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Quality Defect Assistant

Use Case: Product Defect Analysis

Scenario: Production finds batch of defective units User Query: “We have 23 units with cracks in corner. Is this a known issue?” Agent Response:
  1. Searches knowledge base for “corner cracks”
  2. Finds 3 past occurrences
  3. Reviews root causes (mold issue, temperature)
  4. Provides: “This matches defects from March (cause: mold temp too low) and July (cause: pressure too high)”
  5. Suggests: “Check mold temperature setting immediately”
  6. Recommends: “Create preventive maintenance task for mold calibration”
Result: Issue identified and solved in 5 minutes instead of hours

Safety Incident Responder

Use Case: On-Site Injury

Scenario: Minor injury in facility User Query: “Employee cut hand on machinery. What’s the procedure?” Agent Response:
  1. Automatically escalates to Safety Manager
  2. Retrieves safety procedures
  3. Provides:
    • First aid instructions
    • Incident report steps
    • Notification requirements
    • OSHA documentation needs
  4. Creates incident claim (Critical)
  5. Notifies executive (auto-escalation)
Result: Proper protocol followed, compliance documented, leadership notified

Maintenance Specialist

Use Case: Equipment Troubleshooting

Scenario: Production line down, technician needs help Technician Query: “Hydraulic pump making noise and pressure dropping. What do I do?” Agent Response:
  1. Searches past maintenance records
  2. Finds similar issues (3 times in past year)
  3. Provides step-by-step:
    • Check pressure gauge (if below 300 bar, likely internal leak)
    • Inspect hose connections (leaks)
    • Listen to pump (bearing wear sound)
    • Check oil level (low = air in system)
  4. References equipment manual
  5. Suggests part numbers if replacement needed
  6. Provides: “Had same issue Feb 2024, replaced seal kit #42857”
Result: Technician fixes problem in 30 minutes with guided help

Logistics Support Agent

Use Case: Supplier Delay Investigation

Scenario: Shipment delayed, impacting production Logistics Query: “XYZ Supplier hasn’t shipped order #54321. What’s our history with them?” Agent Response:
  1. Searches past logistics claims
  2. Finds 5 past delays from XYZ Supplier
  3. Analyzes patterns:
    • 4 delays in last 6 months
    • Average delay: 3 days
    • Root cause: “Supplier capacity issues”
  4. References: “Used alternate supplier ABC before, worked well”
  5. Recommends:
    • Call XYZ for status
    • If >24 hour delay, switch to ABC
    • Consider supplier diversification strategy
  6. Suggests preventive action: “Set up dual-source for this part”
Result: Alternative arranged, production continues

Manager Assistant

Use Case: Daily Standup

Manager Query: “Quick summary - what’s our status today?” Agent Response (in seconds):
  1. Pulls today’s metrics:
    • 8 new claims (average 10/day)
    • 12 resolved (on pace)
    • SLA compliance: 92% (good)
    • 2 claims at-risk (list them)
    • No overdue claims
  2. Workload status:
    • Team average: 4 claims per person (good)
    • John: 7 claims (needs help?)
    • Sarah: 2 claims (can take more)
  3. Trends:
    • Quality claims down 15% (good)
    • Maintenance claims up 20% (check aging equipment?)
  4. Top issues today:
    • 1 Safety claim (appropriate escalation)
    • 2 Maintenance (John handling)
Result: Manager has complete picture for standup in 30 seconds

Executive Summary Agent

Use Case: Weekly Board Report

Executive Query: “How did we do this week?” Agent Response:
  1. Volume: 47 claims (5% above normal)
  2. Speed: Average resolution 18 hours (vs 20 hours normal)
  3. Compliance: 91% SLA compliance (target 90%)
  4. Safety: 2 safety claims, both resolved
  5. Trends: Quality down 12%, maintenance up 8%
  6. Staffing: Quality team performing well, Maintenance may need help
  7. Action items: Consider additional maintenance hiring
  8. Recommendation: “Continue current operations, plan for maintenance expansion”
Result: Executive gets strategic insights for board meeting

Common Agent Interactions

Quick Lookup

User: “Show me all overdue claims” Agent: Lists immediately with details

Pattern Analysis

User: “Why are we having so many equipment issues?” Agent: Analyzes data, finds root cause, suggests prevention

Escalation Support

User: “This claim is complex, need help deciding what to do” Agent: Provides context, similar past cases, recommendations

Training Support

User: “How do I calibrate the hydraulic press?” Agent: Retrieves procedure, provides step-by-step guidance

Decision Making

User: “Should we buy replacement equipment or keep repairing?” Agent: Analyzes repair cost history, failure patterns, recommendations

Agent Effectiveness Metrics

Track per agent:
  • Usage frequency: How often called
  • User satisfaction: Are responses helpful?
  • Accuracy: Are suggestions correct?
  • Time saved: How much faster with agent?
  • Actions taken: Do users implement suggestions?
Adjust agents based on metrics:
  • Low usage: Agent not solving real problem
  • Low satisfaction: Improve system prompt or knowledge base
  • High accuracy: Keep as is, share best practices
  • High satisfaction: Consider expanding scope

Next Steps