# 基准性能 [![查看源文件](./_static/logo_source.png)](https://gitee.com/mindspore/docs/blob/r0.5/docs/source_zh_cn/benchmark.md) 本文介绍MindSpore的基准性能。MindSpore预训练模型可参考[Model Zoo](https://gitee.com/mindspore/mindspore/tree/r0.5/model_zoo)。 ## 训练性能 ### ResNet | Network | Network Type | Dataset | MindSpore Version | Resource                 | Precision | Batch Size | Throughput | Speedup | | --- | --- | --- | --- | --- | --- | --- | --- | --- | | ResNet-50 v1.5 | CNN | ImageNet2012 | 0.5.0-beta | Ascend: 1 * Ascend 910
CPU:24 Cores | Mixed | 256 | 2115 images/sec | - | | | | | | Ascend: 8 * Ascend 910
CPU:192 Cores | Mixed | 256 | 16600 images/sec | 0.98 | | | | | | Ascend: 16 * Ascend 910
CPU:384 Cores | Mixed | 256 | 32768 images/sec | 0.96 | 1. 以上数据基于华为云AI开发平台ModelArts测试获得,是训练过程整体下沉至Ascend 910 AI处理器执行所得的平均性能。 2. 业界其他开源框架数据可参考:[ResNet-50 v1.5 for TensorFlow](https://github.com/NVIDIA/DeepLearningExamples/tree/master/TensorFlow/Classification/ConvNets/resnet50v1.5)。 ### BERT | Network | Network Type | Dataset | MindSpore Version | Resource                 | Precision | Batch Size | Throughput | Speedup | | --- | --- | --- | --- | --- | --- | --- | --- | --- | | BERT-Large | Attention | zhwiki | 0.5.0-beta | Ascend: 1 * Ascend 910
CPU:24 Cores | Mixed | 96 | 269 sentences/sec | - | | | | | | Ascend: 8 * Ascend 910
CPU:192 Cores | Mixed | 96 | 2069 sentences/sec | 0.96 | 1. 以上数据基于华为云AI开发平台ModelArts测试获得,其中网络包含24个隐藏层,句长为128个token,字典表包含21128个token。 2. 业界其他开源框架数据可参考:[BERT For TensorFlow](https://github.com/NVIDIA/DeepLearningExamples/tree/master/TensorFlow/LanguageModeling/BERT)。