LAVA: Large Scale Automated Vulnerability Addition
Evaluating and improving bug-finding tools is currently difficult due to a shortage of ground truth corpora (i.e., software that has known bugs with triggering inputs). LAVA attempts to solve this problem by automatically injecting bugs into software. Every LAVA bug is accompanied by an input that triggers it whereas normal inputs are extremely unlikely to do so. These vulnerabilities are synthetic but, we argue, still realistic, in the sense that they are embedded deep within programs and are triggered by real inputs. Our work forms the basis of an approach for generating large ground-truth vulnerability corpora on demand, enabling rigorous tool evaluation and providing a high-quality target for tool developers.
LAVA is the product of a collaboration between MIT Lincoln Laboratory, NYU, and Northeastern University.
Quick Start
On a system running Ubuntu 16.04, with the appropriate dependencies installed
(see docs/setup.md for details), you should be able to just
run python2 setup.py
. Note that this install script will install packages
and make changes to your system. Once it finishes, you should have
PANDA installed into panda/build/
(PANDA is used to perform dynamic taint analysis).
Next, run init-host.py
to generate a host.json
.
This file is used by LAVA to store settings specific
to your machine. You can edit these settings as necessary, but the default
values should work.
Project configurations are located in the target_configs
directory, where
every configuration is located at target_configs/projectname/projectname.json
.
Paths specified within these configuration files are relative to values set
in your host.json
file.
Finally, you can run ./scripts/lava.sh
to actually inject bugs
into a program. Just provide the name of a project that is in the
target_configs
directory, for example:
./scripts/lava.sh toy
You should now have a buggy copy of toy!
If you want to inject bugs into a new target, you will likely need to make some modifications. Check out How-to-Lava for guidance.
Documentation
Check out the docs folder to get started.
Current Status
Version 2.0.0
Expected results from test suite:
Project RESET CLEAN ADD MAKE TAINT INJECT COMP
blecho PASS PASS PASS PASS PASS PASS PASS
libyaml PASS PASS PASS PASS PASS PASS PASS
file PASS PASS PASS PASS PASS PASS PASS
toy PASS PASS PASS PASS PASS PASS PASS
pcre2 PASS PASS PASS PASS PASS PASS PASS
jq PASS PASS PASS PASS PASS PASS PASS
grep PASS PASS PASS PASS PASS FAIL
libjpeg PASS PASS PASS PASS FAIL
tinyexpr PASS PASS PASS PASS FAIL
duktape PASS PASS PASS FAIL
tweetNaCl PASS PASS FAIL
gzip FAIL
Authors
LAVA is the result of several years of development by many people; a partial (alphabetical) list of contributors is below:
- Andy Davis
- Brendan Dolan-Gavitt
- Andrew Fasano
- Zhenghao Hu
- Patrick Hulin
- Amy Jiang
- Engin Kirda
- Tim Leek
- Andrea Mambretti
- Wil Robertson
- Aaron Sedlacek
- Rahul Sridhar
- Frederick Ulrich
- Ryan Whelan