73

I'd like to know if there is a memory efficient way of reading multi record JSON file ( each line is a JSON dict) into a pandas dataframe. Below is a 2 line example with working solution, I need it for potentially very large number of records. Example use would be to process output from Hadoop Pig JSonStorage function.

import json
import pandas as pd

test='''{"a":1,"b":2}
{"a":3,"b":4}'''
#df=pd.read_json(test,orient='records') doesn't work, expects []

l=[ json.loads(l) for l in test.splitlines()]
df=pd.DataFrame(l)
1
  • Use the chunksize attribute of pd.read_json to get a list of dataframes and use map or loop to iterate over the dataframes
    – devssh
    Jun 7, 2018 at 5:34

4 Answers 4

116

Note: Line separated json is now supported in read_json (since 0.19.0):

In [31]: pd.read_json('{"a":1,"b":2}\n{"a":3,"b":4}', lines=True)
Out[31]:
   a  b
0  1  2
1  3  4

or with a file/filepath rather than a json string:

pd.read_json(json_file, lines=True)

It's going to depend on the size of you DataFrames which is faster, but another option is to use str.join to smash your multi line "JSON" (Note: it's not valid json), into valid json and use read_json:

In [11]: '[%s]' % ','.join(test.splitlines())
Out[11]: '[{"a":1,"b":2},{"a":3,"b":4}]'

For this tiny example this is slower, if around 100 it's the similar, signicant gains if it's larger...

In [21]: %timeit pd.read_json('[%s]' % ','.join(test.splitlines()))
1000 loops, best of 3: 977 µs per loop

In [22]: %timeit l=[ json.loads(l) for l in test.splitlines()]; df = pd.DataFrame(l)
1000 loops, best of 3: 282 µs per loop

In [23]: test_100 = '\n'.join([test] * 100)

In [24]: %timeit pd.read_json('[%s]' % ','.join(test_100.splitlines()))
1000 loops, best of 3: 1.25 ms per loop

In [25]: %timeit l = [json.loads(l) for l in test_100.splitlines()]; df = pd.DataFrame(l)
1000 loops, best of 3: 1.25 ms per loop

In [26]: test_1000 = '\n'.join([test] * 1000)

In [27]: %timeit l = [json.loads(l) for l in test_1000.splitlines()]; df = pd.DataFrame(l)
100 loops, best of 3: 9.78 ms per loop

In [28]: %timeit pd.read_json('[%s]' % ','.join(test_1000.splitlines()))
100 loops, best of 3: 3.36 ms per loop

Note: of that time the join is surprisingly fast.

5
  • Not including time to read in the string (which both solutions use), I wonder if there's a trick here... Nov 18, 2013 at 2:18
  • 1
    I had to add lines=True as in data = pd.read_json('/path/to/file.json', lines=True) May 23, 2018 at 16:13
  • It seems to not work for big json files, if an error happens in the json.
    – devssh
    Jun 6, 2018 at 10:00
  • @devssh please post an issue on GitHub Jun 6, 2018 at 15:15
  • 1
    So, there is a closed issue for this on Github github.com/pandas-dev/pandas/issues/18152 I validated that the multiple json in the big file are not invalid and loaded them successfully in chunks. dfs = pd.read_json('file', lines=True, chunksize=x) and for df in dfs: df.head()
    – devssh
    Jun 7, 2018 at 5:32
28

If you are trying to save memory, then reading the file a line at a time will be much more memory efficient:

with open('test.json') as f:
    data = pd.DataFrame(json.loads(line) for line in f)

Also, if you import simplejson as json, the compiled C extensions included with simplejson are much faster than the pure-Python json module.

9
  • 2
    Actually I think the first thing the DataFrame constructor does is call list on a generator like this, so both memory and timings will be the same. Performance of simplejson lies somewhere between pandas' read_json and json. Mar 4, 2014 at 23:39
  • 1
    Ah, that's too bad; seems you are right about the DataFrame constructor. And recent versions of Python include compiled C extensions for the builtin json. Fortunately as of Pandas 0.19, you can use read_json(lines=True).
    – Doctor J
    Sep 18, 2016 at 23:48
  • @AndyHayden: This would still save memory over the OP's l=[ json.loads(l) for l in test.splitlines()], which needs to have, in memory, all at once: 1. The original complete file data, 2. The file data split into lines (deleted once all lines parsed), and 3. The parsed JSON objects. Reading lazily and loading line by line means you only have #3 from the above, plus one (technically two, but logically one) line of the file in memory at once. Sure, all the parsed objects are in memory, but not two extra copies of the file data to boot. Nov 29, 2017 at 17:00
  • @ShadowRanger no, the first thing the DataFrame constructor does is apply list to the iterator. It's completely equivalent. Nov 29, 2017 at 18:45
  • @AndyHayden: It would be equivalent if the iterable being iterated were equivalent, but the OP's iterable is test.splitlines() (meaning test and the list of resulting lines are all held in memory while the list is built), while Doctor J's iterable is f (an open file object), which pulls each line as it goes, replacing it immediately after each json.loads. pd.DataFrame(json.loads(line) for line in f) and pd.DataFrame([json.loads(line) for line in f]) would be equivalent (former listified by DataFrame, latter makes list directly), but file vs. str.split differs. Nov 29, 2017 at 18:52
20

As of Pandas 0.19, read_json has native support for line-delimited JSON:

pd.read_json(jsonfile, lines=True)
5

++++++++Update++++++++++++++

As of v0.19, Pandas supports this natively (see https://github.com/pandas-dev/pandas/pull/13351). Just run:

df=pd.read_json('test.json', lines=True)

++++++++Old Answer++++++++++

The existing answers are good, but for a little variety, here is another way to accomplish your goal that requires a simple pre-processing step outside of python so that pd.read_json() can consume the data.

  • Install jq https://stedolan.github.io/jq/.
  • Create a valid json file with cat test.json | jq -c --slurp . > valid_test.json
  • Create dataframe with df=pd.read_json('valid_test.json')

In ipython notebook, you can run the shell command directly from the cell interface with

!cat test.json | jq -c --slurp . > valid_test.json
df=pd.read_json('valid_test.json')

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