I am trying to load and parse a JSON file in Python. But I'm stuck trying to load the file:

import json
json_data = open('file')
data = json.load(json_data)


ValueError: Extra data: line 2 column 1 - line 225116 column 1 (char 232 - 160128774)

I looked at 18.2. json — JSON encoder and decoder in the Python documentation, but it's pretty discouraging to read through this horrible-looking documentation.

First few lines (anonymized with randomized entries):

{"votes": {"funny": 2, "useful": 5, "cool": 1}, "user_id": "harveydennis", "name": "Jasmine Graham", "url": "http://example.org/user_details?userid=harveydennis", "average_stars": 3.5, "review_count": 12, "type": "user"}
{"votes": {"funny": 1, "useful": 2, "cool": 4}, "user_id": "njohnson", "name": "Zachary Ballard", "url": "https://www.example.com/user_details?userid=njohnson", "average_stars": 3.5, "review_count": 12, "type": "user"}
{"votes": {"funny": 1, "useful": 0, "cool": 4}, "user_id": "david06", "name": "Jonathan George", "url": "https://example.com/user_details?userid=david06", "average_stars": 3.5, "review_count": 12, "type": "user"}
{"votes": {"funny": 6, "useful": 5, "cool": 0}, "user_id": "santiagoerika", "name": "Amanda Taylor", "url": "https://www.example.com/user_details?userid=santiagoerika", "average_stars": 3.5, "review_count": 12, "type": "user"}
{"votes": {"funny": 1, "useful": 8, "cool": 2}, "user_id": "rodriguezdennis", "name": "Jennifer Roach", "url": "http://www.example.com/user_details?userid=rodriguezdennis", "average_stars": 3.5, "review_count": 12, "type": "user"}

5 Answers 5


You have a JSON Lines format text file. You need to parse your file line by line:

import json

data = []
with open('file') as f:
    for line in f:

Each line contains valid JSON, but as a whole, it is not a valid JSON value as there is no top-level list or object definition.

Note that because the file contains JSON per line, you are saved the headaches of trying to parse it all in one go or to figure out a streaming JSON parser. You can now opt to process each line separately before moving on to the next, saving memory in the process. You probably don't want to append each result to one list and then process everything if your file is really big.

If you have a file containing individual JSON objects with delimiters in-between, use How do I use the 'json' module to read in one JSON object at a time? to parse out individual objects using a buffered method.

  • 3
    +1 Maybe it is worth noting, that if you do not need all objects at once, processing them one-by-one may be more efficient approach. This way you will not need to store whole data in the memory, but a single piece of it.
    – Tadeck
    Sep 16, 2012 at 23:13
  • 2
    @Pi_: you'll have a dictionary, so just access the fields as keys: data = json.loads(line); print data[u'votes']
    – Martijn Pieters
    Sep 16, 2012 at 23:26
  • 1
    @Pi_: print the result of json.loads() then or use the debugger to inspect.
    – Martijn Pieters
    Sep 16, 2012 at 23:31
  • 1
    @Pi_: no; don't confuse the JSON format with the python dict representation. You are seeing python dictionaries with strings now.
    – Martijn Pieters
    Sep 16, 2012 at 23:37
  • 1
    @user2441441: see the linked answer from the post here.
    – Martijn Pieters
    Mar 9, 2015 at 18:16

In case you are using pandas and you will be interested in loading the json file as a dataframe, you can use:

import pandas as pd
df = pd.read_json('file.json', lines=True)

And to convert it into a json array, you can use:

  • 2
    This answer is the most pythonic in my view.
    – Green
    Jan 27, 2022 at 11:42

for those stumbling upon this question: the python jsonlines library (much younger than this question) elegantly handles files with one json document per line. see https://jsonlines.readthedocs.io/


That is ill-formatted. You have one JSON object per line, but they are not contained in a larger data structure (ie an array). You'll either need to reformat it so that it begins with [ and ends with ] with a comma at the end of each line, or parse it line by line as separate dictionaries.

  • 24
    With a 50MB file the OP is probably better off dealing with the data line by line anyway. :-)
    – Martijn Pieters
    Sep 16, 2012 at 23:14
  • 20
    Whether the file is ill-formatted depends on one's point of view. If it was intended to be in the "JSON lines" format, it's valid. See: jsonlines.org Nov 28, 2016 at 16:59
  • I love how browsers throw away 2500MB at a time, and people don't want to use 50MB to actually process something.
    – doug65536
    Jul 26, 2022 at 15:47

Add-on to @arunppsg's answer, but with multiprocessing to deal with a large number of files in a directory.

import numpy as np
import pandas as pd
import json
import os
import multiprocessing as mp
import time

directory = 'your_directory'

def read_json(json_files):
    df = pd.DataFrame()
    for j in json_files:
        with open(os.path.join(directory, j)) as f:
            df = df.append(pd.read_json(f, lines=True)) # if there's multiple lines in the json file, flag lines to true, false otherwise.
    return df

def parallelize_json(json_files, func):
    json_files_split = np.array_split(json_files, 10)
    pool = mp.Pool(mp.cpu_count())
    df = pd.concat(pool.map(func, json_files_split))
    return df

# start the timer
start = time.time()

# read all json files in parallel
df = parallelize_json(json_files, read_json)

# end the timer
end = time.time()

# print the time taken to read all json files
print(end - start)

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