Comments (3)
It's possible it will be fixed by polars, but anyway this seems to be a vulerability on your side to not have the version specified
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Hey @kleofas97. polars is an optional a dependency of statsforecast, so if you pip install statsforecast
you won't get it, you'd have to use pip install statsforecast[polars]
. statsmodels doesn't depend on polars either, so I'm a bit confused on how you got it.
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