kashgari 2.0.2

Creator: bradpython12

Last updated:

Add to Cart

Description:

kashgari 2.0.2

Kashgari






















Overview |
Performance |
Installation |
Documentation |
Contributing



🎉🎉🎉 We released the 2.0.0 version with TF2 Support. 🎉🎉🎉
If you use this project for your research, please cite:
@misc{Kashgari
author = {Eliyar Eziz},
title = {Kashgari},
year = {2019},
publisher = {GitHub},
journal = {GitHub repository},
howpublished = {\url{https://github.com/BrikerMan/Kashgari}}
}

Overview
Kashgari is a simple and powerful NLP Transfer learning framework, build a state-of-art model in 5 minutes for named entity recognition (NER), part-of-speech tagging (PoS), and text classification tasks.

Human-friendly. Kashgari's code is straightforward, well documented and tested, which makes it very easy to understand and modify.
Powerful and simple. Kashgari allows you to apply state-of-the-art natural language processing (NLP) models to your text, such as named entity recognition (NER), part-of-speech tagging (PoS) and classification.
Built-in transfer learning. Kashgari built-in pre-trained BERT and Word2vec embedding models, which makes it very simple to transfer learning to train your model.
Fully scalable. Kashgari provides a simple, fast, and scalable environment for fast experimentation, train your models and experiment with new approaches using different embeddings and model structure.
Production Ready. Kashgari could export model with SavedModel format for tensorflow serving, you could directly deploy it on the cloud.

Our Goal

Academic users Easier experimentation to prove their hypothesis without coding from scratch.
NLP beginners Learn how to build an NLP project with production level code quality.
NLP developers Build a production level classification/labeling model within minutes.

Performance
Welcome to add performance report.



Task
Language
Dataset
Score




Named Entity Recognition
Chinese
People's Daily Ner Corpus
95.57


Text Classification
Chinese
SMP2018ECDTCorpus
94.57



Installation
The project is based on Python 3.6+, because it is 2019 and type hinting is cool.



Backend
kashgari version
desc




TensorFlow 2.2+
pip install 'kashgari>=2.0.2'
TF2.10+ with tf.keras


TensorFlow 1.14+
pip install 'kashgari>=1.0.0,<2.0.0'
TF1.14+ with tf.keras


Keras
pip install 'kashgari<1.0.0'
keras version



You also need to install tensorflow_addons with TensorFlow.



TensorFlow Version
tensorflow_addons version




TensorFlow 2.1
pip install tensorflow_addons==0.9.1


TensorFlow 2.2
pip install tensorflow_addons==0.11.2


TensorFlow 2.3, 2.4, 2.5
pip install tensorflow_addons==0.13.0



Tutorials
Here is a set of quick tutorials to get you started with the library:

Tutorial 1: Text Classification
Tutorial 2: Text Labeling
Tutorial 3: Seq2Seq
Tutorial 4: Language Embedding

There are also articles and posts that illustrate how to use Kashgari:

基于 Kashgari 2 的短文本分类: 数据分析和预处理
基于 Kashgari 2 的短文本分类: 训练模型和调优
基于 Kashgari 2 的短文本分类: 模型部署
15 分钟搭建中文文本分类模型
基于 BERT 的中文命名实体识别(NER)
BERT/ERNIE 文本分类和部署
五分钟搭建一个基于BERT的NER模型
Multi-Class Text Classification with Kashgari in 15 minutes

Examples:

Neural machine translation with Seq2Seq

Contributors ✨
Thanks goes to these wonderful people. And there are many ways to get involved.
Start with the contributor guidelines and then check these open issues for specific tasks.

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

Customer Reviews

There are no reviews.