Value for epsilon in Python

Is there a standard value for (or method for obtaining) epsilon in Python? I need to compare floating point values and want to compare against the smallest possible difference.

In C++ there's a function provided `numeric_limits::epsilon( )` which gives the epsilon value for any given data type. Is there an equivalent in Python?

• When comparing floats, the magnitude of the values will affect the epsilon. – John La Rooy Mar 2 '12 at 5:38
• Consider also that error in values can propagate across operations. The field "Numerical Analysis" is devoted to the study of this. This site also provides some good rules to follow. – Casey Kuball May 9 '12 at 20:03
• As an example to people's comment above, `1e300-(1e300-1e200)` return `0.0`, where the actual difference must be 10^200. – THN Sep 28 '18 at 1:57

The information is available in `sys.float_info`, which corresponds to float.h in C99.

``````>>> import sys
>>> sys.float_info.epsilon
2.220446049250313e-16
``````

As strcat posted, there is `sys.float_info.epsilon`.

But don't forget the pitfalls of using it as an absolute error margin for floating point comparisons. E.g. for large numbers, rounding error could exceed epsilon.

If you think you need a refresher, the standard reference is David Goldberg's What Every Computer Scientist Should Know About Floating-Point Arithmetic, or for a simpler review you can check out The Floating Point Guide.

If you cannot find a function to do that, remember that the algorithm to calculate the machine epsilon is very easy (you can test with your favourite programming language).E.g, for python:

``````eps = 1.0
while eps + 1 > 1:
eps /= 2
eps *= 2
print("The machine epsilon is:", eps)
``````

In my case, I got:

`The machine epsilon is: 2.220446049250313e-16`

• nice way to generate eps but why you call it machine precision? – gfdsal Jul 3 '20 at 20:23
• @gfdsal: Thanks, I think machine epsilon should be the exact term. – s.ouchene Jul 3 '20 at 20:32

Surprised nobody mentioned this here; I think many people would use numpy.finfo( type(variable) ).eps instead. Or `.resolution` if it is to assess precision.

Note that `finfo` is only for floating point types, and that it also works with Python's own `float` type (i.e. not restricted to numpy's types). The equivalent for integer types is `iinfo`, though it does not contain precision information (because, well, why would it?).

• Disagreed about the "most people": not everyone uses NumPy. If you want the epsilon for Python's `float`, use `sys.float_info`; it would be strange to use NumPy just for that. If you're after values for NumPy types (`np.float32`, `np.float64`, etc.), then use `numpy.finfo`. – Mark Dickinson Mar 3 '18 at 9:48
• Changed the wording. To clarify though, `np.finfo(float)` does work, but I agree that if you never use numpy, then it would be overkill to install the package just for that. – Jonathan H Mar 3 '18 at 17:36
• Right, but `np.finfo(float)` is a bit misleading, since NumPy immediately converts the `float` to `np.float64`, and then reports details for that. So it's reporting on a NumPy type again, not on Python's `float`. (Though admittedly, it's overwhelmingly likely that `float` and `np.float64` are the same format: they're both using C doubles under the hood.) – Mark Dickinson Mar 3 '18 at 18:39