Quantitative Researcher – Trading ML & Forecasting

Jump Trading
London
2 days ago
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Join a forward-thinking company that thrives on innovation and collaboration. As a Quantitative Researcher, you will leverage your expertise in statistical analysis and machine learning to drive insights from vast data sets, contributing to the development of profitable trading models. This role is perfect for those who are passionate about pushing the boundaries of financial research and technology. You'll work alongside talented professionals in a dynamic environment that values creativity and teamwork, ensuring that your contributions have a significant impact on the trading community. Embrace the opportunity to advance your career while making a difference in the world of finance.
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