@iluciddreaming: 6 YouTube channels to take you from AI novice to actually using it: · Jeff Su: Clear prompt writing in 8 minutes, just follow along · Andrej Karpathy: LLM theory course, understandable even without a tech background · Tina Huang: 44 minutes…
Summary
Recommends 6 YouTube channels covering prompt writing, LLM principles, and AI agent practical skills, helping AI beginners go from entry-level to application.
View Cached Full Text
Cached at: 05/22/26, 03:57 PM
6 YouTube channels to take you from AI beginner to actually using it:
· Jeff Su: 8 minutes to explain how to write prompts — just follow along · Andrej Karpathy: LLM fundamentals course, understandable even without a technical background · Tina Huang: 44 minutes to understand AI agents, perfect for beginners · Dave Ebbelaar: Hands-on AI systems + freelancing advice · IBM Technology: AI/DevOps/Quantum — broadest coverage · Google Cloud Tech: Deep dives on specific tools, complements IBM
No need to search elsewhere — just master these 6 first.
Similar Articles
@PierceZhang34: Top AI Agent Learning Resources (YouTube) Mu Li | Chief Scientist at Amazon Favorite for hands-on learners! "Hands-on AI Agent" Series Build multi-agent collaboration frameworks from scratch with PyTorch, industrial-grade task scheduling and real-time decision-making code fully open-source, with complete Jupyter...
Recommends YouTube Agent learning resources from top AI experts like Mu Li, Hung-yi Lee, Andrej Karpathy, Hugging Face official channel, Andrew Ng, Song Han, etc., covering building multi-agent frameworks from scratch, open-source code, practical cases, etc.
@Russell3402: A friend wanted to learn AI engineering, but I couldn't come up with a good learning path for a while. Here I recommend an open-source AI engineering learning curriculum! It aims to take you from the ground up, covering the complete AI engineering stack: from math, machine learning, deep learning, Transformers, LLMs, Agents, MCP, multi-agent…
Recommends an open-source AI engineering learning course, containing 20 stages and 503 lessons, covering from math fundamentals to production deployment, including Python and other languages, aiming to build a complete AI engineering system from scratch.
@VincentLogic: This video is essentially a 'must-watch' checklist for AI engineers! It clearly explains the 10 core papers that have shaped today's AI industry, ranging from the foundational Transformer architecture to LoRA fine-tuning, RAG, Agents, and even the latest MCP protocol. If you want to dive deeper into how…
This article recommends a video that systematically explains the 10 core papers shaping today's AI industry, covering Transformer, LoRA, RAG, Agents, and the MCP protocol, aiming to help engineers clarify the technological lineage.
@FakeMaidenMaker: Full-Stack AI Engineer Roadmap: From Zero to Math, LLMs, and Agents – Covers Everything. There’s tons of AI material online, but it's all fragmented—one article on fine-tuning, another agent demo, every search yields "Build a RAG in 5 minutes" fast food. A coherent system from math to LLM to agent is nearly impossible to find.
A free, open-source AI engineering curriculum that covers math, LLMs, and agents across 20 phases and 435 lessons in Python, TypeScript, Rust, and Julia, designed to fill gaps in fragmented AI tutorials.
@shedoesai: How to become dangerously good at AI without wasting 1000+ hours. No useless tutorials. No fake AI gurus. No informatio…
A curated learning stack for AI covering LLMs, agents, MCP, prompt engineering, RAG, and vector databases, including videos, repositories, guides, books, papers, and courses. Also provides an accessible explanation of what large language models are and how they work.