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keras (version 2.8.0)

KerasCallback: (Deprecated) Base R6 class for Keras callbacks

Description

New custom callbacks implemented as R6 classes are encouraged to inherit from keras$callbacks$Callback directly.

Arguments

Value

KerasCallback.

Format

An R6Class generator object

Fields

params

Named list with training parameters (eg. verbosity, batch size, number of epochs...).

model

Reference to the Keras model being trained.

Methods

on_epoch_begin(epoch, logs)

Called at the beginning of each epoch.

on_epoch_end(epoch, logs)

Called at the end of each epoch.

on_batch_begin(batch, logs)

Called at the beginning of each batch.

on_batch_end(batch, logs)

Called at the end of each batch.

on_train_begin(logs)

Called at the beginning of training.

on_train_end(logs)

Called at the end of training.

Details

The logs named list that callback methods take as argument will contain keys for quantities relevant to the current batch or epoch.

Currently, the fit.keras.engine.training.Model() method for sequential models will include the following quantities in the logs that it passes to its callbacks:

  • on_epoch_end: logs include acc and loss, and optionally include val_loss (if validation is enabled in fit), and val_acc (if validation and accuracy monitoring are enabled).

  • on_batch_begin: logs include size, the number of samples in the current batch.

  • on_batch_end: logs include loss, and optionally acc (if accuracy monitoring is enabled).

Examples

Run this code
# NOT RUN {
library(keras)

LossHistory <- R6::R6Class("LossHistory",
  inherit = KerasCallback,

  public = list(

    losses = NULL,

    on_batch_end = function(batch, logs = list()) {
      self$losses <- c(self$losses, logs[["loss"]])
    }
  )
)
# }

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