Business Intelligence Engineer

ECR Global
Birmingham
1 day ago
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BI Engineer (London/Hybrid)

Our client is a market-leading financial services provider currently undergoing an exciting period of growth and structural transformation. Led by a highly experienced Lead BI Engineer with over a decade of tenure at the firm, the data team is expanding to tackle a significant backlog and drive new strategic initiatives.


We are looking for three experienced BI Engineers to join a stable, high-performing team of ten. This is a brilliant opportunity to work in an environment that values deep technical expertise and long-term professional growth.


The Role

As a BI Engineer, you will be instrumental in clearing a high-priority backlog and developing robust data solutions. You will work closely with a supportive leadership team in an Azure-heavy environment, ensuring data integrity and high-quality reporting for the business.


Key Requirements

  • Experience: Minimum of 5 years of professional experience in Business Intelligence or Data Engineering.
  • SQL Mastery: This is the priority. You must have advanced SQL skills for complex querying and data manipulation.
  • Cloud Infrastructure: Proven experience with Azure.
  • Visualization: Strong proficiency with Power BI is highly desirable.
  • Tech Stack Extras: Experience with Azure Data Factory (ADF), Microsoft Fabric, Spark, or Python will put you at a significant advantage.


Location & Work Pattern

  • Remote/Hybrid: Candidates can be based anywhere in the UK.
  • Commute: You must be able to commute to the London office at least once per month.
  • Note: The office is relocating to a flagship space at Adelaide House, London Bridge, toward the end of this year.


The Package & Fine Print

  • Salary: Up to £70,000 per annum (depending on experience).
  • Right to Work: Candidates must be British citizens. Sponsorship is not available for this role.
  • Urgency: The business is looking to hire as soon as possible.

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