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Autodict-QL - Optimal Token Generation for Fuzzing
What is this?
Autodict-QL
is a plugin system that enables fast generation of
Tokens/Dictionaries in a handy way that can be manipulated by the user (unlike
The LLVM Passes that are hard to modify). This means that autodict-ql is a
scriptable feature which basically uses CodeQL (a powerful semantic code
analysis engine) to fetch information from a code base.
Tokens are useful when you perform fuzzing on different parsers. The AFL++ -x
switch enables the usage of dictionaries through your fuzzing campaign. If you
are not familiar with Dictionaries in fuzzing, take a look
here.
Why CodeQL?
We basically developed this plugin on top of the CodeQL engine because it gives the user scripting features, it's easier and it's independent of the LLVM system. This means that a user can write his CodeQL scripts or modify the current scripts to improve or change the token generation algorithms based on different program analysis concepts.
CodeQL scripts
Currently, we pushed some scripts as defaults for Token generation. In addition, we provide every CodeQL script as an standalone script because it's easier to modify or test.
Currently we provided the following CodeQL scripts:
strcmp-str.ql
is used to extract strings that are related to the strcmp
function.
strncmp-str.ql
is used to extract the strings from the strncmp
function.
memcmp-str.ql
is used to extract the strings from the memcmp
function.
litool.ql
extracts Magic numbers as Hexadecimal format.
strtool.ql
extracts strings with uses of a regex and dataflow concept to
capture the string comparison functions. If strcmp
is rewritten in a project
as Mystrcmp or something like strmycmp, then this script can catch the arguments
and these are valuable tokens.
You can write other CodeQL scripts to extract possible effective tokens if you think they can be useful.
Usage
Before you proceed to installation make sure that you have the following packages by installing them:
sudo apt install build-essential libtool-bin python3-dev python3 automake git vim wget -y
The usage of Autodict-QL is pretty easy. But let's describe it as:
-
First of all, you need to have CodeQL installed on the system. We make this possible with
build-codeql.sh
bash script. This script will install CodeQL completety and will set the required environment variables for your system. Do the following:# chmod +x codeql-build.sh # ./codeql-build.sh # source ~/.bashrc # codeql
Then you should get:
Usage: codeql <command> <argument>... Create and query CodeQL databases, or work with the QL language. GitHub makes this program freely available for the analysis of open-source software and certain other uses, but it is not itself free software. Type codeql --license to see the license terms. --license Show the license terms for the CodeQL toolchain. Common options: -h, --help Show this help text. -v, --verbose Incrementally increase the number of progress messages printed. -q, --quiet Incrementally decrease the number of progress messages printed. Some advanced options have been hidden; try --help -v for a fuller view. Commands: query Compile and execute QL code. bqrs Get information from .bqrs files. database Create, analyze and process CodeQL databases. dataset [Plumbing] Work with raw QL datasets. test Execute QL unit tests. resolve [Deep plumbing] Helper commands to resolve disk locations etc. execute [Deep plumbing] Low-level commands that need special JVM options. version Show the version of the CodeQL toolchain. generate Generate formatted QL documentation. github Commands useful for interacting with the GitHub API through CodeQL.
-
Compile your project with CodeQL: For using the Autodict-QL plugin, you need to compile the source of the target you want to fuzz with CodeQL. This is not something hard.
- First you need to create a CodeQL database of the project codebase, suppose
we want to compile
libxml
with codeql. Go to libxml and issue the following commands:./configure --disable-shared
codeql database create libxml-db --language=cpp --command="make -j$(nproc)"
- Now you have the CodeQL database of the project :-)
- First you need to create a CodeQL database of the project codebase, suppose
we want to compile
-
The final step is to update the CodeQL database you created in step 2 (Suppose we are in
aflplusplus/utils/autodict_ql/
directory):codeql database upgrade /home/user/libxml/libxml-db
-
Everything is set! Now you should issue the following to get the tokens:
python3 autodict-ql.py [CURRECT_DIR] [CODEQL_DATABASE_PATH] [TOKEN_PATH]
- example:
python3 /home/user/AFLplusplus/utils/autodict_ql/autodict-ql.py $PWD /home/user/libxml/libxml-db tokens
- This will create the final
tokens
dir for you and you are done, then pass the tokens path to AFL++'s-x
flag.
- This will create the final
- example:
-
Done!
More on dictionaries and tokens
Core developer of the AFL++ project Marc Heuse also developed a similar tool
named dict2file
which is a LLVM pass which can automatically extract useful
tokens, in addition with LTO instrumentation mode, this dict2file is
automatically generates token extraction. Autodict-QL
plugin gives you
scripting capability and you can do whatever you want to extract from the
Codebase and it's up to you. In addition it's independent from LLVM system. On
the other hand, you can also use Google dictionaries which have been made public
in May 2020, but the problem of using Google dictionaries is that they are
limited to specific file formats and specifications. For example, for testing
binutils and ELF file format or AVI in FFMPEG, there are no pre-built
dictionaries, so it is highly recommended to use Autodict-QL
or Dict2File
features to automatically generate dictionaries based on the target.
I've personally preferred to use Autodict-QL
or dict2file
rather than Google
dictionaries or any other manually generated dictionaries as Autodict-QL
and
dict2file
are working based on the target. In overall, fuzzing with
dictionaries and well-generated tokens will give better results.
There are 2 important points to remember:
- If you combine
Autodict-QL
with AFL++ cmplog, you will get much better code coverage and hence better chances to discover new bugs. - Do not forget to set
AFL_MAX_DET_EXTRAS
at least to the number of generated dictionaries. If you forget to set this environment variable, then AFL++ uses just 200 tokens and use the rest of them only probabilistically. So this will guarantee that your tokens will be used by AFL++.