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#' @rdname train.ruta_autoencoder
#' @export
train <- function(learner, ...) UseMethod("train")
#' Coercion to ruta_loss
#'
#' Generic function to coerce objects into loss objects.
#' @param x Object to be converted into a loss
#' @return A \code{"ruta_loss"} construct
#' @export
as_loss <- function(x) UseMethod("as_loss")
#' Coercion to ruta_network
#'
#' Generic function to coerce objects into networks.
#' @param x Object to be converted into a network
#' @return A \code{"ruta_network"} construct
#' @export
as_network <- function(x) UseMethod("as_network")
#' Convert a Ruta object onto Keras objects and functions
#'
#' Generic function which uses the Keras API to build objects
#' out of Ruta wrappers
#'
#' @param x Object to be converted
#' @param ... Remaining parameters depending on the method
#' @export
to_keras <- function(x, ...) UseMethod("to_keras")
#' Generate samples from a generative model
#'
#' @param learner Trained learner object
#' @export
generate <- function(learner, ...) UseMethod("generate")
#' Apply filters
#'
#' @description Apply a filter to input data, generally a noise filter in
#' order to train a denoising autoencoder. Users won't generally need to use
#' these functions
#'
#' @param filter Filter object to be applied
#' @param data Input data to be filtered
#' @param ... Other parameters
#'
#' @seealso `\link{autoencoder_denoising}`
#' @export
apply_filter <- function(filter, data, ...) UseMethod("apply_filter")
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