I am using the standard json module in python 2.6 to serialize a list of floats. However, I'm getting results like this:

>>> import json
>>> json.dumps([23.67, 23.97, 23.87])
'[23.670000000000002, 23.969999999999999, 23.870000000000001]'

I want the floats to be formated with only two decimal digits. The output should look like this:

>>> json.dumps([23.67, 23.97, 23.87])
'[23.67, 23.97, 23.87]'

I have tried defining my own JSON Encoder class:

class MyEncoder(json.JSONEncoder):
    def encode(self, obj):
        if isinstance(obj, float):
            return format(obj, '.2f')
        return json.JSONEncoder.encode(self, obj)

This works for a sole float object:

>>> json.dumps(23.67, cls=MyEncoder)

But fails for nested objects:

>>> json.dumps([23.67, 23.97, 23.87])
'[23.670000000000002, 23.969999999999999, 23.870000000000001]'

I don't want to have external dependencies, so I prefer to stick with the standard json module.

How can I achieve this?

11 Answers 11

up vote 67 down vote accepted

Unfortunately, I believe you have to do this by monkey-patching (which, to my opinion, indicates a design defect in the standard library json package). E.g., this code:

import json
from json import encoder
encoder.FLOAT_REPR = lambda o: format(o, '.2f')

print json.dumps(23.67)
print json.dumps([23.67, 23.97, 23.87])


[23.67, 23.97, 23.87]

as you desire. Obviously, there should be an architected way to override FLOAT_REPR so that EVERY representation of a float is under your control if you wish it to be; but unfortunately that's not how the json package was designed:-(.

  • 8
    This solution does not work in Python 2.7 using Python's C version of the JSON encoder. – Nelson Apr 6 '11 at 23:14
  • 18
    However you do this, use something like %.15g or %.12g instead of %.3f . – Guido van Rossum Mar 12 '13 at 21:04
  • 19
    I found this snippet in a junior programmer's code. This would have created a very serious but subtle bug if it had not been caught. Can you please place a warning on this code explaining the global implications of this monkey patching. – Rory Hart Apr 25 '13 at 3:13
  • 9
    It's good hygiene to set it back when you're done: original_float_repr = encoder.FLOAT_REPR encoder.FLOAT_REPR = lambda o: format(o, '.2f') print json.dumps(1.0001) encoder.FLOAT_REPR = original_float_repr – Jeff Kaufman Oct 18 '13 at 17:05
  • 2
    in python 3 this does not work any more – Wang May 15 at 13:07
import simplejson

class PrettyFloat(float):
    def __repr__(self):
        return '%.15g' % self

def pretty_floats(obj):
    if isinstance(obj, float):
        return PrettyFloat(obj)
    elif isinstance(obj, dict):
        return dict((k, pretty_floats(v)) for k, v in obj.items())
    elif isinstance(obj, (list, tuple)):
        return map(pretty_floats, obj)             
    return obj

print simplejson.dumps(pretty_floats([23.67, 23.97, 23.87]))


[23.67, 23.97, 23.87]

No monkeypatching necessary.

  • 2
    I like this solution; better integration, and works with 2.7. Because I am building up the data myself anyway, I eliminated the pretty_floats function and simply integrated it into my other code. – mikepurvis Feb 22 '12 at 21:25

If you're using Python 2.7, a simple solution is to simply round your floats explicitly to the desired precision.

>>> sys.version
'2.7.1 (r271:86832, Nov 27 2010, 18:30:46) [MSC v.1500 32 bit (Intel)]'
>>> json.dumps(1.0/3.0)
>>> json.dumps(round(1.0/3.0, 2))

This works because Python 2.7 made float rounding more consistent. Unfortunately this does not work in Python 2.6:

>>> sys.version
'2.6.6 (r266:84292, Dec 27 2010, 00:02:40) \n[GCC 4.4.5]'
>>> json.dumps(round(1.0/3.0, 2))

The solutions mentioned above are workarounds for 2.6, but none are entirely adequate. Monkey patching json.encoder.FLOAT_REPR does not work if your Python runtime uses a C version of the JSON module. The PrettyFloat class in Tom Wuttke's answer works, but only if %g encoding works globally for your application. The %.15g is a bit magic, it works because float precision is 17 significant digits and %g does not print trailing zeroes.

I spent some time trying to make a PrettyFloat that allowed customization of precision for each number. Ie, a syntax like

>>> json.dumps(PrettyFloat(1.0 / 3.0, 4))

It's not easy to get this right. Inheriting from float is awkward. Inheriting from Object and using a JSONEncoder subclass with its own default() method should work, except the json module seems to assume all custom types should be serialized as strings. Ie: you end up with the Javascript string "0.33" in the output, not the number 0.33. There may be a way yet to make this work, but it's harder than it looks.

  • Another approach for Python 2.6 using JSONEncoder.iterencode and pattern matching can be seen at github.com/migurski/LilJSON/blob/master/liljson.py – Nelson Nov 21 '12 at 18:35
  • Hopefully this makes passing around your floats more lightweight - I like how we can avoid messing with the JSON classes which can suck. – Lincoln B Dec 25 '12 at 2:11

You can do what you need to do, but it isn't documented:

>>> import json
>>> json.encoder.FLOAT_REPR = lambda f: ("%.2f" % f)
>>> json.dumps([23.67, 23.97, 23.87])
'[23.67, 23.97, 23.87]'

If you're stuck with Python 2.5 or earlier versions: The monkey-patch trick does not seem to work with the original simplejson module if the C speedups are installed:

$ python
Python 2.5.4 (r254:67916, Jan 20 2009, 11:06:13) 
[GCC 4.2.1 (SUSE Linux)] on linux2
Type "help", "copyright", "credits" or "license" for more information.
>>> import simplejson
>>> simplejson.__version__
>>> simplejson._speedups
<module 'simplejson._speedups' from '/home/carlos/.python-eggs/simplejson-2.0.9-py2.5-linux-i686.egg-tmp/simplejson/_speedups.so'>
>>> simplejson.encoder.FLOAT_REPR = lambda f: ("%.2f" % f)
>>> simplejson.dumps([23.67, 23.97, 23.87])
'[23.670000000000002, 23.969999999999999, 23.870000000000001]'
>>> simplejson.encoder.c_make_encoder = None
>>> simplejson.dumps([23.67, 23.97, 23.87])
'[23.67, 23.97, 23.87]'

Really unfortunate that dumps doesn't allow you to do anything to floats. However loads does. So if you don't mind the extra CPU load, you could throw it through the encoder/decoder/encoder and get the right result:

>>> json.dumps(json.loads(json.dumps([.333333333333, .432432]), parse_float=lambda x: round(float(x), 3)))
'[0.333, 0.432]'
  • Thank you, this is really helpful suggestion. I didn't know about the parse_float kwarg! – Anonymous Dec 7 '16 at 1:31
  • The simplest suggestion here that also works in 3.6. – Brent Faust Mar 27 at 2:13
  • Note the phrase "don't mind the extra CPU load". Definitely do not use this solution if you have a lot of data to serialize. For me, adding this alone made a program doing a non-trivial calculation take 3X longer. – ShaneB Jun 29 at 16:16

Alex Martelli's solution will work for single threaded apps, but may not work for multi-threaded apps that need to control the number of decimal places per thread. Here is a solution that should work in multi threaded apps:

import threading
from json import encoder

def FLOAT_REPR(f):
    Serialize a float to a string, with a given number of digits
    decimal_places = getattr(encoder.thread_local, 'decimal_places', 0)
    format_str = '%%.%df' % decimal_places
    return format_str % f

encoder.thread_local = threading.local()
encoder.FLOAT_REPR = FLOAT_REPR     

#As an example, call like this:
import json

encoder.thread_local.decimal_places = 1
json.dumps([1.56, 1.54]) #Should result in '[1.6, 1.5]'

You can merely set encoder.thread_local.decimal_places to the number of decimal places you want, and the next call to json.dumps() in that thread will use that number of decimal places

When importing the standard json module, it is enough to change the default encoder FLOAT_REPR. There isn't really the need to import or create Encoder instances.

import json
json.encoder.FLOAT_REPR = lambda o: format(o, '.2f')

json.dumps([23.67, 23.97, 23.87]) #returns  '[23.67, 23.97, 23.87]'

Sometimes is also very useful to output as json the best representation python can guess with str. This will make sure signifficant digits are not ignored.

import json
json.dumps([23.67, 23.9779, 23.87489])
# output is'[23.670000000000002, 23.977900000000002, 23.874890000000001]'

json.encoder.FLOAT_REPR = str
json.dumps([23.67, 23.9779, 23.87489])
# output is '[23.67, 23.9779, 23.87489]'


  • Works with any JSON encoder, or even python's repr.
  • Short(ish), seems to work.


  • Ugly regexp hack, barely tested.
  • Quadratic complexity.

    def fix_floats(json, decimals=2, quote='"'):
        pattern = r'^((?:(?:"(?:\\.|[^\\"])*?")|[^"])*?)(-?\d+\.\d{'+str(decimals)+'}\d+)'
        pattern = re.sub('"', quote, pattern) 
        fmt = "%%.%df" % decimals
        n = 1
        while n:
            json, n = re.subn(pattern, lambda m: m.group(1)+(fmt % float(m.group(2)).rstrip('0')), json)
        return json

If you need to do this in python 2.7 without overriding the global json.encoder.FLOAT_REPR, here's one way.

import json
import math

class MyEncoder(json.JSONEncoder):
    "JSON encoder that renders floats to two decimal places"

    FLOAT_FRMT = '{0:.2f}'

    def floatstr(self, obj):
        return self.FLOAT_FRMT.format(obj)

    def _iterencode(self, obj, markers=None):
        # stl JSON lame override #1
        new_obj = obj
        if isinstance(obj, float):
            if not math.isnan(obj) and not math.isinf(obj):
                new_obj = self.floatstr(obj)
        return super(MyEncoder, self)._iterencode(new_obj, markers=markers)

    def _iterencode_dict(self, dct, markers=None):
        # stl JSON lame override #2
        new_dct = {}
        for key, value in dct.iteritems():
            if isinstance(key, float):
                if not math.isnan(key) and not math.isinf(key):
                    key = self.floatstr(key)
            new_dct[key] = value
        return super(MyEncoder, self)._iterencode_dict(new_dct, markers=markers)

Then, in python 2.7:

>>> from tmp import MyEncoder
>>> enc = MyEncoder()
>>> enc.encode([23.67, 23.98, 23.87])
'[23.67, 23.98, 23.87]'

In python 2.6, it doesn't quite work as Matthew Schinckel points out below:

>>> import MyEncoder
>>> enc = MyEncoder()  
>>> enc.encode([23.67, 23.97, 23.87])
'["23.67", "23.97", "23.87"]'
  • 3
    Those look like strings, not numbers. – Matthew Schinckel Jan 14 '12 at 12:57
  • Does it work at any level of nesting? – Mark Nov 30 '16 at 12:37

I agree with @Nelson that inheriting from float is awkward, but perhaps a solution that only touches the __repr__ function might be forgiveable. I ended up using the decimal package for this to reformat floats when needed. The upside is that this works in all contexts where repr() is being called, so also when simply printing lists to stdout for example. Also, the precision is runtime configurable, after the data has been created. Downside is of course that your data needs to be converted to this special float class (as unfortunately you cannot seem to monkey patch float.__repr__). For that I provide a brief conversion function.

The code:

import decimal
C = decimal.getcontext()

class decimal_formatted_float(float):
   def __repr__(self):
       s = str(C.create_decimal_from_float(self))
       if '.' in s: s = s.rstrip('0')
       return s

def convert_to_dff(elem):
        return elem.__class__(map(convert_to_dff, elem))
        if isinstance(elem, float):
            return decimal_formatted_float(elem)
            return elem

Usage example:

>>> import json
>>> li = [(1.2345,),(7.890123,4.567,890,890.)]
>>> decimal.getcontext().prec = 15
>>> dff_li = convert_to_dff(li)
>>> dff_li
[(1.2345,), (7.890123, 4.567, 890, 890)]
>>> json.dumps(dff_li)
'[[1.2345], [7.890123, 4.567, 890, 890]]'
>>> decimal.getcontext().prec = 3
>>> dff_li = convert_to_dff(li)
>>> dff_li
[(1.23,), (7.89, 4.57, 890, 890)]
>>> json.dumps(dff_li)
'[[1.23], [7.89, 4.57, 890, 890]]'

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