Software:spaCy
Original author(s) | Matthew Honnibal |
---|---|
Developer(s) | Explosion AI, various |
Initial release | February 2015[1] |
Written in | Python, Cython |
Operating system | Linux, Windows, macOS, OS X |
Platform | Cross-platform |
Type | Natural language processing |
License | MIT License |
Website | {{{1}}} |
spaCy (/speɪˈsiː/ spay-SEE) is an open-source software library for advanced natural language processing, written in the programming languages Python and Cython.[2][3] The library is published under the MIT license and its main developers are Matthew Honnibal and Ines Montani, the founders of the software company Explosion.
Unlike NLTK, which is widely used for teaching and research, spaCy focuses on providing software for production usage.[4][5] spaCy also supports deep learning workflows that allow connecting statistical models trained by popular machine learning libraries like TensorFlow, PyTorch or MXNet through its own machine learning library Thinc.[6][7] Using Thinc as its backend, spaCy features convolutional neural network models for part-of-speech tagging, dependency parsing, text categorization and named entity recognition (NER). Prebuilt statistical neural network models to perform these tasks are available for 23 languages, including English, Portuguese, Spanish, Russian and Chinese, and there is also a multi-language NER model. Additional support for tokenization for more than 65 languages allows users to train custom models on their own datasets as well.[8]
History
- Version 1.0 was released on October 19, 2016, and included preliminary support for deep learning workflows by supporting custom processing pipelines.[9] It further included a rule matcher that supported entity annotations, and an officially documented training API.
- Version 2.0 was released on November 7, 2017, and introduced convolutional neural network models for 7 different languages.[10] It also supported custom processing pipeline components and extension attributes, and featured a built-in trainable text classification component.
- Version 3.0 was released on February 1, 2021, and introduced state-of-the-art transformer-based pipelines.[11] It also introduced a new configuration system and training workflow, as well as type hints and project templates. This version dropped support for Python 2.
Main features
- Non-destructive tokenization
- "Alpha tokenization" support for over 65 languages[12]
- Built-in support for trainable pipeline components such as Named entity recognition, Part-of-speech tagging, dependency parsing, Text classification, Entity Linking and more
- Statistical models for 19 languages[13]
- Multi-task learning with pretrained transformers like BERT
- Support for custom models in PyTorch, TensorFlow and other frameworks
- State-of-the-art speed and accuracy[14]
- Production-ready training system
- Built-in visualizers for syntax and named entities
- Easy model packaging, deployment and workflow management
Extensions and visualizers
spaCy comes with several extensions and visualizations that are available as free, open-source libraries:
- : A machine learning library optimized for CPU usage and deep learning with text input.
- : A library for computing word similarities, based on Word2vec.[15]
- : An open-source dependency parse tree visualizer built with JavaScript, CSS and SVG.
- : An open-source named entity visualizer built with JavaScript and CSS.
References
- ↑ "Introducing spaCy". explosion.ai. https://explosion.ai/blog/introducing-spacy.
- ↑ Choi et al. (2015). It Depends: Dependency Parser Comparison Using A Web-based Evaluation Tool.
- ↑ "Google's new artificial intelligence can't understand these sentences. Can you?". https://www.washingtonpost.com/news/wonk/wp/2016/05/18/googles-new-artificial-intelligence-cant-understand-these-sentences-can-you/.
- ↑ "Facts & Figures - spaCy" (in en). https://spacy.io/usage/facts-figures#other-libraries.
- ↑ Bird, Steven; Klein, Ewan; Loper, Edward; Baldridge, Jason (2008). "Multidisciplinary instruction with the Natural Language Toolkit". Proceedings of the Third Workshop on Issues in Teaching Computational Linguistics, ACL: 62. doi:10.3115/1627306.1627317. ISBN 9781932432145. https://www.aclweb.org/anthology/W/W08/W08-0208.pdf.
- ↑ "PyTorch, TensorFlow & MXNet". https://thinc.ai/docs/usage-frameworks.
- ↑ "explosion/thinc". https://github.com/explosion/thinc.
- ↑ "Models & Languages | spaCy Usage Documentation". https://spacy.io/usage/models#languages.
- ↑ "explosion/spaCy". https://github.com/explosion/spaCy/releases/tag/v1.0.0.
- ↑ "explosion/spaCy". https://github.com/explosion/spaCy/releases/tag/v2.0.0.
- ↑ "explosion/spaCy". https://github.com/explosion/spaCy/releases/tag/v3.0.0.
- ↑ "Models & Languages - spaCy" (in en). https://spacy.io/usage/models.
- ↑ "Models & Languages | spaCy Usage Documentation" (in en). https://spacy.io/usage/models.
- ↑ "Benchmarks | spaCy Usage Documentation" (in en). https://spacy.io/usage/facts-figures#benchmarks.
- ↑ Trask et al. (2015). sense2vec - A Fast and Accurate Method for Word Sense Disambiguation In Neural Word Embeddings.
External links
Original source: https://en.wikipedia.org/wiki/SpaCy.
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