User-defined Aggregates
| PostgreSQL 9.4.26 Documentation | |||
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Aggregate functions in PostgreSQL are defined in terms of state values and state transition functions . That is, an aggregate operates using a state value that is updated as each successive input row is processed. To define a new aggregate function, one selects a data type for the state value, an initial value for the state, and a state transition function. The state transition function takes the previous state value and the aggregate's input value(s) for the current row, and returns a new state value. A final function can also be specified, in case the desired result of the aggregate is different from the data that needs to be kept in the running state value. The final function takes the last state value and returns whatever is wanted as the aggregate result. In principle, the transition and final functions are just ordinary functions that could also be used outside the context of the aggregate. (In practice, it's often helpful for performance reasons to create specialized transition functions that can only work when called as part of an aggregate.)
Thus, in addition to the argument and result data types seen by a user of the aggregate, there is an internal state-value data type that might be different from both the argument and result types.
  If we define an aggregate that does not use a final function,
   we have an aggregate that computes a running function of
   the column values from each row.
  
   sum
  
  is  an
   example  of  this  kind  of aggregate.
  
   sum
  
  starts at
   zero and always adds the current  row's  value  to
   its  running  total.  For example, if we want to make a
  
   sum
  
  aggregate to work on a data type for complex numbers,
   we only need the addition function for that data type.
   The aggregate definition would be:
 
CREATE AGGREGATE sum (complex)
(
    sfunc = complex_add,
    stype = complex,
    initcond = '(0,0)'
);
 which we might use like this:
SELECT sum(a) FROM test_complex; sum ----------- (34,53.9)
  (Notice that we are relying on function overloading: there is more than
    one aggregate named
  
   sum
  
  , but
  
   PostgreSQL
  
  can figure out which kind
   of sum applies to a column of type
  
   complex
  
  .)
 
  The above definition of
  
   sum
  
  will return zero
   (the initial state value) if there are no nonnull input values.
   Perhaps we want to return null in that case instead - the SQL standard
   expects
  
   sum
  
  to behave that way.  We can do this simply by
   omitting the
  
   initcond
  
  phrase, so that the initial state
   value is null.  Ordinarily this would mean that the
  
   sfunc
  
  would need to check for a null state-value input.  But for
  
   sum
  
  and some other simple aggregates like
  
   max
  
  and
  
   min
  
  ,
   it is sufficient to insert the first nonnull input value into
   the state variable and then start applying the transition function
   at the second nonnull input value.
  
   PostgreSQL
  
  will do that automatically if the initial state value is null and
   the transition function is marked
  
   "strict"
  
  (i.e., not to be called
   for null inputs).
 
Another bit of default behavior for a "strict" transition function is that the previous state value is retained unchanged whenever a null input value is encountered. Thus, null values are ignored. If you need some other behavior for null inputs, do not declare your transition function as strict; instead code it to test for null inputs and do whatever is needed.
  
   avg
  
  (average) is a more complex example of an aggregate.
   It requires
   two pieces of running state: the sum of the inputs and the count
   of the number of inputs.  The final result is obtained by dividing
   these quantities.  Average is typically implemented by using an
   array as the state value.  For example,
   the built-in implementation of
  
   avg(float8)
  
  looks like:
 
CREATE AGGREGATE avg (float8)
(
    sfunc = float8_accum,
    stype = float8[],
    finalfunc = float8_avg,
    initcond = '{0,0,0}'
);
 
Note:
float8_accumrequires a three-element array, not just two elements, because it accumulates the sum of squares as well as the sum and count of the inputs. This is so that it can be used for some other aggregates as well asavg.
Aggregate function calls in SQL allow DISTINCT and ORDER BY options that control which rows are fed to the aggregate's transition function and in what order. These options are implemented behind the scenes and are not the concern of the aggregate's support functions.
For further details see the CREATE AGGREGATE command.
35.10.1. Moving-Aggregate Mode
   Aggregate functions can optionally support
   
    moving-aggregate
   mode
   
   , which allows substantially faster execution of aggregate
   functions within windows with moving frame starting points.
   (See
   
    Section 3.5
   
   and
   
    Section 4.2.8
   
   for information about use of
   aggregate functions as window functions.)
   The basic idea is that in addition to a normal
   
    "forward"
   
   transition function, the aggregate provides an
   
    inverse
   transition function
   
   , which allows rows to be removed from the
   aggregate's running state value when they exit the window frame.
   For example a
   
    sum
   
   aggregate, which uses addition as the
   forward transition function, would use subtraction as the inverse
   transition function.  Without an inverse transition function, the window
   function mechanism must recalculate the aggregate from scratch each time
   the frame starting point moves, resulting in run time proportional to the
   number of input rows times the average frame length.  With an inverse
   transition function, the run time is only proportional to the number of
   input rows.
  
The inverse transition function is passed the current state value and the aggregate input value(s) for the earliest row included in the current state. It must reconstruct what the state value would have been if the given input row had never been aggregated, but only the rows following it. This sometimes requires that the forward transition function keep more state than is needed for plain aggregation mode. Therefore, the moving-aggregate mode uses a completely separate implementation from the plain mode: it has its own state data type, its own forward transition function, and its own final function if needed. These can be the same as the plain mode's data type and functions, if there is no need for extra state.
   As an example, we could extend the
   
    sum
   
   aggregate given above
   to support moving-aggregate mode like this:
  
CREATE AGGREGATE sum (complex)
(
    sfunc = complex_add,
    stype = complex,
    initcond = '(0,0)',
    msfunc = complex_add,
    minvfunc = complex_sub,
    mstype = complex,
    minitcond = '(0,0)'
);
  The parameters whose names begin with m define the moving-aggregate implementation. Except for the inverse transition function minvfunc , they correspond to the plain-aggregate parameters without m .
The forward transition function for moving-aggregate mode is not allowed to return null as the new state value. If the inverse transition function returns null, this is taken as an indication that the inverse function cannot reverse the state calculation for this particular input, and so the aggregate calculation will be redone from scratch for the current frame starting position. This convention allows moving-aggregate mode to be used in situations where there are some infrequent cases that are impractical to reverse out of the running state value. The inverse transition function can "punt" on these cases, and yet still come out ahead so long as it can work for most cases. As an example, an aggregate working with floating-point numbers might choose to punt when a NaN (not a number) input has to be removed from the running state value.
   When writing moving-aggregate support functions, it is important to be
   sure that the inverse transition function can reconstruct the correct
   state value exactly.  Otherwise there might be user-visible differences
   in results depending on whether the moving-aggregate mode is used.
   An example of an aggregate for which adding an inverse transition
   function seems easy at first, yet where this requirement cannot be met
   is
   
    sum
   
   over
   
    float4
   
   or
   
    float8
   
   inputs.  A
   naive declaration of
   
    sum(
    
     float8
    
    )
   
   could be
  
CREATE AGGREGATE unsafe_sum (float8)
(
    stype = float8,
    sfunc = float8pl,
    mstype = float8,
    msfunc = float8pl,
    minvfunc = float8mi
);
  This aggregate, however, can give wildly different results than it would have without the inverse transition function. For example, consider
SELECT
  unsafe_sum(x) OVER (ORDER BY n ROWS BETWEEN CURRENT ROW AND 1 FOLLOWING)
FROM (VALUES (1, 1.0e20::float8),
             (2, 1.0::float8)) AS v (n,x);
  This query returns 0 as its second result, rather than the expected answer of 1 . The cause is the limited precision of floating-point values: adding 1 to 1e20 results in 1e20 again, and so subtracting 1e20 from that yields 0 , not 1 . Note that this is a limitation of floating-point arithmetic in general, not a limitation of PostgreSQL .
35.10.2. Polymorphic and Variadic Aggregates
Aggregate functions can use polymorphic state transition functions or final functions, so that the same functions can be used to implement multiple aggregates. See Section 35.2.5 for an explanation of polymorphic functions. Going a step further, the aggregate function itself can be specified with polymorphic input type(s) and state type, allowing a single aggregate definition to serve for multiple input data types. Here is an example of a polymorphic aggregate:
CREATE AGGREGATE array_accum (anyelement)
(
    sfunc = array_append,
    stype = anyarray,
    initcond = '{}'
);
  
   Here, the actual state type for any given aggregate call is the array type
   having the actual input type as elements.  The behavior of the aggregate
   is to concatenate all the inputs into an array of that type.
   (Note: the built-in aggregate
   
    array_agg
   
   provides similar
   functionality, with better performance than this definition would have.)
  
Here's the output using two different actual data types as arguments:
SELECT attrelid::regclass, array_accum(attname)
    FROM pg_attribute
    WHERE attnum > 0 AND attrelid = 'pg_tablespace'::regclass
    GROUP BY attrelid;
   attrelid    |              array_accum              
---------------+---------------------------------------
 pg_tablespace | {spcname,spcowner,spcacl,spcoptions}
(1 row)
SELECT attrelid::regclass, array_accum(atttypid::regtype)
    FROM pg_attribute
    WHERE attnum > 0 AND attrelid = 'pg_tablespace'::regclass
    GROUP BY attrelid;
   attrelid    |        array_accum        
---------------+---------------------------
 pg_tablespace | {name,oid,aclitem[],text[]}
(1 row)
  
   Ordinarily, an aggregate function with a polymorphic result type has a
   polymorphic state type, as in the above example.  This is necessary
   because otherwise the final function cannot be declared sensibly: it
   would need to have a polymorphic result type but no polymorphic argument
   type, which
   
    CREATE FUNCTION
   
   will reject on the grounds that
   the result type cannot be deduced from a call.  But sometimes it is
   inconvenient to use a polymorphic state type.  The most common case is
   where the aggregate support functions are to be written in C and the
   state type should be declared as
   
    internal
   
   because there is
   no SQL-level equivalent for it.  To address this case, it is possible to
   declare the final function as taking extra
   
    "dummy"
   
   arguments
   that match the input arguments of the aggregate.  Such dummy arguments
   are always passed as null values since no specific value is available when the
   final function is called.  Their only use is to allow a polymorphic
   final function's result type to be connected to the aggregate's input
   type(s).  For example, the definition of the built-in
   aggregate
   
    array_agg
   
   is equivalent to
  
CREATE FUNCTION array_agg_transfn(internal, anyelement)
  RETURNS internal ...;
CREATE FUNCTION array_agg_finalfn(internal, anyelement)
  RETURNS anyarray ...;
CREATE AGGREGATE array_agg (anyelement)
(
    sfunc = array_agg_transfn,
    stype = internal,
    finalfunc = array_agg_finalfn,
    finalfunc_extra
);
  
   Here, the
   
    finalfunc_extra
   
   option specifies that the final
   function receives, in addition to the state value, extra dummy
   argument(s) corresponding to the aggregate's input argument(s).
   The extra
   
    anyelement
   
   argument allows the declaration
   of
   
    array_agg_finalfn
   
   to be valid.
  
An aggregate function can be made to accept a varying number of arguments by declaring its last argument as a VARIADIC array, in much the same fashion as for regular functions; see Section 35.4.5 . The aggregate's transition function(s) must have the same array type as their last argument. The transition function(s) typically would also be marked VARIADIC , but this is not strictly required.
Note: Variadic aggregates are easily misused in connection with the ORDER BY option (see Section 4.2.7 ), since the parser cannot tell whether the wrong number of actual arguments have been given in such a combination. Keep in mind that everything to the right of ORDER BY is a sort key, not an argument to the aggregate. For example, in
SELECT myaggregate(a ORDER BY a, b, c) FROM ...the parser will see this as a single aggregate function argument and three sort keys. However, the user might have intended
SELECT myaggregate(a, b, c ORDER BY a) FROM ...If myaggregate is variadic, both these calls could be perfectly valid.
For the same reason, it's wise to think twice before creating aggregate functions with the same names and different numbers of regular arguments.
35.10.3. Ordered-Set Aggregates
   The aggregates we have been describing so far are
   
    "normal"
   
   aggregates.
   
    PostgreSQL
   
   also
   supports
   
    ordered-set aggregates
   
   , which differ from
   normal aggregates in two key ways.  First, in addition to ordinary
   aggregated arguments that are evaluated once per input row, an
   ordered-set aggregate can have
   
    "direct"
   
   arguments that are
   evaluated only once per aggregation operation.  Second, the syntax
   for the ordinary aggregated arguments specifies a sort ordering
   for them explicitly.  An ordered-set aggregate is usually
   used to implement a computation that depends on a specific row
   ordering, for instance rank or percentile, so that the sort ordering
   is a required aspect of any call.  For example, the built-in
   definition of
   
    percentile_disc
   
   is equivalent to:
  
CREATE FUNCTION ordered_set_transition(internal, anyelement)
  RETURNS internal ...;
CREATE FUNCTION percentile_disc_final(internal, float8, anyelement)
  RETURNS anyelement ...;
CREATE AGGREGATE percentile_disc (float8 ORDER BY anyelement)
(
    sfunc = ordered_set_transition,
    stype = internal,
    finalfunc = percentile_disc_final,
    finalfunc_extra
);
  This aggregate takes a float8 direct argument (the percentile fraction) and an aggregated input that can be of any sortable data type. It could be used to obtain a median household income like this:
SELECT percentile_disc(0.5) WITHIN GROUP (ORDER BY income) FROM households;
 percentile_disc
-----------------
           50489
  Here, 0.5 is a direct argument; it would make no sense for the percentile fraction to be a value varying across rows.
Unlike the case for normal aggregates, the sorting of input rows for an ordered-set aggregate is not done behind the scenes, but is the responsibility of the aggregate's support functions. The typical implementation approach is to keep a reference to a "tuplesort" object in the aggregate's state value, feed the incoming rows into that object, and then complete the sorting and read out the data in the final function. This design allows the final function to perform special operations such as injecting additional "hypothetical" rows into the data to be sorted. While normal aggregates can often be implemented with support functions written in PL/pgSQL or another PL language, ordered-set aggregates generally have to be written in C, since their state values aren't definable as any SQL data type. (In the above example, notice that the state value is declared as type internal - this is typical.)
The state transition function for an ordered-set aggregate receives the current state value plus the aggregated input values for each row, and returns the updated state value. This is the same definition as for normal aggregates, but note that the direct arguments (if any) are not provided. The final function receives the last state value, the values of the direct arguments if any, and (if finalfunc_extra is specified) null values corresponding to the aggregated input(s). As with normal aggregates, finalfunc_extra is only really useful if the aggregate is polymorphic; then the extra dummy argument(s) are needed to connect the final function's result type to the aggregate's input type(s).
Currently, ordered-set aggregates cannot be used as window functions, and therefore there is no need for them to support moving-aggregate mode.
35.10.4. Support Functions for Aggregates
   A function written in C can detect that it is being called as an
   aggregate transition or final function by calling
   
    AggCheckCallContext
   
   , for example:
  
if (AggCheckCallContext(fcinfo, NULL))
One reason for checking this is that when it is true for a transition function, the first input must be a temporary state value and can therefore safely be modified in-place rather than allocating a new copy. See int8inc() for an example. (This is the only case where it is safe for a function to modify a pass-by-reference input. In particular, final functions for normal aggregates must not modify their inputs in any case, because in some cases they will be re-executed on the same final state value.)
   Another support routine available to aggregate functions written in C
   is
   
    AggGetAggref
   
   , which returns the
   
    Aggref
   
   parse node that defines the aggregate call.  This is mainly useful
   for ordered-set aggregates, which can inspect the substructure of
   the
   
    Aggref
   
   node to find out what sort ordering they are
   supposed to implement.  Examples can be found
   in
   
    orderedsetaggs.c
   
   in the
   
    PostgreSQL
   
   source code.