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targets (version 0.11.0)

tar_load_raw: Load the values of targets (raw version).

Description

Same as tar_load() except names is a character vector. Do not use in knitr or R Markdown reports with tarchetypes::tar_knit() or tarchetypes::tar_render().

Usage

tar_load_raw(
  names,
  branches = NULL,
  meta = tar_meta(store = store),
  strict = TRUE,
  silent = FALSE,
  envir = parent.frame(),
  store = targets::tar_config_get("store")
)

Arguments

names

Character vector, names of the targets to load. Names are expected to appear in the metadata in _targets/meta.

branches

Integer of indices of the branches to load for any targets that are patterns.

meta

Data frame of metadata from tar_meta(). tar_read() with the default arguments can be inefficient for large pipelines because all the metadata is stored in a single file. However, if you call tar_meta() beforehand and supply it to the meta argument, then successive calls to tar_read() may run much faster.

strict

Logical of length 1, whether to error out if one of the selected targets cannot be loaded. Set to FALSE to just load the targets that can be loaded and skip the others.

silent

Logical of length 1. If silent is FALSE and strict is FALSE, then a message will be printed if a target cannot be loaded, but load failures will not stop other targets from being loaded.

envir

Environment to put the loaded targets.

store

Character of length 1, path to the targets data store. Defaults to tar_config_get("store"), which in turn defaults to _targets/. When you set this argument, the value of tar_config_get("store") is temporarily changed for the current function call. See tar_config_get() and tar_config_set() for details about how to set the data store path persistently for a project.

Value

Nothing.

Limited scope

tar_read() and tar_load() are only for exploratory analysis and literate programming, and tar_read_raw() and tar_load_raw() are only for exploratory analysis. targets automatically loads the correct dependencies into memory when the pipeline is running, so invoking these functions from inside a target is rarely advisable.

See Also

Other data: tar_load(), tar_meta(), tar_objects(), tar_pid(), tar_process(), tar_read_raw(), tar_read()

Examples

Run this code
# NOT RUN {
if (identical(Sys.getenv("TAR_EXAMPLES"), "true")) {
tar_dir({ # tar_dir() runs code from a temporary directory.
tar_script({
  list(
    tar_target(y1, 1 + 1),
    tar_target(y2, 1 + 1),
    tar_target(z, y1 + y2)
  )
}, ask = FALSE)
tar_make()
tar_load_raw(c("y1", "y2"))
y1
y2
})
}
# }

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