Data Analyst

Paritas Recruitment
London
2 days ago
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Data Analyst - Contract Opportunity


Location: London, UK

Hybrid Working Model

Competitive Market Day Rate on offer


Paritas is working with a leading, Tier-1 Financial service client who is looking for a Data Analyst to join their London based team on a contract basis.


We are looking for a detail-driven Data Analyst to support credit risk reporting, regulatory compliance, and risk analytics aligned to Basel II / Basel III frameworks. The role will work closely with Risk, Finance, and Regulatory teams to ensure accurate data, robust analysis, and timely regulatory submissions.


Key Responsibilities

  • Analyse and validate credit risk data (PD, LGD, EAD, RWA) in line with Basel II / III requirements
  • Support regulatory reporting (e.g. COREP, ICAAP, stress testing)
  • Perform data quality checks, reconciliations, and issue remediation
  • Develop and maintain risk dashboards and MI for senior stakeholders
  • Support model monitoring, back-testing, and portfolio analysis
  • Work with large datasets using SQL and analytical tools to deliver insights


Key Requirements

  • Experience in credit risk analytics within banking or financial services
  • Strong understanding of Basel II / Basel III capital and credit risk frameworks
  • Hands-on experience with SQL; exposure to Python, SAS, or R advantageous
  • Strong analytical, numerical, and problem-solving skills
  • Ability to communicate complex risk data clearly to non-technical stakeholders
  • Experience supporting regulatory or audit processes preferred


Nice to Have

  • Exposure to IRB / Standardised approaches
  • Experience with data visualisation tools (Power BI, Tableau)
  • Background in Risk, Finance, Economics, or a quantitative discipline

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