I have a DateTimeIndex consisting of 15-minute intervals.

I also have the same function written in 2 ways that I want to apply across the whole Data Frame. The point of the function is to get if a particular day is a weekday or not.

Here they are:

```
def weekend(datum):
if (datum.weekday() == 5) or (datum.weekday() == 6):
return "Weekend"
else:
return "Working day"
# written with being fed the DateTimeIndex in mind
def weekendfromnumber(number):
if (number == 5) or (number == 6):
return "Weekend"
else:
return "Working day"
# written with being fed the integer of the intermediate columng weekday in mind
```

I wanted to apply the first function by feeding it with DateTimeIndex directly as in :

```
df15['Type of day'] = df15.index.apply(weekend)
```

but I get the error:

```
AttributeError: 'DatetimeIndex' object has no attribute 'apply'
```

If I use the second function as in:

```
df15['Type of day'] = df15.weekday.apply(weekendfromnumber)
```

I get the effect that I want but at the cost of needing to create an intermediate column named weekday with:

```
df15['weekday'] = df15.index.weekday
```

Since I do not want an intermediate column I thought that doing something like:

```
df15['Type of day'] = df15.index.weekday.apply(weekendfromnumber)
```

would work, but instead I get the error

```
AttributeError: 'numpy.ndarray' object has no attribute 'apply'
```

So, the overarching question is:

**How do I use the data that is already in the DateTimeIndex and feed it to a custom function using apply()?**