You want to create an subarray containing only the values whose indexes are in `desired_ages`

.

Python doesn't have any syntax that directly corresponds to this, but list comprehensions can do a pretty nice job:

```
result = [value for index, value in enumerate(data.values) if index in desired_ages]
```

However, doing it this way results in Python scanning through `desired_ages`

for each element in `data.values`

, which is slow. If you could insert

```
desired_ages = set(desired_ages)
```

on the line before, this would improve performance. (You can determine if a value in is a set in constant time, regardless of the set's size.)

### Complete Example

```
import numpy as np
ages = np.arange(100)
values = np.random.uniform(low=0, high= 1, size = ages.shape)
data = np.core.rec.fromarrays([ages, values], names='ages,values')
desired_ages = np.array([1,4, 16, 29, 80])
result = [value for index, value in enumerate(data.values) if index in desired_ages]
print result
```

Output

```
[0.45852624094611272, 0.0099713014816563694, 0.26695859251958864, 0.10143425810157047, 0.93647796171383935]
```