Numpy Ceil and Floor "out" Argument

From the NumPy docs for ceil , the `numpy.ceil` function takes two arguments, the second being `out`. The docs don't say what this `out` parameter does but I assume you can set the output type this function returns, but I cannot get it to work:

``````In [107]: np.ceil(5.5, 'int')
---------------------------------------------------------------------------
TypeError                                 Traceback (most recent call last)
<ipython-input-107-c05bcf9f1522> in <module>()
----> 1 np.ceil(5.5, 'int')

TypeError: return arrays must be of ArrayType

In [108]: np.ceil(5.5, 'int64')
---------------------------------------------------------------------------
TypeError                                 Traceback (most recent call last)
<ipython-input-108-0937d09b0433> in <module>()
----> 1 np.ceil(5.5, 'int64')

TypeError: return arrays must be of ArrayType
``````

Is it possible to use this argument to make `np.ceil` return an integer?

Thanks.

`out` is the output array (which must have the same shape as the input).

If you construct it to be of the desired `dtype`, that'll be the `dtype` you get:

``````>>> arr = np.array([5.5, -7.2])
>>> out = np.empty_like(arr, dtype=np.int64)
>>> np.ceil(arr, out)
array([ 6, -7], dtype=int64)
>>> out
array([ 6, -7], dtype=int64)
``````

`np.ceil` is one of the `ufuncs`. The general documentation for this category is:

``````op(X, out=None)
Apply op to X elementwise

Parameters
----------
X : array_like
Input array.
out : array_like
An array to store the output. Must be the same shape as `X`.

Returns
-------
r : array_like
`r` will have the same shape as `X`; if out is provided, `r`
will be equal to out.
``````

`out` and `r` are different ways of getting the function output. The simplest is to just let the function return the value. But sometimes you may want give it the array `out` which it will fill. Controlling the `dtype` is one reason to use `out`. Another is to conserve memory by 'reusing' an array that already exists.

The array returned by `np.ceil` can also be cast to your desired type, e.g. `np.ceil(x).astype('int')`.

You don't specify return type. Try This

``````np.int64(np.ceil(5.5))
np.int(np.ceil(5.5))
np.int(np.ceil(-7.2))
``````
• this results in `5.0` while OP's ceil will return `6.0`
– alko
Nov 18, 2013 at 7:03
• This results in `6`, `6`and `-7` respectively. Mar 11, 2016 at 16:48