Stability: Beta
The Databricks SDK for Java includes functionality to accelerate development with Java for the Databricks Lakehouse. It covers all public Databricks REST API operations. The SDK's internal HTTP client is robust and handles failures on different levels by performing intelligent retries.
- Getting started
- Authentication
- Code examples
- Long-running operations
- Paginated responses
- Single-sign-on with OAuth
- Logging
- Interface stability
- Disclaimer
You can install Databricks SDK for Java by adding the following to your pom.xml
:
<dependency>
<groupId>com.databricks</groupId>
<artifactId>databricks-sdk-java</artifactId>
<version>0.0.1</version>
</dependency>
Using the SDK is as simple as instantiating the WorkspaceClient
class:
import com.databricks.sdk.WorkspaceClient;
import com.databricks.sdk.AccountClient;
import com.databricks.sdk.core.DatabricksConfig;
import com.databricks.sdk.service.compute.ClusterInfo;
import com.databricks.sdk.service.compute.ListClustersRequest;
public class App {
public static void main(String[] args) {
WorkspaceClient workspace = new WorkspaceClient();
for (ClusterInfo c : workspace.clusters().list(new ListClustersRequest())) {
System.out.println(c.getClusterName());
}
}
}
To access account-level APIs, you can instantiate the AccountClient
class:
import com.databricks.sdk.WorkspaceClient;
import com.databricks.sdk.AccountClient;
import com.databricks.sdk.core.DatabricksConfig;
import com.databricks.sdk.service.compute.ClusterInfo;
import com.databricks.sdk.service.compute.ListClustersRequest;
public class App {
public static void main(String[] args) {
AccountClient account = new AccountClient();
for (Workspace w : account.workspaces().list()) {
System.out.println(w.getWorkspaceName());
}
}
}
Databricks SDK for Java is compatible with Java 8 and higher. CI testing runs on Java versions 8, 11, 17, and 20.
If you use Databricks configuration profiles or Databricks-specific environment variables for Databricks authentication, the only code required to start working with a Databricks workspace is the following code snippet, which instructs the Databricks SDK for Java to use its default authentication flow:
import com.databricks.sdk.WorkspaceClient;
...
WorkspaceClient workspace = new WorkspaceClient();
workspace. // press <TAB> for autocompletion
- Default authentication flow
- Databricks native authentication
- Azure native authentication
- Overriding .databrickscfg
- Additional authentication configuration options
If you run the Databricks Terraform Provider, the Databricks SDK for Go, the Databricks SDK for Python, the Databricks CLI, or applications that target the Databricks SDKs for other languages, most likely they will all interoperate nicely together. By default, the Databricks SDK for Java tries the following authentication methods, in the following order, until it succeeds:
- Databricks native authentication
- Azure native authentication
- If the SDK is unsuccessful at this point, it returns an authentication error and stops running.
You can instruct the Databricks SDK for Java to use a specific authentication method by instantiating the DatabricksConfig
class and setting the auth_type
as described in the following sections.
For each authentication method, the SDK searches for compatible authentication credentials in the following locations, in the following order. Once the SDK finds a compatible set of credentials that it can use, it stops searching:
-
Credentials that are hard-coded into configuration arguments.
⚠️ Caution: Databricks does not recommend hard-coding credentials into arguments, as they can be exposed in plain text in version control systems. Use environment variables or configuration profiles instead. -
Credentials in Databricks-specific environment variables.
-
For Databricks native authentication, credentials in the
.databrickscfg
file'sDEFAULT
configuration profile from its default file location (~
for Linux or macOS, and%USERPROFILE%
for Windows). -
For Azure native authentication, the SDK searches for credentials through the Azure CLI as needed.
-
For Bricks CLI authentication, the SDK reuses OAuth credentials obtained by running
bricks auth login
.
Depending on the Databricks authentication method, the SDK uses the following information. Presented are the WorkspaceClient
and AccountClient
arguments (which have corresponding .databrickscfg
file fields), their descriptions, and any corresponding environment variables.
By default, the Databricks SDK for Java initially tries Databricks token authentication (auth_type='pat'
argument). If the SDK is unsuccessful, it then tries Databricks basic (username/password) authentication (auth_type="basic"
argument).
- For Databricks token authentication, you must provide
host
andtoken
; or their environment variable or.databrickscfg
file field equivalents. - For Databricks basic authentication, you must provide
host
,username
, andpassword
(for AWS workspace-level operations); orhost
,account_id
,username
, andpassword
(for AWS, Azure, or GCP account-level operations); or their environment variable or.databrickscfg
file field equivalents.
Argument | Description | Environment variable |
---|---|---|
host |
(String) The Databricks host URL for either the Databricks workspace endpoint or the Databricks accounts endpoint. | DATABRICKS_HOST |
account_id |
(String) The Databricks account ID for the Databricks accounts endpoint. Only has effect when Host is either https://accounts.cloud.databricks.com/ (AWS), https://accounts.azuredatabricks.net/ (Azure), or https://accounts.gcp.databricks.com/ (GCP). |
DATABRICKS_ACCOUNT_ID |
token |
(String) The Databricks personal access token (PAT) (AWS, Azure, and GCP) or Azure Active Directory (Azure AD) token (Azure). | DATABRICKS_TOKEN |
username |
(String) The Databricks username part of basic authentication. Only possible when Host is *.cloud.databricks.com (AWS). |
DATABRICKS_USERNAME |
password |
(String) The Databricks password part of basic authentication. Only possible when Host is *.cloud.databricks.com (AWS). |
DATABRICKS_PASSWORD |
For example, to use Databricks token authentication:
import com.databricks.sdk.WorkspaceClient;
import com.databricks.sdk.core.DatabricksConfig;
...
DatabricksConfig config=new DatabricksConfig()
.setAuthType("pat")
.setHost("https://my-databricks-instance.com")
.setToken("my-token");
WorkspaceClient workspace=new WorkspaceClient(config);
By default, the Databricks SDK for Java first tries Azure client secret authentication (auth_type='azure-client-secret'
argument). If the SDK is unsuccessful, it then tries Azure CLI authentication (auth_type='azure-cli'
argument). See Manage service principals.
The Databricks SDK for Java picks up an Azure CLI token, if you've previously authenticated as an Azure user by running az login
on your machine. See Get Azure AD tokens for users by using the Azure CLI.
To authenticate as an Azure Active Directory (Azure AD) service principal, you must provide one of the following. See also Add a service principal to your Azure Databricks account:
azure_resource_id
,azure_client_secret
,azure_client_id
, andazure_tenant_id
; or their environment variable or.databrickscfg
file field equivalents.azure_resource_id
andazure_use_msi
; or their environment variable or.databrickscfg
file field equivalents.
Argument | Description | Environment variable |
---|---|---|
azure_resource_id |
(String) The Azure Resource Manager ID for the Azure Databricks workspace, which is exchanged for a Databricks host URL. | DATABRICKS_AZURE_RESOURCE_ID |
azure_use_msi |
(Boolean) true to use Azure Managed Service Identity passwordless authentication flow for service principals. This feature is not yet implemented in the Databricks SDK for Python. |
ARM_USE_MSI |
azure_client_secret |
(String) The Azure AD service principal's client secret. | ARM_CLIENT_SECRET |
azure_client_id |
(String) The Azure AD service principal's application ID. | ARM_CLIENT_ID |
azure_tenant_id |
(String) The Azure AD service principal's tenant ID. | ARM_TENANT_ID |
azure_environment |
(String) The Azure environment type (such as Public, UsGov, China, and Germany) for a specific set of API endpoints. Defaults to PUBLIC . |
ARM_ENVIRONMENT |
For example, to use Azure client secret authentication:
import com.databricks.sdk.WorkspaceClient;
import com.databricks.sdk.core.DatabricksConfig;
...
DatabricksConfig config=new DatabricksConfig()
.setAuthType("azure-client-secret")
.setHost("https://my-databricks-instance.com")
.setAzureTenantId("tenant-id")
.setAzureClientId("client-id")
.setAzureClientSecret("client-secret");
WorkspaceClient workspace=new WorkspaceClient(config);
By default, the Databricks SDK for Java first tries GCP credentials authentication (auth_type='google-credentials'
, argument). If the SDK is unsuccessful, it then tries Google Cloud Platform (GCP) ID authentication (auth_type='google-id'
, argument).
The Databricks SDK for Java picks up an OAuth token in the scope of the Google Default Application Credentials (DAC) flow. This means that if you have run gcloud auth application-default login
on your development machine, or launch the application on the compute, that is allowed to impersonate the Google Cloud service account specified in google_service_account
. Authentication should then work out of the box. See Creating and managing service accounts.
To authenticate as a Google Cloud service account, you must provide one of the following:
host
andgoogle_credentials
; or their environment variable or.databrickscfg
file field equivalents.host
andgoogle_service_account
; or their environment variable or.databrickscfg
file field equivalents.
Argument | Description | Environment variable |
---|---|---|
google_credentials |
(String) GCP Service Account Credentials JSON or the location of these credentials on the local filesystem. | GOOGLE_CREDENTIALS |
google_service_account |
(String) The Google Cloud Platform (GCP) service account e-mail used for impersonation in the Default Application Credentials Flow that does not require a password. | DATABRICKS_GOOGLE_SERVICE_ACCOUNT |
For example, to use Google ID authentication:
import com.databricks.sdk.WorkspaceClient;
import com.databricks.sdk.core.DatabricksConfig;
...
DatabricksConfig config=new DatabricksConfig()
.setAuthType("google-credentials")
.setHost("https://my-databricks-instance.com")
.setGoogleServiceAccgount("google-service-account");
WorkspaceClient workspace=new WorkspaceClient(config);
For Databricks native authentication, you can override the default behavior for using .databrickscfg
as follows:
Argument | Description | Environment variable |
---|---|---|
profile |
(String) A connection profile specified within .databrickscfg to use instead of DEFAULT . |
DATABRICKS_CONFIG_PROFILE |
config_file |
(String) A non-default location of the Databricks CLI credentials file. | DATABRICKS_CONFIG_FILE |
For example, to use a profile named MYPROFILE
instead of DEFAULT
:
import com.databricks.sdk.WorkspaceClient;
import com.databricks.sdk.core.DatabricksConfig;
...
DatabricksConfig config=new DatabricksConfig()
.setProfile("MYPROFILE");
WorkspaceClient workspace=new WorkspaceClient(config);
For all authentication methods, you can override the default behavior in client arguments as follows:
DatabricksConfig Attribute | Description | Environment variable |
---|---|---|
auth_type |
(String) When multiple auth attributes are available in the environment, use the auth type specified by this argument. This argument also holds the currently selected auth. | DATABRICKS_AUTH_TYPE |
http_timeout_seconds |
(Integer) Number of seconds for HTTP timeout. Default is 60. | (None) |
debug_truncate_bytes |
(Integer) Truncate JSON fields in debug logs above this limit. Default is 96. | DATABRICKS_DEBUG_TRUNCATE_BYTES |
debug_headers |
(Boolean) true to debug HTTP headers of requests made by the application. Default is false , as headers contain sensitive data, such as access tokens. |
DATABRICKS_DEBUG_HEADERS |
rate_limit |
(Integer) Maximum number of requests per second made to Databricks REST API. | DATABRICKS_RATE_LIMIT |
For example, to turn on debug HTTP headers:
import com.databricks.sdk.WorkspaceClient;
import com.databricks.sdk.core.DatabricksConfig;
...
DatabricksConfig config=new DatabricksConfig()
.setDebugHeaders(true);
WorkspaceClient workspace=new WorkspaceClient(config);
To find code examples that demonstrate how to call the Databricks SDK for Java, see the top-level examples folder within this repository.
When you invoke a long-running operation, the SDK provides a high-level API to trigger these operations and wait for the related entities
to reach the correct state or return the error message in case of failure. All long-running operations return generic Wait
instance with a get()
method to get a result of long-running operation, once it's finished. Databricks SDK for Java picks the most reasonable default timeouts for
every method, but sometimes you may find yourself in a situation, where you'd want to provide a custom Duration
as the value of timeout
argument to the get()
method.
There are a number of long-running operations in Databricks APIs, including:
- Clusters
- Command execution
- Jobs
- Libraries
- Delta Live Tables pipelines
- SQL warehouses
For example, in the Clusters API, once you create a cluster, you receive a cluster ID, and the cluster is in the PENDING
state Meanwhile Databricks takes care of provisioning virtual machines from the cloud provider in the background. The cluster is only usable in the RUNNING
state and so you have to wait for that state to be reached.
Another example is the API for running a job or repairing the run: right after the run starts, the run is in the PENDING
state. The job is only considered to be finished when it is in either the TERMINATED
or SKIPPED
state. Also you would likely need the error message if the long-running operation times out failed with an error code. Other times you may want to configure a custom timeout other than the default of 20 minutes.
In the following example, workspace.clusters().create()
returns ClusterInfo
only once the cluster is in the RUNNING
state, otherwise it will timeout in 10 minutes:
CreateCluster request = new CreateCluster()
.setClusterName("test-cluster")
.setSparkVersion("13.0.x-scala2.12")
.setNodeTypeId("i3.xlarge")
.setAutoterminationMinutes(10L)
.setNumWorkers(1L);
ClusterInfo cluster = workspace.clusters().create(request).get(Duration.ofMinutes(10));
On the platform side the Databricks APIs have different wait to deal with pagination:
- Some APIs follow the offset-plus-limit pagination
- Some start their offsets from 0 and some from 1
- Some use the cursor-based iteration
- Others just return all results in a single response
The Databricks SDK for Java hides this complexity under the Paginator
abstraction. Users can iterate over the results of a paginated API, and the SDK will lazily load the next page of results as needed.
Map<Long, BaseJob> allJobs = new HashMap<>();
Map<Long, List<Long>> durations = new HashMap<>();
Map<Long, BaseRun> latestState = new HashMap<>();
WorkspaceClient workspace = new WorkspaceClient();
for (BaseJob job : workspace.jobs().list(new ListJobsRequest())) {
allJobs.put(job.getJobId(), job);
for (BaseRun run : workspace.jobs().listRuns(new ListRunsRequest().setJobId(job.getJobId()).setExpandTasks(false))) {
durations.computeIfAbsent(job.getJobId(), k -> new ArrayList<>()).add(run.getRunDuration());
if (!latestState.containsKey(job.getJobId())) {
latestState.put(job.getJobId(), run);
continue;
}
if (run.getEndTime() < latestState.get(job.getJobId()).getEndTime()) {
continue;
}
latestState.put(job.getJobId(), run);
}
}
// JobSummary is a custom POJO.
List<JobSummary> summary = new ArrayList<>();
for (Map.Entry<Long, BaseRun> entry : latestState.entrySet()) {
Long jobId = entry.getKey();
BaseRun run = entry.getValue();
BaseJob job = allJobs.get(jobId);
List<Long> jobDurations = durations.get(jobId);
JobSummary jobSummary = new JobSummary(
job.getSettings().getName(),
run.getState().getResultState(),
ZonedDateTime.ofInstant(Instant.ofEpochMilli(run.getEndTime()), ZoneId.of("UTC")),
jobDurations.stream().mapToLong(Long::longValue).average().orElse(0)
);
summary.add(jobSummary);
}
summary.stream()
.sorted(Comparator.comparing(JobSummary::getLastFinished).reversed())
.forEach(jobSummary -> LOGGER.info("Latest: {}", jobSummary));
For a regular web app running on a server, it's recommended to use the Authorization Code Flow to obtain an Access Token and a Refresh Token. This method is considered safe because the Access Token is transmitted directly to the server hosting the app, without passing through the user's web browser and risking exposure.
To enhance the security of the Authorization Code Flow, the PKCE (Proof Key for Code Exchange) mechanism can be employed. With PKCE, the calling application generates a secret called the Code Verifier, which is verified by the authorization server. The app also creates a transform value of the Code Verifier, called the Code Challenge, and sends it over HTTPS to obtain an Authorization Code. By intercepting the Authorization Code, a malicious attacker cannot exchange it for a token without possessing the Code Verifier.
The presented sample is a Spring Boot application that uses the Databricks SDK for Java to demonstrate how to implement the OAuth Authorization Code flow with PKCE security. It can be used to build an app where each user uses their identity to access Databricks resources. The script can be executed with or without client and secret credentials for a custom OAuth app.
Databricks SDK for Java exposes the OAuthClient.initiateConsent()
helper to acquire user redirect URL and initiate PKCE state verification. Application developers are expected to persist SessionCredentials
in the webapp session using Java serialization. The underlying HttpClient
, used for refreshing the access token, is not serializable, so this must be rehydrated by the application on every request.
For applications, that do run on developer workstations, Databricks SDK for Java provides auth_type='external-browser'
utility, that opens up a browser for a user to go through SSO flow. See the CLI app example project for a demo of using this authentication method.
In order to use OAuth with Databricks SDK for Python, you should use AccountClient.customAppIntegration().create()
API. Usage of this can be seen in the Spring Boot example project.
The Databricks SDK for Java seamlessly integrates with the standard SLF4J logging framework. This allows developers to easily enable and customize logging for their Databricks Java projects. To enable debug logging in your Databricks java project, you can add the following to your log4j.properties file:
log4j.logger.com.databricks.sdk=DEBUG
This will enable logging at the debug level and above. Developers can adjust the logging level as needed to control the verbosity of the logging output. The SDK will log all requests and responses to standard error output, using the format >
for requests and <
for responses. In some cases, requests or responses may be truncated due to size considerations. If this occurs, the log message will include the text ... (XXX additional elements)
to indicate that the request or response has been truncated. To increase the truncation limits, developers can set the debug_truncate_bytes
configuration property or the DATABRICKS_DEBUG_TRUNCATE_BYTES
environment variable. To protect sensitive data, such as authentication tokens, passwords, or any HTTP headers, the SDK will automatically replace these values with **REDACTED**
in the log output. Developers can disable this redaction by setting the debug_headers
configuration property to True
.
2023-03-22 21:19:21,702 [databricks.sdk][DEBUG] GET /api/2.0/clusters/list
< 200 OK
< {
< "clusters": [
< {
< "autotermination_minutes": 60,
< "cluster_id": "1109-115255-s1w13zjj",
< "cluster_name": "DEFAULT Test Cluster",
< ... truncated for brevity
< },
< "... (47 additional elements)"
< ]
< }
Overall, the logging capabilities provided by the Databricks SDK for Java can be a powerful tool for monitoring and troubleshooting your Databricks Java projects. Developers can use the various logging methods and configuration options provided by the SDK to customize the logging output to their specific needs.
Databricks is actively working on stabilizing the Databricks SDK for Java's interfaces. API clients for all services are generated from specification files that are synchronized from the main platform. You are highly encouraged to pin the exact dependency version and read the changelog where Databricks documents the changes. Databricks may have minor documented backward-incompatible changes, such as renaming the methods or some type names to bring more consistency.