agent-performance-monitor
- Repo stars 54,444
- Author updated Live
- Author repo ruflo
- Domain
- AI
- Compatible agents
-
- Claude Code
- Cursor
- Cline
- Codex
- Windsurf
- Gemini CLI
- +20
- Trust score
- 88 / 100 · community maintained
- Author / version / license
- @ruvnet · no license declared
- Token usage
- Moderate
- Setup complexity
- Guided setup
- External API key
- Not required
- Operating systems
- Windows
- Runtime requirements
- No special requirements
- Permissions
-
- Read-only
- Write / modify
- Shell exec
- Network behavior
- External requests
- Install commands
- 26 variants
Profile is derived at build time from SKILL.md and install vectors. Subject to drift from author intent.
Heads up: 未限定 allowed-tools,默认拥有全部工具权限。
---
name: agent-performance-monitor
description: Agent skill for performance-monitor - invoke with $agent-performance-monitor name: Performance M…
category: ai
runtime: no special runtime
---
# agent-performance-monitor output preview
## PART A: Task fit
- Use case: Agent skill for performance-monitor - invoke with $agent-performance-monitor name: Performance Monitor category: optimization description: Real-time metrics collection, bottleneck analysis, SLA monitoring and anomaly detection // Advanced metrics collection system class MetricsCollector { makes outbound network calls. Works with Claude Code, Cursor, Cline….
- Inputs: target material, constraints, expected output, and acceptance criteria.
- Evidence boundary: follow “Agent Profile / Core Capabilities / 1. Real-Time Metrics Collection” and do not present inference as author intent.
## PART B: Execution result
- **01** The card summarizes the use case; runtime output centers on “Agent skill for performance-monitor - invoke with $agent-performance-monitor name: Performance Monitor category: optimization description: Real-time metrics collection, bottleneck analysis, SLA monitoring and anomaly detection // Advanced metrics collection system class MetricsCollector { makes outbound network calls. Works with Claude Code, Cursor, Cline…”.
- **02** When the source has headings, the agent prioritizes “Agent Profile / Core Capabilities / 1. Real-Time Metrics Collection” so the result follows the author’s structure.
- **03** Typical output includes task judgment, concrete steps, required commands or file edits, validation, and follow-up options.
- **04** Risk context follows the fingerprint: read files, write/modify files, run shell commands; may access external network resources; usually needs no extra API key.
## Running Rules
- read files, write/modify files, run shell commands; may access external network resources; usually needs no extra API key.
- Validate with a small sample before expanding scope.
- Return the result, validation criteria, and next iteration options. The source does not require a stable slash command. After installation, invoke the skill by name and describe the task.
Name target files or source material, expected output, forbidden changes, and whether network or shell access is allowed. Permission fingerprint: read files, write/modify files, run shell commands.
Start with a small task and check whether the result follows “Agent Profile / Core Capabilities / 1. Real-Time Metrics Collection”. Inspect diffs, logs, previews, or tests before expanding scope.
Confirm the final output includes a concrete result, evidence, and next action. If it stays generic, tighten inputs, boundaries, and acceptance criteria.
---
name: agent-performance-monitor
description: Agent skill for performance-monitor - invoke with $agent-performance-monitor name: Performance M…
category: ai
source: ruvnet/ruflo
---
# agent-performance-monitor
## When to use
- Agent skill for performance-monitor - invoke with $agent-performance-monitor name: Performance Monitor category: optim…
- Use it when the task has clear inputs, repeatable steps, and validation criteria.
## What to provide
- Target material, scope, expected result, and forbidden changes.
- Whether network, commands, file writes, or external services are allowed.
## Execution rules
- Organize steps around “Agent Profile / Core Capabilities / 1. Real-Time Metrics Collection” and keep inference separate from source facts.
- read files, write/modify files, run shell commands; may access external network resources; usually needs no extra API key.
- Validate with a small sample before expanding the task.
## Output requirements
- Return the deliverable, key evidence, validation method, and next action.
- Mark missing information as unknown; do not invent commands, platforms, or dependencies. The author source anchors workflow facts; repository files anchor sources and commands; Fluxly only adds fit, limitations, and quality judgment.
skill "agent-performance-monitor" {
input -> user goal + target files + boundaries + acceptance criteria
context -> Agent Profile / Core Capabilities / 1. Real-Time Metrics Collection
rules -> SKILL.md triggers / order / output contract
runtime -> no special runtime | read files, write/modify files, run shell commands | may access external network resources
guardrails -> usually needs no extra API key + small-sample validation + diff/log review
output -> copyable result + checklist + next iteration
} name: Performance Monitor type: agent category: optimization description: Real-time metrics collection, bottleneck analysis, SLA monitoring and anomaly detection
Performance Monitor Agent
Agent Profile
- Name: Performance Monitor
- Type: Performance Optimization Agent
- Specialization: Real-time metrics collection and bottleneck analysis
- Performance Focus: SLA monitoring, resource tracking, and anomaly detection
Core Capabilities
1. Real-Time Metrics Collection
// Advanced metrics collection system
class MetricsCollector {
constructor() {
this.collectors = new Map();
this.aggregators = new Map();
this.streams = new Map();
this.alertThresholds = new Map();
}
// Multi-dimensional metrics collection
async collectMetrics() {
const metrics = {
// System metrics
system: await this.collectSystemMetrics(),
// Agent-specific metrics
agents: await this.collectAgentMetrics(),
// Swarm coordination metrics
coordination: await this.collectCoordinationMetrics(),
// Task execution metrics
tasks: await this.collectTaskMetrics(),
// Resource utilization metrics
resources: await this.collectResourceMetrics(),
// Network and communication metrics
network: await this.collectNetworkMetrics()
};
// Real-time processing and analysis
await this.processMetrics(metrics);
return metrics;
}
// System-level metrics
async collectSystemMetrics() {
return {
cpu: {
usage: await this.getCPUUsage(),
loadAverage: await this.getLoadAverage(),
coreUtilization: await this.getCoreUtilization()
},
memory: {
usage: await this.getMemoryUsage(),
available: await this.getAvailableMemory(),
pressure: await this.getMemoryPressure()
},
io: {
diskUsage: await this.getDiskUsage(),
diskIO: await this.getDiskIOStats(),
networkIO: await this.getNetworkIOStats()
},
processes: {
count: await this.getProcessCount(),
threads: await this.getThreadCount(),
handles: await this.getHandleCount()
}
};
}
// Agent performance metrics
async collectAgentMetrics() {
const agents = await mcp.agent_list({});
const agentMetrics = new Map();
for (const agent of agents) {
const metrics = await mcp.agent_metrics({ agentId: agent.id });
agentMetrics.set(agent.id, {
...metrics,
efficiency: this.calculateEfficiency(metrics),
responsiveness: this.calculateResponsiveness(metrics),
reliability: this.calculateReliability(metrics)
});
}
return agentMetrics;
}
}
2. Bottleneck Detection & Analysis
// Intelligent bottleneck detection
class BottleneckAnalyzer {
constructor() {
this.detectors = [
new CPUBottleneckDetector(),
new MemoryBottleneckDetector(),
new IOBottleneckDetector(),
new NetworkBottleneckDetector(),
new CoordinationBottleneckDetector(),
new TaskQueueBottleneckDetector()
];
this.patterns = new Map();
this.history = new CircularBuffer(1000);
}
// Multi-layer bottleneck analysis
async analyzeBottlenecks(metrics) {
const bottlenecks = [];
// Parallel detection across all layers
const detectionPromises = this.detectors.map(detector =>
detector.detect(metrics)
);
const results = await Promise.all(detectionPromises);
// Correlate and prioritize bottlenecks
for (const result of results) {
if (result.detected) {
bottlenecks.push({
type: result.type,
severity: result.severity,
component: result.component,
rootCause: result.rootCause,
impact: result.impact,
recommendations: result.recommendations,
timestamp: Date.now()
});
}
}
// Pattern recognition for recurring bottlenecks
await this.updatePatterns(bottlenecks);
return this.prioritizeBottlenecks(bottlenecks);
}
// Advanced pattern recognition
async updatePatterns(bottlenecks) {
for (const bottleneck of bottlenecks) {
const signature = this.createBottleneckSignature(bottleneck);
if (this.patterns.has(signature)) {
const pattern = this.patterns.get(signature);
pattern.frequency++;
pattern.lastOccurrence = Date.now();
pattern.averageInterval = this.calculateAverageInterval(pattern);
} else {
this.patterns.set(signature, {
signature,
frequency: 1,
firstOccurrence: Date.now(),
lastOccurrence: Date.now(),
averageInterval: 0,
predictedNext: null
});
}
}
}
}
3. SLA Monitoring & Alerting
// Service Level Agreement monitoring
class SLAMonitor {
constructor() {
this.slaDefinitions = new Map();
this.violations = new Map();
this.alertChannels = new Set();
this.escalationRules = new Map();
}
// Define SLA metrics and thresholds
defineSLA(service, slaConfig) {
this.slaDefinitions.set(service, {
availability: slaConfig.availability || 99.9, // percentage
responseTime: slaConfig.responseTime || 1000, // milliseconds
throughput: slaConfig.throughput || 100, // requests per second
errorRate: slaConfig.errorRate || 0.1, // percentage
recoveryTime: slaConfig.recoveryTime || 300, // seconds
// Time windows for measurements
measurementWindow: slaConfig.measurementWindow || 300, // seconds
evaluationInterval: slaConfig.evaluationInterval || 60, // seconds
// Alerting configuration
alertThresholds: slaConfig.alertThresholds || {
warning: 0.8, // 80% of SLA threshold
critical: 0.9, // 90% of SLA threshold
breach: 1.0 // 100% of SLA threshold
}
});
}
// Continuous SLA monitoring
async monitorSLA() {
const violations = [];
for (const [service, sla] of this.slaDefinitions) {
const metrics = await this.getServiceMetrics(service);
const evaluation = this.evaluateSLA(service, sla, metrics);
if (evaluation.violated) {
violations.push(evaluation);
await this.handleViolation(service, evaluation);
}
}
return violations;
}
// SLA evaluation logic
evaluateSLA(service, sla, metrics) {
const evaluation = {
service,
timestamp: Date.now(),
violated: false,
violations: []
};
// Availability check
if (metrics.availability < sla.availability) {
evaluation.violations.push({
metric: 'availability',
expected: sla.availability,
actual: metrics.availability,
severity: this.calculateSeverity(metrics.availability, sla.availability, sla.alertThresholds)
});
evaluation.violated = true;
}
// Response time check
if (metrics.responseTime > sla.responseTime) {
evaluation.violations.push({
metric: 'responseTime',
expected: sla.responseTime,
actual: metrics.responseTime,
severity: this.calculateSeverity(metrics.responseTime, sla.responseTime, sla.alertThresholds)
});
evaluation.violated = true;
}
// Additional SLA checks...
return evaluation;
}
}
4. Resource Utilization Tracking
// Comprehensive resource tracking
class ResourceTracker {
constructor() {
this.trackers = {
cpu: new CPUTracker(),
memory: new MemoryTracker(),
disk: new DiskTracker(),
network: new NetworkTracker(),
gpu: new GPUTracker(),
agents: new AgentResourceTracker()
};
this.forecaster = new ResourceForecaster();
this.optimizer = new ResourceOptimizer();
}
// Real-time resource tracking
async trackResources() {
const resources = {};
// Parallel resource collection
const trackingPromises = Object.entries(this.trackers).map(
async ([type, tracker]) => [type, await tracker.collect()]
);
const results = await Promise.all(trackingPromises);
for (const [type, data] of results) {
resources[type] = {
...data,
utilization: this.calculateUtilization(data),
efficiency: this.calculateEfficiency(data),
trend: this.calculateTrend(type, data),
forecast: await this.forecaster.forecast(type, data)
};
}
return resources;
}
// Resource utilization analysis
calculateUtilization(resourceData) {
return {
current: resourceData.used / resourceData.total,
peak: resourceData.peak / resourceData.total,
average: resourceData.average / resourceData.total,
percentiles: {
p50: resourceData.p50 / resourceData.total,
p90: resourceData.p90 / resourceData.total,
p95: resourceData.p95 / resourceData.total,
p99: resourceData.p99 / resourceData.total
}
};
}
// Predictive resource forecasting
async forecastResourceNeeds(timeHorizon = 3600) { // 1 hour default
const currentResources = await this.trackResources();
const forecasts = {};
for (const [type, data] of Object.entries(currentResources)) {
forecasts[type] = await this.forecaster.forecast(type, data, timeHorizon);
}
return {
timeHorizon,
forecasts,
recommendations: await this.optimizer.generateRecommendations(forecasts),
confidence: this.calculateForecastConfidence(forecasts)
};
}
}
MCP Integration Hooks
Performance Data Collection
// Comprehensive MCP integration
const performanceIntegration = {
// Real-time performance monitoring
async startMonitoring(config = {}) {
const monitoringTasks = [
this.monitorSwarmHealth(),
this.monitorAgentPerformance(),
this.monitorResourceUtilization(),
this.monitorBottlenecks(),
this.monitorSLACompliance()
];
// Start all monitoring tasks concurrently
const monitors = await Promise.all(monitoringTasks);
return {
swarmHealthMonitor: monitors[0],
agentPerformanceMonitor: monitors[1],
resourceMonitor: monitors[2],
bottleneckMonitor: monitors[3],
slaMonitor: monitors[4]
};
},
// Swarm health monitoring
async monitorSwarmHealth() {
const healthMetrics = await mcp.health_check({
components: ['swarm', 'coordination', 'communication']
});
return {
status: healthMetrics.overall,
components: healthMetrics.components,
issues: healthMetrics.issues,
recommendations: healthMetrics.recommendations
};
},
// Agent performance monitoring
async monitorAgentPerformance() {
const agents = await mcp.agent_list({});
const performanceData = new Map();
for (const agent of agents) {
const metrics = await mcp.agent_metrics({ agentId: agent.id });
const performance = await mcp.performance_report({
format: 'detailed',
timeframe: '24h'
});
performanceData.set(agent.id, {
...metrics,
performance,
efficiency: this.calculateAgentEfficiency(metrics, performance),
bottlenecks: await mcp.bottleneck_analyze({ component: agent.id })
});
}
return performanceData;
},
// Bottleneck monitoring and analysis
async monitorBottlenecks() {
const bottlenecks = await mcp.bottleneck_analyze({});
// Enhanced bottleneck analysis
const analysis = {
detected: bottlenecks.length > 0,
count: bottlenecks.length,
severity: this.calculateOverallSeverity(bottlenecks),
categories: this.categorizeBottlenecks(bottlenecks),
trends: await this.analyzeBottleneckTrends(bottlenecks),
predictions: await this.predictBottlenecks(bottlenecks)
};
return analysis;
}
};
Anomaly Detection
// Advanced anomaly detection system
class AnomalyDetector {
constructor() {
this.models = {
statistical: new StatisticalAnomalyDetector(),
machine_learning: new MLAnomalyDetector(),
time_series: new TimeSeriesAnomalyDetector(),
behavioral: new BehavioralAnomalyDetector()
};
this.ensemble = new EnsembleDetector(this.models);
}
// Multi-model anomaly detection
async detectAnomalies(metrics) {
const anomalies = [];
// Parallel detection across all models
const detectionPromises = Object.entries(this.models).map(
async ([modelType, model]) => {
const detected = await model.detect(metrics);
return { modelType, detected };
}
);
const results = await Promise.all(detectionPromises);
// Ensemble voting for final decision
const ensembleResult = await this.ensemble.vote(results);
return {
anomalies: ensembleResult.anomalies,
confidence: ensembleResult.confidence,
consensus: ensembleResult.consensus,
individualResults: results
};
}
// Statistical anomaly detection
detectStatisticalAnomalies(data) {
const mean = this.calculateMean(data);
const stdDev = this.calculateStandardDeviation(data, mean);
const threshold = 3 * stdDev; // 3-sigma rule
return data.filter(point => Math.abs(point - mean) > threshold)
.map(point => ({
value: point,
type: 'statistical',
deviation: Math.abs(point - mean) / stdDev,
probability: this.calculateProbability(point, mean, stdDev)
}));
}
// Time series anomaly detection
async detectTimeSeriesAnomalies(timeSeries) {
// LSTM-based anomaly detection
const model = await this.loadTimeSeriesModel();
const predictions = await model.predict(timeSeries);
const anomalies = [];
for (let i = 0; i < timeSeries.length; i++) {
const error = Math.abs(timeSeries[i] - predictions[i]);
const threshold = this.calculateDynamicThreshold(timeSeries, i);
if (error > threshold) {
anomalies.push({
timestamp: i,
actual: timeSeries[i],
predicted: predictions[i],
error: error,
type: 'time_series'
});
}
}
return anomalies;
}
}
Dashboard Integration
Real-Time Performance Dashboard
// Dashboard data provider
class DashboardProvider {
constructor() {
this.updateInterval = 1000; // 1 second updates
this.subscribers = new Set();
this.dataBuffer = new CircularBuffer(1000);
}
// Real-time dashboard data
async provideDashboardData() {
const dashboardData = {
// High-level metrics
overview: {
swarmHealth: await this.getSwarmHealthScore(),
activeAgents: await this.getActiveAgentCount(),
totalTasks: await this.getTotalTaskCount(),
averageResponseTime: await this.getAverageResponseTime()
},
// Performance metrics
performance: {
throughput: await this.getCurrentThroughput(),
latency: await this.getCurrentLatency(),
errorRate: await this.getCurrentErrorRate(),
utilization: await this.getResourceUtilization()
},
// Real-time charts data
timeSeries: {
cpu: this.getCPUTimeSeries(),
memory: this.getMemoryTimeSeries(),
network: this.getNetworkTimeSeries(),
tasks: this.getTaskTimeSeries()
},
// Alerts and notifications
alerts: await this.getActiveAlerts(),
notifications: await this.getRecentNotifications(),
// Agent status
agents: await this.getAgentStatusSummary(),
timestamp: Date.now()
};
// Broadcast to subscribers
this.broadcast(dashboardData);
return dashboardData;
}
// WebSocket subscription management
subscribe(callback) {
this.subscribers.add(callback);
return () => this.subscribers.delete(callback);
}
broadcast(data) {
this.subscribers.forEach(callback => {
try {
callback(data);
} catch (error) {
console.error('Dashboard subscriber error:', error);
}
});
}
}
Operational Commands
Monitoring Commands
# Start comprehensive monitoring
npx claude-flow performance-report --format detailed --timeframe 24h
# Real-time bottleneck analysis
npx claude-flow bottleneck-analyze --component swarm-coordination
# Health check all components
npx claude-flow health-check --components ["swarm", "agents", "coordination"]
# Collect specific metrics
npx claude-flow metrics-collect --components ["cpu", "memory", "network"]
# Monitor SLA compliance
npx claude-flow sla-monitor --service swarm-coordination --threshold 99.9
Alert Configuration
# Configure performance alerts
npx claude-flow alert-config --metric cpu_usage --threshold 80 --severity warning
# Set up anomaly detection
npx claude-flow anomaly-setup --models ["statistical", "ml", "time_series"]
# Configure notification channels
npx claude-flow notification-config --channels ["slack", "email", "webhook"]
Integration Points
With Other Optimization Agents
- Load Balancer: Provides performance data for load balancing decisions
- Topology Optimizer: Supplies network and coordination metrics
- Resource Manager: Shares resource utilization and forecasting data
With Swarm Infrastructure
- Task Orchestrator: Monitors task execution performance
- Agent Coordinator: Tracks agent health and performance
- Memory System: Stores historical performance data and patterns
Performance Analytics
Key Metrics Dashboard
// Performance analytics engine
const analytics = {
// Key Performance Indicators
calculateKPIs(metrics) {
return {
// Availability metrics
uptime: this.calculateUptime(metrics),
availability: this.calculateAvailability(metrics),
// Performance metrics
responseTime: {
average: this.calculateAverage(metrics.responseTimes),
p50: this.calculatePercentile(metrics.responseTimes, 50),
p90: this.calculatePercentile(metrics.responseTimes, 90),
p95: this.calculatePercentile(metrics.responseTimes, 95),
p99: this.calculatePercentile(metrics.responseTimes, 99)
},
// Throughput metrics
throughput: this.calculateThroughput(metrics),
// Error metrics
errorRate: this.calculateErrorRate(metrics),
// Resource efficiency
resourceEfficiency: this.calculateResourceEfficiency(metrics),
// Cost metrics
costEfficiency: this.calculateCostEfficiency(metrics)
};
},
// Trend analysis
analyzeTrends(historicalData, timeWindow = '7d') {
return {
performance: this.calculatePerformanceTrend(historicalData, timeWindow),
efficiency: this.calculateEfficiencyTrend(historicalData, timeWindow),
reliability: this.calculateReliabilityTrend(historicalData, timeWindow),
capacity: this.calculateCapacityTrend(historicalData, timeWindow)
};
}
};
This Performance Monitor agent provides comprehensive real-time monitoring, bottleneck detection, SLA compliance tracking, and advanced analytics for optimal swarm performance management.
Decide Fit First
Design Intent
How To Use It
Boundaries And Review