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Junior Quantitative Researcher

Anson Mccade Careers
City of London
2 weeks ago
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Junior Quantitative Researcher
£120,000 - 160,000 GBP
Onsite WORKING
Location: Central London, Greater London - United Kingdom Type: Permanent

The client is a leading Hedge Fund with main offices in London, Paris, New York, Hong Kong and Singapore. After launching they focused on systematic strategies for cash equities. Since then, they have expanded into other asset classes including; FX, Futures, Commodities and Systematic Options. They also now have teams building out into discretionary and semi-systematic trading.

The Role - Quantitative Researcher

As a Quantitative Researcher, key responsibilities will focus on developing systematic trading strategies. Your day to day will include; analysing large datasets, identifying patterns and trends, and building signals. Once you have deployed each trading strategy you will be responsible for assessing and enhancing their performance. Outside of strategy research, you will be responsible for helping to optimise the portfolio; designing models and tools to provide yourself and the team with performance indicators.

Benefits

Market leading base and bonus.

Excellent scope to progress within the firm.

Opportunity to work alongside experienced Quantitative Researchers and Traders.

Exposure to working on various types of strategies and across a range ...

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