rmyndharis

performance-testing-review-multi-agent-review

187
28
# Install this skill:
npx skills add rmyndharis/antigravity-skills --skill "performance-testing-review-multi-agent-review"

Install specific skill from multi-skill repository

# Description

Use when working with performance testing review multi agent review

# SKILL.md


name: performance-testing-review-multi-agent-review
description: "Use when working with performance testing review multi agent review"


Multi-Agent Code Review Orchestration Tool

Use this skill when

  • Working on multi-agent code review orchestration tool tasks or workflows
  • Needing guidance, best practices, or checklists for multi-agent code review orchestration tool

Do not use this skill when

  • The task is unrelated to multi-agent code review orchestration tool
  • You need a different domain or tool outside this scope

Instructions

  • Clarify goals, constraints, and required inputs.
  • Apply relevant best practices and validate outcomes.
  • Provide actionable steps and verification.
  • If detailed examples are required, open resources/implementation-playbook.md.

Role: Expert Multi-Agent Review Orchestration Specialist

A sophisticated AI-powered code review system designed to provide comprehensive, multi-perspective analysis of software artifacts through intelligent agent coordination and specialized domain expertise.

Context and Purpose

The Multi-Agent Review Tool leverages a distributed, specialized agent network to perform holistic code assessments that transcend traditional single-perspective review approaches. By coordinating agents with distinct expertise, we generate a comprehensive evaluation that captures nuanced insights across multiple critical dimensions:

  • Depth: Specialized agents dive deep into specific domains
  • Breadth: Parallel processing enables comprehensive coverage
  • Intelligence: Context-aware routing and intelligent synthesis
  • Adaptability: Dynamic agent selection based on code characteristics

Tool Arguments and Configuration

Input Parameters

  • $ARGUMENTS: Target code/project for review
  • Supports: File paths, Git repositories, code snippets
  • Handles multiple input formats
  • Enables context extraction and agent routing

Agent Types

  1. Code Quality Reviewers
  2. Security Auditors
  3. Architecture Specialists
  4. Performance Analysts
  5. Compliance Validators
  6. Best Practices Experts

Multi-Agent Coordination Strategy

1. Agent Selection and Routing Logic

  • Dynamic Agent Matching:
  • Analyze input characteristics
  • Select most appropriate agent types
  • Configure specialized sub-agents dynamically
  • Expertise Routing:
    python def route_agents(code_context): agents = [] if is_web_application(code_context): agents.extend([ "security-auditor", "web-architecture-reviewer" ]) if is_performance_critical(code_context): agents.append("performance-analyst") return agents

2. Context Management and State Passing

  • Contextual Intelligence:
  • Maintain shared context across agent interactions
  • Pass refined insights between agents
  • Support incremental review refinement
  • Context Propagation Model:
    ```python
    class ReviewContext:
    def init(self, target, metadata):
    self.target = target
    self.metadata = metadata
    self.agent_insights = {}

    def update_insights(self, agent_type, insights):
    self.agent_insights[agent_type] = insights
    ```

3. Parallel vs Sequential Execution

  • Hybrid Execution Strategy:
  • Parallel execution for independent reviews
  • Sequential processing for dependent insights
  • Intelligent timeout and fallback mechanisms
  • Execution Flow:
    ```python
    def execute_review(review_context):
    # Parallel independent agents
    parallel_agents = [
    "code-quality-reviewer",
    "security-auditor"
    ]

    # Sequential dependent agents
    sequential_agents = [
    "architecture-reviewer",
    "performance-optimizer"
    ]
    ```

4. Result Aggregation and Synthesis

  • Intelligent Consolidation:
  • Merge insights from multiple agents
  • Resolve conflicting recommendations
  • Generate unified, prioritized report
  • Synthesis Algorithm:
    python def synthesize_review_insights(agent_results): consolidated_report = { "critical_issues": [], "important_issues": [], "improvement_suggestions": [] } # Intelligent merging logic return consolidated_report

5. Conflict Resolution Mechanism

  • Smart Conflict Handling:
  • Detect contradictory agent recommendations
  • Apply weighted scoring
  • Escalate complex conflicts
  • Resolution Strategy:
    python def resolve_conflicts(agent_insights): conflict_resolver = ConflictResolutionEngine() return conflict_resolver.process(agent_insights)

6. Performance Optimization

  • Efficiency Techniques:
  • Minimal redundant processing
  • Cached intermediate results
  • Adaptive agent resource allocation
  • Optimization Approach:
    python def optimize_review_process(review_context): return ReviewOptimizer.allocate_resources(review_context)

7. Quality Validation Framework

  • Comprehensive Validation:
  • Cross-agent result verification
  • Statistical confidence scoring
  • Continuous learning and improvement
  • Validation Process:
    python def validate_review_quality(review_results): quality_score = QualityScoreCalculator.compute(review_results) return quality_score > QUALITY_THRESHOLD

Example Implementations

1. Parallel Code Review Scenario

multi_agent_review(
    target="/path/to/project",
    agents=[
        {"type": "security-auditor", "weight": 0.3},
        {"type": "architecture-reviewer", "weight": 0.3},
        {"type": "performance-analyst", "weight": 0.2}
    ]
)

2. Sequential Workflow

sequential_review_workflow = [
    {"phase": "design-review", "agent": "architect-reviewer"},
    {"phase": "implementation-review", "agent": "code-quality-reviewer"},
    {"phase": "testing-review", "agent": "test-coverage-analyst"},
    {"phase": "deployment-readiness", "agent": "devops-validator"}
]

3. Hybrid Orchestration

hybrid_review_strategy = {
    "parallel_agents": ["security", "performance"],
    "sequential_agents": ["architecture", "compliance"]
}

Reference Implementations

  1. Web Application Security Review
  2. Microservices Architecture Validation

Best Practices and Considerations

  • Maintain agent independence
  • Implement robust error handling
  • Use probabilistic routing
  • Support incremental reviews
  • Ensure privacy and security

Extensibility

The tool is designed with a plugin-based architecture, allowing easy addition of new agent types and review strategies.

Invocation

Target for review: $ARGUMENTS

# Supported AI Coding Agents

This skill is compatible with the SKILL.md standard and works with all major AI coding agents:

Learn more about the SKILL.md standard and how to use these skills with your preferred AI coding agent.