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π Online documentation - π PDF Manual
Note
π§ This project was scaffolded using the template oe-python-template with copier.
Python SDK providing access to Aignostics AI services.
This Copier template enables you to quickly generate (scaffold) a Python package with fully functioning build and test automation:
- Projects generated from this template can be easily updated to benefit from improvements and new features of the template.
- During project generation, you can flexibly configure naming of the Python distribution, import package, main author, GitHub repository, organization, and many other aspects to match your specific requirements (see copier.yml for all available options).
Projects generated with this template come with a comprehensive development toolchain and quality assurance framework that supports the entire software development lifecycle - from coding and testing to documentation, release management, and compliance auditing. This infrastructure automates routine tasks, enforces code quality standards, and streamlines the path to production:
- Linting with Ruff
- Static type checking with mypy
- Complete set of pre-commit hooks including detect-secrets and pygrep
- Unit and E2E testing with pytest including parallel test execution
- Matrix testing in multiple environments with nox
- Test coverage reported with Codecov and published as release artifact
- CI/CD pipeline automated with GitHub Actions
- CI/CD pipeline can be run locally with act
- Code quality and security checks with SonarQube and GitHub CodeQL
- Dependency monitoring and vulnerability scanning with pip-audit, trivy, Renovate, and GitHub Dependabot
- Licenses of dependencies extracted with pip-licenses, matched with allow list, and published as release artifacts in CSV and JSON format for further compliance checks
- Generation of attributions from extracted licenses
- Software Bill of Materials (SBOM) generated in CycloneDX and SPDX formats with cyclonedx-python resp. trivy, published as release artifacts
- Version and release management with bump-my-version
- Changelog and release notes generated with git-cliff
- Documentation generated with Sphinx including reference documentation and PDF export
- Documentation published to Read The Docs
- Interactive OpenAPI specification with Swagger
- Python package published to PyPI
- Docker images published to Docker.io and GitHub Container Registry with artifact attestations
- One-click development environments with Dev Containers and GitHub Codespaces
- Settings for use with VSCode
- Settings and custom instructions for use with GitHub Copilot
Beyond development tooling, projects generated with this template include the code, documentation, and configuration of a fully functioning demo application and service. This reference implementation serves as a starting point for your own business logic with modern patterns and practices already in place:
- Service architecture suitable for use as shared library
- Validation with pydantic
- Command-line interface (CLI) with Typer
- Versioned Web API with FastAPI
- Interactive Jupyter notebook and reactive Marimo notebook
- Simple Web UI with Streamlit
- Configuration to run the CLI and API in a Docker container including setup for Docker Compose
- Documentation including badges, setup instructions, contribution guide and security policy
- Preparation to deploy API as serverless function to Vercel
Explore here for what's generated out of the box.
To generate, build and release a fully functioning project in a few minutes, follow these 5 steps:
Step 1: Execute the following command to install or update tooling.
# Install Homebrew, uv package manager, copier and further dev tools
curl -LsSf https://raw.githubusercontent.com/helmut-hoffer-von-ankershoffen/oe-python-template/HEAD/install.sh | sh
Step 2: Create a repository on GitHub, clone to your local machine, and change into it's directory.
Step 3: Execute the following command to generate a new project based on this template.
# Ensure to stand in your freshly created git repository before executing this command
copier copy --trust gh:helmut-hoffer-von-ankershoffen/oe-python-template .
Step 4: Execute the following commands to push your initial commit to GitHub.
git add .
git commit -m "chore: Initial commit"
git push
Check the Actions tab of your GitHub repository: The CI/CD workflow of your project is already running!
The workflow will fail at the SonarQube step, as this external service is not yet configured for our new repository. We will configure SonarQube and other services in the next step!
Notes:
- Check out this manual on how to set up signed commits
Step 5: Follow the instructions to wire up external services such as CloudCov, SonarQube Cloud, Read The Docs, Docker.io, and Streamlit Community Cloud.
Step 6: Release the first version of your project
make bump
Notes:
- You can remove the above sections - from "Scaffolding" to this notes - post having successfully generated your project.
- The following sections refer to the dummy application and service generated into the
tests
andsrc
folder by this template. Use the documentation and code as inspiration, adapt to your business logic, or remove and start documenting and coding from scratch.
Adding Aignostics Python SDK to your project as a dependency is easy. See below for usage examples.
uv add aignostics # add dependency to your project
If you don't have uv installed follow these instructions. If you still prefer pip over the modern and fast package manager uv, you can install the library like this:
pip install aignostics # add dependency to your project
Executing the command line interface (CLI) in an isolated Python environment is just as easy:
uvx aignostics hello-world # prints "Hello, world! [..]"
uvx aignostics serve # serves web API
uvx aignostics serve --port=4711 # serves web API on port 4711
Notes:
- The API is versioned, mounted at
/api/v1
resp./api/v2
- While serving the web API go to http://127.0.0.1:8000/api/v1/hello-world to see the respons of the
hello-world
operation. - Interactive documentation is provided at http://127.0.0.1:8000/api/docs
The CLI provides extensive help:
uvx aignostics --help # all CLI commands
uvx aignostics hello-world --help # help for specific command
uvx aignostics echo --help
uvx aignostics openapi --help
uvx aignostics serve --help
This project is designed with operational excellence in mind, using modern Python tooling and practices. It includes:
- Various examples demonstrating usage: a. Simple Python script b. Streamlit web application deployed on Streamlit Community Cloud c. Jupyter and Marimo notebook
- Complete reference documentation on Read the Docs
- Transparent test coverage including unit and E2E tests (reported on Codecov)
- Matrix tested with multiple python versions to ensure compatibility (powered by Nox)
- Compliant with modern linting and formatting standards (powered by Ruff)
- Up-to-date dependencies (monitored by Renovate and Dependabot)
- A-grade code quality in security, maintainability, and reliability with low technical debt and codesmell (verified by SonarQube)
- Additional code security checks using CodeQL
- Security Policy
- License compliant with the Open Source Initiative (OSI)
- 1-liner for installation and execution of command line interface (CLI) via uv(x) or Docker
- Setup for developing inside a devcontainer included (supports VSCode and GitHub Codespaces)
The following examples run from source - clone this repository using
git clone git@github.com:aignostics/python-sdk.git
.
"""Example script demonstrating the usage of the service provided by Aignostics Python SDK."""
from dotenv import load_dotenv
from rich.console import Console
from aignostics import Service
console = Console()
load_dotenv()
message = Service.get_hello_world()
console.print(f"[blue]{message}[/blue]")
Show script code - Read the reference documentation
Serve the functionality provided by Aignostics Python SDK in the web by easily integrating the service into a Streamlit application.
... or serve the app locally
uv sync --all-extras # Install streamlit dependency part of the examples extra, see pyproject.toml
uv run streamlit run examples/streamlit.py # Serve on localhost:8501, opens browser
... or run within VSCode
uv sync --all-extras # Install dependencies required for examples such as Juypyter kernel, see pyproject.toml
Install the Jupyter extension for VSCode
Click on examples/notebook.ipynb
in VSCode and run it.
Execute the notebook as a WASM based web app
uv sync --all-extras # Install ipykernel dependency part of the examples extra, see pyproject.toml
uv run marimo run examples/notebook.py --watch # Serve on localhost:2718, opens browser
or edit interactively in your browser
uv sync --all-extras # Install ipykernel dependency part of the examples extra, see pyproject.toml
uv run marimo edit examples/notebook.py --watch # Edit on localhost:2718, opens browser
... or edit interactively within VSCode
Install the Marimo extension for VSCode
Click on examples/notebook.py
in VSCode and click on the caret next to the Run icon above the code (looks like a pencil) > "Start in marimo editor" (edit).
Run with uvx
Show available commands:
uvx aignostics --help
Execute commands:
uvx aignostics hello-world
uvx aignostics echo --help
uvx aignostics echo "Lorem"
uvx aignostics echo "Lorem" --json
uvx aignostics openapi
uvx aignostics openapi --output-format=json
uvx aignostics serve
The service loads environment variables including support for .env files.
cp .env.example .env # copy example file
echo "THE_VAR=MY_VALUE" > .env # overwrite with your values
Now run the usage examples again.
You can as well run the CLI within Docker.
docker run helmuthva/aignostics-python-sdk --help
docker run helmuthva/aignostics-python-sdk hello-world
docker run helmuthva/aignostics-python-sdk echo --help
docker run helmuthva/aignostics-python-sdk echo "Lorem"
docker run helmuthva/aignostics-python-sdk echo "Lorem" --json
docker run helmuthva/aignostics-python-sdk openapi
docker run helmuthva/aignostics-python-sdk openapi --output-format=json
docker run helmuthva/aignostics-python-sdk serve
Execute command:
docker run --env THE_VAR=MY_VALUE helmuthva/aignostics-python-sdk echo "Lorem Ipsum"
Or use docker compose
The .env is passed through from the host to the Docker container.
docker compose run aignostics --help
docker compose run aignostics hello-world
docker compose run aignostics echo --help
docker compose run aignostics echo "Lorem"
docker compose run aignostics echo "Lorem" --json
docker compose run aignostics openapi
docker compose run aignostics openapi --output-format=json
echo "Running Aignostics Python SDK's API container as a daemon ..."
docker compose up -d
echo "Waiting for the API server to start ..."
sleep 5
echo "Checking health of v1 API ..."
curl http://127.0.0.1:8000/api/v1/healthz
echo ""
echo "Saying hello world with v1 API ..."
curl http://127.0.0.1:8000/api/v1/hello-world
echo ""
echo "Swagger docs of v1 API ..."
curl http://127.0.0.1:8000/api/v1/docs
echo ""
echo "Checking health of v2 API ..."
curl http://127.0.0.1:8000/api/v2/healthz
echo ""
echo "Saying hello world with v1 API ..."
curl http://127.0.0.1:8000/api/v2/hello-world
echo ""
echo "Swagger docs of v2 API ..."
curl http://127.0.0.1:8000/api/v2/docs
echo ""
echo "Shutting down the API container ..."
docker compose down
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- Inspect our security policy with detailed documentation of checks, tools and principles.
- Our release notes provide a complete log of recent improvements and changes.
- Check out the reference with detailed documentation of public classes and functions.
- In case you want to help us improve π¬ Aignostics Python SDK: The contribution guidelines explain how to setup your development environment and create pull requests.
- We gratefully acknowledge the open source projects that this project builds upon. Thank you to all these wonderful contributors!