JAEGIS Agent Activation Logic System Implementation
System Overview
The Agent Activation Logic System provides intelligent, automatic agent activation based on workflow requirements, project characteristics, and full team participation settings. It ensures optimal agent utilization while maintaining workflow efficiency.
Core Architecture
1. Agent Classification Framework
Primary Agents (Always Activated)
PRIMARY_AGENTS = {
"John": {
"title": "Product Manager",
"always_active": True,
"activation_trigger": "workflow_start",
"core_responsibilities": ["business_requirements", "stakeholder_coordination", "value_proposition"],
"activation_priority": 1
},
"Fred": {
"title": "System Architect",
"always_active": True,
"activation_trigger": "workflow_start",
"core_responsibilities": ["technical_architecture", "system_design", "scalability_planning"],
"activation_priority": 1
},
"Tyler": {
"title": "Task Breakdown Specialist",
"always_active": True,
"activation_trigger": "workflow_start",
"core_responsibilities": ["task_decomposition", "acceptance_criteria", "implementation_planning"],
"activation_priority": 1
}
}Secondary Agents (Conditionally Activated)
2. Intelligent Activation Engine
Project Analysis for Agent Selection
3. Activation Decision Engine
Smart Activation Logic
4. Dynamic Activation Adjustment
Runtime Activation Optimization
5. Success Metrics and Validation
Activation Logic Success Criteria
Activation Accuracy: 95% of activated agents provide meaningful contributions
Performance Optimization: Optimal agent selection reduces workflow time by 15%
Quality Enhancement: Agent selection improves output quality by 20%
Resource Efficiency: Intelligent activation reduces unnecessary agent overhead by 30%
User Satisfaction: 90% user satisfaction with agent team composition
Validation Framework
A/B Testing: Compare selective vs. full team activation outcomes
Performance Benchmarking: Measure activation impact on workflow performance
Quality Assessment: Evaluate contribution quality across different activation strategies
User Feedback: Collect user feedback on agent team effectiveness
Implementation Status
โ Agent Classification: Primary and secondary agents clearly defined โ Activation Logic: Intelligent activation based on project analysis โ Integration Scheduling: Phase-based agent integration framework โ Dynamic Adjustment: Runtime optimization and adjustment capabilities โ Performance Prediction: Impact assessment for activation decisions
Next Steps: Implement participation tracking system, create command system, integrate with workflows, and validate complete activation logic functionality.
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