I have an object that contains within it two scikit-learn models, an IsolationForest and a RandomForestClassifier, that I would like to pickle and later unpickle and use to produce predictions. Apart from the two models, the object contains a couple of StandardScalers and a couple of Python lists.

Pickling this object using joblib is unproblematic, but when I try to unpickle it later I get the following exception:

Traceback (most recent call last):
 File "<stdin>", line 1, in <module>
 File "/home/(...)/python3.5/site-packages/joblib/numpy_pickle.py", line 578, in load
   obj = _unpickle(fobj, filename, mmap_mode)
 File "/home/(...)/python3.5/site-packages/joblib/numpy_pickle.py", line 508, in _unpickle
   obj = unpickler.load()
 File "/usr/lib/python3.5/pickle.py", line 1039, in load
KeyError: 0

The same application both pickles and unpickles the object, so the versions of scikit-learn, joblib and other libraries are the same. I'm not sure where to start debugging, given the vague error. Any ideas or pointers?

  • is the latest version of scikit is installed on your pc?
    – Flika205
    Commented Feb 23, 2018 at 12:46
  • Can you produce a minimal duplicateable code? Commented Feb 23, 2018 at 12:52

6 Answers 6


The solution to this was pretty banal: Without being aware of it I was using the version of joblib in sklearn.externals.joblib for the pickling, but a newer version of joblib for unpickling the object. The problem was resolved when I used the newer version of joblib for both tasks.

  • hello @haroba I am facing same problem can you tell me which version you have to used ? i am using joblib-0.13.0 version Commented Nov 15, 2018 at 9:21
  • banal, but useful;)
    – jibiel
    Commented Jul 17, 2019 at 10:08
  • You saved my day! Super useful. I had a very similar load error caused by numpy. Update joblib to equivalent version solved this. So - thanks!
    – petezurich
    Commented Feb 26, 2023 at 20:32

With me, happened that I exported the model using from sklearn.externals import joblib and tried to load using import joblib.

  • No more sklearn.externals.joblib in version 1.3.0. My problem was the banal version problem of joblib among different computers.
    – FraSchelle
    Commented Sep 6, 2023 at 11:55

Mine was interesting. I was working with git-lfs and thus the files had been changed and joblib couldn't open them. So I needed to run git lfs pull to get actual files. So if you are using compatible joblib versions, make sure your files are not changed somehow!


For me the same version of joblib was used to dump and load but I was saving the file under python 3.7.4 and attempting to load with python 3.7.6 which raised the same KeyError.


In my case, I was trying to load an XGB. I found out XGB is not compatible with other sklearn models, so I did the following:

from xgboost import *
import joblib

def get_model(model_path):
    if 'xgb' in model_path:
        xgb_model = XGBClassifier()
        model = xgb_model
        model = get_obj(model_path)
    return model 

xbg = get_model('Models/xgb_v1.pkl') # an xgb

tree = model = get_model('Models/dt_v1.pkl') # a decition tree

I was trying to load years old joblib files, which gave multiple levels of errors, depending on the hack I used to bypass them.

With the increasing versions of joblib, the hacks stopped working and I had to create a conda environment specifically for sklearn-0.23 as such:

conda create -n outdated "scikit-learn<0.23"

Afterwards, I was able to open the files and save them differently. This sometimes this means re-saving the data with non-sklearn joblib files import joblib; sometimes this means using pickle; sometimes this meant using pandas.to_csv.

The solution was specific to the data file being re-saved for posterity.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.