pyfred-cli

Python helpers to build Alfred workflows


Keywords
alfred, alfred-workflow, hacktoberfest, python
License
MIT
Install
pip install pyfred-cli==0.1.2

Documentation

Pyfred

pyfred helps you create Alfred workflows in Python. It has been heavily inspired by a similar project for Rust, powerpack.

It comes with a CLI that helps bootstrapping, maintaining and packaging the workflow.

Dependencies are vendored and packaged with the workflow so that they don't need to be installed into the system Python. See the section on adding dependencies for details.

Documentation

The documentation is deployed to GitHub pages.

Installation

You can install directly from PyPI:

pip install pyfred-cli

Using the CLI

The CLI knows four commands: new, link, package, vendor.

See pyfred {new,vendor,link,package} -h for detailed help.

New

Bootstraps a new workflow with a single script filter and links it into Alfred.

It creates a new directory with the given name and copies a "Hello Alfred" workflow there. The workflow can be used immediately by invoking Alfred with the specified keyword.

The following example creates a hello directory containing a workflow that can be triggered with the hi keyword. The result of the selected action is copied to the clipboard.

pyfred new hello -k hi -b de.muffix.helloalfred --author=Muffix --description="Hello Alfred".

Link

Executed from a directory bootstrapped by this CLI, it links or relinks the workflow into Alfred.

pyfred link

Vendor

Downloads the dependencies listed in the requirements.txt file and vendors them into the workflow/vendored directory. Doing this avoids having to install them into the system Python interpreter.

pyfred vendor

Package

Packages the workflow into a *.alfredworkflow file in the dist directory. The file contains the entire workflow and all dependencies. It can be distributed and imported.

pyfred package

Debug output

The CLI will log debug output if the --debug flag is passed before the command.

Creating a workflow

The classes from the pyfred.model module represent the output expected by Alfred from a script filter.

pyfred.workflow provides a decorator for the entry point of a filter. It preprocesses the input and serialises the response to stdout, where it is being picked up by the next input.

A minimal example for a script filter workflow looks like this:

from vendored.pyfred.model import Environment, OutputItem, ScriptFilterOutput
from vendored.pyfred.workflow import script_filter

@script_filter
def main(script_path: Path, args_from_alfred: list[str], env: Optional[Environment]) -> ScriptFilterOutput:
    return ScriptFilterOutput(items=[OutputItem(title="Hello Alfred!")])

Adding dependencies

When running the workflow, Alfred will use the system Python interpreter to run the script. Third-party libraries are not available in the interpreter unless explicitly installed. In order to not pollute the system Python, dependencies can be vendored with the workflow using the pyfred vendor command. It is also automatically run with pyfred package.

If you add dependencies to your requirements.txt file, you need to run pyfred vendor to download them and make sure you import them from the vendored directory. For example: from vendored.reuests import get instead of from requests import get.

Adding icons

You can add an icon for your workflow to the workflow directory in the generated skeleton. The file name must be icon.png

You can assign individual icons to your output items. See the pyalfred.model.Icon class for more details.

Distribution through GitHub releases

The skeleton created by pyfred new comes with a GitHub action that creates a draft release whenever a tag starting with v is pushed. To create a tag, run git tag v1.0.0 and push it with git push origin v1.0.0. When the action has finished, go to the Releases page of your repository and publish the new release.