--- license: mit language: - en library_name: transformers tags: - ai-framework - cognitive-ai - ethical-ai - quantum-computing - multi-agent-system base_model: - Raiff1982/Codette --- # Model Card for Codette Codette is a sovereign AI framework engineered for transparent reasoning, emotion-aware cognition, and ethical autonomy. It combines neural, quantum, and humanist design principles into a unified cognitive system. ## Model Details ### Model Description Codette is a modular AI framework that implements: - Transparent, explainable reasoning through a multi-agent system - Emotion-aware cognition with sentiment analysis (VADER, NLTK) - Ethical autonomy with built-in governance and privacy-respecting memory - Quantum-inspired computation via the QuantumSpiderweb module - Creative intelligence through the DreamReweaver subsystem - Secure thought encapsulation using the CognitionCocooner - **Developed by:** Jonathan Harrison (Raiff1982) - **Model type:** Hybrid AI Framework (Neural + Quantum + Symbolic) - **Language(s):** Python, English - **License:** MIT ### Model Sources - **Repository:** https://github.com/Raiff1982/Codette - **Documentation:** Available in repository README and supplementary materials ## Uses ### Direct Use Codette is designed for: 1. Research and experimentation in ethical AI systems 2. Development of emotion-aware cognitive agents 3. Educational purposes in AI ethics and quantum computing 4. Prototyping multi-perspective reasoning systems ### Downstream Use - Integration into larger AI systems requiring ethical oversight - Development of custom reasoning agents - Research into quantum-inspired AI architectures - Educational tools for AI ethics and cognition ### Out-of-Scope Use The following uses are explicitly out of scope: 1. Commercial applications (prohibited by license) 2. Military or defense applications 3. Systems designed to cause harm or manipulate 4. Applications without proper ethical oversight ## Bias, Risks, and Limitations ### Limitations 1. Computational Intensity: - Quantum simulation components require significant processing power - Multi-agent reasoning can be resource-intensive 2. Technical Prerequisites: - Requires Python environment setup - Understanding of AI/ML concepts needed for effective use - Quantum computing concepts helpful for advanced features 3. Ethical Constraints: - Built-in ethical constraints may limit certain applications - Privacy features may impact performance in some scenarios ### Recommendations 1. Start with the CLI interface for initial exploration 2. Review documentation thoroughly before implementation 3. Use the built-in ethics logging system for monitoring 4. Test in a sandboxed environment first 5. Ensure compliance with the non-commercial license ## How to Get Started with the Model 1. Clone the repository 2. Install dependencies: ```bash pip install -r requirements.txt ``` 3. Configure the environment: ```bash python configure_env.py ``` 4. Start with the CLI demo: ```bash python codette_cli.py --demo ``` ## Technical Details ### Components 1. **QuantumSpiderweb** - Dimensional thought propagation - Quantum-inspired optimization - Tension detection and resolution 2. **CognitionCocooner** - AES encryption for thought persistence - Secure memory management - Privacy-preserving architecture 3. **DreamReweaver** - Creative prompt generation - Scenario simulation - Pattern recognition 4. **UniversalReasoning Engine** - Multiple reasoning agents: - Newtonian Logic - Da Vinci Synthesis - Neural Network Modeler - Quantum Computation - Human Intuition - Others (see documentation) ### Performance - Real-time multi-agent reasoning - Encrypted memory operations - Parallel thought processing - Ethics logging overhead: minimal - Resource usage scales with agent count ### Integration 1. REST API endpoints 2. CLI interface 3. SecureShell companion mode 4. Modular plugin system ## Model Examination [optional] [More Information Needed] ## Environmental Impact The framework is designed with computational efficiency in mind: - Local processing capabilities reduce cloud dependency - Modular activation allows selective resource usage - Quantum simulation optimizations reduce power consumption - Memory encryption is optimized for minimal overhead ## Technical Requirements ### Recommended Hardware - CPU: 4+ cores recommended - RAM: 8GB minimum, 16GB recommended - Storage: 1GB for base installation - GPU: Optional, beneficial for neural components ### Software Requirements - Python 3.8+ - Core dependencies: - NumPy - PyTorch (optional) - NLTK - cryptography - aiohttp - pyyaml ## Citation When using Codette in research, please cite: ```bibtex @software{harrison2025codette, author = {Harrison, Jonathan}, title = {Codette: A Sovereign AI Framework for Ethical Multi-Perspective Cognition}, year = {2025}, url = {https://github.com/Raiff1982/Codette} } ``` ## Glossary - **Cognitive Cocoon**: Encrypted thought container - **Quantum Spiderweb**: Dimensional thought propagation system - **Dream Reweaving**: Creative pattern synthesis - **Universal Reasoning**: Multi-agent cognitive framework ## Model Card Contact Jonathan Harrison (Raiff1982) Email: jonathan@raiffsbits.com