@DeRonin_: Jane Street pays $750k/year for quants who can run neural networks across thousands of market signals This 1-hour Corne…
Summary
A Cornell lecture by Marcos Lopez de Prado shares the quant trading framework using neural networks that Jane Street quants use, with potential earnings of $750k/year.
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Cached at: 05/14/26, 08:33 AM
Jane Street pays $750k/year for quants who can run neural networks across thousands of market signals
This 1-hour Cornell lecture by Marcos Lopez de Prado gives you the same framework those quants get paid $60k/month for
Bookmark & watch today. Then read the article below to https://t.co/vVBoNMhRvD
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