
Athena
PRODFeature List
✓ Metadata
✓ Query Usage
✓ Lineage
✓ Column-level Lineage
✓ Data Profiler
✓ Auto-Classification
✓ Data Quality
✓ Tags
✓ dbt
✓ Sample Data
✓ Reverse Metadata (OpenMetadata Only)
✕ Owners
✕ Stored Procedures
How to Run the Connector Externally
To run the Ingestion via the UI you’ll need to use the OpenMetadata Ingestion Container, which comes shipped with custom Airflow plugins to handle the workflow deployment. If, instead, you want to manage your workflows externally on your preferred orchestrator, you can check the following docs to run the Ingestion Framework anywhere.Requirements
The Athena connector ingests metadata through JDBC connections. This policy groups the following permissions:athena– Allows the principal to run queries on Athena resources.glue– Allows principals access to AWS Glue databases, tables, and partitions. This is required so that the principal can use the AWS Glue Data Catalog with Athena. Resources of each table and database needs to be added as resource for each database user wants to ingest.lakeformation– Allows principals to request temporary credentials to access data in a data lake location that is registered with Lake Formation and allows access to the LF-tags linked to databases, tables and columns. And is defined as:
LF-Tags
Athena connector ingests and creates LF-tags in OpenMetadata with LF-tag key mapped to OpenMetadata’s classification and the values mapped to tag labels. To ingest LF-tags provide the appropriate permissions as to the resources as mentioned above and enable theincludeTags toggle in the ingestion config.
You can find further information on the Athena connector in the docs.
Python Requirements
To run the Athena ingestion, you will need to install:Metadata Ingestion
All connectors are defined as JSON Schemas. Here you can find the structure to create a connection to Athena. In order to create and run a Metadata Ingestion workflow, we will follow the steps to create a YAML configuration able to connect to the source, process the Entities if needed, and reach the OpenMetadata server. The workflow is modeled around the following JSON Schema1. Define the YAML Config
This is a sample config for Athena:2. Run with the CLI
First, we will need to save the YAML file. Afterward, and with all requirements installed, we can run:Query Usage
The Query Usage workflow will be using thequery-parser processor.
After running a Metadata Ingestion workflow, we can run Query Usage workflow.
While the serviceName will be the same to that was used in Metadata Ingestion, so the ingestion bot can get the serviceConnection details from the server.
1. Define the YAML Config
This is a sample config for Usage:2. Run with the CLI
After saving the YAML config, we will run the command the same way we did for the metadata ingestion:Lineage
After running a Metadata Ingestion workflow, we can run Lineage workflow. While theserviceName will be the same to that was used in Metadata Ingestion, so the ingestion bot can get the serviceConnection details from the server.
1. Define the YAML Config
This is a sample config for Lineage:- You can learn more about how to configure and run the Lineage Workflow to extract Lineage data from here
2. Run with the CLI
After saving the YAML config, we will run the command the same way we did for the metadata ingestion:Data Profiler
The Data Profiler workflow will be using theorm-profiler processor.
After running a Metadata Ingestion workflow, we can run the Data Profiler workflow.
While the serviceName will be the same to that was used in Metadata Ingestion, so the ingestion bot can get the serviceConnection details from the server.
1. Define the YAML Config
This is a sample config for the profiler:- You can learn more about how to configure and run the Profiler Workflow to extract Profiler data and execute the Data Quality from here
2. Run with the CLI
After saving the YAML config, we will run the command the same way we did for the metadata ingestion:ingest, we are using the profile command to select the Profiler workflow.
Auto Classification
The Auto Classification workflow will be using theorm-profiler processor.
After running a Metadata Ingestion workflow, we can run the Auto Classification workflow.
While the serviceName will be the same to that was used in Metadata Ingestion, so the ingestion bot can get the serviceConnection details from the server.
1. Define the YAML Config
This is a sample config for the Auto Classification Workflow:2. Run with the CLI
After saving the YAML config, we will run the command the same way we did for the metadata ingestion:Data Quality
Adding Data Quality Test Cases from yaml config
When creating a JSON config for a test workflow the source configuration is very simple.serviceName (this name needs to be unique) and entityFullyQualifiedName (the entity for which we’ll be executing tests against) keys.
Once you have defined your source configuration you’ll need to define te processor configuration.
"orm-test-runner". For accepted test definition names and parameter value names refer to the tests page.
You can keep your YAML config as simple as follows if the table already has tests.
Key reference:
forceUpdate: if the test case exists (base on the test case name) for the entity, implements the strategy to follow when running the test (i.e. whether or not to update parameters)testCases: list of test cases to add to the entity referenced. Note that we will execute all the tests present in the Table.name: test case nametestDefinitionName: test definitioncolumnName: only applies to column test. The name of the column to run the test againstparameterValues: parameter values of the test
sink and workflowConfig will have the same settings as the ingestion and profiler workflow.