Header-only library which can be used for machine learning in C++.
To use this library locally
Then following command will install the library
./scripts/install
If permission is required to execute, run the following command
chmod 705 ./scripts/install
To compile and run the code written using this library, you need to add the following flags along with the standard commands.
For example, you want to run hello.cpp
and it has slowmokit
dependencies.
g++ -std=c++17 -larmadillo hello.cpp -o hello && ./hello
Following are the steps to start contributing to our beautiful library:
- Install an IDE, preferably CLion.
- Fork this repo.
- Clone the forked repo, using
git clone https://github.com/<your_username>/slowmokit.git
.
After this,
You can directly use the executable file by running ./bin/nim
in the root folder of library, to do the required configurations.
If it does not work then you need to configure everything by your own.
-
Make the model directory you want to implement in the
include/slowmokit/<model type>/<your_model>
.<model type>
is basically the class of your model, for examplelinear_model
orcluster
.
-
Create two files:
<model>.hpp
: the header file for the model, create the class of model here and include all the stuff required for the model here.- Include
core.hpp
for all the basic functionalities already added. - Make sure to add doc comments above each function signature (refer other files for the format)
- Variable and function names should be in camel case and class names should be in pascal case in all files.
- Include
<model>.cpp
: implement the functions of the class here.
-
Add the header file
<model>.hpp
insrc/slowmokit.hpp
under the documentation block as shown here. More on documentation block. -
Test the working by building in IDE.
This step is mandatory
- Format the files according to the convention. For simplicity, run
./scripts/clang-format-all include/
in gitbash(if on windows) or in terminal(if on linux/macos)
For this you need to have clang-format
binaries installed in the machine.
To do that, run the following in the terminal
# with npm (windows)
npm install -g clang-format
# you have to restart terminal in case of windows
# with homebrew (macos)
brew install clang-format
# linux (Ubuntu)
sudo apt install clang-format
NOTE: Do NOT use
#include <bits/stdc++.h>
in any file, all the major header files are already included incore.hpp
.]
Once the algorithm is ready, run and test it. After testing, push it in the examples
directory, with proper comments and
instructions. With same directory structure as in include
.
Push the docs of the model in a <model>.md
file in same directory structure in docs
folder.
After code is ready, you can make PR to the main branch. PR will be accepted only if:
- Code pass the CI tests.
- Example is pushed.
- Code has proper comments and instructions.