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Senior Data Quality Analyst

Ageas Insurance Limited
Eastleigh
5 days ago
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Overview

Senior Data Quality Analyst: We're building a new Data Quality team within our Enterprise Data Services function, and we're looking for a highly skilled and motivated Senior Data Quality Analyst to help lead the delivery of our data quality strategy. This is a fantastic opportunity to play a pivotal role in embedding best practices, driving continuous improvement, and supporting transformation programmes across Ageas.

Responsibilities
  • Lead the execution of the Ageas Data Quality Strategy
  • Deliver high-quality, consistent, and measurable data quality services across the organisation
  • Collaborate with stakeholders to align data quality activities with business goals and our Enterprise Data Strategy
  • Inform the development and maintenance of the Data Quality roadmap by providing insights from operational experience and project delivery
  • Monitor and report on Data Quality KPIs, identifying trends and opportunities for improvement
  • Lead components of the implementation and optimisation of data quality tooling, ensuring effective roll out of the tool and adoption of ways of working
  • Act as a subject matter expert, guiding Data Stewards, Data Managers, and business users
  • Lead issue management processes and contribute to continuous improvement initiatives
  • Provide training and coaching to junior team members and stakeholders
  • Support transformation programmes including data migration, integration, and consolidation
Qualifications
  • 5+ years in a data-focused role, with at least 1 year of hands-on experience in data quality
  • Proven ability to work independently and lead delivery of data initiatives
  • Experience working with data quality tools and ideally Collibra
  • Strong SQL skills and familiarity with Python for data analysis and automation
  • Strong knowledge of Data Governance best-practice and how it complements Data Quality operations and processes
  • Experience working with Snowflake and Databricks platforms
  • A proactive mindset with the confidence to challenge existing processes and drive improvement
  • Excellent communication and stakeholder engagement skills
  • Experience in Agile/Scrum environments
Desirable
  • DAMA CDMP (Certified Data Management Professional) or equivalent
  • Recognised Data Quality Specialist certification or training
  • Experience in the insurance or financial services sector
  • Exposure to data migration or transformation programmes
About Ageas

About Ageas: We are one of the largest car and home insurers in the UK. Our People help Ageas to be a thriving, creative and innovative place to work. We show this in the service we provide to over four million customers. As an inclusive employer, we encourage anyone to apply. We're a signatory of the Race at Work Charter and Women in Finance Charter, member of iCAN and GAIN. As a Disability Confident Leader, we are committed to ensuring our recruitment processes are fully inclusive. That means if you are applying for a job with us, you will have fair access to support and adjustments throughout.


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