Best Free AI Websites

NVIDIA Just Dropped 9 Free AI Courses

nvidia free courses
Click to rate this tool
[Total: 3 Average: 5]

 


Introduction

In today’s AI era, staying ahead means continuously learning — not just algorithms, but also how to deploy, optimize, and scale them. NVIDIA has stepped up with a compelling offering: a set of 9 AI / accelerated computing courses (many free or at minimal cost) designed for data scientists, developers, infrastructure engineers, and curious professionals alike. These courses cover workflows, generative AI, infrastructure, computer vision, simulation, and more — all grounded in NVIDIA’s GPU and software ecosystems. Whether you’re just getting started or aiming to fill gaps in production readiness, this curated list offers a roadmap to deepen your AI toolset.

Below, I present the 9 courses (with titles, a brief description, and link), plus one bonus, and then wrap up with why this matters now and next steps.


1. Accelerate Data Science Workflows with Zero Code Changes
This course teaches how to use RAPIDS (NVIDIA’s data science library) to GPU-accelerate data science pipelines without having to rewrite your existing CPU code — a powerful way to gain speed with minimal disruption.

2. Generative AI Explained
In this no-coding course, learn Generative AI concepts and applications, as well as the challenges and opportunities in this exciting field.

3. Getting Started with AI on Jetson Nano 
Build and train a classification data set and model with the NVIDIA Jetson Nano.

4. Building A Brain in 10 Minutes
The notebook explores the biological inspiration for early neural networks.

5. Building Video AI Applications at the Edge on Jetson Nano
Learn how to build DeepStream applications to annotate video streams using object detection and classification networks.

6. Fingerprinting with Morpheus
Perform Digital Fingerprinting with the NVIDIA Morpheus AI Cybersecurity Platform.

7. AI for All: From Basics to GenAI Practice
This is a more general / inclusive course: starting from AI basics, then stepping into generative AI (GenAI) practice. Good for those who want a full spectrum view.

8. AI Infrastructure & Operations Fundamentals
This is an enterprise / infrastructure course covering AI architecture, cluster management, cloud vs on-prem, operations and orchestration. (Coursera)

9. Augment your LLM Using Retrieval Augmented Generation
A high-level, introductory course on RAG — combining retrieval systems with generative models to build smarter, grounded AI applications.


Conclusion

These nine courses (plus the bonus) offer a powerful, structured way to build — or deepen — your mastery of AI pipelines, GPU acceleration, deployment, infrastructure, visualization, and generative AI. Because they’re tied to NVIDIA’s tools, you’ll gain not only theoretical insight but practical, applied skills you can use in real-world projects.

Here’s how I recommend you approach them:

  • Start with a general / foundational course (e.g., AI for All or AI Infrastructure Fundamentals) to get a broad view.
  • Pick domain-specific ones aligned to your goals: data science (T-DS), visualization/rendering/fx (S-FX, S-IV, S-RX), or infrastructure & operations (AI Infra).
  • Follow through with hands-on labs (many of these include practical labs or GPU tooling).
  • Use the certification track (if available) as a motivator and proof point for your learning.
  • Build a small portfolio project where you combine two or more domains — e.g. a generative AI model + deployment + visualization.

 

New Tools ✨

Categories 🔮

Related Tools

free guides
Stop Buying Online Income Courses - These FREE 10 Guides Are All You Need
lmarena
LMArena
open-ai-academy
Open AI just dropped the AI Academy - 11 courses are now available for free
wobo-ai-cover-generator
Wobo AI Cover Letter
Trustera
Trustera
FREEPIK
Freepik AI
deepseek
DeepSeek
gemini-nano-banana
Gemini Nano-Banana
make
Make
QWEN 2.5 MAX
Qwen 2.5 MAX
Scroll to top