Checks for outdated targets in the pipeline,
targets that will be rerun automatically if you call
tar_make()
or similar. See tar_cue()
for the rules
that decide whether a target needs to rerun.
tar_outdated(
names = NULL,
shortcut = targets::tar_config_get("shortcut"),
branches = FALSE,
targets_only = TRUE,
reporter = targets::tar_config_get("reporter_outdated"),
seconds_reporter = targets::tar_config_get("seconds_reporter_outdated"),
seconds_interval = targets::tar_config_get("seconds_interval"),
callr_function = callr::r,
callr_arguments = targets::tar_callr_args_default(callr_function, reporter),
envir = parent.frame(),
script = targets::tar_config_get("script"),
store = targets::tar_config_get("store")
)
Names of the outdated targets.
Names of the targets. tar_outdated()
will check
these targets and all upstream ancestors in the dependency graph.
Set names
to NULL
to check/build all the targets (default).
The object supplied to names
should be NULL
or a
tidyselect
expression like any_of()
or starts_with()
from tidyselect
itself, or tar_described_as()
to select target names
based on their descriptions.
Logical of length 1, how to interpret the names
argument.
If shortcut
is FALSE
(default) then the function checks
all targets upstream of names
as far back as the dependency graph goes.
If TRUE
, then the function only checks the targets in names
and uses stored metadata for information about upstream dependencies
as needed. shortcut = TRUE
increases speed if there are a lot of
up-to-date targets, but it assumes all the dependencies
are up to date, so please use with caution.
Also, shortcut = TRUE
only works if you set names
.
Logical of length 1, whether to include branch names. Including branches could get cumbersome for large pipelines. Individual branch names are still omitted when branch-specific information is not reliable: for example, when a pattern branches over an outdated target.
Logical of length 1, whether to just restrict to targets
or to include functions and other global objects from the environment
created by running the target script file (default: _targets.R
).
Character of length 1, name of the reporter to user. Controls how messages are printed as targets are checked.
The default of tar_config_get("reporter_make")
is "terse"
if running inside a literate programming document
(i.e. the knitr.in.progress
global option is TRUE
).
Otherwise, the default is "balanced"
. Choices:
* `"balanced"`: a reporter that balances efficiency
with informative detail.
Uses a `cli` progress bar instead of printing messages
for individual dynamic branches.
To the right of the progress bar is a text string like
"22.6s, 4510+, 124-" (22.6 seconds elapsed, 4510 targets
detected as outdated so far,
124 targets detected as up to date so far).
For best results with the balanced reporter, you may need to adjust your `cli` settings. See global options `cli.num_colors` and `cli.dynamic` at <https://cli.r-lib.org/reference/cli-config.html>. On that page is also the `CLI_TICK_TIME` environment variable which controls the time delay between progress bar updates. If the delay is too low, then overhead from printing to the console may slow down the pipeline. * `"terse"`: like `"balanced"`, except without a progress bar. * `"silent"`: print nothing.
Deprecated on 2025-03-31
(targets
version 1.10.1.9010).
Deprecated on 2023-08-24
(targets version 1.2.2.9001).
Use seconds_meta_append
and seconds_meta_upload
instead.
A function from callr
to start a fresh clean R
process to do the work. Set to NULL
to run in the current session
instead of an external process (but restart your R session just before
you do in order to clear debris out of the global environment).
callr_function
needs to be NULL
for interactive debugging,
e.g. tar_option_set(debug = "your_target")
.
However, callr_function
should not be NULL
for serious
reproducible work.
A list of arguments to callr_function
.
An environment, where to run the target R script
(default: _targets.R
) if callr_function
is NULL
.
Ignored if callr_function
is anything other than NULL
.
callr_function
should only be NULL
for debugging and
testing purposes, not for serious runs of a pipeline, etc.
The envir
argument of tar_make()
and related
functions always overrides
the current value of tar_option_get("envir")
in the current R session
just before running the target script file,
so whenever you need to set an alternative envir
, you should always set
it with tar_option_set()
from within the target script file.
In other words, if you call tar_option_set(envir = envir1)
in an
interactive session and then
tar_make(envir = envir2, callr_function = NULL)
,
then envir2
will be used.
Character of length 1, path to the
target script file. Defaults to tar_config_get("script")
,
which in turn defaults to _targets.R
. When you set
this argument, the value of tar_config_get("script")
is temporarily changed for the current function call.
See tar_script()
,
tar_config_get()
, and tar_config_set()
for details
about the target script file and how to set it
persistently for a project.
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.
Several functions like tar_make()
, tar_read()
, tar_load()
,
tar_meta()
, and tar_progress()
read or modify
the local data store of the pipeline.
The local data store is in flux while a pipeline is running,
and depending on how distributed computing or cloud computing is set up,
not all targets can even reach it. So please do not call these
functions from inside a target as part of a running
pipeline. The only exception is literate programming
target factories in the tarchetypes
package such as tar_render()
and tar_quarto()
.
Requires that you define a pipeline
with a target script file (default: _targets.R
).
(See tar_script()
for details.)
Other inspect:
tar_deps()
,
tar_manifest()
,
tar_network()
,
tar_sitrep()
,
tar_validate()
if (identical(Sys.getenv("TAR_EXAMPLES"), "true")) { # for CRAN
tar_dir({ # tar_dir() runs code from a temp dir for CRAN.
tar_script(list(tar_target(x, 1 + 1)))
tar_outdated()
tar_script({
library(targets)
library(tarchetypes)
list(
tar_target(y1, 1 + 1),
tar_target(y2, 1 + 1),
tar_target(z, y1 + y2)
)
}, ask = FALSE)
tar_outdated()
})
}
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