Metrics Reporting
- how-to
Individual request tracing presents a very specific (though isolated) view of the system. In addition, it also makes sense to capture information that aggregates request data (i.e. requests per second), but also data which is not tied to a specific request at all (i.e. resource utilization).
The deployment situation itself is similar to the request tracer: either applications already have a metrics infrastructure in place or they don’t. The difference is that exposing some kind of metrics is much more common than request based tracing, because most production deployments at least monitor CPU and memory usage (e.g. through JMX).
Metrics broadly fall into the following categories:
-
Request/Response Metrics (such as requests per second).
-
SDK Metrics (such as how many open collections, various queue lengths).
-
System Metrics (such as cpu usage or garbage collection performance).
Right now only the first category is implemented by the SDK, more are planned.
The Default LoggingMeter
The default implementation aggregates and logs request and response metrics.
By default the metrics will be emitted every 10 minutes, but you can customize the emit interval as well:
clusterOptions.WithLoggingMeterOptions(
new LoggingMeterOptions()
.Enabled(true)
.EmitInterval(TimeSpan.FromSeconds(30)));
Once enabled, there is no further configuration needed. The LoggingMeter
will emit the collected request statistics every interval.
A possible report looks like this (prettified for better readability):
{
"meta":{
"emit_interval_s":10
},
"query":{
"127.0.0.1":{
"total_count":9411,
"percentiles_us":{
"50.0":544.767,
"90.0":905.215,
"99.0":1589.247,
"99.9":4095.999,
"100.0":100663.295
}
}
},
"kv":{
"127.0.0.1":{
"total_count":9414,
"percentiles_us":{
"50.0":155.647,
"90.0":274.431,
"99.0":544.767,
"99.9":1867.775,
"100.0":574619.647
}
}
}
}
Each report contains one object for each service that got used and is further separated on a per-node basis so they can be analyzed in isolation.
For each service / host combination, a total amount of recorded requests is reported, as well as percentiles from a histogram in microseconds. The meta section on top contains information such as the emit interval in seconds so tooling can later calculate numbers like requests per second.
The LoggingMeter
can be configured on the environment as shown above.
The following table shows the currently available properties:
Property | Default | Description |
---|---|---|
|
false |
If the |
|
600 seconds |
The interval where found orphans are emitted. |
OpenTelemetry Integration
The SDK supports plugging in any OpenTelemetry
metrics consumer instead of using the default LoggingMeter
.
To do this, first you need to add an additional dependency to your application:
<PackageReference Include="Couchbase.Extensions.OpenTelemetry" Version="3.3.2" />
In addition, you need to add the OpenTelemetry exporter of your choice. As an example this could be the Console exporter:
<PackageReference Include="OpenTelemetry.Exporter.Console" Version="1.3.0" />
Next, you need to initialize your OpenTelemetry Meter
and associate the Couchbase metrics with the exporter. Again, the following example uses Console:
using var meterProvider = Sdk.CreateMeterProviderBuilder()
.AddCouchbaseInstrumentation()
.AddConsoleExporter()
.Build();
Once your meter is initialized, the Couchbase Cluster
and Bucket
need to be injected via configuration:
IHost host = Host.CreateDefaultBuilder(args)
.ConfigureServices((hostContext, services) =>
{
services.AddCouchbase(opts =>
{
opts.WithConnectionString("couchbase://your-ip");
opts.WithCredentials("Administrator", "password");
});
services.AddCouchbaseBucket<INamedBucketProvider>("default");
services.AddHostedService<Worker>();
}).ConfigureAppConfiguration(app => {})
.Build();
host.Run();
The application being metered is a simple IHostedWorker
class:
public class Worker : IHostedService {
public Worker(INamedBucketProvider provider) {
Provider = provider;
}
public INamedBucketProvider Provider { get; }
public async Task StartAsync(CancellationToken cancellationToken) {
var bucket = await Provider.GetBucketAsync();
while (true)
{
var upsert = await bucket.DefaultCollection().UpsertAsync<dynamic>("key1", new { Name = "key1" });
await Task.Delay(400);
}
}
public Task StopAsync(CancellationToken cancellationToken) {
throw new NotImplementedException();
}
}
At this point the SDK is hooked up with the OpenTelemetry metrics and will emit them to the exporter.
The specific output format is still evolving, but look out for metrics with the cb.
prefix: cb.requests
and cb.responses
.
The cb.requests
is a counter while the cb.responses
is a ValueRecorder
which also collects latency information for each request.
Each metric contains tags that allow you to group them in different ways, including the service type (e.g. query
) or the server hostname.
Additional Couchbase .NET Event Counters
The Couchbase .NET SDK offers metrics to support instrumenting your application. These metrics may be collected in a variety of ways such as the dotnet-counters tool, the new dotnet-monitor tool, or instrumented directly in code using the MeterListener class.
Meter Types
Meters
The following meters are exposed under the CouchbaseNetClient
meter name.
Instrument Name | Type | Description |
---|---|---|
|
Gauge |
Total number of active connections to data nodes |
|
Histogram |
Distribution of operation durations, in microseconds |
|
Counter |
Number of operation retries, excluding first attempts |
|
Counter |
Number of operations which were sent but for which a response was never received |
|
Counter |
Number of times a connection pool rejected an operation because the send queue was full |
|
Gauge |
Total number of items waiting to be sent |
|
Counter |
Number of operations that failed due to a client-side timeout |