Run Filebeat on Cloud Foundry
editRun Filebeat on Cloud Foundry
editYou can use Filebeat on Cloud Foundry to retrieve and ship logs.
Create Cloud Foundry credentials
editTo connect to loggregator and receive the logs, Filebeat requires credentials created with UAA. The uaac
command creates the required credentials for connecting to loggregator.
uaac client add filebeat --name filebeat --secret changeme --authorized_grant_types client_credentials,refresh_token --authorities doppler.firehose,cloud_controller.admin_read_only
Use a unique secret: The uaac
command shown here is an example. Remember to
replace changeme
with your secret, and update the filebeat.yml
file to
use your chosen secret.
Download Cloud Foundry deploy manifests
editYou deploy Filebeat as an application with no route.
Cloud Foundry requires that 3 files exist inside of a directory to allow Filebeat to be pushed. The commands below provide the basic steps for getting it up and running.
curl -L -O https://artifacts.elastic.co/downloads/beats/filebeat/filebeat-8.2.3-linux-x86_64.tar.gz tar xzvf filebeat-8.2.3-linux-x86_64.tar.gz cd filebeat-8.2.3-linux-x86_64 curl -L -O https://raw.githubusercontent.com/elastic/beats/8.2/deploy/cloudfoundry/filebeat/filebeat.yml curl -L -O https://raw.githubusercontent.com/elastic/beats/8.2/deploy/cloudfoundry/filebeat/manifest.yml
You need to modify the filebeat.yml
file to set the api_address
,
client_id
and client_secret
.
Load Kibana dashboards
editFilebeat comes packaged with various pre-built Kibana dashboards that you can use to visualize data in Kibana.
If these dashboards are not already loaded into Kibana, you must run the Filebeat setup
command.
To learn how, see Load Kibana dashboards.
The setup
command does not load the ingest pipelines used to parse log lines. By default, ingest pipelines
are set up automatically the first time you run Filebeat and connect to Elasticsearch.
If you are using a different output other than Elasticsearch, such as Logstash, you need to:
Deploy Filebeat
editTo deploy Filebeat to Cloud Foundry, run:
cf push
To check the status, run:
$ cf apps name requested state instances memory disk urls filebeat started 1/1 512M 1G
Log events should start flowing to Elasticsearch. The events are annotated with metadata added by the add_cloudfoundry_metadata processor.
Scale Filebeat
editA single instance of Filebeat can ship more than a hundred thousand events per minute. If your Cloud Foundry deployment is producing more events than Filebeat can collect and ship, the Firehose will start dropping events, and it will mark Filebeat as a slow consumer. If the problems persist, Filebeat may be disconnected from the Firehose. In such cases, you will need to scale Filebeat to avoid losing events.
The main settings you need to take into account are:
-
The
shard_id
specified in thecloudfoundry
input configuration. The Firehose will divide the events amongst all the Filebeat instances with the same value for this setting. All the instances with the sameshard_id
should have the same configuration. -
Number of Filebeat instances. When Filebeat is deployed as a Cloud
Foundry application, it can be scaled up and down like any other application,
with
cf scale
or by specifying the number of instances in the manifest. - Output configuration. In some cases, you can fine-tune the output configuration to improve the events throughput. Some outputs support multiple workers. The number of workers can be changed to take better advantage of the available resources.
Some basic recommendations to adjust these settings when Filebeat is not able to collect all events:
-
If Filebeat is hitting its CPU limits, you will need to increase the
number of Filebeat instances deployed with the same
shard_id
. - If Filebeat has some spare CPU, there may be some backpressure from the output. Try to increase the number of workers in the output. If this doesn’t help, the bottleneck may be in the network or in the service receiving the events sent by Filebeat.
- If you need to modify the memory limit of Filebeat, remember that CPU shares assigned to Cloud Foundry applications depend on the configured memory limit. You may need to check the other recommendations after that.