# ChillTranslator ⁉️🌐❄️ This is an early experimental tool aimed at reducing online toxicity by automatically 🔄 transforming 🌶️ spicy or toxic comments into constructive, ❤️ kinder dialogues using AI and large language models. ❄️ ChillTranslator aims to foster healthier online interactions. The potential uses of this translator are vast, and exploring its integration could prove invaluable. Currently, it "translates" a built-in example of a spicy comment. Online toxicity can undermine the quality of discourse, causing distress 😞 and driving people away from online communities. Or worse: it can create a viral toxic loop 🌀! ChillTranslator hopes to mitigate toxic comments by automatically rephrasing negative comments, while maintaining the original intent and promoting positive communication 🗣️➡️💬. These rephrased texts could be suggested to the original authors as alternatives, or users could enhance their internet experience with "rose-tinted glasses" 🌹😎, automatically translating spicy comments into versions that are easier and more calming to read. Could Reddit, Twitter, Hacker News, or even YouTube comments be more calm and constructive places? I think so! ## Approach ✨ - **Converts** text to less toxic variations - **Preserves original intent**, focusing on constructive dialogue - **Offline LLM model**: running DIY could save costs, avoid needing to sign up to APIs, and avoid the risk of toxic content causing API access to be revoked. We use llama-cpp-python's server with Mixtral. ## Possible future directions 🌟 - **Integration**: offer a Python module and HTTP API, for use from other tools, browser extensions. - **HuggingFace / Replicate.com etc**: Running this on a fast system, perhaps on a HuggingFace Space could be good. - **Speed** improvements. - Split text into sentences e.g: with “pysbd” for parallel processing of translations. - Use a hate speech scoring model instead of the current "spicy" score method. - Use a dataset of hate speech to make a dataset for training a translation transformer like Google's T5 to run faster than Mixtral could. - Use natural language similarity techniques to compare possible rephrasing fidelity faster. - Enabling easy experimenting with online hosted LLM APIs - Code refactoring to improve development speed! ## Getting Started 🚀 ### Installation 1. Download a compatible and capable model like: [Mixtral-8x7B-Instruct-v0.1-GGUF](https://huggingface.co/TheBloke/Mixtral-8x7B-Instruct-v0.1-GGUF/resolve/main/mixtral-8x7b-instruct-v0.1.Q4_K_M.gguf?download=true) 2. Make sure it's named as expected by the next command. 3. Install dependencies: ``` pip install requests pydantic llama-cpp-python llama-cpp-python[server] --upgrade ``` 4. Start the LLM server: ``` python3 -m llama_cpp.server --model mixtral-8x7b-instruct-v0.1.Q4_K_M.gguf --port 5834 --n_ctx 4096 --use_mlock false ``` These config options are not going to be optimal for a lot of setups, as it may not use GPU right away, but this can be configured with a different argument. Please check out https://llama-cpp-python.readthedocs.io/en/latest/ for more info. ### Usage ChillTranslator currently has an example spicy comment it works on fixing right away. This is how to see it in action: ```python python3 chill.py ``` ## Contributing 🤝 Contributions are welcome! Especially: - pull requests, - free GPU credits - LLM API credits / access. ChillTranslator is released under the MIT License. Help make the internet a kinder place, one comment at a time. Your contribution could make a big difference!