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This tutorial is an R translation of this page available in the official TensorFlow documentation.
The first part of this guide covers saving and serialization for Sequential models and models built using the Functional API. The saving and serialization APIs are the exact same for both of these types of models.
Saving for custom subclasses of Model is covered in the section “Saving Subclassed Models”. The APIs in this case are slightly different than for Sequential or Functional models.
For Sequential Models and models built using the Functional API use:
save_model_hdf5()
/load_model_hdf5()
to
save the entire model to disk, including the optimizer
state. You can also use
save_model_tf
/load_model_tf
to save the entire
model to the SavedModel format.
get_config()
/from_config()
to load only
the model architecture into an R object.
model_to_json()
/model_from_json()
to
save only the architecture of the model to a single string - useful for
saving the architecture to disk. You can also use
model_to_yaml()
/model_from_yaml()
to save the
architecture.
save_model_weights_hdf5()
/load_model_weights_hdf5()
if you want to save only the model weights to disk in the
hdf5
format. You can also use
save_model_weights_tf()
/load_model_weights_tf()
to save the weights in the SavedModel format.
Note you can use a combination of
model_to_json()
and save_model_weights_hdf5()
to save both the architecture and the weights. In this case the
optimizer state is not saved.
For custom models use:
save_model_weights_tf()
or
save_model_weights_hdf5()
to save the model weights.
Usually for custom models, the architecture must be recreated using
code.inputs <- layer_input(shape = 784, name = "digits")
outputs <- inputs %>%
layer_dense(units = 64, activation = "relu", name = "dense_1") %>%
layer_dense(units = 64, activation = "relu", name = "dense_2") %>%
layer_dense(units = 10, activation = "softmax", name = "predictions")
model <- keras_model(inputs, outputs)
summary(model)
Optionally, let’s train this model, just so it has weight values to save, as well as an an optimizer state. Of course, you can save models you’ve never trained, too, but obviously that’s less interesting.
c(c(x_train, y_train), c(x_test, y_test)) %<-% dataset_mnist()
x_train <- x_train %>% array_reshape(dim = c(60000, 784))/255
x_test <- x_test %>% array_reshape(dim = c(10000, 784))/255
model %>% compile(loss = "sparse_categorical_crossentropy",
optimizer = optimizer_rmsprop())
history <- model %>% fit(x_train, y_train, batch_size = 64, epochs = 1)
You can save a model built with the Functional API into a single file. You can later recreate the same model from this file, even if you no longer have access to the code that created the model.
This file includes:
# Save the model
save_model_hdf5(model, "model.h5")
# Recreate the exact same model purely from the file
new_model <- load_model_hdf5("model.h5")
# Check that the state is preserved
new_predictions <- predict(new_model, x_test)
all.equal(predictions, new_predictions)
Note that the optimizer state is preserved as well so you can resume training where you left off.
You can also export a whole model to the TensorFlow SavedModel
format. SavedModel is a standalone serialization format for Tensorflow
objects, supported by TensorFlow serving as well as TensorFlow
implementations other than Python. Note that save_model_tf
is only available for TensorFlow version greater than 1.14.
# Export the model to a SavedModel
save_model_tf(model, "model/")
# Recreate the exact same model
new_model <- load_model_tf("model/")
# Check that the state is preserved
new_predictions <- predict(new_model, x_test)
all.equal(predictions, new_predictions)
Note that the optimizer state is preserved as well so you can resume training where you left off.
The SavedModel
files that were created contain:
You can also use the export_savedmodel
function to
export models but those models can not be loaded as Keras models again.
Models exported using exported_savedmodels
can be used for
prediction though.
export_savedmodel(model, "savedmodel/")
new_predictions <- tfdeploy::predict_savedmodel(x_test, "savedmodel/")
Note Exporting with export_savedmodel
sets learning phase to 0 so you need to restart R and re-build the model
before doing additional training.
Sometimes, you are only interested in the architecture of the model, and you don’t need to save the weight values or the optimizer. In this case, you can retrieve the “config” of the model via the get_config() method. The config is a named list that enables you to recreate the same model – initialized from scratch, without any of the information learned previously during training.
# Note that the model state is not preserved! We only saved the architecture.
new_predictions <- predict(reinitialized_model, x_test)
all.equal(predictions, new_predictions)
You can alternatively use model_to_json()
and
model_from_json()
, which uses a JSON string to store the
config instead of a named list. This is useful to save the config to
disk.
Sometimes, you are only interested in the state of the model – its
weights values – and not in the architecture. In this case, you can
retrieve the weights values as a list of arrays via
get_weights()
, and set the state of the model via
set_weights
:
weights <- get_weights(model)
set_weights(reinitialized_model, weights)
new_predictions <- predict(reinitialized_model, x_test)
all.equal(predictions, new_predictions)
You can combine get_config()
/from_config()
and get_weights()
/set_weights()
to recreate
your model in the same state. However, unlike
save_model_hdf5
, this will not include the training config
and the optimizer. You would have to call compile()
again
before using the model for training.
config <- get_config(model)
weights <- get_weights(model)
new_model <- from_config(config)
set_weights(new_model, weights)
# Check that the state is preserved
new_predictions <- predict(new_model, x_test)
all.equal(predictions, new_predictions)
Note that the optimizer was not preserved, so the model should be compiled anew before training (and the optimizer will start from a blank state).
The save-to-disk alternative to get_weights()
and
set_weights(weights)
is save_weights(fpath)
and load_weights(fpath)
.
# Save JSON config to disk
json_config <- model_to_json(model)
writeLines(json_config, "model_config.json")
# Save weights to disk
save_model_weights_hdf5(model, "model_weights.h5")
# Reload the model from the 2 files we saved
json_config <- readLines("model_config.json")
new_model <- model_from_json(json_config)
load_model_weights_hdf5(new_model, "model_weights.h5")
# Check that the state is preserved
new_predictions <- predict(new_model, x_test)
all.equal(predictions, new_predictions)
Note that the optimizer was not preserved. But remember that the simplest, recommended way is just this:
Sequential models and Functional models are data structures that represent a DAG of layers. As such, they can be safely serialized and deserialized.
A subclassed model differs in that it’s not a data structure, it’s a piece of code. The architecture of the model is defined via the body of the call method. This means that the architecture of the model cannot be safely serialized. To load a model, you’ll need to have access to the code that created it (the code of the model subclass). Alternatively, you could be serializing this code as bytecode (e.g. via pickling), but that’s unsafe and generally not portable.
For more information about these differences, see the article “What are Symbolic and Imperative APIs in TensorFlow 2.0?”.
Let’s consider the following subclassed model, which follows the same structure as the model from the first section:
keras_model_simple_mlp <- function(num_classes,
use_bn = FALSE, use_dp = FALSE,
name = NULL) {
# define and return a custom model
keras_model_custom(name = name, function(self) {
# create layers we'll need for the call (this code executes once)
self$dense1 <- layer_dense(units = 32, activation = "relu")
self$dense2 <- layer_dense(units = num_classes, activation = "softmax")
if (use_dp)
self$dp <- layer_dropout(rate = 0.5)
if (use_bn)
self$bn <- layer_batch_normalization(axis = -1)
# implement call (this code executes during training & inference)
function(inputs, mask = NULL) {
x <- self$dense1(inputs)
if (use_dp)
x <- self$dp(x)
if (use_bn)
x <- self$bn(x)
self$dense2(x)
}
})
}
model <- keras_model_simple_mlp(num_classes = 10)
First of all, a subclassed model that has never been used cannot be saved.
That’s because a subclassed model needs to be called on some data in order to create its weights.
Until the model has been called, it does not know the
shape
and dtype
of the input data it should be
expecting, and thus cannot create its weight variables. You may remember
that in the Functional model from the first section, the
shape
and dtype
of the inputs was specified in
advance (via layer_input
) – that’s why Functional models
have a state as soon as they’re instantiated.
Let’s train the model, so as to give it a state:
model %>% compile(loss = "sparse_categorical_crossentropy",
optimizer = optimizer_rmsprop())
history <- model %>% fit(x_train, y_train, batch_size = 64, epochs = 1)
The recommended way to save a subclassed model is to use
save_model_weights_tf
to create a TensorFlow SavedModel
checkpoint, which will contain the value of all variables associated
with the model: - The layers’ weights - The optimizer’s state - Any
variables associated with stateful model metrics (if any).
# Save predictions for future checks
predictions <- predict(model, x_test)
# Also save the loss on the first batch
# to later assert that the optimizer state was preserved
first_batch_loss <- train_on_batch(model, x_train[1:64,], y_train[1:64])
To restore your model, you will need access to the code that created the model object.
Note that in order to restore the optimizer state and the state of any stateful metric, you should compile the model (with the exact same arguments as before) and call it on some data before calling load_weights:
new_model <- keras_model_simple_mlp(num_classes = 10)
new_model %>% compile(loss = "sparse_categorical_crossentropy",
optimizer = optimizer_rmsprop())
# This initializes the variables used by the optimizers,
# as well as any stateful metric variables
train_on_batch(new_model, x_train[1:5,], y_train[1:5])
# Load the state of the old model
load_model_weights_tf(new_model, "my_weights")
# Check that the model state has been preserved
new_predictions <- predict(new_model, x_test)
all.equal(predictions, new_predictions)
# The optimizer state is preserved as well,
# so you can resume training where you left off
new_first_batch_loss <- train_on_batch(new_model, x_train[1:64,], y_train[1:64])
first_batch_loss == new_first_batch_loss
You’ve reached the end of this guide! This covers everything you need to know about saving and serializing models with Keras in TensorFlow 2.0.
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