The aci-exporter provide metrics from a Cisco ACI fabric by using the ACI Rest API against ACPI controller(s). The exporter also have the capability to directly scrape individual splines and leafs using the aci-exporter inbuilt http based service discovery. Doing direct spine and leaf queries is typical useful in very large fabrics, where doing all api calls through the apic can put a high load on the apic and result in high response time.
The aci-exporter has been tested on a fabric with more than 500 spines and leafs. To achieve this the exporter use a number of key features:
- Dynamic service discovery of all spines and leafs nodes in the fabric
- Using node queries to scrape individual spine and leaf nodes
- Parallel page request when queries include the
order-by
statement
The exporter can return data both in the Prometheus and the Openmetrics (v1) exposition format.
The metrics that are exported is configured by definitions of queries. The query can be of any supported ACI class.
The exporter is written in Go and is a single binary with no dependencies.
If you are looking for a complete way to monitor your ACI fabric, including the aci-exporter, Prometheus Loki, and Grafana you should check out ACI Monitor Stack.
The exporter provides three types of query configuration:
-
Class queries - one query, many metrics - These are applicable where one query can result in multiple metric names sharing the same labels. A good example is queries on interfaces, class ethpmPhysIf, that results in metrics for speed, state, etc.
-
Group class queries - multiple queries, one metric - These are applicable when multiple queries result in a single metrics name with common and uniq labels. Example of this is the metric
health
, where all the different objects health require different queries, but they are all health. So instead of xyz_health it becomes health and some label with value xyz. -
Compound queries - multiple queries, one metric and fixed labels - These are applicable where multiple queries result in single metric name with configured labels. This is typical when counting different entities with filter like
?rsp-subtree-include=count
. Since no labels are returned fixed labels is used.
There also some so-called built-in queries. These are hard coded queries.
Example of queries can be found in the
example-config.yaml
file. Make sure you understand the ACI api before changing or creating new ones.
In addition to configure all queries in the configuration file, they can also be configured in different files in the
configuration directory. This is by default the directory config.d
located in the same directory as the configuration
file. Instead of having all queries in a single file it is possible to divide by type and/or purpose.
Class queries can be done against the different ACI classes. For a single query multiple metrics can be collected. All metrics will share the same labels.
Example of queries are:
- Node health of spine and leafs
- Fabric health
- Tenant health
- Interface state
Labels extraction is done by using regexp on one or more property from the json response using named expression.
In the below example we use the topSystem.attributes.dn
property and parse it with the regexp
^topology/pod-(?P<podid>[1-9][0-9]*)/node-(?P<nodeid>[1-9][0-9]*)/sys
that will return label values for the label
names podid
and nodid
. The property topSystem.attributes.state
will return a label name state
matching the
whole property value.
labels:
- property_name: topSystem.attributes.dn
regex: "^topology/pod-(?P<podid>[1-9][0-9]*)/node-(?P<nodeid>[1-9][0-9]*)/sys"
- property_name: topSystem.attributes.state
regex: "^(?P<state>.*)"
Group queries group a number of class queries under a single metrics name, unit, help and type. Both individual and common labels are supported.
The compound queries is used when a single metrics is "compounded" by different queries. In the
example-config.yaml
file is an example where the number of spines, leafs and controllers are counted. They will
all be of the metric nodes
but require 3 different queries. Since no labels can be extracted from the response
the label name and label value is configured.
The result is:
# HELP nodes Returns the current count of nodes
# TYPE nodes gauge
aci_nodes{aci="ACI Fabric1",fabric="cisco_sandbox",node="spine"} 3
aci_nodes{aci="ACI Fabric1",fabric="cisco_sandbox",node="leaf"} 7
aci_nodes{aci="ACI Fabric1",fabric="cisco_sandbox",node="controller"} 1
For all query types its possible to add a list of static labels, like:
staticlabels:
- key: datacenter
value: dc01
See example-config.yaml
for example.
The export has some standard metric "built-in". These are:
faults
, labeled by severity and type of fault, like operational, configuration and environment faults.
The configuration should by default be in the file config.yaml
. It is also an option to place class_queries
,
compound_queries
and/or group_class_queries
in different files in a directory, a directory by default named
config.d
that is in the same directory path as the configuration file.
The name of the directory can be changed using the
-config_dir
argument or theconfig_dir: ..
entry in the config file or by using environment variables.
If queries has the same name they will be overridden by the order they are parsed and finally query name in the
configuration file, default, config.yaml
will have the highest priority.
In the repository directory config.d
there is a selection of some of the different queries that has
been created by the community.
A metrics and label value is some part of the json returned by a query. The key for metrics value in all query types is
value_name
.
The aci-exporter use Gjson for parsing the metrics value and the label value.
To get the state metrics value for the class ethpmPhysIf the parsing expression would be ethpmPhysIf.attributes.operSt
.
There are one addition to the Gjson syntax, and it's related to array's returning objects.
The first example is for an array returning different kind of objects. A good example from the APIC api is the returning of children, like the following query:
/api/class/fvAEPg.json?rsp-subtree-include=health,required
This will return a child structure like this:
"children": [
{
"healthNodeInst": {
"attributes": {
"childAction": "deleteNonPresent",
"chng": "400",
"cur": "100",
"isExisting": "no",
"lcOwn": "local",
"maxSev": "cleared",
"modTs": "never",
"nodeId": "101",
"podId": "1",
"prev": "20",
"rn": "nodehealth-101",
"status": "",
"twScore": "100",
"updTs": "2020-08-11T17:41:24.154+02:00",
"weight": "1"
}
}
},
{
"healthNodeInst": {
"attributes": {
"childAction": "deleteNonPresent",
"chng": "400",
"cur": "100",
"isExisting": "no",
"lcOwn": "local",
"maxSev": "cleared",
"modTs": "never",
"nodeId": "102",
"podId": "1",
"prev": "20",
"rn": "nodehealth-102",
"status": "",
"twScore": "100",
"updTs": "2020-08-11T17:41:31.400+02:00",
"weight": "1"
}
}
},
{
"healthInst": {
"attributes": {
"childAction": "",
"chng": "400",
"cur": "100",
"maxSev": "cleared",
"modTs": "never",
"prev": "20",
"rn": "health",
"status": "",
"twScore": "100",
"updTs": "2020-08-11T17:41:32.306+02:00"
}
}
}
]
From the output, the health of the specific fvAEPg is defined in the third entry in the array, healthInst
, and the
other entries are related to the ACI nodes of the application endpoint group. If we just want to get the result of
cur
from the healthInst
we express the path as:
fvAEPg.children.[healthInst].attributes.cur
This defines that in the children
array we want to extract data from the healthInst
entry.
So the addition is to use the left and right bracket to define that it's an array, and between the brackets is the
regular expression of the entry.
If multiple instances of healthInst
existed only the first found will be used.
This currently only work with one level of arrays.
If you want to iterate over all children the expression would be .[.*].
.
This is useful when a class query return a number of different objects.
Example of this would be for the class ethpmDOMStats
using the query ?rsp-subtree=children
. This will return a number
of children objets, and for all the children classes we like to get the hiAlarm
metric.
value_name: ethpmDOMStats.children.[.*].attributes.hiAlarm
The .*
will be substituted with the children class name. That means it can also be used as a label like:
labels:
# this will be the child class name
- property_name: ethpmDOMStats.children.[.*]
regex: "^(?P<class>.*)"
# this will be the lanes of the child class
- property_name: ethpmDOMStats.children.[.*].attributes.lanes
regex: "^(?P<laneid>.*)"
The full query configuration
ethpmdomstats:
class_name: ethpmDOMStats
query_parameter: '?rsp-subtree=children'
metrics:
- name: ethpmDOMStats_hiAlarm
value_name: ethpmDOMStats.children.[.*].attributes.hiAlarm
type: "gauge"
help: "Returns hiAlarm"
labels:
- property_name: ethpmDOMStats.attributes.dn
regex: "^topology/pod-(?P<podid>[1-9][0-9]*)/node-(?P<nodeid>[1-9][0-9]*)/sys/phys-\\[(?P<interface>[^\\]]+)\\]/"
- property_name: ethpmDOMStats.children.[.*]
regex: "^(?P<class>.*)"
- property_name: ethpmDOMStats.children.[.*].attributes.lanes
regex: "^(?P<laneid>.*)"
The query will return a prometheus metrics response like this, where the class
label is set to the name of each child
class name:
curl -s 'https://localhost:9643/probe?target=XYZ&queries=ethpmdomstats'
# HELP ethpmDOMStats_hiAlarm Returns hiAlarm
# TYPE ethpmDOMStats_hiAlarm gauge
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMRxPwrStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="101",podid="1"} 0.999912
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTxPwrStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="101",podid="1"} 2.50005
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMCurrentStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="101",podid="1"} 90.000008
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTempStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="101",podid="1"} 90
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMVoltStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="101",podid="1"} 3.6
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMRxPwrStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="101",podid="1"} 3.0103
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTxPwrStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="101",podid="1"} 1.291741
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMCurrentStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="101",podid="1"} 100.000008
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTempStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="101",podid="1"} 90
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMVoltStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="101",podid="1"} 3.63
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMRxPwrStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="101",podid="1"} 3.000082
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTxPwrStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="101",podid="1"} 7.000024
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMCurrentStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="101",podid="1"} 110.000008
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTempStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="101",podid="1"} 100
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMVoltStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="101",podid="1"} 3.6
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMRxPwrStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="102",podid="1"} 3.000082
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTxPwrStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="102",podid="1"} 7.000024
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMCurrentStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="102",podid="1"} 110.000008
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTempStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="102",podid="1"} 100
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMVoltStats",fabric="XYZ",interface="eth1/1",laneid="1",nodeid="102",podid="1"} 3.6
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMRxPwrStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="102",podid="1"} 3.0103
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTxPwrStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="102",podid="1"} 1.291741
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMCurrentStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="102",podid="1"} 100.000008
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTempStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="102",podid="1"} 90
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMVoltStats",fabric="XYZ",interface="eth1/2",laneid="1",nodeid="102",podid="1"} 3.63
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMRxPwrStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="102",podid="1"} 3.000082
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTxPwrStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="102",podid="1"} 7.000024
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMCurrentStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="102",podid="1"} 110.000008
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTempStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="102",podid="1"} 100
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMVoltStats",fabric="XYZ",interface="eth1/48",laneid="1",nodeid="102",podid="1"} 3.6
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMRxPwrStats",fabric="XYZ",interface="eth1/3",laneid="1",nodeid="102",podid="1"} 1.000257
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTxPwrStats",fabric="XYZ",interface="eth1/3",laneid="1",nodeid="102",podid="1"} -1.999707
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMCurrentStats",fabric="XYZ",interface="eth1/3",laneid="1",nodeid="102",podid="1"} 17
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMTempStats",fabric="XYZ",interface="eth1/3",laneid="1",nodeid="102",podid="1"} 95
aci_ethpmDOMStats_hiAlarm{aci="VBDC-Fabric1",class="ethpmDOMVoltStats",fabric="XYZ",interface="eth1/3",laneid="1",nodeid="102",podid="1"} 3.9
# HELP scrape_duration_seconds The duration, in seconds, of the last scrape of the fabric
# TYPE scrape_duration_seconds gauge
aci_scrape_duration_seconds{aci="VBDC-Fabric1",fabric="XYZ"} 0.116875019
# HELP up The connection state 1=UP, 0=DOWN
# TYPE up gauge
aci_up{aci="ACI Fabric1",fabric="XYZ"} 1
The last two metrics, aci_scrape_duration_seconds
and aci_up
are built into the exporter. The aci_up
, new since 0.4.0,
while return 1 if the export could connect with the apic and 0 in all other fail situations.
In the query configuration the attribute value_name
define the entity in the response that will be used as a value
for the metrics. Prometheus can only manage metrics value of the type float, so all values must be transformed to
a float. The export automatically handle this for values of the type:
- Float
- Integers
- Time stamp in the format of rfc 3339, will be transformed to a UNIX timestamp in seconds
Some metrics from ACI api is returned as strings, and needs to be transformed to a float.
This can be done with a value_transform
. E.g. the speed of an interface:
value_transform:
'unknown': 0
'100M': 100000000
'1G': 1000000000
'10G': 10000000000
'25G': 25000000000
'40G': 40000000000
'100G': 100000000000
Or the state of an interface:
value_transform:
'unknown': 0
'down': 1
'up': 2
'link-up': 3
With value regex transformation, value_regex_transformation
, it's possible needed to extract a portion of the
string to a value.
In the example the string in fvnsEncapBlk.attributes.from
returns something like vlan-120
. With the regex
transformation the value 200
will be extracted and used as the metrics value
class_queries:
vlans:
class_name: fvnsEncapBlk
metrics:
- name: vlans_from
value_name: fvnsEncapBlk.attributes.from
type: gauge
help: The from vlan
value_regex_transformation: "vlan-(.*)"
labels:
- property_name: fvnsEncapBlk.attributes.dn
regex: "^uni/infra/vlanns-\\[(?P<vlanns>.+)\\]-static/from-\\[(?P<from>.+)\\]-to-\\[(?P<to>.+)\\]"
If both
value_transformation
andvalue_regex_transformation
is usedvalue_regex_transformation
is always processed beforevalue_transformation
.
It is also possible to recalculate a metrics value using value_calculation
. Like present percentage in decimal:
value_calculation: "value / 100"
The value_calculation use the govaluate for arithmetic/string expressions.
The
value
is the named variable for the metric value and can not be named anything else.
In some use cases it is a need to parse multiple value from a string to calculate a metrics value.
A good example is what is the uptime reported by the query on class topSystem
with the query_parameter
?rsp-subtree-include=health
. The uptime is in the property topSystem.attributes.systemUpTime
. The value is expressed
with the format of 07:17:00:15.000
, meaning uptime is 7 days, 17 hours, 0 minutes and 15 seconds. This not something
that Prometheus can understand as a value. The way to manage this is using the following steps:
- In
value_regex_transformation
we need to parse multiple value using the following example regex,([0-9].*):([0-2][0-9]):([0-6][0-9]):([0-6][0-9])\\..*
. For each () we get a match resulting in 4 values. These are namedvalue1
tovalue4
. - In the
value_calculation
the parameters from the above can now be used to calculate the uptime in seconds using
the expressionvalue1 * 86400 + value2 * 3600 + value3 * 60 + value4
The complete configuration example:
class_queries:
uptime_topsystem:
class_name: topSystem
query_parameter: "?rsp-subtree-include=health"
metrics:
- name: uptime
value_name: topSystem.attributes.systemUpTime
value_regex_transformation: "([0-9].*):([0-2][0-9]):([0-6][0-9]):([0-6][0-9])\\..*"
value_calculation: "value1 * 86400 + value2 * 3600 + value3 * 60 + value4"
labels:
- property_name: topSystem.attributes.dn
regex: "^topology/pod-(?P<podid>[1-9][0-9]*)/node-(?P<nodeid>[1-9][0-9]*)/sys"
- property_name: topSystem.attributes.state
regex: "^(?P<state>.*)"
- property_name: topSystem.attributes.oobMgmtAddr
regex: "^(?P<oobMgmtAddr>.*)"
- property_name: topSystem.attributes.name
regex: "^(?P<name>.*)"
- property_name: topSystem.attributes.role
regex: "^(?P<role>.*)"
In the above configuration the parameters are given fixed names, value1
to value4
. But it is also possible to name
the parameters in the same way it's done with labels, so called named regex groups.
In the below example we name the first group to days
, the second group to hours
etc. And in the
value_calculation
we reference the variables with the same name they are given in the value_regex_transformation
.
value_regex_transformation: "(?P<days>[0-9].*):(?P<hours>[[0-2][0-9]):(?P<minutes>[[0-6][0-9]):(?P<seconds>[[0-6][0-9])\\..*"
value_calculation: "days * 86400 + hours * 3600 + minutes * 60 + seconds"
This increase the readability and makes it's easier to remember what the regex does.
Since all queries are configurable metrics name and label definitions are up to the person doing the configuration. The recommendation is to follow the best practices for Promethues.
To make labels useful in the ACI context we think a good recommendation is to use the structure and naming in the
ACI class model.
Use the label name class
when we relate to names from the class model like fvTenant
and
fvBD
, where fv
is the package and Tenant
is the class name.
If we want to have a label name for a specific instance of the class we use the class name in lower case like tenant
and bd
, like tenant="opsdis"
For different identities like pods and nodes we use the type+id like podid
and nodeid
. So for node 201 the label is
nodeid="201"
.
The aci-exporter will attach the following labels to all metrics
aci
the name of the ACI. This is done by an API call.fabric
the name of the configuration.
In large fabrics the aci-exporter provide a way to distribute the api calls to the individual spine and leaf nodes
instead of using a single apic (or multiple behind a LB).
This configuration depend on the aci-exporter's dynamic service discovery used by Prometheus. The discovery detect all
the current nodes in the fabric including the apic's based on the topSystems
class. To collect metrics the same
/probe
api is used with the addition of the query parameter node
that is set to the spine or leaf node where
to scrape.
The service discovery is exposed on the /sd
endpoint where the query parameter target
is the name of fabric in the
config.yml
file, e.g. 'https://localhost:9643/sd?fabric=xyz'
. The output can look like this:
....
},
{
"targets": [
"sydney#172.16.0.68"
],
"labels": {
"__meta_aci_exporter_fabric": "sydney",
"__meta_address": "10.3.96.66",
"__meta_dn": "topology/pod-2/node-202/sys",
"__meta_fabricDomain": "fab2",
"__meta_fabricId": "1",
"__meta_id": "202",
"__meta_inbMgmtAddr": "0.0.0.0",
"__meta_name": "leaf202",
"__meta_nameAlias": "",
"__meta_nodeType": "unspecified",
"__meta_oobMgmtAddr": "172.16.0.68",
"__meta_podId": "2",
"__meta_role": "leaf",
"__meta_serial": "FDO2442054U",
"__meta_siteId": "2",
"__meta_state": "in-service",
"__meta_version": "n9000-16.0(5h)"
}
},
.....
As describe in the example above the targets
is by default set to the fabric name defined in the aci-exporter
config.yaml, the label __meta_aci_exporter_fabric
and the label __meta_oobMgmtAddr
separated with a #
character.
The #
character can be used in the prometheus config as a separator to get both query parameters needed to access a
single node of a spine or leaf:
relabel_configs:
- source_labels: [ __meta_role ]
# Only run this job for spine and leaf roles
regex: "(spine|leaf)"
action: "keep"
# Get the target param from __address__ that is <fabric>#<oobMgmtAddr> by default
- source_labels: [ __address__ ]
separator: "#"
regex: (.*)#(.*)
replacement: "$1"
target_label: __param_target
# Get the node param from __address__ that is <fabric>#<oobMgmtAddr> by default
- source_labels: [ __address__ ]
separator: "#"
regex: (.*)#(.*)
replacement: "$2"
target_label:
If the endpoint is called without a query parameter, service discovery is done for all configured fabrics.
The discovery response can now be used in the prometheus configuration as described in the example file
prometheus/prometheus_nodes.yml
.
In the directory
config_node.d
there is a selection of queries that works for node based queries.
What the service discovery should return can be highly configurable. This is both related to the targets and labels returned.
Overriding the defaults can be done for all fabrics, but also for individual fabrics. The individual configuration always take precedence.
For the targets the default is to return fabric name and oobMgmtAddr
, but if all fabrics instead use the inbMgmtAddr
for access this can be changed in the config.yaml
# Common service discovery
service_discovery:
target_format: "%s#%s"
target_fields:
- aci_exporter_fabric
- inMgmtAddr
For each fabric the discovery can also be override using the same definitions as above but on the fabric level.
fabrics:
# This is the Cisco provided sandbox that is open for testing
cisco_sandbox:
username: admin
password: <check the cisco sandbox to get the password>
apic:
- https://sandboxapicdc.cisco.com
service_discovery:
target_format: "%s#%s"
target_fields:
- aci_exporter_fabric
- inbMgmtAddr
All fields returned by the topSystems
class query can be used as targets and labels.
The service discovery will also return the discovery of the configured aci-exporter fabrics. This will be entries with the following content:
{
"targets": [
"sydney"
],
"labels": {
"__meta_fabricDomain": "fab2",
"__meta_role": "aci_exporter_fabric"
}
}
This can now be used from the prometheus configuration to do the "classic" apic queries like:
- job_name: 'aci'
scrape_interval: 1m
scrape_timeout: 30s
metrics_path: /probe
params:
queries:
- health,fabric_node_info,object_count,max_capacity
http_sd_configs:
- url: "https://localhost:9643/sd"
refresh_interval: 5m
relabel_configs:
- source_labels: [ __meta_role ]
regex: "aci_exporter_fabric"
action: "keep"
- source_labels: [ __address__ ]
target_label: __param_target
- source_labels: [ __param_target ]
target_label: instance
- target_label: __address__
replacement: 127.0.0.1:9643
Please review prometheus/prometheus_nodes.yml
example. With discovery there is
no need for any static configuration and only two job configurations to manage all aci fabrics configured.
In
otel/prometheus_nodes.yml
there is an example of the same configuration but for the OpenTelemetry Prometheus receiver.
There is no difference how a node query is configured in the aci-exporter from apic query except:
- Not all queries are supported on the node
- When extracting label values there is no information about the node id or pod id. These must be managed by
discovery and relabeling, see
prometheus/prometheus_nodes.yml
- The resulting DN is different between apic api and node api. From the apic we typical do label extraction using
labels:
# The field in the json used to parse the labels from
- property_name: ethpmPhysIf.attributes.dn
# The regex where the string enclosed in the P<xyz> is the label name
regex: "^topology/pod-(?P<podid>[1-9][0-9]*)/node-(?P<nodeid>[1-9][0-9]*)/sys/phys-\\[(?P<interface>[^\\]]+)\\]/"
In the above the topology path is part of the response. But for a node based query the same would be:
labels:
# The field in the json used to parse the labels from
- property_name: ethpmPhysIf.attributes.dn
# The regex where the string enclosed in the P<xyz> is the label name
regex: "^sys/phys-\\[(?P<interface>[^\\]]+)\\]/"
As mentioned above the podid and nodeid is added to the timeserie using Prometheus relabeling.
- Node queries must have named queries in the Prometheus config
It is highly recommended to do direct spine and leaf node queries if the fabric is large, both in the number of nodes but also in the number of objects in the fabric. Most queries should be possible to do directly on the nodes.
For configuration options please see the
example-config.yml
file.
All attributes in the configuration has default values, except for the fabric and the different query sections. A fabric profile include the information specific to an ACI fabrics, like authentication and apic(s) url.
The name of the fabric profile MUST BE in lower case. The may also include
_
and-
.
The user need to have admin read-only rights in the domain
All
to allow all kinds of queries.
If there is multiple apic urls configured the exporter will use the first apic it can login to in the list.
All configuration properties can be set by using environment variables. The prefix is ACI_EXPORTER_
and property
must be in uppercase. So to set the property port
with an environment variable ACI_EXPORTER_PORT=7121
.
The fabric configuration can be overridden by using environment variables. For a fabric named cisco_sandbox
the username, password, aci_name and/or apic can override by define the following environment variables as:
export ACI_EXPORTER_FABRICS_CISCO_SANDBOX_USERNAME=admin
export ACI_EXPORTER_FABRICS_CISCO_SANDBOX_PASSWORD=admin
export ACI_EXPORTER_FABRICS_CISCO_SANDBOX_ACI_NAME=my_aci
export ACI_EXPORTER_FABRICS_CISCO_SANDBOX_APIC=https://sandboxapicdc.cisco.com
ACI_EXPORTER_FABRICS_CISCO_SANDBOX_APIC can be a comma separated list
It is possible to define fabrics
only by environment variables. For this to work the environment variable
ACI_EXPORTER_FABRIC_NAMES
must be set. It can take a comma separated string of fabric names.
export ACI_EXPORTER_FABRIC_NAMES=cisco_sandbox
If configure fabrics with environment variables it is important that the fabric name only include characters. Underscore,
_
is allowed, but not dash-
The metrics created by the aci-exporter is controlled by the following attributes metrics
section of the configuration.
name
the name of the metrictype
the type of the metric, if not set it will default to gauge. If the type is a counter the metric name will be postfix with_total
unit
a base unit like bytes, seconds etc. If defined the metrics name will have postfix with the unithelp
the description text of the metrics, if not set it will default toMissing description
With the following settings:
metrics:
- name: uptime
type: counter
unit: seconds
help: The uptime since boot
The metric output will be like:
# HELP aci_uptime_seconds_total The uptime since boot
# TYPE aci_uptime_seconds_total counter
aci_uptime_seconds_total{.......} 98657
For large fabrics the response latency can increase and even the max response items may not be enough. For these large fabrics it possible to use paging request where aci-exporter will make each paging request.
Paging is only supported if the query has been specified with order-by=<class>.dn
, like:
class_queries:
bgp_peers:
class_name: bgpPeer
query_parameter: '?order-by=bgpPeer.dn&rsp-subtree=children&rsp-subtree-class=bgpPeerEntry'
....
The paged request is by default done sequential, but parallel paging is supported. To use parallel paging the following configuration can be done in the configuration file:
httpclient:
# this is the max and also the default value
pagesize: 1000
# enable parallel paging, default is false
parallel_paging: true
It is also possible to set the configuration through environment variables:
ACI_EXPORTER_HTTPCLIENT_PAGESIZE=1000
ACI_EXPORTER_HTTPCLIENT_PARALLEL_PAGING=true
There is a number of options to control the output format. The configuration related to the formatting
is defined in the metric_format
section of the configuration file.
metric_format:
# Output in openmetrics format, default false
openmetrics: false
# Transform all label keys to lower case format, default false. E.g. oobMgmtAddr will be oobmgmtaddr
label_key_to_lower_case: false
# Transform all label keys to snake case format, default false. E.g. oobMgmtAddr will be oob_mgmt_addr
label_key_to_snake_case: false
The exporter support openmetrics format. This is done by adding the following accept header to the request:
"Accept: application/openmetrics-text"
The configuration property openmetrics
set to true
will result in that all request will have an openmetrics
response independent of the above header.
The
openmetrics
configuration option will be deprecated in future version. To configure openmetrics output should be configured as described in section "Metric output formatting"
Any critical errors between the exporter and the apic controller will return 503. This is currently related to login failure and failure to get the fabric name.
There may be situations where the export will have failure against some api calls that collect data, due to timeout or faulty configuration. They will just not be part of the metric output.
Any access failures to apic[s] are written to the log.
Get the latest release from the release page.
go build -o build/aci-exporter *.go
By default, the exporter will look for a configuration file called config.yaml
. The directory search paths are:
- Current directory
- $HOME/.aci-exporter
- usr/local/etc/aci-exporter
- etc/aci-exporter
./build/aci-exporter
To run against the Cisco ACI sandbox:
./build/aci-exporter -config example-config.yaml
Make sure that the sandbox url and authentication is correct. Check out Cisco sandboxes on https://devnetsandbox.cisco.com/RM/Topology - "ACI Simulator AlwaysOn"
To test against the Cisco ACI sandbox:
curl -s 'https://localhost:9643/probe?target=cisco_sandbox'
The target is a named fabric in the configuration file.
There is also possible to run a limited number of queries by using the query parameter queries
.
This should be a comma separated list of the query names in the config file. It may also contain built-in query names.
curl -s 'https://localhost:9643/probe?target=cisco_sandbox&queries=node_health,faults'
In addition to queries as a comma separated list, it is also possible to repeat queries
as a query parameter.
curl -s 'https://localhost:9643/probe?target=cisco_sandbox&queries=node_health&queries=faults'
It is possible to run the aci-exporter in a standalone query mode. This mode enable to run a APIC query against a class and with query parameters. This can a help when exploring the data returned to determine labels and the metrics value.
aci-exporter --cli --fabric cisco_sandbox --class topSystem --query "rsp-subtree-include=health" | jq
Internal metrics is exposed in Prometheus exposition format on the endpoint /metrics
.
To get the metrics in openmetrics format use the header Accept: application/openmetrics-text
Please see the example file prometheus/prometheus.yml.
Pre built docker images are available on packages.
The aci-export can be build and run as a docker container, and it supports multi-arch.
docker buildx build . -t regystry/aci-exporter:Version --platform=linux/arm64,linux/amd64 --push
To run as docker use environment variables to define configuration.
docker run -p 9643:9643 --volume <path to config files>:/etc/aci-exporter -e ACI_EXPORTER_CONFIG=config.yaml aci-exporter
Just change ACI_EXPORTER_CONFIG
to use different configuration files.
When using
config.yaml
there is no need to defineACI_EXPORTER_CONFIG
since it's the default
Are you using aci-exporter in production at scale? Add yourself here!
This project welcomes pull-requests.
Thanks to https://github.com/RavuAlHemio/prometheus_aci_exporter for the inspiration of the configuration of queries. Please check out that project especially if you like to contribute to a Python project.
Special thanks to camrossi for his deep knowledge of Cisco ACI, all valuable ideas and endless testing.
This work is licensed under the GNU GENERAL PUBLIC LICENSE Version 3.