Software Engineer

Understanding Recruitment
Newcastle upon Tyne
1 year ago
Applications closed

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Are you a Software Engineer with experience in Data Science or Machine Learning?


Software Engineer – CleanTech Scale-Up

Location: UK, Fully Remote

Salary: £70,000 - £90,000


I am delighted to be working with a GreenTech Scale-Up platform whose mission is to transform our world into one led by sustainable lifestyles. They are looking for a Software Engineer who has also working in the Machine Learning field:


Have you worked with the following Data Science or Machine Learning technologies or methodologies?


  • Apache Flink
  • Stream-processing
  • Real-time Data Analytics


You will also have the opportunity to work with modern, top-of-the-market technologies including:


  • Java 19
  • AWS
  • Kubernetes
  • While writing your own frameworks and building a database from scratch



Apply now for this awesome Software Engineer position if you are a Core Java Developer who has worked with multithreading and concurrent programming!


Please note: Due to compliancy reasons, we will only be able to consider applications based in the UK.

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