Is it possible to access the scikit-learn pipeline from within one of the objects that is used in the pipeline. I want to access the
named_steps attribute of the pipeline inside
Regressor as illustrated below:
from sklearn.pipeline import make_pipeline class Transform(object): def fit(self, X, y=None): print("Transform.fit") return self def transform(self, X): print("Transform.transform") return X class Regressor(object): def fit(self, X, y=None): print("Regressor.fit") # Can I get the named_steps attribute from # the pipeline that Regressor is part of here def predict(self, X): print("Regressor.predict") model = make_pipeline(Transform(), Regressor()) print(model.steps) print("Begin Fit") model.fit(1) print("End Fit") print("Begin Predict") model.predict(1) print("End Predict")
The reason I want to do this is to access which transformer is used before the regressor.
EDIT: To elaborate, I'm writing some custom transformer and regressor objects that I'm using together in a pipeline.
One thing that I'd like to do is have the regressor object change behaviour depending on how many transformer objects that have come before. I could specify it explicitly as a variable when you initialize the regressor class, but ideally I'd like not to.
Second thing that I'd like to do is to enable a regressor to both be used as a transformer and a regressor (I will probably have to override some functionality in the pipeline class). Any regressors coming later in the pipeline would need to change their behaviour if a regressor have been used to transform the data.