Routine Database Maintenance Tasksmaintenanceroutine maintenancePostgreSQL, like any database software, requires that certain tasks
be performed regularly to achieve optimum performance. The tasks
discussed here are required, but they
are repetitive in nature and can easily be automated using standard
tools such as cron scripts or
Windows' Task Scheduler. It is the database
administrator's responsibility to set up appropriate scripts, and to
check that they execute successfully.
One obvious maintenance task is the creation of backup copies of the data on a
regular schedule. Without a recent backup, you have no chance of recovery
after a catastrophe (disk failure, fire, mistakenly dropping a critical
table, etc.). The backup and recovery mechanisms available in
PostgreSQL are discussed at length in
.
The other main category of maintenance task is periodic vacuuming
of the database. This activity is discussed in
. Closely related to this is updating
the statistics that will be used by the query planner, as discussed in
.
Another task that might need periodic attention is log file management.
This is discussed in .
check_postgres
is available for monitoring database health and reporting unusual
conditions. check_postgres integrates with
Nagios and MRTG, but can be run standalone too.
PostgreSQL is low-maintenance compared
to some other database management systems. Nonetheless,
appropriate attention to these tasks will go far towards ensuring a
pleasant and productive experience with the system.
Routine VacuumingvacuumPostgreSQL databases require periodic
maintenance known as vacuuming. For many installations, it
is sufficient to let vacuuming be performed by the autovacuum
daemon, which is described in . You might
need to adjust the autovacuuming parameters described there to obtain best
results for your situation. Some database administrators will want to
supplement or replace the daemon's activities with manually-managed
VACUUM commands, which typically are executed according to a
schedule by cron or Task
Scheduler scripts. To set up manually-managed vacuuming properly,
it is essential to understand the issues discussed in the next few
subsections. Administrators who rely on autovacuuming may still wish
to skim this material to help them understand and adjust autovacuuming.
Vacuuming BasicsPostgreSQL's
VACUUM command has to
process each table on a regular basis for several reasons:
To recover or reuse disk space occupied by updated or deleted
rows.To update data statistics used by the
PostgreSQL query planner.To update the visibility map, which speeds
up index-only
scans.To protect against loss of very old data due to
transaction ID wraparound or
multixact ID wraparound.
Each of these reasons dictates performing VACUUM operations
of varying frequency and scope, as explained in the following subsections.
There are two variants of VACUUM: standard VACUUM
and VACUUM FULL. VACUUM FULL can reclaim more
disk space but runs much more slowly. Also,
the standard form of VACUUM can run in parallel with production
database operations. (Commands such as SELECT,
INSERT, UPDATE, and
DELETE will continue to function normally, though you
will not be able to modify the definition of a table with commands such as
ALTER TABLE while it is being vacuumed.)
VACUUM FULL requires an
ACCESS EXCLUSIVE lock on the table it is
working on, and therefore cannot be done in parallel with other use
of the table. Generally, therefore,
administrators should strive to use standard VACUUM and
avoid VACUUM FULL.
VACUUM creates a substantial amount of I/O
traffic, which can cause poor performance for other active sessions.
There are configuration parameters that can be adjusted to reduce the
performance impact of background vacuuming — see
.
Recovering Disk Spacedisk space
In PostgreSQL, an
UPDATE or DELETE of a row does not
immediately remove the old version of the row.
This approach is necessary to gain the benefits of multiversion
concurrency control (MVCC, see ): the row version
must not be deleted while it is still potentially visible to other
transactions. But eventually, an outdated or deleted row version is no
longer of interest to any transaction. The space it occupies must then be
reclaimed for reuse by new rows, to avoid unbounded growth of disk
space requirements. This is done by running VACUUM.
The standard form of VACUUM removes dead row
versions in tables and indexes and marks the space available for
future reuse. However, it will not return the space to the operating
system, except in the special case where one or more pages at the
end of a table become entirely free and an exclusive table lock can be
easily obtained. In contrast, VACUUM FULL actively compacts
tables by writing a complete new version of the table file with no dead
space. This minimizes the size of the table, but can take a long time.
It also requires extra disk space for the new copy of the table, until
the operation completes.
The usual goal of routine vacuuming is to do standard VACUUMs
often enough to avoid needing VACUUM FULL. The
autovacuum daemon attempts to work this way, and in fact will
never issue VACUUM FULL. In this approach, the idea
is not to keep tables at their minimum size, but to maintain steady-state
usage of disk space: each table occupies space equivalent to its
minimum size plus however much space gets used up between vacuum runs.
Although VACUUM FULL can be used to shrink a table back
to its minimum size and return the disk space to the operating system,
there is not much point in this if the table will just grow again in the
future. Thus, moderately-frequent standard VACUUM runs are a
better approach than infrequent VACUUM FULL runs for
maintaining heavily-updated tables.
Some administrators prefer to schedule vacuuming themselves, for example
doing all the work at night when load is low.
The difficulty with doing vacuuming according to a fixed schedule
is that if a table has an unexpected spike in update activity, it may
get bloated to the point that VACUUM FULL is really necessary
to reclaim space. Using the autovacuum daemon alleviates this problem,
since the daemon schedules vacuuming dynamically in response to update
activity. It is unwise to disable the daemon completely unless you
have an extremely predictable workload. One possible compromise is
to set the daemon's parameters so that it will only react to unusually
heavy update activity, thus keeping things from getting out of hand,
while scheduled VACUUMs are expected to do the bulk of the
work when the load is typical.
For those not using autovacuum, a typical approach is to schedule a
database-wide VACUUM once a day during a low-usage period,
supplemented by more frequent vacuuming of heavily-updated tables as
necessary. (Some installations with extremely high update rates vacuum
their busiest tables as often as once every few minutes.) If you have
multiple databases in a cluster, don't forget to
VACUUM each one; the program might be helpful.
Plain VACUUM may not be satisfactory when
a table contains large numbers of dead row versions as a result of
massive update or delete activity. If you have such a table and
you need to reclaim the excess disk space it occupies, you will need
to use VACUUM FULL, or alternatively
CLUSTER
or one of the table-rewriting variants of
ALTER TABLE.
These commands rewrite an entire new copy of the table and build
new indexes for it. All these options require an
ACCESS EXCLUSIVE lock. Note that
they also temporarily use extra disk space approximately equal to the size
of the table, since the old copies of the table and indexes can't be
released until the new ones are complete.
If you have a table whose entire contents are deleted on a periodic
basis, consider doing it with
TRUNCATE rather
than using DELETE followed by
VACUUM. TRUNCATE removes the
entire content of the table immediately, without requiring a
subsequent VACUUM or VACUUM
FULL to reclaim the now-unused disk space.
The disadvantage is that strict MVCC semantics are violated.
Updating Planner Statisticsstatisticsof the plannerANALYZE
The PostgreSQL query planner relies on
statistical information about the contents of tables in order to
generate good plans for queries. These statistics are gathered by
the ANALYZE command,
which can be invoked by itself or
as an optional step in VACUUM. It is important to have
reasonably accurate statistics, otherwise poor choices of plans might
degrade database performance.
The autovacuum daemon, if enabled, will automatically issue
ANALYZE commands whenever the content of a table has
changed sufficiently. However, administrators might prefer to rely
on manually-scheduled ANALYZE operations, particularly
if it is known that update activity on a table will not affect the
statistics of interesting columns. The daemon schedules
ANALYZE strictly as a function of the number of rows
inserted or updated; it has no knowledge of whether that will lead
to meaningful statistical changes.
Tuples changed in partitions and inheritance children do not trigger
analyze on the parent table. If the parent table is empty or rarely
changed, it may never be processed by autovacuum, and the statistics for
the inheritance tree as a whole won't be collected. It is necessary to
run ANALYZE on the parent table manually in order to
keep the statistics up to date.
As with vacuuming for space recovery, frequent updates of statistics
are more useful for heavily-updated tables than for seldom-updated
ones. But even for a heavily-updated table, there might be no need for
statistics updates if the statistical distribution of the data is
not changing much. A simple rule of thumb is to think about how much
the minimum and maximum values of the columns in the table change.
For example, a timestamp column that contains the time
of row update will have a constantly-increasing maximum value as
rows are added and updated; such a column will probably need more
frequent statistics updates than, say, a column containing URLs for
pages accessed on a website. The URL column might receive changes just
as often, but the statistical distribution of its values probably
changes relatively slowly.
It is possible to run ANALYZE on specific tables and even
just specific columns of a table, so the flexibility exists to update some
statistics more frequently than others if your application requires it.
In practice, however, it is usually best to just analyze the entire
database, because it is a fast operation. ANALYZE uses a
statistically random sampling of the rows of a table rather than reading
every single row.
Although per-column tweaking of ANALYZE frequency might not be
very productive, you might find it worthwhile to do per-column
adjustment of the level of detail of the statistics collected by
ANALYZE. Columns that are heavily used in WHERE
clauses and have highly irregular data distributions might require a
finer-grain data histogram than other columns. See ALTER TABLE
SET STATISTICS, or change the database-wide default using the configuration parameter.
Also, by default there is limited information available about
the selectivity of functions. However, if you create a statistics
object or an expression
index that uses a function call, useful statistics will be
gathered about the function, which can greatly improve query
plans that use the expression index.
The autovacuum daemon does not issue ANALYZE commands for
foreign tables, since it has no means of determining how often that
might be useful. If your queries require statistics on foreign tables
for proper planning, it's a good idea to run manually-managed
ANALYZE commands on those tables on a suitable schedule.
The autovacuum daemon does not issue ANALYZE commands
for partitioned tables. Inheritance parents will only be analyzed if the
parent itself is changed - changes to child tables do not trigger
autoanalyze on the parent table. If your queries require statistics on
parent tables for proper planning, it is necessary to periodically run
a manual ANALYZE on those tables to keep the statistics
up to date.
Updating the Visibility Map
Vacuum maintains a visibility map for each
table to keep track of which pages contain only tuples that are known to be
visible to all active transactions (and all future transactions, until the
page is again modified). This has two purposes. First, vacuum
itself can skip such pages on the next run, since there is nothing to
clean up.
Second, it allows PostgreSQL to answer some
queries using only the index, without reference to the underlying table.
Since PostgreSQL indexes don't contain tuple
visibility information, a normal index scan fetches the heap tuple for each
matching index entry, to check whether it should be seen by the current
transaction.
An index-only
scan, on the other hand, checks the visibility map first.
If it's known that all tuples on the page are
visible, the heap fetch can be skipped. This is most useful on
large data sets where the visibility map can prevent disk accesses.
The visibility map is vastly smaller than the heap, so it can easily be
cached even when the heap is very large.
Preventing Transaction ID Wraparound Failurestransaction IDwraparoundwraparoundof transaction IDsPostgreSQL's
MVCC transaction semantics
depend on being able to compare transaction ID (XID)
numbers: a row version with an insertion XID greater than the current
transaction's XID is in the future and should not be visible
to the current transaction. But since transaction IDs have limited size
(32 bits) a cluster that runs for a long time (more
than 4 billion transactions) would suffer transaction ID
wraparound: the XID counter wraps around to zero, and all of a sudden
transactions that were in the past appear to be in the future — which
means their output become invisible. In short, catastrophic data loss.
(Actually the data is still there, but that's cold comfort if you cannot
get at it.) To avoid this, it is necessary to vacuum every table
in every database at least once every two billion transactions.
The reason that periodic vacuuming solves the problem is that
VACUUM will mark rows as frozen, indicating that
they were inserted by a transaction that committed sufficiently far in
the past that the effects of the inserting transaction are certain to be
visible to all current and future transactions.
Normal XIDs are
compared using modulo-232 arithmetic. This means
that for every normal XID, there are two billion XIDs that are
older and two billion that are newer; another
way to say it is that the normal XID space is circular with no
endpoint. Therefore, once a row version has been created with a particular
normal XID, the row version will appear to be in the past for
the next two billion transactions, no matter which normal XID we are
talking about. If the row version still exists after more than two billion
transactions, it will suddenly appear to be in the future. To
prevent this, PostgreSQL reserves a special XID,
FrozenTransactionId, which does not follow the normal XID
comparison rules and is always considered older
than every normal XID.
Frozen row versions are treated as if the inserting XID were
FrozenTransactionId, so that they will appear to be
in the past to all normal transactions regardless of wraparound
issues, and so such row versions will be valid until deleted, no matter
how long that is.
In PostgreSQL versions before 9.4, freezing was
implemented by actually replacing a row's insertion XID
with FrozenTransactionId, which was visible in the
row's xmin system column. Newer versions just set a flag
bit, preserving the row's original xmin for possible
forensic use. However, rows with xmin equal
to FrozenTransactionId (2) may still be found
in databases pg_upgrade'd from pre-9.4 versions.
Also, system catalogs may contain rows with xmin equal
to BootstrapTransactionId (1), indicating that they were
inserted during the first phase of initdb.
Like FrozenTransactionId, this special XID is treated as
older than every normal XID.
controls how old an XID value has to be before rows bearing that XID will be
frozen. Increasing this setting may avoid unnecessary work if the
rows that would otherwise be frozen will soon be modified again,
but decreasing this setting increases
the number of transactions that can elapse before the table must be
vacuumed again.
VACUUM uses the visibility map
to determine which pages of a table must be scanned. Normally, it
will skip pages that don't have any dead row versions even if those pages
might still have row versions with old XID values. Therefore, normal
VACUUMs won't always freeze every old row version in the table.
Periodically, VACUUM will perform an aggressive
vacuum, skipping only those pages which contain neither dead rows nor
any unfrozen XID or MXID values.
controls when VACUUM does that: all-visible but not all-frozen
pages are scanned if the number of transactions that have passed since the
last such scan is greater than vacuum_freeze_table_age minus
vacuum_freeze_min_age. Setting
vacuum_freeze_table_age to 0 forces VACUUM to
use this more aggressive strategy for all scans.
The maximum time that a table can go unvacuumed is two billion
transactions minus the vacuum_freeze_min_age value at
the time of the last aggressive vacuum. If it were to go
unvacuumed for longer than
that, data loss could result. To ensure that this does not happen,
autovacuum is invoked on any table that might contain unfrozen rows with
XIDs older than the age specified by the configuration parameter . (This will happen even if
autovacuum is disabled.)
This implies that if a table is not otherwise vacuumed,
autovacuum will be invoked on it approximately once every
autovacuum_freeze_max_age minus
vacuum_freeze_min_age transactions.
For tables that are regularly vacuumed for space reclamation purposes,
this is of little importance. However, for static tables
(including tables that receive inserts, but no updates or deletes),
there is no need to vacuum for space reclamation, so it can
be useful to try to maximize the interval between forced autovacuums
on very large static tables. Obviously one can do this either by
increasing autovacuum_freeze_max_age or decreasing
vacuum_freeze_min_age.
The effective maximum for vacuum_freeze_table_age is 0.95 *
autovacuum_freeze_max_age; a setting higher than that will be
capped to the maximum. A value higher than
autovacuum_freeze_max_age wouldn't make sense because an
anti-wraparound autovacuum would be triggered at that point anyway, and
the 0.95 multiplier leaves some breathing room to run a manual
VACUUM before that happens. As a rule of thumb,
vacuum_freeze_table_age should be set to a value somewhat
below autovacuum_freeze_max_age, leaving enough gap so that
a regularly scheduled VACUUM or an autovacuum triggered by
normal delete and update activity is run in that window. Setting it too
close could lead to anti-wraparound autovacuums, even though the table
was recently vacuumed to reclaim space, whereas lower values lead to more
frequent aggressive vacuuming.
The sole disadvantage of increasing autovacuum_freeze_max_age
(and vacuum_freeze_table_age along with it) is that
the pg_xact and pg_commit_ts
subdirectories of the database cluster will take more space, because it
must store the commit status and (if track_commit_timestamp is
enabled) timestamp of all transactions back to
the autovacuum_freeze_max_age horizon. The commit status uses
two bits per transaction, so if
autovacuum_freeze_max_age is set to its maximum allowed value
of two billion, pg_xact can be expected to grow to about half
a gigabyte and pg_commit_ts to about 20GB. If this
is trivial compared to your total database size,
setting autovacuum_freeze_max_age to its maximum allowed value
is recommended. Otherwise, set it depending on what you are willing to
allow for pg_xact and pg_commit_ts storage.
(The default, 200 million transactions, translates to about 50MB
of pg_xact storage and about 2GB of pg_commit_ts
storage.)
One disadvantage of decreasing vacuum_freeze_min_age is that
it might cause VACUUM to do useless work: freezing a row
version is a waste of time if the row is modified
soon thereafter (causing it to acquire a new XID). So the setting should
be large enough that rows are not frozen until they are unlikely to change
any more.
To track the age of the oldest unfrozen XIDs in a database,
VACUUM stores XID
statistics in the system tables pg_class and
pg_database. In particular,
the relfrozenxid column of a table's
pg_class row contains the freeze cutoff XID that was used
by the last aggressive VACUUM for that table. All rows
inserted by transactions with XIDs older than this cutoff XID are
guaranteed to have been frozen. Similarly,
the datfrozenxid column of a database's
pg_database row is a lower bound on the unfrozen XIDs
appearing in that database — it is just the minimum of the
per-table relfrozenxid values within the database.
A convenient way to
examine this information is to execute queries such as:
SELECT c.oid::regclass as table_name,
greatest(age(c.relfrozenxid),age(t.relfrozenxid)) as age
FROM pg_class c
LEFT JOIN pg_class t ON c.reltoastrelid = t.oid
WHERE c.relkind IN ('r', 'm');
SELECT datname, age(datfrozenxid) FROM pg_database;
The age column measures the number of transactions from the
cutoff XID to the current transaction's XID.
VACUUM normally only scans pages that have been modified
since the last vacuum, but relfrozenxid can only be
advanced when every page of the table
that might contain unfrozen XIDs is scanned. This happens when
relfrozenxid is more than
vacuum_freeze_table_age transactions old, when
VACUUM's FREEZE option is used, or when all
pages that are not already all-frozen happen to
require vacuuming to remove dead row versions. When VACUUM
scans every page in the table that is not already all-frozen, it should
set age(relfrozenxid) to a value just a little more than the
vacuum_freeze_min_age setting
that was used (more by the number of transactions started since the
VACUUM started). If no relfrozenxid-advancing
VACUUM is issued on the table until
autovacuum_freeze_max_age is reached, an autovacuum will soon
be forced for the table.
If for some reason autovacuum fails to clear old XIDs from a table, the
system will begin to emit warning messages like this when the database's
oldest XIDs reach forty million transactions from the wraparound point:
WARNING: database "mydb" must be vacuumed within 39985967 transactions
HINT: To avoid a database shutdown, execute a database-wide VACUUM in that database.
(A manual VACUUM should fix the problem, as suggested by the
hint; but note that the VACUUM must be performed by a
superuser, else it will fail to process system catalogs and thus not
be able to advance the database's datfrozenxid.)
If these warnings are
ignored, the system will shut down and refuse to start any new
transactions once there are fewer than three million transactions left
until wraparound:
ERROR: database is not accepting commands to avoid wraparound data loss in database "mydb"
HINT: Stop the postmaster and vacuum that database in single-user mode.
The three-million-transaction safety margin exists to let the
administrator recover without data loss, by manually executing the
required VACUUM commands. However, since the system will not
execute commands once it has gone into the safety shutdown mode,
the only way to do this is to stop the server and start the server in single-user
mode to execute VACUUM. The shutdown mode is not enforced
in single-user mode. See the reference
page for details about using single-user mode.
Multixacts and WraparoundMultiXactIdwraparoundof multixact IDsMultixact IDs are used to support row locking by
multiple transactions. Since there is only limited space in a tuple
header to store lock information, that information is encoded as
a multiple transaction ID, or multixact ID for short,
whenever there is more than one transaction concurrently locking a
row. Information about which transaction IDs are included in any
particular multixact ID is stored separately in
the pg_multixact subdirectory, and only the multixact ID
appears in the xmax field in the tuple header.
Like transaction IDs, multixact IDs are implemented as a
32-bit counter and corresponding storage, all of which requires
careful aging management, storage cleanup, and wraparound handling.
There is a separate storage area which holds the list of members in
each multixact, which also uses a 32-bit counter and which must also
be managed.
Whenever VACUUM scans any part of a table, it will replace
any multixact ID it encounters which is older than
by a different value, which can be the zero value, a single
transaction ID, or a newer multixact ID. For each table,
pg_class.relminmxid stores the oldest
possible multixact ID still appearing in any tuple of that table.
If this value is older than
, an aggressive
vacuum is forced. As discussed in the previous section, an aggressive
vacuum means that only those pages which are known to be all-frozen will
be skipped. mxid_age() can be used on
pg_class.relminmxid to find its age.
Aggressive VACUUM scans, regardless of
what causes them, enable advancing the value for that table.
Eventually, as all tables in all databases are scanned and their
oldest multixact values are advanced, on-disk storage for older
multixacts can be removed.
As a safety device, an aggressive vacuum scan will
occur for any table whose multixact-age is greater than . Also, if the
storage occupied by multixacts members exceeds 2GB, aggressive vacuum
scans will occur more often for all tables, starting with those that
have the oldest multixact-age. Both of these kinds of aggressive
scans will occur even if autovacuum is nominally disabled.
The Autovacuum Daemonautovacuumgeneral informationPostgreSQL has an optional but highly
recommended feature called autovacuum,
whose purpose is to automate the execution of
VACUUM and ANALYZE commands.
When enabled, autovacuum checks for
tables that have had a large number of inserted, updated or deleted
tuples. These checks use the statistics collection facility;
therefore, autovacuum cannot be used unless is set to true.
In the default configuration, autovacuuming is enabled and the related
configuration parameters are appropriately set.
The autovacuum daemon actually consists of multiple processes.
There is a persistent daemon process, called the
autovacuum launcher, which is in charge of starting
autovacuum worker processes for all databases. The
launcher will distribute the work across time, attempting to start one
worker within each database every
seconds. (Therefore, if the installation has N databases,
a new worker will be launched every
autovacuum_naptime/N seconds.)
A maximum of worker processes
are allowed to run at the same time. If there are more than
autovacuum_max_workers databases to be processed,
the next database will be processed as soon as the first worker finishes.
Each worker process will check each table within its database and
execute VACUUM and/or ANALYZE as needed.
can be set to monitor
autovacuum workers' activity.
If several large tables all become eligible for vacuuming in a short
amount of time, all autovacuum workers might become occupied with
vacuuming those tables for a long period. This would result
in other tables and databases not being vacuumed until a worker becomes
available. There is no limit on how many workers might be in a
single database, but workers do try to avoid repeating work that has
already been done by other workers. Note that the number of running
workers does not count towards or
limits.
Tables whose relfrozenxid value is more than
transactions old are always
vacuumed (this also applies to those tables whose freeze max age has
been modified via storage parameters; see below). Otherwise, if the
number of tuples obsoleted since the last
VACUUM exceeds the vacuum threshold, the
table is vacuumed. The vacuum threshold is defined as:
vacuum threshold = vacuum base threshold + vacuum scale factor * number of tuples
where the vacuum base threshold is
,
the vacuum scale factor is
,
and the number of tuples is
pg_class.reltuples.
The table is also vacuumed if the number of tuples inserted since the last
vacuum has exceeded the defined insert threshold, which is defined as:
vacuum insert threshold = vacuum base insert threshold + vacuum insert scale factor * number of tuples
where the vacuum insert base threshold is
,
and vacuum insert scale factor is
.
Such vacuums may allow portions of the table to be marked as
all visible and also allow tuples to be frozen, which
can reduce the work required in subsequent vacuums.
For tables which receive INSERT operations but no or
almost no UPDATE/DELETE operations,
it may be beneficial to lower the table's
as this may allow
tuples to be frozen by earlier vacuums. The number of obsolete tuples and
the number of inserted tuples are obtained from the statistics collector;
it is a semi-accurate count updated by each UPDATE,
DELETE and INSERT operation. (It is
only semi-accurate because some information might be lost under heavy
load.) If the relfrozenxid value of the table
is more than vacuum_freeze_table_age transactions old,
an aggressive vacuum is performed to freeze old tuples and advance
relfrozenxid; otherwise, only pages that have been modified
since the last vacuum are scanned.
For analyze, a similar condition is used: the threshold, defined as:
analyze threshold = analyze base threshold + analyze scale factor * number of tuples
is compared to the total number of tuples inserted, updated, or deleted
since the last ANALYZE.
Partitioned tables are not processed by autovacuum. Statistics
should be collected by running a manual ANALYZE when it is
first populated, and again whenever the distribution of data in its
partitions changes significantly.
Temporary tables cannot be accessed by autovacuum. Therefore,
appropriate vacuum and analyze operations should be performed via
session SQL commands.
The default thresholds and scale factors are taken from
postgresql.conf, but it is possible to override them
(and many other autovacuum control parameters) on a per-table basis; see
for more information.
If a setting has been changed via a table's storage parameters, that value
is used when processing that table; otherwise the global settings are
used. See for more details on
the global settings.
When multiple workers are running, the autovacuum cost delay parameters
(see ) are
balanced among all the running workers, so that the
total I/O impact on the system is the same regardless of the number
of workers actually running. However, any workers processing tables whose
per-table autovacuum_vacuum_cost_delay or
autovacuum_vacuum_cost_limit storage parameters have been set
are not considered in the balancing algorithm.
Autovacuum workers generally don't block other commands. If a process
attempts to acquire a lock that conflicts with the
SHARE UPDATE EXCLUSIVE lock held by autovacuum, lock
acquisition will interrupt the autovacuum. For conflicting lock modes,
see . However, if the autovacuum
is running to prevent transaction ID wraparound (i.e., the autovacuum query
name in the pg_stat_activity view ends with
(to prevent wraparound)), the autovacuum is not
automatically interrupted.
Regularly running commands that acquire locks conflicting with a
SHARE UPDATE EXCLUSIVE lock (e.g., ANALYZE) can
effectively prevent autovacuums from ever completing.
Routine Reindexingreindex
In some situations it is worthwhile to rebuild indexes periodically
with the command or a series of individual
rebuilding steps.
B-tree index pages that have become completely empty are reclaimed for
re-use. However, there is still a possibility
of inefficient use of space: if all but a few index keys on a page have
been deleted, the page remains allocated. Therefore, a usage
pattern in which most, but not all, keys in each range are eventually
deleted will see poor use of space. For such usage patterns,
periodic reindexing is recommended.
The potential for bloat in non-B-tree indexes has not been well
researched. It is a good idea to periodically monitor the index's physical
size when using any non-B-tree index type.
Also, for B-tree indexes, a freshly-constructed index is slightly faster to
access than one that has been updated many times because logically
adjacent pages are usually also physically adjacent in a newly built index.
(This consideration does not apply to non-B-tree indexes.) It
might be worthwhile to reindex periodically just to improve access speed.
can be used safely and easily in all cases.
This command requires an ACCESS EXCLUSIVE lock by
default, hence it is often preferable to execute it with its
CONCURRENTLY option, which requires only a
SHARE UPDATE EXCLUSIVE lock.
Log File Maintenanceserver loglog file maintenance
It is a good idea to save the database server's log output
somewhere, rather than just discarding it via /dev/null.
The log output is invaluable when diagnosing
problems. However, the log output tends to be voluminous
(especially at higher debug levels) so you won't want to save it
indefinitely. You need to rotate the log files so that
new log files are started and old ones removed after a reasonable
period of time.
If you simply direct the stderr of
postgres into a
file, you will have log output, but
the only way to truncate the log file is to stop and restart
the server. This might be acceptable if you are using
PostgreSQL in a development environment,
but few production servers would find this behavior acceptable.
A better approach is to send the server's
stderr output to some type of log rotation program.
There is a built-in log rotation facility, which you can use by
setting the configuration parameter logging_collector to
true in postgresql.conf. The control
parameters for this program are described in . You can also use this approach
to capture the log data in machine readable CSV
(comma-separated values) format.
Alternatively, you might prefer to use an external log rotation
program if you have one that you are already using with other
server software. For example, the rotatelogs
tool included in the Apache distribution
can be used with PostgreSQL. One way to
do this is to pipe the server's
stderr output to the desired program.
If you start the server with
pg_ctl, then stderr
is already redirected to stdout, so you just need a
pipe command, for example:
pg_ctl start | rotatelogs /var/log/pgsql_log 86400
You can combine these approaches by setting up logrotate
to collect log files produced by PostgreSQL built-in
logging collector. In this case, the logging collector defines the names and
location of the log files, while logrotate
periodically archives these files. When initiating log rotation,
logrotate must ensure that the application
sends further output to the new file. This is commonly done with a
postrotate script that sends a SIGHUP
signal to the application, which then reopens the log file.
In PostgreSQL, you can run pg_ctl
with the logrotate option instead. When the server receives
this command, the server either switches to a new log file or reopens the
existing file, depending on the logging configuration
(see ).
When using static log file names, the server might fail to reopen the log
file if the max open file limit is reached or a file table overflow occurs.
In this case, log messages are sent to the old log file until a
successful log rotation. If logrotate is
configured to compress the log file and delete it, the server may lose
the messages logged in this time frame. To avoid this issue, you can
configure the logging collector to dynamically assign log file names
and use a prerotate script to ignore open log files.
Another production-grade approach to managing log output is to
send it to syslog and let
syslog deal with file rotation. To do this, set the
configuration parameter log_destination to syslog
(to log to syslog only) in
postgresql.conf. Then you can send a SIGHUP
signal to the syslog daemon whenever you want to force it
to start writing a new log file. If you want to automate log
rotation, the logrotate program can be
configured to work with log files from
syslog.
On many systems, however, syslog is not very reliable,
particularly with large log messages; it might truncate or drop messages
just when you need them the most. Also, on Linux,
syslog will flush each message to disk, yielding poor
performance. (You can use a - at the start of the file name
in the syslog configuration file to disable syncing.)
Note that all the solutions described above take care of starting new
log files at configurable intervals, but they do not handle deletion
of old, no-longer-useful log files. You will probably want to set
up a batch job to periodically delete old log files. Another possibility
is to configure the rotation program so that old log files are overwritten
cyclically.
pgBadger
is an external project that does sophisticated log file analysis.
check_postgres
provides Nagios alerts when important messages appear in the log
files, as well as detection of many other extraordinary conditions.