This is a Kedro project, which was generated using kedro 0.19.2
.
Take a look at the Kedro documentation to get started.
The file in conf/base/catalog.yml
contains configuration that can be adjusted. One can change
the github owner/repo to scrap a data from different repos. Relevant data folders will be populated.
After gathering the data, model embeddings will be computed using a pretrained model. After that, FAISS( Facebook AI Similarity Search ) index created to find the similar issues given a query.
Embeddings computation takes some time so feel free to execute this in Colab with GPU environment.
Notebook for this and how to execute it is shown in notebooks/Compute Embeddings.ipynb
.
One can execute kedro run
to run everything end to end, or via kedro run --from-nodes=...
to run certain functions.
The workflow itself is defined in the src/github_issue_similarity/pipelines/pipeline.py
In order to get the best out of the template:
- Don't remove any lines from the
.gitignore
file we provide - Make sure your results can be reproduced by following a data engineering convention
- Don't commit data to your repository
- Don't commit any credentials or your local configuration to your repository. Keep all your credentials and local configuration in
conf/local/
You can install environment.yml
file to replicate the same environment. Additionally,
an environment_full.yml
is also provided which pins all the versions in the environment
You can install dependencies in the environment.yml
file by passing them into pip.
You can run the project with:
kedro run
Have a look at the file src/tests/test_run.py
for instructions on how to write your tests. You can run your tests as follows:
pytest
You can configure the coverage threshold in your project's pyproject.toml
file under the [tool.coverage.report]
section.
Note: Using
kedro jupyter
orkedro ipython
to run your notebook provides these variables in scope:context
, 'session',catalog
, andpipelines
.Jupyter, JupyterLab, and IPython are already included in the project requirements by default, so once you have run
pip install -r requirements.txt
you will not need to take any extra steps before you use them.
To use Jupyter notebooks in your Kedro project, you need to install Jupyter:
pip install jupyter
After installing Jupyter, you can start a local notebook server:
kedro jupyter notebook
To use JupyterLab, you need to install it:
pip install jupyterlab
You can also start JupyterLab:
kedro jupyter lab
And if you want to run an IPython session:
kedro ipython
To automatically strip out all output cell contents before committing to git
, you can use tools like nbstripout
. For example, you can add a hook in .git/config
with nbstripout --install
. This will run nbstripout
before anything is committed to git
.
Note: Your output cells will be retained locally.
Further information about building project documentation and packaging your project