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nlmixr2targets builds on targets, which
caches every target keyed by a hash of its command, its dependencies,
and its inputs. When you call tar_make(), only targets
whose hash has changed (directly or transitively) are rebuilt.
For a single tar_nlmixr(name = <name>, ...) call,
the four targets generated are:
| Target | Stores | Hashed inputs |
|---|---|---|
<name>_object_simple |
md5 string identifying the simplified ui in the indirect cache | the captured object expression |
<name>_data_simple |
simplified data frame | <name>_object_simple, the captured
data expression, the table$keep columns |
<name>_fit_simple |
fitted nlmixr2 object | <name>_object_simple,
<name>_data_simple, est,
control |
<name> |
final fit, with labels and metadata restored | <name>_fit_simple, the captured
object (re-read for labels), data |
The single most important property of this layout is that
<name>_fit_simple depends only on the
structural content of the model.
nlmixr_object_simplify() strips parameter labels and the
model’s metadata environment before caching, so cosmetic edits to either
do not invalidate the expensive estimation step.
# Adding a comment, changing a label, or editing meta:
# only re-runs the cheap `_object_simple` and the final `<name>` target
# (the relabel/meta-restore step). The expensive `_fit_simple` is reused.
# Changing initial values (`ini({...})`) or the model structure
# (`model({...})`):
# re-runs everything from `_object_simple` onward.
# Adding/removing a covariate column from the dataset:
# re-runs `_data_simple` and `_fit_simple`. `_object_simple` is reused
# if the model didn't change.
# Changing `est` or `control`:
# re-runs `_fit_simple` and the final target. `_object_simple` and
# `_data_simple` are reused.The simplified-model md5 cache lives under
<tar_config_get("store")>/user/nlmixr2/. It is
not removed by targets::tar_destroy(), so
it can accumulate orphan files over time (e.g. after model
iterations).
# Quick inventory: hashes, sizes, last-modified
nlmixr2targets_cache_status()
#> hash size_bytes mtime
#> 1 aaaaaa.. 1234 2026-05-21 12:00:00
#> 2 bbbbbb.. 1567 2026-05-21 13:30:00
# Find orphans (dry run by default)
nlmixr2targets_cache_prune()
# Delete them
nlmixr2targets_cache_prune(dry_run = FALSE)nlmixr2targets_cache_prune() with no keep
argument reads targets::tar_meta() from the current store,
finds every built target whose name ends in _object_simple,
and treats those hash values as reachable. Anything else in the cache
directory is reported (and, with dry_run = FALSE, removed).
Pass keep = character() to wipe the cache
unconditionally.
tar_outdated() is a quick way to preview what would
rerunIf you are about to edit a model and are unsure how invasive the change is, run
after the edit but before tar_make(). The list of
outdated targets is exactly the set that would re-execute. Three or four
entries means _fit_simple is in play; one or two usually
means only the cheap relabel/restore step is.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.