I am parsing a large amount of binary data that has been put in a list of lists:

```
row = [1,2,3...] # list of many numbers
data = [row1,row2,row3...] # a list of many rows
list_of_indices = [1,5,13,7...] # random list of indices. Always shorter than row
#This list won't change after creation
```

I would like to return a row containing only the elements listed in `list_of_indices`

:

```
subset_row = [row(index) for index in list_of_indices]
```

My question:

Would `subset_row`

contain copies of each element that is returned (i.e would `subset_row`

be a completely new list in memory) or would `subset_row`

contain references to the original data. Note that the data will not be modified so I think it may not even matter..

Also, is there a more efficient way to do this? I will have to iterate over thousands of rows..

This is somewhat covered here, but its not specific enough in terms of what is returned. What is the simplest and most efficient function to return a sublist based on an index list?

`numpy`

? It would be something like:`subset_row=row[list_of_indices]`

if`row`

and`list_of_indices`

ar both`numpy.ndarray`

objects – Saullo Castro Oct 2 '13 at 15:19`row1`

,`row2`

, etc are each lists of many numbers? What do the indices in`list_of_indices`

index, a row in`data`

or an item in a row? – martineau Oct 2 '13 at 17:25