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gnekt/My-Brain-Is-Full-Crew

Built by a PhD whose memory was failing, whose diet was a mess, and whose anxiety had its own agenda. Most second brain tools ignore the fact that your brain doesn't work in isolation: your body and your mental health are part of the system too. This crew handles all three: knowledge, nutrition, and mental wellness.

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What it does

My Brain Is Full is a personal AI system made up of eight or more specialized AI agents that work together to automatically organize your notes, connect related ideas, transcribe conversations, and manage your email — all inside the popular note-taking app Obsidian. What makes it different is that it treats knowledge management, nutrition, and mental wellness as one connected system, not three separate problems.

Why it matters

This project signals a growing market appetite for AI tools that go beyond productivity and address the full human context of knowledge workers — mental health and physical wellbeing included — which is largely unaddressed by tools like Notion AI or Mem. For founders and investors, it's an early signal that the 'second brain' category is expanding from pure note-taking into personal health integration, a much stickier and potentially higher-value product space.

26Active

On the radar — signal detected

Stars
3.2k
Forks
329
Contributors
1
Language
Shell

Score updated Apr 18, 2026

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