From maintainx-pack
Implements Prometheus metrics and instrumented axios client for monitoring, logging, and alerting in MaintainX API integrations using Node.js.
How this skill is triggered — by the user, by Claude, or both
Slash command
/maintainx-pack:maintainx-observabilityThis skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Implement metrics, structured logging, and alerting for MaintainX integrations to ensure reliability and rapid issue detection.
Implement metrics, structured logging, and alerting for MaintainX integrations to ensure reliability and rapid issue detection.
// src/observability/metrics.ts
import { Counter, Histogram, Gauge, Registry } from 'prom-client';
const register = new Registry();
export const metrics = {
apiRequests: new Counter({
name: 'maintainx_api_requests_total',
help: 'Total MaintainX API requests',
labelNames: ['method', 'endpoint', 'status'],
registers: [register],
}),
apiLatency: new Histogram({
name: 'maintainx_api_latency_seconds',
help: 'MaintainX API request latency',
labelNames: ['method', 'endpoint'],
buckets: [0.1, 0.25, 0.5, 1, 2.5, 5, 10],
registers: [register],
}),
rateLimitHits: new Counter({
name: 'maintainx_rate_limit_hits_total',
help: 'Times rate limited by MaintainX API',
registers: [register],
}),
workOrdersProcessed: new Counter({
name: 'maintainx_work_orders_processed_total',
help: 'Work orders processed',
labelNames: ['action', 'status'],
registers: [register],
}),
syncLag: new Gauge({
name: 'maintainx_sync_lag_seconds',
help: 'Seconds since last successful sync',
registers: [register],
}),
};
export { register };
// src/observability/instrumented-client.ts
import axios, { AxiosInstance } from 'axios';
import { metrics } from './metrics';
export function createInstrumentedClient(apiKey: string): AxiosInstance {
const client = axios.create({
baseURL: 'https://api.getmaintainx.com/v1',
headers: { Authorization: `Bearer ${apiKey}`, 'Content-Type': 'application/json' },
timeout: 30_000,
});
client.interceptors.request.use((config) => {
(config as any).__startTime = process.hrtime.bigint();
return config;
});
client.interceptors.response.use(
(response) => {
const elapsed = Number(process.hrtime.bigint() - (response.config as any).__startTime) / 1e9;
const endpoint = response.config.url?.split('?')[0] || 'unknown';
metrics.apiRequests.inc({
method: response.config.method?.toUpperCase() || 'GET',
endpoint,
status: String(response.status),
});
metrics.apiLatency.observe(
{ method: response.config.method?.toUpperCase() || 'GET', endpoint },
elapsed,
);
return response;
},
(error) => {
const status = error.response?.status || 0;
const endpoint = error.config?.url?.split('?')[0] || 'unknown';
metrics.apiRequests.inc({
method: error.config?.method?.toUpperCase() || 'GET',
endpoint,
status: String(status),
});
if (status === 429) {
metrics.rateLimitHits.inc();
}
throw error;
},
);
return client;
}
// src/observability/logger.ts
type LogLevel = 'debug' | 'info' | 'warn' | 'error';
interface LogEntry {
level: LogLevel;
message: string;
service: string;
timestamp: string;
[key: string]: any;
}
class StructuredLogger {
private service: string;
constructor(service: string) {
this.service = service;
}
private log(level: LogLevel, message: string, data?: Record<string, any>) {
const entry: LogEntry = {
level,
message,
service: this.service,
timestamp: new Date().toISOString(),
...data,
};
// JSON output for log aggregation (ELK, CloudWatch, Datadog)
console.log(JSON.stringify(entry));
}
info(message: string, data?: Record<string, any>) { this.log('info', message, data); }
warn(message: string, data?: Record<string, any>) { this.log('warn', message, data); }
error(message: string, data?: Record<string, any>) { this.log('error', message, data); }
debug(message: string, data?: Record<string, any>) { this.log('debug', message, data); }
}
export const logger = new StructuredLogger('maintainx-integration');
// Usage
logger.info('Work order created', { workOrderId: 12345, priority: 'HIGH' });
logger.error('API call failed', { endpoint: '/workorders', status: 500, retryCount: 2 });
// src/observability/server.ts
import express from 'express';
import { register, metrics } from './metrics';
const app = express();
// Prometheus scrape endpoint
app.get('/metrics', async (req, res) => {
res.set('Content-Type', register.contentType);
res.end(await register.metrics());
});
// Health check with metrics
app.get('/health', async (req, res) => {
const health = {
status: 'healthy',
uptime: process.uptime(),
metrics: {
totalRequests: await metrics.apiRequests.get(),
rateLimitHits: await metrics.rateLimitHits.get(),
syncLagSeconds: (await metrics.syncLag.get()).values[0]?.value || 0,
},
};
res.json(health);
});
app.listen(9090, () => logger.info('Metrics server on :9090'));
# prometheus/alerts.yml
groups:
- name: maintainx
rules:
- alert: MaintainXHighErrorRate
expr: rate(maintainx_api_requests_total{status=~"5.."}[5m]) > 0.1
for: 5m
labels:
severity: critical
annotations:
summary: "MaintainX API error rate > 10%"
- alert: MaintainXHighLatency
expr: histogram_quantile(0.95, rate(maintainx_api_latency_seconds_bucket[5m])) > 5
for: 5m
labels:
severity: warning
annotations:
summary: "MaintainX API p95 latency > 5s"
- alert: MaintainXRateLimited
expr: rate(maintainx_rate_limit_hits_total[5m]) > 0
for: 1m
labels:
severity: warning
annotations:
summary: "MaintainX API rate limiting detected"
- alert: MaintainXSyncStale
expr: maintainx_sync_lag_seconds > 900
for: 5m
labels:
severity: critical
annotations:
summary: "MaintainX sync lag > 15 minutes"
/metrics endpoint for Prometheus scraping| Issue | Cause | Solution |
|---|---|---|
| Metrics endpoint 500 | prom-client not initialized | Ensure Registry is created before metrics |
| Missing labels | Metric name mismatch | Check labelNames match inc()/observe() calls |
| Log volume too high | Debug logging in production | Set LOG_LEVEL=info in production |
| Stale sync alert | Sync job stopped | Check cron schedule, restart sync process |
For incident response, see maintainx-incident-runbook.
Datadog integration using DogStatsD:
import StatsD from 'hot-shots';
const dogstatsd = new StatsD({ prefix: 'maintainx.' });
// Record API call
dogstatsd.increment('api.requests', 1, { endpoint: '/workorders', status: '200' });
dogstatsd.histogram('api.latency', 0.45, { endpoint: '/workorders' });
npx claudepluginhub luxdevnet/claude-plus-lux --plugin maintainx-pack5plugins reuse this skill
First indexed Jul 10, 2026
Implement comprehensive observability for MaintainX integrations. Use when setting up monitoring, logging, tracing, and alerting for MaintainX API integrations. Trigger with phrases like "maintainx monitoring", "maintainx logging", "maintainx metrics", "maintainx observability", "maintainx alerts".
Use when you need production monitoring for an Intercom integration — instrumenting API calls with metrics and traces, standing up dashboards, or wiring alerts for error rate, latency, and rate-limit health. Set up observability for Intercom integrations with Prometheus metrics, OpenTelemetry traces, structured logging, and alert rules. Trigger with phrases like "intercom monitoring", "intercom metrics", "intercom observability", "monitor intercom", "intercom alerts", "intercom tracing".
Sets up monitoring and observability for Apollo.io integrations: Prometheus metrics, OpenTelemetry tracing, structured logging, and alerting rules. Triggered by phrases like 'apollo monitoring' or 'apollo observability'.