# Is there a way to easily get the logarithm of a np.ndarray containing errors

If I have a `np.array` of values, `Y`, with a `no.array` of corresponding errors, `Err`, the error in the log scale will be

``````Err_{log} =  log(Y+Err) - log(Y) = log ((Y+Err)/Y)
``````

While I can place this in my code, this isn't much readable. Is there a function that does that?

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It seems to me that calculating `Err_log = np.log(Err/Y + 1)` doesn't get much more readable than that. – morningsun Nov 19 '13 at 16:01
You could also use `np.log1p`, e.g. `Err_log = np.log1p(Err/Y)` – Warren Weckesser Nov 19 '13 at 17:02
@Warren I didn't see that one coming, great! That function has interesting properties. – morningsun Nov 19 '13 at 23:30
@WarrenWeckesser I knew that there is more elegant way to do this. Thanks. – Yotam Nov 20 '13 at 9:08
@SaulloCastro: Sure. – Warren Weckesser Nov 20 '13 at 14:37

## 1 Answer

NumPy has the function `log1p(x)` that computes the log of 1+x. So you could write:

``````Err_log = np.log1p(Err/Y)
``````
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