About Collectors
KADA provides python libraries that customers can use to quickly deploy a Collector.
Why you should use a Collector
There are several reasons why you may use a collector vs the direct connect extractor:
You are using the KADA SaaS offering and it cannot connect to your sources due to firewall restrictions
You want to push metadata to KADA rather than allow it pull data for Security reasons
You want to inspect the metadata before pushing it to K
Using a collector requires you to manage
Deploying and orchestrating the extract code
Managing a high water mark so the extract only pull the latest metadata
Storing and pushing the extracts to your K instance.
Pre-requisites
Python 3.6 - 3.10
Access to the KADA Collector repository that contains the DBT Cloud whl
The repository is currently hosted in KADA’s Azure Blob Storage. You will be given a SAS token to access the repository. Reach out to KADA Support (support@kada.ai) if you do not have access.
Download the DBT whl (e.g. kada_collectors_extractors_dbt-#.#.#-py3-none-any.whl)
Access to K landing directory
Access to DBT Cloud
Unlike the other collectors, the DBT extractor produces manifest, catalog and run_result json files instead of csv files. Do not be alarmed if you see these.
This only works for DBT Cloud not DBT Core. If you are using DBT Core refer to this page
Step 1: Create the Source in K
Create an DBT Cloud source in K
Go to Settings, Select Sources and click Add Source
Select “Load from File system” option
Give the source a Name - e.g. DBT Cloud Production
Add the Host name for the DBT Cloud Server
Click Finish Setup
Step 2: Getting Access to the Source Landing Directory
To find your landing directory you will need to
Go to Platform Settings - Settings. Note down the value of this setting
If using Azure: storage_azure_storage_account
if using AWS:
storage_root_folder - the AWS s3 bucket
storage_aws_region - the region where the AWS s3 bucket is hosted
Go to Sources - Edit the Source you have configured. Note down the landing directory in the About this Source section
To connect to the landing directory you will need
If using Azure: a SAS token to push data to the landing directory. Request this from KADA Support (support@kada.ai)
if using AWS:
an Access key and Secret. Request this from KADA Support (support@kada.ai)
OR provide your IAM role to KADA Support to provision access.
Step 3: Install the Collector
It is recommended to use a python environment such as pyenv or pipenv if you are not intending to install this package at the system level.
Some python packages also have dependencies on the OS level packages, so you may be required to install additional OS packages if the below fails to install.
Run the following command to install the collector
pip install kada_collectors_extractors_dbt-3.1.0-py3-none-any.whl
You will also need to install the common library kada_collectors_lib-1.0.0 for this collector to function properly.
pip install kada_collectors_lib-1.0.1-py3-none-any.whl
These are some known possible packages you may require depending on your OS, this is not exhaustive and only serves as a guide.
Step 4: Configure the Collector
The collector requires a set of parameters to connect to and extract metadata from DBT Cloud
FIELD | FIELD TYPE | DESCRIPTION | EXAMPLE |
---|
FIELD | FIELD TYPE | DESCRIPTION | EXAMPLE |
---|---|---|---|
account_id | string | DBT cloud account Id | “xxxxx.australia-east.azure” |
environment_ids | list<string> | List of environment Ids to extract | 12345,234234 |
token | string | Generated token from the DBT console |
|
output_path | string | Absolute path to the output location where files are to be written | “/tmp/output” |
timeout | integer | By default we allow 20 seconds for the API to respond, for slower connections it may take longer, so adjust accordingly. | 20 |
mapping | JSON | Mapping between DBT project ids and their corresponding database host value in K. | The keys are DBT project ids where as the host is corresponding onboarded host in K { "60125": "af33141.australia-east.azure", "76e1e02270ddad585ed8ebf607230deeb779b3e5": "af33141.australia-east.azure" } |
dry_run | boolean | If you enable dry run, the extractor will simply produce the mapping.json file only which helps you map all your projects to a corresponding database host. | false |
compress | boolean | To gzip the output or not | true |
These parameters can be added directly into the run or you can use pass the parameters in via a JSON file. The following is an example you can use that is included in the example run code below.
kada_dbt_extractor_config.json
{ "account_id": "", "token": "", "output_path": "/tmp/output", "timeout": 20, "mapping": {}, "dry_run": false, "compress": true, "environment_ids": [123,64] }
Step 5: Run the Collector
The following code is an example of how to run the extractor. You may need to uplift this code to meet any code standards at your organisation.
This can be executed in any python environment where the whl has been installed. It will produce and read a high water mark file from the same directory as the execution called dbt_hwm.txt and produce files according to the configuration JSON.
This is the wrapper script: kada_dbt_extractor.py
import os import argparse from kada_collectors.extractors.utils import load_config, get_hwm, publish_hwm, get_generic_logger from kada_collectors.extractors.dbt import Extractor get_generic_logger('root') # Set to use the root logger, you can change the context accordingly or define your own logger _type = 'dbt' dirname = os.path.dirname(__file__) filename = os.path.join(dirname, 'kada_{}_extractor_config.json'.format(_type)) parser = argparse.ArgumentParser(description='KADA DBT Extractor.') parser.add_argument('--config', '-c', dest='config', default=filename, help='Location of the configuration json, default is the config json in the same directory as the script.') args = parser.parse_args() start_hwm, end_hwm = get_hwm(_type) ext = Extractor(**load_config(args.config)) ext.test_connection() ext.run(**{"start_hwm": start_hwm, "end_hwm": end_hwm}) publish_hwm(_type, end_hwm)
Advance options:
If you wish to maintain your own high water mark files elsewhere you can use the above section’s script as a guide on how to call the extractor. The configuration file is simply the keyword arguments in JSON format. Refer to this document for more information https://kadaai.atlassian.net/wiki/spaces/KSL/pages/1902411777/Additional+Notes#Storing-HWM-in-another-location
If you are handling external arguments of the runner yourself, you’ll need to consider additional items for the run method. Refer to this document for more information https://kadaai.atlassian.net/wiki/spaces/KSL/pages/1902411777/Additional+Notes#The-run-method
class Extractor(token: str = None, account_id: str = None, environment_ids: list=[], \ mapping: dict = {}, timeout: int = 10, dry_run: bool = False, \ output_path: str = './output', compress: bool = False) -> None
ktoken: DBT Cloud Read Only API Token.
account_id: account ID DBT Cloud, should be a numeric ID.
mapping: Dict of project ids to corresponding database hosts
timeout: Timeout for the API call
dry_run: Run the extractor for the purpose of producing
output_path: full or relative path to where the outputs should go
compress: To gzip output files or not
Step 6: Check the Collector Outputs
K Extracts
A set of files (eg metadata, databaselog, linkages, events etc) will be generated. These files will appear in the output_path directory you set in the configuration details
High Water Mark File
A high water mark file is created in the same directory as the execution called dbt_hwm.txt and produce files according to the configuration JSON. This file is only produced if you call the publish_hwm method.
If you want prefer file managed hwm, you can edit the location of the hwn by following these instructions https://kadaai.atlassian.net/wiki/spaces/KSL/pages/1902411777/Additional+Notes#Storing-High-Water-Marks-(HWM)
Step 7: Push the Extracts to K
Once the files have been validated, you can push the files to the K landing directory.
You can use Azure Storage Explorer if you want to initially do this manually. You can push the files using python as well (see Airflow example below)
Example: Using Airflow to orchestrate the Extract and Push to K
# built-in import os # Installed from airflow.operators.python_operator import PythonOperator from airflow.models.dag import DAG from airflow.operators.dummy import DummyOperator from airflow.utils.dates import days_ago from airflow.utils.task_group import TaskGroup from plugins.utils.azure_blob_storage import AzureBlobStorage from kada_collectors.extractors.utils import load_config, get_hwm, publish_hwm, get_generic_logger from kada_collectors.extractors.tableau import Extractor # To be configed by the customer. # Note variables may change if using a different object store. KADA_SAS_TOKEN = os.getenv("KADA_SAS_TOKEN") KADA_CONTAINER = "" KADA_STORAGE_ACCOUNT = "" KADA_LANDING_PATH = "lz/tableau/landing" KADA_EXTRACTOR_CONFIG = { "server_address": "http://tabserver", "username": "user", "password": "password", "sites": [], "db_host": "tabserver", "db_username": "repo_user", "db_password": "repo_password", "db_port": 8060, "db_name": "workgroup", "meta_only": False, "retries": 5, "dry_run": False, "output_path": "/set/to/output/path", "mask": True, "mapping": {} } # To be implemented by the customer. # Upload to your landing zone storage. # Change '.csv' to '.csv.gz' if you set compress = true in the config def upload(): output = KADA_EXTRACTOR_CONFIG['output_path'] for filename in os.listdir(output): if filename.endswith('.csv'): file_to_upload_path = os.path.join(output, filename) AzureBlobStorage.upload_file_sas_token( client=KADA_SAS_TOKEN, storage_account=KADA_STORAGE_ACCOUNT, container=KADA_CONTAINER, blob=f'{KADA_LANDING_PATH}/{filename}', local_path=file_to_upload_path ) with DAG(dag_id="taskgroup_example", start_date=days_ago(1)) as dag: # To be implemented by the customer. # Retrieve the timestamp from the prior run start_hwm = 'YYYY-MM-DD HH:mm:SS' end_hwm = 'YYYY-MM-DD HH:mm:SS' # timestamp now ext = Extractor(**KADA_EXTRACTOR_CONFIG) start = DummyOperator(task_id="start") with TaskGroup("taskgroup_1", tooltip="extract tableau and upload") as extract_upload: task_1 = PythonOperator( task_id="extract_tableau", python_callable=ext.run, op_kwargs={"start_hwm": start_hwm, "end_hwm": end_hwm}, provide_context=True, ) task_2 = PythonOperator( task_id="upload_extracts", python_callable=upload, op_kwargs={}, provide_context=True, ) # To be implemented by the customer. # Timestamp needs to be saved for next run task_3 = DummyOperator(task_id='save_hwm') end = DummyOperator(task_id='end') start >> extract_upload >> end