- 필수 기능
- 시작하기
- Glossary
- 표준 속성
- Guides
- Agent
- 통합
- 개방형텔레메트리
- 개발자
- 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
Supported OS
Fiddler’s Model Performance Management platform monitors Machine Learning model performance by sending real-time alerts when model performance metrics drop, allowing users to analyze inference data to understand why model performance is degrading. This integration includes metrics and an out-of-the-box dashboard that displays performance metrics such as accuracy, traffic, and drift.
The Fiddler check is not included in the Datadog Agent package, so you need to install it.
For Agent v7.21+ / v6.21+, follow the instructions below to install the Fiddler check on your host. See Use Community Integrations to install with the Docker Agent or earlier versions of the Agent.
Run the following command to install the Agent integration:
datadog-agent integration install -t datadog-fiddler==3.0.0
Configure your integration similar to Agent-based integrations.
Edit the fiddler.d/conf.yaml
file, in the conf.d/
folder at the root of your Agent’s configuration directory to start collecting your Fiddler performance data. See the sample fiddler.d/conf.yaml
for all available configuration options. The url
, org
, and fiddler_api_key
parameters need to be updated for the Fiddler environment you wish the integration to query. Fiddler also suggests setting the minimum_collection_interval
setting in the conf.yaml
file to 300
(5 minutes).
Run the Agent’s status subcommand and look for fiddler
under the Checks section.
See metadata.csv for a list of metrics provided by this check.
fiddler.can_connect
Returns CRITICAL
if the Agent is unable to connect to and collect metrics from the monitored Fiddler instance. Returns OK
otherwise.
Statuses: ok, critical
Need help? Contact Fiddler support.