Runtime metrics

Docker stats

You can use the docker stats command to live stream a container’s runtime metrics. The command supports CPU, memory usage, memory limit, and network IO metrics.

The following is a sample output from the docker stats command

$ docker stats redis1 redis2

CONTAINER           CPU %               MEM USAGE / LIMIT     MEM %               NET I/O             BLOCK I/O
redis1              0.07%               796 KB / 64 MB        1.21%               788 B / 648 B       3.568 MB / 512 KB
redis2              0.07%               2.746 MB / 64 MB      4.29%               1.266 KB / 648 B    12.4 MB / 0 B

The docker stats reference page has more details about the docker stats command.

Control groups

Linux Containers rely on control groups which not only track groups of processes, but also expose metrics about CPU, memory, and block I/O usage. You can access those metrics and obtain network usage metrics as well. This is relevant for “pure” LXC containers, as well as for Docker containers.

Control groups are exposed through a pseudo-filesystem. In recent distros, you should find this filesystem under /sys/fs/cgroup. Under that directory, you will see multiple sub-directories, called devices, freezer, blkio, etc.; each sub-directory actually corresponds to a different cgroup hierarchy.

On older systems, the control groups might be mounted on /cgroup, without distinct hierarchies. In that case, instead of seeing the sub-directories, you will see a bunch of files in that directory, and possibly some directories corresponding to existing containers.

To figure out where your control groups are mounted, you can run:

$ grep cgroup /proc/mounts

Enumerating cgroups

You can look into /proc/cgroups to see the different control group subsystems known to the system, the hierarchy they belong to, and how many groups they contain.

You can also look at /proc/<pid>/cgroup to see which control groups a process belongs to. The control group will be shown as a path relative to the root of the hierarchy mountpoint; e.g., / means “this process has not been assigned into a particular group”, while /lxc/pumpkin means that the process is likely to be a member of a container named pumpkin.

Finding the cgroup for a given container

For each container, one cgroup will be created in each hierarchy. On older systems with older versions of the LXC userland tools, the name of the cgroup will be the name of the container. With more recent versions of the LXC tools, the cgroup will be lxc/<container_name>.

For Docker containers using cgroups, the container name will be the full ID or long ID of the container. If a container shows up as ae836c95b4c3 in docker ps, its long ID might be something like ae836c95b4c3c9e9179e0e91015512da89fdec91612f63cebae57df9a5444c79. You can look it up with docker inspect or docker ps --no-trunc.

Putting everything together to look at the memory metrics for a Docker container, take a look at /sys/fs/cgroup/memory/docker/<longid>/.

Metrics from cgroups: memory, CPU, block I/O

For each subsystem (memory, CPU, and block I/O), you will find one or more pseudo-files containing statistics.

Memory metrics: memory.stat

Memory metrics are found in the “memory” cgroup. Note that the memory control group adds a little overhead, because it does very fine-grained accounting of the memory usage on your host. Therefore, many distros chose to not enable it by default. Generally, to enable it, all you have to do is to add some kernel command-line parameters: cgroup_enable=memory swapaccount=1.

The metrics are in the pseudo-file memory.stat. Here is what it will look like:

cache 11492564992
rss 1930993664
mapped_file 306728960
pgpgin 406632648
pgpgout 403355412
swap 0
pgfault 728281223
pgmajfault 1724
inactive_anon 46608384
active_anon 1884520448
inactive_file 7003344896
active_file 4489052160
unevictable 32768
hierarchical_memory_limit 9223372036854775807
hierarchical_memsw_limit 9223372036854775807
total_cache 11492564992
total_rss 1930993664
total_mapped_file 306728960
total_pgpgin 406632648
total_pgpgout 403355412
total_swap 0
total_pgfault 728281223
total_pgmajfault 1724
total_inactive_anon 46608384
total_active_anon 1884520448
total_inactive_file 7003344896
total_active_file 4489052160
total_unevictable 32768

The first half (without the total_ prefix) contains statistics relevant to the processes within the cgroup, excluding sub-cgroups. The second half (with the total_ prefix) includes sub-cgroups as well.

Some metrics are “gauges”, i.e., values that can increase or decrease (e.g., swap, the amount of swap space used by the members of the cgroup). Some others are “counters”, i.e., values that can only go up, because they represent occurrences of a specific event (e.g., pgfault, which indicates the number of page faults which happened since the creation of the cgroup; this number can never decrease).

Metric Description
cache The amount of memory used by the processes of this control group that can be associated precisely with a block on a block device. When you read from and write to files on disk, this amount will increase. This will be the case if you use “conventional” I/O (open, read, write syscalls) as well as mapped files (with mmap). It also accounts for the memory used by tmpfs mounts, though the reasons are unclear.
rss The amount of memory that doesn’t correspond to anything on disk: stacks, heaps, and anonymous memory maps.
mapped_file Indicates the amount of memory mapped by the processes in the control group. It doesn’t give you information about how much memory is used; it rather tells you how it is used.
pgfault, pgmajfault Indicate the number of times that a process of the cgroup triggered a “page fault” and a “major fault”, respectively. A page fault happens when a process accesses a part of its virtual memory space which is nonexistent or protected. The former can happen if the process is buggy and tries to access an invalid address (it will then be sent a SIGSEGV signal, typically killing it with the famous Segmentation fault message). The latter can happen when the process reads from a memory zone which has been swapped out, or which corresponds to a mapped file: in that case, the kernel will load the page from disk, and let the CPU complete the memory access. It can also happen when the process writes to a copy-on-write memory zone: likewise, the kernel will preempt the process, duplicate the memory page, and resume the write operation on the process` own copy of the page. “Major” faults happen when the kernel actually has to read the data from disk. When it just has to duplicate an existing page, or allocate an empty page, it’s a regular (or “minor”) fault.
swap The amount of swap currently used by the processes in this cgroup.
active_anon, inactive_anon The amount of anonymous memory that has been identified has respectively active and inactive by the kernel. “Anonymous” memory is the memory that is not linked to disk pages. In other words, that’s the equivalent of the rss counter described above. In fact, the very definition of the rss counter is active_anon + inactive_anon - tmpfs (where tmpfs is the amount of memory used up by tmpfs filesystems mounted by this control group). Now, what’s the difference between “active” and “inactive”? Pages are initially “active”; and at regular intervals, the kernel sweeps over the memory, and tags some pages as “inactive”. Whenever they are accessed again, they are immediately retagged “active”. When the kernel is almost out of memory, and time comes to swap out to disk, the kernel will swap “inactive” pages.
active_file, inactive_file Cache memory, with active and inactive similar to the anon memory above. The exact formula is cache = active_file + inactive_file + tmpfs. The exact rules used by the kernel to move memory pages between active and inactive sets are different from the ones used for anonymous memory, but the general principle is the same. Note that when the kernel needs to reclaim memory, it is cheaper to reclaim a clean (=non modified) page from this pool, since it can be reclaimed immediately (while anonymous pages and dirty/modified pages have to be written to disk first).
unevictable The amount of memory that cannot be reclaimed; generally, it will account for memory that has been “locked” with mlock. It is often used by crypto frameworks to make sure that secret keys and other sensitive material never gets swapped out to disk.
memory_limit, memsw_limit These are not really metrics, but a reminder of the limits applied to this cgroup. The first one indicates the maximum amount of physical memory that can be used by the processes of this control group; the second one indicates the maximum amount of RAM+swap.

Accounting for memory in the page cache is very complex. If two processes in different control groups both read the same file (ultimately relying on the same blocks on disk), the corresponding memory charge will be split between the control groups. It’s nice, but it also means that when a cgroup is terminated, it could increase the memory usage of another cgroup, because they are not splitting the cost anymore for those memory pages.

CPU metrics: cpuacct.stat

Now that we’ve covered memory metrics, everything else will look very simple in comparison. CPU metrics will be found in the cpuacct controller.

For each container, you will find a pseudo-file cpuacct.stat, containing the CPU usage accumulated by the processes of the container, broken down between user and system time. If you’re not familiar with the distinction, user is the time during which the processes were in direct control of the CPU (i.e., executing process code), and system is the time during which the CPU was executing system calls on behalf of those processes.

Those times are expressed in ticks of 1/100th of a second. Actually, they are expressed in “user jiffies”. There are USER_HZ “jiffies” per second, and on x86 systems, USER_HZ is 100. This used to map exactly to the number of scheduler “ticks” per second; but with the advent of higher frequency scheduling, as well as tickless kernels, the number of kernel ticks wasn’t relevant anymore. It stuck around anyway, mainly for legacy and compatibility reasons.

Block I/O metrics

Block I/O is accounted in the blkio controller. Different metrics are scattered across different files. While you can find in-depth details in the blkio-controller file in the kernel documentation, here is a short list of the most relevant ones:

Metric Description
blkio.sectors contains the number of 512-bytes sectors read and written by the processes member of the cgroup, device by device. Reads and writes are merged in a single counter.
blkio.io_service_bytes indicates the number of bytes read and written by the cgroup. It has 4 counters per device, because for each device, it differentiates between synchronous vs. asynchronous I/O, and reads vs. writes.
blkio.io_serviced the number of I/O operations performed, regardless of their size. It also has 4 counters per device.
blkio.io_queued indicates the number of I/O operations currently queued for this cgroup. In other words, if the cgroup isn’t doing any I/O, this will be zero. Note that the opposite is not true. In other words, if there is no I/O queued, it does not mean that the cgroup is idle (I/O-wise). It could be doing purely synchronous reads on an otherwise quiescent device, which is therefore able to handle them immediately, without queuing. Also, while it is helpful to figure out which cgroup is putting stress on the I/O subsystem, keep in mind that it is a relative quantity. Even if a process group does not perform more I/O, its queue size can increase just because the device load increases because of other devices.

Network metrics

Network metrics are not exposed directly by control groups. There is a good explanation for that: network interfaces exist within the context of network namespaces. The kernel could probably accumulate metrics about packets and bytes sent and received by a group of processes, but those metrics wouldn’t be very useful. You want per-interface metrics (because traffic happening on the local lo interface doesn’t really count). But since processes in a single cgroup can belong to multiple network namespaces, those metrics would be harder to interpret: multiple network namespaces means multiple lo interfaces, potentially multiple eth0 interfaces, etc.; so this is why there is no easy way to gather network metrics with control groups.

Instead we can gather network metrics from other sources:

IPtables

IPtables (or rather, the netfilter framework for which iptables is just an interface) can do some serious accounting.

For instance, you can setup a rule to account for the outbound HTTP traffic on a web server:

$ iptables -I OUTPUT -p tcp --sport 80

There is no -j or -g flag, so the rule will just count matched packets and go to the following rule.

Later, you can check the values of the counters, with:

$ iptables -nxvL OUTPUT

Technically, -n is not required, but it will prevent iptables from doing DNS reverse lookups, which are probably useless in this scenario.

Counters include packets and bytes. If you want to setup metrics for container traffic like this, you could execute a for loop to add two iptables rules per container IP address (one in each direction), in the FORWARD chain. This will only meter traffic going through the NAT layer; you will also have to add traffic going through the userland proxy.

Then, you will need to check those counters on a regular basis. If you happen to use collectd, there is a nice plugin to automate iptables counters collection.

Interface-level counters

Since each container has a virtual Ethernet interface, you might want to check directly the TX and RX counters of this interface. You will notice that each container is associated to a virtual Ethernet interface in your host, with a name like vethKk8Zqi. Figuring out which interface corresponds to which container is, unfortunately, difficult.

But for now, the best way is to check the metrics from within the containers. To accomplish this, you can run an executable from the host environment within the network namespace of a container using ip-netns magic.

The ip-netns exec command will let you execute any program (present in the host system) within any network namespace visible to the current process. This means that your host will be able to enter the network namespace of your containers, but your containers won’t be able to access the host, nor their sibling containers. Containers will be able to “see” and affect their sub-containers, though.

The exact format of the command is:

$ ip netns exec <nsname> <command...>

For example:

$ ip netns exec mycontainer netstat -i

ip netns finds the “mycontainer” container by using namespaces pseudo-files. Each process belongs to one network namespace, one PID namespace, one mnt namespace, etc., and those namespaces are materialized under /proc/<pid>/ns/. For example, the network namespace of PID 42 is materialized by the pseudo-file /proc/42/ns/net.

When you run ip netns exec mycontainer ..., it expects /var/run/netns/mycontainer to be one of those pseudo-files. (Symlinks are accepted.)

In other words, to execute a command within the network namespace of a container, we need to:

  • Find out the PID of any process within the container that we want to investigate;
  • Create a symlink from /var/run/netns/<somename> to /proc/<thepid>/ns/net
  • Execute ip netns exec <somename> ....

Please review Enumerating Cgroups to learn how to find the cgroup of a process running in the container of which you want to measure network usage. From there, you can examine the pseudo-file named tasks, which contains the PIDs that are in the control group (i.e., in the container). Pick any one of them.

Putting everything together, if the “short ID” of a container is held in the environment variable $CID, then you can do this:

$ TASKS=/sys/fs/cgroup/devices/docker/$CID*/tasks
$ PID=$(head -n 1 $TASKS)
$ mkdir -p /var/run/netns
$ ln -sf /proc/$PID/ns/net /var/run/netns/$CID
$ ip netns exec $CID netstat -i

Tips for high-performance metric collection

Note that running a new process each time you want to update metrics is (relatively) expensive. If you want to collect metrics at high resolutions, and/or over a large number of containers (think 1000 containers on a single host), you do not want to fork a new process each time.

Here is how to collect metrics from a single process. You will have to write your metric collector in C (or any language that lets you do low-level system calls). You need to use a special system call, setns(), which lets the current process enter any arbitrary namespace. It requires, however, an open file descriptor to the namespace pseudo-file (remember: that’s the pseudo-file in /proc/<pid>/ns/net).

However, there is a catch: you must not keep this file descriptor open. If you do, when the last process of the control group exits, the namespace will not be destroyed, and its network resources (like the virtual interface of the container) will stay around for ever (or until you close that file descriptor).

The right approach would be to keep track of the first PID of each container, and re-open the namespace pseudo-file each time.

Collecting metrics when a container exits

Sometimes, you do not care about real time metric collection, but when a container exits, you want to know how much CPU, memory, etc. it has used.

Docker makes this difficult because it relies on lxc-start, which carefully cleans up after itself, but it is still possible. It is usually easier to collect metrics at regular intervals (e.g., every minute, with the collectd LXC plugin) and rely on that instead.

But, if you’d still like to gather the stats when a container stops, here is how:

For each container, start a collection process, and move it to the control groups that you want to monitor by writing its PID to the tasks file of the cgroup. The collection process should periodically re-read the tasks file to check if it’s the last process of the control group. (If you also want to collect network statistics as explained in the previous section, you should also move the process to the appropriate network namespace.)

When the container exits, lxc-start will try to delete the control groups. It will fail, since the control group is still in use; but that’s fine. You process should now detect that it is the only one remaining in the group. Now is the right time to collect all the metrics you need!

Finally, your process should move itself back to the root control group, and remove the container control group. To remove a control group, just rmdir its directory. It’s counter-intuitive to rmdir a directory as it still contains files; but remember that this is a pseudo-filesystem, so usual rules don’t apply. After the cleanup is done, the collection process can exit safely.

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https://docs.docker.com/v1.13/engine/admin/runmetrics/