timeseries
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Great first issue.
After installing NeuralProphet as developer (see CONTRIBUTING) - run pytest -v and see warning messages
Addressing these will prevent warnings becoming errors.
On MacOS, the tslearn.datasets does not work out-of-the-box.
In order to make it work, you need to apply the following steps:
- Go to your finder
- run "/Apps/Python/Install Certificates.command". This basically installs the
certifipackage with pip.
Perhaps we should add this to the documentation page of our datasets module?
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Is your feature request related to a problem? Please describe.
The cross_validation method has the argument input_size; forecast should also have it.
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it's becoming more time-consuming and error-prone to manually re-test all the demos following internal refactorings and API adjustments.
now that the API is fleshed out a bit, it's possible to test a large amount of code (non-granularly) without having to simulate all interactions via Puppeteer or similar.
a lot of code can already be regression-tested by simply running all the demos and val