--- name: crisis-detector description: Identify early warning signals of potential PR crises through pattern recognition, escalation triggers, and risk assessment license: MIT metadata: author: ClawFu version: 1.0.0 mcp-server: "@clawfu/mcp-skills" --- # Crisis Detector > Identify early warning signs of potential crises before they escalate through pattern recognition, signal monitoring, and risk assessment. ## When to Use This Skill - Setting up early warning systems - Assessing crisis probability - Training teams on signals - Building escalation criteria - Post-crisis prevention planning ## Methodology Foundation Based on **Institute for Crisis Management research** and **Burson crisis frameworks**, combining: - Signal identification - Pattern recognition - Risk assessment matrices - Escalation protocols ## What Claude Does vs What You Decide | Claude Does | You Decide | |-------------|------------| | Identifies warning signals | Risk tolerance | | Assesses crisis probability | Response resources | | Creates detection criteria | Escalation authority | | Designs monitoring systems | Communication strategy | | Suggests response triggers | Final action calls | ## Instructions ### Step 1: Map Crisis Types **Crisis Categories:** | Category | Examples | Warning Time | |----------|----------|--------------| | **Operational** | Outage, product failure | Hours to days | | **Reputational** | Executive scandal, viral complaint | Minutes to hours | | **Legal/Regulatory** | Lawsuit, investigation | Days to weeks | | **Financial** | Earnings miss, fraud | Hours to days | | **Human** | Workplace incident, harassment | Hours to days | | **External** | Natural disaster, market crash | Variable | ### Step 2: Identify Early Signals **Signal Types:** | Signal Type | Examples | Monitoring | |-------------|----------|------------| | **Internal** | Employee complaints, support tickets | HR, Support data | | **Customer** | Review patterns, churn spikes | CX metrics | | **Social** | Mention volume, sentiment shift | Social tools | | **Media** | Press inquiries, journalist interest | PR inbox | | **Regulatory** | Compliance notices, audit findings | Legal | | **Financial** | Payment disputes, refund requests | Finance | ### Step 3: Build Detection Matrix **Signal Strength Assessment:** | Signal | Weak | Moderate | Strong | Critical | |--------|------|----------|--------|----------| | Volume spike | +25% | +50% | +100% | +300% | | Sentiment shift | -10% | -20% | -30% | -50% | | Media inquiries | 1 | 2-3 | 4-5 | 6+ | | Support tickets | +10% | +25% | +50% | +100% | | Social influencer | 10K | 50K | 100K | 500K+ | ### Step 4: Create Escalation Triggers **Trigger Framework:** | Level | Signals Present | Action | |-------|-----------------|--------| | Watch | 1 moderate signal | Monitor closely | | Alert | 2+ moderate or 1 strong | Notify team | | Warning | Multiple strong signals | Assemble team | | Crisis | Any critical signal | Activate protocol | ### Step 5: Document and Improve **Post-Detection Review:** - How early did we detect? - What signals did we miss? - How accurate was assessment? - What should we add to monitoring? ## Examples ### Example 1: Crisis Detection System Design **Input:** ``` Design a crisis detection system for: - E-commerce company (clothing) - 500K customers - Active on Instagram, TikTok, Twitter - Past issue: Shipping delays during holiday ``` **Output:** ``` ## Crisis Detection System: E-Commerce Fashion ### Crisis Risk Map | Crisis Type | Probability | Impact | Priority | |-------------|-------------|--------|----------| | Shipping delays | High | High | P1 | | Product quality issue | Medium | High | P1 | | Social media backlash | Medium | High | P1 | | Data breach | Low | Critical | P1 | | Influencer controversy | Medium | Medium | P2 | | Supply chain disruption | Medium | High | P2 | | Payment fraud | Low | Medium | P3 | --- ### Early Warning Signals #### P1: Shipping Delays **Leading Indicators (3-5 days before crisis):** | Signal | Source | Threshold | |--------|--------|-----------| | Carrier delay reports | Logistics API | >10% delayed | | Warehouse backlog | WMS data | >24hr processing | | Weather events | News/weather | Storm in hub | | "Where's my order" tickets | Support | +50% daily | **Lagging Indicators (crisis starting):** | Signal | Source | Threshold | |--------|--------|-----------| | Social mentions | Social listening | "shipping" +100% | | Review mentions | Trustpilot/G2 | Shipping 3/5 stars | | Refund requests | Payment system | +30% | | Chargeback rate | Payment processor | >1% | --- #### P1: Product Quality Issue **Leading Indicators:** | Signal | Source | Threshold | |--------|--------|-----------| | Return rate spike | Returns data | >10% on SKU | | Quality complaints | Support tickets | 3+ same issue | | Photo complaints | Social | "damaged", "wrong color" | | Batch-specific issues | QC data | Same lot number | **Lagging Indicators:** | Signal | Source | Threshold | |--------|--------|-----------| | Viral unboxing | TikTok/Instagram | >10K views negative | | Review bomb | Product pages | Multiple 1-stars | | Media inquiry | PR inbox | Journalist question | --- #### P1: Social Media Backlash **Leading Indicators:** | Signal | Source | Threshold | |--------|--------|-----------| | Sentiment shift | Social tools | -20% in 24hr | | Controversial post | Your social | Negative comments >10% | | Influencer complaint | Social | >50K follower post | | Screenshot spreading | Twitter/Reddit | Same image 5+ times | **Lagging Indicators:** | Signal | Source | Threshold | |--------|--------|-----------| | Viral negative | Any platform | >50K engagements | | Hashtag trending | Twitter | Brand + negative | | Media pickup | News sites | Article published | | Competitor amplification | Social | Competitor sharing | --- ### Detection Dashboard ``` ┌──────────────────────────────────────────────────────────┐ │ CRISIS DETECTION DASHBOARD 🟢 NORMAL │ ├──────────────────────────────────────────────────────────┤ │ │ │ SHIPPING STATUS 🟢 Normal │ │ ├─ Carrier delays: 3% (threshold: 10%) │ │ ├─ Backlog: 4 hours (threshold: 24hr) │ │ └─ "Where's my order": 45 (baseline: 50) │ │ │ │ PRODUCT QUALITY 🟢 Normal │ │ ├─ Return rate: 5.2% (threshold: 10%) │ │ ├─ Quality tickets: 2 (threshold: 3+ same) │ │ └─ Photo complaints: 1 (threshold: 5) │ │ │ │ SOCIAL SENTIMENT 🟡 Watch │ │ ├─ Sentiment: -15% (threshold: -20%) │ │ ├─ Volume: +40% (threshold: +50%) │ │ └─ Influencer: None flagged │ │ │ │ SECURITY 🟢 Normal │ │ ├─ Login anomalies: Normal │ │ └─ Payment fraud: 0.3% │ │ │ └──────────────────────────────────────────────────────────┘ ``` --- ### Escalation Matrix | Level | Criteria | Notification | Response | |-------|----------|--------------|----------| | 🟢 Normal | All metrics in range | None | Standard ops | | 🟡 Watch | 1 metric at threshold | Slack alert | Increased monitoring | | 🟠 Alert | 2+ metrics or 1 exceeded | Team notification | Standby team | | 🔴 Crisis | Critical threshold breached | All-hands alert | Activate protocol | --- ### Alert Routing | Signal Type | Primary | Backup | Escalation | |-------------|---------|--------|------------| | Shipping | Operations | COO | CEO | | Product quality | Product | VP Ops | CEO | | Social media | Marketing | CMO | CEO | | Security | IT | CTO | CEO + Legal | | Legal/PR | Legal | CEO | Board | --- ### Holiday Season Adjustments During high-volume periods (Nov 15 - Dec 31): | Metric | Normal Threshold | Holiday Threshold | |--------|------------------|-------------------| | Carrier delays | 10% | 15% | | Support volume | +50% | +100% | | Social volume | +50% | +75% | | Response time | 4 hours | 8 hours | **Rationale:** Higher baseline expected; adjust to avoid false alerts while maintaining genuine crisis detection. ``` ### Example 2: Real-Time Crisis Assessment **Input:** ``` Assess this situation: - Support tickets up 80% in 2 hours - Twitter mentions up 150% - Hashtag #[Brand]Scam trending locally - 3 refund requests mentioning "charged twice" - No known system issues ``` **Output:** ``` ## Crisis Assessment: Potential Payment Issue ### Alert Level: 🔴 CRISIS --- ### Signal Analysis | Signal | Value | Normal | Status | |--------|-------|--------|--------| | Support spike | +80% | <25% | CRITICAL | | Social spike | +150% | <50% | CRITICAL | | Trending hashtag | Yes | No | CRITICAL | | Duplicate charge reports | 3 | 0 | CONCERNING | --- ### Probable Cause **Most likely: Payment processing error** Evidence: 1. Multiple "charged twice" complaints 2. No known system issues rules out outage 3. Sudden spike suggests batch problem 4. #Scam hashtag = customers think fraud --- ### Immediate Actions | Priority | Action | Owner | Timeline | |----------|--------|-------|----------| | 1 | Check payment processor logs | Engineering | NOW | | 2 | Identify affected transactions | Finance | 30 min | | 3 | Prepare holding statement | Comms | 15 min | | 4 | Alert customer service team | CX Lead | NOW | | 5 | Monitor hashtag spread | Social | Ongoing | --- ### Holding Statement (Draft) ``` We're aware some customers may have experienced duplicate charges. Our team is investigating urgently. If you've been affected, please DM us or email [support] - we'll make this right immediately. Updates to follow shortly. ``` --- ### Escalation Path **Now:** CTO + CFO + CMO notified **+30 min:** CEO briefing if not resolved **+1 hour:** External statement if ongoing --- ### Crisis Trajectory **If unaddressed (next 2-4 hours):** - Hashtag goes national - Media inquiries begin - Trust pilot review bomb - Social influencers amplify **If addressed quickly (next 1-2 hours):** - Contain to affected customers - Flip narrative to "responsive company" - Prevent media escalation - Build goodwill through fast resolution --- ### Resolution Checklist - [ ] Root cause identified - [ ] Affected customers identified - [ ] Refunds initiated - [ ] Proactive communication sent - [ ] Social response deployed - [ ] Hashtag monitoring active - [ ] Post-incident review scheduled ``` ## Skill Boundaries ### What This Skill Does Well - Identifying early warning signals - Creating detection frameworks - Assessing crisis probability - Designing escalation systems ### What This Skill Cannot Do - Access your actual systems - Monitor in real-time - Make response decisions - Know your specific thresholds ## Iteration Guide **Follow-up Prompts:** - "Design detection for [specific crisis type]" - "Create escalation protocol for [scenario]" - "What signals should we add for [risk]?" - "How do we prevent [past crisis] from recurring?" ## References - Institute for Crisis Management - Burson Crisis Playbook - Harvard Business Review Crisis Research - Edelman Trust Barometer ## Related Skills - `social-listening` - Monitoring systems - `response-coordinator` - Crisis response - `reputation-recovery` - Post-crisis rebuild ## Skill Metadata - **Domain**: Crisis - **Complexity**: Intermediate-Advanced - **Mode**: centaur - **Time to Value**: 2-4 hours for system design - **Prerequisites**: Access to metrics, stakeholder alignment