Fuzzcheck is a modular, structure-aware, and feedback-driven fuzzing engine for Rust functions.
Given a function test: (T) -> bool
, you can use fuzzcheck to find a value of
type T
that fails the test or leads to a crash.
The tool fuzzcheck-view
is available
to visualise the code coverage of each/all test cases generated by fuzzcheck. It is still just
a prototype though.
Follow the guide at fuzzcheck.neocities.org to get started or read the documentation on docs.rs.
Linux or macOS is required. Windows support is planned but I need help with it.
Rust nightly is also required. You can install it with:
rustup toolchain install nightly
While it is not strictly necessary, installing the cargo-fuzzcheck
executable will make it easier to run fuzzcheck.
cargo install cargo-fuzzcheck
In your Cargo.toml
file, add fuzzcheck
as a dev-dependency:
[dev-dependencies]
fuzzcheck = "0.12"
Then, we need a way to serialize values. By default, fuzzcheck uses serde_json
for that purpose (but it can be changed). That means our data types should
implement serde's traits. In Cargo.toml
, add:
[dependencies]
serde = { version = "1.0", features = ["derive"] }
Below is an example of how to use fuzz test. Note:
- every code related to fuzzcheck is conditional on
#[cfg(test)]
because we don't want to carry the fuzzcheck dependency in normal builds - the
#![cfg_attr(test, feature(no_coverage))]
is required by fuzzcheck’s procedural macros - the use of
derive(fuzzcheck::DefaultMutator)
makes a custom type fuzzable
#![cfg_attr(fuzzing, feature(no_coverage))]
use serde::{Deserialize, Serialize};
#[cfg_attr(fuzzing, derive(fuzzcheck::DefaultMutator))]
#[derive(Clone, Serialize, Deserialize)]
struct SampleStruct<T, U> {
x: T,
y: U,
}
#[cfg_attr(fuzzing, derive(fuzzcheck::DefaultMutator))]
#[derive(Clone, Serialize, Deserialize)]
enum SampleEnum {
A(u16),
B,
C { x: bool, y: bool },
}
fn should_not_crash(xs: &[SampleStruct<u8, SampleEnum>]) {
if xs.len() > 3
&& xs[0].x == 100
&& matches!(xs[0].y, SampleEnum::C { x: false, y: true })
&& xs[1].x == 55
&& matches!(xs[1].y, SampleEnum::C { x: true, y: false })
&& xs[2].x == 87
&& matches!(xs[2].y, SampleEnum::C { x: false, y: false })
&& xs[3].x == 24
&& matches!(xs[3].y, SampleEnum::C { x: true, y: true })
{
panic!()
}
}
// fuzz tests reside along your other tests and have the #[test] attribute
#[cfg(all(fuzzing, test))]
mod tests {
#[test]
fn test_function_shouldn_t_crash() {
let result = fuzzcheck::fuzz_test(super::should_not_crash) // the test function to fuzz
.default_mutator() // the mutator to generate values of &[SampleStruct<u8, SampleEnum>]
.serde_serializer() // save the test cases to the file system using serde
.default_sensor_and_pool() // gather observations using the default sensor (i.e. recording code coverage)
.arguments_from_cargo_fuzzcheck() // take arguments from the cargo-fuzzcheck command line tool
.stop_after_first_test_failure(true) // stop the fuzzer as soon as a test failure is found
.launch();
assert!(!result.found_test_failure);
}
}
We can now use cargo-fuzzcheck
to launch the test, using Rust nightly:
rustup override set nightly
# the argument is the *exact* path to the test function
cargo fuzzcheck tests::test_function_shouldn_t_crash
This starts a loop that will stop when a failing test has been found. After about ~50ms of fuzz-testing on my machine, the following line is printed:
Failing test case found. Saving at "fuzz/tests::test_function_shouldn_t_crash/artifacts/59886edc1de2dcc1.json"
The file 59886edc1de2dcc1.json
contains the JSON-encoded input that failed the test.
[
{
"x": 100,
"y": {
"C": {
"x": false,
"y": true
}
}
},
{
"x": 55,
"y": {
"C": {
"x": true,
"y": false
}
}
},
..
]
Fuzzcheck can also be used to minify a large input that fails a test.
If the failure is recoverable (i.e. it is not a segfault/stack overflow), and
the fuzzer is not instructed to stop after the first failure, then the failing
test cases will be minified automatically. Otherwise, you can use the minify
command.
Let's say you have a file crash.json
containing an input that you would like
to minify. Launch cargo fuzzcheck <exact name of fuzz test>
with the minify
command
and an --input-file
option.
cargo fuzzcheck "tests::test_function_shouldn_t_crash" --command minify --input-file "crash.json"
This will repeatedly launch the fuzzer in “minify” mode and save the
artifacts in the folder artifacts/crash.minified
. The name of each artifact
will be prefixed with the complexity of its input. For example,
crash.minified/800--fe958d4f003bd4f5.json
has a complexity of 8.00
.
You can stop the minifying fuzzer at any point and look for the least complex
input in the crash.minified
folder.
Other crates with the same goal are quickcheck
and proptest
. Fuzzcheck can be more powerful
than these because it guides the generation of test cases based on feedback
generated from running the test function. This feedback is most often code coverage,
but can be different.
Another similar crate is cargo-fuzz
, often paired
with arbitrary
. In this case,
fuzzcheck has an advantage by being easier to use, more modular, and being more
fundamentally structure-aware and thus potentially more efficient.
As far as I know, evolutionary, coverage-guided fuzzing engines were
popularized by American Fuzzy Lop (AFL).
Fuzzcheck is also evolutionary and coverage-guided.
Later on, LLVM released its own fuzzing engine,
libFuzzer, which is based on the
same ideas as AFL, but it uses Clang’s
SanitizerCoverage and is
in-process (it lives in the same process as the program being fuzz-tested.
Fuzzcheck is also in-process. It uses rustc’s -Z instrument-coverage
option
instead of SanitizerCoverage for code coverage instrumentation.
Both AFL and libFuzzer work by manipulating bitstrings (e.g. 1011101011
).
However, many programs work on structured data, and mutations at the
bitstring level may not map to meaningful mutations at the level of the
structured data. This problem can be partially addressed by using a compact
binary encoding such as protobuf and providing custom mutation functions to
libFuzzer that work on the structured data itself. This is a way to perform
“structure-aware fuzzing” (talk,
tutorial).
An alternative way to deal with structured data is to use generators just like
QuickCheck’s Arbitrary
trait. And then to “treat the raw byte buffer input
provided by the coverage-guided fuzzer as a sequence of random values and
implement a “random” number generator around it.”
(cited blog post by @fitzgen).
The tool cargo-fuzz
has
recently
implemented that approach.
Fuzzcheck is also structure-aware, but unlike previous attempts at
structure-aware fuzzing, it doesn't use an intermediary binary encoding such as
protobuf nor does it use Quickcheck-like generators.
Instead, it directly mutates the typed values in-process.
This is better many ways. First, it is faster because there is no
need to encode and decode inputs at each iteration. Second, the complexity of
the input is given by a user-defined function, which will be more accurate than
counting the bytes of the protobuf encoding.
Finally, and most importantly, the mutations are faster and more meaningful
than those done on protobuf or Arbitrary
’s byte buffer-based RNG.
A detail that I particularly like about fuzzcheck, and that is possible only
because it mutates typed values, is that every mutation is done in-place
and is reversable. That means that generating a new test case is super fast,
and can often even be done with zero allocations.
As I was developing Fuzzcheck for Swift, a few researchers developed Fuzzchick
for Coq (paper). It
is a coverage-guided property-based testing tool implemented as an extension to
Quickchick. As far as I know, it is the only other tool with the same philosophy
as fuzzcheck. The similarity between the names fuzzcheck
and Fuzzchick
is a
coincidence.
LibAFL is another modular fuzzer written in Rust. It was released relatively recently.