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| scripts | 5 years ago | |
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| README.md | 5 years ago | |
| eval.py | 5 years ago | |
| requirements.txt | 5 years ago | |
| train.py | 5 years ago | |
LeNet was proposed in 1998, a typical convolutional neural network. It was used for digit recognition and got big success.
Paper: Y.Lecun, L.Bottou, Y.Bengio, P.Haffner. Gradient-Based Learning Applied to Document Recognition. Proceedings of the IEEE. 1998.
LeNet is very simple, which contains 5 layers. The layer composition consists of 2 convolutional layers and 3 fully connected layers.
Dataset used: MNIST
Dataset size:52.4M,60,000 28*28 in 10 classes
Data format:binary files
The directory structure is as follows:
└─Data
├─test
│ t10k-images.idx3-ubyte
│ t10k-labels.idx1-ubyte
│
└─train
train-images.idx3-ubyte
train-labels.idx1-ubyte
After installing MindSpore via the official website, you can start training and evaluation as follows:
# enter script dir, train LeNet
sh run_standalone_train_ascend.sh [DATA_PATH] [CKPT_SAVE_PATH]
# enter script dir, evaluate LeNet
sh run_standalone_eval_ascend.sh [DATA_PATH] [CKPT_NAME]
├── cv
├── lenet
├── README.md // descriptions about lenet
├── requirements.txt // package needed
├── scripts
│ ├──run_standalone_train_cpu.sh // train in cpu
│ ├──run_standalone_train_gpu.sh // train in gpu
│ ├──run_standalone_train_ascend.sh // train in ascend
│ ├──run_standalone_eval_cpu.sh // evaluate in cpu
│ ├──run_standalone_eval_gpu.sh // evaluate in gpu
│ ├──run_standalone_eval_ascend.sh // evaluate in ascend
├── src
│ ├──dataset.py // creating dataset
│ ├──lenet.py // lenet architecture
│ ├──config.py // parameter configuration
├── train.py // training script
├── eval.py // evaluation script
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", "CPU".
--checkpoint_path: The absolute full path to the checkpoint file saved
after training.
--data_path: Path where the dataset is saved
python train.py --data_path Data --ckpt_path ckpt > log.txt 2>&1 &
or enter script dir, and run the script
sh run_standalone_train_ascend.sh Data ckpt
After training, the loss value will be achieved as follows:
# grep "loss is " log.txt
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.
Before running the command below, please check the checkpoint path used for evaluation.
python eval.py --data_path Data --ckpt_path ckpt/checkpoint_lenet-1_1875.ckpt > log.txt 2>&1 &
or enter script dir, and run the script
sh run_standalone_eval_ascend.sh Data ckpt/checkpoint_lenet-1_1875.ckpt
You can view the results through the file "log.txt". The accuracy of the test dataset will be as follows:
# grep "Accuracy: " log.txt
'Accuracy': 0.9842
| Parameters | LeNet |
|---|---|
| Resource | Ascend 910 ;CPU 2.60GHz,56cores;Memory,314G |
| uploaded Date | 06/09/2020 (month/day/year) |
| MindSpore Version | 0.5.0-beta |
| Dataset | MNIST |
| Training Parameters | epoch=10, steps=1875, batch_size = 32, lr=0.01 |
| Optimizer | Momentum |
| Loss Function | Softmax Cross Entropy |
| outputs | probability |
| Loss | 0.002 |
| Speed | 1.70 ms/step |
| Total time | 43.1s |
| Checkpoint for Fine tuning | 482k (.ckpt file) |
| Scripts | https://gitee.com/mindspore/mindspore/tree/master/model_zoo/official/cv/lenet |
In dataset.py, we set the seed inside create_dataset function.
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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