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Junior Risk & Data Analyst

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London
1 day ago
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Junior Risk & Data Analyst

Location: Moorgate, London (Hybrid Working Available)

Salary: £35,000–£42,000 per annum

About the Company

Our client is a London-based financial organisation known for its commitment to data-led decision making and risk management. Their analytics function supports strategic planning, financial forecasting, and regulatory reporting. The team combines analytical insight with commercial understanding to help the business operate efficiently and responsibly.

They are now looking for a Junior Risk & Data Analyst to join their team. This position is ideal for someone with a strong interest in financial data, analysis, and the processes that help organisations manage risk.

The Role

As a Junior Risk & Data Analyst, you will work closely with senior analysts and managers to identify, assess, and monitor business and financial risks using data-driven methods. You will help gather and interpret data, prepare reports, and ensure accurate information is available for key decision-makers.

Your main responsibilities will include:

  • Collecting and analysing financial and operational data related to business performance and risk.
  • Supporting the preparation of risk reports and dashboards for senior management.
  • Assisting with data validation and quality assurance processes.
  • Collabora...

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