Cmdstanpy case study - multilevel modeling cmdstanpy and plotnine#217
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mitzimorris merged 18 commits intomasterfrom Aug 31, 2022
Merged
Cmdstanpy case study - multilevel modeling cmdstanpy and plotnine#217mitzimorris merged 18 commits intomasterfrom
mitzimorris merged 18 commits intomasterfrom
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soliciting feedback - @WardBrian. @bob-carpenter |
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A few comments/questions. Overall I think this is really great
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hi Brian, this is ready to go |
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A few minor suggestions/typo corrections but otherwise this looks great
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Notebook covers
multilevel regression models - varying intercept model
posterior predictive checks
viz with plotnine