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Cash Equity Quant Researcher / London/ New York - $Open

Eka Finance
London
1 year ago
Applications closed

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T Posted byRecruiterQuant shop are recruiting a mid -level quant researcher to be based either in London or New York..

Role:-

Perform rigorous and innovative research to discover systematic anomalies in the equities market End-to-end development, including alpha idea generation, data processing, strategy backtesting, optimization, and production implementation Identify and evaluate new datasets for stock return prediction Maintain and improve portfolio trading in a production environment Contribute to the analysis framework for scalable research

Requirements:-

MS or PhD in mathematics, statistics, machine learning,puter science, engineering, quantitative finance, or economics 3+ years of work experience in systematic alpha research in cash equities, with exposures to statistical arbitrage or alternative data research Fluency in data science practices, , feature engineering. Experience with machine learning is a plus Experience with signal blending and portfolio construction Demonstrated proficiency in Python Highly motivated, willing to take ownership of his/her work Collaborative mindset with strong independent research abilities

Apply:-

Job ID TK

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