1

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.

  • 2
    I don't think you can access the pipeline from within one of the steps. Maybe if you would explain what in you Regressor.fit would use this information, I can help with an alternative – ShaharA Aug 14 '18 at 15:30
  • @shaharA Thank you for the response. See the edit for some more details. – user2653663 Aug 14 '18 at 15:42
  • 1
    Why not keep separate pipeline for transformers and then pass that pipeline as a parameter into the regressor. In this you can check the named_steps of the passed pipeline and act accordingly. For the data transformation, you just need to call pipeline.transform() and use that in the regressor. Showing the code of what you actually want to do will help. – Vivek Kumar Aug 14 '18 at 15:49
  • @VivekKumar That is a good idea. The problem with this is that I would like to do hyper parameter optimization on the entire pipeline. Passing the pipeline as a variable, or passing the previous transformation as a variable hierarchically would make this somewhat difficult. – user2653663 Aug 14 '18 at 16:03

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.