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4 years ago | |
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| models | 4 years ago | |
| scripts | 4 years ago | |
| src | 4 years ago | |
| README.md | 4 years ago | |
| README_CN.md | 4 years ago | |
| eval.py | 4 years ago | |
| export.py | 4 years ago | |
| train.py | 4 years ago | |
ResNet-50 is a convolutional neural network that is 50 layers deep, which can classify ImageNet image to 1000 object categories with 76% accuracy.
Paper: Kaiming He, Xiangyu Zhang, Shaoqing Ren, Jian Sun."Deep Residual Learning for Image Recognition." He, Kaiming , et al. "Deep Residual Learning for Image Recognition." IEEE Conference on Computer Vision & Pattern Recognition IEEE Computer Society, 2016.
This is the quantitative network of ResNet50.
The overall network architecture of Resnet50 is show below:
Dataset used: ImageNet2012
└─dataset
├─ilsvrc # train dataset
└─validation_preprocess # evaluate dataset
The mixed precision training method accelerates the deep learning neural network training process by using both the single-precision and half-precision data formats, and maintains the network precision achieved by the single-precision training at the same time. Mixed precision training can accelerate the computation process, reduce memory usage, and enable a larger model or batch size to be trained on specific hardware.
For FP16 operators, if the input data type is FP32, the backend of MindSpore will automatically handle it with reduced precision. Users could check the reduced-precision operators by enabling INFO log and then searching ‘reduce precision’.
├── resnet50_quant
├── README.md # descriptions about Resnet50-Quant
├── scripts
│ ├──run_train.sh # shell script for train on Ascend
│ ├──run_infer.sh # shell script for evaluation on Ascend
├── models
│ ├──resnet_quant.py # define the network model of resnet50-quant
│ ├──resnet_quant_manual.py # define the manually quantized network model of resnet50-quant
├── src
│ ├──config.py # parameter configuration
│ ├──dataset.py # creating dataset
│ ├──launch.py # start python script
│ ├──lr_generator.py # learning rate config
│ ├──crossentropy.py # define the crossentropy of resnet50-quant
├── train.py # training script
├── eval.py # evaluation script
├── export.py # export script
Parameters for both training and evaluation can be set in config.py
config for Resnet50-quant, ImageNet2012 dataset
'class_num': 10 # the number of classes in the dataset
'batch_size': 32 # training batch size
'loss_scale': 1024 # the initial loss_scale value
'momentum': 0.9 # momentum
'weight_decay': 1e-4 # weight decay value
'epoch_size': 120 # total training epochs
'pretrained_epoch_size': 90 # pretraining epochs of resnet50, which is unquantative network of resnet50_quant
'data_load_mode': 'original' # the style of loading data into device, support 'original' or 'mindrecord'
'save_checkpoint':True # whether save checkpoint file after training finish
'save_checkpoint_epochs': 1 # the step from which start to save checkpoint file.
'keep_checkpoint_max': 50 # only keep the last keep_checkpoint_max checkpoint
'save_checkpoint_path': './' # the absolute full path to save the checkpoint file
"warmup_epochs": 0 # number of warmup epochs
'lr_decay_mode': "cosine" # learning rate decay mode, including steps, steps_decay, cosine or liner
'use_label_smooth': True # whether use label smooth
'label_smooth_factor': 0.1 # label smooth factor
'lr_init': 0 # initial learning rate
'lr_max': 0.005 # the max learning rate
# training example
Ascend: bash run_train.sh Ascend ~/hccl.json ~/imagenet/train/ ~/pretrained_ckeckpoint
Training result will be stored in the example path. Checkpoints will be stored at ./train/device$i/ by default, and training log will be redirected to ./train/device$i/train.log like following.
epoch: 1 step: 5004, loss is 4.8995576
epoch: 2 step: 5004, loss is 3.9235563
epoch: 3 step: 5004, loss is 3.833077
epoch: 4 step: 5004, loss is 3.2795618
epoch: 5 step: 5004, loss is 3.1978393
You can start training using python or shell scripts. The usage of shell scripts as follows:
# infer example
shell:
Ascend: sh run_infer.sh Ascend ~/imagenet/val/ ~/train/Resnet50-30_5004.ckpt
checkpoint can be produced in training process.
Inference result will be stored in the example path, you can find result like the following in ./eval/infer.log.
result: {'acc': 0.76576314102564111}
| Parameters | Ascend |
|---|---|
| Model Version | ResNet50 V1.5 |
| Resource | Ascend 910; CPU 2.60GHz, 56cores; Memory 314G; OS Euler2.8 |
| uploaded Date | 06/06/2020 (month/day/year) |
| MindSpore Version | 0.3.0-alpha |
| Dataset | ImageNet |
| Training Parameters | epoch=30(with pretrained) or 120, steps per epoch=5004, batch_size=32 |
| Optimizer | Momentum |
| Loss Function | Softmax Cross Entropy |
| outputs | probability |
| Loss | 1.8 |
| Speed | 8pcs: 407 ms/step |
| Total time | 8pcs: 17 hours(30 epochs with pretrained) |
| Parameters (M) | 25.5 |
| Checkpoint for Fine tuning | 197M (.ckpt file) |
| Scripts | resnet50-quant script |
| Parameters | Ascend |
|---|---|
| Model Version | ResNet50 V1.5 |
| Resource | Ascend 910; CPU 2.60GHz, 56cores; Memory 314G; OS Euler2.8 |
| Uploaded Date | 06/06/2020 (month/day/year) |
| MindSpore Version | 0.3.0-alpha |
| Dataset | ImageNet |
| batch_size | 32 |
| outputs | probability |
| Accuracy | ACC1[76.57%] ACC5[92.90%] |
| Model for inference | 197M (.ckpt file) |
In dataset.py, we set the seed inside “create_dataset" function. We also use random seed in train.py.
Please check the official homepage.
MindSpore is a new open source deep learning training/inference framework that could be used for mobile, edge and cloud scenarios.
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