Google Cloud Generative AI Learning Path
For: Engineers and PMs at GCP-stack companies
Side-by-side comparison on level, duration, pricing, instructor, tier. Editor verdict on which course wins for which buyer.
Google's free GenAI learning path on Cloud Skills Boost. 10 courses covering generative AI fundamentals, Vertex AI, Gemini API, prompt engineering on Google's stack, and responsible AI. Free, vendor-locked to GCP. The right learning path if your company runs on GCP / Vertex AI; otherwise the AWS or Microsoft equivalents are similar quality.
The single most-recommended free resource in modern AI education. Karpathy builds a working autograd engine, then a character-level language model, then a tokenizer, then a working GPT — all from scratch in PyTorch, explaining every line. The 'Let's build GPT' and 'Let's build the GPT Tokenizer' lectures specifically have become canonical references — every senior AI engineer has watched them. The catch: it's 25 hours of dense math-and-code video. You won't follow if you can't keep up with Python + linear algebra. But if you can, no paid course delivers comparable depth.
| Dimension | Google Cloud Generative AI Learning Path | Neural Networks: Zero to Hero (Andrej Karpathy) |
|---|---|---|
| Provider | Google Cloud Skills Boost | YouTube |
| Editorial tier | Listed | Hands-on reviewed |
| Level | Beginner | Advanced |
| Format | self paced | video |
| Duration | ~25-30 hours (10 courses) | ~25 hours (11 lectures) |
| Pricing | Free | Free |
| Instructor | Google Cloud Training — Google Cloud | Andrej Karpathy — Co-founder OpenAI; former Director of AI at Tesla |
| Rating | No public rating | No public rating |
| Topics | llm fundamentals, fine tuning, rag systems | llm fundamentals, fine tuning, ai engineering |
| Last verified | 2026-05-24 | 2026-05-23 |
Take Google Cloud Generative AI Learning Path first if you're new to the topic; once you have the basics, Neural Networks: Zero to Hero (Andrej Karpathy) is the natural next step. They're complementary in a learning path, not directly competing.
For: Engineers and PMs at GCP-stack companies
For: Engineers who plan to train, fine-tune, or research LLMs at depth
Similar courses you might also be considering.