memory-gardenN-count validated knowledge for AI agents. Patterns that prove themselves through repeated use. Local-first, community-ready.
Install via ClawdBot CLI:
clawdbot install leegitw/memory-gardenGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Accesses system directories or attempts privilege escalation
/proc/Calls external URL not in known-safe list
https://github.com/live-neon/memory-gardenAI Analysis
The skill downloads and runs a local daemon from GitHub, which is consistent with its open-source, local-first stated purpose. While downloading and executing binaries always carries some risk, the repository appears legitimate and the skill does not show evidence of unauthorized data exfiltration, credential harvesting, or hidden malicious instructions.
Audited Apr 17, 2026 · audit v1.0
Generated Apr 30, 2026
A customer support team uses Memory Garden to capture validated solutions from support tickets. As patterns prove useful (N-count increases), agents automatically retrieve them, reducing response time and ensuring consistent answers.
Engineering teams record debugging patterns and code fixes. When a similar issue resurfaces, the system surfaces the validated solution, accelerating bug resolution and knowledge sharing across the team.
Clinicians log diagnostic patterns and treatment outcomes. Over time, high-N-count patterns become trusted references for rare conditions, helping doctors make informed decisions faster.
Legal professionals store arguments and rulings that proved effective. Memory Garden retrieves relevant validated case law and strategies, improving research efficiency and case preparation.
Factory technicians record recurring machine failures and their fixes. The system surfaces validated repair patterns, reducing downtime and standardizing maintenance procedures.
Offer the base Memory Garden for free, with paid tiers for advanced features like P2P sync, enterprise SSO, and dedicated support. Revenue comes from subscription fees for these premium capabilities.
Provide a fully managed cloud version of Memory Garden where users avoid self-hosting. Revenue is generated through monthly or annual per-user licensing fees and storage tiers.
Offer professional services to integrate Memory Garden into existing workflows, customize extraction pipelines, and train teams. Revenue comes from one-time consulting fees and ongoing maintenance contracts.
💬 Integration Tip
Set MG_EXTRACTION_ENABLED=false and MG_DAEMON_URL to your daemon address to get started quickly. The daemon starts automatically, so you can focus on using the search and validation tools immediately.
Scored Apr 19, 2026
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