Part of Speech for a English text

Type or paste a English text into the input box above.
Select a POS analyzer from the left column, then click the "Go" button.

Example English Text for POS Analysis ⬆️
Apple is looking at buying U.K. startup for $1 billion.
Autonomous cars shift insurance liability toward manufacturers.
San Francisco considers banning sidewalk delivery robots.
London is a big city in the United Kingdom.
Where are you?
Who is the president of France?
What is the capital of the United States?
When was Barack Obama born?
A part of speech is a category that describes the role a word plays in a sentence. Improving English language learning using Part-of-Speech (POS) tagging involves leveraging syntactic and morphological information to understand sentence structure, disambiguate word meanings, and master inflectional rules.
English Part-of-Speech
UPOS of English
UPOS (Universal POS) is a Coarse-grained and simplified tag that work consistently across all languages. They are shown in the following format.
Headword lemma UPOS DEP 👤NER

XPOS of English
XPOS (Detailed POS) is a Fine-Grained tag specific to the English language and the English training data. They are shown in the following format.
Headword lemma XPOS DEP 👤NER

Headword : Headwords are displayed in bold.

lemma : The dictionary form or "root" of a English word. It removes grammatical variations. The lemma is only displayed if the headword is not equal to the lemma.

UPOS : Universal Part-of-Speech. A coarse-grained, standardized tag (like NOUN, VERB, or ADJ) designed to work across all human languages. See examples

XPOS : Language-Specific Part-of-Speech. A fine-grained tag specific to a particular English language’s grammar (e.g., distinguishing a plural noun from a singular noun, etc). See examples

DEP : Dependency. The grammatical relationship between words. It shows how words depend on one another, such as identifying which word is the subject (nsubj) or the direct object (obj). See examples

👤NER : Named Entity Recognition. The identification of ""real-world"" entities within the text, such as People (PER), Locations (GPE), Organizations (ORG), or Dates. See examples

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