"description":"An optional continuous property for this job. The continuous property will ensure that there is always one run executing. Only one of `schedule` and `continuous` can be used.",
"description":"Edit mode of the job.\n\n* `UI_LOCKED`: The job is in a locked UI state and cannot be modified.\n* `EDITABLE`: The job is in an editable state and can be modified."
"description":"An optional set of email addresses that is notified when runs of this job begin or complete as well as when this job is deleted.",
"properties":{
"no_alert_for_skipped_runs":{
"description":"If true, do not send email to recipients specified in `on_failure` if the run is skipped."
},
"on_duration_warning_threshold_exceeded":{
"description":"A list of email addresses to be notified when the duration of a run exceeds the threshold specified for the `RUN_DURATION_SECONDS` metric in the `health` field. If no rule for the `RUN_DURATION_SECONDS` metric is specified in the `health` field for the job, notifications are not sent.",
"items":{
"description":""
}
},
"on_failure":{
"description":"A list of email addresses to be notified when a run unsuccessfully completes. A run is considered to have completed unsuccessfully if it ends with an `INTERNAL_ERROR` `life_cycle_state` or a `FAILED`, or `TIMED_OUT` result_state. If this is not specified on job creation, reset, or update the list is empty, and notifications are not sent.",
"items":{
"description":""
}
},
"on_start":{
"description":"A list of email addresses to be notified when a run begins. If not specified on job creation, reset, or update, the list is empty, and notifications are not sent.",
"items":{
"description":""
}
},
"on_success":{
"description":"A list of email addresses to be notified when a run successfully completes. A run is considered to have completed successfully if it ends with a `TERMINATED` `life_cycle_state` and a `SUCCESS` result_state. If not specified on job creation, reset, or update, the list is empty, and notifications are not sent.",
"description":"Client version used by the environment\nThe client is the user-facing environment of the runtime.\nEach client comes with a specific set of pre-installed libraries.\nThe version is a string, consisting of the major client version."
"description":"List of pip dependencies, as supported by the version of pip in this environment.\nEach dependency is a pip requirement file line https://pip.pypa.io/en/stable/reference/requirements-file-format/\nAllowed dependency could be \u003crequirement specifier\u003e, \u003carchive url/path\u003e, \u003clocal project path\u003e(WSFS or Volumes in Databricks), \u003cvcs project url\u003e\nE.g. dependencies: [\"foo==0.0.1\", \"-r /Workspace/test/requirements.txt\"]",
"description":"Used to tell what is the format of the job. This field is ignored in Create/Update/Reset calls. When using the Jobs API 2.1 this value is always set to `\"MULTI_TASK\"`."
},
"git_source":{
"description":"An optional specification for a remote Git repository containing the source code used by tasks. Version-controlled source code is supported by notebook, dbt, Python script, and SQL File tasks.\n\nIf `git_source` is set, these tasks retrieve the file from the remote repository by default. However, this behavior can be overridden by setting `source` to `WORKSPACE` on the task.\n\nNote: dbt and SQL File tasks support only version-controlled sources. If dbt or SQL File tasks are used, `git_source` must be defined on the job.",
"properties":{
"git_branch":{
"description":"Name of the branch to be checked out and used by this job. This field cannot be specified in conjunction with git_tag or git_commit."
},
"git_commit":{
"description":"Commit to be checked out and used by this job. This field cannot be specified in conjunction with git_branch or git_tag."
},
"git_provider":{
"description":"Unique identifier of the service used to host the Git repository. The value is case insensitive."
},
"git_snapshot":{
"description":"",
"properties":{
"used_commit":{
"description":"Commit that was used to execute the run. If git_branch was specified, this points to the HEAD of the branch at the time of the run; if git_tag was specified, this points to the commit the tag points to."
}
}
},
"git_tag":{
"description":"Name of the tag to be checked out and used by this job. This field cannot be specified in conjunction with git_branch or git_commit."
},
"git_url":{
"description":"URL of the repository to be cloned by this job."
},
"job_source":{
"description":"The source of the job specification in the remote repository when the job is source controlled.",
"description":"Dirty state indicates the job is not fully synced with the job specification in the remote repository.\n\nPossible values are:\n* `NOT_SYNCED`: The job is not yet synced with the remote job specification. Import the remote job specification from UI to make the job fully synced.\n* `DISCONNECTED`: The job is temporary disconnected from the remote job specification and is allowed for live edit. Import the remote job specification again from UI to make the job fully synced."
"description":"A list of job cluster specifications that can be shared and reused by tasks of this job. Libraries cannot be declared in a shared job cluster. You must declare dependent libraries in task settings.",
"items":{
"description":"",
"properties":{
"job_cluster_key":{
"description":"A unique name for the job cluster. This field is required and must be unique within the job.\n`JobTaskSettings` may refer to this field to determine which cluster to launch for the task execution."
"description":"Parameters needed in order to automatically scale clusters up and down based on load.\nNote: autoscaling works best with DB runtime versions 3.0 or later.",
"properties":{
"max_workers":{
"description":"The maximum number of workers to which the cluster can scale up when overloaded.\nNote that `max_workers` must be strictly greater than `min_workers`."
},
"min_workers":{
"description":"The minimum number of workers to which the cluster can scale down when underutilized.\nIt is also the initial number of workers the cluster will have after creation."
}
}
},
"autotermination_minutes":{
"description":"Automatically terminates the cluster after it is inactive for this time in minutes. If not set,\nthis cluster will not be automatically terminated. If specified, the threshold must be between\n10 and 10000 minutes.\nUsers can also set this value to 0 to explicitly disable automatic termination."
},
"aws_attributes":{
"description":"Attributes related to clusters running on Amazon Web Services.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"ebs_volume_count":{
"description":"The number of volumes launched for each instance. Users can choose up to 10 volumes.\nThis feature is only enabled for supported node types. Legacy node types cannot specify\ncustom EBS volumes.\nFor node types with no instance store, at least one EBS volume needs to be specified;\notherwise, cluster creation will fail.\n\nThese EBS volumes will be mounted at `/ebs0`, `/ebs1`, and etc.\nInstance store volumes will be mounted at `/local_disk0`, `/local_disk1`, and etc.\n\nIf EBS volumes are attached, Databricks will configure Spark to use only the EBS volumes for\nscratch storage because heterogenously sized scratch devices can lead to inefficient disk\nutilization. If no EBS volumes are attached, Databricks will configure Spark to use instance\nstore volumes.\n\nPlease note that if EBS volumes are specified, then the Spark configuration `spark.local.dir`\nwill be overridden."
"description":"If using gp3 volumes, what IOPS to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The size of each EBS volume (in GiB) launched for each instance. For general purpose\nSSD, this value must be within the range 100 - 4096. For throughput optimized HDD,\nthis value must be within the range 500 - 4096."
"description":"If using gp3 volumes, what throughput to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nIf this value is greater than 0, the cluster driver node in particular will be placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"instance_profile_arn":{
"description":"Nodes for this cluster will only be placed on AWS instances with this instance profile. If\nommitted, nodes will be placed on instances without an IAM instance profile. The instance\nprofile must have previously been added to the Databricks environment by an account\nadministrator.\n\nThis feature may only be available to certain customer plans.\n\nIf this field is ommitted, we will pull in the default from the conf if it exists."
},
"spot_bid_price_percent":{
"description":"The bid price for AWS spot instances, as a percentage of the corresponding instance type's\non-demand price.\nFor example, if this field is set to 50, and the cluster needs a new `r3.xlarge` spot\ninstance, then the bid price is half of the price of\non-demand `r3.xlarge` instances. Similarly, if this field is set to 200, the bid price is twice\nthe price of on-demand `r3.xlarge` instances. If not specified, the default value is 100.\nWhen spot instances are requested for this cluster, only spot instances whose bid price\npercentage matches this field will be considered.\nNote that, for safety, we enforce this field to be no more than 10000.\n\nThe default value and documentation here should be kept consistent with\nCommonConf.defaultSpotBidPricePercent and CommonConf.maxSpotBidPricePercent."
},
"zone_id":{
"description":"Identifier for the availability zone/datacenter in which the cluster resides.\nThis string will be of a form like \"us-west-2a\". The provided availability\nzone must be in the same region as the Databricks deployment. For example, \"us-west-2a\"\nis not a valid zone id if the Databricks deployment resides in the \"us-east-1\" region.\nThis is an optional field at cluster creation, and if not specified, a default zone will be used.\nIf the zone specified is \"auto\", will try to place cluster in a zone with high availability,\nand will retry placement in a different AZ if there is not enough capacity.\nThe list of available zones as well as the default value can be found by using the\n`List Zones` method."
}
}
},
"azure_attributes":{
"description":"Attributes related to clusters running on Microsoft Azure.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"first_on_demand":{
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nThis value should be greater than 0, to make sure the cluster driver node is placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"log_analytics_info":{
"description":"Defines values necessary to configure and run Azure Log Analytics agent",
"description":"The max bid price to be used for Azure spot instances.\nThe Max price for the bid cannot be higher than the on-demand price of the instance.\nIf not specified, the default value is -1, which specifies that the instance cannot be evicted\non the basis of price, and only on the basis of availability. Further, the value should \u003e 0 or -1."
"description":"The configuration for delivering spark logs to a long-term storage destination.\nTwo kinds of destinations (dbfs and s3) are supported. Only one destination can be specified\nfor one cluster. If the conf is given, the logs will be delivered to the destination every\n`5 mins`. The destination of driver logs is `$destination/$clusterId/driver`, while\nthe destination of executor logs is `$destination/$clusterId/executor`.",
"properties":{
"dbfs":{
"description":"destination needs to be provided. e.g.\n`{ \"dbfs\" : { \"destination\" : \"dbfs:/home/cluster_log\" } }`",
"properties":{
"destination":{
"description":"dbfs destination, e.g. `dbfs:/my/path`"
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
},
"destination":{
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
},
"enable_encryption":{
"description":"(Optional) Flag to enable server side encryption, `false` by default."
},
"encryption_type":{
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
"description":"Cluster name requested by the user. This doesn't have to be unique.\nIf not specified at creation, the cluster name will be an empty string.\n"
},
"cluster_source":{
"description":""
},
"custom_tags":{
"description":"Additional tags for cluster resources. Databricks will tag all cluster resources (e.g., AWS\ninstances and EBS volumes) with these tags in addition to `default_tags`. Notes:\n\n- Currently, Databricks allows at most 45 custom tags\n\n- Clusters can only reuse cloud resources if the resources' tags are a subset of the cluster tags",
"additionalproperties":{
"description":""
}
},
"data_security_mode":{
"description":""
},
"docker_image":{
"description":"",
"properties":{
"basic_auth":{
"description":"",
"properties":{
"password":{
"description":"Password of the user"
},
"username":{
"description":"Name of the user"
}
}
},
"url":{
"description":"URL of the docker image."
}
}
},
"driver_instance_pool_id":{
"description":"The optional ID of the instance pool for the driver of the cluster belongs.\nThe pool cluster uses the instance pool with id (instance_pool_id) if the driver pool is not\nassigned."
},
"driver_node_type_id":{
"description":"The node type of the Spark driver. Note that this field is optional;\nif unset, the driver node type will be set as the same value\nas `node_type_id` defined above.\n"
},
"enable_elastic_disk":{
"description":"Autoscaling Local Storage: when enabled, this cluster will dynamically acquire additional disk\nspace when its Spark workers are running low on disk space. This feature requires specific AWS\npermissions to function correctly - refer to the User Guide for more details."
},
"enable_local_disk_encryption":{
"description":"Whether to enable LUKS on cluster VMs' local disks"
},
"gcp_attributes":{
"description":"Attributes related to clusters running on Google Cloud Platform.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"boot_disk_size":{
"description":"boot disk size in GB"
},
"google_service_account":{
"description":"If provided, the cluster will impersonate the google service account when accessing\ngcloud services (like GCS). The google service account\nmust have previously been added to the Databricks environment by an account\nadministrator."
},
"local_ssd_count":{
"description":"If provided, each node (workers and driver) in the cluster will have this number of local SSDs attached. Each local SSD is 375GB in size. Refer to [GCP documentation](https://cloud.google.com/compute/docs/disks/local-ssd#choose_number_local_ssds) for the supported number of local SSDs for each instance type."
"description":"This field determines whether the spark executors will be scheduled to run on preemptible VMs (when set to true) versus standard compute engine VMs (when set to false; default).\nNote: Soon to be deprecated, use the availability field instead."
},
"zone_id":{
"description":"Identifier for the availability zone in which the cluster resides.\nThis can be one of the following:\n- \"HA\" =\u003e High availability, spread nodes across availability zones for a Databricks deployment region [default]\n- \"AUTO\" =\u003e Databricks picks an availability zone to schedule the cluster on.\n- A GCP availability zone =\u003e Pick One of the available zones for (machine type + region) from https://cloud.google.com/compute/docs/regions-zones."
"description":"The configuration for storing init scripts. Any number of destinations can be specified. The scripts are executed sequentially in the order provided. If `cluster_log_conf` is specified, init script logs are sent to `\u003cdestination\u003e/\u003ccluster-ID\u003e/init_scripts`.",
"description":"destination needs to be provided. e.g.\n`{ \"abfss\" : { \"destination\" : \"abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e\" } }",
"properties":{
"destination":{
"description":"abfss destination, e.g. `abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e`."
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
"description":"The optional ID of the instance pool to which the cluster belongs."
},
"node_type_id":{
"description":"This field encodes, through a single value, the resources available to each of\nthe Spark nodes in this cluster. For example, the Spark nodes can be provisioned\nand optimized for memory or compute intensive workloads. A list of available node\ntypes can be retrieved by using the :method:clusters/listNodeTypes API call.\n"
},
"num_workers":{
"description":"Number of worker nodes that this cluster should have. A cluster has one Spark Driver\nand `num_workers` Executors for a total of `num_workers` + 1 Spark nodes.\n\nNote: When reading the properties of a cluster, this field reflects the desired number\nof workers rather than the actual current number of workers. For instance, if a cluster\nis resized from 5 to 10 workers, this field will immediately be updated to reflect\nthe target size of 10 workers, whereas the workers listed in `spark_info` will gradually\nincrease from 5 to 10 as the new nodes are provisioned."
},
"policy_id":{
"description":"The ID of the cluster policy used to create the cluster if applicable."
},
"runtime_engine":{
"description":""
},
"single_user_name":{
"description":"Single user name if data_security_mode is `SINGLE_USER`"
},
"spark_conf":{
"description":"An object containing a set of optional, user-specified Spark configuration key-value pairs.\nUsers can also pass in a string of extra JVM options to the driver and the executors via\n`spark.driver.extraJavaOptions` and `spark.executor.extraJavaOptions` respectively.\n",
"description":"An object containing a set of optional, user-specified environment variable key-value pairs.\nPlease note that key-value pair of the form (X,Y) will be exported as is (i.e.,\n`export X='Y'`) while launching the driver and workers.\n\nIn order to specify an additional set of `SPARK_DAEMON_JAVA_OPTS`, we recommend appending\nthem to `$SPARK_DAEMON_JAVA_OPTS` as shown in the example below. This ensures that all\ndefault databricks managed environmental variables are included as well.\n\nExample Spark environment variables:\n`{\"SPARK_WORKER_MEMORY\": \"28000m\", \"SPARK_LOCAL_DIRS\": \"/local_disk0\"}` or\n`{\"SPARK_DAEMON_JAVA_OPTS\": \"$SPARK_DAEMON_JAVA_OPTS -Dspark.shuffle.service.enabled=true\"}`",
"description":"The Spark version of the cluster, e.g. `3.3.x-scala2.11`.\nA list of available Spark versions can be retrieved by using\nthe :method:clusters/sparkVersions API call.\n"
"description":"SSH public key contents that will be added to each Spark node in this cluster. The\ncorresponding private keys can be used to login with the user name `ubuntu` on port `2200`.\nUp to 10 keys can be specified.",
"description":"An optional maximum allowed number of concurrent runs of the job.\nSet this value if you want to be able to execute multiple runs of the same job concurrently.\nThis is useful for example if you trigger your job on a frequent schedule and want to allow consecutive runs to overlap with each other, or if you want to trigger multiple runs which differ by their input parameters.\nThis setting affects only new runs. For example, suppose the job’s concurrency is 4 and there are 4 concurrent active runs. Then setting the concurrency to 3 won’t kill any of the active runs.\nHowever, from then on, new runs are skipped unless there are fewer than 3 active runs.\nThis value cannot exceed 1000. Setting this value to `0` causes all new runs to be skipped."
"description":"An optional name for the job. The maximum length is 4096 bytes in UTF-8 encoding."
},
"notification_settings":{
"description":"Optional notification settings that are used when sending notifications to each of the `email_notifications` and `webhook_notifications` for this job.",
"properties":{
"no_alert_for_canceled_runs":{
"description":"If true, do not send notifications to recipients specified in `on_failure` if the run is canceled."
},
"no_alert_for_skipped_runs":{
"description":"If true, do not send notifications to recipients specified in `on_failure` if the run is skipped."
}
}
},
"parameters":{
"description":"Job-level parameter definitions",
"items":{
"description":"",
"properties":{
"default":{
"description":"Default value of the parameter."
},
"name":{
"description":"The name of the defined parameter. May only contain alphanumeric characters, `_`, `-`, and `.`"
}
}
}
},
"permissions":{
"description":"",
"items":{
"description":"",
"properties":{
"group_name":{
"description":""
},
"level":{
"description":""
},
"service_principal_name":{
"description":""
},
"user_name":{
"description":""
}
}
}
},
"queue":{
"description":"The queue settings of the job.",
"properties":{
"enabled":{
"description":"If true, enable queueing for the job. This is a required field."
}
}
},
"run_as":{
"description":"",
"properties":{
"service_principal_name":{
"description":"Application ID of an active service principal. Setting this field requires the `servicePrincipal/user` role."
},
"user_name":{
"description":"The email of an active workspace user. Non-admin users can only set this field to their own email."
}
}
},
"schedule":{
"description":"An optional periodic schedule for this job. The default behavior is that the job only runs when triggered by clicking “Run Now” in the Jobs UI or sending an API request to `runNow`.",
"description":"A Cron expression using Quartz syntax that describes the schedule for a job. See [Cron Trigger](http://www.quartz-scheduler.org/documentation/quartz-2.3.0/tutorials/crontrigger.html) for details. This field is required."
"description":"A Java timezone ID. The schedule for a job is resolved with respect to this timezone. See [Java TimeZone](https://docs.oracle.com/javase/7/docs/api/java/util/TimeZone.html) for details. This field is required."
"description":"A map of tags associated with the job. These are forwarded to the cluster as cluster tags for jobs clusters, and are subject to the same limitations as cluster tags. A maximum of 25 tags can be added to the job.",
"additionalproperties":{
"description":""
}
},
"tasks":{
"description":"A list of task specifications to be executed by this job.",
"items":{
"description":"",
"properties":{
"condition_task":{
"description":"If condition_task, specifies a condition with an outcome that can be used to control the execution of other tasks. Does not require a cluster to execute and does not support retries or notifications.",
"properties":{
"left":{
"description":"The left operand of the condition task. Can be either a string value or a job state or parameter reference."
"description":"* `EQUAL_TO`, `NOT_EQUAL` operators perform string comparison of their operands. This means that `“12.0” == “12”` will evaluate to `false`.\n* `GREATER_THAN`, `GREATER_THAN_OR_EQUAL`, `LESS_THAN`, `LESS_THAN_OR_EQUAL` operators perform numeric comparison of their operands. `“12.0” \u003e= “12”` will evaluate to `true`, `“10.0” \u003e= “12”` will evaluate to `false`.\n\nThe boolean comparison to task values can be implemented with operators `EQUAL_TO`, `NOT_EQUAL`. If a task value was set to a boolean value, it will be serialized to `“true”` or `“false”` for the comparison."
"description":"The right operand of the condition task. Can be either a string value or a job state or parameter reference."
}
}
},
"dbt_task":{
"description":"If dbt_task, indicates that this must execute a dbt task. It requires both Databricks SQL and the ability to use a serverless or a pro SQL warehouse.",
"properties":{
"catalog":{
"description":"Optional name of the catalog to use. The value is the top level in the 3-level namespace of Unity Catalog (catalog / schema / relation). The catalog value can only be specified if a warehouse_id is specified. Requires dbt-databricks \u003e= 1.1.1."
},
"commands":{
"description":"A list of dbt commands to execute. All commands must start with `dbt`. This parameter must not be empty. A maximum of up to 10 commands can be provided.",
"items":{
"description":""
}
},
"profiles_directory":{
"description":"Optional (relative) path to the profiles directory. Can only be specified if no warehouse_id is specified. If no warehouse_id is specified and this folder is unset, the root directory is used."
"description":"Path to the project directory. Optional for Git sourced tasks, in which\ncase if no value is provided, the root of the Git repository is used."
"description":"Optional schema to write to. This parameter is only used when a warehouse_id is also provided. If not provided, the `default` schema is used."
"description":"Optional location type of the project directory. When set to `WORKSPACE`, the project will be retrieved\nfrom the local Databricks workspace. When set to `GIT`, the project will be retrieved from a Git repository\ndefined in `git_source`. If the value is empty, the task will use `GIT` if `git_source` is defined and `WORKSPACE` otherwise.\n\n* `WORKSPACE`: Project is located in Databricks workspace.\n* `GIT`: Project is located in cloud Git provider."
"description":"ID of the SQL warehouse to connect to. If provided, we automatically generate and provide the profile and connection details to dbt. It can be overridden on a per-command basis by using the `--profiles-dir` command line argument."
"description":"An optional array of objects specifying the dependency graph of the task. All tasks specified in this field must complete before executing this task. The task will run only if the `run_if` condition is true.\nThe key is `task_key`, and the value is the name assigned to the dependent task.",
"description":"An optional set of email addresses that is notified when runs of this task begin or complete as well as when this task is deleted. The default behavior is to not send any emails.",
"description":"A list of email addresses to be notified when the duration of a run exceeds the threshold specified for the `RUN_DURATION_SECONDS` metric in the `health` field. If no rule for the `RUN_DURATION_SECONDS` metric is specified in the `health` field for the job, notifications are not sent.",
"items":{
"description":""
}
},
"on_failure":{
"description":"A list of email addresses to be notified when a run unsuccessfully completes. A run is considered to have completed unsuccessfully if it ends with an `INTERNAL_ERROR` `life_cycle_state` or a `FAILED`, or `TIMED_OUT` result_state. If this is not specified on job creation, reset, or update the list is empty, and notifications are not sent.",
"items":{
"description":""
}
},
"on_start":{
"description":"A list of email addresses to be notified when a run begins. If not specified on job creation, reset, or update, the list is empty, and notifications are not sent.",
"items":{
"description":""
}
},
"on_success":{
"description":"A list of email addresses to be notified when a run successfully completes. A run is considered to have completed successfully if it ends with a `TERMINATED` `life_cycle_state` and a `SUCCESS` result_state. If not specified on job creation, reset, or update, the list is empty, and notifications are not sent.",
"description":"The key that references an environment spec in a job. This field is required for Python script, Python wheel and dbt tasks when using serverless compute."
"description":"If existing_cluster_id, the ID of an existing cluster that is used for all runs.\nWhen running jobs or tasks on an existing cluster, you may need to manually restart\nthe cluster if it stops responding. We suggest running jobs and tasks on new clusters for\ngreater reliability"
"description":"URI of the egg library to install. Supported URIs include Workspace paths, Unity Catalog Volumes paths, and S3 URIs.\nFor example: `{ \"egg\": \"/Workspace/path/to/library.egg\" }`, `{ \"egg\" : \"/Volumes/path/to/library.egg\" }` or\n`{ \"egg\": \"s3://my-bucket/library.egg\" }`.\nIf S3 is used, please make sure the cluster has read access on the library. You may need to\nlaunch the cluster with an IAM role to access the S3 URI."
"description":"URI of the JAR library to install. Supported URIs include Workspace paths, Unity Catalog Volumes paths, and S3 URIs.\nFor example: `{ \"jar\": \"/Workspace/path/to/library.jar\" }`, `{ \"jar\" : \"/Volumes/path/to/library.jar\" }` or\n`{ \"jar\": \"s3://my-bucket/library.jar\" }`.\nIf S3 is used, please make sure the cluster has read access on the library. You may need to\nlaunch the cluster with an IAM role to access the S3 URI."
"description":"Specification of a maven library to be installed. For example:\n`{ \"coordinates\": \"org.jsoup:jsoup:1.7.2\" }`",
"properties":{
"coordinates":{
"description":"Gradle-style maven coordinates. For example: \"org.jsoup:jsoup:1.7.2\"."
},
"exclusions":{
"description":"List of dependences to exclude. For example: `[\"slf4j:slf4j\", \"*:hadoop-client\"]`.\n\nMaven dependency exclusions:\nhttps://maven.apache.org/guides/introduction/introduction-to-optional-and-excludes-dependencies.html.",
"description":"Specification of a PyPi library to be installed. For example:\n`{ \"package\": \"simplejson\" }`",
"properties":{
"package":{
"description":"The name of the pypi package to install. An optional exact version specification is also\nsupported. Examples: \"simplejson\" and \"simplejson==3.8.0\"."
},
"repo":{
"description":"The repository where the package can be found. If not specified, the default pip index is\nused."
"description":"URI of the requirements.txt file to install. Only Workspace paths and Unity Catalog Volumes paths are supported.\nFor example: `{ \"requirements\": \"/Workspace/path/to/requirements.txt\" }` or `{ \"requirements\" : \"/Volumes/path/to/requirements.txt\" }`"
"description":"URI of the wheel library to install. Supported URIs include Workspace paths, Unity Catalog Volumes paths, and S3 URIs.\nFor example: `{ \"whl\": \"/Workspace/path/to/library.whl\" }`, `{ \"whl\" : \"/Volumes/path/to/library.whl\" }` or\n`{ \"whl\": \"s3://my-bucket/library.whl\" }`.\nIf S3 is used, please make sure the cluster has read access on the library. You may need to\nlaunch the cluster with an IAM role to access the S3 URI."
"description":"An optional maximum number of times to retry an unsuccessful run. A run is considered to be unsuccessful if it completes with the `FAILED` result_state or `INTERNAL_ERROR` `life_cycle_state`. The value `-1` means to retry indefinitely and the value `0` means to never retry."
},
"min_retry_interval_millis":{
"description":"An optional minimal interval in milliseconds between the start of the failed run and the subsequent retry run. The default behavior is that unsuccessful runs are immediately retried."
"description":"Parameters needed in order to automatically scale clusters up and down based on load.\nNote: autoscaling works best with DB runtime versions 3.0 or later.",
"properties":{
"max_workers":{
"description":"The maximum number of workers to which the cluster can scale up when overloaded.\nNote that `max_workers` must be strictly greater than `min_workers`."
},
"min_workers":{
"description":"The minimum number of workers to which the cluster can scale down when underutilized.\nIt is also the initial number of workers the cluster will have after creation."
}
}
},
"autotermination_minutes":{
"description":"Automatically terminates the cluster after it is inactive for this time in minutes. If not set,\nthis cluster will not be automatically terminated. If specified, the threshold must be between\n10 and 10000 minutes.\nUsers can also set this value to 0 to explicitly disable automatic termination."
},
"aws_attributes":{
"description":"Attributes related to clusters running on Amazon Web Services.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"ebs_volume_count":{
"description":"The number of volumes launched for each instance. Users can choose up to 10 volumes.\nThis feature is only enabled for supported node types. Legacy node types cannot specify\ncustom EBS volumes.\nFor node types with no instance store, at least one EBS volume needs to be specified;\notherwise, cluster creation will fail.\n\nThese EBS volumes will be mounted at `/ebs0`, `/ebs1`, and etc.\nInstance store volumes will be mounted at `/local_disk0`, `/local_disk1`, and etc.\n\nIf EBS volumes are attached, Databricks will configure Spark to use only the EBS volumes for\nscratch storage because heterogenously sized scratch devices can lead to inefficient disk\nutilization. If no EBS volumes are attached, Databricks will configure Spark to use instance\nstore volumes.\n\nPlease note that if EBS volumes are specified, then the Spark configuration `spark.local.dir`\nwill be overridden."
"description":"If using gp3 volumes, what IOPS to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The size of each EBS volume (in GiB) launched for each instance. For general purpose\nSSD, this value must be within the range 100 - 4096. For throughput optimized HDD,\nthis value must be within the range 500 - 4096."
"description":"If using gp3 volumes, what throughput to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nIf this value is greater than 0, the cluster driver node in particular will be placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"instance_profile_arn":{
"description":"Nodes for this cluster will only be placed on AWS instances with this instance profile. If\nommitted, nodes will be placed on instances without an IAM instance profile. The instance\nprofile must have previously been added to the Databricks environment by an account\nadministrator.\n\nThis feature may only be available to certain customer plans.\n\nIf this field is ommitted, we will pull in the default from the conf if it exists."
},
"spot_bid_price_percent":{
"description":"The bid price for AWS spot instances, as a percentage of the corresponding instance type's\non-demand price.\nFor example, if this field is set to 50, and the cluster needs a new `r3.xlarge` spot\ninstance, then the bid price is half of the price of\non-demand `r3.xlarge` instances. Similarly, if this field is set to 200, the bid price is twice\nthe price of on-demand `r3.xlarge` instances. If not specified, the default value is 100.\nWhen spot instances are requested for this cluster, only spot instances whose bid price\npercentage matches this field will be considered.\nNote that, for safety, we enforce this field to be no more than 10000.\n\nThe default value and documentation here should be kept consistent with\nCommonConf.defaultSpotBidPricePercent and CommonConf.maxSpotBidPricePercent."
},
"zone_id":{
"description":"Identifier for the availability zone/datacenter in which the cluster resides.\nThis string will be of a form like \"us-west-2a\". The provided availability\nzone must be in the same region as the Databricks deployment. For example, \"us-west-2a\"\nis not a valid zone id if the Databricks deployment resides in the \"us-east-1\" region.\nThis is an optional field at cluster creation, and if not specified, a default zone will be used.\nIf the zone specified is \"auto\", will try to place cluster in a zone with high availability,\nand will retry placement in a different AZ if there is not enough capacity.\nThe list of available zones as well as the default value can be found by using the\n`List Zones` method."
}
}
},
"azure_attributes":{
"description":"Attributes related to clusters running on Microsoft Azure.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"first_on_demand":{
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nThis value should be greater than 0, to make sure the cluster driver node is placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"log_analytics_info":{
"description":"Defines values necessary to configure and run Azure Log Analytics agent",
"description":"The max bid price to be used for Azure spot instances.\nThe Max price for the bid cannot be higher than the on-demand price of the instance.\nIf not specified, the default value is -1, which specifies that the instance cannot be evicted\non the basis of price, and only on the basis of availability. Further, the value should \u003e 0 or -1."
"description":"The configuration for delivering spark logs to a long-term storage destination.\nTwo kinds of destinations (dbfs and s3) are supported. Only one destination can be specified\nfor one cluster. If the conf is given, the logs will be delivered to the destination every\n`5 mins`. The destination of driver logs is `$destination/$clusterId/driver`, while\nthe destination of executor logs is `$destination/$clusterId/executor`.",
"properties":{
"dbfs":{
"description":"destination needs to be provided. e.g.\n`{ \"dbfs\" : { \"destination\" : \"dbfs:/home/cluster_log\" } }`",
"properties":{
"destination":{
"description":"dbfs destination, e.g. `dbfs:/my/path`"
}
}
},
"s3":{
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
"description":"Cluster name requested by the user. This doesn't have to be unique.\nIf not specified at creation, the cluster name will be an empty string.\n"
},
"cluster_source":{
"description":""
},
"custom_tags":{
"description":"Additional tags for cluster resources. Databricks will tag all cluster resources (e.g., AWS\ninstances and EBS volumes) with these tags in addition to `default_tags`. Notes:\n\n- Currently, Databricks allows at most 45 custom tags\n\n- Clusters can only reuse cloud resources if the resources' tags are a subset of the cluster tags",
"additionalproperties":{
"description":""
}
},
"data_security_mode":{
"description":""
},
"docker_image":{
"description":"",
"properties":{
"basic_auth":{
"description":"",
"properties":{
"password":{
"description":"Password of the user"
},
"username":{
"description":"Name of the user"
}
}
},
"url":{
"description":"URL of the docker image."
}
}
},
"driver_instance_pool_id":{
"description":"The optional ID of the instance pool for the driver of the cluster belongs.\nThe pool cluster uses the instance pool with id (instance_pool_id) if the driver pool is not\nassigned."
},
"driver_node_type_id":{
"description":"The node type of the Spark driver. Note that this field is optional;\nif unset, the driver node type will be set as the same value\nas `node_type_id` defined above.\n"
},
"enable_elastic_disk":{
"description":"Autoscaling Local Storage: when enabled, this cluster will dynamically acquire additional disk\nspace when its Spark workers are running low on disk space. This feature requires specific AWS\npermissions to function correctly - refer to the User Guide for more details."
},
"enable_local_disk_encryption":{
"description":"Whether to enable LUKS on cluster VMs' local disks"
},
"gcp_attributes":{
"description":"Attributes related to clusters running on Google Cloud Platform.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"boot_disk_size":{
"description":"boot disk size in GB"
},
"google_service_account":{
"description":"If provided, the cluster will impersonate the google service account when accessing\ngcloud services (like GCS). The google service account\nmust have previously been added to the Databricks environment by an account\nadministrator."
},
"local_ssd_count":{
"description":"If provided, each node (workers and driver) in the cluster will have this number of local SSDs attached. Each local SSD is 375GB in size. Refer to [GCP documentation](https://cloud.google.com/compute/docs/disks/local-ssd#choose_number_local_ssds) for the supported number of local SSDs for each instance type."
"description":"This field determines whether the spark executors will be scheduled to run on preemptible VMs (when set to true) versus standard compute engine VMs (when set to false; default).\nNote: Soon to be deprecated, use the availability field instead."
},
"zone_id":{
"description":"Identifier for the availability zone in which the cluster resides.\nThis can be one of the following:\n- \"HA\" =\u003e High availability, spread nodes across availability zones for a Databricks deployment region [default]\n- \"AUTO\" =\u003e Databricks picks an availability zone to schedule the cluster on.\n- A GCP availability zone =\u003e Pick One of the available zones for (machine type + region) from https://cloud.google.com/compute/docs/regions-zones."
"description":"The configuration for storing init scripts. Any number of destinations can be specified. The scripts are executed sequentially in the order provided. If `cluster_log_conf` is specified, init script logs are sent to `\u003cdestination\u003e/\u003ccluster-ID\u003e/init_scripts`.",
"description":"destination needs to be provided. e.g.\n`{ \"abfss\" : { \"destination\" : \"abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e\" } }",
"properties":{
"destination":{
"description":"abfss destination, e.g. `abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e`."
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
"description":"The optional ID of the instance pool to which the cluster belongs."
},
"node_type_id":{
"description":"This field encodes, through a single value, the resources available to each of\nthe Spark nodes in this cluster. For example, the Spark nodes can be provisioned\nand optimized for memory or compute intensive workloads. A list of available node\ntypes can be retrieved by using the :method:clusters/listNodeTypes API call.\n"
},
"num_workers":{
"description":"Number of worker nodes that this cluster should have. A cluster has one Spark Driver\nand `num_workers` Executors for a total of `num_workers` + 1 Spark nodes.\n\nNote: When reading the properties of a cluster, this field reflects the desired number\nof workers rather than the actual current number of workers. For instance, if a cluster\nis resized from 5 to 10 workers, this field will immediately be updated to reflect\nthe target size of 10 workers, whereas the workers listed in `spark_info` will gradually\nincrease from 5 to 10 as the new nodes are provisioned."
},
"policy_id":{
"description":"The ID of the cluster policy used to create the cluster if applicable."
},
"runtime_engine":{
"description":""
},
"single_user_name":{
"description":"Single user name if data_security_mode is `SINGLE_USER`"
},
"spark_conf":{
"description":"An object containing a set of optional, user-specified Spark configuration key-value pairs.\nUsers can also pass in a string of extra JVM options to the driver and the executors via\n`spark.driver.extraJavaOptions` and `spark.executor.extraJavaOptions` respectively.\n",
"additionalproperties":{
"description":""
}
},
"spark_env_vars":{
"description":"An object containing a set of optional, user-specified environment variable key-value pairs.\nPlease note that key-value pair of the form (X,Y) will be exported as is (i.e.,\n`export X='Y'`) while launching the driver and workers.\n\nIn order to specify an additional set of `SPARK_DAEMON_JAVA_OPTS`, we recommend appending\nthem to `$SPARK_DAEMON_JAVA_OPTS` as shown in the example below. This ensures that all\ndefault databricks managed environmental variables are included as well.\n\nExample Spark environment variables:\n`{\"SPARK_WORKER_MEMORY\": \"28000m\", \"SPARK_LOCAL_DIRS\": \"/local_disk0\"}` or\n`{\"SPARK_DAEMON_JAVA_OPTS\": \"$SPARK_DAEMON_JAVA_OPTS -Dspark.shuffle.service.enabled=true\"}`",
"additionalproperties":{
"description":""
}
},
"spark_version":{
"description":"The Spark version of the cluster, e.g. `3.3.x-scala2.11`.\nA list of available Spark versions can be retrieved by using\nthe :method:clusters/sparkVersions API call.\n"
},
"ssh_public_keys":{
"description":"SSH public key contents that will be added to each Spark node in this cluster. The\ncorresponding private keys can be used to login with the user name `ubuntu` on port `2200`.\nUp to 10 keys can be specified.",
"items":{
"description":""
}
},
"workload_type":{
"description":"",
"properties":{
"clients":{
"description":" defined what type of clients can use the cluster. E.g. Notebooks, Jobs",
"properties":{
"jobs":{
"description":"With jobs set, the cluster can be used for jobs"
},
"notebooks":{
"description":"With notebooks set, this cluster can be used for notebooks"
"description":"Base parameters to be used for each run of this job. If the run is initiated by a call to :method:jobs/run\nNow with parameters specified, the two parameters maps are merged. If the same key is specified in\n`base_parameters` and in `run-now`, the value from `run-now` is used.\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.\n\nIf the notebook takes a parameter that is not specified in the job’s `base_parameters` or the `run-now` override parameters,\nthe default value from the notebook is used.\n\nRetrieve these parameters in a notebook using [dbutils.widgets.get](https://docs.databricks.com/dev-tools/databricks-utils.html#dbutils-widgets).\n\nThe JSON representation of this field cannot exceed 1MB.",
"description":"The path of the notebook to be run in the Databricks workspace or remote repository.\nFor notebooks stored in the Databricks workspace, the path must be absolute and begin with a slash.\nFor notebooks stored in a remote repository, the path must be relative. This field is required."
"description":"Optional location type of the notebook. When set to `WORKSPACE`, the notebook will be retrieved from the local Databricks workspace. When set to `GIT`, the notebook will be retrieved from a Git repository\ndefined in `git_source`. If the value is empty, the task will use `GIT` if `git_source` is defined and `WORKSPACE` otherwise.\n* `WORKSPACE`: Notebook is located in Databricks workspace.\n* `GIT`: Notebook is located in cloud Git provider."
"description":"Optional `warehouse_id` to run the notebook on a SQL warehouse. Classic SQL warehouses are NOT supported, please use serverless or pro SQL warehouses.\n\nNote that SQL warehouses only support SQL cells; if the notebook contains non-SQL cells, the run will fail."
"description":"Optional notification settings that are used when sending notifications to each of the `email_notifications` and `webhook_notifications` for this task.",
"properties":{
"alert_on_last_attempt":{
"description":"If true, do not send notifications to recipients specified in `on_start` for the retried runs and do not send notifications to recipients specified in `on_failure` until the last retry of the run."
},
"no_alert_for_canceled_runs":{
"description":"If true, do not send notifications to recipients specified in `on_failure` if the run is canceled."
},
"no_alert_for_skipped_runs":{
"description":"If true, do not send notifications to recipients specified in `on_failure` if the run is skipped."
}
}
},
"pipeline_task":{
"description":"If pipeline_task, indicates that this task must execute a Pipeline.",
"description":"The full name of the pipeline task to execute."
}
}
},
"python_wheel_task":{
"description":"If python_wheel_task, indicates that this job must execute a PythonWheel.",
"properties":{
"entry_point":{
"description":"Named entry point to use, if it does not exist in the metadata of the package it executes the function from the package directly using `$packageName.$entryPoint()`"
},
"named_parameters":{
"description":"Command-line parameters passed to Python wheel task in the form of `[\"--name=task\", \"--data=dbfs:/path/to/data.json\"]`. Leave it empty if `parameters` is not null.",
"additionalproperties":{
"description":""
}
},
"package_name":{
"description":"Name of the package to execute"
},
"parameters":{
"description":"Command-line parameters passed to Python wheel task. Leave it empty if `named_parameters` is not null.",
"description":"An optional value specifying the condition determining whether the task is run once its dependencies have been completed.\n\n* `ALL_SUCCESS`: All dependencies have executed and succeeded\n* `AT_LEAST_ONE_SUCCESS`: At least one dependency has succeeded\n* `NONE_FAILED`: None of the dependencies have failed and at least one was executed\n* `ALL_DONE`: All dependencies have been completed\n* `AT_LEAST_ONE_FAILED`: At least one dependency failed\n* `ALL_FAILED`: ALl dependencies have failed"
"description":"An array of commands to execute for jobs with the dbt task, for example `\"dbt_commands\": [\"dbt deps\", \"dbt seed\", \"dbt deps\", \"dbt seed\", \"dbt run\"]`",
"items":{
"description":""
}
},
"jar_params":{
"description":"A list of parameters for jobs with Spark JAR tasks, for example `\"jar_params\": [\"john doe\", \"35\"]`.\nThe parameters are used to invoke the main function of the main class specified in the Spark JAR task.\nIf not specified upon `run-now`, it defaults to an empty list.\njar_params cannot be specified in conjunction with notebook_params.\nThe JSON representation of this field (for example `{\"jar_params\":[\"john doe\",\"35\"]}`) cannot exceed 10,000 bytes.\n\nUse [Task parameter variables](/jobs.html\\\"#parameter-variables\\\") to set parameters containing information about job runs.",
"description":"A map from keys to values for jobs with notebook task, for example `\"notebook_params\": {\"name\": \"john doe\", \"age\": \"35\"}`.\nThe map is passed to the notebook and is accessible through the [dbutils.widgets.get](https://docs.databricks.com/dev-tools/databricks-utils.html) function.\n\nIf not specified upon `run-now`, the triggered run uses the job’s base parameters.\n\nnotebook_params cannot be specified in conjunction with jar_params.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.\n\nThe JSON representation of this field (for example `{\"notebook_params\":{\"name\":\"john doe\",\"age\":\"35\"}}`) cannot exceed 10,000 bytes.",
"additionalproperties":{
"description":""
}
},
"pipeline_params":{
"description":"",
"properties":{
"full_refresh":{
"description":"If true, triggers a full refresh on the delta live table."
}
}
},
"python_named_params":{
"description":"A map from keys to values for jobs with Python wheel task, for example `\"python_named_params\": {\"name\": \"task\", \"data\": \"dbfs:/path/to/data.json\"}`.",
"additionalproperties":{
"description":""
}
},
"python_params":{
"description":"A list of parameters for jobs with Python tasks, for example `\"python_params\": [\"john doe\", \"35\"]`.\nThe parameters are passed to Python file as command-line parameters. If specified upon `run-now`, it would overwrite\nthe parameters specified in job setting. The JSON representation of this field (for example `{\"python_params\":[\"john doe\",\"35\"]}`)\ncannot exceed 10,000 bytes.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.\n\nImportant\n\nThese parameters accept only Latin characters (ASCII character set). Using non-ASCII characters returns an error.\nExamples of invalid, non-ASCII characters are Chinese, Japanese kanjis, and emojis.",
"items":{
"description":""
}
},
"spark_submit_params":{
"description":"A list of parameters for jobs with spark submit task, for example `\"spark_submit_params\": [\"--class\", \"org.apache.spark.examples.SparkPi\"]`.\nThe parameters are passed to spark-submit script as command-line parameters. If specified upon `run-now`, it would overwrite the\nparameters specified in job setting. The JSON representation of this field (for example `{\"python_params\":[\"john doe\",\"35\"]}`)\ncannot exceed 10,000 bytes.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs\n\nImportant\n\nThese parameters accept only Latin characters (ASCII character set). Using non-ASCII characters returns an error.\nExamples of invalid, non-ASCII characters are Chinese, Japanese kanjis, and emojis.",
"items":{
"description":""
}
},
"sql_params":{
"description":"A map from keys to values for jobs with SQL task, for example `\"sql_params\": {\"name\": \"john doe\", \"age\": \"35\"}`. The SQL alert task does not support custom parameters.",
"description":"The full name of the class containing the main method to be executed. This class must be contained in a JAR provided as a library.\n\nThe code must use `SparkContext.getOrCreate` to obtain a Spark context; otherwise, runs of the job fail."
"description":"Parameters passed to the main method.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.",
"description":"Command line parameters passed to the Python file.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.",
"description":"The Python file to be executed. Cloud file URIs (such as dbfs:/, s3:/, adls:/, gcs:/) and workspace paths are supported. For python files stored in the Databricks workspace, the path must be absolute and begin with `/`. For files stored in a remote repository, the path must be relative. This field is required."
"description":"Optional location type of the Python file. When set to `WORKSPACE` or not specified, the file will be retrieved from the local\nDatabricks workspace or cloud location (if the `python_file` has a URI format). When set to `GIT`,\nthe Python file will be retrieved from a Git repository defined in `git_source`.\n\n* `WORKSPACE`: The Python file is located in a Databricks workspace or at a cloud filesystem URI.\n* `GIT`: The Python file is located in a remote Git repository."
"description":"If `spark_submit_task`, indicates that this task must be launched by the spark submit script. This task can run only on new clusters.\n\nIn the `new_cluster` specification, `libraries` and `spark_conf` are not supported. Instead, use `--jars` and `--py-files` to add Java and Python libraries and `--conf` to set the Spark configurations.\n\n`master`, `deploy-mode`, and `executor-cores` are automatically configured by Databricks; you _cannot_ specify them in parameters.\n\nBy default, the Spark submit job uses all available memory (excluding reserved memory for Databricks services). You can set `--driver-memory`, and `--executor-memory` to a smaller value to leave some room for off-heap usage.\n\nThe `--jars`, `--py-files`, `--files` arguments support DBFS and S3 paths.",
"description":"Command-line parameters passed to spark submit.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.",
"description":"If sql_task, indicates that this job must execute a SQL task.",
"properties":{
"alert":{
"description":"If alert, indicates that this job must refresh a SQL alert.",
"properties":{
"alert_id":{
"description":"The canonical identifier of the SQL alert."
},
"pause_subscriptions":{
"description":"If true, the alert notifications are not sent to subscribers."
},
"subscriptions":{
"description":"If specified, alert notifications are sent to subscribers.",
"items":{
"description":"",
"properties":{
"destination_id":{
"description":"The canonical identifier of the destination to receive email notification. This parameter is mutually exclusive with user_name. You cannot set both destination_id and user_name for subscription notifications."
},
"user_name":{
"description":"The user name to receive the subscription email. This parameter is mutually exclusive with destination_id. You cannot set both destination_id and user_name for subscription notifications."
"description":"If dashboard, indicates that this job must refresh a SQL dashboard.",
"properties":{
"custom_subject":{
"description":"Subject of the email sent to subscribers of this task."
},
"dashboard_id":{
"description":"The canonical identifier of the SQL dashboard."
},
"pause_subscriptions":{
"description":"If true, the dashboard snapshot is not taken, and emails are not sent to subscribers."
},
"subscriptions":{
"description":"If specified, dashboard snapshots are sent to subscriptions.",
"items":{
"description":"",
"properties":{
"destination_id":{
"description":"The canonical identifier of the destination to receive email notification. This parameter is mutually exclusive with user_name. You cannot set both destination_id and user_name for subscription notifications."
},
"user_name":{
"description":"The user name to receive the subscription email. This parameter is mutually exclusive with destination_id. You cannot set both destination_id and user_name for subscription notifications."
"description":"Optional location type of the SQL file. When set to `WORKSPACE`, the SQL file will be retrieved\nfrom the local Databricks workspace. When set to `GIT`, the SQL file will be retrieved from a Git repository\ndefined in `git_source`. If the value is empty, the task will use `GIT` if `git_source` is defined and `WORKSPACE` otherwise.\n\n* `WORKSPACE`: SQL file is located in Databricks workspace.\n* `GIT`: SQL file is located in cloud Git provider."
"description":"The canonical identifier of the SQL warehouse. Recommended to use with serverless or pro SQL warehouses. Classic SQL warehouses are only supported for SQL alert, dashboard and query tasks and are limited to scheduled single-task jobs."
}
}
},
"task_key":{
"description":"A unique name for the task. This field is used to refer to this task from other tasks.\nThis field is required and must be unique within its parent job.\nOn Update or Reset, this field is used to reference the tasks to be updated or reset."
},
"timeout_seconds":{
"description":"An optional timeout applied to each run of this job task. A value of `0` means no timeout."
"description":"An optional list of system notification IDs to call when the duration of a run exceeds the threshold specified for the `RUN_DURATION_SECONDS` metric in the `health` field. A maximum of 3 destinations can be specified for the `on_duration_warning_threshold_exceeded` property.",
"description":"An optional list of system notification IDs to call when the run fails. A maximum of 3 destinations can be specified for the `on_failure` property.",
"description":"An optional list of system notification IDs to call when the run starts. A maximum of 3 destinations can be specified for the `on_start` property.",
"description":"An optional list of system notification IDs to call when the run completes successfully. A maximum of 3 destinations can be specified for the `on_success` property.",
"description":"A configuration to trigger a run when certain conditions are met. The default behavior is that the job runs only when triggered by clicking “Run Now” in the Jobs UI or sending an API request to `runNow`.",
"description":"If set, the trigger starts a run only after the specified amount of time passed since\nthe last time the trigger fired. The minimum allowed value is 60 seconds"
"description":"If set, the trigger starts a run only after no file activity has occurred for the specified amount of time.\nThis makes it possible to wait for a batch of incoming files to arrive before triggering a run. The\nminimum allowed value is 60 seconds."
"description":"The table(s) condition based on which to trigger a job run."
},
"min_time_between_triggers_seconds":{
"description":"If set, the trigger starts a run only after the specified amount of time has passed since\nthe last time the trigger fired. The minimum allowed value is 60 seconds."
},
"table_names":{
"description":"A list of Delta tables to monitor for changes. The table name must be in the format `catalog_name.schema_name.table_name`.",
"items":{
"description":""
}
},
"wait_after_last_change_seconds":{
"description":"If set, the trigger starts a run only after no table updates have occurred for the specified time\nand can be used to wait for a series of table updates before triggering a run. The\nminimum allowed value is 60 seconds."
"description":"If set, the trigger starts a run only after the specified amount of time has passed since\nthe last time the trigger fired. The minimum allowed value is 60 seconds."
"description":"If set, the trigger starts a run only after no table updates have occurred for the specified time\nand can be used to wait for a series of table updates before triggering a run. The\nminimum allowed value is 60 seconds."
"description":"An optional list of system notification IDs to call when the duration of a run exceeds the threshold specified for the `RUN_DURATION_SECONDS` metric in the `health` field. A maximum of 3 destinations can be specified for the `on_duration_warning_threshold_exceeded` property.",
"items":{
"description":"",
"properties":{
"id":{
"description":""
}
}
}
},
"on_failure":{
"description":"An optional list of system notification IDs to call when the run fails. A maximum of 3 destinations can be specified for the `on_failure` property.",
"items":{
"description":"",
"properties":{
"id":{
"description":""
}
}
}
},
"on_start":{
"description":"An optional list of system notification IDs to call when the run starts. A maximum of 3 destinations can be specified for the `on_start` property.",
"items":{
"description":"",
"properties":{
"id":{
"description":""
}
}
}
},
"on_success":{
"description":"An optional list of system notification IDs to call when the run completes successfully. A maximum of 3 destinations can be specified for the `on_success` property.",
"items":{
"description":"",
"properties":{
"id":{
"description":""
}
}
}
}
}
}
}
}
},
"model_serving_endpoints":{
"description":"List of Model Serving Endpoints",
"additionalproperties":{
"description":"",
"properties":{
"config":{
"description":"The core config of the serving endpoint.",
"description":"The name of the entity to be served. The entity may be a model in the Databricks Model Registry, a model in the Unity Catalog (UC),\nor a function of type FEATURE_SPEC in the UC. If it is a UC object, the full name of the object should be given in the form of\n__catalog_name__.__schema_name__.__model_name__.\n"
},
"entity_version":{
"description":"The version of the model in Databricks Model Registry to be served or empty if the entity is a FEATURE_SPEC."
},
"environment_vars":{
"description":"An object containing a set of optional, user-specified environment variable key-value pairs used for serving this entity.\nNote: this is an experimental feature and subject to change. \nExample entity environment variables that refer to Databricks secrets: `{\"OPENAI_API_KEY\": \"{{secrets/my_scope/my_key}}\", \"DATABRICKS_TOKEN\": \"{{secrets/my_scope2/my_key2}}\"}`",
"additionalproperties":{
"description":""
}
},
"external_model":{
"description":"The external model to be served. NOTE: Only one of external_model and (entity_name, entity_version, workload_size, workload_type, and scale_to_zero_enabled)\ncan be specified with the latter set being used for custom model serving for a Databricks registered model. When an external_model is present, the served\nentities list can only have one served_entity object. For an existing endpoint with external_model, it can not be updated to an endpoint without external_model.\nIf the endpoint is created without external_model, users cannot update it to add external_model later.\n",
"description":"The Databricks secret key reference for an AWS Secret Access Key paired with the access key ID, with permissions to interact with Bedrock services."
"description":"Cohere Config. Only required if the provider is 'cohere'.",
"properties":{
"cohere_api_key":{
"description":"The Databricks secret key reference for a Cohere API key."
}
}
},
"databricks_model_serving_config":{
"description":"Databricks Model Serving Config. Only required if the provider is 'databricks-model-serving'.",
"properties":{
"databricks_api_token":{
"description":"The Databricks secret key reference for a Databricks API token that corresponds to a user or service\nprincipal with Can Query access to the model serving endpoint pointed to by this external model.\n"
"description":"OpenAI Config. Only required if the provider is 'openai'.",
"properties":{
"openai_api_base":{
"description":"This is the base URL for the OpenAI API (default: \"https://api.openai.com/v1\").\nFor Azure OpenAI, this field is required, and is the base URL for the Azure OpenAI API service\nprovided by Azure.\n"
},
"openai_api_key":{
"description":"The Databricks secret key reference for an OpenAI or Azure OpenAI API key."
},
"openai_api_type":{
"description":"This is an optional field to specify the type of OpenAI API to use.\nFor Azure OpenAI, this field is required, and adjust this parameter to represent the preferred security\naccess validation protocol. For access token validation, use azure. For authentication using Azure Active\nDirectory (Azure AD) use, azuread.\n"
},
"openai_api_version":{
"description":"This is an optional field to specify the OpenAI API version.\nFor Azure OpenAI, this field is required, and is the version of the Azure OpenAI service to\nutilize, specified by a date.\n"
},
"openai_deployment_name":{
"description":"This field is only required for Azure OpenAI and is the name of the deployment resource for the\nAzure OpenAI service.\n"
},
"openai_organization":{
"description":"This is an optional field to specify the organization in OpenAI or Azure OpenAI.\n"
}
}
},
"palm_config":{
"description":"PaLM Config. Only required if the provider is 'palm'.",
"properties":{
"palm_api_key":{
"description":"The Databricks secret key reference for a PaLM API key."
"description":"The name of the provider for the external model. Currently, the supported providers are 'ai21labs', 'anthropic',\n'amazon-bedrock', 'cohere', 'databricks-model-serving', 'openai', and 'palm'.\",\n"
"description":"The name of a served entity. It must be unique across an endpoint. A served entity name can consist of alphanumeric characters, dashes, and underscores.\nIf not specified for an external model, this field defaults to external_model.name, with '.' and ':' replaced with '-', and if not specified for other\nentities, it defaults to \u003centity-name\u003e-\u003centity-version\u003e.\n"
},
"scale_to_zero_enabled":{
"description":"Whether the compute resources for the served entity should scale down to zero."
},
"workload_size":{
"description":"The workload size of the served entity. The workload size corresponds to a range of provisioned concurrency that the compute autoscales between.\nA single unit of provisioned concurrency can process one request at a time.\nValid workload sizes are \"Small\" (4 - 4 provisioned concurrency), \"Medium\" (8 - 16 provisioned concurrency), and \"Large\" (16 - 64 provisioned concurrency).\nIf scale-to-zero is enabled, the lower bound of the provisioned concurrency for each workload size is 0.\n"
},
"workload_type":{
"description":"The workload type of the served entity. The workload type selects which type of compute to use in the endpoint. The default value for this parameter is\n\"CPU\". For deep learning workloads, GPU acceleration is available by selecting workload types like GPU_SMALL and others.\nSee the available [GPU types](https://docs.databricks.com/machine-learning/model-serving/create-manage-serving-endpoints.html#gpu-workload-types).\n"
"description":"(Deprecated, use served_entities instead) A list of served models for the endpoint to serve. A serving endpoint can have up to 15 served models.",
"description":"An object containing a set of optional, user-specified environment variable key-value pairs used for serving this model.\nNote: this is an experimental feature and subject to change. \nExample model environment variables that refer to Databricks secrets: `{\"OPENAI_API_KEY\": \"{{secrets/my_scope/my_key}}\", \"DATABRICKS_TOKEN\": \"{{secrets/my_scope2/my_key2}}\"}`",
"additionalproperties":{
"description":""
}
},
"instance_profile_arn":{
"description":"ARN of the instance profile that the served model will use to access AWS resources."
},
"model_name":{
"description":"The name of the model in Databricks Model Registry to be served or if the model resides in Unity Catalog, the full name of model, \nin the form of __catalog_name__.__schema_name__.__model_name__.\n"
},
"model_version":{
"description":"The version of the model in Databricks Model Registry or Unity Catalog to be served."
},
"name":{
"description":"The name of a served model. It must be unique across an endpoint. If not specified, this field will default to \u003cmodel-name\u003e-\u003cmodel-version\u003e.\nA served model name can consist of alphanumeric characters, dashes, and underscores.\n"
},
"scale_to_zero_enabled":{
"description":"Whether the compute resources for the served model should scale down to zero."
},
"workload_size":{
"description":"The workload size of the served model. The workload size corresponds to a range of provisioned concurrency that the compute will autoscale between.\nA single unit of provisioned concurrency can process one request at a time.\nValid workload sizes are \"Small\" (4 - 4 provisioned concurrency), \"Medium\" (8 - 16 provisioned concurrency), and \"Large\" (16 - 64 provisioned concurrency).\nIf scale-to-zero is enabled, the lower bound of the provisioned concurrency for each workload size will be 0.\n"
"description":"The workload type of the served model. The workload type selects which type of compute to use in the endpoint. The default value for this parameter is\n\"CPU\". For deep learning workloads, GPU acceleration is available by selecting workload types like GPU_SMALL and others.\nSee the available [GPU types](https://docs.databricks.com/machine-learning/model-serving/create-manage-serving-endpoints.html#gpu-workload-types).\n"
"description":"The name of the served model this route configures traffic for."
},
"traffic_percentage":{
"description":"The percentage of endpoint traffic to send to this route. It must be an integer between 0 and 100 inclusive."
}
}
}
}
}
}
}
},
"name":{
"description":"The name of the serving endpoint. This field is required and must be unique across a Databricks workspace.\nAn endpoint name can consist of alphanumeric characters, dashes, and underscores.\n"
"description":"Rate limits to be applied to the serving endpoint. NOTE: only external and foundation model endpoints are supported as of now.",
"items":{
"description":"",
"properties":{
"calls":{
"description":"Used to specify how many calls are allowed for a key within the renewal_period."
},
"key":{
"description":"Key field for a serving endpoint rate limit. Currently, only 'user' and 'endpoint' are supported, with 'endpoint' being the default if not specified."
},
"renewal_period":{
"description":"Renewal period field for a serving endpoint rate limit. Currently, only 'minute' is supported."
"description":"Tags to be attached to the serving endpoint and automatically propagated to billing logs.",
"items":{
"description":"",
"properties":{
"key":{
"description":"Key field for a serving endpoint tag."
},
"value":{
"description":"Optional value field for a serving endpoint tag."
}
}
}
}
}
}
},
"models":{
"description":"List of MLflow models",
"additionalproperties":{
"description":"",
"properties":{
"creation_timestamp":{
"description":"Timestamp recorded when this `registered_model` was created."
},
"description":{
"description":"Description of this `registered_model`."
},
"last_updated_timestamp":{
"description":"Timestamp recorded when metadata for this `registered_model` was last updated."
},
"latest_versions":{
"description":"Collection of latest model versions for each stage.\nOnly contains models with current `READY` status.",
"items":{
"description":"",
"properties":{
"creation_timestamp":{
"description":"Timestamp recorded when this `model_version` was created."
},
"current_stage":{
"description":"Current stage for this `model_version`."
},
"description":{
"description":"Description of this `model_version`."
},
"last_updated_timestamp":{
"description":"Timestamp recorded when metadata for this `model_version` was last updated."
},
"name":{
"description":"Unique name of the model"
},
"run_id":{
"description":"MLflow run ID used when creating `model_version`, if `source` was generated by an\nexperiment run stored in MLflow tracking server."
},
"run_link":{
"description":"Run Link: Direct link to the run that generated this version"
},
"source":{
"description":"URI indicating the location of the source model artifacts, used when creating `model_version`"
},
"status":{
"description":"Current status of `model_version`"
},
"status_message":{
"description":"Details on current `status`, if it is pending or failed."
},
"tags":{
"description":"Tags: Additional metadata key-value pairs for this `model_version`.",
"items":{
"description":"",
"properties":{
"key":{
"description":"The tag key."
},
"value":{
"description":"The tag value."
}
}
}
},
"user_id":{
"description":"User that created this `model_version`."
},
"version":{
"description":"Model's version number."
}
}
}
},
"name":{
"description":"Unique name for the model."
},
"permissions":{
"description":"",
"items":{
"description":"",
"properties":{
"group_name":{
"description":""
},
"level":{
"description":""
},
"service_principal_name":{
"description":""
},
"user_name":{
"description":""
}
}
}
},
"tags":{
"description":"Tags: Additional metadata key-value pairs for this `registered_model`.",
"items":{
"description":"",
"properties":{
"key":{
"description":"The tag key."
},
"value":{
"description":"The tag value."
}
}
}
},
"user_id":{
"description":"User that created this `registered_model`"
}
}
}
},
"pipelines":{
"description":"List of DLT pipelines",
"additionalproperties":{
"description":"",
"properties":{
"catalog":{
"description":"A catalog in Unity Catalog to publish data from this pipeline to. If `target` is specified, tables in this pipeline are published to a `target` schema inside `catalog` (for example, `catalog`.`target`.`table`). If `target` is not specified, no data is published to Unity Catalog."
},
"channel":{
"description":"DLT Release Channel that specifies which version to use."
},
"clusters":{
"description":"Cluster settings for this pipeline deployment.",
"items":{
"description":"",
"properties":{
"apply_policy_default_values":{
"description":"Note: This field won't be persisted. Only API users will check this field."
},
"autoscale":{
"description":"Parameters needed in order to automatically scale clusters up and down based on load.\nNote: autoscaling works best with DB runtime versions 3.0 or later.",
"description":"The maximum number of workers to which the cluster can scale up when overloaded. `max_workers` must be strictly greater than `min_workers`."
"description":"The minimum number of workers the cluster can scale down to when underutilized.\nIt is also the initial number of workers the cluster will have after creation."
},
"mode":{
"description":"Databricks Enhanced Autoscaling optimizes cluster utilization by automatically\nallocating cluster resources based on workload volume, with minimal impact to\nthe data processing latency of your pipelines. Enhanced Autoscaling is available\nfor `updates` clusters only. The legacy autoscaling feature is used for `maintenance`\nclusters.\n"
"description":"Attributes related to clusters running on Amazon Web Services.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"ebs_volume_count":{
"description":"The number of volumes launched for each instance. Users can choose up to 10 volumes.\nThis feature is only enabled for supported node types. Legacy node types cannot specify\ncustom EBS volumes.\nFor node types with no instance store, at least one EBS volume needs to be specified;\notherwise, cluster creation will fail.\n\nThese EBS volumes will be mounted at `/ebs0`, `/ebs1`, and etc.\nInstance store volumes will be mounted at `/local_disk0`, `/local_disk1`, and etc.\n\nIf EBS volumes are attached, Databricks will configure Spark to use only the EBS volumes for\nscratch storage because heterogenously sized scratch devices can lead to inefficient disk\nutilization. If no EBS volumes are attached, Databricks will configure Spark to use instance\nstore volumes.\n\nPlease note that if EBS volumes are specified, then the Spark configuration `spark.local.dir`\nwill be overridden."
"description":"If using gp3 volumes, what IOPS to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The size of each EBS volume (in GiB) launched for each instance. For general purpose\nSSD, this value must be within the range 100 - 4096. For throughput optimized HDD,\nthis value must be within the range 500 - 4096."
"description":"If using gp3 volumes, what throughput to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nIf this value is greater than 0, the cluster driver node in particular will be placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"instance_profile_arn":{
"description":"Nodes for this cluster will only be placed on AWS instances with this instance profile. If\nommitted, nodes will be placed on instances without an IAM instance profile. The instance\nprofile must have previously been added to the Databricks environment by an account\nadministrator.\n\nThis feature may only be available to certain customer plans.\n\nIf this field is ommitted, we will pull in the default from the conf if it exists."
},
"spot_bid_price_percent":{
"description":"The bid price for AWS spot instances, as a percentage of the corresponding instance type's\non-demand price.\nFor example, if this field is set to 50, and the cluster needs a new `r3.xlarge` spot\ninstance, then the bid price is half of the price of\non-demand `r3.xlarge` instances. Similarly, if this field is set to 200, the bid price is twice\nthe price of on-demand `r3.xlarge` instances. If not specified, the default value is 100.\nWhen spot instances are requested for this cluster, only spot instances whose bid price\npercentage matches this field will be considered.\nNote that, for safety, we enforce this field to be no more than 10000.\n\nThe default value and documentation here should be kept consistent with\nCommonConf.defaultSpotBidPricePercent and CommonConf.maxSpotBidPricePercent."
},
"zone_id":{
"description":"Identifier for the availability zone/datacenter in which the cluster resides.\nThis string will be of a form like \"us-west-2a\". The provided availability\nzone must be in the same region as the Databricks deployment. For example, \"us-west-2a\"\nis not a valid zone id if the Databricks deployment resides in the \"us-east-1\" region.\nThis is an optional field at cluster creation, and if not specified, a default zone will be used.\nIf the zone specified is \"auto\", will try to place cluster in a zone with high availability,\nand will retry placement in a different AZ if there is not enough capacity.\nThe list of available zones as well as the default value can be found by using the\n`List Zones` method."
}
}
},
"azure_attributes":{
"description":"Attributes related to clusters running on Microsoft Azure.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"first_on_demand":{
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nThis value should be greater than 0, to make sure the cluster driver node is placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"log_analytics_info":{
"description":"Defines values necessary to configure and run Azure Log Analytics agent",
"properties":{
"log_analytics_primary_key":{
"description":"\u003cneeds content added\u003e"
},
"log_analytics_workspace_id":{
"description":"\u003cneeds content added\u003e"
}
}
},
"spot_bid_max_price":{
"description":"The max bid price to be used for Azure spot instances.\nThe Max price for the bid cannot be higher than the on-demand price of the instance.\nIf not specified, the default value is -1, which specifies that the instance cannot be evicted\non the basis of price, and only on the basis of availability. Further, the value should \u003e 0 or -1."
}
}
},
"cluster_log_conf":{
"description":"The configuration for delivering spark logs to a long-term storage destination.\nOnly dbfs destinations are supported. Only one destination can be specified\nfor one cluster. If the conf is given, the logs will be delivered to the destination every\n`5 mins`. The destination of driver logs is `$destination/$clusterId/driver`, while\nthe destination of executor logs is `$destination/$clusterId/executor`.\n",
"properties":{
"dbfs":{
"description":"destination needs to be provided. e.g.\n`{ \"dbfs\" : { \"destination\" : \"dbfs:/home/cluster_log\" } }`",
"properties":{
"destination":{
"description":"dbfs destination, e.g. `dbfs:/my/path`"
}
}
},
"s3":{
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
},
"destination":{
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
},
"enable_encryption":{
"description":"(Optional) Flag to enable server side encryption, `false` by default."
},
"encryption_type":{
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
}
}
}
}
},
"custom_tags":{
"description":"Additional tags for cluster resources. Databricks will tag all cluster resources (e.g., AWS\ninstances and EBS volumes) with these tags in addition to `default_tags`. Notes:\n\n- Currently, Databricks allows at most 45 custom tags\n\n- Clusters can only reuse cloud resources if the resources' tags are a subset of the cluster tags",
"additionalproperties":{
"description":""
}
},
"driver_instance_pool_id":{
"description":"The optional ID of the instance pool for the driver of the cluster belongs.\nThe pool cluster uses the instance pool with id (instance_pool_id) if the driver pool is not\nassigned."
},
"driver_node_type_id":{
"description":"The node type of the Spark driver.\nNote that this field is optional; if unset, the driver node type will be set as the same value\nas `node_type_id` defined above."
},
"gcp_attributes":{
"description":"Attributes related to clusters running on Google Cloud Platform.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"boot_disk_size":{
"description":"boot disk size in GB"
},
"google_service_account":{
"description":"If provided, the cluster will impersonate the google service account when accessing\ngcloud services (like GCS). The google service account\nmust have previously been added to the Databricks environment by an account\nadministrator."
},
"local_ssd_count":{
"description":"If provided, each node (workers and driver) in the cluster will have this number of local SSDs attached. Each local SSD is 375GB in size. Refer to [GCP documentation](https://cloud.google.com/compute/docs/disks/local-ssd#choose_number_local_ssds) for the supported number of local SSDs for each instance type."
"description":"This field determines whether the spark executors will be scheduled to run on preemptible VMs (when set to true) versus standard compute engine VMs (when set to false; default).\nNote: Soon to be deprecated, use the availability field instead."
},
"zone_id":{
"description":"Identifier for the availability zone in which the cluster resides.\nThis can be one of the following:\n- \"HA\" =\u003e High availability, spread nodes across availability zones for a Databricks deployment region [default]\n- \"AUTO\" =\u003e Databricks picks an availability zone to schedule the cluster on.\n- A GCP availability zone =\u003e Pick One of the available zones for (machine type + region) from https://cloud.google.com/compute/docs/regions-zones."
"description":"The configuration for storing init scripts. Any number of destinations can be specified. The scripts are executed sequentially in the order provided. If `cluster_log_conf` is specified, init script logs are sent to `\u003cdestination\u003e/\u003ccluster-ID\u003e/init_scripts`.",
"description":"destination needs to be provided. e.g.\n`{ \"abfss\" : { \"destination\" : \"abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e\" } }",
"properties":{
"destination":{
"description":"abfss destination, e.g. `abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e`."
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
},
"destination":{
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
},
"enable_encryption":{
"description":"(Optional) Flag to enable server side encryption, `false` by default."
},
"encryption_type":{
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
}
}
},
"volumes":{
"description":"destination needs to be provided. e.g.\n`{ \"volumes\" : { \"destination\" : \"/Volumes/my-init.sh\" } }`",
"properties":{
"destination":{
"description":"Unity Catalog Volumes file destination, e.g. `/Volumes/my-init.sh`"
}
}
},
"workspace":{
"description":"destination needs to be provided. e.g.\n`{ \"workspace\" : { \"destination\" : \"/Users/user1@databricks.com/my-init.sh\" } }`",
"properties":{
"destination":{
"description":"workspace files destination, e.g. `/Users/user1@databricks.com/my-init.sh`"
"description":"A label for the cluster specification, either `default` to configure the default cluster, or `maintenance` to configure the maintenance cluster. This field is optional. The default value is `default`."
},
"node_type_id":{
"description":"This field encodes, through a single value, the resources available to each of\nthe Spark nodes in this cluster. For example, the Spark nodes can be provisioned\nand optimized for memory or compute intensive workloads. A list of available node\ntypes can be retrieved by using the :method:clusters/listNodeTypes API call.\n"
},
"num_workers":{
"description":"Number of worker nodes that this cluster should have. A cluster has one Spark Driver\nand `num_workers` Executors for a total of `num_workers` + 1 Spark nodes.\n\nNote: When reading the properties of a cluster, this field reflects the desired number\nof workers rather than the actual current number of workers. For instance, if a cluster\nis resized from 5 to 10 workers, this field will immediately be updated to reflect\nthe target size of 10 workers, whereas the workers listed in `spark_info` will gradually\nincrease from 5 to 10 as the new nodes are provisioned."
},
"policy_id":{
"description":"The ID of the cluster policy used to create the cluster if applicable."
},
"spark_conf":{
"description":"An object containing a set of optional, user-specified Spark configuration key-value pairs.\nSee :method:clusters/create for more details.\n",
"additionalproperties":{
"description":""
}
},
"spark_env_vars":{
"description":"An object containing a set of optional, user-specified environment variable key-value pairs.\nPlease note that key-value pair of the form (X,Y) will be exported as is (i.e.,\n`export X='Y'`) while launching the driver and workers.\n\nIn order to specify an additional set of `SPARK_DAEMON_JAVA_OPTS`, we recommend appending\nthem to `$SPARK_DAEMON_JAVA_OPTS` as shown in the example below. This ensures that all\ndefault databricks managed environmental variables are included as well.\n\nExample Spark environment variables:\n`{\"SPARK_WORKER_MEMORY\": \"28000m\", \"SPARK_LOCAL_DIRS\": \"/local_disk0\"}` or\n`{\"SPARK_DAEMON_JAVA_OPTS\": \"$SPARK_DAEMON_JAVA_OPTS -Dspark.shuffle.service.enabled=true\"}`",
"additionalproperties":{
"description":""
}
},
"ssh_public_keys":{
"description":"SSH public key contents that will be added to each Spark node in this cluster. The\ncorresponding private keys can be used to login with the user name `ubuntu` on port `2200`.\nUp to 10 keys can be specified.",
"items":{
"description":""
}
}
}
}
},
"configuration":{
"description":"String-String configuration for this pipeline execution.",
"additionalproperties":{
"description":""
}
},
"continuous":{
"description":"Whether the pipeline is continuous or triggered. This replaces `trigger`."
"description":"The configuration for a managed ingestion pipeline. These settings cannot be used with the 'libraries', 'target' or 'catalog' settings.",
"properties":{
"connection_name":{
"description":"Immutable. The Unity Catalog connection this ingestion pipeline uses to communicate with the source. Specify either ingestion_gateway_id or connection_name."
},
"ingestion_gateway_id":{
"description":"Immutable. Identifier for the ingestion gateway used by this ingestion pipeline to communicate with the source. Specify either ingestion_gateway_id or connection_name."
},
"objects":{
"description":"Required. Settings specifying tables to replicate and the destination for the replicated tables.",
"items":{
"description":"",
"properties":{
"schema":{
"description":"Select tables from a specific source schema.",
"properties":{
"destination_catalog":{
"description":"Required. Destination catalog to store tables."
},
"destination_schema":{
"description":"Required. Destination schema to store tables in. Tables with the same name as the source tables are created in this destination schema. The pipeline fails If a table with the same name already exists."
},
"source_catalog":{
"description":"The source catalog name. Might be optional depending on the type of source."
},
"source_schema":{
"description":"Required. Schema name in the source database."
}
}
},
"table":{
"description":"Select tables from a specific source table.",
"properties":{
"destination_catalog":{
"description":"Required. Destination catalog to store table."
},
"destination_schema":{
"description":"Required. Destination schema to store table."
},
"destination_table":{
"description":"Optional. Destination table name. The pipeline fails If a table with that name already exists. If not set, the source table name is used."
},
"source_catalog":{
"description":"Source catalog name. Might be optional depending on the type of source."
},
"source_schema":{
"description":"Schema name in the source database. Might be optional depending on the type of source."
},
"source_table":{
"description":"Required. Table name in the source database."
"description":"List of dependences to exclude. For example: `[\"slf4j:slf4j\", \"*:hadoop-client\"]`.\n\nMaven dependency exclusions:\nhttps://maven.apache.org/guides/introduction/introduction-to-optional-and-excludes-dependencies.html.",
"description":"Friendly identifier for this pipeline."
},
"notifications":{
"description":"List of notification settings for this pipeline.",
"items":{
"description":"",
"properties":{
"alerts":{
"description":"A list of alerts that trigger the sending of notifications to the configured\ndestinations. The supported alerts are:\n\n* `on-update-success`: A pipeline update completes successfully.\n* `on-update-failure`: Each time a pipeline update fails.\n* `on-update-fatal-failure`: A pipeline update fails with a non-retryable (fatal) error.\n* `on-flow-failure`: A single data flow fails.\n",
"items":{
"description":""
}
},
"email_recipients":{
"description":"A list of email addresses notified when a configured alert is triggered.\n",
"items":{
"description":""
}
}
}
}
},
"permissions":{
"description":"",
"items":{
"description":"",
"properties":{
"group_name":{
"description":""
},
"level":{
"description":""
},
"service_principal_name":{
"description":""
},
"user_name":{
"description":""
}
}
}
},
"photon":{
"description":"Whether Photon is enabled for this pipeline."
},
"serverless":{
"description":"Whether serverless compute is enabled for this pipeline."
},
"storage":{
"description":"DBFS root directory for storing checkpoints and tables."
},
"target":{
"description":"Target schema (database) to add tables in this pipeline to. If not specified, no data is published to the Hive metastore or Unity Catalog. To publish to Unity Catalog, also specify `catalog`."
},
"trigger":{
"description":"Which pipeline trigger to use. Deprecated: Use `continuous` instead.",
"properties":{
"cron":{
"description":"",
"properties":{
"quartz_cron_schedule":{
"description":""
},
"timezone_id":{
"description":""
}
}
},
"manual":{
"description":""
}
}
}
}
}
},
"registered_models":{
"description":"List of Registered Models",
"additionalproperties":{
"description":"",
"properties":{
"catalog_name":{
"description":"The name of the catalog where the schema and the registered model reside"
},
"comment":{
"description":"The comment attached to the registered model"
},
"grants":{
"description":"",
"items":{
"description":"",
"properties":{
"principal":{
"description":""
},
"privileges":{
"description":"",
"items":{
"description":""
}
}
}
}
},
"name":{
"description":"The name of the registered model"
},
"schema_name":{
"description":"The name of the schema where the registered model resides"
},
"storage_location":{
"description":"The storage location on the cloud under which model version data files are stored"
"description":"An optional continuous property for this job. The continuous property will ensure that there is always one run executing. Only one of `schedule` and `continuous` can be used.",
"description":"Edit mode of the job.\n\n* `UI_LOCKED`: The job is in a locked UI state and cannot be modified.\n* `EDITABLE`: The job is in an editable state and can be modified."
"description":"An optional set of email addresses that is notified when runs of this job begin or complete as well as when this job is deleted.",
"properties":{
"no_alert_for_skipped_runs":{
"description":"If true, do not send email to recipients specified in `on_failure` if the run is skipped."
},
"on_duration_warning_threshold_exceeded":{
"description":"A list of email addresses to be notified when the duration of a run exceeds the threshold specified for the `RUN_DURATION_SECONDS` metric in the `health` field. If no rule for the `RUN_DURATION_SECONDS` metric is specified in the `health` field for the job, notifications are not sent.",
"description":"A list of email addresses to be notified when a run unsuccessfully completes. A run is considered to have completed unsuccessfully if it ends with an `INTERNAL_ERROR` `life_cycle_state` or a `FAILED`, or `TIMED_OUT` result_state. If this is not specified on job creation, reset, or update the list is empty, and notifications are not sent.",
"description":"A list of email addresses to be notified when a run begins. If not specified on job creation, reset, or update, the list is empty, and notifications are not sent.",
"items":{
"description":""
}
},
"on_success":{
"description":"A list of email addresses to be notified when a run successfully completes. A run is considered to have completed successfully if it ends with a `TERMINATED` `life_cycle_state` and a `SUCCESS` result_state. If not specified on job creation, reset, or update, the list is empty, and notifications are not sent.",
"description":"Client version used by the environment\nThe client is the user-facing environment of the runtime.\nEach client comes with a specific set of pre-installed libraries.\nThe version is a string, consisting of the major client version."
"description":"List of pip dependencies, as supported by the version of pip in this environment.\nEach dependency is a pip requirement file line https://pip.pypa.io/en/stable/reference/requirements-file-format/\nAllowed dependency could be \u003crequirement specifier\u003e, \u003carchive url/path\u003e, \u003clocal project path\u003e(WSFS or Volumes in Databricks), \u003cvcs project url\u003e\nE.g. dependencies: [\"foo==0.0.1\", \"-r /Workspace/test/requirements.txt\"]",
"description":"Used to tell what is the format of the job. This field is ignored in Create/Update/Reset calls. When using the Jobs API 2.1 this value is always set to `\"MULTI_TASK\"`."
},
"git_source":{
"description":"An optional specification for a remote Git repository containing the source code used by tasks. Version-controlled source code is supported by notebook, dbt, Python script, and SQL File tasks.\n\nIf `git_source` is set, these tasks retrieve the file from the remote repository by default. However, this behavior can be overridden by setting `source` to `WORKSPACE` on the task.\n\nNote: dbt and SQL File tasks support only version-controlled sources. If dbt or SQL File tasks are used, `git_source` must be defined on the job.",
"properties":{
"git_branch":{
"description":"Name of the branch to be checked out and used by this job. This field cannot be specified in conjunction with git_tag or git_commit."
},
"git_commit":{
"description":"Commit to be checked out and used by this job. This field cannot be specified in conjunction with git_branch or git_tag."
},
"git_provider":{
"description":"Unique identifier of the service used to host the Git repository. The value is case insensitive."
},
"git_snapshot":{
"description":"",
"properties":{
"used_commit":{
"description":"Commit that was used to execute the run. If git_branch was specified, this points to the HEAD of the branch at the time of the run; if git_tag was specified, this points to the commit the tag points to."
}
}
},
"git_tag":{
"description":"Name of the tag to be checked out and used by this job. This field cannot be specified in conjunction with git_branch or git_commit."
},
"git_url":{
"description":"URL of the repository to be cloned by this job."
},
"job_source":{
"description":"The source of the job specification in the remote repository when the job is source controlled.",
"description":"Dirty state indicates the job is not fully synced with the job specification in the remote repository.\n\nPossible values are:\n* `NOT_SYNCED`: The job is not yet synced with the remote job specification. Import the remote job specification from UI to make the job fully synced.\n* `DISCONNECTED`: The job is temporary disconnected from the remote job specification and is allowed for live edit. Import the remote job specification again from UI to make the job fully synced."
"description":"A list of job cluster specifications that can be shared and reused by tasks of this job. Libraries cannot be declared in a shared job cluster. You must declare dependent libraries in task settings.",
"items":{
"description":"",
"properties":{
"job_cluster_key":{
"description":"A unique name for the job cluster. This field is required and must be unique within the job.\n`JobTaskSettings` may refer to this field to determine which cluster to launch for the task execution."
"description":"Parameters needed in order to automatically scale clusters up and down based on load.\nNote: autoscaling works best with DB runtime versions 3.0 or later.",
"properties":{
"max_workers":{
"description":"The maximum number of workers to which the cluster can scale up when overloaded.\nNote that `max_workers` must be strictly greater than `min_workers`."
},
"min_workers":{
"description":"The minimum number of workers to which the cluster can scale down when underutilized.\nIt is also the initial number of workers the cluster will have after creation."
}
}
},
"autotermination_minutes":{
"description":"Automatically terminates the cluster after it is inactive for this time in minutes. If not set,\nthis cluster will not be automatically terminated. If specified, the threshold must be between\n10 and 10000 minutes.\nUsers can also set this value to 0 to explicitly disable automatic termination."
},
"aws_attributes":{
"description":"Attributes related to clusters running on Amazon Web Services.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"ebs_volume_count":{
"description":"The number of volumes launched for each instance. Users can choose up to 10 volumes.\nThis feature is only enabled for supported node types. Legacy node types cannot specify\ncustom EBS volumes.\nFor node types with no instance store, at least one EBS volume needs to be specified;\notherwise, cluster creation will fail.\n\nThese EBS volumes will be mounted at `/ebs0`, `/ebs1`, and etc.\nInstance store volumes will be mounted at `/local_disk0`, `/local_disk1`, and etc.\n\nIf EBS volumes are attached, Databricks will configure Spark to use only the EBS volumes for\nscratch storage because heterogenously sized scratch devices can lead to inefficient disk\nutilization. If no EBS volumes are attached, Databricks will configure Spark to use instance\nstore volumes.\n\nPlease note that if EBS volumes are specified, then the Spark configuration `spark.local.dir`\nwill be overridden."
"description":"If using gp3 volumes, what IOPS to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The size of each EBS volume (in GiB) launched for each instance. For general purpose\nSSD, this value must be within the range 100 - 4096. For throughput optimized HDD,\nthis value must be within the range 500 - 4096."
"description":"If using gp3 volumes, what throughput to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nIf this value is greater than 0, the cluster driver node in particular will be placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"instance_profile_arn":{
"description":"Nodes for this cluster will only be placed on AWS instances with this instance profile. If\nommitted, nodes will be placed on instances without an IAM instance profile. The instance\nprofile must have previously been added to the Databricks environment by an account\nadministrator.\n\nThis feature may only be available to certain customer plans.\n\nIf this field is ommitted, we will pull in the default from the conf if it exists."
},
"spot_bid_price_percent":{
"description":"The bid price for AWS spot instances, as a percentage of the corresponding instance type's\non-demand price.\nFor example, if this field is set to 50, and the cluster needs a new `r3.xlarge` spot\ninstance, then the bid price is half of the price of\non-demand `r3.xlarge` instances. Similarly, if this field is set to 200, the bid price is twice\nthe price of on-demand `r3.xlarge` instances. If not specified, the default value is 100.\nWhen spot instances are requested for this cluster, only spot instances whose bid price\npercentage matches this field will be considered.\nNote that, for safety, we enforce this field to be no more than 10000.\n\nThe default value and documentation here should be kept consistent with\nCommonConf.defaultSpotBidPricePercent and CommonConf.maxSpotBidPricePercent."
},
"zone_id":{
"description":"Identifier for the availability zone/datacenter in which the cluster resides.\nThis string will be of a form like \"us-west-2a\". The provided availability\nzone must be in the same region as the Databricks deployment. For example, \"us-west-2a\"\nis not a valid zone id if the Databricks deployment resides in the \"us-east-1\" region.\nThis is an optional field at cluster creation, and if not specified, a default zone will be used.\nIf the zone specified is \"auto\", will try to place cluster in a zone with high availability,\nand will retry placement in a different AZ if there is not enough capacity.\nThe list of available zones as well as the default value can be found by using the\n`List Zones` method."
}
}
},
"azure_attributes":{
"description":"Attributes related to clusters running on Microsoft Azure.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"first_on_demand":{
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nThis value should be greater than 0, to make sure the cluster driver node is placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"log_analytics_info":{
"description":"Defines values necessary to configure and run Azure Log Analytics agent",
"properties":{
"log_analytics_primary_key":{
"description":"\u003cneeds content added\u003e"
},
"log_analytics_workspace_id":{
"description":"\u003cneeds content added\u003e"
}
}
},
"spot_bid_max_price":{
"description":"The max bid price to be used for Azure spot instances.\nThe Max price for the bid cannot be higher than the on-demand price of the instance.\nIf not specified, the default value is -1, which specifies that the instance cannot be evicted\non the basis of price, and only on the basis of availability. Further, the value should \u003e 0 or -1."
"description":"The configuration for delivering spark logs to a long-term storage destination.\nTwo kinds of destinations (dbfs and s3) are supported. Only one destination can be specified\nfor one cluster. If the conf is given, the logs will be delivered to the destination every\n`5 mins`. The destination of driver logs is `$destination/$clusterId/driver`, while\nthe destination of executor logs is `$destination/$clusterId/executor`.",
"properties":{
"dbfs":{
"description":"destination needs to be provided. e.g.\n`{ \"dbfs\" : { \"destination\" : \"dbfs:/home/cluster_log\" } }`",
"properties":{
"destination":{
"description":"dbfs destination, e.g. `dbfs:/my/path`"
}
}
},
"s3":{
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
},
"destination":{
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
},
"enable_encryption":{
"description":"(Optional) Flag to enable server side encryption, `false` by default."
},
"encryption_type":{
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
}
}
}
}
},
"cluster_name":{
"description":"Cluster name requested by the user. This doesn't have to be unique.\nIf not specified at creation, the cluster name will be an empty string.\n"
},
"cluster_source":{
"description":""
},
"custom_tags":{
"description":"Additional tags for cluster resources. Databricks will tag all cluster resources (e.g., AWS\ninstances and EBS volumes) with these tags in addition to `default_tags`. Notes:\n\n- Currently, Databricks allows at most 45 custom tags\n\n- Clusters can only reuse cloud resources if the resources' tags are a subset of the cluster tags",
"additionalproperties":{
"description":""
}
},
"data_security_mode":{
"description":""
},
"docker_image":{
"description":"",
"properties":{
"basic_auth":{
"description":"",
"properties":{
"password":{
"description":"Password of the user"
},
"username":{
"description":"Name of the user"
}
}
},
"url":{
"description":"URL of the docker image."
}
}
},
"driver_instance_pool_id":{
"description":"The optional ID of the instance pool for the driver of the cluster belongs.\nThe pool cluster uses the instance pool with id (instance_pool_id) if the driver pool is not\nassigned."
},
"driver_node_type_id":{
"description":"The node type of the Spark driver. Note that this field is optional;\nif unset, the driver node type will be set as the same value\nas `node_type_id` defined above.\n"
},
"enable_elastic_disk":{
"description":"Autoscaling Local Storage: when enabled, this cluster will dynamically acquire additional disk\nspace when its Spark workers are running low on disk space. This feature requires specific AWS\npermissions to function correctly - refer to the User Guide for more details."
},
"enable_local_disk_encryption":{
"description":"Whether to enable LUKS on cluster VMs' local disks"
},
"gcp_attributes":{
"description":"Attributes related to clusters running on Google Cloud Platform.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"boot_disk_size":{
"description":"boot disk size in GB"
},
"google_service_account":{
"description":"If provided, the cluster will impersonate the google service account when accessing\ngcloud services (like GCS). The google service account\nmust have previously been added to the Databricks environment by an account\nadministrator."
},
"local_ssd_count":{
"description":"If provided, each node (workers and driver) in the cluster will have this number of local SSDs attached. Each local SSD is 375GB in size. Refer to [GCP documentation](https://cloud.google.com/compute/docs/disks/local-ssd#choose_number_local_ssds) for the supported number of local SSDs for each instance type."
"description":"This field determines whether the spark executors will be scheduled to run on preemptible VMs (when set to true) versus standard compute engine VMs (when set to false; default).\nNote: Soon to be deprecated, use the availability field instead."
},
"zone_id":{
"description":"Identifier for the availability zone in which the cluster resides.\nThis can be one of the following:\n- \"HA\" =\u003e High availability, spread nodes across availability zones for a Databricks deployment region [default]\n- \"AUTO\" =\u003e Databricks picks an availability zone to schedule the cluster on.\n- A GCP availability zone =\u003e Pick One of the available zones for (machine type + region) from https://cloud.google.com/compute/docs/regions-zones."
"description":"The configuration for storing init scripts. Any number of destinations can be specified. The scripts are executed sequentially in the order provided. If `cluster_log_conf` is specified, init script logs are sent to `\u003cdestination\u003e/\u003ccluster-ID\u003e/init_scripts`.",
"description":"destination needs to be provided. e.g.\n`{ \"abfss\" : { \"destination\" : \"abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e\" } }",
"properties":{
"destination":{
"description":"abfss destination, e.g. `abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e`."
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
},
"destination":{
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
},
"enable_encryption":{
"description":"(Optional) Flag to enable server side encryption, `false` by default."
},
"encryption_type":{
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
}
}
},
"volumes":{
"description":"destination needs to be provided. e.g.\n`{ \"volumes\" : { \"destination\" : \"/Volumes/my-init.sh\" } }`",
"properties":{
"destination":{
"description":"Unity Catalog Volumes file destination, e.g. `/Volumes/my-init.sh`"
"description":"This field encodes, through a single value, the resources available to each of\nthe Spark nodes in this cluster. For example, the Spark nodes can be provisioned\nand optimized for memory or compute intensive workloads. A list of available node\ntypes can be retrieved by using the :method:clusters/listNodeTypes API call.\n"
"description":"Number of worker nodes that this cluster should have. A cluster has one Spark Driver\nand `num_workers` Executors for a total of `num_workers` + 1 Spark nodes.\n\nNote: When reading the properties of a cluster, this field reflects the desired number\nof workers rather than the actual current number of workers. For instance, if a cluster\nis resized from 5 to 10 workers, this field will immediately be updated to reflect\nthe target size of 10 workers, whereas the workers listed in `spark_info` will gradually\nincrease from 5 to 10 as the new nodes are provisioned."
"description":"An object containing a set of optional, user-specified Spark configuration key-value pairs.\nUsers can also pass in a string of extra JVM options to the driver and the executors via\n`spark.driver.extraJavaOptions` and `spark.executor.extraJavaOptions` respectively.\n",
"description":"An object containing a set of optional, user-specified environment variable key-value pairs.\nPlease note that key-value pair of the form (X,Y) will be exported as is (i.e.,\n`export X='Y'`) while launching the driver and workers.\n\nIn order to specify an additional set of `SPARK_DAEMON_JAVA_OPTS`, we recommend appending\nthem to `$SPARK_DAEMON_JAVA_OPTS` as shown in the example below. This ensures that all\ndefault databricks managed environmental variables are included as well.\n\nExample Spark environment variables:\n`{\"SPARK_WORKER_MEMORY\": \"28000m\", \"SPARK_LOCAL_DIRS\": \"/local_disk0\"}` or\n`{\"SPARK_DAEMON_JAVA_OPTS\": \"$SPARK_DAEMON_JAVA_OPTS -Dspark.shuffle.service.enabled=true\"}`",
"description":"The Spark version of the cluster, e.g. `3.3.x-scala2.11`.\nA list of available Spark versions can be retrieved by using\nthe :method:clusters/sparkVersions API call.\n"
},
"ssh_public_keys":{
"description":"SSH public key contents that will be added to each Spark node in this cluster. The\ncorresponding private keys can be used to login with the user name `ubuntu` on port `2200`.\nUp to 10 keys can be specified.",
"description":"An optional maximum allowed number of concurrent runs of the job.\nSet this value if you want to be able to execute multiple runs of the same job concurrently.\nThis is useful for example if you trigger your job on a frequent schedule and want to allow consecutive runs to overlap with each other, or if you want to trigger multiple runs which differ by their input parameters.\nThis setting affects only new runs. For example, suppose the job’s concurrency is 4 and there are 4 concurrent active runs. Then setting the concurrency to 3 won’t kill any of the active runs.\nHowever, from then on, new runs are skipped unless there are fewer than 3 active runs.\nThis value cannot exceed 1000. Setting this value to `0` causes all new runs to be skipped."
"description":"Optional notification settings that are used when sending notifications to each of the `email_notifications` and `webhook_notifications` for this job.",
"description":"An optional periodic schedule for this job. The default behavior is that the job only runs when triggered by clicking “Run Now” in the Jobs UI or sending an API request to `runNow`.",
"description":"A Cron expression using Quartz syntax that describes the schedule for a job. See [Cron Trigger](http://www.quartz-scheduler.org/documentation/quartz-2.3.0/tutorials/crontrigger.html) for details. This field is required."
"description":"A Java timezone ID. The schedule for a job is resolved with respect to this timezone. See [Java TimeZone](https://docs.oracle.com/javase/7/docs/api/java/util/TimeZone.html) for details. This field is required."
"description":"A map of tags associated with the job. These are forwarded to the cluster as cluster tags for jobs clusters, and are subject to the same limitations as cluster tags. A maximum of 25 tags can be added to the job.",
"additionalproperties":{
"description":""
}
},
"tasks":{
"description":"A list of task specifications to be executed by this job.",
"items":{
"description":"",
"properties":{
"condition_task":{
"description":"If condition_task, specifies a condition with an outcome that can be used to control the execution of other tasks. Does not require a cluster to execute and does not support retries or notifications.",
"properties":{
"left":{
"description":"The left operand of the condition task. Can be either a string value or a job state or parameter reference."
"description":"* `EQUAL_TO`, `NOT_EQUAL` operators perform string comparison of their operands. This means that `“12.0” == “12”` will evaluate to `false`.\n* `GREATER_THAN`, `GREATER_THAN_OR_EQUAL`, `LESS_THAN`, `LESS_THAN_OR_EQUAL` operators perform numeric comparison of their operands. `“12.0” \u003e= “12”` will evaluate to `true`, `“10.0” \u003e= “12”` will evaluate to `false`.\n\nThe boolean comparison to task values can be implemented with operators `EQUAL_TO`, `NOT_EQUAL`. If a task value was set to a boolean value, it will be serialized to `“true”` or `“false”` for the comparison."
"description":"If dbt_task, indicates that this must execute a dbt task. It requires both Databricks SQL and the ability to use a serverless or a pro SQL warehouse.",
"properties":{
"catalog":{
"description":"Optional name of the catalog to use. The value is the top level in the 3-level namespace of Unity Catalog (catalog / schema / relation). The catalog value can only be specified if a warehouse_id is specified. Requires dbt-databricks \u003e= 1.1.1."
},
"commands":{
"description":"A list of dbt commands to execute. All commands must start with `dbt`. This parameter must not be empty. A maximum of up to 10 commands can be provided.",
"items":{
"description":""
}
},
"profiles_directory":{
"description":"Optional (relative) path to the profiles directory. Can only be specified if no warehouse_id is specified. If no warehouse_id is specified and this folder is unset, the root directory is used."
"description":"Path to the project directory. Optional for Git sourced tasks, in which\ncase if no value is provided, the root of the Git repository is used."
"description":"Optional schema to write to. This parameter is only used when a warehouse_id is also provided. If not provided, the `default` schema is used."
"description":"Optional location type of the project directory. When set to `WORKSPACE`, the project will be retrieved\nfrom the local Databricks workspace. When set to `GIT`, the project will be retrieved from a Git repository\ndefined in `git_source`. If the value is empty, the task will use `GIT` if `git_source` is defined and `WORKSPACE` otherwise.\n\n* `WORKSPACE`: Project is located in Databricks workspace.\n* `GIT`: Project is located in cloud Git provider."
"description":"ID of the SQL warehouse to connect to. If provided, we automatically generate and provide the profile and connection details to dbt. It can be overridden on a per-command basis by using the `--profiles-dir` command line argument."
"description":"An optional array of objects specifying the dependency graph of the task. All tasks specified in this field must complete before executing this task. The task will run only if the `run_if` condition is true.\nThe key is `task_key`, and the value is the name assigned to the dependent task.",
"description":"An optional set of email addresses that is notified when runs of this task begin or complete as well as when this task is deleted. The default behavior is to not send any emails.",
"description":"A list of email addresses to be notified when the duration of a run exceeds the threshold specified for the `RUN_DURATION_SECONDS` metric in the `health` field. If no rule for the `RUN_DURATION_SECONDS` metric is specified in the `health` field for the job, notifications are not sent.",
"items":{
"description":""
}
},
"on_failure":{
"description":"A list of email addresses to be notified when a run unsuccessfully completes. A run is considered to have completed unsuccessfully if it ends with an `INTERNAL_ERROR` `life_cycle_state` or a `FAILED`, or `TIMED_OUT` result_state. If this is not specified on job creation, reset, or update the list is empty, and notifications are not sent.",
"items":{
"description":""
}
},
"on_start":{
"description":"A list of email addresses to be notified when a run begins. If not specified on job creation, reset, or update, the list is empty, and notifications are not sent.",
"items":{
"description":""
}
},
"on_success":{
"description":"A list of email addresses to be notified when a run successfully completes. A run is considered to have completed successfully if it ends with a `TERMINATED` `life_cycle_state` and a `SUCCESS` result_state. If not specified on job creation, reset, or update, the list is empty, and notifications are not sent.",
"description":"The key that references an environment spec in a job. This field is required for Python script, Python wheel and dbt tasks when using serverless compute."
"description":"If existing_cluster_id, the ID of an existing cluster that is used for all runs.\nWhen running jobs or tasks on an existing cluster, you may need to manually restart\nthe cluster if it stops responding. We suggest running jobs and tasks on new clusters for\ngreater reliability"
"description":"URI of the egg library to install. Supported URIs include Workspace paths, Unity Catalog Volumes paths, and S3 URIs.\nFor example: `{ \"egg\": \"/Workspace/path/to/library.egg\" }`, `{ \"egg\" : \"/Volumes/path/to/library.egg\" }` or\n`{ \"egg\": \"s3://my-bucket/library.egg\" }`.\nIf S3 is used, please make sure the cluster has read access on the library. You may need to\nlaunch the cluster with an IAM role to access the S3 URI."
"description":"URI of the JAR library to install. Supported URIs include Workspace paths, Unity Catalog Volumes paths, and S3 URIs.\nFor example: `{ \"jar\": \"/Workspace/path/to/library.jar\" }`, `{ \"jar\" : \"/Volumes/path/to/library.jar\" }` or\n`{ \"jar\": \"s3://my-bucket/library.jar\" }`.\nIf S3 is used, please make sure the cluster has read access on the library. You may need to\nlaunch the cluster with an IAM role to access the S3 URI."
"description":"Specification of a maven library to be installed. For example:\n`{ \"coordinates\": \"org.jsoup:jsoup:1.7.2\" }`",
"properties":{
"coordinates":{
"description":"Gradle-style maven coordinates. For example: \"org.jsoup:jsoup:1.7.2\"."
},
"exclusions":{
"description":"List of dependences to exclude. For example: `[\"slf4j:slf4j\", \"*:hadoop-client\"]`.\n\nMaven dependency exclusions:\nhttps://maven.apache.org/guides/introduction/introduction-to-optional-and-excludes-dependencies.html.",
"items":{
"description":""
}
},
"repo":{
"description":"Maven repo to install the Maven package from. If omitted, both Maven Central Repository\nand Spark Packages are searched."
"description":"Specification of a PyPi library to be installed. For example:\n`{ \"package\": \"simplejson\" }`",
"properties":{
"package":{
"description":"The name of the pypi package to install. An optional exact version specification is also\nsupported. Examples: \"simplejson\" and \"simplejson==3.8.0\"."
},
"repo":{
"description":"The repository where the package can be found. If not specified, the default pip index is\nused."
"description":"URI of the requirements.txt file to install. Only Workspace paths and Unity Catalog Volumes paths are supported.\nFor example: `{ \"requirements\": \"/Workspace/path/to/requirements.txt\" }` or `{ \"requirements\" : \"/Volumes/path/to/requirements.txt\" }`"
"description":"URI of the wheel library to install. Supported URIs include Workspace paths, Unity Catalog Volumes paths, and S3 URIs.\nFor example: `{ \"whl\": \"/Workspace/path/to/library.whl\" }`, `{ \"whl\" : \"/Volumes/path/to/library.whl\" }` or\n`{ \"whl\": \"s3://my-bucket/library.whl\" }`.\nIf S3 is used, please make sure the cluster has read access on the library. You may need to\nlaunch the cluster with an IAM role to access the S3 URI."
"description":"An optional maximum number of times to retry an unsuccessful run. A run is considered to be unsuccessful if it completes with the `FAILED` result_state or `INTERNAL_ERROR` `life_cycle_state`. The value `-1` means to retry indefinitely and the value `0` means to never retry."
},
"min_retry_interval_millis":{
"description":"An optional minimal interval in milliseconds between the start of the failed run and the subsequent retry run. The default behavior is that unsuccessful runs are immediately retried."
"description":"Parameters needed in order to automatically scale clusters up and down based on load.\nNote: autoscaling works best with DB runtime versions 3.0 or later.",
"description":"The maximum number of workers to which the cluster can scale up when overloaded.\nNote that `max_workers` must be strictly greater than `min_workers`."
},
"min_workers":{
"description":"The minimum number of workers to which the cluster can scale down when underutilized.\nIt is also the initial number of workers the cluster will have after creation."
}
}
},
"autotermination_minutes":{
"description":"Automatically terminates the cluster after it is inactive for this time in minutes. If not set,\nthis cluster will not be automatically terminated. If specified, the threshold must be between\n10 and 10000 minutes.\nUsers can also set this value to 0 to explicitly disable automatic termination."
},
"aws_attributes":{
"description":"Attributes related to clusters running on Amazon Web Services.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"ebs_volume_count":{
"description":"The number of volumes launched for each instance. Users can choose up to 10 volumes.\nThis feature is only enabled for supported node types. Legacy node types cannot specify\ncustom EBS volumes.\nFor node types with no instance store, at least one EBS volume needs to be specified;\notherwise, cluster creation will fail.\n\nThese EBS volumes will be mounted at `/ebs0`, `/ebs1`, and etc.\nInstance store volumes will be mounted at `/local_disk0`, `/local_disk1`, and etc.\n\nIf EBS volumes are attached, Databricks will configure Spark to use only the EBS volumes for\nscratch storage because heterogenously sized scratch devices can lead to inefficient disk\nutilization. If no EBS volumes are attached, Databricks will configure Spark to use instance\nstore volumes.\n\nPlease note that if EBS volumes are specified, then the Spark configuration `spark.local.dir`\nwill be overridden."
"description":"If using gp3 volumes, what IOPS to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The size of each EBS volume (in GiB) launched for each instance. For general purpose\nSSD, this value must be within the range 100 - 4096. For throughput optimized HDD,\nthis value must be within the range 500 - 4096."
"description":"If using gp3 volumes, what throughput to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nIf this value is greater than 0, the cluster driver node in particular will be placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"instance_profile_arn":{
"description":"Nodes for this cluster will only be placed on AWS instances with this instance profile. If\nommitted, nodes will be placed on instances without an IAM instance profile. The instance\nprofile must have previously been added to the Databricks environment by an account\nadministrator.\n\nThis feature may only be available to certain customer plans.\n\nIf this field is ommitted, we will pull in the default from the conf if it exists."
},
"spot_bid_price_percent":{
"description":"The bid price for AWS spot instances, as a percentage of the corresponding instance type's\non-demand price.\nFor example, if this field is set to 50, and the cluster needs a new `r3.xlarge` spot\ninstance, then the bid price is half of the price of\non-demand `r3.xlarge` instances. Similarly, if this field is set to 200, the bid price is twice\nthe price of on-demand `r3.xlarge` instances. If not specified, the default value is 100.\nWhen spot instances are requested for this cluster, only spot instances whose bid price\npercentage matches this field will be considered.\nNote that, for safety, we enforce this field to be no more than 10000.\n\nThe default value and documentation here should be kept consistent with\nCommonConf.defaultSpotBidPricePercent and CommonConf.maxSpotBidPricePercent."
},
"zone_id":{
"description":"Identifier for the availability zone/datacenter in which the cluster resides.\nThis string will be of a form like \"us-west-2a\". The provided availability\nzone must be in the same region as the Databricks deployment. For example, \"us-west-2a\"\nis not a valid zone id if the Databricks deployment resides in the \"us-east-1\" region.\nThis is an optional field at cluster creation, and if not specified, a default zone will be used.\nIf the zone specified is \"auto\", will try to place cluster in a zone with high availability,\nand will retry placement in a different AZ if there is not enough capacity.\nThe list of available zones as well as the default value can be found by using the\n`List Zones` method."
}
}
},
"azure_attributes":{
"description":"Attributes related to clusters running on Microsoft Azure.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"first_on_demand":{
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nThis value should be greater than 0, to make sure the cluster driver node is placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"log_analytics_info":{
"description":"Defines values necessary to configure and run Azure Log Analytics agent",
"properties":{
"log_analytics_primary_key":{
"description":"\u003cneeds content added\u003e"
},
"log_analytics_workspace_id":{
"description":"\u003cneeds content added\u003e"
}
}
},
"spot_bid_max_price":{
"description":"The max bid price to be used for Azure spot instances.\nThe Max price for the bid cannot be higher than the on-demand price of the instance.\nIf not specified, the default value is -1, which specifies that the instance cannot be evicted\non the basis of price, and only on the basis of availability. Further, the value should \u003e 0 or -1."
"description":"The configuration for delivering spark logs to a long-term storage destination.\nTwo kinds of destinations (dbfs and s3) are supported. Only one destination can be specified\nfor one cluster. If the conf is given, the logs will be delivered to the destination every\n`5 mins`. The destination of driver logs is `$destination/$clusterId/driver`, while\nthe destination of executor logs is `$destination/$clusterId/executor`.",
"properties":{
"dbfs":{
"description":"destination needs to be provided. e.g.\n`{ \"dbfs\" : { \"destination\" : \"dbfs:/home/cluster_log\" } }`",
"properties":{
"destination":{
"description":"dbfs destination, e.g. `dbfs:/my/path`"
}
}
},
"s3":{
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
},
"destination":{
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
},
"enable_encryption":{
"description":"(Optional) Flag to enable server side encryption, `false` by default."
},
"encryption_type":{
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
"description":"Cluster name requested by the user. This doesn't have to be unique.\nIf not specified at creation, the cluster name will be an empty string.\n"
},
"cluster_source":{
"description":""
},
"custom_tags":{
"description":"Additional tags for cluster resources. Databricks will tag all cluster resources (e.g., AWS\ninstances and EBS volumes) with these tags in addition to `default_tags`. Notes:\n\n- Currently, Databricks allows at most 45 custom tags\n\n- Clusters can only reuse cloud resources if the resources' tags are a subset of the cluster tags",
"description":"The optional ID of the instance pool for the driver of the cluster belongs.\nThe pool cluster uses the instance pool with id (instance_pool_id) if the driver pool is not\nassigned."
},
"driver_node_type_id":{
"description":"The node type of the Spark driver. Note that this field is optional;\nif unset, the driver node type will be set as the same value\nas `node_type_id` defined above.\n"
},
"enable_elastic_disk":{
"description":"Autoscaling Local Storage: when enabled, this cluster will dynamically acquire additional disk\nspace when its Spark workers are running low on disk space. This feature requires specific AWS\npermissions to function correctly - refer to the User Guide for more details."
},
"enable_local_disk_encryption":{
"description":"Whether to enable LUKS on cluster VMs' local disks"
},
"gcp_attributes":{
"description":"Attributes related to clusters running on Google Cloud Platform.\nIf not specified at cluster creation, a set of default values will be used.",
"description":"If provided, the cluster will impersonate the google service account when accessing\ngcloud services (like GCS). The google service account\nmust have previously been added to the Databricks environment by an account\nadministrator."
"description":"If provided, each node (workers and driver) in the cluster will have this number of local SSDs attached. Each local SSD is 375GB in size. Refer to [GCP documentation](https://cloud.google.com/compute/docs/disks/local-ssd#choose_number_local_ssds) for the supported number of local SSDs for each instance type."
"description":"This field determines whether the spark executors will be scheduled to run on preemptible VMs (when set to true) versus standard compute engine VMs (when set to false; default).\nNote: Soon to be deprecated, use the availability field instead."
},
"zone_id":{
"description":"Identifier for the availability zone in which the cluster resides.\nThis can be one of the following:\n- \"HA\" =\u003e High availability, spread nodes across availability zones for a Databricks deployment region [default]\n- \"AUTO\" =\u003e Databricks picks an availability zone to schedule the cluster on.\n- A GCP availability zone =\u003e Pick One of the available zones for (machine type + region) from https://cloud.google.com/compute/docs/regions-zones."
"description":"The configuration for storing init scripts. Any number of destinations can be specified. The scripts are executed sequentially in the order provided. If `cluster_log_conf` is specified, init script logs are sent to `\u003cdestination\u003e/\u003ccluster-ID\u003e/init_scripts`.",
"description":"destination needs to be provided. e.g.\n`{ \"abfss\" : { \"destination\" : \"abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e\" } }",
"properties":{
"destination":{
"description":"abfss destination, e.g. `abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e`."
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
},
"destination":{
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
},
"enable_encryption":{
"description":"(Optional) Flag to enable server side encryption, `false` by default."
},
"encryption_type":{
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
}
}
},
"volumes":{
"description":"destination needs to be provided. e.g.\n`{ \"volumes\" : { \"destination\" : \"/Volumes/my-init.sh\" } }`",
"properties":{
"destination":{
"description":"Unity Catalog Volumes file destination, e.g. `/Volumes/my-init.sh`"
}
}
},
"workspace":{
"description":"destination needs to be provided. e.g.\n`{ \"workspace\" : { \"destination\" : \"/Users/user1@databricks.com/my-init.sh\" } }`",
"properties":{
"destination":{
"description":"workspace files destination, e.g. `/Users/user1@databricks.com/my-init.sh`"
}
}
}
}
}
},
"instance_pool_id":{
"description":"The optional ID of the instance pool to which the cluster belongs."
},
"node_type_id":{
"description":"This field encodes, through a single value, the resources available to each of\nthe Spark nodes in this cluster. For example, the Spark nodes can be provisioned\nand optimized for memory or compute intensive workloads. A list of available node\ntypes can be retrieved by using the :method:clusters/listNodeTypes API call.\n"
},
"num_workers":{
"description":"Number of worker nodes that this cluster should have. A cluster has one Spark Driver\nand `num_workers` Executors for a total of `num_workers` + 1 Spark nodes.\n\nNote: When reading the properties of a cluster, this field reflects the desired number\nof workers rather than the actual current number of workers. For instance, if a cluster\nis resized from 5 to 10 workers, this field will immediately be updated to reflect\nthe target size of 10 workers, whereas the workers listed in `spark_info` will gradually\nincrease from 5 to 10 as the new nodes are provisioned."
},
"policy_id":{
"description":"The ID of the cluster policy used to create the cluster if applicable."
},
"runtime_engine":{
"description":""
},
"single_user_name":{
"description":"Single user name if data_security_mode is `SINGLE_USER`"
},
"spark_conf":{
"description":"An object containing a set of optional, user-specified Spark configuration key-value pairs.\nUsers can also pass in a string of extra JVM options to the driver and the executors via\n`spark.driver.extraJavaOptions` and `spark.executor.extraJavaOptions` respectively.\n",
"additionalproperties":{
"description":""
}
},
"spark_env_vars":{
"description":"An object containing a set of optional, user-specified environment variable key-value pairs.\nPlease note that key-value pair of the form (X,Y) will be exported as is (i.e.,\n`export X='Y'`) while launching the driver and workers.\n\nIn order to specify an additional set of `SPARK_DAEMON_JAVA_OPTS`, we recommend appending\nthem to `$SPARK_DAEMON_JAVA_OPTS` as shown in the example below. This ensures that all\ndefault databricks managed environmental variables are included as well.\n\nExample Spark environment variables:\n`{\"SPARK_WORKER_MEMORY\": \"28000m\", \"SPARK_LOCAL_DIRS\": \"/local_disk0\"}` or\n`{\"SPARK_DAEMON_JAVA_OPTS\": \"$SPARK_DAEMON_JAVA_OPTS -Dspark.shuffle.service.enabled=true\"}`",
"additionalproperties":{
"description":""
}
},
"spark_version":{
"description":"The Spark version of the cluster, e.g. `3.3.x-scala2.11`.\nA list of available Spark versions can be retrieved by using\nthe :method:clusters/sparkVersions API call.\n"
},
"ssh_public_keys":{
"description":"SSH public key contents that will be added to each Spark node in this cluster. The\ncorresponding private keys can be used to login with the user name `ubuntu` on port `2200`.\nUp to 10 keys can be specified.",
"description":"Base parameters to be used for each run of this job. If the run is initiated by a call to :method:jobs/run\nNow with parameters specified, the two parameters maps are merged. If the same key is specified in\n`base_parameters` and in `run-now`, the value from `run-now` is used.\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.\n\nIf the notebook takes a parameter that is not specified in the job’s `base_parameters` or the `run-now` override parameters,\nthe default value from the notebook is used.\n\nRetrieve these parameters in a notebook using [dbutils.widgets.get](https://docs.databricks.com/dev-tools/databricks-utils.html#dbutils-widgets).\n\nThe JSON representation of this field cannot exceed 1MB.",
"description":"The path of the notebook to be run in the Databricks workspace or remote repository.\nFor notebooks stored in the Databricks workspace, the path must be absolute and begin with a slash.\nFor notebooks stored in a remote repository, the path must be relative. This field is required."
"description":"Optional location type of the notebook. When set to `WORKSPACE`, the notebook will be retrieved from the local Databricks workspace. When set to `GIT`, the notebook will be retrieved from a Git repository\ndefined in `git_source`. If the value is empty, the task will use `GIT` if `git_source` is defined and `WORKSPACE` otherwise.\n* `WORKSPACE`: Notebook is located in Databricks workspace.\n* `GIT`: Notebook is located in cloud Git provider."
"description":"Optional `warehouse_id` to run the notebook on a SQL warehouse. Classic SQL warehouses are NOT supported, please use serverless or pro SQL warehouses.\n\nNote that SQL warehouses only support SQL cells; if the notebook contains non-SQL cells, the run will fail."
"description":"Optional notification settings that are used when sending notifications to each of the `email_notifications` and `webhook_notifications` for this task.",
"description":"If true, do not send notifications to recipients specified in `on_start` for the retried runs and do not send notifications to recipients specified in `on_failure` until the last retry of the run."
"description":"If python_wheel_task, indicates that this job must execute a PythonWheel.",
"properties":{
"entry_point":{
"description":"Named entry point to use, if it does not exist in the metadata of the package it executes the function from the package directly using `$packageName.$entryPoint()`"
},
"named_parameters":{
"description":"Command-line parameters passed to Python wheel task in the form of `[\"--name=task\", \"--data=dbfs:/path/to/data.json\"]`. Leave it empty if `parameters` is not null.",
"additionalproperties":{
"description":""
}
},
"package_name":{
"description":"Name of the package to execute"
},
"parameters":{
"description":"Command-line parameters passed to Python wheel task. Leave it empty if `named_parameters` is not null.",
"description":"An optional value specifying the condition determining whether the task is run once its dependencies have been completed.\n\n* `ALL_SUCCESS`: All dependencies have executed and succeeded\n* `AT_LEAST_ONE_SUCCESS`: At least one dependency has succeeded\n* `NONE_FAILED`: None of the dependencies have failed and at least one was executed\n* `ALL_DONE`: All dependencies have been completed\n* `AT_LEAST_ONE_FAILED`: At least one dependency failed\n* `ALL_FAILED`: ALl dependencies have failed"
"description":"An array of commands to execute for jobs with the dbt task, for example `\"dbt_commands\": [\"dbt deps\", \"dbt seed\", \"dbt deps\", \"dbt seed\", \"dbt run\"]`",
"items":{
"description":""
}
},
"jar_params":{
"description":"A list of parameters for jobs with Spark JAR tasks, for example `\"jar_params\": [\"john doe\", \"35\"]`.\nThe parameters are used to invoke the main function of the main class specified in the Spark JAR task.\nIf not specified upon `run-now`, it defaults to an empty list.\njar_params cannot be specified in conjunction with notebook_params.\nThe JSON representation of this field (for example `{\"jar_params\":[\"john doe\",\"35\"]}`) cannot exceed 10,000 bytes.\n\nUse [Task parameter variables](/jobs.html\\\"#parameter-variables\\\") to set parameters containing information about job runs.",
"description":"A map from keys to values for jobs with notebook task, for example `\"notebook_params\": {\"name\": \"john doe\", \"age\": \"35\"}`.\nThe map is passed to the notebook and is accessible through the [dbutils.widgets.get](https://docs.databricks.com/dev-tools/databricks-utils.html) function.\n\nIf not specified upon `run-now`, the triggered run uses the job’s base parameters.\n\nnotebook_params cannot be specified in conjunction with jar_params.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.\n\nThe JSON representation of this field (for example `{\"notebook_params\":{\"name\":\"john doe\",\"age\":\"35\"}}`) cannot exceed 10,000 bytes.",
"additionalproperties":{
"description":""
}
},
"pipeline_params":{
"description":"",
"properties":{
"full_refresh":{
"description":"If true, triggers a full refresh on the delta live table."
}
}
},
"python_named_params":{
"description":"A map from keys to values for jobs with Python wheel task, for example `\"python_named_params\": {\"name\": \"task\", \"data\": \"dbfs:/path/to/data.json\"}`.",
"additionalproperties":{
"description":""
}
},
"python_params":{
"description":"A list of parameters for jobs with Python tasks, for example `\"python_params\": [\"john doe\", \"35\"]`.\nThe parameters are passed to Python file as command-line parameters. If specified upon `run-now`, it would overwrite\nthe parameters specified in job setting. The JSON representation of this field (for example `{\"python_params\":[\"john doe\",\"35\"]}`)\ncannot exceed 10,000 bytes.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.\n\nImportant\n\nThese parameters accept only Latin characters (ASCII character set). Using non-ASCII characters returns an error.\nExamples of invalid, non-ASCII characters are Chinese, Japanese kanjis, and emojis.",
"items":{
"description":""
}
},
"spark_submit_params":{
"description":"A list of parameters for jobs with spark submit task, for example `\"spark_submit_params\": [\"--class\", \"org.apache.spark.examples.SparkPi\"]`.\nThe parameters are passed to spark-submit script as command-line parameters. If specified upon `run-now`, it would overwrite the\nparameters specified in job setting. The JSON representation of this field (for example `{\"python_params\":[\"john doe\",\"35\"]}`)\ncannot exceed 10,000 bytes.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs\n\nImportant\n\nThese parameters accept only Latin characters (ASCII character set). Using non-ASCII characters returns an error.\nExamples of invalid, non-ASCII characters are Chinese, Japanese kanjis, and emojis.",
"items":{
"description":""
}
},
"sql_params":{
"description":"A map from keys to values for jobs with SQL task, for example `\"sql_params\": {\"name\": \"john doe\", \"age\": \"35\"}`. The SQL alert task does not support custom parameters.",
"description":"The full name of the class containing the main method to be executed. This class must be contained in a JAR provided as a library.\n\nThe code must use `SparkContext.getOrCreate` to obtain a Spark context; otherwise, runs of the job fail."
"description":"Parameters passed to the main method.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.",
"description":"Command line parameters passed to the Python file.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.",
"description":"The Python file to be executed. Cloud file URIs (such as dbfs:/, s3:/, adls:/, gcs:/) and workspace paths are supported. For python files stored in the Databricks workspace, the path must be absolute and begin with `/`. For files stored in a remote repository, the path must be relative. This field is required."
"description":"Optional location type of the Python file. When set to `WORKSPACE` or not specified, the file will be retrieved from the local\nDatabricks workspace or cloud location (if the `python_file` has a URI format). When set to `GIT`,\nthe Python file will be retrieved from a Git repository defined in `git_source`.\n\n* `WORKSPACE`: The Python file is located in a Databricks workspace or at a cloud filesystem URI.\n* `GIT`: The Python file is located in a remote Git repository."
"description":"If `spark_submit_task`, indicates that this task must be launched by the spark submit script. This task can run only on new clusters.\n\nIn the `new_cluster` specification, `libraries` and `spark_conf` are not supported. Instead, use `--jars` and `--py-files` to add Java and Python libraries and `--conf` to set the Spark configurations.\n\n`master`, `deploy-mode`, and `executor-cores` are automatically configured by Databricks; you _cannot_ specify them in parameters.\n\nBy default, the Spark submit job uses all available memory (excluding reserved memory for Databricks services). You can set `--driver-memory`, and `--executor-memory` to a smaller value to leave some room for off-heap usage.\n\nThe `--jars`, `--py-files`, `--files` arguments support DBFS and S3 paths.",
"description":"Command-line parameters passed to spark submit.\n\nUse [Task parameter variables](https://docs.databricks.com/jobs.html#parameter-variables) to set parameters containing information about job runs.",
"description":"The canonical identifier of the SQL alert."
},
"pause_subscriptions":{
"description":"If true, the alert notifications are not sent to subscribers."
},
"subscriptions":{
"description":"If specified, alert notifications are sent to subscribers.",
"items":{
"description":"",
"properties":{
"destination_id":{
"description":"The canonical identifier of the destination to receive email notification. This parameter is mutually exclusive with user_name. You cannot set both destination_id and user_name for subscription notifications."
},
"user_name":{
"description":"The user name to receive the subscription email. This parameter is mutually exclusive with destination_id. You cannot set both destination_id and user_name for subscription notifications."
}
}
}
}
}
},
"dashboard":{
"description":"If dashboard, indicates that this job must refresh a SQL dashboard.",
"properties":{
"custom_subject":{
"description":"Subject of the email sent to subscribers of this task."
},
"dashboard_id":{
"description":"The canonical identifier of the SQL dashboard."
},
"pause_subscriptions":{
"description":"If true, the dashboard snapshot is not taken, and emails are not sent to subscribers."
},
"subscriptions":{
"description":"If specified, dashboard snapshots are sent to subscriptions.",
"items":{
"description":"",
"properties":{
"destination_id":{
"description":"The canonical identifier of the destination to receive email notification. This parameter is mutually exclusive with user_name. You cannot set both destination_id and user_name for subscription notifications."
},
"user_name":{
"description":"The user name to receive the subscription email. This parameter is mutually exclusive with destination_id. You cannot set both destination_id and user_name for subscription notifications."
"description":"Optional location type of the SQL file. When set to `WORKSPACE`, the SQL file will be retrieved\nfrom the local Databricks workspace. When set to `GIT`, the SQL file will be retrieved from a Git repository\ndefined in `git_source`. If the value is empty, the task will use `GIT` if `git_source` is defined and `WORKSPACE` otherwise.\n\n* `WORKSPACE`: SQL file is located in Databricks workspace.\n* `GIT`: SQL file is located in cloud Git provider."
"description":"The canonical identifier of the SQL warehouse. Recommended to use with serverless or pro SQL warehouses. Classic SQL warehouses are only supported for SQL alert, dashboard and query tasks and are limited to scheduled single-task jobs."
"description":"A unique name for the task. This field is used to refer to this task from other tasks.\nThis field is required and must be unique within its parent job.\nOn Update or Reset, this field is used to reference the tasks to be updated or reset."
},
"timeout_seconds":{
"description":"An optional timeout applied to each run of this job task. A value of `0` means no timeout."
"description":"An optional list of system notification IDs to call when the duration of a run exceeds the threshold specified for the `RUN_DURATION_SECONDS` metric in the `health` field. A maximum of 3 destinations can be specified for the `on_duration_warning_threshold_exceeded` property.",
"items":{
"description":"",
"properties":{
"id":{
"description":""
}
}
}
},
"on_failure":{
"description":"An optional list of system notification IDs to call when the run fails. A maximum of 3 destinations can be specified for the `on_failure` property.",
"items":{
"description":"",
"properties":{
"id":{
"description":""
}
}
}
},
"on_start":{
"description":"An optional list of system notification IDs to call when the run starts. A maximum of 3 destinations can be specified for the `on_start` property.",
"items":{
"description":"",
"properties":{
"id":{
"description":""
}
}
}
},
"on_success":{
"description":"An optional list of system notification IDs to call when the run completes successfully. A maximum of 3 destinations can be specified for the `on_success` property.",
"description":"A configuration to trigger a run when certain conditions are met. The default behavior is that the job runs only when triggered by clicking “Run Now” in the Jobs UI or sending an API request to `runNow`.",
"description":"If set, the trigger starts a run only after the specified amount of time passed since\nthe last time the trigger fired. The minimum allowed value is 60 seconds"
"description":"If set, the trigger starts a run only after no file activity has occurred for the specified amount of time.\nThis makes it possible to wait for a batch of incoming files to arrive before triggering a run. The\nminimum allowed value is 60 seconds."
"description":"The table(s) condition based on which to trigger a job run."
},
"min_time_between_triggers_seconds":{
"description":"If set, the trigger starts a run only after the specified amount of time has passed since\nthe last time the trigger fired. The minimum allowed value is 60 seconds."
},
"table_names":{
"description":"A list of Delta tables to monitor for changes. The table name must be in the format `catalog_name.schema_name.table_name`.",
"items":{
"description":""
}
},
"wait_after_last_change_seconds":{
"description":"If set, the trigger starts a run only after no table updates have occurred for the specified time\nand can be used to wait for a series of table updates before triggering a run. The\nminimum allowed value is 60 seconds."
"description":"If set, the trigger starts a run only after the specified amount of time has passed since\nthe last time the trigger fired. The minimum allowed value is 60 seconds."
"description":"If set, the trigger starts a run only after no table updates have occurred for the specified time\nand can be used to wait for a series of table updates before triggering a run. The\nminimum allowed value is 60 seconds."
"description":"An optional list of system notification IDs to call when the duration of a run exceeds the threshold specified for the `RUN_DURATION_SECONDS` metric in the `health` field. A maximum of 3 destinations can be specified for the `on_duration_warning_threshold_exceeded` property.",
"description":"An optional list of system notification IDs to call when the run fails. A maximum of 3 destinations can be specified for the `on_failure` property.",
"description":"An optional list of system notification IDs to call when the run starts. A maximum of 3 destinations can be specified for the `on_start` property.",
"description":"An optional list of system notification IDs to call when the run completes successfully. A maximum of 3 destinations can be specified for the `on_success` property.",
"description":"The name of the entity to be served. The entity may be a model in the Databricks Model Registry, a model in the Unity Catalog (UC),\nor a function of type FEATURE_SPEC in the UC. If it is a UC object, the full name of the object should be given in the form of\n__catalog_name__.__schema_name__.__model_name__.\n"
},
"entity_version":{
"description":"The version of the model in Databricks Model Registry to be served or empty if the entity is a FEATURE_SPEC."
},
"environment_vars":{
"description":"An object containing a set of optional, user-specified environment variable key-value pairs used for serving this entity.\nNote: this is an experimental feature and subject to change. \nExample entity environment variables that refer to Databricks secrets: `{\"OPENAI_API_KEY\": \"{{secrets/my_scope/my_key}}\", \"DATABRICKS_TOKEN\": \"{{secrets/my_scope2/my_key2}}\"}`",
"additionalproperties":{
"description":""
}
},
"external_model":{
"description":"The external model to be served. NOTE: Only one of external_model and (entity_name, entity_version, workload_size, workload_type, and scale_to_zero_enabled)\ncan be specified with the latter set being used for custom model serving for a Databricks registered model. When an external_model is present, the served\nentities list can only have one served_entity object. For an existing endpoint with external_model, it can not be updated to an endpoint without external_model.\nIf the endpoint is created without external_model, users cannot update it to add external_model later.\n",
"description":"The Databricks secret key reference for an AWS Secret Access Key paired with the access key ID, with permissions to interact with Bedrock services."
"description":"Cohere Config. Only required if the provider is 'cohere'.",
"properties":{
"cohere_api_key":{
"description":"The Databricks secret key reference for a Cohere API key."
}
}
},
"databricks_model_serving_config":{
"description":"Databricks Model Serving Config. Only required if the provider is 'databricks-model-serving'.",
"properties":{
"databricks_api_token":{
"description":"The Databricks secret key reference for a Databricks API token that corresponds to a user or service\nprincipal with Can Query access to the model serving endpoint pointed to by this external model.\n"
"description":"OpenAI Config. Only required if the provider is 'openai'.",
"properties":{
"openai_api_base":{
"description":"This is the base URL for the OpenAI API (default: \"https://api.openai.com/v1\").\nFor Azure OpenAI, this field is required, and is the base URL for the Azure OpenAI API service\nprovided by Azure.\n"
},
"openai_api_key":{
"description":"The Databricks secret key reference for an OpenAI or Azure OpenAI API key."
},
"openai_api_type":{
"description":"This is an optional field to specify the type of OpenAI API to use.\nFor Azure OpenAI, this field is required, and adjust this parameter to represent the preferred security\naccess validation protocol. For access token validation, use azure. For authentication using Azure Active\nDirectory (Azure AD) use, azuread.\n"
},
"openai_api_version":{
"description":"This is an optional field to specify the OpenAI API version.\nFor Azure OpenAI, this field is required, and is the version of the Azure OpenAI service to\nutilize, specified by a date.\n"
},
"openai_deployment_name":{
"description":"This field is only required for Azure OpenAI and is the name of the deployment resource for the\nAzure OpenAI service.\n"
},
"openai_organization":{
"description":"This is an optional field to specify the organization in OpenAI or Azure OpenAI.\n"
}
}
},
"palm_config":{
"description":"PaLM Config. Only required if the provider is 'palm'.",
"properties":{
"palm_api_key":{
"description":"The Databricks secret key reference for a PaLM API key."
"description":"The name of the provider for the external model. Currently, the supported providers are 'ai21labs', 'anthropic',\n'amazon-bedrock', 'cohere', 'databricks-model-serving', 'openai', and 'palm'.\",\n"
"description":"The name of a served entity. It must be unique across an endpoint. A served entity name can consist of alphanumeric characters, dashes, and underscores.\nIf not specified for an external model, this field defaults to external_model.name, with '.' and ':' replaced with '-', and if not specified for other\nentities, it defaults to \u003centity-name\u003e-\u003centity-version\u003e.\n"
},
"scale_to_zero_enabled":{
"description":"Whether the compute resources for the served entity should scale down to zero."
},
"workload_size":{
"description":"The workload size of the served entity. The workload size corresponds to a range of provisioned concurrency that the compute autoscales between.\nA single unit of provisioned concurrency can process one request at a time.\nValid workload sizes are \"Small\" (4 - 4 provisioned concurrency), \"Medium\" (8 - 16 provisioned concurrency), and \"Large\" (16 - 64 provisioned concurrency).\nIf scale-to-zero is enabled, the lower bound of the provisioned concurrency for each workload size is 0.\n"
},
"workload_type":{
"description":"The workload type of the served entity. The workload type selects which type of compute to use in the endpoint. The default value for this parameter is\n\"CPU\". For deep learning workloads, GPU acceleration is available by selecting workload types like GPU_SMALL and others.\nSee the available [GPU types](https://docs.databricks.com/machine-learning/model-serving/create-manage-serving-endpoints.html#gpu-workload-types).\n"
"description":"(Deprecated, use served_entities instead) A list of served models for the endpoint to serve. A serving endpoint can have up to 15 served models.",
"description":"An object containing a set of optional, user-specified environment variable key-value pairs used for serving this model.\nNote: this is an experimental feature and subject to change. \nExample model environment variables that refer to Databricks secrets: `{\"OPENAI_API_KEY\": \"{{secrets/my_scope/my_key}}\", \"DATABRICKS_TOKEN\": \"{{secrets/my_scope2/my_key2}}\"}`",
"description":"ARN of the instance profile that the served model will use to access AWS resources."
},
"model_name":{
"description":"The name of the model in Databricks Model Registry to be served or if the model resides in Unity Catalog, the full name of model, \nin the form of __catalog_name__.__schema_name__.__model_name__.\n"
},
"model_version":{
"description":"The version of the model in Databricks Model Registry or Unity Catalog to be served."
},
"name":{
"description":"The name of a served model. It must be unique across an endpoint. If not specified, this field will default to \u003cmodel-name\u003e-\u003cmodel-version\u003e.\nA served model name can consist of alphanumeric characters, dashes, and underscores.\n"
},
"scale_to_zero_enabled":{
"description":"Whether the compute resources for the served model should scale down to zero."
},
"workload_size":{
"description":"The workload size of the served model. The workload size corresponds to a range of provisioned concurrency that the compute will autoscale between.\nA single unit of provisioned concurrency can process one request at a time.\nValid workload sizes are \"Small\" (4 - 4 provisioned concurrency), \"Medium\" (8 - 16 provisioned concurrency), and \"Large\" (16 - 64 provisioned concurrency).\nIf scale-to-zero is enabled, the lower bound of the provisioned concurrency for each workload size will be 0.\n"
"description":"The workload type of the served model. The workload type selects which type of compute to use in the endpoint. The default value for this parameter is\n\"CPU\". For deep learning workloads, GPU acceleration is available by selecting workload types like GPU_SMALL and others.\nSee the available [GPU types](https://docs.databricks.com/machine-learning/model-serving/create-manage-serving-endpoints.html#gpu-workload-types).\n"
"description":"The name of the serving endpoint. This field is required and must be unique across a Databricks workspace.\nAn endpoint name can consist of alphanumeric characters, dashes, and underscores.\n"
"description":"Rate limits to be applied to the serving endpoint. NOTE: only external and foundation model endpoints are supported as of now.",
"items":{
"description":"",
"properties":{
"calls":{
"description":"Used to specify how many calls are allowed for a key within the renewal_period."
},
"key":{
"description":"Key field for a serving endpoint rate limit. Currently, only 'user' and 'endpoint' are supported, with 'endpoint' being the default if not specified."
},
"renewal_period":{
"description":"Renewal period field for a serving endpoint rate limit. Currently, only 'minute' is supported."
"description":"A catalog in Unity Catalog to publish data from this pipeline to. If `target` is specified, tables in this pipeline are published to a `target` schema inside `catalog` (for example, `catalog`.`target`.`table`). If `target` is not specified, no data is published to Unity Catalog."
},
"channel":{
"description":"DLT Release Channel that specifies which version to use."
},
"clusters":{
"description":"Cluster settings for this pipeline deployment.",
"items":{
"description":"",
"properties":{
"apply_policy_default_values":{
"description":"Note: This field won't be persisted. Only API users will check this field."
},
"autoscale":{
"description":"Parameters needed in order to automatically scale clusters up and down based on load.\nNote: autoscaling works best with DB runtime versions 3.0 or later.",
"description":"The maximum number of workers to which the cluster can scale up when overloaded. `max_workers` must be strictly greater than `min_workers`."
"description":"The minimum number of workers the cluster can scale down to when underutilized.\nIt is also the initial number of workers the cluster will have after creation."
},
"mode":{
"description":"Databricks Enhanced Autoscaling optimizes cluster utilization by automatically\nallocating cluster resources based on workload volume, with minimal impact to\nthe data processing latency of your pipelines. Enhanced Autoscaling is available\nfor `updates` clusters only. The legacy autoscaling feature is used for `maintenance`\nclusters.\n"
"description":"Attributes related to clusters running on Amazon Web Services.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"ebs_volume_count":{
"description":"The number of volumes launched for each instance. Users can choose up to 10 volumes.\nThis feature is only enabled for supported node types. Legacy node types cannot specify\ncustom EBS volumes.\nFor node types with no instance store, at least one EBS volume needs to be specified;\notherwise, cluster creation will fail.\n\nThese EBS volumes will be mounted at `/ebs0`, `/ebs1`, and etc.\nInstance store volumes will be mounted at `/local_disk0`, `/local_disk1`, and etc.\n\nIf EBS volumes are attached, Databricks will configure Spark to use only the EBS volumes for\nscratch storage because heterogenously sized scratch devices can lead to inefficient disk\nutilization. If no EBS volumes are attached, Databricks will configure Spark to use instance\nstore volumes.\n\nPlease note that if EBS volumes are specified, then the Spark configuration `spark.local.dir`\nwill be overridden."
"description":"If using gp3 volumes, what IOPS to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The size of each EBS volume (in GiB) launched for each instance. For general purpose\nSSD, this value must be within the range 100 - 4096. For throughput optimized HDD,\nthis value must be within the range 500 - 4096."
"description":"If using gp3 volumes, what throughput to use for the disk. If this is not set, the maximum performance of a gp2 volume with the same volume size will be used."
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nIf this value is greater than 0, the cluster driver node in particular will be placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"instance_profile_arn":{
"description":"Nodes for this cluster will only be placed on AWS instances with this instance profile. If\nommitted, nodes will be placed on instances without an IAM instance profile. The instance\nprofile must have previously been added to the Databricks environment by an account\nadministrator.\n\nThis feature may only be available to certain customer plans.\n\nIf this field is ommitted, we will pull in the default from the conf if it exists."
},
"spot_bid_price_percent":{
"description":"The bid price for AWS spot instances, as a percentage of the corresponding instance type's\non-demand price.\nFor example, if this field is set to 50, and the cluster needs a new `r3.xlarge` spot\ninstance, then the bid price is half of the price of\non-demand `r3.xlarge` instances. Similarly, if this field is set to 200, the bid price is twice\nthe price of on-demand `r3.xlarge` instances. If not specified, the default value is 100.\nWhen spot instances are requested for this cluster, only spot instances whose bid price\npercentage matches this field will be considered.\nNote that, for safety, we enforce this field to be no more than 10000.\n\nThe default value and documentation here should be kept consistent with\nCommonConf.defaultSpotBidPricePercent and CommonConf.maxSpotBidPricePercent."
},
"zone_id":{
"description":"Identifier for the availability zone/datacenter in which the cluster resides.\nThis string will be of a form like \"us-west-2a\". The provided availability\nzone must be in the same region as the Databricks deployment. For example, \"us-west-2a\"\nis not a valid zone id if the Databricks deployment resides in the \"us-east-1\" region.\nThis is an optional field at cluster creation, and if not specified, a default zone will be used.\nIf the zone specified is \"auto\", will try to place cluster in a zone with high availability,\nand will retry placement in a different AZ if there is not enough capacity.\nThe list of available zones as well as the default value can be found by using the\n`List Zones` method."
}
}
},
"azure_attributes":{
"description":"Attributes related to clusters running on Microsoft Azure.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"first_on_demand":{
"description":"The first `first_on_demand` nodes of the cluster will be placed on on-demand instances.\nThis value should be greater than 0, to make sure the cluster driver node is placed on an\non-demand instance. If this value is greater than or equal to the current cluster size, all\nnodes will be placed on on-demand instances. If this value is less than the current cluster\nsize, `first_on_demand` nodes will be placed on on-demand instances and the remainder will\nbe placed on `availability` instances. Note that this value does not affect\ncluster size and cannot currently be mutated over the lifetime of a cluster."
},
"log_analytics_info":{
"description":"Defines values necessary to configure and run Azure Log Analytics agent",
"properties":{
"log_analytics_primary_key":{
"description":"\u003cneeds content added\u003e"
},
"log_analytics_workspace_id":{
"description":"\u003cneeds content added\u003e"
}
}
},
"spot_bid_max_price":{
"description":"The max bid price to be used for Azure spot instances.\nThe Max price for the bid cannot be higher than the on-demand price of the instance.\nIf not specified, the default value is -1, which specifies that the instance cannot be evicted\non the basis of price, and only on the basis of availability. Further, the value should \u003e 0 or -1."
}
}
},
"cluster_log_conf":{
"description":"The configuration for delivering spark logs to a long-term storage destination.\nOnly dbfs destinations are supported. Only one destination can be specified\nfor one cluster. If the conf is given, the logs will be delivered to the destination every\n`5 mins`. The destination of driver logs is `$destination/$clusterId/driver`, while\nthe destination of executor logs is `$destination/$clusterId/executor`.\n",
"properties":{
"dbfs":{
"description":"destination needs to be provided. e.g.\n`{ \"dbfs\" : { \"destination\" : \"dbfs:/home/cluster_log\" } }`",
"properties":{
"destination":{
"description":"dbfs destination, e.g. `dbfs:/my/path`"
}
}
},
"s3":{
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
},
"destination":{
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
},
"enable_encryption":{
"description":"(Optional) Flag to enable server side encryption, `false` by default."
},
"encryption_type":{
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
}
}
}
}
},
"custom_tags":{
"description":"Additional tags for cluster resources. Databricks will tag all cluster resources (e.g., AWS\ninstances and EBS volumes) with these tags in addition to `default_tags`. Notes:\n\n- Currently, Databricks allows at most 45 custom tags\n\n- Clusters can only reuse cloud resources if the resources' tags are a subset of the cluster tags",
"additionalproperties":{
"description":""
}
},
"driver_instance_pool_id":{
"description":"The optional ID of the instance pool for the driver of the cluster belongs.\nThe pool cluster uses the instance pool with id (instance_pool_id) if the driver pool is not\nassigned."
},
"driver_node_type_id":{
"description":"The node type of the Spark driver.\nNote that this field is optional; if unset, the driver node type will be set as the same value\nas `node_type_id` defined above."
},
"gcp_attributes":{
"description":"Attributes related to clusters running on Google Cloud Platform.\nIf not specified at cluster creation, a set of default values will be used.",
"properties":{
"availability":{
"description":""
},
"boot_disk_size":{
"description":"boot disk size in GB"
},
"google_service_account":{
"description":"If provided, the cluster will impersonate the google service account when accessing\ngcloud services (like GCS). The google service account\nmust have previously been added to the Databricks environment by an account\nadministrator."
},
"local_ssd_count":{
"description":"If provided, each node (workers and driver) in the cluster will have this number of local SSDs attached. Each local SSD is 375GB in size. Refer to [GCP documentation](https://cloud.google.com/compute/docs/disks/local-ssd#choose_number_local_ssds) for the supported number of local SSDs for each instance type."
"description":"This field determines whether the spark executors will be scheduled to run on preemptible VMs (when set to true) versus standard compute engine VMs (when set to false; default).\nNote: Soon to be deprecated, use the availability field instead."
},
"zone_id":{
"description":"Identifier for the availability zone in which the cluster resides.\nThis can be one of the following:\n- \"HA\" =\u003e High availability, spread nodes across availability zones for a Databricks deployment region [default]\n- \"AUTO\" =\u003e Databricks picks an availability zone to schedule the cluster on.\n- A GCP availability zone =\u003e Pick One of the available zones for (machine type + region) from https://cloud.google.com/compute/docs/regions-zones."
"description":"The configuration for storing init scripts. Any number of destinations can be specified. The scripts are executed sequentially in the order provided. If `cluster_log_conf` is specified, init script logs are sent to `\u003cdestination\u003e/\u003ccluster-ID\u003e/init_scripts`.",
"description":"destination needs to be provided. e.g.\n`{ \"abfss\" : { \"destination\" : \"abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e\" } }",
"properties":{
"destination":{
"description":"abfss destination, e.g. `abfss://\u003ccontainer-name\u003e@\u003cstorage-account-name\u003e.dfs.core.windows.net/\u003cdirectory-name\u003e`."
"description":"destination and either the region or endpoint need to be provided. e.g.\n`{ \"s3\": { \"destination\" : \"s3://cluster_log_bucket/prefix\", \"region\" : \"us-west-2\" } }`\nCluster iam role is used to access s3, please make sure the cluster iam role in\n`instance_profile_arn` has permission to write data to the s3 destination.",
"properties":{
"canned_acl":{
"description":"(Optional) Set canned access control list for the logs, e.g. `bucket-owner-full-control`.\nIf `canned_cal` is set, please make sure the cluster iam role has `s3:PutObjectAcl` permission on\nthe destination bucket and prefix. The full list of possible canned acl can be found at\nhttp://docs.aws.amazon.com/AmazonS3/latest/dev/acl-overview.html#canned-acl.\nPlease also note that by default only the object owner gets full controls. If you are using cross account\nrole for writing data, you may want to set `bucket-owner-full-control` to make bucket owner able to\nread the logs."
},
"destination":{
"description":"S3 destination, e.g. `s3://my-bucket/some-prefix` Note that logs will be delivered using\ncluster iam role, please make sure you set cluster iam role and the role has write access to the\ndestination. Please also note that you cannot use AWS keys to deliver logs."
},
"enable_encryption":{
"description":"(Optional) Flag to enable server side encryption, `false` by default."
},
"encryption_type":{
"description":"(Optional) The encryption type, it could be `sse-s3` or `sse-kms`. It will be used only when\nencryption is enabled and the default type is `sse-s3`."
},
"endpoint":{
"description":"S3 endpoint, e.g. `https://s3-us-west-2.amazonaws.com`. Either region or endpoint needs to be set.\nIf both are set, endpoint will be used."
},
"kms_key":{
"description":"(Optional) Kms key which will be used if encryption is enabled and encryption type is set to `sse-kms`."
},
"region":{
"description":"S3 region, e.g. `us-west-2`. Either region or endpoint needs to be set. If both are set,\nendpoint will be used."
}
}
},
"volumes":{
"description":"destination needs to be provided. e.g.\n`{ \"volumes\" : { \"destination\" : \"/Volumes/my-init.sh\" } }`",
"properties":{
"destination":{
"description":"Unity Catalog Volumes file destination, e.g. `/Volumes/my-init.sh`"
}
}
},
"workspace":{
"description":"destination needs to be provided. e.g.\n`{ \"workspace\" : { \"destination\" : \"/Users/user1@databricks.com/my-init.sh\" } }`",
"properties":{
"destination":{
"description":"workspace files destination, e.g. `/Users/user1@databricks.com/my-init.sh`"
"description":"The optional ID of the instance pool to which the cluster belongs."
},
"label":{
"description":"A label for the cluster specification, either `default` to configure the default cluster, or `maintenance` to configure the maintenance cluster. This field is optional. The default value is `default`."
},
"node_type_id":{
"description":"This field encodes, through a single value, the resources available to each of\nthe Spark nodes in this cluster. For example, the Spark nodes can be provisioned\nand optimized for memory or compute intensive workloads. A list of available node\ntypes can be retrieved by using the :method:clusters/listNodeTypes API call.\n"
},
"num_workers":{
"description":"Number of worker nodes that this cluster should have. A cluster has one Spark Driver\nand `num_workers` Executors for a total of `num_workers` + 1 Spark nodes.\n\nNote: When reading the properties of a cluster, this field reflects the desired number\nof workers rather than the actual current number of workers. For instance, if a cluster\nis resized from 5 to 10 workers, this field will immediately be updated to reflect\nthe target size of 10 workers, whereas the workers listed in `spark_info` will gradually\nincrease from 5 to 10 as the new nodes are provisioned."
},
"policy_id":{
"description":"The ID of the cluster policy used to create the cluster if applicable."
},
"spark_conf":{
"description":"An object containing a set of optional, user-specified Spark configuration key-value pairs.\nSee :method:clusters/create for more details.\n",
"additionalproperties":{
"description":""
}
},
"spark_env_vars":{
"description":"An object containing a set of optional, user-specified environment variable key-value pairs.\nPlease note that key-value pair of the form (X,Y) will be exported as is (i.e.,\n`export X='Y'`) while launching the driver and workers.\n\nIn order to specify an additional set of `SPARK_DAEMON_JAVA_OPTS`, we recommend appending\nthem to `$SPARK_DAEMON_JAVA_OPTS` as shown in the example below. This ensures that all\ndefault databricks managed environmental variables are included as well.\n\nExample Spark environment variables:\n`{\"SPARK_WORKER_MEMORY\": \"28000m\", \"SPARK_LOCAL_DIRS\": \"/local_disk0\"}` or\n`{\"SPARK_DAEMON_JAVA_OPTS\": \"$SPARK_DAEMON_JAVA_OPTS -Dspark.shuffle.service.enabled=true\"}`",
"additionalproperties":{
"description":""
}
},
"ssh_public_keys":{
"description":"SSH public key contents that will be added to each Spark node in this cluster. The\ncorresponding private keys can be used to login with the user name `ubuntu` on port `2200`.\nUp to 10 keys can be specified.",
"description":"The configuration for a managed ingestion pipeline. These settings cannot be used with the 'libraries', 'target' or 'catalog' settings.",
"properties":{
"connection_name":{
"description":"Immutable. The Unity Catalog connection this ingestion pipeline uses to communicate with the source. Specify either ingestion_gateway_id or connection_name."
},
"ingestion_gateway_id":{
"description":"Immutable. Identifier for the ingestion gateway used by this ingestion pipeline to communicate with the source. Specify either ingestion_gateway_id or connection_name."
},
"objects":{
"description":"Required. Settings specifying tables to replicate and the destination for the replicated tables.",
"items":{
"description":"",
"properties":{
"schema":{
"description":"Select tables from a specific source schema.",
"properties":{
"destination_catalog":{
"description":"Required. Destination catalog to store tables."
},
"destination_schema":{
"description":"Required. Destination schema to store tables in. Tables with the same name as the source tables are created in this destination schema. The pipeline fails If a table with the same name already exists."
},
"source_catalog":{
"description":"The source catalog name. Might be optional depending on the type of source."
},
"source_schema":{
"description":"Required. Schema name in the source database."
}
}
},
"table":{
"description":"Select tables from a specific source table.",
"properties":{
"destination_catalog":{
"description":"Required. Destination catalog to store table."
},
"destination_schema":{
"description":"Required. Destination schema to store table."
},
"destination_table":{
"description":"Optional. Destination table name. The pipeline fails If a table with that name already exists. If not set, the source table name is used."
},
"source_catalog":{
"description":"Source catalog name. Might be optional depending on the type of source."
},
"source_schema":{
"description":"Schema name in the source database. Might be optional depending on the type of source."
},
"source_table":{
"description":"Required. Table name in the source database."
"description":"Libraries or code needed by this deployment.",
"items":{
"description":"",
"properties":{
"file":{
"description":"The path to a file that defines a pipeline and is stored in the Databricks Repos.\n",
"properties":{
"path":{
"description":"The absolute path of the file."
}
}
},
"jar":{
"description":"URI of the jar to be installed. Currently only DBFS is supported.\n"
},
"maven":{
"description":"Specification of a maven library to be installed.\n",
"properties":{
"coordinates":{
"description":"Gradle-style maven coordinates. For example: \"org.jsoup:jsoup:1.7.2\"."
},
"exclusions":{
"description":"List of dependences to exclude. For example: `[\"slf4j:slf4j\", \"*:hadoop-client\"]`.\n\nMaven dependency exclusions:\nhttps://maven.apache.org/guides/introduction/introduction-to-optional-and-excludes-dependencies.html.",
"items":{
"description":""
}
},
"repo":{
"description":"Maven repo to install the Maven package from. If omitted, both Maven Central Repository\nand Spark Packages are searched."
}
}
},
"notebook":{
"description":"The path to a notebook that defines a pipeline and is stored in the \u003cDatabricks\u003e workspace.\n",
"properties":{
"path":{
"description":"The absolute path of the notebook."
"description":"Friendly identifier for this pipeline."
},
"notifications":{
"description":"List of notification settings for this pipeline.",
"items":{
"description":"",
"properties":{
"alerts":{
"description":"A list of alerts that trigger the sending of notifications to the configured\ndestinations. The supported alerts are:\n\n* `on-update-success`: A pipeline update completes successfully.\n* `on-update-failure`: Each time a pipeline update fails.\n* `on-update-fatal-failure`: A pipeline update fails with a non-retryable (fatal) error.\n* `on-flow-failure`: A single data flow fails.\n",
"description":"Target schema (database) to add tables in this pipeline to. If not specified, no data is published to the Hive metastore or Unity Catalog. To publish to Unity Catalog, also specify `catalog`."