C#/.NET Developer - London - Solve hard problems at scale- International Tech Firm

Oxford Knight
London
1 year ago
Applications closed

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Summary:

An international technology firm with a world-class, X10 engineering team are looking for a software developer to join their London team. The successful C#/.NET developer will be working on global, impactful projects from high-performance, real-time search platforms to large scale distributed computing, to petabyte-scale data analytics and machine learning tooling in their London-based office. This firm work with an unprecedented amount of data, with their platform handling 12 million queries/second and 600 billion queries/day.

Requirements:

  • BSc / MSc in hard science subject, with preference for Computer Science
  • Strong programming skills in C#/.NET Core, or another object-oriented language
  • Passion for solving hard technical challenges at scale, building greenfield projects with global reach and impact, and building bleeding-edge technology solutions.


Benefits:

  • Highly competitive salary in London - this firm can compete alongside FAANG firms for compensation
  • Chance to work on brand new products in a highly agile technology environment
  • Solve complex computer science and technology-focussed problems at scale



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