Business Data Analyst

Robert Half
London
3 days ago
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Robert Half Technology are assisting a market leading financial services organisation to recruit a Business Data Analyst on a 6 month contract to perm basis. Onsite required - London based

This role sits at the intersection of data, operations, and business strategy, with a strong focus on improving middle office processes, enhancing reporting capabilities, and driving automation initiatives.

You will work closely with Operations, Finance, Technology, and Front Office stakeholders to analyse business processes, identify efficiency opportunities, and deliver scalable data-driven solutions.

Role

  • The Business Data Analyst will analyse complex datasets to support operational, financial, and regulatory reporting
  • Develop and maintain SQL queries and data models to support business intelligence and reporting needs
  • Use Python to automate workflows, improve data quality checks, and streamline recurring processes
  • Build and maintain advanced Excel models and reporting tools (including Power Query, Power Pivot, VBA where applicable)
  • Review and optimise middle office processes, identifying control gaps and automation opportunities
  • Partner with stakeholders to gather business requirements and translate them into technical solutions
  • Drive process automation initiatives to improve accuracy, reduce manual intervention, and increase scalability
  • Support recon...

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