How do I write JSON data stored in the dictionary data to a file?

f = open('data.json', 'wb')

This gives the error:

TypeError: must be string or buffer, not dict


15 Answers 15


data is a Python dictionary. It needs to be encoded as JSON before writing.

Use this for maximum compatibility (Python 2 and 3):

import json
with open('data.json', 'w') as f:
    json.dump(data, f)

On a modern system (i.e. Python 3 and UTF-8 support), you can write a nicer file using:

import json
with open('data.json', 'w', encoding='utf-8') as f:
    json.dump(data, f, ensure_ascii=False, indent=4)

See json documentation.

  • 10
    this might be helpful for serializing: stackoverflow.com/questions/4512982/…
    – jedierikb
    Feb 11, 2013 at 17:27
  • 15
    Do you mean json.dump or json.dumps? Aug 13, 2015 at 14:46
  • 217
    @TerminalDilettante json.dump writes to a file or file-like object, whereas json.dumps returns a string.
    – phihag
    Aug 13, 2015 at 20:58
  • 36
    btw: to re read the data use: with open('data.txt') as infile: d = json.load(infile). See: this answer
    – klaas
    Mar 7, 2016 at 12:59
  • 11
    @denvar No, this answer is finely tuned. On Python 3, json.dump writes to a text file, not a binary file. You'd get a TypeError if the file was opened with wb. On older Python versions, both w nand wb work. An explicit encoding is not necessary since the output of json.dump is ASCII-only by default. If you can be sure that your code is never run on legacy Python versions and you and the handler of the JSON file can correctly handle non-ASCII data, you can specify one and set ensure_ascii=False.
    – phihag
    Apr 19, 2016 at 18:47

To get utf8-encoded file as opposed to ascii-encoded in the accepted answer for Python 2 use:

import io, json
with io.open('data.txt', 'w', encoding='utf-8') as f:
  f.write(json.dumps(data, ensure_ascii=False))

The code is simpler in Python 3:

import json
with open('data.txt', 'w') as f:
  json.dump(data, f, ensure_ascii=False)

On Windows, the encoding='utf-8' argument to open is still necessary.

To avoid storing an encoded copy of the data in memory (result of dumps) and to output utf8-encoded bytestrings in both Python 2 and 3, use:

import json, codecs
with open('data.txt', 'wb') as f:
    json.dump(data, codecs.getwriter('utf-8')(f), ensure_ascii=False)

The codecs.getwriter call is redundant in Python 3 but required for Python 2

Readability and size:

The use of ensure_ascii=False gives better readability and smaller size:

>>> json.dumps({'price': '€10'})
'{"price": "\\u20ac10"}'
>>> json.dumps({'price': '€10'}, ensure_ascii=False)
'{"price": "€10"}'

>>> len(json.dumps({'абвгд': 1}))
>>> len(json.dumps({'абвгд': 1}, ensure_ascii=False).encode('utf8'))

Further improve readability by adding flags indent=4, sort_keys=True (as suggested by dinos66) to arguments of dump or dumps. This way you'll get a nicely indented sorted structure in the json file at the cost of a slightly larger file size.

  • 5
    The unicode is superfluous - the result of json.dumps is already a unicode object. Note that this fails in 3.x, where this whole mess of output file mode has been cleaned up, and json always uses character strings (and character I/O) and never bytes.
    – phihag
    Feb 14, 2013 at 11:20
  • 4
    In 2.x type(json.dumps('a')) is <type 'str'>. Even type(json.dumps('a', encoding='utf8')) is <type 'str'>. Feb 14, 2013 at 11:25
  • 4
    Yes, in 3.x json uses strings, yet the default encoding is ascii. You have to explicitly tell it that you want utf8 even in 3.x. Updated the answer. Feb 14, 2013 at 11:39
  • 1
    The Python 3.x answer worked for me even though I'm using 2.7. The 2.x answer returned an error: 'ascii' codec can't decode byte 0xf1 in position 506755: ordinal not in range(128). So when in doubt, use the 3.x answer!
    – Blairg23
    Dec 22, 2015 at 18:44
  • 1
    to me codecs.getwriter was necessary in python 3. Otherwise: json.dump( recipe , ensure_ascii=False) TypeError: dump() missing 1 required positional argument: 'fp'
    – user305883
    Feb 15, 2017 at 15:19

I would answer with slight modification with aforementioned answers and that is to write a prettified JSON file which human eyes can read better. For this, pass sort_keys as True and indent with 4 space characters and you are good to go. Also take care of ensuring that the ascii codes will not be written in your JSON file:

with open('data.txt', 'w') as out_file:
     json.dump(json_data, out_file, sort_keys = True, indent = 4,
               ensure_ascii = False)
  • 2
    still getting UnicodeEncodeError: 'ascii' codec can't encode character u'\xfc'
    – stevek-pro
    Oct 13, 2014 at 23:16
  • 1
    @SirBenBenji Ensure the string you are trying to write to follow: str.decode('utf-8').
    – ambodi
    Apr 22, 2015 at 9:08
  • 1
    @SirBenBenji You can try using codecs too, as dinos66 specifies below
    – Shiv
    Sep 3, 2015 at 19:01
  • You also have to declare your encoding by adding # -*- coding: utf-8 -*- after the shebang
    – aesede
    Apr 2, 2016 at 17:29
  • 2
    +1 for sort_keys and indent. @aesede It's no good to add this line because it will make in impression that this solution works with python2 as well which it doesn't (UnicodeEncodeError with non-ascii data). See my solution for details. Feb 10, 2017 at 10:41

Read and write JSON files with Python 2+3; works with unicode

# -*- coding: utf-8 -*-
import json

# Make it work for Python 2+3 and with Unicode
import io
    to_unicode = unicode
except NameError:
    to_unicode = str

# Define data
data = {'a list': [1, 42, 3.141, 1337, 'help', u'€'],
        'a string': 'bla',
        'another dict': {'foo': 'bar',
                         'key': 'value',
                         'the answer': 42}}

# Write JSON file
with io.open('data.json', 'w', encoding='utf8') as outfile:
    str_ = json.dumps(data,
                      indent=4, sort_keys=True,
                      separators=(',', ': '), ensure_ascii=False)

# Read JSON file
with open('data.json') as data_file:
    data_loaded = json.load(data_file)

print(data == data_loaded)

Explanation of the parameters of json.dump:

  • indent: Use 4 spaces to indent each entry, e.g. when a new dict is started (otherwise all will be in one line),
  • sort_keys: sort the keys of dictionaries. This is useful if you want to compare json files with a diff tool / put them under version control.
  • separators: To prevent Python from adding trailing whitespaces

With a package

Have a look at my utility package mpu for a super simple and easy to remember one:

import mpu.io
data = mpu.io.read('example.json')
mpu.io.write('example.json', data)

Created JSON file

    "a list":[
    "a string":"bla",
    "another dict":{
        "the answer":42

Common file endings



For your application, the following might be important:

  • Support by other programming languages
  • Reading / writing performance
  • Compactness (file size)

See also: Comparison of data serialization formats

In case you are rather looking for a way to make configuration files, you might want to read my short article Configuration files in Python

  • 2
    Note that force_ascii flag is True by default. You'll have unreadable 6-bytes "\u20ac" sequences for each in your json file (as well as of any other non-ascii character). Feb 10, 2017 at 11:13
  • Why do you use open for the reading but io.open for writing? Is it possible to use io.open for reading as well? If so, what parameters should be passed? Jun 5, 2017 at 5:31

For those of you who are trying to dump greek or other "exotic" languages such as me but are also having problems (unicode errors) with weird characters such as the peace symbol (\u262E) or others which are often contained in json formated data such as Twitter's, the solution could be as follows (sort_keys is obviously optional):

import codecs, json
with codecs.open('data.json', 'w', 'utf8') as f:
     f.write(json.dumps(data, sort_keys = True, ensure_ascii=False))
  • 1
    +1 While docs recommends python3 builtin open and the assotiated io.open over codecs.open, in this case it is also a nice backwards-compatible hack. In python2 codecs.open is more "omnivorous" than io.open (it can "eat" both str and unicode, converting if necessary). One can say that this codecs.open quirk compensates for json.dumps quirk of generating different types of objects (str/unicode) depending on the presence of the unicode strings in the input. Feb 10, 2017 at 11:06

I don't have enough reputation to add in comments, so I just write some of my findings of this annoying TypeError here:

Basically, I think it's a bug in the json.dump() function in Python 2 only - It can't dump a Python (dictionary / list) data containing non-ASCII characters, even you open the file with the encoding = 'utf-8' parameter. (i.e. No matter what you do). But, json.dumps() works on both Python 2 and 3.

To illustrate this, following up phihag's answer: the code in his answer breaks in Python 2 with exception TypeError: must be unicode, not str, if data contains non-ASCII characters. (Python 2.7.6, Debian):

import json
data = {u'\u0430\u0431\u0432\u0433\u0434': 1} #{u'абвгд': 1}
with open('data.txt', 'w') as outfile:
    json.dump(data, outfile)

It however works fine in Python 3.

  • Give reasons when you claim something to be wrong. Use @nickname so the person gets notified. You cannot write comments, but you can read comments. As already stated in my answer to the first comment, try data = {'asdf': 1}. You'll get the notorious TypeError with your (second) variant. Feb 10, 2017 at 8:55
  • Concerning ensure_ascii - it is necessary if you want to get a "real" utf8 output. Without it you'll have plain ascii with 6 bytes per russian letter as opposed to 2 bytes per character with this flag. Feb 10, 2017 at 8:56
  • @AntonyHatchkins You are right for the unicode() part. I just realised for io package in Python 2, write() needs unicode, not str.
    – ibic
    Feb 12, 2017 at 16:29
  • 1
    This code works for me even with python2.6.6, Debian (Dec 10 2010). As well as with python2.7.9 or python3. Check it once again, plz. Feb 21, 2017 at 4:40

Write a data in file using JSON use json.dump() or json.dumps() used. write like this to store data in file.

import json
data = [1,2,3,4,5]
with open('no.txt', 'w') as txtfile:
    json.dump(data, txtfile)

this example in list is store to a file.

  • it's similar but provide with example Feb 17, 2017 at 7:30
json.dump(data, open('data.txt', 'wb'))
  • 3
    This does the same thing as @phihag's answer, but is not guaranteed to work at all times. Consider such code: f = open('1.txt', 'w'); f.write('a'); input(). Run it and then SYGTERM it (Ctrl-Z then kill %1 on linux, Ctrl-Break on Windows). 1.txt will have 0 bytes. It is because the writing was buffered and the file was neither flushed not closed at the moment when SYGTERM occurred. with block guarantees that the file always gets closed just like 'try/finally' block does but shorter. Feb 10, 2017 at 10:27

To write the JSON with indentation, "pretty print":

import json

outfile = open('data.json')
json.dump(data, outfile, indent=4)

Also, if you need to debug improperly formatted JSON, and want a helpful error message, use import simplejson library, instead of import json (functions should be the same)

  • Doesn't open('data.json') open the file in read only mode? Apr 25, 2021 at 22:57

All previous answers are correct here is a very simple example:

#! /usr/bin/env python
import json

def write_json():
    # create a dictionary  
    student_data = {"students":[]}
    #create a list
    data_holder = student_data["students"]
    # just a counter
    counter = 0
    #loop through if you have multiple items..         
    while counter < 3:
        counter += 1    
    #write the file        
    with open(file_path, 'w') as outfile:
        print("writing file to: ",file_path)
        json.dump(student_data, outfile)


enter image description here


if you are trying to write a pandas dataframe into a file using a json format i'd recommend this

saveFile = open(destination, 'w')

The JSON data can be written to a file as follows

hist1 = [{'val_loss': [0.5139984398465246],
'val_acc': [0.8002029867684085],
'loss': [0.593220705309384],
'acc': [0.7687131817929321]},
{'val_loss': [0.46456472964199463],
'val_acc': [0.8173602046780344],
'loss': [0.4932038113037539],
'acc': [0.8063946213802453]}]

Write to a file:

with open('text1.json', 'w') as f:
     json.dump(hist1, f)

The accepted answer is fine. However, I ran into "is not json serializable" error using that.

Here's how I fixed it with open("file-name.json", 'w') as output:


Although it is not a good fix as the json file it creates will not have double quotes, however it is great if you are looking for quick and dirty.


Before write a dictionary into a file as a json, you have to turn that dict onto json string using json library.

import json

data = {
        "a": 10,
        "b": 20,
        "c": 30,
        "d": 40,

json_data = json.dumps(json_data)

And also you can add indent to json data to look prettier.

json_data = json.dumps(json_data, indent=4)

If you want to sort keys before turning into json,

json_data = json.dumps(json_data, sort_keys=True)

You can use the combination of these two also.

Refer the json documentation here for much more features

Finally you can write into a json file

f = open('data.json', 'wb')

This is just an extra hint at the usage of json.dumps (this is not an answer to the problem of the question, but a trick for those who have to dump numpy data types):

If there are NumPy data types in the dictionary, json.dumps() needs an additional parameter, credits go to TypeError: Object of type 'ndarray' is not JSON serializable, and it will also fix errors like TypeError: Object of type int64 is not JSON serializable and so on:

class NumpyEncoder(json.JSONEncoder):
    """ Special json encoder for np types """
    def default(self, obj):
        if isinstance(obj, (np.int_, np.intc, np.intp, np.int8,
                            np.int16, np.int32, np.int64, np.uint8,
                            np.uint16, np.uint32, np.uint64)):
            return int(obj)
        elif isinstance(obj, (np.float_, np.float16, np.float32,
            return float(obj)
        elif isinstance(obj, (np.ndarray,)):
            return obj.tolist()
        return json.JSONEncoder.default(self, obj)

And then run:

import json

#print(json.dumps(my_data[:2], indent=4, cls=NumpyEncoder)))
with open(my_dir+'/my_filename.json', 'w') as f:
    json.dumps(my_data, indent=4, cls=NumpyEncoder)))

You may also want to return a string instead of a list in case of a np.array() since arrays are printed as lists that are spread over rows which will blow up the output if you have large or many arrays. The caveat: it is more difficult to access the items from the dumped dictionary later to get them back as the original array. Yet, if you do not mind having just a string of an array, this makes the dictionary more readable. Then exchange:

        elif isinstance(obj, (np.ndarray,)):
            return obj.tolist()


        elif isinstance(obj, (np.ndarray,)):
            return str(obj)

or just:

            return str(obj)
  • What a roundabout way to do something really simple
    – user32882
    Nov 2, 2021 at 9:17
  • @user32882 Yes, it also astonished me. Such a weak point of such a standard as json.dumps. It got downvoted perhaps because nobody expects it to be that complicated (me included), and it does not really answer the question, but in my case, I needed it. Nov 2, 2021 at 10:09
  • please take a look at the accepted answer. This shouldn't take more than a couple of lines of code.
    – user32882
    Nov 2, 2021 at 13:19
  • @user32882 As far as I can remember, the accepted answer cannot export numpy datatypes, which is why I added this answer. I am not sure, though, whether there is a difference regarding numpy datatypes between json.dump and json.dumps, I cannot take the time to test this now and I guess I tested this anyway. This answer shall not replace the accepted answer, but add this special case (not special at all, numpy datatypes are common). Nov 2, 2021 at 14:19
  • @user32882 Reading your comments, you have not understood this answer. The accepted answer is more or less repeated here (dumps instead of dump here so that you can use the parameters), and the class that makes numpy exports possible is just added. Nothing against downvoting for the right sake, but please think this over. Nov 3, 2021 at 14:01

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