Atheris: A Coverage-Guided, Native Python Fuzzer
Atheris is a coverage-guided Python fuzzing engine. It supports fuzzing of Python code, but also native extensions written for CPython. Atheris is based off of libFuzzer. When fuzzing native code, Atheris can be used in combination with Address Sanitizer or Undefined Behavior Sanitizer to catch extra bugs.
Installation Instructions
Atheris supports Linux (32- and 64-bit) and Mac OS X, Python versions 3.6-3.10.
You can install prebuilt versions of Atheris with pip:
pip3 install atheris
These wheels come with a built-in libFuzzer, which is fine for fuzzing Python
code. If you plan to fuzz native extensions, you may need to build from source
to ensure the libFuzzer version in Atheris matches your Clang version.
Building from Source
Atheris relies on libFuzzer, which is distributed with Clang. If you have a sufficiently new version of clang
on your path, installation from source is as simple as:
pip3 install --no-binary atheris atheris
git clone https://github.com/google/atheris.git
cd atheris
pip3 install .
If you don't have clang
installed or it's too old, you'll need to download and build the latest version of LLVM. Follow the instructions in Installing Against New LLVM below.
Mac
Apple Clang doesn't come with libFuzzer, so you'll need to install a new version of LLVM from head. Follow the instructions in Installing Against New LLVM below.
Installing Against New LLVM
git clone https://github.com/llvm/llvm-project.git
cd llvm-project
mkdir build
cd build
cmake -DLLVM_ENABLE_PROJECTS='clang;compiler-rt' -G "Unix Makefiles" ../llvm
make -j 10
CLANG_BIN="$(pwd)/bin/clang" pip3 install <whatever>
Using Atheris
Example
import atheris
with atheris.instrument_imports():
import some_library
import sys
def TestOneInput(data):
some_library.parse(data)
atheris.Setup(sys.argv, TestOneInput)
atheris.Fuzz()
When fuzzing Python, Atheris will report a failure if the Python code under test throws an uncaught exception.
Python coverage
Atheris collects Python coverage information by instrumenting bytecode.
There are 3 options for adding this instrumentation to the bytecode:
-
You can instrument the libraries you import:
with atheris.instrument_imports():
import foo
from bar import baz
This will cause instrumentation to be added to foo
and bar
, as well as
any libraries they import.
-
Or, you can instrument individual functions:
@atheris.instrument_func
def my_function(foo, bar):
print("instrumented")
-
Or finally, you can instrument everything:
atheris.instrument_all()
Put this right before atheris.Setup()
. This will find every Python function
currently loaded in the interpreter, and instrument it.
This might take a while.
Atheris can additionally instrument regular expression checks, e.g. re.search
.
To enable this feature, you will need to add:
atheris.enabled_hooks.add("RegEx")
To your script before your code calls re.compile
.
Internally this will import the re
module and instrument the necessary functions.
This is currently an experimental feature.
Similarly, Atheris can instrument str methods; currently only str.startswith
and str.endswith
are supported. To enable this feature, add
atheris.enabled_hooks.add("str")
. This is currently an experimental feature.
Why am I getting "No interesting inputs were found"?
You might see this error:
ERROR: no interesting inputs were found. Is the code instrumented for coverage? Exiting.
You'll get this error if the first 2 calls to TestOneInput
didn't produce any
coverage events. Even if you have instrumented some Python code,
this can happen if the instrumentation isn't reached in those first 2 calls.
(For example, because you have a nontrivial TestOneInput
). You can resolve
this by adding an atheris.instrument_func
decorator to TestOneInput
,
using atheris.instrument_all()
, or moving your TestOneInput
function into an
instrumented module.
Visualizing Python code coverage
Examining which lines are executed is helpful for understanding the
effectiveness of your fuzzer. Atheris is compatible with
coverage.py
: you can run your fuzzer using
the coverage.py
module as you would for any other Python program. Here's an
example:
python3 -m coverage run your_fuzzer.py -atheris_runs=10000
python3 -m coverage html
(cd htmlcov && python3 -m http.server 8000)
Coverage reports are only generated when your fuzzer exits gracefully. This
happens if:
- you specify
-atheris_runs=<number>
, and that many runs have elapsed. - your fuzzer exits by Python exception.
- your fuzzer exits by
sys.exit()
.
No coverage report will be generated if your fuzzer exits due to a
crash in native code, or due to libFuzzer's -runs
flag (use -atheris_runs
).
If your fuzzer exits via other methods, such as SIGINT (Ctrl+C), Atheris will
attempt to generate a report but may be unable to (depending on your code).
For consistent reports, we recommend always using
-atheris_runs=<number>
.
If you'd like to examine coverage when running with your corpus, you can do
that with the following command:
python3 -m coverage run your_fuzzer.py corpus_dir/* -atheris_runs=$(( 1 + $(ls corpus_dir | wc -l) ))
This will cause Atheris to run on each file in <corpus-dir>
, then exit.
Note: atheris use empty data set as the first input even if there is no empty file in <corpus_dir>
.
Importantly, if you leave off the -atheris_runs=$(ls corpus_dir | wc -l)
, no
coverage report will be generated.
Using coverage.py will significantly slow down your fuzzer, so only use it for
visualizing coverage; don't use it all the time.
Fuzzing Native Extensions
In order for fuzzing native extensions to be effective, your native extensions
must be instrumented. See Native Extension Fuzzing
for instructions.
Structure-aware Fuzzing
Atheris is based on a coverage-guided mutation-based fuzzer (LibFuzzer). This
has the advantage of not requiring any grammar definition for generating inputs,
making its setup easier. The disadvantage is that it will be harder for the
fuzzer to generate inputs for code that parses complex data types. Often the
inputs will be rejected early, resulting in low coverage.
Atheris supports custom mutators
(as offered by LibFuzzer)
to produce grammar-aware inputs.
Example (Atheris-equivalent of the
example in the LibFuzzer docs):
@atheris.instrument_func
def TestOneInput(data):
try:
decompressed = zlib.decompress(data)
except zlib.error:
return
if len(decompressed) < 2:
return
try:
if decompressed.decode() == 'FU':
raise RuntimeError('Boom')
except UnicodeDecodeError:
pass
To reach the RuntimeError
crash, the fuzzer needs to be able to produce inputs
that are valid compressed data and satisfy the checks after decompression.
It is very unlikely that Atheris will be able to produce such inputs: mutations
on the input data will most probably result in invalid data that will fail at
decompression-time.
To overcome this issue, you can define a custom mutator function (equivalent to
LLVMFuzzerCustomMutator
).
This example produces valid compressed data. To enable Atheris to make use of
it, pass the custom mutator function to the invocation of atheris.Setup
.
def CustomMutator(data, max_size, seed):
try:
decompressed = zlib.decompress(data)
except zlib.error:
decompressed = b'Hi'
else:
decompressed = atheris.Mutate(decompressed, len(decompressed))
return zlib.compress(decompressed)
atheris.Setup(sys.argv, TestOneInput, custom_mutator=CustomMutator)
atheris.Fuzz()
As seen in the example, the custom mutator may request Atheris to mutate data
using atheris.Mutate()
(this is equivalent to LLVMFuzzerMutate
).
You can experiment with custom_mutator_example.py
and see that without the mutator Atheris would not be able to find the crash,
while with the mutator this is achieved in a matter of seconds.
$ python3 example_fuzzers/custom_mutator_example.py --no_mutator
[...]
#2 INITED cov: 2 ft: 2 corp: 1/1b exec/s: 0 rss: 37Mb
#524288 pulse cov: 2 ft: 2 corp: 1/1b lim: 4096 exec/s: 262144 rss: 37Mb
#1048576 pulse cov: 2 ft: 2 corp: 1/1b lim: 4096 exec/s: 349525 rss: 37Mb
#2097152 pulse cov: 2 ft: 2 corp: 1/1b lim: 4096 exec/s: 299593 rss: 37Mb
#4194304 pulse cov: 2 ft: 2 corp: 1/1b lim: 4096 exec/s: 279620 rss: 37Mb
[...]
$ python3 example_fuzzers/custom_mutator_example.py
[...]
INFO: found LLVMFuzzerCustomMutator (0x7f9c989fb0d0). Disabling -len_control by default.
[...]
#2 INITED cov: 2 ft: 2 corp: 1/1b exec/s: 0 rss: 37Mb
#3 NEW cov: 4 ft: 4 corp: 2/11b lim: 4096 exec/s: 0 rss: 37Mb L: 10/10 MS: 1 Custom-
#12 NEW cov: 5 ft: 5 corp: 3/21b lim: 4096 exec/s: 0 rss: 37Mb L: 10/10 MS: 7 Custom-CrossOver-Custom-CrossOver-Custom-ChangeBit-Custom-
=== Uncaught Python exception: ===
RuntimeError: Boom
Traceback (most recent call last):
File "example_fuzzers/custom_mutator_example.py", line 62, in TestOneInput
raise RuntimeError('Boom')
[...]
Custom crossover functions (equivalent to LLVMFuzzerCustomCrossOver
) are also
supported. You can pass the custom crossover function to the invocation of
atheris.Setup
. See its usage in custom_crossover_fuzz_test.py.
Structure-aware Fuzzing with Protocol Buffers
libprotobuf-mutator has
bindings to use it together with Atheris to perform structure-aware fuzzing
using protocol buffers.
See the documentation for
atheris_libprotobuf_mutator.
Integration with OSS-Fuzz
Atheris is fully supported by OSS-Fuzz, Google's continuous fuzzing service for open source projects. For integrating with OSS-Fuzz, please see https://google.github.io/oss-fuzz/getting-started/new-project-guide/python-lang.
API
The atheris
module provides three key functions: instrument_imports()
, Setup()
and Fuzz()
.
In your source file, import all libraries you wish to fuzz inside a with atheris.instrument_imports():
-block, like this:
import library_a
with atheris.instrument_imports():
import library_b
Generally, it's best to import atheris
first and then import all other libraries inside of a with atheris.instrument_imports()
block.
Next, define a fuzzer entry point function and pass it to atheris.Setup()
along with the fuzzer's arguments (typically sys.argv
). Finally, call atheris.Fuzz()
to start fuzzing. You must call atheris.Setup()
before atheris.Fuzz()
.
instrument_imports(include=[], exclude=[])
include
: A list of fully-qualified module names that shall be instrumented.exclude
: A list of fully-qualified module names that shall NOT be instrumented.
This should be used together with a with
-statement. All modules imported in
said statement will be instrumented. However, because Python imports all modules
only once, this cannot be used to instrument any previously imported module,
including modules required by Atheris. To add coverage to those modules, use
instrument_all()
instead.
A full list of unsupported modules can be retrieved as follows:
import sys
import atheris
print(sys.modules.keys())
instrument_func(func)
func
: The function to instrument.
This will instrument the specified Python function and then return func
. This
is typically used as a decorator, but can be used to instrument individual
functions too. Note that the func
is instrumented in-place, so this will
affect all call points of the function.
This cannot be called on a bound method - call it on the unbound version.
instrument_all()
This will scan over all objects in the interpreter and call instrument_func
on
every Python function. This works even on core Python interpreter functions,
something which instrument_imports
cannot do.
This function is experimental.
Setup(args, test_one_input, internal_libfuzzer=None)
args
: A list of strings: the process arguments to pass to the fuzzer, typically sys.argv
. This argument list may be modified in-place, to remove arguments consumed by the fuzzer.
See the LibFuzzer docs for a list of such options.test_one_input
: your fuzzer's entry point. Must take a single bytes
argument. This will be repeatedly invoked with a single bytes container.internal_libfuzzer
: Indicates whether libfuzzer will be provided by atheris or by an external library (see native_extension_fuzzing.md). If unspecified, Atheris will determine this
automatically. If fuzzing pure Python, leave this as True
.
Fuzz()
This starts the fuzzer. You must have called Setup()
before calling this function. This function does not return.
In many cases Setup()
and Fuzz()
could be combined into a single function, but they are
separated because you may want the fuzzer to consume the command-line arguments it handles
before passing any remaining arguments to another setup function.
FuzzedDataProvider
Often, a bytes
object is not convenient input to your code being fuzzed. Similar to libFuzzer, we provide a FuzzedDataProvider to translate these bytes into other input forms.
You can construct the FuzzedDataProvider with:
fdp = atheris.FuzzedDataProvider(input_bytes)
The FuzzedDataProvider then supports the following functions:
def ConsumeBytes(count: int)
Consume count
bytes.
def ConsumeUnicode(count: int)
Consume unicode characters. Might contain surrogate pair characters, which according to the specification are invalid in this situation. However, many core software tools (e.g. Windows file paths) support them, so other software often needs to too.
def ConsumeUnicodeNoSurrogates(count: int)
Consume unicode characters, but never generate surrogate pair characters.
def ConsumeString(count: int)
Alias for ConsumeBytes
in Python 2, or ConsumeUnicode
in Python 3.
def ConsumeInt(int: bytes)
Consume a signed integer of the specified size (when written in two's complement notation).
def ConsumeUInt(int: bytes)
Consume an unsigned integer of the specified size.
def ConsumeIntInRange(min: int, max: int)
Consume an integer in the range [min
, max
].
def ConsumeIntList(count: int, bytes: int)
Consume a list of count
integers of size
bytes.
def ConsumeIntListInRange(count: int, min: int, max: int)
Consume a list of count
integers in the range [min
, max
].
def ConsumeFloat()
Consume an arbitrary floating-point value. Might produce weird values like NaN
and Inf
.
def ConsumeRegularFloat()
Consume an arbitrary numeric floating-point value; never produces a special type like NaN
or Inf
.
def ConsumeProbability()
Consume a floating-point value in the range [0, 1].
def ConsumeFloatInRange(min: float, max: float)
Consume a floating-point value in the range [min
, max
].
def ConsumeFloatList(count: int)
Consume a list of count
arbitrary floating-point values. Might produce weird values like NaN
and Inf
.
def ConsumeRegularFloatList(count: int)
Consume a list of count
arbitrary numeric floating-point values; never produces special types like NaN
or Inf
.
def ConsumeProbabilityList(count: int)
Consume a list of count
floats in the range [0, 1].
def ConsumeFloatListInRange(count: int, min: float, max: float)
Consume a list of count
floats in the range [min
, max
]
def PickValueInList(l: list)
Given a list, pick a random value
def ConsumeBool()
Consume either True
or False
.