@yifan_zhang_: Jane Street is the GOAT As Rohan @_arohan_ mentioned, good researchers respect other people’s work. Quantitative resear…
Summary
The article highlights Jane Street's contribution to pushing the frontiers of Deep Learning through quantitative research, emphasizing the respect good researchers have for such work.
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Cached at: 05/09/26, 08:14 PM
Jane Street is the GOAT 🫡
As Rohan @arohan mentioned, good researchers respect other people’s work.
Quantitative researchers are starting to push the frontier of Deep Learning!
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