
Free Cheat Sheet from Our 10-Hour LLM Primer
Author(s): Towards AI Editorial Team
Originally published on Towards AI.
How to Really Build on Top of LLMs
Everyone starts with prompts. But if you’ve ever built beyond a toy project, you’ve probably hit this wall:
The model sounds fluent, but the answers are off.
The output looks good, until it breaks your parser.
The demo works, but doesn’t scale.
The fix isn’t always fine-tuning.
In fact, it’s almost never where you should start.
That’s why we made Session 2 of our 10-hour LLM Video Primer free to watch. It covers the actual sequence teams follow to build reliable, cost-aware, and scalable LLM systems, without overengineering or overpaying.
But if you don’t have two hours right now, here’s the cheat sheet:
The Four Levels of LLM Customization
1. Prompting: Fastest, cheapest, and surprisingly powerful
Use this when you’re exploring what the model already knows or trying to shape behavior without touching training.
- Use for: general tasks, fast prototyping
- Techniques: zero-shot, few-shot, instruction-based prompting
- Limits: No domain grounding, inconsistent structure, format instability
2. Retrieval-Augmented Generation (RAG): Ground your model in real data
RAG injects external knowledge into your LLM without retraining.
- Use for: knowledge gaps, fast updates, domain-specific context
- Tools: LangChain, LlamaIndex, FAISS, Pinecone
- Pro tip: Improve it with reranking, metadata, query rewriting, and chunking
3. Structured Outputs: Make results predictable
LLMs are flexible, often too flexible. If you’re piping results into another system, structure matters.
- Use for: integrations, automation, safety
- Methods: JSON/XML outputs, schema-constrained prompting, grammar-based decoding
- Tools: Outlines (for decoding), Pydantic (Python), Zod (JS/TS)
4. Fine-Tuning: When you need full control
This is where you adapt the model to your tone, tasks, or workflows, but only if the earlier steps fall short.
- Use for: niche tasks, new domains, tone/style control
- Methods: LoRA, QLoRA, RLHF, DPO, SFT
- Cost: Requires clean data, training infrastructure, and clear ROI
Bonus: The Hidden Infrastructure
Customization is only half the story. Once you’re building seriously, you’ll need to consider:
- Structured evaluation: BLEU, ROUGE, human feedback loops
- Cost & latency optimization: Context caching, quantization, distillation
- Tool orchestration: Agents, APIs, fallback chains
- Model selection: Use the right model for the right job (don’t always default to GPT-4)
These are the kinds of details that make or break real-world AI systems, and they’re exactly what we focus on in the rest of our 10-hour video course.

If this kind of structured, outcome-driven approach clicks with you, we’ve built out the complete system for:
- Designing and deploying full-stack LLM applications
- Running evaluations that actually guide iteration
- Fine-tuning open models with lightweight, GPU-efficient techniques
- Architecting agents, orchestrators, and multi-modal workflows
- Making LLMs safe, fast, and cost-effective in production
Includes lifetime access + all future updates
New modules are in the works, including a bonus session as the landscape evolves.
Current price: $199
No fluff. No hype. Just the path from “exploring” to actually building LLM-powered products that hold up in the real world.
Upgrade to the full course or watch lesson 2 here!
And if you missed Lesson 1, it’s free too.
Together, they’ll give you a grounded understanding of how LLMs reason, retrieve, and fail and how to work around them.

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