datawhalechina/llm-universe
本项目是一个面向小白开发者的大模型应用开发教程,在线阅读地址:https://datawhalechina.github.io/llm-universe/
This project offers a practical, step-by-step tutorial for building applications powered by Large Language Models (LLMs). It guides you through creating a personal knowledge base assistant, taking you from understanding LLM basics to deploying a functional application. This is for developers with basic Python skills who want to quickly learn how to integrate LLM APIs into their projects.
12,159 stars.
Use this if you are a developer with foundational Python knowledge looking for a hands-on guide to build your first LLM-powered application, like a knowledge base assistant, using existing LLM APIs.
Not ideal if you want to delve deeply into the theoretical foundations of LLMs, deploy open-source LLMs locally, or fine-tune models rather than using existing APIs.
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Last pushed
Feb 24, 2026
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