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Data Engineer

Lorien
London
5 days ago
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6 Month Contract — London (Hybrid)

Our UK leading banking client is looking for a Data Engineer to join their team on an initial 6-month contract.

Key skills
  • Proficiency in Python and SQL for data engineering and application development
  • Experience building data pipelines and ETL processes for capital markets data
  • Hands-on experience with AWS cloud services and Snowflake data platform
  • Experience with cloud-native development patterns and AWS services (Lambda, S3, RDS, etc.)
  • Hands-on experience integrating with OMS platforms (Aladdin, Murex, Charles River, etc.) including data extraction, transformation, and real-time feeds
  • Strong understanding of the capital markets trade lifecycle and order management workflows
  • Strong problem-solving skills with ability to design scalable, resilient solutions
  • Ability to work effectively with front-office stakeholders and translate business requirements into technical solutions
  • Strong collaboration and communication skills, with ability to work effectively in cross-functional teams
  • Understanding of trading workflows, trade lifecycle, and settlement processes
  • Knowledge of data engineering workflows, pipelines, and integration patterns
  • Awareness of regulatory and compliance considerations in capital markets delivery
  • Familiarity with agile principles and team-based delivery
  • Familiarity with agile delivery practices and frameworks (Scrum, Kanban, Team Topologies)
  • Exposure to CI/CD pipelines, DevOps tooling, and automated testing practices
  • Experience in regulated financial services environments
  • Knowledge of data modelling, streaming, and real-time integration patterns
  • Experience with multiple asset classes (equities, fixed income, derivatives)
  • Knowledge of UK regulatory environment and FCA requirements
  • Awareness of portfolio management processes and related systems
  • Experience working directly with front-office or business stakeholders
  • Background in data-intensive and cloud-native solution delivery
  • Exposure to complex, multi-team delivery environments with dependencies

If you find this opportunity intriguing and aligning with your skill set, we welcome the submission of your CV without delay.


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