Lead Insights Analyst / Data Analyst

Scot Lewis Associates
Birmingham
2 weeks ago
Create job alert
Lead Insights Analyst / Data Analyst

My global banking client is looking for a contract Lead Insights Analyst to join the team.


12‑month contract on a hybrid basis, based in their Birmingham office (they may consider Leeds, Sheffield or Chester). Paying £780 per day.


Key Skills

  • Strong analytics or risk analytics experience, ideally within consumer lending (secured or unsecured).
  • Understanding of consumer lending products, profitability and credit risk, and proven ability to drive rapid insights from available data to drive business forward.
  • Proven ability to extract, analyse and interpret large, complex datasets to generate actionable business insights.
  • Advanced coding skills in SAS, SQL, Python (or similar) for data extraction, validation and analysis.
  • Deep understanding of data platforms and technologies (relational, NoSQL, data warehouses, metadata and transformation tools).
  • Experience delivering analytics projects across teams, with awareness of FCA regulation in a lending environment.
  • Highly self‑motivated, detail‑oriented and able to work independently under pressure to tight deadlines.

Responsibilities

  • Translate business needs into data products, analytics and machine‑learning solutions.
  • Build and maintain data assets, models and metadata to global standards.
  • Deliver insights across lending, consumer behaviour, marketing, pricing and growth.
  • Develop predictive, forecasting and stress‑testing models on large datasets.
  • Lead complex analytical projects, clearly communicating risk, reward and customer impact.

Please apply now for immediate consideration and further details.


Keywords: Insight analyst, Data Analyst, Data, Analytics, Credit Risk, Pricing, SAS, SQL, Python, NoSQL, Teradata.


Scot Lewis Associates Ltd is acting as an employment agency.


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