The New Minimum for LLM Developers Just Changed. So Did the Course That Teaches It.
Seven months ago, we launched From Beginner to LLM Developer — a full-stack, no-fluff course to help engineers build real-world LLM applications from scratch. Since then, it’s become a go-to for data scientists and developers mastering everything from Prompt Engineering and RAG to Fine-Tuning and Agentic Design.
Even then, one thing was clear: LLM development was becoming its own essential discipline.
Now it’s no longer optional.
With reasoning-capable models, multimodal APIs, and fast local inference, LLMs are moving beyond chat apps. The bar for developers has risen — and so has the opportunity.
That’s why we’ve just shipped our biggest course update yet — with new lessons, tools, and design patterns to help you build agentic, production-grade systems in 2025.
👉 Preview the updated syllabus + start 10 lessons free →
🔄 What’s New (And Why It Matters)
This update isn’t just about new content — it’s about keeping you ahead as the landscape shifts. Here’s what’s added:
✅ Local Model Deployment
Run DeepSeek Distill with Ollama, fully offline. Ideal for secure environments or rapid iteration without hitting API limits.
🧠 Reasoning Language Models
Learn how OpenAI’s o-series, Gemini Pro 2.5, and DeepSeek r-models go beyond token prediction — and what that unlocks for your systems.
🎯 Reinforcement Fine-Tuning
Train expert models that perform niche tasks with high accuracy, even on small datasets. (Yes, we show you how with o4-mini.)
🖼️ Image Generation & Editing via API
Use GPT-4o to generate and edit visuals — a must-have for multimodal UIs and product interfaces.
🧩 Agentic Interoperability via Anthropic MCP
Design agents that can work across ecosystems using the Model Context Protocol. Future-proof, modular, and real-world-ready.
📹 Plus: more lessons now available in video, and polish across the board for clarity, model updates, and best practices.
🧪 Explore what’s new — and test the first 10 lessons free
👥 The June Cohort: Build With Speed and Context
Our live June cohort starts soon. Think of it as a rolling, monthly sync with other engineers and founders building in real time, plus direct AMA access with our CEO on the first Sunday of each month.
If you want to move fast, stay current, and gut-check ideas with people shipping in parallel, this is where you do it.
📚 Still the Most Complete Path to LLM Development
This is a 90+ lesson course that covers every major stage of the LLM product lifecycle:
Prompting + Evaluation
Data curation + Retrieval
RAG architecture
Fine-tuning (supervised + RFT)
Tool use + Agent design
Local deployment + Interop
Non-technical skills for AI product success
By the end, you’ll build a certifiable Retrieval-Augmented Generation (RAG) project and work hands-on with Python, OpenAI, Llama 3, Gemini, LangChain, Hugging Face, Anthropic MCP, and more.
🧑💻 Get the full course overview + free preview here
💬 Hear From Engineers Who Did It
“Best course out there to become an AI engineer. Planning to build my own startup based on the learnings.” — Abhijit L
“Expanded my knowledge of RAG pipelines and gave me real-world tools.” — Eoin McGrath
“From zero to hero as an LLM Developer… a clear path to build LLM applications that can change your career.” — Luca T
👇 Try It Free — No Signup, No Risk
We’ve made the first 10 lessons completely free, including your first working notebook. No credit card. No catch.
You’ll walk away with usable code and a clear sense of whether this is your next step.