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Quantitative Developer - Trading Pod

Qenexus
London
9 months ago
Applications closed

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Quantitative Developer – Core Data | Prime Brokerage – Digital Assets

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Quantitative Developer C++/ Python

Quantitative Developer

Quantitative Developer

Quantitative Developer

We are seeking a talented Quantitative Developer tojoin a leading trading team in the algorithmic trading space. Thisrole offers the opportunity to work in a dynamic environment thatcombines cutting-edge technology with quantitative research todeliver impactful trading solutions. Responsibilities:Collaborateclosely with quantitative researchers to iterate on researchprocesses and enhance trading strategies P&L.Design, implement,and optimize Python tools for trading strategy research.Improve andmaintain the existing simulation/backtest framework.KeyRequirements:Bachelors degree in Computer Science, Engineering, ora related field (Masters degree preferred).Strong experiencedeveloping and implementing execution algorithms.In-depthunderstanding of market microstructure across multiple assetclasses.Minimum of 5 years of Python development experience,including expertise in libraries like Numpy, Pandas, andPolars.Proficiency in C++ development.Strong analytical andproblem-solving skills.Excellent communication skills and theability to collaborate effectively in a distributed environment.Formore info, please apply or reach out to Tom

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