inst/models/tensorflow-mnist.R

library(tensorflow)

sess <- tf$Session()

datasets <- tf$contrib$learn$datasets
mnist <- datasets$mnist$read_data_sets("MNIST-data", one_hot = TRUE)

x <- tf$placeholder(tf$float32, shape(NULL, 784L))

W <- tf$Variable(tf$zeros(shape(784L, 10L)))
b <- tf$Variable(tf$zeros(shape(10L)))

y <- tf$nn$softmax(tf$matmul(x, W) + b)

y_ <- tf$placeholder(tf$float32, shape(NULL, 10L))
cross_entropy <- tf$reduce_mean(-tf$reduce_sum(y_ * tf$log(y), reduction_indices=1L))

optimizer <- tf$train$GradientDescentOptimizer(0.5)
train_step <- optimizer$minimize(cross_entropy)

init <- tf$global_variables_initializer()

sess$run(init)

for (i in 1:1000) {
  batches <- mnist$train$next_batch(100L)
  batch_xs <- batches[[1]]
  batch_ys <- batches[[2]]
  sess$run(train_step,
           feed_dict = dict(x = batch_xs, y_ = batch_ys))
}

correct_prediction <- tf$equal(tf$argmax(y, 1L), tf$argmax(y_, 1L))
accuracy <- tf$reduce_mean(tf$cast(correct_prediction, tf$float32))

sess$run(accuracy, feed_dict=dict(x = mnist$test$images, y_ = mnist$test$labels))

export_savedmodel(
  sess,
  "tensorflow-mnist",
  inputs = list(images = x),
  outputs = list(scores = y))
rstudio/tfdeploy documentation built on July 9, 2021, 1:35 a.m.