Trait datafusion_expr::PartitionEvaluator
source · pub trait PartitionEvaluator: Debug + Send {
// Provided methods
fn memoize(&mut self, _state: &mut WindowAggState) -> Result<()> { ... }
fn get_range(&self, idx: usize, _n_rows: usize) -> Result<Range<usize>> { ... }
fn evaluate_all(
&mut self,
values: &[ArrayRef],
num_rows: usize
) -> Result<ArrayRef> { ... }
fn evaluate(
&mut self,
_values: &[ArrayRef],
_range: &Range<usize>
) -> Result<ScalarValue> { ... }
fn evaluate_all_with_rank(
&self,
_num_rows: usize,
_ranks_in_partition: &[Range<usize>]
) -> Result<ArrayRef> { ... }
fn supports_bounded_execution(&self) -> bool { ... }
fn uses_window_frame(&self) -> bool { ... }
fn include_rank(&self) -> bool { ... }
}
Expand description
Partition evaluator for Window Functions
Background
An implementation of this trait is created and used for each
partition defined by an OVER
clause and is instantiated by
the DataFusion runtime.
For example, evaluating window_func(val) OVER (PARTITION BY col)
on the following data:
col | val
--- + ----
A | 10
A | 10
C | 20
D | 30
D | 30
Will instantiate three PartitionEvaluator
s, one each for the
partitions defined by col=A
, col=B
, and col=C
.
col | val
--- + ----
A | 10 <--- partition 1
A | 10
col | val
--- + ----
C | 20 <--- partition 2
col | val
--- + ----
D | 30 <--- partition 3
D | 30
Different methods on this trait will be called depending on the
capabilities described by supports_bounded_execution
,
uses_window_frame
, and include_rank
,
When implementing a new PartitionEvaluator
, implement
corresponding evaluator according to table below.
Implementation Table
uses_window_frame | supports_bounded_execution | include_rank | function_to_implement |
---|---|---|---|
false (default) | false (default) | false (default) | evaluate_all |
false | true | false | evaluate |
false | true/false | true | evaluate_all_with_rank |
true | true/false | true/false | evaluate |
Provided Methods§
sourcefn memoize(&mut self, _state: &mut WindowAggState) -> Result<()>
fn memoize(&mut self, _state: &mut WindowAggState) -> Result<()>
When the window frame has a fixed beginning (e.g UNBOUNDED PRECEDING), some functions such as FIRST_VALUE, LAST_VALUE and NTH_VALUE do not need the (unbounded) input once they have seen a certain amount of input.
memoize
is called after each input batch is processed, and
such functions can save whatever they need and modify
WindowAggState
appropriately to allow rows to be pruned
sourcefn get_range(&self, idx: usize, _n_rows: usize) -> Result<Range<usize>>
fn get_range(&self, idx: usize, _n_rows: usize) -> Result<Range<usize>>
If uses_window_frame
flag is false
. This method is used to
calculate required range for the window function during
stateful execution.
Generally there is no required range, hence by default this returns smallest range(current row). e.g seeing current row is enough to calculate window result (such as row_number, rank, etc)
sourcefn evaluate_all(
&mut self,
values: &[ArrayRef],
num_rows: usize
) -> Result<ArrayRef>
fn evaluate_all( &mut self, values: &[ArrayRef], num_rows: usize ) -> Result<ArrayRef>
Evaluate a window function on an entire input partition.
This function is called once per input partition for window
functions that do not use values from the window frame,
such as ROW_NUMBER
, RANK
, DENSE_RANK
, PERCENT_RANK
,
CUME_DIST
, LEAD
, LAG
).
It produces the result of all rows in a single pass. It
expects to receive the entire partition as the value
and
must produce an output column with one output row for every
input row.
num_rows
is requied to correctly compute the output in case
values.len() == 0
Implementing this function is an optimization: certain window
functions are not affected by the window frame definition or
the query doesn’t have a frame, and evaluate
skips the
(costly) window frame boundary calculation and the overhead of
calling evaluate
for each output row.
For example, the LAG
built in window function does not use
the values of its window frame (it can be computed in one shot
on the entire partition with Self::evaluate_all
regardless of the
window defined in the OVER
clause)
lag(x, 1) OVER (ORDER BY z ROWS BETWEEN 2 PRECEDING AND 3 FOLLOWING)
However, avg()
computes the average in the window and thus
does use its window frame
avg(x) OVER (PARTITION BY y ORDER BY z ROWS BETWEEN 2 PRECEDING AND 3 FOLLOWING)
sourcefn evaluate(
&mut self,
_values: &[ArrayRef],
_range: &Range<usize>
) -> Result<ScalarValue>
fn evaluate( &mut self, _values: &[ArrayRef], _range: &Range<usize> ) -> Result<ScalarValue>
Evaluate window function on a range of rows in an input partition.x
This is the simplest and most general function to implement but also the least performant as it creates output one row at a time. It is typically much faster to implement stateful evaluation using one of the other specialized methods on this trait.
Returns a ScalarValue
that is the value of the window
function within range
for the entire partition. Argument
values
contains the evaluation result of function arguments
and evaluation results of ORDER BY expressions. If function has a
single argument, values[1..]
will contain ORDER BY expression results.
sourcefn evaluate_all_with_rank(
&self,
_num_rows: usize,
_ranks_in_partition: &[Range<usize>]
) -> Result<ArrayRef>
fn evaluate_all_with_rank( &self, _num_rows: usize, _ranks_in_partition: &[Range<usize>] ) -> Result<ArrayRef>
PartitionEvaluator::evaluate_all_with_rank
is called for window
functions that only need the rank of a row within its window
frame.
Evaluate the partition evaluator against the partition using
the row ranks. For example, RANK(col)
produces
col | rank
--- + ----
A | 1
A | 1
C | 3
D | 4
D | 5
For this case, num_rows
would be 5
and the
ranks_in_partition
would be called with
[
(0,1),
(2,2),
(3,4),
]
sourcefn supports_bounded_execution(&self) -> bool
fn supports_bounded_execution(&self) -> bool
Can the window function be incrementally computed using bounded memory?
See the table on Self
for what functions to implement
sourcefn uses_window_frame(&self) -> bool
fn uses_window_frame(&self) -> bool
Does the window function use the values from the window frame, if one is specified?
See the table on Self
for what functions to implement
sourcefn include_rank(&self) -> bool
fn include_rank(&self) -> bool
Can this function be evaluated with (only) rank
See the table on Self
for what functions to implement