luhengshiwo/LLMForEverybody
每个人都能看懂的大模型知识分享,LLMs春/秋招大模型面试前必看,让你和面试官侃侃而谈
This project offers a comprehensive resource for understanding Large Language Models (LLMs), providing curated interview questions and a structured study path through foundational research papers. It takes complex LLM concepts and breaks them down into an accessible format for those seeking to enter or advance in the AI/ML field. The target user is an aspiring or current machine learning engineer, researcher, or data scientist preparing for interviews or looking to deepen their LLM knowledge.
5,847 stars. Actively maintained with 17 commits in the last 30 days.
Use this if you are a developer or researcher looking to gain a deep understanding of LLMs, prepare for technical interviews, or stay updated on the latest advancements in the field.
Not ideal if you are a non-technical user looking for practical, no-code applications of LLMs in your business workflows.
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Jupyter Notebook
License
Apache-2.0
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Last pushed
Mar 13, 2026
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17
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