29

My goal is to convert JSON file into a format that can uploaded from Cloud Storage into BigQuery (as described here) with Python.

I have tried using newlineJSON package for the conversion but receives the following error.

JSONDecodeError: Expecting value or ']': line 2 column 1 (char 5)

Does anyone have the solution to this?

Here is the sample JSON code:

[{
    "key01": "value01",
    "key02": "value02",
    ...
    "keyN": "valueN"
},
{
    "key01": "value01",
    "key02": "value02",
    ...
    "keyN": "valueN"
},
{
    "key01": "value01",
    "key02": "value02",
    ...
    "keyN": "valueN"
}
]

And here's the existing python script:

with nlj.open(url_samplejson, json_lib = "simplejson") as src_:
    with nlj.open(url_convertedjson, "w") as dst_:
        for line_ in src_:
            dst_.write(line_)
1

5 Answers 5

42

The answer with jq is really useful, but if you still want to do it with Python (as it seems from the question), you can do it with built-in json module.

import json
from io import StringIO
in_json = StringIO("""[{
    "key01": "value01",
    "key02": "value02",

    "keyN": "valueN"
},
{
    "key01": "value01",
    "key02": "value02",

    "keyN": "valueN"
},
{
    "key01": "value01",
    "key02": "value02",

    "keyN": "valueN"
}
]""")

result = [json.dumps(record) for record in json.load(in_json)]  # the only significant line to convert the JSON to the desired format

print('\n'.join(result))

{"key01": "value01", "key02": "value02", "keyN": "valueN"}
{"key01": "value01", "key02": "value02", "keyN": "valueN"}
{"key01": "value01", "key02": "value02", "keyN": "valueN"}

* I'm using StringIO and print here just to make a sample easier to test locally.

As an alternative, you can use Python jq binding to combine it with the other answer.

2
  • Also works for python objects (as opposed to strings of JSON) like this: result = [json.dumps(item) for item in items]
    – Michael
    Aug 21, 2019 at 11:57
  • 5
    I think this is the best answer. To combine with the file writing operation, I used this answer to produce the following snippet: data = df.to_dict('records') output = open('test.json', 'w') output.write('\n'.join([json.dumps(record) for record in data])) output.close() Jul 29, 2020 at 23:12
26

If you are willing to get out of Python, use jq:

$ cat a.json 
[{
    "key01": "value01",
    "key02": "value02",
    "keyN": "valueN"
},
{
    "key01": "value01",
    "key02": "value02",
    "keyN": "valueN"
},
{
    "key01": "value01",
    "key02": "value02",
    "keyN": "valueN"
}
]


$ cat a.json | jq -c '.[]'
{"key01":"value01","key02":"value02","keyN":"valueN"}
{"key01":"value01","key02":"value02","keyN":"valueN"}
{"key01":"value01","key02":"value02","keyN":"valueN"}

The iterator I used is '.[]' to go through the array, and -c puts each JSON object on a single line.

Resources:

6
  • Very efficient way of converting. Will implement this when using jq.
    – Fxs7576
    Jul 14, 2018 at 5:15
  • Hi, do you also have the command to perform the opposite action? From new-line delimited to well-formed json array Jun 9, 2019 at 16:51
  • Perfect. But at first, I mistakenly grabbed jq via npm which didn't work out very well.
    – bvj
    Mar 14, 2020 at 0:55
  • Within node.js, I was able to use the node-jq library to do the same. jq.run('.[]', 'data.json', {output: 'compact'}) .then((output) => { dataStream.push(output) dataStream.push(null) dataStream.pipe(gcFile.createWriteStream({ resumable: false, validation: false, metadata: { 'Cache-Control': 'public, max-age=31536000' } })) }) .catch((err) => { console.log(err) }) Jun 10, 2020 at 5:29
  • How do you install jq? according to the jq page linked (stedolan.github.io/jq/download), I should "Use Chocolatey NuGet to install jq 1.5 with chocolatey install jq" - I've never heard of chocolatey before and don't get why i need to install more stuff to get to jq?
    – J.D
    Apr 11, 2023 at 16:14
13

This takes a JSON file and converts into ND-JSON file.

import json

with open("results-20190312-113458.json", "r") as read_file:
    data = json.load(read_file)
result = [json.dumps(record) for record in data]
with open('nd-proceesed.json', 'w') as obj:
    for i in result:
        obj.write(i+'\n')

Hope this helps someone.

2
  • 1
    This method can easily be adapted to write streaming data.
    – denson
    Jan 26, 2022 at 20:17
  • 3
    This wont iterate inside nested objects.
    – sa_penguin
    Apr 24, 2023 at 14:44
0
with open('out.json', 'w') as f:
  for obj in objs:
    json.dump(obj, f)
    f.write('\n')
0

if the files are large you may want to use a faster module such as msgspec or orjson as they use c (or c++ I don't fully know but there faster)

example:

  • read
with open('test.json', 'rb') as f:
    j = msgspec.json.decode(f.read())
    
j = b'\n'.join(map(msgspec.json.encode, j))
  • write
with open('test.json', 'wb') as f:
    f.write(j)

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