
* Fix #1604: Add Spline Connector * Add tests & grammer validation * Spline UI Changes & Docs * fix pipeline workflow doc * chore: use common field for dbService name * chore: use const for beta services * chore: add service icon * Update ingestion/src/metadata/ingestion/source/pipeline/spline/metadata.py Co-authored-by: Onkar Ravgan <onkar.10r@gmail.com> --------- Co-authored-by: Sachin Chaurasiya <sachinchaurasiyachotey87@gmail.com> Co-authored-by: Sriharsha Chintalapani <harshach@users.noreply.github.com> Co-authored-by: Onkar Ravgan <onkar.10r@gmail.com>
8.7 KiB
title | slug |
---|---|
Run Spline Connector using Airflow SDK | /connectors/pipeline/spline/airflow |
Run Spline using the Airflow SDK
In this section, we provide guides and references to use the Spline connector.
Configure and schedule Spline metadata and profiler workflows from the OpenMetadata UI:
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.
Python Requirements
To run the Spline ingestion, you will need to install:
pip3 install "openmetadata-ingestion"
Metadata Ingestion
All connectors are defined as JSON Schemas. Here you can find the structure to create a connection to Spline.
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
1. Define the YAML Config
This is a sample config for Spline:
{% codePreview %}
{% codeInfoContainer %}
Source Configuration - Service Connection
{% codeInfo srNumber=1 %}
hostPort: Spline REST Server API Host & Port, OpenMetadata uses Spline REST Server APIs to extract the execution details from spline to generate lineage. This should be specified as a URI string in the format scheme://hostname:port
. E.g., http://localhost:8080
, http://host.docker.internal:8080
.
uiHostPort: Spline UI Host & Port is an optional field which is used for generating redirection URL from OpenMetadata to Spline Portal. This should be specified as a URI string in the format scheme://hostname:port
. E.g., http://localhost:9090
, http://host.docker.internal:9090
.
{% /codeInfo %}
Source Configuration - Source Config
{% codeInfo srNumber=2 %}
The sourceConfig
is defined here:
dbServiceNames: Database Service Name for the creation of lineage, if the source supports it.
includeTags: Set the 'Include Tags' toggle to control whether 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=3 %}
To send the metadata to OpenMetadata, it needs to be specified as type: metadata-rest
.
{% /codeInfo %}
Workflow Configuration
{% codeInfo srNumber=4 %}
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" %}
source:
type: spline
serviceName: spline_source
serviceConnection:
config:
type: Spline
hostPort: http://localhost:8080
uiHostPort: http://localhost:9090
sourceConfig:
config:
type: PipelineMetadata
# markDeletedPipelines: True
# includeTags: True
# includeLineage: true
# dbServiceNames:
# - local_hive
# pipelineFilterPattern:
# includes:
# - pipeline1
# - pipeline2
# excludes:
# - pipeline3
# - pipeline4
sink:
type: metadata-rest
config: {}
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.
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.
workflowConfig:
openMetadataServerConfig:
hostPort: "http://localhost:8585/api"
authProvider: openmetadata
securityConfig:
jwtToken: "{bot_jwt_token}"
- You can refer to the JWT Troubleshooting section link 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.
2. Prepare the Ingestion DAG
Create a Python file in your Airflow DAGs directory with the following contents:
{% codePreview %}
{% codeInfoContainer %}
{% codeInfo srNumber=5 %}
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=6 %}
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=7 %}
- config: Specifies config for the metadata ingestion as we prepare above.
{% /codeInfo %}
{% codeInfo srNumber=8 %}
- metadata_ingestion_workflow(): This code defines a function
metadata_ingestion_workflow()
that loads a YAML configuration, creates aWorkflow
object, executes the workflow, checks its status, prints the status to the console, and stops the workflow.
{% /codeInfo %}
{% codeInfo srNumber=9 %}
- 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.
{% /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" %}
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
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)
}
config = """
<your YAML configuration>
"""
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()
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 %}