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| # ResNet-50-THOR Example | |||||
| ## Description | |||||
| This is an example of training ResNet-50 V1.5 with ImageNet2012 dataset by second-order optimizer THOR. THOR is a novel approximate seond-order optimization method in MindSpore. With fewer iterations, THOR can finish ResNet-50 V1.5 training in 72 minutes to top-1 accuracy of 75.9% using 8 Ascend 910, which is much faster than SGD with Momentum. | |||||
| ## Requirements | |||||
| - Install [MindSpore](https://www.mindspore.cn/install/en). | |||||
| - Download the dataset ImageNet2012 | |||||
| > Unzip the ImageNet2012 dataset to any path you want and the folder structure should include train and eval dataset as follows: | |||||
| > ``` | |||||
| > . | |||||
| > ├── ilsvrc # train dataset | |||||
| > └── ilsvrc_eval # infer dataset | |||||
| > ``` | |||||
| ## Example structure | |||||
| ```shell | |||||
| . | |||||
| ├── crossentropy.py # CrossEntropy loss function | |||||
| ├── config.py # parameter configuration | |||||
| ├── dataset_imagenet.py # data preprocessing | |||||
| ├── eval.py # infer script | |||||
| ├── model # include model file of the optimizer | |||||
| ├── run_distribute_train.sh # launch distributed training(8 pcs) | |||||
| ├── run_infer.sh # launch infering | |||||
| └── train.py # train script | |||||
| ``` | |||||
| ## Parameter configuration | |||||
| Parameters for both training and inference can be set in config.py. | |||||
| ``` | |||||
| "class_num": 1000, # dataset class number | |||||
| "batch_size": 32, # batch size of input tensor | |||||
| "loss_scale": 128, # loss scale | |||||
| "momentum": 0.9, # momentum of THOR optimizer | |||||
| "weight_decay": 5e-4, # weight decay | |||||
| "epoch_size": 45, # only valid for taining, which is always 1 for inference | |||||
| "buffer_size": 1000, # number of queue size in data preprocessing | |||||
| "image_height": 224, # image height | |||||
| "image_width": 224, # image width | |||||
| "save_checkpoint": True, # whether save checkpoint or not | |||||
| "save_checkpoint_steps": 5004, # the step interval between two checkpoints. By default, the checkpoint will be saved every epoch | |||||
| "keep_checkpoint_max": 20, # only keep the last keep_checkpoint_max checkpoint | |||||
| "save_checkpoint_path": "./", # path to save checkpoint relative to the executed path | |||||
| "label_smooth": True, # label smooth | |||||
| "label_smooth_factor": 0.1, # label smooth factor | |||||
| "frequency": 834, # the step interval to update second-order information matrix | |||||
| ``` | |||||
| ## Running the example | |||||
| ### Train | |||||
| #### Usage | |||||
| ``` | |||||
| # distributed training | |||||
| Usage: sh run_distribute_train.sh [MINDSPORE_HCCL_CONFIG_PATH] [DATASET_PATH] [DEVICE_NUM] | |||||
| ``` | |||||
| #### Launch | |||||
| ```bash | |||||
| # distributed training example(8 pcs) | |||||
| sh run_distribute_train.sh rank_table_8p.json dataset/ilsvrc | |||||
| ``` | |||||
| > About rank_table.json, you can refer to the [distributed training tutorial](https://www.mindspore.cn/tutorial/en/master/advanced_use/distributed_training.html). | |||||
| #### Result | |||||
| Training result will be stored in the example path, whose folder name begins with "train_parallel". Under this, you can find checkpoint file together with result like the followings in log. | |||||
| ``` | |||||
| # distribute training result(8 pcs) | |||||
| epoch: 1 step: 5004, loss is 4.4182425 | |||||
| epoch: 2 step: 5004, loss is 3.740064 | |||||
| epoch: 3 step: 5004, loss is 4.0546017 | |||||
| epoch: 4 step: 5004, loss is 3.7598825 | |||||
| epoch: 5 step: 5004, loss is 3.3744206 | |||||
| ...... | |||||
| ``` | |||||
| ### Infer | |||||
| #### Usage | |||||
| ``` | |||||
| # infer | |||||
| Usage: sh run_infer.sh [DATASET_PATH] [CHECKPOINT_PATH] | |||||
| ``` | |||||
| #### Launch | |||||
| ```bash | |||||
| # infer with checkpoint | |||||
| sh run_infer.sh dataset/ilsvrc_eval train_parallel0/resnet-42_5004.ckpt | |||||
| ``` | |||||
| > checkpoint can be produced in training process. | |||||
| #### Result | |||||
| Inference result will be stored in the example path, whose folder name is "infer". Under this, you can find result like the followings in log. | |||||
| ``` | |||||
| result: {'acc': 0.759503041} ckpt=train_parallel0/resnet-42_5004.ckpt | |||||
| ``` | |||||