The package name “erify” is derived from “verify” and “error”, which are the package’s two main themes.
When creating functions for other people to use, you always need some validator functions which
erify serves the exact purpose. Specifically, erify provides
Install erify from CRAN:
Or install the development version from GitHub:
erify has some ready-to-use validator functions. Let’s have a look.
Suppose you are creating a function which prints a string several times to emphasize it:
# print `what` `n` times
emphasize <- function(what, n) {
for (i in 1:n) {
cat(what, "\n")
}
}
# example
emphasize("You're beautiful!", 3)
#> You're beautiful!
#> You're beautiful!
#> You're beautiful!
And suppose a novice user accidentally passes a function to argument
what
, he/she will get an error message which is not very
readable:
You can improve this by adding erify’s check_type()
into
emphasize()
:
emphasize <- function(what, n) {
# check the type of `what`
check_type(what, "character")
# main
for (i in 1:n) {
cat(what, "\n")
}
}
emphasize(c, 3)
#> Error: `what` must have type character.
#>
#> ✖ `what` has type builtin.
In the above code, check_type(what, "character")
checks
if what
has type character, and if not, generates improved
error message.
You can add more validator functions. For example, suppose you want
what
to be a single character, which means it must have
length 1. You can check its length with check_length()
:
emphasize <- function(what, n) {
# check the type of `what`
check_type(what, "character")
# check the length of `what`
check_length(what, 1)
# main
for (i in 1:n) {
cat(what, "\n")
}
}
emphasize(c("apple", "orange"), 3)
#> Error: `what` must have length 1.
#>
#> ✖ `what` has length 2.
In the above code, check_length(what, 1)
checks if
what
has length exactly 1.
Maybe this is too strict. You feel any non-empty character vector is
acceptable. You can change the second argument of
check_length()
in the above code:
emphasize <- function(what, n) {
# check the type of `what`
check_type(what, "character")
# check the length of `what`
check_length(what, c(0, NA))
# main
for (i in 1:n) {
cat(what, "\n")
}
}
emphasize(character(0), 3)
#> Error: `what` must have length larger than 0.
#>
#> ✖ `what` has length 0.
check_length(what, c(0, NA))
checks if what
has length larger than 0.
erify’s validator functions return silently if the argument they are checking is valid. For example,
So far, you may have noticed that the error messages generated by erify’s validator functions have a consistent style.
Specifically, in this style, an error message usually has two components:
First, a general statement of the problem. For example:
Second, a concise description of what went wrong. For example:
The second component may contain more items, as you will see.
This style is adopted from Hadley Wickham’s The tidyverse style guide. Check the link for more details.
You can change the error message generated by any erify’s validator
function by specify arguments general
,
specific
and supplement
.
For example, suppose you want an argument arg
to take
only "yes"
or "no"
as input. You can put this
restriction with check_content()
:
arg <- "I'm invalid."
# check the content of `arg`
check_content(arg, c("yes", "no"))
#> Error: `arg` must be `"yes"` or `"no"`.
#>
#> ✖ `arg` is `"I'm invalid."`.
To change the default general statement of the error, you can specify
argument general
. For example,
check_content(arg, c("yes", "no"), general = "You are wrong.")
#> Error: You are wrong.
#>
#> ✖ `arg` is `"I'm invalid."`.
To change the default description of the error, you can specify
argument specific
. For example,
check_content(arg, c("yes", "no"), specific = "You are wrong.")
#> Error: `arg` must be `"yes"` or `"no"`.
#>
#> ✖ You are wrong.
You can add more details with argument supplement
. For
example,
supplement <- c(x = "You're wrong.", i = "But you're beautiful.")
check_content(arg, c("yes", "no"), supplement = supplement)
#> Error: `arg` must be `"yes"` or `"no"`.
#>
#> ✖ `arg` is `"I'm invalid."`.
#> ✖ You're wrong.
#> ℹ But you're beautiful.
In the above code, x
means “error”, while i
means “hint”.
You can create your own validator functions with
throw()
. Below is an example:
general <- "You're beautiful."
specifics <- c(
i = "Your eyes are big.",
i = "Your hair is long.",
x = "But you broke my heart."
)
throw(general, specifics)
#> Error: You're beautiful.
#>
#> ℹ Your eyes are big.
#> ℹ Your hair is long.
#> ✖ But you broke my heart.
You can change argument as
to generate a message:
throw(general, specifics, as = "message")
#> You're beautiful.
#>
#> ℹ Your eyes are big.
#> ℹ Your hair is long.
#> ✖ But you broke my heart.
Now let’s create a validator function to check if an argument is a positive number.
check_positive <- function(x) {
check_type(x, c("integer", "double"))
check_length(x, 1)
if (is.na(x) || x <= 0) {
general <- "`x` must be a positive number."
specifics <- "`x` is `{x}`."
throw(general, specifics, env = list(x = x))
}
}
check_positive(-2)
#> Error: `x` must be a positive number.
#>
#> ✖ `x` is `-2`.
As you might have noticed, you can insert R code into
general
and specifics
as {x}
in
To execute the code, you need to pass the arguments involved to
argument env
, as in
See glue::glue()
for more details.
join()
connects given words with a conjunction:
x <- c("Pink Floyd", "Pink Freud", "Pink Florida")
join(x, "and")
#> [1] "Pink Floyd, Pink Freud and Pink Florida"
back_quote()
convert an R object to character and add
back quotations:
cat(back_quote(x))
#> `"Pink Floyd"` `"Pink Freud"` `"Pink Florida"`
back_quote(c(1, 2, NA))
#> [1] "`1`" "`2`" "`NA`"
These two functions are useful to create error messages, as in the
inside of check_content()
: