--- title: Run Domo Pipeline Connector using Airflow SDK slug: /connectors/pipeline/domo-pipeline/airflow --- # Run Domo Pipeline using the Airflow SDK In this section, we provide guides and references to use the Domo-Pipeline connector. Configure and schedule Domo-Pipeline metadata and profiler workflows from the OpenMetadata UI: - [Requirements](#requirements) - [Metadata Ingestion](#metadata-ingestion) ## Requirements {%inlineCallout icon="description" bold="OpenMetadata 0.12 or later" href="/deployment"%} To deploy OpenMetadata, check the Deployment guides. {% /inlineCallout %} 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. **Note:** For metadata ingestion, kindly make sure add alteast `data` scopes to the clientId provided. Question related to scopes, click [here](https://developer.domo.com/portal/1845fc11bbe5d-api-authentication). ### Python Requirements To run the domopipeline ingestion, you will need to install: ```bash pip3 install "openmetadata-ingestion[domo]" ``` ## Metadata Ingestion All connectors are defined as JSON Schemas. [Here](https://github.com/open-metadata/OpenMetadata/blob/main/openmetadata-spec/src/main/resources/json/schema/entity/services/connections/pipeline/airbyteConnection.json) you can find the structure to create a connection to Airbyte. 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 Schema](https://github.com/open-metadata/OpenMetadata/blob/main/openmetadata-spec/src/main/resources/json/schema/metadataIngestion/workflow.json) ### 1. Define the YAML Config This is a sample config for Domo-Pipeline: {% codePreview %} {% codeInfoContainer %} #### Source Configuration - Service Connection {% codeInfo srNumber=1 %} **Client ID**: Client ID to Connect to DOMO Pipeline. {% /codeInfo %} {% codeInfo srNumber=2 %} **Secret Token**: Secret Token to Connect DOMO Pipeline. {% /codeInfo %} {% codeInfo srNumber=3 %} **Access Token**: Access to Connect to DOMO Pipeline. {% /codeInfo %} {% codeInfo srNumber=4 %} **API Host**: API Host to Connect to DOMO Pipeline instance. {% /codeInfo %} {% codeInfo srNumber=5 %} **SandBox Domain**: Connect to SandBox Domain. {% /codeInfo %} #### Source Configuration - Source Config {% codeInfo srNumber=6 %} The `sourceConfig` is defined [here](https://github.com/open-metadata/OpenMetadata/blob/main/openmetadata-spec/src/main/resources/json/schema/metadataIngestion/pipelineServiceMetadataPipeline.json): **dbServiceNames**: Database Service Name for the creation of lineage, if the source supports it. **includeTags**: Set the Include tags toggle to control whether or not to include tags as part of metadata ingestion. **markDeletedPipelines**: Set the Mark Deleted Pipelines toggle to flag pipelines as soft-deleted if they are not present anymore in the source system. **pipelineFilterPattern** and **chartFilterPattern**: Note that the `pipelineFilterPattern` and `chartFilterPattern` both support regex as include or exclude. {% /codeInfo %} #### Sink Configuration {% codeInfo srNumber=7 %} To send the metadata to OpenMetadata, it needs to be specified as `type: metadata-rest`. {% /codeInfo %} #### Workflow Configuration {% codeInfo srNumber=8 %} The main property here is the `openMetadataServerConfig`, where you can define the host and security provider of your OpenMetadata installation. For a simple, local installation using our docker containers, this looks like: {% /codeInfo %} {% /codeInfoContainer %} {% codeBlock fileName="filename.yaml" %} ```yaml source: type: domopipeline serviceName: domo-pipeline_source serviceConnection: config: type: DomoPipeline ``` ```yaml {% srNumber=1 %} clientID: clientid ``` ```yaml {% srNumber=2 %} secretToken: secret-token ``` ```yaml {% srNumber=3 %} accessToken: access-token ``` ```yaml {% srNumber=4 %} apiHost: api.domo.com ``` ```yaml {% srNumber=5 %} sandboxDomain: https://.domo.com ``` ```yaml {% srNumber=6 %} sourceConfig: config: type: PipelineMetadata # markDeletedPipelines: True # includeTags: True # includeLineage: true # pipelineFilterPattern: # includes: # - pipeline1 # - pipeline2 # excludes: # - pipeline3 # - pipeline4 ``` ```yaml {% srNumber=7 %} sink: type: metadata-rest config: {} ``` ```yaml {% srNumber=8 %} workflowConfig: openMetadataServerConfig: hostPort: "http://localhost:8585/api" authProvider: openmetadata securityConfig: jwtToken: "{bot_jwt_token}" ``` {% /codeBlock %} {% /codePreview %} ### Workflow Configs for Security Provider We support different security providers. You can find their definitions [here](https://github.com/open-metadata/OpenMetadata/tree/main/openmetadata-spec/src/main/resources/json/schema/security/client). ## Openmetadata JWT Auth - JWT tokens will allow your clients to authenticate against the OpenMetadata server. To enable JWT Tokens, you will get more details [here](/deployment/security/enable-jwt-tokens). ```yaml workflowConfig: openMetadataServerConfig: hostPort: "http://localhost:8585/api" authProvider: openmetadata securityConfig: jwtToken: "{bot_jwt_token}" ``` - You can refer to the JWT Troubleshooting section [link](/deployment/security/jwt-troubleshooting) for any issues in your JWT configuration. If you need information on configuring the ingestion with other security providers in your bots, you can follow this doc [link](/deployment/security/workflow-config-auth). ### 2. Prepare the Ingestion DAG Create a Python file in your Airflow DAGs directory with the following contents: {% codePreview %} {% codeInfoContainer %} {% codeInfo srNumber=8 %} #### Import necessary modules The `Workflow` class that is being imported is a part of a metadata ingestion framework, which defines a process of getting data from different sources and ingesting it into a central metadata repository. Here we are also importing all the basic requirements to parse YAMLs, handle dates and build our DAG. {% /codeInfo %} {% codeInfo srNumber=9 %} **Default arguments for all tasks in the Airflow DAG.** - Default arguments dictionary contains default arguments for tasks in the DAG, including the owner's name, email address, number of retries, retry delay, and execution timeout. {% /codeInfo %} {% codeInfo srNumber=10 %} - **config**: Specifies config for the metadata ingestion as we prepare above. {% /codeInfo %} {% codeInfo srNumber=11 %} - **metadata_ingestion_workflow()**: This code defines a function `metadata_ingestion_workflow()` that loads a YAML configuration, creates a `Workflow` object, executes the workflow, checks its status, prints the status to the console, and stops the workflow. {% /codeInfo %} {% codeInfo srNumber=12 %} - **DAG**: creates a DAG using the Airflow framework, and tune the DAG configurations to whatever fits with your requirements - For more Airflow DAGs creation details visit [here](https://airflow.apache.org/docs/apache-airflow/stable/core-concepts/dags.html#declaring-a-dag). {% /codeInfo %} Note that from connector to connector, this recipe will always be the same. By updating the `YAML configuration`, you will be able to extract metadata from different sources. {% /codeInfoContainer %} {% codeBlock fileName="filename.py" %} ```python {% srNumber=8 %} import pathlib import yaml from datetime import timedelta from airflow import DAG from metadata.config.common import load_config_file from metadata.ingestion.api.workflow import Workflow from airflow.utils.dates import days_ago try: from airflow.operators.python import PythonOperator except ModuleNotFoundError: from airflow.operators.python_operator import PythonOperator ``` ```python {% srNumber=9 %} default_args = { "owner": "user_name", "email": ["username@org.com"], "email_on_failure": False, "retries": 3, "retry_delay": timedelta(minutes=5), "execution_timeout": timedelta(minutes=60) } ``` ```python {% srNumber=10 %} config = """ """ ``` ```python {% srNumber=11 %} def metadata_ingestion_workflow(): workflow_config = yaml.safe_load(config) workflow = Workflow.create(workflow_config) workflow.execute() workflow.raise_from_status() workflow.print_status() workflow.stop() ``` ```python {% srNumber=12 %} with DAG( "sample_data", default_args=default_args, description="An example DAG which runs a OpenMetadata ingestion workflow", start_date=days_ago(1), is_paused_upon_creation=False, schedule_interval='*/5 * * * *', catchup=False, ) as dag: ingest_task = PythonOperator( task_id="ingest_using_recipe", python_callable=metadata_ingestion_workflow, ) ``` {% /codeBlock %} {% /codePreview %}