Regulatory Reporting Manager

Chalfont St Giles
1 year ago
Applications closed

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ALM and Regulatory Reporting Manager

Buckinghamshire

Up to £80k

Our client is a customer centric, mortgage and savings provider based in Buckinghamshire. They are seeking an ALM and Regulatory Reporting Manager to join their established Finance team. Reporting into the Head of Finance, this role will have responsibility for Treasury Front Office activities, stress testing and the production of the organisations Financial Risk Management Framework. Alongside this, you will play a pivotal role in ensuring accurate and timely regulatory submissions to BoE/PRA, which will include CoRep, FinRep and statistical returns.

Main duties of the ALM and Regulatory Reporting Manager will include:

  • Develop monthly internal Management Information (MI) for ALCO (Asset and Liability Committee)

  • Ownership of the company’s Interest Rate Risk management (IRRBB) process and controls

  • Support the development of the Treasury Strategy and Financial Risk Management Policy

  • Manage monthly and quarterly regulatory reporting to ensure its accuracy and timeliness

  • Evaluate, establish, and maintain controls related to regulatory reporting, including data reconciliations, cross-checks, variance analysis, and investigations

  • Support the implementation of a new regulatory reporting system to enhance automation

    The successful individual will possess:

  • Degree educated in a quantitative field (i.e. Maths, Economics, Data Science)

  • Strong experience in regulatory reporting, covering CoRep, FinRep, PRA and statistical returns

  • Knowledge of liquidity, capital and credit risk is advantageous

    Our client is based in Buckinghamshire and their head office isn’t easily accessible via public transport, therefore it would be beneficial if you held a UK driving licence and had your own vehicle. They do require this role hold to be office based a minimum of 3 days per week

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