!5566 update RELEASE

Merge pull request !5566 from mengchunyang/master
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mindspore-ci-bot 2020-08-31 16:42:32 +08:00 committed by Gitee
commit c9d6dc7339
3 changed files with 13 additions and 13 deletions

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* add optimized convolution1X1/3X3/depthwise/convolution_transposed for OpenCL.
* Tool & example
* Add benchmark and TimeProfile tools.
* Add image classification and object detection Android Demo.
* Add image classification Android Demo.
## Bugfixes
* Models

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@ -35,7 +35,7 @@ For more details please check out our [MindSpore Lite Architecture Guide](https:
The MindSpore team provides a series of pre-training models used for image classification, object detection. You can use these pre-trained models in your application.
The pre-trained models provided by MindSpore include: [Image Classification](https://download.mindspore.cn/model_zoo/official/lite/) and [Object Detection](https://download.mindspore.cn/model_zoo/official/lite/). More models will be provided in the feature.
The pre-trained model provided by MindSpore: [Image Classification](https://download.mindspore.cn/model_zoo/official/lite/). More models will be provided in the feature.
MindSpore allows you to retrain pre-trained models to perform other tasks.
@ -53,7 +53,7 @@ For more details please check out our [MindSpore Lite Architecture Guide](https:
Load the model and perform inference. [Inference](https://www.mindspore.cn/lite/tutorial/en/master/use/runtime.html) is the process of running input data through the model to get output.
MindSpore provides a series of pre-trained models that can be deployed on mobile device [example](#TODO).
MindSpore provides pre-trained model that can be deployed on mobile device [example](https://www.mindspore.cn/lite/examples/en).
## MindSpore Lite benchmark test result
Base on MindSpore r0.7, we test a couple of networks on HUAWEI Mate30 (Hisilicon Kirin990) mobile phone, and get the test results below for your reference.

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@ -43,7 +43,7 @@ MindSpore Lite是MindSpore推出的端云协同的、轻量化、高性能AI推
MindSpore团队提供了一系列预训练模型用于解决图像分类、目标检测等场景的学习问题。可以在您的应用程序中使用这些预训练模型对应的终端模型。
MindSpore提供的预训练模型包括[图像分类Image Classification](https://download.mindspore.cn/model_zoo/official/lite/)和[目标检测Object Detection](https://download.mindspore.cn/model_zoo/official/lite/)。后续MindSpore团队会增加更多的预置模型。
MindSpore提供的预训练模型[图像分类Image Classification](https://download.mindspore.cn/model_zoo/official/lite/)。后续MindSpore团队会增加更多的预置模型。
MindSpore允许您重新训练预训练模型以执行其他任务。比如使用预训练的图像分类模型可以重新训练来识别新的图像类型。
@ -63,15 +63,15 @@ MindSpore Lite是MindSpore推出的端云协同的、轻量化、高性能AI推
主要完成模型推理工作,即加载模型,完成模型相关的所有计算。[推理](https://www.mindspore.cn/lite/tutorial/zh-CN/master/use/runtime.html)是通过模型运行输入数据,获取预测的过程。
MindSpore提供了一系列预训练模型部署在智能终端的[样例](#TODO)。
MindSpore提供了预训练模型部署在智能终端的[样例](https://www.mindspore.cn/lite/examples)。
## MindSpore Lite性能参考数据
我们在HUAWEI Mate30Hisilicon Kirin990手机上基于MindSpore r0.7,测试了一组端侧常见网络的性能数据,供您参考:
| 网络 | 线程数 | 平均推理时间(毫秒) |
| ------------------- | ------ | ------------------ |
| basic_squeezenet | 4 | 9.10 |
| inception_v3 | 4 | 69.361 |
| mobilenet_v1_10_224 | 4 | 7.137 |
| mobilenet_v2_10_224 | 4 | 5.569 |
| resnet_v2_50 | 4 | 48.691 |
| 网络 | 线程数 | 平均推理时间(毫秒) |
| ------------------- | ------ | ------------------ |
| basic_squeezenet | 4 | 9.10 |
| inception_v3 | 4 | 69.361 |
| mobilenet_v1_10_224 | 4 | 7.137 |
| mobilenet_v2_10_224 | 4 | 5.569 |
| resnet_v2_50 | 4 | 48.691 |