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PostgreSQL – Data Type



In this chapter, we will discuss about the data types used in PostgreSQL. While creating table, for each column, you specify a data type, i.e., what kind of data you want to store in the table fields.

This enables several benefits −

  • Consistency − Operations against columns of same data type give consistent results and are usually the fastest.

  • Validation − Proper use of data types implies format validation of data and rejection of data outside the scope of data type.

  • Compactness − As a column can store a single type of value, it is stored in a compact way.

  • Performance − Proper use of data types gives the most efficient storage of data. The values stored can be processed quickly, which enhances the performance.

PostgreSQL supports a wide set of Data Types. Besides, users can create their own custom data type using CREATE TYPE SQL command. There are different categories of data types in PostgreSQL. They are discussed below.

Numeric Types

Numeric types consist of two-byte, four-byte, and eight-byte integers, four-byte and eight-byte floating-point numbers, and selectable-precision decimals. The following table lists the available types.

Name Storage Size Description Range
smallint 2 bytes small-range integer -32768 to +32767
integer 4 bytes typical choice for integer -2147483648 to +2147483647
bigint 8 bytes large-range integer -9223372036854775808 to 9223372036854775807
decimal variable user-specified precision,exact up to 131072 digits before the decimal point; up to 16383 digits after the decimal point
numeric variable user-specified precision,exact up to 131072 digits before the decimal point; up to 16383 digits after the decimal point
real 4 bytes variable-precision,inexact 6 decimal digits precision
double precision 8 bytes variable-precision,inexact 15 decimal digits precision
smallserial 2 bytes small autoincrementing integer 1 to 32767
serial 4 bytes autoincrementing integer 1 to 2147483647
bigserial 8 bytes large autoincrementing integer 1 to 9223372036854775807

Monetary Types

The money type stores a currency amount with a fixed fractional precision. Values of the numeric, int, and bigint data types can be cast to money. Using Floating point numbers is not recommended to handle money due to the potential for rounding errors.

Name Storage Size Description Range
money 8 bytes currency amount -92233720368547758.08 to +92233720368547758.07

Character Types

The table given below lists the general-purpose character types available in PostgreSQL.

S. No. Name & Description
1

character varying(n), varchar(n)

variable-length with limit

2

character(n), char(n)

fixed-length, blank padded

3

text

variable unlimited length

Binary Data Types

The bytea data type allows storage of binary strings as in the table given below.

Name Storage Size Description
bytea 1 or 4 bytes plus the actual binary string variable-length binary string

Date/Time Types

PostgreSQL supports a full set of SQL date and time types, as shown in table below. Dates are counted according to the Gregorian calendar. Here, all the types have resolution of 1 microsecond / 14 digits except date type, whose resolution is day.

Name Storage Size Description Low Value High Value
timestamp [(p)] [without time zone ] 8 bytes both date and time (no time zone) 4713 BC 294276 AD
TIMESTAMPTZ 8 bytes both date and time, with time zone 4713 BC 294276 AD
date 4 bytes date (no time of day) 4713 BC 5874897 AD
time [ (p)] [ without time zone ] 8 bytes time of day (no date) 00:00:00 24:00:00
time [ (p)] with time zone 12 bytes times of day only, with time zone 00:00:00+1459 24:00:00-1459
interval [fields ] [(p) ] 12 bytes time interval -178000000 years 178000000 years

Boolean Type

PostgreSQL provides the standard SQL type Boolean. The Boolean data type can have the states true, false, and a third state, unknown, which is represented by the SQL null value.

Name Storage Size Description
boolean 1 byte state of true or false

Enumerated Type

Enumerated (enum) types are data types that comprise a static, ordered set of values. They are equivalent to the enum types supported in a number of programming languages.

Unlike other types, Enumerated Types need to be created using CREATE TYPE command. This type is used to store a static, ordered set of values. For example compass directions, i.e., NORTH, SOUTH, EAST, and WEST or days of the week as shown below −

CREATE TYPE week AS ENUM (''Mon'', ''Tue'', ''Wed'', ''Thu'', ''Fri'', ''Sat'', ''Sun'');

Enumerated, once created, can be used like any other types.

Geometric Type

Geometric data types represent two-dimensional spatial objects. The most fundamental type, the point, forms the basis for all of the other types.

Name Storage Size Representation Description
point 16 bytes Point on a plane (x,y)
line 32 bytes Infinite line (not fully implemented) ((x1,y1),(x2,y2))
lseg 32 bytes Finite line segment ((x1,y1),(x2,y2))
box 32 bytes Rectangular box ((x1,y1),(x2,y2))
path 16+16n bytes Closed path (similar to polygon) ((x1,y1),…)
path 16+16n bytes Open path [(x1,y1),…]
polygon 40+16n Polygon (similar to closed path) ((x1,y1),…)
circle 24 bytes Circle <(x,y),r> (center point and radius)

Network Address Type

PostgreSQL offers data types to store IPv4, IPv6, and MAC addresses. It is better to use these types instead of plain text types to store network addresses, because these types offer input error checking and specialized operators and functions.

Name Storage Size Description
cidr 7 or 19 bytes IPv4 and IPv6 networks
inet 7 or 19 bytes IPv4 and IPv6 hosts and networks
macaddr 6 bytes MAC addresses

Bit String Type

Bit String Types are used to store bit masks. They are either 0 or 1. There are two SQL bit types: bit(n) and bit varying(n), where n is a positive integer.

Text Search Type

This type supports full text search, which is the activity of searching through a collection of natural-language documents to locate those that best match a query. There are two Data Types for this −

S. No. Name & Description
1

tsvector

This is a sorted list of distinct words that have been normalized to merge different variants of the same word, called as “lexemes”.

2

tsquery

This stores lexemes that are to be searched for, and combines them honoring the Boolean operators & (AND), | (OR), and ! (NOT). Parentheses can be used to enforce grouping of the operators.

UUID Type

A UUID (Universally Unique Identifiers) is written as a sequence of lower-case hexadecimal digits, in several groups separated by hyphens, specifically a group of eight digits, followed by three groups of four digits, followed by a group of 12 digits, for a total of 32 digits representing the 128 bits.

An example of a UUID is − 550e8400-e29b-41d4-a716-446655440000

XML Type

The XML data type can be used to store XML data. For storing XML data, first you have to create XML values using the function xmlparse as follows −

XMLPARSE (DOCUMENT ''<?xml version="1.0"?>
<tutorial>
<title>PostgreSQL Tutorial </title>
   <topics>...</topics>
</tutorial>'')

XMLPARSE (CONTENT ''xyz<foo>bar</foo><bar>foo</bar>'')

JSON Type

The json data type can be used to store JSON (JavaScript Object Notation) data. Such data can also be stored as text, but the json data type has the advantage of checking that each stored value is a valid JSON value. There are also related support functions available, which can be used directly to handle JSON data type as follows.

Example Example Result
array_to_json(”{{1,5},{99,100}}”::int[]) [[1,5],[99,100]]
row_to_json(row(1,”foo”)) {“f1″:1,”f2″:”foo”}

Array Type

PostgreSQL gives the opportunity to define a column of a table as a variable length multidimensional array. Arrays of any built-in or user-defined base type, enum type, or composite type can be created.

Declaration of Arrays

Array type can be declared as

CREATE TABLE monthly_savings (
   name text,
   saving_per_quarter integer[],
   scheme text[][]
);

or by using the keyword “ARRAY” as

CREATE TABLE monthly_savings (
   name text,
   saving_per_quarter integer ARRAY[4],
   scheme text[][]
);

Inserting values

Array values can be inserted as a literal constant, enclosing the element values within curly braces and separating them by commas. An example is shown below −

INSERT INTO monthly_savings 
VALUES (‘Manisha’, 
‘{20000, 14600, 23500, 13250}’, 
‘{{“FD”, “MF”}, {“FD”, “Property”}}’); 

Accessing Arrays

An example for accessing Arrays is shown below. The command given below will select the persons whose savings are more in second quarter than fourth quarter.

SELECT name FROM monhly_savings WHERE saving_per_quarter[2] > saving_per_quarter[4];

Modifying Arrays

An example of modifying arrays is as shown below.

UPDATE monthly_savings SET saving_per_quarter = ''{25000,25000,27000,27000}''
WHERE name = ''Manisha

or using the ARRAY expression syntax −

UPDATE monthly_savings SET saving_per_quarter = ARRAY[25000,25000,27000,27000]
WHERE name = ''Manisha

Searching Arrays

An example of searching arrays is as shown below.

SELECT * FROM monthly_savings WHERE saving_per_quarter[1] = 10000 OR
saving_per_quarter[2] = 10000 OR
saving_per_quarter[3] = 10000 OR
saving_per_quarter[4] = 10000;

If the size of array is known, the search method given above can be used. Else, the following example shows how to search when the size is not known.

SELECT * FROM monthly_savings WHERE 10000 = ANY (saving_per_quarter);

Composite Types

This type represents a list of field names and their data types, i.e., structure of a row or record of a table.

Declaration of Composite Types

The following example shows how to declare a composite type

CREATE TYPE inventory_item AS (
   name text,
   supplier_id integer,
   price numeric
);

This data type can be used in the create tables as below −

CREATE TABLE on_hand (
   item inventory_item,
   count integer
);

Composite Value Input

Composite values can be inserted as a literal constant, enclosing the field values within parentheses and separating them by commas. An example is shown below −

INSERT INTO on_hand VALUES (ROW(''fuzzy dice'', 42, 1.99), 1000);

This is valid for the inventory_item defined above. The ROW keyword is actually optional as long as you have more than one field in the expression.

Accessing Composite Types

To access a field of a composite column, use a dot followed by the field name, much like selecting a field from a table name. For example, to select some subfields from our on_hand example table, the query would be as shown below −

SELECT (item).name FROM on_hand WHERE (item).price > 9.99;

You can even use the table name as well (for instance in a multitable query), like this −

SELECT (on_hand.item).name FROM on_hand WHERE (on_hand.item).price > 9.99;

Range Types

Range types represent data types that uses a range of data. Range type can be discrete ranges (e.g., all integer values 1 to 10) or continuous ranges (e.g., any point in time between 10:00am and 11:00am).

The built-in range types available include the following ranges −

  • int4range − Range of integer

  • int8range − Range of bigint

  • numrange − Range of numeric

  • tsrange − Range of timestamp without time zone

  • tstzrange − Range of timestamp with time zone

  • daterange − Range of date

Custom range types can be created to make new types of ranges available, such as IP address ranges using the inet type as a base, or float ranges using the float data type as a base.

Range types support inclusive and exclusive range boundaries using the [ ] and ( ) characters, respectively. For example ”[4,9)” represents all the integers starting from and including 4 up to but not including 9.

Object Identifier Types

Object identifiers (OIDs) are used internally by PostgreSQL as primary keys for various system tables. If WITH OIDS is specified or default_with_oids configuration variable is enabled, only then, in such cases OIDs are added to user-created tables. The following table lists several alias types. The OID alias types have no operations of their own except for specialized input and output routines.

Name References Description Value Example
oid any numeric object identifier 564182
regproc pg_proc function name sum
regprocedure pg_proc function with argument types sum(int4)
regoper pg_operator operator name +
regoperator pg_operator operator with argument types *(integer,integer) or -(NONE,integer)
regclass pg_class relation name pg_type
regtype pg_type data type name integer
regconfig pg_ts_config text search configuration English
regdictionary pg_ts_dict text search dictionary simple

Pseudo Types

The PostgreSQL type system contains a number of special-purpose entries that are collectively called pseudo-types. A pseudo-type cannot be used as a column data type, but it can be used to declare a function”s argument or result type.

The table given below lists the existing pseudo-types.

S. No. Name & Description
1

any

Indicates that a function accepts any input data type.

2

anyelement

Indicates that a function accepts any data type.

3

anyarray

Indicates that a function accepts any array data type.

4

anynonarray

Indicates that a function accepts any non-array data type.

5

anyenum

Indicates that a function accepts any enum data type.

6

anyrange

Indicates that a function accepts any range data type.

7

cstring

Indicates that a function accepts or returns a null-terminated C string.

8

internal

Indicates that a function accepts or returns a server-internal data type.

9

language_handler

A procedural language call handler is declared to return language_handler.

10

fdw_handler

A foreign-data wrapper handler is declared to return fdw_handler.

11

record

Identifies a function returning an unspecified row type.

12

trigger

A trigger function is declared to return trigger.

13

void

Indicates that a function returns no value.

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