@Xudong07452910: Open-source high-quality tutorial recommendation: ai-engineering-from-scratch — A full-stack course from zero to production-grade AI engineering. This is a systematic AI engineering course built from scratch (Learn it. Build it. Ship it for others.…)

X AI KOLs Timeline Tools

Summary

This article recommends an open-source full-stack AI engineering course called 'ai-engineering-from-scratch', containing 503 lessons covering from mathematical foundations to production deployment, with 33.6k stars.

Open-source high-quality tutorial recommendation: ai-engineering-from-scratch — A full-stack course from zero to production-grade AI engineering This is a systematic AI engineering course built from scratch (Learn it. Build it. Ship it for others.), with 20 phases and 503 lessons (approximately 320 hours). It doesn't just teach you to call APIs; instead, it guides you from mathematical foundations, hand-in-hand implementation of Transformer, LLM, RAG, and Agent, to production deployment and ethical alignment, ultimately outputting directly reusable skills, prompts, and agents. Key highlights: 1. Each phase follows: "Implement from scratch (pure math/code) → Implement with mainstream frameworks → Output reusable artifacts (prompts, Skills, Agents, MCP Servers)" 2. Special focus on AI Agent engineering (Phase 14): memory, planning, multi-agent collaboration, benchmarking, productionalization 3. Supports four languages: Python, TypeScript, Rust, Julia, integrating tools like Claude, Cursor, Codex 4. Output 388+ directly installable Skills and 99+ prompt templates — truly "learn and use immediately" 5. Comes with Agent Workbench scaffolding + personalized learning path assessment This project is a complete pathway to "learn to build tools from scratch". After completing it, you will better understand, customize, and even develop these AI engineering systems yourself. It is especially suitable for developers, researchers, and teams with programming foundations who want to deeply grasp the internal mechanisms of AI and build production-level applications. It has already received 33.6k+ stars, with an active community and continuous updates. https://github.com/rohitg00/ai-engineering-from-scratch… #AIAgent #ClaudeCode #AITutorial #AIEngineering #OpenSourceProject
Original Article
View Cached Full Text

Cached at: 06/17/26, 05:48 AM

150,639 readers · 241,669 page views in the last 30 days · as of 2026-06-07

Similar Articles

@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.

@Xudong07452910: Free and Open-Source High-Quality Tutorial Recommendation: 'Building an Agent from Scratch' - A systematic tutorial on Agent principles and practice from zero to advanced, covering: 1. Basic concepts and mainstream paradigms (ReAct, Plan-and-Solve, Reflection, etc.) 2.…

X AI KOLs Timeline

Recommend the free and open-source tutorial 'Building an Agent from Scratch', which systematically explains AI Agent principles and practice, covering mainstream frameworks such as ReAct, AutoGen, LangGraph, and multiple hands-on projects. It has received 53,000+ stars.

@IndieDevHailey: This might be the hardest-core open-source AI engineering course on the internet. The GitHub trending project: ai-engineering-from-scratch has already gained 17.4k+ Stars. It's not another AI tutorial that teaches you how to call APIs; instead, it truly guides you to build AI systems from scratch.

X AI KOLs Timeline

Introduces the trending open-source AI engineering course project ai-engineering-from-scratch on GitHub, which has earned 17.4k+ Stars. It offers 435 lessons across 20 stages, covering mathematical principles to hand-built AI systems, supports multiple languages, and aims to help learners deeply understand the underlying principles of AI.