I am using sklearn's Pipeline and FunctionTransformer with a custom function

from sklearn.externals import joblib
from sklearn.preprocessing import FunctionTransformer
from sklearn.pipeline import Pipeline

This is my code:

def f(x):
    return x*2
pipe = Pipeline([("times_2", FunctionTransformer(f))])
joblib.dump(pipe, "pipe.joblib")
del pipe
del f
pipe = joblib.load("pipe.joblib") # Causes an exception

And I get this error:

AttributeError: module '__ main__' has no attribute 'f'

How can this be resolved ?

Note that this issue occurs also in pickle


I was able to hack a solution using the marshal module (in addition to pickle) and override the magic methods getstate and setstate used by pickle.

import marshal
from types import FunctionType
from sklearn.base import BaseEstimator, TransformerMixin

class MyFunctionTransformer(BaseEstimator, TransformerMixin):
    def __init__(self, f):
        self.func = f
    def __call__(self, X):
        return self.func(X)
    def __getstate__(self):
        self.func_name = self.func.__name__
        self.func_code = marshal.dumps(self.func.__code__)
        del self.func
        return self.__dict__
    def __setstate__(self, d):
        d["func"] = FunctionType(marshal.loads(d["func_code"]), globals(), d["func_name"])
        del d["func_name"]
        del d["func_code"]
        self.__dict__ = d
    def fit(self, X, y=None):
        return self
    def transform(self, X):
        return self.func(X)

Now, if we use MyFunctionTransformer instead of FunctionTransformer, the code works as expected:

from sklearn.externals import joblib
from sklearn.pipeline import Pipeline

def my_transform(x):
    return x*2
pipe = Pipeline([("times_2", my_transform)])
joblib.dump(pipe, "pipe.joblib")
del pipe
del my_transform
pipe = joblib.load("pipe.joblib")

The way this works, is by deleting the function f from the pickle, and instead marshaling its code, and its name.

dill also looks like a good alternative to marshaling

  • It should be: del my_transform instead of del f. Would this still work with more than one custom function or nested pipelines? – KRKirov Jan 5 '19 at 20:52
  • 1
    True, thanks, I fixed the code snippet. It would work with nested pipelines and anything that's marshallable (not every function is) – Uri Goren Jan 5 '19 at 20:57
  • You do intend to load your pipeline in a separate script dont you? So even with your current method, won't you need to have the code of MyFunctionTransformer ready somewhere in your memory or imports before calling joblib.load? How is that better than having the code of the function f ready in imports. Maybe from another script? Am I missing something? – Vivek Kumar Jan 7 '19 at 9:37
  • Do you agree that if FunctionTransformer would be implemented with my additions (namely setstate and getstate) then pickling would include all the required dependencies for the pipeline ? – Uri Goren Jan 7 '19 at 12:07
  • 1
    Regarding sklearn, when you pickle a TfidfVectotizer transformer, you expect it to store the vocab, tf and idf in order to work. I think that FunctionTransformer, that its sole purpose is to wrap a function with a transformer should at least save this function, or raise a warning if that's not possible. P.S. I've edited my Q&A in light of this discussion. – Uri Goren Jan 9 '19 at 21:30

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