# AlexNet Example ## Description Training AlexNet with CIFAR-10 dataset in MindSpore. This is the simple tutorial for training AlexNet in MindSpore. ## Requirements - Install [MindSpore](https://www.mindspore.cn/install/en). - Download the CIFAR-10 dataset, the directory structure is as follows: ``` ├─cifar-10-batches-bin │ └─cifar-10-verify-bin ``` ## Running the example ```python # train AlexNet, hyperparameter setting in config.py python train.py --data_path cifar-10-batches-bin ``` You will get the loss value of each step as following: ```bash epoch: 1 step: 1, loss is 2.2791853 ... epoch: 1 step: 1536, loss is 1.9366643 epoch: 1 step: 1537, loss is 1.6983616 epoch: 1 step: 1538, loss is 1.0221305 ... ``` Then, evaluate AlexNet according to network model ```python # evaluate AlexNet, 1 epoch training accuracy is up to 51.1%; 10 epoch training accuracy is up to 81.2% python eval.py --data_path cifar-10-verify-bin --mode test --ckpt_path checkpoint_alexnet-1_1562.ckpt ``` ## Note Here are some optional parameters: ```bash --device_target {Ascend,GPU} device where the code will be implemented (default: Ascend) --data_path DATA_PATH path where the dataset is saved --dataset_sink_mode DATASET_SINK_MODE dataset_sink_mode is False or True ``` You can run ```python train.py -h``` or ```python eval.py -h``` to get more information.