How Wavefront Tamed a Wild Puppet

October 13, 2017 Wavefront HQ

Message from the Editor: Many of our customers like to blog about how they’re using Wavefront to improve the performance and reliability of cloud-native applications. Given the popularly of Puppet as an automated configuration tool in enterprise-class environments, we’re excited to repost this from Rob Fisher, an SRE with British Gas Connected Home, originally posted on his personal blog site, http://sysdef.xyz/. PS – Wavefront also does a great job monitoring other configuration management tools like Ansible and Chef. Container management tools like Kubernetes too. Just contact us if you want more information on any of these, but for now, read below to learn how to tame a wild Puppet!


Show of hands: who’s old enough to remember when config management was the hot new thing?

No one cares about it now, you know. It’s a relic, replaced by Dockerfiles and consigned to history. Except, of course, it’s not. There’s still a world full of people configuring VMs and – yes – physical hosts with Puppet, Chef, CFengine, Ansible, Salt, finish scripts, and who knows what else.

My client’s site is one of those places. Even as strong users of many AWS and aaS tools, they still have an awful lot of EC2 hosts, managed with masterless Puppet. There are nice things about running masterless: effectively infinite scaling, and very little to go wrong, for a start. But there’s one huge downside: knowing what all those independent agents are doing is entirely down to you.

First Things First

The business is a little unusual in that it has several distinct product platforms with differing requirements. Each platform, however, is built around core of common tooling, of which Puppet is one component. Projects begin with a fork of a bare-bones “reference implementation” repo, which gives engineers everything they need to run an application except for the application itself. Hosts are guaranteed to report telemetry to Wavefront, log to our centralised logging service, and to be compliant with company security policies.

An engineer embedded in a product team cuts a Puppet release by tagging their repo RELEASE-YYYY-MM-DD-nn. A second repo contains a “tag map” which hosts query regularly, looking themselves up by a combination of their product name, environment and role. The map tells them which code release they should be on, and they go and fetch that code, install it, flip a symlink to make it live, and run Puppet. It’s simple, and scalable: but because there’s no Puppet Master or PuppetDB, when we first deployed it, with no telemetry system or off-host logging, it left no trace anywhere.

First Steps

As the business matured, and began to switch focus from “get a product out of the door” to “do things right”, progress was hard because of a lack of visibility. Puppet was the tool through which we would have to fix and improve our infrastructure, so it was naturally the first place we wanted observability.

We had already tried, and largely failed, to get some insight into the state of our config management (using a different hosted telemetry service), but as we began trialling Wavefront it seemed worth another go. I took the nascent Ruby SDK and used it to build a Puppet-to-Wavefront reporter.

The reporter’s methodology was simple: take a raw Puppet report, which summarizes the resources managed by the run and the time spent in various phases of the operation, and turn those numbers into points in Wavefront. It wasn’t hard to do, and it very quickly gave us some idea of how frequently runs were failing, and how much work they were doing.

We also pulled lists of hosts out of Wavefront and AWS via the respective APIs, to find and cull hosts which had no config management at all. We had a lot of those.

First Sighting of Trouble

The central services team in which I work has an AWS account where we run a few core services, and “dogfood” all our new tooling. Testing the first iteration of the Puppet reporter, I plotted the average total_time for Puppet runs across the account, and saw a steady, constant, and quite unexpected, increase. Removing the avg() from the timeseries expression to present individual hosts showed the same behaviour on every host.

I picked out a single instance, and changed the query to show *_time. Whilst other metrics held steady, the file_time increased with each Puppet run. So I asked Wavefront for anything filesystem-related disk usage, I/O rate, stuff like that.

Normalizing multiple metrics on one chart can be a great way to spot corellations, so I wrapped the query in a normalize(), and it was immediately obvious the amount of data in /var was growing at pretty much the same rate as the file_time. Extracting those two metrics and removing the normalize() gave me something very much like this:

The chart above is an after-the-fact reconstruction, made by duplicating in the lab the issue I described. I can’t show you the original data because it was on our evaluation cluster, and we chose not to migrate points over from that when we got our “real” single-tenant cluster. If you stay on the same cluster, or have old data migrated, Wavefront Never Forgets, and it never loses resolution.

Hopping on a box, and looking for big files in /var showed syslog was huge. We were trialling a new version of collectd, and we’d accidentally left it running in debug mode, so it was logging like crazy. Every run, even though it only had to manage the permissions on the file, Puppet calculated the MD5 sum of syslog. Without intervention, that could have bitten us badly, and we could very easily have pushed the problematic config up to the reference repo, then out to the product teams. It also suggested our log rotation policy wasn’t sufficiently aggressive, so we fixed that too. An ounce of prevention is worth a pound of cure.

First for Knowledge

The original reporter was useful, but we wanted it to do more, not least to produce metrics on the first run. Because we installed our Wavefront tooling with Puppet, the catalog was being compiled before the requisite gems were on the box, and the initial run sent no telemetry.

Even though we couldn’t see those initial runs in Wavefront, we knew they had become way too slow. This led to new tooling to generate partially cooked “silver” AMIs containing as much common software and configuration as possible. I made sure the Wavefront SDK went in, along with our in-house tooling which wraps around it and guarantees consistent, site-specific ways of performing common tasks.

By this time, the Ruby SDK was much improved, and I rewrote the reporter to use the new batch_writer class. Sadly, the code is proprietary, so I’ll have to describe how it works rather than simply showing it to you.

The most fundamental part of the job is iterating over Puppet’s self.metrics object, and turning each value into a point. That’s pretty much how you write any reporter. The interesting part is in adding extra dimensions to the data with point tags. Every point in one of our new reports gets the following tags:

  • release: As I said, we tag our Puppet code releases RELEASE-YYYY-MM-DD-NN. So, if your run times go squiffy, or you get failures, you can easily see which release introduced the problem. There’s a down-side though.
    Wavefront, in common with all multi-dimensional metric systems, has issues with high cardinality tags. That cardinality is made up of metric, + source + tag, and problems (very slow queries) begin at around 1000 such combinations on the same metric path. We have a system where all our hosts randomly “commit suicide” no more than a week after they are born, so even if we were doing five releases an hour for the entire lifetime of each host, we’d be fine. But if you have long-lived hosts and frequent releases, you wouldn’t want to apply this tag, and a couple of our product teams don’t. For their benefit, we convert the numeric parts of the release into an integer, like 2007061501, and send that as a metric. We also gave our home-made Puppet wrapper script the ability to create an instantaneous Wavefront event when a new release drops.
  • run_by: the reporter walks up its process tree, and populates this tag according to whatever’s at the top. (Well, directly under init.) This lets you see if a run was triggered by our bootstrapper; as a cron job; or kicked off by a person, from the command-line.
  • run_no: the reporter uses a scoreboard file to keep track of the amount of times Puppet has run on a host. This has the same potential cardinality issues as the release tag, and I don’t think it’s very useful, but one of our product teams requested it and presumably use it.
  • new_code: if the symlink to the Puppet code directory has been updated more recently than run_no’s scoreboard file, then the reporter assumes the code is new, and sets this tag to true. An initial run leaves the tag false, as the reporter can’t at that point know whether it’s building a new box from old code, for instance when scaling an ASG. Don’t claim to be something unless you’re 100% sure.
  • repo: the name of the Github repository from which the Puppet code and config was pulled.

Here is a snippet of one of our real-life charts:

You can see the bootstrap runs as points, because they have a different tag. Note that we aren’t using the release or run_no tags here. Some teams do, some teams don’t. This is matching all hosts, buy it’s trivial, of course, to write a a more selective query and only show, say, the housekeeping boxes built from the puppet-log repo.

First Class Results

The chart above is one of a number on our Wavefront “Puppet overview” dashboard. Product, environment and role are dashboard variables, so it’s very easy for any product team to see, or alert off, the state of their config own management. It’s equally simple for anyone who needs to to look at Puppet across every product in the business, or wishes to compare their metrics to some other team’s.

Taking the lesson from the collectd syslog issue, we have charts which show the mean run times for bootstrap and “normal” runs (filtered by the value of the run_by tag). Having those separate lets us alert on two time thresholds.

If our bootstrap runs, which include a patching phase, consistently take more than a couple of minutes, it probably means we’re upgrading or installing too many packages. We have the capability to fire an alert with a webhook and re-bake our base AMI, which fixes that. If normal runs are taking more than a couple of minutes, then something has clearly gone wrong, and we must alert. Tags and events should help us quickly pinpoint the likely cause.

There’s also a stacked-area view of the time breakdown, which can be useful. Can you spot the bootstrap runs?

We also alert on “unexpected changes”. Points tagged with new_code = false and run_by != bootstrapperare neither bootstrap runs nor new code releases. Therefore, they should not change any host configuration. If they do, (in Wavefront parlance ts(“*.host.puppet.changed_resources”) > 0), we want to know about it, because someone’s been messing about where they shouldn’t.

Obviously, we alert on any failed resources or events, and aside from the notice in the appropriate Slack channel, all failing hosts are listed in a tabular view on the dashboard so they can be quickly investigated. One day I’m going to get round to creating some external links in Wavefront to take us from those unexpected points on a chart to a relevant query in our centralised logging service in a single click. I just haven’t got around to it yet.

As I mentioned earlier, an extra point goes in with the Puppet report data. Its value is the numeric part of the release: for example RELEASE-2016-12-04-01 becomes 2016120401. We look at the variance of this metric to check that environments or groups of hosts are all on the same release. If you deploy your application via Puppet, you’d want to know if the tier wasn’t uniform by the end of any rolling release.

Here, you can see everything has the same release. Wavefront lets you colour the text in a single-value chart depending on the value. Green is good, as they almost say.

Done

When you think of Wavefront, you immediately think of its ability to ingest and analyze insane amounts of data, but we have found there can also be tremendous value in a few carefully selected, multi-dimensional points.

I hope I’ve shown how a Wavefront, fed by a small piece of quite simple code took us quickly from “we have no idea what’s happening” to “we can automatically re-bake our AMI when it takes too long to launch a box”.

Wavefront can easily become an alternative to vendor-supplied config management observability, and there’s an awful lot to be said for the “single pane of glass” approach, with all your metrics and alerting in one place. With a source-agnostic approach and a well-documented wire format, it’s trivial to make anything that produces metrics talk to Wavefront, and immediately get visibility, alerting, and sophisticated analytics on that data.

I couldn’t share the code for the Puppet reporter I talked about, as it belongs to my client. But it’s been so useful I decided I needed something similar in the infrastrucutre I manage for myself. So, I wrote a similar reporter from scratch, using the new, far more comprehensive SDK. The tags are different, and though it supports various operating systems, I’ve only run it, so far, on SmartOS. If you’re running masterless Puppet, check out the code and give it a go. If you’re on some other config management system, it shouldn’t be a hard thing to port. It would certainly make a nice little Chef handler without a lot of effort. Contribute to the community and share the love!

The post How Wavefront Tamed a Wild Puppet appeared first on Wavefront by VMware.

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