I've been using
GROUP BY for all types of aggregate queries over the years. Recently, I've been reverse-engineering some code that uses
PARTITION BY to perform aggregations. In reading through all the documentation I can find about
PARTITION BY, it sounds a lot like
GROUP BY, maybe with a little extra functionality added in? Are they two versions of the same general functionality, or are they something different entirely?
I've been using
They're used in different places.
group by modifies the entire query, like:
select customerId, count(*) as orderCount from Orders group by customerId
partition by just works on a window function, like
select row_number() over (partition by customerId order by orderId) as OrderNumberForThisCustomer from Orders
group by normally reduces the number of rows returned by rolling them up and calculating averages or sums for each row.
partition by does not affect the number of rows returned, but it changes how a window function's result is calculated.
We can take a simple example
we have a table named
TableA with the following values .
id firstname lastname Mark ------------------------------------------------------------------- 1 arun prasanth 40 2 ann antony 45 3 sruthy abc 41 6 new abc 47 1 arun prasanth 45 1 arun prasanth 49 2 ann antony 49
The SQL GROUP BY clause can be used in a SELECT statement to collect data across multiple records and group the results by one or more columns.
In more simple words GROUP BY statement is used in conjunction with the aggregate functions to group the result-set by one or more columns.
SELECT expression1, expression2, ... expression_n, aggregate_function (aggregate_expression) FROM tables WHERE conditions GROUP BY expression1, expression2, ... expression_n;
We can apply GroupBy in our table
select SUM(Mark)marksum,firstname from TableA group by id,firstName
marksum firstname ---------------- 94 ann 134 arun 47 new 41 sruthy
In our real table we have 7 rows and when we apply group by id, the server group the results based on id
In simple words
here group by normally reduces the number of rows returned by rolling them up and calculating Sum for each row.
before going to partition by
let us look at OVER clause
As per MSDN definition
OVER clause defines a window or user-specified set of rows within a query result set. A window function then computes a value for each row in the window. You can use the OVER clause with functions to compute aggregated values such as moving averages, cumulative aggregates, running totals, or a top N per group results.
partition by will not reduce the number of rows returned
we can apply partition by in our example table
select SUM(Mark) OVER (PARTITION BY id) AS marksum, firstname from TableA
marksum firstname ------------------- 134 arun 134 arun 134 arun 94 ann 94 ann 41 sruthy 47 new
look at the results it will partition the rows and results all rows not like group by.
partition by doesn't actually roll up the data. It allows you to reset something on a per group basis. For example, you can get an ordinal column within a group by partitioning on the grouping field and using
rownum() over the rows within that group. This gives you something that behaves a bit like an identity column that resets at the beginning of each group.
It provides rolled-up data without rolling up
i.e. Suppose I want to return the relative position of sales region
Using PARTITION BY, I can return the sales amount for a given region and the MAX amount across all sales regions in the same row.
This does mean you will have repeating data, but it may suit the end consumer in the sense that data has been aggregated but no data has been lost - as would be the case with GROUP BY.
As of my understanding Partition By is almost identical to Group By, but with the following differences:
That group by actually groups the result set returning one row per group, which results therefore in SQL Server only allowing in the SELECT list aggregate functions or columns that are part of the group by clause (in which case SQL Server can guarantee that there are unique results for each group).
Consider for example MySQL which allows to have in the SELECT list columns that are not defined in the Group By clause, in which case one row is still being returned per group, however if the column doesn't have unique results then there is no guarantee what will be the output!
But with Partition By, although the results of the function are identical to the results of an aggregate function with Group By, still you are getting the normal result set, which means that one is getting one row per underlying row, and not one row per group, and because of this one can have columns that are not unique per group in the SELECT list.
So as a summary, Group By would be best when needs an output of one row per group, and Partition By would be best when one needs all the rows but still wants the aggregate function based on a group.
Of course there might also be performance issues, see http://social.msdn.microsoft.com/Forums/ms-MY/transactsql/thread/0b20c2b5-1607-40bc-b7a7-0c60a2a55fba.
Suppose we have 14 records of
name column in table
select name,count(*) as totalcount from person where name='Please fill out' group BY name;
it will give count in single row i.e 14
select row_number() over (partition by name) as total from person where name = 'Please fill out';
it will 14 rows of increase in count
-- BELOW IS A SAMPLE WHICH OUTLINES THE SIMPLE DIFFERENCES -- READ IT AND THEN EXECUTE IT -- THERE ARE THREE ROWS OF EACH COLOR INSERTED INTO THE TABLE -- CREATE A database called testDB -- use testDB USE [TestDB] GO -- create Paints table CREATE TABLE [dbo].[Paints]( [Color] [varchar](50) NULL, [glossLevel] [varchar](50) NULL ) ON [PRIMARY] GO -- Populate Table insert into paints (color, glossLevel) select 'red', 'eggshell' union select 'red', 'glossy' union select 'red', 'flat' union select 'blue', 'eggshell' union select 'blue', 'glossy' union select 'blue', 'flat' union select 'orange', 'glossy' union select 'orange', 'flat' union select 'orange', 'eggshell' union select 'green', 'eggshell' union select 'green', 'glossy' union select 'green', 'flat' union select 'black', 'eggshell' union select 'black', 'glossy' union select 'black', 'flat' union select 'purple', 'eggshell' union select 'purple', 'glossy' union select 'purple', 'flat' union select 'salmon', 'eggshell' union select 'salmon', 'glossy' union select 'salmon', 'flat' /* COMPARE 'GROUP BY' color to 'OVER (PARTITION BY Color)' */ -- GROUP BY Color -- row quantity defined by group by -- aggregate (count(*)) defined by group by select count(*) from paints group by color -- OVER (PARTITION BY... Color -- row quantity defined by main query -- aggregate defined by OVER-PARTITION BY select color , glossLevel , count(*) OVER (Partition by color) from paints /* COMPARE 'GROUP BY' color, glossLevel to 'OVER (PARTITION BY Color, GlossLevel)' */ -- GROUP BY Color, GlossLevel -- row quantity defined by GROUP BY -- aggregate (count(*)) defined by GROUP BY select count(*) from paints group by color, glossLevel -- Partition by Color, GlossLevel -- row quantity defined by main query -- aggregate (count(*)) defined by OVER-PARTITION BY select color , glossLevel , count(*) OVER (Partition by color, glossLevel) from paints