Azure Data Factory libraries for Python
Compose data storage, movement, and processing services into automated data pipelines with Azure Data Factory
Learn more about Data Factory and get started with the Create a data factory and pipeline using Python quickstart.
Management module
Create and manage Data Factory instances in your subscription with the management module.
Installation
Install the package with pip:
pip install azure-mgmt-datafactory
Example
Create a Data Factory in your subscription on the East US region.
from azure.common.credentials import ServicePrincipalCredentials
from azure.mgmt.resource import ResourceManagementClient
from azure.mgmt.datafactory import DataFactoryManagementClient
from azure.mgmt.datafactory.models import *
import time
#Create a data factory
subscription_id = '<Specify your Azure Subscription ID>'
credentials = ServicePrincipalCredentials(client_id='<Active Directory application/client ID>', secret='<client secret>', tenant='<Active Directory tenant ID>')
adf_client = DataFactoryManagementClient(credentials, subscription_id)
rg_params = {'location':'eastus'}
df_params = {'location':'eastus'}
df_resource = Factory(location='eastus')
df = adf_client.factories.create_or_update(rg_name, df_name, df_resource)
print_item(df)
while df.provisioning_state != 'Succeeded':
df = adf_client.factories.get(rg_name, df_name)
time.sleep(1)
Samarbeta med oss på GitHub
Källan för det här innehållet finns på GitHub, där du även kan skapa och granska ärenden och pull-begäranden. Se vår deltagarguide för mer information.
Azure SDK for Python