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README.md
Contents
- AlexNet Description
- Model Architecture
- Dataset
- Environment Requirements
- Quick Start
- Script Description
- Model Description
- ModelZoo Homepage
AlexNet Description
AlexNet was proposed in 2012, one of the most influential neural networks. It got big success in ImageNet Dataset recognition than other models.
Paper: Krizhevsky A, Sutskever I, Hinton G E. ImageNet Classification with Deep ConvolutionalNeural Networks. Advances In Neural Information Processing Systems. 2012.
Model Architecture
AlexNet composition consists of 5 convolutional layers and 3 fully connected layers. Multiple convolutional kernels can extract interesting features in images and get more accurate classification.
Dataset
Note that you can run the scripts based on the dataset mentioned in original paper or widely used in relevant domain/network architecture. In the following sections, we will introduce how to run the scripts using the related dataset below.
Dataset used: CIFAR-10
- Dataset size:175M,60,000 32*32 colorful images in 10 classes
- Train:146M,50,000 images
- Test:29.3M,10,000 images
- Data format:binary files
- Note:Data will be processed in dataset.py
- Download the dataset, the directory structure is as follows:
├─cifar-10-batches-bin
│
└─cifar-10-verify-bin
Environment Requirements
- Hardware(Ascend/GPU)
- Prepare hardware environment with Ascend or GPU processor.
- Framework
- For more information, please check the resources below:
Quick Start
After installing MindSpore via the official website, you can start training and evaluation as follows:
# enter script dir, train AlexNet
sh run_standalone_train_ascend.sh [DATA_PATH] [CKPT_SAVE_PATH]
# enter script dir, evaluate AlexNet
sh run_standalone_eval_ascend.sh [DATA_PATH] [CKPT_NAME]
Script Description
Script and Sample Code
├── cv
├── alexnet
├── README.md // descriptions about alexnet
├── requirements.txt // package needed
├── scripts
│ ├──run_standalone_train_gpu.sh // train in gpu
│ ├──run_standalone_train_ascend.sh // train in ascend
│ ├──run_standalone_eval_gpu.sh // evaluate in gpu
│ ├──run_standalone_eval_ascend.sh // evaluate in ascend
├── src
│ ├──dataset.py // creating dataset
│ ├──alexnet.py // alexnet architecture
│ ├──config.py // parameter configuration
├── train.py // training script
├── eval.py // evaluation script
Script Parameters
Major parameters in train.py and config.py as follows:
--data_path: The absolute full path to the train and evaluation datasets.
--epoch_size: Total training epochs.
--batch_size: Training batch size.
--image_height: Image height used as input to the model.
--image_width: Image width used as input the model.
--device_target: Device where the code will be implemented. Optional values are "Ascend", "GPU".
--checkpoint_path: The absolute full path to the checkpoint file saved after training.
--data_path: Path where the dataset is saved
Training Process
Training
-
running on Ascend
python train.py --data_path cifar-10-batches-bin --ckpt_path ckpt > log 2>&1 & # or enter script dir, and run the script sh run_standalone_train_ascend.sh cifar-10-batches-bin ckpt
After training, the loss value will be achieved as follows:
# grep "loss is " log 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 ...
The model checkpoint will be saved in the current directory.
-
running on GPU
python train.py --device_target "GPU" --data_path cifar-10-batches-bin --ckpt_path ckpt > log 2>&1 & # or enter script dir, and run the script sh run_standalone_train_for_gpu.sh cifar-10-batches-bin ckpt
After training, the loss value will be achieved as follows:
# grep "loss is " log epoch: 1 step: 1, loss is 2.3125906 ... epoch: 30 step: 1560, loss is 0.6687547 epoch: 30 step: 1561, loss is 0.20055409 epoch: 30 step: 1561, loss is 0.103845775
Evaluation Process
Evaluation
Before running the command below, please check the checkpoint path used for evaluation.
-
running on Ascend
python eval.py --data_path cifar-10-verify-bin --ckpt_path ckpt/checkpoint_alexnet-1_1562.ckpt > eval_log.txt 2>&1 & # or enter script dir, and run the script sh run_standalone_eval_ascend.sh cifar-10-verify-bin ckpt/checkpoint_alexnet-1_1562.ckpt
You can view the results through the file "eval_log". The accuracy of the test dataset will be as follows:
# grep "Accuracy: " eval_log 'Accuracy': 0.8832
-
running on GPU
python eval.py --device_target "GPU" --data_path cifar-10-verify-bin --ckpt_path ckpt/checkpoint_alexnet-30_1562.ckpt > eval_log 2>&1 & # or enter script dir, and run the script sh run_standalone_eval_for_gpu.sh cifar-10-verify-bin ckpt/checkpoint_alexnet-30_1562.ckpt
You can view the results through the file "eval_log". The accuracy of the test dataset will be as follows:
# grep "Accuracy: " eval_log 'Accuracy': 0.88512
Model Description
Performance
Evaluation Performance
Parameters | Ascend | GPU |
---|---|---|
Resource | Ascend 910; CPU 2.60GHz, 192cores; Memory, 755G | NV SMX2 V100-32G |
uploaded Date | 06/09/2020 (month/day/year) | 17/09/2020 (month/day/year) |
MindSpore Version | 1.0.0 | 0.7.0-beta |
Dataset | CIFAR-10 | CIFAR-10 |
Training Parameters | epoch=30, steps=1562, batch_size = 32, lr=0.002 | epoch=30, steps=1562, batch_size = 32, lr=0.002 |
Optimizer | Momentum | Momentum |
Loss Function | Softmax Cross Entropy | Softmax Cross Entropy |
outputs | probability | probability |
Loss | 0.08 | 0.01 |
Speed | 7.3 ms/step | 16.8 ms/step |
Total time | 6 mins | 14 mins |
Checkpoint for Fine tuning | 445M (.ckpt file) | 445M (.ckpt file) |
Scripts | AlexNet Script | AlexNet Script |
Description of Random Situation
In dataset.py, we set the seed inside create_dataset
function.
ModelZoo Homepage
Please check the official homepage.