kilroy-face-debug
This README
provides info about the development process.
For more info about the package itself see
package README
or
docs.
Quickstart (on Ubuntu)
$ apt update && apt install curl git python3 python3-pip python3-venv
$ python3 -m pip install pipx && pipx install poetry
$ pipx ensurepath && exec bash
$ curl -sSL https://repo.anaconda.com/miniconda/Miniconda3-py39_4.10.3-Linux-x86_64.sh -o miniconda.sh
$ bash miniconda.sh && exec bash
(base) $ git clone https://github.com/kilroybot/kilroy-face-debug
(base) $ cd kilroy_face_debug
(base) $ conda env create -f environment.yaml
(base) $ conda activate kilroy-face-debug
(kilroy-face-debug) $ cd kilroy_face_debug
(kilroy-face-debug) $ poetry install --sync
(kilroy-face-debug) $ poe run
Quickerstart
If you just want to try it out and don't care about polluting your environment:
$ python3 -m pip install ./kilroy_face_debug
$ kilroy-face-debug
Environment management
We are using conda
for environment management
(but you can as well use any other tool, e.g. pyenv + venv
). The major reason
is that conda
lets you specify python
version and will install that version
in the environment. This ensures consistency between different instances
(developers, CI, deployment).
The first step is of course to install conda
.
To create an environment, run from project root:
conda env create -f environment.yaml
And then activate it by:
conda activate kilroy-face-debug
Creating the environment is performed only once, but you need to activate it every time you start a new shell.
If the configuration file environment.yaml
changes, you can update the
environment by:
conda env update -f environment.yaml
Package management
We are using poetry
to manage our package and
its dependencies. You need to have it installed outside our environment
(I recommend to use pipx
for that).
To install the package, you need to cd
into kilroy_face_debug
directory and run:
poetry install --sync
This will download and install all package dependencies (including development ones) and install the package in editable mode into the activated environment.
Editable mode means that you don't have to reinstall the package if you change something in the code. The changes are reflected automatically.
However, you need to install the package again if you change something in its configuration (e.g. add a new dependency). But more on that later.
If it's the first time installing the package, poetry
will write specific
versions of all packages to poetry.lock
file. This file should be committed
to the repository, so other people can have the exact same versions of all
dependencies. It will work because poetry install
checks if poetry.lock
file is available and uses it if it is.
Testing
We are using pytest
for tests. It's already installed
in the environment, because it's a development-time dependency. To start first
write the tests and put them in kilroy_face_debug/tests
.
To execute the tests, cd
into kilroy_face_debug
and run:
poe test
Building docs
We are using mkdocs
with material
for building the docs. It lets you write the docs in Markdown format and
creates a nice webpage for them.
Docs should be placed in kilroy_face_debug/docs/docs
. They
are pretty straightforward to write.
To build and serve the docs,
cd
into kilroy_face_debug
and run:
poe docs
It will generate site
directory with the webpage source and serve it.
Adding new dependencies
If you need to add a new dependency, look into pyproject.toml
file. Add it
to tool.poetry.dependencies
section. If it is a development-time dependency
you need to mark it as optional and add it to the right groups
in tool.poetry.extras
.
After that update the installation by running
from kilroy_face_debug
directory:
poe update
This will install anything new in your environment and update the poetry.lock
file. Other people only need to run poetry install
to adjust to the incoming
changes in the poetry.lock
file.
Continuous Integration
When you push changes to remote, different GitHub Actions run to ensure project consistency. There are defined workflows for:
- deploying docs to GitHub Pages
- testing on different platforms
- testing inside Docker container
- drafting release notes
- uploading releases to PyPI
- publishing Docker images
For more info see the files in .github/workflows
directory and Actions
tab
on GitHub.
Generally if you see a red mark next to your commit on GitHub or a failing
status on badges in README
it means the commit broke something (or workflows themselves are broken).
Releases
Every time you merge a pull request into main, a draft release is automatically
updated, adding the pull request to changelog. Changes can be categorized by
using labels. You can configure that in .github/release-drafter.yaml
file.
Every time you publish a release:
- the package is uploaded to PyPI with version taken from release tag (you
should store your PyPI token in
PYPI_TOKEN
secret), - the Docker image is built and uploaded to GitHub registry with tag taken from release tag.
Docker
You can build a Docker image of the package (e.g. for deployment). The build
process is defined in Dockerfile
and it's optimized to keep the size small.
To build and run the container in one go,
cd
into kilroy_face_debug
and run:
poe docker