#' Spark NLP TypedDependencyParserApproach
#'
#' Spark ML estimator that is a labeled parser that finds a grammatical relation between two words in a sentence.
#' Its input is a CoNLL2009 or ConllU dataset.
#' See \url{https://nlp.johnsnowlabs.com/docs/en/annotators#typed-dependency-parser}
#'
#' @template roxlate-nlp-algo
#' @template roxlate-inputs-output-params
#' @param n_iterations number of iterations
#' @param conll_u_path path to a file in CoNLL-U format
#' @param conll_u_read_as TEXT or SPARK_DATASET
#' @param conll_u_options options to pass to the Spark reader
#' @param conll_2009_path path to a file in CoNLL 2009 format
#' @param conll_2009_read_as TEXT or SPARK_DATASET
#' @param conll_2009_options options to pass to the Spark reader
#'
#' @export
nlp_typed_dependency_parser <- function(x, input_cols, output_col,
n_iterations = NULL, conll_u_path = NULL, conll_u_read_as = "TEXT", conll_u_options = list("format" = "text"),
conll_2009_path = NULL, conll_2009_read_as = "TEXT", conll_2009_options = list("format" = "text"),
uid = random_string("typed_dependency_parser_")) {
UseMethod("nlp_typed_dependency_parser")
}
#' @export
nlp_typed_dependency_parser.spark_connection <- function(x, input_cols, output_col,
n_iterations = NULL, conll_u_path = NULL,
conll_u_read_as = "TEXT",
conll_u_options = list("format" = "text"),
conll_2009_path = NULL, conll_2009_read_as = "TEXT",
conll_2009_options = list("format" = "text"),
uid = random_string("typed_dependency_parser_")) {
args <- list(
input_cols = input_cols,
output_col = output_col,
n_iterations = n_iterations,
conll_u_path = conll_u_path,
conll_u_read_as = conll_u_read_as,
conll_u_options = conll_u_options,
conll_2009_path = conll_2009_path,
conll_2009_read_as = conll_2009_read_as,
conll_2009_options = conll_2009_options,
uid = uid
) %>%
validator_nlp_typed_dependency_parser()
if (!is.null(args[["conll_u_options"]])) {
args[["conll_u_options"]] = list2env(args[["conll_u_options"]])
}
if (!is.null(args[["conll_2009_options"]])) {
args[["conll_2009_options"]] = list2env(args[["conll_2009_options"]])
}
jobj <- sparklyr::spark_pipeline_stage(
x, "com.johnsnowlabs.nlp.annotators.parser.typdep.TypedDependencyParserApproach",
input_cols = args[["input_cols"]],
output_col = args[["output_col"]],
uid = args[["uid"]]
) %>%
sparklyr::jobj_set_param("setNumberOfIterations", args[["n_iterations"]])
if (!is.null(args[["conll_u_path"]])) {
sparklyr::invoke(jobj, "setConllU", args[["conll_u_path"]],
read_as(x, args[["conll_u_read_as"]]), args[["conll_u_options"]])
}
if (!is.null(args[["conll_2009_path"]])) {
sparklyr::invoke(jobj, "setConll2009", args[["conll_2009_path"]],
read_as(x, args[["conll_2009_read_as"]]), args[["conll_2009_options"]])
}
new_nlp_typed_dependency_parser(jobj)
}
#' @export
nlp_typed_dependency_parser.ml_pipeline <- function(x, input_cols, output_col,
n_iterations = NULL, conll_u_path = NULL,
conll_u_read_as = "TEXT",
conll_u_options = list("format" = "text"),
conll_2009_path = NULL, conll_2009_read_as = "TEXT",
conll_2009_options = list("format" = "text"),
uid = random_string("typed_dependency_parser_")) {
stage <- nlp_typed_dependency_parser.spark_connection(
x = sparklyr::spark_connection(x),
input_cols = input_cols,
output_col = output_col,
n_iterations = n_iterations,
conll_u_path = conll_u_path,
conll_u_read_as = conll_u_read_as,
conll_u_options = conll_u_options,
conll_2009_path = conll_2009_path,
conll_2009_read_as = conll_2009_read_as,
conll_2009_options = conll_2009_options,
uid = uid
)
sparklyr::ml_add_stage(x, stage)
}
#' @export
nlp_typed_dependency_parser.tbl_spark <- function(x, input_cols, output_col,
n_iterations = NULL, conll_u_path = NULL,
conll_u_read_as = "TEXT",
conll_u_options = list("format" = "text"),
conll_2009_path = NULL, conll_2009_read_as = "TEXT",
conll_2009_options = list("format" = "text"),
uid = random_string("typed_dependency_parser_")) {
stage <- nlp_typed_dependency_parser.spark_connection(
x = sparklyr::spark_connection(x),
input_cols = input_cols,
output_col = output_col,
n_iterations = n_iterations,
conll_u_path = conll_u_path,
conll_u_read_as = conll_u_read_as,
conll_u_options = conll_u_options,
conll_2009_path = conll_2009_path,
conll_2009_read_as = conll_2009_read_as,
conll_2009_options = conll_2009_options,
uid = uid
)
stage %>% sparklyr::ml_fit_and_transform(x)
}
#' Load a pretrained Spark NLP model
#'
#' Create a pretrained Spark NLP \code{TypedDependencyParserModel} model
#'
#' @template roxlate-pretrained-params
#' @template roxlate-inputs-output-params
#' @export
nlp_typed_dependency_parser_pretrained <- function(sc, input_cols, output_col,
name = NULL, lang = NULL, remote_loc = NULL) {
args <- list(
input_cols = input_cols,
output_col = output_col
) %>%
validator_nlp_dependency_parser()
model_class <- "com.johnsnowlabs.nlp.annotators.parser.typdep.TypedDependencyParserModel"
model <- pretrained_model(sc, model_class, name, lang, remote_loc)
spark_jobj(model) %>%
sparklyr::jobj_set_param("setInputCols", args[["input_cols"]]) %>%
sparklyr::jobj_set_param("setOutputCol", args[["output_col"]])
new_nlp_typed_dependency_parser_model(model)
}
#' @import forge
validator_nlp_typed_dependency_parser <- function(args) {
args[["input_cols"]] <- cast_string_list(args[["input_cols"]])
args[["output_col"]] <- cast_string(args[["output_col"]])
args[["n_iterations"]] <- cast_nullable_integer(args[["n_iterations"]])
args[["conll_u_path"]] <- cast_nullable_string(args[["conll_u_path"]])
args[["conll_u_read_as"]] <- cast_choice(args[["conll_u_read_as"]], choices = c("TEXT", "SPARK_DATASET"), allow_null = TRUE)
args[["conll_2009_path"]] <- cast_nullable_string(args[["conll_2009_path"]])
args[["conll_2009_read_as"]] <- cast_choice(args[["conll_2009_read_as"]], choices = c("TEXT", "SPARK_DATASET"), allow_null = TRUE)
args
}
new_nlp_typed_dependency_parser <- function(jobj) {
sparklyr::new_ml_estimator(jobj, class = "nlp_typed_dependency_parser")
}
new_nlp_typed_dependency_parser_model <- function(jobj) {
sparklyr::new_ml_transformer(jobj, class = "nlp_typed_dependency_parser_model")
}
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