# Remove one value from a NumPy array

I am trying to all rows that only contain zeros from a NumPy array. For example, I want to remove `[0,0]` from

``````n = np.array([[1,2], [0,0], [5,6]])
``````

and be left with:

``````np.array([[1,2], [5,6]])
``````
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you want to remove a row based on its value or its index? –  Simon Apr 12 '12 at 8:40
Based on its value –  user1220022 Apr 12 '12 at 8:43
@user1220022: What kind of values do you want to test? any sequence? or only know whether there are only zeroes in the row? –  EOL Apr 12 '12 at 9:02
whether there are only zeros in the row –  user1220022 Apr 12 '12 at 10:33

You can use `numpy.delete` to remove specific rows or columns.

For example:

``````n = [[1,2], [0,0], [5,6]]

np.delete(n, 1, axis=0)
``````

The output will be:

``````array([[1, 2],
[5, 6]])
``````
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This deletes the second element right? I should of been more specific, I want to remove the element which is `[0,0]` and there will only be one of them. –  user1220022 Apr 12 '12 at 10:35

To remove the second row from a numpy table:

``````import numpy
n = numpy.array([[1,2],[0,0],[5,6]])
new_n = numpy.delete(n, 1, axis=0)
``````

To remove rows containing only 0:

``````import numpy
n = numpy.array([[1,2],[0,0],[5,6]])
idxs = numpy.any(n != 0, axis=1) # index of rows with at least one non zero value
n_non_zero = n[idxs, :] # selection of the wanted rows
``````
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`numpy.delete(n, numpy.s_[1], axis=0)` can be simplified as `numpy.delete(n, 1)`. Furthermore, `numpy.any(n != 0, axis=1)` can be simplified as `n.any(axis=1)`. And `n[idx,:]` can simply be replaced by `n[idx]`. –  EOL Apr 12 '12 at 8:56
PS: Sorry, `numpy.delete(n, numpy.s_[1], axis=0)` does need an axis parameter: it can be simplified as `numpy.delete(n, 1, axis=0)`. –  EOL Apr 12 '12 at 9:18

If you want to delete any row that only contains zeros, the fastest way I can think of is:

``````n = numpy.array([[1,2], [0,0], [5,6]])

keep_row = n.any(axis=1)  # Index of rows with at least one non-zero value
n_non_zero = n[keep_row]  # Rows to keep, only
``````

This runs much faster than Simon's answer, because `n.any()` stops checking the values of each row as soon as it encounters any non-zero value (in Simon's answer, all the elements of each row are compared to zero first, which results in unnecessary computations).

Here is a generalization of the answer, if you ever need to remove a rows that have a specific value (instead of removing only rows that only contain zeros):

``````n = numpy.array([[1,2], [0,0], [5,6]])

to_be_removed = [0, 0]  # Can be any row values: [5, 6], etc.
other_rows = (n != to_be_removed).any(axis=1)  # Rows that have at least one element that differs
n_other_rows = n[other_rows]  # New array with rows equal to to_be_removed removed.
``````

Note that this solution is not fully optimized: even if the first element of `to_be_removed` does not match, the remaining row elements from `n` are compared to those of `to_be_removed` (as in Simon's answer).

I'd be curious to know if there is a simple efficient NumPy solution to the more general problem of deleting rows with a specific value.

Using cython loops might be a fast solution: for each row, element comparison could be stopped as soon as one element from the row differs from the corresponding element in `to_be_removed`.

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