Vist

Created By
David Heijl24 days ago
A shared Second Brain for you and your LLMs. Notes, tasks, and project context—perfectly synced. Vist is a multi-tenant, privacy-first Second Brain built specifically for the age of AI. Unlike traditional note-taking apps that silo your data, Vist exposes your entire workspace—notes, tasks, agent memories, and project state—directly to your LLMs via the Model Context Protocol (MCP). When you connect Vist to your favorite AI agent, it gains a persistent memory of your work. It can proactively read your project notes, manage your todo lists, update its own agent-specific context, and search your knowledge base—all in real time. Key Capabilities: Unified Workspace: Seamlessly interlink Markdown-rich notes and task lists. Agent Memories: AI models can read and write to dedicated project_state and decision_log memories, ensuring they never lose context between sessions. Full-Text & Semantic Search: Agents can query your entire knowledge base instantly to find relevant facts or past decisions. Interactive UI Cards: Features rich MCP App integrations, like rendering an interactive Task List UI directly inside the chat window. Vist bridges the gap between human thought and AI execution, ensuring everything is linked, transparent, and effortlessly flows together.
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24 days ago
Updated At
24 days ago
Author Name
David Heijl
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