How can I concat a list of JSON files into a huge JSON array? I've 5000 files and 550 000 list items.

My fist try was to use jq, but it looks like jq -s is not optimized for a large input.

jq -s -r '[.[][]]' *.js 

This command works, but takes way too long to complete and I really would like to solve this with Python.

Here is my current code:

def concatFiles(outName, inFileNames):
    def listGenerator():
        for inName in inFileNames:
            with open(inName, 'r') as f:
                for item in json.load(f):
                    yield item

    with open(outName, 'w') as f:
        json.dump(listGenerator(), f)

I'm getting:

TypeError: <generator object listGenerator at 0x7f94dc2eb3c0> is not JSON serializable

Any attempt load all files into ram will trigger the OOM-killer of Linux. Do you have any ideas?

  • 1
    How about just textually concatenating the documents inserting commas between? – bereal Feb 9 '14 at 19:30
  • You need to remove the outer array of each file. Removing the fist and last character of each file should work, but I'd like to control (and remove) the json indentation. – Sebastian Wagner Feb 9 '14 at 19:37
  • how large are the files actually? could it be that holding the complete serialized data is larger than your memory ? – Alex Feb 9 '14 at 20:03
  • Yes, that's why calling list(..) is not going to work. – Sebastian Wagner Feb 9 '14 at 20:08
  • Do you also need to validate the JSON before processing it? If not, there is no need to convert string -> JSON -> string. Just put commas between each filestream and surround with []. – Joel Cornett Jun 5 '14 at 6:28
up vote 15 down vote accepted

You should derive from list and override __iter__ method.

import json

def gen():
    yield 20
    yield 30
    yield 40

class StreamArray(list):
    def __iter__(self):
        return gen()

    # according to the comment below
    def __len__(self):
        return 1

a = [1,2,3]
b = StreamArray()

print(json.dumps([1,a,b]))

Result is [1, [1, 2, 3], [20, 30, 40]].

  • 3
    With Python 2.7.8, the StreamArray class also has to override the __len__ method and returns a value greater than 0 (1 for instance). Otherwise the json encoder doesn't even call the __iter__ method – Tristan Mar 25 '15 at 8:56
  • Please note, that this solution creates invalid JSON when used with indent parameter and the iterable is "empty". json.dumps({"products": StreamArray()}, indent=2) # {"products": ]} – miso.belica May 25 '16 at 13:26
  • I believe we should not return 1 for length if the iterable is "empty". – Vadim Pushtaev May 25 '16 at 16:18
  • this is great - cheers – frankster May 10 '17 at 16:29

As of simplejson 3.8.0, you can use the iterable_as_array option to make any iterable serializable into an array

# Since simplejson is backwards compatible, you should feel free to import
# it as `json`
import simplejson as json
json.dumps((i*i for i in range(10)), iterable_as_array=True)

result is [0, 1, 4, 9, 16, 25, 36, 49, 64, 81]

A complete simple readable solution that can serialize a generator from a normal or empty iterable, can work with .encode() or .iterencode(). Written tests. Tested with Python 2.7, 3.0, 3.3, 3.6

import itertools

class SerializableGenerator(list):
    """Generator that is serializable by JSON

    It is useful for serializing huge data by JSON
    >>> json.dumps(SerializableGenerator(iter([1, 2])))
    "[1, 2]"
    >>> json.dumps(SerializableGenerator(iter([])))
    "[]"

    It can be used in a generator of json chunks used e.g. for a stream
    >>> iter_json = ison.JSONEncoder().iterencode(SerializableGenerator(iter([])))
    >>> tuple(iter_json)
    ('[1', ']')
    # >>> for chunk in iter_json:
    # ...     stream.write(chunk)
    # >>> SerializableGenerator((x for x in range(3)))
    # [<generator object <genexpr> at 0x7f858b5180f8>]
    """

    def __init__(self, iterable):
        tmp_body = iter(iterable)
        try:
            self._head = iter([next(tmp_body)])
            self.append(tmp_body)
        except StopIteration:
            self._head = []

    def __iter__(self):
        return itertools.chain(self._head, *self[:1])


# -- test --

import unittest
import json


class Test(unittest.TestCase):

    def combined_dump_assert(self, iterable, expect):
        self.assertEqual(json.dumps(SerializableGenerator(iter(iterable))), expect)

    def combined_iterencode_assert(self, iterable, expect):
        encoder = json.JSONEncoder().iterencode
        self.assertEqual(tuple(encoder(SerializableGenerator(iter(iterable)))), expect)

    def test_dump_data(self):
        self.combined_dump_assert(iter([1, "a"]), '[1, "a"]')

    def test_dump_empty(self):
        self.combined_dump_assert(iter([]), '[]')

    def test_iterencode_data(self):
        self.combined_iterencode_assert(iter([1, "a"]), ('[1', ', "a"', ']'))

    def test_terencode_empty(self):
        self.combined_iterencode_assert(iter([]), ('[]',))

    def test_that_all_data_are_consumed(self):
        gen = SerializableGenerator(iter([1, 2]))
        list(gen)
        self.assertEqual(list(gen), [])

Used solutions: Vadim Pushtaev (incomplete), user1158559 (unnecessarily complicated) and Claude (in another question, also complicated).

Useful simplification are:

  • It is not necessary to evaluate the first item lazily and it can be it done in __init__ because we can expect that the SerializableGenerator can be called immediately before json.dumps. (against user1158559 solution)
  • It is not necessary to rewrite many methods by NotImplementedError because that are not all methods like __repr__. It is better to store the generator also to the list to provide meaningful results like [<generator object ...>]. (against Claude). Default methods __len__ and __bool__ works now correctly to recognize an empty and not empty object.

An advantage of this solution is that a standard JSON serializer can be used without params. If nested generators should be supported or if encapsulation by SerializableGenerator(iterator) is undesirable then I recommend IterEncoder answer.

  • 1
    Nicely done, and +1 for having tests! – user1158559 Oct 21 '17 at 11:04

Based on the accepted answer, here is the StreamArray I eventually went for. It contains two lies:

  1. The suggestion that self.__tail__ might be immutable
  2. len(StreamArray(some_gen)) is either 0 or 1

.

class StreamArray(list):

    def __init__(self, gen):
        self.gen = gen

    def destructure(self):
        try:
            return self.__head__, self.__tail__, self.__len__
        except AttributeError:
            try:
                self.__head__ = self.gen.__next__()
                self.__tail__ = self.gen
                self.__len__ = 1 # A lie
            except StopIteration:
                self.__head__ = None
                self.__tail__ = []
                self.__len__ = 0
            return self.__head__, self.__tail__, self.__len__

    def rebuilt_gen(self):
        def rebuilt_gen_inner():
            head, tail, len_ = self.destructure()
            if len_ > 0:
                yield head
            for elem in tail:
                yield elem
        try:
            return self.__rebuilt_gen__
        except AttributeError:
            self.__rebuilt_gen__ = rebuilt_gen_inner()
            return self.__rebuilt_gen__

    def __iter__(self):
        return self.rebuilt_gen()

    def __next__(self):
        return self.rebuilt_gen()

    def __len__(self):
        return self.destructure()[2]

Single use only!

  • +1: Your solution works, but it is too complicated. I think that I implemented the same easier. Look at mine if you find any disadvantage against mine. – hynekcer Oct 20 '17 at 3:24
  • Yours looks fine! For my use case, lazily evaluating the first item is a feature. In hindsight there might be some simplification to be gained from itertools. Very pleased to know that this works as is. – user1158559 Oct 21 '17 at 11:09

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