Business Data Analyst

JSS
City of London
3 days ago
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Business Data Analyst – London – hybrid (3 days in office)


An experienced Data Business Analyst is required by a mid-sized bank to work on their core data programme of work. The role involves mapping data form multiple sources, including legacy systems, to a Common Data Model, and then into various systems for reporting purposes etc.

It is likely that you will have originally come from a formal data background but the core business analysis skills such as stakeholder management, requirement gathering, and producing requirement specifications are very important.

You must have worked in a similar role in UK Banking


Essential knowledge/experience/skills:

  • Banking background
  • Data Analysis
  • Data mapping/integration/ETL
  • Financial Services Data
  • Cloud platforms (ideally GCP)
  • SQL
  • Stakeholder management
  • Common Data Model


Ideally, you will also have:

  • Data visualisation experience (PowerBI preferred)
  • Salesforce CRM
  • Product Knowledge of Lending within a banking environment
  • Regulatory experience within banking


This is an important role within the overall programme of work so we are looking for knowledgeable and engaging individuals with the correct background. Significant Banking experience is essential.

Sound like your next gig? Then ping your CV and get involved!

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