From antigravity-awesome-skills
Orchestrates multi-agent code reviews using specialized agents for quality, security, architecture, performance, compliance, and best practices. For holistic software artifact analysis.
npx claudepluginhub absjaded/antigravity-awesome-skillsThis skill uses the workspace's default tool permissions.
- Working on multi-agent code review orchestration tool tasks or workflows
Verifies tests pass on completed feature branch, presents options to merge locally, create GitHub PR, keep as-is or discard; executes choice and cleans up worktree.
Guides root cause investigation for bugs, test failures, unexpected behavior, performance issues, and build failures before proposing fixes.
Writes implementation plans from specs for multi-step tasks, mapping files and breaking into TDD bite-sized steps before coding.
resources/implementation-playbook.md.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.
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:
$ARGUMENTS: Target code/project for review
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
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
def execute_review(review_context):
# Parallel independent agents
parallel_agents = [
"code-quality-reviewer",
"security-auditor"
]
# Sequential dependent agents
sequential_agents = [
"architecture-reviewer",
"performance-optimizer"
]
def synthesize_review_insights(agent_results):
consolidated_report = {
"critical_issues": [],
"important_issues": [],
"improvement_suggestions": []
}
# Intelligent merging logic
return consolidated_report
def resolve_conflicts(agent_insights):
conflict_resolver = ConflictResolutionEngine()
return conflict_resolver.process(agent_insights)
def optimize_review_process(review_context):
return ReviewOptimizer.allocate_resources(review_context)
def validate_review_quality(review_results):
quality_score = QualityScoreCalculator.compute(review_results)
return quality_score > QUALITY_THRESHOLD
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}
]
)
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"}
]
hybrid_review_strategy = {
"parallel_agents": ["security", "performance"],
"sequential_agents": ["architecture", "compliance"]
}
The tool is designed with a plugin-based architecture, allowing easy addition of new agent types and review strategies.
Target for review: $ARGUMENTS