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anomaly-scan

@indranilbanerjee · 收录于 1 周前

Detect marketing anomalies. Use when: traffic drops, cost spikes, conversion changes, deliverability issues, budget overruns.

适合你,如果负责营销数据分析,需要快速发现异常指标

/ 下载安装
anomaly-scan.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add indranilbanerjee/digital-marketing-pro/anomaly-scan
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- indranilbanerjee/digital-marketing-pro/anomaly-scan
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify indranilbanerjee/digital-marketing-pro/anomaly-scan
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
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怎么用

技能原文 SKILL.md作者撰写 · MIT · ba1468e

/digital-marketing-pro:anomaly-scan

Purpose

Scan all connected marketing platforms for anomalies — statistically significant deviations from established baselines that could indicate problems (traffic drops, CPA spikes, deliverability collapse, budget overruns) or opportunities (viral content, conversion rate improvements, unexpected channel growth). Designed to catch issues early, before they compound into costly problems, and to surface wins worth amplifying.

Input Required

The user must provide (or will be prompted for):

  • Sensitivity level: Strict (flags deviations >1.5 standard deviations from baseline), normal (>2 std dev), or relaxed (>3 std dev). Defaults to normal
  • Time period: The window to scan for anomalies — today, last 3 days, last 7 days, last 30 days, or custom range. Defaults to last 7 days
  • Platforms (optional): Specific platforms to focus the scan on (e.g., "Google Ads and Meta only"). If omitted, all connected platforms are scanned
  • Metrics focus (optional): Specific metrics to prioritize (e.g., "CPA and conversion rate only"). If omitted, all available metrics are evaluated
  • Baseline period (optional): Custom baseline for comparison instead of the default. Defaults to the rolling 30-day average maintained by performance-monitor.py
  • Exclude known events (optional): List of known events to filter out (e.g., "Black Friday sale", "site migration on Jan 15") so expected deviations are not flagged as anomalies
Process
  1. Load brand context: Read ~/.claude-marketing/brands/_active-brand.json for the active slug, then load ~/.claude-marketing/brands/{slug}/profile.json. Apply brand voice, compliance rules for target markets (skills/context-engine/compliance-rules.md), and industry context. Also check for guidelines at ~/.claude-marketing/brands/{slug}/guidelines/_manifest.json — if present, load restrictions. Check for agency SOPs at ~/.claude-marketing/sops/. If no brand exists, ask: "Set up a brand first (/digital-marketing-pro:brand-setup)?" — or proceed with defaults.
  2. Pull current metrics from all connected MCPs: Query each connected analytics platform (google-analytics, google-ads, meta-marketing, linkedin-marketing, tiktok-ads, mailchimp, stripe, mixpanel, amplitude, shopify, etc.) for all available metrics across the specified scan period. Include traffic, spend, conversions, CPA, ROAS, engagement rates, deliverability, and revenue metrics.
  3. Load historical baselines: Execute scripts/performance-monitor.py --brand {slug} --action get-baseline to retrieve rolling averages, standard deviations, and expected ranges for each metric. If no baseline exists yet, use the comparison period data to establish a temporary baseline and note this in the output.
  4. Run anomaly detection: Execute scripts/performance-monitor.py --brand {slug} --action detect-anomalies --sensitivity {level} to flag metrics that fall outside expected ranges based on the chosen sensitivity threshold. Apply day-of-week and seasonality adjustments where historical data supports it.
  5. Cross-reference with recent executions: Check execution history via scripts/execution-tracker.py --brand {slug} --action get-history --days 14 to correlate anomalies with recent changes — did a campaign launch, pause, budget shift, creative swap, landing page change, or audience expansion precede the anomaly?
  6. Cross-reference with known factors: Check for known platform outages, algorithm updates (Google core updates, Meta policy changes), industry events, seasonal patterns, and any user-provided known events that could explain the deviation.
  7. Classify anomalies by severity: Critical (revenue-impacting, requires immediate action — tracking broken, CPA 3x+ baseline, budget overspend >20%, deliverability below 80%), Warning (significant deviations worth investigating within 24 hours — traffic down 30%+, engagement halved, CTR dropped 40%+), or Info (notable but non-urgent — gradual trend shifts, minor CPA increases, seasonal patterns emerging).
  8. Determine probable causes: For each anomaly, analyze root causes using the diagnostic framework from skills/analytics-insights/anomaly-diagnosis.md. Categorize as data/tracking issue, external factor (algorithm update, competitor action, seasonal shift), internal change (campaign modification, landing page update), or platform change (policy update, feature deprecation, auction dynamics shift).
  9. Save critical anomalies as insights: For critical and warning-level anomalies, persist via scripts/campaign-tracker.py --brand {slug} --action add-insight so they are tracked, surface in future reports, and can be referenced in post-mortems.
Output

A structured anomaly report containing:

  • Scan summary: Platforms scanned, time period analyzed, sensitivity level used, baseline period, total anomalies detected (by severity), and overall marketing health assessment (healthy, caution, or critical)
  • Critical anomalies (if any): Metric name, platform, expected range (mean +/- threshold), actual value, deviation magnitude (in std devs and percentage), probable cause, estimated revenue impact, and recommended immediate action
  • Warning anomalies: Same structure as critical, with recommended investigation steps and a 24-hour action plan for each
  • Info anomalies: Notable deviations worth monitoring with watch criteria — what to look for to determine if the trend continues or reverses
  • Correlation analysis: Connections between anomalies and recent execution history — which changes may have caused which deviations, with confidence levels (strong, possible, unlikely)
  • Platform health summary: Per-platform health indicator (green/yellow/red) based on the number and severity of anomalies detected, plus a trend vs the last scan if previous scan data exists
  • Recommended actions: Priority-ordered list of responses — immediate fixes for critical issues, investigations for warnings, monitoring adjustments for info items, and any baseline recalibrations needed
  • Baseline update notes: Whether any baselines need recalibration due to structural changes (e.g., new campaign launched, channel added, seasonal shift, or pricing change that permanently alters expected ranges)
Agents Used
  • performance-monitor-agent — Anomaly detection engine, baseline management, statistical threshold evaluation, historical trend analysis, severity classification, and seasonality adjustment
  • analytics-analyst — Root cause interpretation, cross-platform correlation, contextual analysis (seasonality, algorithm updates, competitive shifts), impact estimation, and actionable recommendation generation
按 MIT 许可原样转载,未经改动 · 在 GitHub 查看 →

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