# removing data from a numpy.array

I have a rank-1 numpy.array of which I want to make a boxplot. However, I want to exclude all values equal to zero in the array ... Currently, I solved this by looping the array and copy the value to a new array if not equal to zero. However, as the array consists of 86 000 000 values and i have to do this multiple times, this takes a lot of patience.

Is there a more intelligent way to do this ?

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this is a case where you want to use masked arrays, it keeps the shape of your array and it is automatically recognized by all numpy and matplotlib functions.

``````X = np.random.randn(1e3, 5)
X[np.abs(X)< .1]= 0 # some zeros
plt.boxplot(X) #masked values are not plotted

X.compressed() # get normal array with masked values removed
``````
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link to documentation: docs.scipy.org/doc/numpy/reference/routines.ma.html –  Andrea Zonca May 10 '11 at 21:51

I would like to suggest you to simply utilize `NaN` for cases like this, where you'll like to ignore some values, but still want to keep the procedure statistical as meaningful as possible. So

``````In []: X= randn(1e3, 5)
In []: X[abs(X)< .1]= NaN
In []: isnan(X).sum(0)
Out[: array([82, 84, 71, 81, 73])
In []: boxplot(X)
``````

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ah, the use of NaN seems indeed more appropriate here, thank you. As such i no longer need to copy my data to a new array with different sizing but i can keep the original array and as such location in the array. Thank you ! –  ruben baetens May 8 '11 at 17:10
do you perhaps know a manner to loop this using list comprehension ? i.e. i'm having a dictionary `a` where `a[k]` is a NumPy array so i wanted to do `[a[k][abs(a[k])<.1]=float('NaN') for k in data]` but this seems to fail in the loop, whereas only executing the command in the loop seems to work ... –  ruben baetens May 8 '11 at 17:29
@rubae: I think you should make a separate question related to this list comprehension issue. Unfortunately it's not anymore so straightforward to figure out what you are actually aiming for :(. As far as I can guess; don't get fooled out with the list comprehension, perhaps you are only looking for something simple like this: `for k in data: a[k][abs(a[k])< .1]= NaN`? –  eat May 8 '11 at 19:22

For a NumPy array `a`, you can use

``````a[a != 0]
``````

to extract the values not equal to zero.

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Thank you very much, this works indeed much (!) more faster. Does similar action ca be done on higher rank NumMpy array or matrix ? Because here, the problem occurs that dimenions will no longer match properly ... –  ruben baetens May 8 '11 at 12:07
@rubae: If `a` has higher dimension, the result will be a flattened (one dimensional) array. It would also be possible to remove columns or rows that are all zero. –  Sven Marnach May 8 '11 at 12:51