This has given me a lot of trouble, and I am perplexed by the incompatibility of numpy arrays with pandas series. When I create a boolean array using a series, for instance

```
x = np.array([1,2,3,4,5,6,7])
y = pd.Series([1,2,3,4,5,6,7])
delta = np.percentile(x, 50)
deltamask = x- y > delta
```

delta mask creates a boolean pandas series.

However, if you do

```
x[deltamask]
y[deltamask]
```

You find that the array ignores completely the mask. No error is raised, but you end up with two objects of different length. This means that an operation like

```
x[deltamask]*y[deltamask]
```

results in an error:

```
print type(x-y)
print type(x[deltamask]), len(x[deltamask])
print type(y[deltamask]), len(y[deltamask])
```

Even more perplexing, I noticed that the operator < is treated differently. For instance

```
print type(2*x < x*y)
print type(2 < x*y)
```

will give you a pd.series and np.array respectively.

Also,

```
5 < x - y
```

results in a series, so it seems that the series takes precedence, whereas the boolean elements of a series mask are promoted to integers when passed to a numpy array and result in a sliced array.

What is the reason for this?

`pandas`

data structures are built on top of`numpy`

arrays.`Series`

do playnicely withsomewhat`numpy`

arrays, they're not really`numpy`

arrays. Also, what do you mean by:the series ignores completely the mask.?`deltamask`

is all`False`

, so the`Series`

should not return any values.`Series`

do respect`numpy array`

masks; check again. But numpy arrays don't seem to be taking`Series`

masks (that's quite interesting, actually). But`x[deltamask.values]`

does do the trick.`ndarray`

as a boolean mask.`x[deltamask]`

gets interpreted as`x[[0, 0, ..., 0]]`

rather than`x[[False, False, ..., False]]`

, so the result is`[1, 1, ..., 1]`

. I will look into this.`False`

elements of the Series get promoted to integer 0 for some reason. I get the following warning when I index`x[deltamask]`

:`FutureWarning: in the future, boolean array-likes will be handled as a boolean array index`

. This is a good indication of the fact that numpy devs are aware of the issue and have a fix coming.5more comments