Crypto Quant Researcher/ London

Eka Finance
London
1 year ago
Applications closed

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Staff Growth Data Scientist, Monetization

T Posted byRecruiterQuant Firm are looking to add a crypto quant to their existing team in London.

Role:-

Your role will involve developing trading strategies for cryptocurrencies, using the latest advances in scientific research using Artificial Intelligence, Machine Learning and other advanced mathematical and statistical tools .

Researching high to low-frequency alphas for the cryptocurrencies market. Back-testing and implementing strategies in Python/ C++ into a live trading environment Collaborating internally with other Data Scientists, Quantitative Traders, Software Engineers and Senior Management to drive cutting edge research

Requirements :-

The ideal candidate would have up to 2 years’ experience working on systematic trading strategies and some exposure to crypto markets.

understanding of HFT strategies is ideal but not a must.

Experience with cryptocurrencies and blockchain is preferable

Strong programming skills in C++ or similar object-oriented language essential

Holder of a Master's degree or a PhD in finance,puter science, mathematics, physics, or another quantitative discipline .

You must be legally authorised to work in the UK.

Apply:-

Job ID TK

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