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Starred repositories

12 stars written in Jupyter Notebook
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TensorFlow Tutorial and Examples for Beginners (support TF v1 & v2)

Jupyter Notebook 43,386 14,942 Updated Jul 26, 2024

Pytorch🍊🍉 is delicious, just eat it! 😋😋

Jupyter Notebook 5,173 1,131 Updated Sep 11, 2024
Jupyter Notebook 3,350 2,494 Updated Mar 24, 2023

📚 [.md & .ipynb] Series of Artificial Intelligence & Deep Learning, including Mathematics Fundamentals, Python Practices, NLP Application, etc. 💫 人工智能与深度学习实战,数理统计篇 | 机器学习篇 | 深度学习篇 | 自然语言处理篇 | 工具实践 …

Jupyter Notebook 756 241 Updated Sep 21, 2024

MixText: Linguistically-Informed Interpolation of Hidden Space for Semi-Supervised Text Classification

Jupyter Notebook 349 60 Updated Jun 5, 2020

Based on the Pytorch-Transformers library by HuggingFace. To be used as a starting point for employing Transformer models in text classification tasks. Contains code to easily train BERT, XLNet, Ro…

Jupyter Notebook 304 97 Updated May 9, 2020
Jupyter Notebook 246 42 Updated Oct 21, 2022

NLP学习笔记的Notebook,包含经典模型的理解与相关实践。

Jupyter Notebook 55 9 Updated Apr 6, 2020

SMP2018中文人机对话技术评测(ECDT)

Jupyter Notebook 47 16 Updated Oct 25, 2018

Spatial Dynamic Wind Power Forecasting. This task has practical importance for the utilization of wind energy. Participants are expected to accurately estimate the wind power supply of a wind farm.

Jupyter Notebook 13 2 Updated Aug 9, 2022

The PreTENS shared task hosted at SemEval 2022 aims at focusing on semantic competence with specific attention on the evaluation of language models with respect to the recognition of appropriate ta…

Jupyter Notebook 12 1 Updated Feb 5, 2022

虚拟货币“挖矿”行为每年可能消耗全球多达134.89太瓦时的电力,相当于中国3亿家庭一年所耗费的电量。为有效防范处置虚拟货币“挖矿”活动盲目无序发展带来的风险隐患,助力实现碳达峰、碳中和目标,通过用电数据,运用大数据分析手段识别虚拟货币“挖矿”行为将变得尤为重要。A榜排名12/1074,B榜排名9/1074

Jupyter Notebook 4 1 Updated Apr 8, 2023