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I'd like to read multiple JSON objects from a file/stream in Python, one at a time. Unfortunately json.load() just .read()s until end-of-file; there doesn't seem to be any way to use it to read a single object or to lazily iterate over the objects.

Is there any way to do this? Using the standard library would be ideal, but if there's a third-party library I'd use that instead.

At the moment I'm putting each object on a separate line and using json.loads(f.readline()), but I would really prefer not to need to do this.

Example Use


import my_json as json
import sys

for o in json.iterload(sys.stdin):
    print("Working on a", type(o))


{"foo": ["bar", "baz"]} 1 2 [] 4 5 6

example session

$ python3.2 example.py < in.txt
Working on a dict
Working on a int
Working on a int
Working on a list
Working on a int
Working on a int
Working on a int
share|improve this question
Could you add an example of the behaviour you would like from nested objects please? – Tim McNamara Aug 29 '11 at 19:53
@TimMcNamara: The behaviour of nested object should not change. However, once we've reached the end of the first top-level object ({"foo": ["bar", "baz"]} in my example), it should yield it and then continue to the next one (1). – Jeremy Banks Aug 29 '11 at 20:52
Personally I don't see much of a problem with the readline. You could use a different record seperator too as long as you are sure it isn't contained in valid json. – Jürgen Strobel Oct 14 '11 at 21:35
You've sort of left the land of JSON. JSON only supports arrays and objects as top-level constructs, whereas you have integers... (which, apparently, json.loads will oddly parse...) – Thanatos Oct 18 '11 at 7:43
The ijson library could be useful in this case. pypi.python.org/pypi/ijson github.com/isagalaev/ijson – Boris Chervenkov Jun 12 '15 at 10:26

JSON generally isn't very good for this sort of incremental use; there's no standard way to serialise multiple objects so that they can easily be loaded one at a time, without parsing the whole lot.

The object per line solution that you're using is seen elsewhere too. Scrapy calls it 'JSON lines':

You can do it slightly more Pythonically:

for jsonline in f:
    yield json.loads(jsonline)   # or do the processing in this loop

I think this is about the best way - it doesn't rely on any third party libraries, and it's easy to understand what's going on. I've used it in some of my own code as well.

share|improve this answer
re: "no standard way": I don't see the problem, the syntax seems to make multiple consecutive objects unambiguous as long as you have a one-character buffer. Thanks for pointing out that other people use "JSON lines", I feel less bad about using it for now. – Jeremy Banks Jul 30 '11 at 23:16

Sure you can do this. You just have to take to raw_decode directly. This implementation loads the whole file into memory and operates on that string (much as json.load does); if you have large files you can modify it to only read from the file as necessary without much difficulty.

import json
from json.decoder import WHITESPACE

def iterload(string_or_fp, cls=json.JSONDecoder, **kwargs):
    if isinstance(string_or_fp, file):
        string = string_or_fp.read()
        string = str(string_or_fp)

    decoder = cls(**kwargs)
    idx = WHITESPACE.match(string, 0).end()
    while idx < len(string):
        obj, end = decoder.raw_decode(string, idx)
        yield obj
        idx = WHITESPACE.match(string, end).end()

Usage: just as you requested, it's a generator.

share|improve this answer
<edit> yes with streaming reads this would work. – Jürgen Strobel Oct 14 '11 at 21:31
It seems that the tricky part would be ensuring that the streaming reads bring in enough of the file that you have an entire object to decode. So this is a simple approach that works if you e.g. assume objects never have newlines in them. But unless you impose that kind of additional structure on the file, which the OP is trying to avoid, it seems you'd need a solution like that from @Benedict – nealmcb Mar 7 '13 at 14:29
up vote 16 down vote

This is a pretty nasty problem actually because you have to stream in lines, but pattern match across multiple lines against braces, but also pattern match json. It's a sort of json-preparse followed by a json parse. Json is, in comparison to other formats, easy to parse so it's not always necessary to go for a parsing library, nevertheless, how to should we solve these conflicting issues?

Generators to the rescue!

The beauty of generators for a problem like this is you can stack them on top of each other gradually abstracting away the difficulty of the problem whilst maintaining laziness. I also considered using the mechanism for passing back values into a generator (send()) but fortunately found I didn't need to use that.

To solve the first of the problems you need some sort of streamingfinditer, as a streaming version of re.finditer. My attempt at this below pulls in lines as needed (uncomment the debug statement to see) whilst still returning matches. I actually then modified it slightly to yield non-matched lines as well as matches (marked as 0 or 1 in the first part of the yielded tuple).

import re

def streamingfinditer(pat,stream):
  for s in stream:
#    print "Read next line: " + s
    while 1:
      m = re.search(pat,s)
      if not m:
        yield (0,s)
      yield (1,m.group())
      s = re.split(pat,s,1)[1]

With that, it's then possible to match up until braces, account each time for whether the braces are balanced, and then return either simple or compound objects as appropriate.

whitespaceesc=' \t'

def simpleorcompoundobjects(stream):
  obj = ""
  unbalanced = 0
  for (c,m) in streamingfinditer(re.compile(untilbracespat),stream):
    if (c == 0): # remainder of line returned, nothing interesting
      if (unbalanced == 0):
        yield (0,m)
        obj += m
    if (c == 1): # match returned
      if (unbalanced == 0):
        yield (0,m[:-1])
        obj += m[-1]
        obj += m
      unbalanced += balancemap[m[-1]]
      if (unbalanced == 0):
        yield (1,obj)

This returns tuples as follows:

(0,"String of simple non-braced objects easy to parse")
(1,"{ 'Compound' : 'objects' }")

Basically that's the nasty part done. We now just have to do the final level of parsing as we see fit. For example we can use Jeremy Roman's iterload function (Thanks!) to do parsing for a single line:

def streamingiterload(stream):
  for c,o in simpleorcompoundobjects(stream):
    for x in iterload(o):
      yield x 

Test it:

of = open("test.json","w") 
of.write("""[ "hello" ] { "goodbye" : 1 } 1 2 {
} 2
9 78
 4 5 { "animals" : [ "dog" , "lots of mice" ,
 "cat" ] }

f = open("test.json","r")
for o in streamiterload(f.readlines()):
  print o

I get these results (and if you turn on that debug line, you'll see it pulls in the lines as needed):

{u'goodbye': 1}
{u'animals': [u'dog', u'lots of mice', u'cat']}

This won't work for all situations. Due to the implementation of the json library, it is impossible to work entirely correctly without reimplementing the parser yourself.

share|improve this answer
If you want to do this correctly, you also need to watch out for braces and brackets within strings. And then also watch out for escaped quotes. Before you know it, the “preparser” will get almost as complicated as a full JSON parser. – Petr Viktorin Oct 18 '11 at 7:48
Thanks Jeremy. It was nice challenge of a question! Yes Petr - you are absolutely right of course :) – Benedict Oct 18 '11 at 8:11
Nicely done. Will this behave correctly if characters like "}" and "]" occur inside JSON strings? I think this is a general limitation of parsing with regex. – Thomas K Oct 18 '11 at 11:42
When poking around I found that the main parsing function is built in such a way that it's impossible to properly use it lazily, so you're not going to get a perfect result without implementing a complete parser by yourself. This answer demonstrates several useful relevant things, and handles simple cases nicely. – Jeremy Banks Oct 19 '11 at 21:23

A little late maybe, but I had this exact problem (well, more or less). My standard solution for these problems is usually to just do a regex split on some well-known root object, but in my case it was impossible. The only feasible way to do this generically is to implement a proper tokenizer.

After not finding a generic-enough and reasonably well-performing solution, I ended doing this myself, writing the splitstream module. It is a pre-tokenizer that understands JSON and XML and splits a continuous stream into multiple chunks for parsing (it leaves the actual parsing up to you though). To get some kind of performance out of it, it is written as a C module.


from splitstream import splitfile

for jsonstr in splitfile(sys.stdin, format="json")):
    yield json.loads(jsonstr)
share|improve this answer
That's awesome. Thanks for sharing it. – Jeremy Banks Jun 25 '15 at 21:17
This is the definitive solution. I hope you keep updating it. – Bartvds May 14 at 15:38

I'd like to provide a solution. The key thought is to "try" to decode: if it fails, give it more feed, otherwise use the offset information to prepare next decoding.

However the current json module can't tolerate SPACE in head of string to be decoded, so I have to strip them off.

import sys
import json

def iterload(file):
    buffer = ""
    dec = json.JSONDecoder()
    for line in file:         
        buffer = buffer.strip(" \n\r\t") + line.strip(" \n\r\t")
                r = dec.raw_decode(buffer)
            yield r[0]
            buffer = buffer[r[1]:].strip(" \n\r\t")

for o in iterload(sys.stdin):
    print("Working on a", type(o),  o)

========================= I have tested for several txt files, and it works fine. (in1.txt)

{"foo": ["bar", "baz"]
 1 2 [
  ]  4
{"foo1": ["bar1", {"foo2":{"A":1, "B":3}, "DDD":4}]
 5   6


: ["bar",
1 2 [
] 4 5 6

(in.txt, your initial)

{"foo": ["bar", "baz"]} 1 2 [] 4 5 6

(output for Benedict's testcase)

python test.py < in.txt
('Working on a', <type 'list'>, [u'hello'])
('Working on a', <type 'dict'>, {u'goodbye': 1})
('Working on a', <type 'int'>, 1)
('Working on a', <type 'int'>, 2)
('Working on a', <type 'dict'>, {})
('Working on a', <type 'int'>, 2)
('Working on a', <type 'int'>, 9)
('Working on a', <type 'int'>, 78)
('Working on a', <type 'int'>, 4)
('Working on a', <type 'int'>, 5)
('Working on a', <type 'dict'>, {u'animals': [u'dog', u'lots of mice', u'cat']})
share|improve this answer

You can't do this with the standard library. I went over the source of the json module and it's impossible to use lazily without reimplementing most of it.

share|improve this answer

I used @wuilang's elegant solution. The simple approach -- read a byte, try to decode, read a byte, try to decode, ... -- worked, but unfortunately it was very slow.

In my case, I was trying to read "pretty-printed" JSON objects of the same object type from a file. This allowed me to optimize the approach; I could read the file line-by-line, only decoding when I found a line that contained exactly "}":

def iterload(stream):
    buf = ""
    dec = json.JSONDecoder()
    for line in stream:
        line = line.rstrip()
        buf = buf + line
        if line == "}":
            yield dec.raw_decode(buf)
            buf = ""

If you happen to be working with one-per-line compact JSON that escapes newlines in string literals, then you can safely simplify this approach even more:

def iterload(stream):
    dec = json.JSONDecoder()
    for line in stream:
        yield dec.raw_decode(line)

Obviously, these simple approaches only work for very specific kinds of JSON. However, if these assumptions hold, these solutions work correctly and quickly.

share|improve this answer

Here's mine:

import simplejson as json
from simplejson import JSONDecodeError
class StreamJsonListLoader():
    When you have a big JSON file containint a list, such as


    And it's too big to be practically loaded into memory and parsed by json.load,
    This class comes to the rescue. It lets you lazy-load the large json list.

    def __init__(self, filename_or_stream):
        if type(filename_or_stream) == str:
            self.stream = open(filename_or_stream)
            self.stream = filename_or_stream

        if not self.stream.read(1) == '[':
            raise NotImplementedError('Only JSON-streams of lists (that start with a [) are supported.')

    def __iter__(self):
        return self

    def next(self):
        read_buffer = self.stream.read(1)
        while True:
                json_obj = json.loads(read_buffer)

                if not self.stream.read(1) in [',',']']:
                    raise Exception('JSON seems to be malformed: object is not followed by comma (,) or end of list (]).')
                return json_obj
            except JSONDecodeError:
                next_char = self.stream.read(1)
                read_buffer += next_char
                while next_char != '}':
                    next_char = self.stream.read(1)
                    if next_char == '':
                        raise StopIteration
                    read_buffer += next_char
share|improve this answer

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