I am trying to load the MNIST dataset linked here in Python 3.2 using this program:

import pickle
import gzip
import numpy

with gzip.open('mnist.pkl.gz', 'rb') as f:
    l = list(pickle.load(f))

Unfortunately, it gives me the error:

Traceback (most recent call last):
   File "mnist.py", line 7, in <module>
     train_set, valid_set, test_set = pickle.load(f)
UnicodeDecodeError: 'ascii' codec can't decode byte 0x90 in position 614: ordinal not in range(128)

I then tried to decode the pickled file in Python 2.7, and re-encode it. So, I ran this program in Python 2.7:

import pickle
import gzip
import numpy

with gzip.open('mnist.pkl.gz', 'rb') as f:
    train_set, valid_set, test_set = pickle.load(f)

    # Printing out the three objects reveals that they are
    # all pairs containing numpy arrays.

    with gzip.open('mnistx.pkl.gz', 'wb') as g:
            (train_set, valid_set, test_set),
            protocol=2)  # I also tried protocol 0.

It ran without error, so I reran this program in Python 3.2:

import pickle
import gzip
import numpy

# note the filename change
with gzip.open('mnistx.pkl.gz', 'rb') as f:
    l = list(pickle.load(f))

However, it gave me the same error as before. How do I get this to work?

This is a better approach for loading the MNIST dataset.

  • there are compatibility breaks between 2.7 and 3.x. especially string vs unicode. And picking a numpy object requires that both systems load the numpy module but those modules are different. Sorry I don't have an answer but this might not be do-able and is probably not advisable. If this are big things (gzip), maybe hdf5 with pytables?? Jul 3 '12 at 7:01
  • @PhilCooper: Thanks, your comment (post this as an answer?) clued me in to the right answer. I could have used hdf5, but it seemed complicated to learn, so I went with numpy.save/load and this worked.
    – Neil G
    Jul 3 '12 at 7:33
  • h5py is very simple to use, almost certainly much easier then solving nebulous compatibility problems with pickling numpy arrays.
    – DaveP
    Jul 3 '12 at 8:53
  • You say you "ran this program under Python 2.7". OK but what did you run under 3.2? :-) The same? Jul 3 '12 at 15:50
  • @LennartRegebro: After running the second program that pickles the arrays, I ran the first program (substituting the filename mnistx.pkl.gz) in Python 3.2. It didn't work, which I think illustrates some kind of incompatibility.
    – Neil G
    Jul 4 '12 at 5:45

This seems like some sort of incompatibility. It's trying to load a "binstring" object, which is assumed to be ASCII, while in this case it is binary data. If this is a bug in the Python 3 unpickler, or a "misuse" of the pickler by numpy, I don't know.

Here is something of a workaround, but I don't know how meaningful the data is at this point:

import pickle
import gzip
import numpy

with open('mnist.pkl', 'rb') as f:
    u = pickle._Unpickler(f)
    u.encoding = 'latin1'
    p = u.load()

Unpickling it in Python 2 and then repickling it is only going to create the same problem again, so you need to save it in another format.

  • 222
    You can use pickle.load(file_obj, encoding='latin1') (at least in Python 3.3). This seems to work. Jan 16 '14 at 14:15
  • 7
    For those who's using numpy load and facing the similar problem: it is possible to pass encoding there as well: np.load('./bvlc_alexnet.npy', encoding='latin1') Sep 9 '16 at 11:27
  • 1
    This worked for me when adding encoding='latin1' failed. Thanks! Jun 29 '18 at 16:35
  • For my case, only pickle.load(open(file_path, "rb"), encoding="latin1") worked.
    – ibilgen
    Dec 14 '20 at 6:03

If you are getting this error in python3, then, it could be an incompatibility issue between python 2 and python 3, for me the solution was to load with latin1 encoding:

pickle.load(file, encoding='latin1')

It appears to be an incompatibility issue between Python 2 and Python 3. I tried loading the MNIST dataset with

    train_set, valid_set, test_set = pickle.load(file, encoding='iso-8859-1')

and it worked for Python 3.5.2


It looks like there are some compatablility issues in pickle between 2.x and 3.x due to the move to unicode. Your file appears to be pickled with python 2.x and decoding it in 3.x could be troublesome.

I'd suggest unpickling it with python 2.x and saving to a format that plays more nicely across the two versions you're using.

  • 2
    That's what I was trying to do. Which format do you recommend?
    – Neil G
    Jul 3 '12 at 7:03
  • 5
    I think the problem might have been encoding numpy dtype, which might be a string. In any case, I ended up using numpy.save/load to bridge the gap between python 2 and 3, and this worked.
    – Neil G
    Jul 3 '12 at 7:32

I just stumbled upon this snippet. Hope this helps to clarify the compatibility issue.

import sys

with gzip.open('mnist.pkl.gz', 'rb') as f:
    if sys.version_info.major > 2:
        train_set, valid_set, test_set = pickle.load(f, encoding='latin1')
        train_set, valid_set, test_set = pickle.load(f)
  • Consider adding more amplifying information. How does this solve the problem?
    – Tom Aranda
    Oct 28 '17 at 17:32
  • @serge that helped, please explanation to the answer Mar 19 '18 at 4:18


l = list(pickle.load(f, encoding='bytes')) #if you are loading image data or 
l = list(pickle.load(f, encoding='latin1')) #if you are loading text data

From the documentation of pickle.load method:

Optional keyword arguments are fix_imports, encoding and errors, which are used to control compatibility support for pickle stream generated by Python 2.

If fix_imports is True, pickle will try to map the old Python 2 names to the new names used in Python 3.

The encoding and errors tell pickle how to decode 8-bit string instances pickled by Python 2; these default to 'ASCII' and 'strict', respectively. The encoding can be 'bytes' to read these 8-bit string instances as bytes objects.


There is hickle which is faster than pickle and easier. I tried to save and read it in pickle dump but while reading there were a lot of problems and wasted an hour and still didn't find a solution though I was working on my own data to create a chatbot.

vec_x and vec_y are numpy arrays:

hkl.dump( data, 'new_data_file.hkl' )

Then you just read it and perform the operations:

data2 = hkl.load( 'new_data_file.hkl' )

Your Answer

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

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