The ClickHouse data source plugin allows you to query and visualize ClickHouse data in Grafana.
Users on Grafana v9.x
and higher of Grafana can use v4
.
Users on Grafana v8.x
are encouraged to continue using v2.2.0
of the plugin.
* As of 2.0 this plugin will only support ad hoc filters when using ClickHouse 22.7+
For detailed instructions on how to install the plugin on Grafana Cloud or locally, please checkout the Plugin installation docs.
Set up an ClickHouse user account with readonly permission and access to
databases and tables you want to query.
Please note that Grafana does not validate that queries are safe. Queries can contain any SQL statement.
For example, statements like ALTER TABLE system.users DELETE WHERE name='sadUser'
and DROP TABLE sadTable;
would be executed.
To configure a readonly user, follow these steps:
- Create a
readonly
user profile following the Creating Users and Roles in ClickHouse guide. - Ensure the
readonly
user has enough permission to modify themax_execution_time
setting required by the underlying clickhouse-go client. - If you're using a public Clickhouse instance, it's not recommended to set
readonly=2
in thereadonly
profile. Instead, leavereadonly=1
and set the constraint type ofmax_execution_time
to changeable_in_readonly to allow modification of this setting.
The plugin supports both Native
(default) and HTTP
transport protocols.
This can be enabled in the configuration via the protocol
configuration parameter.
Both protocols exchange data with ClickHouse using optimized native format.
Note that the default ports for HTTP/S
and Native
differ:
- HTTP - 8123
- HTTPS - 8443
- Native - 9000
- Native with TLS - 9440
Once the plugin is installed on your Grafana instance, follow these instructions to add a new ClickHouse data source, and enter configuration options.
It is possible to configure data sources using configuration files with Grafana’s provisioning system. To read about how it works, refer to Provisioning Grafana data sources.
Here are some provisioning examples for this data source using basic authentication:
apiVersion: 1
datasources:
- name: ClickHouse
type: grafana-clickhouse-datasource
jsonData:
defaultDatabase: database
port: 9000
host: localhost
username: username
tlsSkipVerify: false
# tlsAuth: <bool>
# tlsAuthWithCACert: <bool>
# secure: <bool>
# dialTimeout: <seconds>
# queryTimeout: <seconds>
# protocol: <native|http>
# defaultTable: <string>
# httpHeaders:
# - name: X-Example-Header
# secure: false
# value: <string>
# - name: Authorization
# secure: true
# logs:
# defaultDatabase: <string>
# defaultTable: <string>
# otelEnabled: <bool>
# otelVersion: <string>
# timeColumn: <string>
# ...Column: <string>
# traces:
# defaultDatabase: <string>
# defaultTable: <string>
# otelEnabled: <bool>
# otelVersion: <string>
# durationUnit: <seconds|milliseconds|microseconds|nanoseconds>
# traceIdColumn: <string>
# ...Column: <string>
secureJsonData:
password: password
# tlsCACert: <string>
# tlsClientCert: <string>
# tlsClientKey: <string>
# secureHttpHeaders.Authorization: <string>
Queries can be built using the raw SQL editor or the query builder. Queries can contain macros which simplify syntax and allow for dynamic SQL generation.
Time series visualization options are selectable after adding a datetime
field type to your query. This field will be used as the timestamp. You can
select time series visualizations using the visualization options. Grafana
interprets timestamp rows without explicit time zone as UTC. Any column except
time
is treated as a value column.
To create multi-line time series, the query must return at least 3 fields in the following order:
- field 1:
datetime
field with an alias oftime
- field 2: value to group by
- field 3+: the metric values
For example:
SELECT log_time AS time, machine_group, avg(disk_free) AS avg_disk_free
FROM mgbench.logs1
GROUP BY machine_group, log_time
ORDER BY log_time
Table visualizations will always be available for any valid ClickHouse query.
To use the Logs panel your query must return a timestamp and string values. To default to the logs visualization in Explore mode, set the timestamp alias to log_time.
For example:
SELECT log_time AS log_time, machine_group, toString(avg(disk_free)) AS avg_disk_free
FROM logs1
GROUP BY machine_group, log_time
ORDER BY log_time
To force rendering as logs, in absence of a log_time
column, set the Format to Logs
(available from 2.2.0).
Ensure your data meets the requirements of the traces panel. This applies if using the visualization or Explore view.
Set the Format to Trace
when constructing the query (available from 2.2.0).
If using the Open Telemetry Collector and ClickHouse exporter, the following query produces the required column names (these are case sensitive):
SELECT
TraceId AS traceID,
SpanId AS spanID,
SpanName AS operationName,
ParentSpanId AS parentSpanID,
ServiceName AS serviceName,
Duration / 1000000 AS duration,
Timestamp AS startTime,
arrayMap(key -> map('key', key, 'value', SpanAttributes[key]), mapKeys(SpanAttributes)) AS tags,
arrayMap(key -> map('key', key, 'value', ResourceAttributes[key]), mapKeys(ResourceAttributes)) AS serviceTags
FROM otel.otel_traces
WHERE TraceId = '61d489320c01243966700e172ab37081'
ORDER BY startTime ASC
To simplify syntax and to allow for dynamic parts, like date range filters, the query can contain macros.
Here is an example of a query with a macro that will use Grafana's time filter:
SELECT date_time, data_stuff
FROM test_data
WHERE $__timeFilter(date_time)
Macro | Description | Output example |
---|---|---|
$__dateFilter(columnName) | Replaced by a conditional that filters the data (using the provided column) based on the date range of the panel | date >= toDate('2022-10-21') AND date <= toDate('2022-10-23') |
$__timeFilter(columnName) | Replaced by a conditional that filters the data (using the provided column) based on the time range of the panel in seconds | time >= toDateTime(1415792726) AND time <= toDateTime(1447328726) |
$__timeFilter_ms(columnName) | Replaced by a conditional that filters the data (using the provided column) based on the time range of the panel in milliseconds | time >= fromUnixTimestamp64Milli(1415792726123) AND time <= fromUnixTimestamp64Milli(1447328726456) |
$__fromTime | Replaced by the starting time of the range of the panel casted to DateTime |
toDateTime(1415792726) |
$__toTime | Replaced by the ending time of the range of the panel casted to DateTime |
toDateTime(1447328726) |
$__fromTime_ms | Replaced by the starting time of the range of the panel casted to DateTime64(3) |
fromUnixTimestamp64Milli(1415792726123) |
$__toTime_ms | Replaced by the ending time of the range of the panel casted to DateTime64(3) |
fromUnixTimestamp64Milli(1447328726456) |
$__interval_s | Replaced by the interval in seconds | 20 |
$__timeInterval(columnName) | Replaced by a function calculating the interval based on window size in seconds, useful when grouping | toStartOfInterval(toDateTime(column), INTERVAL 20 second) |
$__timeInterval_ms(columnName) | Replaced by a function calculating the interval based on window size in milliseconds, useful when grouping | toStartOfInterval(toDateTime64(column, 3), INTERVAL 20 millisecond) |
$__conditionalAll(condition, $templateVar) | Replaced by the first parameter when the template variable in the second parameter does not select every value. Replaced by the 1=1 when the template variable selects every value. | condition or 1=1 |
The plugin also supports notation using braces {}. Use this notation when queries are needed inside parameters.
To add a new ClickHouse query variable, refer to Add a query variable.
After creating a variable, you can use it in your ClickHouse queries by using Variable syntax. For more information about variables, refer to Templates and variables.
Follow these instructions to import a dashboard.
You can also find available, pre-made dashboards by navigating to the data sources configuration page, selecting the ClickHouse data source and clicking on the Dashboards tab.
We distribute the following dashboards with the plugin. These are aimed at assisting with support analysis of a ClickHouse cluster and do not rely on external datasets. The querying user requires access to the system
database.
- Cluster Analysis - an overview of configured clusters, merges, mutations and data replication.
- Data Analysis - an overview of current databases and tables, including their respective sizes, partitions and parts.
- Query Analysis - an analysis of queries by type, performance and resource consumption.
Ad hoc filters are only supported with version 22.7+ of ClickHouse.
Ad hoc filters allow you to add key/value filters that are automatically added to all metric queries that use the specified data source, without being explicitly used in queries.
By default, Ad Hoc filters will be populated with all Tables and Columns. If
you have a default database defined in the Datasource settings, all Tables from
that database will be used to populate the filters. As this could be
slow/expensive, you can introduce a second variable to allow limiting the
Ad Hoc filters. It should be a constant
type named clickhouse_adhoc_query
and can contain: a comma delimited list of databases, just one database, or a
database.table combination to show only columns for a single table.
For more information on Ad Hoc filters, check the Grafana docs
The second clickhouse_adhoc_query
also allows any valid Clickhouse query. The
query results will be used to populate your ad-hoc filter's selectable filters.
You may choose to hide this variable from view as it serves no further purpose.
For example, if clickhouse_adhoc_query
is set to SELECT DISTINCT machine_name FROM mgbench.logs1
you would be able to select which machine
names are filtered for in the dashboard.
- Add Annotations.
- Configure and use Templates and variables.
- Add Transformations.
- Set up alerting; refer to Alerts overview.