* add basic benchmarking script * add results class, collect more information, and fix check for no args * fix indentation * we don't have logger here * use argv[0] for name of program * allow dumping of stats from the API and use .format() * add ProfilingResults class * bugfixes
Manticore
Manticore is a prototyping tool for dynamic binary analysis, with support for symbolic execution, taint analysis, and binary instrumentation.
Features
- Input Generation: Manticore automatically generates inputs that trigger unique code paths
- Crash Discovery: Manticore discovers inputs that crash programs via memory safety violations
- Execution Tracing: Manticore records an instruction-level trace of execution for each generated input
- Programmatic Interface: Manticore exposes programmatic access to its analysis engine via a Python API
Scope
Manticore supports binaries of the following formats, operating systems, and architectures. It has been primarily used on binaries compiled from C and C++.
- OS/Formats: Linux ELF, Windows Minidump
- Architectures: x86, x86_64, ARMv7 (partial)
Requirements
Manticore is officially supported on Linux and uses Python 2.7.
Installation
We recommend the use of Manticore in a virtual environment, though this is optional. To manage this, we recommend installing virtualenvwrapper. Then, to set up a virtual environment, in the root of the Manticore repository, run
mkvirtualenv manticore
Then, from the root of the Manticore repository, run:
pip install .
or, if you would like to do a user install:
pip install --user .
This installs the Manticore CLI tool manticore and the Python API.
Then, install the Z3 Theorem Prover. Download the latest release for your platform and place the z3 binary in your $PATH.
Note: Due to a known issue, Capstone may not install correctly. If you get this error message, "ImportError: ERROR: fail to load the dynamic library.", or another related to Capstone, try reinstalling via
pip install -I --no-binary capstone capstone
For developers
For a dev install, run:
pip install -e .[dev]
This installs a few other dependencies used for tests which you can run with some of the commands below:
cd /path/to/manticore/
# all tests
nosetests
# just one file
nosetests tests/test_armv7cpu.py
# just one test class
nosetests tests/test_armv7cpu.py:Armv7CpuInstructions
# just one test
nosetests tests/test_armv7cpu.py:Armv7CpuInstructions.test_mov_imm_min
Quick start
Install and try Manticore in about ten shell commands:
# install z3 before beginning, see our README.md
git clone git@github.com:trailofbits/manticore.git
cd manticore
pip install --user --no-binary capstone . # do this in a virtualenv if you want, but omit --user
cd examples/linux
make
manticore basic
cat mcore_*/*1.stdin | ./basic
cat mcore_*/*2.stdin | ./basic
cd ../script
python count_instructions.py ../linux/helloworld # ok if the insn count is different
Here's an asciinema of what it should look like: https://asciinema.org/a/567nko3eh2yzit099s0nq4e8z
Usage
$ manticore ./path/to/binary # runs, and creates a directory with analysis results
or
# example Manticore script
from manticore import Manticore
hook_pc = 0x400ca0
m = Manticore('./path/to/binary')
@m.hook(hook_pc)
def hook(state):
cpu = state.cpu
print 'eax', cpu.EAX
print cpu.read_int(cpu.SP)
m.terminate() # tell Manticore to stop
m.run()
FAQ
How does Manticore compare to angr?
Manticore is simpler. It has a smaller codebase, fewer dependencies and features, and an easier learning curve. If you come from a reverse engineering or exploitation background, you may find Manticore intuitive due to its lack of intermediate representation and overall emphasis on staying close to machine abstractions.