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The Observability Pipelines Worker can collect, process, and route logs from any source to any destination. Using Datadog, you can build and manage all of your Observability Pipelines Worker deployments at scale.
This guide walks you through deploying the Worker in your common tools cluster and configuring the Datadog Agent to send logs and metrics to the Worker.
If you are enrolled in the private beta of Remote Configuration, you can remotely roll out changes to your Workers from the Datadog UI, rather than make updates to your pipeline configuration in a text editor and then manually rolling out your changes. Choose your deployment method when you create a pipeline and install your Workers.
See Updating deployment modes on how to change the deployment mode after a pipeline is deployed.
Before installing, make sure you have:
You can generate both of these in Observability Pipelines.
Ensure that your machine is configured to run Docker.
To run the Worker on your Kubernetes nodes, you need a minimum of two nodes with one CPU and 512MB RAM available. Datadog recommends creating a separate node pool for the Workers, which is also the recommended configuration for production deployments.
The EBS CSI driver is required. To see if it is installed, run the following command and look for ebs-csi-controller
in the list:
kubectl get pods -n kube-system
A StorageClass
is required for the Workers to provision the correct EBS drives. To see if it is installed already, run the following command and look for io2
in the list:
kubectl get storageclass
If io2
is not present, download the StorageClass YAML and kubectl apply
it.
The AWS Load Balancer controller is required. To see if it is installed, run the following command and look for aws-load-balancer-controller
in the list:
helm list -A
Datadog recommends using Amazon EKS >= 1.16.
See Best Practices for OPW Aggregator Architecture for production-level requirements.
To run the Worker on your Kubernetes nodes, you need a minimum of two nodes with one CPU and 512 MB RAM available. Datadog recommends creating a separate node pool for the Workers, which is also the recommended configuration for production deployments.
See Best Practices for OPW Aggregator Architecture for production-level requirements.
To run the Worker on your Kubernetes nodes, you need a minimum of two nodes with one CPU and 512MB RAM available. Datadog recommends creating a separate node pool for the Workers, which is also the recommended configuration for production deployments.
See Best Practices for OPW Aggregator Architecture for production-level requirements.
There are no provider-specific requirements for APT-based Linux.
There are no provider-specific requirements for RPM-based Linux.
In order to run the Worker in your AWS account, you need administrative access to that account. Collect the following pieces of information to run the Worker instances:
In order to run the Worker in your AWS account, you need administrative access to that account. Collect the following pieces of information to run the Worker instances:
The Observability Pipelines Worker Docker image is published to Docker Hub here.
Download the sample pipeline configuration file.
Run the following command to start the Observability Pipelines Worker with Docker:
docker run -i -e DD_API_KEY=<API_KEY> \
-e DD_OP_PIPELINE_ID=<PIPELINE_ID> \
-e DD_SITE=<SITE> \
-p 8282:8282 \
-v ./pipeline.yaml:/etc/observability-pipelines-worker/pipeline.yaml:ro \
datadog/observability-pipelines-worker run
Replace <API_KEY>
with your Datadog API key, <PIPELINES_ID>
with your Observability Pipelines configuration ID, and <SITE>
with .
./pipeline.yaml
must be the relative or absolute path to the configuration you downloaded in Step 1.
Download the Helm chart values file for AWS EKS.
In the Helm chart, replace the datadog.apiKey
and datadog.pipelineId
values to match your pipeline and use for the
site
value. Then, install it in your cluster with the following commands:
helm repo add datadog https://helm.datadoghq.com
helm repo update
helm upgrade --install \
opw datadog/observability-pipelines-worker \
-f aws_eks.yaml
Download the Helm chart values file for Azure AKS.
In the Helm chart, replace the datadog.apiKey
and datadog.pipelineId
values to match your pipeline and use for the
site
value. Then, install it in your cluster with the following commands:
helm repo add datadog https://helm.datadoghq.com
helm repo update
helm upgrade --install \
opw datadog/observability-pipelines-worker \
-f azure_aks.yaml
Download the Helm chart values file for Google GKE.
In the Helm chart, replace the datadog.apiKey
and datadog.pipelineId
values to match your pipeline and use for the
site
value. Then, install it in your cluster with the following commands:
helm repo add datadog https://helm.datadoghq.com
helm repo update
helm upgrade --install \
opw datadog/observability-pipelines-worker \
-f google_gke.yaml
Run the following commands to set up APT to download through HTTPS:
sudo apt-get update
sudo apt-get install apt-transport-https curl gnupg
Run the following commands to set up the Datadog deb
repo on your system and create a Datadog archive keyring:
sudo sh -c "echo 'deb [signed-by=/usr/share/keyrings/datadog-archive-keyring.gpg] https://apt.datadoghq.com/ stable observability-pipelines-worker-1' > /etc/apt/sources.list.d/datadog-observability-pipelines-worker.list"
sudo touch /usr/share/keyrings/datadog-archive-keyring.gpg
sudo chmod a+r /usr/share/keyrings/datadog-archive-keyring.gpg
curl https://keys.datadoghq.com/DATADOG_APT_KEY_CURRENT.public | sudo gpg --no-default-keyring --keyring /usr/share/keyrings/datadog-archive-keyring.gpg --import --batch
curl https://keys.datadoghq.com/DATADOG_APT_KEY_06462314.public | sudo gpg --no-default-keyring --keyring /usr/share/keyrings/datadog-archive-keyring.gpg --import --batch
curl https://keys.datadoghq.com/DATADOG_APT_KEY_F14F620E.public | sudo gpg --no-default-keyring --keyring /usr/share/keyrings/datadog-archive-keyring.gpg --import --batch
curl https://keys.datadoghq.com/DATADOG_APT_KEY_C0962C7D.public | sudo gpg --no-default-keyring --keyring /usr/share/keyrings/datadog-archive-keyring.gpg --import --batch
Run the following commands to update your local apt
repo and install the Worker:
sudo apt-get update
sudo apt-get install observability-pipelines-worker datadog-signing-keys
Add your keys and the site () to the Worker’s environment variables:
sudo cat <<-EOF > /etc/default/observability-pipelines-worker
DD_API_KEY=<API_KEY>
DD_OP_PIPELINE_ID=<PIPELINE_ID>
DD_SITE=<SITE>
EOF
Download the sample configuration file to /etc/observability-pipelines-worker/pipeline.yaml
on the host.
Start the worker:
sudo systemctl restart observability-pipelines-worker
Run the following commands to set up the Datadog rpm
repo on your system:
cat <<EOF > /etc/yum.repos.d/datadog-observability-pipelines-worker.repo
[observability-pipelines-worker]
name = Observability Pipelines Worker
baseurl = https://yum.datadoghq.com/stable/observability-pipelines-worker-1/\$basearch/
enabled=1
gpgcheck=1
repo_gpgcheck=1
gpgkey=https://keys.datadoghq.com/DATADOG_RPM_KEY_CURRENT.public
https://keys.datadoghq.com/DATADOG_RPM_KEY_4F09D16B.public
https://keys.datadoghq.com/DATADOG_RPM_KEY_B01082D3.public
https://keys.datadoghq.com/DATADOG_RPM_KEY_FD4BF915.public
https://keys.datadoghq.com/DATADOG_RPM_KEY_E09422B3.public
EOF
Note: If you are running RHEL 8.1 or CentOS 8.1, use repo_gpgcheck=0
instead of repo_gpgcheck=1
in the configuration above.
Update your packages and install the Worker:
sudo yum makecache
sudo yum install observability-pipelines-worker
Add your keys and the site () to the Worker’s environment variables:
sudo cat <<-EOF > /etc/default/observability-pipelines-worker
DD_API_KEY=<API_KEY>
DD_OP_PIPELINE_ID=<PIPELINE_ID>
DD_SITE=<SITE>
EOF
Download the sample configuration file to /etc/observability-pipelines-worker/pipeline.yaml
on the host.
Start the worker:
sudo systemctl restart observability-pipelines-worker
vpc-id
, subnet-ids
, and region
to match your AWS deployment in the configuration. Also, update the values in datadog-api-key
and pipeline-id
to match your pipeline.To install the Worker in your AWS Account, use the CloudFormation template to create a Stack:
Download the CloudFormation template for the Worker.
In the CloudFormation console, click Create stack, and select the With new resources (standard) option.
Make sure that the Template is ready option is selected, and select Upload a template file. Click Choose file and add the CloudFormation template file you downloaded earlier. Click Next.
Enter a name for the stack in Specify stack details.
Fill in the parameters for the CloudFormation template. A few require special attention:
For APIKey
and PipelineID
, provide the key and ID that you gathered earlier in the Prerequisites section.
For the VPCID
and SubnetIDs
, provide the subnets and VPC you chose earlier.
All other parameters are set to reasonable defaults for a Worker deployment but you can adjust them for your use case as needed.
Click Next.
Review and make sure the parameters are as expected. Click the necessary permissions checkboxes for IAM, and click Submit to create the Stack.
CloudFormation handles the installation at this point; the Worker instances are launched, download the necessary software, and start running automatically.
See Configurations for more information about the source, transform, and sink used in the sample configuration. See Working with Data for more information on transforming your data.
Production-oriented setup is not included in the Docker instructions. Instead, refer to your company’s standards for load balancing in containerized environments. If you are testing on your local machine, configuring a load balancer is unnecessary.
Use the load balancers provided by your cloud provider. They adjust based on autoscaling events that the default Helm setup is configured for. The load balancers are internal-facing, so they are only accessible inside your network.
Use the load balancer URL given to you by Helm when you configure the Datadog Agent.
NLBs provisioned by the AWS Load Balancer Controller are used.
See Capacity Planning and Scaling for load balancer recommendations when scaling the Worker.
The provided Helm configuration tries to simplify load balancing, but you must take into consideration the potential price implications of cross-AZ traffic. Wherever possible, the samples try to avoid creating situations where multiple cross-AZ hops can happen.
The sample configurations do not enable the cross-zone load balancing feature available in this controller. To enable it, add the following annotation to the service
block:
service.beta.kubernetes.io/aws-load-balancer-attributes: load_balancing.cross_zone.enabled=true
See AWS Load Balancer Controller for more details.
Use the load balancers provided by your cloud provider. They adjust based on autoscaling events that the default Helm setup is configured for. The load balancers are internal-facing, so they are only accessible inside your network.
Use the load balancer URL given to you by Helm when you configure the Datadog Agent.
See Capacity Planning and Scaling for load balancer recommendations when scaling the Worker.
The provided Helm configuration tries to simplify load balancing, but you must take into consideration the potential price implications of cross-AZ traffic. Wherever possible, the samples try to avoid creating situations where multiple cross-AZ hops can happen.
Use the load balancers provided by your cloud provider. They adjust based on autoscaling events that the default Helm setup is configured for. The load balancers are internal-facing, so they are only accessible inside your network.
Use the load balancer URL given to you by Helm when you configure the Datadog Agent.
See Capacity Planning and Scaling for load balancer recommendations when scaling the Worker.
The provided Helm configuration tries to simplify load balancing, but you must take into consideration the potential price implications of cross-AZ traffic. Wherever possible, the samples try to avoid creating situations where multiple cross-AZ hops can happen.
Global Access is enabled by default since that is likely required for use in a shared tools cluster.
No built-in support for load-balancing is provided, given the single-machine nature of the installation. You will need to provision your own load balancers using whatever your company’s standard is.
No built-in support for load-balancing is provided, given the single-machine nature of the installation. You will need to provision your own load balancers using whatever your company’s standard is.
An NLB is provisioned by the Terraform module, and provisioned to point at the instances. Its DNS address is returned in the lb-dns
output in Terraform.
An NLB is provisioned by the CloudFormation template, and is configured to point at the AutoScaling Group. Its DNS address is returned in the LoadBalancerDNS
CloudFormation output.
Observability Pipelines includes multiple buffering strategies that allow you to increase the resilience of your cluster to downstream faults. The provided sample configurations use disk buffers, the capacities of which are rated for approximately 10 minutes of data at 10Mbps/core for Observability Pipelines deployments. That is often enough time for transient issues to resolve themselves, or for incident responders to decide what needs to be done with the observability data.
By default, the Observability Pipelines Worker’s data directory is set to /var/lib/observability-pipelines-worker
. Make sure that your host machine has a sufficient amount of storage capacity allocated to the container’s mountpoint.
For AWS, Datadog recommends using the io2
EBS drive family. Alternatively, the gp3
drives could also be used.
For Azure AKS, Datadog recommends using the default
(also known as managed-csi
) disks.
For Google GKE, Datadog recommends using the premium-rwo
drive class because it is backed by SSDs. The HDD-backed class, standard-rwo
, might not provide enough write performance for the buffers to be useful.
By default, the Observability Pipelines Worker’s data directory is set to /var/lib/observability-pipelines-worker
- if you are using the sample configuration, you should ensure that this has at least 288GB of space available for buffering.
Where possible, it is recommended to have a separate SSD mounted at that location.
By default, the Observability Pipelines Worker’s data directory is set to /var/lib/observability-pipelines-worker
- if you are using the sample configuration, you should ensure that this has at least 288GB of space available for buffering.
Where possible, it is recommended to have a separate SSD mounted at that location.
By default, a 288GB EBS drive is allocated to each instance, and the sample configuration above is set to use that for buffering.
By default, a 288GB EBS drive is allocated to each instance, and is auto-mounted and formatted upon instance boot.
To send Datadog Agent logs to the Observability Pipelines Worker, update your agent configuration with the following:
observability_pipelines_worker:
logs:
enabled: true
url: "http://<OPW_HOST>:8282"
OPW_HOST
is the IP of the load balancer or machine you set up earlier. For single-host Docker-based installs, this is the IP address of the underlying host. For Kubernetes-based installs, you can retrieve it by running the following command and copying the EXTERNAL-IP
:
kubectl get svc opw-observability-pipelines-worker
For Terraform installs, the lb-dns
output provides the necessary value. For CloudFormation installs, the LoadBalancerDNS
CloudFormation output has the correct URL to use.
At this point, your observability data should be going to the Worker and is available for data processing.
After deploying a pipeline, you can also switch deployment methods, such as going from a manually managed pipeline to a remote configuration enabled pipeline or vice versa.
If you want to switch from a remote configuration deployment to a manually managed deployment:
DD_OP_REMOTE_CONFIGURATION_ENABLED
flag to false
and restart the Worker. Workers that are not restarted with this flag continue to be remote configuration enabled, which means that the Workers are not updated manually through a local configuration file.If you want to switch from manually managed deployment to a remote configuration deployment:
DD_OP_REMOTE_CONFIGURATION_ENABLED
flag to true
and restart the Worker. Workers that are not restarted with this flag are not polled for configurations deployed in the UI.The sample configuration provided has example processing steps that demonstrate Observability Pipelines tools and ensures that data sent to Datadog is in the correct format.
The sample Observability Pipelines configuration does the following:
.status
attribute does not properly reflect the actual level of the message. It is removed to prevent issues with parsing rules in the backend, where logs are received from the Worker.The following are two important components in the example configuration:
logs_parse_ddtags
: Parses the tags that are stored in a string into structured data.logs_finish_ddtags
: Re-encodes the tags so that it is in the format as how the Datadog Agent would send it.Internally, the Datadog Agent represents log tags as a CSV in a single string. To effectively manipulate these tags, they must be parsed, modified, and then re-encoded before they are sent to the ingest endpoint. These steps are written to automatically perform those actions for you. Any modifications you make to the pipeline, especially for manipulating tags, should be in between these two steps.
At this point, your environment is configured for Observability Pipelines with data flowing through it. Further configuration is likely required for your specific use cases, but the tools provided give you a starting point.