From antigravity-awesome-skills
Instrument applications with Azure Monitor and OpenTelemetry for JavaScript (@azure/monitor-opentelemetry). Use when adding distributed tracing, metrics, and logs to Node.js applications with Appli...
npx claudepluginhub absjaded/antigravity-awesome-skillsThis skill uses the workspace's default tool permissions.
Auto-instrument Node.js applications with distributed tracing, metrics, and logs.
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.
Auto-instrument Node.js applications with distributed tracing, metrics, and logs.
# Distro (recommended - auto-instrumentation)
npm install @azure/monitor-opentelemetry
# Low-level exporters (custom OpenTelemetry setup)
npm install @azure/monitor-opentelemetry-exporter
# Custom logs ingestion
npm install @azure/monitor-ingestion
APPLICATIONINSIGHTS_CONNECTION_STRING=InstrumentationKey=...;IngestionEndpoint=...
IMPORTANT: Call useAzureMonitor() BEFORE importing other modules.
import { useAzureMonitor } from "@azure/monitor-opentelemetry";
useAzureMonitor({
azureMonitorExporterOptions: {
connectionString: process.env.APPLICATIONINSIGHTS_CONNECTION_STRING
}
});
// Now import your application
import express from "express";
const app = express();
node --import @azure/monitor-opentelemetry/loader ./dist/index.js
package.json:
{
"scripts": {
"start": "node --import @azure/monitor-opentelemetry/loader ./dist/index.js"
}
}
import { useAzureMonitor, AzureMonitorOpenTelemetryOptions } from "@azure/monitor-opentelemetry";
import { resourceFromAttributes } from "@opentelemetry/resources";
const options: AzureMonitorOpenTelemetryOptions = {
azureMonitorExporterOptions: {
connectionString: process.env.APPLICATIONINSIGHTS_CONNECTION_STRING,
storageDirectory: "/path/to/offline/storage",
disableOfflineStorage: false
},
// Sampling
samplingRatio: 1.0, // 0-1, percentage of traces
// Features
enableLiveMetrics: true,
enableStandardMetrics: true,
enablePerformanceCounters: true,
// Instrumentation libraries
instrumentationOptions: {
azureSdk: { enabled: true },
http: { enabled: true },
mongoDb: { enabled: true },
mySql: { enabled: true },
postgreSql: { enabled: true },
redis: { enabled: true },
bunyan: { enabled: false },
winston: { enabled: false }
},
// Custom resource
resource: resourceFromAttributes({ "service.name": "my-service" })
};
useAzureMonitor(options);
import { trace } from "@opentelemetry/api";
const tracer = trace.getTracer("my-tracer");
const span = tracer.startSpan("doWork");
try {
span.setAttribute("component", "worker");
span.setAttribute("operation.id", "42");
span.addEvent("processing started");
// Your work here
} catch (error) {
span.recordException(error as Error);
span.setStatus({ code: 2, message: (error as Error).message });
} finally {
span.end();
}
import { metrics } from "@opentelemetry/api";
const meter = metrics.getMeter("my-meter");
// Counter
const counter = meter.createCounter("requests_total");
counter.add(1, { route: "/api/users", method: "GET" });
// Histogram
const histogram = meter.createHistogram("request_duration_ms");
histogram.record(150, { route: "/api/users" });
// Observable Gauge
const gauge = meter.createObservableGauge("active_connections");
gauge.addCallback((result) => {
result.observe(getActiveConnections(), { pool: "main" });
});
import { AzureMonitorTraceExporter } from "@azure/monitor-opentelemetry-exporter";
import { NodeTracerProvider, BatchSpanProcessor } from "@opentelemetry/sdk-trace-node";
const exporter = new AzureMonitorTraceExporter({
connectionString: process.env.APPLICATIONINSIGHTS_CONNECTION_STRING
});
const provider = new NodeTracerProvider({
spanProcessors: [new BatchSpanProcessor(exporter)]
});
provider.register();
import { AzureMonitorMetricExporter } from "@azure/monitor-opentelemetry-exporter";
import { PeriodicExportingMetricReader, MeterProvider } from "@opentelemetry/sdk-metrics";
import { metrics } from "@opentelemetry/api";
const exporter = new AzureMonitorMetricExporter({
connectionString: process.env.APPLICATIONINSIGHTS_CONNECTION_STRING
});
const meterProvider = new MeterProvider({
readers: [new PeriodicExportingMetricReader({ exporter })]
});
metrics.setGlobalMeterProvider(meterProvider);
import { AzureMonitorLogExporter } from "@azure/monitor-opentelemetry-exporter";
import { BatchLogRecordProcessor, LoggerProvider } from "@opentelemetry/sdk-logs";
import { logs } from "@opentelemetry/api-logs";
const exporter = new AzureMonitorLogExporter({
connectionString: process.env.APPLICATIONINSIGHTS_CONNECTION_STRING
});
const loggerProvider = new LoggerProvider();
loggerProvider.addLogRecordProcessor(new BatchLogRecordProcessor(exporter));
logs.setGlobalLoggerProvider(loggerProvider);
import { DefaultAzureCredential } from "@azure/identity";
import { LogsIngestionClient, isAggregateLogsUploadError } from "@azure/monitor-ingestion";
const endpoint = "https://<dce>.ingest.monitor.azure.com";
const ruleId = "<data-collection-rule-id>";
const streamName = "Custom-MyTable_CL";
const client = new LogsIngestionClient(endpoint, new DefaultAzureCredential());
const logs = [
{
Time: new Date().toISOString(),
Computer: "Server1",
Message: "Application started",
Level: "Information"
}
];
try {
await client.upload(ruleId, streamName, logs);
} catch (error) {
if (isAggregateLogsUploadError(error)) {
for (const uploadError of error.errors) {
console.error("Failed logs:", uploadError.failedLogs);
}
}
}
import { SpanProcessor, ReadableSpan } from "@opentelemetry/sdk-trace-base";
import { Span, Context, SpanKind, TraceFlags } from "@opentelemetry/api";
import { useAzureMonitor } from "@azure/monitor-opentelemetry";
class FilteringSpanProcessor implements SpanProcessor {
forceFlush(): Promise<void> { return Promise.resolve(); }
shutdown(): Promise<void> { return Promise.resolve(); }
onStart(span: Span, context: Context): void {}
onEnd(span: ReadableSpan): void {
// Add custom attributes
span.attributes["CustomDimension"] = "value";
// Filter out internal spans
if (span.kind === SpanKind.INTERNAL) {
span.spanContext().traceFlags = TraceFlags.NONE;
}
}
}
useAzureMonitor({
spanProcessors: [new FilteringSpanProcessor()]
});
import { ApplicationInsightsSampler } from "@azure/monitor-opentelemetry-exporter";
import { NodeTracerProvider } from "@opentelemetry/sdk-trace-node";
// Sample 75% of traces
const sampler = new ApplicationInsightsSampler(0.75);
const provider = new NodeTracerProvider({ sampler });
import { useAzureMonitor, shutdownAzureMonitor } from "@azure/monitor-opentelemetry";
useAzureMonitor();
// On application shutdown
process.on("SIGTERM", async () => {
await shutdownAzureMonitor();
process.exit(0);
});
import {
useAzureMonitor,
shutdownAzureMonitor,
AzureMonitorOpenTelemetryOptions,
InstrumentationOptions
} from "@azure/monitor-opentelemetry";
import {
AzureMonitorTraceExporter,
AzureMonitorMetricExporter,
AzureMonitorLogExporter,
ApplicationInsightsSampler,
AzureMonitorExporterOptions
} from "@azure/monitor-opentelemetry-exporter";
import {
LogsIngestionClient,
isAggregateLogsUploadError
} from "@azure/monitor-ingestion";
--import @azure/monitor-opentelemetry/loadershutdownAzureMonitor() to flush telemetryThis skill is applicable to execute the workflow or actions described in the overview.