Eric-LLMs/Awesome-AI-Engineering
The Full-Stack LLM Engineering Playbook. Architectural patterns for Agents (MCP) & RAG, coupled with advanced Post-Training recipes (SFT, DPO, QLoRA) for domain adaptation. Covers Data Pipelines, Evaluation Frameworks, and System Design.
This is a comprehensive playbook that guides AI engineers through building sophisticated AI agents and large language model (LLM) applications. It provides architectural patterns for agents, advanced techniques for fine-tuning LLMs for specific domains, and covers critical aspects like data pipelines, evaluation frameworks, and system design for production-grade AI. An AI engineer or machine learning practitioner who needs to design, develop, and deploy robust LLM-powered solutions would use this.
Use this if you are an AI engineer looking for a detailed guide to build, optimize, and deploy advanced LLM-based systems and autonomous AI agents in real-world scenarios.
Not ideal if you are a business user looking for a no-code solution or someone without a technical background in AI/ML.
Stars
4
Forks
—
Language
—
License
—
Category
Last pushed
Feb 07, 2026
Commits (30d)
0
Get this data via API
curl "https://pt-edge.onrender.com/api/v1/quality/rag/Eric-LLMs/Awesome-AI-Engineering"
Open to everyone — 100 requests/day, no key needed. Get a free key for 1,000/day.
Higher-rated alternatives
piyushagni5/langgraph-ai
LangGraph AI Repository
theshivamlko/flutter-ai-labs
A curated collection of LLM-powered Flutter apps built using RAG, AI Agents, Multi-Agent...
MohammedMusharraf11/BandhanAI
BandhanAI is an intelligent customer service and marketing automation agent designed...
AdesharaBrijesh/examai
ExamAI is an AI-powered assessment platform that generates, conducts, and evaluates exams using...
JEONGHEESIK/LangGraph-Agentic-Graph-RAG
A LangGraph-native Agentic AI framework integrating adaptive 3-way Graph RAG, MCP (Model Context...