3.5 KiB
slug | sidebar_position | sidebar_label |
---|---|---|
/ru/operations/optimizing-performance/sampling-query-profiler | 54 | Query Profiling |
Sampling Query Profiler
ClickHouse runs sampling profiler that allows analyzing query execution. Using profiler you can find source code routines that used the most frequently during query execution. You can trace CPU time and wall-clock time spent including idle time.
To use profiler:
-
Setup the trace_log section of the server configuration.
This section configures the trace_log system table containing the results of the profiler functioning. It is configured by default. Remember that data in this table is valid only for a running server. After the server restart, ClickHouse doesn’t clean up the table and all the stored virtual memory address may become invalid.
-
Setup the query_profiler_cpu_time_period_ns or query_profiler_real_time_period_ns settings. Both settings can be used simultaneously.
These settings allow you to configure profiler timers. As these are the session settings, you can get different sampling frequency for the whole server, individual users or user profiles, for your interactive session, and for each individual query.
The default sampling frequency is one sample per second and both CPU and real timers are enabled. This frequency allows collecting enough information about ClickHouse cluster. At the same time, working with this frequency, profiler doesn’t affect ClickHouse server’s performance. If you need to profile each individual query try to use higher sampling frequency.
To analyze the trace_log
system table:
-
Install the
clickhouse-common-static-dbg
package. See Install from DEB Packages. -
Allow introspection functions by the allow_introspection_functions setting.
For security reasons, introspection functions are disabled by default.
-
Use the
addressToLine
,addressToSymbol
anddemangle
introspection functions to get function names and their positions in ClickHouse code. To get a profile for some query, you need to aggregate data from thetrace_log
table. You can aggregate data by individual functions or by the whole stack traces.
If you need to visualize trace_log
info, try flamegraph and speedscope.
Example
In this example we:
-
Filtering
trace_log
data by a query identifier and the current date. -
Aggregating by stack trace.
-
Using introspection functions, we will get a report of:
- Names of symbols and corresponding source code functions.
- Source code locations of these functions.
SELECT
count(),
arrayStringConcat(arrayMap(x -> concat(demangle(addressToSymbol(x)), '\n ', addressToLine(x)), trace), '\n') AS sym
FROM system.trace_log
WHERE (query_id = 'ebca3574-ad0a-400a-9cbc-dca382f5998c') AND (event_date = today())
GROUP BY trace
ORDER BY count() DESC
LIMIT 10
{% include "examples/sampling_query_profiler_result.txt" %}