Machine Learning Quantitative Researcher

Anson McCade
City of London
1 day ago
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My client is a start-up Quant hedge fund founded by a Math Postdoc and a Fields Medallist. They are aiming to launch next year and are currently hiring in Miami, London and Milan.

Role


Contribution to production proprietary trading systems and create and deploy Machine Learning and Airtifical Intelligence models and experiment with trading ideas.


Required


Experience training Machine Learning models end to end (from data processing to fine tuning), experience training across transformers / generative models / RL, with publications in either top tier ML conferences (e.g., NeurIPS, ICLR, ICML, JMLR, etc.) or top scientific journals, top tier institutions / industry experiences.

Positives


PHD

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