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binary-husky/gpt_academic

为GPT/GLM等LLM大语言模型提供实用化交互接口,特别优化论文阅读/润色/写作体验,模块化设计,支持自定义快捷按钮&函数插件,支持Python和C++等项目剖析&自译解功能,PDF/LaTex论文翻译&总结功能,支持并行问询多种LLM模型,支持chatglm3等本地模型。接入通义千问, deepseekcoder, 讯飞星火, 文心一言, llama2, rwkv, claude2, moss等。

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What it does

GPT Academic is an open-source interface that connects researchers and students to multiple AI language models (like ChatGPT, Claude, and various Chinese-language models) with special features for academic work — including reading, editing, and translating research papers, as well as summarizing PDFs. It works with dozens of AI models simultaneously and includes a plugin system that lets users add custom tools for tasks like code analysis or document translation.

Why it matters

With 70,000+ stars, this project signals massive demand for AI tools tailored to specialized professional workflows — particularly in academia and research — rather than general-purpose chatbots, which is a significant product opportunity. It also reflects the growing importance of supporting non-OpenAI models (especially Chinese LLMs like Qwen and GLM), suggesting builders targeting global markets need multi-model strategies rather than relying solely on a single AI provider.

19Active

On the radar — signal detected

Stars
71.0k
Forks
8.4k
Contributors
114
Language
Python

Score updated Jun 27, 2026

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