layout | page_title | sidebar_current | description |
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databricks |
Provider: Databricks |
docs-databricks-index |
Terraform provider for the Databricks Lakehouse platform |
Use the Databricks Terraform provider to interact with almost all of Databricks resources. If you're new to Databricks, please follow guide to create a workspace on Azure, AWS or GCP and then this workspace management tutorial. Take advantage of Terraform Modules to make your code simpler and reuse existing modules for Databricks resources. Changelog is available on GitHub.
Compute resources
- Deploy databricks_cluster on selected databricks_node_type
- Schedule automated databricks_job
- Control cost and data access with databricks_cluster_policy
- Speedup job & cluster startup with databricks_instance_pool
- Customize clusters with databricks_global_init_script
- Manage few databricks_notebook, and even list them
- Manage databricks_repo
Storage
- Manage JAR, Wheel & Egg libraries through databricks_dbfs_file
- List entries on DBFS with databricks_dbfs_file_paths data source
- Get contents of small files with databricks_dbfs_file data source
- Mount storage with databricks_mount resource
Security
- Organize databricks_user into databricks_group through databricks_group_member, also reading metadata
- Create databricks_service_principal with databricks_obo_token to enable even more restricted access control.
- Create databricks_service_principal with databricks_service_principal_secret to authenticate with the service principal OAuth tokens (Only for AWS deployments)
- Manage data access with databricks_instance_profile, which can be assigned through databricks_group_instance_profile and databricks_user_instance_profile
- Control which networks can access workspace with databricks_ip_access_list
- Generically manage databricks_permissions
- Manage data object access control lists with databricks_sql_permissions
- Keep sensitive elements like passwords in databricks_secret, grouped into databricks_secret_scope and controlled by databricks_secret_acl
- Create workspaces in your VPC with DBFS using cross-account IAM roles, having your notebooks encrypted with CMK.
- Use predefined AWS IAM Policy Templates: databricks_aws_assume_role_policy, databricks_aws_crossaccount_policy, databricks_aws_bucket_policy
- Configure billing and audit databricks_mws_log_delivery
Databricks SQL
- Create databricks_sql_endpoint controlled by databricks_permissions.
- Manage queries and their visualizations.
- Manage dashboards and their widgets.
- Provide global configuration for all SQL warehouses
Machine Learning
- Create models in Unity Catalog.
- Create MLflow experiments.
- Create models in the workspace model registry.
- Create model serving endpoints.
provider "databricks" {
}
data "databricks_current_user" "me" {}
data "databricks_spark_version" "latest" {}
data "databricks_node_type" "smallest" {
local_disk = true
}
resource "databricks_notebook" "this" {
path = "${data.databricks_current_user.me.home}/Terraform"
language = "PYTHON"
content_base64 = base64encode(<<-EOT
# created from ${abspath(path.module)}
display(spark.range(10))
EOT
)
}
resource "databricks_job" "this" {
name = "Terraform Demo (${data.databricks_current_user.me.alphanumeric})"
task {
task_key = "task1"
notebook_task {
notebook_path = databricks_notebook.this.path
}
new_cluster {
num_workers = 1
spark_version = data.databricks_spark_version.latest.id
node_type_id = data.databricks_node_type.smallest.id
}
}
}
output "notebook_url" {
value = databricks_notebook.this.url
}
output "job_url" {
value = databricks_job.this.url
}
To make Databricks Terraform Provider generally available, we've moved it from https://github.com/databrickslabs to https://github.com/databricks. We've worked closely with the Terraform Registry team at Hashicorp to ensure a smooth migration. Existing terraform deployments continue to work as expected without any action from your side. We ask you to replace databrickslabs/databricks
with databricks/databricks
in all your .tf
files.
You should have .terraform.lock.hcl
file in your state directory that is checked into source control. terraform init will give you the following warning.
Warning: Additional provider information from registry
The remote registry returned warnings for registry.terraform.io/databrickslabs/databricks:
- For users on Terraform 0.13 or greater, this provider has moved to databricks/databricks. Please update your source in required_providers.
After you replace databrickslabs/databricks
with databricks/databricks
in the required_providers
block, the warning will disappear. Do a global "search and replace" in *.tf
files. Alternatively you can run python3 -c "$(curl -Ls https://dbricks.co/updtfns)"
from the command-line, that would do all the boring work for you.
If you didn't check-in .terraform.lock.hcl
to the source code version control, you may see Failed to install provider
error. Please follow the simple steps described in the troubleshooting guide.
In case of the problems using Databricks Terraform provider follow the steps outlined in the troubleshooting guide.
!> Warning Please be aware that hard coding any credentials in plain text is not something that is recommended. We strongly recommend using a Terraform backend that supports encryption. Please use environment variables, ~/.databrickscfg
file, encrypted .tfvars
files or secret store of your choice (Hashicorp Vault, AWS Secrets Manager, AWS Param Store, Azure Key Vault)
There are currently a number of supported methods to authenticate into the Databricks platform to create resources:
- PAT Tokens
- AWS via Service Principals
- GCP via Google Cloud CLI
- Azure Active Directory Tokens via Azure CLI, Service Principals, or Managed Service Identities
- Username and password pair (legacy)
If no configuration option is given, the provider will look up configured credentials in ~/.databrickscfg
file. It is created by the databricks configure --token
command. Check this page
for more details. The provider uses config file credentials only when host
/token
or azure_auth
options are not specified.
It is the recommended way to use Databricks Terraform provider, in case you're already using the same approach with
AWS Shared Credentials File
or Azure CLI authentication.
provider "databricks" {
}
You can specify non-standard location of configuration file through config_file
parameter or DATABRICKS_CONFIG_FILE
environment variable:
provider "databricks" {
config_file = "/opt/databricks/cli-config"
}
You can specify a CLI connection profile through profile
parameter or DATABRICKS_CONFIG_PROFILE
environment variable:
provider "databricks" {
profile = "ML_WORKSPACE"
}
You can use host
and token
parameters to supply credentials to the workspace. When environment variables are preferred, then you can specify DATABRICKS_HOST
and DATABRICKS_TOKEN
instead. Environment variables are the second most recommended way of configuring this provider.
provider "databricks" {
host = "https://abc-cdef-ghi.cloud.databricks.com"
token = "dapitokenhere"
}
!> Warning This approach is not recommended for regular use. Instead, authenticate with service principal
You can use the username
+ password
attributes to authenticate the provider for E2 workspace setup. Respective DATABRICKS_USERNAME
and DATABRICKS_PASSWORD
environment variables are applicable as well.
provider "databricks" {
host = "https://accounts.cloud.databricks.com"
username = var.user
password = var.password
}
-> Note If you experience technical difficulties with rolling out resources in this example, please make sure that environment variables don't conflict with other provider block attributes. When in doubt, please run TF_LOG=DEBUG terraform apply
to enable debug mode through the TF_LOG
environment variable. Look specifically for Explicit and implicit attributes
lines, that should indicate authentication attributes used.
The provider block supports the following arguments:
host
- (optional) This is the host of the Databricks workspace. It is a URL that you use to login to your workspace. Alternatively, you can provide this value as an environment variableDATABRICKS_HOST
.token
- (optional) This is the API token to authenticate into the workspace. Alternatively, you can provide this value as an environment variableDATABRICKS_TOKEN
.username
- (optional) This is the username of the user that can log into the workspace. Alternatively, you can provide this value as an environment variableDATABRICKS_USERNAME
. Recommended only for creating workspaces in AWS.password
- (optional) This is the user's password that can log into the workspace. Alternatively, you can provide this value as an environment variableDATABRICKS_PASSWORD
. Recommended only for creating workspaces in AWS.config_file
- (optional) Location of the Databricks CLI credentials file created bydatabricks configure --token
command (~/.databrickscfg by default). Check Databricks CLI documentation for more details. The provider uses configuration file credentials when you don't specify host/token/username/password/azure attributes. Alternatively, you can provide this value as an environment variableDATABRICKS_CONFIG_FILE
. This field defaults to~/.databrickscfg
.profile
- (optional) Connection profile specified within ~/.databrickscfg. Please check connection profiles section for more details. This field defaults toDEFAULT
.account_id
- (optional for workspace-level operations, but required for account-level) Account Id that could be found in the top right corner of Accounts Console. Alternatively, you can provide this value as an environment variableDATABRICKS_ACCOUNT_ID
. Only has effect whenhost = "https://accounts.cloud.databricks.com/"
, and is currently used to provision account admins via databricks_user. In the future releases of the provider this property will also be used specify account fordatabricks_mws_*
resources as well.auth_type
- (optional) enforce specific auth type to be used in very rare cases, where a single Terraform state manages Databricks workspaces on more than one cloud andmore than one authorization method configured
error is a false positive. Valid values arepat
,basic
,oauth-m2m
,azure-client-secret
,azure-msi
,azure-cli
,google-credentials
, andgoogle-id
.
You can use the client_id
+ client_secret
attributes to authenticate with a service principal at both the account and workspace levels. The client_id
is the application_id
of the Service Principal and client_secret
is its secret. You can generate the secret from Databricks Accounts Console (see instruction) or by using the Terraform resource databricks_service_principal_secret.
provider "databricks" {
host = "https://abc-cdef-ghi.cloud.databricks.com"
client_id = var.client_id
client_secret = var.client_secret
}
To create resources at both the account and workspace levels, you can create two providers as shown below
provider "databricks" {
alias = "accounts"
host = "https://accounts.cloud.databricks.com"
client_id = var.client_id
client_secret = var.client_secret
account_id = "00000000-0000-0000-0000-000000000000"
}
provider "databricks" {
alias = "workspace"
host = var.workspace_host
client_id = var.client_id
client_secret = var.client_secret
}
Next, you can specify the corresponding provider when creating the resource. For example, you can use the workspace provider to create a workspace group
resource "databricks_group" "cluster_admin" {
provider = databricks.workspace
display_name = "cluster_admin"
allow_cluster_create = true
allow_instance_pool_create = false
}
client_id
- Theapplication_id
of the Service Principal. Alternatively, you can provide this value as an environment variableDATABRICKS_CLIENT_ID
.client_secret
- Secret of the service principal. Alternatively, you can provide this value as an environment variableDATABRICKS_CLIENT_SECRET
.
The below Azure authentication options are supported at both the account and workspace levels. The provider works with Azure CLI authentication to facilitate local development workflows, though for automated scenarios, managed identity or service principal auth is recommended (and specification of azure_use_msi
, azure_client_id
, azure_client_secret
and azure_tenant_id
parameters).
Since v0.3.8, it's possible to leverage Azure Managed Service Identity authentication, which is using the same environment variables as azurerm
provider. Both SystemAssigned
and UserAssigned
identities work, as long as they have Contributor
role on subscription level and created the workspace resource, or directly added to workspace through databricks_service_principal.
provider "databricks" {
host = data.azurerm_databricks_workspace.this.workspace_url
azure_workspace_resource_id = azurerm_databricks_workspace.this.id
# ARM_USE_MSI environment variable is recommended
azure_use_msi = true
}
It's possible to use Azure CLI authentication, where the provider would rely on access token cached by az login
command so that local development scenarios are possible. Technically, the provider will call az account get-access-token
each time before an access token is about to expire.
provider "azurerm" {
features {}
}
resource "azurerm_databricks_workspace" "this" {
location = "centralus"
name = "my-workspace-name"
resource_group_name = var.resource_group
sku = "premium"
}
provider "databricks" {
host = azurerm_databricks_workspace.this.workspace_url
}
resource "databricks_user" "my-user" {
user_name = "test-user@databricks.com"
display_name = "Test User"
}
provider "azurerm" {
client_id = var.client_id
client_secret = var.client_secret
tenant_id = var.tenant_id
subscription_id = var.subscription_id
}
resource "azurerm_databricks_workspace" "this" {
location = "centralus"
name = "my-workspace-name"
resource_group_name = var.resource_group
sku = "premium"
}
provider "databricks" {
host = azurerm_databricks_workspace.this.workspace_url
azure_workspace_resource_id = azurerm_databricks_workspace.this.id
azure_client_id = var.client_id
azure_client_secret = var.client_secret
azure_tenant_id = var.tenant_id
}
resource "databricks_user" "my-user" {
user_name = "test-user@databricks.com"
}
azure_workspace_resource_id
- (optional)id
attribute of azurerm_databricks_workspace resource. Combination of subscription id, resource group name, and workspace name. Required withauzre_use_msi
orazure_client_secret
.azure_client_secret
- (optional) This is the Azure Enterprise Application (Service principal) client secret. This service principal requires contributor access to your Azure Databricks deployment. Alternatively, you can provide this value as an environment variableARM_CLIENT_SECRET
.azure_client_id
- (optional) This is the Azure Enterprise Application (Service principal) client id. This service principal requires contributor access to your Azure Databricks deployment. Alternatively, you can provide this value as an environment variableARM_CLIENT_ID
.azure_tenant_id
- (optional) This is the Azure Active Directory Tenant id in which the Enterprise Application (Service Principal) resides. Alternatively, you can provide this value as an environment variableARM_TENANT_ID
.azure_environment
- (optional) This is the Azure Environment which defaults to thepublic
cloud. Other options aregerman
,china
andusgovernment
. Alternatively, you can provide this value as an environment variableARM_ENVIRONMENT
.azure_use_msi
- (optional) Use Azure Managed Service Identity authentication. Alternatively, you can provide this value as an environment variableARM_USE_MSI
.
There are ARM_*
environment variables provide a way to share authentication configuration using the databricks
provider alongside the azurerm
provider.
When a workspace is created using a service principal account, that service principal account is automatically added to the workspace as a member of the admins group. To add a new service principal account to an existing workspace, create a databricks_service_principal.
The provider works with Google Cloud CLI authentication to facilitate local development workflows. For automated scenarios, a service principal auth is necessary using google_service_account
parameter with impersonation and Application Default Credentials. Alternatively, you could provide the service account key directly by passing it to google_credentials
parameter (or GOOGLE_CREDENTIALS
environment variable)
Except for metastore, metastore assignment and storage credential objects, Unity Catalog APIs are accessible via workspace-level APIs. This design may change in the future.
If you are configuring a new Databricks account for the first time, please create at least one workspace with an identity (user or service principal) that you intend to use for Unity Catalog rollout. You can then configure the provider using that identity and workspace to provision the required Unity Catalog resources.
When performing a single Terraform apply to update both the owner and other fields for Unity Catalog resources, the process first updates the owner, followed by the other fields using the new owner's permissions. If your principal is not the owner (specifically, the newly updated owner), you will not have the authority to modify those fields. In cases where you wish to change the owner to another individual and also update other fields, we recommend initially updating the fields using your principal, which should have owner permissions, and then updating the owner in a separate step.
!> Warning Combination of debug_headers
and debug_truncate_bytes
results in dumping of sensitive information to logs. Use it for troubleshooting purposes only.
This section covers configuration parameters not related to authentication. They could be used when debugging problems, or do an additional tuning of provider's behaviour:
http_timeout_seconds
- the amount of time Terraform waits for a response from Databricks REST API. Default is 60.rate_limit
- defines maximum number of requests per second made to Databricks REST API by Terraform. Default is 15.debug_truncate_bytes
- Applicable only whenTF_LOG=DEBUG
is set. Truncate JSON fields in HTTP requests and responses above this limit. Default is 96.debug_headers
- Applicable only whenTF_LOG=DEBUG
is set. Debug HTTP headers of requests made by the provider. Default is false. We recommend turning this flag on only under exceptional circumstances, when troubleshooting authentication issues. Turning this flag on will log firstdebug_truncate_bytes
of any HTTP header value in cleartext.skip_verify
- skips SSL certificate verification for HTTP calls. Use at your own risk. Default is false (don't skip verification).
The following configuration attributes can be passed via environment variables:
Argument | Environment variable |
---|---|
auth_type |
DATABRICKS_AUTH_TYPE |
host |
DATABRICKS_HOST |
token |
DATABRICKS_TOKEN |
username |
DATABRICKS_USERNAME |
password |
DATABRICKS_PASSWORD |
account_id |
DATABRICKS_ACCOUNT_ID |
config_file |
DATABRICKS_CONFIG_FILE |
profile |
DATABRICKS_CONFIG_PROFILE |
client_id |
DATABRICKS_CLIENT_ID |
client_secret |
DATABRICKS_CLIENT_SECRET |
azure_client_secret |
ARM_CLIENT_SECRET |
azure_client_id |
ARM_CLIENT_ID |
azure_tenant_id |
ARM_TENANT_ID |
azure_workspace_resource_id |
DATABRICKS_AZURE_RESOURCE_ID |
azure_use_msi |
ARM_USE_MSI |
azure_environment |
ARM_ENVIRONMENT |
google_credentials |
GOOGLE_CREDENTIALS |
google_service_account |
GOOGLE_SERVICE_ACCOUNT |
debug_truncate_bytes |
DATABRICKS_DEBUG_TRUNCATE_BYTES |
debug_headers |
DATABRICKS_DEBUG_HEADERS |
rate_limit |
DATABRICKS_RATE_LIMIT |
For example, with the following zero-argument configuration:
provider "databricks" {}
- Provider will check all the supported environment variables and set values of relevant arguments.
- In case any conflicting arguments are present, the plan will end with an error.
- Will check for the presence of
host
+token
pair, continue trying otherwise. - Will check for
host
+username
+password
presence, continue trying otherwise. - Will check for Azure workspace ID,
azure_client_secret
+azure_client_id
+azure_tenant_id
presence, continue trying otherwise. - Will check for availability of Azure MSI, if enabled via
azure_use_msi
, continue trying otherwise. - Will check for Azure workspace ID presence, and if
AZ CLI
returns an access token, continue trying otherwise. - Will check for the
~/.databrickscfg
file in the home directory, will fail otherwise. - Will check for
profile
presence and try picking from that file will fail otherwise. - Will check for
host
andtoken
orusername
+password
combination, and will fail if none of these exist.
Please check Default Authentication Flow from Databricks SDK for Go in case you need more details.