Business Intelligence Analyst

Harnham
City of London
4 days ago
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Business Intelligence Analyst

London – 3 days in the office

£40,000-£50,000


A genuinely strong opportunity to join a scaling digital lender where data drives credit and product decisions. You’ll sit close to credit strategy, working on analysis that directly influences lending outcomes and commercial performance.


The Company:

High-growth UK financial services business building modern lending products for homeowners. They’re investing heavily across credit, data and technology as they scale.


The Role and Responsibilities:

You’ll partner with credit risk, product, data and engineering to support credit strategy and portfolio performance.

Core focus areas:

  • Pulling, structuring and validating data from internal and third-party sources
  • Building dashboards and automated reporting to monitor portfolio performance
  • Analysing customer behaviour and credit decision outcomes
  • Translating analysis into clear recommendations for non-technical stakeholders
  • Supporting testing and monitoring of new credit strategies and decisioning logic
  • Maintaining strong data governance and accuracy standards


Your Skills and Experience:

  • Strong experience in BI or analytics, ideally within lending, banking, finance or a start-up environment
  • Advanced SQL skills
  • Experience with tools like Power BI, Tableau or Looker
  • Clear communicator who can influence beyond the data team
  • Commercial mindset with curiosity and ownership
  • Comfortable in a scaling, fast-moving environment

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