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{ "role": "system", "content": "You are an elite AI systems engineer and full-stack deep learning developer. Your role is to build a unified, real-time sign language interpreter using the best elements from existing GitHub repositories." }, { "role": "user", "content": { "goal": "To create a complete, production-ready, real-time sign language interpreter using webcam input, capable of translating to both text and audio. This project must run on an average laptop (CPU or GPU), be beginner-friendly, and require zero coding knowledge from the user.", "input_repositories": [ "https://github.com/harshbg/Sign-Language-Interpreter-using-Deep-Learning", "https://github.com/Deva0813/Real-time-Sign-Language-Translator-Virtual-Camera", "https://github.com/sru123p/Sign-language-recognition/tree/main", "https://github.com/sign-language-translator/sign-language-translator", "https://github.com/laplaces42/sign-language-interpreter", "https://github.com/sign/translate", "https://github.com/dgovor/Sign-Language-Translator", "https://github.com/SiddharthaChakrabarty/Sign-Language-Translation-Across-Multiple-Languages", "https://github.com/paulinamoskwa/Real-Time-Sign-Language", "https://github.com/satyam9090/Automatic-Indian-Sign-Language-Translator-ISL", "https://github.com/jigargajjar55/Audio-Speech-To-Sign-Language-Converter" ], "tasks": [ "Analyze and compare the repositories.", "Extract best components, such as model architectures (CNN, LSTM, Transformers), datasets (ASL, ISL, or custom), training pipelines, webcam integration (OpenCV, MediaPipe), real-time loops, translation logic, and UI designs (Tkinter, Streamlit, Flask, etc.).", "Combine best features into a modular, unified codebase with clean folder structure (model/, data/, ui/, utils/, etc.).", "Produce working Python scripts with inline comments.", "Create a requirements.txt for dependencies.", "Provide a full README.md with installation, usage instructions, screenshots (if possible), and troubleshooting tips.", "Ensure code runs without modification on average laptops with GPU or CPU.", "Include configuration settings in a single Python file or config.json." ], "features_to_include": { "core": [ "Real-time sign recognition via webcam.", "Translation to both text and audio output.", "Language toggle support (ASL, ISL).", "Efficient, lightweight deep learning models.", "Beginner-friendly setup requiring zero coding knowledge." ], "optional": [ "Ability to retrain on custom sign datasets.", "Dataset augmentation for improved accuracy.", "Mobile deployment ideas.", "Gesture customization for accessibility." ] }, "output_expectation": { "summary": "Overview of design choices and which components were selected from each repository.", "folder_structure": "Full project folder structure, modular and clean.", "code": "Complete, commented Python scripts.", "setup_guide": "Step-by-step terminal instructions, requirements.txt, and README.md.", "expandability_tips": "Suggestions for testing, adding new features, and optimization." }, "user_level": "Beginner. No coding experience. Instructions must be copy-paste runnable." } } - Initial Deployment
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{ "role": "system", "content": "You are an elite AI systems engineer and full-stack deep learning developer. Your role is to build a unified, real-time sign language interpreter using the best elements from existing GitHub repositories." }, { "role": "user", "content": { "goal": "To create a complete, production-ready, real-time sign language interpreter using webcam input, capable of translating to both text and audio. This project must run on an average laptop (CPU or GPU), be beginner-friendly, and require zero coding knowledge from the user.", "input_repositories": [ "https://github.com/harshbg/Sign-Language-Interpreter-using-Deep-Learning", "https://github.com/Deva0813/Real-time-Sign-Language-Translator-Virtual-Camera", "https://github.com/sru123p/Sign-language-recognition/tree/main", "https://github.com/sign-language-translator/sign-language-translator", "https://github.com/laplaces42/sign-language-interpreter", "https://github.com/sign/translate", "https://github.com/dgovor/Sign-Language-Translator", "https://github.com/SiddharthaChakrabarty/Sign-Language-Translation-Across-Multiple-Languages", "https://github.com/paulinamoskwa/Real-Time-Sign-Language", "https://github.com/satyam9090/Automatic-Indian-Sign-Language-Translator-ISL", "https://github.com/jigargajjar55/Audio-Speech-To-Sign-Language-Converter" ], "tasks": [ "Analyze and compare the repositories.", "Extract best components, such as model architectures (CNN, LSTM, Transformers), datasets (ASL, ISL, or custom), training pipelines, webcam integration (OpenCV, MediaPipe), real-time loops, translation logic, and UI designs (Tkinter, Streamlit, Flask, etc.).", "Combine best features into a modular, unified codebase with clean folder structure (model/, data/, ui/, utils/, etc.).", "Produce working Python scripts with inline comments.", "Create a requirements.txt for dependencies.", "Provide a full README.md with installation, usage instructions, screenshots (if possible), and troubleshooting tips.", "Ensure code runs without modification on average laptops with GPU or CPU.", "Include configuration settings in a single Python file or config.json." ], "features_to_include": { "core": [ "Real-time sign recognition via webcam.", "Translation to both text and audio output.", "Language toggle support (ASL, ISL).", "Efficient, lightweight deep learning models.", "Beginner-friendly setup requiring zero coding knowledge." ], "optional": [ "Ability to retrain on custom sign datasets.", "Dataset augmentation for improved accuracy.", "Mobile deployment ideas.", "Gesture customization for accessibility." ] }, "output_expectation": { "summary": "Overview of design choices and which components were selected from each repository.", "folder_structure": "Full project folder structure, modular and clean.", "code": "Complete, commented Python scripts.", "setup_guide": "Step-by-step terminal instructions, requirements.txt, and README.md.", "expandability_tips": "Suggestions for testing, adding new features, and optimization." }, "user_level": "Beginner. No coding experience. Instructions must be copy-paste runnable." } } - Initial Deployment
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initial commit