This page shows you how to identify and, if necessary, cancel SQL queries that are taking longer than expected to process.
SHOW JOBS
to monitor the progress of schema changes and CANCEL JOB
to cancel schema changes that are taking longer than expected. Identify long-running queries
Use the SHOW QUERIES
statement to list details about currently active SQL queries, including each query's start
timestamp:
> SHOW QUERIES;
+----------------------------------+---------+----------+----------------------------------+-------------------------------------------+---------------------+------------------+-------------+-----------+
| query_id | node_id | username | start | query | client_address | application_name | distributed | phase |
+----------------------------------+---------+----------+----------------------------------+-------------------------------------------+---------------------+------------------+-------------+-----------+
| 14db657443230c3e0000000000000001 | 1 | root | 2017-08-16 18:00:50.675151+00:00 | UPSERT INTO test.kv(k, v) VALUES ($1, $2) | 192.168.12.56:54119 | test_app | false | executing |
| 14db657443b68c7d0000000000000001 | 1 | root | 2017-08-16 18:00:50.684818+00:00 | UPSERT INTO test.kv(k, v) VALUES ($1, $2) | 192.168.12.56:54123 | test_app | false | executing |
| 14db65744382c2340000000000000001 | 1 | root | 2017-08-16 18:00:50.681431+00:00 | UPSERT INTO test.kv(k, v) VALUES ($1, $2) | 192.168.12.56:54103 | test_app | false | executing |
| 14db657443c9dc660000000000000001 | 1 | root | 2017-08-16 18:00:50.686083+00:00 | SHOW CLUSTER QUERIES | 192.168.12.56:54108 | cockroach | NULL | preparing |
| 14db657443e30a850000000000000003 | 3 | root | 2017-08-16 18:00:50.68774+00:00 | UPSERT INTO test.kv(k, v) VALUES ($1, $2) | 192.168.12.58:54118 | test_app | false | executing |
| 14db6574439f477d0000000000000003 | 3 | root | 2017-08-16 18:00:50.6833+00:00 | UPSERT INTO test.kv(k, v) VALUES ($1, $2) | 192.168.12.58:54122 | test_app | false | executing |
| 14db6574435817d20000000000000002 | 2 | root | 2017-08-16 18:00:50.678629+00:00 | UPSERT INTO test.kv(k, v) VALUES ($1, $2) | 192.168.12.57:54121 | test_app | false | executing |
| 14db6574433c621f0000000000000002 | 2 | root | 2017-08-16 18:00:50.676813+00:00 | UPSERT INTO test.kv(k, v) VALUES ($1, $2) | 192.168.12.57:54124 | test_app | false | executing |
| 14db6574436f71d50000000000000002 | 2 | root | 2017-08-16 18:00:50.680165+00:00 | UPSERT INTO test.kv(k, v) VALUES ($1, $2) | 192.168.12.57:54117 | test_app | false | executing |
+----------------------------------+---------+----------+----------------------------------+-------------------------------------------+---------------------+------------------+-------------+-----------+
(9 rows)
You can also filter for queries that have been running for a certain amount of time. For example, to find queries that have been running for more than 3 hours, you would run the following:
> SELECT * FROM [SHOW CLUSTER QUERIES]
WHERE start < (now() - INTERVAL '3 hours');
Cancel long-running queries
Once you've identified a long-running query via SHOW QUERIES
, note the query_id
and use it with the CANCEL QUERY
statement:
> CANCEL QUERY '14dacc1f9a781e3d0000000000000001';
When a query is successfully cancelled, CockroachDB sends a query execution canceled
error to the client that issued the query.
- If the canceled query was a single, stand-alone statement, no further action is required by the client.
- If the canceled query was part of a larger, multi-statement transaction, the client should then issue a
ROLLBACK
statement.
Improve query performance
After cancelling a long-running query, use the EXPLAIN
statement to examine it. It's possible that the query was slow because it performs a full-table scan. In these cases, you can likely improve the query's performance by adding an index.
(More guidance around query performance optimization forthcoming.)