Insurance Business Data Analyst

London
3 days ago
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Tech BA/DA - London hybrid - £80-90k plus 15% cash flex pot which can be used to buy benefits or taken as cash each month plus core benefits plus bonus.

Our client, a global consulting firm have an opportunity to join their growing Insights and Data practice. We are seeking a detail‑driven BA with 12+ years of experience along with being a Data professional with 3-4 years of Delegate Authority experience and a strong Insurance domain background to lead business rules, lineage, and source‑to‑target mapping activities. This role partners closely with regulatory, financial reporting, and data warehouse teams to deliver high‑quality metadata, user stories, and compliant data solutions

Your Role:

Act as the primary owner of business requirements, user stories, and acceptance criteria.
Capture, interpret, and validate business definitions, rules, and end‑to‑end data lineage.
Lead source‑to‑target mapping activities across business and technical metadata domains.
Collaborate with insurance SMEs to align data solutions with regulatory and financial reporting needs.
Ensure data warehouse initiatives follow best practices in modelling, governance, and compliance.
Support Data Architects and Engineers with clear documentation and functional specifications.
Contribute to sprint planning, backlog refinement, and delivery of Product Backlog increments.
Provide insights on insurance operational processes, finance, actuarial, and Lloyd's market context.Your Skills:

3-4 years Delegate Authority (DA) experience with strong Insurance domain expertise.
Proven ability in capturing business rules, mapping metadata, and documenting lineage.
Solid understanding of financial reporting and insurance‑specific regulatory compliance.
Proficient in SQL for querying and validation; strong Excel and presentation skills.
Skilled in creating detailed user stories, PBIs, and acceptance criteria for agile delivery.
Familiarity with Azure and Databricks; hands‑on experience with data warehouse projects.
Knowledge of relational & dimensional modelling, including normalization and entity relationships.
Exposure to Lloyd's market operations, syndicate structures, and finance/actuarial workflows.Tech BA/DA - London hybrid - £80-90k plus 15% cash flex pot which can be used to buy benefits or taken as cash each month plus core benefits plus bonus.

Damia Group Limited acts as an employment agency for permanent recruitment and employment business for the supply of temporary workers. By applying for this job you accept our Data Protection Policy which can be found on our website.

Please note that no terminology in this advert is intended to discriminate on the grounds of a person's gender, marital status, race, religion, colour, age, disability or sexual orientation. Every candidate will be assessed only in accordance with their merits, qualifications and ability to perform the duties of the job.

Damia Group is acting as an Employment Business in relation to this vacancy and in accordance to Conduct Regulations 2003

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