# numpy: log with -inf not nans

Is there an efficient way to write a log-like function for a numpy array that gives `-inf` for negative numbers?

The behaviour I would like is:

``````>>> log_inf(exp(1))
1.0

>>> log_inf(0)
-inf

>>> log_inf(-1)
-inf
``````

with `-inf` returned for any negative numbers.

EDIT: At the moment I am using `clip` to substitute negative numbers for `0`, it works but is it efficient?

-

For numpy arrays you can calculate the log and then apply a simple mask.

``````>>> a=np.exp(np.arange(-3,3,dtype=np.float))
>>> b=np.log(a)
>>> b
array([-3., -2., -1.,  0.,  1.,  2.])

>>> b[b<=0]=-np.inf
>>> b
array([-inf, -inf, -inf, -inf,   1.,   2.])
``````

To save a bit of time and to have the option of calling in place or creating a new array:

``````def inf_log(arr,copy=False):
if copy==True:
out=arr.copy()
return out
else:
``````
-

You could use `numpy.log` with a conditional test for negative numbers:

``````>>> def log_inf(x):
print np.log(x) if x>0 else -float('Inf')
>>> log_inf(-1)
-inf
>>> log_inf(0)
-inf
>>> log_inf(np.exp(1))
1.0
``````
-

Given for instance a base `10` log where `log(x)` is the inverse of `10**x=100`, it is mathematically impossible to achieve `10**(-inf)==-1`.

But it is possible to achieve `10**(-inf)==0`. In `numpy` you already get:

``````np.log(0)==-np.inf
#True
``````

and:

``````10**(-np.inf)==0
#True
``````
-