Counting rows in big tables is known to be slow in PostgreSQL. The MVCC model requires a full count of live rows for a precise number. There are workarounds to speed this up dramatically if the count does not have to be exact like it seems to be in your case.
(Remember that even an "exact" count is potentially dead on arrival under concurrent write load.)
Slow for big tables.
With concurrent write operations, it may be outdated the moment you get it.
SELECT count(*) AS exact_count FROM myschema.mytable;
SELECT reltuples AS estimate FROM pg_class where relname = 'mytable';
Typically, the estimate is very close. How close, depends on whether
VACUUM are run enough - where "enough" is defined by the level of write activity to your table.
The above ignores the possibility of multiple tables with the same name in one database - in different schemas. To account for that:
SELECT c.reltuples::bigint AS estimate
FROM pg_class c
JOIN pg_namespace n ON n.oid = c.relnamespace
WHERE c.relname = 'mytable'
AND n.nspname = 'myschema';
The cast to
bigint formats the
real number nicely, especially for big counts.
SELECT reltuples::bigint AS estimate
WHERE oid = 'myschema.mytable'::regclass;
Faster, simpler, safer, more elegant. See the manual on Object Identifier Types.
to_regclass('myschema.mytable') in Postgres 9.4+ to get nothing instead of an exception for invalid table names. See:
Better estimate yet (for very little added cost)
This does not work for partitioned tables because
relpages is always -1 for the parent table (while
reltuples contains an actual estimate covering all partitions) - tested in Postgres 14.
You have to add up estimates for all partitions instead.
We can do what the Postgres planner does. Quoting the Row Estimation Examples in the manual:
These numbers are current as of the last
ANALYZE on the
table. The planner then fetches the actual current number of pages in
the table (this is a cheap operation, not requiring a table scan). If
that is different from
reltuples is scaled
accordingly to arrive at a current number-of-rows estimate.
estimate_rel_size defined in
src/backend/utils/adt/plancat.c, which also covers the corner case of no data in
pg_class because the relation was never vacuumed. We can do something similar in SQL:
SELECT (reltuples / relpages * (pg_relation_size(oid) / 8192))::bigint
WHERE oid = 'mytable'::regclass; -- your table here
Safe and explicit
SELECT (CASE WHEN c.reltuples < 0 THEN NULL -- never vacuumed
WHEN c.relpages = 0 THEN float8 '0' -- empty table
ELSE c.reltuples / c.relpages END
FROM pg_catalog.pg_class c
WHERE c.oid = 'myschema.mytable'::regclass; -- schema-qualified table here
Doesn't break with empty tables and tables that have never seen
ANALYZE. The manual on
If the table has never yet been vacuumed or analyzed,
-1 indicating that the row count is unknown.
If this query returns
VACUUM for the table and repeat. (Alternatively, you could estimate row width based on column types like Postgres does, but that's tedious and error-prone.)
If this query returns
0, the table seems to be empty. But I would
ANALYZE to make sure. (And maybe check your
block_size is 8192.
current_setting('block_size')::int covers rare exceptions.
Table and schema qualifications make it immune to any
search_path and scope.
Either way, the query consistently takes < 0.1 ms for me.
More Web resources:
SELECT 100 * count(*) AS estimate FROM mytable TABLESAMPLE SYSTEM (1);
Like @a_horse commented, the added clause for the
SELECT command can be useful if statistics in
pg_class are not current enough for some reason. For example:
- Immediately after a large
TEMPORARY tables (which are not covered by
This only looks at a random n % (
1 in the example) selection of blocks and counts rows in it. A bigger sample increases the cost and reduces the error, your pick. Accuracy depends on more factors:
- Distribution of row size. If a given block happens to hold wider than usual rows, the count is lower than usual etc.
- Dead tuples or a
FILLFACTOR occupy space per block. If unevenly distributed across the table, the estimate may be off.
- General rounding errors.
Typically, the estimate from
pg_class will be faster and more accurate.
Answer to actual question
First, I need to know the number of rows in that table, if the total
count is greater than some predefined constant,
And whether it ...
... is possible at the moment the count pass my constant value, it will
stop the counting (and not wait to finish the counting to inform the
row count is greater).
Yes. You can use a subquery with
SELECT count(*) FROM (SELECT 1 FROM token LIMIT 500000) t;
Postgres actually stops counting beyond the given limit, you get an exact and current count for up to n rows (500000 in the example), and n otherwise. Not nearly as fast as the estimate in