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Treasury Data Engineer

Jefferies
City of London
1 month ago
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Role

Joining the Treasury Technology team. The team currently has a presence in London and New York and is responsible for providing software and data solutions to enhance and support Cash Management, FX Funding, Treasury Analytics and Liquidity.

Responsibilities
  • Work with other teams to source and ingest data in a variety of forms
  • Collaborate with a team of developers using dev ops tools like GIT and CI
  • Ingest data into a data warehouse with ELT processes using T-SQL
  • Develop and maintain OLAP databases and SSAS cubes
  • Create reports and dashboards in Power BI and SSRS
  • Writing performant and maintainable code to provide value from data
  • Adhere to project deadlines
Requirements
  • Excellent technical aptitude – T-SQL, DAX, SSAS Tabular, Python etc.
  • Strong analytical & problem-solving skills with a logical approach
  • Knowledge of data warehousing and data processing concepts
  • Able to work collaboratively
  • Excellent data analytical skills – Data mining / discovery
  • Good communication skills, able to covey concepts.
  • Good business knowledge of Fixed Income and Equities, Repos and STBL
  • Good understanding of Treasury


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