The hardware and bandwidth for this mirror is donated by dogado GmbH, the Webhosting and Full Service-Cloud Provider. Check out our Wordpress Tutorial.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]dogado.de.
Tools for contextualizing tests, built using covr
test
traces. This package provides utilities for linking an assortment of
test and package information to paint a more complete picture of how a
test was performed.
flowchart LR
tests[Tests] <--> traces[Traced Exprs] <--> code[Package Code] <--> docs[Package Documentation]
To install, use remotes
to install directly from GitHub
Functionality hinges heavily on coverage objects prepared using
covr
(≥ 3.5.1.9003). To ensure suggested dependency
requirements are met, install with dependencies = TRUE
(satisfy all dependencies).
# will install covr >= v3.5.1.9003 for examples
::install_github("Genentech/covtracer", dependencies = TRUE) remotes
Tests are not black boxes. When it comes to verifying behaviors of code, we can use observations about the code that is executed by a test to build a more complete picture of exactly what the test does. This is a core part of software validation. By combining information about each test, the tested package code and linking that code to package documentation, we can link documented behaviors to their respective tests.
Test traces are connected to evaluated code using covr
(≥ 3.5.1.9003). Likewise, a new option flag
(covr.record_tests
) must be set in order to record tests
alongside the coverage traces. Finally, the package to evaluate must be
installed with source references in order to map all the components
together.
That’s a lot to configure, but if you’re in a position where this test data is valuable hopefully it’s worth the setup.
library(covtracer)
# additional demo packages
library(dplyr)
library(withr)
library(covr)
::with_temp_libpaths({
withr<- system.file("examplepkg", package = "covtracer")
pkg
install.packages(
pkg,type = "source",
repos = NULL,
quiet = TRUE,
INSTALL_opts = c("--with-keep.source", "--install-tests")
)
options(covr.record_tests = TRUE)
<- covr::package_coverage(pkg)
cov
<- test_trace_df(cov)
ttdf })
There’s a lot of info in the resulting data.frame
, but
we’ll focus on just the critical piece, showing which tests evaluate
code related to which documented behaviors. Below we show how one might
map unit tests to evaluated, documented objects.
Note: Below we ignore documentation for datasets and S4 class constructors. Although these are defined in the package, they don’t map to testable lines of code because they are constructed when the package is built.
<- ttdf %>%
traceability_matrix filter(!doctype %in% c("data", "class")) %>% # ignore objects without testable code
select(test_name, file) %>%
filter(!duplicated(.)) %>%
arrange(file)
traceability_matrix#> test_name file
#> 1 Example R6 Person class public methods are traced Accumulator.Rd
#> 2 S4Example increment generic method works Person.Rd
#> 3 Example R6 Person class public methods are traced Person.Rd
#> 4 S4Example increment generic method works Rando.Rd
#> 5 <NA> Rando.Rd
#> 6 <NA> adder.Rd
#> 7 S4Example increment generic method works adder.Rd
#> 8 S4Example increment generic method works complex_call_stack.Rd
#> 9 S4Example increment generic method works deeper_nested_function.Rd
#> 10 S4Example increment generic method works hypotenuse.Rd
#> 11 S4Example increment generic method works increment.Rd
#> 12 S4Example names method works names-S4Example-method.Rd
#> 13 <NA> names-S4Example2-method.Rd
#> 14 S4Example increment generic method works nested_function.Rd
#> 15 <NA> rd_sampler.Rd
#> 16 S4Example increment generic method works recursive_function.Rd
#> 17 <NA> reexport_example.Rd
#> 18 <NA> reexports.Rd
#> 19 S4Example increment generic method works s3_example_func.Rd
#> 20 S4 Generic Call: show(<myS4Example>) show-S4Example-method.Rd
#> 21 <NA> <NA>
We can quickly see which functions or methods are entirely untested.
The data.frame
returned by test_trace_df
contains a ton of information, and we can measure a few dimensions of
the quality of tests with some relatively straightforward analysis.
Perhaps the most immediate use case is to map unit tests to documented behaviors.
%>%
ttdf filter(!doctype %in% c("data", "class")) %>% # ignore objects without testable code
select(test_name, file) %>%
filter(!duplicated(.)) %>%
arrange(file)
#> test_name file
#> 1 Example R6 Person class public methods are traced Accumulator.Rd
#> 2 S4Example increment generic method works Person.Rd
#> 3 Example R6 Person class public methods are traced Person.Rd
#> 4 S4Example increment generic method works Rando.Rd
#> 5 <NA> Rando.Rd
#> 6 <NA> adder.Rd
#> 7 S4Example increment generic method works adder.Rd
#> 8 S4Example increment generic method works complex_call_stack.Rd
#> 9 S4Example increment generic method works deeper_nested_function.Rd
#> 10 S4Example increment generic method works hypotenuse.Rd
#> 11 S4Example increment generic method works increment.Rd
#> 12 S4Example names method works names-S4Example-method.Rd
#> 13 <NA> names-S4Example2-method.Rd
#> 14 S4Example increment generic method works nested_function.Rd
#> 15 <NA> rd_sampler.Rd
#> 16 S4Example increment generic method works recursive_function.Rd
#> 17 <NA> reexport_example.Rd
#> 18 <NA> reexports.Rd
#> 19 S4Example increment generic method works s3_example_func.Rd
#> 20 S4 Generic Call: show(<myS4Example>) show-S4Example-method.Rd
#> 21 <NA> <NA>
Once we can map unit testing to documentation, we can filter down to only documentation that is not covered by any test.
%>%
ttdf filter(!doctype %in% c("data", "class")) %>% # ignore objects without testable code
select(test_name, count, alias, file) %>%
filter(is.na(count)) %>%
arrange(alias)
#> test_name count alias file
#> 1 <NA> NA Rando Rando.Rd
#> 2 <NA> NA adder adder.Rd
#> 3 <NA> NA help reexports.Rd
#> 4 <NA> NA names,S4Example2-method names-S4Example2-method.Rd
#> 5 <NA> NA person <NA>
#> 6 <NA> NA rd_sampler rd_sampler.Rd
#> 7 <NA> NA reexport_example reexport_example.Rd
#> 8 <NA> NA reexports reexports.Rd
Some tests evaluate a broad set of functionality by calling functions that themselves call out to internal package functions. This is often perfectly fine, since the mechanisms of calling those internal functions are limited by the surfaced user-facing functions. Nevertheless, whether a function is called directly is a good indication of the “unit”-ness of a unit test. You may consider only the coverage of directly tested functions.
%>%
ttdf filter(!doctype %in% c("data", "class")) %>% # ignore objects without testable code
select(direct, alias) %>%
group_by(alias) %>%
summarize(any_direct_tests = any(direct, na.rm = TRUE)) %>%
arrange(alias)
#> # A tibble: 21 × 2
#> alias any_direct_tests
#> <chr> <lgl>
#> 1 Accumulator TRUE
#> 2 Person TRUE
#> 3 Rando TRUE
#> 4 adder TRUE
#> 5 complex_call_stack TRUE
#> # ℹ 16 more rows
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.
Health stats visible at Monitor.