Freeze and unfreeze weights
Freeze weights in a model or layer so that they are no longer trainable.
freeze_weights(object, from = NULL, to = NULL)
unfreeze_weights(object, from = NULL, to = NULL)Arguments
| object | Keras model or layer object | 
| from | Layer instance, layer name, or layer index within model | 
| to | Layer instance, layer name, or layer index within model | 
Note
The from and to layer arguments are both inclusive.
When applied to a model, the freeze or unfreeze is a global operation over all layers in the model (i.e. layers not within the specified range will be set to the opposite value, e.g. unfrozen for a call to freeze).
Models must be compiled again after weights are frozen or unfrozen.
Examples
# NOT RUN {
# instantiate a VGG16 model
conv_base <- application_vgg16(
  weights = "imagenet",
  include_top = FALSE,
  input_shape = c(150, 150, 3)
)
# freeze it's weights
freeze_weights(conv_base)
# create a composite model that includes the base + more layers
model <- keras_model_sequential() %>%
  conv_base %>%
  layer_flatten() %>%
  layer_dense(units = 256, activation = "relu") %>%
  layer_dense(units = 1, activation = "sigmoid")
# compile
model %>% compile(
  loss = "binary_crossentropy",
  optimizer = optimizer_rmsprop(lr = 2e-5),
  metrics = c("accuracy")
)
# unfreeze weights from "block5_conv1" on
unfreeze_weights(conv_base, from = "block5_conv1")
# compile again since we froze or unfroze weights
model %>% compile(
  loss = "binary_crossentropy",
  optimizer = optimizer_rmsprop(lr = 2e-5),
  metrics = c("accuracy")
)
# }
