The automata library
Project description
Mata: The Automata Library
Mata is an open source automata library that offers interface for different kinds of automata (NFA, AFA, etc.). Currently, Mata offers two interfaces:
- An efficient library implemented in C/C++
- A flexible wrapper implemented in Python that uses the efficient library
Building from sources
To build the the library run the following:
git clone https://github.com/VeriFIT/mata
cd mata
make release
In order, to verify the functionality of the library, you can run the test suite:
make test
You might, need to install the dependencies to measure the coverage of the tests. Run the following to install the dependencies for MacOS:
brew install lcov gcovr
Run the following to install the dependencies for Ubuntu:
sudo apt-get install -y build-essential lcov gcovr xdg-utils
Building the Python binding from sources
Mata offers binding of its efficient library to Python. You can install the binding as an Python
package on your system as follows. First, install the necessary requirements for Python and your
system. We recommend using the virtual environemnt (venv
) to install and use the library.
python -m pip install --upgrade pip
make -C bindings/python init
sudo apt-get -qq update
sudo apt-get -qq install -y graphviz graphviz-dev
Now, you can install the library.
make -C bindings/python install
Finally, you can verify the binding woks as expected by running the test suite:
make -C bindings/python test
Getting started
To get started, we refer to the examples in our repository. This directory contains examples of various usage in form of:
- C/C++ example programs. To run the program run the following:
make -C examples
./examples/example01-simple
- Python example scripts. To run the scripts run the following.
python examples/example01-python-binding.py
- Python jupyter notebooks. To run the jupyter notebook, one needs to have jupyter installed as a prerequisite. The run the jupyter notebook, that creates an instance on your local server. Navigate to generated link to see the available jupyter notebooks:
pip3 install jupyter
jupyter notebook
Using the library
The library can be used directly in the C/C++ code. The result of compilation is a static
or dynamic library, that can be linked to ones project. Note, that the library is dependent
on several other 3rd party libraries (e.g., libre2
or libsimlib
), which are included in
the repository.
First import the library in your code. If the library is properly installed, you can use the standard include.
#include <mata/nfa.hh>
We recommend to use the Mata::Nfa
namespace for easier usage:
using namespace Mata::Nfa;
Start by creating an automaton with fixed number of states.
int main() {
Nfa aut(4);
You can set the initial and final states directly using the initializers.
aut.initial = {0, 1};
aut.final = {2, 3};
Further, you can add transitions in form of tripple (state_from, symbol, targets)
:
aut.add_trans(0, 0, 2);
aut.add_trans(1, 1, 3);
You can verify the state of your automaton by generating the automaton in .dot
format.
aut.print_to_DOT(std::cout);
return 0;
}
Finally, compile the code using the following Makefile:
CFLAGS=-std=c++14 -pedantic-errors -Wextra -Wall -Wfloat-equal -Wctor-dtor-privacy -Weffc++ -Woverloaded-virtual -fdiagnostics-show-option -g
INCLUDE=-I../include -I../3rdparty/simlib/include -I../3rdparty/re2/include
LIBS_ADD=-L../build/src -L../build/3rdparty/re2 -L../build/3rdparty/simlib
LIBS=-lmata -lsimlib -lre2
.PHONY: all clean
all: $(patsubst %.cc,%,$(wildcard *.cc)) ../build/src/libmata.a
example: example.cc
g++ $(CFLAGS) $(INCLUDE) $(LIBS_ADD) $< $(LIBS) -o $@
Using the binding
The python binding is installed (by default) to your local python package repository. You can either use the binding in your own scripts or in the python interpreter.
You can start using the binding by importing the mata
package.
import mata
In your own scripts, we recommend to use the standard guard for running the scripts, as follows.
if __name__ == "__main__":
The usage of the binding copies (to certain levels) the usage of the C++ library.
aut = mata.Nfa(4)
aut.initial = {0, 1}
aut.final = {2, 3}
aut.add_trans_raw(0, 0, 2)
aut.add_trans_raw(1, 1, 3)
print(aut.to_dot_str())
You can either run your scripts directly using python
or compile it using the cython
project.
Contributing
If you'd like to contribute to the libmata, please fork the repository, create a new feature branch, and finally create a new pull request.
In case you run into some unexpected behaviour, error or anything suspicions either contact us directly through mail or create a new issue. When creating a new issue, please, try to include everything necessary for us to know (such as the version, operation system, etc.) so we can sucessfully replicate the issue.
Note to main contributors
By default, each merge automatically increases the minor
version of the library
(i.e., 0.0.0 -> 0.1.0
). This can be overruled using either tag #patch
(increasing
patch version, i.e., 0.0.0 -> 0.0.1
) or #major
(increasing major version, i.e.,
0.0.0 -> 1.0.0
). This tag is specified in the merge message.
Generally, it is recommended to use #major
for changes that introduces backward-incompatible
changes for people that used previous versions, and #patch
for minor changes, such as bug-fixes,
performance fixes or refactoring.
Links
- Project (origin) repository: https://github.com/verifit/mata
- Issue tracker: https://github.com/verifit/mata/issues
- In case of some sensitive bugs (like security vulnerabilities), please contact us directly, instead of using issue tracker. We value your effort to improve the security and privacy of this project!
- Project documentation: https://verifit.github.io/mata
- Jupyter notebooks demonstrating
mata
usage: https://github.com/VeriFIT/mata/tree/devel/examples/notebooks
Also, check out our research group focusing on program analysis, static and dynamic analysis, formal methods, verification and many more: http://www.fit.vutbr.cz/research/groups/verifit/index.php.en.
Licensing
The code of this project is licensed under GNU GPLv3 license.
Contacts
- Lukáš Holík (kilohsakul): the supreme leader, the emperor of theory;
- Ondřej Lengál (ondrik): prototype developer and the world's talest hobbit;
- Martin Hruška (martinhruska): library maintainer;
- Tomáš Fiedor (tfiedor): python binding maintainer;
- David Chocholatý (Adda0) library and binding developer;
- Juraj Síč (jurajsic): library developer;
- Tomáš Vojnar (vojnar): the spiritual leader;
Acknowledgements
We thank for the support received from the Brno University of Technology (BUT FIT).
Development of this tool has been supported by the following projects: ???.
This tool as well as the information provided on this web page reflects only the author's view and no organization is responsible for any use that may be made of the information it contains.
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