Lead data Engineer - Financial Markets - Day rate

London
10 months ago
Applications closed

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Thrilled to announce a fantastic opportunity for a Data Engineering Lead -Financial Markets Specialist!

Location: London City
Rate: £525 per day
Contract: Outside IR35

The Role
We're on the lookout for a stellar Data Engineering Lead with solid experience in Financial Markets. This contract role is perfect for someone who can deliver high-impact results quickly.

Why This Role is Ideal for You
Imagine working in the heart of London's financial district, balancing remote work with the dynamism of in-office collaboration! Plus, it's outside IR35.

Your Profile
The ideal candidate will possess:
-🟢 Extensive Experience as a Lead Engineer: Proven track record of delivering complex data projects.

  • 🟢 Financial Markets Expertise: Essential experience in Financial Markets, preferably on the sell-side.
  • 🟢 Azure Data Engineering and Databricks Mastery: Crucial expertise in these platforms.
  • 🟢 Data Quality, Metadata Management, Data Architecture: Highly valued proficiency.
  • 🟢 Advanced Scala/Spark Skills: Necessary for complex ELT processes.

    Selection Process
    To find the best fit, candidates will undergo:
  1. Technical Data Task: Hands-on Scala/Spark test focused on ELT capabilities.
  2. Discussion: A 15-minute chat to explain your approach and reasoning.

    This role is perfect for a Data Engineering Lead ready to take on a rewarding challenge. If you have the skills and experience described above, Drop me a message or apply

    #dataengineering #financialmarkets #hiringnow

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