Data Engineer

McCabe & Barton
London
2 days ago
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Data Engineers – Join a Leading Financial Services Transformation


A prestigious Financial Services client is undertaking a significant data transformation initiative and is seeking Data Engineers to join their team. These roles offer a competitive base salary of £45,000 - £65,000, along with an attractive benefits package and flexible working arrangements.


About the Role

Our client is looking for strategically minded Data Engineers with a natural curiosity and a deep understanding of how businesses leverage data. The ideal candidate will play a key role in designing and implementing new data sources, automated workflows, and scalable database structures.


Key Responsibilities

  • Develop and optimize data pipelines, automated workflows, and database structures.
  • Build and manage a Snowflake ecosystem to support streaming and batch workflows, ensuring seamless access for end-user teams.
  • Drive innovation by integrating GenAI tools and techniques while enhancing platform capabilities using Snowflake and Microsoft technologies.


Required Skills & Experience

  • Strong expertise in SQL.
  • Solid experience with Azure Data Factory and Azure DevOps.
  • Proficiency in Python for data processing and automation. – beneficial
  • Experience of Snowflake – beneficial
  • Experience working in an Agile development environment.


Our client takes a technology-agnostic approach, making this an excellent opportunity for engineers with diverse technical backgrounds.


If you are an experienced Senior Data Engineer seeking a role within an innovative and forward-thinking organization, we encourage you to apply.


📩 To be considered, please submit an up-to-date CV for review.

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