replit-load-scaleClaude Skill
Implement Replit load testing, auto-scaling, and capacity planning strategies.
| name | replit-load-scale |
| description | Implement Replit load testing, auto-scaling, and capacity planning strategies. Use when running performance tests, configuring horizontal scaling, or planning capacity for Replit integrations. Trigger with phrases like "replit load test", "replit scale", "replit performance test", "replit capacity", "replit k6", "replit benchmark". |
| allowed-tools | Read, Write, Edit, Bash(k6:*), Bash(kubectl:*) |
| version | 1.0.0 |
| license | MIT |
| author | Jeremy Longshore <jeremy@intentsolutions.io> |
Replit Load & Scale
Overview
Load testing, scaling strategies, and capacity planning for Replit integrations.
Prerequisites
- k6 load testing tool installed
- Kubernetes cluster with HPA configured
- Prometheus for metrics collection
- Test environment API keys
Load Testing with k6
Basic Load Test
// replit-load-test.js import http from 'k6/http'; import { check, sleep } from 'k6'; export const options = { stages: [ { duration: '2m', target: 10 }, // Ramp up { duration: '5m', target: 10 }, // Steady state { duration: '2m', target: 50 }, // Ramp to peak { duration: '5m', target: 50 }, // Stress test { duration: '2m', target: 0 }, // Ramp down ], thresholds: { http_req_duration: ['p(95)<500'], http_req_failed: ['rate<0.01'], }, }; export default function () { const response = http.post( 'https://api.replit.com/v1/resource', JSON.stringify({ test: true }), { headers: { 'Content-Type': 'application/json', 'Authorization': `Bearer ${__ENV.REPLIT_API_KEY}`, }, } ); check(response, { 'status is 200': (r) => r.status === 200, 'latency < 500ms': (r) => r.timings.duration < 500, }); sleep(1); }
Run Load Test
# Install k6 brew install k6 # macOS # or: sudo apt install k6 # Linux # Run test k6 run --env REPLIT_API_KEY=${REPLIT_API_KEY} replit-load-test.js # Run with output to InfluxDB k6 run --out influxdb=http://localhost:8086/k6 replit-load-test.js
Scaling Patterns
Horizontal Scaling
# kubernetes HPA apiVersion: autoscaling/v2 kind: HorizontalPodAutoscaler metadata: name: replit-integration-hpa spec: scaleTargetRef: apiVersion: apps/v1 kind: Deployment name: replit-integration minReplicas: 2 maxReplicas: 20 metrics: - type: Resource resource: name: cpu target: type: Utilization averageUtilization: 70 - type: Pods pods: metric: name: replit_queue_depth target: type: AverageValue averageValue: 100
Connection Pooling
import { Pool } from 'generic-pool'; const replitPool = Pool.create({ create: async () => { return new ReplitClient({ apiKey: process.env.REPLIT_API_KEY!, }); }, destroy: async (client) => { await client.close(); }, max: 20, min: 5, idleTimeoutMillis: 30000, }); async function withReplitClient<T>( fn: (client: ReplitClient) => Promise<T> ): Promise<T> { const client = await replitPool.acquire(); try { return await fn(client); } finally { replitPool.release(client); } }
Capacity Planning
Metrics to Monitor
| Metric | Warning | Critical |
|---|---|---|
| CPU Utilization | > 70% | > 85% |
| Memory Usage | > 75% | > 90% |
| Request Queue Depth | > 100 | > 500 |
| Error Rate | > 1% | > 5% |
| P95 Latency | > 1000ms | > 3000ms |
Capacity Calculation
interface CapacityEstimate { currentRPS: number; maxRPS: number; headroom: number; scaleRecommendation: string; } function estimateReplitCapacity( metrics: SystemMetrics ): CapacityEstimate { const currentRPS = metrics.requestsPerSecond; const avgLatency = metrics.p50Latency; const cpuUtilization = metrics.cpuPercent; // Estimate max RPS based on current performance const maxRPS = currentRPS / (cpuUtilization / 100) * 0.7; // 70% target const headroom = ((maxRPS - currentRPS) / currentRPS) * 100; return { currentRPS, maxRPS: Math.floor(maxRPS), headroom: Math.round(headroom), scaleRecommendation: headroom < 30 ? 'Scale up soon' : headroom < 50 ? 'Monitor closely' : 'Adequate capacity', }; }
Benchmark Results Template
## Replit Performance Benchmark **Date:** YYYY-MM-DD **Environment:** [staging/production] **SDK Version:** X.Y.Z ### Test Configuration - Duration: 10 minutes - Ramp: 10 → 100 → 10 VUs - Target endpoint: /v1/resource ### Results | Metric | Value | |--------|-------| | Total Requests | 50,000 | | Success Rate | 99.9% | | P50 Latency | 120ms | | P95 Latency | 350ms | | P99 Latency | 800ms | | Max RPS Achieved | 150 | ### Observations - [Key finding 1] - [Key finding 2] ### Recommendations - [Scaling recommendation]
Instructions
Step 1: Create Load Test Script
Write k6 test script with appropriate thresholds.
Step 2: Configure Auto-Scaling
Set up HPA with CPU and custom metrics.
Step 3: Run Load Test
Execute test and collect metrics.
Step 4: Analyze and Document
Record results in benchmark template.
Output
- Load test script created
- HPA configured
- Benchmark results documented
- Capacity recommendations defined
Error Handling
| Issue | Cause | Solution |
|---|---|---|
| k6 timeout | Rate limited | Reduce RPS |
| HPA not scaling | Wrong metrics | Verify metric name |
| Connection refused | Pool exhausted | Increase pool size |
| Inconsistent results | Warm-up needed | Add ramp-up phase |
Examples
Quick k6 Test
k6 run --vus 10 --duration 30s replit-load-test.js
Check Current Capacity
const metrics = await getSystemMetrics(); const capacity = estimateReplitCapacity(metrics); console.log('Headroom:', capacity.headroom + '%'); console.log('Recommendation:', capacity.scaleRecommendation);
Scale HPA Manually
kubectl scale deployment replit-integration --replicas=5 kubectl get hpa replit-integration-hpa
Resources
Next Steps
For reliability patterns, see replit-reliability-patterns.
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