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Is there a memory efficient and fast way to load big JSON files?

So I have some rather large json encoded files. The smallest is 300MB, but this is by far the smallest. The rest are multiple GB, anywhere from around 2GB to 10GB+.

So I seem to run out of memory when trying to load the file with Python. I'm currently just running some tests to see roughly how long dealing with this stuff is going to take to see where to go from here. Here is the code I'm using to test:

from datetime import datetime
import json

print datetime.now()

f = open('file.json', 'r')

print datetime.now()

Not too surprisingly, Python gives me a MemoryError. It appears that json.load() calls json.loads(f.read()), which is trying to dump the entire file into memory first, which clearly isn't going to work.

Any way I can solve this cleanly?

I know this is old, but I don't think this is a duplicate. While the answer is the same, the question is different. In the "duplicate", the question is how to read large files efficiently, whereas this question deals with files that won't even fit in to memory at all. Efficiency isn't required.

  • Similar if not the same question: stackoverflow.com/questions/2400643/…
    – tskuzzy
    Apr 30 '12 at 10:39
  • The issue is that if the JSON file is one giant list (for example), then parsing it into Python wouldn't make much sense without doing it all at once. I guess your best bet is to find a module that handles JSON like SAX and gives you events for starting arrays and stuff, rather than giving you objects. Unfortunately, that doesn't exist in the standard library. Apr 30 '12 at 10:40
  • Well, I kind of want to read it in all at once. One of my potential plans is to go through it once and stick everything in a database so I can access it more efficiently. Apr 30 '12 at 10:45
  • If you can't fit the entire file as text into memory, I sincerely doubt you'll fit the entire file as Python objects into memory. If you want to put it in a database, my answer could be helpful. Apr 30 '12 at 10:46
  • For any non-trivial task processing of json files such sizes can easy take weeks or months.
    – yazu
    Apr 30 '12 at 10:50

The issue here is that JSON, as a format, is generally parsed in full and then handled in-memory, which for such a large amount of data is clearly problematic.

The solution to this is to work with the data as a stream - reading part of the file, working with it, and then repeating.

The best option appears to be using something like ijson - a module that will work with JSON as a stream, rather than as a block file.

Edit: Also worth a look - kashif's comment about json-streamer and Henrik Heino's comment about bigjson.

  • 13
    I found that ijson requires complete json before it will stream it - I would have preferred something that can work with partial json as it becomes available. Couldn't find anything so wrote my own, its called jsonstreamer and is available at github and at the cheeseshop
    – keios
    Dec 19 '14 at 11:38
  • 1
    @JeremyCraigMartinez It looks like you just need to do a with open(some_file) as file: for line in file: streamer.consume(line). It'd be a nice thing to have a convenience method (or better yet, a context manager) for (and note that for the use case at hand, relying on line breaks being reasonable is probably a bad idea - reading the file in blocks by size is probably the better option). Feb 6 '15 at 12:46
  • 1
    @JeremyCraigMartinez As mentioned by Lattyware it should be fairly simple to do this. I can add context management support and will probably do so in the next release. if you require any other features or spot bugs you are more likely to catch my attention by making a github issue.
    – keios
    Feb 12 '15 at 17:34
  • 7
    I also wrote a lib that can open JSON files of any size. My lib loads an object that acts like regular dict or array, but in reality it loads more stuff only when required. You can find if from Github. Aug 6 '16 at 13:43
  • 1
    @orluke It should now work on Python 3 :) Jul 4 '19 at 4:22

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