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Quickstart: from data to prediction in ~10 lines

The shortest possible path with ggmlR: take a built-in dataset, train a neural network, and predict — using only the core Keras-like API, no tidymodels or mlr3. (For those ecosystems see the tidymodels and mlr3 vignettes.)

library(ggmlR)

x <- scale(as.matrix(iris[, 1:4]))            # 4 numeric features
y <- model.matrix(~ Species - 1, iris)        # one-hot, 3 classes

model <- ggml_model_sequential() |>
  ggml_layer_dense(16L, activation = "relu", input_shape = 4L) |>
  ggml_layer_dense(3L,  activation = "softmax") |>
  ggml_compile(optimizer = "adam", loss = "categorical_crossentropy")

model <- ggml_fit(model, x, y, epochs = 100L, verbose = 0L)

pred  <- ggml_predict(model, x)               # [150 x 3] class probabilities
acc   <- mean(max.col(pred) == as.integer(iris$Species))
cat(sprintf("accuracy: %.3f\n", acc))

That’s it — load data, stack layers, ggml_compile(), ggml_fit(), ggml_predict(). ggmlR runs on the GPU via Vulkan automatically when available and falls back to the CPU otherwise; call ggml_model_backend(model) to see which backend was actually used.

Next steps

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.