7.4 KiB
CC Metric Router
The CCMetric router sits in between the collectors and the sinks and can be used to add and remove tags to/from traversing CCMetrics.
Configuration
{
"interval_timestamp" : true,
"add_tags" : [
{
"key" : "cluster",
"value" : "testcluster",
"if" : "*"
},
{
"key" : "test",
"value" : "testing",
"if" : "name == 'temp_package_id_0'"
}
],
"delete_tags" : [
{
"key" : "unit",
"value" : "*",
"if" : "*"
}
],
"interval_aggregates" : [
{
"name" : "temp_cores_avg",
"if" : "match('temp_core_%d+', metric.Name())",
"function" : "avg(values)",
"tags" : {
"type" : "node"
},
"meta" : {
"group": "IPMI",
"unit": "degC",
"source": "TempCollector"
}
}
],
"drop_metrics" : [
"not_interesting_metric_at_all"
],
"drop_metrics_if" : [
"match('temp_core_%d+', metric.Name())"
],
"rename_metrics" : {
"metric_12345" : "mymetric"
}
}
There are three main options add_tags
, delete_tags
and interval_timestamp
. add_tags
and delete_tags
are lists consisting of dicts with key
, value
and if
. The value
can be omitted in the delete_tags
part as it only uses the key
for removal. The interval_timestamp
setting means that a unique timestamp is applied to all metrics traversing the router during an interval.
The interval_timestamp
option
The collectors' Read()
functions are not called simultaneously and therefore the metrics gathered in an interval can have different timestamps. If you want to avoid that and have a common timestamp (the beginning of the interval), set this option to true
and the MetricRouter sets the time.
The rename_metrics
option
In the ClusterCockpit world we specified a set of standard metrics. Since some collectors determine the metric names based on files, execuables and libraries, they might change from system to system (or installation to installtion, OS to OS, ...). In order to get the common names, you can rename incoming metrics before sending them to the sink. If the metric name matches the oldname
, it is changed to newname
{
"oldname" : "newname",
"clock_mhz" : "clock"
}
Conditional manipulation of tags (add_tags
and del_tags
)
Common config format:
{
"key" : "test",
"value" : "testing",
"if" : "name == 'temp_package_id_0'"
}
The del_tags
option
The collectors are free to add whatever key=value
pair to the metric tags (although the usage of tags should be minimized). If you want to delete a tag afterwards, you can do that. When the if
condition matches on a metric, the key
is removed from the metric's tags.
If you want to remove a tag for all metrics, use the condition wildcard *
. The value
field can be omitted in the del_tags
case.
Never delete tags:
hostname
type
type-id
The add_tags
option
In some cases, metrics should be tagged or an existing tag changed based on some condition. This can be done in the add_tags
section. When the if
condition evaluates to true
, the tag key
is added or gets changed to the new value
.
If the CCMetric name is equal to temp_package_id_0
, it adds an additional tag test=testing
to the metric.
For this metric, a more useful example would be:
[
{
"key" : "type",
"value" : "socket",
"if" : "name == 'temp_package_id_0'"
},
{
"key" : "type-id",
"value" : "0",
"if" : "name == 'temp_package_id_0'"
},
]
The metric temp_package_id_0
corresponds to the tempature of the first CPU socket (=package). With the above configuration, the tags would reflect that because commonly the TempCollector submits only node
metrics.
In order to match all metrics, you can use *
, so in order to add a flag per default. This is useful to attached system-specific tags like cluster=testcluster
:
{
"key" : "cluster",
"value" : "testcluster",
"if" : "*"
}
Dropping metrics
In some cases, you want to drop a metric and don't get it forwarded to the sinks. There are two options based on the required specification:
- Based only on the metric name ->
drop_metrics
section - An evaluable condition with more overhead ->
drop_metrics_if
section
The drop_metrics
section
The argument is a list of metric names. No futher checks are performed, only a comparison of the metric name
{
"drop_metrics" : [
"drop_metric_1",
"drop_metric_2"
]
}
The example drops all metrics with the name drop_metric_1
and drop_metric_2
.
The drop_metrics_if
section
This option takes a list of evaluable conditions and performs them one after the other on all metrics incoming from the collectors and the metric cache (aka interval_aggregates
).
{
"drop_metrics_if" : [
"match('drop_metric_%d+', name)",
"match('cpu', type) && type-id == 0"
]
}
The first line is comparable with the example in drop_metrics
, it drops all metrics starting with drop_metric_
and ending with a number. The second line drops all metrics of the first hardware thread (not recommended)
Aggregate metric values of the current interval with the interval_aggregates
option
In some cases, you need to derive new metrics based on the metrics arriving during an interval. This can be done in the interval_aggregates
section. The logic is similar to the other metric manipulation and filtering options. A cache stores all metrics that arrive during an interval. At the beginning of the next interval, the list of metrics is submitted to the MetricAggregator. It derives new metrics and submits them back to the MetricRouter, so they are sent in the next interval but have the timestamp of the previous interval beginning.
"interval_aggregates" : [
{
"name" : "new_metric_name",
"if" : "match('sub_metric_%d+', metric.Name())",
"function" : "avg(values)",
"tags" : {
"key" : "value",
"type" : "node"
},
"meta" : {
"key" : "value",
"group": "IPMI",
"unit": "<copy>",
}
}
]
The above configuration, collects all metric values for metrics evaluating if
to true
. Afterwards it calculates the average avg
of the values
(list of all metrics' field value
) and creates a new CCMetric with the name new_metric_name
and adds the tags in tags
and the meta information in meta
. The special value <copy>
searches the input metrics and copies the value of the first match of key
to the new CCMetric.
If you are not interested in the input metrics sub_metric_%d+
at all, you can add the same condition used here to the drop_metrics_if
section to drop them.
Use cases for interval_aggregates
:
- Combine multiple metrics of the a collector to a new one like the MemstatCollector does it for
mem_used
)):
{
"name" : "mem_used",
"if" : "source == 'MemstatCollector'",
"function" : "sum(mem_total) - (sum(mem_free) + sum(mem_buffers) + sum(mem_cached))",
"tags" : {
"type" : "node"
},
"meta" : {
"group": "<copy>",
"unit": "<copy>",
"source": "<copy>"
}
}