The fastai library
simplifies training fast and accurate neural nets using modern best
practices. See the fastai website to get started. The library is based
on research into deep learning best practices undertaken at
fast.ai, and includes “out of the box” support for
vision, text, tabular, and
collab (collaborative filtering) models.
Download and prepare data:
Transformations:
Cbs argument means callbacks:
epoch     train_loss  valid_loss  accuracy  time
0         0.023524    0.009781    0.996565  00:16
1         0.033328    0.019839    0.993621  00:16
No improvement since epoch 0: early stoppingSave best model for each epoch:
learn = cnn_learner(data, resnet18(), metrics = accuracy, path = getwd())
learn %>% fit_one_cycle(3, cbs = SaveModelCallback(every_epoch = TRUE,  fname = 'model'))See folder:
# [1] "model_0.pth" "model_1.pth" "model_2.pth"Decrease learning rate if loss is not improved:
epoch     train_loss  valid_loss  accuracy  time
0         0.117138    0.038180    0.987242  00:17
1         0.140064    0.006160    0.996565  00:16
2         0.133680    0.061945    0.985770  00:16
Epoch 2: reducing lr to 0.0009891441414237997
3         0.049780    0.005699    0.998037  00:16
4         0.040660    0.019514    0.994112  00:16
Epoch 4: reducing lr to 0.0007502954607977343
5         0.027146    0.009783    0.997056  00:16
Epoch 5: reducing lr to 0.0005526052040192481
6         0.024709    0.008050    0.998528  00:16
Epoch 6: reducing lr to 0.0003458198506447947
7         0.016352    0.010778    0.998037  00:16
Epoch 7: reducing lr to 0.0001656946233635187
8         0.071180    0.009519    0.998528  00:16
Epoch 8: reducing lr to 4.337456332530222e-05
9         0.014804    0.005769    0.998528  00:16
Epoch 9: reducing lr to 1.0114427793916913e-08Or add new parameter min_lr:
Save train history. In addition, for multiple callbacks it is important to pass them within list:
learn = cnn_learner(data, resnet18(), metrics = accuracy, path = getwd())
learn %>% fit_one_cycle(2, cbs = list(CSVLogger(),
                                      ReduceLROnPlateau(monitor='valid_loss',
                                      min_delta=0.1, patience = 1, min_lr = 1e-8)))
history  = read.csv('history.csv')
historyepoch train_loss valid_loss  accuracy  time
1     0 0.15677054 0.09788394 0.9646713 00:17
2     1 0.08268011 0.05654754 0.9803729 00:17