Overview
AWS Machine Learning is a service that makes it easy for developers of all skill levels to use machine learning technology.
Enable this integration to see in Datadog all your Machine Learning metrics.
Setup
Installation
If you haven’t already, set up the Amazon Web Services integration first.
Metric collection
- In the AWS integration page, ensure that
ML
is enabled under the Metric Collection
tab. - Install the Datadog - AWS Machine Learning integration.
Log collection
Enable logging
Configure AWS Machine Learning to send logs either to a S3 bucket or to CloudWatch.
Note: If you log to a S3 bucket, make sure that amazon_machine_learning
is set as Target prefix.
Send logs to Datadog
If you haven’t already, set up the Datadog Forwarder Lambda function.
Once the Lambda function is installed, manually add a trigger on the S3 bucket or CloudWatch log group that contains your AWS Machine Learning logs in the AWS console:
Data Collected
Metrics
aws.ml.predict_count (count) | The number of observations received by Amazon ML. |
aws.ml.predict_failure_count (count) | The number of invalid or malformed observations received by Amazon ML. |
Each of the metrics retrieved from AWS are assigned the same tags that appear in the AWS console, including but not limited to host name, security-groups, and more.
Events
The AWS Machine Learning integration does not include any events.
Service Checks
The AWS Machine Learning integration does not include any service checks.
Troubleshooting
Need help? Contact Datadog support.
Further reading
Additional helpful documentation, links, and articles: