Keras Model composed of a linear stack of layers
Keras Model composed of a linear stack of layers
keras_model_sequential(layers = NULL, name = NULL)Arguments
| layers | List of layers to add to the model |
| name | Name of model |
Note
The first layer passed to a Sequential model should have a defined input
shape. What that means is that it should have received an input_shape or
batch_input_shape argument, or for some type of layers (recurrent,
Dense...) an input_dim argument.
See also
Other model functions: compile,
evaluate.keras.engine.training.Model,
evaluate_generator,
fit_generator, fit,
get_config, get_layer,
keras_model, multi_gpu_model,
pop_layer,
predict.keras.engine.training.Model,
predict_generator,
predict_on_batch,
predict_proba,
summary.keras.engine.training.Model,
train_on_batch
Examples
# NOT RUN {
library(keras)
model <- keras_model_sequential()
model %>%
layer_dense(units = 32, input_shape = c(784)) %>%
layer_activation('relu') %>%
layer_dense(units = 10) %>%
layer_activation('softmax')
model %>% compile(
optimizer = 'rmsprop',
loss = 'categorical_crossentropy',
metrics = c('accuracy')
)
# }