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(3 Days Left) Data Business Analyst

JSS Transform
London
9 months ago
Applications closed

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About the RoleAs a Business Data Analyst, you willplay a key role in supporting a critical data migration project.Collaborating with stakeholders across the business, you’ll ensuredata integrity and support the seamless transfer of data to the newplatform. Your expertise in the London Market Insurance domain willbe instrumental in delivering project success.KeyResponsibilities:Analyze and map data requirements to support themigration process.Collaborate with business users to gather anddocument requirements.Conduct data quality checks and resolvediscrepancies.Support testing phases, including UAT, to validatesuccessful migration.Provide insights and solutions for improvingdata workflows.What We’re Looking ForTo excel in this role, you’llneed:Proven experience as a Business Data Analyst within the LondonMarket Insurance sector.Strong understanding of insurance datastructures, processes, and terminology.Hands-on experience withdata migration projects, including ETL processes.Excellentanalytical and problem-solving skills.Outstanding communicationskills to engage with technical and non-technical stakeholdersalike.Why Join?Work with a prestigious London Market Insurancebusiness.Opportunity to make a tangible impact on a high-profileproject.Competitive day rate and the chance to enhance yourexpertise in data migration.

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