//- 💫 DOCS > API > ANNOTATION > TEXT PROCESSING +aside-code("Example"). from spacy.lang.en import English nlp = English() tokens = nlp('Some\nspaces and\ttab characters') tokens_text = [t.text for t in tokens] assert tokens_text == ['Some', '\n', 'spaces', ' ', 'and', '\t', 'tab', 'characters'] p | Tokenization standards are based on the | #[+a("https://catalog.ldc.upenn.edu/LDC2013T19") OntoNotes 5] corpus. | The tokenizer differs from most by including | #[strong tokens for significant whitespace]. Any sequence of | whitespace characters beyond a single space (#[code ' ']) is included | as a token. The whitespace tokens are useful for much the same reason | punctuation is – it's often an important delimiter in the text. By | preserving it in the token output, we are able to maintain a simple | alignment between the tokens and the original string, and we ensure | that #[strong no information is lost] during processing. +h(3, "lemmatization") Lemmatization +aside("Examples") | In English, this means:#[br] | #[strong Adjectives]: happier, happiest → happy#[br] | #[strong Adverbs]: worse, worst → badly#[br] | #[strong Nouns]: dogs, children → dog, child#[br] | #[strong Verbs]: writes, wirting, wrote, written → write p | A lemma is the uninflected form of a word. The English lemmatization | data is taken from #[+a("https://wordnet.princeton.edu") WordNet]. | Lookup tables are taken from | #[+a("http://www.lexiconista.com/datasets/lemmatization/") Lexiconista]. | spaCy also adds a #[strong special case for pronouns]: all pronouns | are lemmatized to the special token #[code -PRON-]. +infobox("About spaCy's custom pronoun lemma", "⚠️") | Unlike verbs and common nouns, there's no clear base form of a personal | pronoun. Should the lemma of "me" be "I", or should we normalize person | as well, giving "it" — or maybe "he"? spaCy's solution is to introduce a | novel symbol, #[code -PRON-], which is used as the lemma for | all personal pronouns. +h(3, "sentence-boundary") Sentence boundary detection p | Sentence boundaries are calculated from the syntactic parse tree, so | features such as punctuation and capitalisation play an important but | non-decisive role in determining the sentence boundaries. Usually this | means that the sentence boundaries will at least coincide with clause | boundaries, even given poorly punctuated text.