Quantitative Researcher

JR United Kingdom
Slough
4 months ago
Applications closed

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Systematic Quantitative Researcher - Entry/Junior Level - London Office

My client is a leading quantitative hedge fund with offices across Europe, North America and Asia. Their teams trade all traditional asset classes and cover a mix of MM/HFT, Stat Arb, Quant Macro, and Event-Driven strategies. The firm is looking for Junior Quantitative Researchers to be responsible for end-to-end strategy research. This is an excellent opportunity for PhD and Master’s graduates with a background in mathematics, statistics, computer science or a related field.

Successful candidates will work in a collaborative environment where they will gain exposure to the full research pipeline from the front office while working with developers and traders to optimize, implement, monitor and manage strategies.

The Role:

  • Collaborate with other quantitative researchers and developers to clean datasets, discuss research, and optimise systematic trading strategies.
  • Involvement in all aspects of the strategy research/trading pipeline, from research based on large datasets to the development, backtesting and monitoring of strategies in live trading.

Requirements:

  • The ideal candidate will have a Master's or PhD in a numerate field of study, such as Mathematics, Physics, Computer Science, or Engineering.
  • Excellent coding ability in at least one language. Previous successful candidates are proficient users of Python, C++, Java, MATLAB, etc.
  • Experience/knowledge of finance from academic studies, internships or professional work.
  • Strong attention to detail, excellent problem-solving abilities, and the ability to work well in a collaborative environment.


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