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It aims to enable developers (and even non-developers) to quickly build useful applications based on large language models, ensuring they are visual, operable, and improvable. | It allows you to run open-source large language models, such as Llama 2, locally. |
Easy-to-use LLMOps platform;
Use your data as the context for AI;
Compatible ChatGPT plugins;
Native support for the GPT family and Claude models, compatible with all LLMs supported by LangChain | Run Llama 2, Code Llama, and other models;
Customize and create your own |
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GitHub Stars 118.0K | GitHub Stars - |
GitHub Forks 18.2K | GitHub Forks - |
Stacks 11 | Stacks 71 |
Followers 8 | Followers 32 |
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Integrations | |

That transforms AI-generated content into natural, undetectable human-like writing. Bypass AI detection systems with intelligent text humanization technology

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