DatriseAI-first ETL

Datadog Amazon Athena

AI-first ETL from Datadog into Amazon Athena. Governed entities, incremental sync, typed landing tables.

How Datrise loads Datadog into Amazon Athena

Datrise syncs Datadog's records, events, and configuration objects into Amazon Athena as partitioned Parquet in S3 exposed as an Athena table. Flexible or custom fields land in struct/map columns in Parquet, and timestamps such as created, updated, and status changes are typed as timestamp.

Sync is incremental: Datrise uses writes new Parquet partitions and registers them in the Glue Data Catalog, so re-runs update only what changed. Hive-style partitioning by load date so Athena scans only new data. Athena bills per byte scanned and small files hurt, so Datrise compacts to right-sized Parquet rather than many tiny objects.

Ideal for serverless SQL over an S3 lake without a running warehouse.

Endpoints

Datadog: SaaS or API data source for analytics and warehouse sync.

Amazon Athena: Serverless SQL over S3 data lake tables.

How Datadog entities map to Amazon Athena

Datadog entityAmazon Athena objectNotes
recordsdatadog_recordsid PK · custom fields → struct/map columns in Parquet
eventsdatadog_eventstimestamp events
configuration objectsdatadog_configuration_objectsid PK · linked to datadog_records

FAQ

How does Datrise handle Datadog's custom fields in Amazon Athena?

Flexible values are stored as struct/map columns in Parquet, so new fields don't require a migration; strongly-typed fields — dates, numbers, and references — are promoted to native Amazon Athena types.

How does the Datadog to Amazon Athena sync stay up to date?

It runs incrementally — Datrise uses writes new Parquet partitions and registers them in the Glue Data Catalog.

Related pipelines

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