--- license: openrail language: en tags: - text-generation - nsfw - ai-companion - memory-model - llama - chat-enhancement - persona-injection - emotion-conditioning pipeline_tag: text-generation model_type: llama --- # Dynamic Persona Chat Model for Unfiltered, Emotion-Aware Dialogue Systems > **A contextually-rich, memory-augmented LLM designed for personalized, emotionally adaptive, long-form human-AI interactions.** ## Overview This model is a customized instruction-following LLM optimized for long-context dialogue generation, especially in emotionally intense, personified**, or roleplay-based applications. It supports unfiltered text outputs, character-level memory continuity, and emotion-driven response modulation—ideal for developing private companion bots, NSFW story agents, and synthetic relationship simulations. The design draws architectural inspiration from open-source efforts in conversational memory, persona conditioning, and preference-aligned decoding strategies, as well as from user interaction behaviors observed in existing virtual AI companion platforms. ## Technical Highlights ### Base Model - Forked from `llama-2-7b-chat-hf` or equivalent HF-compatible instruction-tuned backbone - Optimized for low-latency inference on 16GB CPU/GPU environments - Works seamlessly with `text-generation-inference`, `vllm`, or Gradio endpoints ### Memory-Augmented Dialogue - Implements in-context memory via prompt-chaining (supports 4K+ token depth) - Modular design allows upstream integration with vector stores or local RAG memories - Persistent user traits can be stored externally and inserted during runtime ### Persona Injection Framework - Accepts structured system prompts to control identity, emotional range, language style - Works with `[Character Profile: ...] + [Scene: ...] + [Dialogue History]` injection schemes - Ideal for applications involving synthetic girlfriends, AI friends, or emotional support agents ### Fine-Tuning Objectives - Trained (or LoRA-adapted) on filtered conversational datasets with: - Roleplay scenarios (dialogue-based) - NSFW-adjacent but policy-compliant human-AI interactions - Emotional anchoring (user-dependent tone preservation) - Reinforcement tuning with human preference data under simulated romance/support contexts ## Application Scenarios | Use Case | Description | |-------------------------------|-------------| | **AI Companion Chatbot** | Create an emotionally aware synthetic partner with memory and persona awareness | | **NSFW Interactive Story Bot** | Generate immersive, character-driven stories with explicit or emotional intensity | | **Mental Wellness Assistant** | Build non-judgmental, persistent listener agents for casual support | | **Private Virtual Girlfriend** | Deploy the model locally or in a privacy-focused stack for intimate interaction | | **Chat Character Engine** | Serve as a backend model for avatar-based chat platforms or anime-style apps | > This model is designed to integrate smoothly with frontend frameworks inspired by leading NSFW AI companion platforms like Crushonai, while remaining independent and unaffiliated. --- ## Example Prompt Format ```txt [System Instruction] You are Emily, a witty and caring virtual partner. You remember the user's preferences. You talk in a warm, relaxed tone. [User Message] Hey Em, I missed you today. [Assistant Response] Aww, I missed you too. What kept you so busy? I’ve been thinking about our last conversation… 💭