Query history system table reference

Preview

This system table is in Public Preview. To access the table, the schema must be enabled in your system catalog. For more information, see Enable system table schemas.

This article includes information on the query history system table, including an outline of the table’s schema.

Important

To access the query history system table, you must enable the query schema. For instructions on enabling system schemas, see Enable system table schemas.

Table path: This system table is located at system.query.history.

Using the query history table

The query history table includes records for every SQL statement run using SQL warehouses. The table includes account-wide records from all workspaces in the same region from which you access the table.

By default, only admins have access to the system table. If you would like to share the table’s data with a user or group, Databricks recommends creating a dynamic view for each user or group. See Create a dynamic view.

Query history system table schema

The query history table uses the following schema:

Column name

Data type

Description

Example

account_id

string

ID of the account.

11e22ba4-87b9-4cc2

-9770-d10b894b7118

workspace_id

string

The ID of the workspace where the query was run.

1234567890123456

statement_id

string

The ID that uniquely identifies the execution of the statement. You can use this ID to find the statement execution in the Query History UI.

7a99b43c-b46c-432b

-b0a7-814217701909

session_id

string

The Spark session ID.

01234567-cr06-a2mp

-t0nd-a14ecfb5a9c2

execution_status

string

The statement termination state. Possible values are:

  • FINISHED: execution was successful

  • FAILED: execution failed with the reason for failure described in the accompanying error message

  • CANCELED: execution was canceled

FINISHED

compute

struct

A struct that represents the type of compute resource used to run the statement and the ID of the resource where applicable. The type value will be either WAREHOUSE or SERVERLESS_COMPUTE.

{

type: WAREHOUSE,

cluster_id: NULL,

warehouse_id: ec58ee3772e8d305

}

executed_by_user_id

string

The ID of the user who ran the statement.

2967555311742259

executed_by

string

The email address or username of the user who ran the statement.

example@databricks.com

statement_text

string

Text of the SQL statement. If you have configured customer-managed keys, statement_text is empty.

SELECT 1

statement_type

string

The statement type. For example: ALTER, COPY, and`INSERT`.

SELECT

error_message

string

Message describing the error condition. If you have configured customer-managed keys, error_message is empty.

[INSUFFICIENT_PERMISSIONS]

Insufficient privileges:

User does not have

permission SELECT on table

'default.nyctaxi_trips'.

client_application

string

Client application that ran the statement. For example: Databricks SQL Editor, Tableau, and Power BI. This field is derived from information provided by client applications. While values are expected to remain static over time, this cannot be guaranteed.

Databricks SQL Editor

client_driver

string

The connector used to connect to Databricks to run the statement. For example: Databricks SQL Driver for Go, Databricks ODBC Driver, Databricks JDBC Driver.

Databricks JDBC Driver

total_duration_ms

bigint

Total execution time of the statement in milliseconds ( excluding result fetch time ).

1

waiting_for_compute_duration_ms

bigint

Time spent waiting for compute resources to be provisioned in milliseconds.

1

waiting_at_capacity_duration_ms

bigint

Time spent waiting in queue for available compute capacity in milliseconds.

1

execution_duration_ms

bigint

Time spent executing the statement in milliseconds.

1

compilation_duration_ms

bigint

Time spent loading metadata and optimizing the statement in milliseconds.

1

total_task_duration_ms

bigint

The sum of all task durations in milliseconds. This time represents the combined time it took to run the query across all cores of all nodes. It can be significantly longer than the wall-clock duration if multiple tasks are executed in parallel. It can be shorter than the wall-clock duration if tasks wait for available nodes.

1

result_fetch_duration_ms

bigint

Time spent, in milliseconds, fetching the statement results after the execution finished.

1

start_time

timestamp

The time when Databricks received the request. Timezone information is recorded at the end of the value with +00:00 representing UTC.

2022-12-05T00:00:00.000+0000

end_time

timestamp

The time the statement execution ended, excluding result fetch time. Timezone information is recorded at the end of the value with +00:00 representing UTC.

2022-12-05T00:00:00.000+00:00

update_time

timestamp

The time the statement last received a progress update. Timezone information is recorded at the end of the value with +00:00 representing UTC.

2022-12-05T00:00:00.000+00:00

read_partitions

bigint

The number of partitions read after pruning.

1

pruned_files

bigint

The number of pruned files.

1

read_files

bigint

The number of files read after pruning.

1

read_rows

bigint

Total number of rows read by the statement.

1

produced_rows

bigint

Total number of rows returned by the statement.

1

read_bytes

bigint

Total size of data read by the statement in bytes.

1

read_io_cache_percent

int

The percentage of bytes of persistent data read from the IO cache.

50

from_result_cache

boolean

TRUE indicates that the statement result was fetched from the cache.

TRUE

spilled_local_bytes

bigint

Size of data, in bytes, temporarily written to disk while executing the statement.

1

written_bytes

bigint

The size in bytes of persistent data written to cloud object storage.

1

shuffle_read_bytes

bigint

The total amount of data in bytes sent over the network.

1

query_source

struct

A struct that contains key-value pairs representing one or more Databricks entities that were involved in the execution of this statement, such as jobs, notebooks, or dashboards. This field only records Databricks entities.

{ job_info: {     job_id: 64361233243479     job_run_id: 887406461287882     job_task_key: “job_task_1”     job_task_run_id: 110378410199121 }

executed_as

string

The name of the user or service principal whose privilege was used to run the statement.

example@databricks.com

executed_as_user_id

string

The ID of the user or service principal whose privilege was used to run the statement.

2967555311742259

View the query profile for a record

To navigate to a query’s query profile based on a record in the query history table, do the following:

  1. Identify the record of interest, then copy the record’s statement_id.

  2. Reference the record’s workspace_id to ensure you are logged in to the same workspace as the record.

  3. Click History Icon Query History in the workspace sidebar.

  4. In the Statement ID field, paste the statement_id on the record.

  5. Click the name of a query. An overview of query metrics appears.

  6. Click See query profile.