# numpy: Invalid value encountered in true_divide

I have two numpy arrays and I am trying to divide one with the other and at the same time, I want to make sure that the entries where the divisor is 0, should just be replaced with 0.

So, I do something like:

``````log_norm_images = np.where(b_0 > 0, np.divide(diff_images, b_0), 0)
``````

This gives me a run time warning of:

``````RuntimeWarning: invalid value encountered in true_divide
``````

Now, I wanted to see what was going on and I did the following:

``````xx = np.isfinite(diff_images)
print (xx[xx == False])

xx = np.isfinite(b_0)
print (xx[xx == False])
``````

However, both of these return empty arrays meaning that all the values in the arrays are finite. So, I am not sure where the invalid value is coming from. I am assuming checking b_0 > 0 in the np.where function takes care of the divide by 0.

The shape of the two arrays are (96, 96, 55, 64) and (96, 96, 55, 1)

• Why would `xx` be `False` and a dict? – seequ Jan 8 '15 at 14:53
• I think isfinite returns a boolean array. So, I am looking for places where the values are NOT finite. – Luca Jan 8 '15 at 14:54
• Try `[x for x in xx if x == False]`. You're just trying to fetch the key `False` – seequ Jan 8 '15 at 14:55
• You mean like this: print (xx[x for x in xx if x == False]). This raises a syntax error. – Luca Jan 8 '15 at 14:59
• Related I guess: stackoverflow.com/q/26248654/846892 – Ashwini Chaudhary Jan 8 '15 at 15:05

You may have a `NAN`, `INF`, or `NINF` floating around somewhere. Try this:

``````np.isfinite(diff_images).all()
np.isfinite(b_0).all()
``````

If one or both of those returns `False`, that's likely the cause of the runtime error.

• This raises The truth value of an array with more than one element is ambiguous. Use a.any() or a.all() – Luca Jan 8 '15 at 15:00
• @Luca Sorry, edited the answer - I forgot you were dealing with multidimensional arrays for a second. :) – rchang Jan 8 '15 at 15:02
• Thanks. They both return true though :/ – Luca Jan 8 '15 at 15:19
• It seems like you can safely ignore the warning. I tried doing this with two random arrays (and an arbitrary element in one of the arrays set to 0) - I get the runtime warning the first time I run `np.where`, but if I repeat the exact same expression a second time I don't get the warning. – rchang Jan 8 '15 at 15:40
• I decided to ignore this after verifying that the output indeed looks like it should. So, using "with np.errstate(invalid='ignore', divide='ignore'):" – Luca Jan 8 '15 at 22:58

Another useful Numpy command is nan_to_num(diff_images) By default it replaces in a Numpy array; NaN to zero, -INF to -(large number) and +INF to +(large number)

You can change the defaults, see https://numpy.org/doc/stable/reference/generated/numpy.nan_to_num.html