Account Usage

In the SNOWFLAKE database, the ACCOUNT_USAGE and READER_ACCOUNT_USAGE schemas enable querying object metadata, as well as historical usage data, for your account and all reader accounts (if any) associated with the account.

Overview of Account Usage schemas

ACCOUNT_USAGE:

Views that display object metadata and usage metrics for your account.

In general, these views mirror the corresponding views and table functions in the Snowflake Snowflake Information Schema, but with the following differences:

  • Records for dropped objects included in each view.

  • Longer retention time for historical usage data.

  • Data latency.

For more details, see Differences Between Account Usage and Information Schema (in this topic). For more details about each view, see ACCOUNT_USAGE Views (in this topic).

READER_ACCOUNT_USAGE:

Views that display object metadata and usage metrics for all the reader accounts that have been created for your account (as a Secure Data Sharing provider).

These views are a small subset of the ACCOUNT_USAGE views that apply to reader accounts, with the exception of the RESOURCE_MONITORS view, which is available only in READER_ACCOUNT_USAGE. Also, each view in this schema contains an additional READER_ACCOUNT_NAME column for filtering results by reader account.

For more details about each view, see READER_ACCOUNT_USAGE Views (in this topic).

Note that these views are empty if no reader accounts have been created for your account.

Differences between Account Usage and Information Schema

The Account Usage views and the corresponding views (or table functions) in the Snowflake Information Schema utilize identical structures and naming conventions, but with some key differences, as described in this section:

Difference

Account Usage

Information Schema

Includes dropped objects

Yes

No

Latency of data

From 45 minutes to 3 hours (varies by view)

None

Retention of historical data

1 Year

From 7 days to 6 months (varies by view/table function)

For more details, see the following sections.

Dropped object records

Account usage views include records for all objects that have been dropped. Many of the views for object types contain an additional DELETED column that displays the timestamp when the object was dropped.

In addition, because objects can be dropped and recreated with the same name, to differentiate between objects records that have the same name, the account usage views include ID columns, where appropriate, that display the internal IDs generated and assigned to each record by the system.

If a column for an object name (e.g. the TABLE_NAME column) is NULL, that object has been dropped. In this case, the columns for the names and IDs of the parent objects (e.g. the DATABASE_NAME and SCHEMA_NAME columns) are also NULL.

Note that in some views, the column for the object name might still contain the name of the object, even if the object has been dropped.

Data latency

Due to the process of extracting the data from Snowflake’s internal metadata store, the account usage views have some natural latency:

  • For most of the views, the latency is 2 hours (120 minutes).

  • For the remaining views, the latency varies between 45 minutes and 3 hours.

For details, see the list of views for each schema (in this topic). Also, note that these are all maximum time lengths; the actual latency for a given view when the view is queried may be less.

In contrast, views/table functions in the Snowflake Information Schema do not have any latency.

Historical data retention

Certain account usage views provide historical usage metrics. The retention period for these views is 1 year (365 days).

In contrast, the corresponding views and table functions in the Snowflake Information Schema have much shorter retention periods, ranging from 7 days to 6 months, depending on the view.

ACCOUNT_USAGE views

The ACCOUNT_USAGE schema contains the following views:

View

Type

Latency [1]

Edition [3]

Notes

ACCESS_HISTORY

Historical

3 hours

Enterprise Edition (or higher)

Data retained for 1 year.

AGGREGATE_ACCESS_HISTORY

Historical

3 hours

Enterprise Edition (or higher)

Data retained for 1 year.

AGGREGATE_QUERY_HISTORY

Historical

3 hours

AGGREGATION_POLICIES

Object

2 hours

ALERT_HISTORY

Historical

3 hours

Data retained for 1 year.

AUTOMATIC_CLUSTERING_HISTORY

Historical

3 hours

Data retained for 1 year.

BLOCK_STORAGE_HISTORY

Historical

3 hours

Data retained for 1 year.

CLASS_INSTANCES

Object

3 hours

Data retained for 1 year.

CLASSES

Object

3 hours

Data retained for 1 year.

COLUMNS

Object

90 minutes

COMPLETE_TASK_GRAPHS

Historical

45 minutes

Data retained for 1 year.

COMPUTE_POOLS

Historical

3 hours

Data retained for 1 year.

COPY_HISTORY

Historical

2 hours [2]

Data retained for 1 year.

CORTEX_FINE_TUNING_USAGE_HISTORY

Historical

1 hour

Data retained for 1 year.

CORTEX_FUNCTIONS_USAGE_HISTORY

Historical

Data retained for 1 year.

CORTEX_SEARCH_SERVING_USAGE_HISTORY

Historical

1 hour

Data retained for 1 year.

DATA_CLASSIFICATION_LATEST

Object

3 hours

Enterprise Edition (or higher)

Data retained for as long as the table exists.

DATA_METRIC_FUNCTION_REFERENCES

Object

3 hours

Enterprise Edition (or higher)

DATA_QUALITY_MONITORING_USAGE_HISTORY

Historical

3 hours

Enterprise Edition (or higher)

Data retained for 1 year.

DATABASES

Object

3 hours

DATABASE_REPLICATION_USAGE_HISTORY

Historical

3 hours

Data retained for 1 year.

DATABASE_STORAGE_USAGE_HISTORY

Historical

3 hours

Data retained for 1 year.

DATA_TRANSFER_HISTORY

Historical

2 hours

Data retained for 1 year.

DOCUMENT_AI_USAGE_HISTORY

Historical

Data retained for 1 year.

DYNAMIC_TABLE_REFRESH_HISTORY

Historical

3 hours

Data retained for 1 year.

ELEMENT_TYPES

Object

90 minutes

EVENT_USAGE_HISTORY

Historical

3 hours

Data retained for 1 year.

EXTERNAL_ACCESS_HISTORY

Historical

2 hours

Data retained for 1 year.

FIELDS

Object

90 minutes

FILE_FORMATS

Object

2 hours

FUNCTIONS

Object

2 hours

GRANTS_TO_ROLES

Object

2 hours

GRANTS_TO_USERS

Object

2 hours

HYBRID_TABLES

Object

3 hours

HYBRID_TABLE_USAGE_HISTORY

Historical

3 hours

Data retained for 1 year.

INDEX_COLUMNS

Object

3 hours

INDEXES

Object

3 hours

INTERNAL_DATA_TRANSFER_HISTORY

Historical

3 hours

LOAD_HISTORY

Historical

90 minutes [2]

Data retained for 1 year.

LOCK_WAIT_HISTORY

Historical

3 hours

Data retained for 1 year.

LOGIN_HISTORY

Historical

2 hours

Data retained for 1 year.

MASKING_POLICIES

Object

2 hours

MATERIALIZED_VIEW_REFRESH_HISTORY

Historical

3 hours

Enterprise Edition (or higher)

Data retained for 1 year.

METERING_DAILY_HISTORY

Historical

3 hours

Data retained for 1 year.

METERING_HISTORY

Historical

3 hours

Data retained for 1 year.

NETWORK_POLICIES

Object

2 hours

NETWORK_RULE_REFERENCES

Object

2 hours

NETWORK_RULES

Object

2 hours

OBJECT_DEPENDENCIES

Historical

3 hours

OUTBOUND_PRIVATELINK_ENDPOINTS

Object

2 hours

Business Critical (or higher)

Data for deleted endpoints is retained for 1 year.

PASSWORD_POLICIES

Object

2 hours

PIPES

Object

2 hours

PIPE_USAGE_HISTORY

Historical

3 hours

Data retained for 1 year.

POLICY_REFERENCES

Object

2 hours

PRIVACY_BUDGETS

Object

24 hours

Enterprise Edition (or higher)

PRIVACY_POLICIES

Object

2 hours

Enterprise Edition (or higher)

PROCEDURES

Object

2 hours

PROJECTION_POLICIES

Object

2 hours

QUERY_ACCELERATION_ELIGIBLE

Historical

3 hours

Data retained for 1 year.

QUERY_ACCELERATION_HISTORY

Historical

3 hours

Enterprise Edition (or higher)

Data retained for 1 year.

QUERY_ATTRIBUTION_HISTORY

Historical

6 hours

Data retained for 1 year.

QUERY_HISTORY

Historical

45 minutes

Data retained for 1 year.

REFERENTIAL_CONSTRAINTS

Object

2 hours

REPLICATION_GROUP_REFRESH_HISTORY

Historical

3 hours

Data retained for 1 year.

REPLICATION_GROUP_USAGE_HISTORY

Historical

3 hours

Data retained for 1 year.

REPLICATION_USAGE_HISTORY

Historical

3 hours

Data retained for 1 year.

ROLES

Object

2 hours

ROW_ACCESS_POLICIES

Object

2 hours

SCHEMATA

Object

2 hours

SEARCH_OPTIMIZATION_BENEFITS

Historical

6 hours

Enterprise Edition (or higher)

Data retained for 1 year.

SEARCH_OPTIMIZATION_HISTORY

Historical

3 hours

Enterprise Edition (or higher)

Data retained for 1 year.

SECRETS

Object

2 hours

SEQUENCES

Object

2 hours

SERVERLESS_ALERT_HISTORY

Historical

3 hours

Data retained for 1 year.

SERVERLESS_TASK_HISTORY

Historical

3 hours

Data retained for 1 year.

SERVICES

Object

3 hours

Data retained for 1 year.

SESSION_POLICIES

Object

2 hours

SESSIONS

Historical

3 hours

Data retained for 1 year.

SNOWPARK_CONTAINER_SERVICES_HISTORY

Historical

3 hour

Data retained for 1 year.

SNOWPIPE_STREAMING_CLIENT_HISTORY

Historical

2 hours

Data retained for 1 year.

SNOWPIPE_STREAMING_FILE_MIGRATION_HISTORY

Historical

12 hours

Data retained for 1 year.

STAGES

Object

2 hours

STAGE_STORAGE_USAGE_HISTORY

Historical

2 hours

Data retained for 1 year.

STORAGE_USAGE

Historical

2 hours

Combined usage across all database tables and internal stages. Data retained for 1 year.

TABLES

Object

90 minutes

TABLE_CONSTRAINTS

Object

2 hours

TABLE_DML_HISTORY

Historical

6 hours

Data retained for 1 year.

TABLE_PRUNING_HISTORY

Historical

6 hours

Data retained for 1 year.

TABLE_STORAGE_METRICS

Object

90 minutes

TAG_REFERENCES

Object

2 hours

TAGS

Object

2 hours

TASK_HISTORY

Historical

45 minutes

TASK_VERSIONS

Object

3 hours

USERS

Object

2 hours

VIEWS

Object

90 minutes

WAREHOUSE_EVENTS_HISTORY

Historical

3 hours

Data retained for 1 year.

WAREHOUSE_LOAD_HISTORY

Historical

3 hours

Data retained for 1 year.

WAREHOUSE_METERING_HISTORY

Historical

3 hours

Data retained for 1 year.

[1] All latency times are approximate; in some instances, the actual latency may be lower.

[2] The latency of the views for a given table may be up to 2 days if both of the following conditions are true: 1. Fewer than 32 DML statements have been added to the given table since it was last updated in LOAD_HISTORY or COPY_HISTORY. 2. Fewer than 100 rows have been added to the given table since it was last updated in LOAD_HISTORY or COPY_HISTORY.

[3] Unless otherwise noted, the Account Usage view is available to all accounts.

Account Usage table functions

Currently, Snowflake supports one ACCOUNT_USAGE table function:

Table Function

Data Retention

Notes

TAG_REFERENCES_WITH_LINEAGE

N/A

Results are only returned for the role that has access to the specified object.

Note

Similar to the Account Usage views, please account for latency when calling this table function. The expected latency for this table function is similar to the latency for the TAG_REFERENCES view.

READER_ACCOUNT_USAGE views

The READER_ACCOUNT_USAGE schema contains the following views:

View

Type

Latency [1]

Notes

LOGIN_HISTORY

Historical

2 hours

Data retained for 1 year.

QUERY_HISTORY

Historical

45 minutes

Data retained for 1 year.

RESOURCE_MONITORS

Object

2 hours

STORAGE_USAGE

Historical

2 hours

Combined usage across all database tables and internal stages. Data retained for 1 year.

WAREHOUSE_METERING_HISTORY

Historical

3 hours

Data retained for 1 year.

[1] All latency times are approximate; in some instances, the actual latency may be lower.

Enabling other roles to use schemas in the SNOWFLAKE database

By default, the SNOWFLAKE database is visible to all users; however, access to schemas in this database can be granted by a user with the ACCOUNTADMIN role using either of the following approaches:

Important

Be careful when granting privileges to the SNOWFLAKE database within an account that has the ORGADMIN role enabled. Within that account, anyone with privileges to the SNOWFLAKE database can access the ORGANIZATION_USAGE schema.

To avoid unintentionally granting access to organization-level data, consider using SNOWFLAKE database roles to grant access to views in the ACCOUNT_USAGE schema.

For more information, refer to GRANT DATABASE ROLE.

For example, to grant IMPORTED PRIVILEGES on the SNOWFLAKE database to two additional roles:

USE ROLE ACCOUNTADMIN;

GRANT IMPORTED PRIVILEGES ON DATABASE SNOWFLAKE TO ROLE SYSADMIN;
GRANT IMPORTED PRIVILEGES ON DATABASE SNOWFLAKE TO ROLE customrole1;
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A user with that is granted the customrole1 role can query a view as follows:

USE ROLE customrole1;

SELECT database_name, database_owner FROM SNOWFLAKE.ACCOUNT_USAGE.DATABASES;
Copy

For additional examples, see Querying the Account Usage views.

ACCOUNT_USAGE schema SNOWFLAKE database roles

In addition, you can grant finer control to accounts using SNOWFLAKE Database roles. For more information on database roles, see database roles.

ACCOUNT_USAGE schemas have four defined SNOWFLAKE database roles, each granted the SELECT privilege on specific views.

Role

Purpose and Description

OBJECT_VIEWER

The OBJECT_VIEWER role provides visibility into object metadata.

USAGE_VIEWER

The USAGE_VIEWER role provides visibility into historical usage information.

GOVERNANCE_VIEWER

The GOVERNANCE_VIEWER role provides visibility into policy related information.

SECURITY_VIEWER

The SECURITY_VIEWER role provides visibility into security based information.

ACCOUNT_USAGE Views by Database Role

The OBJECT_VIEWER, USAGE_VIEWER, GOVERNANCE_VIEWER, and SECURITY_VIEWER roles have the SELECT privilege to query Account Usage views in the shared SNOWFLAKE database.

A checkmark (i.e. ✔) indicates the role is granted the SELECT privilege on the view.

View

OBJECT_VIEWER Role

USAGE_VIEWER Role

GOVERNANCE_VIEWER Role

SECURITY_VIEWER Role

COLUMNS view

COMPLETE_TASK_GRAPHS view

DATABASES view

ELEMENT_TYPES view

FIELDS view

FILE_FORMATS view

FUNCTIONS view

HYBRID_TABLES view

INDEXES view

INDEX_COLUMNS view

OBJECT_DEPENDENCIES view

PIPES view

PROCEDURES view

REFERENTIAL_CONSTRAINTS view

SCHEMATA view

SEQUENCES view

SERVICES view

STAGES view

TABLE_CONSTRAINTS view

TABLES view

TAGS view

VIEWS view

AUTOMATIC_CLUSTERING_HISTORY view

BLOCK_STORAGE_HISTORY view

CLASS_INSTANCES view

CLASSES view

COPY_HISTORY view

CORTEX_FINE_TUNING_USAGE_HISTORY view

CORTEX_FUNCTIONS_USAGE_HISTORY view

CORTEX_SEARCH_SERVING_USAGE_HISTORY view

DATA_QUALITY_MONITORING_USAGE_HISTORY view

DATA_TRANSFER_HISTORY view

DATABASE_STORAGE_USAGE_HISTORY view

DOCUMENT_AI_USAGE_HISTORY view

DYNAMIC_TABLE_REFRESH_HISTORY view

EVENT_USAGE_HISTORY view

EXTERNAL_ACCESS_HISTORY view

HYBRID_TABLE_USAGE_HISTORY view

INTERNAL_DATA_TRANSFER_HISTORY view

LOAD_HISTORY view

MATERIALIZED_VIEW_REFRESH_HISTORY view

METERING_DAILY_HISTORY view

METERING_HISTORY view

PIPE_USAGE_HISTORY view

QUERY_ATTRIBUTION_HISTORY view

REPLICATION_USAGE_HISTORY view

REPLICATION_GROUP_REFRESH_HISTORY view

REPLICATION_GROUP_USAGE_HISTORY view

SEARCH_OPTIMIZATION_BENEFITS view

SEARCH_OPTIMIZATION_HISTORY view

SERVERLESS_ALERT_HISTORY view

SERVERLESS_TASK_HISTORY view

SNOWPARK_CONTAINER_SERVICES_HISTORY view

STAGE_STORAGE_USAGE_HISTORY view

STORAGE_USAGE view

TABLE_DML_HISTORY view

TABLE_PRUNING_HISTORY view

TABLE_STORAGE_METRICS view

TASK_HISTORY view

WAREHOUSE_EVENTS_HISTORY view

WAREHOUSE_LOAD_HISTORY view

WAREHOUSE_METERING_HISTORY view

ACCESS_HISTORY view

AGGREGATE_ACCESS_HISTORY view

AGGREGATE_QUERY_HISTORY view

AGGREGATION_POLICIES view

DATA_CLASSIFICATION_LATEST view

DATA_METRIC_FUNCTION_REFERENCES view

MASKING_POLICIES view

QUERY_ACCELERATION_ELIGIBLE view

QUERY_HISTORY view

POLICY_REFERENCES view

PRIVACY_BUDGETS view

PRIVACY_POLICIES view

PROJECTION_POLICIES view

ROW_ACCESS_POLICIES view

TAG_REFERENCES view

GRANTS_TO_ROLES view

GRANTS_TO_USERS view

LOGIN_HISTORY view

NETWORK_POLICIES view

NETWORK_RULES view

NETWORK_RULE_REFERENCES view

OUTBOUND_PRIVATELINK_ENDPOINTS view

PASSWORD_POLICIES view

ROLES view

SECRETS view

SESSION_POLICIES view

SESSIONS view

USERS view

READER_ACCOUNT_USAGE schema SNOWFLAKE database roles

The READER_USAGE_VIEWER SNOWFLAKE database role is granted SELECT privilege on all READER_ACCOUNT_USAGE views. As reader accounts are created by clients, the READER_USAGE_VIEWER role is expected to be granted to those roles used to monitor reader account use.

View

LOGIN_HISTORY view

QUERY_HISTORY view

RESOURCE_MONITORS view

STORAGE_USAGE view

WAREHOUSE_METERING_HISTORY view

Querying the Account Usage views

This section includes considerations when querying the Account Usage views along with query examples.

Selecting columns

The Snowflake-specific views are subject to change. Avoid selecting all columns from these views. Instead, select the columns that you want. For example, if you want the name column, use SELECT name, rather than SELECT *.

Reconciling cost views

There are several Account Usage views that contain data related to the cost of compute resources, storage, and data transfers. If you are trying to reconcile these views against a corresponding view in the ORGANIZATION_USAGE schema, you must first set the timezone of the session to UTC.

For example, if you are trying to reconcile ACCOUNT_USAGE.WAREHOUSE_METERING_HISTORY to the account’s data in ORGANIZATION_USAGE.WAREHOUSE_METERING_HISTORY, you must run the following command before querying the Account Usage view:

ALTER SESSION SET TIMEZONE = UTC;
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Examples

The following examples show some typical/useful queries using the views in the ACCOUNT_USAGE schema.

Note

  • These examples assume the SNOWFLAKE database and the ACCOUNT_USAGE schema are in use for the current session. The examples also assume the ACCOUNTADMIN role (or a role granted IMPORTED PRIVILEGES on the database) is in use. If they are not in use, execute the following commands before running the queries in the examples:

    USE ROLE ACCOUNTADMIN;
    
    USE SCHEMA snowflake.account_usage;
    
    Copy

Examples: User login metrics

Average number of seconds between failed login attempts by user (month-to-date):

select user_name,
       count(*) as failed_logins,
       avg(seconds_between_login_attempts) as average_seconds_between_login_attempts
from (
      select user_name,
             timediff(seconds, event_timestamp, lead(event_timestamp)
                 over(partition by user_name order by event_timestamp)) as seconds_between_login_attempts
      from login_history
      where event_timestamp > date_trunc(month, current_date)
      and is_success = 'NO'
     )
group by 1
order by 3;
Copy

Failed logins by user (month-to-date):

select user_name,
       sum(iff(is_success = 'NO', 1, 0)) as failed_logins,
       count(*) as logins,
       sum(iff(is_success = 'NO', 1, 0)) / nullif(count(*), 0) as login_failure_rate
from login_history
where event_timestamp > date_trunc(month, current_date)
group by 1
order by 4 desc;
Copy

Failed logins by user and connecting client (month-to-date):

select reported_client_type,
       user_name,
       sum(iff(is_success = 'NO', 1, 0)) as failed_logins,
       count(*) as logins,
       sum(iff(is_success = 'NO', 1, 0)) / nullif(count(*), 0) as login_failure_rate
from login_history
where event_timestamp > date_trunc(month, current_date)
group by 1,2
order by 5 desc;
Copy

Examples: Warehouse performance

This query calculates virtual warehouse performance metrics such as throughput and latency for 15-minute time intervals over the course of one day.

In the code sample below, you can replace CURRENT_WAREHOUSE() with the name of a warehouse to calculate metrics for that warehouse. In addition, change the time_from and time_to dates in the WITH clause to specify the time period.

WITH
params AS (
SELECT
    CURRENT_WAREHOUSE() AS warehouse_name,
    '2021-11-01' AS time_from,
    '2021-11-02' AS time_to
),

jobs AS (
SELECT
    query_id,
    time_slice(start_time::timestamp_ntz, 15, 'minute','start') as interval_start,
    qh.warehouse_name,
    database_name,
    query_type,
    total_elapsed_time,
    compilation_time AS compilation_and_scheduling_time,
    (queued_provisioning_time + queued_repair_time + queued_overload_time) AS queued_time,
    transaction_blocked_time,
    execution_time
FROM snowflake.account_usage.query_history qh, params
WHERE
    qh.warehouse_name = params.warehouse_name
AND start_time >= params.time_from
AND start_time <= params.time_to
AND execution_status = 'SUCCESS'
AND query_type IN ('SELECT','UPDATE','INSERT','MERGE','DELETE')
),

interval_stats AS (
SELECT
    query_type,
    interval_start,
    COUNT(DISTINCT query_id) AS numjobs,
    MEDIAN(total_elapsed_time)/1000 AS p50_total_duration,
    (percentile_cont(0.95) within group (order by total_elapsed_time))/1000 AS p95_total_duration,
    SUM(total_elapsed_time)/1000 AS sum_total_duration,
    SUM(compilation_and_scheduling_time)/1000 AS sum_compilation_and_scheduling_time,
    SUM(queued_time)/1000 AS sum_queued_time,
    SUM(transaction_blocked_time)/1000 AS sum_transaction_blocked_time,
    SUM(execution_time)/1000 AS sum_execution_time,
    ROUND(sum_compilation_and_scheduling_time/sum_total_duration,2) AS compilation_and_scheduling_ratio,
    ROUND(sum_queued_time/sum_total_duration,2) AS queued_ratio,
    ROUND(sum_transaction_blocked_time/sum_total_duration,2) AS blocked_ratio,
    ROUND(sum_execution_time/sum_total_duration,2) AS execution_ratio,
    ROUND(sum_total_duration/numjobs,2) AS total_duration_perjob,
    ROUND(sum_compilation_and_scheduling_time/numjobs,2) AS compilation_and_scheduling_perjob,
    ROUND(sum_queued_time/numjobs,2) AS queued_perjob,
    ROUND(sum_transaction_blocked_time/numjobs,2) AS blocked_perjob,
    ROUND(sum_execution_time/numjobs,2) AS execution_perjob
FROM jobs
GROUP BY 1,2
ORDER BY 1,2
)
SELECT * FROM interval_stats;
Copy

Note

Analyze different statement types separately (e.g., SELECT statements independent of INSERT or DELETE or other statements).

  • The NUMJOBS value represents the throughput for that time interval.

  • The P50_TOTAL_DURATION (median) and P95_TOTAL_DURATION (peak) values represent latency.

  • The SUM_TOTAL_DURATION is the sum of the SUM_<job_stage>_TIME values for the different job stages (COMPILATION_AND_SCHEDULING, QUEUED, BLOCKED, EXECUTION).

  • Analyze the <job_stage>_RATIO values when the load (NUMJOBS) increases. Look for ratio changes or deviations from the average.

  • If the QUEUED_RATIO is high, there might not be sufficient capacity in the warehouse. Add more clusters or increase the warehouse size.

Examples: Warehouse credit usage

Credits used by each warehouse in your account (month-to-date):

select warehouse_name,
       sum(credits_used) as total_credits_used
from warehouse_metering_history
where start_time >= date_trunc(month, current_date)
group by 1
order by 2 desc;
Copy

Credits used over time by each warehouse in your account (month-to-date):

select start_time::date as usage_date,
       warehouse_name,
       sum(credits_used) as total_credits_used
from warehouse_metering_history
where start_time >= date_trunc(month, current_date)
group by 1,2
order by 2,1;
Copy

Examples: Data storage usage

Billable terabytes stored in your account over time:

select date_trunc(month, usage_date) as usage_month
  , avg(storage_bytes + stage_bytes + failsafe_bytes) / power(1024, 4) as billable_tb
from storage_usage
group by 1
order by 1;
Copy

Examples: User query totals and execution times

Total jobs executed in your account (month-to-date):

select count(*) as number_of_jobs
from query_history
where start_time >= date_trunc(month, current_date);
Copy

Total jobs executed by each warehouse in your account (month-to-date):

select warehouse_name,
       count(*) as number_of_jobs
from query_history
where start_time >= date_trunc(month, current_date)
group by 1
order by 2 desc;
Copy

Average query execution time by user (month-to-date):

select user_name,
       avg(execution_time) as average_execution_time
from query_history
where start_time >= date_trunc(month, current_date)
group by 1
order by 2 desc;
Copy

Average query execution time by query type and warehouse size (month-to-date):

select query_type,
       warehouse_size,
       avg(execution_time) as average_execution_time
from query_history
where start_time >= date_trunc(month, current_date)
group by 1,2
order by 3 desc;
Copy

Examples: Obtain a query count for every login event

Join columns from LOGIN_HISTORY, QUERY_HISTORY, and SESSIONS to obtain a query count for each user login event.

Note

The SESSIONS view records information starting on July 20-21, 2020, therefore the query result will only contain overlapping information for each of the three views starting from this date.

select l.user_name,
       l.event_timestamp as login_time,
       l.client_ip,
       l.reported_client_type,
       l.first_authentication_factor,
       l.second_authentication_factor,
       count(q.query_id)
from snowflake.account_usage.login_history l
join snowflake.account_usage.sessions s on l.event_id = s.login_event_id
join snowflake.account_usage.query_history q on q.session_id = s.session_id
group by 1,2,3,4,5,6
order by l.user_name
;
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