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Leading London Based Hedge Fund Hiring Quant Wizard

Eka Finance
London
11 months ago
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GenAI Data Engineer

~~Role:-
Your role will involve working closely with  the latest technology to develop algorithms and build quantitative models of financial markets. This role involves large and often complex data-sets.The role's responsibility in projects spans initial idea generation through to implementation and execution, whilst tackling challenges in areas such as prediction, optimisation, and data analysis.
You will be probing and examining the global markets, trying to understand the complexities of various traded products and exchanges. 
Requirements:-

Experience in numerical analysis, optimisation, signal processing, statistics (including robust techniques), time series analysis, machine learning, and natural language processing
Polished academic background in a  highly technical discipline, e.g. Statistics, Applied Mathematics, Computational Physics to PhD level.
Proven success with profitable trading strategies
Working knowledge of forecasting and data mining techniques, such as linear and non-linear regression analysis, neural networks or support vector machines

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