在plsql开发中,会涉及到一些大数据量表的数据处理,如将某记录数超亿的表的记录经过处理转换插入到另外一张或几张表。
常规的操作方法固然可以实现,但时间、磁盘IO、redo日志等等都非常大。Oracle 提供了一种高级函数,可以将这种数据处理的性能提升到极限。这种函数称为管道函数。在实际项目中,管道函数会和表函数、数据流函数(即表函数和CURSOR结合)、数据集合、并行度一起使用,达到大数据处理的性能顶峰。转自:(http://mikixiyou.iteye.com/blog/1673672)
下面是一个例子,将表t_ss_normal的记录插入到表t_target中,插入过程中有部分转换操作。我分成四个方法来实现这个数据处理操作。
create table T_SS_NORMAL
(
owner VARCHAR2(30),
object_name VARCHAR2(128),
subobject_name VARCHAR2(30),
object_id NUMBER,
data_object_id NUMBER,
object_type VARCHAR2(19),
created DATE,
last_ddl_time DATE,
timestamp VARCHAR2(19),
status VARCHAR2(7),
temporary VARCHAR2(1),
generated VARCHAR2(1),
secondary VARCHAR2(1)
);
/
create table T_TARGET
(
owner VARCHAR2(30),
object_name VARCHAR2(128),
comm VARCHAR2(10)
);
create or replace package pkg_test is
procedure load_target_normal;
end pkg_test;
create or replace package body pkg_test is
procedure load_target_normal is
begin
insert into t_target (owner, object_name, comm)
select owner, object_name, 'xxx' from t_ss_normal;
commit;
end;
begin
null;
end pkg_test;
create type obj_target as object(
owner VARCHAR2(30), object_name VARCHAR2(128), comm varchar2(10)
);
/
create or replace type typ_array_target as table of obj_target;
/
create or replace package pkg_test is
function pipe_target(p_source_data in sys_refcursor) return typ_array_target
pipelined;
procedure load_target;
end pkg_test;
首先创建两个自定义的类型。obj_target的定义和t_target的表结构一致,用于存储每一条目标表记录。typ_array_target用于管道函数的返回值。
接着定义一个管道函数。
普通函数的结尾加一个pipelined关键字,就是管道函数。这个函数的返回参数类型为集合,这是为了使其能作为表函数使用。表函数就是在from子句中以table(v_resultset)调用的,v_resultset就是一个集合类型的参数。
最后定义一个调用存储过程。
在包体中定义该管道函数和调用存储过程。管道函数pipe_target的传入参数一个sys_refcursor类型。这是一个游标,可以理解为使用select * from table才能得到的结果集。
你也可以不用这个传入的游标,取而代之,在函数中定义一个游标,也一样使用。
function pipe_target(p_source_data in sys_refcursor) return typ_array_target
pipelined is
r_target_data obj_target := obj_target(null, null, null);
r_source_data t_ss%rowtype;
begin
loop
fetch p_source_data
into r_source_data;
exit when p_source_data%notfound;
r_target_data.owner := r_source_data.owner;
r_target_data.object_name := r_source_data.object_name;
r_target_data.comm := 'xxx';
pipe row(r_target_data);
end loop;
close p_source_data;
return;
end;
procedure load_target is
begin
insert into t_target
(owner, object_name, comm)
select owner, object_name, comm
from table(pipe_target(cursor(select * from t_ss_normal)));
commit;
end;
关键字 pipe row 的作用是将obj_target插入到typ_array_target类型的数组中,管道函数自动返回这些数据。因为源表的数据量会非常大,所以在fetch取值时会使用bulk collect ,实现批量取值。这样做可以减少plsql引擎和sql引擎的控制转换次数。这种转换称为上下文切换。
function pipe_target_array(p_source_data in sys_refcursor,
p_limit_size in pls_integer default c_default_limit)
return typ_array_target
pipelined is
r_target_data obj_target := obj_target(null, null, null);
type typ_source_data is table of t_ss%rowtype index by pls_integer;
aa_source_data typ_source_data;
begin
loop
fetch p_source_data bulk collect
into aa_source_data;
exit when aa_source_data.count = 0;
for i in 1 .. aa_source_data.count loop
r_target_data.owner := aa_source_data(i).owner;
r_target_data.object_name := aa_source_data(i).object_name;
r_target_data.comm := 'xxx';
pipe row(r_target_data);
end loop;
end loop;
close p_source_data;
return;
end;
procedure load_target_array is
begin
insert into t_target
(owner, object_name, comm)
select owner, object_name, comm
from table(pipe_target_array(cursor (select * from t_ss_normal),
100));
commit;
end;
还可以使用并行度,使得管道函数可以多进程同时执行。并行度还有一个好处,就是将数据插入方式从常规路径转换为直接路径。直接路径可以大量减少redo日志的生成量。
function pipe_target_parallel(p_source_data in sys_refcursor,
p_limit_size in pls_integer default c_default_limit)
return typ_array_target
pipelined
parallel_enable(partition p_source_data by any) is
r_target_data obj_target := obj_target(null, null, null);
type typ_source_data is table of t_ss%rowtype index by pls_integer;
aa_source_data typ_source_data;
begin
loop
fetch p_source_data bulk collect
into aa_source_data;
exit when aa_source_data.count = 0;
for i in 1 .. aa_source_data.count loop
r_target_data.owner := aa_source_data(i).owner;
r_target_data.object_name := aa_source_data(i).object_name;
r_target_data.comm := 'xxx';
pipe row(r_target_data);
end loop;
end loop;
close p_source_data;
return;
end;
procedure load_target_parallel is
begin
execute immediate 'alter session enable parallel dml';
insert /*+parallel(t,4)*/
into t_target t
(owner, object_name, comm)
select owner, object_name, comm
from table(pipe_target_array(cursor (select /*+parallel(s,4)*/
*
from t_ss_normal s),
100));
commit;
end;
还可以使用并行度,使得管道函数可以多进程同时执行。并行度还有一个好处,就是将数据插入方式从常规路径转换为直接路径。直接路径可以大量减少redo日志的生成量。
function pipe_target_parallel(p_source_data in sys_refcursor,
p_limit_size in pls_integer default c_default_limit)
return typ_array_target
pipelined
parallel_enable(partition p_source_data by any) is
r_target_data obj_target := obj_target(null, null, null);
type typ_source_data is table of t_ss%rowtype index by pls_integer;
aa_source_data typ_source_data;
begin
loop
fetch p_source_data bulk collect
into aa_source_data;
exit when aa_source_data.count = 0;
for i in 1 .. aa_source_data.count loop
r_target_data.owner := aa_source_data(i).owner;
r_target_data.object_name := aa_source_data(i).object_name;
r_target_data.comm := 'xxx';
pipe row(r_target_data);
end loop;
end loop;
close p_source_data;
return;
end;
procedure load_target_parallel is
begin
execute immediate 'alter session enable parallel dml';
insert /*+parallel(t,4)*/
into t_target t
(owner, object_name, comm)
select owner, object_name, comm
from table(pipe_target_array(cursor (select /*+parallel(s,4)*/
*
from t_ss_normal s),
100));
commit;
end;
在测试过程中,我测试200W记录的操作,时间从24秒降到到8秒,重做日志也降低更多。