Finance Data Analyst

MSA Data Analytics Ltd
London
1 day ago
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Location: City, London - (Hybrid – 2 days office-based)

Overview

An excellent opportunity for a numerate early-career analyst to join a growing Treasury and Analytics function within a financial services organisation.

This role offers exposure to both Treasury risk (liquidity & IRRBB) and data analytics, making it ideal for candidates interested in financial risk, modelling, or applied data analysis within a commercial environment.

Key Responsibilities

  • Support liquidity analysis, cashflow forecasting, and monitoring of key risk metrics
  • Assist in analysing interest rate risk (IRRBB) and related reporting
  • Perform data analysis and modelling to identify trends and opportunities
  • Contribute to scenario modelling, stress testing, and performance analysis
  • Produce clear management information (MI) for stakeholders
  • Help develop and maintain analytical models, datasets, and reporting tools
  • Support regulatory processes including ICAAP, ILAAP, and reporting
  • Present insights to both technical and non-technical audiences

About You

  • Degree (2:1+) in a quantitative discipline such as Mathematics, Statistics, Economics, Finance, Physics, or similar
  • Around 12 months’ experience in a Treasury liquidity or IRRBB environment, or relevant analytical experience (e.g. placement year, internship, or post-graduate role)...

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