- 필수 기능
- 시작하기
- Glossary
- 표준 속성
- Guides
- Agent
- 통합
- 개방형텔레메트리
- 개발자
- Administrator's Guide
- API
- Datadog Mobile App
- CoScreen
- Cloudcraft
- 앱 내
- 서비스 관리
- 인프라스트럭처
- 애플리케이션 성능
- APM
- Continuous Profiler
- 스팬 시각화
- 데이터 스트림 모니터링
- 데이터 작업 모니터링
- 디지털 경험
- 소프트웨어 제공
- 보안
- AI Observability
- 로그 관리
- 관리
The OpenTelemetry Collector receives, processes, and exports telemetry data from your applications. To send this data to Datadog, you need to configure several components within the Collector:
To run the OpenTelemetry Collector with the Datadog Exporter and Datadog Connector:
Download the latest release of the OpenTelemetry Collector Contrib distribution, from the project’s repository.
To use the Datadog Exporter, add it to your OpenTelemetry Collector configuration. Create a configuration file and name it collector.yaml
. Use the example file which provides a basic configuration that is ready to use after you set your Datadog API key as the DD_API_KEY
environment variable:
0.0.0.0
as the endpoint address for convenience. This allows connections from any network interface. For enhanced security, especially in local deployments, consider using localhost
instead.receivers:
otlp:
protocols:
http:
endpoint: 0.0.0.0:4318
grpc:
endpoint: 0.0.0.0:4317
# The hostmetrics receiver is required to get correct infrastructure metrics in Datadog.
hostmetrics:
collection_interval: 10s
scrapers:
paging:
metrics:
system.paging.utilization:
enabled: true
cpu:
metrics:
system.cpu.utilization:
enabled: true
disk:
filesystem:
metrics:
system.filesystem.utilization:
enabled: true
load:
memory:
network:
processes:
# The prometheus receiver scrapes metrics needed for the OpenTelemetry Collector Dashboard.
prometheus:
config:
scrape_configs:
- job_name: 'otelcol'
scrape_interval: 10s
static_configs:
- targets: ['0.0.0.0:8888']
filelog:
include_file_path: true
poll_interval: 500ms
include:
- /var/log/**/*example*/*.log
processors:
batch:
send_batch_max_size: 100
send_batch_size: 10
timeout: 10s
connectors:
datadog/connector:
exporters:
datadog/exporter:
api:
site:
key: ${env:DD_API_KEY}
service:
pipelines:
metrics:
receivers: [hostmetrics, prometheus, otlp, datadog/connector]
processors: [batch]
exporters: [datadog/exporter]
traces:
receivers: [otlp]
processors: [batch]
exporters: [datadog/connector, datadog/exporter]
logs:
receivers: [otlp, filelog]
processors: [batch]
exporters: [datadog/exporter]
The above configuration enables the receiving of OTLP data from OpenTelemetry instrumentation libraries over HTTP and gRPC, and sets up a batch processor, which is mandatory for any non-development environment. Note that you may get 413 - Request Entity Too Large
errors if you batch too much telemetry data in the batch processor.
The exact configuration of the batch processor depends on your specific workload as well as the signal types. Datadog intake has different payload size limits for the 3 signal types:
This fully documented example configuration file illustrates all possible configuration options for the Datadog Exporter. There may be other options relevant to your deployment, such as api::site
or the ones on the host_metadata
section.
To get better metadata for traces and for smooth integration with Datadog:
Use resource detectors: If they are provided by the language SDK, attach container information as resource attributes. For example, in Go, use the WithContainer()
resource option.
Apply Unified Service Tagging: Make sure you’ve configured your application with the appropriate resource attributes for unified service tagging. This ties Datadog telemetry together with tags for service name, deployment environment, and service version. The application should set these tags using the OpenTelemetry semantic conventions: service.name
, deployment.environment
, and service.version
.
Since the OpenTelemetry SDKs’ logging functionality is not fully supported (see your specific language in the OpenTelemetry documentation for more information), Datadog recommends using a standard logging library for your application. Follow the language-specific Log Collection documentation to set up the appropriate logger in your application. Datadog strongly encourages setting up your logging library to output your logs in JSON to avoid the need for custom parsing rules.
Configure the filelog receiver using operators. For example, if there is a service checkoutservice
that is writing logs to /var/log/pods/services/checkout/0.log
, a sample log might look like this:
{"level":"info","message":"order confirmation email sent to \"jack@example.com\"","service":"checkoutservice","span_id":"197492ff2b4e1c65","timestamp":"2022-10-10T22:17:14.841359661Z","trace_id":"e12c408e028299900d48a9dd29b0dc4c"}
Example filelog configuration:
filelog:
include:
- /var/log/pods/**/*checkout*/*.log
start_at: end
poll_interval: 500ms
operators:
- id: parse_log
type: json_parser
parse_from: body
- id: trace
type: trace_parser
trace_id:
parse_from: attributes.trace_id
span_id:
parse_from: attributes.span_id
attributes:
ddtags: env:staging
include
: The list of files the receiver tailsstart_at: end
: Indicates to read new content that is being writtenpoll_internal
: Sets the poll frequencyjson_parser
: Parses JSON logs. By default, the filelog receiver converts each log line into a log record, which is the body
of the logs’ data model. Then, the json_parser
converts the JSON body into attributes in the data model.trace_parser
: Extract the trace_id
and span_id
from the log to correlate logs and traces in Datadog.service.name
attribute to service
for logsFor Datadog Exporter versions 0.83.0 and later, the service
field of OTel logs is populated as OTel semantic convention service.name
. However, service.name
is not one of the default service attributes in Datadog’s log preprocessing.
To get the service
field correctly populated in your logs, you can specify service.name
to be the source of a log’s service by setting a log service remapper processor.
There are multiple ways to deploy the OpenTelemetry Collector and Datadog Exporter in a Kubernetes infrastructure. For the filelog receiver to work, the Agent/DaemonSet deployment is the recommended deployment method.
In containerized environments, applications write logs to stdout
or stderr
. Kubernetes collects the logs and writes them to a standard location. You need to mount the location on the host node into the Collector for the filelog receiver. Below is an extension example with the mounts required for sending logs.
apiVersion: apps/v1
metadata:
name: otel-agent
labels:
app: opentelemetry
component: otel-collector
spec:
template:
metadata:
labels:
app: opentelemetry
component: otel-collector
spec:
containers:
- name: collector
command:
- "/otelcol-contrib"
- "--config=/conf/otel-agent-config.yaml"
image: otel/opentelemetry-collector-contrib:0.71.0
env:
- name: POD_IP
valueFrom:
fieldRef:
fieldPath: status.podIP
# The k8s.pod.ip is used to associate pods for k8sattributes
- name: OTEL_RESOURCE_ATTRIBUTES
value: "k8s.pod.ip=$(POD_IP)"
ports:
- containerPort: 4318 # default port for OpenTelemetry HTTP receiver.
hostPort: 4318
- containerPort: 4317 # default port for OpenTelemetry gRPC receiver.
hostPort: 4317
- containerPort: 8888 # Default endpoint for querying metrics.
volumeMounts:
- name: otel-agent-config-vol
mountPath: /conf
- name: varlogpods
mountPath: /var/log/pods
readOnly: true
- name: varlibdockercontainers
mountPath: /var/lib/docker/containers
readOnly: true
volumes:
- name: otel-agent-config-vol
configMap:
name: otel-agent-conf
items:
- key: otel-agent-config
path: otel-agent-config.yaml
# Mount nodes log file location.
- name: varlogpods
hostPath:
path: /var/log/pods
- name: varlibdockercontainers
hostPath:
path: /var/lib/docker/containers
You can find working examples of out-of-the-box configuration for Datadog Exporter in the exporter/datadogexporter/examples
folder in the OpenTelemetry Collector Contrib project. See the full configuration example file, ootb-ec2.yaml
. Configure each of the following components to suit your needs: