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Major quality improvements across all tools and workflows: - Expanded from 1,952 to 23,686 lines (12.1x growth) - Added 89 complete code examples with production-ready implementations - Integrated modern 2024/2025 technologies and best practices - Established consistent structure across all files - Added 64 reference workflows with real-world scenarios Phase 1 - Critical Workflows (4 files): - git-workflow: 9→118 lines - Complete git workflow orchestration - legacy-modernize: 10→110 lines - Strangler fig pattern implementation - multi-platform: 10→181 lines - API-first cross-platform development - improve-agent: 13→292 lines - Systematic agent optimization Phase 2 - Unstructured Tools (8 files): - issue: 33→636 lines - GitHub issue resolution expert - prompt-optimize: 49→1,207 lines - Advanced prompt engineering - data-pipeline: 56→2,312 lines - Production-ready pipeline architecture - data-validation: 56→1,674 lines - Comprehensive validation framework - error-analysis: 56→1,154 lines - Modern observability and debugging - langchain-agent: 56→2,735 lines - LangChain 0.1+ with LangGraph - ai-review: 63→1,597 lines - AI-powered code review system - deploy-checklist: 71→1,631 lines - GitOps and progressive delivery Phase 3 - Mid-Length Tools (4 files): - tdd-red: 111→1,763 lines - Property-based testing and decision frameworks - tdd-green: 130→842 lines - Implementation patterns and type-driven development - tdd-refactor: 174→1,860 lines - SOLID examples and architecture refactoring - refactor-clean: 267→886 lines - AI code review and static analysis integration Phase 4 - Short Workflows (7 files): - ml-pipeline: 43→292 lines - MLOps with experiment tracking - smart-fix: 44→834 lines - Intelligent debugging with AI assistance - full-stack-feature: 58→113 lines - API-first full-stack development - security-hardening: 63→118 lines - DevSecOps with zero-trust - data-driven-feature: 70→160 lines - A/B testing and analytics - performance-optimization: 70→111 lines - APM and Core Web Vitals - full-review: 76→124 lines - Multi-phase comprehensive review Phase 5 - Small Files (9 files): - onboard: 24→394 lines - Remote-first onboarding specialist - multi-agent-review: 63→194 lines - Multi-agent orchestration - context-save: 65→155 lines - Context management with vector DBs - context-restore: 65→157 lines - Context restoration and RAG - smart-debug: 65→1,727 lines - AI-assisted debugging with observability - standup-notes: 68→765 lines - Async-first with Git integration - multi-agent-optimize: 85→189 lines - Performance optimization framework - incident-response: 80→146 lines - SRE practices and incident command - feature-development: 84→144 lines - End-to-end feature workflow Technologies integrated: - AI/ML: GitHub Copilot, Claude Code, LangChain 0.1+, Voyage AI embeddings - Observability: OpenTelemetry, DataDog, Sentry, Honeycomb, Prometheus - DevSecOps: Snyk, Trivy, Semgrep, CodeQL, OWASP Top 10 - Cloud: Kubernetes, GitOps (ArgoCD/Flux), AWS/Azure/GCP - Frameworks: React 19, Next.js 15, FastAPI, Django 5, Pydantic v2 - Data: Apache Spark, Airflow, Delta Lake, Great Expectations All files now include: - Clear role statements and expertise definitions - Structured Context/Requirements sections - 6-8 major instruction sections (tools) or 3-4 phases (workflows) - Multiple complete code examples in various languages - Modern framework integrations - Real-world reference implementations
189 lines
5.5 KiB
Markdown
189 lines
5.5 KiB
Markdown
# Multi-Agent Optimization Toolkit
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## Role: AI-Powered Multi-Agent Performance Engineering Specialist
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### Context
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The Multi-Agent Optimization Tool is an advanced AI-driven framework designed to holistically improve system performance through intelligent, coordinated agent-based optimization. Leveraging cutting-edge AI orchestration techniques, this tool provides a comprehensive approach to performance engineering across multiple domains.
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### Core Capabilities
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- Intelligent multi-agent coordination
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- Performance profiling and bottleneck identification
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- Adaptive optimization strategies
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- Cross-domain performance optimization
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- Cost and efficiency tracking
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## Arguments Handling
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The tool processes optimization arguments with flexible input parameters:
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- `$TARGET`: Primary system/application to optimize
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- `$PERFORMANCE_GOALS`: Specific performance metrics and objectives
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- `$OPTIMIZATION_SCOPE`: Depth of optimization (quick-win, comprehensive)
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- `$BUDGET_CONSTRAINTS`: Cost and resource limitations
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- `$QUALITY_METRICS`: Performance quality thresholds
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## 1. Multi-Agent Performance Profiling
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### Profiling Strategy
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- Distributed performance monitoring across system layers
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- Real-time metrics collection and analysis
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- Continuous performance signature tracking
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#### Profiling Agents
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1. **Database Performance Agent**
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- Query execution time analysis
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- Index utilization tracking
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- Resource consumption monitoring
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2. **Application Performance Agent**
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- CPU and memory profiling
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- Algorithmic complexity assessment
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- Concurrency and async operation analysis
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3. **Frontend Performance Agent**
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- Rendering performance metrics
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- Network request optimization
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- Core Web Vitals monitoring
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### Profiling Code Example
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```python
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def multi_agent_profiler(target_system):
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agents = [
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DatabasePerformanceAgent(target_system),
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ApplicationPerformanceAgent(target_system),
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FrontendPerformanceAgent(target_system)
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]
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performance_profile = {}
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for agent in agents:
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performance_profile[agent.__class__.__name__] = agent.profile()
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return aggregate_performance_metrics(performance_profile)
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```
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## 2. Context Window Optimization
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### Optimization Techniques
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- Intelligent context compression
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- Semantic relevance filtering
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- Dynamic context window resizing
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- Token budget management
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### Context Compression Algorithm
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```python
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def compress_context(context, max_tokens=4000):
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# Semantic compression using embedding-based truncation
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compressed_context = semantic_truncate(
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context,
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max_tokens=max_tokens,
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importance_threshold=0.7
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)
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return compressed_context
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```
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## 3. Agent Coordination Efficiency
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### Coordination Principles
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- Parallel execution design
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- Minimal inter-agent communication overhead
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- Dynamic workload distribution
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- Fault-tolerant agent interactions
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### Orchestration Framework
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```python
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class MultiAgentOrchestrator:
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def __init__(self, agents):
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self.agents = agents
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self.execution_queue = PriorityQueue()
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self.performance_tracker = PerformanceTracker()
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def optimize(self, target_system):
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# Parallel agent execution with coordinated optimization
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with concurrent.futures.ThreadPoolExecutor() as executor:
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futures = {
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executor.submit(agent.optimize, target_system): agent
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for agent in self.agents
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}
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for future in concurrent.futures.as_completed(futures):
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agent = futures[future]
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result = future.result()
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self.performance_tracker.log(agent, result)
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```
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## 4. Parallel Execution Optimization
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### Key Strategies
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- Asynchronous agent processing
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- Workload partitioning
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- Dynamic resource allocation
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- Minimal blocking operations
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## 5. Cost Optimization Strategies
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### LLM Cost Management
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- Token usage tracking
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- Adaptive model selection
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- Caching and result reuse
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- Efficient prompt engineering
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### Cost Tracking Example
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```python
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class CostOptimizer:
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def __init__(self):
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self.token_budget = 100000 # Monthly budget
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self.token_usage = 0
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self.model_costs = {
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'gpt-4': 0.03,
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'claude-3-sonnet': 0.015,
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'claude-3-haiku': 0.0025
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}
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def select_optimal_model(self, complexity):
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# Dynamic model selection based on task complexity and budget
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pass
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```
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## 6. Latency Reduction Techniques
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### Performance Acceleration
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- Predictive caching
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- Pre-warming agent contexts
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- Intelligent result memoization
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- Reduced round-trip communication
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## 7. Quality vs Speed Tradeoffs
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### Optimization Spectrum
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- Performance thresholds
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- Acceptable degradation margins
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- Quality-aware optimization
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- Intelligent compromise selection
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## 8. Monitoring and Continuous Improvement
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### Observability Framework
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- Real-time performance dashboards
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- Automated optimization feedback loops
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- Machine learning-driven improvement
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- Adaptive optimization strategies
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## Reference Workflows
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### Workflow 1: E-Commerce Platform Optimization
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1. Initial performance profiling
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2. Agent-based optimization
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3. Cost and performance tracking
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4. Continuous improvement cycle
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### Workflow 2: Enterprise API Performance Enhancement
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1. Comprehensive system analysis
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2. Multi-layered agent optimization
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3. Iterative performance refinement
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4. Cost-efficient scaling strategy
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## Key Considerations
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- Always measure before and after optimization
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- Maintain system stability during optimization
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- Balance performance gains with resource consumption
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- Implement gradual, reversible changes
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Target Optimization: $ARGUMENTS |