The Azure Monitor Exporter doesn't include any instrumentation libraries.
You can collect dependencies from the Azure SDKs using the following code sample to manually subscribe to the source.
// Create an OpenTelemetry tracer provider builder.
// It is important to keep the TracerProvider instance active throughout the process lifetime.
using var tracerProvider = Sdk.CreateTracerProviderBuilder()
// The following line subscribes to dependencies emitted from Azure SDKs
.AddSource("Azure.*")
.AddAzureMonitorTraceExporter()
.AddHttpClientInstrumentation(o => o.FilterHttpRequestMessage = (_) =>
{
// Azure SDKs create their own client span before calling the service using HttpClient
// In this case, we would see two spans corresponding to the same operation
// 1) created by Azure SDK 2) created by HttpClient
// To prevent this duplication we are filtering the span from HttpClient
// as span from Azure SDK contains all relevant information needed.
var parentActivity = Activity.Current?.Parent;
if (parentActivity != null && parentActivity.Source.Name.Equals("Azure.Core.Http"))
{
return false;
}
return true;
})
.Build();
Requests
JMS consumers
Kafka consumers
Netty
Quartz
RabbitMQ
Servlets
Spring scheduling
Note
Servlet and Netty autoinstrumentation covers the majority of Java HTTP services, including Java EE, Jakarta EE, Spring Boot, Quarkus, and Micronaut.
The following OpenTelemetry Instrumentation libraries are included as part of the Azure Monitor Application Insights Distro. For more information, see Azure SDK for JavaScript.
All OpenTelemetry metrics whether automatically collected from instrumentation libraries or manually collected from custom coding are currently considered Application Insights "custom metrics" for billing purposes. Learn more.
Add a community instrumentation library
You can collect more data automatically when you include instrumentation libraries from the OpenTelemetry community.
Caution
We don't support or guarantee the quality of community instrumentation libraries. To suggest one for our distro, post or up-vote in our feedback community. Be aware, some are based on experimental OpenTelemetry specs and might introduce future breaking changes.
To add a community library, use the ConfigureOpenTelemetryMeterProvider or ConfigureOpenTelemetryTracerProvider methods,
after adding the NuGet package for the library.
The following example demonstrates how the Runtime Instrumentation can be added to collect extra metrics:
// Create a new ASP.NET Core web application builder.
var builder = WebApplication.CreateBuilder(args);
// Configure the OpenTelemetry meter provider to add runtime instrumentation.
builder.Services.ConfigureOpenTelemetryMeterProvider((sp, builder) => builder.AddRuntimeInstrumentation());
// Add the Azure Monitor telemetry service to the application.
// This service will collect and send telemetry data to Azure Monitor.
builder.Services.AddOpenTelemetry().UseAzureMonitor();
// Build the ASP.NET Core web application.
var app = builder.Build();
// Start the ASP.NET Core web application.
app.Run();
The following example demonstrates how the Runtime Instrumentation can be added to collect extra metrics:
// Create a new OpenTelemetry meter provider and add runtime instrumentation and the Azure Monitor metric exporter.
// It is important to keep the MetricsProvider instance active throughout the process lifetime.
var metricsProvider = Sdk.CreateMeterProviderBuilder()
.AddRuntimeInstrumentation()
.AddAzureMonitorMetricExporter();
You can't extend the Java Distro with community instrumentation libraries. To request that we include another instrumentation library, open an issue on our GitHub page. You can find a link to our GitHub page in Next Steps.
You can't use community instrumentation libraries with GraalVM Java native applications.
Other OpenTelemetry Instrumentations are available here and could be added using TraceHandler in ApplicationInsightsClient:
// Import the Azure Monitor OpenTelemetry plugin and OpenTelemetry API
const { useAzureMonitor } = require("@azure/monitor-opentelemetry");
const { metrics, trace, ProxyTracerProvider } = require("@opentelemetry/api");
// Import the OpenTelemetry instrumentation registration function and Express instrumentation
const { registerInstrumentations } = require( "@opentelemetry/instrumentation");
const { ExpressInstrumentation } = require('@opentelemetry/instrumentation-express');
// Get the OpenTelemetry tracer provider and meter provider
const tracerProvider = (trace.getTracerProvider() as ProxyTracerProvider).getDelegate();
const meterProvider = metrics.getMeterProvider();
// Enable Azure Monitor integration
useAzureMonitor();
// Register the Express instrumentation
registerInstrumentations({
// List of instrumentations to register
instrumentations: [
new ExpressInstrumentation(), // Express instrumentation
],
// OpenTelemetry tracer provider
tracerProvider: tracerProvider,
// OpenTelemetry meter provider
meterProvider: meterProvider
});
To add a community instrumentation library (not officially supported/included in Azure Monitor distro), you can instrument directly with the instrumentations. The list of community instrumentation libraries can be found here.
Note
Instrumenting a supported instrumentation library manually with instrument() in conjunction with the distro configure_azure_monitor() is not recommended. This is not a supported scenario and you may get undesired behavior for your telemetry.
# Import the `configure_azure_monitor()`, `SQLAlchemyInstrumentor`, `create_engine`, and `text` functions from the appropriate packages.
from azure.monitor.opentelemetry import configure_azure_monitor
from opentelemetry.instrumentation.sqlalchemy import SQLAlchemyInstrumentor
from sqlalchemy import create_engine, text
# Configure OpenTelemetry to use Azure Monitor.
configure_azure_monitor()
# Create a SQLAlchemy engine.
engine = create_engine("sqlite:///:memory:")
# SQLAlchemy instrumentation is not officially supported by this package, however, you can use the OpenTelemetry `instrument()` method manually in conjunction with `configure_azure_monitor()`.
SQLAlchemyInstrumentor().instrument(
engine=engine,
)
# Database calls using the SQLAlchemy library will be automatically captured.
with engine.connect() as conn:
result = conn.execute(text("select 'hello world'"))
print(result.all())
Collect custom telemetry
This section explains how to collect custom telemetry from your application.
Depending on your language and signal type, there are different ways to collect custom telemetry, including:
The following table represents the currently supported custom telemetry types:
Language
Custom Events
Custom Metrics
Dependencies
Exceptions
Page Views
Requests
Traces
ASP.NET Core
OpenTelemetry API
Yes
Yes
Yes
Yes
ILogger API
Yes
AI Classic API
Java
OpenTelemetry API
Yes
Yes
Yes
Yes
Logback, Log4j, JUL
Yes
Yes
Micrometer Metrics
Yes
AI Classic API
Yes
Yes
Yes
Yes
Yes
Yes
Yes
Node.js
OpenTelemetry API
Yes
Yes
Yes
Yes
Python
OpenTelemetry API
Yes
Yes
Yes
Yes
Python Logging Module
Yes
Events Extension
Yes
Yes
Note
Application Insights Java 3.x listens for telemetry that's sent to the Application Insights Classic API. Similarly, Application Insights Node.js 3.x collects events created with the Application Insights Classic API. This makes upgrading easier and fills a gap in our custom telemetry support until all custom telemetry types are supported via the OpenTelemetry API.
Add custom metrics
In this context, the custom metrics term refers to manually instrumenting your code to collect additional metrics beyond what the OpenTelemetry Instrumentation Libraries automatically collect.
The OpenTelemetry API offers six metric "instruments" to cover various metric scenarios and you need to pick the correct "Aggregation Type" when visualizing metrics in Metrics Explorer. This requirement is true when using the OpenTelemetry Metric API to send metrics and when using an instrumentation library.
The following table shows the recommended aggregation types for each of the OpenTelemetry Metric Instruments.
OpenTelemetry Instrument
Azure Monitor Aggregation Type
Counter
Sum
Asynchronous Counter
Sum
Histogram
Min, Max, Average, Sum, and Count
Asynchronous Gauge
Average
UpDownCounter
Sum
Asynchronous UpDownCounter
Sum
Caution
Aggregation types beyond what's shown in the table typically aren't meaningful.
The OpenTelemetry Specification
describes the instruments and provides examples of when you might use each one.
Tip
The histogram is the most versatile and most closely equivalent to the Application Insights GetMetric Classic API. Azure Monitor currently flattens the histogram instrument into our five supported aggregation types, and support for percentiles is underway. Although less versatile, other OpenTelemetry instruments have a lesser impact on your application's performance.
Application startup must subscribe to a Meter by name:
// Create a new ASP.NET Core web application builder.
var builder = WebApplication.CreateBuilder(args);
// Configure the OpenTelemetry meter provider to add a meter named "OTel.AzureMonitor.Demo".
builder.Services.ConfigureOpenTelemetryMeterProvider((sp, builder) => builder.AddMeter("OTel.AzureMonitor.Demo"));
// Add the Azure Monitor telemetry service to the application.
// This service will collect and send telemetry data to Azure Monitor.
builder.Services.AddOpenTelemetry().UseAzureMonitor();
// Build the ASP.NET Core web application.
var app = builder.Build();
// Start the ASP.NET Core web application.
app.Run();
The Meter must be initialized using that same name:
// Create a new meter named "OTel.AzureMonitor.Demo".
var meter = new Meter("OTel.AzureMonitor.Demo");
// Create a new histogram metric named "FruitSalePrice".
Histogram<long> myFruitSalePrice = meter.CreateHistogram<long>("FruitSalePrice");
// Create a new Random object.
var rand = new Random();
// Record a few random sale prices for apples and lemons, with different colors.
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "apple"), new("color", "red"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "lemon"), new("color", "yellow"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "lemon"), new("color", "yellow"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "apple"), new("color", "green"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "apple"), new("color", "red"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "lemon"), new("color", "yellow"));
public class Program
{
// Create a static readonly Meter object named "OTel.AzureMonitor.Demo".
// This meter will be used to track metrics about the application.
private static readonly Meter meter = new("OTel.AzureMonitor.Demo");
public static void Main()
{
// Create a new MeterProvider object using the OpenTelemetry SDK.
// The MeterProvider object is responsible for managing meters and sending
// metric data to exporters.
// It is important to keep the MetricsProvider instance active
// throughout the process lifetime.
//
// The MeterProviderBuilder is configured to add a meter named
// "OTel.AzureMonitor.Demo" and an Azure Monitor metric exporter.
using var meterProvider = Sdk.CreateMeterProviderBuilder()
.AddMeter("OTel.AzureMonitor.Demo")
.AddAzureMonitorMetricExporter()
.Build();
// Create a new Histogram metric named "FruitSalePrice".
// This metric will track the distribution of fruit sale prices.
Histogram<long> myFruitSalePrice = meter.CreateHistogram<long>("FruitSalePrice");
// Create a new Random object. This object will be used to generate random sale prices.
var rand = new Random();
// Record a few random sale prices for apples and lemons, with different colors.
// Each record includes a timestamp, a value, and a set of attributes.
// The attributes can be used to filter and analyze the metric data.
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "apple"), new("color", "red"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "lemon"), new("color", "yellow"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "lemon"), new("color", "yellow"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "apple"), new("color", "green"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "apple"), new("color", "red"));
myFruitSalePrice.Record(rand.Next(1, 1000), new("name", "lemon"), new("color", "yellow"));
// Display a message to the user and wait for them to press Enter.
// This allows the user to see the message and the console before the
// application exits.
System.Console.WriteLine("Press Enter key to exit.");
System.Console.ReadLine();
}
}
import io.opentelemetry.api.GlobalOpenTelemetry;
import io.opentelemetry.api.metrics.DoubleHistogram;
import io.opentelemetry.api.metrics.Meter;
public class Program {
public static void main(String[] args) {
Meter meter = GlobalOpenTelemetry.getMeter("OTEL.AzureMonitor.Demo");
DoubleHistogram histogram = meter.histogramBuilder("histogram").build();
histogram.record(1.0);
histogram.record(100.0);
histogram.record(30.0);
}
}
import io.opentelemetry.api.metrics.DoubleHistogram;
import io.opentelemetry.api.metrics.Meter;
Meter meter = openTelemetry.getMeter("OTEL.AzureMonitor.Demo");
DoubleHistogram histogram = meter.histogramBuilder("histogram").build();
histogram.record(1.0);
histogram.record(100.0);
histogram.record(30.0);
// Import the Azure Monitor OpenTelemetry plugin and OpenTelemetry API
const { useAzureMonitor } = require("@azure/monitor-opentelemetry");
const { metrics } = require("@opentelemetry/api");
// Enable Azure Monitor integration
useAzureMonitor();
// Get the meter for the "testMeter" namespace
const meter = metrics.getMeter("testMeter");
// Create a histogram metric
let histogram = meter.createHistogram("histogram");
// Record values to the histogram metric with different tags
histogram.record(1, { "testKey": "testValue" });
histogram.record(30, { "testKey": "testValue2" });
histogram.record(100, { "testKey2": "testValue" });
# Import the `configure_azure_monitor()` and `metrics` functions from the appropriate packages.
from azure.monitor.opentelemetry import configure_azure_monitor
from opentelemetry import metrics
import os
# Configure OpenTelemetry to use Azure Monitor with the specified connection string.
# Replace `<your-connection-string>` with the connection string to your Azure Monitor Application Insights resource.
configure_azure_monitor(
connection_string="<your-connection-string>",
)
# Opt in to allow grouping of your metrics via a custom metrics namespace in app insights metrics explorer.
# Specify the namespace name using get_meter("namespace-name")
os.environ["APPLICATIONINSIGHTS_METRIC_NAMESPACE_OPT_IN"] = "true"
# Get a meter provider and a meter with the name "otel_azure_monitor_histogram_demo".
meter = metrics.get_meter_provider().get_meter("otel_azure_monitor_histogram_demo")
# Record three values to the histogram.
histogram = meter.create_histogram("histogram")
histogram.record(1.0, {"test_key": "test_value"})
histogram.record(100.0, {"test_key2": "test_value"})
histogram.record(30.0, {"test_key": "test_value2"})
# Wait for background execution.
input()
Application startup must subscribe to a Meter by name:
// Create a new ASP.NET Core web application builder.
var builder = WebApplication.CreateBuilder(args);
// Configure the OpenTelemetry meter provider to add a meter named "OTel.AzureMonitor.Demo".
builder.Services.ConfigureOpenTelemetryMeterProvider((sp, builder) => builder.AddMeter("OTel.AzureMonitor.Demo"));
// Add the Azure Monitor telemetry service to the application.
// This service will collect and send telemetry data to Azure Monitor.
builder.Services.AddOpenTelemetry().UseAzureMonitor();
// Build the ASP.NET Core web application.
var app = builder.Build();
// Start the ASP.NET Core web application.
app.Run();
The Meter must be initialized using that same name:
// Create a new meter named "OTel.AzureMonitor.Demo".
var meter = new Meter("OTel.AzureMonitor.Demo");
// Create a new counter metric named "MyFruitCounter".
Counter<long> myFruitCounter = meter.CreateCounter<long>("MyFruitCounter");
// Record the number of fruits sold, grouped by name and color.
myFruitCounter.Add(1, new("name", "apple"), new("color", "red"));
myFruitCounter.Add(2, new("name", "lemon"), new("color", "yellow"));
myFruitCounter.Add(1, new("name", "lemon"), new("color", "yellow"));
myFruitCounter.Add(2, new("name", "apple"), new("color", "green"));
myFruitCounter.Add(5, new("name", "apple"), new("color", "red"));
myFruitCounter.Add(4, new("name", "lemon"), new("color", "yellow"));
public class Program
{
// Create a static readonly Meter object named "OTel.AzureMonitor.Demo".
// This meter will be used to track metrics about the application.
private static readonly Meter meter = new("OTel.AzureMonitor.Demo");
public static void Main()
{
// Create a new MeterProvider object using the OpenTelemetry SDK.
// The MeterProvider object is responsible for managing meters and sending
// metric data to exporters.
// It is important to keep the MetricsProvider instance active
// throughout the process lifetime.
//
// The MeterProviderBuilder is configured to add a meter named
// "OTel.AzureMonitor.Demo" and an Azure Monitor metric exporter.
using var meterProvider = Sdk.CreateMeterProviderBuilder()
.AddMeter("OTel.AzureMonitor.Demo")
.AddAzureMonitorMetricExporter()
.Build();
// Create a new counter metric named "MyFruitCounter".
// This metric will track the number of fruits sold.
Counter<long> myFruitCounter = meter.CreateCounter<long>("MyFruitCounter");
// Record the number of fruits sold, grouped by name and color.
myFruitCounter.Add(1, new("name", "apple"), new("color", "red"));
myFruitCounter.Add(2, new("name", "lemon"), new("color", "yellow"));
myFruitCounter.Add(1, new("name", "lemon"), new("color", "yellow"));
myFruitCounter.Add(2, new("name", "apple"), new("color", "green"));
myFruitCounter.Add(5, new("name", "apple"), new("color", "red"));
myFruitCounter.Add(4, new("name", "lemon"), new("color", "yellow"));
// Display a message to the user and wait for them to press Enter.
// This allows the user to see the message and the console before the
// application exits.
System.Console.WriteLine("Press Enter key to exit.");
System.Console.ReadLine();
}
}
import io.opentelemetry.api.GlobalOpenTelemetry;
import io.opentelemetry.api.common.AttributeKey;
import io.opentelemetry.api.common.Attributes;
import io.opentelemetry.api.metrics.LongCounter;
import io.opentelemetry.api.metrics.Meter;
public class Program {
public static void main(String[] args) {
Meter meter = GlobalOpenTelemetry.getMeter("OTEL.AzureMonitor.Demo");
LongCounter myFruitCounter = meter
.counterBuilder("MyFruitCounter")
.build();
myFruitCounter.add(1, Attributes.of(AttributeKey.stringKey("name"), "apple", AttributeKey.stringKey("color"), "red"));
myFruitCounter.add(2, Attributes.of(AttributeKey.stringKey("name"), "lemon", AttributeKey.stringKey("color"), "yellow"));
myFruitCounter.add(1, Attributes.of(AttributeKey.stringKey("name"), "lemon", AttributeKey.stringKey("color"), "yellow"));
myFruitCounter.add(2, Attributes.of(AttributeKey.stringKey("name"), "apple", AttributeKey.stringKey("color"), "green"));
myFruitCounter.add(5, Attributes.of(AttributeKey.stringKey("name"), "apple", AttributeKey.stringKey("color"), "red"));
myFruitCounter.add(4, Attributes.of(AttributeKey.stringKey("name"), "lemon", AttributeKey.stringKey("color"), "yellow"));
}
}
// Import the Azure Monitor OpenTelemetry plugin and OpenTelemetry API
const { useAzureMonitor } = require("@azure/monitor-opentelemetry");
const { metrics } = require("@opentelemetry/api");
// Enable Azure Monitor integration
useAzureMonitor();
// Get the meter for the "testMeter" namespace
const meter = metrics.getMeter("testMeter");
// Create a counter metric
let counter = meter.createCounter("counter");
// Add values to the counter metric with different tags
counter.add(1, { "testKey": "testValue" });
counter.add(5, { "testKey2": "testValue" });
counter.add(3, { "testKey": "testValue2" });
# Import the `configure_azure_monitor()` and `metrics` functions from the appropriate packages.
from azure.monitor.opentelemetry import configure_azure_monitor
from opentelemetry import metrics
import os
# Configure OpenTelemetry to use Azure Monitor with the specified connection string.
# Replace `<your-connection-string>` with the connection string to your Azure Monitor Application Insights resource.
configure_azure_monitor(
connection_string="<your-connection-string>",
)
# Opt in to allow grouping of your metrics via a custom metrics namespace in app insights metrics explorer.
# Specify the namespace name using get_meter("namespace-name")
os.environ["APPLICATIONINSIGHTS_METRIC_NAMESPACE_OPT_IN"] = "true"
# Get a meter provider and a meter with the name "otel_azure_monitor_counter_demo".
meter = metrics.get_meter_provider().get_meter("otel_azure_monitor_counter_demo")
# Create a counter metric with the name "counter".
counter = meter.create_counter("counter")
# Add three values to the counter.
# The first argument to the `add()` method is the value to add.
# The second argument is a dictionary of dimensions.
# Dimensions are used to group related metrics together.
counter.add(1.0, {"test_key": "test_value"})
counter.add(5.0, {"test_key2": "test_value"})
counter.add(3.0, {"test_key": "test_value2"})
# Wait for background execution.
input()
Application startup must subscribe to a Meter by name:
// Create a new ASP.NET Core web application builder.
var builder = WebApplication.CreateBuilder(args);
// Configure the OpenTelemetry meter provider to add a meter named "OTel.AzureMonitor.Demo".
builder.Services.ConfigureOpenTelemetryMeterProvider((sp, builder) => builder.AddMeter("OTel.AzureMonitor.Demo"));
// Add the Azure Monitor telemetry service to the application.
// This service will collect and send telemetry data to Azure Monitor.
builder.Services.AddOpenTelemetry().UseAzureMonitor();
// Build the ASP.NET Core web application.
var app = builder.Build();
// Start the ASP.NET Core web application.
app.Run();
The Meter must be initialized using that same name:
// Get the current process.
var process = Process.GetCurrentProcess();
// Create a new meter named "OTel.AzureMonitor.Demo".
var meter = new Meter("OTel.AzureMonitor.Demo");
// Create a new observable gauge metric named "Thread.State".
// This metric will track the state of each thread in the current process.
ObservableGauge<int> myObservableGauge = meter.CreateObservableGauge("Thread.State", () => GetThreadState(process));
private static IEnumerable<Measurement<int>> GetThreadState(Process process)
{
// Iterate over all threads in the current process.
foreach (ProcessThread thread in process.Threads)
{
// Create a measurement for each thread, including the thread state, process ID, and thread ID.
yield return new((int)thread.ThreadState, new("ProcessId", process.Id), new("ThreadId", thread.Id));
}
}
public class Program
{
// Create a static readonly Meter object named "OTel.AzureMonitor.Demo".
// This meter will be used to track metrics about the application.
private static readonly Meter meter = new("OTel.AzureMonitor.Demo");
public static void Main()
{
// Create a new MeterProvider object using the OpenTelemetry SDK.
// The MeterProvider object is responsible for managing meters and sending
// metric data to exporters.
// It is important to keep the MetricsProvider instance active
// throughout the process lifetime.
//
// The MeterProviderBuilder is configured to add a meter named
// "OTel.AzureMonitor.Demo" and an Azure Monitor metric exporter.
using var meterProvider = Sdk.CreateMeterProviderBuilder()
.AddMeter("OTel.AzureMonitor.Demo")
.AddAzureMonitorMetricExporter()
.Build();
// Get the current process.
var process = Process.GetCurrentProcess();
// Create a new observable gauge metric named "Thread.State".
// This metric will track the state of each thread in the current process.
ObservableGauge<int> myObservableGauge = meter.CreateObservableGauge("Thread.State", () => GetThreadState(process));
// Display a message to the user and wait for them to press Enter.
// This allows the user to see the message and the console before the
// application exits.
System.Console.WriteLine("Press Enter key to exit.");
System.Console.ReadLine();
}
private static IEnumerable<Measurement<int>> GetThreadState(Process process)
{
// Iterate over all threads in the current process.
foreach (ProcessThread thread in process.Threads)
{
// Create a measurement for each thread, including the thread state, process ID, and thread ID.
yield return new((int)thread.ThreadState, new("ProcessId", process.Id), new("ThreadId", thread.Id));
}
}
}
import io.opentelemetry.api.GlobalOpenTelemetry;
import io.opentelemetry.api.common.AttributeKey;
import io.opentelemetry.api.common.Attributes;
import io.opentelemetry.api.metrics.Meter;
public class Program {
public static void main(String[] args) {
Meter meter = GlobalOpenTelemetry.getMeter("OTEL.AzureMonitor.Demo");
meter.gaugeBuilder("gauge")
.buildWithCallback(
observableMeasurement -> {
double randomNumber = Math.floor(Math.random() * 100);
observableMeasurement.record(randomNumber, Attributes.of(AttributeKey.stringKey("testKey"), "testValue"));
});
}
}
// Import the useAzureMonitor function and the metrics module from the @azure/monitor-opentelemetry and @opentelemetry/api packages, respectively.
const { useAzureMonitor } = require("@azure/monitor-opentelemetry");
const { metrics } = require("@opentelemetry/api");
// Enable Azure Monitor integration.
useAzureMonitor();
// Get the meter for the "testMeter" meter name.
const meter = metrics.getMeter("testMeter");
// Create an observable gauge metric with the name "gauge".
let gauge = meter.createObservableGauge("gauge");
// Add a callback to the gauge metric. The callback will be invoked periodically to generate a new value for the gauge metric.
gauge.addCallback((observableResult: ObservableResult) => {
// Generate a random number between 0 and 99.
let randomNumber = Math.floor(Math.random() * 100);
// Set the value of the gauge metric to the random number.
observableResult.observe(randomNumber, {"testKey": "testValue"});
});
# Import the necessary packages.
from typing import Iterable
import os
from azure.monitor.opentelemetry import configure_azure_monitor
from opentelemetry import metrics
from opentelemetry.metrics import CallbackOptions, Observation
# Configure OpenTelemetry to use Azure Monitor with the specified connection string.
# Replace `<your-connection-string>` with the connection string to your Azure Monitor Application Insights resource.
configure_azure_monitor(
connection_string="<your-connection-string>",
)
# Opt in to allow grouping of your metrics via a custom metrics namespace in app insights metrics explorer.
# Specify the namespace name using get_meter("namespace-name")
os.environ["APPLICATIONINSIGHTS_METRIC_NAMESPACE_OPT_IN"] = "true"
# Get a meter provider and a meter with the name "otel_azure_monitor_gauge_demo".
meter = metrics.get_meter_provider().get_meter("otel_azure_monitor_gauge_demo")
# Define two observable gauge generators.
# The first generator yields a single observation with the value 9.
# The second generator yields a sequence of 10 observations with the value 9 and a different dimension value for each observation.
def observable_gauge_generator(options: CallbackOptions) -> Iterable[Observation]:
yield Observation(9, {"test_key": "test_value"})
def observable_gauge_sequence(options: CallbackOptions) -> Iterable[Observation]:
observations = []
for i in range(10):
observations.append(
Observation(9, {"test_key": i})
)
return observations
# Create two observable gauges using the defined generators.
gauge = meter.create_observable_gauge("gauge", [observable_gauge_generator])
gauge2 = meter.create_observable_gauge("gauge2", [observable_gauge_sequence])
# Wait for background execution.
input()
Add custom exceptions
Select instrumentation libraries automatically report exceptions to Application Insights.
However, you might want to manually report exceptions beyond what instrumentation libraries report.
For instance, exceptions caught by your code aren't ordinarily reported. You might wish to report them
to draw attention in relevant experiences including the failures section and end-to-end transaction views.
// Start a new activity named "ExceptionExample".
using (var activity = activitySource.StartActivity("ExceptionExample"))
{
// Try to execute some code.
try
{
throw new Exception("Test exception");
}
// If an exception is thrown, catch it and set the activity status to "Error".
catch (Exception ex)
{
activity?.SetStatus(ActivityStatusCode.Error);
activity?.RecordException(ex);
}
}
To log an Exception using ILogger:
// Create a logger using the logger factory. The logger category name is used to filter and route log messages.
var logger = loggerFactory.CreateLogger(logCategoryName);
// Try to execute some code.
try
{
throw new Exception("Test Exception");
}
catch (Exception ex)
{
// Log an error message with the exception. The log level is set to "Error" and the event ID is set to 0.
// The log message includes a template and a parameter. The template will be replaced with the value of the parameter when the log message is written.
logger.Log(
logLevel: LogLevel.Error,
eventId: 0,
exception: ex,
message: "Hello {name}.",
args: new object[] { "World" });
}
To log an Exception using an Activity:
// Start a new activity named "ExceptionExample".
using (var activity = activitySource.StartActivity("ExceptionExample"))
{
// Try to execute some code.
try
{
throw new Exception("Test exception");
}
// If an exception is thrown, catch it and set the activity status to "Error".
catch (Exception ex)
{
activity?.SetStatus(ActivityStatusCode.Error);
activity?.RecordException(ex);
}
}
To log an Exception using ILogger:
// Create a logger using the logger factory. The logger category name is used to filter and route log messages.
var logger = loggerFactory.CreateLogger("ExceptionExample");
try
{
// Try to execute some code.
throw new Exception("Test Exception");
}
catch (Exception ex)
{
// Log an error message with the exception. The log level is set to "Error" and the event ID is set to 0.
// The log message includes a template and a parameter. The template will be replaced with the value of the parameter when the log message is written.
logger.Log(
logLevel: LogLevel.Error,
eventId: 0,
exception: ex,
message: "Hello {name}.",
args: new object[] { "World" });
}
You can use opentelemetry-api to update the status of a span and record exceptions.
Add opentelemetry-api-1.0.0.jar (or later) to your application:
// Import the Azure Monitor OpenTelemetry plugin and OpenTelemetry API
const { useAzureMonitor } = require("@azure/monitor-opentelemetry");
const { trace } = require("@opentelemetry/api");
// Enable Azure Monitor integration
useAzureMonitor();
// Get the tracer for the "testTracer" namespace
const tracer = trace.getTracer("testTracer");
// Start a span with the name "hello"
let span = tracer.startSpan("hello");
// Try to throw an error
try{
throw new Error("Test Error");
}
// Catch the error and record it to the span
catch(error){
span.recordException(error);
}
The OpenTelemetry Python SDK is implemented in such a way that exceptions thrown are automatically captured and recorded. See the following code sample for an example of this behavior:
# Import the necessary packages.
from azure.monitor.opentelemetry import configure_azure_monitor
from opentelemetry import trace
# Configure OpenTelemetry to use Azure Monitor with the specified connection string.
# Replace `<your-connection-string>` with the connection string to your Azure Monitor Application Insights resource.
configure_azure_monitor(
connection_string="<your-connection-string>",
)
# Get a tracer for the current module.
tracer = trace.get_tracer("otel_azure_monitor_exception_demo")
# Exception events
try:
# Start a new span with the name "hello".
with tracer.start_as_current_span("hello") as span:
# This exception will be automatically recorded
raise Exception("Custom exception message.")
except Exception:
print("Exception raised")
If you would like to record exceptions manually, you can disable that option
within the context manager and use record_exception() directly as shown in the following example:
...
# Start a new span with the name "hello" and disable exception recording.
with tracer.start_as_current_span("hello", record_exception=False) as span:
try:
# Raise an exception.
raise Exception("Custom exception message.")
except Exception as ex:
# Manually record exception
span.record_exception(ex)
...
Add custom spans
You might want to add a custom span in two scenarios. First, when there's a dependency request not already collected by an instrumentation library. Second, when you wish to model an application process as a span on the end-to-end transaction view.
The Activity and ActivitySource classes from the System.Diagnostics namespace represent the OpenTelemetry concepts of Span and Tracer, respectively. You create ActivitySource directly by using its constructor instead of by using TracerProvider. Each ActivitySource class must be explicitly connected to TracerProvider by using AddSource(). That's because parts of the OpenTelemetry tracing API are incorporated directly into the .NET runtime. To learn more, see Introduction to OpenTelemetry .NET Tracing API.
// Define an activity source named "ActivitySourceName". This activity source will be used to create activities for all requests to the application.
internal static readonly ActivitySource activitySource = new("ActivitySourceName");
// Create an ASP.NET Core application builder.
var builder = WebApplication.CreateBuilder(args);
// Configure the OpenTelemetry tracer provider to add a source named "ActivitySourceName". This will ensure that all activities created by the activity source are traced.
builder.Services.ConfigureOpenTelemetryTracerProvider((sp, builder) => builder.AddSource("ActivitySourceName"));
// Add the Azure Monitor telemetry service to the application. This service will collect and send telemetry data to Azure Monitor.
builder.Services.AddOpenTelemetry().UseAzureMonitor();
// Build the ASP.NET Core application.
var app = builder.Build();
// Map a GET request to the root path ("/") to the specified action.
app.MapGet("/", () =>
{
// Start a new activity named "CustomActivity". This activity will be traced and the trace data will be sent to Azure Monitor.
using (var activity = activitySource.StartActivity("CustomActivity"))
{
// your code here
}
// Return a response message.
return $"Hello World!";
});
// Start the ASP.NET Core application.
app.Run();
StartActivity defaults to ActivityKind.Internal, but you can provide any other ActivityKind.
ActivityKind.Client, ActivityKind.Producer, and ActivityKind.Internal are mapped to Application Insights dependencies.
ActivityKind.Server and ActivityKind.Consumer are mapped to Application Insights requests.
Note
The Activity and ActivitySource classes from the System.Diagnostics namespace represent the OpenTelemetry concepts of Span and Tracer, respectively. You create ActivitySource directly by using its constructor instead of by using TracerProvider. Each ActivitySource class must be explicitly connected to TracerProvider by using AddSource(). That's because parts of the OpenTelemetry tracing API are incorporated directly into the .NET runtime. To learn more, see Introduction to OpenTelemetry .NET Tracing API.
// Create an OpenTelemetry tracer provider builder.
// It is important to keep the TracerProvider instance active throughout the process lifetime.
using var tracerProvider = Sdk.CreateTracerProviderBuilder()
.AddSource("ActivitySourceName")
.AddAzureMonitorTraceExporter()
.Build();
// Create an activity source named "ActivitySourceName".
var activitySource = new ActivitySource("ActivitySourceName");
// Start a new activity named "CustomActivity". This activity will be traced and the trace data will be sent to Azure Monitor.
using (var activity = activitySource.StartActivity("CustomActivity"))
{
// your code here
}
StartActivity defaults to ActivityKind.Internal, but you can provide any other ActivityKind.
ActivityKind.Client, ActivityKind.Producer, and ActivityKind.Internal are mapped to Application Insights dependencies.
ActivityKind.Server and ActivityKind.Consumer are mapped to Application Insights requests.
Use the OpenTelemetry annotation
The simplest way to add your own spans is by using OpenTelemetry's @WithSpan annotation.
Spans populate the requests and dependencies tables in Application Insights.
Add opentelemetry-instrumentation-annotations-1.32.0.jar (or later) to your application:
By default, the span ends up in the dependencies table with dependency type InProc.
For methods representing a background job not captured by autoinstrumentation, we recommend applying the attribute kind = SpanKind.SERVER to the @WithSpan annotation to ensure they appear in the Application Insights requests table.
Use the OpenTelemetry API
If the preceding OpenTelemetry @WithSpan annotation doesn't meet your needs,
you can add your spans by using the OpenTelemetry API.
Add opentelemetry-api-1.0.0.jar (or later) to your application:
import io.opentelemetry.api.trace.Tracer;
static final Tracer tracer = openTelemetry.getTracer("com.example");
Create a span, make it current, and then end it:
Span span = tracer.spanBuilder("my first span").startSpan();
try (Scope ignored = span.makeCurrent()) {
// do stuff within the context of this
} catch (Throwable t) {
span.recordException(t);
} finally {
span.end();
}
// Import the Azure Monitor OpenTelemetry plugin and OpenTelemetry API
const { useAzureMonitor } = require("@azure/monitor-opentelemetry");
const { trace } = require("@opentelemetry/api");
// Enable Azure Monitor integration
useAzureMonitor();
// Get the tracer for the "testTracer" namespace
const tracer = trace.getTracer("testTracer");
// Start a span with the name "hello"
let span = tracer.startSpan("hello");
// End the span
span.end();
The OpenTelemetry API can be used to add your own spans, which appear in the requests and dependencies tables in Application Insights.
The code example shows how to use the tracer.start_as_current_span() method to start, make the span current, and end the span within its context.
...
# Import the necessary packages.
from opentelemetry import trace
# Get a tracer for the current module.
tracer = trace.get_tracer(__name__)
# Start a new span with the name "my first span" and make it the current span.
# The "with" context manager starts, makes the span current, and ends the span within it's context
with tracer.start_as_current_span("my first span") as span:
try:
# Do stuff within the context of this span.
# All telemetry generated within this scope will be attributed to this span.
except Exception as ex:
# Record the exception on the span.
span.record_exception(ex)
...
By default, the span is in the dependencies table with a dependency type of InProc.
If your method represents a background job not already captured by autoinstrumentation, we recommend setting the attribute kind = SpanKind.SERVER to ensure it appears in the Application Insights requests table.
...
# Import the necessary packages.
from opentelemetry import trace
from opentelemetry.trace import SpanKind
# Get a tracer for the current module.
tracer = trace.get_tracer(__name__)
# Start a new span with the name "my request span" and the kind set to SpanKind.SERVER.
with tracer.start_as_current_span("my request span", kind=SpanKind.SERVER) as span:
# Do stuff within the context of this span.
...
Send custom telemetry using the Application Insights Classic API
We recommend you use the OpenTelemetry APIs whenever possible, but there might be some scenarios when you have to use the Application Insights Classic API.
It's not possible to send custom telemetry using the Application Insights Classic API in Java native.
If you want to add custom events or access the Application Insights API, replace the @azure/monitor-opentelemetry package with the applicationinsightsv3 Beta package. It offers the same methods and interfaces, and all sample code for @azure/monitor-opentelemetry applies to the v3 Beta package.
// Import the TelemetryClient class from the Application Insights SDK for JavaScript.
const { TelemetryClient } = require("applicationinsights");
// Create a new TelemetryClient instance.
const telemetryClient = new TelemetryClient();
Then use the TelemetryClient to send custom telemetry:
Events
// Create an event telemetry object.
let eventTelemetry = {
name: "testEvent"
};
// Send the event telemetry object to Azure Monitor Application Insights.
telemetryClient.trackEvent(eventTelemetry);
Logs
// Create a trace telemetry object.
let traceTelemetry = {
message: "testMessage",
severity: "Information"
};
// Send the trace telemetry object to Azure Monitor Application Insights.
telemetryClient.trackTrace(traceTelemetry);
Exceptions
// Try to execute a block of code.
try {
...
}
// If an error occurs, catch it and send it to Azure Monitor Application Insights as an exception telemetry item.
catch (error) {
let exceptionTelemetry = {
exception: error,
severity: "Critical"
};
telemetryClient.trackException(exceptionTelemetry);
}
Unlike other languages, Python doesn't have an Application Insights SDK. You can meet all your monitoring needs with the Azure Monitor OpenTelemetry Distro, except for sending customEvents. Until the OpenTelemetry Events API stabilizes, use the Azure Monitor Events Extension with the Azure Monitor OpenTelemetry Distro to send customEvents to Application Insights.
Use the track_event API offered in the extension to send customEvents:
...
from azure.monitor.events.extension import track_event
from azure.monitor.opentelemetry import configure_azure_monitor
configure_azure_monitor()
# Use the track_event() api to send custom event telemetry
# Takes event name and custom dimensions
track_event("Test event", {"key1": "value1", "key2": "value2"})
input()
...
Modify telemetry
This section explains how to modify telemetry.
Add span attributes
These attributes might include adding a custom property to your telemetry. You might also use attributes to set optional fields in the Application Insights schema, like Client IP.
Add a custom property to a Span
Any attributes you add to spans are exported as custom properties. They populate the customDimensions field in the requests, dependencies, traces, or exceptions table.
The advantage of using options provided by instrumentation libraries, when they're available, is that the entire context is available. As a result, users can select to add or filter more attributes. For example, the enrich option in the HttpClient instrumentation library gives users access to the HttpRequestMessage and the HttpResponseMessage itself. They can select anything from it and store it as an attribute.
Many instrumentation libraries provide an enrich option. For guidance, see the readme files of individual instrumentation libraries:
Add the processor shown here before adding Azure Monitor.
// Create an ASP.NET Core application builder.
var builder = WebApplication.CreateBuilder(args);
// Configure the OpenTelemetry tracer provider to add a new processor named ActivityEnrichingProcessor.
builder.Services.ConfigureOpenTelemetryTracerProvider((sp, builder) => builder.AddProcessor(new ActivityEnrichingProcessor()));
// Add the Azure Monitor telemetry service to the application. This service will collect and send telemetry data to Azure Monitor.
builder.Services.AddOpenTelemetry().UseAzureMonitor();
// Build the ASP.NET Core application.
var app = builder.Build();
// Start the ASP.NET Core application.
app.Run();
Add ActivityEnrichingProcessor.cs to your project with the following code:
public class ActivityEnrichingProcessor : BaseProcessor<Activity>
{
public override void OnEnd(Activity activity)
{
// The updated activity will be available to all processors which are called after this processor.
activity.DisplayName = "Updated-" + activity.DisplayName;
activity.SetTag("CustomDimension1", "Value1");
activity.SetTag("CustomDimension2", "Value2");
}
}
To add span attributes, use either of the following two ways:
Use options provided by instrumentation libraries.
Add a custom span processor.
Tip
The advantage of using options provided by instrumentation libraries, when they're available, is that the entire context is available. As a result, users can select to add or filter more attributes. For example, the enrich option in the HttpClient instrumentation library gives users access to the httpRequestMessage itself. They can select anything from it and store it as an attribute.
Many instrumentation libraries provide an enrich option. For guidance, see the readme files of individual instrumentation libraries:
Add the processor shown here before the Azure Monitor Exporter.
// Create an OpenTelemetry tracer provider builder.
// It is important to keep the TracerProvider instance active throughout the process lifetime.
using var tracerProvider = Sdk.CreateTracerProviderBuilder()
// Add a source named "OTel.AzureMonitor.Demo".
.AddSource("OTel.AzureMonitor.Demo") // Add a new processor named ActivityEnrichingProcessor.
.AddProcessor(new ActivityEnrichingProcessor()) // Add the Azure Monitor trace exporter.
.AddAzureMonitorTraceExporter() // Add the Azure Monitor trace exporter.
.Build();
Add ActivityEnrichingProcessor.cs to your project with the following code:
public class ActivityEnrichingProcessor : BaseProcessor<Activity>
{
// The OnEnd method is called when an activity is finished. This is the ideal place to enrich the activity with additional data.
public override void OnEnd(Activity activity)
{
// Update the activity's display name.
// The updated activity will be available to all processors which are called after this processor.
activity.DisplayName = "Updated-" + activity.DisplayName;
// Set custom tags on the activity.
activity.SetTag("CustomDimension1", "Value1");
activity.SetTag("CustomDimension2", "Value2");
}
}
You can use opentelemetry-api to add attributes to spans.
Adding one or more span attributes populates the customDimensions field in the requests, dependencies, traces, or exceptions table.
Add opentelemetry-api-1.0.0.jar (or later) to your application:
...
# Import the necessary packages.
from azure.monitor.opentelemetry import configure_azure_monitor
from opentelemetry import trace
# Create a SpanEnrichingProcessor instance.
span_enrich_processor = SpanEnrichingProcessor()
# Configure OpenTelemetry to use Azure Monitor with the specified connection string.
# Replace `<your-connection-string>` with the connection string to your Azure Monitor Application Insights resource.
configure_azure_monitor(
connection_string="<your-connection-string>",
# Configure the custom span processors to include span enrich processor.
span_processors=[span_enrich_processor],
)
...
Add SpanEnrichingProcessor to your project with the following code:
# Import the SpanProcessor class from the opentelemetry.sdk.trace module.
from opentelemetry.sdk.trace import SpanProcessor
class SpanEnrichingProcessor(SpanProcessor):
def on_end(self, span):
# Prefix the span name with the string "Updated-".
span._name = "Updated-" + span.name
# Add the custom dimension "CustomDimension1" with the value "Value1".
span._attributes["CustomDimension1"] = "Value1"
# Add the custom dimension "CustomDimension2" with the value "Value2".
span._attributes["CustomDimension2"] = "Value2"
Set the user IP
You can populate the client_IP field for requests by setting an attribute on the span. Application Insights uses the IP address to generate user location attributes and then discards it by default.
Use the custom property example, but replace the following lines of code in ActivityEnrichingProcessor.cs:
// Add the client IP address to the activity as a tag.
// only applicable in case of activity.Kind == Server
activity.SetTag("client.address", "<IP Address>");
Use the custom property example, but replace the following lines of code in ActivityEnrichingProcessor.cs:
// Add the client IP address to the activity as a tag.
// only applicable in case of activity.Kind == Server
activity.SetTag("client.address", "<IP Address>");
...
// Import the SemanticAttributes class from the @opentelemetry/semantic-conventions package.
const { SemanticAttributes } = require("@opentelemetry/semantic-conventions");
// Create a new SpanEnrichingProcessor class.
class SpanEnrichingProcessor implements SpanProcessor {
onEnd(span) {
// Set the HTTP_CLIENT_IP attribute on the span to the IP address of the client.
span.attributes[SemanticAttributes.HTTP_CLIENT_IP] = "<IP Address>";
}
}
Use the custom property example, but replace the following lines of code in SpanEnrichingProcessor.py:
# Set the `http.client_ip` attribute of the span to the specified IP address.
span._attributes["http.client_ip"] = "<IP Address>"
Set the user ID or authenticated user ID
You can populate the user_Id or user_AuthenticatedId field for requests by using the following guidance. User ID is an anonymous user identifier. Authenticated User ID is a known user identifier.
Important
Consult applicable privacy laws before you set the Authenticated User ID.
...
// Import the SemanticAttributes class from the @opentelemetry/semantic-conventions package.
import { SemanticAttributes } from "@opentelemetry/semantic-conventions";
// Create a new SpanEnrichingProcessor class.
class SpanEnrichingProcessor implements SpanProcessor {
onEnd(span: ReadableSpan) {
// Set the ENDUSER_ID attribute on the span to the ID of the user.
span.attributes[SemanticAttributes.ENDUSER_ID] = "<User ID>";
}
}
The Python logging library is autoinstrumented. You can attach custom dimensions to your logs by passing a dictionary into the extra argument of your logs:
...
# Create a warning log message with the properties "key1" and "value1".
logger.warning("WARNING: Warning log with properties", extra={"key1": "value1"})
...
Filter telemetry
You might use the following ways to filter out telemetry before it leaves your application.
Add the processor shown here before adding Azure Monitor.
// Create an ASP.NET Core application builder.
var builder = WebApplication.CreateBuilder(args);
// Configure the OpenTelemetry tracer provider to add a new processor named ActivityFilteringProcessor.
builder.Services.ConfigureOpenTelemetryTracerProvider((sp, builder) => builder.AddProcessor(new ActivityFilteringProcessor()));
// Configure the OpenTelemetry tracer provider to add a new source named "ActivitySourceName".
builder.Services.ConfigureOpenTelemetryTracerProvider((sp, builder) => builder.AddSource("ActivitySourceName"));
// Add the Azure Monitor telemetry service to the application. This service will collect and send telemetry data to Azure Monitor.
builder.Services.AddOpenTelemetry().UseAzureMonitor();
// Build the ASP.NET Core application.
var app = builder.Build();
// Start the ASP.NET Core application.
app.Run();
Add ActivityFilteringProcessor.cs to your project with the following code:
public class ActivityFilteringProcessor : BaseProcessor<Activity>
{
// The OnStart method is called when an activity is started. This is the ideal place to filter activities.
public override void OnStart(Activity activity)
{
// prevents all exporters from exporting internal activities
if (activity.Kind == ActivityKind.Internal)
{
activity.IsAllDataRequested = false;
}
}
}
If a particular source isn't explicitly added by using AddSource("ActivitySourceName"), then none of the activities created by using that source are exported.
Many instrumentation libraries provide a filter option. For guidance, see the readme files of individual instrumentation libraries:
// Create an OpenTelemetry tracer provider builder.
// It is important to keep the TracerProvider instance active throughout the process lifetime.
using var tracerProvider = Sdk.CreateTracerProviderBuilder()
.AddSource("OTel.AzureMonitor.Demo") // Add a source named "OTel.AzureMonitor.Demo".
.AddProcessor(new ActivityFilteringProcessor()) // Add a new processor named ActivityFilteringProcessor.
.AddAzureMonitorTraceExporter() // Add the Azure Monitor trace exporter.
.Build();
Add ActivityFilteringProcessor.cs to your project with the following code:
public class ActivityFilteringProcessor : BaseProcessor<Activity>
{
// The OnStart method is called when an activity is started. This is the ideal place to filter activities.
public override void OnStart(Activity activity)
{
// prevents all exporters from exporting internal activities
if (activity.Kind == ActivityKind.Internal)
{
activity.IsAllDataRequested = false;
}
}
}
If a particular source isn't explicitly added by using AddSource("ActivitySourceName"), then none of the activities created by using that source are exported.
// Import the useAzureMonitor function and the ApplicationInsightsOptions class from the @azure/monitor-opentelemetry package.
const { useAzureMonitor, ApplicationInsightsOptions } = require("@azure/monitor-opentelemetry");
// Import the HttpInstrumentationConfig class from the @opentelemetry/instrumentation-http package.
const { HttpInstrumentationConfig }= require("@opentelemetry/instrumentation-http");
// Import the IncomingMessage and RequestOptions classes from the http and https packages, respectively.
const { IncomingMessage } = require("http");
const { RequestOptions } = require("https");
// Create a new HttpInstrumentationConfig object.
const httpInstrumentationConfig: HttpInstrumentationConfig = {
enabled: true,
ignoreIncomingRequestHook: (request: IncomingMessage) => {
// Ignore OPTIONS incoming requests.
if (request.method === 'OPTIONS') {
return true;
}
return false;
},
ignoreOutgoingRequestHook: (options: RequestOptions) => {
// Ignore outgoing requests with the /test path.
if (options.path === '/test') {
return true;
}
return false;
}
};
// Create a new ApplicationInsightsOptions object.
const config: ApplicationInsightsOptions = {
instrumentationOptions: {
http: {
httpInstrumentationConfig
}
}
};
// Enable Azure Monitor integration using the useAzureMonitor function and the ApplicationInsightsOptions object.
useAzureMonitor(config);
Use a custom processor. You can use a custom span processor to exclude certain spans from being exported. To mark spans to not be exported, set TraceFlag to DEFAULT.
Doing so excludes the endpoint shown in the following Flask example:
...
# Import the Flask and Azure Monitor OpenTelemetry SDK libraries.
import flask
from azure.monitor.opentelemetry import configure_azure_monitor
# Configure OpenTelemetry to use Azure Monitor with the specified connection string.
# Replace `<your-connection-string>` with the connection string to your Azure Monitor Application Insights resource.
configure_azure_monitor(
connection_string="<your-connection-string>",
)
# Create a Flask application.
app = flask.Flask(__name__)
# Define a route. Requests sent to this endpoint will not be tracked due to
# flask_config configuration.
@app.route("/ignore")
def ignore():
return "Request received but not tracked."
...
Use a custom processor. You can use a custom span processor to exclude certain spans from being exported. To mark spans to not be exported, set TraceFlag to DEFAULT:
...
# Import the necessary libraries.
from azure.monitor.opentelemetry import configure_azure_monitor
from opentelemetry import trace
# Configure OpenTelemetry to use Azure Monitor with the specified connection string.
# Replace `<your-connection-string>` with the connection string to your Azure Monitor Application Insights resource.
configure_azure_monitor(
connection_string="<your-connection-string>",
# Configure the custom span processors to include span filter processor.
span_processors=[span_filter_processor],
)
...
Add SpanFilteringProcessor to your project with the following code:
# Import the necessary libraries.
from opentelemetry.trace import SpanContext, SpanKind, TraceFlags
from opentelemetry.sdk.trace import SpanProcessor
# Define a custom span processor called `SpanFilteringProcessor`.
class SpanFilteringProcessor(SpanProcessor):
# Prevents exporting spans from internal activities.
def on_start(self, span, parent_context):
# Check if the span is an internal activity.
if span._kind is SpanKind.INTERNAL:
# Create a new span context with the following properties:
# * The trace ID is the same as the trace ID of the original span.
# * The span ID is the same as the span ID of the original span.
# * The is_remote property is set to `False`.
# * The trace flags are set to `DEFAULT`.
# * The trace state is the same as the trace state of the original span.
span._context = SpanContext(
span.context.trace_id,
span.context.span_id,
span.context.is_remote,
TraceFlags(TraceFlags.DEFAULT),
span.context.trace_state,
)
Get the trace ID or span ID
You can obtain the Trace ID and Span ID of the currently active Span using following steps.
The Activity and ActivitySource classes from the System.Diagnostics namespace represent the OpenTelemetry concepts of Span and Tracer, respectively. That's because parts of the OpenTelemetry tracing API are incorporated directly into the .NET runtime. To learn more, see Introduction to OpenTelemetry .NET Tracing API.
// Get the current activity.
Activity activity = Activity.Current;
// Get the trace ID of the activity.
string traceId = activity?.TraceId.ToHexString();
// Get the span ID of the activity.
string spanId = activity?.SpanId.ToHexString();
Note
The Activity and ActivitySource classes from the System.Diagnostics namespace represent the OpenTelemetry concepts of Span and Tracer, respectively. That's because parts of the OpenTelemetry tracing API are incorporated directly into the .NET runtime. To learn more, see Introduction to OpenTelemetry .NET Tracing API.
// Get the current activity.
Activity activity = Activity.Current;
// Get the trace ID of the activity.
string traceId = activity?.TraceId.ToHexString();
// Get the span ID of the activity.
string spanId = activity?.SpanId.ToHexString();
You can use opentelemetry-api to get the trace ID or span ID.
Add opentelemetry-api-1.0.0.jar (or later) to your application:
Get the request trace ID and the span ID in your code:
// Import the trace module from the OpenTelemetry API.
const { trace } = require("@opentelemetry/api");
// Get the span ID and trace ID of the active span.
let spanId = trace.getActiveSpan().spanContext().spanId;
let traceId = trace.getActiveSpan().spanContext().traceId;
Get the request trace ID and the span ID in your code:
# Import the necessary libraries.
from opentelemetry import trace
# Get the trace ID and span ID of the current span.
trace_id = trace.get_current_span().get_span_context().trace_id
span_id = trace.get_current_span().get_span_context().span_id