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Counterfactual generation using pymc do-operator example notebook#569
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Check out this pull request on See visual diffs & provide feedback on Jupyter Notebooks. Powered byReviewNB |
drbenvincent commentedAug 26, 2023
Might overlap with#554 which I'm working on with@juanitorduz. Not necessarily the end of the world though - there's a clear opportunity for stuff on this topic. Would like to review this - but just became a father (yesterday!) so there might be a minor delay |
twiecki commentedAug 28, 2023
What I really like about this NB is how it lays out the new workflow with creating the skeleton model first. Maybe that should be the focus. |
twiecki commentedSep 8, 2023
@shekharkhandelwal1983 Can you update the NB to focus on the new workflow? Mainly I think the title needs to be changed and some of the narrative. |

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This notebook provides a detailed steps required to generate counterfactuals, and demonstrates the newly introduced do-operator capabilities. And how it can be used to achieve Causality.
Helpful links
📚 Documentation preview 📚:https://pymc-examples--569.org.readthedocs.build/en/569/