127

I am trying to send a simple dictionary to a json file from python, but I keep getting the "TypeError: 1425 is not JSON serializable" message.

import json
alerts = {'upper':[1425],'lower':[576],'level':[2],'datetime':['2012-08-08 15:30']}
afile = open('test.json','w')
afile.write(json.dumps(alerts,encoding='UTF-8'))
afile.close()

If I add the default argument, then it writes, but the integer values are written to the json file as strings, which is undesirable.

afile.write(json.dumps(alerts,encoding='UTF-8',default=str))
235

I found my problem. The issue was that my integers were actually type numpy.int64.

  • 19
    I had to deal with this issue too, and your answer pointed me in the right direction. I just wanted to add a link to another question that can help in actually solving the problem. – JAC Nov 25 '13 at 17:35
  • 17
    That'd be nice if the JSON unserializable error message could display the type of the object... – Franck Dernoncourt Jul 21 '15 at 19:41
  • 6
    Here is a tidy solution that uses a custom serializer. – Owen Jun 17 '16 at 0:03
  • 9
    That's the problem, but what's the solution? – BallpointBen May 1 '18 at 16:12
  • 3
    x.astype(int) or int(x) – zelcon May 14 '18 at 9:58
25

It seems like there may be a issue to dump numpy.int64 into json string in Python 3 and the python team already have a conversation about it. More details can be found here.

There is a workaround provided by Serhiy Storchaka. It works very well so I paste it here:

def default(o):
    if isinstance(o, numpy.int64): return int(o)  
    raise TypeError

json.dumps({'value': numpy.int64(42)}, default=default)
  • A wonderful workaround provided by Serhiy. Please check his approach. And to add, just: json.dumps(yourObject, default=default); like here. – Pranzell Apr 16 at 15:30
3

This solved the problem for me:

def serialize(self):
    return {
        my_int: int(self.my_int), 
        my_float: float(self.my_float)
    }
1

Alternatively you can convert your object into a dataframe first:

df = pd.DataFrame(obj)

and then save this dataframe in a json file:

df.to_json(path_or_buf='df.json')

Hope this helps

1

Just convert numbers from int64 (from numpy) to int.

For example, if variable x is a int64:

int(x)

If is array of int64:

map(int, x)
0

You have Numpy Data Type, Just change to normal int() or float() data type. it will work fine.

  • this is exactly what the OP says in his answer below... – duhaime Aug 30 '18 at 16:07

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