#named entity recognition
spaCy
Explore spaCy's robust NLP platform supporting over 70 languages using state-of-the-art neural networks. Access pretrained pipelines for essential tasks like tokenization, named entity recognition, and text classification. Leverage multi-task learning with BERT transformers, ensuring easy deployment and production-readiness. Enhance projects with custom models in frameworks like PyTorch or TensorFlow, and utilize powerful visualizers for syntax and NER. This open-source software, under the MIT license, offers high accuracy and extensibility for all your NLP needs.
spacy-stanza
The spacy-stanza package combines Stanza's, formerly StanfordNLP, models with spaCy, allowing integration of high-accuracy models for tasks like tokenization, POS tagging, and lemmatization across 68 languages. It supports advanced NLP tasks including named entity recognition using Stanza's sophisticated algorithms. Ideal for developers looking to leverage the strengths of both SpaCy and Stanza, it provides customizable options within SpaCy's pipeline and supports user-defined components. Compatible with SpaCy v3.0 and above for optimal performance.
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