C# Developer - London- C#, SQL, Machine Learning, Quant/ Systematic Trading

Oxford Knight
London
3 weeks ago
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Summary:

A boutique systematic and quant trading firm are looking for a C# Developer to join their quant research team in London. With a small, agile and technology-driven environment, the successful C# Developer will be working alongside software engineers and quant researchers to build and develop statistical, mathematical models from scratch using vast data sets and cutting-edge technology. Free from a bureaucratic and corporate culture, this small team are able to react to changing financial markets with agility and speed, whilst maintaining an emphasis on employees' personal and professional development.

Requirements:

  1. Minimum BSc in Computer Science or related STEM subject
  2. Good object oriented programming experience in C#
  3. SQL experience

Benefits:

  1. Competitive salary and bonus structure in London
  2. Work with elite technologists and quant researchers
  3. Small, agile environment with opportunity to work close to the business in all areas from development, modelling and trading

Contact:

If you're interested in C# or Software Development positions in London, please get in touch!

Rosie Griggs


linkedin.com/in/rosie-oxfordknight

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