Writing Agent Plugins¶
This documentation gives you some clues on how to write a new agent or plugin for Ceilometer if you wish to instrument a measurement which has not yet been covered by an existing plugin.
Plugin Framework¶
Although we have described a list of the meters Ceilometer should
collect, we cannot predict all of the ways deployers will want to
measure the resources their customers use. This means that Ceilometer
needs to be easy to extend and configure so it can be tuned for each
installation. A plugin system based on setuptools entry points
makes it easy to add new monitors in the agents. In particular,
Ceilometer now uses Stevedore, and you should put your entry point
definitions in the entry_points.txt
file of your Ceilometer egg.
Installing a plugin automatically activates it the next time the ceilometer daemon starts. Rather than running and reporting errors or simply consuming cycles for no-ops, plugins may disable themselves at runtime based on configuration settings defined by other components (for example, the plugin for polling libvirt does not run if it sees that the system is configured using some other virtualization tool). Additionally, if no valid resources can be discovered the plugin will be disabled.
Polling Agents¶
The polling agent is implemented in ceilometer/polling/manager.py
. As
you will see in the manager, the agent loads all plugins defined in
the ceilometer.poll.*
and ceilometer.builder.poll.*
namespaces, then
periodically calls their get_samples()
method.
Currently we keep separate namespaces - ceilometer.poll.compute
and ceilometer.poll.central
for quick separation of what to poll depending
on where is polling agent running. For example, this will load, among others,
the ceilometer.compute.pollsters.instance_stats.CPUPollster
Pollster¶
All pollsters are subclasses of
ceilometer.polling.plugin_base.PollsterBase
class. Pollsters must
implement one method: get_samples(self, manager, cache, resources)
, which
returns a sequence of Sample
objects as defined in the
ceilometer/sample.py
file.
Compute plugins are defined as subclasses of the
ceilometer.compute.pollsters.GenericComputePollster
class as defined
in the ceilometer/compute/pollsters/__init__.py
file.
For example, in the CPUPollster
plugin, the get_samples
method takes
in a given list of resources representing instances on the local host, loops
through them and retrieves the cpu time details from resource. Similarly,
other metrics are built by pulling the appropriate value from the given list
of resources.
Notifications¶
Notifications in OpenStack are consumed by the notification agent and passed through pipelines to be normalised and re-published to specified targets.
The existing normalisation pipelines are defined in the namespace
ceilometer.notification.pipeline
.
Each normalisation pipeline are defined as subclass of
ceilometer.pipeline.base.PipelineManager
which interprets and builds
pipelines based on a given configuration file. Pipelines are required to define
Source and Sink permutations to describe how to process notification.
Additionally, it must set get_main_endpoints
which provides endpoints to be
added to the main queue listener in the notification agent. This main queue
endpoint inherits ceilometer.pipeline.base.NotificationEndpoint
and defines which notification priorities to listen, normalises the data,
and redirects the data for pipeline processing.
Notification endpoints should implement:
event_types
A sequence of strings defining the event types the endpoint should handle
process_notifications(self, priority, notifications)
Receives an event message from the list provided to
event_types
and returns a sequence of objects. Using the SampleEndpoint, it should yieldSample
objects as defined in theceilometer/sample.py
file.
Two pipeline configurations exist and can be found under
ceilometer.pipeline.*
. The sample pipeline loads in multiple endpoints
defined in ceilometer.sample.endpoint
namespace. Each of the endpoints
normalises a given notification into different samples.