Given a list of tokens, input:

```
>>> tokenized_text = "[CLS] my dog is cute [SEP] he likes slack ##ing [SEP]".split()
>>> tokenized_text
['[CLS]', 'my', 'dog', 'is', 'cute', '[SEP]', 'he', 'likes', 'slack', '##ing', '[SEP]']
```

The goal is to create an index for up till every `[SEP]`

from left to right, find the `[SEP]`

tokens and then incrementally adds the 1 after every `[SEP]`

, so the desired output indices for the `tokenize_text`

list above is:

```
[0, 0, 0, 0, 0, 0, 1, 1, 1, 1, 1]
```

I've tried:

```
# Find the indices of `[SEP]`.
>>> sep_indices = np.array(np.where(np.array(tokenized_text) == "[SEP]"))[0]
>>> sep_indices
array([ 5, 10])
>>> prev = 0
>>> out =[]
>>> for i, idx in enumerate(sep_indices):
... for _ in range(idx-prev):
... out.append(i)
... prev = idx
...
>>> out = [0] + out[:-1]
>>> out
[0, 0, 0, 0, 0, 0, 1, 1, 1, 1, 1]
```

But is there an easier way to achieve the correct output?

`del out[-1]`

or`out.pop()`

. – Davis Herring Oct 10 '19 at 6:35`The goal is to create an index for up till every [SEP] from left to right, find the [SEP] tokens`

- So, are you including the SEP ones when creating the final output? If so, won't the final output be of the same length as the input and hence the final output have 5`1`

s? If not, shouldn't it have 5`0s`

and 4`1s`

? – Divakar Oct 10 '19 at 7:03`[SEP]`

is included. – alvas Oct 10 '19 at 7:03