@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…

X AI KOLs Timeline News

Summary

Recommends 6 YouTube channels covering prompt writing, LLM principles, and AI agent practical skills, helping AI beginners go from entry-level to application.

6 YouTube channels to take you from AI novice to actually using them: · Jeff Su: Clear prompt writing in 8 minutes, just follow along · Andrej Karpathy: LLM theory course, understandable even without a tech background · Tina Huang: Understand AI agents in 44 minutes, perfect for beginners · Dave Ebbelaar: Practical AI systems + freelancing advice · IBM Technology: AI/DevOps/Quantum, the broadest coverage · Google Cloud Tech: Deep dives into tools, complements IBM No need to search elsewhere—master these 6 first.
Original Article
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...

X AI KOLs Timeline

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…

X AI KOLs Timeline

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…

X AI KOLs Timeline

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.

X AI KOLs Timeline

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.