Awesome
Hedgehog
<img src="vignettes/hedgehog-logo.png" width="307" align="right"/>Hedgehog will eat all your bugs.
Hedgehog is a modern property based testing system in the spirit of QuickCheck, originally written in Haskell, but now also available in R. One of the key benefits of Hedgehog is integrated shrinking of counterexamples, which allows one to quickly find the cause of bugs, given salient examples when incorrect behaviour occurs.
Features
- Expressive property based testing.
- Integrated shrinking, shrinks obey invariants by construction.
- Generators can be combined to build complex and interesting structures.
- Abstract state machine testing.
- Full compatibility with testthat makes it easy to add property based testing, without disrupting your work flow.
Example
To get a quick look of how Hedgehog feels, here's an example
showing some of the properties a function which reverses a vector
should have. We'll be testing the rev
function from
package:base
.
test_that( "Reverse of reverse is identity",
forall( gen.c( gen.element(1:100) ), function(xs) expect_equal(rev(rev(xs)), xs))
)
The property above tests that if I reverse a vector twice, the result should be the same as the vector that I began with. Hedgehog has generated 100 examples, and checked that this property holds in all of these cases.
As one can see, there is not a big step from using vanilla testthat
to including hedgehog in one's process. Inside a test_that
block,
one can add a forall
and set expectations within it.
We use the term forall
(which comes from predicate logic) to say
that we want the property to be true no matter what the input to
the tested function is. The first argument to forall
is function
to generate random values (the generator); while the second is
the properties we wish to test.
The property above doesn't actually completely specify that the
rev
function is accurate though, as one could replace rev
with
the identity function and still observe this result. We will therefore
write one more property to thoroughly test this function.
test_that( "Reversed of concatenation is flipped concatenation of reversed",
forall( list( as = gen.c( gen.element(1:100) )
, bs = gen.c( gen.element(1:100) ))
, function(as,bs) expect_equal ( rev(c(as, bs)), c(rev(bs), rev(as)))
)
)
This is now a well tested reverse function. Notice that the property
function now accepts two arguments: as
and bs
. A list of generators
in Hedgehog is treated as a generator of lists, and shrinks all members
independently. We do however do our best to make sure that properties
can be specified naturally if the generator is specified in this manner
as a list of generators.
Now let's look at an assertion which isn't true so we can see what our counterexamples looks like
test_that( "Reverse is identity",
forall( gen.c( gen.element(1:100) ), function(xs) expect_equal(rev(xs), c(xs)))
)
## Error: Test failed: 'Reverse is identity'
## * Falsifiable after 1 tests, and 8 shrinks
## rev(xs) not equal to c(xs).
## 2/2 mismatches (average diff: 1)
## [1] 2 - 1 == 1
## [2] 1 - 2 == -1
##
## Counterexample:
## [1] 1 2
This test says that the reverse of a vector should equal the vector,
which is obviously not true for all vectors. Here, hedgehog has run
this expectation with random input, and found it to not be true.
Instead of reporting it directly, it has shrunk the bad test case to
the smallest counterexample it could find: c(1,2)
. Hedgehog then
reëmits this test error to testthat
, which handles it as per usual
and displays it to the user.
Generators
Hedgehog exports some basic generators and plenty of combinators for making new generators. Here's an example which produces a floating point value between -10 and 10, shrinking to the median 0.
gen.unif( from = -10, to = 10 )
## Hedgehog generator:
## A generator is a function which produces random trees
## using a size parameter to scale it.
##
## Example:
## [1] -2.085815
## Shrinks:
## [1] 0
## [1] -0.08581477
## [1] -1.085815
Although only three possible shrinks are shown above, these are actually just the first layer of a rose tree of possible shrinks. This integrated shrinking property is a key component of hedgehog, and gives us an excellent chance of reducing to the minimum possible counterexample.
test_that( "a is less than b + 1",
forall(list(a = gen.element(1:100), b = gen.element(1:100)), function(a, b) expect_lt( a, b + 1 ))
)
## Error: Test failed: 'a is less than b + 1'
## * Falsifiable after 2 tests, and 10 shrinks
## 2 is not strictly less than b + 1. Difference: 0
##
## Counterexample:
## $a
## [1] 2
##
## $b
## [1] 1
The generators gen.c
, gen.element
, and gen.unif
, are related to
standard R functions: c
, to create a vector; sample
, to sample
from a list or vector; and runif
, to sample from a uniform
distribution. We try to maintain a relationship to R's well known
functions inside Hedgehog.
Generators can also be sequenced together, using the output of one generator to create a new, more complex one. An example of this is a list generator, which first randomly chooses a length, then generates a list of said length.
One way to create larger generators in the generate
function, which
acts upon an idiomatic for
loop. For example, one can create a
generator of squares up to 100; and a generator of vectors with lengths
of squares with
gen_squares <- generate(for (i in gen.int(10)) i^2)
gen_sq_digits <- generate(for (i in gen_squares) {
gen.c(of = i, gen.element(1:9))
})
In the following example, we'll create a generator which builds two
lists of length n
, then turn them into a data.frame
with gen.with
.
gen.df.of <- function(n)
generate(for (x in
list( as = gen.c(of = n, gen.element(1:10) )
, bs = gen.c(of = n, gen.element(10:20) )
)
) as.data.frame(x)
)
test_that( "Number of rows is 5",
forall( gen.df.of(5), function(df) expect_equal(nrow(df), 5))
)
While this is good, but we would also like to be able to create
data.frames
with a varying number of rows. Here, we'll again
test a property which is false in order to show how hedgehog
will find the minimum shrink.
gen.df <-
generate(for (e in gen.element(1:100)) {
gen.df.of(e)
})
test_that( "All data frames are of length 1",
forall( gen.df, function(x) expect_equal(nrow(x), 1))
)
## Error: Test failed: 'All data frames are of length 1'
## * Falsifiable after 1 tests, and 9 shrinks
## nrow(x) not equal to 1.
## 1/1 mismatches
## [1] 2 - 1 == 1
##
## Counterexample:
## as bs
## 1 1 10
## 2 1 10
Technically, that we can sequence generators is this way implies they
are monads, and we provide a number combinators for manipulating them
in this manner. Indeed, generate
is simply syntactic sugar for monadic
bind, sometimes referred to as "and then".
The gen.with
function can be used to apply an arbitrary function to
the output of a generator, while gen.and_then
is useful in chaining the
results of a generator.