ops-hygieneStandard operating procedures for agent maintenance, security hygiene, and system health. Use when performing periodic checks, security audits, memory maintenance, secret rotation, dependency updates, or any recurring "housekeeping" tasks. Also use when setting up automated maintenance schedules or when asked about agent security posture.
Install via ClawdBot CLI:
clawdbot install staybased/ops-hygieneGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Calls external URL not in known-safe list
http://localhost:11434/api/tagsAudited Apr 16, 2026 · audit v1.0
Generated Mar 20, 2026
A cybersecurity firm uses this skill to automate periodic security audits and secret scanning for their AI agents, ensuring no sensitive data is exposed in logs or files. It helps maintain compliance with security policies by running daily secret scans and monthly full audits, alerting teams to suspicious activities detected by prompt-guard filters.
A tech company integrates this skill into their DevOps pipeline to manage agent health, dependency updates, and memory hygiene automatically. It uses heartbeat cycles to check system resources, commit workspace changes, and rotate credentials, reducing manual oversight and preventing system decay in production AI environments.
An e-commerce platform employs this skill to maintain AI-powered customer support agents, performing daily log reviews and weekly memory compaction to ensure accurate, up-to-date context. It helps filter untrusted user inputs in real-time, preventing attacks and keeping response quality high through regular prompt-guard updates.
A research institution uses this skill to automate maintenance tasks for AI agents handling sensitive data, running secret scans and security audits to prevent leaks. It supports weekly dependency checks and monthly performance reviews, ensuring agents remain efficient and secure during long-term projects without manual intervention.
Offer this skill as part of a subscription-based platform that provides automated maintenance and security for AI agents, charging monthly fees based on usage tiers. Revenue comes from enterprises needing reliable, hands-off agent hygiene to reduce operational risks and improve uptime.
Provide consulting services to help businesses integrate and customize this skill into their existing AI systems, with one-time setup fees and ongoing support contracts. Revenue is generated through project-based fees and retainer agreements for continuous optimization and incident response.
Release the core skill as open-source to build community adoption, while monetizing premium features like advanced security audits, cloud integration, and priority support. Revenue streams include licensing fees for enterprise versions and paid add-ons for enhanced functionality.
💬 Integration Tip
Integrate this skill by scheduling heartbeat-dispatch.sh via cron jobs or task schedulers, and ensure memory/hygiene-state.json is regularly updated to track task completion and avoid redundant checks.
Scored Apr 19, 2026
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