Add report generator + first draft of report.gj
[talweg.git] / pkg / R / Forecaster.R
diff --git a/pkg/R/Forecaster.R b/pkg/R/Forecaster.R
deleted file mode 100644 (file)
index 2bd2e4e..0000000
+++ /dev/null
@@ -1,50 +0,0 @@
-#' Forecaster
-#'
-#' Forecaster (abstract class, implemented by all forecasters)
-#'
-#' @docType class
-#' @importFrom R6 R6Class
-#'
-#' @field params List of computed parameters, for post-run analysis (dev)
-#' @field data Dataset, object of class Data
-#' @field pjump Function: how to predict the jump at day interface ?
-#'
-#' @section Methods: \describe{
-#' \item{\code{initialize(data, pjump)}}
-#'   {Initialize a Forecaster object with a Data object and a jump prediction function.}
-#' \item{\code{predictSerie(today,memory,horizon,...)}}
-#'   {Predict a new serie of \code{horizon} values at day index \code{today} using \code{memory}
-#'   days in the past.}
-#' \item{\code{predictShape(today,memory,horizon,...)}}
-#'   {Predict a new shape of \code{horizon} values at day index \code{today} using \code{memory}
-#'   days in the past.}
-#' \item{\code{getParameters()}}
-#'   {Return (internal) parameters.} }
-Forecaster = R6::R6Class("Forecaster",
-       private = list(
-               .params = list(),
-               .data = NULL,
-               .pjump = NULL
-       ),
-       public = list(
-               initialize = function(data, pjump)
-               {
-                       private$.data <- data
-                       private$.pjump <- pjump
-                       invisible(self)
-               },
-               predictSerie = function(today, memory, horizon, ...)
-               {
-                       # Parameters (potentially) computed during shape prediction stage
-                       predicted_shape = o$predictShape(today, memory, horizon, ...)
-                       predicted_delta = private$.pjump(private$.data,today,memory,horizon,private$.params,...)
-                       # Predicted shape is aligned it on the end of current day + jump
-                       predicted_shape+tail(private$.data$getSerie(today),1)-predicted_shape[1]+predicted_delta
-               },
-               predictShape = function(today, memory, horizon, ...)
-                       #empty default implementation: to implement in inherited classes
-               ,
-               getParameters = function()
-                       private$.params
-       )
-)