bloom — bloom filter index access method
bloom
bloom provides an index access method based on
Bloom filters.
A Bloom filter is a space-efficient data structure that is used to test
whether an element is a member of a set. In the case of an index access
method, it allows fast exclusion of non-matching tuples via signatures
whose size is determined at index creation.
A signature is a lossy representation of the indexed attribute(s), and as
such is prone to reporting false positives; that is, it may be reported
that an element is in the set, when it is not. So index search results
must always be rechecked using the actual attribute values from the heap
entry. Larger signatures reduce the odds of a false positive and thus
reduce the number of useless heap visits, but of course also make the index
larger and hence slower to scan.
This type of index is most useful when a table has many attributes and
queries test arbitrary combinations of them. A traditional btree index is
faster than a bloom index, but it can require many btree indexes to support
all possible queries where one needs only a single bloom index. Note
however that bloom indexes only support equality queries, whereas btree
indexes can also perform inequality and range searches.
Parameters
A bloom index accepts the following parameters in its
WITH clause:
length
Length of each signature (index entry) in bits. It is rounded up to the
nearest multiple of 16. The default is
80 bits and the maximum is 4096.
col1 — col32
Number of bits generated for each index column. Each parameter's name
refers to the number of the index column that it controls. The default
is 2 bits and the maximum is 4095.
Parameters for index columns not actually used are ignored.
Examples
This is an example of creating a bloom index:
CREATE INDEX bloomidx ON tbloom USING bloom (i1,i2,i3)
WITH (length=80, col1=2, col2=2, col3=4);
The index is created with a signature length of 80 bits, with attributes
i1 and i2 mapped to 2 bits, and attribute i3 mapped to 4 bits. We could
have omitted the length, col1,
and col2 specifications since those have the default values.
Here is a more complete example of bloom index definition and usage, as
well as a comparison with equivalent btree indexes. The bloom index is
considerably smaller than the btree index, and can perform better.
=# CREATE TABLE tbloom AS
SELECT
(random() * 1000000)::int as i1,
(random() * 1000000)::int as i2,
(random() * 1000000)::int as i3,
(random() * 1000000)::int as i4,
(random() * 1000000)::int as i5,
(random() * 1000000)::int as i6
FROM
generate_series(1,10000000);
SELECT 10000000
A sequential scan over this large table takes a long time:
=# EXPLAIN ANALYZE SELECT * FROM tbloom WHERE i2 = 898732 AND i5 = 123451;
QUERY PLAN
-------------------------------------------------------------------&zwsp;-----------------------------------
Seq Scan on tbloom (cost=0.00..213744.00 rows=250 width=24) (actual time=357.059..357.059 rows=0.00 loops=1)
Filter: ((i2 = 898732) AND (i5 = 123451))
Rows Removed by Filter: 10000000
Buffers: shared hit=63744
Planning Time: 0.346 ms
Execution Time: 357.076 ms
(6 rows)
Even with the btree index defined the result will still be a
sequential scan:
=# CREATE INDEX btreeidx ON tbloom (i1, i2, i3, i4, i5, i6);
CREATE INDEX
=# SELECT pg_size_pretty(pg_relation_size('btreeidx'));
pg_size_pretty
----------------
386 MB
(1 row)
=# EXPLAIN ANALYZE SELECT * FROM tbloom WHERE i2 = 898732 AND i5 = 123451;
QUERY PLAN
-------------------------------------------------------------------&zwsp;-----------------------------------
Seq Scan on tbloom (cost=0.00..213744.00 rows=2 width=24) (actual time=351.016..351.017 rows=0.00 loops=1)
Filter: ((i2 = 898732) AND (i5 = 123451))
Rows Removed by Filter: 10000000
Buffers: shared hit=63744
Planning Time: 0.138 ms
Execution Time: 351.035 ms
(6 rows)
Having the bloom index defined on the table is better than btree in
handling this type of search:
=# CREATE INDEX bloomidx ON tbloom USING bloom (i1, i2, i3, i4, i5, i6);
CREATE INDEX
=# SELECT pg_size_pretty(pg_relation_size('bloomidx'));
pg_size_pretty
----------------
153 MB
(1 row)
=# EXPLAIN ANALYZE SELECT * FROM tbloom WHERE i2 = 898732 AND i5 = 123451;
QUERY PLAN
-------------------------------------------------------------------&zwsp;--------------------------------------------------
Bitmap Heap Scan on tbloom (cost=1792.00..1799.69 rows=2 width=24) (actual time=22.605..22.606 rows=0.00 loops=1)
Recheck Cond: ((i2 = 898732) AND (i5 = 123451))
Rows Removed by Index Recheck: 2300
Heap Blocks: exact=2256
Buffers: shared hit=21864
-> Bitmap Index Scan on bloomidx (cost=0.00..178436.00 rows=1 width=0) (actual time=20.005..20.005 rows=2300.00 loops=1)
Index Cond: ((i2 = 898732) AND (i5 = 123451))
Index Searches: 1
Buffers: shared hit=19608
Planning Time: 0.099 ms
Execution Time: 22.632 ms
(11 rows)
Now, the main problem with the btree search is that btree is inefficient
when the search conditions do not constrain the leading index column(s).
A better strategy for btree is to create a separate index on each column.
Then the planner will choose something like this:
=# CREATE INDEX btreeidx1 ON tbloom (i1);
CREATE INDEX
=# CREATE INDEX btreeidx2 ON tbloom (i2);
CREATE INDEX
=# CREATE INDEX btreeidx3 ON tbloom (i3);
CREATE INDEX
=# CREATE INDEX btreeidx4 ON tbloom (i4);
CREATE INDEX
=# CREATE INDEX btreeidx5 ON tbloom (i5);
CREATE INDEX
=# CREATE INDEX btreeidx6 ON tbloom (i6);
CREATE INDEX
=# EXPLAIN ANALYZE SELECT * FROM tbloom WHERE i2 = 898732 AND i5 = 123451;
QUERY PLAN
-------------------------------------------------------------------&zwsp;--------------------------------------------------------
Bitmap Heap Scan on tbloom (cost=9.29..13.30 rows=1 width=24) (actual time=0.032..0.033 rows=0.00 loops=1)
Recheck Cond: ((i5 = 123451) AND (i2 = 898732))
Buffers: shared read=6
-> BitmapAnd (cost=9.29..9.29 rows=1 width=0) (actual time=0.047..0.047 rows=0.00 loops=1)
Buffers: shared hit=6
-> Bitmap Index Scan on btreeidx5 (cost=0.00..4.52 rows=11 width=0) (actual time=0.026..0.026 rows=7.00 loops=1)
Index Cond: (i5 = 123451)
Index Searches: 1
Buffers: shared hit=3
-> Bitmap Index Scan on btreeidx2 (cost=0.00..4.52 rows=11 width=0) (actual time=0.007..0.007 rows=8.00 loops=1)
Index Cond: (i2 = 898732)
Index Searches: 1
Buffers: shared hit=3
Planning Time: 0.264 ms
Execution Time: 0.047 ms
(15 rows)
Although this query runs much faster than with either of the single
indexes, we pay a penalty in index size. Each of the single-column
btree indexes occupies 88.5 MB, so the total space needed is 531 MB,
over three times the space used by the bloom index.
Operator Class Interface
An operator class for bloom indexes requires only a hash function for the
indexed data type and an equality operator for searching. This example
shows the operator class definition for the text data type:
CREATE OPERATOR CLASS text_ops
DEFAULT FOR TYPE text USING bloom AS
OPERATOR 1 =(text, text),
FUNCTION 1 hashtext(text);
Limitations
Only operator classes for int4 and text are
included with the module.
Only the = operator is supported for search. But
it is possible to add support for arrays with union and intersection
operations in the future.
bloom access method doesn't support
UNIQUE indexes.
bloom access method doesn't support searching for
NULL values.
Authors
Teodor Sigaev teodor@postgrespro.ru,
Postgres Professional, Moscow, Russia
Alexander Korotkov a.korotkov@postgrespro.ru,
Postgres Professional, Moscow, Russia
Oleg Bartunov obartunov@postgrespro.ru,
Postgres Professional, Moscow, Russia