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Deja Vu

Deja Vu is a local-first memory layer for AI agents and assistants. It stores preferences, facts, and reusable context on the user’s machine in SQLite, then exposes that memory through Python, REST, CLI, and MCP so multiple tools can share the same context without a hosted memory service. The README positions it as a third option between forgetful AI sessions and cloud-stored vendor memory: one local memory store that can be queried from Claude Desktop, a Python agent, or command-line workflows. It is useful for power users, developers, and teams experimenting with cross-tool agent memory while keeping data inspectable. Deja Vu is notable because persistent memory is becoming essential for practical agent workflows, but privacy and portability remain unresolved.

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OpenAgentd is a self-hosted AI-agent OS that runs entirely on the user’s machine. It provides a web cockpit, streaming chat, persistent editable memory, tool use, workspace file browsing, image viewing, local voice transcription, scheduling and multi-agent teams with lead-worker delegation. Agents can read and write files, run shell commands, search the web, generate media, manage todos and extend capabilities via skills or MCP servers. The tool is for users who want a local, inspectable alternative to cloud-only agent workspaces. It is notable now because privacy, long-running autonomy and multi-agent coordination are converging into desktop systems rather than isolated chat tabs.

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