surrealdb-knowledge-graph-memoryA comprehensive knowledge graph memory system with semantic search, episodic memory, working memory, automatic context injection, and per-agent isolation.
Install via ClawdBot CLI:
clawdbot install maverick-software/surrealdb-knowledge-graph-memoryGrade Good — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Accesses sensitive credential files or environment variables
${OPENAICalls external URL not in known-safe list
https://clawhub.com/skills/surrealdb-knowledge-graph-memoryAI Analysis
The skill requires explicit user environment variables (OpenAI, SurrealDB) for its stated purpose of knowledge graph operations and semantic search, which is consistent and documented. The external URL reference is a public, documented homepage link, not an active data exfiltration endpoint. The primary risk is the standard data processing risk of sending workspace content to the user's own configured OpenAI API, not to unauthorized servers.
Audited Apr 16, 2026 · audit v1.0
Generated Mar 13, 2026
An AI customer support agent uses this skill to remember past interactions, product details, and customer preferences. It automatically injects relevant context from previous tickets, improving response accuracy and personalization over time without manual training.
A research assistant AI stores findings, papers, and hypotheses in a knowledge graph. It correlates new data with existing knowledge, helping researchers discover connections and avoid redundant work through semantic search and scheduled relation discovery.
A medical AI agent records patient histories, symptoms, and treatment outcomes in episodic memory. It uses confidence-weighted facts and auto-injection to provide doctors with relevant past cases and evidence-based insights, improving diagnostic accuracy over time.
An AI legal assistant stores case laws, regulations, and client information in a knowledge graph. It automatically links related legal precedents and updates confidence based on outcomes, aiding lawyers in research and compliance checks with minimal manual input.
A tutoring AI tracks student progress, mistakes, and learning patterns through working memory and episodic records. It injects tailored context from past sessions to adapt lessons and recommend resources, enabling continuous improvement in educational outcomes.
Offer this skill as part of a paid platform where businesses deploy AI agents with self-improving memory. Charge monthly fees based on usage tiers, such as the number of agents or data volume processed, ensuring recurring revenue from continuous value addition.
Provide consulting services to integrate this skill into existing AI systems for enterprises. Offer tailored setups, training, and support, generating revenue through project-based fees and ongoing maintenance contracts for complex deployments.
Distribute this skill on a marketplace with a free basic version and premium features like advanced analytics or higher cron job frequencies. Monetize through upgrades and add-ons, targeting developers and small teams looking to scale their AI capabilities.
💬 Integration Tip
Ensure all required environment variables and binaries are configured, and review security documentation before enabling cron jobs to avoid data leaks.
Scored Apr 19, 2026
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