%global _empty_manifest_terminate_build 0 Name: python-shorttext Version: 1.5.8 Release: 1 Summary: Short Text Mining License: MIT URL: https://github.com/stephenhky/PyShortTextCategorization Source0: https://mirrors.nju.edu.cn/pypi/web/packages/0e/35/1333b0e1b688edd9e6b382cd5dbbd4abc0530ec9511b4d12a81a5ee3cdf2/shorttext-1.5.8.tar.gz BuildArch: noarch %description ## Introduction This package `shorttext` is a Python package that facilitates supervised and unsupervised learning for short text categorization. Due to the sparseness of words and the lack of information carried in the short texts themselves, an intermediate representation of the texts and documents are needed before they are put into any classification algorithm. In this package, it facilitates various types of these representations, including topic modeling and word-embedding algorithms. Since release 1.5.2, it runs on Python 3.9. Since release 1.5.0, support for Python 3.6 was decommissioned. Since release 1.2.4, it runs on Python 3.8. Since release 1.2.3, support for Python 3.5 was decommissioned. Since release 1.1.7, support for Python 2.7 was decommissioned. Since release 1.0.8, it runs on Python 3.7 with 'TensorFlow' being the backend for `keras`. Since release 1.0.7, it runs on Python 3.7 as well, but the backend for `keras` cannot be `TensorFlow`. Since release 1.0.0, `shorttext` runs on Python 2.7, 3.5, and 3.6. Characteristics: - example data provided (including subject keywords and NIH RePORT); - text preprocessing; - pre-trained word-embedding support; - `gensim` topic models (LDA, LSI, Random Projections) and autoencoder; - topic model representation supported for supervised learning using `scikit-learn`; - cosine distance classification; - neural network classification (including ConvNet, and C-LSTM); - maximum entropy classification; - metrics of phrases differences, including soft Jaccard score (using Damerau-Levenshtein distance), and Word Mover's distance (WMD); - character-level sequence-to-sequence (seq2seq) learning; - spell correction; - API for word-embedding algorithm for one-time loading; and - Sentence encodings and similarities based on BERT. ## Documentation Documentation and tutorials for `shorttext` can be found here: [http://shorttext.rtfd.io/](http://shorttext.rtfd.io/). See [tutorial](http://shorttext.readthedocs.io/en/latest/tutorial.html) for how to use the package, and [FAQ](https://shorttext.readthedocs.io/en/latest/faq.html). ## Installation To install it, in a console, use `pip`. ``` >>> pip install -U shorttext ``` or, if you want the most recent development version on Github, type ``` >>> pip install -U git+https://github.com/stephenhky/PyShortTextCategorization@master ``` Developers are advised to make sure `Keras` >=2 be installed. Users are advised to install the backend `Tensorflow` (preferred) or `Theano` in advance. It is desirable if `Cython` has been previously installed too. See [installation guide](https://shorttext.readthedocs.io/en/latest/install.html) for more details. ## Issues To report any issues, go to the [Issues](https://github.com/stephenhky/PyShortTextCategorization/issues) tab of the Github page and start a thread. It is welcome for developers to submit pull requests on their own to fix any errors. ## Contributors If you would like to contribute, feel free to submit the pull requests. You can talk to me in advance through e-mails or the [Issues](https://github.com/stephenhky/PyShortTextCategorization/issues) page. ## Useful Links * Documentation: [http://shorttext.readthedocs.io](http://shorttext.readthedocs.io/) * Github: [https://github.com/stephenhky/PyShortTextCategorization](https://github.com/stephenhky/PyShortTextCategorization) * PyPI: [https://pypi.org/project/shorttext/](https://pypi.org/project/shorttext/) * "Package shorttext 1.0.0 released," [Medium](https://medium.com/@stephenhky/package-shorttext-1-0-0-released-ca3cb24d0ff3) * "Python Package for Short Text Mining", [WordPress](https://datawarrior.wordpress.com/2016/12/22/python-package-for-short-text-mining/) * "Document-Term Matrix: Text Mining in R and Python," [WordPress](https://datawarrior.wordpress.com/2018/01/22/document-term-matrix-text-mining-in-r-and-python/) * An [earlier version](https://github.com/stephenhky/PyShortTextCategorization/tree/b298d3ce7d06a9b4e0f7d32f27bab66064ba7afa) of this repository is a demonstration of the following blog post: [Short Text Categorization using Deep Neural Networks and Word-Embedding Models](https://datawarrior.wordpress.com/2016/10/12/short-text-categorization-using-deep-neural-networks-and-word-embedding-models/) ## News * 09/23/2022: `shorttext` 1.5.8 released. * 09/22/2022: `shorttext` 1.5.7 released. * 08/29/2022: `shorttext` 1.5.6 released. * 05/28/2022: `shorttext` 1.5.5 released. * 12/15/2021: `shorttext` 1.5.4 released. * 07/11/2021: `shorttext` 1.5.3 released. * 07/06/2021: `shorttext` 1.5.2 released. * 04/10/2021: `shorttext` 1.5.1 released. * 04/09/2021: `shorttext` 1.5.0 released. * 02/11/2021: `shorttext` 1.4.8 released. * 01/11/2021: `shorttext` 1.4.7 released. * 01/03/2021: `shorttext` 1.4.6 released. * 12/28/2020: `shorttext` 1.4.5 released. * 12/24/2020: `shorttext` 1.4.4 released. * 11/10/2020: `shorttext` 1.4.3 released. * 10/18/2020: `shorttext` 1.4.2 released. * 09/23/2020: `shorttext` 1.4.1 released. * 09/02/2020: `shorttext` 1.4.0 released. * 07/23/2020: `shorttext` 1.3.0 released. * 06/05/2020: `shorttext` 1.2.6 released. * 05/20/2020: `shorttext` 1.2.5 released. * 05/13/2020: `shorttext` 1.2.4 released. * 04/28/2020: `shorttext` 1.2.3 released. * 04/07/2020: `shorttext` 1.2.2 released. * 03/23/2020: `shorttext` 1.2.1 released. * 03/21/2020: `shorttext` 1.2.0 released. * 12/01/2019: `shorttext` 1.1.6 released. * 09/24/2019: `shorttext` 1.1.5 released. * 07/20/2019: `shorttext` 1.1.4 released. * 07/07/2019: `shorttext` 1.1.3 released. * 06/05/2019: `shorttext` 1.1.2 released. * 04/23/2019: `shorttext` 1.1.1 released. * 03/03/2019: `shorttext` 1.1.0 released. * 02/14/2019: `shorttext` 1.0.8 released. * 01/30/2019: `shorttext` 1.0.7 released. * 01/29/2019: `shorttext` 1.0.6 released. * 01/13/2019: `shorttext` 1.0.5 released. * 10/03/2018: `shorttext` 1.0.4 released. * 08/06/2018: `shorttext` 1.0.3 released. * 07/24/2018: `shorttext` 1.0.2 released. * 07/17/2018: `shorttext` 1.0.1 released. * 07/14/2018: `shorttext` 1.0.0 released. * 06/18/2018: `shorttext` 0.7.2 released. * 05/30/2018: `shorttext` 0.7.1 released. * 05/17/2018: `shorttext` 0.7.0 released. * 02/27/2018: `shorttext` 0.6.0 released. * 01/19/2018: `shorttext` 0.5.11 released. * 01/15/2018: `shorttext` 0.5.10 released. * 12/14/2017: `shorttext` 0.5.9 released. * 11/08/2017: `shorttext` 0.5.8 released. * 10/27/2017: `shorttext` 0.5.7 released. * 10/17/2017: `shorttext` 0.5.6 released. * 09/28/2017: `shorttext` 0.5.5 released. * 09/08/2017: `shorttext` 0.5.4 released. * 09/02/2017: end of GSoC project. ([Report](https://rare-technologies.com/chinmayas-gsoc-2017-summary-integration-with-sklearn-keras-and-implementing-fasttext/)) * 08/22/2017: `shorttext` 0.5.1 released. * 07/28/2017: `shorttext` 0.4.1 released. * 07/26/2017: `shorttext` 0.4.0 released. * 06/16/2017: `shorttext` 0.3.8 released. * 06/12/2017: `shorttext` 0.3.7 released. * 06/02/2017: `shorttext` 0.3.6 released. * 05/30/2017: GSoC project ([Chinmaya Pancholi](https://rare-technologies.com/google-summer-of-code-2017-week-1-on-integrating-gensim-with-scikit-learn-and-keras/), with [gensim](https://radimrehurek.com/gensim/)) * 05/16/2017: `shorttext` 0.3.5 released. * 04/27/2017: `shorttext` 0.3.4 released. * 04/19/2017: `shorttext` 0.3.3 released. * 03/28/2017: `shorttext` 0.3.2 released. * 03/14/2017: `shorttext` 0.3.1 released. * 02/23/2017: `shorttext` 0.2.1 released. * 12/21/2016: `shorttext` 0.2.0 released. * 11/25/2016: `shorttext` 0.1.2 released. * 11/21/2016: `shorttext` 0.1.1 released. ## Possible Future Updates - [ ] Dividing components to other packages; - [ ] More available corpus. %package -n python3-shorttext Summary: Short Text Mining Provides: python-shorttext BuildRequires: python3-devel BuildRequires: python3-setuptools BuildRequires: python3-pip %description -n python3-shorttext ## Introduction This package `shorttext` is a Python package that facilitates supervised and unsupervised learning for short text categorization. Due to the sparseness of words and the lack of information carried in the short texts themselves, an intermediate representation of the texts and documents are needed before they are put into any classification algorithm. In this package, it facilitates various types of these representations, including topic modeling and word-embedding algorithms. Since release 1.5.2, it runs on Python 3.9. Since release 1.5.0, support for Python 3.6 was decommissioned. Since release 1.2.4, it runs on Python 3.8. Since release 1.2.3, support for Python 3.5 was decommissioned. Since release 1.1.7, support for Python 2.7 was decommissioned. Since release 1.0.8, it runs on Python 3.7 with 'TensorFlow' being the backend for `keras`. Since release 1.0.7, it runs on Python 3.7 as well, but the backend for `keras` cannot be `TensorFlow`. Since release 1.0.0, `shorttext` runs on Python 2.7, 3.5, and 3.6. Characteristics: - example data provided (including subject keywords and NIH RePORT); - text preprocessing; - pre-trained word-embedding support; - `gensim` topic models (LDA, LSI, Random Projections) and autoencoder; - topic model representation supported for supervised learning using `scikit-learn`; - cosine distance classification; - neural network classification (including ConvNet, and C-LSTM); - maximum entropy classification; - metrics of phrases differences, including soft Jaccard score (using Damerau-Levenshtein distance), and Word Mover's distance (WMD); - character-level sequence-to-sequence (seq2seq) learning; - spell correction; - API for word-embedding algorithm for one-time loading; and - Sentence encodings and similarities based on BERT. ## Documentation Documentation and tutorials for `shorttext` can be found here: [http://shorttext.rtfd.io/](http://shorttext.rtfd.io/). See [tutorial](http://shorttext.readthedocs.io/en/latest/tutorial.html) for how to use the package, and [FAQ](https://shorttext.readthedocs.io/en/latest/faq.html). ## Installation To install it, in a console, use `pip`. ``` >>> pip install -U shorttext ``` or, if you want the most recent development version on Github, type ``` >>> pip install -U git+https://github.com/stephenhky/PyShortTextCategorization@master ``` Developers are advised to make sure `Keras` >=2 be installed. Users are advised to install the backend `Tensorflow` (preferred) or `Theano` in advance. It is desirable if `Cython` has been previously installed too. See [installation guide](https://shorttext.readthedocs.io/en/latest/install.html) for more details. ## Issues To report any issues, go to the [Issues](https://github.com/stephenhky/PyShortTextCategorization/issues) tab of the Github page and start a thread. It is welcome for developers to submit pull requests on their own to fix any errors. ## Contributors If you would like to contribute, feel free to submit the pull requests. You can talk to me in advance through e-mails or the [Issues](https://github.com/stephenhky/PyShortTextCategorization/issues) page. ## Useful Links * Documentation: [http://shorttext.readthedocs.io](http://shorttext.readthedocs.io/) * Github: [https://github.com/stephenhky/PyShortTextCategorization](https://github.com/stephenhky/PyShortTextCategorization) * PyPI: [https://pypi.org/project/shorttext/](https://pypi.org/project/shorttext/) * "Package shorttext 1.0.0 released," [Medium](https://medium.com/@stephenhky/package-shorttext-1-0-0-released-ca3cb24d0ff3) * "Python Package for Short Text Mining", [WordPress](https://datawarrior.wordpress.com/2016/12/22/python-package-for-short-text-mining/) * "Document-Term Matrix: Text Mining in R and Python," [WordPress](https://datawarrior.wordpress.com/2018/01/22/document-term-matrix-text-mining-in-r-and-python/) * An [earlier version](https://github.com/stephenhky/PyShortTextCategorization/tree/b298d3ce7d06a9b4e0f7d32f27bab66064ba7afa) of this repository is a demonstration of the following blog post: [Short Text Categorization using Deep Neural Networks and Word-Embedding Models](https://datawarrior.wordpress.com/2016/10/12/short-text-categorization-using-deep-neural-networks-and-word-embedding-models/) ## News * 09/23/2022: `shorttext` 1.5.8 released. * 09/22/2022: `shorttext` 1.5.7 released. * 08/29/2022: `shorttext` 1.5.6 released. * 05/28/2022: `shorttext` 1.5.5 released. * 12/15/2021: `shorttext` 1.5.4 released. * 07/11/2021: `shorttext` 1.5.3 released. * 07/06/2021: `shorttext` 1.5.2 released. * 04/10/2021: `shorttext` 1.5.1 released. * 04/09/2021: `shorttext` 1.5.0 released. * 02/11/2021: `shorttext` 1.4.8 released. * 01/11/2021: `shorttext` 1.4.7 released. * 01/03/2021: `shorttext` 1.4.6 released. * 12/28/2020: `shorttext` 1.4.5 released. * 12/24/2020: `shorttext` 1.4.4 released. * 11/10/2020: `shorttext` 1.4.3 released. * 10/18/2020: `shorttext` 1.4.2 released. * 09/23/2020: `shorttext` 1.4.1 released. * 09/02/2020: `shorttext` 1.4.0 released. * 07/23/2020: `shorttext` 1.3.0 released. * 06/05/2020: `shorttext` 1.2.6 released. * 05/20/2020: `shorttext` 1.2.5 released. * 05/13/2020: `shorttext` 1.2.4 released. * 04/28/2020: `shorttext` 1.2.3 released. * 04/07/2020: `shorttext` 1.2.2 released. * 03/23/2020: `shorttext` 1.2.1 released. * 03/21/2020: `shorttext` 1.2.0 released. * 12/01/2019: `shorttext` 1.1.6 released. * 09/24/2019: `shorttext` 1.1.5 released. * 07/20/2019: `shorttext` 1.1.4 released. * 07/07/2019: `shorttext` 1.1.3 released. * 06/05/2019: `shorttext` 1.1.2 released. * 04/23/2019: `shorttext` 1.1.1 released. * 03/03/2019: `shorttext` 1.1.0 released. * 02/14/2019: `shorttext` 1.0.8 released. * 01/30/2019: `shorttext` 1.0.7 released. * 01/29/2019: `shorttext` 1.0.6 released. * 01/13/2019: `shorttext` 1.0.5 released. * 10/03/2018: `shorttext` 1.0.4 released. * 08/06/2018: `shorttext` 1.0.3 released. * 07/24/2018: `shorttext` 1.0.2 released. * 07/17/2018: `shorttext` 1.0.1 released. * 07/14/2018: `shorttext` 1.0.0 released. * 06/18/2018: `shorttext` 0.7.2 released. * 05/30/2018: `shorttext` 0.7.1 released. * 05/17/2018: `shorttext` 0.7.0 released. * 02/27/2018: `shorttext` 0.6.0 released. * 01/19/2018: `shorttext` 0.5.11 released. * 01/15/2018: `shorttext` 0.5.10 released. * 12/14/2017: `shorttext` 0.5.9 released. * 11/08/2017: `shorttext` 0.5.8 released. * 10/27/2017: `shorttext` 0.5.7 released. * 10/17/2017: `shorttext` 0.5.6 released. * 09/28/2017: `shorttext` 0.5.5 released. * 09/08/2017: `shorttext` 0.5.4 released. * 09/02/2017: end of GSoC project. ([Report](https://rare-technologies.com/chinmayas-gsoc-2017-summary-integration-with-sklearn-keras-and-implementing-fasttext/)) * 08/22/2017: `shorttext` 0.5.1 released. * 07/28/2017: `shorttext` 0.4.1 released. * 07/26/2017: `shorttext` 0.4.0 released. * 06/16/2017: `shorttext` 0.3.8 released. * 06/12/2017: `shorttext` 0.3.7 released. * 06/02/2017: `shorttext` 0.3.6 released. * 05/30/2017: GSoC project ([Chinmaya Pancholi](https://rare-technologies.com/google-summer-of-code-2017-week-1-on-integrating-gensim-with-scikit-learn-and-keras/), with [gensim](https://radimrehurek.com/gensim/)) * 05/16/2017: `shorttext` 0.3.5 released. * 04/27/2017: `shorttext` 0.3.4 released. * 04/19/2017: `shorttext` 0.3.3 released. * 03/28/2017: `shorttext` 0.3.2 released. * 03/14/2017: `shorttext` 0.3.1 released. * 02/23/2017: `shorttext` 0.2.1 released. * 12/21/2016: `shorttext` 0.2.0 released. * 11/25/2016: `shorttext` 0.1.2 released. * 11/21/2016: `shorttext` 0.1.1 released. ## Possible Future Updates - [ ] Dividing components to other packages; - [ ] More available corpus. %package help Summary: Development documents and examples for shorttext Provides: python3-shorttext-doc %description help ## Introduction This package `shorttext` is a Python package that facilitates supervised and unsupervised learning for short text categorization. Due to the sparseness of words and the lack of information carried in the short texts themselves, an intermediate representation of the texts and documents are needed before they are put into any classification algorithm. In this package, it facilitates various types of these representations, including topic modeling and word-embedding algorithms. Since release 1.5.2, it runs on Python 3.9. Since release 1.5.0, support for Python 3.6 was decommissioned. Since release 1.2.4, it runs on Python 3.8. Since release 1.2.3, support for Python 3.5 was decommissioned. Since release 1.1.7, support for Python 2.7 was decommissioned. Since release 1.0.8, it runs on Python 3.7 with 'TensorFlow' being the backend for `keras`. Since release 1.0.7, it runs on Python 3.7 as well, but the backend for `keras` cannot be `TensorFlow`. Since release 1.0.0, `shorttext` runs on Python 2.7, 3.5, and 3.6. Characteristics: - example data provided (including subject keywords and NIH RePORT); - text preprocessing; - pre-trained word-embedding support; - `gensim` topic models (LDA, LSI, Random Projections) and autoencoder; - topic model representation supported for supervised learning using `scikit-learn`; - cosine distance classification; - neural network classification (including ConvNet, and C-LSTM); - maximum entropy classification; - metrics of phrases differences, including soft Jaccard score (using Damerau-Levenshtein distance), and Word Mover's distance (WMD); - character-level sequence-to-sequence (seq2seq) learning; - spell correction; - API for word-embedding algorithm for one-time loading; and - Sentence encodings and similarities based on BERT. ## Documentation Documentation and tutorials for `shorttext` can be found here: [http://shorttext.rtfd.io/](http://shorttext.rtfd.io/). See [tutorial](http://shorttext.readthedocs.io/en/latest/tutorial.html) for how to use the package, and [FAQ](https://shorttext.readthedocs.io/en/latest/faq.html). ## Installation To install it, in a console, use `pip`. ``` >>> pip install -U shorttext ``` or, if you want the most recent development version on Github, type ``` >>> pip install -U git+https://github.com/stephenhky/PyShortTextCategorization@master ``` Developers are advised to make sure `Keras` >=2 be installed. Users are advised to install the backend `Tensorflow` (preferred) or `Theano` in advance. It is desirable if `Cython` has been previously installed too. See [installation guide](https://shorttext.readthedocs.io/en/latest/install.html) for more details. ## Issues To report any issues, go to the [Issues](https://github.com/stephenhky/PyShortTextCategorization/issues) tab of the Github page and start a thread. It is welcome for developers to submit pull requests on their own to fix any errors. ## Contributors If you would like to contribute, feel free to submit the pull requests. You can talk to me in advance through e-mails or the [Issues](https://github.com/stephenhky/PyShortTextCategorization/issues) page. ## Useful Links * Documentation: [http://shorttext.readthedocs.io](http://shorttext.readthedocs.io/) * Github: [https://github.com/stephenhky/PyShortTextCategorization](https://github.com/stephenhky/PyShortTextCategorization) * PyPI: [https://pypi.org/project/shorttext/](https://pypi.org/project/shorttext/) * "Package shorttext 1.0.0 released," [Medium](https://medium.com/@stephenhky/package-shorttext-1-0-0-released-ca3cb24d0ff3) * "Python Package for Short Text Mining", [WordPress](https://datawarrior.wordpress.com/2016/12/22/python-package-for-short-text-mining/) * "Document-Term Matrix: Text Mining in R and Python," [WordPress](https://datawarrior.wordpress.com/2018/01/22/document-term-matrix-text-mining-in-r-and-python/) * An [earlier version](https://github.com/stephenhky/PyShortTextCategorization/tree/b298d3ce7d06a9b4e0f7d32f27bab66064ba7afa) of this repository is a demonstration of the following blog post: [Short Text Categorization using Deep Neural Networks and Word-Embedding Models](https://datawarrior.wordpress.com/2016/10/12/short-text-categorization-using-deep-neural-networks-and-word-embedding-models/) ## News * 09/23/2022: `shorttext` 1.5.8 released. * 09/22/2022: `shorttext` 1.5.7 released. * 08/29/2022: `shorttext` 1.5.6 released. * 05/28/2022: `shorttext` 1.5.5 released. * 12/15/2021: `shorttext` 1.5.4 released. * 07/11/2021: `shorttext` 1.5.3 released. * 07/06/2021: `shorttext` 1.5.2 released. * 04/10/2021: `shorttext` 1.5.1 released. * 04/09/2021: `shorttext` 1.5.0 released. * 02/11/2021: `shorttext` 1.4.8 released. * 01/11/2021: `shorttext` 1.4.7 released. * 01/03/2021: `shorttext` 1.4.6 released. * 12/28/2020: `shorttext` 1.4.5 released. * 12/24/2020: `shorttext` 1.4.4 released. * 11/10/2020: `shorttext` 1.4.3 released. * 10/18/2020: `shorttext` 1.4.2 released. * 09/23/2020: `shorttext` 1.4.1 released. * 09/02/2020: `shorttext` 1.4.0 released. * 07/23/2020: `shorttext` 1.3.0 released. * 06/05/2020: `shorttext` 1.2.6 released. * 05/20/2020: `shorttext` 1.2.5 released. * 05/13/2020: `shorttext` 1.2.4 released. * 04/28/2020: `shorttext` 1.2.3 released. * 04/07/2020: `shorttext` 1.2.2 released. * 03/23/2020: `shorttext` 1.2.1 released. * 03/21/2020: `shorttext` 1.2.0 released. * 12/01/2019: `shorttext` 1.1.6 released. * 09/24/2019: `shorttext` 1.1.5 released. * 07/20/2019: `shorttext` 1.1.4 released. * 07/07/2019: `shorttext` 1.1.3 released. * 06/05/2019: `shorttext` 1.1.2 released. * 04/23/2019: `shorttext` 1.1.1 released. * 03/03/2019: `shorttext` 1.1.0 released. * 02/14/2019: `shorttext` 1.0.8 released. * 01/30/2019: `shorttext` 1.0.7 released. * 01/29/2019: `shorttext` 1.0.6 released. * 01/13/2019: `shorttext` 1.0.5 released. * 10/03/2018: `shorttext` 1.0.4 released. * 08/06/2018: `shorttext` 1.0.3 released. * 07/24/2018: `shorttext` 1.0.2 released. * 07/17/2018: `shorttext` 1.0.1 released. * 07/14/2018: `shorttext` 1.0.0 released. * 06/18/2018: `shorttext` 0.7.2 released. * 05/30/2018: `shorttext` 0.7.1 released. * 05/17/2018: `shorttext` 0.7.0 released. * 02/27/2018: `shorttext` 0.6.0 released. * 01/19/2018: `shorttext` 0.5.11 released. * 01/15/2018: `shorttext` 0.5.10 released. * 12/14/2017: `shorttext` 0.5.9 released. * 11/08/2017: `shorttext` 0.5.8 released. * 10/27/2017: `shorttext` 0.5.7 released. * 10/17/2017: `shorttext` 0.5.6 released. * 09/28/2017: `shorttext` 0.5.5 released. * 09/08/2017: `shorttext` 0.5.4 released. * 09/02/2017: end of GSoC project. ([Report](https://rare-technologies.com/chinmayas-gsoc-2017-summary-integration-with-sklearn-keras-and-implementing-fasttext/)) * 08/22/2017: `shorttext` 0.5.1 released. * 07/28/2017: `shorttext` 0.4.1 released. * 07/26/2017: `shorttext` 0.4.0 released. * 06/16/2017: `shorttext` 0.3.8 released. * 06/12/2017: `shorttext` 0.3.7 released. * 06/02/2017: `shorttext` 0.3.6 released. * 05/30/2017: GSoC project ([Chinmaya Pancholi](https://rare-technologies.com/google-summer-of-code-2017-week-1-on-integrating-gensim-with-scikit-learn-and-keras/), with [gensim](https://radimrehurek.com/gensim/)) * 05/16/2017: `shorttext` 0.3.5 released. * 04/27/2017: `shorttext` 0.3.4 released. * 04/19/2017: `shorttext` 0.3.3 released. * 03/28/2017: `shorttext` 0.3.2 released. * 03/14/2017: `shorttext` 0.3.1 released. * 02/23/2017: `shorttext` 0.2.1 released. * 12/21/2016: `shorttext` 0.2.0 released. * 11/25/2016: `shorttext` 0.1.2 released. * 11/21/2016: `shorttext` 0.1.1 released. ## Possible Future Updates - [ ] Dividing components to other packages; - [ ] More available corpus. %prep %autosetup -n shorttext-1.5.8 %build %py3_build %install %py3_install install -d -m755 %{buildroot}/%{_pkgdocdir} if [ -d doc ]; then cp -arf doc %{buildroot}/%{_pkgdocdir}; fi if [ -d docs ]; then cp -arf docs %{buildroot}/%{_pkgdocdir}; fi if [ -d example ]; then cp -arf example %{buildroot}/%{_pkgdocdir}; fi if [ -d examples ]; then cp -arf examples %{buildroot}/%{_pkgdocdir}; fi pushd %{buildroot} if [ -d usr/lib ]; then find usr/lib -type f -printf "\"/%h/%f\"\n" >> filelist.lst fi if [ -d usr/lib64 ]; then find usr/lib64 -type f -printf "\"/%h/%f\"\n" >> filelist.lst fi if [ -d usr/bin ]; then find usr/bin -type f -printf "\"/%h/%f\"\n" >> filelist.lst fi if [ -d usr/sbin ]; then find usr/sbin -type f -printf "\"/%h/%f\"\n" >> filelist.lst fi touch doclist.lst if [ -d usr/share/man ]; then find usr/share/man -type f -printf "\"/%h/%f.gz\"\n" >> doclist.lst fi popd mv %{buildroot}/filelist.lst . mv %{buildroot}/doclist.lst . %files -n python3-shorttext -f filelist.lst %dir %{python3_sitelib}/* %files help -f doclist.lst %{_docdir}/* %changelog * Thu Jun 08 2023 Python_Bot - 1.5.8-1 - Package Spec generated