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dbt assets package

The dbt assets package crawls dbt assets and publishes them to Atlan for discovery.

Cloud

Will create a new connection

This should only be used to create the workflow the first time. Each time you run this method it will create a new connection and new assets within that connection — which could lead to duplicate assets if you run the workflow this way multiple times with the same settings.

Instead, when you want to re-crawl assets, re-run the existing workflow (see Re-run existing workflow below).

2.0.3 1.9.0

To create a new crawl of dbt assets from a multi-tenant dbt Cloud account:

dbt Cloud multi-tenant
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AtlanClient client = Atlan.getDefaultClient();
Workflow crawler = DbtCrawler.creator( // (1)
      client, // (2)
      "dbt-snowflake", // (3)
      List.of(client.getRoleCache().getIdForName("$admin")), // (4)
      null,
      null
    )
    .cloud( // (5)
      "https://cloud.getdbt.com",
      "example-token", 
      true
    )
    .limitToConnection( // (6)
      "default/snowflake/1234567890"
    )
    .include("{\"24670\":{\"211208\":{\"163013\":{\"207502\":{}}}}}") // (7)
    .exclude("{\"24670\":{}}") // (8)
    .tags(true) // (9)
    .enrichMaterializedAssets(true) // (10)
    .build()  // (11)
    .toWorkflow();  // (12)
WorkflowResponse response = crawler.run();  // (13)
  1. The DbtCrawler package will create a workflow to crawl assets from dbt cloud.
  2. You must provide Atlan client.
  3. You must provide a name for the connection that the dbt assets will exist within.
  4. You must specify at least one connection admin, either:

    • everyone in a role (in this example, all $admin users)
    • a list of groups (names) that will be connection admins.
    • a list of users (names) that will be connection admins.
  5. To configure the crawler for extracting dbt assets directly from dbt cloud account then you must provide the following information:

    • hostname of your dbt cloud instance.
    • token to use to authenticate against dbt cloud instance.
    • whether to use a multi-tenant cloud config (true), otherwise a single-tenant cloud config (false).
  6. You can also optionally specify the qualifiedName of a connection to a source (such as Snowflake), to limit the crawling of dbt assets to that existing connection in Atlan.

  7. You can also optionally specify the list of assets to include in crawling. This is a highly-nested map structure of numeric IDs for the account, project, etc. You will almost certainly need to set up the filter you want through the UI first, and look at the developer console of your browser to see the structure.
  8. You can also optionally specify the list of assets to exclude from crawling. This follows the same structure as the inclusion filter.
  9. You can also optionally specify whether to enable dbt tag syncing as part of crawling dbt.
  10. You can also optionally set whether to enable the enrichment of materialized SQL assets as part of crawling dbt.
  11. Build the minimal package object.
  12. Now, you can convert the package into a Workflow object.
  13. You can then run the workflow using the run() method on the object you've created.

    Workflows run asynchronously

    Remember that workflows run asynchronously. See the packages and workflows introduction for details on how you can check the status and wait until the workflow has been completed.

dbt Cloud multi-tenant
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from pyatlan.client.atlan import AtlanClient
from pyatlan.cache.role_cache import RoleCache
from pyatlan.model.packages import DbtCrawler

client = AtlanClient()

crawler = (
    DbtCrawler( # (1)
        connection_name="dbt-snowflake", # (2)
        admin_roles=[RoleCache.get_id_for_name("$admin")], # (3)
        admin_groups=None,
        admin_users=None,
    )
    .cloud( # (4)
        hostname="https://cloud.getdbt.com",
        service_token="example-token", 
        multi_tenant=True,
    )
    .limit_to_connection( # (5)
        connection_qualified_name="default/snowflake/1234567890"
    )
    .include(filter='{"24690":{"327645":{}}}') # (6)
    .exclude(filter='') # (7)
    .tags(True) # (8)
    .enrich_materialized_assets(True) # (9)
    .to_workflow() # (10)
)
response = client.workflow.run(crawler) # (11)
  1. Base configuration for a new dbt crawler.
  2. You must provide a name for the connection that the dbt assets will exist within.
  3. You must specify at least one connection admin, either:

    • everyone in a role (in this example, all $admin users)
    • a list of groups (names) that will be connection admins.
    • a list of users (names) that will be connection admins.
  4. To configure the crawler for extracting dbt assets directly from dbt cloud account then you must provide the following information:

    • hostname of your dbt cloud instance.
    • token to use to authenticate against dbt cloud instance.
    • whether to use a multi-tenant cloud config (True), otherwise a single-tenant cloud config (False).
  5. You can also optionally specify the qualifiedName of a connection to a source (such as Snowflake), to limit the crawling of dbt assets to that existing connection in Atlan.

  6. You can also optionally specify the list of assets to include in crawling. This is a highly-nested map structure of numeric IDs for the account, project, etc. You will almost certainly need to set up the filter you want through the UI first, and look at the developer console of your browser to see the structure. (If set to None, all assets will be crawled.)
  7. You can also optionally specify the list of assets to exclude from crawling. This follows the same structure as the inclusion filter. (If set to None, no assets will be excluded.)
  8. You can also optionally specify whether to enable dbt tag syncing as part of crawling dbt.
  9. You can also optionally set whether to enable the enrichment of materialized SQL assets as part of crawling dbt.
  10. Now, you can convert the package into a Workflow object.
  11. Run the workflow by invoking the run() method on the workflow client, passing the created object.

    Workflows run asynchronously

    Remember that workflows run asynchronously. See the packages and workflows introduction for details on how you can check the status and wait until the workflow has been completed.

dbt Cloud multi-tenant
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val client = Atlan.getDefaultClient()
val crawler = DbtCrawler.creator( // (1)
        client, // (2)
        "dbt-snowflake", // (3)
        listOf(client.getRoleCache().getIdForName("\$admin")), // (4)
        null,
        null
    )
    .cloud( // (5)
        "https://cloud.getdbt.com",
        "example-token", 
        true
    )
    .limitToConnection( // (6)
        "default/snowflake/1234567890"
    )
    .include("{\"24670\":{\"211208\":{\"163013\":{\"207502\":{}}}}}") // (7)
    .exclude("{\"24670\":{}}") // (8)
    .tags(true) // (9)
    .enrichMaterializedAssets(true) // (10)
    .build()  // (11)
    .toWorkflow()  // (12)
val response = crawler.run()  // (13)
  1. The DbtCrawler package will create a workflow to crawl assets from dbt cloud.
  2. You must provide Atlan client.
  3. You must provide a name for the connection that the dbt assets will exist within.
  4. You must specify at least one connection admin, either:

    • everyone in a role (in this example, all $admin users)
    • a list of groups (names) that will be connection admins.
    • a list of users (names) that will be connection admins.
  5. To configure the crawler for extracting dbt assets directly from dbt cloud account then you must provide the following information:

    • hostname of your dbt cloud instance.
    • token to use to authenticate against dbt cloud instance.
    • whether to use a multi-tenant cloud config (true), otherwise a single-tenant cloud config (false).
  6. You can also optionally specify the qualifiedName of a connection to a source (such as Snowflake), to limit the crawling of dbt assets to that existing connection in Atlan.

  7. You can also optionally specify the list of assets to include in crawling. This is a highly-nested map structure of numeric IDs for the account, project, etc. You will almost certainly need to set up the filter you want through the UI first, and look at the developer console of your browser to see the structure.
  8. You can also optionally specify the list of assets to exclude from crawling. This follows the same structure as the inclusion filter.
  9. You can also optionally specify whether to enable dbt tag syncing as part of crawling dbt.
  10. You can also optionally set whether to enable the enrichment of materialized SQL assets as part of crawling dbt.
  11. Build the minimal package object.
  12. Now, you can convert the package into a Workflow object.
  13. You can then run the workflow using the run() method on the object you've created.

    Workflows run asynchronously

    Remember that workflows run asynchronously. See the packages and workflows introduction for details on how you can check the status and wait until the workflow has been completed.

Create the workflow via UI only

We recommend creating the workflow only via the UI. To rerun an existing workflow, see the steps below.

Core

Will create a new connection

This should only be used to create the workflow the first time. Each time you run this method it will create a new connection and new assets within that connection — which could lead to duplicate assets if you run the workflow this way multiple times with the same settings.

Instead, when you want to re-crawl assets, re-run the existing workflow (see Re-run existing workflow below).

2.0.3 1.9.0

To create a new crawl of dbt assets from a dbt files location:

dbt Core
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AtlanClient client = Atlan.getDefaultClient();
Workflow crawler = DbtCrawler.creator( // (1)
      client, // (2)
      "dbt-snowflake", // (3)
      List.of(client.getRoleCache().getIdForName("$admin")), // (4)
      null,
      null
    )
    .core( // (5)
      "dbt-bucket",
      "dbt-data", 
      "ap-south-1"
    )
    .limitToConnection( // (6)
      "default/snowflake/1234567890"
    )
    .tags(true) // (7)
    .enrichMaterializedAssets(true) // (8)
    .build()  // (9)
    .toWorkflow();  // (10)
WorkflowResponse response = crawler.run();  // (11)
  1. The DbtCrawler package will create a workflow to crawl assets from dbt files location.
  2. You must provide Atlan client.
  3. You must provide a name for the connection that the dbt assets will exist within
  4. You must specify at least one connection admin, either:

    • everyone in a role (in this example, all $admin users)
    • a list of groups (names) that will be connection admins.
    • a list of users (names) that will be connection admins.
  5. To configure the crawler for extracting dbt assets directly from the dbt files location, you must provide the following information:

    • s3 bucket containing the dbt Core files.
    • prefix within the S3 bucket where the dbt Core files are located.
    • s3 region where the bucket is located.
  6. You can also optionally specify the qualifiedName of a connection to a source (such as Snowflake), to limit the crawling of dbt assets to that existing connection in Atlan.

  7. You can also optionally specify the list of assets to include in crawling. This is a highly-nested map structure of numeric IDs for the account, project, etc. You will almost certainly need to set up the filter you want through the UI first, and look at the developer console of your browser to see the structure.
  8. You can also optionally set whether to enable the enrichment of materialized SQL assets as part of crawling dbt.
  9. Build the minimal package object.
  10. Now, you can convert the package into a Workflow object.
  11. You can then run the workflow using the run() method on the object you've created.

    Workflows run asynchronously

    Remember that workflows run asynchronously. See the packages and workflows introduction for details on how you can check the status and wait until the workflow has been completed.

dbt Core
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from pyatlan.client.atlan import AtlanClient
from pyatlan.cache.role_cache import RoleCache
from pyatlan.model.packages import DbtCrawler

client = AtlanClient()

crawler = (
    DbtCrawler( # (1)
        connection_name="dbt-snowflake", # (2)
        admin_roles=[RoleCache.get_id_for_name("$admin")], # (3)
        admin_groups=None,
        admin_users=None,
    )
    .core( # (4)
        s3_bucket="dbt-bucket",
        s3_prefix="dbt-data",
        s3_region="ap-south-1",
    )
    .limit_to_connection( # (5)
        connection_qualified_name="default/snowflake/1234567890"
    )
    .tags(True) # (6)
    .enrich_materialized_assets(True) # (7)
    .to_workflow() # (8)
)
response = client.workflow.run(crawler) # (9)
  1. Base configuration for a new dbt crawler.
  2. You must provide a name for the connection that the dbt assets will exist within.
  3. You must specify at least one connection admin, either:

    • everyone in a role (in this example, all $admin users).
    • a list of groups (names) that will be connection admins.
    • a list of users (names) that will be connection admins.
  4. To configure the crawler for extracting dbt assets directly from the dbt files location, you must provide the following information:

    • s3 bucket containing the dbt Core files.
    • prefix within the S3 bucket where the dbt Core files are located.
    • s3 region where the bucket is located.
  5. You can also optionally specify the qualifiedName of a connection to a source (such as Snowflake), to limit the crawling of dbt assets to that existing connection in Atlan.

  6. You can also optionally specify whether to enable dbt tag syncing as part of crawling dbt.
  7. You can also optionally set whether to enable the enrichment of materialized SQL assets as part of crawling dbt.
  8. Now, you can convert the package into a Workflow object.
  9. Run the workflow by invoking the run() method on the workflow client, passing the created object.

    Workflows run asynchronously

    Remember that workflows run asynchronously. See the packages and workflows introduction for details on how you can check the status and wait until the workflow has been completed.

dbt Core
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val client = Atlan.getDefaultClient()
val crawler = DbtCrawler.creator( // (1)
        client, // (2)
        "dbt-snowflake", // (3)
        listOf(client.getRoleCache().getIdForName("\$admin")), // (4)
        null,
        null
    )
    .core( // (5)
        "dbt-bucket",
        "dbt-data", 
        "ap-south-1"
    )
    .limitToConnection( // (6)
        "default/snowflake/1234567890"
    )
    .tags(true) // (7)
    .enrichMaterializedAssets(true) // (8)
    .build()  // (9)
    .toWorkflow()  // (10)
val response = crawler.run()  // (11)
  1. The DbtCrawler package will create a workflow to crawl assets from dbt files location.
  2. You must provide Atlan client.
  3. You must provide a name for the connection that the dbt assets will exist within
  4. You must specify at least one connection admin, either:

    • everyone in a role (in this example, all $admin users)
    • a list of groups (names) that will be connection admins.
    • a list of users (names) that will be connection admins.
  5. To configure the crawler for extracting dbt assets directly from the dbt files location, you must provide the following information:

    • s3 bucket containing the dbt Core files.
    • prefix within the S3 bucket where the dbt Core files are located.
    • s3 region where the bucket is located.
  6. You can also optionally specify the qualifiedName of a connection to a source (such as Snowflake), to limit the crawling of dbt assets to that existing connection in Atlan.

  7. You can also optionally specify the list of assets to include in crawling. This is a highly-nested map structure of numeric IDs for the account, project, etc. You will almost certainly need to set up the filter you want through the UI first, and look at the developer console of your browser to see the structure.
  8. You can also optionally set whether to enable the enrichment of materialized SQL assets as part of crawling dbt.
  9. Build the minimal package object.
  10. Now, you can convert the package into a Workflow object.
  11. You can then run the workflow using the run() method on the object you've created.

    Workflows run asynchronously

    Remember that workflows run asynchronously. See the packages and workflows introduction for details on how you can check the status and wait until the workflow has been completed.

Create the workflow via UI only

We recommend creating the workflow only via the UI. To rerun an existing workflow, see the steps below.

Re-run existing workflow

1.9.5 1.10.6

To re-run an existing workflow for dbt assets:

Re-run existing dbt workflow
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List<WorkflowSearchResult> existing = WorkflowSearchRequest // (1)
            .findByType(DbtCrawler.PREFIX, 5); // (2)
// Determine which of the results is the dbt workflow you want to re-run...
WorkflowRunResponse response = existing.get(n).rerun(); // (3)
  1. You can search for existing workflows through the WorkflowSearchRequest class.
  2. You can find workflows by their type using the findByType() helper method and providing the prefix for one of the packages. In this example, we do so for the DbtCrawler. (You can also specify the maximum number of resulting workflows you want to retrieve as results.)
  3. Once you've found the workflow you want to re-run, you can simply call the rerun() helper method on the workflow search result. The WorkflowRunResponse is just a subtype of WorkflowResponse so has the same helper method to monitor progress of the workflow run.

    • Optionally, you can use the rerun(true) method with idempotency to avoid re-running a workflow that is already in running or in a pending state. This will return details of the already running workflow if found, and by default, it is set to false

    Workflows run asynchronously

    Remember that workflows run asynchronously. See the packages and workflows introduction for details on how you can check the status and wait until the workflow has been completed.

Re-run existing dbt workflow
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from pyatlan.client.atlan import AtlanClient
from pyatlan.model.enums import WorkflowPackage

client = AtlanClient()

existing = client.workflow.find_by_type(  # (1)
  prefix=WorkflowPackage.DBT, max_results=5
)

# Determine which dbt workflow (n)
# from the list of results you want to re-run.
response = client.workflow.rerun(existing[n]) # (2)
  1. You can find workflows by their type using the workflow client find_by_type() method and providing the prefix for one of the packages. In this example, we do so for the DbtCrawler. (You can also specify the maximum number of resulting workflows you want to retrieve as results.)
  2. Once you've found the workflow you want to re-run, you can simply call the workflow client rerun() method.

    • Optionally, you can use rerun(idempotent=True) to avoid re-running a workflow that is already in running or in a pending state. This will return details of the already running workflow if found, and by default, it is set to False.

    Workflows run asynchronously

    Remember that workflows run asynchronously. See the packages and workflows introduction for details on how you can check the status and wait until the workflow has been completed.

Re-run existing dbt workflow
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val existing = WorkflowSearchRequest // (1)
            .findByType(DbtCrawler.PREFIX, 5); // (2)
// Determine which of the results is the
// dbt workflow you want to re-run...
val response = existing.get(n).rerun(); // (3)
  1. You can search for existing workflows through the WorkflowSearchRequest class.
  2. You can find workflows by their type using the findByType() helper method and providing the prefix for one of the packages. In this example, we do so for the DbtCrawler. (You can also specify the maximum number of resulting workflows you want to retrieve as results.)
  3. Once you've found the workflow you want to re-run, you can simply call the rerun() helper method on the workflow search result. The WorkflowRunResponse is just a subtype of WorkflowResponse so has the same helper method to monitor progress of the workflow run.

    • Optionally, you can use the rerun(true) method with idempotency to avoid re-running a workflow that is already in running or in a pending state. This will return details of the already running workflow if found, and by default, it is set to false

    Workflows run asynchronously

    Remember that workflows run asynchronously. See the packages and workflows introduction for details on how you can check the status and wait until the workflow has been completed.

Requires multiple steps through the raw REST API

  1. Find the existing workflow.
  2. Send through the resulting re-run request.
POST /api/service/workflows/indexsearch
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{
  "from": 0,
  "size": 5,
  "query": {
    "bool": {
      "filter": [
        {
          "nested": {
            "path": "metadata",
            "query": {
              "prefix": {
                "metadata.name.keyword": {
                  "value": "atlan-dbt" // (1)
                }
              }
            }
          }
        }
      ]
    }
  },
  "sort": [
    {
      "metadata.creationTimestamp": {
        "nested": {
          "path": "metadata"
        },
        "order": "desc"
      }
    }
  ],
  "track_total_hits": true
}
  1. Searching by the atlan-dbt prefix will ensure you only find existing dbt assets workflows.

    Name of the workflow

    The name of the workflow will be nested within the _source.metadata.name property of the response object. (Remember since this is a search, there could be multiple results, so you may want to use the other details in each result to determine which workflow you really want.)

POST /api/service/workflows/submit
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{
  "namespace": "default",
  "resourceKind": "WorkflowTemplate",
  "resourceName": "atlan-dbt-1684500411" // (1)
}
  1. Send the name of the workflow as the resourceName to rerun it.