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[Doc] v0.4.1 (#270)
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cenyk1230 committed Aug 13, 2021
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6 changes: 4 additions & 2 deletions README.md
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Expand Up @@ -21,18 +21,20 @@ We summarize the contributions of CogDL as follows:

## ❗ News

- The new **v0.4.1 release** adds the implementation of Deep GNNs and the recommendation task. It also supports new pipelines for generating embeddings and recommendation. Welcome to join our tutorial on KDD 2021 at 10:30 am - 12:00 am, Aug. 14th (Singapore Time). More details can be found in https://kdd2021graph.github.io/. 🎉

- The new **v0.4.0 release** refactors the data storage (from `Data` to `Graph`) and provides more fast operators to speed up GNN training. It also includes many self-supervised learning methods on graphs. BTW, we are glad to announce that we will give a tutorial on KDD 2021 in August. Please see [this link](https://kdd2021graph.github.io/) for more details. 🎉

- CogDL supports GNN models with Mixture of Experts (MoE). You can install [FastMoE](https://github.com/laekov/fastmoe) and try **[MoE GCN](./cogdl/models/nn/moe_gcn.py)** in CogDL now!

- The new **v0.3.0 release** provides a fast spmm operator to speed up GNN training. We also release the first version of **[CogDL paper](https://arxiv.org/abs/2103.00959)** in arXiv. You can join [our slack](https://join.slack.com/t/cogdl/shared_invite/zt-b9b4a49j-2aMB035qZKxvjV4vqf0hEg) for discussion. 🎉🎉🎉

<details>
<summary>
News History
</summary>
<br/>

- The new **v0.3.0 release** provides a fast spmm operator to speed up GNN training. We also release the first version of **[CogDL paper](https://arxiv.org/abs/2103.00959)** in arXiv. You can join [our slack](https://join.slack.com/t/cogdl/shared_invite/zt-b9b4a49j-2aMB035qZKxvjV4vqf0hEg) for discussion. 🎉🎉🎉

- The new **v0.2.0 release** includes easy-to-use `experiment` and `pipeline` APIs for all experiments and applications. The `experiment` API supports automl features of searching hyper-parameters. This release also provides `OAGBert` API for model inference (`OAGBert` is trained on large-scale academic corpus by our lab). Some features and models are added by the open source community (thanks to all the contributors 🎉).

- The new **v0.1.2 release** includes a pre-training task, many examples, OGB datasets, some knowledge graph embedding methods, and some graph neural network models. The coverage of CogDL is increased to 80%. Some new APIs, such as `Trainer` and `Sampler`, are developed and being tested.
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6 changes: 4 additions & 2 deletions README_CN.md
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Expand Up @@ -21,18 +21,20 @@ CogDL的特性包括:

## ❗ 最新

- 最新的 **v0.4.1 release** 增加了深层GNN的实现和推荐任务。这个版本同时提供了新的一些pipeline用于直接获取图表示和搭建推荐应用。欢迎大家参加我们在KDD 2021上的tutorial,时间是8月14号上午10:30 - 12:00(北京时间)。 更多的内容可以查看 https://kdd2021graph.github.io/. 🎉

- 最新的 **v0.4.0版本** 重构了底层的数据存储(从`Data`类变为`Graph`类),并且提供了更多快速的算子来加速图神经网络的训练。这个版本还包含了很多图自监督学习的算法。同时,我们很高兴地宣布我们将在8月份的KDD 2021会议上给一个CogDL相关的tutorial。具体信息请参见[这个链接](https://kdd2021graph.github.io/). 🎉

- CogDL支持图神经网络模型使用混合专家模块(Mixture of Experts, MoE)。 你可以安装[FastMoE](https://github.com/laekov/fastmoe)然后在CogDL中尝试 **[MoE GCN](./cogdl/models/nn/moe_gcn.py)** 模型!

- 最新的 **v0.3.0版本** 提供了快速的稀疏矩阵乘操作来加速图神经网络模型的训练。我们在arXiv上发布了 **[CogDL paper](https://arxiv.org/abs/2103.00959)** 的初版. 你可以加入[我们的slack](https://join.slack.com/t/cogdl/shared_invite/zt-b9b4a49j-2aMB035qZKxvjV4vqf0hEg)来讨论CogDL相关的内容。🎉

<details>
<summary>
历史
</summary>
<br/>

- 最新的 **v0.3.0版本** 提供了快速的稀疏矩阵乘操作来加速图神经网络模型的训练。我们在arXiv上发布了 **[CogDL paper](https://arxiv.org/abs/2103.00959)** 的初版. 你可以加入[我们的slack](https://join.slack.com/t/cogdl/shared_invite/zt-b9b4a49j-2aMB035qZKxvjV4vqf0hEg)来讨论CogDL相关的内容。🎉

- 最新的 **v0.2.0版本** 包含了非常易用的`experiment``pipeline`接口,其中`experiment`接口还支持超参搜索。这个版本还提供了`OAGBert`模型的接口(`OAGBert`是我们实验室推出的在大规模学术语料下训练的模型)。这个版本的很多内容是由开源社区的小伙伴们提供的,感谢大家的支持!🎉

- 最新的 **v0.1.2版本** 包括了预训练任务、各种使用样例、OGB数据集、知识图谱表示学习算法和一些图神经网络模型。CogDL的测试覆盖率增加至80%。正在开发和测试一些新的API,比如`Trainer``Sampler`
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2 changes: 1 addition & 1 deletion cogdl/__init__.py
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__version__ = "0.4.0"
__version__ = "0.4.1"

from .experiments import experiment
from .oag import oagbert
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1 change: 1 addition & 0 deletions docs/source/index.rst
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Expand Up @@ -17,6 +17,7 @@ We summarize the contributions of CogDL as follows:
❗ News
------------

- The new **v0.4.1 release** adds the implementation of Deep GNNs and the recommendation task. It also supports new pipelines for generating embeddings and recommendation. Welcome to join our tutorial on KDD 2021 at 10:30 am - 12:00 am, Aug. 14th (Singapore Time). More details can be found in https://kdd2021graph.github.io/. 🎉
- The new **v0.4.0 release** refactors the data storage (from ``Data`` to ``Graph``) and provides more fast operators to speed up GNN training. It also includes many self-supervised learning methods on graphs. BTW, we are glad to announce that we will give a tutorial on KDD 2021 in August. Please see this `link <https://kdd2021graph.github.io/>`_ for more details. 🎉
- The new **v0.3.0 release** provides a fast spmm operator to speed up GNN training. We also release the first version of `CogDL paper <https://arxiv.org/abs/2103.00959>`_ in arXiv. You can join `our slack <https://join.slack.com/t/cogdl/shared_invite/zt-b9b4a49j-2aMB035qZKxvjV4vqf0hEg>`_ for discussion. 🎉🎉🎉
- The new **v0.2.0 release** includes easy-to-use ``experiment`` and ``pipeline`` APIs for all experiments and applications. The ``experiment`` API supports automl features of searching hyper-parameters. This release also provides ``OAGBert`` API for model inference (``OAGBert`` is trained on large-scale academic corpus by our lab). Some features and models are added by the open source community (thanks to all the contributors 🎉).
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