Problem Statement

I'm using python3 and trying to pickle a dictionary of IntervalTrees which weighs something like 2 to 3 GB. This is my console output:

10:39:25 - project: INFO - Checking if motifs file was generated by pickle...
10:39:25 - project: INFO -   - Motifs file does not seem to have been generated by pickle, proceeding to parse...
10:39:38 - project: INFO -   - Parse complete, constructing IntervalTrees...
11:04:05 - project: INFO -   - IntervalTree construction complete, saving pickle file for next time.
Traceback (most recent call last):
  File "/Users/alex/Documents/project/src/project.py", line 522, in dict_of_IntervalTree_from_motifs_file
    save_as_pickled_object(motifs, output_dir + 'motifs_IntervalTree_dictionary.pickle')
  File "/Users/alex/Documents/project/src/project.py", line 269, in save_as_pickled_object
    def save_as_pickled_object(object, filepath): return pickle.dump(object, open(filepath, "wb"))
OSError: [Errno 22] Invalid argument

The line in which I attempt the save is

def save_as_pickled_object(object, filepath): return pickle.dump(object, open(filepath, "wb"))

The error comes maybe 15 minutes after save_as_pickled_object is invoked (at 11:20).

I tried this with a much smaller subsection of the motifs file and it worked fine, with all of the exact same code, so it must be an issue of scale. Are there any known bugs with pickle in python 3.6 relating to the scale of what you try to pickle? Are there known bugs with pickling large files in general? Are there any known ways around this?

Thanks!

Update: This question might be a duplicate of Python 3 - Can pickle handle byte objects larger than 4GB?

Solution

This is the code I used instead.

def save_as_pickled_object(obj, filepath):
    """
    This is a defensive way to write pickle.write, allowing for very large files on all platforms
    """
    max_bytes = 2**31 - 1
    bytes_out = pickle.dumps(obj)
    n_bytes = sys.getsizeof(bytes_out)
    with open(filepath, 'wb') as f_out:
        for idx in range(0, n_bytes, max_bytes):
            f_out.write(bytes_out[idx:idx+max_bytes])


def try_to_load_as_pickled_object_or_None(filepath):
    """
    This is a defensive way to write pickle.load, allowing for very large files on all platforms
    """
    max_bytes = 2**31 - 1
    try:
        input_size = os.path.getsize(filepath)
        bytes_in = bytearray(0)
        with open(filepath, 'rb') as f_in:
            for _ in range(0, input_size, max_bytes):
                bytes_in += f_in.read(max_bytes)
        obj = pickle.loads(bytes_in)
    except:
        return None
    return obj
  • Hmmm... is the filepath valid? Please print it before saving. – Udi Mar 7 '17 at 16:57
  • Yeah, I've tried that. It's definitely a valid filepath. Like I said, "I tried this with a much smaller subsection of the motifs file and it worked fine, with all of the exact same code, so it must be an issue of scale." I did a run where I changed just the input file size. – Alex Lenail Mar 7 '17 at 17:26
  • Do you happen to use a FAT filesystem?? – Udi Mar 7 '17 at 18:03
  • @Udi I use whatever ships with macOS these days. (so I don't think so?) – Alex Lenail Mar 7 '17 at 18:05
  • @AlexLenail: Default FS on macOS is Journaled HFS+ -- verify that using diskutil info -all | grep "File System Personality" – Matthew Cole Mar 10 '17 at 18:41
up vote 3 down vote accepted
+50

Alex, if I am not mistaken this bug report perfectly describes your issue.

http://bugs.python.org/issue24658

As a workaround, I think you can pickle.dumps instead of pickle.dump and then write to your file in chunks of size smaller than 2**31.

  • 1
    Hi! Thanks for bringing this to my attention. If this workaround works for me I'll award you the bounty. =) It takes a little while to test so give me an hour... – Alex Lenail Mar 10 '17 at 19:45

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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