# How do you do natural logs (e.g. "ln()") with numpy in Python?

Using numpy, how can I do the following:

``````ln(x)
``````

Is it equivalent to:

``````np.log(x)
``````

I apologise for such a seemingly trivial question, but my understanding of the difference between `log` and `ln` is that `ln` is logspace e?

`np.log` is `ln`, whereas `np.log10` is your standard base 10 log.

• For those who were wondering what np is, like myself "import numpy as np" Jul 23, 2014 at 0:50

Correct, `np.log(x)` is the Natural Log (base `e` log) of `x`.

For other bases, remember this law of logs: `log-b(x) = log-k(x) / log-k(b)` where `log-b` is the log in some arbitrary base `b`, and `log-k` is the log in base `k`, e.g.

here k = `e`

``````l = np.log(x) / np.log(100)
``````

and `l` is the log-base-100 of x

• what about loss of precision?
– qwr
Aug 9, 2019 at 14:36

I usually do like this:

``````from numpy import log as ln
``````

Perhaps this can make you more comfortable.

• Even more consequent `from numpy import log as ln, log10 as log`; but probably not so advisable. Dec 21, 2022 at 20:29

Numpy seems to take a cue from MATLAB/Octave and uses `log` to be "log base e" or `ln`. Also like MATLAB/Octave, Numpy does not offer a logarithmic function for an arbitrary base.

If you find `log` confusing you can create your own object `ln` that refers to the numpy.log function:

``````>>> import numpy as np
>>> from math import e
>>> ln = np.log  # assign the numpy log function to a new function called ln
>>> ln(e)
1.0
``````
``````from numpy.lib.scimath import logn
from math import e

#using: x - var
logn(e, x)
``````

You could simple just do the reverse by making the base of log to e.

``````import math

e = 2.718281

math.log(e, 10) = 2.302585093
ln(10) = 2.30258093
``````
• note `math.e` exists and `math.log` takes the base 2nd. so `math.log(10, math.e)` is correct, while the above would actually return ~0.43... Jan 15, 2021 at 3:21