Table of Contents
MySQL supports a number of SQL data
types in several categories: numeric types, date and time types,
string (character and byte) types, spatial types, and the
JSON
data type. This chapter provides
an overview of these data types, a more detailed description of the
properties of the types in each category, and a summary of the data
type storage requirements. The initial overview is intentionally
brief. The more detailed descriptions later in the chapter should be
consulted for additional information about particular data types,
such as the permissible formats in which you can specify values.
Data type descriptions use these conventions:
M
indicates the maximum display width
for integer types. For floating-point and fixed-point types,
M
is the total number of digits that
can be stored (the precision). For string types,
M
is the maximum length. The maximum
permissible value of M
depends on the
data type.
D
applies to floating-point and
fixed-point types and indicates the number of digits following
the decimal point (the scale). The maximum possible value is 30,
but should be no greater than
M
−2.
fsp
applies to the
TIME
,
DATETIME
, and
TIMESTAMP
types and represents
fractional seconds precision; that is, the number of digits
following the decimal point for fractional parts of seconds. The
fsp
value, if given, must be in the
range 0 to 6. A value of 0 signifies that there is no fractional
part. If omitted, the default precision is 0. (This differs from
the standard SQL default of 6, for compatibility with previous
MySQL versions.)
Square brackets ([
and ]
)
indicate optional parts of type definitions.
A summary of the numeric data types follows. For additional information about properties and storage requirements of the numeric types, see Section 12.2, “Numeric Types”, and Section 12.8, “Data Type Storage Requirements”.
M
indicates the maximum display width
for integer types. The maximum display width is 255. Display
width is unrelated to the range of values a type can contain, as
described in Section 12.2, “Numeric Types”. For floating-point
and fixed-point types, M
is the total
number of digits that can be stored.
If you specify ZEROFILL
for a numeric column,
MySQL automatically adds the UNSIGNED
attribute to the column.
Numeric data types that permit the UNSIGNED
attribute also permit SIGNED
. However, these
data types are signed by default, so the
SIGNED
attribute has no effect.
SERIAL
is an alias for BIGINT
UNSIGNED NOT NULL AUTO_INCREMENT UNIQUE
.
SERIAL DEFAULT VALUE
in the definition of an
integer column is an alias for NOT NULL AUTO_INCREMENT
UNIQUE
.
When you use subtraction between integer values where one is
of type UNSIGNED
, the result is unsigned
unless the
NO_UNSIGNED_SUBTRACTION
SQL
mode is enabled. See Section 13.10, “Cast Functions and Operators”.
A bit-value type. M
indicates the
number of bits per value, from 1 to 64. The default is 1 if
M
is omitted.
TINYINT[(
M
)]
[UNSIGNED] [ZEROFILL]
A very small integer. The signed range is
-128
to 127
. The
unsigned range is 0
to
255
.
These types are synonyms for
TINYINT(1)
. A value of zero
is considered false. Nonzero values are considered true:
mysql>SELECT IF(0, 'true', 'false');
+------------------------+ | IF(0, 'true', 'false') | +------------------------+ | false | +------------------------+ mysql>SELECT IF(1, 'true', 'false');
+------------------------+ | IF(1, 'true', 'false') | +------------------------+ | true | +------------------------+ mysql>SELECT IF(2, 'true', 'false');
+------------------------+ | IF(2, 'true', 'false') | +------------------------+ | true | +------------------------+
However, the values TRUE
and
FALSE
are merely aliases for
1
and 0
, respectively,
as shown here:
mysql>SELECT IF(0 = FALSE, 'true', 'false');
+--------------------------------+ | IF(0 = FALSE, 'true', 'false') | +--------------------------------+ | true | +--------------------------------+ mysql>SELECT IF(1 = TRUE, 'true', 'false');
+-------------------------------+ | IF(1 = TRUE, 'true', 'false') | +-------------------------------+ | true | +-------------------------------+ mysql>SELECT IF(2 = TRUE, 'true', 'false');
+-------------------------------+ | IF(2 = TRUE, 'true', 'false') | +-------------------------------+ | false | +-------------------------------+ mysql>SELECT IF(2 = FALSE, 'true', 'false');
+--------------------------------+ | IF(2 = FALSE, 'true', 'false') | +--------------------------------+ | false | +--------------------------------+
The last two statements display the results shown because
2
is equal to neither
1
nor 0
.
SMALLINT[(
M
)]
[UNSIGNED] [ZEROFILL]
A small integer. The signed range is
-32768
to 32767
. The
unsigned range is 0
to
65535
.
MEDIUMINT[(
M
)]
[UNSIGNED] [ZEROFILL]
A medium-sized integer. The signed range is
-8388608
to 8388607
.
The unsigned range is 0
to
16777215
.
INT[(
M
)]
[UNSIGNED] [ZEROFILL]
A normal-size integer. The signed range is
-2147483648
to
2147483647
. The unsigned range is
0
to 4294967295
.
INTEGER[(
M
)]
[UNSIGNED] [ZEROFILL]
This type is a synonym for
INT
.
BIGINT[(
M
)]
[UNSIGNED] [ZEROFILL]
A large integer. The signed range is
-9223372036854775808
to
9223372036854775807
. The unsigned range
is 0
to
18446744073709551615
.
SERIAL
is an alias for BIGINT
UNSIGNED NOT NULL AUTO_INCREMENT UNIQUE
.
Some things you should be aware of with respect to
BIGINT
columns:
All arithmetic is done using signed
BIGINT
or
DOUBLE
values, so you
should not use unsigned big integers larger than
9223372036854775807
(63 bits) except
with bit functions! If you do that, some of the last
digits in the result may be wrong because of rounding
errors when converting a
BIGINT
value to a
DOUBLE
.
MySQL can handle BIGINT
in the following cases:
When using integers to store large unsigned values
in a BIGINT
column.
In
MIN(
or
col_name
)MAX(
,
where col_name
)col_name
refers to
a BIGINT
column.
When using operators
(+
,
-
,
*
,
and so on) where both operands are integers.
You can always store an exact integer value in a
BIGINT
column by storing
it using a string. In this case, MySQL performs a
string-to-number conversion that involves no
intermediate double-precision representation.
The -
,
+
, and
*
operators use BIGINT
arithmetic when both operands are integer values. This
means that if you multiply two big integers (or results
from functions that return integers), you may get
unexpected results when the result is larger than
9223372036854775807
.
DECIMAL[(
M
[,D
])]
[UNSIGNED] [ZEROFILL]
A packed “exact” fixed-point number.
M
is the total number of digits
(the precision) and D
is the
number of digits after the decimal point (the scale). The
decimal point and (for negative numbers) the
-
sign are not counted in
M
. If
D
is 0, values have no decimal
point or fractional part. The maximum number of digits
(M
) for
DECIMAL
is 65. The maximum
number of supported decimals (D
)
is 30. If D
is omitted, the
default is 0. If M
is omitted,
the default is 10.
UNSIGNED
, if specified, disallows
negative values.
All basic calculations (+, -, *, /
) with
DECIMAL
columns are done with
a precision of 65 digits.
DEC[(
,
M
[,D
])]
[UNSIGNED] [ZEROFILL]NUMERIC[(
,
M
[,D
])]
[UNSIGNED] [ZEROFILL]FIXED[(
M
[,D
])]
[UNSIGNED] [ZEROFILL]
These types are synonyms for
DECIMAL
. The
FIXED
synonym is available
for compatibility with other database systems.
FLOAT[(
M
,D
)]
[UNSIGNED] [ZEROFILL]
A small (single-precision) floating-point number.
Permissible values are -3.402823466E+38
to -1.175494351E-38
,
0
, and 1.175494351E-38
to 3.402823466E+38
. These are the
theoretical limits, based on the IEEE standard. The actual
range might be slightly smaller depending on your hardware
or operating system.
M
is the total number of digits
and D
is the number of digits
following the decimal point. If M
and D
are omitted, values are
stored to the limits permitted by the hardware. A
single-precision floating-point number is accurate to
approximately 7 decimal places.
UNSIGNED
, if specified, disallows
negative values.
Using FLOAT
might give you
some unexpected problems because all calculations in MySQL
are done with double precision. See
Section B.5.4.7, “Solving Problems with No Matching Rows”.
DOUBLE[(
M
,D
)]
[UNSIGNED] [ZEROFILL]
A normal-size (double-precision) floating-point number.
Permissible values are
-1.7976931348623157E+308
to
-2.2250738585072014E-308
,
0
, and
2.2250738585072014E-308
to
1.7976931348623157E+308
. These are the
theoretical limits, based on the IEEE standard. The actual
range might be slightly smaller depending on your hardware
or operating system.
M
is the total number of digits
and D
is the number of digits
following the decimal point. If M
and D
are omitted, values are
stored to the limits permitted by the hardware. A
double-precision floating-point number is accurate to
approximately 15 decimal places.
UNSIGNED
, if specified, disallows
negative values.
DOUBLE
PRECISION[(
,
M
,D
)]
[UNSIGNED] [ZEROFILL]REAL[(
M
,D
)]
[UNSIGNED] [ZEROFILL]
These types are synonyms for
DOUBLE
. Exception: If the
REAL_AS_FLOAT
SQL mode is
enabled, REAL
is a synonym
for FLOAT
rather than
DOUBLE
.
FLOAT(
p
)
[UNSIGNED] [ZEROFILL]
A floating-point number. p
represents the precision in bits, but MySQL uses this value
only to determine whether to use
FLOAT
or
DOUBLE
for the resulting data
type. If p
is from 0 to 24, the
data type becomes FLOAT
with
no M
or
D
values. If
p
is from 25 to 53, the data type
becomes DOUBLE
with no
M
or D
values. The range of the resulting column is the same as for
the single-precision FLOAT
or
double-precision DOUBLE
data
types described earlier in this section.
FLOAT(
syntax is provided for ODBC compatibility.
p
)
A summary of the temporal data types follows. For additional information about properties and storage requirements of the temporal types, see Section 12.3, “Date and Time Types”, and Section 12.8, “Data Type Storage Requirements”. For descriptions of functions that operate on temporal values, see Section 13.7, “Date and Time Functions”.
For the DATE
and
DATETIME
range descriptions,
“supported” means that although earlier values
might work, there is no guarantee.
MySQL permits fractional seconds for
TIME
,
DATETIME
, and
TIMESTAMP
values, with up to
microseconds (6 digits) precision. To define a column that
includes a fractional seconds part, use the syntax
,
where type_name
(fsp
)type_name
is
TIME
,
DATETIME
, or
TIMESTAMP
, and
fsp
is the fractional seconds
precision. For example:
CREATE TABLE t1 (t TIME(3), dt DATETIME(6));
The fsp
value, if given, must be in
the range 0 to 6. A value of 0 signifies that there is no
fractional part. If omitted, the default precision is 0. (This
differs from the standard SQL default of 6, for compatibility
with previous MySQL versions.)
Any TIMESTAMP
or
DATETIME
column in a table can
have automatic initialization and updating properties.
A date. The supported range is
'1000-01-01'
to
'9999-12-31'
. MySQL displays
DATE
values in
'YYYY-MM-DD'
format, but permits
assignment of values to DATE
columns using either strings or numbers.
A date and time combination. The supported range is
'1000-01-01 00:00:00.000000'
to
'9999-12-31 23:59:59.999999'
. MySQL
displays DATETIME
values in
'YYYY-MM-DD HH:MM:SS[.fraction]'
format,
but permits assignment of values to
DATETIME
columns using either
strings or numbers.
An optional fsp
value in the
range from 0 to 6 may be given to specify fractional seconds
precision. A value of 0 signifies that there is no
fractional part. If omitted, the default precision is 0.
Automatic initialization and updating to the current date
and time for DATETIME
columns
can be specified using DEFAULT
and
ON UPDATE
column definition clauses, as
described in Section 12.3.5, “Automatic Initialization and Updating for TIMESTAMP and DATETIME”.
A timestamp. The range is '1970-01-01
00:00:01.000000'
UTC to '2038-01-19
03:14:07.999999'
UTC.
TIMESTAMP
values are stored
as the number of seconds since the epoch
('1970-01-01 00:00:00'
UTC). A
TIMESTAMP
cannot represent
the value '1970-01-01 00:00:00'
because
that is equivalent to 0 seconds from the epoch and the value
0 is reserved for representing '0000-00-00
00:00:00'
, the “zero”
TIMESTAMP
value.
An optional fsp
value in the
range from 0 to 6 may be given to specify fractional seconds
precision. A value of 0 signifies that there is no
fractional part. If omitted, the default precision is 0.
The way the server handles TIMESTAMP
definitions depends on the value of the
explicit_defaults_for_timestamp
system variable (see
Section 6.1.5, “Server System Variables”). By default,
explicit_defaults_for_timestamp
is disabled and the server handles
TIMESTAMP
as follows:
Unless specified otherwise, the first
TIMESTAMP
column in a table
is defined to be automatically set to the date and time of
the most recent modification if not explicitly assigned a
value. This makes TIMESTAMP
useful for recording the timestamp of an
INSERT
or
UPDATE
operation. You can
also set any TIMESTAMP
column
to the current date and time by assigning it a
NULL
value, unless it has been defined
with the NULL
attribute to permit
NULL
values.
Automatic initialization and updating to the current date
and time can be specified using DEFAULT
CURRENT_TIMESTAMP
and ON UPDATE
CURRENT_TIMESTAMP
column definition clauses. By
default, the first TIMESTAMP
column has these properties, as previously noted. However,
any TIMESTAMP
column in a
table can be defined to have these properties.
If
explicit_defaults_for_timestamp
is enabled, there is no automatic assignment of the
DEFAULT CURRENT_TIMESTAMP
or ON
UPDATE CURRENT_TIMESTAMP
attributes to any
TIMESTAMP
column. They must
be included explicitly in the column definition. Also, any
TIMESTAMP
not explicitly
declared as NOT NULL
permits
NULL
values.
A time. The range is '-838:59:59.000000'
to '838:59:59.000000'
. MySQL displays
TIME
values in
'HH:MM:SS[.fraction]'
format, but permits
assignment of values to TIME
columns using either strings or numbers.
An optional fsp
value in the
range from 0 to 6 may be given to specify fractional seconds
precision. A value of 0 signifies that there is no
fractional part. If omitted, the default precision is 0.
A year in four-digit format. MySQL displays
YEAR
values in
YYYY
format, but permits assignment of
values to YEAR
columns using
either strings or numbers. Values display as
1901
to 2155
, and
0000
.
The YEAR(2)
data type is
deprecated and support for it is removed in MySQL 5.7.5.
To convert YEAR(2)
columns
to YEAR(4)
, see
Section 12.3.4, “YEAR(2) Limitations and Migrating to YEAR(4)”.
For additional information about
YEAR
display format and
interpretation of input values, see Section 12.3.3, “The YEAR Type”.
The SUM()
and
AVG()
aggregate functions do not
work with temporal values. (They convert the values to numbers,
losing everything after the first nonnumeric character.) To work
around this problem, convert to numeric units, perform the
aggregate operation, and convert back to a temporal value.
Examples:
SELECT SEC_TO_TIME(SUM(TIME_TO_SEC(time_col
))) FROMtbl_name
; SELECT FROM_DAYS(SUM(TO_DAYS(date_col
))) FROMtbl_name
;
The MySQL server can be run with the
MAXDB
SQL mode enabled. In
this case, TIMESTAMP
is
identical with DATETIME
. If
this mode is enabled at the time that a table is created,
TIMESTAMP
columns are created
as DATETIME
columns. As a
result, such columns use
DATETIME
display format, have
the same range of values, and there is no automatic
initialization or updating to the current date and time. See
Section 6.1.8, “Server SQL Modes”.
A summary of the string data types follows. For additional information about properties and storage requirements of the string types, see Section 12.4, “String Types”, and Section 12.8, “Data Type Storage Requirements”.
In some cases, MySQL may change a string column to a type
different from that given in a CREATE
TABLE
or ALTER TABLE
statement. See Section 14.1.18.6, “Silent Column Specification Changes”.
MySQL interprets length specifications in character column
definitions in character units. This applies to
CHAR
,
VARCHAR
, and the
TEXT
types.
Column definitions for many string data types can include
attributes that specify the character set or collation of the
column. These attributes apply to the
CHAR
,
VARCHAR
, the
TEXT
types,
ENUM
, and
SET
data types:
The CHARACTER SET
attribute specifies the
character set, and the COLLATE
attribute
specifies a collation for the character set. For example:
CREATE TABLE t ( c1 VARCHAR(20) CHARACTER SET utf8, c2 TEXT CHARACTER SET latin1 COLLATE latin1_general_cs );
This table definition creates a column named
c1
that has a character set of
utf8
with the default collation for that
character set, and a column named c2
that
has a character set of latin1
and a
case-sensitive collation.
The rules for assigning the character set and collation when
either or both of the CHARACTER SET
and
COLLATE
attributes are missing are
described in Section 11.1.3.5, “Column Character Set and Collation”.
CHARSET
is a synonym for
CHARACTER SET
.
Specifying the CHARACTER SET binary
attribute for a character string data type causes the column
to be created as the corresponding binary string data type:
CHAR
becomes
BINARY
,
VARCHAR
becomes
VARBINARY
, and
TEXT
becomes
BLOB
. For the
ENUM
and
SET
data types, this does not
occur; they are created as declared. Suppose that you
specify a table using this definition:
CREATE TABLE t ( c1 VARCHAR(10) CHARACTER SET binary, c2 TEXT CHARACTER SET binary, c3 ENUM('a','b','c') CHARACTER SET binary );
The resulting table has this definition:
CREATE TABLE t ( c1 VARBINARY(10), c2 BLOB, c3 ENUM('a','b','c') CHARACTER SET binary );
The BINARY
attribute is shorthand for
specifying the table default character set and the binary
(_bin
) collation of that character set.
In this case, comparison and sorting are based on numeric
character code values.
The ASCII
attribute is shorthand for
CHARACTER SET latin1
.
The UNICODE
attribute is shorthand for
CHARACTER SET ucs2
.
Character column comparison and sorting are based on the
collation assigned to the column. For the
CHAR
,
VARCHAR
,
TEXT
,
ENUM
, and
SET
data types, you can declare a
column with a binary (_bin
) collation or the
BINARY
attribute to cause comparison and
sorting to use the underlying character code values rather than
a lexical ordering.
For additional information about use of character sets in MySQL, see Section 11.1, “Character Set Support”.
[NATIONAL] CHAR[(
M
)]
[CHARACTER SET charset_name
]
[COLLATE
collation_name
]
A fixed-length string that is always right-padded with
spaces to the specified length when stored.
M
represents the column length in
characters. The range of M
is 0
to 255. If M
is omitted, the
length is 1.
Trailing spaces are removed when
CHAR
values are retrieved
unless the
PAD_CHAR_TO_FULL_LENGTH
SQL mode is enabled.
CHAR
is shorthand for
CHARACTER
.
NATIONAL CHAR
(or its
equivalent short form, NCHAR
)
is the standard SQL way to define that a
CHAR
column should use some
predefined character set. MySQL uses utf8
as this predefined character set.
Section 11.1.3.7, “The National Character Set”.
The CHAR BYTE
data type is an
alias for the BINARY
data
type. This is a compatibility feature.
MySQL permits you to create a column of type
CHAR(0)
. This is useful primarily when
you have to be compliant with old applications that depend
on the existence of a column but that do not actually use
its value. CHAR(0)
is also quite nice
when you need a column that can take only two values: A
column that is defined as CHAR(0) NULL
occupies only one bit and can take only the values
NULL
and ''
(the empty
string).
[NATIONAL] VARCHAR(
M
)
[CHARACTER SET charset_name
]
[COLLATE
collation_name
]
A variable-length string. M
represents the maximum column length in characters. The
range of M
is 0 to 65,535. The
effective maximum length of a
VARCHAR
is subject to the
maximum row size (65,535 bytes, which is shared among all
columns) and the character set used. For example,
utf8
characters can require up to three
bytes per character, so a
VARCHAR
column that uses the
utf8
character set can be declared to be
a maximum of 21,844 characters. See
Section C.10.4, “Limits on Table Column Count and Row Size”.
MySQL stores VARCHAR
values
as a 1-byte or 2-byte length prefix plus data. The length
prefix indicates the number of bytes in the value. A
VARCHAR
column uses one
length byte if values require no more than 255 bytes, two
length bytes if values may require more than 255 bytes.
MySQL follows the standard SQL specification, and does
not remove trailing spaces from
VARCHAR
values.
VARCHAR
is shorthand for
CHARACTER VARYING
.
NATIONAL VARCHAR
is the
standard SQL way to define that a
VARCHAR
column should use
some predefined character set. MySQL uses
utf8
as this predefined character set.
Section 11.1.3.7, “The National Character Set”.
NVARCHAR
is shorthand for
NATIONAL VARCHAR
.
The BINARY
type is similar to
the CHAR
type, but stores
binary byte strings rather than nonbinary character strings.
M
represents the column length in
bytes.
The VARBINARY
type is similar
to the VARCHAR
type, but
stores binary byte strings rather than nonbinary character
strings. M
represents the maximum
column length in bytes.
A BLOB
column with a maximum
length of 255 (28 − 1)
bytes. Each TINYBLOB
value is
stored using a 1-byte length prefix that indicates the
number of bytes in the value.
TINYTEXT
[CHARACTER SET
charset_name
]
[COLLATE
collation_name
]
A TEXT
column with a maximum
length of 255 (28 − 1)
characters. The effective maximum length is less if the
value contains multibyte characters. Each
TINYTEXT
value is stored
using a 1-byte length prefix that indicates the number of
bytes in the value.
A BLOB
column with a maximum
length of 65,535 (216 − 1)
bytes. Each BLOB
value is
stored using a 2-byte length prefix that indicates the
number of bytes in the value.
An optional length M
can be given
for this type. If this is done, MySQL creates the column as
the smallest BLOB
type large
enough to hold values M
bytes
long.
TEXT[(
M
)]
[CHARACTER SET charset_name
]
[COLLATE
collation_name
]
A TEXT
column with a maximum
length of 65,535 (216 − 1)
characters. The effective maximum length is less if the
value contains multibyte characters. Each
TEXT
value is stored using a
2-byte length prefix that indicates the number of bytes in
the value.
An optional length M
can be given
for this type. If this is done, MySQL creates the column as
the smallest TEXT
type large
enough to hold values M
characters long.
A BLOB
column with a maximum
length of 16,777,215 (224 −
1) bytes. Each MEDIUMBLOB
value is stored using a 3-byte length prefix that indicates
the number of bytes in the value.
MEDIUMTEXT
[CHARACTER SET
charset_name
]
[COLLATE
collation_name
]
A TEXT
column with a maximum
length of 16,777,215 (224 −
1) characters. The effective maximum length is less if the
value contains multibyte characters. Each
MEDIUMTEXT
value is stored
using a 3-byte length prefix that indicates the number of
bytes in the value.
A BLOB
column with a maximum
length of 4,294,967,295 or 4GB
(232 − 1) bytes. The
effective maximum length of
LONGBLOB
columns depends on
the configured maximum packet size in the client/server
protocol and available memory. Each
LONGBLOB
value is stored
using a 4-byte length prefix that indicates the number of
bytes in the value.
LONGTEXT
[CHARACTER SET
charset_name
]
[COLLATE
collation_name
]
A TEXT
column with a maximum
length of 4,294,967,295 or 4GB
(232 − 1) characters. The
effective maximum length is less if the value contains
multibyte characters. The effective maximum length of
LONGTEXT
columns also depends on the configured maximum packet size
in the client/server protocol and available memory. Each
LONGTEXT
value is stored using a 4-byte length prefix that indicates
the number of bytes in the value.
ENUM('
value1
','value2
',...)
[CHARACTER SET charset_name
]
[COLLATE
collation_name
]
An enumeration. A string object that can have only one
value, chosen from the list of values
'
,
value1
''
,
value2
'...
, NULL
or the
special ''
error value.
ENUM
values are represented
internally as integers.
An ENUM
column can have a
maximum of 65,535 distinct elements. (The practical limit is
less than 3000.) A table can have no more than 255 unique
element list definitions among its
ENUM
and
SET
columns considered as a
group. For more information on these limits, see
Section C.10.5, “Limits Imposed by .frm File Structure”.
SET('
value1
','value2
',...)
[CHARACTER SET charset_name
]
[COLLATE
collation_name
]
A set. A string object that can have zero or more values,
each of which must be chosen from the list of values
'
,
value1
''
,
value2
'...
SET
values are represented internally as integers.
A SET
column can have a
maximum of 64 distinct members. A table can have no more
than 255 unique element list definitions among its
ENUM
and
SET
columns considered as a
group. For more information on this limit, see
Section C.10.5, “Limits Imposed by .frm File Structure”.
MySQL supports all standard SQL numeric data types. These types
include the exact numeric data types
(INTEGER
,
SMALLINT
,
DECIMAL
, and
NUMERIC
), as well as the
approximate numeric data types
(FLOAT
,
REAL
, and
DOUBLE PRECISION
). The keyword
INT
is a synonym for
INTEGER
, and the keywords
DEC
and
FIXED
are synonyms for
DECIMAL
. MySQL treats
DOUBLE
as a synonym for
DOUBLE PRECISION
(a nonstandard
extension). MySQL also treats REAL
as a synonym for DOUBLE PRECISION
(a nonstandard variation), unless the
REAL_AS_FLOAT
SQL mode is
enabled.
The BIT
data type stores bit values
and is supported for MyISAM
,
MEMORY
,
InnoDB
, and
NDB
tables.
For information about how MySQL handles assignment of out-of-range values to columns and overflow during expression evaluation, see Section 12.2.6, “Out-of-Range and Overflow Handling”.
For information about numeric type storage requirements, see Section 12.8, “Data Type Storage Requirements”.
The data type used for the result of a calculation on numeric operands depends on the types of the operands and the operations performed on them. For more information, see Section 13.6.1, “Arithmetic Operators”.
MySQL supports the SQL standard integer types
INTEGER
(or INT
) and
SMALLINT
. As an extension to the standard,
MySQL also supports the integer types
TINYINT
, MEDIUMINT
, and
BIGINT
. The following table shows the
required storage and range for each integer type.
Type | Storage | Minimum Value | Maximum Value |
---|---|---|---|
(Bytes) | (Signed/Unsigned) | (Signed/Unsigned) | |
TINYINT | 1 | -128 | 127 |
0 | 255 | ||
SMALLINT | 2 | -32768 | 32767 |
0 | 65535 | ||
MEDIUMINT | 3 | -8388608 | 8388607 |
0 | 16777215 | ||
INT | 4 | -2147483648 | 2147483647 |
0 | 4294967295 | ||
BIGINT | 8 | -9223372036854775808 | 9223372036854775807 |
0 | 18446744073709551615 |
The DECIMAL
and NUMERIC
types store exact numeric data values. These types are used when
it is important to preserve exact precision, for example with
monetary data. In MySQL, NUMERIC
is
implemented as DECIMAL
, so the following
remarks about DECIMAL
apply equally to
NUMERIC
.
MySQL stores DECIMAL
values in binary format.
See Section 13.21, “Precision Math”.
In a DECIMAL
column declaration, the
precision and scale can be (and usually is) specified; for
example:
salary DECIMAL(5,2)
In this example, 5
is the precision and
2
is the scale. The precision represents the
number of significant digits that are stored for values, and the
scale represents the number of digits that can be stored
following the decimal point.
Standard SQL requires that DECIMAL(5,2)
be
able to store any value with five digits and two decimals, so
values that can be stored in the salary
column range from -999.99
to
999.99
.
In standard SQL, the syntax
DECIMAL(
is
equivalent to
M
)DECIMAL(
.
Similarly, the syntax M
,0)DECIMAL
is equivalent
to DECIMAL(
,
where the implementation is permitted to decide the value of
M
,0)M
. MySQL supports both of these
variant forms of DECIMAL
syntax. The default
value of M
is 10.
If the scale is 0, DECIMAL
values contain no
decimal point or fractional part.
The maximum number of digits for DECIMAL
is
65, but the actual range for a given DECIMAL
column can be constrained by the precision or scale for a given
column. When such a column is assigned a value with more digits
following the decimal point than are permitted by the specified
scale, the value is converted to that scale. (The precise
behavior is operating system-specific, but generally the effect
is truncation to the permissible number of digits.)
The FLOAT
and DOUBLE
types
represent approximate numeric data values. MySQL uses four bytes
for single-precision values and eight bytes for double-precision
values.
For FLOAT
, the SQL standard permits an
optional specification of the precision (but not the range of
the exponent) in bits following the keyword
FLOAT
in parentheses. MySQL also supports
this optional precision specification, but the precision value
is used only to determine storage size. A precision from 0 to 23
results in a 4-byte single-precision FLOAT
column. A precision from 24 to 53 results in an 8-byte
double-precision DOUBLE
column.
MySQL permits a nonstandard syntax:
FLOAT(
or
M
,D
)REAL(
or M
,D
)DOUBLE
PRECISION(
.
Here,
M
,D
)(
means than values can be stored with up to
M
,D
)M
digits in total, of which
D
digits may be after the decimal
point. For example, a column defined as
FLOAT(7,4)
will look like
-999.9999
when displayed. MySQL performs
rounding when storing values, so if you insert
999.00009
into a
FLOAT(7,4)
column, the approximate result is
999.0001
.
Because floating-point values are approximate and not stored as exact values, attempts to treat them as exact in comparisons may lead to problems. They are also subject to platform or implementation dependencies. For more information, see Section B.5.4.8, “Problems with Floating-Point Values”
For maximum portability, code requiring storage of approximate
numeric data values should use FLOAT
or
DOUBLE PRECISION
with no specification of
precision or number of digits.
The BIT
data type is used to store bit
values. A type of
BIT(
enables
storage of M
)M
-bit values.
M
can range from 1 to 64.
To specify bit values,
b'
notation
can be used. value
'value
is a binary value
written using zeros and ones. For example,
b'111'
and b'10000000'
represent 7 and 128, respectively. See
Section 10.1.5, “Bit-Value Literals”.
If you assign a value to a
BIT(
column that
is less than M
)M
bits long, the value
is padded on the left with zeros. For example, assigning a value
of b'101'
to a BIT(6)
column is, in effect, the same as assigning
b'000101'
.
NDB Cluster.
The maximum combined size of all BIT
columns used in a given NDB
table
must not exceed 4096 bits.
MySQL supports an extension for optionally specifying the
display width of integer data types in parentheses following the
base keyword for the type. For example,
INT(4)
specifies an
INT
with a display width of four
digits. This optional display width may be used by applications
to display integer values having a width less than the width
specified for the column by left-padding them with spaces. (That
is, this width is present in the metadata returned with result
sets. Whether it is used or not is up to the application.)
The display width does not constrain the
range of values that can be stored in the column. Nor does it
prevent values wider than the column display width from being
displayed correctly. For example, a column specified as
SMALLINT(3)
has the usual
SMALLINT
range of
-32768
to 32767
, and
values outside the range permitted by three digits are displayed
in full using more than three digits.
When used in conjunction with the optional (nonstandard)
attribute ZEROFILL
, the default padding of
spaces is replaced with zeros. For example, for a column
declared as INT(4) ZEROFILL
, a
value of 5
is retrieved as
0005
.
The ZEROFILL
attribute is ignored when a
column is involved in expressions or
UNION
queries.
If you store values larger than the display width in an
integer column that has the ZEROFILL
attribute, you may experience problems when MySQL generates
temporary tables for some complicated joins. In these cases,
MySQL assumes that the data values fit within the column
display width.
All integer types can have an optional (nonstandard) attribute
UNSIGNED
. Unsigned type can be used to permit
only nonnegative numbers in a column or when you need a larger
upper numeric range for the column. For example, if an
INT
column is
UNSIGNED
, the size of the column's range is
the same but its endpoints shift from
-2147483648
and 2147483647
up to 0
and 4294967295
.
Floating-point and fixed-point types also can be
UNSIGNED
. As with integer types, this
attribute prevents negative values from being stored in the
column. Unlike the integer types, the upper range of column
values remains the same.
If you specify ZEROFILL
for a numeric column,
MySQL automatically adds the UNSIGNED
attribute to the column.
Integer or floating-point data types can have the additional
attribute AUTO_INCREMENT
. When you insert a
value of NULL
into an indexed
AUTO_INCREMENT
column, the column is set to
the next sequence value. Typically this is
, where
value
+1value
is the largest value for the
column currently in the table.
(AUTO_INCREMENT
sequences begin with
1
.)
Storing 0
into an
AUTO_INCREMENT
column has the same effect as
storing NULL
, unless the
NO_AUTO_VALUE_ON_ZERO
SQL mode
is enabled.
Inserting NULL
to generate
AUTO_INCREMENT
values requires that the
column be declared NOT NULL
. If the column is
declared NULL
, inserting
NULL
stores a NULL
. When
you insert any other value into an
AUTO_INCREMENT
column, the column is set to
that value and the sequence is reset so that the next
automatically generated value follows sequentially from the
inserted value.
In MySQL 5.7, negative values for
AUTO_INCREMENT
columns are not supported.
When MySQL stores a value in a numeric column that is outside the permissible range of the column data type, the result depends on the SQL mode in effect at the time:
If strict SQL mode is enabled, MySQL rejects the out-of-range value with an error, and the insert fails, in accordance with the SQL standard.
If no restrictive modes are enabled, MySQL clips the value to the appropriate endpoint of the range and stores the resulting value instead.
When an out-of-range value is assigned to an integer column,
MySQL stores the value representing the corresponding
endpoint of the column data type range. If you store 256
into a TINYINT
or
TINYINT UNSIGNED
column, MySQL stores 127
or 255, respectively.
When a floating-point or fixed-point column is assigned a value that exceeds the range implied by the specified (or default) precision and scale, MySQL stores the value representing the corresponding endpoint of that range.
Column-assignment conversions that occur due to clipping when
MySQL is not operating in strict mode are reported as warnings
for ALTER TABLE
,
LOAD DATA
INFILE
, UPDATE
, and
multiple-row INSERT
statements.
In strict mode, these statements fail, and some or all the
values will not be inserted or changed, depending on whether the
table is a transactional table and other factors. For details,
see Section 6.1.8, “Server SQL Modes”.
Overflow during numeric expression evaluation results in an
error. For example, the largest signed
BIGINT
value is
9223372036854775807, so the following expression produces an
error:
mysql> SELECT 9223372036854775807 + 1;
ERROR 1690 (22003): BIGINT value is out of range in '(9223372036854775807 + 1)'
To enable the operation to succeed in this case, convert the value to unsigned;
mysql> SELECT CAST(9223372036854775807 AS UNSIGNED) + 1;
+-------------------------------------------+
| CAST(9223372036854775807 AS UNSIGNED) + 1 |
+-------------------------------------------+
| 9223372036854775808 |
+-------------------------------------------+
Whether overflow occurs depends on the range of the operands, so
another way to handle the preceding expression is to use
exact-value arithmetic because
DECIMAL
values have a larger
range than integers:
mysql> SELECT 9223372036854775807.0 + 1;
+---------------------------+
| 9223372036854775807.0 + 1 |
+---------------------------+
| 9223372036854775808.0 |
+---------------------------+
Subtraction between integer values, where one is of type
UNSIGNED
, produces an unsigned result by
default. If the result would otherwise have been negative, an
error results:
mysql>SET sql_mode = '';
Query OK, 0 rows affected (0.00 sec) mysql>SELECT CAST(0 AS UNSIGNED) - 1;
ERROR 1690 (22003): BIGINT UNSIGNED value is out of range in '(cast(0 as unsigned) - 1)'
If the NO_UNSIGNED_SUBTRACTION
SQL mode is enabled, the result is negative:
mysql>SET sql_mode = 'NO_UNSIGNED_SUBTRACTION';
mysql>SELECT CAST(0 AS UNSIGNED) - 1;
+-------------------------+ | CAST(0 AS UNSIGNED) - 1 | +-------------------------+ | -1 | +-------------------------+
If the result of such an operation is used to update an
UNSIGNED
integer column, the result is
clipped to the maximum value for the column type, or clipped to
0 if NO_UNSIGNED_SUBTRACTION
is enabled. If strict SQL mode is enabled, an error occurs and
the column remains unchanged.
The date and time types for representing temporal values are
DATE
,
TIME
,
DATETIME
,
TIMESTAMP
, and
YEAR
. Each temporal type has a
range of valid values, as well as a “zero” value that
may be used when you specify an invalid value that MySQL cannot
represent. The TIMESTAMP
type has
special automatic updating behavior, described later. For temporal
type storage requirements, see
Section 12.8, “Data Type Storage Requirements”.
Keep in mind these general considerations when working with date and time types:
MySQL retrieves values for a given date or time type in a standard output format, but it attempts to interpret a variety of formats for input values that you supply (for example, when you specify a value to be assigned to or compared to a date or time type). For a description of the permitted formats for date and time types, see Section 10.1.3, “Date and Time Literals”. It is expected that you supply valid values. Unpredictable results may occur if you use values in other formats.
Although MySQL tries to interpret values in several formats,
date parts must always be given in year-month-day order (for
example, '98-09-04'
), rather than in the
month-day-year or day-month-year orders commonly used
elsewhere (for example, '09-04-98'
,
'04-09-98'
).
Dates containing two-digit year values are ambiguous because the century is unknown. MySQL interprets two-digit year values using these rules:
Year values in the range 70-99
are
converted to 1970-1999
.
Year values in the range 00-69
are
converted to 2000-2069
.
Conversion of values from one temporal type to another occurs according to the rules in Section 12.3.7, “Conversion Between Date and Time Types”.
MySQL automatically converts a date or time value to a number if the value is used in a numeric context and vice versa.
By default, when MySQL encounters a value for a date or time
type that is out of range or otherwise invalid for the type,
it converts the value to the “zero” value for
that type. The exception is that out-of-range
TIME
values are clipped to the
appropriate endpoint of the
TIME
range.
By setting the SQL mode to the appropriate value, you can
specify more exactly what kind of dates you want MySQL to
support. (See Section 6.1.8, “Server SQL Modes”.) You can get MySQL
to accept certain dates, such as
'2009-11-31'
, by enabling the
ALLOW_INVALID_DATES
SQL
mode. This is useful when you want to store a “possibly
wrong” value which the user has specified (for example,
in a web form) in the database for future processing. Under
this mode, MySQL verifies only that the month is in the range
from 1 to 12 and that the day is in the range from 1 to 31.
MySQL permits you to store dates where the day or month and
day are zero in a DATE
or
DATETIME
column. This is useful
for applications that need to store birthdates for which you
may not know the exact date. In this case, you simply store
the date as '2009-00-00'
or
'2009-01-00'
. If you store dates such as
these, you should not expect to get correct results for
functions such as DATE_SUB()
or
DATE_ADD()
that require
complete dates. To disallow zero month or day parts in dates,
enable the NO_ZERO_IN_DATE
mode.
MySQL permits you to store a “zero” value of
'0000-00-00'
as a “dummy
date.” This is in some cases more convenient than using
NULL
values, and uses less data and index
space. To disallow '0000-00-00'
, enable the
NO_ZERO_DATE
mode.
“Zero” date or time values used through
Connector/ODBC are converted automatically to
NULL
because ODBC cannot handle such
values.
The following table shows the format of the “zero”
value for each type. The “zero” values are special,
but you can store or refer to them explicitly using the values
shown in the table. You can also do this using the values
'0'
or 0
, which are easier
to write. For temporal types that include a date part
(DATE
,
DATETIME
, and
TIMESTAMP
), use of these values
produces warnings if the
NO_ZERO_DATE
SQL mode is
enabled.
Data Type | “Zero” Value |
---|---|
DATE | '0000-00-00' |
TIME | '00:00:00' |
DATETIME | '0000-00-00 00:00:00' |
TIMESTAMP | '0000-00-00 00:00:00' |
YEAR | 0000 |
The DATE
, DATETIME
, and
TIMESTAMP
types are related. This section
describes their characteristics, how they are similar, and how
they differ. MySQL recognizes DATE
,
DATETIME
, and TIMESTAMP
values in several formats, described in
Section 10.1.3, “Date and Time Literals”. For the
DATE
and DATETIME
range
descriptions, “supported” means that although
earlier values might work, there is no guarantee.
The DATE
type is used for values with a date
part but no time part. MySQL retrieves and displays
DATE
values in
'YYYY-MM-DD'
format. The supported range is
'1000-01-01'
to
'9999-12-31'
.
The DATETIME
type is used for values that
contain both date and time parts. MySQL retrieves and displays
DATETIME
values in 'YYYY-MM-DD
HH:MM:SS'
format. The supported range is
'1000-01-01 00:00:00'
to '9999-12-31
23:59:59'
.
The TIMESTAMP
data type is used for values
that contain both date and time parts.
TIMESTAMP
has a range of '1970-01-01
00:00:01'
UTC to '2038-01-19
03:14:07'
UTC.
A DATETIME
or TIMESTAMP
value can include a trailing fractional seconds part in up to
microseconds (6 digits) precision. In particular, any fractional
part in a value inserted into a DATETIME
or
TIMESTAMP
column is stored rather than
discarded. With the fractional part included, the format for
these values is 'YYYY-MM-DD
HH:MM:SS[.fraction]'
, the range for
DATETIME
values is '1000-01-01
00:00:00.000000'
to '9999-12-31
23:59:59.999999'
, and the range for
TIMESTAMP
values is '1970-01-01
00:00:01.000000'
to '2038-01-19
03:14:07.999999'
. The fractional part should always be
separated from the rest of the time by a decimal point; no other
fractional seconds delimiter is recognized. For information
about fractional seconds support in MySQL, see
Section 12.3.6, “Fractional Seconds in Time Values”.
The TIMESTAMP
and DATETIME
data types offer automatic initialization and updating to the
current date and time. For more information, see
Section 12.3.5, “Automatic Initialization and Updating for TIMESTAMP and DATETIME”.
MySQL converts TIMESTAMP
values from the
current time zone to UTC for storage, and back from UTC to the
current time zone for retrieval. (This does not occur for other
types such as DATETIME
.) By default, the
current time zone for each connection is the server's time. The
time zone can be set on a per-connection basis. As long as the
time zone setting remains constant, you get back the same value
you store. If you store a TIMESTAMP
value,
and then change the time zone and retrieve the value, the
retrieved value is different from the value you stored. This
occurs because the same time zone was not used for conversion in
both directions. The current time zone is available as the value
of the time_zone
system
variable. For more information, see
Section 11.6, “MySQL Server Time Zone Support”.
Invalid DATE
, DATETIME
, or
TIMESTAMP
values are converted to the
“zero” value of the appropriate type
('0000-00-00'
or '0000-00-00
00:00:00'
).
Be aware of certain properties of date value interpretation in MySQL:
MySQL permits a “relaxed” format for values
specified as strings, in which any punctuation character may
be used as the delimiter between date parts or time parts.
In some cases, this syntax can be deceiving. For example, a
value such as '10:11:12'
might look like
a time value because of the :
, but is
interpreted as the year '2010-11-12'
if
used in a date context. The value
'10:45:15'
is converted to
'0000-00-00'
because
'45'
is not a valid month.
The only delimiter recognized between a date and time part and a fractional seconds part is the decimal point.
The server requires that month and day values be valid, and
not merely in the range 1 to 12 and 1 to 31, respectively.
With strict mode disabled, invalid dates such as
'2004-04-31'
are converted to
'0000-00-00'
and a warning is generated.
With strict mode enabled, invalid dates generate an error.
To permit such dates, enable
ALLOW_INVALID_DATES
. See
Section 6.1.8, “Server SQL Modes”, for more information.
MySQL does not accept TIMESTAMP
values
that include a zero in the day or month column or values
that are not a valid date. The sole exception to this rule
is the special “zero” value
'0000-00-00 00:00:00'
.
Dates containing two-digit year values are ambiguous because the century is unknown. MySQL interprets two-digit year values using these rules:
Year values in the range 00-69
are
converted to 2000-2069
.
Year values in the range 70-99
are
converted to 1970-1999
.
The MySQL server can be run with the
MAXDB
SQL mode enabled. In
this case, TIMESTAMP
is identical with
DATETIME
. If this mode is enabled at the
time that a table is created, TIMESTAMP
columns are created as DATETIME
columns. As
a result, such columns use DATETIME
display
format, have the same range of values, and there is no
automatic initialization or updating to the current date and
time. See Section 6.1.8, “Server SQL Modes”.
MySQL retrieves and displays TIME
values in
'HH:MM:SS'
format (or
'HHH:MM:SS'
format for large hours values).
TIME
values may range from
'-838:59:59'
to
'838:59:59'
. The hours part may be so large
because the TIME
type can be used not only to
represent a time of day (which must be less than 24 hours), but
also elapsed time or a time interval between two events (which
may be much greater than 24 hours, or even negative).
MySQL recognizes TIME
values in several
formats, some of which can include a trailing fractional seconds
part in up to microseconds (6 digits) precision. See
Section 10.1.3, “Date and Time Literals”. For information about
fractional seconds support in MySQL, see
Section 12.3.6, “Fractional Seconds in Time Values”. In particular, any
fractional part in a value inserted into a
TIME
column is stored rather than discarded.
With the fractional part included, the range for
TIME
values is
'-838:59:59.000000'
to
'838:59:59.000000'
.
Be careful about assigning abbreviated values to a
TIME
column. MySQL interprets abbreviated
TIME
values with colons as time of the day.
That is, '11:12'
means
'11:12:00'
, not
'00:11:12'
. MySQL interprets abbreviated
values without colons using the assumption that the two
rightmost digits represent seconds (that is, as elapsed time
rather than as time of day). For example, you might think of
'1112'
and 1112
as meaning
'11:12:00'
(12 minutes after 11 o'clock), but
MySQL interprets them as '00:11:12'
(11
minutes, 12 seconds). Similarly, '12'
and
12
are interpreted as
'00:00:12'
.
The only delimiter recognized between a time part and a fractional seconds part is the decimal point.
By default, values that lie outside the TIME
range but are otherwise valid are clipped to the closest
endpoint of the range. For example,
'-850:00:00'
and
'850:00:00'
are converted to
'-838:59:59'
and
'838:59:59'
. Invalid TIME
values are converted to '00:00:00'
. Note that
because '00:00:00'
is itself a valid
TIME
value, there is no way to tell, from a
value of '00:00:00'
stored in a table,
whether the original value was specified as
'00:00:00'
or whether it was invalid.
For more restrictive treatment of invalid
TIME
values, enable strict SQL mode to cause
errors to occur. See Section 6.1.8, “Server SQL Modes”.
The YEAR
type is a 1-byte type used to
represent year values. It can be declared as
YEAR
or YEAR(4)
and has a
display width of four characters.
The YEAR(2)
data type is deprecated and
support for it is removed in MySQL 5.7.5. To convert
YEAR(2)
columns to
YEAR(4)
, see
Section 12.3.4, “YEAR(2) Limitations and Migrating to YEAR(4)”.
MySQL displays YEAR
values in
YYYY
format, with a range of
1901
to 2155
, or
0000
.
You can specify input YEAR
values in a
variety of formats:
As a 4-digit number in the range 1901
to
2155
.
As a 4-digit string in the range '1901'
to '2155'
.
As a 1- or 2-digit number in the range 1
to 99
. MySQL converts values in the
ranges 1
to 69
and
70
to 99
to
YEAR
values in the ranges
2001
to 2069
and
1970
to 1999
.
As a 1- or 2-digit string in the range
'0'
to '99'
. MySQL
converts values in the ranges '0'
to
'69'
and '70'
to
'99'
to YEAR
values in
the ranges 2000
to
2069
and 1970
to
1999
.
The result of inserting a numeric 0
has a
display value of 0000
and an internal
value of 0000
. To insert zero and have it
be interpreted as 2000
, specify it as a
string '0'
or '00'
.
As the result of a function that returns a value that is
acceptable in a YEAR
context, such as
NOW()
.
MySQL converts invalid YEAR
values to
0000
.
This section describes problems that can occur when using
YEAR(2)
and provides information
about converting existing YEAR(2)
columns to YEAR(4)
.
Although the internal range of values for
YEAR(4)
and the deprecated
YEAR(2)
type is the same
(1901
to 2155
, and
0000
), the display width for
YEAR(2)
makes that type
inherently ambiguous because displayed values indicate only the
last two digits of the internal values and omit the century
digits. The result can be a loss of information under certain
circumstances. For this reason, before MySQL 5.7.5, avoid using
YEAR(2)
in your applications and
use YEAR(4)
wherever you need a
YEAR
data type. As of MySQL
5.7.5, support for YEAR(2)
is
removed and existing YEAR(2)
columns must be converted to
YEAR(4)
to become usable again.
Issues with the YEAR(2)
data
type include ambiguity of displayed values, and possible loss
of information when values are dumped and reloaded or
converted to strings.
Displayed YEAR(2)
values
can be ambiguous. It is possible for up to three
YEAR(2)
values that have
different internal values to have the same displayed
value, as the following example demonstrates:
mysql>CREATE TABLE t (y2 YEAR(2), y4 YEAR(4));
Query OK, 0 rows affected (0.01 sec) mysql>INSERT INTO t (y2) VALUES(1912),(2012),(2112);
Query OK, 3 rows affected (0.00 sec) Records: 3 Duplicates: 0 Warnings: 0 mysql>UPDATE t SET y4 = y2;
Query OK, 3 rows affected (0.00 sec) Rows matched: 3 Changed: 3 Warnings: 0 mysql>SELECT * FROM t;
+------+------+ | y2 | y4 | +------+------+ | 12 | 1912 | | 12 | 2012 | | 12 | 2112 | +------+------+ 3 rows in set (0.00 sec)
If you use mysqldump to dump the table
created in the preceding item, the dump file represents
all y2
values using the same 2-digit
representation (12
). If you reload the
table from the dump file, all resulting rows have internal
value 2012
and display value
12
, thus losing the distinctions among
them.
Conversion of a YEAR(2)
or
YEAR(4)
data value to
string form uses the display width of the
YEAR
type. Suppose that
YEAR(2)
and
YEAR(4)
columns both
contain the value 1970
. Assigning each
column to a string results in a value of
'70'
or '1970'
,
respectively. That is, loss of information occurs for
conversion from YEAR(2)
to
string.
Values outside the range from 1970
to
2069
are stored incorrectly when
inserted into a YEAR(2)
column in a CSV
table. For
example, inserting 2111
results in a
display value of 11
but an internal
value of 2011
.
To avoid these problems, use
YEAR(4)
rather than
YEAR(2)
. Suggestions regarding
migration strategies appear later in this section.
Before MySQL 5.7.5, support for
YEAR(2)
is diminished. As of
MySQL 5.7.5, support for
YEAR(2)
is removed.
YEAR(2)
column definitions
for new tables produce warnings or errors:
Before MySQL 5.7.5,
YEAR(2)
column
definitions for new tables are converted (with an
ER_INVALID_YEAR_COLUMN_LENGTH
warning) to YEAR(4)
:
mysql>CREATE TABLE t1 (y YEAR(2));
Query OK, 0 rows affected, 1 warning (0.04 sec) mysql>SHOW WARNINGS\G
*************************** 1. row *************************** Level: Warning Code: 1818 Message: YEAR(2) column type is deprecated. Creating YEAR(4) column instead. 1 row in set (0.00 sec) mysql>SHOW CREATE TABLE t1\G
*************************** 1. row *************************** Table: t1 Create Table: CREATE TABLE `t1` ( `y` year(4) DEFAULT NULL ) ENGINE=InnoDB DEFAULT CHARSET=latin1 1 row in set (0.00 sec)
As of MySQL 5.7.5,
YEAR(2)
column
definitions for new tables produce an
ER_INVALID_YEAR_COLUMN_LENGTH
error:
mysql> CREATE TABLE t1 (y YEAR(2));
ERROR 1818 (HY000): Supports only YEAR or YEAR(4) column.
Several programs or statements convert
YEAR(2)
to
YEAR(4)
automatically:
ALTER TABLE
statements
that result in a table rebuild.
REPAIR TABLE
(which
CHECK TABLE
recommends
you use if it finds that a table contains
YEAR(2)
columns).
mysql_upgrade (which uses
REPAIR TABLE
).
Dumping with mysqldump and reloading the dump file. Unlike the conversions performed by the preceding three items, a dump and reload has the potential to change values.
A MySQL upgrade usually involves at least one of the last
two items. However, with respect to
YEAR(2)
,
mysql_upgrade is preferable. You should
avoid using mysqldump because, as
noted, that can change values.
To convert YEAR(2)
columns to
YEAR(4)
, you can do so manually
at any time without upgrading. Alternatively, you can upgrade
to a version of MySQL with reduced or removed support for
YEAR(2)
(MySQL 5.6.6 or later),
then have MySQL convert YEAR(2)
columns automatically. In the latter case, avoid upgrading by
dumping and reloading your data because that can change data
values. In addition, if you use replication, there are upgrade
considerations you must take into account.
To convert YEAR(2)
columns to
YEAR(4)
manually, use
ALTER TABLE
or
REPAIR TABLE
. Suppose that a
table t1
has this definition:
CREATE TABLE t1 (ycol YEAR(2) NOT NULL DEFAULT '70');
Modify the column using ALTER TABLE
as
follows:
ALTER TABLE t1 FORCE;
The ALTER TABLE
statement
converts the table without changing
YEAR(2)
values. If the server
is a replication master, the ALTER
TABLE
statement replicates to slaves and makes the
corresponding table change on each one.
Another migration method is to perform a binary upgrade:
Install MySQL without dumping and reloading your data. Then
run mysql_upgrade, which uses
REPAIR TABLE
to convert
YEAR(2)
columns to
YEAR(4)
without changing data
values. If the server is a replication master, the
REPAIR TABLE
statements
replicate to slaves and make the corresponding table changes
on each one, unless you invoke
mysql_upgrade with the
--skip-write-binlog
option.
Upgrades to replication servers usually involve upgrading
slaves to a newer version of MySQL, then upgrading the master.
For example, if a master and slave both run MySQL 5.5, a
typical upgrade sequence involves upgrading the slave to 5.6,
then upgrading the master to 5.6. With regard to the different
treatment of YEAR(2)
as of
MySQL 5.6.6, that upgrade sequence results in a problem:
Suppose that the slave has been upgraded but not yet the
master. Then creating a table containing a
YEAR(2)
column on the master
results in a table containing a
YEAR(4)
column on the slave.
Consequently, these operations will have a different result on
the master and slave, if you use statement-based replication:
To avoid such problems, modify all
YEAR(2)
columns on the master
to YEAR(4)
before upgrading.
(Use ALTER TABLE
, as described
previously.) Then you can upgrade normally (slave first, then
master) without introducing any
YEAR(2)
to
YEAR(4)
differences between the
master and slave.
One migration method should be avoided: Do not dump your data
with mysqldump and reload the dump file
after upgrading. This has the potential to change
YEAR(2)
values, as described
previously.
A migration from YEAR(2)
to
YEAR(4)
should also involve
examining application code for the possibility of changed
behavior under conditions such as these:
TIMESTAMP
and
DATETIME
columns can be
automatically initializated and updated to the current date and
time (that is, the current timestamp).
For any TIMESTAMP
or
DATETIME
column in a table, you
can assign the current timestamp as the default value, the
auto-update value, or both:
An auto-initialized column is set to the current timestamp for inserted rows that specify no value for the column.
An auto-updated column is automatically updated to the
current timestamp when the value of any other column in the
row is changed from its current value. An auto-updated
column remains unchanged if all other columns are set to
their current values. To prevent an auto-updated column from
updating when other columns change, explicitly set it to its
current value. To update an auto-updated column even when
other columns do not change, explicitly set it to the value
it should have (for example, set it to
CURRENT_TIMESTAMP
).
In addition, you can initialize or update any
TIMESTAMP
(but not
DATETIME
) column to the current date and time
by assigning it a NULL
value, unless it has
been defined with the NULL
attribute to
permit NULL
values.
To specify automatic properties, use the DEFAULT
CURRENT_TIMESTAMP
and ON UPDATE
CURRENT_TIMESTAMP
clauses in column definitions. The
order of the clauses does not matter. If both are present in a
column definition, either can occur first. Any of the synonyms
for CURRENT_TIMESTAMP
have the
same meaning as
CURRENT_TIMESTAMP
. These are
CURRENT_TIMESTAMP()
,
NOW()
,
LOCALTIME
,
LOCALTIME()
,
LOCALTIMESTAMP
, and
LOCALTIMESTAMP()
.
Use of DEFAULT CURRENT_TIMESTAMP
and
ON UPDATE CURRENT_TIMESTAMP
is specific to
TIMESTAMP
and
DATETIME
. The
DEFAULT
clause also can be used to specify a
constant (nonautomatic) default value; for example,
DEFAULT 0
or DEFAULT '2000-01-01
00:00:00'
.
The following examples use DEFAULT 0
, a
default that can produce warnings or errors depending on
whether strict SQL mode or the
NO_ZERO_DATE
SQL mode is
enabled. Be aware that the
TRADITIONAL
SQL mode
includes strict mode and
NO_ZERO_DATE
. See
Section 6.1.8, “Server SQL Modes”.
TIMESTAMP
or
DATETIME
column definitions can
specify the current timestamp for both the default and
auto-update values, for one but not the other, or for neither.
Different columns can have different combinations of automatic
properties. The following rules describe the possibilities:
With both DEFAULT CURRENT_TIMESTAMP
and
ON UPDATE CURRENT_TIMESTAMP
, the column
has the current timestamp for its default value and is
automatically updated to the current timestamp.
CREATE TABLE t1 ( ts TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP, dt DATETIME DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP );
With a DEFAULT
clause but no ON
UPDATE CURRENT_TIMESTAMP
clause, the column has
the given default value and is not automatically updated to
the current timestamp.
The default depends on whether the
DEFAULT
clause specifies
CURRENT_TIMESTAMP
or a constant value.
With CURRENT_TIMESTAMP
, the default is
the current timestamp.
CREATE TABLE t1 ( ts TIMESTAMP DEFAULT CURRENT_TIMESTAMP, dt DATETIME DEFAULT CURRENT_TIMESTAMP );
With a constant, the default is the given value. In this case, the column has no automatic properties at all.
CREATE TABLE t1 ( ts TIMESTAMP DEFAULT 0, dt DATETIME DEFAULT 0 );
With an ON UPDATE CURRENT_TIMESTAMP
clause and a constant DEFAULT
clause, the
column is automatically updated to the current timestamp and
has the given constant default value.
CREATE TABLE t1 ( ts TIMESTAMP DEFAULT 0 ON UPDATE CURRENT_TIMESTAMP, dt DATETIME DEFAULT 0 ON UPDATE CURRENT_TIMESTAMP );
With an ON UPDATE CURRENT_TIMESTAMP
clause but no DEFAULT
clause, the column
is automatically updated to the current timestamp but does
not have the current timestamp for its default value.
The default in this case is type dependent.
TIMESTAMP
has a default of 0
unless defined with the NULL
attribute,
in which case the default is NULL
.
CREATE TABLE t1 ( ts1 TIMESTAMP ON UPDATE CURRENT_TIMESTAMP, -- default 0 ts2 TIMESTAMP NULL ON UPDATE CURRENT_TIMESTAMP -- default NULL );
DATETIME
has a default of
NULL
unless defined with the NOT
NULL
attribute, in which case the default is 0.
CREATE TABLE t1 ( dt1 DATETIME ON UPDATE CURRENT_TIMESTAMP, -- default NULL dt2 DATETIME NOT NULL ON UPDATE CURRENT_TIMESTAMP -- default 0 );
TIMESTAMP
and
DATETIME
columns have no
automatic properties unless they are specified explicitly, with
this exception: By default, the first
TIMESTAMP
column has both
DEFAULT CURRENT_TIMESTAMP
and ON
UPDATE CURRENT_TIMESTAMP
if neither is specified
explicitly. To suppress automatic properties for the first
TIMESTAMP
column, use one of
these strategies:
Enable the
explicit_defaults_for_timestamp
system variable. If this variable is enabled, the
DEFAULT CURRENT_TIMESTAMP
and ON
UPDATE CURRENT_TIMESTAMP
clauses that specify
automatic initialization and updating are available, but are
not assigned to any TIMESTAMP
column unless explicitly included in the column definition.
Alternatively, if
explicit_defaults_for_timestamp
is disabled (the default), do either of the following:
Define the column with a DEFAULT
clause that specifies a constant default value.
Specify the NULL
attribute. This also
causes the column to permit NULL
values, which means that you cannot assign the current
timestamp by setting the column to
NULL
. Assigning
NULL
sets the column to
NULL
.
Consider these table definitions:
CREATE TABLE t1 ( ts1 TIMESTAMP DEFAULT 0, ts2 TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP); CREATE TABLE t2 ( ts1 TIMESTAMP NULL, ts2 TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP); CREATE TABLE t3 ( ts1 TIMESTAMP NULL DEFAULT 0, ts2 TIMESTAMP DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP);
The tables have these properties:
In each table definition, the first
TIMESTAMP
column has no
automatic initialization or updating.
The tables differ in how the ts1
column
handles NULL
values. For
t1
, ts1
is
NOT NULL
and assigning it a value of
NULL
sets it to the current timestamp.
For t2
and t3
,
ts1
permits NULL
and
assigning it a value of NULL
sets it to
NULL
.
t2
and t3
differ in
the default value for ts1
. For
t2
, ts1
is defined to
permit NULL
, so the default is also
NULL
in the absence of an explicit
DEFAULT
clause. For
t3
, ts1
permits
NULL
but has an explicit default of 0.
If a TIMESTAMP
or
DATETIME
column definition
includes an explicit fractional seconds precision value
anywhere, the same value must be used throughout the column
definition. This is permitted:
CREATE TABLE t1 ( ts TIMESTAMP(6) DEFAULT CURRENT_TIMESTAMP(6) ON UPDATE CURRENT_TIMESTAMP(6) );
This is not permitted:
CREATE TABLE t1 ( ts TIMESTAMP(6) DEFAULT CURRENT_TIMESTAMP ON UPDATE CURRENT_TIMESTAMP(3) );
By default, TIMESTAMP
columns are
NOT NULL
, cannot contain
NULL
values, and assigning
NULL
assigns the current timestamp. To permit
a TIMESTAMP
column to contain
NULL
, explicitly declare it with the
NULL
attribute. In this case, the default
value also becomes NULL
unless overridden
with a DEFAULT
clause that specifies a
different default value. DEFAULT NULL
can be
used to explicitly specify NULL
as the
default value. (For a TIMESTAMP
column not declared with the NULL
attribute,
DEFAULT NULL
is invalid.) If a
TIMESTAMP
column permits
NULL
values, assigning
NULL
sets it to NULL
, not
to the current timestamp.
The following table contains several
TIMESTAMP
columns that permit
NULL
values:
CREATE TABLE t ( ts1 TIMESTAMP NULL DEFAULT NULL, ts2 TIMESTAMP NULL DEFAULT 0, ts3 TIMESTAMP NULL DEFAULT CURRENT_TIMESTAMP );
A TIMESTAMP
column that permits
NULL
values does not
take on the current timestamp at insert time except under one of
the following conditions:
Its default value is defined as
CURRENT_TIMESTAMP
and no
value is specified for the column
CURRENT_TIMESTAMP
or any of
its synonyms such as NOW()
is
explicitly inserted into the column
In other words, a TIMESTAMP
column defined to permit NULL
values
auto-initializes only if its definition includes
DEFAULT CURRENT_TIMESTAMP
:
CREATE TABLE t (ts TIMESTAMP NULL DEFAULT CURRENT_TIMESTAMP);
If the TIMESTAMP
column permits
NULL
values but its definition does not
include DEFAULT CURRENT_TIMESTAMP
, you must
explicitly insert a value corresponding to the current date and
time. Suppose that tables t1
and
t2
have these definitions:
CREATE TABLE t1 (ts TIMESTAMP NULL DEFAULT '0000-00-00 00:00:00'); CREATE TABLE t2 (ts TIMESTAMP NULL DEFAULT NULL);
To set the TIMESTAMP
column in
either table to the current timestamp at insert time, explicitly
assign it that value. For example:
INSERT INTO t1 VALUES (NOW()); INSERT INTO t2 VALUES (CURRENT_TIMESTAMP);
MySQL 5.7 has fractional seconds support for
TIME
,
DATETIME
, and
TIMESTAMP
values, with up to
microseconds (6 digits) precision:
To define a column that includes a fractional seconds part,
use the syntax
,
where type_name
(fsp
)type_name
is
TIME
,
DATETIME
, or
TIMESTAMP
, and
fsp
is the fractional seconds
precision. For example:
CREATE TABLE t1 (t TIME(3), dt DATETIME(6));
The fsp
value, if given, must be
in the range 0 to 6. A value of 0 signifies that there is no
fractional part. If omitted, the default precision is 0.
(This differs from the standard SQL default of 6, for
compatibility with previous MySQL versions.)
Inserting a TIME
,
DATE
, or
TIMESTAMP
value with a
fractional seconds part into a column of the same type but
having fewer fractional digits results in rounding, as shown
in this example:
mysql>CREATE TABLE fractest( c1 TIME(2), c2 DATETIME(2), c3 TIMESTAMP(2) );
Query OK, 0 rows affected (0.33 sec) mysql>INSERT INTO fractest VALUES
>('17:51:04.777', '2014-09-08 17:51:04.777', '2014-09-08 17:51:04.777');
Query OK, 1 row affected (0.03 sec) mysql>SELECT * FROM fractest;
+-------------+------------------------+------------------------+ | c1 | c2 | c3 | +-------------+------------------------+------------------------+ | 17:51:04.78 | 2014-09-08 17:51:04.78 | 2014-09-08 17:51:04.78 | +-------------+------------------------+------------------------+ 1 row in set (0.00 sec)
No warning or error is given when such rounding occurs. This
behavior follows the SQL standard, and is not affected by
the server's sql_mode
setting.
Functions that take temporal arguments accept values with
fractional seconds. Return values from temporal functions
include fractional seconds as appropriate. For example,
NOW()
with no argument
returns the current date and time with no fractional part,
but takes an optional argument from 0 to 6 to specify that
the return value includes a fractional seconds part of that
many digits.
Syntax for temporal literals produces temporal values:
DATE '
,
str
'TIME '
,
and str
'TIMESTAMP
'
, and the
ODBC-syntax equivalents. The resulting value includes a
trailing fractional seconds part if specified. Previously,
the temporal type keyword was ignored and these constructs
produced the string value. See
Standard SQL and ODBC Date and Time Literals
str
'
To some extent, you can convert a value from one temporal type
to another. However, there may be some alteration of the value
or loss of information. In all cases, conversion between
temporal types is subject to the range of valid values for the
resulting type. For example, although
DATE
,
DATETIME
, and
TIMESTAMP
values all can be
specified using the same set of formats, the types do not all
have the same range of values.
TIMESTAMP
values cannot be
earlier than 1970
UTC or later than
'2038-01-19 03:14:07'
UTC. This means that a
date such as '1968-01-01'
, while valid as a
DATE
or
DATETIME
value, is not valid as a
TIMESTAMP
value and is converted
to 0
.
Conversion of DATE
values:
Conversion of DATETIME
and
TIMESTAMP
values:
Conversion to a DATE
value
takes fractional seconds into account and rounds the time
part. For example, '1999-12-31
23:59:59.499'
becomes
'1999-12-31'
, whereas
'1999-12-31 23:59:59.500'
becomes
'2000-01-01'
.
Conversion to a TIME
value
discards the date part because the
TIME
type contains no date
information.
For conversion of TIME
values to
other temporal types, the value of
CURRENT_DATE()
is used for the
date part. The TIME
is
interpreted as elapsed time (not time of day) and added to the
date. This means that the date part of the result differs from
the current date if the time value is outside the range from
'00:00:00'
to '23:59:59'
.
Suppose that the current date is
'2012-01-01'
.
TIME
values of
'12:00:00'
, '24:00:00'
,
and '-12:00:00'
, when converted to
DATETIME
or
TIMESTAMP
values, result in
'2012-01-01 12:00:00'
, '2012-01-02
00:00:00'
, and '2011-12-31
12:00:00'
, respectively.
Conversion of TIME
to
DATE
is similar but discards the
time part from the result: '2012-01-01'
,
'2012-01-02'
, and
'2011-12-31'
, respectively.
Explicit conversion can be used to override implicit conversion.
For example, in comparison of
DATE
and
DATETIME
values, the
DATE
value is coerced to the
DATETIME
type by adding a time
part of '00:00:00'
. To perform the comparison
by ignoring the time part of the
DATETIME
value instead, use the
CAST()
function in the following
way:
date_col
= CAST(datetime_col
AS DATE)
Conversion of TIME
and
DATETIME
values to numeric form
(for example, by adding +0
) depends on
whether the value contains a fractional seconds part.
TIME(
or
N
)DATETIME(
is converted to integer when N
)N
is 0
(or omitted) and to a DECIMAL
value with
N
decimal digits when
N
is greater than 0:
mysql>SELECT CURTIME(), CURTIME()+0, CURTIME(3)+0;
+-----------+-------------+--------------+ | CURTIME() | CURTIME()+0 | CURTIME(3)+0 | +-----------+-------------+--------------+ | 09:28:00 | 92800 | 92800.887 | +-----------+-------------+--------------+ mysql>SELECT NOW(), NOW()+0, NOW(3)+0;
+---------------------+----------------+--------------------+ | NOW() | NOW()+0 | NOW(3)+0 | +---------------------+----------------+--------------------+ | 2012-08-15 09:28:00 | 20120815092800 | 20120815092800.889 | +---------------------+----------------+--------------------+
Date values with two-digit years are ambiguous because the century is unknown. Such values must be interpreted into four-digit form because MySQL stores years internally using four digits.
For DATETIME
,
DATE
, and
TIMESTAMP
types, MySQL interprets
dates specified with ambiguous year values using these rules:
Year values in the range 00-69
are
converted to 2000-2069
.
Year values in the range 70-99
are
converted to 1970-1999
.
For YEAR
, the rules are the same, with this
exception: A numeric 00
inserted into
YEAR(4)
results in 0000
rather than 2000
. To specify zero for
YEAR(4)
and have it be interpreted as
2000
, specify it as a string
'0'
or '00'
.
Remember that these rules are only heuristics that provide reasonable guesses as to what your data values mean. If the rules used by MySQL do not produce the values you require, you must provide unambiguous input containing four-digit year values.
ORDER BY
properly sorts
YEAR
values that have two-digit
years.
Some functions like MIN()
and
MAX()
convert a
YEAR
to a number. This means that
a value with a two-digit year does not work properly with these
functions. The fix in this case is to convert the
YEAR
to four-digit year format.
The string types are CHAR
,
VARCHAR
,
BINARY
,
VARBINARY
,
BLOB
,
TEXT
,
ENUM
, and
SET
. This section describes how
these types work and how to use them in your queries. For string
type storage requirements, see
Section 12.8, “Data Type Storage Requirements”.
The CHAR
and VARCHAR
types
are similar, but differ in the way they are stored and
retrieved. They also differ in maximum length and in whether
trailing spaces are retained.
The CHAR
and VARCHAR
types
are declared with a length that indicates the maximum number of
characters you want to store. For example,
CHAR(30)
can hold up to 30 characters.
The length of a CHAR
column is fixed to the
length that you declare when you create the table. The length
can be any value from 0 to 255. When CHAR
values are stored, they are right-padded with spaces to the
specified length. When CHAR
values are
retrieved, trailing spaces are removed unless the
PAD_CHAR_TO_FULL_LENGTH
SQL
mode is enabled.
Values in VARCHAR
columns are variable-length
strings. The length can be specified as a value from 0 to
65,535. The effective maximum length of a
VARCHAR
is subject to the maximum row size
(65,535 bytes, which is shared among all columns) and the
character set used. See Section C.10.4, “Limits on Table Column Count and Row Size”.
In contrast to CHAR
,
VARCHAR
values are stored as a 1-byte or
2-byte length prefix plus data. The length prefix indicates the
number of bytes in the value. A column uses one length byte if
values require no more than 255 bytes, two length bytes if
values may require more than 255 bytes.
If strict SQL mode is not enabled and you assign a value to a
CHAR
or VARCHAR
column
that exceeds the column's maximum length, the value is truncated
to fit and a warning is generated. For truncation of nonspace
characters, you can cause an error to occur (rather than a
warning) and suppress insertion of the value by using strict SQL
mode. See Section 6.1.8, “Server SQL Modes”.
For VARCHAR
columns, trailing spaces in
excess of the column length are truncated prior to insertion and
a warning is generated, regardless of the SQL mode in use. For
CHAR
columns, truncation of excess trailing
spaces from inserted values is performed silently regardless of
the SQL mode.
VARCHAR
values are not padded when they are
stored. Trailing spaces are retained when values are stored and
retrieved, in conformance with standard SQL.
The following table illustrates the differences between
CHAR
and VARCHAR
by
showing the result of storing various string values into
CHAR(4)
and VARCHAR(4)
columns (assuming that the column uses a single-byte character
set such as latin1
).
Value | CHAR(4) | Storage Required | VARCHAR(4) | Storage Required |
---|---|---|---|---|
'' | ' ' | 4 bytes | '' | 1 byte |
'ab' | 'ab ' | 4 bytes | 'ab' | 3 bytes |
'abcd' | 'abcd' | 4 bytes | 'abcd' | 5 bytes |
'abcdefgh' | 'abcd' | 4 bytes | 'abcd' | 5 bytes |
The values shown as stored in the last row of the table apply only when not using strict mode; if MySQL is running in strict mode, values that exceed the column length are not stored, and an error results.
InnoDB
encodes fixed-length fields greater
than or equal to 768 bytes in length as variable-length fields,
which can be stored off-page. For example, a
CHAR(255)
column can exceed 768 bytes if the
maximum byte length of the character set is greater than 3, as
it is with utf8mb4
.
If a given value is stored into the CHAR(4)
and VARCHAR(4)
columns, the values retrieved
from the columns are not always the same because trailing spaces
are removed from CHAR
columns upon retrieval.
The following example illustrates this difference:
mysql>CREATE TABLE vc (v VARCHAR(4), c CHAR(4));
Query OK, 0 rows affected (0.01 sec) mysql>INSERT INTO vc VALUES ('ab ', 'ab ');
Query OK, 1 row affected (0.00 sec) mysql>SELECT CONCAT('(', v, ')'), CONCAT('(', c, ')') FROM vc;
+---------------------+---------------------+ | CONCAT('(', v, ')') | CONCAT('(', c, ')') | +---------------------+---------------------+ | (ab ) | (ab) | +---------------------+---------------------+ 1 row in set (0.06 sec)
Values in CHAR
and VARCHAR
columns are sorted and compared according to the character set
collation assigned to the column.
All MySQL collations are of type PADSPACE
.
This means that all CHAR
,
VARCHAR
, and TEXT
values
in MySQL are compared without regard to any trailing spaces.
“Comparison” in this context does not include the
LIKE
pattern-matching operator, for
which trailing spaces are significant. For example:
mysql>CREATE TABLE names (myname CHAR(10));
Query OK, 0 rows affected (0.03 sec) mysql>INSERT INTO names VALUES ('Monty');
Query OK, 1 row affected (0.00 sec) mysql>SELECT myname = 'Monty', myname = 'Monty ' FROM names;
+------------------+--------------------+ | myname = 'Monty' | myname = 'Monty ' | +------------------+--------------------+ | 1 | 1 | +------------------+--------------------+ 1 row in set (0.00 sec) mysql>SELECT myname LIKE 'Monty', myname LIKE 'Monty ' FROM names;
+---------------------+-----------------------+ | myname LIKE 'Monty' | myname LIKE 'Monty ' | +---------------------+-----------------------+ | 1 | 0 | +---------------------+-----------------------+ 1 row in set (0.00 sec)
This is true for all MySQL versions, and is not affected by the server SQL mode.
For more information about MySQL character sets and collations, see Section 11.1, “Character Set Support”. For additional information about storage requirements, see Section 12.8, “Data Type Storage Requirements”.
For those cases where trailing pad characters are stripped or
comparisons ignore them, if a column has an index that requires
unique values, inserting into the column values that differ only
in number of trailing pad characters will result in a
duplicate-key error. For example, if a table contains
'a'
, an attempt to store
'a '
causes a duplicate-key error.
The BINARY
and VARBINARY
types are similar to CHAR
and
VARCHAR
, except that they contain
binary strings rather than nonbinary strings. That is, they
contain byte strings rather than character strings. This means
they have the binary
character set and
collation, and comparison and sorting are based on the numeric
values of the bytes in the values.
The permissible maximum length is the same for
BINARY
and VARBINARY
as it
is for CHAR
and
VARCHAR
, except that the length
for BINARY
and VARBINARY
is a length in bytes rather than in characters.
The BINARY
and VARBINARY
data types are distinct from the CHAR BINARY
and VARCHAR BINARY
data types. For the latter
types, the BINARY
attribute does not cause
the column to be treated as a binary string column. Instead, it
causes the binary (_bin
) collation for the
column character set to be used, and the column itself contains
nonbinary character strings rather than binary byte strings. For
example, CHAR(5) BINARY
is treated as
CHAR(5) CHARACTER SET latin1 COLLATE
latin1_bin
, assuming that the default character set is
latin1
. This differs from
BINARY(5)
, which stores 5-bytes binary
strings that have the binary
character set
and collation. For information about differences between binary
strings and binary collations for nonbinary strings, see
Section 11.1.8.5, “The binary Collation Compared to _bin Collations”.
If strict SQL mode is not enabled and you assign a value to a
BINARY
or VARBINARY
column
that exceeds the column's maximum length, the value is truncated
to fit and a warning is generated. For cases of truncation, you
can cause an error to occur (rather than a warning) and suppress
insertion of the value by using strict SQL mode. See
Section 6.1.8, “Server SQL Modes”.
When BINARY
values are stored, they are
right-padded with the pad value to the specified length. The pad
value is 0x00
(the zero byte). Values are
right-padded with 0x00
on insert, and no
trailing bytes are removed on select. All bytes are significant
in comparisons, including ORDER BY
and
DISTINCT
operations. 0x00
bytes and spaces are different in comparisons, with
0x00
< space.
Example: For a BINARY(3)
column,
'a '
becomes
'a \0'
when inserted.
'a\0'
becomes 'a\0\0'
when
inserted. Both inserted values remain unchanged when selected.
For VARBINARY
, there is no padding on insert
and no bytes are stripped on select. All bytes are significant
in comparisons, including ORDER BY
and
DISTINCT
operations. 0x00
bytes and spaces are different in comparisons, with
0x00
< space.
For those cases where trailing pad bytes are stripped or
comparisons ignore them, if a column has an index that requires
unique values, inserting into the column values that differ only
in number of trailing pad bytes will result in a duplicate-key
error. For example, if a table contains 'a'
,
an attempt to store 'a\0'
causes a
duplicate-key error.
You should consider the preceding padding and stripping
characteristics carefully if you plan to use the
BINARY
data type for storing binary data and
you require that the value retrieved be exactly the same as the
value stored. The following example illustrates how
0x00
-padding of BINARY
values affects column value comparisons:
mysql>CREATE TABLE t (c BINARY(3));
Query OK, 0 rows affected (0.01 sec) mysql>INSERT INTO t SET c = 'a';
Query OK, 1 row affected (0.01 sec) mysql>SELECT HEX(c), c = 'a', c = 'a\0\0' from t;
+--------+---------+-------------+ | HEX(c) | c = 'a' | c = 'a\0\0' | +--------+---------+-------------+ | 610000 | 0 | 1 | +--------+---------+-------------+ 1 row in set (0.09 sec)
If the value retrieved must be the same as the value specified
for storage with no padding, it might be preferable to use
VARBINARY
or one of the
BLOB
data types instead.
A BLOB
is a binary large object that can hold
a variable amount of data. The four BLOB
types are TINYBLOB
, BLOB
,
MEDIUMBLOB
, and LONGBLOB
.
These differ only in the maximum length of the values they can
hold. The four TEXT
types are
TINYTEXT
, TEXT
,
MEDIUMTEXT
, and LONGTEXT
.
These correspond to the four BLOB
types and
have the same maximum lengths and storage requirements. See
Section 12.8, “Data Type Storage Requirements”.
BLOB
values are treated as binary strings
(byte strings). They have the binary
character set and collation, and comparison and sorting are
based on the numeric values of the bytes in column values.
TEXT
values are treated as nonbinary strings
(character strings). They have a character set other than
binary
, and values are sorted and compared
based on the collation of the character set.
If strict SQL mode is not enabled and you assign a value to a
BLOB
or TEXT
column that
exceeds the column's maximum length, the value is truncated to
fit and a warning is generated. For truncation of nonspace
characters, you can cause an error to occur (rather than a
warning) and suppress insertion of the value by using strict SQL
mode. See Section 6.1.8, “Server SQL Modes”.
Truncation of excess trailing spaces from values to be inserted
into TEXT
columns always
generates a warning, regardless of the SQL mode.
For TEXT
and BLOB
columns,
there is no padding on insert and no bytes are stripped on
select.
If a TEXT
column is indexed, index entry
comparisons are space-padded at the end. This means that, if the
index requires unique values, duplicate-key errors will occur
for values that differ only in the number of trailing spaces.
For example, if a table contains 'a'
, an
attempt to store 'a '
causes a
duplicate-key error. This is not true for
BLOB
columns.
In most respects, you can regard a BLOB
column as a VARBINARY
column that
can be as large as you like. Similarly, you can regard a
TEXT
column as a
VARCHAR
column.
BLOB
and TEXT
differ from
VARBINARY
and
VARCHAR
in the following ways:
For indexes on BLOB
and
TEXT
columns, you must specify an index
prefix length. For CHAR
and
VARCHAR
, a prefix length is
optional. See Section 9.3.4, “Column Indexes”.
If you use the BINARY
attribute with a
TEXT
data type, the column is assigned the
binary (_bin
) collation of the column
character set.
LONG
and LONG VARCHAR
map
to the MEDIUMTEXT
data type. This is a
compatibility feature.
MySQL Connector/ODBC defines BLOB
values as
LONGVARBINARY
and TEXT
values as LONGVARCHAR
.
Because BLOB
and TEXT
values can be extremely long, you might encounter some
constraints in using them:
Only the first
max_sort_length
bytes of
the column are used when sorting. The default value of
max_sort_length
is 1024.
You can make more bytes significant in sorting or grouping
by increasing the value of
max_sort_length
at server
startup or runtime. Any client can change the value of its
session max_sort_length
variable:
mysql>SET max_sort_length = 2000;
mysql>SELECT id, comment FROM t
->ORDER BY comment;
Instances of BLOB
or
TEXT
columns in the result of a query
that is processed using a temporary table causes the server
to use a table on disk rather than in memory because the
MEMORY
storage engine does not support
those data types (see
Section 9.4.4, “Internal Temporary Table Use in MySQL”). Use of disk
incurs a performance penalty, so include
BLOB
or TEXT
columns
in the query result only if they are really needed. For
example, avoid using
SELECT *
,
which selects all columns.
The maximum size of a BLOB
or
TEXT
object is determined by its type,
but the largest value you actually can transmit between the
client and server is determined by the amount of available
memory and the size of the communications buffers. You can
change the message buffer size by changing the value of the
max_allowed_packet
variable, but you must do so for both the server and your
client program. For example, both mysql
and mysqldump enable you to change the
client-side
max_allowed_packet
value.
See Section 6.1.1, “Configuring the Server”,
Section 5.5.1, “mysql — The MySQL Command-Line Tool”, and Section 5.5.4, “mysqldump — A Database Backup Program”.
You may also want to compare the packet sizes and the size
of the data objects you are storing with the storage
requirements, see Section 12.8, “Data Type Storage Requirements”
Each BLOB
or TEXT
value is
represented internally by a separately allocated object. This is
in contrast to all other data types, for which storage is
allocated once per column when the table is opened.
In some cases, it may be desirable to store binary data such as
media files in BLOB
or
TEXT
columns. You may find MySQL's string
handling functions useful for working with such data. See
Section 13.5, “String Functions”. For security and other
reasons, it is usually preferable to do so using application
code rather than giving application users the
FILE
privilege. You can discuss
specifics for various languages and platforms in the MySQL
Forums (http://forums.mysql.com/).
An ENUM
is a string object with a value
chosen from a list of permitted values that are enumerated
explicitly in the column specification at table creation time.
It has these advantages:
Compact data storage in situations where a column has a
limited set of possible values. The strings you specify as
input values are automatically encoded as numbers. See
Section 12.8, “Data Type Storage Requirements” for the storage
requirements for ENUM
types.
Readable queries and output. The numbers are translated back to the corresponding strings in query results.
and these potential issues to consider:
If you make enumeration values that look like numbers, it is easy to mix up the literal values with their internal index numbers, as explained in Enumeration Limitations.
Using ENUM
columns in ORDER
BY
clauses requires extra care, as explained in
Enumeration Sorting.
An enumeration value must be a quoted string literal. For
example, you can create a table with an ENUM
column like this:
CREATE TABLE shirts ( name VARCHAR(40), size ENUM('x-small', 'small', 'medium', 'large', 'x-large') ); INSERT INTO shirts (name, size) VALUES ('dress shirt','large'), ('t-shirt','medium'), ('polo shirt','small'); SELECT name, size FROM shirts WHERE size = 'medium'; +---------+--------+ | name | size | +---------+--------+ | t-shirt | medium | +---------+--------+ UPDATE shirts SET size = 'small' WHERE size = 'large'; COMMIT;
Inserting 1 million rows into this table with a value of
'medium'
would require 1 million bytes of
storage, as opposed to 6 million bytes if you stored the actual
string 'medium'
in a
VARCHAR
column.
Each enumeration value has an index:
The elements listed in the column specification are assigned index numbers, beginning with 1.
The index value of the empty string error value is 0. This
means that you can use the following
SELECT
statement to find rows
into which invalid ENUM
values were
assigned:
mysql> SELECT * FROM tbl_name
WHERE enum_col
=0;
The index of the NULL
value is
NULL
.
The term “index” here refers to a position within the list of enumeration values. It has nothing to do with table indexes.
For example, a column specified as ENUM('Mercury',
'Venus', 'Earth')
can have any of the values shown
here. The index of each value is also shown.
Value | Index |
---|---|
NULL | NULL |
'' | 0 |
'Mercury' | 1 |
'Venus' | 2 |
'Earth' | 3 |
An ENUM
column can have a maximum
of 65,535 distinct elements. (The practical limit is less than
3000.) A table can have no more than 255 unique element list
definitions among its ENUM
and
SET
columns considered as a
group. For more information on these limits, see
Section C.10.5, “Limits Imposed by .frm File Structure”.
If you retrieve an ENUM
value in a numeric
context, the column value's index is returned. For example, you
can retrieve numeric values from an ENUM
column like this:
mysql> SELECT enum_col
+0 FROM tbl_name
;
Functions such as SUM()
or
AVG()
that expect a numeric
argument cast the argument to a number if necessary. For
ENUM
values, the index number is used in the
calculation.
Trailing spaces are automatically deleted from
ENUM
member values in the table definition
when a table is created.
When retrieved, values stored into an ENUM
column are displayed using the lettercase that was used in the
column definition. Note that ENUM
columns can
be assigned a character set and collation. For binary or
case-sensitive collations, lettercase is taken into account when
assigning values to the column.
If you store a number into an ENUM
column,
the number is treated as the index into the possible values, and
the value stored is the enumeration member with that index.
(However, this does not work with
LOAD DATA
, which treats all input
as strings.) If the numeric value is quoted, it is still
interpreted as an index if there is no matching string in the
list of enumeration values. For these reasons, it is not
advisable to define an ENUM
column with
enumeration values that look like numbers, because this can
easily become confusing. For example, the following column has
enumeration members with string values of
'0'
, '1'
, and
'2'
, but numeric index values of
1
, 2
, and
3
:
numbers ENUM('0','1','2')
If you store 2
, it is interpreted as an index
value, and becomes '1'
(the value with index
2). If you store '2'
, it matches an
enumeration value, so it is stored as '2'
. If
you store '3'
, it does not match any
enumeration value, so it is treated as an index and becomes
'2'
(the value with index 3).
mysql>INSERT INTO t (numbers) VALUES(2),('2'),('3');
mysql>SELECT * FROM t;
+---------+ | numbers | +---------+ | 1 | | 2 | | 2 | +---------+
To determine all possible values for an ENUM
column, use SHOW
COLUMNS FROM
and parse the
tbl_name
LIKE
'enum_col
'ENUM
definition in the
Type
column of the output.
In the C API, ENUM
values are returned as
strings. For information about using result set metadata to
distinguish them from other strings, see
Section 27.8.5, “C API Data Structures”.
An enumeration value can also be the empty string
(''
) or NULL
under certain
circumstances:
If you insert an invalid value into an
ENUM
(that is, a string not present in
the list of permitted values), the empty string is inserted
instead as a special error value. This string can be
distinguished from a “normal” empty string by
the fact that this string has the numeric value 0. See
Index Values for Enumeration Literals for details about the numeric
indexes for the enumeration values.
If strict SQL mode is enabled, attempts to insert invalid
ENUM
values result in an error.
If an ENUM
column is declared to permit
NULL
, the NULL
value
is a valid value for the column, and the default value is
NULL
. If an ENUM
column is declared NOT NULL
, its default
value is the first element of the list of permitted values.
ENUM
values are sorted based on their index
numbers, which depend on the order in which the enumeration
members were listed in the column specification. For example,
'b'
sorts before 'a'
for
ENUM('b', 'a')
. The empty string sorts before
nonempty strings, and NULL
values sort before
all other enumeration values.
To prevent unexpected results when using the ORDER
BY
clause on an ENUM
column, use
one of these techniques:
Specify the ENUM
list in alphabetic
order.
Make sure that the column is sorted lexically rather than by
index number by coding ORDER BY
CAST(
or
col
AS CHAR)ORDER BY
CONCAT(
.
col
)
An enumeration value cannot be an expression, even one that evaluates to a string value.
For example, this CREATE TABLE
statement does not work because the
CONCAT
function cannot be used to construct
an enumeration value:
CREATE TABLE sizes ( size ENUM('small', CONCAT('med','ium'), 'large') );
You also cannot employ a user variable as an enumeration value. This pair of statements do not work:
SET @mysize = 'medium'; CREATE TABLE sizes ( size ENUM('small', @mysize, 'large') );
We strongly recommend that you do not use
numbers as enumeration values, because it does not save on
storage over the appropriate
TINYINT
or
SMALLINT
type, and it is easy to
mix up the strings and the underlying number values (which might
not be the same) if you quote the ENUM
values
incorrectly. If you do use a number as an enumeration value,
always enclose it in quotation marks. If the quotation marks are
omitted, the number is regarded as an index. See
Handling of Enumeration Literals to see how even a quoted number
could be mistakenly used as a numeric index value.
Duplicate values in the definition cause a warning, or an error if strict SQL mode is enabled.
A SET
is a string object that can have zero
or more values, each of which must be chosen from a list of
permitted values specified when the table is created.
SET
column values that consist of multiple
set members are specified with members separated by commas
(,
). A consequence of this is that
SET
member values should not themselves
contain commas.
For example, a column specified as SET('one', 'two')
NOT NULL
can have any of these values:
'' 'one' 'two' 'one,two'
A SET
column can have a maximum
of 64 distinct members. A table can have no more than 255 unique
element list definitions among its
ENUM
and
SET
columns considered as a
group. For more information on this limit, see
Section C.10.5, “Limits Imposed by .frm File Structure”.
Duplicate values in the definition cause a warning, or an error if strict SQL mode is enabled.
Trailing spaces are automatically deleted from
SET
member values in the table definition
when a table is created.
When retrieved, values stored in a SET
column
are displayed using the lettercase that was used in the column
definition. Note that SET
columns can be
assigned a character set and collation. For binary or
case-sensitive collations, lettercase is taken into account when
assigning values to the column.
MySQL stores SET
values numerically, with the
low-order bit of the stored value corresponding to the first set
member. If you retrieve a SET
value in a
numeric context, the value retrieved has bits set corresponding
to the set members that make up the column value. For example,
you can retrieve numeric values from a SET
column like this:
mysql> SELECT set_col
+0 FROM tbl_name
;
If a number is stored into a SET
column, the
bits that are set in the binary representation of the number
determine the set members in the column value. For a column
specified as SET('a','b','c','d')
, the
members have the following decimal and binary values.
SET Member | Decimal Value | Binary Value |
---|---|---|
'a' | 1 | 0001 |
'b' | 2 | 0010 |
'c' | 4 | 0100 |
'd' | 8 | 1000 |
If you assign a value of 9
to this column,
that is 1001
in binary, so the first and
fourth SET
value members
'a'
and 'd'
are selected
and the resulting value is 'a,d'
.
For a value containing more than one SET
element, it does not matter what order the elements are listed
in when you insert the value. It also does not matter how many
times a given element is listed in the value. When the value is
retrieved later, each element in the value appears once, with
elements listed according to the order in which they were
specified at table creation time. For example, suppose that a
column is specified as SET('a','b','c','d')
:
mysql> CREATE TABLE myset (col SET('a', 'b', 'c', 'd'));
If you insert the values 'a,d'
,
'd,a'
, 'a,d,d'
,
'a,d,a'
, and 'd,a,d'
:
mysql> INSERT INTO myset (col) VALUES
-> ('a,d'), ('d,a'), ('a,d,a'), ('a,d,d'), ('d,a,d');
Query OK, 5 rows affected (0.01 sec)
Records: 5 Duplicates: 0 Warnings: 0
Then all these values appear as 'a,d'
when
retrieved:
mysql> SELECT col FROM myset;
+------+
| col |
+------+
| a,d |
| a,d |
| a,d |
| a,d |
| a,d |
+------+
5 rows in set (0.04 sec)
If you set a SET
column to an unsupported
value, the value is ignored and a warning is issued:
mysql>INSERT INTO myset (col) VALUES ('a,d,d,s');
Query OK, 1 row affected, 1 warning (0.03 sec) mysql>SHOW WARNINGS;
+---------+------+------------------------------------------+ | Level | Code | Message | +---------+------+------------------------------------------+ | Warning | 1265 | Data truncated for column 'col' at row 1 | +---------+------+------------------------------------------+ 1 row in set (0.04 sec) mysql>SELECT col FROM myset;
+------+ | col | +------+ | a,d | | a,d | | a,d | | a,d | | a,d | | a,d | +------+ 6 rows in set (0.01 sec)
If strict SQL mode is enabled, attempts to insert invalid
SET
values result in an error.
SET
values are sorted numerically.
NULL
values sort before
non-NULL
SET
values.
Functions such as SUM()
or
AVG()
that expect a numeric
argument cast the argument to a number if necessary. For
SET
values, the cast operation causes the
numeric value to be used.
Normally, you search for SET
values using the
FIND_IN_SET()
function or the
LIKE
operator:
mysql>SELECT * FROM
mysql>tbl_name
WHERE FIND_IN_SET('value
',set_col
)>0;SELECT * FROM
tbl_name
WHEREset_col
LIKE '%value
%';
The first statement finds rows where
set_col
contains the
value
set member. The second is
similar, but not the same: It finds rows where
set_col
contains
value
anywhere, even as a substring
of another set member.
The following statements also are permitted:
mysql>SELECT * FROM
mysql>tbl_name
WHEREset_col
& 1;SELECT * FROM
tbl_name
WHEREset_col
= 'val1
,val2
';
The first of these statements looks for values containing the
first set member. The second looks for an exact match. Be
careful with comparisons of the second type. Comparing set
values to
'
returns different results than comparing values to
val1
,val2
''
.
You should specify the values in the same order they are listed
in the column definition.
val2
,val1
'
To determine all possible values for a SET
column, use SHOW COLUMNS FROM
and parse the
tbl_name
LIKE
set_col
SET
definition in the Type
column of the output.
In the C API, SET
values are returned as
strings. For information about using result set metadata to
distinguish them from other strings, see
Section 27.8.5, “C API Data Structures”.
The Open Geospatial Consortium (OGC) is an international consortium of more than 250 companies, agencies, and universities participating in the development of publicly available conceptual solutions that can be useful with all kinds of applications that manage spatial data.
The Open Geospatial Consortium publishes the OpenGIS® Implementation Standard for Geographic information - Simple feature access - Part 2: SQL option, a document that proposes several conceptual ways for extending an SQL RDBMS to support spatial data. This specification is available from the OGC Web site at http://www.opengeospatial.org/standards/sfs.
Following the OGC specification, MySQL implements spatial extensions as a subset of the SQL with Geometry Types environment. This term refers to an SQL environment that has been extended with a set of geometry types. A geometry-valued SQL column is implemented as a column that has a geometry type. The specification describes a set of SQL geometry types, as well as functions on those types to create and analyze geometry values.
MySQL spatial extensions enable the generation, storage, and analysis of geographic features:
Data types for representing spatial values
Functions for manipulating spatial values
Spatial indexing for improved access times to spatial columns
The data types and functions are available for
MyISAM
,
InnoDB
,
NDB
, and
ARCHIVE
tables. For indexing spatial
columns, MyISAM
and InnoDB
support both SPATIAL
and
non-SPATIAL
indexes. The other storage engines
support non-SPATIAL
indexes, as described in
Section 14.1.14, “CREATE INDEX Syntax”.
A geographic feature is anything in the world that has a location. A feature can be:
An entity. For example, a mountain, a pond, a city.
A space. For example, town district, the tropics.
A definable location. For example, a crossroad, as a particular place where two streets intersect.
Some documents use the term geospatial feature to refer to geographic features.
Geometry is another word that denotes a geographic feature. Originally the word geometry meant measurement of the earth. Another meaning comes from cartography, referring to the geometric features that cartographers use to map the world.
The discussion here considers these terms synonymous: geographic feature, geospatial feature, feature, or geometry. The term most commonly used is geometry, defined as a point or an aggregate of points representing anything in the world that has a location.
The following material covers these topics:
The spatial data types implemented in MySQL model
The basis of the spatial extensions in the OpenGIS geometry model
Data formats for representing spatial data
How to use spatial data in MySQL
Use of indexing for spatial data
MySQL differences from the OpenGIS specification
For information about functions that operate on spatial data, see Section 13.15, “Spatial Analysis Functions”.
MySQL does not implement the following GIS features:
Additional Metadata Views
OpenGIS specifications propose several additional metadata
views. For example, a system view named
GEOMETRY_COLUMNS
contains a description of
geometry columns, one row for each geometry column in the
database.
The OpenGIS function Length()
on LineString
and
MultiLineString
should be called in MySQL
as ST_Length()
The problem is that there is an existing SQL function
Length()
that calculates the
length of string values, and sometimes it is not possible to
distinguish whether the function is called in a textual or
spatial context.
The Open Geospatial Consortium publishes the OpenGIS® Implementation Standard for Geographic information - Simple feature access - Part 2: SQL option, a document that proposes several conceptual ways for extending an SQL RDBMS to support spatial data. The Open Geospatial Consortium (OGC) maintains a Web site at http://www.opengeospatial.org/. The specification is available there at http://www.opengeospatial.org/standards/sfs. It contains additional information relevant to the material here.
If you have questions or concerns about the use of the spatial extensions to MySQL, you can discuss them in the GIS forum: http://forums.mysql.com/list.php?23.
MySQL has data types that correspond to OpenGIS classes. Some of these types hold single geometry values:
GEOMETRY
POINT
LINESTRING
POLYGON
GEOMETRY
can store geometry values of any
type. The other single-value types (POINT
,
LINESTRING
, and POLYGON
)
restrict their values to a particular geometry type.
The other data types hold collections of values:
MULTIPOINT
MULTILINESTRING
MULTIPOLYGON
GEOMETRYCOLLECTION
GEOMETRYCOLLECTION
can store a collection of
objects of any type. The other collection types
(MULTIPOINT
,
MULTILINESTRING
,
MULTIPOLYGON
, and
GEOMETRYCOLLECTION
) restrict collection
members to those having a particular geometry type.
MySQL spatial data types have their basis in the OpenGIS geometry model, described in Section 12.5.2, “The OpenGIS Geometry Model”. For examples showing how to use spatial data types in MySQL, see Section 12.5.3, “Using Spatial Data”.
The set of geometry types proposed by OGC's SQL with Geometry Types environment is based on the OpenGIS Geometry Model. In this model, each geometric object has the following general properties:
It is associated with a spatial reference system, which describes the coordinate space in which the object is defined.
It belongs to some geometry class.
The geometry classes define a hierarchy as follows:
Geometry
(noninstantiable)
Point
(instantiable)
Curve
(noninstantiable)
LineString
(instantiable)
Line
LinearRing
Surface
(noninstantiable)
Polygon
(instantiable)
GeometryCollection
(instantiable)
MultiPoint
(instantiable)
MultiCurve
(noninstantiable)
MultiLineString
(instantiable)
MultiSurface
(noninstantiable)
MultiPolygon
(instantiable)
It is not possible to create objects in noninstantiable classes. It is possible to create objects in instantiable classes. All classes have properties, and instantiable classes may also have assertions (rules that define valid class instances).
Geometry
is the base class. It is an
abstract class. The instantiable subclasses of
Geometry
are restricted to zero-, one-, and
two-dimensional geometric objects that exist in
two-dimensional coordinate space. All instantiable geometry
classes are defined so that valid instances of a geometry
class are topologically closed (that is, all defined
geometries include their boundary).
The base Geometry
class has subclasses for
Point
, Curve
,
Surface
, and
GeometryCollection
:
Point
represents zero-dimensional
objects.
Curve
represents one-dimensional
objects, and has subclass LineString
,
with sub-subclasses Line
and
LinearRing
.
Surface
is designed for two-dimensional
objects and has subclass Polygon
.
GeometryCollection
has specialized
zero-, one-, and two-dimensional collection classes named
MultiPoint
,
MultiLineString
, and
MultiPolygon
for modeling geometries
corresponding to collections of Points
,
LineStrings
, and
Polygons
, respectively.
MultiCurve
and
MultiSurface
are introduced as abstract
superclasses that generalize the collection interfaces to
handle Curves
and
Surfaces
.
Geometry
, Curve
,
Surface
, MultiCurve
, and
MultiSurface
are defined as noninstantiable
classes. They define a common set of methods for their
subclasses and are included for extensibility.
Point
, LineString
,
Polygon
,
GeometryCollection
,
MultiPoint
,
MultiLineString
, and
MultiPolygon
are instantiable classes.
Geometry
is the root class of the
hierarchy. It is a noninstantiable class but has a number of
properties, described in the following list, that are common
to all geometry values created from any of the
Geometry
subclasses. Particular subclasses
have their own specific properties, described later.
Geometry Properties
A geometry value has the following properties:
Its type. Each geometry belongs to one of the instantiable classes in the hierarchy.
Its SRID, or spatial reference identifier. This value identifies the geometry's associated spatial reference system that describes the coordinate space in which the geometry object is defined.
In MySQL, the SRID value is an integer associated with the geometry value. The maximum usable SRID value is 232−1. If a larger value is given, only the lower 32 bits are used. All computations are done assuming SRID 0, regardless of the actual SRID value. SRID 0 represents an infinite flat Cartesian plane with no units assigned to its axes.
Its coordinates in its spatial reference system, represented as double-precision (8-byte) numbers. All nonempty geometries include at least one pair of (X,Y) coordinates. Empty geometries contain no coordinates.
Coordinates are related to the SRID. For example, in different coordinate systems, the distance between two objects may differ even when objects have the same coordinates, because the distance on the planar coordinate system and the distance on the geodetic system (coordinates on the Earth's surface) are different things.
Its interior, boundary, and exterior.
Every geometry occupies some position in space. The exterior of a geometry is all space not occupied by the geometry. The interior is the space occupied by the geometry. The boundary is the interface between the geometry's interior and exterior.
Its MBR (minimum bounding rectangle), or envelope. This is the bounding geometry, formed by the minimum and maximum (X,Y) coordinates:
((MINX MINY, MAXX MINY, MAXX MAXY, MINX MAXY, MINX MINY))
Whether the value is
simple or
nonsimple. Geometry
values of types (LineString
,
MultiPoint
,
MultiLineString
) are either simple or
nonsimple. Each type determines its own assertions for
being simple or nonsimple.
Whether the value is
closed or
not closed. Geometry
values of types (LineString
,
MultiString
) are either closed or not
closed. Each type determines its own assertions for being
closed or not closed.
Whether the value is
empty or
nonempty A geometry is
empty if it does not have any points. Exterior, interior,
and boundary of an empty geometry are not defined (that
is, they are represented by a NULL
value). An empty geometry is defined to be always simple
and has an area of 0.
Its dimension. A geometry can have a dimension of −1, 0, 1, or 2:
−1 for an empty geometry.
0 for a geometry with no length and no area.
1 for a geometry with nonzero length and zero area.
2 for a geometry with nonzero area.
Point
objects have a dimension of zero.
LineString
objects have a dimension of
1. Polygon
objects have a dimension of
2. The dimensions of MultiPoint
,
MultiLineString
, and
MultiPolygon
objects are the same as
the dimensions of the elements they consist of.
A Point
is a geometry that represents a
single location in coordinate space.
Point
Examples
Imagine a large-scale map of the world with many cities. A
Point
object could represent each city.
On a city map, a Point
object could
represent a bus stop.
Point
Properties
X-coordinate value.
Y-coordinate value.
Point
is defined as a zero-dimensional
geometry.
The boundary of a Point
is the empty
set.
A Curve
is a one-dimensional geometry,
usually represented by a sequence of points. Particular
subclasses of Curve
define the type of
interpolation between points. Curve
is a
noninstantiable class.
Curve
Properties
A Curve
has the coordinates of its
points.
A Curve
is defined as a one-dimensional
geometry.
A Curve
is simple if it does not pass
through the same point twice, with the exception that a
curve can still be simple if the start and end points are
the same.
A Curve
is closed if its start point is
equal to its endpoint.
The boundary of a closed Curve
is
empty.
The boundary of a nonclosed Curve
consists of its two endpoints.
A Curve
that is simple and closed is a
LinearRing
.
A LineString
is a Curve
with linear interpolation between points.
LineString
Examples
On a world map, LineString
objects
could represent rivers.
In a city map, LineString
objects could
represent streets.
LineString
Properties
A LineString
has coordinates of
segments, defined by each consecutive pair of points.
A LineString
is a
Line
if it consists of exactly two
points.
A LineString
is a
LinearRing
if it is both closed and
simple.
A Surface
is a two-dimensional geometry. It
is a noninstantiable class. Its only instantiable subclass is
Polygon
.
Surface
Properties
A Surface
is defined as a
two-dimensional geometry.
The OpenGIS specification defines a simple
Surface
as a geometry that consists of
a single “patch” that is associated with a
single exterior boundary and zero or more interior
boundaries.
The boundary of a simple Surface
is the
set of closed curves corresponding to its exterior and
interior boundaries.
A Polygon
is a planar
Surface
representing a multisided geometry.
It is defined by a single exterior boundary and zero or more
interior boundaries, where each interior boundary defines a
hole in the Polygon
.
Polygon
Examples
On a region map, Polygon
objects could
represent forests, districts, and so on.
Polygon
Assertions
The boundary of a Polygon
consists of a
set of LinearRing
objects (that is,
LineString
objects that are both simple
and closed) that make up its exterior and interior
boundaries.
A Polygon
has no rings that cross. The
rings in the boundary of a Polygon
may
intersect at a Point
, but only as a
tangent.
A Polygon
has no lines, spikes, or
punctures.
A Polygon
has an interior that is a
connected point set.
A Polygon
may have holes. The exterior
of a Polygon
with holes is not
connected. Each hole defines a connected component of the
exterior.
The preceding assertions make a Polygon
a
simple geometry.
A GeometryCollection
is a geometry that is
a collection of one or more geometries of any class.
All the elements in a GeometryCollection
must be in the same spatial reference system (that is, in the
same coordinate system). There are no other constraints on the
elements of a GeometryCollection
, although
the subclasses of GeometryCollection
described in the following sections may restrict membership.
Restrictions may be based on:
Element type (for example, a MultiPoint
may contain only Point
elements)
Dimension
Constraints on the degree of spatial overlap between elements
A MultiPoint
is a geometry collection
composed of Point
elements. The points are
not connected or ordered in any way.
MultiPoint
Examples
On a world map, a MultiPoint
could
represent a chain of small islands.
On a city map, a MultiPoint
could
represent the outlets for a ticket office.
MultiPoint
Properties
A MultiPoint
is a zero-dimensional
geometry.
A MultiPoint
is simple if no two of its
Point
values are equal (have identical
coordinate values).
The boundary of a MultiPoint
is the
empty set.
A MultiCurve
is a geometry collection
composed of Curve
elements.
MultiCurve
is a noninstantiable class.
MultiCurve
Properties
A MultiCurve
is a one-dimensional
geometry.
A MultiCurve
is simple if and only if
all of its elements are simple; the only intersections
between any two elements occur at points that are on the
boundaries of both elements.
A MultiCurve
boundary is obtained by
applying the “mod 2 union rule” (also known
as the “odd-even rule”): A point is in the
boundary of a MultiCurve
if it is in
the boundaries of an odd number of
Curve
elements.
A MultiCurve
is closed if all of its
elements are closed.
The boundary of a closed MultiCurve
is
always empty.
A MultiLineString
is a
MultiCurve
geometry collection composed of
LineString
elements.
MultiLineString
Examples
On a region map, a MultiLineString
could represent a river system or a highway system.
A MultiSurface
is a geometry collection
composed of surface elements. MultiSurface
is a noninstantiable class. Its only instantiable subclass is
MultiPolygon
.
MultiSurface
Assertions
Surfaces within a MultiSurface
have no
interiors that intersect.
Surfaces within a MultiSurface
have
boundaries that intersect at most at a finite number of
points.
A MultiPolygon
is a
MultiSurface
object composed of
Polygon
elements.
MultiPolygon
Examples
On a region map, a MultiPolygon
could
represent a system of lakes.
MultiPolygon
Assertions
A MultiPolygon
has no two
Polygon
elements with interiors that
intersect.
A MultiPolygon
has no two
Polygon
elements that cross (crossing
is also forbidden by the previous assertion), or that
touch at an infinite number of points.
A MultiPolygon
may not have cut lines,
spikes, or punctures. A MultiPolygon
is
a regular, closed point set.
A MultiPolygon
that has more than one
Polygon
has an interior that is not
connected. The number of connected components of the
interior of a MultiPolygon
is equal to
the number of Polygon
values in the
MultiPolygon
.
MultiPolygon
Properties
A MultiPolygon
is a two-dimensional
geometry.
A MultiPolygon
boundary is a set of
closed curves (LineString
values)
corresponding to the boundaries of its
Polygon
elements.
Each Curve
in the boundary of the
MultiPolygon
is in the boundary of
exactly one Polygon
element.
Every Curve
in the boundary of an
Polygon
element is in the boundary of
the MultiPolygon
.
This section describes how to create tables that include spatial data type columns, and how to manipulate spatial information.
Two standard spatial data formats are used to represent geometry objects in queries:
Well-Known Text (WKT) format
Well-Known Binary (WKB) format
Internally, MySQL stores geometry values in a format that is not identical to either WKT or WKB format.
There are functions available to convert between different data formats; see Section 13.15.6, “Geometry Format Conversion Functions”.
The Well-Known Text (WKT) representation of geometry values is designed for exchanging geometry data in ASCII form. The OpenGIS specification provides a Backus-Naur grammar that specifies the formal production rules for writing WKT values (see Section 12.5, “Extensions for Spatial Data”).
Examples of WKT representations of geometry objects:
A Point
:
POINT(15 20)
The point coordinates are specified with no separating
comma. This differs from the syntax for the SQL
Point()
function, which
requires a comma between the coordinates. Take care to
use the syntax appropriate to the context of a given
spatial operation. For example, the following statements
both extract the X-coordinate from a
Point
object. The first produces the
object directly using the
Point()
function. The
second uses a WKT representation converted to a
Point
with
GeomFromText()
.
mysql>SELECT ST_X(Point(15, 20));
+---------------------+ | ST_X(POINT(15, 20)) | +---------------------+ | 15 | +---------------------+ mysql>SELECT ST_X(ST_GeomFromText('POINT(15 20)'));
+---------------------------------------+ | ST_X(ST_GeomFromText('POINT(15 20)')) | +---------------------------------------+ | 15 | +---------------------------------------+
A LineString
with four points:
LINESTRING(0 0, 10 10, 20 25, 50 60)
The point coordinate pairs are separated by commas.
A Polygon
with one exterior ring and
one interior ring:
POLYGON((0 0,10 0,10 10,0 10,0 0),(5 5,7 5,7 7,5 7, 5 5))
A MultiPoint
with three
Point
values:
MULTIPOINT(0 0, 20 20, 60 60)
As of MySQL 5.7.9, spatial functions such as
ST_MPointFromText()
and
ST_GeomFromText()
that
accept WKT-format representations of
MultiPoint
values permit individual
points within values to be surrounded by parentheses.
For example, both of the following function calls are
valid, whereas before MySQL 5.7.9 the second one
produces an error:
ST_MPointFromText('MULTIPOINT (1 1, 2 2, 3 3)') ST_MPointFromText('MULTIPOINT ((1 1), (2 2), (3 3))')
As of MySQL 5.7.9, output for
MultiPoint
values includes
parentheses around each point. For example:
mysql>SET @mp = 'MULTIPOINT(1 1, 2 2, 3 3)';
mysql>SELECT ST_AsText(ST_GeomFromText(@mp));
+---------------------------------+ | ST_AsText(ST_GeomFromText(@mp)) | +---------------------------------+ | MULTIPOINT((1 1),(2 2),(3 3)) | +---------------------------------+
Before MySQL 5.7.9, output for the same value does not include parentheses around each point:
mysql>SET @mp = 'MULTIPOINT(1 1, 2 2, 3 3)';
mysql>SELECT ST_AsText(ST_GeomFromText(@mp));
+---------------------------------+ | ST_AsText(ST_GeomFromText(@mp)) | +---------------------------------+ | MULTIPOINT(1 1,2 2,3 3) | +---------------------------------+
A MultiLineString
with two
LineString
values:
MULTILINESTRING((10 10, 20 20), (15 15, 30 15))
A MultiPolygon
with two
Polygon
values:
MULTIPOLYGON(((0 0,10 0,10 10,0 10,0 0)),((5 5,7 5,7 7,5 7, 5 5)))
A GeometryCollection
consisting of
two Point
values and one
LineString
:
GEOMETRYCOLLECTION(POINT(10 10), POINT(30 30), LINESTRING(15 15, 20 20))
The Well-Known Binary (WKB) representation of geometric
values is used for exchanging geometry data as binary
streams represented by BLOB
values containing geometric WKB information. This format is
defined by the OpenGIS specification (see
Section 12.5, “Extensions for Spatial Data”). It is also defined in
the ISO SQL/MM Part 3: Spatial
standard.
WKB uses 1-byte unsigned integers, 4-byte unsigned integers, and 8-byte double-precision numbers (IEEE 754 format). A byte is eight bits.
For example, a WKB value that corresponds to
POINT(1 1)
consists of this sequence of
21 bytes, each represented by two hexadecimal digits:
0101000000000000000000F03F000000000000F03F
The sequence consists of these components:
Byte order: 01 WKB type: 01000000 X coordinate: 000000000000F03F Y coordinate: 000000000000F03F
Component representation is as follows:
The byte order is either 1 or 0 to indicate little-endian or big-endian storage. The little-endian and big-endian byte orders are also known as Network Data Representation (NDR) and External Data Representation (XDR), respectively.
The WKB type is a code that indicates the geometry type.
Values from 1 through 7 indicate
Point
, LineString
,
Polygon
,
MultiPoint
,
MultiLineString
,
MultiPolygon
, and
GeometryCollection
.
A Point
value has X and Y
coordinates, each represented as a double-precision
value.
WKB values for more complex geometry values have more complex data structures, as detailed in the OpenGIS specification.
MySQL provides a standard way of creating spatial columns for
geometry types, for example, with CREATE
TABLE
or ALTER TABLE
.
Spatial columns are supported for
MyISAM
,
InnoDB
,
NDB
, and
ARCHIVE
tables. See also the
notes about spatial indexes under
Section 12.5.3.6, “Creating Spatial Indexes”.
Use the CREATE TABLE
statement to create a table with a spatial column:
CREATE TABLE geom (g GEOMETRY);
Use the ALTER TABLE
statement to add or drop a spatial column to or from an
existing table:
ALTER TABLE geom ADD pt POINT; ALTER TABLE geom DROP pt;
After you have created spatial columns, you can populate them with spatial data.
Values should be stored in internal geometry format, but you can convert them to that format from either Well-Known Text (WKT) or Well-Known Binary (WKB) format. The following examples demonstrate how to insert geometry values into a table by converting WKT values to internal geometry format:
The following examples insert more complex geometries into the table:
SET @g = 'LINESTRING(0 0,1 1,2 2)'; INSERT INTO geom VALUES (ST_GeomFromText(@g)); SET @g = 'POLYGON((0 0,10 0,10 10,0 10,0 0),(5 5,7 5,7 7,5 7, 5 5))'; INSERT INTO geom VALUES (ST_GeomFromText(@g)); SET @g = 'GEOMETRYCOLLECTION(POINT(1 1),LINESTRING(0 0,1 1,2 2,3 3,4 4))'; INSERT INTO geom VALUES (ST_GeomFromText(@g));
The preceding examples use
ST_GeomFromText()
to create
geometry values. You can also use type-specific functions:
SET @g = 'POINT(1 1)'; INSERT INTO geom VALUES (ST_PointFromText(@g)); SET @g = 'LINESTRING(0 0,1 1,2 2)'; INSERT INTO geom VALUES (ST_LineStringFromText(@g)); SET @g = 'POLYGON((0 0,10 0,10 10,0 10,0 0),(5 5,7 5,7 7,5 7, 5 5))'; INSERT INTO geom VALUES (ST_PolygonFromText(@g)); SET @g = 'GEOMETRYCOLLECTION(POINT(1 1),LINESTRING(0 0,1 1,2 2,3 3,4 4))'; INSERT INTO geom VALUES (ST_GeomCollFromText(@g));
A client application program that wants to use WKB representations of geometry values is responsible for sending correctly formed WKB in queries to the server. There are several ways to satisfy this requirement. For example:
Inserting a POINT(1 1)
value with hex
literal syntax:
mysql>INSERT INTO geom VALUES
(ST_GeomFromWKB(X'0101000000000000000000F03F000000000000F03F'));
An ODBC application can send a WKB representation, binding
it to a placeholder using an argument of
BLOB
type:
INSERT INTO geom VALUES (ST_GeomFromWKB(?))
Other programming interfaces may support a similar placeholder mechanism.
In a C program, you can escape a binary value using
mysql_real_escape_string_quote()
and include the result in a query string that is sent to
the server. See
Section 27.8.7.56, “mysql_real_escape_string_quote()”.
Geometry values stored in a table can be fetched in internal format. You can also convert them to WKT or WKB format.
Fetching spatial data in internal format:
Fetching geometry values using internal format can be useful in table-to-table transfers:
CREATE TABLE geom2 (g GEOMETRY) SELECT g FROM geom;
Fetching spatial data in WKT format:
The ST_AsText()
function
converts a geometry from internal format to a WKT string.
SELECT ST_AsText(g) FROM geom;
Fetching spatial data in WKB format:
The ST_AsBinary()
function
converts a geometry from internal format to a
BLOB
containing the WKB
value.
SELECT ST_AsBinary(g) FROM geom;
For MyISAM
and (as of MySQL
5.7.5) InnoDB
tables, search operations in
columns containing spatial data can be optimized using
SPATIAL
indexes. The most typical
operations are:
Point queries that search for all objects that contain a given point
Region queries that search for all objects that overlap a given region
MySQL uses R-Trees with quadratic
splitting for SPATIAL
indexes on
spatial columns. A SPATIAL
index is built
using the minimum bounding rectangle (MBR) of a geometry. For
most geometries, the MBR is a minimum rectangle that surrounds
the geometries. For a horizontal or a vertical linestring, the
MBR is a rectangle degenerated into the linestring. For a
point, the MBR is a rectangle degenerated into the point.
It is also possible to create normal indexes on spatial
columns. In a non-SPATIAL
index, you must
declare a prefix for any spatial column except for
POINT
columns.
MyISAM
and InnoDB
support both SPATIAL
and
non-SPATIAL
indexes. Other storage engines
support non-SPATIAL
indexes, as described
in Section 14.1.14, “CREATE INDEX Syntax”.
For MyISAM
and (as of MySQL
5.7.5) InnoDB
tables, MySQL can create
spatial indexes using syntax similar to that for creating
regular indexes, but using the SPATIAL
keyword. Columns in spatial indexes must be declared
NOT NULL
. The following examples
demonstrate how to create spatial indexes:
With CREATE TABLE
:
CREATE TABLE geom (g GEOMETRY NOT NULL, SPATIAL INDEX(g)) ENGINE=MyISAM;
With ALTER TABLE
:
ALTER TABLE geom ADD SPATIAL INDEX(g);
With CREATE INDEX
:
CREATE SPATIAL INDEX sp_index ON geom (g);
SPATIAL INDEX
creates an R-tree index. For
storage engines that support nonspatial indexing of spatial
columns, the engine creates a B-tree index. A B-tree index on
spatial values is useful for exact-value lookups, but not for
range scans.
For more information on indexing spatial columns, see Section 14.1.14, “CREATE INDEX Syntax”.
To drop spatial indexes, use ALTER
TABLE
or DROP INDEX
:
With ALTER TABLE
:
ALTER TABLE geom DROP INDEX g;
With DROP INDEX
:
DROP INDEX sp_index ON geom;
Example: Suppose that a table geom
contains
more than 32,000 geometries, which are stored in the column
g
of type GEOMETRY
. The
table also has an AUTO_INCREMENT
column
fid
for storing object ID values.
mysql>DESCRIBE geom;
+-------+----------+------+-----+---------+----------------+ | Field | Type | Null | Key | Default | Extra | +-------+----------+------+-----+---------+----------------+ | fid | int(11) | | PRI | NULL | auto_increment | | g | geometry | | | | | +-------+----------+------+-----+---------+----------------+ 2 rows in set (0.00 sec) mysql>SELECT COUNT(*) FROM geom;
+----------+ | count(*) | +----------+ | 32376 | +----------+ 1 row in set (0.00 sec)
To add a spatial index on the column g
, use
this statement:
mysql> ALTER TABLE geom ADD SPATIAL INDEX(g) ENGINE=MyISAM;
Query OK, 32376 rows affected (4.05 sec)
Records: 32376 Duplicates: 0 Warnings: 0
The optimizer investigates whether available spatial indexes
can be involved in the search for queries that use a function
such as MBRContains()
or
MBRWithin()
in the
WHERE
clause. The following query finds all
objects that are in the given rectangle:
mysql>SET @poly =
->'Polygon((30000 15000, 31000 15000, 31000 16000, 30000 16000, 30000 15000))';
mysql>SELECT fid,ST_AsText(g) FROM geom WHERE
->MBRContains(ST_GeomFromText(@poly),g);
+-----+---------------------------------------------------------------+ | fid | ST_AsText(g) | +-----+---------------------------------------------------------------+ | 21 | LINESTRING(30350.4 15828.8,30350.6 15845,30333.8 15845,30 ... | | 22 | LINESTRING(30350.6 15871.4,30350.6 15887.8,30334 15887.8, ... | | 23 | LINESTRING(30350.6 15914.2,30350.6 15930.4,30334 15930.4, ... | | 24 | LINESTRING(30290.2 15823,30290.2 15839.4,30273.4 15839.4, ... | | 25 | LINESTRING(30291.4 15866.2,30291.6 15882.4,30274.8 15882. ... | | 26 | LINESTRING(30291.6 15918.2,30291.6 15934.4,30275 15934.4, ... | | 249 | LINESTRING(30337.8 15938.6,30337.8 15946.8,30320.4 15946. ... | | 1 | LINESTRING(30250.4 15129.2,30248.8 15138.4,30238.2 15136. ... | | 2 | LINESTRING(30220.2 15122.8,30217.2 15137.8,30207.6 15136, ... | | 3 | LINESTRING(30179 15114.4,30176.6 15129.4,30167 15128,3016 ... | | 4 | LINESTRING(30155.2 15121.4,30140.4 15118.6,30142 15109,30 ... | | 5 | LINESTRING(30192.4 15085,30177.6 15082.2,30179.2 15072.4, ... | | 6 | LINESTRING(30244 15087,30229 15086.2,30229.4 15076.4,3024 ... | | 7 | LINESTRING(30200.6 15059.4,30185.6 15058.6,30186 15048.8, ... | | 10 | LINESTRING(30179.6 15017.8,30181 15002.8,30190.8 15003.6, ... | | 11 | LINESTRING(30154.2 15000.4,30168.6 15004.8,30166 15014.2, ... | | 13 | LINESTRING(30105 15065.8,30108.4 15050.8,30118 15053,3011 ... | | 154 | LINESTRING(30276.2 15143.8,30261.4 15141,30263 15131.4,30 ... | | 155 | LINESTRING(30269.8 15084,30269.4 15093.4,30258.6 15093,30 ... | | 157 | LINESTRING(30128.2 15011,30113.2 15010.2,30113.6 15000.4, ... | +-----+---------------------------------------------------------------+ 20 rows in set (0.00 sec)
Use EXPLAIN
to check the way
this query is executed:
mysql>SET @poly =
->'Polygon((30000 15000, 31000 15000, 31000 16000, 30000 16000, 30000 15000))';
mysql>EXPLAIN SELECT fid,ST_AsText(g) FROM geom WHERE
->MBRContains(ST_GeomFromText(@poly),g)\G
*************************** 1. row *************************** id: 1 select_type: SIMPLE table: geom type: range possible_keys: g key: g key_len: 32 ref: NULL rows: 50 Extra: Using where 1 row in set (0.00 sec)
Check what would happen without a spatial index:
mysql>SET @poly =
->'Polygon((30000 15000, 31000 15000, 31000 16000, 30000 16000, 30000 15000))';
mysql>EXPLAIN SELECT fid,ST_AsText(g) FROM g IGNORE INDEX (g) WHERE
->MBRContains(ST_GeomFromText(@poly),g)\G
*************************** 1. row *************************** id: 1 select_type: SIMPLE table: geom type: ALL possible_keys: NULL key: NULL key_len: NULL ref: NULL rows: 32376 Extra: Using where 1 row in set (0.00 sec)
Executing the SELECT
statement
without the spatial index yields the same result but causes
the execution time to rise from 0.00 seconds to 0.46 seconds:
mysql>SET @poly =
->'Polygon((30000 15000, 31000 15000, 31000 16000, 30000 16000, 30000 15000))';
mysql>SELECT fid,ST_AsText(g) FROM geom IGNORE INDEX (g) WHERE
->MBRContains(ST_GeomFromText(@poly),g);
+-----+---------------------------------------------------------------+ | fid | ST_AsText(g) | +-----+---------------------------------------------------------------+ | 1 | LINESTRING(30250.4 15129.2,30248.8 15138.4,30238.2 15136. ... | | 2 | LINESTRING(30220.2 15122.8,30217.2 15137.8,30207.6 15136, ... | | 3 | LINESTRING(30179 15114.4,30176.6 15129.4,30167 15128,3016 ... | | 4 | LINESTRING(30155.2 15121.4,30140.4 15118.6,30142 15109,30 ... | | 5 | LINESTRING(30192.4 15085,30177.6 15082.2,30179.2 15072.4, ... | | 6 | LINESTRING(30244 15087,30229 15086.2,30229.4 15076.4,3024 ... | | 7 | LINESTRING(30200.6 15059.4,30185.6 15058.6,30186 15048.8, ... | | 10 | LINESTRING(30179.6 15017.8,30181 15002.8,30190.8 15003.6, ... | | 11 | LINESTRING(30154.2 15000.4,30168.6 15004.8,30166 15014.2, ... | | 13 | LINESTRING(30105 15065.8,30108.4 15050.8,30118 15053,3011 ... | | 21 | LINESTRING(30350.4 15828.8,30350.6 15845,30333.8 15845,30 ... | | 22 | LINESTRING(30350.6 15871.4,30350.6 15887.8,30334 15887.8, ... | | 23 | LINESTRING(30350.6 15914.2,30350.6 15930.4,30334 15930.4, ... | | 24 | LINESTRING(30290.2 15823,30290.2 15839.4,30273.4 15839.4, ... | | 25 | LINESTRING(30291.4 15866.2,30291.6 15882.4,30274.8 15882. ... | | 26 | LINESTRING(30291.6 15918.2,30291.6 15934.4,30275 15934.4, ... | | 154 | LINESTRING(30276.2 15143.8,30261.4 15141,30263 15131.4,30 ... | | 155 | LINESTRING(30269.8 15084,30269.4 15093.4,30258.6 15093,30 ... | | 157 | LINESTRING(30128.2 15011,30113.2 15010.2,30113.6 15000.4, ... | | 249 | LINESTRING(30337.8 15938.6,30337.8 15946.8,30320.4 15946. ... | +-----+---------------------------------------------------------------+ 20 rows in set (0.46 sec)
As of MySQL 5.7.8, MySQL supports a native JSON
data type that enables efficient access to data in JSON
(JavaScript Object Notation) documents. The
JSON
data type provides these advantages over
storing JSON-format strings in a string column:
Automatic validation of JSON documents stored in
JSON
columns. Invalid documents produce an
error.
Optimized storage format. JSON documents stored in
JSON
columns are converted to an internal
format that permits quick read access to document elements.
When the server later must read a JSON value stored in this
binary format, the value need not be parsed from a text
representation. The binary format is structured to enable the
server to look up subobjects or nested values directly by key
or array index without reading all values before or after them
in the document.
This discussion uses JSON
in monotype to
indicate specifically the JSON data type and “JSON”
in regular font to indicate JSON data in general.
The space required to store a JSON
document is
roughly the same as for LONGBLOB
or
LONGTEXT
; see
Section 12.8, “Data Type Storage Requirements”, for more information. It
is important to keep in mind that the size of any JSON document
stored in a JSON
column is limited to the value
of the max_allowed_packet
system
variable. (When the server is manipulating a JSON value internally
in memory, it can be larger than this; the limit applies when the
server stores it.)
A JSON
column cannot have a default value.
JSON
columns, like columns of other binary
types, are not indexed directly; instead, you can create an index
on a generated column that extracts a scalar value from the
JSON
column. See
Indexing a Generated Column to Provide a JSON Column Index, for a detailed
example.
The MySQL optimizer also looks for compatible indexes on virtual columns that match JSON expressions.
MySQL NDB Cluster 7.5.2 and later supports JSON
columns and MySQL JSON functions, including creation of an index
on a column generated from a JSON
column as a
workaround for being unable to index a JSON
column. A maximum of 3 JSON
columns per
NDB
table is supported.
Along with the JSON
data type, a set of SQL
functions is available to enable operations on JSON values, such
as creation, manipulation, and searching. The follow discussion
shows examples of these operations. For details about individual
functions, see Section 13.16, “JSON Functions”.
A set of spatial functions for operating on GeoJSON values is also available. See Section 13.15.11, “Spatial GeoJSON Functions”.
The next few sections provide basic information regarding the creation and manipulation of JSON values.
A JSON array contains a list of values separated by commas and
enclosed within [
and ]
characters:
["abc", 10, null, true, false]
A JSON object contains a set of key/value pairs separated by
commas and enclosed within {
and
}
characters:
{"k1": "value", "k2": 10}
As the examples illustrate, JSON arrays and objects can contain scalar values that are strings or numbers, the JSON null literal, or the JSON boolean true or false literals. Keys in JSON objects must be strings. Temporal (date, time, or datetime) scalar values are also permitted:
["12:18:29.000000", "2015-07-29", "2015-07-29 12:18:29.000000"]
Nesting is permitted within JSON array elements and JSON object key values:
[99, {"id": "HK500", "cost": 75.99}, ["hot", "cold"]] {"k1": "value", "k2": [10, 20]}
You can also obtain JSON values from a number of functions
supplied by MySQL for this purpose (see
Section 13.16.2, “Functions That Create JSON Values”) as well as by casting
values of other types to the JSON
type using
CAST(
(see
Converting between JSON and non-JSON values). The next
several paragraphs describe how MySQL handles JSON values
provided as input.
value
AS
JSON)
In MySQL, JSON values are written as strings. MySQL parses any
string used in a context that requires a JSON value, and
produces an error if it is not valid as JSON. These contexts
include inserting a value into a column that has the
JSON
data type and passing an argument to a
function that expects a JSON value, as the following examples
demonstrate:
Attempting to insert a value into a JSON
column succeeds if the value is a valid JSON value, but
fails if it is not:
mysql>CREATE TABLE t1 (jdoc JSON);
Query OK, 0 rows affected (0.20 sec) mysql>INSERT INTO t1 VALUES('{"key1": "value1", "key2": "value2"}');
Query OK, 1 row affected (0.01 sec) mysql>INSERT INTO t1 VALUES('[1, 2,');
ERROR 3140 (22032) at line 2: Invalid JSON text: "Invalid value." at position 6 in value (or column) '[1, 2,'.
Positions for “at position
N
” in such error messages
are 0-based, but should be considered rough indications of
where the problem in a value actually occurs.
The JSON_TYPE()
function
expects a JSON argument and attempts to parse it into a JSON
value. It returns the value's JSON type if it is valid and
produces an error otherwise:
mysql>SELECT JSON_TYPE('["a", "b", 1]');
+----------------------------+ | JSON_TYPE('["a", "b", 1]') | +----------------------------+ | ARRAY | +----------------------------+ mysql>SELECT JSON_TYPE('"hello"');
+----------------------+ | JSON_TYPE('"hello"') | +----------------------+ | STRING | +----------------------+ mysql>SELECT JSON_TYPE('hello');
ERROR 3146 (22032): Invalid data type for JSON data in argument 1 to function json_type; a JSON string or JSON type is required.
MySQL handles strings used in JSON context using the
utf8mb4
character set and
utf8mb4_bin
collation. Strings in other
character sets are converted to utf8mb4
as
necessary. (For strings in the ascii
or
utf8
character sets, no conversion is needed
because ascii
and utf8
are
subsets of utf8mb4
.)
As an alternative to writing JSON values using literal strings,
functions exist for composing JSON values from component
elements. JSON_ARRAY()
takes a
(possibly empty) list of values and returns a JSON array
containing those values:
mysql> SELECT JSON_ARRAY('a', 1, NOW());
+----------------------------------------+
| JSON_ARRAY('a', 1, NOW()) |
+----------------------------------------+
| ["a", 1, "2015-07-27 09:43:47.000000"] |
+----------------------------------------+
JSON_OBJECT()
takes a (possibly
empty) list of key/value pairs and returns a JSON object
containing those pairs:
mysql> SELECT JSON_OBJECT('key1', 1, 'key2', 'abc');
+---------------------------------------+
| JSON_OBJECT('key1', 1, 'key2', 'abc') |
+---------------------------------------+
| {"key1": 1, "key2": "abc"} |
+---------------------------------------+
JSON_MERGE()
takes two or more
JSON documents and returns the combined result:
mysql> SELECT JSON_MERGE('["a", 1]', '{"key": "value"}');
+--------------------------------------------+
| JSON_MERGE('["a", 1]', '{"key": "value"}') |
+--------------------------------------------+
| ["a", 1, {"key": "value"}] |
+--------------------------------------------+
For information about the merging rules, see Normalization, Merging, and Autowrapping of JSON Values.
JSON values can be assigned to user-defined variables:
mysql>SET @j = JSON_OBJECT('key', 'value');
mysql>SELECT @j;
+------------------+ | @j | +------------------+ | {"key": "value"} | +------------------+
However, user-defined variables cannot be of
JSON
data type, so although
@j
in the preceding example looks like a JSON
value and has the same character set and collation as a JSON
value, it does not have the
JSON
data type. Instead, the result from
JSON_OBJECT()
is converted to a
string when assigned to the variable.
Strings produced by converting JSON values have a character set
of utf8mb4
and a collation of
utf8mb4_bin
:
mysql> SELECT CHARSET(@j), COLLATION(@j);
+-------------+---------------+
| CHARSET(@j) | COLLATION(@j) |
+-------------+---------------+
| utf8mb4 | utf8mb4_bin |
+-------------+---------------+
Because utf8mb4_bin
is a binary collation,
comparison of JSON values is case sensitive.
mysql> SELECT JSON_ARRAY('x') = JSON_ARRAY('X');
+-----------------------------------+
| JSON_ARRAY('x') = JSON_ARRAY('X') |
+-----------------------------------+
| 0 |
+-----------------------------------+
Case sensitivity also applies to the JSON
null
, true
, and
false
literals, which always must be written
in lowercase:
mysql>SELECT JSON_VALID('null'), JSON_VALID('Null'), JSON_VALID('NULL');
+--------------------+--------------------+--------------------+ | JSON_VALID('null') | JSON_VALID('Null') | JSON_VALID('NULL') | +--------------------+--------------------+--------------------+ | 1 | 0 | 0 | +--------------------+--------------------+--------------------+ mysql>SELECT CAST('null' AS JSON);
+----------------------+ | CAST('null' AS JSON) | +----------------------+ | null | +----------------------+ 1 row in set (0.00 sec) mysql>SELECT CAST('NULL' AS JSON);
ERROR 3141 (22032): Invalid JSON text in argument 1 to function cast_as_json: "Invalid value." at position 0 in 'NULL'.
Case sensitivity of the JSON literals differs from that of the
SQL NULL
, TRUE
, and
FALSE
literals, which can be written in any
lettercase:
mysql> SELECT ISNULL(null), ISNULL(Null), ISNULL(NULL);
+--------------+--------------+--------------+
| ISNULL(null) | ISNULL(Null) | ISNULL(NULL) |
+--------------+--------------+--------------+
| 1 | 1 | 1 |
+--------------+--------------+--------------+
Sometimes it may be necessary or desirable to insert quote
characters ("
or '
) into a
JSON document. Assume for this example that you want to insert
some JSON objects containing strings representing sentences that
state some facts about MySQL, each paired with an appropriate
keyword, into a table created using the SQL statement shown
here:
mysql> CREATE TABLE facts (sentence JSON);
Among these keyword-sentence pairs is this one:
mascot: The MySQL mascot is a dolphin named "Sakila".
One way to insert this as a JSON object into the
facts
table is to use the MySQL
JSON_OBJECT()
function. In this
case, you must escape each quote character using a backslash, as
shown here:
mysql>INSERT INTO facts VALUES
>(JSON_OBJECT("mascot", "Our mascot is a dolphin named \"Sakila\"."));
This does not work in the same way if you insert the value as a JSON object literal, in which case, you must use the double backslash escape sequence, like this:
mysql>INSERT INTO facts VALUES
>('{"mascot": "Our mascot is a dolphin named \\"Sakila\\"."}');
Using the double backslash keeps MySQL from performing escape
sequence processing, and instead causes it to pass the string
literal to the storage engine for processing. After inserting
the JSON object in either of the ways just shown, you can see
that the backslashes are present in the JSON column value by
doing a simple SELECT
, like this:
mysql> SELECT sentence FROM facts;
+---------------------------------------------------------+
| sentence |
+---------------------------------------------------------+
| {"mascot": "Our mascot is a dolphin named \"Sakila\"."} |
+---------------------------------------------------------+
To look up this particular sentence employing
mascot
as the key, you can use the
column-path operator
->
,
as shown here:
mysql> SELECT col->"$.mascot" FROM qtest; +---------------------------------------------+ | col->"$.mascot" | +---------------------------------------------+ | "Our mascot is a dolphin named \"Sakila\"." | +---------------------------------------------+ 1 row in set (0.00 sec)
This leaves the backslashes intact, along with the surrounding
quote marks. To display the desired value using
mascot
as the key, but without including the
surrounding quote marks or any escapes, use the inline path
operator
->>
,
like this:
mysql> SELECT sentence->>"$.mascot" FROM facts;
+-----------------------------------------+
| sentence->>"$.mascot" |
+-----------------------------------------+
| Our mascot is a dolphin named "Sakila". |
+-----------------------------------------+
The previous example does not work as shown if the
NO_BACKSLASH_ESCAPES
server
SQL mode is enabled. If this mode is set, a single backslash
instead of double backslashes can be used to insert the JSON
object literal, and the backslashes are preserved. If you use
the JSON_OBJECT()
function when performing
the insert and this mode is set, you must alternate single and
double quotes, like this:
mysql>INSERT INTO facts VALUES
>(JSON_OBJECT('mascot', 'Our mascot is a dolphin named "Sakila".'));
See the description of the
JSON_UNQUOTE()
function for
more information about the effects of this mode on escaped
characters in JSON values.
When a string is parsed and found to be a valid JSON document,
it is also normalized: Members with keys that duplicate a key
found earlier in the document are discarded (even if the values
differ). The object value produced by the following
JSON_OBJECT()
call does not
include the second key1
element because that
key name occurs earlier in the value:
mysql> SELECT JSON_OBJECT('key1', 1, 'key2', 'abc', 'key1', 'def');
+------------------------------------------------------+
| JSON_OBJECT('key1', 1, 'key2', 'abc', 'key1', 'def') |
+------------------------------------------------------+
| {"key1": 1, "key2": "abc"} |
+------------------------------------------------------+
The normalization performed by MySQL also sorts the keys of a JSON object (for the purpose of making lookups more efficient). The result of this ordering is subject to change and not guaranteed to be consistent across releases. In addition, extra whitespace between keys, values, or elements in the original document is discarded.
MySQL functions that produce JSON values (see Section 13.16.2, “Functions That Create JSON Values”) always return normalized values.
In contexts that combine multiple arrays, the arrays are merged
into a single array by concatenating arrays named later to the
end of the first array. In the following example,
JSON_MERGE()
merges its arguments
into a single array:
mysql> SELECT JSON_MERGE('[1, 2]', '["a", "b"]', '[true, false]');
+-----------------------------------------------------+
| JSON_MERGE('[1, 2]', '["a", "b"]', '[true, false]') |
+-----------------------------------------------------+
| [1, 2, "a", "b", true, false] |
+-----------------------------------------------------+
Multiple objects when merged produce a single object. If multiple objects have the same key, the value for that key in the resulting merged object is an array containing the key values:
mysql> SELECT JSON_MERGE('{"a": 1, "b": 2}', '{"c": 3, "a": 4}');
+----------------------------------------------------+
| JSON_MERGE('{"a": 1, "b": 2}', '{"c": 3, "a": 4}') |
+----------------------------------------------------+
| {"a": [1, 4], "b": 2, "c": 3} |
+----------------------------------------------------+
Nonarray values used in a context that requires an array value
are autowrapped: The value is surrounded by [
and ]
characters to convert it to an array.
In the following statement, each argument is autowrapped as an
array ([1]
, [2]
). These
are then merged to produce a single result array:
mysql> SELECT JSON_MERGE('1', '2');
+----------------------+
| JSON_MERGE('1', '2') |
+----------------------+
| [1, 2] |
+----------------------+
Array and object values are merged by autowrapping the object as an array and merging the two arrays:
mysql> SELECT JSON_MERGE('[10, 20]', '{"a": "x", "b": "y"}');
+------------------------------------------------+
| JSON_MERGE('[10, 20]', '{"a": "x", "b": "y"}') |
+------------------------------------------------+
| [10, 20, {"a": "x", "b": "y"}] |
+------------------------------------------------+
A JSON path expression selects a value within a JSON document.
Path expressions are useful with functions that extract parts of
or modify a JSON document, to specify where within that document
to operate. For example, the following query extracts from a
JSON document the value of the member with the
name
key:
mysql> SELECT JSON_EXTRACT('{"id": 14, "name": "Aztalan"}', '$.name');
+---------------------------------------------------------+
| JSON_EXTRACT('{"id": 14, "name": "Aztalan"}', '$.name') |
+---------------------------------------------------------+
| "Aztalan" |
+---------------------------------------------------------+
Path syntax uses a leading $
character to
represent the JSON document under consideration, optionally
followed by selectors that indicate successively more specific
parts of the document:
A period followed by a key name names the member in an object with the given key. The key name must be specified within double quotation marks if the name without quotes is not legal within path expressions (for example, if it contains a space).
[
appended
to a path that selects an array names the value at position
N
]N
within the array. Array
positions are integers beginning with zero.
Paths can contain *
or
**
wildcards:
.[*]
evaluates to the values of all
members in a JSON object.
[*]
evaluates to the values of all
elements in a JSON array.
evaluates to all paths that begin with the named prefix
and end with the named suffix.
prefix
**suffix
A path that does not exist in the document (evaluates to
nonexistent data) evaluates to NULL
.
Let $
refer to this JSON array with three
elements:
[3, {"a": [5, 6], "b": 10}, [99, 100]]
Then:
$[0]
evaluates to 3
.
$[1]
evaluates to {"a": [5, 6],
"b": 10}
.
$[2]
evaluates to [99,
100]
.
$[3]
evaluates to NULL
(it refers to the fourth array element, which does not
exist).
Because $[1]
and $[2]
evaluate to nonscalar values, they can be used as the basis for
more-specific path expressions that select nested values.
Examples:
$[1].a
evaluates to [5,
6]
.
$[1].a[1]
evaluates to
6
.
$[1].b
evaluates to
10
.
$[2][0]
evaluates to
99
.
As mentioned previously, path components that name keys must be
quoted if the unquoted key name is not legal in path
expressions. Let $
refer to this value:
{"a fish": "shark", "a bird": "sparrow"}
The keys both contain a space and must be quoted:
$."a fish"
evaluates to
shark
.
$."a bird"
evaluates to
sparrow
.
Paths that use wildcards evaluate to an array that can contain multiple values:
mysql>SELECT JSON_EXTRACT('{"a": 1, "b": 2, "c": [3, 4, 5]}', '$.*');
+---------------------------------------------------------+ | JSON_EXTRACT('{"a": 1, "b": 2, "c": [3, 4, 5]}', '$.*') | +---------------------------------------------------------+ | [1, 2, [3, 4, 5]] | +---------------------------------------------------------+ mysql>SELECT JSON_EXTRACT('{"a": 1, "b": 2, "c": [3, 4, 5]}', '$.c[*]');
+------------------------------------------------------------+ | JSON_EXTRACT('{"a": 1, "b": 2, "c": [3, 4, 5]}', '$.c[*]') | +------------------------------------------------------------+ | [3, 4, 5] | +------------------------------------------------------------+
In the following example, the path $**.b
evaluates to multiple paths ($.a.b
and
$.c.b
) and produces an array of the matching
path values:
mysql> SELECT JSON_EXTRACT('{"a": {"b": 1}, "c": {"b": 2}}', '$**.b');
+---------------------------------------------------------+
| JSON_EXTRACT('{"a": {"b": 1}, "c": {"b": 2}}', '$**.b') |
+---------------------------------------------------------+
| [1, 2] |
+---------------------------------------------------------+
In MySQL 5.7.9 and later, you can use
with a JSON column identifier and JSON path expression as a
synonym for
column
->path
JSON_EXTRACT(
. See
Section 13.16.3, “Functions That Search JSON Values”, for more information.
See also Indexing a Generated Column to Provide a JSON Column Index.
column
,
path
)
Some functions take an existing JSON document, modify it in some
way, and return the resulting modified document. Path
expressions indicate where in the document to make changes. For
example, the JSON_SET()
,
JSON_INSERT()
, and
JSON_REPLACE()
functions each
take a JSON document, plus one or more path/value pairs that
describe where to modify the document and the values to use. The
functions differ in how they handle existing and nonexisting
values within the document.
Consider this document:
mysql> SET @j = '["a", {"b": [true, false]}, [10, 20]]';
JSON_SET()
replaces values for
paths that exist and adds values for paths that do not exist:.
mysql> SELECT JSON_SET(@j, '$[1].b[0]', 1, '$[2][2]', 2);
+--------------------------------------------+
| JSON_SET(@j, '$[1].b[0]', 1, '$[2][2]', 2) |
+--------------------------------------------+
| ["a", {"b": [1, false]}, [10, 20, 2]] |
+--------------------------------------------+
In this case, the path $[1].b[0]
selects an
existing value (true
), which is replaced with
the value following the path argument (1
).
The path $[2][2]
does not exist, so the
corresponding value (2
) is added to the value
selected by $[2]
.
JSON_INSERT()
adds new values but
does not replace existing values:
mysql> SELECT JSON_INSERT(@j, '$[1].b[0]', 1, '$[2][2]', 2);
+-----------------------------------------------+
| JSON_INSERT(@j, '$[1].b[0]', 1, '$[2][2]', 2) |
+-----------------------------------------------+
| ["a", {"b": [true, false]}, [10, 20, 2]] |
+-----------------------------------------------+
JSON_REPLACE()
replaces existing
values and ignores new values:
mysql> SELECT JSON_REPLACE(@j, '$[1].b[0]', 1, '$[2][2]', 2);
+------------------------------------------------+
| JSON_REPLACE(@j, '$[1].b[0]', 1, '$[2][2]', 2) |
+------------------------------------------------+
| ["a", {"b": [1, false]}, [10, 20]] |
+------------------------------------------------+
The path/value pairs are evaluated left to right. The document produced by evaluating one pair becomes the new value against which the next pair is evaluated.
JSON_REMOVE()
takes a JSON document and one
or more paths that specify values to be removed from the
document. The return value is the original document minus the
values selected by paths that exist within the document:
mysql> SELECT JSON_REMOVE(@j, '$[2]', '$[1].b[1]', '$[1].b[1]');
+---------------------------------------------------+
| JSON_REMOVE(@j, '$[2]', '$[1].b[1]', '$[1].b[1]') |
+---------------------------------------------------+
| ["a", {"b": [true]}] |
+---------------------------------------------------+
The paths have these effects:
$[2]
matches [10, 20]
and removes it.
The first instance of $[1].b[1]
matches
false
in the b
element
and removes it.
The second instance of $[1].b[1]
matches
nothing: That element has already been removed, the path no
longer exists, and has no effect.
JSON values can be compared using the
=
,
<
,
<=
,
>
,
>=
,
<>
,
!=
, and
<=>
operators.
The following comparison operators and functions are not yet supported with JSON values:
A workaround for the comparison operators and functions just listed is to cast JSON values to a native MySQL numeric or string data type so they have a consistent non-JSON scalar type.
Comparison of JSON values takes place at two levels. The first level of comparison is based on the JSON types of the compared values. If the types differ, the comparison result is determined solely by which type has higher precedence. If the two values have the same JSON type, a second level of comparison occurs using type-specific rules.
The following list shows the precedences of JSON types, from
highest precedence to the lowest. (The type names are those
returned by the JSON_TYPE()
function.) Types shown together on a line have the same
precedence. Any value having a JSON type listed earlier in the
list compares greater than any value having a JSON type listed
later in the list.
BLOB BIT OPAQUE DATETIME TIME DATE BOOLEAN ARRAY OBJECT STRING INTEGER, DOUBLE NULL
For JSON values of the same precedence, the comparison rules are type specific:
BLOB
The first N
bytes of the two
values are compared, where N
is
the number of bytes in the shorter value. If the first
N
bytes of the two values are
identical, the shorter value is ordered before the longer
value.
BIT
Same rules as for BLOB
.
OPAQUE
Same rules as for BLOB
.
OPAQUE
values are values that are not
classified as one of the other types.
DATETIME
A value that represents an earlier point in time is ordered
before a value that represents a later point in time. If two
values originally come from the MySQL
DATETIME
and TIMESTAMP
types, respectively, they are equal if they represent the
same point in time.
TIME
The smaller of two time values is ordered before the larger one.
DATE
The earlier date is ordered before the more recent date.
ARRAY
Two JSON arrays are equal if they have the same length and values in corresponding positions in the arrays are equal.
If the arrays are not equal, their order is determined by the elements in the first position where there is a difference. The array with the smaller value in that position is ordered first. If all values of the shorter array are equal to the corresponding values in the longer array, the shorter array is ordered first.
Example:
[] < ["a"] < ["ab"] < ["ab", "cd", "ef"] < ["ab", "ef"]
BOOLEAN
The JSON false literal is less than the JSON true literal.
OBJECT
Two JSON objects are equal if they have the same set of keys, and each key has the same value in both objects.
Example:
{"a": 1, "b": 2} = {"b": 2, "a": 1}
The order of two objects that are not equal is unspecified but deterministic.
STRING
Strings are ordered lexically on the first
N
bytes of the
utf8mb4
representation of the two strings
being compared, where N
is the
length of the shorter string. If the first
N
bytes of the two strings are
identical, the shorter string is considered smaller than the
longer string.
Example:
"a" < "ab" < "b" < "bc"
This ordering is equivalent to the ordering of SQL strings
with collation utf8mb4_bin
. Because
utf8mb4_bin
is a binary collation,
comparison of JSON values is case sensitive:
"A" < "a"
INTEGER
, DOUBLE
JSON values can contain exact-value numbers and approximate-value numbers. For a general discussion of these types of numbers, see Section 10.1.2, “Number Literals”.
The rules for comparing native MySQL numeric types are discussed in Section 13.2, “Type Conversion in Expression Evaluation”, but the rules for comparing numbers within JSON values differ somewhat:
In a comparison between two columns that use the native
MySQL INT
and
DOUBLE
numeric types,
respectively, it is known that all comparisons involve
an integer and a double, so the integer is converted to
double for all rows. That is, exact-value numbers are
converted to approximate-value numbers.
On the other hand, if the query compares two JSON columns containing numbers, it cannot be known in advance whether numbers will be integer or double. To provide the most consistent behavior across all rows, MySQL converts approximate-value numbers to exact-value numbers. The resulting ordering is consistent and does not lose precision for the exact-value numbers. For example, given the scalars 9223372036854775805, 9223372036854775806, 9223372036854775807 and 9.223372036854776e18, the order is such as this:
9223372036854775805 < 9223372036854775806 < 9223372036854775807 < 9.223372036854776e18 = 9223372036854776000 < 9223372036854776001
Were JSON comparisons to use the non-JSON numeric comparison rules, inconsistent ordering could occur. The usual MySQL comparison rules for numbers yield these orderings:
Integer comparison:
9223372036854775805 < 9223372036854775806 < 9223372036854775807
(not defined for 9.223372036854776e18)
Double comparison:
9223372036854775805 = 9223372036854775806 = 9223372036854775807 = 9.223372036854776e18
For comparison of any JSON value to SQL NULL
,
the result is UNKNOWN
.
For comparison of JSON and non-JSON values, the non-JSON value is converted to JSON according to the rules in the following table, then the values compared as described previously.
The following table provides a summary of the rules that MySQL follows when casting between JSON values and values of other types:
Table 12.1 JSON Conversion Rules
other type | CAST(other type AS JSON) | CAST(JSON AS other type) |
JSON | No change | No change |
utf8 character type (utf8mb4 ,
utf8 , ascii ) |
The string is parsed into a JSON value. | The JSON value is serialized into a utf8mb4 string. |
Other character types | Other character encodings are implicitly converted to
utf8mb4 and treated as described for
utf8 character type. |
The JSON value is serialized into a utf8mb4 string,
then cast to the other character encoding. The result may
not be meaningful. |
NULL |
Results in a NULL value of type JSON. |
Not applicable. |
Geometry types | The geometry value is converted into a JSON document by calling
ST_AsGeoJSON() . |
Illegal operation. Workaround: Pass the result of
CAST( to
ST_GeomFromGeoJSON() . |
All other types | Results in a JSON document consisting of a single scalar value. | Succeeds if the JSON document consists of a single scalar value of the
target type and that scalar value can be cast to the
target type. Otherwise, returns NULL
and produces a warning. |
ORDER BY
and GROUP BY
for
JSON values works according to these principles:
Ordering of scalar JSON values uses the same rules as in the preceding discussion.
For ascending sorts, SQL NULL
orders
before all JSON values, including the JSON null literal; for
descending sorts, SQL NULL
orders after
all JSON values, including the JSON null literal.
Sort keys for JSON values are bound by the value of the
max_sort_length
system
variable, so keys that differ only after the first
max_sort_length
bytes
compare as equal.
Sorting of nonscalar values is not currently supported and a warning occurs.
For sorting, it can be beneficial to cast a JSON scalar to some
other native MySQL type. For example, if a column named
jdoc
contains JSON objects having a member
consisting of an id
key and a nonnegative
value, use this expression to sort by id
values:
ORDER BY CAST(JSON_EXTRACT(jdoc, '$.id') AS UNSIGNED)
If there happens to be a generated column defined to use the
same expression as in the ORDER BY
, the MySQL
optimizer recognizes that and considers using the index for the
query execution plan. See
Section 9.3.10, “Optimizer Use of Generated Column Indexes”.
For aggregation of JSON values, SQL NULL
values are ignored as for other data types.
Non-NULL
values are converted to a numeric
type and aggregated, except for
MIN()
,
MAX()
, and
GROUP_CONCAT()
. The conversion to
number should produce a meaningful result for JSON values that
are numeric scalars, although (depending on the values)
truncation and loss of precision may occur. Conversion to number
of other JSON values may not produce a meaningful result.
The DEFAULT
clause in a data type specification indicates a default value for
a column. With one exception, the default value must be a
constant; it cannot be a function or an expression. This means,
for example, that you cannot set the default for a date column to
be the value of a function such as
value
NOW()
or
CURRENT_DATE
. The exception is that
you can specify CURRENT_TIMESTAMP
as the default for TIMESTAMP
and
DATETIME
columns. See
Section 12.3.5, “Automatic Initialization and Updating for TIMESTAMP and DATETIME”.
BLOB
,
TEXT
, GEOMETRY
,
and JSON
columns cannot be assigned
a default value.
If a column definition includes no explicit
DEFAULT
value, MySQL determines the default
value as follows:
If the column can take NULL
as a value, the
column is defined with an explicit DEFAULT NULL
clause.
If the column cannot take NULL
as the value,
MySQL defines the column with no explicit
DEFAULT
clause. Exception: If the column is
defined as part of a PRIMARY KEY
but not
explicitly as NOT NULL
, MySQL creates it as a
NOT NULL
column (because PRIMARY
KEY
columns must be NOT NULL
). Before
MySQL 5.7.3, the column is also assigned a
DEFAULT
clause using the implicit default
value. To prevent this, include an explicit NOT
NULL
in the definition of any PRIMARY
KEY
column.
For data entry into a NOT NULL
column that has
no explicit DEFAULT
clause, if an
INSERT
or
REPLACE
statement includes no value
for the column, or an UPDATE
statement sets the column to NULL
, MySQL
handles the column according to the SQL mode in effect at the
time:
If strict SQL mode is enabled, an error occurs for transactional tables and the statement is rolled back. For nontransactional tables, an error occurs, but if this happens for the second or subsequent row of a multiple-row statement, the preceding rows will have been inserted.
If strict mode is not enabled, MySQL sets the column to the implicit default value for the column data type.
Suppose that a table t
is defined as follows:
CREATE TABLE t (i INT NOT NULL);
In this case, i
has no explicit default, so in
strict mode each of the following statements produce an error and
no row is inserted. When not using strict mode, only the third
statement produces an error; the implicit default is inserted for
the first two statements, but the third fails because
DEFAULT(i)
cannot produce a value:
INSERT INTO t VALUES(); INSERT INTO t VALUES(DEFAULT); INSERT INTO t VALUES(DEFAULT(i));
See Section 6.1.8, “Server SQL Modes”.
For a given table, you can use the SHOW
CREATE TABLE
statement to see which columns have an
explicit DEFAULT
clause.
Implicit defaults are defined as follows:
For numeric types, the default is 0
, with
the exception that for integer or floating-point types
declared with the AUTO_INCREMENT
attribute,
the default is the next value in the sequence.
For date and time types other than
TIMESTAMP
, the default is the
appropriate “zero” value for the type. This is
also true for TIMESTAMP
if the
explicit_defaults_for_timestamp
system variable is enabled (see
Section 6.1.5, “Server System Variables”). Otherwise, for the
first TIMESTAMP
column in a
table, the default value is the current date and time. See
Section 12.3, “Date and Time Types”.
For string types other than
ENUM
, the default value is the
empty string. For ENUM
, the
default is the first enumeration value.
SERIAL DEFAULT VALUE
in the definition of an
integer column is an alias for NOT NULL AUTO_INCREMENT
UNIQUE
.
The storage requirements for table data on disk depend on several factors. Different storage engines represent data types and store raw data differently. Table data might be compressed, either for a column or an entire row, complicating the calculation of storage requirements for a table or column.
Despite differences in storage layout on disk, the internal MySQL APIs that communicate and exchange information about table rows use a consistent data structure that applies across all storage engines.
This section includes guidelines and information for the storage requirements for each data type supported by MySQL, including the internal format and size for storage engines that use a fixed-size representation for data types. Information is listed by category or storage engine.
The internal representation of a table has a maximum row size of
65,535 bytes, even if the storage engine is capable of supporting
larger rows. This figure excludes
BLOB
or
TEXT
columns, which contribute only
9 to 12 bytes toward this size. For
BLOB
and
TEXT
data, the information is
stored internally in a different area of memory than the row
buffer. Different storage engines handle the allocation and
storage of this data in different ways, according to the method
they use for handling the corresponding types. For more
information, see Chapter 16, Alternative Storage Engines, and
Section C.10.4, “Limits on Table Column Count and Row Size”.
See Section 15.8.3, “Physical Row Structure of InnoDB Tables” for information about
storage requirements for InnoDB
tables.
NDB
tables use
4-byte alignment; all
NDB
data storage is done in
multiples of 4 bytes. Thus, a column value that would typically
take 15 bytes requires 16 bytes in an
NDB
table. For example, in
NDB
tables, the
TINYINT
,
SMALLINT
,
MEDIUMINT
, and
INTEGER
(INT
) column types each require 4
bytes storage per record due to the alignment factor.
Each BIT(
column
takes M
)M
bits of storage space.
Although an individual BIT
column
is not 4-byte aligned,
NDB
reserves 4 bytes (32 bits) per
row for the first 1-32 bits needed for BIT
columns, then another 4 bytes for bits 33-64, and so on.
While a NULL
itself does not require any
storage space, NDB
reserves 4 bytes
per row if the table definition contains any columns defined as
NULL
, up to 32 NULL
columns. (If a MySQL Cluster table is defined with more than 32
NULL
columns up to 64 NULL
columns, then 8 bytes per row are reserved.)
Every table using the NDB
storage
engine requires a primary key; if you do not define a primary key,
a “hidden” primary key is created by
NDB
. This hidden primary key consumes
31-35 bytes per table record.
You can use the ndb_size.pl Perl script to
estimate NDB
storage requirements. It
connects to a current MySQL (not MySQL Cluster) database and
creates a report on how much space that database would require if
it used the NDB
storage engine. See
Section 21.4.25, “ndb_size.pl — NDBCLUSTER Size Requirement Estimator” for more
information.
Data Type | Storage Required |
---|---|
TINYINT | 1 byte |
SMALLINT | 2 bytes |
MEDIUMINT | 3 bytes |
INT ,
INTEGER | 4 bytes |
BIGINT | 8 bytes |
FLOAT( | 4 bytes if 0 <= p <= 24, 8 bytes if 25
<= p <= 53 |
FLOAT | 4 bytes |
DOUBLE [PRECISION] ,
REAL | 8 bytes |
DECIMAL( ,
NUMERIC( | Varies; see following discussion |
BIT( | approximately (M +7)/8 bytes |
Values for DECIMAL
(and
NUMERIC
) columns are represented
using a binary format that packs nine decimal (base 10) digits
into four bytes. Storage for the integer and fractional parts of
each value are determined separately. Each multiple of nine digits
requires four bytes, and the “leftover” digits
require some fraction of four bytes. The storage required for
excess digits is given by the following table.
Leftover Digits | Number of Bytes |
---|---|
0 | 0 |
1 | 1 |
2 | 1 |
3 | 2 |
4 | 2 |
5 | 3 |
6 | 3 |
7 | 4 |
8 | 4 |
For TIME
,
DATETIME
, and
TIMESTAMP
columns, the storage
required for tables created before MySQL 5.6.4 differs from tables
created from 5.6.4 on. This is due to a change in 5.6.4 that
permits these types to have a fractional part, which requires from
0 to 3 bytes.
Data Type | Storage Required Before MySQL 5.6.4 | Storage Required as of MySQL 5.6.4 |
---|---|---|
YEAR | 1 byte | 1 byte |
DATE | 3 bytes | 3 bytes |
TIME | 3 bytes | 3 bytes + fractional seconds storage |
DATETIME | 8 bytes | 5 bytes + fractional seconds storage |
TIMESTAMP | 4 bytes | 4 bytes + fractional seconds storage |
As of MySQL 5.6.4, storage for YEAR
and DATE
remains unchanged.
However, TIME
,
DATETIME
, and
TIMESTAMP
are represented
differently. DATETIME
is packed
more efficiently, requiring 5 rather than 8 bytes for the
nonfractional part, and all three parts have a fractional part
that requires from 0 to 3 bytes, depending on the fractional
seconds precision of stored values.
Fractional Seconds Precision | Storage Required |
---|---|
0 | 0 bytes |
1, 2 | 1 byte |
3, 4 | 2 bytes |
5, 6 | 3 bytes |
For example, TIME(0)
,
TIME(2)
,
TIME(4)
, and
TIME(6)
use 3, 4, 5, and 6 bytes,
respectively. TIME
and
TIME(0)
are equivalent and require
the same storage.
For details about internal representation of temporal values, see MySQL Internals: Important Algorithms and Structures.
In the following table, M
represents
the declared column length in characters for nonbinary string
types and bytes for binary string types.
L
represents the actual length in bytes
of a given string value.
Data Type | Storage Required |
---|---|
CHAR( | M × w bytes,
0 <= 255, where w is
the number of bytes required for the maximum-length
character in the character set. See
Section 15.8.3, “Physical Row Structure of InnoDB Tables” for information
about CHAR data type storage
requirements for InnoDB tables. |
BINARY( | M bytes, 0 <=
255 |
VARCHAR( ,
VARBINARY( | L + 1 bytes if column values require 0
− 255 bytes, L + 2 bytes
if values may require more than 255 bytes |
TINYBLOB ,
TINYTEXT | L + 1 bytes, where
L <
28 |
BLOB , TEXT | L + 2 bytes, where
L <
216 |
MEDIUMBLOB ,
MEDIUMTEXT | L + 3 bytes, where
L <
224 |
LONGBLOB ,
LONGTEXT | L + 4 bytes, where
L <
232 |
ENUM(' | 1 or 2 bytes, depending on the number of enumeration values (65,535 values maximum) |
SET(' | 1, 2, 3, 4, or 8 bytes, depending on the number of set members (64 members maximum) |
Variable-length string types are stored using a length prefix plus
data. The length prefix requires from one to four bytes depending
on the data type, and the value of the prefix is
L
(the byte length of the string). For
example, storage for a MEDIUMTEXT
value requires L
bytes to store the
value plus three bytes to store the length of the value.
To calculate the number of bytes used to store a particular
CHAR
,
VARCHAR
, or
TEXT
column value, you must take
into account the character set used for that column and whether
the value contains multibyte characters. In particular, when using
a utf8
Unicode character set, you must keep in
mind that not all characters use the same number of bytes.
utf8mb3
and utf8mb4
character sets can require up to three and four bytes per
character, respectively. For a breakdown of the storage used for
different categories of utf8mb3
or
utf8mb4
characters, see
Section 11.1.9, “Unicode Support”.
VARCHAR
,
VARBINARY
, and the
BLOB
and
TEXT
types are variable-length
types. For each, the storage requirements depend on these factors:
The actual length of the column value
The column's maximum possible length
The character set used for the column, because some character sets contain multibyte characters
For example, a VARCHAR(255)
column can hold a
string with a maximum length of 255 characters. Assuming that the
column uses the latin1
character set (one byte
per character), the actual storage required is the length of the
string (L
), plus one byte to record the
length of the string. For the string 'abcd'
,
L
is 4 and the storage requirement is
five bytes. If the same column is instead declared to use the
ucs2
double-byte character set, the storage
requirement is 10 bytes: The length of 'abcd'
is eight bytes and the column requires two bytes to store lengths
because the maximum length is greater than 255 (up to 510 bytes).
The effective maximum number of bytes that
can be stored in a VARCHAR
or
VARBINARY
column is subject to the
maximum row size of 65,535 bytes, which is shared among all
columns. For a VARCHAR
column that
stores multibyte characters, the effective maximum number of
characters is less. For example,
utf8mb3
characters can require up to three
bytes per character, so a VARCHAR
column that uses the utf8mb3
character set can
be declared to be a maximum of 21,844 characters. See
Section C.10.4, “Limits on Table Column Count and Row Size”.
In general, the storage requirement for a
JSON
column is approximately the
same as for a LONGBLOB
or
LONGTEXT
column; that is, the space consumed by
a JSON document is roughly the same as it would be for the
document's string representation stored in a column of one of
these types. However, there is an overhead imposed by the binary
encoding, including metadata and dictionaries needed for lookup,
of the individual values stored in the JSON document. For example,
a string stored in a JSON document requires 4 to 10 bytes
additional storage, depending on the length of the string and the
size of the object or array in which it is stored.
In addition, MySQL imposes a limit on the size of any JSON
document stored in a JSON
column such that it
cannot be any larger than the value of
max_allowed_packet
.
InnoDB
encodes fixed-length fields greater than
or equal to 768 bytes in length as variable-length fields, which
can be stored off-page. For example, a
CHAR(255)
column can exceed 768 bytes if the
maximum byte length of the character set is greater than 3, as it
is with utf8mb4
.
The NDB
storage engine supports
variable-width columns. This means that a
VARCHAR
column in a MySQL Cluster
table requires the same amount of storage as would any other
storage engine, with the exception that such values are 4-byte
aligned. Thus, the string 'abcd'
stored in a
VARCHAR(50)
column using the
latin1
character set requires 8 bytes (rather
than 5 bytes for the same column value in a
MyISAM
table).
TEXT
and
BLOB
columns are implemented
differently in the NDB
storage
engine, wherein each row in a TEXT
column is made up of two separate parts. One of these is of fixed
size (256 bytes), and is actually stored in the original table.
The other consists of any data in excess of 256 bytes, which is
stored in a hidden table. The rows in this second table are always
2,000 bytes long. This means that the size of a
TEXT
column is 256 if
size
<= 256 (where
size
represents the size of the row);
otherwise, the size is 256 + size
+
(2000 − (size
− 256) %
2000).
The size of an ENUM
object is
determined by the number of different enumeration values. One byte
is used for enumerations with up to 255 possible values. Two bytes
are used for enumerations having between 256 and 65,535 possible
values. See Section 12.4.4, “The ENUM Type”.
The size of a SET
object is
determined by the number of different set members. If the set size
is N
, the object occupies
(
bytes,
rounded up to 1, 2, 3, 4, or 8 bytes. A
N
+7)/8SET
can have a maximum of 64
members. See Section 12.4.5, “The SET Type”.
For optimum storage, you should try to use the most precise type
in all cases. For example, if an integer column is used for values
in the range from 1
to
99999
, MEDIUMINT UNSIGNED
is
the best type. Of the types that represent all the required
values, this type uses the least amount of storage.
All basic calculations (+
,
-
, *
, and
/
) with DECIMAL
columns are done with precision of 65 decimal (base 10) digits.
See Section 12.1.1, “Numeric Type Overview”.
If accuracy is not too important or if speed is the highest
priority, the DOUBLE
type may be
good enough. For high precision, you can always convert to a
fixed-point type stored in a
BIGINT
. This enables you to do all
calculations with 64-bit integers and then convert results back to
floating-point values as necessary.
To facilitate the use of code written for SQL implementations from other vendors, MySQL maps data types as shown in the following table. These mappings make it easier to import table definitions from other database systems into MySQL.
Other Vendor Type | MySQL Type |
---|---|
BOOL | TINYINT |
BOOLEAN | TINYINT |
CHARACTER VARYING( | VARCHAR( |
FIXED | DECIMAL |
FLOAT4 | FLOAT |
FLOAT8 | DOUBLE |
INT1 | TINYINT |
INT2 | SMALLINT |
INT3 | MEDIUMINT |
INT4 | INT |
INT8 | BIGINT |
LONG VARBINARY | MEDIUMBLOB |
LONG VARCHAR | MEDIUMTEXT |
LONG | MEDIUMTEXT |
MIDDLEINT | MEDIUMINT |
NUMERIC | DECIMAL |
Data type mapping occurs at table creation time, after which the
original type specifications are discarded. If you create a table
with types used by other vendors and then issue a
DESCRIBE
statement, MySQL reports the table structure using the equivalent
MySQL types. For example:
tbl_name
mysql>CREATE TABLE t (a BOOL, b FLOAT8, c LONG VARCHAR, d NUMERIC);
Query OK, 0 rows affected (0.00 sec) mysql>DESCRIBE t;
+-------+---------------+------+-----+---------+-------+ | Field | Type | Null | Key | Default | Extra | +-------+---------------+------+-----+---------+-------+ | a | tinyint(1) | YES | | NULL | | | b | double | YES | | NULL | | | c | mediumtext | YES | | NULL | | | d | decimal(10,0) | YES | | NULL | | +-------+---------------+------+-----+---------+-------+ 4 rows in set (0.01 sec)