Business Intelligence Analyst

Oscar
City of London
1 day ago
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Job Title: Business Intelligence Analyst

Location: London (Hybrid - 2–3 days per week in office)

Industry: Financial Services

Salary: £55,000 – £75,000 DOE


The Opportunity

I’m working with a leading financial services organisation in London that is seeking a talented BI Analyst to join their growing data and analytics team.


This is a fantastic opportunity for someone who enjoys turning complex business data into actionable insights through dashboards and reporting. The role offers a hybrid working model, competitive benefits, and the chance to work on high-impact projects across finance, operations, and risk teams.


Key Responsibilities

  • Design, build, and maintain interactive dashboards and reports using BI tools such as Power BI or Tableau.
  • Analyse large datasets to provide actionable insights that influence business strategy.
  • Collaborate with stakeholders to understand reporting requirements and improve data-driven decision-making.
  • Support the development and optimisation of data pipelines and data models.
  • Ensure data integrity, quality and governance across reporting platforms.
  • Assist with ad-hoc business intelligence requests and deliver insights to senior stakeholders.


Essential Skills & Experience

  • Proven experience as a BI Analyst or similar role, preferably in financial services.
  • Strong experience with BI tools (Power BI, Tableau or similar).
  • Proficient in SQL for querying and data manipulation.
  • Working knowledge of Python or other scripting languages for data analysis is advantageous.
  • Experience with cloud platforms (Azure or AWS).


Desirable Skills

  • Understanding of data warehousing, ETL processes and data modelling.
  • Experience with financial data, risk analytics or regulatory reporting.
  • Strong communication skills and ability to present insights to non-technical stakeholders.
  • Ability to translate business requirements into technical reporting solutions.


Package & Benefits

  • Competitive salary: £55,000 – £75,000 DOE
  • Hybrid working – 2–3 days per week in London office
  • Annual performance bonus
  • Private medical insurance and wellness support
  • Generous pension and life assurance
  • 25+ days annual leave plus bank holidays
  • Professional development opportunities including training and certifications

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