Data Migration Analyst

Harrison Holgate
London
1 year ago
Applications closed

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Our client, a leading independent Insurance Broker specialising in commercial Insurance, is looking for an experienced Data Analyst to join their busy integration team in London.

The ideal candidate will have previous experience working on Insurance Broking System data migrations, and data processes. You will also have a proven track record of leveraging SQL and SSIS to deliver continuous data integration and analysis. Additionally, you will be confident in managing complex data flows, ensuring data integrity, and supporting strategic decision-making across the business.

The successful candidate will be:

Extensive experience as a Data Analyst/Engineer, with previous experience working on Insurance Broking System data migrations. Proficiency in SQL and/or SSIS, as well as working experience with ETL tools Strong analytical skills, a track record of influencing stakeholders, and a focus on implementing practical solutions. Strong verbal and written communication skills, with the ability to build relationships with stakeholders at all levels, and the ability to influence and negotiate when required. Proven ability to collaborate with cross-functional teams and build strong relationships.

This is an exciting opportunity for an experienced Data Analyst looking for their next challenge to join a leading independent Insurance Broker, in what will be an exciting portfolio of work.

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