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The Ultimate Full-stack AI Engineering Roadmap
This is the exact mapped-out path on what it actually takes to go from Beginner → Full-Stack AI Engineer.
Step 1:
Start with Coding Fundamentals.
Learn Python, Bash, Git, and testing.
Every strong AI engineer starts with fundamentals.
Step 2:
Learn how to interact with models by understanding LLM APIs.
This will teach you structured outputs, caching, system prompts, etc.
Step 3:
APIs are great, but raw LLMs still need the latest info to be effective.
Learn how LLMs are usually augmented with more info/patterns.
This will teach you the basics of fine-tuning, RAG, prompt/context engineering, etc.
Step 4:
Strong LLMs are useless without context. That’s where Retrieval techniques help.
Learn about vector DBs, hybrid retrieval, indexing strategies, etc.
Step 5:
Once retrieval is solid, move into RAG.
Learn to build retrieval + generation pipelines, reranking, and multi-step retrieval using popular orchestration frameworks.
Step 6:
Now, step into AI Agents, where AI moves from answering to acting.
Learn memory, multi-agent systems, human-in-the-loop design, Agentic patterns, etc.
Step 7:
Learn how to ship in production with Infrastructure.
This will teach you CI/CD, containers, model routing, Kubernetes, and deployment at scale.
Step 8:
Focus on Observability & Evaluation.
Learn how to create eval datasets, LLM-as-a-judge, tracing, instrumentation, and continuous evaluation pipelines.
Step 9:
Security is crucial.
Learn how to implement guardrails, sandboxing, prompt injection defenses, and ethical guidelines.
Step 10:
Finally, explore Advanced workflows.
This covers voice & vision agents, CLI agents, robotics, agent swarms, and self-refining AI systems.
This is the actual journey to becoming a Full-Stack AI Engineer and not just "use” AI, but designing full-stack AI systems that can survive in production.
What have we missed? Let us know!
And don't forget to fill out this form if you want to get:
Free lifetime access to all paid DailyDoseofDS resources (worth $360) [we’ll refund existing premium members].
Unlock more job opportunities because we get 1.5M visitors on our website/month. Many are recruiters, managers, and founders.
Thanks for reading!