Skip to content

tuchandra/pymcon2020_talk

Repository files navigation

Learning Bayesian Statistics with Pokemon GO

talk_screenshot.png

This repo contains the materials for my PyMCon talk, Learning Bayesian Statistics with Pokemon GO.

Included materials

Notebooks: these are cleaned up versions of what I live coded in the talk. They also include snippets of code (mostly plotting!) that didn't make it into the final video.

  • 1_rayquaza.ipynb: suppose we got 2 shinies in 44 encounters; what do we think the shiny rate is?
  • 2_silph.ipynb: given a sequence of events, how does our understanding of the shiny rate change over time?
  • 3_dragon_week.ipynb: did the chance of hatching a Deino change in the middle of the Dragon Week event?

Data: There are two CSV files: rates.csv for the second model and dragon_week.csv for the third.

Other: The environment.yml file can reproduce my conda environment in which I ran all of the code.

Finally, find my slides here.

About

Slides and materials for my PyMCon talk

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published