GreenDoc - SUSEAI Demo Lab

Created By
alessandro-festaa year ago
A set of bundles to demonstrate SUSE AI capabilities
Overview

What is GreenDoc - SUSEAI Demo Lab?

GreenDoc is a demonstration environment designed to showcase the capabilities of SUSE AI through a structured set of bundles. It provides a comprehensive guide for setting up a local lab to explore SUSE AI functionalities.

How to use GreenDoc?

To use GreenDoc, follow the provided documentation to set up a Kubernetes cluster using K3s, configure necessary namespaces and secrets, and deploy the SUSE AI stack using Rancher Fleet. The setup includes deploying components like cert-manager and the MCP server.

Key features of GreenDoc?

  • Step-by-step instructions for setting up a local SUSE AI lab
  • Integration with Rancher Fleet for automation
  • Deployment of essential components like cert-manager and MCP server

Use cases of GreenDoc?

  1. Demonstrating SUSE AI capabilities in a controlled environment.
  2. Testing and validating AI applications using SUSE infrastructure.
  3. Educational purposes for learning about Kubernetes and SUSE AI.

FAQ from GreenDoc?

  • What is the purpose of GreenDoc?

GreenDoc serves as a guide to implement a local lab for demonstrating SUSE AI capabilities.

  • Is prior knowledge of Kubernetes required?

Basic knowledge of Kubernetes is helpful but not mandatory, as the documentation provides detailed instructions.

  • Can I use GreenDoc for production environments?

GreenDoc is intended for demonstration and educational purposes, not for production use.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
alessandro-festa
Star
0
Language
Python
License
Apache-2.0 license

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