192

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))
5
  • 1
    This doesn't appear to "duplicate" that question ..
    – user166390
    Aug 13, 2012 at 21:17
  • 13
    I found my problem. The issue was that my integers were actually type numpy.int64. Aug 13, 2012 at 21:18
  • @user1329894 Post as a solution/explanation and self-close ..
    – user166390
    Aug 13, 2012 at 21:19
  • -0 for writing a minimal repro that doesn't actually reproduce the bug. Aug 13, 2012 at 21:39
  • The underlying problem is the same: data that looks like an "ordinary" type, but is a different type that doesn't support serialization. In this case it was a Numpy numeric type instead of int; in the other case, a custom mapping instead of dict. Sep 8, 2022 at 7:06

10 Answers 10

302

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

11
  • 23
    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, 2013 at 17:35
  • 20
    That'd be nice if the JSON unserializable error message could display the type of the object... Jul 21, 2015 at 19:41
  • 6
    Here is a tidy solution that uses a custom serializer.
    – Owen
    Jun 17, 2016 at 0:03
  • 23
    That's the problem, but what's the solution? May 1, 2018 at 16:12
  • 6
    x.astype(int) or int(x)
    – zelcon
    May 14, 2018 at 9:58
70

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

json.dumps({'value': numpy.int64(42)}, default=convert)
1
  • A wonderful workaround provided by Serhiy. Please check his approach. And to add, just: json.dumps(yourObject, default=default); like here.
    – Pranzell
    Apr 16, 2019 at 15:30
12

as @JAC pointed out in the comments of the highest rated answer, the generic solution (for all numpy types) can be found in the thread Converting numpy dtypes to native python types.

Nevertheless, I´ll add my version of the solution below, as my in my case I needed a generic solution that combines these answers and with the answers of the other thread. This should work with almost all numpy types.

def convert(o):
    if isinstance(o, np.generic): return o.item()  
    raise TypeError

json.dumps({'value': numpy.int64(42)}, default=convert)
1
  • Nice answer indeed
    – jtlz2
    Mar 26, 2020 at 12:04
10

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)
8

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

0
6

This might be the late response, but recently i got the same error. After lot of surfing this solution helped me.

alerts = {'upper':[1425],'lower':[576],'level':[2],'datetime':['2012-08-08 15:30']}
def myconverter(obj):
        if isinstance(obj, np.integer):
            return int(obj)
        elif isinstance(obj, np.floating):
            return float(obj)
        elif isinstance(obj, np.ndarray):
            return obj.tolist()
        elif isinstance(obj, datetime.datetime):
            return obj.__str__()

Call myconverter in json.dumps() like below. json.dumps(alerts, default=myconverter).

4

This solved the problem for me:

def serialize(self):
    return {
        my_int: int(self.my_int), 
        my_float: float(self.my_float)
    }
4

Same problem. List contained numbers of type numpy.int64 which throws a TypeError. Quick workaround for me was to

mylist = eval(str(mylist_of_integers))
json.dumps({'mylist': mylist})

which converts list to str() and eval() function evaluates the String like a Python expression and returns the result as a list of integers in my case.

1
  • Just noticed eval(str()) is very slow so use with caution. @shiva's answer is much better: json.dumps(alerts, default=myconverter)
    – user319436
    Apr 24, 2020 at 0:06
3

Use the below code to resolve the issue.

import json
from numpyencoder import NumpyEncoder
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',cls=NumpyEncoder))
afile.close()
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

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