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Posts by Ula Sagarra

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πŸ”₯πŸŽ‰New library: boosting for survival analysis, including multiclass (competing risks)

Survival = missing outcomes because limited observation window (common in medicine, marketting...)

soda-inria.github.io/hazardous

Gives very fast boosted-trees for survival

1 year ago 45 11 1 0
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#opensource #python #corporateresponsibility #sustainability | Marcelo Trylesinski πŸ’­ Quick question: Is your company running Starlette or Uvicorn in production? If yes, you're among the millions benefiting from these projects FOR…

If possible, I'd appreciate a report on LinkedIn: www.linkedin.com/posts/marcel...

1 year ago 4 1 0 0
Picture of the study "Income-based U.S. household carbon footprints (1990–2019) offer new insights on emissions inequality and climate finance"

Link in thread

Picture of the study "Income-based U.S. household carbon footprints (1990–2019) offer new insights on emissions inequality and climate finance" Link in thread

We're being cooked in our own juices so that a bunch of trust fund babies could sip champagne on a super yacht while we choke on the ashes

1 year ago 2414 600 47 18

And from experience, they are the ones that are less plug and play. Lots of business alignment, data archeology and scientiffic know how + personalization. So difficult scenario for pure products as well. Maybe I'm thinking wishfully since it is our job, but I do believe this ;)

1 year ago 1 0 0 0

ML 'traditional' methods are still king in tabular tasks. And those are where internal company data is more valuable and ROI is higher (time series, fidelization, pricing...) and where explainability/control is a must. So I agree but there is space for many other options as well. Isn't it?

1 year ago 2 0 1 0