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A 17-course path to building AI locally

Fundamentals, local AI systems, RAG, agents, and MLOps.

19 structured courses and 356+ hands-on chapters. Start with “what is AI,” then build toward RAG apps, AI agents, local workflows, and production ML. The first chapter of every course is free.

No credit card · Email or Google sign-in · 30-second signup

19
Complete courses
Fundamentals → MLOps
356+
Hands-on chapters
Real code, not slides
17
Free chapters
No card · forever
7-day
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🎥 Build a YouTube channel
1K subs ≈ $50/mo · 10K ≈ $500-2K/mo
💼 Land an AI engineer role
$120-250K US · $40-150K EU/UK
🛠️ Freelance private AI setups
$1,500-5,000 per install · $500-2K retainer

Choose your path

🧠

What is AI

Understand every AI concept — from neural networks to production deployment

142 chaptersFirst chapter freeView syllabus →
🚀

AI: Beginning to Advanced

Build neural networks from scratch and deploy production AI systems

39 chaptersFirst chapter freeView syllabus →
💬

Natural Language Processing

Build chatbots, search engines, and text analysis pipelines

14 chaptersFirst chapter freeView syllabus →
👁️

Computer Vision

Create image classifiers, object detectors, and face recognition systems

13 chaptersFirst chapter freeView syllabus →
🔍

RAG Systems

Build AI that answers from your private documents — zero data leaves your machine

11 chaptersFirst chapter freeView syllabus →
🤖

Agentic AI

Design AI agents that use tools, plan, and solve complex problems autonomously

10 chaptersFirst chapter freeView syllabus →
🎯

Multimodal AI Systems

Build systems that understand text, images, and audio together

8 chaptersFirst chapter freeView syllabus →
⚙️

MLOps

Deploy, monitor, and scale ML models like a senior ML engineer

12 chaptersFirst chapter freeView syllabus →

Test-Time Compute Scaling

Make AI 10x cheaper to run in production with inference optimization

3 chaptersFirst chapter freeView syllabus →
🎮

Reinforcement Learning

Train AI from human feedback — the technique behind ChatGPT

12 chaptersFirst chapter freeView syllabus →
🔌

MCP Servers and Tool Ecosystems

Build, secure, and ship Model Context Protocol servers. Tools, resources, transport, observability, and production deployment patterns.

12 chaptersFirst chapter freeView syllabus →
🎙️

Voice AI and Realtime Agents

Speech-to-text, text-to-speech, realtime LLM orchestration, voice agents with tools, observability, and telephony deployment.

12 chaptersFirst chapter freeView syllabus →
🛠️

AI Engineering: From Prompt to Production

End-to-end AI app craft. Prompting, embeddings, tools, evals, guardrails, performance, deployment, and CI/CD for AI systems.

12 chaptersFirst chapter freeView syllabus →
🛡️

AI Security, Guardrails, and Red Teaming

Threat modeling, prompt injection, agent risks, data security, red teaming, monitoring, and compliance for production AI.

12 chaptersFirst chapter freeView syllabus →
🤝

Human-AI Collaboration

Decision rights, trust calibration, oversight, workflow design, and team adoption for working alongside AI systems.

12 chaptersFirst chapter freeView syllabus →
🚀

Local AI Deployment: From Laptop to Production

Real production code for deploying LLMs locally. Quantization, KV cache, vLLM, multi-GPU, edge devices, OpenAI-compatible servers. Full GitHub repo included.

16 chaptersFirst chapter freeView syllabus →
🗂️

Dataset Engineering: Build the Data That Makes Models Great

The discipline behind every great AI system. Collection, cleaning, deduplication at scale, synthetic data, instruction tuning, preference data, evals, contamination defense. Full GitHub repo with production code.

16 chaptersFirst chapter freeView syllabus →
💻

AI for Coding, Code Agents, and Engineering Workflows

Coming soon — Lifetime members get the launch + 30 days exclusive access.

0 chaptersFirst chapter freeView syllabus →
🧬

Fine-Tuning, Distillation, and Model Adaptation

Coming soon — Lifetime members get the launch + 30 days exclusive access.

0 chaptersFirst chapter freeView syllabus →
Bonus kits

Tool kits are bonuses, not the main offer.

Paid plans include the Local AI kit bundle: prompts, Docker templates, RAG starter files, agent examples, automation scripts, and fine-tuning resources. You can also request the kits free after subscribing to both YouTube channels.

What you'll build

🔍

RAG Chatbot

AI that answers from your private documents

🤖

AI Agent

Autonomous agent that plans, uses tools, learns

👁️

Image Classifier

CNN for medical imaging, product detection

💬

NLP Pipeline

Sentiment analysis, text generation, search

⚙️

ML Pipeline

CI/CD, monitoring, A/B testing for models

🎮

RLHF System

Train AI from human feedback — like ChatGPT

Start learning today

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