agent-audit-trailProvides tamper-evident, append-only, hash-chained audit logs for AI agents verifying actions with monotonic ordering and integrity checks.
Install via ClawdBot CLI:
clawdbot install roosch269/agent-audit-trailGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Calls external URL not in known-safe list
https://github.com/roosch269Uses known external API (expected, informational)
api.openai.comAudited Apr 16, 2026 · audit v1.0
Generated Mar 20, 2026
A fintech company uses this skill to automatically log all AI-driven trading decisions and file modifications, ensuring tamper-evident records for regulatory audits under the EU AI Act. It helps demonstrate compliance with Article 12 by providing hash-chained logs that verify the integrity of financial transactions and decision-making processes.
A healthcare provider integrates the skill to audit AI interactions with patient records and medical decisions, logging events like file-writes and disclosures to meet data protection regulations. The tamper-evident chain ensures patient data integrity and supports human oversight for critical medical overrides.
An IT operations team employs the skill to track AI agent actions in production environments, such as exec commands and API calls, for security incident response and compliance. The verify command quickly detects unauthorized modifications, aiding in breach investigations and maintaining system trust.
A law firm uses the skill to log AI-generated document creations and edits, providing an auditable trail for legal accountability and client transparency. It maps to EU AI Act Article 50 by offering human-readable logs that verify the chronological order and integrity of legal filings.
An e-commerce platform implements the skill to audit AI decisions on fraud alerts and credential accesses, ensuring tamper-evident records for regulatory compliance and internal reviews. The gate flag links actions to human approvals, facilitating oversight in high-risk financial operations.
Offer the audit trail skill as a cloud-based service with tiered pricing based on log volume and compliance features, targeting enterprises needing EU AI Act compliance. Revenue streams include monthly subscriptions and premium support for integration and verification services.
Provide professional services to help companies integrate the skill into their AI systems, offering customization, training, and compliance audits. Revenue is generated through project-based fees and ongoing maintenance contracts for regulatory updates.
Distribute the skill under an MIT license for free use, while selling enterprise add-ons like advanced analytics, priority support, and enhanced security features. Revenue comes from licensing these premium extensions to large organizations.
💬 Integration Tip
Start by adding the script to your workspace and logging basic actions like file-writes, then gradually incorporate verification checks into your agent's heartbeat for automated integrity monitoring.
Scored Apr 19, 2026
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