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I noticed this problem when a computer running Ubuntu was updated recently and the default version of Python changed to 2.7.

import json
import numpy as np

json.dumps(list(np.arange(5))) # Fails, throws a "TypeError: 0 is not JSON serializable"
json.dumps(np.arange(5).tolist()) # Works 

Is there a difference between list() and the tolist() methd of a numpy array?

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4  
Excellent first question, by the way. Welcome to stackoverflow! If one of the answers (DSM's looks great) solves your problem, feel free to accept it. –  phihag Jul 19 '12 at 13:39

3 Answers 3

up vote 17 down vote accepted

It looks like the tolist() method turns the numpy int32 (or whatever size you have) back into an int, which JSON knows what to do with:

>>> list(np.arange(5))
[0, 1, 2, 3, 4]
>>> type(list(np.arange(5)))
<type 'list'>
>>> type(list(np.arange(5))[0])
<type 'numpy.int32'>
>>> np.arange(5).tolist()
[0, 1, 2, 3, 4]
>>> type(np.arange(5).tolist())
<type 'list'>
>>> type(np.arange(5).tolist()[0])
<type 'int'>

As the docs say for tolist():

Return the array as a (possibly nested) list.

Return a copy of the array data as a (nested) Python list. Data items are converted to the nearest compatible Python type.

The last line makes the difference here.

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Do you know if this a recent change? The code used to work before the system got upgraded. –  azeey Jul 19 '12 at 13:40
    
Not sure, I'm afraid-- not even sure if the change was in numpy (say a type renaming) or on the Python JSON side (maybe it used to try harder to deal with unknown types?) –  DSM Jul 19 '12 at 14:57
    
Simple solution by explicitly passing a default handler for non-serializable objects. –  johntex Aug 22 '13 at 5:41

Because the elements of a NumPy array are not native ints, but of NUmPy's own types:

>>> type(np.arange(5)[0])
<type 'numpy.int64'>

You can use a custom JSONEncoder to support the ndarray type returned by arange:

import numpy as np
import json

class NumPyArangeEncoder(json.JSONEncoder):
    def default(self, obj):
        if isinstance(obj, np.ndarray):
            return obj.tolist() # or map(int, obj)
        return json.JSONEncoder.default(self, obj)

print(json.dumps(np.arange(5), cls=NumPyArangeEncoder))
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The problem is that with the first you don't get an int. You get a numpy.int64. That cannot be serialized.

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