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bohyy/academic-ai-prompt

一套为研究生和学术研究者设计的完整AI Prompt库 📖 包含内容: ✨ 40+ 精心设计的AI Prompt ✨ 论文选题系统方法(生成、评估、论证) ✨ 论文查找快速方案(8个不同方案) ✨ 文献综述框架和工具 ✨ Excel自动评估表格 ✨ 3个完整的论证模板 🚀 核心优势: ⚡ 节省时间 50-70%(选题3-5天而不是2-3周) 🎯 科学方法(基于系统的5维度评估体系) 💡 即插即用(所有Prompt直接复制可用) 📚 全流程覆盖(从选题到出版的完整方案) 🎓 适用人群: 👨‍🎓 硕士研究生 | 博士研究生 | 本科毕业设计 | 学术研究者 | 内容创作者

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What it does

This project is a curated library of 89+ ready-to-use AI prompts (pre-written instructions for tools like ChatGPT) designed to help graduate students and academic researchers complete their work faster, covering everything from picking a research topic to writing and polishing a paper. It promises to cut research time by 50-70%, turning tasks like finding relevant papers from a 20-hour slog into a 2-hour process.

Why it matters

The academic and student productivity space represents a massive, underserved market, and the viral traction here — nearly 500 stars for a prompt library — signals strong demand for AI tools that solve concrete, painful workflows rather than general-purpose chat. For builders and investors, this is a signal that domain-specific AI tooling for knowledge workers (researchers, writers, analysts) is a fertile product category where structured prompt systems could evolve into full SaaS products.

23Active

On the radar — signal detected

Stars
1.3k
Forks
83
Contributors
1

Score updated Apr 10, 2026

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