Synapse's database schema is stored in the synapse.storage.schema
module.
Synapse supports splitting its datastore across multiple physical databases (which can be useful for large installations), and the schema files are therefore split according to the logical database they apply to.
At the time of writing, the following "logical" databases are supported:
state
- used to store Matrix room state (more specifically, state_groups
,
their relationships and contents).main
- stores everything else.Additionally, the common
directory contains schema files for tables which must be
present on all physical databases.
Synapse manages its database schema via "schema versions". These are mainly used to help avoid confusion if the Synapse codebase is rolled back after the database is updated. They work as follows:
The Synapse codebase defines a constant synapse.storage.schema.SCHEMA_VERSION
which represents the expectations made about the database by that version. For
example, as of Synapse v1.36, this is 59
.
The database stores a "compatibility version" in
schema_compat_version.compat_version
which defines the SCHEMA_VERSION
of the
oldest version of Synapse which will work with the database. On startup, if
compat_version
is found to be newer than SCHEMA_VERSION
, Synapse will refuse to
start.
Synapse automatically updates this field from
synapse.storage.schema.SCHEMA_COMPAT_VERSION
.
delta
file), synapse.storage.schema.SCHEMA_COMPAT_VERSION
is also updated
so that administrators can not accidentally roll back to a too-old version of Synapse.Generally, the goal is to maintain compatibility with at least one or two previous releases of Synapse, so any substantial change tends to require multiple releases and a bit of forward-planning to get right.
As a worked example: we want to remove the room_stats_historical
table. Here is how it
might pan out.
Replace any code that reads from room_stats_historical
with alternative
implementations, but keep writing to it in case of rollback to an earlier version.
Also, increase synapse.storage.schema.SCHEMA_VERSION
. In this
instance, there is no existing code which reads from room_stats_historical
, so
our starting point is:
v1.36.0: SCHEMA_VERSION=59
, SCHEMA_COMPAT_VERSION=59
Next (say in Synapse v1.37.0): remove the code that writes to
room_stats_historical
, but don’t yet remove the table in case of rollback to
v1.36.0. Again, we increase synapse.storage.schema.SCHEMA_VERSION
, but
because we have not broken compatibility with v1.36, we do not yet update
SCHEMA_COMPAT_VERSION
. We now have:
v1.37.0: SCHEMA_VERSION=60
, SCHEMA_COMPAT_VERSION=59
.
Later (say in Synapse v1.38.0): we can remove the table altogether. This will
break compatibility with v1.36.0, so we must update SCHEMA_COMPAT_VERSION
accordingly.
There is no need to update synapse.storage.schema.SCHEMA_VERSION
, since there is no
change to the Synapse codebase here. So we end up with:
v1.38.0: SCHEMA_VERSION=60
, SCHEMA_COMPAT_VERSION=60
.
If in doubt about whether to update SCHEMA_VERSION
or not, it is generally best to
lean towards doing so.
In the full_schemas
directories, only the most recently-numbered snapshot is used
(54
at the time of writing). Older snapshots (eg, 16
) are present for historical
reference only.
If you want to recreate these schemas, they need to be made from a database that has had all background updates run.
To do so, use scripts-dev/make_full_schema.sh
. This will produce new
full.sql.postgres
and full.sql.sqlite
files.
Ensure postgres is installed, then run:
./scripts-dev/make_full_schema.sh -p postgres_username -o output_dir/
NB at the time of writing, this script predates the split into separate state
/main
databases so will require updates to handle that correctly.
Delta files define the steps required to upgrade the database from an earlier version. They can be written as either a file containing a series of SQL statements, or a Python module.
Synapse remembers which delta files it has applied to a database (they are stored in the
applied_schema_deltas
table) and will not re-apply them (even if a given file is
subsequently updated).
Delta files should be placed in a directory named synapse/storage/schema/<database>/delta/<version>/
.
They are applied in alphanumeric order, so by convention the first two characters
of the filename should be an integer such as 01
, to put the file in the right order.
These should be named *.sql
, or — for changes which should only be applied for a
given database engine — *.sql.posgres
or *.sql.sqlite
. For example, a delta which
adds a new column to the foo
table might be called 01add_bar_to_foo.sql
.
Note that our SQL parser is a bit simple - it understands comments (--
and /*...*/
),
but complex statements which require a ;
in the middle of them (such as CREATE
TRIGGER
) are beyond it and you'll have to use a Python delta file.
For more flexibility, a delta file can take the form of a python module. These should
be named *.py
. Note that database-engine-specific modules are not supported here –
instead you can write if isinstance(database_engine, PostgresEngine)
or similar.
A Python delta module should define either or both of the following functions:
import synapse.config.homeserver
import synapse.storage.engines
import synapse.storage.types
def run_create(
cur: synapse.storage.types.Cursor,
database_engine: synapse.storage.engines.BaseDatabaseEngine,
) -> None:
"""Called whenever an existing or new database is to be upgraded"""
...
def run_upgrade(
cur: synapse.storage.types.Cursor,
database_engine: synapse.storage.engines.BaseDatabaseEngine,
config: synapse.config.homeserver.HomeServerConfig,
) -> None:
"""Called whenever an existing database is to be upgraded."""
...
Boolean columns require special treatment, since SQLite treats booleans the same as integers.
There are three separate aspects to this:
Any new boolean column must be added to the BOOLEAN_COLUMNS
list in
synapse/_scripts/synapse_port_db.py
. This tells the port script to cast
the integer value from SQLite to a boolean before writing the value to the
postgres database.
Before SQLite 3.23, TRUE
and FALSE
were not recognised as constants by
SQLite, and the IS [NOT] TRUE
/IS [NOT] FALSE
operators were not
supported. This makes it necessary to avoid using TRUE
and FALSE
constants in SQL commands.
For example, to insert a TRUE
value into the database, write:
txn.execute("INSERT INTO tbl(col) VALUES (?)", (True, ))
Default values for new boolean columns present a particular difficulty. Generally it is best to create separate schema files for Postgres and SQLite. For example:
# in 00delta.sql.postgres:
ALTER TABLE tbl ADD COLUMN col BOOLEAN DEFAULT FALSE;
# in 00delta.sql.sqlite:
ALTER TABLE tbl ADD COLUMN col BOOLEAN DEFAULT 0;
Note that there is a particularly insidious failure mode here: the Postgres
flavour will be accepted by SQLite 3.22, but will give a column whose
default value is the string "FALSE"
- which, when cast back to a boolean
in Python, evaluates to True
.
event_id
global uniquenessIn room versions 1
and 2
it's possible to end up with two events with the
same event_id
(in the same or different rooms). After room version 3
, that
can only happen with a hash collision, which we basically hope will never
happen.
There are several places in Synapse and even Matrix APIs like GET
/_matrix/federation/v1/event/{eventId}
where we assume that event IDs are globally unique.
But hash collisions are still possible, and by treating event IDs as room
scoped, we can reduce the possibility of a hash collision. When scoping
event_id
in the database schema, it should be also accompanied by room_id
(PRIMARY KEY (room_id, event_id)
) and lookups should be done through the pair
(room_id, event_id)
.
There has been a lot of debate on this in places like https://github.com/matrix-org/matrix-spec-proposals/issues/2779 and MSC2848 which has no resolution yet (as of 2022-09-01).