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Power BI Developer / Data Analyst

Army Marketing
City of London
2 weeks ago
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Overview

Data Analyst / BI Developer - Financial Services (Power BI, PySpark, Databricks)

Location: London (Hybrid, 2 days per week onsite)

Salary: £65,000 to £75,000 + bonus + benefits

Sector: Private Wealth / Financial Services

About The Role

A leading Financial Services organisation is looking for a Data Analyst / BI Developer to join its Data Insight and Analytics function.

You will play a key role in developing the business's analytics capability, building dashboards, insight tools, and data models that directly support senior leaders within its Private Wealth division.

This role suits someone who wants to go beyond dashboard building and become a trusted analytics partner, shaping how data drives strategic decision making across the organisation.

Key Responsibilities
  • Act as the subject matter expert for data analytics and visualisation within the Private Wealth division.
  • Partner with senior leadership and key stakeholders to translate requirements into high-impact analytical products.
  • Design, build, and maintain Power BI dashboards that inform strategic business decisions.
  • Use PySpark, Databricks or Microsoft Fabric, and relational/dimensional modelling (Kimball methodology) to structure and transform data.
  • Promote best practices in Git, CI/CD pipelines (Azure DevOps), and data governance.
  • Lead the rollout, adoption, and training of dashboards and data tools to maximise business impact.
  • Communicate insights clearly to non-technical stakeholders and influence decisions across commercial, product, and operations teams.
What We're Looking For
  • 3 to 5 years of experience in data analysis, BI development, or data engineering.
  • Strong knowledge of relational and dimensional modelling (Kimball or similar).
  • Proven experience with:
  • Power BI (advanced DAX, data modelling, RLS, deployment pipelines)
  • PySpark and Databricks or Microsoft Fabric
  • Git and CI/CD pipelines (Azure DevOps preferred)
  • SQL for querying and data transformation
  • Experience with Python for data extraction and API integration.
  • Excellent numerical and analytical skills with strong attention to detail.
  • Confident communicator with experience presenting to senior, non-technical stakeholders.
  • Previous exposure to Financial Services or Wealth/Investment Management data is highly desirable.
  • Familiarity with Agile delivery environments.
Why This Role

You will join a forward-thinking data team that is building a modern analytics ecosystem within Financial Services.

This is a highly visible position where you will work closely with business leaders and own the full delivery process from data modelling to executive-ready insight.

You will also be supported to complete the Microsoft Certified: Power BI Data Analyst Associate qualification within your first six months.

Apply

Interested? Apply today or get in touch for a confidential discussion. This is an excellent opportunity for a technically strong and commercially curious data professional who wants to make a real impact in a growing analytics function.

RSG Plc is acting as an Employment Agency in relation to this vacancy.


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