--- license: mit --- ![image/png](https://cdn-uploads.huggingface.co/production/uploads/66f5800df74ecff7c0b9b64f/vgvSVmRawl-ThPrzh55Ls.png) # Model Card: Agora-4B ## Model Summary Agora-4B is a 4-billion parameter, BF16-precision transformer language model, designed for ethical, inclusive, and adaptive dialogue in multi-user domestic environments. Inspired by the research paper ["Plural Voices, Single Agent: Towards Inclusive AI in Multi-User Domestic Spaces"](https://doi.org/10.48550/arXiv.2510.19008), Agora-4B incorporates principles of fairness, value alignment, and accessibility to better serve diverse household users—including children, elderly, and Neurodivergent individuals. **Repository:** [JoydeepC/Agora-4B](https://huggingface.co/JoydeepC/Agora-4B) **Paper:** [Plural Voices, Single Agent](https://doi.org/10.48550/arXiv.2510.19008) **Model size:** 4B parameters **Tensor type:** BF16 **Files:** Safetensors format (2 shards, ~8.07 GB), tokenizer files, configs, chat templates, etc. --- ## Intended Use Agora-4B is intended for use as a core assistant agent in domestic AI deployments, especially in settings with multiple users and overlapping accessibility needs. Typical scenarios include: Domestic voice assistants which must mediate between adult, child, and elderly users Applications where context-sensitive safety, fairness, or ethical intervention is required Research or development in inclusive, privacy-first AI for multi-agent, multi-user environments --- ## Model Architecture & Training **Architecture:** 4B-parameter transformer, trained with curriculum blending human and synthetic dialogue **Objective:** Optimized for fairness, multi-value alignment, ethical compliance, and accessibility-aware conversation **Training Data:** Curated public datasets covering mental health, eldercare, education, and moral reasoning. Enhanced with fairness-aware, multi-user scenarios and privacy-centric synthetic examples. **Ethical Safeguards:** Includes adaptive safety scaffolds (e.g., age-specific explanations, guidance for Neurodivergent users), autonomy sliders, and safe conflict resolution. --- ## Key Features **Real-Time Value Alignment:** Dynamically identifies and negotiates conflicting user needs, values, and accessibility requirements **Inclusive Design:** Special handling for overlooked populations (children, elderly, Neurodivergent), including step-by-step instructions, accessible language, and equitable interaction **Privacy-Focused:** Avoids unnecessary data retention or sharing **Adaptivity:** Safety, autonomy, and guidance dynamically adjusted per user/context **Design Innovations:** Video guidance, autonomy sliders, family hubs, adaptive dashboards **Performance:** Outperforms baselines in compliance, fairness, and safety (see paper for details) - Compliance: 76% (vs 70% baseline) - Fairness: 90% (vs 85% baseline) - Safety violations: 0% (vs 7% baseline) --- ## Citation If you use this model, please cite: ```bibtex @misc{chandra2025pluralvoicessingleagent, title={Plural Voices, Single Agent: Towards Inclusive AI in Multi-User Domestic Spaces}, author={Joydeep Chandra and Satyam Kumar Navneet}, year={2025}, eprint={2510.19008}, archivePrefix={arXiv}, primaryClass={cs.HC}, url={https://arxiv.org/abs/2510.19008}, } ``` --- ## Further Reading [arXiv:2510.19008](https://arxiv.org/abs/2510.19008) [Project repository (HuggingFace)](https://huggingface.co/JoydeepC/Agora-4B) --- This model and codebase are open sourced for reproducibility and collaborative research on inclusive, agentic AI.