Senior Data Engineer

Amicus
england, united kingdom, united kingdom
1 day ago
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Senior Data / Backend Engineer - Remote First OR Hybrid London - Up to £85k (DOE)


I am working with an exciting London based FinTech scale-up. The company who were founded a little over 5 years ago and have secured multiple $M of funding to build their investment insights platform.


Having already secured multiple clients using their state-of-the-art analytics to assist with managing and analyzing muilti-billion found funds the delivery team is looking to scale.


The Role


You will be reporting into the Head of Engineering and working with various stakeholders across the business to drive and scale the companies core offerings.


As the company are currently within their scale-up phase you will have many opportunities to contribute to a range of projects, work closely with Data Scientists and even have the ability to be client facing!


Requirements:


  • 5+ years experience with Data Engineering
  • Strong working knowledge with Python / Pandas / NumPy / ETL pipelines
  • Strong AWS experience (ideally Lambda & Step Functions)


Beneficial:


  • Experience or interest in the financial markets
  • Experience in client facing role
  • Previous start-up experience
  • Experience with high level of automation


Benefits:


  • Salary between £75,000 - £85,000
  • 25 Day Holiday + Bank Holidays + Christmas and New Year
  • Health Insurance
  • Fully Remote OR Office in central London


Senior Data / Backend Engineer - Remote First OR Hybrid London - Up to £85k (DOE)

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