ImportError: cannot import name 'joblib' from 'sklearn.externals'
You can import joblib
directly by installing it as a dependency and using import joblib
,
Documentation.
It looks like your existing pickle save file (model_d2v_version_002
) encodes a reference module in a non-standard location – a joblib
that's in sklearn.externals.joblib
rather than at top-level.
The current scikit-learn
documentation only talks about a top-level joblib
– eg in 3.4.1 Persistence example – but I do see a reference in someone else's old issue to a DeprecationWarning in scikit-learn
version 0.21 about an older scikit.external.joblib
variant going away:
Python37\lib\site-packages\sklearn\externals\joblib_init_.py:15: DeprecationWarning: sklearn.externals.joblib is deprecated in 0.21 and will be removed in 0.23. Please import this functionality directly from joblib, which can be installed with: pip install joblib. If this warning is raised when loading pickled models, you may need to re-serialize those models with scikit-learn 0.21+.
'Deprecation' means marking something as inadvisable to rely-upon, as it is likely to be discontinued in a future release (often, but not always, with a recommended newer way to do the same thing).
I suspect your model_d2v_version_002
file was saved from an older version of scikit-learn
, and you're now using scikit-learn
(aka sklearn
) version 0.23+ which has totally removed the sklearn.external.joblib
variation. Thus your file can't be directly or easily loaded to your current environment.
But, per the DeprecationWarning
, you can probably temporarily use an older scikit-learn
version to load the file the old way once, then re-save it with the now-preferred way. Given the warning info, this would probably require scikit-learn
version 0.21.x or 0.22.x, but if you know exactly which version your model_d2v_version_002
file was saved from, I'd try to use that. The steps would roughly be:
create a temporary working environment (or roll back your current working environment) with the older
sklearn
do imports something like:
import sklearn.external.joblib as extjoblib
import joblib
extjoblib.load()
your old file as you'd planned, but then immediately re-joblib.dump()
the file using the top-leveljoblib
. (You likely want to use a distinct name, to keep the older file around, just in case.)move/update to your real, modern environment, and only
import joblib
(top level) to usejoblib.load()
- no longer having any references to `sklearn.external.joblib' in either your code, or your stored pickle files.
You should directly use
import joblib
instead of
from sklearn.externals import joblib