Junior Quantitative Researcher - Cambridge

Quantbox Research
Cambridge
2 months ago
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Junior Quantitative Researcher - Cambridge

Cambridge, England, United Kingdom


Quantbox is a technology-driven Proprietary trading firm that specializes in systematic alpha research and electronic market-making on various exchanges. We trade across a multitude of asset classes and trading venues with significant market share. We are looking to appoint a Junior Quantitative Researcher.


What you’ll need:



  • You possess a Bachelor's Degree, Masters Degree or PhD in mathematics, computer science, statistics, physics, or a related field
  • Ability to think independently and use creative approach in problem solving
  • Familiarity with python, C++, R programming languages

You will be responsible for building and improving the models that keeps us competitive in the market. You will work alongside the traders, software developers and our engineering scientist, you would learn, research, improve, test, build our trading algorithms to increase trading profitability. A typical day involves applying rigorous scientific method, machine learning techniques to a vast array of datasets in order to create insights on how the market behave.


Quantbox is a place of friends and colleagues, where people convert their passion into action. We believe in togetherness that brings out the best in ourselves and our Company. Our open and casual work culture gives you the space to innovate and deliver. Everyone on the team is approachable.


Employee remuneration packages are reviewed regularly to ensure that they remain competitive. In recognition of our employees’ contributions and performance, for full time permanent roles we provide:



  • Competitive compensation
  • 4 Weeks of paid vacation
  • Medical insurance
  • International team outing

Quantbox is an equal opportunities employer.


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