life Assurance, and Income Protection

Key responsibilities

  • Implement data governance frameworks and guidance
  • Create and publish data governance policies and processes
  • Monitor data quality and related metrics
  • Conduct data governance impact analyses
  • Support metadata management
  • Assist the Data Governance Manager on governance issues
  • Implement data quality and management platforms

Qualifications and skills

  • Strong understanding of data governance concepts
  • Analytical skills
  • Knowledge of data privacy regulations such as GDPR
  • Experience with UK GDPR and Data Protection regulation
  • Experience working in FCA regulated environments
  • Ability to create policies and processes
  • Experience in data governance or privacy roles

Additional details

  • Seniority level: Mid-Senior level
  • Employment type: Full-time
  • Job function: Information Technology

Referrals can double your chances of interviewing at Diligenta - a subsidiary of Tata Consultancy Services.


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