How do I pretty-print a JSON file in Python?

  • 11
    Try to parse the JSON using json.loads() and pretty print that resulting dictionary. Or just skip to the Pretty printing section of the Python documentation for json.
    – Blender
    Oct 17, 2012 at 21:40
  • 14
    – ed.
    Oct 17, 2012 at 21:42
  • 1
    @Blender if you post an answer I'll give you credit... this might get closed as a duplicate, because the solution is the same, but the question is different, so perhaps not.
    – Colleen
    Oct 17, 2012 at 21:50
  • 24
    why not <your_file.js python -mjson.tool as in @ed's link?
    – jfs
    Oct 17, 2012 at 21:56
  • 20
    I don't think it's duplicate because pretty-printing from command line is not the same as pretty-printing programmatically from Python. Voting to reopen.
    – vitaut
    Sep 16, 2015 at 15:31

15 Answers 15


Use the indent= parameter of json.dump() or json.dumps() to specify how many spaces to indent by:

>>> import json
>>> your_json = '["foo", {"bar": ["baz", null, 1.0, 2]}]'
>>> parsed = json.loads(your_json)
>>> print(json.dumps(parsed, indent=4))
        "bar": [

To parse a file, use json.load():

with open('filename.txt', 'r') as handle:
    parsed = json.load(handle)
  • 213
    For simple pretty-printing this also works without explicit parsing: print json.dumps(your_json_string, indent=4)
    – Peterino
    Aug 4, 2014 at 14:07
  • 17
    Without the indent, you just get a single line of ugly text, which is why I came here.
    – krs013
    Mar 16, 2016 at 18:46
  • 4
    This is similar to JavaScript var str = JSON.stringify(obj, null, 4); as discussed here stackoverflow.com/questions/4810841/… May 31, 2016 at 13:17
  • 3
    @Peterino, it is not working without explicit parsing. It prints an escaped line
    – ACV
    Jul 2, 2021 at 16:24
  • In JS tool prettier, it will not add 'line break' if the line width less than 80. I am looking for it. Feb 22 at 6:28

You can do this on the command line:

python3 -m json.tool some.json

(as already mentioned in the commentaries to the question, thanks to @Kai Petzke for the python3 suggestion).

Actually python is not my favourite tool as far as json processing on the command line is concerned. For simple pretty printing is ok, but if you want to manipulate the json it can become overcomplicated. You'd soon need to write a separate script-file, you could end up with maps whose keys are u"some-key" (python unicode), which makes selecting fields more difficult and doesn't really go in the direction of pretty-printing.

You can also use jq:

jq . some.json

and you get colors as a bonus (and way easier extendability).

Addendum: There is some confusion in the comments about using jq to process large JSON files on the one hand, and having a very large jq program on the other. For pretty-printing a file consisting of a single large JSON entity, the practical limitation is RAM. For pretty-printing a 2GB file consisting of a single array of real-world data, the "maximum resident set size" required for pretty-printing was 5GB (whether using jq 1.5 or 1.6). Note also that jq can be used from within python after pip install jq.

  • 4
    JQ is great but there is a max limit so its useless for large files. (i.e. blows up handling a 1.15mb file) github.com/stedolan/jq/issues/1041 May 17, 2016 at 8:35
  • 8
    yeah, man, definitely, if you are writing jq filters with more than 10K lines of code I think you're trying something like going to mars with a bicycle. May 17, 2016 at 8:39
  • 2
    lol :D @gismo-ranas The json.tool version piped to a file works really really well on large files; and is stupidly fast. I like JQ but formatting anything beyond a small payload (which you could do in most text editors) is beyond its reach :) Random addition: json-generator.com is a neat tool to make test data May 17, 2016 at 8:46
  • 7
    or just: jq '' < some.json Dec 9, 2016 at 19:21
  • 2
    Actually I strongly recommend using python3 -m json.tool <IN >OUT, as this keeps the original order of the fields in JSON dicts. The python interpreter version 2 sorts the fields in alphabetically ascending order, which often is not, what you want.
    – Kai Petzke
    Jan 20, 2019 at 17:00

You could use the built-in module pprint (https://docs.python.org/3.9/library/pprint.html).

How you can read the file with json data and print it out.

import json
import pprint

json_data = None
with open('file_name.txt', 'r') as f:
    data = f.read()
    json_data = json.loads(data)

{"firstName": "John", "lastName": "Smith", "isAlive": "true", "age": 27, "address": {"streetAddress": "21 2nd Street", "city": "New York", "state": "NY", "postalCode": "10021-3100"}, 'children': []}

{'address': {'city': 'New York',
             'postalCode': '10021-3100',
             'state': 'NY',
             'streetAddress': '21 2nd Street'},
 'age': 27,
 'children': [],
 'firstName': 'John',
 'isAlive': True,
 'lastName': 'Smith'}

The output is not a valid json, because pprint use single quotes and json specification require double quotes.

If you want to rewrite the pretty print formated json to a file, you have to use pprint.pformat.

pretty_print_json = pprint.pformat(json_data).replace("'", '"')

with open('file_name.json', 'w') as f:
  • 11
    Problem with this is that pprint will use single and double quotes interchangably, but json requires double quotes only, so your pprinted json may no longer parse as valid json.
    – drevicko
    Jun 29, 2018 at 14:38
  • 9
    Yes, but it's only to output a json file. Not to take the output and write it again in a file.
    – ikreb
    Jul 9, 2018 at 14:01
  • 1
    question specifically says to pretty print a json file, not a python representation of a json file
    – erik258
    Nov 10, 2021 at 16:37
  • @DanielFarrell You are right. Thanks. I updated my answer.
    – ikreb
    Nov 24, 2021 at 14:37
  • This solution has so many issues I can't even start. There's zero guarantee to be valid JSON, in fact, very often it won't be valid at all. Not only it will mix up the quotes all over, but also pprint will output many string representations that only make sense to Python. None, datetime, all sorts of objects, even when they have well defined ways to be JSON serializable. Replacing the single to double quotes only makes it worse, it will potentially not even be valid Python anymore, all you need is a double quote in any string. Sep 6 at 17:04

Pygmentize + Python json.tool = Pretty Print with Syntax Highlighting

Pygmentize is a killer tool. See this.

I combine python json.tool with pygmentize

echo '{"foo": "bar"}' | python -m json.tool | pygmentize -l json

See the link above for pygmentize installation instruction.

A demo of this is in the image below:


  • 3
    In your example -g is not actually working ;) Since input comes from stdin, pygmentize is not able to make a good guess. You need to specify lexer explicitly: echo '{"foo": "bar"}' | python -m json.tool | pygmentize -l json Jan 29, 2018 at 13:00
  • 1
    @DenisTheMenace It used to work in 2015 when I created this example image. It doesn't seem to be working now on my system as well. Jan 30, 2018 at 9:19

Use this function and don't sweat having to remember if your JSON is a str or dict again - just look at the pretty print:

import json

def pp_json(json_thing, sort=True, indents=4):
    if type(json_thing) is str:
        print(json.dumps(json.loads(json_thing), sort_keys=sort, indent=indents))
        print(json.dumps(json_thing, sort_keys=sort, indent=indents))
    return None


Use pprint: https://docs.python.org/3.6/library/pprint.html

import pprint

print() compared to pprint.pprint()

{'feed': {'title': 'W3Schools Home Page', 'title_detail': {'type': 'text/plain', 'language': None, 'base': '', 'value': 'W3Schools Home Page'}, 'links': [{'rel': 'alternate', 'type': 'text/html', 'href': 'https://www.w3schools.com'}], 'link': 'https://www.w3schools.com', 'subtitle': 'Free web building tutorials', 'subtitle_detail': {'type': 'text/html', 'language': None, 'base': '', 'value': 'Free web building tutorials'}}, 'entries': [], 'bozo': 0, 'encoding': 'utf-8', 'version': 'rss20', 'namespaces': {}}

{'bozo': 0,
 'encoding': 'utf-8',
 'entries': [],
 'feed': {'link': 'https://www.w3schools.com',
          'links': [{'href': 'https://www.w3schools.com',
                     'rel': 'alternate',
                     'type': 'text/html'}],
          'subtitle': 'Free web building tutorials',
          'subtitle_detail': {'base': '',
                              'language': None,
                              'type': 'text/html',
                              'value': 'Free web building tutorials'},
          'title': 'W3Schools Home Page',
          'title_detail': {'base': '',
                           'language': None,
                           'type': 'text/plain',
                           'value': 'W3Schools Home Page'}},
 'namespaces': {},
 'version': 'rss20'}
  • 12
    pprint does not produce a valid JSON document.
    – selurvedu
    Nov 26, 2019 at 11:46
  • @selurvedu what does that mean and why does that matter? Feb 9, 2021 at 22:50
  • 3
    @CharlieParker I expect they meant that knowing you have a valid JSON document is pretty useful. Sure, you can use the json module to work with the data and dictionary keys work the same with double- or single-quoted strings, but some tools, e.g. Postman and JSON Editor Online, both expect keys and values to be double-quoted (as per the JSON spec). In any case, json.org specifies the use of double quotes, which pprint doesn't produce. E.g. pprint.pprint({"name": "Jane"}) produces {'name': 'Jane'}. Mar 7, 2021 at 7:13
  • 2
    @CharlieParker an example would be the 'language': None, in the result above, which should be "language": null. Note the null and the double quotes. What you do is pretty-printing a Python object.
    – Daniel F
    Jul 28, 2021 at 12:58
  • Yes, that's what I meant. Thanks for clarifying. :-)
    – selurvedu
    Nov 9, 2021 at 11:44

To be able to pretty print from the command line and be able to have control over the indentation etc. you can set up an alias similar to this:

alias jsonpp="python -c 'import sys, json; print json.dumps(json.load(sys.stdin), sort_keys=True, indent=2)'"

And then use the alias in one of these ways:

cat myfile.json | jsonpp
jsonpp < myfile.json
def saveJson(date,fileToSave):
    with open(fileToSave, 'w+') as fileToSave:
        json.dump(date, fileToSave, ensure_ascii=True, indent=4, sort_keys=True)

It works to display or save it to a file.


Here's a simple example of pretty printing JSON to the console in a nice way in Python, without requiring the JSON to be on your computer as a local file:

import pprint
import json 
from urllib.request import urlopen # (Only used to get this example)

# Getting a JSON example for this example 
r = urlopen("https://mdn.github.io/fetch-examples/fetch-json/products.json")
text = r.read() 

# To print it
  • 1
    I get the following error message in Python 3: "TypeError: the JSON object must be str, not 'bytes'"
    – Mr. T
    Jan 23, 2018 at 8:41

You could try pprintjson.


$ pip3 install pprintjson


Pretty print JSON from a file using the pprintjson CLI.

$ pprintjson "./path/to/file.json"

Pretty print JSON from a stdin using the pprintjson CLI.

$ echo '{ "a": 1, "b": "string", "c": true }' | pprintjson

Pretty print JSON from a string using the pprintjson CLI.

$ pprintjson -c '{ "a": 1, "b": "string", "c": true }'

Pretty print JSON from a string with an indent of 1.

$ pprintjson -c '{ "a": 1, "b": "string", "c": true }' -i 1

Pretty print JSON from a string and save output to a file output.json.

$ pprintjson -c '{ "a": 1, "b": "string", "c": true }' -o ./output.json


enter image description here

  • how is your soln different from import pprint pprint.pprint(json)? Feb 9, 2021 at 23:06
  • @CharlieParker I think it produces a valid json document, as opposed to pprint which uses single-quotes instead of double-quotes May 30, 2021 at 23:43

I think that's better to parse the json before, to avoid errors:

def format_response(response):
        parsed = json.loads(response.text)
    except JSONDecodeError:
        return response.text
    return json.dumps(parsed, ensure_ascii=True, indent=4)

I had a similar requirement to dump the contents of json file for logging, something quick and easy:

print(json.dumps(json.load(open(os.path.join('<myPath>', '<myjson>'), "r")), indent = 4 ))

if you use it often then put it in a function:

def pp_json_file(path, file):
    print(json.dumps(json.load(open(os.path.join(path, file), "r")), indent = 4))

Hopefully this helps someone else.

In the case when there is a error that something is not json serializable the answers above will not work. If you only want to save it so that is human readable then you need to recursively call string on all the non dictionary elements of your dictionary. If you want to load it later then save it as a pickle file then load it (e.g. torch.save(obj, f) works fine).

This is what worked for me:


def _to_json_dict_with_strings(dictionary):
    Convert dict to dict with leafs only being strings. So it recursively makes keys to strings
    if they are not dictionaries.

    Use case:
        - saving dictionary of tensors (convert the tensors to strins!)
        - saving arguments from script (e.g. argparse) for it to be pretty


    if type(dictionary) != dict:
        return str(dictionary)
    d = {k: _to_json_dict_with_strings(v) for k, v in dictionary.items()}
    return d

def to_json(dic):
    import types
    import argparse

    if type(dic) is dict:
        dic = dict(dic)
        dic = dic.__dict__
    return _to_json_dict_with_strings(dic)

def save_to_json_pretty(dic, path, mode='w', indent=4, sort_keys=True):
    import json

    with open(path, mode) as f:
        json.dump(to_json(dic), f, indent=indent, sort_keys=sort_keys)

def my_pprint(dic):

    @param dic:

    Note: this is not the same as pprint.
    import json

    # make all keys strings recursively with their naitve str function
    dic = to_json(dic)
    # pretty print
    pretty_dic = json.dumps(dic, indent=4, sort_keys=True)
    # print(json.dumps(dic, indent=4, sort_keys=True))
    # return pretty_dic

import torch
# import json  # results in non serializabe errors for torch.Tensors
from pprint import pprint

dic = {'x': torch.randn(1, 3), 'rec': {'y': torch.randn(1, 3)}}



    "rec": {
        "y": "tensor([[-0.3137,  0.3138,  1.2894]])"
    "x": "tensor([[-1.5909,  0.0516, -1.5445]])"
{'rec': {'y': tensor([[-0.3137,  0.3138,  1.2894]])},
 'x': tensor([[-1.5909,  0.0516, -1.5445]])}

I don't know why returning the string then printing it doesn't work but it seems you have to put the dumps directly in the print statement. Note pprint as it has been suggested already works too. Note not all objects can be converted to a dict with dict(dic) which is why some of my code has checks on this condition.


I wanted to save pytorch strings but I kept getting the error:

TypeError: tensor is not JSON serializable

so I coded the above. Note that yes, in pytorch you use torch.save but pickle files aren't readable. Check this related post: https://discuss.pytorch.org/t/typeerror-tensor-is-not-json-serializable/36065/3

PPrint also has indent arguments but I didn't like how it looks:

    pprint(stats, indent=4, sort_dicts=True)


{   'cca': {   'all': {'avg': tensor(0.5132), 'std': tensor(0.1532)},
               'avg': tensor([0.5993, 0.5571, 0.4910, 0.4053]),
               'rep': {'avg': tensor(0.5491), 'std': tensor(0.0743)},
               'std': tensor([0.0316, 0.0368, 0.0910, 0.2490])},
    'cka': {   'all': {'avg': tensor(0.7885), 'std': tensor(0.3449)},
               'avg': tensor([1.0000, 0.9840, 0.9442, 0.2260]),
               'rep': {'avg': tensor(0.9761), 'std': tensor(0.0468)},
               'std': tensor([5.9043e-07, 2.9688e-02, 6.3634e-02, 2.1686e-01])},
    'cosine': {   'all': {'avg': tensor(0.5931), 'std': tensor(0.7158)},
                  'avg': tensor([ 0.9825,  0.9001,  0.7909, -0.3012]),
                  'rep': {'avg': tensor(0.8912), 'std': tensor(0.1571)},
                  'std': tensor([0.0371, 0.1232, 0.1976, 0.9536])},
    'nes': {   'all': {'avg': tensor(0.6771), 'std': tensor(0.2891)},
               'avg': tensor([0.9326, 0.8038, 0.6852, 0.2867]),
               'rep': {'avg': tensor(0.8072), 'std': tensor(0.1596)},
               'std': tensor([0.0695, 0.1266, 0.1578, 0.2339])},
    'nes_output': {   'all': {'avg': None, 'std': None},
                      'avg': tensor(0.2975),
                      'rep': {'avg': None, 'std': None},
                      'std': tensor(0.0945)},
    'query_loss': {   'all': {'avg': None, 'std': None},
                      'avg': tensor(12.3746),
                      'rep': {'avg': None, 'std': None},
                      'std': tensor(13.7910)}}

compare to:

    "cca": {
        "all": {
            "avg": "tensor(0.5144)",
            "std": "tensor(0.1553)"
        "avg": "tensor([0.6023, 0.5612, 0.4874, 0.4066])",
        "rep": {
            "avg": "tensor(0.5503)",
            "std": "tensor(0.0796)"
        "std": "tensor([0.0285, 0.0367, 0.1004, 0.2493])"
    "cka": {
        "all": {
            "avg": "tensor(0.7888)",
            "std": "tensor(0.3444)"
        "avg": "tensor([1.0000, 0.9840, 0.9439, 0.2271])",
        "rep": {
            "avg": "tensor(0.9760)",
            "std": "tensor(0.0468)"
        "std": "tensor([5.7627e-07, 2.9689e-02, 6.3541e-02, 2.1684e-01])"
    "cosine": {
        "all": {
            "avg": "tensor(0.5945)",
            "std": "tensor(0.7146)"
        "avg": "tensor([ 0.9825,  0.9001,  0.7907, -0.2953])",
        "rep": {
            "avg": "tensor(0.8911)",
            "std": "tensor(0.1571)"
        "std": "tensor([0.0371, 0.1231, 0.1975, 0.9554])"
    "nes": {
        "all": {
            "avg": "tensor(0.6773)",
            "std": "tensor(0.2886)"
        "avg": "tensor([0.9326, 0.8037, 0.6849, 0.2881])",
        "rep": {
            "avg": "tensor(0.8070)",
            "std": "tensor(0.1595)"
        "std": "tensor([0.0695, 0.1265, 0.1576, 0.2341])"
    "nes_output": {
        "all": {
            "avg": "None",
            "std": "None"
        "avg": "tensor(0.2976)",
        "rep": {
            "avg": "None",
            "std": "None"
        "std": "tensor(0.0945)"
    "query_loss": {
        "all": {
            "avg": "None",
            "std": "None"
        "avg": "tensor(12.3616)",
        "rep": {
            "avg": "None",
            "std": "None"
        "std": "tensor(13.7976)"

json.loads() converts the json data to dictionary. Finally, use json.dumps() to prettyprint the json.

_json = '{"name":"John", "age":30, "car":null}'

data = json.loads(_json)

print (json.dumps(data, indent=2))

It's far from perfect, but it does the job.

data = data.replace(',"',',\n"')

you can improve it, add indenting and so on, but if you just want to be able to read a cleaner json, this is the way to go.


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