# Double precision floating values in Python?

Are there data types with better precision than float?

• This is actually two questions with different answers. 1: double precision values in python are floats, and 2: a better precision data type than float would be decimal. Can questions like this be split somehow? The accepted answer addresses #2, but most upvoted answer addresses #1. Commented Mar 15, 2019 at 14:30

Python's built-in `float` type has double precision (it's a C `double` in CPython, a Java `double` in Jython). If you need more precision, get NumPy and use its `numpy.float128`.

• Apparently, `numpy.float128` often has 64 bit precision on a 64 bit system. `numpy.float128(1) + numpy.float128(2**-64) - numpy.float128(1)` returns `0.0`. See stackoverflow.com/a/29821557/420755
– Jeff
Commented Feb 24, 2016 at 18:52
• 0.1 + 0.2 is not exact 0.3 in python, in every other language this is a float problem but never a double problem. Why it is not exact 0.3 in python? Commented Dec 29, 2020 at 4:23
• @FuscaSoftware It's a problem in other languages too. IEEE doubles can't represent 0.3 exactly. That sounds like a formatting artifact. Commented Dec 29, 2020 at 7:29
• Funnily enough this was not mentioned in their documentation page, or any other page that speaks about "float precision" in Python. Commented Jan 18, 2023 at 21:42

Decimal datatype

• Unlike hardware based binary floating point, the decimal module has a user alterable precision (defaulting to 28 places) which can be as large as needed for a given problem.

If you are pressed by performance issuses, have a look at GMPY

• If I were asking the original question, then @larsmans's would be the answer (even though formally it's off-topic). Commented Feb 6, 2016 at 14:25
• @PiotrFindeisen where is that answer? Commented Jun 12, 2017 at 13:55
• No idea, but now I'd refer to @FredFoo. Generally "Double precision floating values in Python?" → "`float`-s are double precision" Commented Jun 13, 2017 at 10:00

For some applications you can use `Fraction` instead of floating-point numbers.

``````>>> from fractions import Fraction
>>> Fraction(1, 3**54)
Fraction(1, 58149737003040059690390169)
``````

(For other applications, there's `decimal`, as suggested out by the other responses.)

• how do I choose between Decimal and Fraction? Fraction seems better since it can represent continuing fractions which I guess Decimal can't? Commented Nov 26, 2012 at 13:44
• @Janus: consider your requirements, and pick the one that fits them better. Use `Decimal` when you want to work with approximate numbers that have fixed (but configurable) precision. Use `Fraction` when you want to work with exact ratios, and are prepared to put up with their unbounded storage requirements. Commented Nov 26, 2012 at 17:10
• Does Fraction support all the operations you can do with float? Commented Jan 14, 2015 at 10:18

May be you need Decimal

``````>>> from decimal import Decimal
>>> Decimal(2.675)
Decimal('2.67499999999999982236431605997495353221893310546875')
``````

Floating Point Arithmetic

Here is my solution. I first create random numbers with random.uniform, format them in to string with double precision and then convert them back to float. You can adjust the precision by changing '.2f' to '.3f' etc..

``````import random
from decimal import Decimal

GndSpeedHigh = float(format(Decimal(random.uniform(5, 25)), '.2f'))
GndSpeedLow = float(format(Decimal(random.uniform(2, GndSpeedHigh)), '.2f'))
GndSpeedMean = float(Decimal(format(GndSpeedHigh + GndSpeedLow) / 2, '.2f')))
print(GndSpeedMean)
``````
• Well. Double precision means double length binary representation of variable compared to binary representation of float. Not two decimal places. Commented Mar 31, 2015 at 15:27
• You are right. I might have used bad search criteria when I had this problem myself and this is the outcome. Some others might search this same issue like I did and end up here. Hopefully they find some relief. :) Commented Apr 2, 2015 at 6:18
• This is the worst way I can think of to round a float to two decimal places. You should at least use `numpy.floor(100*a)/100` to truncate a number `a` to two decimal places. Commented Dec 16, 2020 at 10:59