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Full Stack Engineer

twentyAI
London
1 year ago
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This company are going through extortionary growth and looking for a Full Stack Software Engineer to work alongside exceptionally talented mathematicians, engineers and scientists working on their core product. They are backed by a world-class Venture Capital fund investing in Tech & Data businesses who build machine learning products.

As a Full Stack Developer you will take ownership, working on Greenfield development projects. You'll be working on complex problems with scalability and reliability in mind, across the full development lifecycle from architecture and design through to implementation.

Please apply if you are:

  • You are degree educated in Computer Science or similar STEM discipline, having achieved a 2.1 or above from a Russel Group / Oxbridge university
  • You're happy to work with the following tech stack (you don't need experience with all): Elixir, Phoenix, LiveVieww
  • Commercial experience working across any of the following Pthon, JavaScript, TypeScript, Elixir, GraphQL, C++ AWS, PostgreSQL.

If you are interested in learning more please apply.

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