Keras Tuner is a hypertuning framework made for humans. It aims at making the life of AI practitioners, hypertuner algorithm creators and model designers as simple as possible by providing them with a clean and easy to use API for hypertuning. Keras Tuner makes moving from a base model to a hypertuned one quick and easy by only requiring you to change a few lines of code.
A hyperparameter tuner for Keras,
specifically for tf$keras with TensorFlow 2.0.
Full documentation and tutorials available on the Keras Tuner website.
Currently, the package is available on github:
devtools::install_github('EagerAI/kerastuneR')Later, you need to install the python module kerastuner:
kerastuneR::install_kerastuner(python_path = 'paste python path')Here’s how to perform hyperparameter tuning for a single-layer dense neural network using random search.
First, we define a model-building function. It takes an argument
hp from which you can sample hyperparameters, such as
hp$Int('units', min_value=32L, max_value=512L, step=32L)
(an integer from a certain range).
Sample data:
x_data <- matrix(data = runif(500,0,1),nrow = 50,ncol = 5)
y_data <-  ifelse(runif(50,0,1) > 0.6, 1L,0L) %>% as.matrix()
x_data2 <- matrix(data = runif(500,0,1),nrow = 50,ncol = 5)
y_data2 <-  ifelse(runif(50,0,1) > 0.6, 1L,0L) %>% as.matrix()This function returns a compiled model.
library(keras)
library(kerastuneR)
library(dplyr)
build_model = function(hp) {
  
  model = keras_model_sequential()
  model %>% layer_dense(units=hp$Int('units',
                                      min_value=32,
                                      max_value=512,
                                      step=32),
                                      input_shape = ncol(x_data)
                                      activation='relu') %>% 
  layer_dense(units=1, activation='sigmoid') %>% 
  compile(
    optimizer= tf$keras$optimizers$Adam(
      hp$Choice('learning_rate',
                values=c(1e-2, 1e-3, 1e-4))),
    loss='binary_crossentropy',
    metrics='accuracy') 
  return(model)
}Next, instantiate a tuner. You should specify the model-building
function, the name of the objective to optimize (whether to minimize or
maximize is automatically inferred for built-in metrics), the total
number of trials (max_trials) to test, and the number of
models that should be built and fit for each trial
(executions_per_trial).
Available tuners are RandomSearch and
Hyperband.
Note: the purpose of having multiple executions per trial is to reduce results variance and therefore be able to more accurately assess the performance of a model. If you want to get results faster, you could set executions_per_trial=1 (single round of training for each model configuration).
tuner = RandomSearch(
    build_model,
    objective = 'val_accuracy',
    max_trials = 5,
    executions_per_trial = 3,
    directory = 'my_dir',
    project_name = 'helloworld')You can print a summary of the search space:
tuner %>% search_summary()Then, start the search for the best hyperparameter configuration. The
call to search has the same signature as
model %>% fit(). But here instead of fit()
we call fit_tuner().
tuner %>% fit_tuner(x_data,y_data,
                    epochs=5, 
                    validation_data = list(x_data2,y_data2))