Evidence-first automation inventory and overlap audit workflow for ECC. Use when the user wants to know which jobs, hooks, connectors, MCP servers, or wrappers are live, broken, redundant, or missing before fixing anything.
复制安装指令,让 AI 自动完成配置 · 推荐新手
请帮我安装 askskill 上的 "automation-audit-ops" 技能: 1. 下载 https://raw.githubusercontent.com/affaan-m/ECC/main/skills/automation-audit-ops/SKILL.md 2. 保存为 ~/.claude/skills/automation-audit-ops/SKILL.md 3. 装好后重载技能,告诉我可以用了
Use this when the user asks what automations are live, which jobs are broken, where overlap exists, or what tooling and connectors are actually doing useful work right now.
This is an audit-first operator skill. The job is to produce an evidence-backed inventory and a keep / merge / cut / fix-next recommendation set before rewriting anything.
Pull these ECC-native skills into the workflow when relevant:
workspace-surface-audit for connector, MCP, hook, and app inventoryknowledge-ops when the audit needs to reconcile live repo truth with durable contextgithub-ops when the answer depends on CI, scheduled workflows, issues, or PR automationecc-tools-cost-audit when the real problem is webhook fanout, queued jobs, or billing burn in the sibling app reporesearch-ops when local inventory must be compared against current platform support or public docsverification-loop for proving post-fix state instead of relying on assumed recoveryRead the current live surface before theorizing:
Group them by surface:
For every surfaced automation, mark:
Then classify the problem type:
Back every important claim with a concrete source:
If the current state is ambiguous, say so directly instead of pretending the audit is complete.
For each overlapping or suspect surface, return one call:
The value is in collapsing noisy automation into one canonical ECC lane, not in preserving every historical path.
CURRENT SURFACE
- automation
- source
- live state
- proof
FINDINGS
- active breakage
- overlap
- stale status
- missing capability
RECOMMENDATION
- keep
- merge
- cut
- fix next
NEXT ECC MOVE
- exact skill / hook / workflow / app lane to strengthen
在每次编辑代码时自动格式化、检查并智能修复质量问题
提供 TypeScript、Python 与 Go 的健壮错误处理模式与用户提示策略
用于审计 Claude 技能与命令质量,支持快速扫描和全量盘点评估。
帮助零售团队进行需求预测、库存优化与多门店补货规划决策。
帮助开发者与设计师实现 iOS 液态玻璃动态界面与交互效果。
自动录制专业感网页应用界面演示视频,适合讲解、教程与产品展示