I have a sentence that has already been tokenized into words. I want to get the part of speech tag for each word in the sentence. When I check the documentation in SpaCy I realized it starts with the raw sentence. I don't want to do that because in that case, the spacy might end up with a different tokenization. Therefore, I wonder if using spaCy with the list of words (rather than a string) is possible or not ?

Here is an example about my question:

# I know that it does the following sucessfully :
import spacy
nlp = spacy.load('en_core_web_sm')
raw_text = 'Hello, world.'
doc = nlp(raw_text)
for token in doc:

But I want to do something similar to the following:

import spacy
nlp = spacy.load('en_core_web_sm')
tokenized_text = ['Hello',',','world','.']
doc = nlp(tokenized_text)
for token in doc:

I know, it doesn't work, but is it possible to do something similar to that ?

  • @Chirag yes but in that case, does the nlp still have access to the context or it produces the postag just by looking the word only ?
    – zwlayer
    Dec 3 '18 at 14:11
  • Seems like a duplicate of stackoverflow.com/questions/48169545/…
    – Mark
    Feb 4 '19 at 16:36

You can do this by replacing spaCy's default tokenizer with your own:

nlp.tokenizer = custom_tokenizer

Where custom_tokenizer is a function taking raw text as input and returning a Doc object.

You did not specify how you got the list of tokens. If you already have a function that takes raw text and returns a list of tokens, just make a small change to it:

def custom_tokenizer(text):
    tokens = []

    # your existing code to fill the list with tokens

    # replace this line:
    return tokens

    # with this:
    return Doc(nlp.vocab, tokens)

See the documentation on Doc.

If for some reason you cannot do this (maybe you don't have access to the tokenization function), you can use a dictionary:

tokens_dict = {'Hello, world.': ['Hello', ',', 'world', '.']}

def custom_tokenizer(text):
    if text in tokens_dict:
        return Doc(nlp.vocab, tokens_dict[text])
        raise ValueError('No tokenization available for input.')

Either way, you can then use the pipeline as in your first example:

doc = nlp('Hello, world.')
  • 2
    Thanks this is exactly what I was looking for
    – zwlayer
    Dec 3 '18 at 15:59

In case the tokenized text is not constant, another option is skipping tokanization:

spacy_doc = Doc(nlp.vocab, words=tokenized_text)
for pipe in filter(None, nlp.pipeline):

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