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The carrier package provides tools to package up functions so they can be sent to remote R sessions or to different processes, and tools to test your crates locally. They make it easy to control what data should be packaged with the function and what size your crated function is.
Currently, carrier only provides a strict function constructor that forces you to be explicit about the functions and the data your function depends on. In the future it will also provide tools to figure it out automatically.
See also the bundle package for the tidymodels ecosystem.
crate()
is a function constructor that forces you to be
explicit about which data should be packaged with the function. You can
create functions using the standard R syntax:
crate(function(x) mean(x, na.rm = TRUE))
#> <crate> 7 kB
#> * function: 6.55 kB
#> function(x) mean(x, na.rm = TRUE)
Or with a purrr-like lambda syntax:
crate(~mean(.x, na.rm = TRUE))
#> <crate> 1.57 kB
#> * function: 1.01 kB
#> function (..., .x = ..1, .y = ..2, . = ..1)
#> mean(.x, na.rm = TRUE)
The crated function prints with its total size in the header, so you know how much data you will send to remotes. The size of the bare function without any data is also printed in the first bullet, and if you add objects to the crate their size is printed in decreasing order.
crate()
requires you to be explicit about all
dependencies of your function. Except for base functions, you have to
call functions with their namespace prefix. You can test your function
locally to make sure you’ve been explicit enough. In the following
example we forgot to specify that var()
comes from the
stats namespace:
<- crate(~var(.x))
fn fn(1:10)
#> Error in var(.x): could not find function "var"
So let’s add the namespace prefix:
<- crate(~stats::var(.x))
fn fn(1:10)
#> [1] 9.166667
If your function depends on global data, you need to declare it to
make it available to your crated function. Here we forgot to declare
na_rm
:
<- TRUE
na_rm
<- crate(function(x) stats::var(x, na.rm = na_rm))
fn fn(1:10)
#> Error in fn(1:10): object 'na_rm' not found
There are two techniques for packaging data into your crate: passing data as arguments, and unquoting data in the function.
You can declare objects by passing them as named arguments to
crate()
:
<- crate(
fn function(x) stats::var(x, na.rm = na_rm),
na_rm = na_rm
)fn(1:10)
#> [1] 9.166667
Note how the size of each imported object is displayed when you print the crated function:
fn#> <crate> 9.31 kB
#> * function: 8.75 kB
#> * `na_rm`: 56 B
#> function(x) stats::var(x, na.rm = na_rm)
Another way of packaging data is to unquote objects with
!!
. This works because unquoting inlines objects in
function calls. Unquoting can be less verbose if you have many small
objects to import inside the function.
crate(function(x) stats::var(x, na.rm = !!na_rm))
#> <crate> 7.86 kB
#> * function: 7.42 kB
#> function(x) stats::var(x, na.rm = !!na_rm)
However, be careful not to unquote large objects because:
Let’s unquote a data frame to see the noise caused by inlining:
# Subset a few rows so the call is not too noisy
<- mtcars[1:5, ]
data
# Inline data in call by unquoting
<- crate(~stats::lm(.x, data = !!data)) fn
This crate will print with noisy inlined data:
fn#> <crate> 4.65 kB
#> * function: 4.14 kB
#> function (..., .x = ..1, .y = ..2, . = ..1)
#> stats::lm(.x, data = list(mpg = c(21, 21, 22.8, 21.4, 18.7),
#> cyl = c(6, 6, 4, 6, 8), disp = c(160, 160, 108, 258, 360),
#> hp = c(110, 110, 93, 110, 175), drat = c(3.9, 3.9, 3.85,
#> 3.08, 3.15), wt = c(2.62, 2.875, 2.32, 3.215, 3.44), qsec = c(16.46,
#> 17.02, 18.61, 19.44, 17.02), vs = c(0, 0, 1, 1, 0), am = c(1,
#> 1, 1, 0, 0), gear = c(4, 4, 4, 3, 3), carb = c(4, 4, 1, 1,
#> 2)))
Same for the function call recorded by lm()
:
fn(disp ~ drat)
#>
#> Call:
#> stats::lm(formula = .x, data = structure(list(mpg = c(21, 21,
#> 22.8, 21.4, 18.7), cyl = c(6, 6, 4, 6, 8), disp = c(160, 160,
#> 108, 258, 360), hp = c(110, 110, 93, 110, 175), drat = c(3.9,
#> 3.9, 3.85, 3.08, 3.15), wt = c(2.62, 2.875, 2.32, 3.215, 3.44
#> ), qsec = c(16.46, 17.02, 18.61, 19.44, 17.02), vs = c(0, 0,
#> 1, 1, 0), am = c(1, 1, 1, 0, 0), gear = c(4, 4, 4, 3, 3), carb = c(4,
#> 4, 1, 1, 2)), row.names = c("Mazda RX4", "Mazda RX4 Wag", "Datsun 710",
#> "Hornet 4 Drive", "Hornet Sportabout"), class = "data.frame"))
#>
#> Coefficients:
#> (Intercept) drat
#> 952.3 -207.8
Please note that the carrier project is released with a Contributor Code of Conduct. By contributing to this project, you agree to abide by its terms.
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.