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Note: At present, this section is just taken from PostgreSQL documentation and is subject to revision for Postgres-XC.
The tablefunc module includes various functions that return tables (that is, multiple rows). These functions are useful both in their own right and as examples of how to write C functions that return multiple rows.
Note: At present, this section is just taken from PostgreSQL documentation and is subject to revision for Postgres-XC.
Table F-27 shows the functions provided by the tablefunc module.
Table F-27. tablefunc Functions
Function | Returns | Description |
---|---|---|
normal_rand(int numvals, float8 mean, float8 stddev) | setof float8 | Produces a set of normally distributed random values |
crosstab(text sql) | setof record | Produces a "pivot table" containing row names plus N value columns, where N is determined by the row type specified in the calling query |
crosstabN(text sql) | setof table_crosstab_N | Produces a "pivot table" containing
row names plus N value columns.
crosstab2 , crosstab3 , and
crosstab4 are predefined, but you can create additional
crosstabN functions as described below
|
crosstab(text source_sql, text category_sql) | setof record | Produces a "pivot table" with the value columns specified by a second query |
crosstab(text sql, int N) | setof record | Obsolete version of |
connectby(text relname, text keyid_fld, text parent_keyid_fld
[, text orderby_fld ], text start_with, int max_depth
[, text branch_delim ])
| setof record | Produces a representation of a hierarchical tree structure |
normal_rand
normal_rand(int numvals, float8 mean, float8 stddev) returns setof float8
Note: At present, this section is just taken from PostgreSQL documentation and is subject to revision for Postgres-XC.
normal_rand
produces a set of normally distributed random
values (Gaussian distribution).
numvals is the number of values to be returned from the function. mean is the mean of the normal distribution of values and stddev is the standard deviation of the normal distribution of values.
For example, this call requests 1000 values with a mean of 5 and a standard deviation of 3:
test=# SELECT * FROM normal_rand(1000, 5, 3); normal_rand ---------------------- 1.56556322244898 9.10040991424657 5.36957140345079 -0.369151492880995 0.283600703686639 . . . 4.82992125404908 9.71308014517282 2.49639286969028 (1000 rows)
crosstab(text)
crosstab(text sql) crosstab(text sql, int N)
Note: At present, this section is just taken from PostgreSQL documentation and is subject to revision for Postgres-XC.
The crosstab
function is used to produce "pivot"
displays, wherein data is listed across the page rather than down.
For example, we might have data like
row1 val11 row1 val12 row1 val13 ... row2 val21 row2 val22 row2 val23 ...
which we wish to display like
row1 val11 val12 val13 ... row2 val21 val22 val23 ... ...
The crosstab
function takes a text parameter that is a SQL
query producing raw data formatted in the first way, and produces a table
formatted in the second way.
The sql parameter is a SQL statement that produces the source set of data. This statement must return one row_name column, one category column, and one value column. N is an obsolete parameter, ignored if supplied (formerly this had to match the number of output value columns, but now that is determined by the calling query).
For example, the provided query might produce a set something like:
row_name cat value ----------+-------+------- row1 cat1 val1 row1 cat2 val2 row1 cat3 val3 row1 cat4 val4 row2 cat1 val5 row2 cat2 val6 row2 cat3 val7 row2 cat4 val8
The crosstab
function is declared to return setof
record, so the actual names and types of the output columns must be
defined in the FROM clause of the calling SELECT
statement, for example:
SELECT * FROM crosstab('...') AS ct(row_name text, category_1 text, category_2 text);
This example produces a set something like:
<== value columns ==> row_name category_1 category_2 ----------+------------+------------ row1 val1 val2 row2 val5 val6
The FROM clause must define the output as one row_name column (of the same data type as the first result column of the SQL query) followed by N value columns (all of the same data type as the third result column of the SQL query). You can set up as many output value columns as you wish. The names of the output columns are up to you.
The crosstab
function produces one output row for each
consecutive group of input rows with the same
row_name value. It fills the output
value columns, left to right, with the
value fields from these rows. If there
are fewer rows in a group than there are output value
columns, the extra output columns are filled with nulls; if there are
more rows, the extra input rows are skipped.
In practice the SQL query should always specify ORDER BY 1,2
to ensure that the input rows are properly ordered, that is, values with
the same row_name are brought together and
correctly ordered within the row. Notice that crosstab
itself does not pay any attention to the second column of the query
result; it's just there to be ordered by, to control the order in which
the third-column values appear across the page.
Here is a complete example:
CREATE TABLE ct(id SERIAL, rowid TEXT, attribute TEXT, value TEXT); INSERT INTO ct(rowid, attribute, value) VALUES('test1','att1','val1'); INSERT INTO ct(rowid, attribute, value) VALUES('test1','att2','val2'); INSERT INTO ct(rowid, attribute, value) VALUES('test1','att3','val3'); INSERT INTO ct(rowid, attribute, value) VALUES('test1','att4','val4'); INSERT INTO ct(rowid, attribute, value) VALUES('test2','att1','val5'); INSERT INTO ct(rowid, attribute, value) VALUES('test2','att2','val6'); INSERT INTO ct(rowid, attribute, value) VALUES('test2','att3','val7'); INSERT INTO ct(rowid, attribute, value) VALUES('test2','att4','val8'); SELECT * FROM crosstab( 'select rowid, attribute, value from ct where attribute = ''att2'' or attribute = ''att3'' order by 1,2') AS ct(row_name text, category_1 text, category_2 text, category_3 text); row_name | category_1 | category_2 | category_3 ----------+------------+------------+------------ test1 | val2 | val3 | test2 | val6 | val7 | (2 rows)
You can avoid always having to write out a FROM clause to define the output columns, by setting up a custom crosstab function that has the desired output row type wired into its definition. This is described in the next section. Another possibility is to embed the required FROM clause in a view definition.
crosstabN(text)
crosstabN(text sql)
Note: At present, this section is just taken from PostgreSQL documentation and is subject to revision for Postgres-XC.
The crosstabN
functions are examples of how
to set up custom wrappers for the general crosstab
function,
so that you need not write out column names and types in the calling
SELECT query. The tablefunc module includes
crosstab2
, crosstab3
, and
crosstab4
, whose output row types are defined as
CREATE TYPE tablefunc_crosstab_N AS ( row_name TEXT, category_1 TEXT, category_2 TEXT, . . . category_N TEXT );
Thus, these functions can be used directly when the input query produces
row_name and value columns of type
text, and you want 2, 3, or 4 output values columns.
In all other ways they behave exactly as described above for the
general crosstab
function.
For instance, the example given in the previous section would also work as
SELECT * FROM crosstab3( 'select rowid, attribute, value from ct where attribute = ''att2'' or attribute = ''att3'' order by 1,2');
These functions are provided mostly for illustration purposes. You
can create your own return types and functions based on the
underlying crosstab()
function. There are two ways
to do it:
Create a composite type describing the desired output columns,
similar to the examples in
contrib/tablefunc/tablefunc--1.0.sql.
Then define a
unique function name accepting one text parameter and returning
setof your_type_name, but linking to the same underlying
crosstab
C function. For example, if your source data
produces row names that are text, and values that are
float8, and you want 5 value columns:
CREATE TYPE my_crosstab_float8_5_cols AS ( my_row_name text, my_category_1 float8, my_category_2 float8, my_category_3 float8, my_category_4 float8, my_category_5 float8 ); CREATE OR REPLACE FUNCTION crosstab_float8_5_cols(text) RETURNS setof my_crosstab_float8_5_cols AS '$libdir/tablefunc','crosstab' LANGUAGE C STABLE STRICT;
Use OUT parameters to define the return type implicitly. The same example could also be done this way:
CREATE OR REPLACE FUNCTION crosstab_float8_5_cols( IN text, OUT my_row_name text, OUT my_category_1 float8, OUT my_category_2 float8, OUT my_category_3 float8, OUT my_category_4 float8, OUT my_category_5 float8) RETURNS setof record AS '$libdir/tablefunc','crosstab' LANGUAGE C STABLE STRICT;
crosstab(text, text)
crosstab(text source_sql, text category_sql)
Note: At present, this section is just taken from PostgreSQL documentation and is subject to revision for Postgres-XC.
The main limitation of the single-parameter form of crosstab
is that it treats all values in a group alike, inserting each value into
the first available column. If you want the value
columns to correspond to specific categories of data, and some groups
might not have data for some of the categories, that doesn't work well.
The two-parameter form of crosstab
handles this case by
providing an explicit list of the categories corresponding to the
output columns.
source_sql is a SQL statement that produces the source set of data. This statement must return one row_name column, one category column, and one value column. It may also have one or more "extra" columns. The row_name column must be first. The category and value columns must be the last two columns, in that order. Any columns between row_name and category are treated as "extra". The "extra" columns are expected to be the same for all rows with the same row_name value.
For example, source_sql might produce a set something like:
SELECT row_name, extra_col, cat, value FROM foo ORDER BY 1; row_name extra_col cat value ----------+------------+-----+--------- row1 extra1 cat1 val1 row1 extra1 cat2 val2 row1 extra1 cat4 val4 row2 extra2 cat1 val5 row2 extra2 cat2 val6 row2 extra2 cat3 val7 row2 extra2 cat4 val8
category_sql is a SQL statement that produces the set of categories. This statement must return only one column. It must produce at least one row, or an error will be generated. Also, it must not produce duplicate values, or an error will be generated. category_sql might be something like:
SELECT DISTINCT cat FROM foo ORDER BY 1; cat ------- cat1 cat2 cat3 cat4
The crosstab
function is declared to return setof
record, so the actual names and types of the output columns must be
defined in the FROM clause of the calling SELECT
statement, for example:
SELECT * FROM crosstab('...', '...') AS ct(row_name text, extra text, cat1 text, cat2 text, cat3 text, cat4 text);
This will produce a result something like:
<== value columns ==> row_name extra cat1 cat2 cat3 cat4 ---------+-------+------+------+------+------ row1 extra1 val1 val2 val4 row2 extra2 val5 val6 val7 val8
The FROM clause must define the proper number of output columns of the proper data types. If there are N columns in the source_sql query's result, the first N-2 of them must match up with the first N-2 output columns. The remaining output columns must have the type of the last column of the source_sql query's result, and there must be exactly as many of them as there are rows in the category_sql query's result.
The crosstab
function produces one output row for each
consecutive group of input rows with the same
row_name value. The output
row_name column, plus any "extra"
columns, are copied from the first row of the group. The output
value columns are filled with the
value fields from rows having matching
category values. If a row's category
does not match any output of the category_sql
query, its value is ignored. Output
columns whose matching category is not present in any input row
of the group are filled with nulls.
In practice the source_sql query should always specify ORDER BY 1 to ensure that values with the same row_name are brought together. However, ordering of the categories within a group is not important. Also, it is essential to be sure that the order of the category_sql query's output matches the specified output column order.
Here are two complete examples:
create table sales(year int, month int, qty int); insert into sales values(2007, 1, 1000); insert into sales values(2007, 2, 1500); insert into sales values(2007, 7, 500); insert into sales values(2007, 11, 1500); insert into sales values(2007, 12, 2000); insert into sales values(2008, 1, 1000); select * from crosstab( 'select year, month, qty from sales order by 1', 'select m from generate_series(1,12) m' ) as ( year int, "Jan" int, "Feb" int, "Mar" int, "Apr" int, "May" int, "Jun" int, "Jul" int, "Aug" int, "Sep" int, "Oct" int, "Nov" int, "Dec" int ); year | Jan | Feb | Mar | Apr | May | Jun | Jul | Aug | Sep | Oct | Nov | Dec ------+------+------+-----+-----+-----+-----+-----+-----+-----+-----+------+------ 2007 | 1000 | 1500 | | | | | 500 | | | | 1500 | 2000 2008 | 1000 | | | | | | | | | | | (2 rows)
CREATE TABLE cth(rowid text, rowdt timestamp, attribute text, val text); INSERT INTO cth VALUES('test1','01 March 2003','temperature','42'); INSERT INTO cth VALUES('test1','01 March 2003','test_result','PASS'); INSERT INTO cth VALUES('test1','01 March 2003','volts','2.6987'); INSERT INTO cth VALUES('test2','02 March 2003','temperature','53'); INSERT INTO cth VALUES('test2','02 March 2003','test_result','FAIL'); INSERT INTO cth VALUES('test2','02 March 2003','test_startdate','01 March 2003'); INSERT INTO cth VALUES('test2','02 March 2003','volts','3.1234'); SELECT * FROM crosstab ( 'SELECT rowid, rowdt, attribute, val FROM cth ORDER BY 1', 'SELECT DISTINCT attribute FROM cth ORDER BY 1' ) AS ( rowid text, rowdt timestamp, temperature int4, test_result text, test_startdate timestamp, volts float8 ); rowid | rowdt | temperature | test_result | test_startdate | volts -------+--------------------------+-------------+-------------+--------------------------+-------- test1 | Sat Mar 01 00:00:00 2003 | 42 | PASS | | 2.6987 test2 | Sun Mar 02 00:00:00 2003 | 53 | FAIL | Sat Mar 01 00:00:00 2003 | 3.1234 (2 rows)
You can create predefined functions to avoid having to write out
the result column names and types in each query. See the examples
in the previous section. The underlying C function for this form
of crosstab
is named crosstab_hash.
connectby
connectby(text relname, text keyid_fld, text parent_keyid_fld [, text orderby_fld ], text start_with, int max_depth [, text branch_delim ])
Note: At present, this section is just taken from PostgreSQL documentation and is subject to revision for Postgres-XC.
The connectby
function produces a display of hierarchical
data that is stored in a table. The table must have a key field that
uniquely identifies rows, and a parent-key field that references the
parent (if any) of each row. connectby
can display the
sub-tree descending from any row.
Table F-28 explains the parameters.
Table F-28. connectby
Parameters
Parameter | Description |
---|---|
relname | Name of the source relation |
keyid_fld | Name of the key field |
parent_keyid_fld | Name of the parent-key field |
orderby_fld | Name of the field to order siblings by (optional) |
start_with | Key value of the row to start at |
max_depth | Maximum depth to descend to, or zero for unlimited depth |
branch_delim | String to separate keys with in branch output (optional) |
The key and parent-key fields can be any data type, but they must be the same type. Note that the start_with value must be entered as a text string, regardless of the type of the key field.
The connectby
function is declared to return setof
record, so the actual names and types of the output columns must be
defined in the FROM clause of the calling SELECT
statement, for example:
SELECT * FROM connectby('connectby_tree', 'keyid', 'parent_keyid', 'pos', 'row2', 0, '~') AS t(keyid text, parent_keyid text, level int, branch text, pos int);
The first two output columns are used for the current row's key and its parent row's key; they must match the type of the table's key field. The third output column is the depth in the tree and must be of type integer. If a branch_delim parameter was given, the next output column is the branch display and must be of type text. Finally, if an orderby_fld parameter was given, the last output column is a serial number, and must be of type integer.
The "branch" output column shows the path of keys taken to reach the current row. The keys are separated by the specified branch_delim string. If no branch display is wanted, omit both the branch_delim parameter and the branch column in the output column list.
If the ordering of siblings of the same parent is important, include the orderby_fld parameter to specify which field to order siblings by. This field can be of any sortable data type. The output column list must include a final integer serial-number column, if and only if orderby_fld is specified.
The parameters representing table and field names are copied as-is
into the SQL queries that connectby
generates internally.
Therefore, include double quotes if the names are mixed-case or contain
special characters. You may also need to schema-qualify the table name.
In large tables, performance will be poor unless there is an index on the parent-key field.
It is important that the branch_delim string
not appear in any key values, else connectby
may incorrectly
report an infinite-recursion error. Note that if
branch_delim is not provided, a default value
of ~ is used for recursion detection purposes.
Here is an example:
CREATE TABLE connectby_tree(keyid text, parent_keyid text, pos int); INSERT INTO connectby_tree VALUES('row1',NULL, 0); INSERT INTO connectby_tree VALUES('row2','row1', 0); INSERT INTO connectby_tree VALUES('row3','row1', 0); INSERT INTO connectby_tree VALUES('row4','row2', 1); INSERT INTO connectby_tree VALUES('row5','row2', 0); INSERT INTO connectby_tree VALUES('row6','row4', 0); INSERT INTO connectby_tree VALUES('row7','row3', 0); INSERT INTO connectby_tree VALUES('row8','row6', 0); INSERT INTO connectby_tree VALUES('row9','row5', 0); -- with branch, without orderby_fld (order of results is not guaranteed) SELECT * FROM connectby('connectby_tree', 'keyid', 'parent_keyid', 'row2', 0, '~') AS t(keyid text, parent_keyid text, level int, branch text); keyid | parent_keyid | level | branch -------+--------------+-------+--------------------- row2 | | 0 | row2 row4 | row2 | 1 | row2~row4 row6 | row4 | 2 | row2~row4~row6 row8 | row6 | 3 | row2~row4~row6~row8 row5 | row2 | 1 | row2~row5 row9 | row5 | 2 | row2~row5~row9 (6 rows) -- without branch, without orderby_fld (order of results is not guaranteed) SELECT * FROM connectby('connectby_tree', 'keyid', 'parent_keyid', 'row2', 0) AS t(keyid text, parent_keyid text, level int); keyid | parent_keyid | level -------+--------------+------- row2 | | 0 row4 | row2 | 1 row6 | row4 | 2 row8 | row6 | 3 row5 | row2 | 1 row9 | row5 | 2 (6 rows) -- with branch, with orderby_fld (notice that row5 comes before row4) SELECT * FROM connectby('connectby_tree', 'keyid', 'parent_keyid', 'pos', 'row2', 0, '~') AS t(keyid text, parent_keyid text, level int, branch text, pos int); keyid | parent_keyid | level | branch | pos -------+--------------+-------+---------------------+----- row2 | | 0 | row2 | 1 row5 | row2 | 1 | row2~row5 | 2 row9 | row5 | 2 | row2~row5~row9 | 3 row4 | row2 | 1 | row2~row4 | 4 row6 | row4 | 2 | row2~row4~row6 | 5 row8 | row6 | 3 | row2~row4~row6~row8 | 6 (6 rows) -- without branch, with orderby_fld (notice that row5 comes before row4) SELECT * FROM connectby('connectby_tree', 'keyid', 'parent_keyid', 'pos', 'row2', 0) AS t(keyid text, parent_keyid text, level int, pos int); keyid | parent_keyid | level | pos -------+--------------+-------+----- row2 | | 0 | 1 row5 | row2 | 1 | 2 row9 | row5 | 2 | 3 row4 | row2 | 1 | 4 row6 | row4 | 2 | 5 row8 | row6 | 3 | 6 (6 rows)
Joe Conway