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I work with comma/tab-separated data files often that might look like this:


I might read and pre-process this in Python into a list of lists, like this:

[ [ key1, 1, 2.02, 'hello', 4 ], [ key2, 3, 4.01, 'goodbye', 6 ] ]

Sometimes, I like saving this list of lists as a pickle, since it preserves the different types of my entries. If the pickled file is big, though, it would be great to read this list of lists back in a streaming fashion.

In Python, to load a text file as a stream, I use the follwoing to print out each line:

with open( 'big_text_file.txt' ) as f:
    for line in f:
        print line

Can I do something similar for a Python list, i.e.:

import pickle
with open( 'big_pickled_list.pkl' ) as p:
    for entry in pickle.load_streaming( p ): # note: pickle.load_streaming doesn't exist
        print entry

Is there a pickle function like "load_streaming"?

share|improve this question
what do you mean by "streaming"? what do you want "entry" to be? also note your code, as posted, is likely not doing what you intend. did you mean for entry in pkl instead of for entry in p? – shx2 Jul 12 '13 at 20:34
I think by "streaming" he means iterating a pickle file as a sequence of pickles, the same way you can iterate a text file as a sequence of lines, as mata's answer does. – abarnert Jul 12 '13 at 20:42
up vote 7 down vote accepted

This would work.

What is does however is unpickle one object from the file, and then print the rest of the file's content to stdout

What you could do is something like:

import cPickle
with open( 'big_pickled_list.pkl' ) as p:
        while True:
            print cPickle.load(p)
    except EOFError:

That would unpickle all objects from the file until reaching EOF.

If you want something that works like for line in f:, you can wrap this up easily:

def unpickle_iter(file):
        while True:
             yield cPickle.load(file)
    except EOFError:
        raise StopIteration

Now you can just do this:

with open('big_pickled_list.pkl') as file:
    for item in unpickle_iter(file):
        # use item ...
share|improve this answer
Now combine your answer the contextlib decorator and you can do with unpickle(filename): – dawg Jul 12 '13 at 23:32
@drewk - You mean in case the iterator isn't fully consumed or an exception is raised while iterating... Yea, I missed that. But I don't think a contextlib.contextmanager would be very useful here, and much more complicated then the solution originally suggested by abarnet of explicitly opening the file as context manager - so I'm reverting to that. – mata Jul 13 '13 at 0:09
@mata Hmm, sorry, I don't think I was clear, so I edited my question. I usually have a list of lists as my pickled object, not a whole set of pickled objects. For a list of lists in big_pickled_list, your suggestion doesn't work. However, should I be storing objects in my pickle differently? – williampli Jul 13 '13 at 5:58
@mata -- actually, your method works if I store as my data not as a list of lists, but rather as one list after another. I've always done the former, and it has certain advantages (i.e. dumping an entire list of lists at once, or selecting certain entries with a list comprehension), but it might make more sense for me to start dumping multiple list objects. – williampli Jul 13 '13 at 6:02
@spadina - sorry i misunderstood your intention. I thought you had a file with multiple pickeled objects stored one after another - which, as you see, is possible to do, and makes sense to do if you have a large number of objects and only need one at a time. I thought that was your intention, avoiding to pull a large list of objects into memory all at once. otherwise you could just use with open(file) as f: unpickled_stuff = pickle.load(f) and then iterate normally outside the with block. – mata Jul 13 '13 at 9:34

To follow up on a comment I made on the accepted solution, I recommend a loop more like this:

import cPickle
with open( 'big_pickled_list.pkl' ) as p:
    while p.peek(1):
        print cPickle.load(p)

This way you'll continue to get the EOFError exception if there is a corrupted object in the file.

For completeness:

def unpickle_iter(file):
    while file.peek(1):
        yield cPickle.load(file)
share|improve this answer

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