39

How can I break a document (e.g., paragraph, book, etc) into sentences.

For example, "The dog ran. The cat jumped" into ["The dog ran", "The cat jumped"] with spacy?

2
  • 1
    with basic python: my_string.split(".")
    – Julien
    Sep 19, 2017 at 1:15
  • 14
    @Julien see the updated question. I did not mean literally "The dog ran. The cat jumped". Consider "Mr. Baxter ate a pickle." Sep 19, 2017 at 1:17

6 Answers 6

38

The up-to-date answer is this:

from __future__ import unicode_literals, print_function
from spacy.lang.en import English # updated

raw_text = 'Hello, world. Here are two sentences.'
nlp = English()
nlp.add_pipe('sentencizer')
doc = nlp(raw_text)
sentences = [sent.text.strip() for sent in doc.sents]
4
  • 1
    If there is an etc. in a sentence it fails. Apr 14, 2020 at 15:08
  • 2
    This uses the rule-based method, rather than the statistical model to split sentences. For my use case, using en_core_web_sm worked better, and en_core_web_lg better yet, and fast enough for my needs. See KB_'s answer.
    – dbenton
    May 24, 2020 at 4:21
  • 9
    Actually in spacy 3.0 the syntax is now nlp.add_pipe('sentencizer') as @user8189050 notes.
    – smci
    Mar 13, 2021 at 4:43
  • 5
    spacy 3.0.6: Change sent.string.strip() to sent.text.strip()
    – Thang Pham
    Jun 29, 2021 at 15:48
27

Answer

import spacy
nlp = spacy.load('en_core_web_sm')

text = 'My first birthday was great. My 2. was even better.'
sentences = [i for i in nlp(text).sents]

Additional info
This assumes that you have already installed the model "en_core_web_sm" on your system. If not, you can easily install it by running the following command in your terminal:

$ python -m spacy download en_core_web_sm

(See here for an overview of all available models.)

Depending on your data this can lead to better results than just using spacy.lang.en.English. One (very simple) comparison example:

import spacy
from spacy.lang.en import English

nlp_simple = English()
nlp_simple.add_pipe(nlp_simple.create_pipe('sentencizer'))

nlp_better = spacy.load('en_core_web_sm')


text = 'My first birthday was great. My 2. was even better.'

for nlp in [nlp_simple, nlp_better]:
    for i in nlp(text).sents:
        print(i)
    print('-' * 20)

Outputs:

>>> My first birthday was great.
>>> My 2.
>>> was even better.
>>> --------------------
>>> My first birthday was great.
>>> My 2. was even better.
>>> --------------------
17

With spacy 3.0.1 they changed the pipline.

from spacy.lang.en import English 

nlp = English()
nlp.add_pipe('sentencizer')


def split_in_sentences(text):
    doc = nlp(text)
    return [str(sent).strip() for sent in doc.sents]
2
  • 4
    This should be the accepted answer, as of spacy 3.0
    – smci
    Mar 13, 2021 at 4:43
  • What if the language is not English? Jun 20, 2022 at 23:40
14

From spacy's github support page

from __future__ import unicode_literals, print_function
from spacy.en import English

raw_text = 'Hello, world. Here are two sentences.'
nlp = English()
doc = nlp(raw_text)
sentences = [sent.string.strip() for sent in doc.sents]
1
  • 5
    This answer is outdated as of 2019 (SpaCy 2.1.8). npit@ answer is better.
    – ywat
    Nov 1, 2019 at 20:44
4

For current versions (e.g. 3.x and above) use the code below for optimal results with the statistical model rather than the rule based sentencizer component.

Also note that you can speed up processing and reduce the memory footprint if you include only the pipeline components that are needed for sentence separation.

import spacy

# instantiate pipeline with any model of your choosing
nlp = spacy.load("en_core_web_sm")

text = "The dog ran. The cat jumped. The 2. fox hides behind the house."

# only select necessary pipeline components to speed up processing
with nlp.select_pipes(enable=['tok2vec', "parser", "senter"]):
    doc = nlp(text)
    
for sentence in doc.sents:
    print(sentence)
1

Updated to reflect the comments in the first answer

from spacy.lang.en import English

raw_text = 'Hello, world. Here are two sentences.'
nlp = English()
nlp.add_pipe('sentencizer')
doc = nlp(raw_text)
sentences = [sent.text.strip() for sent in doc.sents]

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