Data Analyst

JSS Search
London
4 months ago
Applications closed

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Are you an experienced Data Analyst looking for your next opportunity in the insurance sector?


**Insurance industry experience is essential**


In this role, you’ll be involved in onboarding new insurance programs, enhancing data integration, and delivering impactful insights through advanced reporting tools. This is a fantastic opportunity to work in a high-performing, collaborative team environment with the flexibility of a hybrid working model in Central London.


Key Responsibilities:

  • Design and implement ETL pipelines for data lakes, data warehouses, ODS, and data marts
  • Collaborate with business and technical teams to onboard new insurance programs
  • Cleanse, profile, and validate large data sets to ensure quality and consistency
  • Develop and maintain advanced reporting tools to support business insights
  • Contribute to the growth and optimisation of the enterprise data infrastructure


Required Experience:

  • Insurance industry experience is essential
  • 5+ years of hands-on ETL experience across data integration architectures
  • Strong expertise in SQL, Azure Data Factory, JSON, XML, and Dataflows
  • Proven experience with data profiling, cleansing, and validation
  • Excellent communication and organisational skills


What’s on Offer:

  • Competitive salary
  • Hybrid working (a few days a week in Central London)
  • Exciting opportunity to be part of a global data initiative in a growing insurance firm

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