A tool for developing Node.js and Python projects
Project description
A tool for developing Node.js and Python projects
dotrun
makes use of a Docker image to provide a predictable sandbox for running Node and Python projects.
Features:
- Make use of standard
package.json
script entrypoints:dotrun
runsyarn run start
within the Docker containerdotrun foo
runsyarn run foo
within the Docker container
- Detect changes in
package.json
and only runyarn install
when needed - Detect changes in
requirements.txt
and only runpip3 install
when needed - Run scripts using environment variables from
.env
and.env.local
files - Keep python dependencies in
.venv
in the project folder for easy access
Usage
$ dotrun # Install dependencies and run the `start` script from package.json
$ dotrun serve # Run the python app only
$ dotrun clean # Delete `node_modules`, `.venv`, `.dotrun.json`, and run `yarn run clean`
$ dotrun install # Force install node and python dependencies
$ dotrun exec # Start a shell inside the dotrun environment
$ dotrun exec {command} # Run {command} inside the dotrun environment
$ dotrun {script-name} # Install dependencies and run `yarn run {script-name}`
$ dotrun -s {script} # Run {script} but skip installing dependencies
$ dotrun --env FOO=bar {script} # Run {script} with FOO environment variable
$ dotrun -m "/path/to/mount":"localname" # Mount additional directory and run `dotrun`
$ dotrun serve -m "/path/to/mount":"localname" # Mount additional directory and run `dotrun serve`
$ dotrun refresh image # Download the latest version of dotrun-image
$ dotrun --release {release-version} # Use a specific image tag for dotrun. Useful for switching versions
$ dotrun --image {image-name} # Use a specific image for dotrun. Useful for running dotrun off local images
- Note that the
--image
and--release
arguments cannot be used together, as--image
will take precedence over--release
Installation
Requirements
- Docker (Get Docker): on Linux, you can install the Docker snap instead.
- Python 3.10 or later
- On MacOS: Homebrew is required
curl
command-line tool (usually pre-installed on macOS and most Linux distributions)
Linux and MacOS
Quick installation
To install dotrun simply run:
curl -sSL https://raw.githubusercontent.com/canonical/dotrun/main/scripts/install.sh | bash
Verifying the Installation
After installation, you can verify that dotrun
is installed correctly by running:
dotrun version
Manual Installation
If you prefer to install manually or encounter any issues with the installation script, you can install dotrun
using the following steps:
-
Install
pipx
if you haven't already:- On macOS:
brew install pipx
- On Linux: Follow the installation instructions for your distribution from the pipx documentation
- On macOS:
-
Ensure
pipx
is in your PATH:
pipx ensurepath
- Install
dotrun
usingpipx
:
pipx install dotrun
If you experience problems, please open a GitHub issue.
macOS performance
For optimal performance on Docker we recommend enabling a new experimental file sharing implementation called virtiofs. Virtiofs is only available to users of the following macOS versions:
- macOS 12.2 and above (for Apple Silicon)
- macOS 12.3 and above (for Intel)
Add dotrun on new projects
To fully support dotrun in a new project you should do the following:
- For Python projects, ensure Talisker is at
0.16.0
or greater inrequirements.txt
- Add
.dotrun.json
and.venv
to.gitignore
- Create a
start
script inpackage.json
to do everything needed to set up local development. E.g.:"start": "concurrently --raw 'yarn run watch' 'yarn run serve'"
- The above command makes use of concurrently - you might want to consider this
- Older versions of Gunicorn are incompatible with strict confinement so we need Gunicorn >= 20
- The update landed in Talisker but at the time of writing hasn't made it into a new version
- If there's no new version of Talisker, simply add
gunicorn==20.0.4
to the bottom ofrequirements.txt
However, once you're ready to completely switch over to dotrun
, simply go ahead and remove the run
script.
Automated tests of pull requests
The "PR" action builds the Python package and runs a project with dotrun. This will run against every pull request.
Publish
All the changes made to the main branch will be automatically published as a new version on PyPI.
To publish a new version manually, run:
docker buildx create --name mybuilder
docker buildx use mybuilder
docker buildx build --push --platform linux/arm/v7,linux/arm64/v8,linux/amd64 --tag canonicalwebteam/dotrun-image:latest .
Hacking
You can install the package locally using either pip or poetry.
Using pip
pip3 install . requests==2.31.0
Using Poetry
pip install poetry
poetry install --no-interaction
To run dotrun off alternative base images such as local images, you can use the --image
flag.
dotrun --image "localimage" exec echo hello
To run dotrun off alternative releases, besides the :latest
release, you can use the --release
flag.
dotrun --release "latest" serve
Note that before changing the base image you should run
dotrun clean
to get rid of the old virtualenv.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.