Martin Jankowiak - Brief Introduction to Probabilistic Programming

แชร์
ฝัง
  • เผยแพร่เมื่อ 16 ก.ย. 2020
  • Recorded at the ML in PL 2019 Conference, the University of Warsaw, 22-24 November 2019.
    Martin Jankowiak (Uber AI Labs)
    Slides available at docs.mlinpl.org/conference/201...
    Abstract:
    Probabilistic models offer a compelling methodology for reasoning about an uncertain world. Programming languages are powerful tools for specifying deterministic computations. Their synthesis--probabilistic programming languages (PPLs)--promises a unified and (partially) automated approach to specifying and reasoning about complex models. We give an introduction to PPLs, with examples drawn from economics and natural science serving as motivation. For concreteness we illustrate all our examples using the Pyro PPL.
    Relevant links:
    pyro.ai/
    eng.uber.com/oed-pyro-release/
    An Introduction to Probabilistic Programming arxiv.org/abs/1809.10756
  • วิทยาศาสตร์และเทคโนโลยี

ความคิดเห็น • 7

  • @sinan_islam
    @sinan_islam ปีที่แล้ว

    Probabilistic Programming is same as Bayesian Statistics?

    • @sinan_islam
      @sinan_islam ปีที่แล้ว

      @Hobbesian Thinker Thank you!

  • @jeffreyalidochair
    @jeffreyalidochair 3 หลายเดือนก่อน

    why, at 19:15, is the visualization of the slop curved? the model seems to be a degree 1 polynomial

  • @MusixPro4u
    @MusixPro4u 2 ปีที่แล้ว +4

    35:21 the formula for the posterior is wrong, isn't it? It should be p(theta|y,d) instead of p(y,theta|d).

    • @matthewlvk7366
      @matthewlvk7366 10 หลายเดือนก่อน +1

      I think that's just simpe formulation of conditional probability, the starting formular of Bayes' Theorem
      first equation in en.wikipedia.org/wiki/Conditional_probability

  • @peabrane8067
    @peabrane8067 ปีที่แล้ว

    12:05 😂😂😂😂