memoriaStructured memory system for AI agents. Use when the user wants to store, recall, or search memories, manage session lifecycle (wake/sleep/checkpoint), sync...
Install via ClawdBot CLI:
clawdbot install kitakitsune0x/memoriaGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Potentially destructive shell commands in tool definitions
exec(Calls external URL not in known-safe list
https://github.com/user-attachments/assets/f8385d93-f222-4bc8-b454-0b8829f4d870AI Analysis
The skill definition describes a local memory management system with commands for storing and searching structured data, primarily interfacing with a local vault and Notion. While the rule-based signals mention an external URL and shell commands, the provided text shows no evidence of data exfiltration, credential harvesting, or hidden malicious instructions. The risk is low as the described operations are consistent with the stated purpose.
Audited Apr 17, 2026 · audit v1.0
Generated Mar 22, 2026
An AI assistant uses Memoria to capture user preferences and facts during initial setup, such as name, location, and work details, ensuring personalized interactions from the first session. It proactively stores preferences like 'no emojis in code' to tailor future responses.
A project team employs Memoria to track decisions, commitments, and lessons learned during meetings, syncing to Notion for real-time updates. This helps maintain a structured memory of project milestones and stakeholder relationships across sessions.
Support agents use Memoria to record customer preferences and past issues, enabling consistent service by recalling details like health settings or previous commitments. It aids in proactive memory capture during interactions to improve resolution times.
An AI tutor leverages Memoria to store student learning preferences, lesson insights, and progress commitments, facilitating personalized education plans. It searches past memories before giving advice to adapt teaching strategies effectively.
Healthcare providers integrate Memoria to track patient facts, medication preferences, and treatment decisions, syncing to Notion for secure record-keeping. This ensures continuity of care by recalling critical health details across sessions.
Offer Memoria as a cloud-based service with tiered pricing for individuals, teams, and enterprises, including features like advanced search and Notion sync. Revenue is generated through monthly or annual subscriptions based on storage limits and user seats.
Sell Memoria under enterprise licenses with custom integrations, dedicated support, and enhanced security for large organizations. Revenue comes from one-time license fees or annual contracts tailored to specific industry needs like healthcare or finance.
Provide a free version of Memoria with basic memory storage and search, monetizing through premium add-ons such as Notion sync, advanced analytics, and priority support. Revenue is driven by upselling these features to power users and small businesses.
💬 Integration Tip
Set the MEMORIA_VAULT environment variable at startup to avoid passing the path in every command, and always run 'memoria sync --push' after storing memories to ensure data consistency with Notion.
Scored Apr 19, 2026
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