exceptions
¶
MissingValuesWarning(message)
¶
Bases: UserWarning
Warning used to indicate that there are missing values in the data. This
warning occurs when the input data contains missing values, or the training
matrix generates missing values. Most machine learning models do not accept
missing values, so the Forecaster's fit' and
predict' methods may fail.
Source code in skforecast\exceptions\exceptions.py
21 22 |
|
MissingExogWarning(message)
¶
Bases: UserWarning
Warning used to indicate that there are missing exogenous variables in the
data. Most machine learning models do not accept missing values, so the
Forecaster's fit' and
predict' methods may fail.
Source code in skforecast\exceptions\exceptions.py
38 39 |
|
DataTypeWarning(message)
¶
Bases: UserWarning
Warning used to notify there are dtypes in the exogenous data that are not
'int', 'float', 'bool' or 'category'. Most machine learning models do not
accept other data types, therefore the forecaster fit
and predict
may fail.
Source code in skforecast\exceptions\exceptions.py
55 56 |
|
LongTrainingWarning(message)
¶
Bases: UserWarning
Warning used to notify that a large number of models will be trained and the the process may take a while to run.
Source code in skforecast\exceptions\exceptions.py
71 72 |
|
IgnoredArgumentWarning(message)
¶
Bases: UserWarning
Warning used to notify that an argument is ignored when using a method or a function.
Source code in skforecast\exceptions\exceptions.py
87 88 |
|
SkforecastVersionWarning(message)
¶
Bases: UserWarning
Warning used to notify that the skforecast version installed in the environment differs from the version used to initialize the forecaster.
Source code in skforecast\exceptions\exceptions.py
103 104 |
|