I am using PyCaret and get an error.

```
AttributeError: 'SimpleImputer' object has no attribute '_validate_data'
```

Trying to create a basic instance.

```
# Create a basic PyCaret instance
import pycaret
from pycaret.regression import *
mlb_pycaret = setup(data = pycaret_df, target = 'pts', train_size = 0.8, numeric_features = ['home',
'first_time_pitcher'], session_id = 123)
```

All my variables are numeric (I coerced two of them, which are boolean). My target variable is `label`

and this is by default.

I also installed `PyCaret`

, imported its regression, and re-installed `scikit learn`

, imported `SimpleImputer`

as `from sklearn.impute import SimpleImputer`

```
OBP_avg Numeric
SLG_avg Numeric
SB_avg Numeric
RBI_avg Numeric
R_avg Numeric
home Numeric
first_time_pitcher Numeric
park_ratio_OBP Numeric
park_ratio_SLG Numeric
SO_avg_p Numeric
pts_500_parkadj_p Numeric
pts_500_parkadj Numeric
SLG_avg_parkadj Numeric
OPS_avg_parkadj Numeric
SLG_avg_parkadj_p Numeric
OPS_avg_parkadj_p Numeric
pts_BxP Numeric
SLG_BxP Numeric
OPS_BxP Numeric
whip_SO_BxP Numeric
whip_SO_B Numeric
whip_SO_B_parkadj Numeric
order Numeric
ops x pts_500 order15 Numeric
ops x pts_500 parkadj Numeric
ops23 x pts_500 Numeric
ops x pts_500 orderadj Numeric
whip_p Numeric
whip_SO_p Numeric
whip_SO_parkadj_p Numeric
whip_parkadj_p Numeric
pts Label
```

My traceback is the following:

`pycaret`

first and what version of`scikit-learn`

is being used by the environment? Have you tried skipping the`numeric_features`

parameter? What about trying the`numeric_iterative_imputer`

and`numeric_imputation`

parameters?`numeric_features`

. It does not help. I have the same error, but with a much longer traceback. I intentionally imported`pycaret`

and its regression right above the code, because in the past order mattered too. If I skip numeric features,`home`

is treated as categorical and that second variable does not have class at all. I am not sure why`pts`

is a`label`

, because I am not doing classification (maybe it is fine). Parameters you mentioned are in`clustering`

for PyCaret, I am not sure it will help here.