Conw.ai: lightweight self-learning AI with personality
Conw.ai is a 500M parameter AI model that runs locally on an iMac. It features self-learning capabilities and a distinct personality, aiming to provide a conversational AI that can adapt and engage users in a more natural way.
Visit project ↗Entities
Related
Colyap: voice/text AI assistant with memory, tasks, and app integration
Colyap is an AI friend you can call and text. It uses LLMs to understand natural language, remember everything about you, execute long-running tasks, and integrate with your apps. It solves the problem of needing a personal AI assistant that learns and adapts over time, with no registration required and bring-your-own-key.
CouncilAI: local desktop app routing questions to 4 AI models
CouncilAI is a Windows desktop app that runs four local AI models and routes user questions to the appropriate model based on complexity. Simple questions use a fast lightweight model, while complex ones trigger deliberation where multiple models answer and the best response is selected. It operates fully offline on the user's hardware, requiring no accounts or cloud services.
Open-source private desktop AI overlay with MCP support
Wisp is a desktop overlay that lets you invoke AI from any app via keyboard shortcuts, with context like text, screenshots, or active window. It supports voice queries, dictation, and pasting results directly, keeping data local and private.
Billy Bassistant AI Fish: AI assistant with local file knowledge and status LED
Billy Bassistant AI Fish is a voice-enabled AI assistant that can be fed custom PDF, Excel, or text files organized into topic-specific folders. It uses LLMs to process these local files and answer questions based on them, and optionally shows a status LED indicator. It solves the problem of having a physical AI assistant that can access and reason over personal documents.
LLM-based intelligent chatbot with session history
A full-stack chatbot project that uses an LLM (Anthropic Claude by default) to answer user messages while maintaining per-session conversation history. It provides a simple, self-contained setup with a Node.js backend and a plain HTML/CSS/JS frontend, suitable for developers who want to quickly deploy an LLM-powered chat interface.
