awesome_LLMs_interview_notes and LLM-Interview-Guidebook

Both are complementary study resources that serve the same interview preparation purpose from slightly different angles—one is a curated collection of interview Q&A notes while the other is a systematically organized guidebook of core LLM concepts—so a candidate would benefit from using them together to cover both breadth of specific questions and depth of foundational knowledge.

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About awesome_LLMs_interview_notes

jackaduma/awesome_LLMs_interview_notes

LLMs interview notes and answers:该仓库主要记录大模型(LLMs)算法工程师相关的面试题和参考答案

This project was intended to provide interview notes and answers for large language model (LLM) algorithm engineer roles. It aimed to help candidates prepare for interviews by offering insights into common questions and suitable responses. The content was primarily for individuals seeking to work as algorithm engineers specializing in LLMs.

AI-recruitment LLM-careers technical-interview AI-engineering-jobs

About LLM-Interview-Guidebook

chensi-cs/LLM-Interview-Guidebook

本仓库是一份面向大模型算法工程师的面试宝典,系统梳理了大模型的核心知识点,帮助读者快速掌握大模型面试中的重点和难点

This guidebook helps aspiring Large Language Model (LLM) algorithm engineers prepare for job interviews. It takes complex LLM concepts, like Transformer architecture, optimization techniques, and model training, and breaks them down into an organized, easy-to-understand format. The output is a structured understanding of core LLM knowledge points and practical interview questions, used by those seeking roles in the LLM development field.

LLM-engineering AI-interview-prep machine-learning-careers algorithm-engineer natural-language-processing

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