Currently, the aim of the project is to be a Python package for various data structures in computer science. In addition, we are also working on including parallel algorithms. To the best of our knowledge a well designed library/package which has covered most of the data structures and algorithms including their parallel implementation doesn't exist.
In future, i.e, after a few releases of the package when the software design will become stable, we also aim to provide APIs for the code in C++ and Java as well.
You can install the library by running the following command,
python3 setup.py install
For development purposes you can use the option develop
as shown below,
python3 setup.py develop
Make sure that your python version is above 3.5
.
For testing your patch locally follow the steps given below,
- Install pytest-cov. Skip this step if you are already having the package.
- Run,
python3 -m pytest --doctest-modules --cov=./ --cov-report=html
. Look for,htmlcov/index.html
and open it in your browser, which will show the coverage report. Try to ensure that the coverage is not decreasing by less than 1% for your patch.
As we know Python is an interpreted language and hence is slow as compared to C++, the most popular language for sports programming. We still decided to use Python because the software development can happen at a much faster pace and it is much easier to test various software designs and APIs as coding them out takes no time. However, keeping the need of the users in mind, we will shift to C++ backend, which will happen quickly as we would be required to just translate the tested code rather than writing it from scratch, after a few releases with APIs available for all the languages.
Follow the steps given below,
- Fork, https://github.com/codezonediitj/pydatastructs/
- Execute,
git clone https://github.com/<your-github-username>/pydatastructs/
- Change your working directory to
../pydatastructs
. - Execute,
git remote add origin_user https://github.com/<your-github-username>/pydatastructs/
- Execute,
git checkout -b <your-new-branch-for-working>
. - Make changes to the code.
- Add your name and email to the AUTHORS, if you wish to.
- Execute,
git add .
. - Execute,
git commit -m "your-commit-message"
. - Execute,
git push origin_user <your-current-branch>
. - Make a PR.
That's it, 10 easy steps for your first contribution. For future contributions just follow steps 5 to 10. Make sure that before starting work, always checkout to master and pull the recent changes using the remote origin
and then start following steps 5 to 10.
See you soon with your first PR.
We recommend you to introduce yourself on our gitter channel. You can include the courses you have taken relevant to data structures and algorithms, some projects, prior experience, in your introduction. This will help us to allocate you issues of suitable difficulty.
Please follow the rules and guidelines given below,
- Follow the numpydoc docstring guide.
- If you are planning to contribute a new data structure then first raise an issue for discussing the API, rather than directly making a PR.
- For the first-time contributors we recommend not to take a complex data structure, rather start with
linear data structures
orabstract data types
. You can also pick issues labelled asgood_first_issues
.
The following parameters are to be followed to pass the code quality tests for your Pull Requests,
- There should not be any trailing white spaces at any line of code.
- Each
.py
file should end with exactly one new line. - Comparisons involving
True
,False
andNone
should be done by reference(usingis
,is not
) and not by value(==
,!=
).
Keep contributing!!