Understanding Open AI Workspaces
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Understanding Open AI Workspaces
This course is part of Open Generative AI: Build with Open Models and Tools Professional Certificate
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January 2026
4 assignments
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There are 3 modules in this course
The Understanding Open AI Workspaces course is for developers with intermediate machine learning experience and Python skills who are new to Generative AI and want to learn how to build, customize, optimize, and deploy open source large language models.
This course provides learners with the skills to set up, configure, and manage environments for open generative AI development. Beginning with local installations, learners practice running large language models on their own machines using Ollama, exploring performance optimization techniques for consumer hardware, and integrating external applications through APIs. The course then introduces Docker and Docker Compose, guiding learners through containerized environments that ensure reproducibility, persistence, and scalability. Learners build multi-container architectures to separate models and services while managing GPU passthrough and memory optimization. Finally, the course covers Google Colab for cloud-based GPU access, where learners configure free resources, manage storage through Google Drive, and monitor performance within session constraints. By the end, learners will have set up both local and cloud environments, documented their processes, and gained the ability to choose the right workspace for different AI workloads.
In this module, you’ll set up a local environment for working with large language models using Ollama. You’ll install and configure the tool, download and switch between different models, and practice operating through the command-line interface. You’ll also explore how to optimize performance and connect Ollama with external applications, giving you a hands-on way to manage and experiment with LLMs.
What's included
4 videos2 readings1 assignment1 ungraded lab
4 videos•Total 27 minutes
- Podcast: Your First Workspace: Why It Matters in Open AI Engineering•4 minutes
- Switching Models and Using the CLI•6 minutes
- Controlling Ollama Output: Parameters, Sampling, and Logging•8 minutes
- Optimizing Performance & REST API Basics•9 minutes
2 readings•Total 12 minutes
- Code Demonstration Transcripts•4 minutes
- Installing and Configuring Ollama Across OS•8 minutes
1 assignment•Total 30 minutes
- Getting Your Model Up and Running Smoothly•30 minutes
1 ungraded lab•Total 30 minutes
- Run Your First Model Locally•30 minutes
In this module, you’ll learn the essentials of using Docker to set up stable, reproducible environments for AI development. You’ll practice building containers, managing model persistence and data volumes, and designing multi-container setups that separate models from applications. You’ll also explore strategies to optimize memory and GPU resources, giving you the confidence to run and experiment with AI projects.
What's included
3 videos1 reading2 assignments
3 videos•Total 19 minutes
- Podcast: Why Containers Power Scalable AI•3 minutes
- Scaling and Managing Containerized AI Systems•11 minutes
- Building Your First Containerized AI Environment•6 minutes
1 reading•Total 8 minutes
- Docker Fundamentals for AI Development•8 minutes
2 assignments•Total 60 minutes
- Your First Docker Compose Setup•30 minutes
- Diagnosing Docker Performance Issues•30 minutes
In this module, you’ll learn how to make Jupyter work effectively for AI development. You’ll navigate the notebook interface, set up GPU access, and manage dependencies with pip and conda. You’ll also implement strategies for persistent storage and monitor system performance during training, so your workflows stay efficient, stable, and ready for real-world projects.
What's included
4 videos2 readings1 assignment1 ungraded lab
4 videos•Total 15 minutes
- Podcast: Why Jupyter Matters for AI Engineers•3 minutes
- Installing Dependencies and Managing Environments•6 minutes
- Monitoring Performance in Jupyter•4 minutes
- Podcast: Key Takeaways: Building and Managing Open AI Workspaces•2 minutes
2 readings•Total 12 minutes
- Configuring Jupyter for GPU Access•6 minutes
- Running Jupyter on Your Own Computer (Optional)•6 minutes
1 assignment•Total 60 minutes
- Building and Running AI Workspaces in Practice•60 minutes
1 ungraded lab•Total 30 minutes
- Set Up a Reproducible GPU Notebook•30 minutes
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