2

Here is my json file. I want to load the data list from it, one by one, and only it. And then, for example plot it...

This is an example, because I am dealing with large data set, with which I could not load all the file (that would create a memory error).

{
  "earth": {
    "europe": [
      {"name": "Paris", "type": "city"},
      {"name": "Thames", "type": "river"}, 
      {"par": 2, "data": [1,7,4,7,5,7,7,6]}, 
      {"par": 2, "data": [1,0,4,1,5,1,1,1]}, 
      {"par": 2, "data": [1,0,0,0,5,0,0,0]}
        ],
    "america": [
      {"name": "Texas", "type": "state"}
    ]
  }
}

Here is what I tried:

import ijson
filename = "testfile.json"

f = open(filename)
mylist = ijson.items(f, 'earth.europe[2].data.item')
print mylist

It returns me nothing, even when I try to convert it into a list:

[]
4
  • I didn't put the code I used, because I don't think that a good way to do... import ijson as ijson filename = "myfile.json" with open(myfile,'r') as f: voila=ijson.items(f,'earth.data.item') print voila Commented Oct 30, 2016 at 15:58
  • I developped, do you have an idea Commented Oct 30, 2016 at 16:30
  • Thanks for updating, I've reopened this.
    – Martijn Pieters
    Commented Oct 30, 2016 at 17:28
  • I think I will delete... no one respond... Commented Nov 2, 2016 at 17:29

3 Answers 3

3

You need to specify a valid prefix; ijson prefixes are either keys in a dictionary or the word item for list entries. You can't select a specific list item (so [2] doesn't work).

If you wanted all the data keys dictionaries in the europe list, then the prefix is:

earth.europe.item.data
# ^ ------------------- outermost key must be 'earth'
#       ^ ------------- next key must be 'europe'
#              ^ ------ any value in the array
#                   ^   the value for the 'data' key

This produces each such list:

>>> l = ijson.items(f, 'earth.europe.item.data')
>>> for data in l:
...     print data
...
[1, 7, 4, 7, 5, 7, 7, 6]
[1, 0, 4, 1, 5, 1, 1, 1]
[1, 0, 0, 0, 5, 0, 0, 0]

You can't put wildcards in that, so you can't get earth.*.item.data for example.

If you need to do more complex prefixing matching, you'd have to use the ijson.parse() function and handle the events this produces. You can reuse the ijson.ObjectBuilder() class to turn events you are interested in into Python objects:

parser = ijson.parse(f)
for prefix, event, value in parser:
    if event != 'start_array':
        continue
    if prefix.startswith('earth.') and prefix.endswith('.item.data'):
        continent = prefix.split('.', 2)[1]
        builder = ijson.ObjectBuilder()
        builder.event(event, value)
        for nprefix, event, value in parser:
            if (nprefix, event) == (prefix, 'end_array'):
                break
            builder.event(event, value)
        data = builder.value
        print continent, data

This will print every array that's in a list under a 'data' key (so lives under a prefix that ends with '.item.data'), with the 'earth' key. It also extracts the continent key.

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  • Thanks a lot! Even if I will have to focus a little bit for the second part, that's the best explanation I found on internet :)) Commented Nov 3, 2016 at 11:03
  • I think you have answered to this question, but is there any way to load those data one by one? Because, if I want to treat them, I have to store them (for example) in a list. And the same problem happens again: a "memory error". Any idea? Commented Nov 3, 2016 at 15:10
  • @JeanneDiderot: yes, where I use print right now, you can treat just that one list, then discard it. Or you could wrap the whole thing in to a function, use yield continent, data to have it produce each data list one by one as you iterate, and again if you then don't add more references to the list it'll be cleared again.
    – Martijn Pieters
    Commented Nov 3, 2016 at 15:16
  • Ok, it works! But very slow... I guess that because of the file's size. But one thing is strange: if I want to load ONE element (for exemple Paris), it will be very very slow (as for a long array). And more generally, even if your explications are good, ijson don't seems very fast... Commented Nov 3, 2016 at 18:48
  • @JeanneDiderot: the default backend for ijson is the pure-python parser, which is slow. Install YAJL 2.x and use import ijson.backends.yajl2_cffi as ijson to import a much, much faster backend.
    – Martijn Pieters
    Commented Nov 3, 2016 at 18:50
0

Given the structure of your json I would do this:

import json

filename = "test.json"

with open(filename) as data_file:
    data = json.load(data_file)
print data['earth']['europe'][2]['data']
print type(data['earth']['europe'][2]['data'])
1
  • No, I want to load only the data lists from the json file; not all of the json file. The problem is that I have a 500 Mo file and python return me a "memory error" when I try to load everything. Commented Nov 2, 2016 at 13:41
0

So, I will explain how I finally solved this problem. The first answer will work. But you have to know that loading elements one per one with ijson will be very long... and by the end, you do not have the loaded file.

So, the important information is that windows limit your memory per process to 2 or 4 GB, depending on wich windows you use (32 or 64). If you use pythonxy, that will be 2 GB (it only exists in 32). Anyway, in both way, that's very very low!

I solved this problem by installing a virtual Linux in my windows, and it works. Here are the main step to do so:

  1. Install Virtual Box
  2. Install Ubuntu (for exemple)
  3. Install python for scientist on your computer, like SciPy
  4. Create a share file between the 2 "computers" (you will find tutorial on google)
  5. Execute your code on your ubuntu "computer": it sould work ;)

NB: Do not forget to allow sufficient RAM and memory to you virtual computer.

This works for me. I don't have anymore this "memory error" problem.

5
  • No, not until you have a larger JSON file still. Streamed parsing is still the better option. If you were willing to install a virtual machine with Linux for this, why not also try to use the ijson with yajl as the backend?
    – Martijn Pieters
    Commented Nov 8, 2016 at 15:32
  • Because the BIG advantage with this method is that at the end you have the file loaded. And often, when you do data processing, you want to modify the parameters of the analysis, and it goes much faster if you have the file already loaded. After, if the file is really too big (more than a few GB), I would clearly recommend your method. But my files are "only 1-2 GB... And I think it's the case of many people who ask this question. Commented Nov 8, 2016 at 17:57
  • At any rate, this isn't really an answer to your question posted here, which appeared to concern the use of the ijson library. You are answering the question 'how to load a large JSON file', which is a problem that may have led to the actual question posted. :-)
    – Martijn Pieters
    Commented Nov 8, 2016 at 17:59
  • 1
    You clearly right! I re-put your answer as the best one ;) That's clearly the most complete! Commented Nov 8, 2016 at 17:59
  • Thanks, that's much appreciated. Not just for me, but also for future visitors that probably come here to see how to use ijson specifically. :-)
    – Martijn Pieters
    Commented Nov 8, 2016 at 18:00

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