Data Analytics Specialist - Commercial Insurance (Hybrid)

Albion Blake
Essex
4 days ago
Create job alert

Title: Data Analytics Specialist - SQL & Microsoft BI

Model: Hybrid (2 days on-site)

Salary: Up to £80,000 DOE

Start: Immediate

The Role:

We’re recruiting a Data Analytics Specialist for an established Insurance software organisation with a strong focus on data-driven decision making. You’ll join a collaborative data function and play a key role in shaping analytics and reporting solutions used by both internal teams and external clients.

This position suits someone who enjoys working hands-on with data, has strong SQL capability, and can turn complex requirements into clear, actionable insights.

Key Responsibilities:

  • Producing analytics and reporting solutions using SQL Server and Microsoft BI technologies
  • Working closely with stakeholders to understand business needs and convert them into analytical outputs
  • Creating and optimising SQL datasets, stored procedures and reporting layers
  • Developing and supporting data pipelines and ETL processes
  • Delivering dashboards and reports that support operational and strategic decision-making
  • Communicating insights and solution designs to technical and non-technical audiences
  • Supporting live analytics solutions and assisting with troubleshooting when required

Key Experience:

  • Minimum 3 years’ experience in a data analytics, BI or SQL-centric role
  • Strong SQL Server / T-SQL expertise
  • Hands-on experience with Microsoft BI tools (e.g. Power BI)
  • Solid understanding of analytics, reporting and data warehousing principles
  • Experience working with ETL and data integration
  • Confident engaging with stakeholders and gathering requirements
  • Exposure to Azure DevOps and Git is beneficial
  • Experience in financial services or insurance is advantageous but not essential

Personal Attributes:

  • Analytical, methodical and detail-focused
  • Comfortable working independently and taking accountability
  • Clear communicator with the ability to explain data to varied audiences
  • Well organised and able to balance multiple priorities


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