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Evidence/data for the bright future of Probabilistic Programming #91
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I'd add that explanations of models matter more and more in professional
data science. Covid examples are good examples of this.
…On Wed, 22 Apr 2020, 07:49 Hugo Bowne-Anderson, ***@***.***> wrote:
Both @ericmjl <https://github.com/ericmjl> and I are firm believers that
Probabilistic Programming has a bright and huge future.
I know other people believe the same. @springcoil
<https://github.com/springcoil> has said toe me previously that "PP is
the new deep learning" and I understand that @twiecki
<https://github.com/twiecki> feels similarly.
What I'd like to do here is amass evidence of the bright future of PP and
why we think it will garner increasing adoption.
A few things I've thought of
- FB uses Bayesian techniques and PP, such as Prophet
<https://facebook.github.io/prophet/>
- PyMC3 has ~5K stars on github: https://github.com/pymc-devs/pymc3
- Bayesian quant methods Quantopian <https://www.quantopian.com/> (see
here
<https://blog.fastforwardlabs.com/2017/01/11/thomas-wiecki-on-probabilistic-programming-with.html>,
for example)
- Nate Silver using Bayesian methods for 538
- FFLabs (usually ahead of the curve) had a WP on PPL in 2017
<https://blog.fastforwardlabs.com/2017/01/18/new-research-on-probabilistic-programming.html>
- Growth of academic conferences: PROBPROG2019 and 2020, whole
conferences dedicated to the study and application of probabilistic
programming languages.
- In 2013, O’Reilly itself published a blog post introducing
probabilistic programming
<https://www.oreilly.com/content/probabilistic-programming/>.
I appreciate this is very limited!
What other evidence/data is there for the future of PPL?
Note: @ericmjl <https://github.com/ericmjl> and I are currently drafting
a book proposal for O'Reilly, which motivated this question.
Tagging @fonnesbeck <https://github.com/fonnesbeck>, @ericmjl
<https://github.com/ericmjl>, @betanalpha <https://github.com/betanalpha>,
@FrizzleFry <https://github.com/FrizzleFry>, @springcoil
<https://github.com/springcoil>, @twiecki <https://github.com/twiecki>,
@justinbois <https://github.com/justinbois>, @AllenDowney
<https://github.com/AllenDowney> as you all may have thoughts here. Do
feel free to tag anybody else you think may have ideas.
thanks!
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Both @ericmjl and I are firm believers that Probabilistic Programming has a bright and huge future.
I know other people believe the same. @springcoil has said toe me previously that "PP is the new deep learning" and I understand that @twiecki feels similarly.
What I'd like to do here is amass evidence of the bright future of PP and why we think it will garner increasing adoption.
A few things I've thought of
I appreciate this is very limited!
What other evidence/data is there for the future of PPL?
Note: @ericmjl and I are currently drafting a book proposal for O'Reilly, which motivated this question.
Tagging @fonnesbeck, @ericmjl, @betanalpha, @FrizzleFry, @springcoil, @twiecki, @justinbois, @AllenDowney as you all may have thoughts here. Do feel free to tag anybody else you think may have ideas.
thanks!
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