The EXPLAIN
statement provides information about how MySQL executes statements. EXPLAIN
语句提供有关MySQL如何执行语句的信息。EXPLAIN
works with SELECT
, DELETE
, INSERT
, REPLACE
, and UPDATE
statements.EXPLAIN
配合SELECT
、DELETE
、INSERT
、REPLACE
和UPDATE
语句使用。
EXPLAIN
returns a row of information for each table used in the SELECT
statement. EXPLAIN
为SELECT
语句中使用的每个表返回一行信息。It lists the tables in the output in the order that MySQL would read them while processing the statement. 它按照MySQL在处理语句时读取的顺序列出输出中的表。This means that MySQL reads a row from the first table, then finds a matching row in the second table, and then in the third table, and so on. When all tables are processed, MySQL outputs the selected columns and backtracks through the table list until a table is found for which there are more matching rows. 这意味着MySQL从第一个表中读取一行,然后在第二个表中找到匹配的行,然后在第三个表中找到匹配的行,依此类推。处理完所有表后,MySQL输出所选列,并在表列表中回溯,直到找到一个有更多匹配行的表。The next row is read from this table and the process continues with the next table.从该表中读取下一行,并继续处理下一个表。
MySQL Workbench has a Visual Explain capability that provides a visual representation of MySQL工作台具有可视化解释功能,提供EXPLAIN
output. EXPLAIN
输出的可视化表示。See Tutorial: Using Explain to Improve Query Performance.请参见教程:使用解释提高查询性能。
This section describes the output columns produced by 本节介绍EXPLAIN
. EXPLAIN
生成的输出列。Later sections provide additional information about the 后面的部分提供了有关type
and Extra
columns.type
列和Extra
列的附加信息。
Each output row from EXPLAIN
provides information about one table. EXPLAIN
中的每个输出行提供关于一个表的信息。Each row contains the values summarized in Table 8.1, “EXPLAIN Output Columns”, and described in more detail following the table. 每行包含表8.1“解释输出列”中总结的值,并在下表中进行了更详细的描述。Column names are shown in the table's first column; the second column provides the equivalent property name shown in the output when 列名显示在表的第一列中;当使用FORMAT=JSON
is used.FORMAT=JSON
时,第二列提供输出中显示的等效属性名。
Table 8.1 EXPLAIN Output Columns解释输出列
id | select_id | SELECT identifierSELECT 标识符 |
---|---|---|
select_type | None | SELECT typeSELECT 类型 |
table | table_name | |
partitions | partitions | |
type | access_type | |
possible_keys | possible_keys | |
key | key | |
key_len | key_length | |
ref | ref | |
rows | rows | |
filtered | filtered | |
Extra | None |
JSON properties which are NULL
are not displayed in JSON-formatted EXPLAIN
output.
The SELECT
identifier. This is the sequential number of the SELECT
within the query. The value can be NULL
if the row refers to the union result of other rows. In this case, the table
column shows a value like <union
to indicate that the row refers to the union of the rows with M
,N
>id
values of M
and N
.
The type of SELECT
, which can be any of those shown in the following table. A JSON-formatted EXPLAIN
exposes the SELECT
type as a property of a query_block
, unless it is SIMPLE
or PRIMARY
. The JSON names (where applicable) are also shown in the table.
select_type Value | JSON Name | Meaning |
---|---|---|
SIMPLE | None | Simple SELECT (not using
UNION or subqueries) |
PRIMARY | None | Outermost SELECT |
UNION | None | Second or later SELECT statement in a
UNION |
DEPENDENT UNION | dependent (true ) | Second or later SELECT statement in a UNION , dependent on outer query |
UNION RESULT | union_result | Result of a UNION . |
SUBQUERY | None | First SELECT in subquery |
DEPENDENT SUBQUERY | dependent (true ) | First SELECT in subquery, dependent on outer query |
DERIVED | None | |
DEPENDENT DERIVED | dependent (true ) | |
MATERIALIZED | materialized_from_subquery | |
UNCACHEABLE SUBQUERY | cacheable (false ) | |
UNCACHEABLE UNION | cacheable (false ) | The second or later select in a UNION
that belongs to an uncacheable subquery (see
UNCACHEABLE SUBQUERY ) |
DEPENDENT
typically signifies the use of a correlated subquery. See Section 13.2.11.7, “Correlated Subqueries”.
DEPENDENT SUBQUERY
evaluation differs from UNCACHEABLE SUBQUERY
evaluation. For DEPENDENT SUBQUERY
, the subquery is re-evaluated only once for each set of different values of the variables from its outer context. For UNCACHEABLE SUBQUERY
, the subquery is re-evaluated for each row of the outer context.
When you specify FORMAT=JSON
with EXPLAIN
, the output has no single property directly equivalent to select_type
; the query_block
property corresponds to a given SELECT
. Properties equivalent to most of the SELECT
subquery types just shown are available (an example being materialized_from_subquery
for MATERIALIZED
), and are displayed when appropriate. There are no JSON equivalents for SIMPLE
or PRIMARY
.
The select_type
value for non-SELECT
statements displays the statement type for affected tables. For example, select_type
is DELETE
for DELETE
statements.
The name of the table to which the row of output refers. This can also be one of the following values:
<union
: The row refers to the union of the rows with M
,N
>id
values of M
and N
.
<derived
: The row refers to the derived table result for the row with an N
>id
value of N
. A derived table may result, for example, from a subquery in the FROM
clause.
<subquery
: The row refers to the result of a materialized subquery for the row with an N
>id
value of N
. See Section 8.2.2.2, “Optimizing Subqueries with Materialization”.
partitions
(JSON name: partitions
)
The partitions from which records would be matched by the query. The value is NULL
for nonpartitioned tables. See Section 24.3.5, “Obtaining Information About Partitions”.
The join type. For descriptions of the different types, see EXPLAIN
Join Types.
possible_keys
(JSON name: possible_keys
)
The possible_keys
column indicates the indexes from which MySQL can choose to find the rows in this table. Note that this column is totally independent of the order of the tables as displayed in the output from EXPLAIN
. That means that some of the keys in possible_keys
might not be usable in practice with the generated table order.
If this column is NULL
(or undefined in JSON-formatted output), there are no relevant indexes. In this case, you may be able to improve the performance of your query by examining the WHERE
clause to check whether it refers to some column or columns that would be suitable for indexing. If so, create an appropriate index and check the query with EXPLAIN
again. See Section 13.1.9, “ALTER TABLE Statement”.
To see what indexes a table has, use SHOW INDEX FROM
.tbl_name
The key
column indicates the key (index) that MySQL actually decided to use. If MySQL decides to use one of the possible_keys
indexes to look up rows, that index is listed as the key value.
It is possible that key
may name an index that is not present in the possible_keys
value. This can happen if none of the possible_keys
indexes are suitable for looking up rows, but all the columns selected by the query are columns of some other index. That is, the named index covers the selected columns, so although it is not used to determine which rows to retrieve, an index scan is more efficient than a data row scan.
For InnoDB
, a secondary index might cover the selected columns even if the query also selects the primary key because InnoDB
stores the primary key value with each secondary index. If key
is NULL
, MySQL found no index to use for executing the query more efficiently.
To force MySQL to use or ignore an index listed in the possible_keys
column, use FORCE INDEX
, USE INDEX
, or IGNORE INDEX
in your query. See Section 8.9.4, “Index Hints”.
For MyISAM
tables, running ANALYZE TABLE
helps the optimizer choose better indexes. For MyISAM
tables, myisamchk --analyze does the same. See Section 13.7.3.1, “ANALYZE TABLE Statement”, and Section 7.6, “MyISAM Table Maintenance and Crash Recovery”.
key_len
(JSON name: key_length
)
The key_len
column indicates the length of the key that MySQL decided to use. The value of key_len
enables you to determine how many parts of a multiple-part key MySQL actually uses. If the key
column says NULL
, the key_len
column also says NULL
.
Due to the key storage format, the key length is one greater for a column that can be NULL
than for a NOT NULL
column.
The ref
column shows which columns or constants are compared to the index named in the key
column to select rows from the table.
If the value is func
, the value used is the result of some function. To see which function, use SHOW WARNINGS
following EXPLAIN
to see the extended EXPLAIN
output. The function might actually be an operator such as an arithmetic operator.
The rows
column indicates the number of rows MySQL believes it must examine to execute the query.
For InnoDB
tables, this number is an estimate, and may not always be exact.
filtered
(JSON name: filtered
)
The filtered
column indicates an estimated percentage of table rows that are filtered by the table condition. The maximum value is 100, which means no filtering of rows occurred. Values decreasing from 100 indicate increasing amounts of filtering. rows
shows the estimated number of rows examined and rows
× filtered
shows the number of rows that are joined with the following table. For example, if rows
is 1000 and filtered
is 50.00 (50%), the number of rows to be joined with the following table is 1000 × 50% = 500.
This column contains additional information about how MySQL resolves the query. For descriptions of the different values, see EXPLAIN
Extra Information.
There is no single JSON property corresponding to the Extra
column; however, values that can occur in this column are exposed as JSON properties, or as the text of the message
property.
The type
column of EXPLAIN
output describes how tables are joined. In JSON-formatted output, these are found as values of the access_type
property. The following list describes the join types, ordered from the best type to the worst:
The table has only one row (= system table). This is a special case of the const
join type.
The table has at most one matching row, which is read at the start of the query. Because there is only one row, values from the column in this row can be regarded as constants by the rest of the optimizer. const
tables are very fast because they are read only once.
const
is used when you compare all parts of a PRIMARY KEY
or UNIQUE
index to constant values. In the following queries, tbl_name
can be used as a const
table:
SELECT * FROMtbl_name
WHEREprimary_key
=1; SELECT * FROMtbl_name
WHEREprimary_key_part1
=1 ANDprimary_key_part2
=2;
One row is read from this table for each combination of rows from the previous tables. Other than the system
and const
types, this is the best possible join type. It is used when all parts of an index are used by the join and the index is a PRIMARY KEY
or UNIQUE NOT NULL
index.
eq_ref
can be used for indexed columns that are compared using the =
operator. The comparison value can be a constant or an expression that uses columns from tables that are read before this table. In the following examples, MySQL can use an eq_ref
join to process ref_table
:
SELECT * FROMref_table
,other_table
WHEREref_table
.key_column
=other_table
.column
; SELECT * FROMref_table
,other_table
WHEREref_table
.key_column_part1
=other_table
.column
ANDref_table
.key_column_part2
=1;
All rows with matching index values are read from this table for each combination of rows from the previous tables. ref
is used if the join uses only a leftmost prefix of the key or if the key is not a PRIMARY KEY
or UNIQUE
index (in other words, if the join cannot select a single row based on the key value). If the key that is used matches only a few rows, this is a good join type.
ref
can be used for indexed columns that are compared using the =
or <=>
operator. In the following examples, MySQL can use a ref
join to process ref_table
:
SELECT * FROMref_table
WHEREkey_column
=expr
; SELECT * FROMref_table
,other_table
WHEREref_table
.key_column
=other_table
.column
; SELECT * FROMref_table
,other_table
WHEREref_table
.key_column_part1
=other_table
.column
ANDref_table
.key_column_part2
=1;
The join is performed using a FULLTEXT
index.
This join type is like ref
, but with the addition that MySQL does an extra search for rows that contain NULL
values. This join type optimization is used most often in resolving subqueries. In the following examples, MySQL can use a ref_or_null
join to process ref_table
:
SELECT * FROMref_table
WHEREkey_column
=expr
ORkey_column
IS NULL;
This join type indicates that the Index Merge optimization is used. In this case, the key
column in the output row contains a list of indexes used, and key_len
contains a list of the longest key parts for the indexes used. For more information, see Section 8.2.1.3, “Index Merge Optimization”.
This type replaces eq_ref
for some IN
subqueries of the following form:
value
IN (SELECTprimary_key
FROMsingle_table
WHEREsome_expr
)
unique_subquery
is just an index lookup function that replaces the subquery completely for better efficiency.
This join type is similar to unique_subquery
. It replaces IN
subqueries, but it works for nonunique indexes in subqueries of the following form:
value
IN (SELECTkey_column
FROMsingle_table
WHEREsome_expr
)
Only rows that are in a given range are retrieved, using an index to select the rows. The key
column in the output row indicates which index is used. The key_len
contains the longest key part that was used. The ref
column is NULL
for this type.
range
can be used when a key column is compared to a constant using any of the =
, <>
, >
, >=
, <
, <=
, IS NULL
, <=>
, BETWEEN
, LIKE
, or IN()
operators:
SELECT * FROMtbl_name
WHEREkey_column
= 10; SELECT * FROMtbl_name
WHEREkey_column
BETWEEN 10 and 20; SELECT * FROMtbl_name
WHEREkey_column
IN (10,20,30); SELECT * FROMtbl_name
WHEREkey_part1
= 10 ANDkey_part2
IN (10,20,30);
The index
join type is the same as ALL
, except that the index tree is scanned. This occurs two ways:
If the index is a covering index for the queries and can be used to satisfy all data required from the table, only the index tree is scanned. In this case, the Extra
column says Using index
. An index-only scan usually is faster than ALL
because the size of the index usually is smaller than the table data.
A full table scan is performed using reads from the index to look up data rows in index order. Uses index
does not appear in the Extra
column.
MySQL can use this join type when the query uses only columns that are part of a single index.
A full table scan is done for each combination of rows from the previous tables. This is normally not good if the table is the first table not marked const
, and usually very bad in all other cases. Normally, you can avoid ALL
by adding indexes that enable row retrieval from the table based on constant values or column values from earlier tables.
The Extra
column of EXPLAIN
output contains additional information about how MySQL resolves the query. The following list explains the values that can appear in this column. Each item also indicates for JSON-formatted output which property displays the Extra
value. For some of these, there is a specific property. The others display as the text of the message
property.
If you want to make your queries as fast as possible, look out for Extra
column values of Using filesort
and Using temporary
, or, in JSON-formatted EXPLAIN
output, for using_filesort
and using_temporary_table
properties equal to true
.
Backward index scan
(JSON: backward_index_scan
)
The optimizer is able to use a descending index on an InnoDB
table. Shown together with Using index
. For more information, see Section 8.3.13, “Descending Indexes”.
Child of '
(JSON: table
' pushed join@1message
text)
This table is referenced as the child of table
in a join that can be pushed down to the NDB kernel. Applies only in NDB Cluster, when pushed-down joins are enabled. See the description of the ndb_join_pushdown
server system variable for more information and examples.
const row not found
(JSON property: const_row_not_found
)
For a query such as SELECT ... FROM
, the table was empty.tbl_name
Deleting all rows
(JSON property: message
)
For DELETE
, some storage engines (such as MyISAM
) support a handler method that removes all table rows in a simple and fast way. This Extra
value is displayed if the engine uses this optimization.
Distinct
(JSON property: distinct
)
MySQL is looking for distinct values, so it stops searching for more rows for the current row combination after it has found the first matching row.
FirstMatch(
(JSON property: tbl_name
)first_match
)
The semijoin FirstMatch join shortcutting strategy is used for tbl_name
.
Full scan on NULL key
(JSON property: message
)
This occurs for subquery optimization as a fallback strategy when the optimizer cannot use an index-lookup access method.
Impossible HAVING
(JSON property: message
)
The HAVING
clause is always false and cannot select any rows.
Impossible WHERE
(JSON property: message
)
The WHERE
clause is always false and cannot select any rows.
Impossible WHERE noticed after reading const tables
(JSON property: message
)
MySQL has read all const
(and system
) tables and notice that the WHERE
clause is always false.
LooseScan(
(JSON property: m
..n
)message
)
The semijoin LooseScan strategy is used. m
and n
are key part numbers.
No matching min/max row
(JSON property: message
)
No row satisfies the condition for a query such as SELECT MIN(...) FROM ... WHERE
.condition
no matching row in const table
(JSON property: message
)
For a query with a join, there was an empty table or a table with no rows satisfying a unique index condition.
No matching rows after partition pruning
(JSON property: message
)
For DELETE
or UPDATE
, the optimizer found nothing to delete or update after partition pruning. It is similar in meaning to Impossible WHERE
for SELECT
statements.
No tables used
(JSON property: message
)
The query has no FROM
clause, or has a FROM DUAL
clause.
For INSERT
or REPLACE
statements, EXPLAIN
displays this value when there is no SELECT
part. For example, it appears for EXPLAIN INSERT INTO t VALUES(10)
because that is equivalent to EXPLAIN INSERT INTO t SELECT 10 FROM DUAL
.
Not exists
(JSON property: message
)
MySQL was able to do a LEFT JOIN
optimization on the query and does not examine more rows in this table for the previous row combination after it finds one row that matches the LEFT JOIN
criteria. Here is an example of the type of query that can be optimized this way:
SELECT * FROM t1 LEFT JOIN t2 ON t1.id=t2.id WHERE t2.id IS NULL;
Assume that t2.id
is defined as NOT NULL
. In this case, MySQL scans t1
and looks up the rows in t2
using the values of t1.id
. If MySQL finds a matching row in t2
, it knows that t2.id
can never be NULL
, and does not scan through the rest of the rows in t2
that have the same id
value. In other words, for each row in t1
, MySQL needs to do only a single lookup in t2
, regardless of how many rows actually match in t2
.
In MySQL 8.0.17 and later, this can also indicate that a WHERE
condition of the form NOT IN (
or subquery
)NOT EXISTS (
has been transformed internally into an antijoin. This removes the subquery and brings its tables into the plan for the topmost query, providing improved cost planning. By merging semijoins and antijoins, the optimizer can reorder tables in the execution plan more freely, in some cases resulting in a faster plan.subquery
)
You can see when an antijoin transformation is performed for a given query by checking the Message
column from SHOW WARNINGS
following execution of EXPLAIN
, or in the output of EXPLAIN FORMAT=TREE
.
An antijoin is the complement of a semijoin
. The antijoin returns all rows from table_a
JOIN table_b
ON condition
table_a
for which there is no row in table_b
which matches condition
.
Plan isn't ready yet
(JSON property: none)
This value occurs with EXPLAIN FOR CONNECTION
when the optimizer has not finished creating the execution plan for the statement executing in the named connection. If execution plan output comprises multiple lines, any or all of them could have this Extra
value, depending on the progress of the optimizer in determining the full execution plan.
Range checked for each record (index map:
(JSON property: N
)message
)
MySQL found no good index to use, but found that some of indexes might be used after column values from preceding tables are known. For each row combination in the preceding tables, MySQL checks whether it is possible to use a range
or index_merge
access method to retrieve rows. This is not very fast, but is faster than performing a join with no index at all. The applicability criteria are as described in Section 8.2.1.2, “Range Optimization”, and Section 8.2.1.3, “Index Merge Optimization”, with the exception that all column values for the preceding table are known and considered to be constants.
Indexes are numbered beginning with 1, in the same order as shown by SHOW INDEX
for the table. The index map value N
is a bitmask value that indicates which indexes are candidates. For example, a value of 0x19
(binary 11001) means that indexes 1, 4, and 5 are considered.
Recursive
(JSON property: recursive
)
This indicates that the row applies to the recursive SELECT
part of a recursive common table expression. See Section 13.2.15, “WITH (Common Table Expressions)”.
Rematerialize
(JSON property: rematerialize
)
Rematerialize (X,...)
is displayed in the EXPLAIN
row for table T
, where X
is any lateral derived table whose rematerialization is triggered when a new row of T
is read. For example:
SELECT
...
FROM
t,
LATERAL (derived table that refers to t
) AS dt
...
The content of the derived table is rematerialized to bring it up to date each time a new row of t
is processed by the top query.
Scanned
(JSON property: N
databasesmessage
)
This indicates how many directory scans the server performs when processing a query for INFORMATION_SCHEMA
tables, as described in Section 8.2.3, “Optimizing INFORMATION_SCHEMA Queries”. The value of N
can be 0, 1, or all
.
Select tables optimized away
(JSON property: message
)
The optimizer determined 1) that at most one row should be returned, and 2) that to produce this row, a deterministic set of rows must be read. When the rows to be read can be read during the optimization phase (for example, by reading index rows), there is no need to read any tables during query execution.
The first condition is fulfilled when the query is implicitly grouped (contains an aggregate function but no GROUP BY
clause). The second condition is fulfilled when one row lookup is performed per index used. The number of indexes read determines the number of rows to read.
Consider the following implicitly grouped query:
SELECT MIN(c1), MIN(c2) FROM t1;
Suppose that MIN(c1)
can be retrieved by reading one index row and MIN(c2)
can be retrieved by reading one row from a different index. That is, for each column c1
and c2
, there exists an index where the column is the first column of the index. In this case, one row is returned, produced by reading two deterministic rows.
This Extra
value does not occur if the rows to read are not deterministic. Consider this query:
SELECT MIN(c2) FROM t1 WHERE c1 <= 10;
Suppose that (c1, c2)
is a covering index. Using this index, all rows with c1 <= 10
must be scanned to find the minimum c2
value. By contrast, consider this query:
SELECT MIN(c2) FROM t1 WHERE c1 = 10;
In this case, the first index row with c1 = 10
contains the minimum c2
value. Only one row must be read to produce the returned row.
For storage engines that maintain an exact row count per table (such as MyISAM
, but not InnoDB
), this Extra
value can occur for COUNT(*)
queries for which the WHERE
clause is missing or always true and there is no GROUP BY
clause. (This is an instance of an implicitly grouped query where the storage engine influences whether a deterministic number of rows can be read.)
Skip_open_table
, Open_frm_only
, Open_full_table
(JSON property: message
)
These values indicate file-opening optimizations that apply to queries for INFORMATION_SCHEMA
tables.
Skip_open_table
: Table files do not need to be opened. The information is already available from the data dictionary.
Open_frm_only
: Only the data dictionary need be read for table information.
Open_full_table
: Unoptimized information lookup. Table information must be read from the data dictionary and by reading table files.
Start temporary
, End temporary
(JSON property: message
)
This indicates temporary table use for the semijoin Duplicate Weedout strategy.
unique row not found
(JSON property: message
)
For a query such as SELECT ... FROM
, no rows satisfy the condition for a tbl_name
UNIQUE
index or PRIMARY KEY
on the table.
Using filesort
(JSON property: using_filesort
)
MySQL must do an extra pass to find out how to retrieve the rows in sorted order. The sort is done by going through all rows according to the join type and storing the sort key and pointer to the row for all rows that match the WHERE
clause. The keys then are sorted and the rows are retrieved in sorted order. See Section 8.2.1.16, “ORDER BY Optimization”.
Using index
(JSON property: using_index
)
The column information is retrieved from the table using only information in the index tree without having to do an additional seek to read the actual row. This strategy can be used when the query uses only columns that are part of a single index.
For InnoDB
tables that have a user-defined clustered index, that index can be used even when Using index
is absent from the Extra
column. This is the case if type
is index
and key
is PRIMARY
.
Information about any covering indexes used is shown for EXPLAIN FORMAT=TRADITIONAL
and EXPLAIN FORMAT=JSON
. Beginning with MySQL 8.0.27, it is also shown for EXPLAIN FORMAT=TREE
.
Using index condition
(JSON property: using_index_condition
)
Tables are read by accessing index tuples and testing them first to determine whether to read full table rows. In this way, index information is used to defer (“push down”) reading full table rows unless it is necessary. See Section 8.2.1.6, “Index Condition Pushdown Optimization”.
Using index for group-by
(JSON property: using_index_for_group_by
)
Similar to the Using index
table access method, Using index for group-by
indicates that MySQL found an index that can be used to retrieve all columns of a GROUP BY
or DISTINCT
query without any extra disk access to the actual table. Additionally, the index is used in the most efficient way so that for each group, only a few index entries are read. For details, see Section 8.2.1.17, “GROUP BY Optimization”.
Using index for skip scan
(JSON property: using_index_for_skip_scan
)
Indicates that the Skip Scan access method is used. See Skip Scan Range Access Method.
Using join buffer (Block Nested Loop)
, Using join buffer (Batched Key Access)
, Using join buffer (hash join)
(JSON property: using_join_buffer
)
Tables from earlier joins are read in portions into the join buffer, and then their rows are used from the buffer to perform the join with the current table. (Block Nested Loop)
indicates use of the Block Nested-Loop algorithm, (Batched Key Access)
indicates use of the Batched Key Access algorithm, and (hash join)
indicates use of a hash join. That is, the keys from the table on the preceding line of the EXPLAIN
output are buffered, and the matching rows are fetched in batches from the table represented by the line in which Using join buffer
appears.
In JSON-formatted output, the value of using_join_buffer
is always one of Block Nested Loop
, Batched Key Access
, or hash join
.
Hash joins are available beginning with MySQL 8.0.18; the Block Nested-Loop algorithm is not used in MySQL 8.0.20 or later MySQL releases. For more information about these optimizations, see Section 8.2.1.4, “Hash Join Optimization”, and Block Nested-Loop Join Algorithm.
See Batched Key Access Joins, for information about the Batched Key Access algorithm.
Using MRR
(JSON property: message
)
Tables are read using the Multi-Range Read optimization strategy. See Section 8.2.1.11, “Multi-Range Read Optimization”.
Using sort_union(...)
, Using union(...)
, Using intersect(...)
(JSON property: message
)
These indicate the particular algorithm showing how index scans are merged for the index_merge
join type. See Section 8.2.1.3, “Index Merge Optimization”.
Using temporary
(JSON property: using_temporary_table
)
To resolve the query, MySQL needs to create a temporary table to hold the result. This typically happens if the query contains GROUP BY
and ORDER BY
clauses that list columns differently.
Using where
(JSON property: attached_condition
)
A WHERE
clause is used to restrict which rows to match against the next table or send to the client. Unless you specifically intend to fetch or examine all rows from the table, you may have something wrong in your query if the Extra
value is not Using where
and the table join type is ALL
or index
.
Using where
has no direct counterpart in JSON-formatted output; the attached_condition
property contains any WHERE
condition used.
Using where with pushed condition
(JSON property: message
)
This item applies to NDB
tables only. It means that NDB Cluster is using the Condition Pushdown optimization to improve the efficiency of a direct comparison between a nonindexed column and a constant. In such cases, the condition is “pushed down” to the cluster's data nodes and is evaluated on all data nodes simultaneously. This eliminates the need to send nonmatching rows over the network, and can speed up such queries by a factor of 5 to 10 times over cases where Condition Pushdown could be but is not used. For more information, see Section 8.2.1.5, “Engine Condition Pushdown Optimization”.
Zero limit
(JSON property: message
)
The query had a LIMIT 0
clause and cannot select any rows.
You can get a good indication of how good a join is by taking the product of the values in the rows
column of the EXPLAIN
output. This should tell you roughly how many rows MySQL must examine to execute the query. If you restrict queries with the max_join_size
system variable, this row product also is used to determine which multiple-table SELECT
statements to execute and which to abort. See Section 5.1.1, “Configuring the Server”.
The following example shows how a multiple-table join can be optimized progressively based on the information provided by EXPLAIN
.
Suppose that you have the SELECT
statement shown here and that you plan to examine it using EXPLAIN
:
EXPLAIN SELECT tt.TicketNumber, tt.TimeIn, tt.ProjectReference, tt.EstimatedShipDate, tt.ActualShipDate, tt.ClientID, tt.ServiceCodes, tt.RepetitiveID, tt.CurrentProcess, tt.CurrentDPPerson, tt.RecordVolume, tt.DPPrinted, et.COUNTRY, et_1.COUNTRY, do.CUSTNAME FROM tt, et, et AS et_1, do WHERE tt.SubmitTime IS NULL AND tt.ActualPC = et.EMPLOYID AND tt.AssignedPC = et_1.EMPLOYID AND tt.ClientID = do.CUSTNMBR;
For this example, make the following assumptions:
The columns being compared have been declared as follows.
Table | Column | Data Type |
---|---|---|
tt | ActualPC | CHAR(10) |
tt | AssignedPC | CHAR(10) |
tt | ClientID | CHAR(10) |
et | EMPLOYID | CHAR(15) |
do | CUSTNMBR | CHAR(15) |
The tables have the following indexes.
Table | Index |
---|---|
tt | ActualPC |
tt | AssignedPC |
tt | ClientID |
et | EMPLOYID (primary key) |
do | CUSTNMBR (primary key) |
The tt.ActualPC
values are not evenly distributed.
Initially, before any optimizations have been performed, the EXPLAIN
statement produces the following information:
table type possible_keys key key_len ref rows Extra et ALL PRIMARY NULL NULL NULL 74 do ALL PRIMARY NULL NULL NULL 2135 et_1 ALL PRIMARY NULL NULL NULL 74 tt ALL AssignedPC, NULL NULL NULL 3872 ClientID, ActualPC Range checked for each record (index map: 0x23)
Because type
is ALL
for each table, this output indicates that MySQL is generating a Cartesian product of all the tables; that is, every combination of rows. This takes quite a long time, because the product of the number of rows in each table must be examined. For the case at hand, this product is 74 × 2135 × 74 × 3872 = 45,268,558,720 rows. If the tables were bigger, you can only imagine how long it would take.
One problem here is that MySQL can use indexes on columns more efficiently if they are declared as the same type and size. In this context, VARCHAR
and CHAR
are considered the same if they are declared as the same size. tt.ActualPC
is declared as CHAR(10)
and et.EMPLOYID
is CHAR(15)
, so there is a length mismatch.
To fix this disparity between column lengths, use ALTER TABLE
to lengthen ActualPC
from 10 characters to 15 characters:
mysql> ALTER TABLE tt MODIFY ActualPC VARCHAR(15);
Now tt.ActualPC
and et.EMPLOYID
are both VARCHAR(15)
. Executing the EXPLAIN
statement again produces this result:
table type possible_keys key key_len ref rows Extra tt ALL AssignedPC, NULL NULL NULL 3872 Using ClientID, where ActualPC do ALL PRIMARY NULL NULL NULL 2135 Range checked for each record (index map: 0x1) et_1 ALL PRIMARY NULL NULL NULL 74 Range checked for each record (index map: 0x1) et eq_ref PRIMARY PRIMARY 15 tt.ActualPC 1
This is not perfect, but is much better: The product of the rows
values is less by a factor of 74. This version executes in a couple of seconds.
A second alteration can be made to eliminate the column length mismatches for the tt.AssignedPC = et_1.EMPLOYID
and tt.ClientID = do.CUSTNMBR
comparisons:
mysql>ALTER TABLE tt MODIFY AssignedPC VARCHAR(15),
MODIFY ClientID VARCHAR(15);
After that modification, EXPLAIN
produces the output shown here:
table type possible_keys key key_len ref rows Extra et ALL PRIMARY NULL NULL NULL 74 tt ref AssignedPC, ActualPC 15 et.EMPLOYID 52 Using ClientID, where ActualPC et_1 eq_ref PRIMARY PRIMARY 15 tt.AssignedPC 1 do eq_ref PRIMARY PRIMARY 15 tt.ClientID 1
At this point, the query is optimized almost as well as possible. The remaining problem is that, by default, MySQL assumes that values in the tt.ActualPC
column are evenly distributed, and that is not the case for the tt
table. Fortunately, it is easy to tell MySQL to analyze the key distribution:
mysql> ANALYZE TABLE tt;
With the additional index information, the join is perfect and EXPLAIN
produces this result:
table type possible_keys key key_len ref rows Extra tt ALL AssignedPC NULL NULL NULL 3872 Using ClientID, where ActualPC et eq_ref PRIMARY PRIMARY 15 tt.ActualPC 1 et_1 eq_ref PRIMARY PRIMARY 15 tt.AssignedPC 1 do eq_ref PRIMARY PRIMARY 15 tt.ClientID 1
The rows
column in the output from EXPLAIN
is an educated guess from the MySQL join optimizer. Check whether the numbers are even close to the truth by comparing the rows
product with the actual number of rows that the query returns. If the numbers are quite different, you might get better performance by using STRAIGHT_JOIN
in your SELECT
statement and trying to list the tables in a different order in the FROM
clause. (However, STRAIGHT_JOIN
may prevent indexes from being used because it disables semijoin transformations. See Section 8.2.2.1, “Optimizing IN and EXISTS Subquery Predicates with Semijoin Transformations”.)
It is possible in some cases to execute statements that modify data when EXPLAIN SELECT
is used with a subquery; for more information, see Section 13.2.11.8, “Derived Tables”.