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This is not the latest version of Linkerd!
This documentation is for an older version of Linkerd. You may want the Linkerd 2.16 (current) documentation instead.

Debugging gRPC applications with request tracing

The demo application emojivoto has some issues. Let’s use that and Linkerd to diagnose an application that fails in ways which are a little more subtle than the entire service crashing. This guide assumes that you’ve followed the steps in the Getting Started guide and have Linkerd and the demo application running in a Kubernetes cluster. If you’ve not done that yet, go get started and come back when you’re done!

If you glance at the Linkerd dashboard (by running the linkerd viz dashboard command), you should see all the resources in the emojivoto namespace, including the deployments. Each deployment running Linkerd shows success rate, requests per second and latency percentiles.

Top Level Metrics
Top Level Metrics

That’s pretty neat, but the first thing you might notice is that the success rate is well below 100%! Click on web and let’s dig in.

Deployment Detail
Deployment Detail

You should now be looking at the Deployment page for the web deployment. The first thing you’ll see here is that the web deployment is taking traffic from vote-bot (a deployment included with emojivoto to continually generate a low level of live traffic). The web deployment also has two outgoing dependencies, emoji and voting.

While the emoji deployment is handling every request from web successfully, it looks like the voting deployment is failing some requests! A failure in a dependent deployment may be exactly what is causing the errors that web is returning.

Let’s scroll a little further down the page, we’ll see a live list of all traffic that is incoming to and outgoing from web. This is interesting:

Top
Top

There are two calls that are not at 100%: the first is vote-bot’s call to the /api/vote endpoint. The second is the VoteDoughnut call from the web deployment to its dependent deployment, voting. Very interesting! Since /api/vote is an incoming call, and VoteDoughnut is an outgoing call, this is a good clue that this endpoint is what’s causing the problem!

Finally, to dig a little deeper, we can click on the tap icon in the far right column. This will take us to the live list of requests that match only this endpoint. You’ll see Unknown under the GRPC status column. This is because the requests are failing with a gRPC status code 2, which is a common error response as you can see from the code. Linkerd is aware of gRPC’s response classification without any other configuration!

Tap
Tap

At this point, we have everything required to get the endpoint fixed and restore the overall health of our applications.