reloading
A Python utility to reload a loop body from source on each iteration without losing state
Useful for editing source code during training of deep learning models. This lets you e.g. add logging, print statistics or save the model without restarting the training and, therefore, without losing the training progress.
Install
pip install reloading
Usage
To reload the body of a for
loop from source before each iteration, simply
wrap the iterator with reloading
, e.g.
from reloading import reloading
for i in reloading(range(10)):
# this code will be reloaded before each iteration
print(i)
To reload a function from source before each execution, decorate the function
definition with @reloading
, e.g.
from reloading import reloading
@reloading
def some_function():
# this code will be reloaded before each invocation
pass
Additional Options
Pass the keyword argument every
to reload only on every n-th invocation or iteration. E.g.
for i in reloading(range(1000), every=10):
# this code will only be reloaded before every 10th iteration
# this can help to speed-up tight loops
pass
@reloading(every=10)
def some_function():
# this code with only be reloaded before every 10th invocation
pass
Pass forever=True
instead of an iterable to create an endless reloading loop, e.g.
for i in reloading(forever=True):
# this code will loop forever and reload from source before each iteration
pass
Examples
Here are the short snippets of how to use reloading with your favourite library. For complete examples, check out the examples folder.
PyTorch
for epoch in reloading(range(NB_EPOCHS)):
# the code inside this outer loop will be reloaded before each epoch
for images, targets in dataloader:
optimiser.zero_grad()
predictions = model(images)
loss = F.cross_entropy(predictions, targets)
loss.backward()
optimiser.step()
Here is a full PyTorch example.
fastai
@reloading
def update_learner(learner):
# this function will be reloaded from source before each epoch so that you
# can make changes to the learner while the training is running
pass
class LearnerUpdater(LearnerCallback):
def on_epoch_begin(self, **kwargs):
update_learner(self.learn)
path = untar_data(URLs.MNIST_SAMPLE)
data = ImageDataBunch.from_folder(path)
learn = cnn_learner(data, models.resnet18, metrics=accuracy,
callback_fns=[LearnerUpdater])
learn.fit(10)
Here is a full fastai example.
Keras
@reloading
def update_model(model):
# this function will be reloaded from source before each epoch so that you
# can make changes to the model while the training is running using
# K.set_value()
pass
class ModelUpdater(Callback):
def on_epoch_begin(self, epoch, logs=None):
update_model(self.model)
model = Sequential()
model.add(Dense(64, activation='relu', input_dim=20))
model.add(Dense(10, activation='softmax'))
sgd = SGD(lr=0.01, decay=1e-6, momentum=0.9, nesterov=True)
model.compile(loss='categorical_crossentropy',
optimizer=sgd,
metrics=['accuracy'])
model.fit(x_train, y_train,
epochs=200,
batch_size=128,
callbacks=[ModelUpdater()])
Here is a full Keras example.
TensorFlow
for epoch in reloading(range(NB_EPOCHS)):
# the code inside this outer loop will be reloaded from source
# before each epoch so that you can change it during training
train_loss.reset_states()
train_accuracy.reset_states()
test_loss.reset_states()
test_accuracy.reset_states()
for images, labels in tqdm(train_ds):
train_step(images, labels)
for test_images, test_labels in tqdm(test_ds):
test_step(test_images, test_labels)
Here is a full TensorFlow example.
Testing
Make sure you have python
and python3
available in your path, then run:
$ python3 reloading/test_reloading.py