Business Intelligence Analyst

Oscar
Essex
4 days ago
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Job Title: BI Analyst


Location: Essex & Hybrid (2 days per week in office)


Salary: Up to £70,0000


About the Business

Our client is a growing IT software and data services organisation delivering business intelligence and reporting solutions to a diverse client base, including financial services and insurance. With a strong focus on data-driven decision‑making, they work closely with clients to translate complex business requirements into robust, scalable BI solutions. This is an excellent opportunity to join a collaborative and delivery‑focused data team in a hybrid environment.


The Role

We are seeking a BI Analyst to join a talented and experienced Data Services team. This is a hands‑on, SQL‑heavy role focused on designing, building, and delivering high‑quality BI and reporting solutions using the Microsoft BI stack.


You will work closely with internal stakeholders and external clients to understand business requirements, translate them into technical designs, and deliver reliable, well‑documented BI solutions. The role suits someone who enjoys ownership, problem‑solving, and working across both technical and business domains.


Key Responsibilities

  • Design and deliver BI and reporting solutions using SQL Server and Microsoft BI tools.
  • Translate business and client requirements into clear technical BI designs and specifications.
  • Develop and maintain SQL‑based reporting datasets, views, and stored procedures.
  • Build, maintain, and support ETL processes and data flows for reporting and analytics.
  • Develop and support reports and dashboards to meet business and client needs.
  • Present BI solutions, insights, and proposals to stakeholders and clients.
  • Provide ongoing support for BI solutions and assist with issue investigation and resolution.
  • Produce clear technical documentation, including requirements and solution specifications.

Essential Skills & Experience

  • 3+ years’ experience in a BI Analyst, BI Developer or SQL‑focused BI role.
  • Strong SQL Server and T‑SQL skills.
  • Experience delivering BI or reporting solutions using the Microsoft BI stack.
  • Experience within insurance or financial services is advantageous.
  • Solid understanding of data warehousing and reporting concepts.
  • Experience building and supporting ETL processes.
  • Comfortable gathering requirements and working directly with stakeholders or clients.
  • Experience working with large or complex datasets.
  • Exposure to structured development practices and source control (e.g. Azure DevOps, Git).

Personal Attributes

  • Highly analytical, logical, and detail‑oriented.
  • Able to work autonomously and take ownership of deliverables.
  • Strong written and verbal communication skills.
  • Confident working across technical and non‑technical audiences.
  • Organised, adaptable, and able to manage multiple priorities effectively.

Benefits

  • Competitive salary of up £70,000 DOE
  • Hybrid working model: 2 days per week in the office
  • Opportunity to work closely with clients and stakeholders on meaningful BI solutions.
  • Supportive, collaborative data team environment.
  • Exposure to complex datasets and real‑world business challenges.


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