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Substrate

Substrate is a tool that allows you to automate the process of deploying visualization tools to different computing environments.

Supported Visualization tools

Supported Environments

Any computing environment capable of running Docker Swarm is a valid deployment target.

Requirements

This tool relies upon Docker Swarm. In order for it to work, the following assumptions are made of each compute node (for AWS deployments, these requirements are handled automatically):

  • Docker Engine must be installed.
  • The ports needed by Docker Swarm must be open for communication between nodes. Please review the Docker Swarm docs for more information.
  • You must be able to connect to each node over SSH with a private key available in ~/.ssh.

Getting Started

To install run

pip install seelabutk-substrate

then launch a visualization tool via a CLI using

substrate 'tool_name' start
substrate 'tool_name' stop

or via Python using

from substrate import Substrate

stack = Substrate('tool_name')
stack.start()
stack.stop()

Valid tool names:

  • hello_world (this will just host the provided data sources as static files)
  • nc_slicer
  • ospray_studio
  • tapestry
  • braid

Configuration

Substrate is configured using substrate.config.yaml. The tool will look for this file starting in your current working directory then look for it in parent folders. You can also provide a path with

substrate tapestry start -f /path/to/substrate.config.yaml

or

stack = Substrate('tool_name', {}, path='path/to/substrate.config.yaml')

You may also specify the config directly via JSON/a dictionary with

substrate tapestry start -c "{ config here... }"

or

stack = Substrate('tool_name', config)

The options for the configuration file can be found here.

Each tool has static files that are needed to run it. Defaults are provided, but if needed or desired they can be modified. Here are links to get the default files for Tapestry and Braid.

For more information on configuring each tool, please refer to each tools documentation:

Development Environment

To setup the dev environment, please install Pipenv. Once installed, run the following commands to set up the development environment:

pipenv --python /path/to/your/python3.10
pipenv sync -d
pipenv shell

Uploading to PyPI

To upload to prepare a new release, run the following commands:

python -m build
python -m twine upload dist/*