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Senior Data Engineer

Hunter Bond
8 months ago
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Senior Data Engineer

Salary: Up to £120,000 plus bonus

Working model: Hybrid 2-3 days a week in office

Location: London (No Sponsorship offered)


My Leading Trading client are looking for an experienced and motivated Senior Data Engineer to conduct multiple proof of concepts using different technical solutions.


This is a permanent opportunity based in London with a hybrid working model 2- 3 days a week in the office.

To be considered for this role, you MUST have

The following skills / experience is required:

  • Strong data modelling, data warehousing and analytics background
  • Excellent DevOps experience
  • track record with ETL processes, and database design.
  • Proficient in SQL and experience with various database technologies.
  • Strong cloud platforms like AWS or Azure, particularly in data-related services.
  • excellent experience using Java and Python
  • Excellent communication skills
  • Comfortable in fast changed environments


Senior Data Engineer

Salary: Up to £120,000 plus bonus

Working model: Hybrid 2-3 days a week in office

Location: London (No Sponsorship offered)


If you are interested in this position and meet the above requirements please apply immediately.

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