I tried to emulate stepAIC function in R doing it "manually" but it takes forever (I posted just the first two tries). Is there something similar to stepAIC function (that eliminates one variable with highest p-value at iteration and minimize AIC) in python for logistic regression?

```
#create model with double interactions
datapol = data.drop(['flag'], axis=1) #elimino colonna flag dai dati
poly=sklearn.preprocessing.PolynomialFeatures(interaction_only=True,include_bias = False)
#calculate AIC for model with double interactions
m_sat=poly.fit_transform(datapol)
m1=sm.Logit(np.asarray(flag.astype(int)),m_sat.astype(int))
m1.fit()
print(m1.fit().summary2())
#create new model without variable that has p-value>0.05
mx1=pd.DataFrame(m_sat)
mx2=np.asarray(mx1.drop(mx1.columns[[3]], axis=1))
m2=sm.Logit(np.asarray(flag.astype(int)),mx2.astype(int))
m2.fit()
print(m2.fit().summary2())
```

edit: I found an algorithm that emulate stepAIC using forward direction https://qiita.com/mytk0u0/items/aa2e3f5a66fe9e2895fa