Savings Data Analyst

Waterhouse-Kern Associates
London
3 days ago
Applications closed

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Job Description

Waterhouse-Kern Associates is pleased to be working with a challenger bank in Central London to find a Savings Data Analyst. It is a newly created role which supports the Head of Savings in building competitor, market and product performance reporting in order to inform pricing decisions and distribution strategy.


Key Responsibilities:


  • Building and updating reporting on Savings product performance and market positioning.
  • Monitor competitor movements within the Savings market, determining and communicating changes that impact performance to the wider Savings team.
  • Collaborate with Senior Savings Product Lead in defining pricing recommendations for Assets and Liabilities Group on a weekly basis.
  • Assist Head of Savings in updating governance submissions on Savings performance monthly for ALCO and Executive Risk Committee, as well as ad hoc data requests from Exco and Board.
  • Collate data that feeds into annual product risk reviews and Fair Value Assessments for each product type.
  • Brief and manage implementation of pricing changes across each of the bank’s channels (direct and deposit aggregator)
  • Monitor user behaviour within the direct Savings journey, helping to identify potential areas of customer stress and difficulty in the user journey.


Attributes:


  • Previous experience ...

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