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argument-clutter.qmd
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argument-clutter.qmd
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# Reduce argument clutter with an options object {#sec-argument-clutter}
```{r}
#| include = FALSE
source("common.R")
```
## What's the problem?
If you have a large number of optional arguments that control the fine details of the operation of a function, it might be worth lumping them all together into a separate "options" object created by a helper function.
Having a large number of less important arguments makes it harder to see the most important.
By moving rarely used and less important arguments to a secondary function, you can more easily draw attention to what is most important.
## What are some examples?
- Many base R modelling functions like `loess()`, `glm()`, and `nls()` have a `control` argument that are paired with a function like `loess.control()`, `glm.control()`, and `nls.control()`.
These allow you to modify rarely used defaults, including the number of iterations, the stopping criteria, and some debugging options.
`optim()` uses a less formal version of this structure --- while it has a `control` argument, it doesn't have a matching `optim.control()` helper.
Instead, you supply a named list with components described in `?optim`.
A helper function is more convenient than a named list because it checks the argument names for free and gives nicer autocomplete to the user.
- This pattern is common in other modelling packages, e.g. `tune::fit_resamples()` + `tune::control_resamples()`, `tune::control_bayes()`, `tune::control_grid()`, and `caret::train()` + `caret::trainControl()`
- `readr::read_delim()` and friends take a `locale` argument which is paired with the `readr::locale()` helper.
This object bundles together a bunch of options related to parsing numbers, dates, and times that vary from country to country.
- `readr::locale()` itself has a `date_names` argument that's paired with `readr::date_names()` and `readr::date_names_lang()` helpers.
You typically use the argument by supplying a two letter locale (which `date_names_lang()` uses to look up common languages), but if your language isn't supported you can use `readr::date_names()` to individually supply full and abbreviated month and day of week names.
On the other hand, some functions with many arguments that would benefit from this technique include:
- `readr::read_delim()` has a lot of options that control rarely needed details of file parsing (e.g. `escape_backslash`, `escape_double`, `quoted_na`, `comment`, `trim_ws)`.
These make the function specification very long and might well be better in a details object.
- `ggplot2::geom_smooth()` fits a smooth line to your data.
Most of the time you only want to pick the `model` and `formula` used, but `geom_smooth()` (via `ggplot2::stat_smooth()`) also provides `n`, `fullrange`, `span`, `level`, and `method.args` to control details of the fit.
I think these would be better in their own details object.
## How do I use this pattern?
The simplest implementation is just to write a helper function that returns a list:
```{r}
my_fun_opts <- function(opt1 = 1, opt2 = 2) {
list(
opt1 = opt1,
opt2 = opt2
)
}
```
This alone is nice because you can document the individual arguments, you get name checking for free, and auto-complete will remind the user what these less important options include.
### Better error messages
An optional extra is to add a unique class to the list:
```{r}
my_fun_opts <- function(opt1 = 1, opt2 = 2) {
structure(
list(
opt1 = opt1,
opt2 = opt2
),
class = "mypackage_my_fun_opts"
)
}
```
This then allows you to create more informative error messages:
```{r}
#| error: true
my_fun_opts <- function(..., opts = my_fun_opts()) {
if (!inherits(opts, "mypackage_my_fun_opts")) {
cli::cli_abort("{.arg opts} must be created by {.fun my_fun_opts}.")
}
}
my_fun_opts(opts = 1)
```
If you use this option in many places, you should consider pulling out the repeated code into a `check_my_fun_opts()` function.
## How do I remediate past mistakes?
Typically you notice this problem only after you have created too many options so you'll need to carefully remediate by introducing a new options argument and paired helper function.
For example, if your existing function looks like this:
```{r}
my_fun <- function(x, y, opt1 = 1, opt2 = 2) {
}
```
If you want to keep the existing function specification you could add a new `opts` argument that uses the values of `opt1` and `opt2:`
```{r}
my_fun <- function(x, y, opts = NULL, opt1 = 1, opt2 = 2) {
opts <- opts %||% my_fun_opts(opt1 = opt1, opt2 = opt2)
}
```
However, that introduces a dependency between the arguments: if you specify both `opts` and `opt1`/`opt2`, `opts` will win.
You could certainly add extra code to pick up on this problem and warn the user, but I think it's just cleaner to deprecate the old arguments so that you can eventually remove them:
```{r}
my_fun <- function(x, y, opts = my_fun_opts(), opt1 = deprecated(), opt2 = deprecated()) {
if (lifecycle::is_present(opt1)) {
lifecycle::deprecate_warn("1.0.0", "my_fun(opt1)", "my_fun_opts(opt1)")
opts$opt1 <- opt1
}
if (lifecycle::is_present(opt2)) {
lifecycle::deprecate_warn("1.0.0", "my_fun(opt2)", "my_fun_opts(opt2)")
opts$opt2 <- opt2
}
}
```
Then you can remove the old arguments in a future release.
## See also
- @sec-strategy-objects is a similar pattern when you have multiple options function that each encapsulate a different strategy.