The HyperLogLog++ algorithm (HLL++) estimates cardinality from sketches.
HLL++ functions are approximate aggregate functions.
Approximate aggregation typically requires less
memory than exact aggregation functions,
like COUNT(DISTINCT)
, but also introduces statistical error.
This makes HLL++ functions appropriate for large data streams for
which linear memory usage is impractical, as well as for data that is
already approximate.
If you do not need materialized sketches, you can alternatively use an
approximate aggregate function with system-defined precision,
such as APPROX_COUNT_DISTINCT
. However,
APPROX_COUNT_DISTINCT
does not allow partial aggregations, re-aggregations,
and custom precision.
GoogleSQL for Bigtable supports the following HLL++ functions:
Function list
Name | Summary |
---|---|
HLL_COUNT.EXTRACT
|
Extracts a cardinality estimate of an HLL++ sketch. |
HLL_COUNT.INIT
|
Aggregates values of the same underlying type into a new HLL++ sketch. |
HLL_COUNT.MERGE
|
Merges HLL++ sketches of the same underlying type into a new sketch, and then gets the cardinality of the new sketch. |
HLL_COUNT.MERGE_PARTIAL
|
Merges HLL++ sketches of the same underlying type into a new sketch. |
HLL_COUNT.EXTRACT
HLL_COUNT.EXTRACT(sketch)
Description
A scalar function that extracts a cardinality estimate of a single HLL++ sketch.
If sketch
is NULL
, this function returns a cardinality estimate of 0
.
Supported input types
BYTES
Return type
INT64
Example
The following query returns the number of distinct users for each country who have at least one invoice.
SELECT
country,
HLL_COUNT.EXTRACT(HLL_sketch) AS distinct_customers_with_open_invoice
FROM
(
SELECT
country,
HLL_COUNT.INIT(customer_id) AS hll_sketch
FROM
UNNEST(
ARRAY<STRUCT<country STRING, customer_id STRING, invoice_id STRING>>[
('UA', 'customer_id_1', 'invoice_id_11'),
('BR', 'customer_id_3', 'invoice_id_31'),
('CZ', 'customer_id_2', 'invoice_id_22'),
('CZ', 'customer_id_2', 'invoice_id_23'),
('BR', 'customer_id_3', 'invoice_id_31'),
('UA', 'customer_id_2', 'invoice_id_24')])
GROUP BY country
);
/*---------+--------------------------------------*
| country | distinct_customers_with_open_invoice |
+---------+--------------------------------------+
| UA | 2 |
| BR | 1 |
| CZ | 1 |
*---------+--------------------------------------*/
HLL_COUNT.INIT
HLL_COUNT.INIT(input [, precision])
Description
An aggregate function that takes one or more input
values and aggregates them
into a HLL++ sketch. Each sketch
is represented using the BYTES
data type. You can then merge sketches using
HLL_COUNT.MERGE
or HLL_COUNT.MERGE_PARTIAL
. If no merging is needed,
you can extract the final count of distinct values from the sketch using
HLL_COUNT.EXTRACT
.
This function supports an optional parameter, precision
. This parameter
defines the accuracy of the estimate at the cost of additional memory required
to process the sketches or store them on disk. The range for this value is
10
to 24
. The default value is 15
. For more information about precision,
see Precision for sketches.
If the input is NULL
, this function returns NULL
.
For more information, see HyperLogLog in Practice: Algorithmic Engineering of a State of The Art Cardinality Estimation Algorithm.
Supported input types
INT64
STRING
BYTES
Return type
BYTES
Example
The following query creates HLL++ sketches that count the number of distinct users with at least one invoice per country.
SELECT
country,
HLL_COUNT.INIT(customer_id, 10)
AS hll_sketch
FROM
UNNEST(
ARRAY<STRUCT<country STRING, customer_id STRING, invoice_id STRING>>[
('UA', 'customer_id_1', 'invoice_id_11'),
('CZ', 'customer_id_2', 'invoice_id_22'),
('CZ', 'customer_id_2', 'invoice_id_23'),
('BR', 'customer_id_3', 'invoice_id_31'),
('UA', 'customer_id_2', 'invoice_id_24')])
GROUP BY country;
/*---------+------------------------------------------------------------------------------------*
| country | hll_sketch |
+---------+------------------------------------------------------------------------------------+
| UA | "\010p\020\002\030\002 \013\202\007\r\020\002\030\n \0172\005\371\344\001\315\010" |
| CZ | "\010p\020\002\030\002 \013\202\007\013\020\001\030\n \0172\003\371\344\001" |
| BR | "\010p\020\001\030\002 \013\202\007\013\020\001\030\n \0172\003\202\341\001" |
*---------+------------------------------------------------------------------------------------*/
HLL_COUNT.MERGE
HLL_COUNT.MERGE(sketch)
Description
An aggregate function that returns the cardinality of several HLL++ sketches by computing their union.
Each sketch
must be initialized on the same type. Attempts to merge sketches
for different types results in an error. For example, you cannot merge a sketch
initialized from INT64
data with one initialized from STRING
data.
If the merged sketches were initialized with different precisions, the precision will be downgraded to the lowest precision involved in the merge.
This function ignores NULL
values when merging sketches. If the merge happens
over zero rows or only over NULL
values, the function returns 0
.
Supported input types
BYTES
Return type
INT64
Example
The following query counts the number of distinct users across all countries who have at least one invoice.
SELECT HLL_COUNT.MERGE(hll_sketch) AS distinct_customers_with_open_invoice
FROM
(
SELECT
country,
HLL_COUNT.INIT(customer_id) AS hll_sketch
FROM
UNNEST(
ARRAY<STRUCT<country STRING, customer_id STRING, invoice_id STRING>>[
('UA', 'customer_id_1', 'invoice_id_11'),
('BR', 'customer_id_3', 'invoice_id_31'),
('CZ', 'customer_id_2', 'invoice_id_22'),
('CZ', 'customer_id_2', 'invoice_id_23'),
('BR', 'customer_id_3', 'invoice_id_31'),
('UA', 'customer_id_2', 'invoice_id_24')])
GROUP BY country
);
/*--------------------------------------*
| distinct_customers_with_open_invoice |
+--------------------------------------+
| 3 |
*--------------------------------------*/
HLL_COUNT.MERGE_PARTIAL
HLL_COUNT.MERGE_PARTIAL(sketch)
Description
An aggregate function that takes one or more
HLL++ sketch
inputs and merges them into a new sketch.
Each sketch
must be initialized on the same type. Attempts to merge sketches
for different types results in an error. For example, you cannot merge a sketch
initialized from INT64
data with one initialized from STRING
data.
If the merged sketches were initialized with different precisions, the precision
will be downgraded to the lowest precision involved in the merge. For example,
if MERGE_PARTIAL
encounters sketches of precision 14 and 15, the returned new
sketch will have precision 14.
This function returns NULL
if there is no input or all inputs are NULL
.
Supported input types
BYTES
Return type
BYTES
Example
The following query returns an HLL++ sketch that counts the number of distinct users who have at least one invoice across all countries.
SELECT HLL_COUNT.MERGE_PARTIAL(HLL_sketch) AS distinct_customers_with_open_invoice
FROM
(
SELECT
country,
HLL_COUNT.INIT(customer_id) AS hll_sketch
FROM
UNNEST(
ARRAY<STRUCT<country STRING, customer_id STRING, invoice_id STRING>>[
('UA', 'customer_id_1', 'invoice_id_11'),
('BR', 'customer_id_3', 'invoice_id_31'),
('CZ', 'customer_id_2', 'invoice_id_22'),
('CZ', 'customer_id_2', 'invoice_id_23'),
('BR', 'customer_id_3', 'invoice_id_31'),
('UA', 'customer_id_2', 'invoice_id_24')])
GROUP BY country
);
/*----------------------------------------------------------------------------------------------*
| distinct_customers_with_open_invoice |
+----------------------------------------------------------------------------------------------+
| "\010p\020\006\030\002 \013\202\007\020\020\003\030\017 \0242\010\320\2408\352}\244\223\002" |
*----------------------------------------------------------------------------------------------*/