Today's personal assistants and conversational interfaces fail to handle variations in a user's wording or multiple requests in one sentence. We take a language-based semantic approach to handle complex dialogue. | It is a Python natural language analysis package. It contains tools, which can be used in a pipeline, to convert a string containing human language text into lists of sentences and words, to generate base forms of those words, their parts of speech and morphological features, to give a syntactic structure dependency parse, and to recognize named entities. The toolkit is designed to be parallel among more than 70 languages, using the Universal Dependencies formalism. |
| - | Native Python implementation requiring minimal efforts to set up;
Full neural network pipeline for robust text analytics, including tokenization, multi-word token (MWT) expansion, lemmatization, part-of-speech (POS) and morphological features tagging, dependency parsing, and named entity recognition;
Pretrained neural models supporting 66 (human) languages;
A stable, officially maintained Python interface to CoreNLP |
Statistics | |
GitHub Stars - | GitHub Stars 7.6K |
GitHub Forks - | GitHub Forks 926 |
Stacks 3 | Stacks 9 |
Followers 10 | Followers 34 |
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Integrations | |
| No integrations available | |

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