156

I have a JSON file that I want to covert to a CSV file. How can I do this with Python?

I tried:

import json
import csv

f = open('data.json')
data = json.load(f)
f.close()
f = open('data.csv')
csv_file = csv.writer(f)
for item in data:
    f.writerow(item)

f.close()

However, it did not work. I am using Django and the error I received is:

file' object has no attribute 'writerow'

So, then I tried the following:

import json
import csv

f = open('data.json')
data = json.load(f)
f.close()

f = open('data.csv')
csv_file = csv.writer(f)
for item in data:
    csv_file.writerow(item)

f.close()

I then get the error:

sequence expected

Sample json file:

[
  {
    "pk": 22,
    "model": "auth.permission",
    "fields": {
      "codename": "add_logentry",
      "name": "Can add log entry",
      "content_type": 8
    }
  },
  {
    "pk": 23,
    "model": "auth.permission",
    "fields": {
      "codename": "change_logentry",
      "name": "Can change log entry",
      "content_type": 8
    }
  },
  {
    "pk": 24,
    "model": "auth.permission",
    "fields": {
      "codename": "delete_logentry",
      "name": "Can delete log entry",
      "content_type": 8
    }
  },
  {
    "pk": 4,
    "model": "auth.permission",
    "fields": {
      "codename": "add_group",
      "name": "Can add group",
      "content_type": 2
    }
  },
  {
    "pk": 10,
    "model": "auth.permission",
    "fields": {
      "codename": "add_message",
      "name": "Can add message",
      "content_type": 4
    }
  }
]
  • 3
    We need more details. Please post a sample from the json file – Dominic Bou-Samra Dec 9 '09 at 4:08
  • Can you post the json file please? We can't really help you until you do. – Dan Loewenherz Dec 9 '09 at 5:58
  • i have post my json file sample. thanks – little_fish Dec 9 '09 at 6:24
  • 1
    csv_file.writerow(item) requires the item to be a simple list of strings or numbers. Try converting each json object into a flat list, like {"pk":22,"model":"auth.permission"} would become [22,auth.permission]. – Suppressingfire Dec 9 '09 at 18:28
  • A simple approach to this is using jq, as described here: stackoverflow.com/questions/32960857/… – Micah Elliott Jun 11 '18 at 21:02

23 Answers 23

115

I am not sure this question is solved already or not, but let me paste what I have done for reference.

First, your JSON has nested objects, so it normally cannot be directly converted to CSV. You need to change that to something like this:

{
    "pk": 22,
    "model": "auth.permission",
    "codename": "add_logentry",
    "content_type": 8,
    "name": "Can add log entry"
},
......]

Here is my code to generate CSV from that:

import csv
import json

x = """[
    {
        "pk": 22,
        "model": "auth.permission",
        "fields": {
            "codename": "add_logentry",
            "name": "Can add log entry",
            "content_type": 8
        }
    },
    {
        "pk": 23,
        "model": "auth.permission",
        "fields": {
            "codename": "change_logentry",
            "name": "Can change log entry",
            "content_type": 8
        }
    },
    {
        "pk": 24,
        "model": "auth.permission",
        "fields": {
            "codename": "delete_logentry",
            "name": "Can delete log entry",
            "content_type": 8
        }
    }
]"""

x = json.loads(x)

f = csv.writer(open("test.csv", "wb+"))

# Write CSV Header, If you dont need that, remove this line
f.writerow(["pk", "model", "codename", "name", "content_type"])

for x in x:
    f.writerow([x["pk"],
                x["model"],
                x["fields"]["codename"],
                x["fields"]["name"],
                x["fields"]["content_type"]])

You will get output as:

pk,model,codename,name,content_type
22,auth.permission,add_logentry,Can add log entry,8
23,auth.permission,change_logentry,Can change log entry,8
24,auth.permission,delete_logentry,Can delete log entry,8
  • 2
    this is work but sorry before can i get something that not hard code i thing it better id i can use f.writerow(a) and the a is some variabel that i declare before thanks before – little_fish Dec 9 '09 at 8:16
  • For me this works almost perfectly. In the exported CSV, some of the fields are surrounded by [u' and ']. What's the (non-post-processing) workaround? if there is one... :) – Dror Jul 10 '14 at 12:20
  • 3
    Below I've shown a way to do it more generally, without having to hard-code it – Alec McGail Aug 26 '15 at 21:11
  • 3
    hey, i've tried this but I'm getting a TypeError: a bytes-like object is required, not 'str' at f.writerow(['pk', 'model', 'codename', 'name', 'content_type']) – Aditya Hariharan Mar 7 '17 at 9:31
  • 2
    for python3 change line with opening csv file to f = csv.writer(open("test.csv", "w", newline='')) – PiotrK Apr 14 at 12:15
85

With the pandas library, this is as easy as using two commands!

pandas.read_json()

To convert a JSON string to a pandas object (either a series or dataframe). Then, assuming the results were stored as df:

df.to_csv()

Which can either return a string or write directly to a csv-file.

Based on the verbosity of previous answers, we should all thank pandas for the shortcut.

84

I am assuming that your JSON file will decode into a list of dictionaries. First we need a function which will flatten the JSON objects:

def flattenjson( b, delim ):
    val = {}
    for i in b.keys():
        if isinstance( b[i], dict ):
            get = flattenjson( b[i], delim )
            for j in get.keys():
                val[ i + delim + j ] = get[j]
        else:
            val[i] = b[i]

    return val

The result of running this snippet on your JSON object:

flattenjson( {
    "pk": 22, 
    "model": "auth.permission", 
    "fields": {
      "codename": "add_message", 
      "name": "Can add message", 
      "content_type": 8
    }
  }, "__" )

is

{
    "pk": 22, 
    "model": "auth.permission', 
    "fields__codename": "add_message", 
    "fields__name": "Can add message", 
    "fields__content_type": 8
}

After applying this function to each dict in the input array of JSON objects:

input = map( lambda x: flattenjson( x, "__" ), input )

and finding the relevant column names:

columns = [ x for row in input for x in row.keys() ]
columns = list( set( columns ) )

it's not hard to run this through the csv module:

with open( fname, 'wb' ) as out_file:
    csv_w = csv.writer( out_file )
    csv_w.writerow( columns )

    for i_r in input:
        csv_w.writerow( map( lambda x: i_r.get( x, "" ), columns ) )

I hope this helps!

  • 4
    it's writerow, not write_row – philgo20 Sep 2 '16 at 19:51
  • @AlecMcGail it is not working with pyhton3.x – EmptyData Apr 14 '17 at 8:03
  • @EmptyData I guess you're referring to the "map" and "reduce" parts. how about "columns = list( set( x for y in input for x in y.keys() ) )" – Alec McGail Apr 15 '17 at 15:24
  • Using Python 3.6, I had to make a list of the flattened JSON to get the last loop working: "input = list( map( lambda x: flattenjson( x, "__" ), input ) )". I do not understand why the iterable is not enough though. I also had to specify the encoding when opening the output file as my data uses UTF8. It definitely helped, thank you !! – Alexis R Feb 1 '18 at 10:10
  • This is great, thanks Alec! I modified it to work with multiple levels of nesting: stackoverflow.com/a/57228641/473201 – phreakhead Jul 27 at 2:13
35

JSON can represent a wide variety of data structures -- a JS "object" is roughly like a Python dict (with string keys), a JS "array" roughly like a Python list, and you can nest them as long as the final "leaf" elements are numbers or strings.

CSV can essentially represent only a 2-D table -- optionally with a first row of "headers", i.e., "column names", which can make the table interpretable as a list of dicts, instead of the normal interpretation, a list of lists (again, "leaf" elements can be numbers or strings).

So, in the general case, you can't translate an arbitrary JSON structure to a CSV. In a few special cases you can (array of arrays with no further nesting; arrays of objects which all have exactly the same keys). Which special case, if any, applies to your problem? The details of the solution depend on which special case you do have. Given the astonishing fact that you don't even mention which one applies, I suspect you may not have considered the constraint, neither usable case in fact applies, and your problem is impossible to solve. But please do clarify!

26

A generic solution which translates any json list of flat objects to csv.

Pass the input.json file as first argument on command line.

import csv, json, sys

input = open(sys.argv[1])
data = json.load(input)
input.close()

output = csv.writer(sys.stdout)

output.writerow(data[0].keys())  # header row

for row in data:
    output.writerow(row.values())
  • 2
    An important comment - this code infers the columns/headers from the fields in the very first row. If your json data has 'jagged' columns, i.e. lets say row1 has 5 columns but row2 has 6 columns, then you need to do a first pass over the data to get the total set of all columns and use that as the headers. – Mike Repass Dec 7 '12 at 21:59
  • With the data I had this was a great part of the solution I needed, since my JSON was not jagged it worked wonderfully with some slight adjustments for the output since I was running this within an existing script. – MichaelF Apr 24 '14 at 15:00
  • 1
    This code also assumes that the values will be output in the same order as the keys in the header row. While that may have worked by luck, it is by no means guaranteed. – RyanHennig Jul 28 '15 at 19:09
  • Getting encoding error. Any idea how to add encoding to utf-8? – Elad Tabak Apr 7 '16 at 9:34
22

This code should work for you, assuming that your JSON data is in a file called data.json.

import json
import csv

with open("data.json") as file:
    data = json.load(file)

with open("data.csv", "w") as file:
    csv_file = csv.writer(file)
    for item in data:
        fields = list(item['fields'].values())
        csv_file.writerow([item['pk'], item['model']] + fields)
  • 1
    Hmmm, no -- csv_file.writerow (there is no f.writerow of course, I assume you made a typo there!) wants a sequence, not a dict -- and in your example, each item is a dict. This would work for the OTHER special case, as I identified in my answer - where the JSON file has an array of arrays; it doesn't work for an array of objects, which is the special case you appear to be trying to solve (that one requires a csv.DictWriter -- and of course you need to extract the field names and decide on an order in order to instantiate it!-). – Alex Martelli Dec 9 '09 at 4:54
  • Oops, typo. Thanks for catching that. – Dan Loewenherz Dec 9 '09 at 5:55
  • @DanLoewenherz That doesn't work on recent Python versions. TypeError: can only concatenate list (not "dict_values") to list – Apolo Radomer Jul 24 at 16:07
  • @ApoloRadomer Thanks! Just fixed. – Dan Loewenherz Jul 25 at 14:04
16

It'll be easy to use csv.DictWriter(),the detailed implementation can be like this:

def read_json(filename):
    return json.loads(open(filename).read())
def write_csv(data,filename):
    with open(filename, 'w+') as outf:
        writer = csv.DictWriter(outf, data[0].keys())
        writer.writeheader()
        for row in data:
            writer.writerow(row)
# implement
write_csv(read_json('test.json'), 'output.csv')

Note that this assumes that all of your JSON objects have the same fields.

Here is the reference which may help you.

  • While this link may answer the question, it is better to include the essential parts of the answer here and provide the link for reference. Link-only answers can become invalid if the linked page changes. - From Review – Mathieu Dec 1 '16 at 10:04
  • 3
    @purplepsycho I found this answer with a downvote, which was deserved for being link only. The new user, who might have been unaware that link only is not a good answer, has corrected that. I upvoted; perhaps you could too, to encourage the new user to continue to participate in our community? – Mawg Jan 19 '17 at 8:40
6

I was having trouble with Dan's proposed solution, but this worked for me:

import json
import csv 

f = open('test.json')
data = json.load(f)
f.close()

f=csv.writer(open('test.csv','wb+'))

for item in data:
  f.writerow([item['pk'], item['model']] + item['fields'].values())

Where "test.json" contained the following:

[ 
{"pk": 22, "model": "auth.permission", "fields": 
  {"codename": "add_logentry", "name": "Can add log entry", "content_type": 8 } }, 
{"pk": 23, "model": "auth.permission", "fields": 
  {"codename": "change_logentry", "name": "Can change log entry", "content_type": 8 } }, {"pk": 24, "model": "auth.permission", "fields": 
  {"codename": "delete_logentry", "name": "Can delete log entry", "content_type": 8 } }
]
  • Got error on trying your program on your sample data C:\curl>python json2csv.py Traceback (most recent call last): File "json2csv.py", line 11, in <module> f.writerow([item['pk'], item['model']] + item['fields'].values()) TypeError: can only concatenate list (not "dict_values") to list – Mian Asbat Ahmad Dec 10 '15 at 11:54
  • Tried it again just now in Python 2.7.9 and it works fine for me. – Amanda Dec 10 '15 at 19:33
4

As mentioned in the previous answers the difficulty in converting json to csv is because a json file can contain nested dictionaries and therefore be a multidimensional data structure verses a csv which is a 2D data structure. However, a good way to turn a multidimensional structure to a csv is to have multiple csvs that tie together with primary keys.

In your example, the first csv output has the columns "pk","model","fields" as your columns. Values for "pk", and "model" are easy to get but because the "fields" column contains a dictionary, it should be its own csv and because "codename" appears to the be the primary key, you can use as the input for "fields" to complete the first csv. The second csv contains the dictionary from the "fields" column with codename as the the primary key that can be used to tie the 2 csvs together.

Here is a solution for your json file which converts a nested dictionaries to 2 csvs.

import csv
import json

def readAndWrite(inputFileName, primaryKey=""):
    input = open(inputFileName+".json")
    data = json.load(input)
    input.close()

    header = set()

    if primaryKey != "":
        outputFileName = inputFileName+"-"+primaryKey
        if inputFileName == "data":
            for i in data:
                for j in i["fields"].keys():
                    if j not in header:
                        header.add(j)
    else:
        outputFileName = inputFileName
        for i in data:
            for j in i.keys():
                if j not in header:
                    header.add(j)

    with open(outputFileName+".csv", 'wb') as output_file:
        fieldnames = list(header)
        writer = csv.DictWriter(output_file, fieldnames, delimiter=',', quotechar='"')
        writer.writeheader()
        for x in data:
            row_value = {}
            if primaryKey == "":
                for y in x.keys():
                    yValue = x.get(y)
                    if type(yValue) == int or type(yValue) == bool or type(yValue) == float or type(yValue) == list:
                        row_value[y] = str(yValue).encode('utf8')
                    elif type(yValue) != dict:
                        row_value[y] = yValue.encode('utf8')
                    else:
                        if inputFileName == "data":
                            row_value[y] = yValue["codename"].encode('utf8')
                            readAndWrite(inputFileName, primaryKey="codename")
                writer.writerow(row_value)
            elif primaryKey == "codename":
                for y in x["fields"].keys():
                    yValue = x["fields"].get(y)
                    if type(yValue) == int or type(yValue) == bool or type(yValue) == float or type(yValue) == list:
                        row_value[y] = str(yValue).encode('utf8')
                    elif type(yValue) != dict:
                        row_value[y] = yValue.encode('utf8')
                writer.writerow(row_value)

readAndWrite("data")
4

I know it has been a long time since this question has been asked but I thought I might add to everyone else's answer and share a blog post that I think explain the solution in a very concise way.

Here is the link

Open a file for writing

employ_data = open('/tmp/EmployData.csv', 'w')

Create the csv writer object

csvwriter = csv.writer(employ_data)
count = 0
for emp in emp_data:
      if count == 0:
             header = emp.keys()
             csvwriter.writerow(header)
             count += 1
      csvwriter.writerow(emp.values())

Make sure to close the file in order to save the contents

employ_data.close()
2

This works relatively well. It flattens the json to write it to a csv file. Nested elements are managed :)

That's for python 3

import json

o = json.loads('your json string') # Be careful, o must be a list, each of its objects will make a line of the csv.

def flatten(o, k='/'):
    global l, c_line
    if isinstance(o, dict):
        for key, value in o.items():
            flatten(value, k + '/' + key)
    elif isinstance(o, list):
        for ov in o:
            flatten(ov, '')
    elif isinstance(o, str):
        o = o.replace('\r',' ').replace('\n',' ').replace(';', ',')
        if not k in l:
            l[k]={}
        l[k][c_line]=o

def render_csv(l):
    ftime = True

    for i in range(100): #len(l[list(l.keys())[0]])
        for k in l:
            if ftime :
                print('%s;' % k, end='')
                continue
            v = l[k]
            try:
                print('%s;' % v[i], end='')
            except:
                print(';', end='')
        print()
        ftime = False
        i = 0

def json_to_csv(object_list):
    global l, c_line
    l = {}
    c_line = 0
    for ov in object_list : # Assumes json is a list of objects
        flatten(ov)
        c_line += 1
    render_csv(l)

json_to_csv(o)

enjoy.

  • .csv file was not generated, instead, csv text was output to console. Also, json.loads was not working, I made it work with json.load, which nicely yields a list object. Third, nested elements were lost. – ZygD Apr 3 at 15:08
2

My simple way to solve this:

Create a new Python file like: json_to_csv.py

Add this code:

import csv, json, sys
#if you are not using utf-8 files, remove the next line
sys.setdefaultencoding("UTF-8")
#check if you pass the input file and output file
if sys.argv[1] is not None and sys.argv[2] is not None:

    fileInput = sys.argv[1]
    fileOutput = sys.argv[2]

    inputFile = open(fileInput)
    outputFile = open(fileOutput, 'w')
    data = json.load(inputFile)
    inputFile.close()

    output = csv.writer(outputFile)

    output.writerow(data[0].keys())  # header row

    for row in data:
        output.writerow(row.values())

After add this code, save the file and run at the terminal:

python json_to_csv.py input.txt output.csv

I hope this help you.

SEEYA!

  • 1
    This sample works like a charm! thanks for sharing i was able to convert my json file into CSV using this python script – Mostafa Oct 23 '17 at 16:52
2

It is not a very smart way to do it, but I have had the same problem and this worked for me:

import csv

f = open('data.json')
data = json.load(f)
f.close()

new_data = []

for i in data:
   flat = {}
   names = i.keys()
   for n in names:
      try:
         if len(i[n].keys()) > 0:
            for ii in i[n].keys():
               flat[n+"_"+ii] = i[n][ii]
      except:
         flat[n] = i[n]
   new_data.append(flat)  

f = open(filename, "r")
writer = csv.DictWriter(f, new_data[0].keys())
writer.writeheader()
for row in new_data:
   writer.writerow(row)
f.close()
1

Modified Alec McGail's answer to support JSON with lists inside

    def flattenjson(self, mp, delim="|"):
            ret = []
            if isinstance(mp, dict):
                    for k in mp.keys():
                            csvs = self.flattenjson(mp[k], delim)
                            for csv in csvs:
                                    ret.append(k + delim + csv)
            elif isinstance(mp, list):
                    for k in mp:
                            csvs = self.flattenjson(k, delim)
                            for csv in csvs:
                                    ret.append(csv)
            else:
                    ret.append(mp)

            return ret

Thanks!

1

Surprisingly, I found that none of the answers posted here so far correctly deal with all possible scenarios (e.g., nested dicts, nested lists, None values, etc).

This solution should work across all scenarios:

def flatten_json(json):
    def process_value(keys, value, flattened):
        if isinstance(value, dict):
            for key in value.keys():
                process_value(keys + [key], value[key], flattened)
        elif isinstance(value, list):
            for idx, v in enumerate(value):
                process_value(keys + [str(idx)], v, flattened)
        else:
            flattened['__'.join(keys)] = value

    flattened = {}
    for key in json.keys():
        process_value([key], json[key], flattened)
    return flattened
1
import json,csv
t=''
t=(type('a'))
json_data = []
data = None
write_header = True
item_keys = []
try:
with open('kk.json') as json_file:
    json_data = json_file.read()

    data = json.loads(json_data)
except Exception as e:
    print( e)

with open('bar.csv', 'at') as csv_file:
    writer = csv.writer(csv_file)#, quoting=csv.QUOTE_MINIMAL)
    for item in data:
        item_values = []
        for key in item:
            if write_header:
                item_keys.append(key)
            value = item.get(key, '')
            if (type(value)==t):
                item_values.append(value.encode('utf-8'))
            else:
                item_values.append(value)
        if write_header:
            writer.writerow(item_keys)
            write_header = False
        writer.writerow(item_values)
1

Try this

import csv, json, sys

input = open(sys.argv[1])
data = json.load(input)
input.close()

output = csv.writer(sys.stdout)

output.writerow(data[0].keys())  # header row

for item in data:
    output.writerow(item.values())
1

This code works for any given json file

# -*- coding: utf-8 -*-
"""
Created on Mon Jun 17 20:35:35 2019
author: Ram
"""

import json
import csv

with open("file1.json") as file:
    data = json.load(file)



# create the csv writer object
pt_data1 = open('pt_data1.csv', 'w')
csvwriter = csv.writer(pt_data1)

count = 0

for pt in data:

      if count == 0:

             header = pt.keys()

             csvwriter.writerow(header)

             count += 1

      csvwriter.writerow(pt.values())

pt_data1.close()
1

Alec's answer is great, but it doesn't work in the case where there are multiple levels of nesting. Here's a modified version that supports multiple levels of nesting. It also makes the header names a bit nicer if the nested object already specifies its own key (e.g. Firebase Analytics / BigTable / BigQuery data):

"""Converts JSON with nested fields into a flattened CSV file.
"""

import sys
import json
import csv
import os

import jsonlines

from orderedset import OrderedSet

# from https://stackoverflow.com/a/28246154/473201
def flattenjson( b, prefix='', delim='/', val=None ):
  if val == None:
    val = {}

  if isinstance( b, dict ):
    for j in b.keys():
      flattenjson(b[j], prefix + delim + j, delim, val)
  elif isinstance( b, list ):
    get = b
    for j in range(len(get)):
      key = str(j)

      # If the nested data contains its own key, use that as the header instead.
      if isinstance( get[j], dict ):
        if 'key' in get[j]:
          key = get[j]['key']

      flattenjson(get[j], prefix + delim + key, delim, val)
  else:
    val[prefix] = b

  return val

def main(argv):
  if len(argv) < 2:
    raise Error('Please specify a JSON file to parse')

  filename = argv[1]
  allRows = []
  fieldnames = OrderedSet()
  with jsonlines.open(filename) as reader:
    for obj in reader:
      #print obj
      flattened = flattenjson(obj)
      #print 'keys: %s' % flattened.keys()
      fieldnames.update(flattened.keys())
      allRows.append(flattened)

  outfilename = filename + '.csv'
  with open(outfilename, 'w') as file:
    csvwriter = csv.DictWriter(file, fieldnames=fieldnames)
    csvwriter.writeheader()
    for obj in allRows:
      csvwriter.writerow(obj)



if __name__ == '__main__':
  main(sys.argv)
0

Since the data appears to be in a dictionary format, it would appear that you should actually use csv.DictWriter() to actually output the lines with the appropriate header information. This should allow the conversion to be handled somewhat easier. The fieldnames parameter would then set up the order properly while the output of the first line as the headers would allow it to be read and processed later by csv.DictReader().

For example, Mike Repass used

output = csv.writer(sys.stdout)

output.writerow(data[0].keys())  # header row

for row in data:
  output.writerow(row.values())

However just change the initial setup to output = csv.DictWriter(filesetting, fieldnames=data[0].keys())

Note that since the order of elements in a dictionary is not defined, you might have to create fieldnames entries explicitly. Once you do that, the writerow will work. The writes then work as originally shown.

0

Unfortunately I have not enouthg reputation to make a small contribution to the amazing @Alec McGail answer. I was using Python3 and I have needed to convert the map to a list following the @Alexis R comment.

Additionaly I have found the csv writer was adding a extra CR to the file (I have a empty line for each line with data inside the csv file). The solution was very easy following the @Jason R. Coombs answer to this thread: CSV in Python adding an extra carriage return

You need to simply add the lineterminator='\n' parameter to the csv.writer. It will be: csv_w = csv.writer( out_file, lineterminator='\n' )

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You can use this code to convert a json file to csv file After reading the file, I am converting the object to pandas dataframe and then saving this to a CSV file

import os
import pandas as pd
import json
import numpy as np

data = []
os.chdir('D:\\Your_directory\\folder')
with open('file_name.json', encoding="utf8") as data_file:    
     for line in data_file:
        data.append(json.loads(line))

dataframe = pd.DataFrame(data)        
## Saving the dataframe to a csv file
dataframe.to_csv("filename.csv", encoding='utf-8',index= False)
  • this does not take subfields (such as "fields" in the example) into account - the sub-object is in one column instead of its contents separated into individual columns as well. – Cribber Feb 21 at 10:50
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I might be late to the party, but I think, I have dealt with the similar problem. I had a json file which looked like this

JSON File Structure

I only wanted to extract few keys/values from these json file. So, I wrote the following code to extract the same.

    """json_to_csv.py
    This script reads n numbers of json files present in a folder and then extract certain data from each file and write in a csv file.
    The folder contains the python script i.e. json_to_csv.py, output.csv and another folder descriptions containing all the json files.
"""

import os
import json
import csv


def get_list_of_json_files():
    """Returns the list of filenames of all the Json files present in the folder
    Parameter
    ---------
    directory : str
        'descriptions' in this case
    Returns
    -------
    list_of_files: list
        List of the filenames of all the json files
    """

    list_of_files = os.listdir('descriptions')  # creates list of all the files in the folder

    return list_of_files


def create_list_from_json(jsonfile):
    """Returns a list of the extracted items from json file in the same order we need it.
    Parameter
    _________
    jsonfile : json
        The json file containing the data
    Returns
    -------
    one_sample_list : list
        The list of the extracted items needed for the final csv
    """

    with open(jsonfile) as f:
        data = json.load(f)

    data_list = []  # create an empty list

    # append the items to the list in the same order.
    data_list.append(data['_id'])
    data_list.append(data['_modelType'])
    data_list.append(data['creator']['_id'])
    data_list.append(data['creator']['name'])
    data_list.append(data['dataset']['_accessLevel'])
    data_list.append(data['dataset']['_id'])
    data_list.append(data['dataset']['description'])
    data_list.append(data['dataset']['name'])
    data_list.append(data['meta']['acquisition']['image_type'])
    data_list.append(data['meta']['acquisition']['pixelsX'])
    data_list.append(data['meta']['acquisition']['pixelsY'])
    data_list.append(data['meta']['clinical']['age_approx'])
    data_list.append(data['meta']['clinical']['benign_malignant'])
    data_list.append(data['meta']['clinical']['diagnosis'])
    data_list.append(data['meta']['clinical']['diagnosis_confirm_type'])
    data_list.append(data['meta']['clinical']['melanocytic'])
    data_list.append(data['meta']['clinical']['sex'])
    data_list.append(data['meta']['unstructured']['diagnosis'])
    # In few json files, the race was not there so using KeyError exception to add '' at the place
    try:
        data_list.append(data['meta']['unstructured']['race'])
    except KeyError:
        data_list.append("")  # will add an empty string in case race is not there.
    data_list.append(data['name'])

    return data_list


def write_csv():
    """Creates the desired csv file
    Parameters
    __________
    list_of_files : file
        The list created by get_list_of_json_files() method
    result.csv : csv
        The csv file containing the header only
    Returns
    _______
    result.csv : csv
        The desired csv file
    """

    list_of_files = get_list_of_json_files()
    for file in list_of_files:
        row = create_list_from_json(f'descriptions/{file}')  # create the row to be added to csv for each file (json-file)
        with open('output.csv', 'a') as c:
            writer = csv.writer(c)
            writer.writerow(row)
        c.close()


if __name__ == '__main__':
    write_csv()

I hope this will help. For details on how this code work you can check here

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