Quantile digest functions
Data structures
A quantile digest is a data sketch which stores approximate percentile
information. The Trino type for this data structure is called qdigest
,
and it takes a parameter which must be one of bigint
, double
or
real
which represent the set of numbers that may be ingested by the
qdigest
. They may be merged without losing precision, and for storage
and retrieval they may be cast to/from VARBINARY
.
Functions
merge()
merge(qdigest)
→ qdigest
Merges all input qdigest
s into a single qdigest
.
quantile_at_value()
quantile_at_value(qdigest(T), T)
→ quantile
Returns the approximate quantile
number between 0 and 1 from the quantile digest given an input value. Null is returned if the quantile digest is empty or the input value is outside of the range of the quantile digest.
values_at_quantile()
value_at_quantile(qdigest(T), quantile)
→ T
Returns the approximate percentile value from the quantile digest given
the number quantile
between 0 and 1.
values_at_quantiles()
values_at_quantiles(qdigest(T), quantiles)
→ array(T)
Returns the approximate percentile values as an array given the input quantile digest and array of values between 0 and 1 which represent the quantiles to return.
qdigest_agg()
qdigest_agg(x)
→ qdigest(same as x)
Returns the qdigest
which is composed of all input values of x
.
qdigest_agg()
qdigest_agg(x, w)
→ qdigest(same as x)
Returns the qdigest
which is composed of all input values of x
using
the per-item weight w
.
qdigest_agg()
qdigest_agg(x, w, accuracy)
→ qdigest(same as x)
Returns the qdigest
which is composed of all input values of x
using
the per-item weight w
and maximum error of accuracy
. accuracy
must
be a value greater than zero and less than one, and it must be constant
for all input rows.
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