MatrixSynapse/synapse/state/__init__.py

818 lines
28 KiB
Python

# Copyright 2014-2016 OpenMarket Ltd
# Copyright 2018 New Vector Ltd
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import heapq
import logging
from collections import defaultdict, namedtuple
from typing import (
Any,
Awaitable,
Callable,
Collection,
DefaultDict,
Dict,
FrozenSet,
Iterable,
List,
Optional,
Sequence,
Set,
Tuple,
Union,
overload,
)
import attr
from frozendict import frozendict
from prometheus_client import Counter, Histogram
from typing_extensions import Literal
from synapse.api.constants import EventTypes
from synapse.api.room_versions import KNOWN_ROOM_VERSIONS, StateResolutionVersions
from synapse.events import EventBase
from synapse.events.snapshot import EventContext
from synapse.logging.context import ContextResourceUsage
from synapse.logging.utils import log_function
from synapse.state import v1, v2
from synapse.storage.databases.main.events_worker import EventRedactBehaviour
from synapse.storage.roommember import ProfileInfo
from synapse.types import StateMap
from synapse.util.async_helpers import Linearizer
from synapse.util.caches.expiringcache import ExpiringCache
from synapse.util.metrics import Measure, measure_func
logger = logging.getLogger(__name__)
metrics_logger = logging.getLogger("synapse.state.metrics")
# Metrics for number of state groups involved in a resolution.
state_groups_histogram = Histogram(
"synapse_state_number_state_groups_in_resolution",
"Number of state groups used when performing a state resolution",
buckets=(1, 2, 3, 5, 7, 10, 15, 20, 50, 100, 200, 500, "+Inf"),
)
KeyStateTuple = namedtuple("KeyStateTuple", ("context", "type", "state_key"))
EVICTION_TIMEOUT_SECONDS = 60 * 60
_NEXT_STATE_ID = 1
POWER_KEY = (EventTypes.PowerLevels, "")
def _gen_state_id():
global _NEXT_STATE_ID
s = "X%d" % (_NEXT_STATE_ID,)
_NEXT_STATE_ID += 1
return s
class _StateCacheEntry:
__slots__ = ["state", "state_group", "state_id", "prev_group", "delta_ids"]
def __init__(
self,
state: StateMap[str],
state_group: Optional[int],
prev_group: Optional[int] = None,
delta_ids: Optional[StateMap[str]] = None,
):
# A map from (type, state_key) to event_id.
self.state = frozendict(state)
# the ID of a state group if one and only one is involved.
# otherwise, None otherwise?
self.state_group = state_group
self.prev_group = prev_group
self.delta_ids = frozendict(delta_ids) if delta_ids is not None else None
# The `state_id` is a unique ID we generate that can be used as ID for
# this collection of state. Usually this would be the same as the
# state group, but on worker instances we can't generate a new state
# group each time we resolve state, so we generate a separate one that
# isn't persisted and is used solely for caches.
# `state_id` is either a state_group (and so an int) or a string. This
# ensures we don't accidentally persist a state_id as a stateg_group
if state_group:
self.state_id = state_group
else:
self.state_id = _gen_state_id()
def __len__(self):
return len(self.state)
class StateHandler:
"""Fetches bits of state from the stores, and does state resolution
where necessary
"""
def __init__(self, hs):
self.clock = hs.get_clock()
self.store = hs.get_datastore()
self.state_store = hs.get_storage().state
self.hs = hs
self._state_resolution_handler = hs.get_state_resolution_handler()
@overload
async def get_current_state(
self,
room_id: str,
event_type: Literal[None] = None,
state_key: str = "",
latest_event_ids: Optional[List[str]] = None,
) -> StateMap[EventBase]:
...
@overload
async def get_current_state(
self,
room_id: str,
event_type: str,
state_key: str = "",
latest_event_ids: Optional[List[str]] = None,
) -> Optional[EventBase]:
...
async def get_current_state(
self,
room_id: str,
event_type: Optional[str] = None,
state_key: str = "",
latest_event_ids: Optional[List[str]] = None,
) -> Union[Optional[EventBase], StateMap[EventBase]]:
"""Retrieves the current state for the room. This is done by
calling `get_latest_events_in_room` to get the leading edges of the
event graph and then resolving any of the state conflicts.
This is equivalent to getting the state of an event that were to send
next before receiving any new events.
Returns:
If `event_type` is specified, then the method returns only the one
event (or None) with that `event_type` and `state_key`.
Otherwise, a map from (type, state_key) to event.
"""
if not latest_event_ids:
latest_event_ids = await self.store.get_latest_event_ids_in_room(room_id)
assert latest_event_ids is not None
logger.debug("calling resolve_state_groups from get_current_state")
ret = await self.resolve_state_groups_for_events(room_id, latest_event_ids)
state = ret.state
if event_type:
event_id = state.get((event_type, state_key))
event = None
if event_id:
event = await self.store.get_event(event_id, allow_none=True)
return event
state_map = await self.store.get_events(
list(state.values()), get_prev_content=False
)
return {
key: state_map[e_id] for key, e_id in state.items() if e_id in state_map
}
async def get_current_state_ids(
self, room_id: str, latest_event_ids: Optional[Iterable[str]] = None
) -> StateMap[str]:
"""Get the current state, or the state at a set of events, for a room
Args:
room_id:
latest_event_ids: if given, the forward extremities to resolve. If
None, we look them up from the database (via a cache).
Returns:
the state dict, mapping from (event_type, state_key) -> event_id
"""
if not latest_event_ids:
latest_event_ids = await self.store.get_latest_event_ids_in_room(room_id)
assert latest_event_ids is not None
logger.debug("calling resolve_state_groups from get_current_state_ids")
ret = await self.resolve_state_groups_for_events(room_id, latest_event_ids)
return ret.state
async def get_current_users_in_room(
self, room_id: str, latest_event_ids: List[str]
) -> Dict[str, ProfileInfo]:
"""
Get the users who are currently in a room.
Note: This is much slower than using the equivalent method
`DataStore.get_users_in_room` or `DataStore.get_users_in_room_with_profiles`,
so this should only be used when wanting the users at a particular point
in the room.
Args:
room_id: The ID of the room.
latest_event_ids: Precomputed list of latest event IDs. Will be computed if None.
Returns:
Dictionary of user IDs to their profileinfo.
"""
assert latest_event_ids is not None
logger.debug("calling resolve_state_groups from get_current_users_in_room")
entry = await self.resolve_state_groups_for_events(room_id, latest_event_ids)
return await self.store.get_joined_users_from_state(room_id, entry)
async def get_current_hosts_in_room(self, room_id: str) -> Set[str]:
event_ids = await self.store.get_latest_event_ids_in_room(room_id)
return await self.get_hosts_in_room_at_events(room_id, event_ids)
async def get_hosts_in_room_at_events(
self, room_id: str, event_ids: List[str]
) -> Set[str]:
"""Get the hosts that were in a room at the given event ids
Args:
room_id:
event_ids:
Returns:
The hosts in the room at the given events
"""
entry = await self.resolve_state_groups_for_events(room_id, event_ids)
return await self.store.get_joined_hosts(room_id, entry)
async def compute_event_context(
self, event: EventBase, old_state: Optional[Iterable[EventBase]] = None
) -> EventContext:
"""Build an EventContext structure for the event.
This works out what the current state should be for the event, and
generates a new state group if necessary.
Args:
event:
old_state: The state at the event if it can't be
calculated from existing events. This is normally only specified
when receiving an event from federation where we don't have the
prev events for, e.g. when backfilling.
Returns:
The event context.
"""
if event.internal_metadata.is_outlier():
# If this is an outlier, then we know it shouldn't have any current
# state. Certainly store.get_current_state won't return any, and
# persisting the event won't store the state group.
# FIXME: why do we populate current_state_ids? I thought the point was
# that we weren't supposed to have any state for outliers?
if old_state:
prev_state_ids = {(s.type, s.state_key): s.event_id for s in old_state}
if event.is_state():
current_state_ids = dict(prev_state_ids)
key = (event.type, event.state_key)
current_state_ids[key] = event.event_id
else:
current_state_ids = prev_state_ids
else:
current_state_ids = {}
prev_state_ids = {}
# We don't store state for outliers, so we don't generate a state
# group for it.
context = EventContext.with_state(
state_group=None,
state_group_before_event=None,
current_state_ids=current_state_ids,
prev_state_ids=prev_state_ids,
)
return context
#
# first of all, figure out the state before the event
#
if old_state:
# if we're given the state before the event, then we use that
state_ids_before_event: StateMap[str] = {
(s.type, s.state_key): s.event_id for s in old_state
}
state_group_before_event = None
state_group_before_event_prev_group = None
deltas_to_state_group_before_event = None
entry = None
else:
# otherwise, we'll need to resolve the state across the prev_events.
logger.debug("calling resolve_state_groups from compute_event_context")
entry = await self.resolve_state_groups_for_events(
event.room_id, event.prev_event_ids()
)
state_ids_before_event = entry.state
state_group_before_event = entry.state_group
state_group_before_event_prev_group = entry.prev_group
deltas_to_state_group_before_event = entry.delta_ids
#
# make sure that we have a state group at that point. If it's not a state event,
# that will be the state group for the new event. If it *is* a state event,
# it might get rejected (in which case we'll need to persist it with the
# previous state group)
#
if not state_group_before_event:
state_group_before_event = await self.state_store.store_state_group(
event.event_id,
event.room_id,
prev_group=state_group_before_event_prev_group,
delta_ids=deltas_to_state_group_before_event,
current_state_ids=state_ids_before_event,
)
# Assign the new state group to the cached state entry.
#
# Note that this can race in that we could generate multiple state
# groups for the same state entry, but that is just inefficient
# rather than dangerous.
if entry and entry.state_group is None:
entry.state_group = state_group_before_event
#
# now if it's not a state event, we're done
#
if not event.is_state():
return EventContext.with_state(
state_group_before_event=state_group_before_event,
state_group=state_group_before_event,
current_state_ids=state_ids_before_event,
prev_state_ids=state_ids_before_event,
prev_group=state_group_before_event_prev_group,
delta_ids=deltas_to_state_group_before_event,
)
#
# otherwise, we'll need to create a new state group for after the event
#
key = (event.type, event.state_key)
if key in state_ids_before_event:
replaces = state_ids_before_event[key]
if replaces != event.event_id:
event.unsigned["replaces_state"] = replaces
state_ids_after_event = dict(state_ids_before_event)
state_ids_after_event[key] = event.event_id
delta_ids = {key: event.event_id}
state_group_after_event = await self.state_store.store_state_group(
event.event_id,
event.room_id,
prev_group=state_group_before_event,
delta_ids=delta_ids,
current_state_ids=state_ids_after_event,
)
return EventContext.with_state(
state_group=state_group_after_event,
state_group_before_event=state_group_before_event,
current_state_ids=state_ids_after_event,
prev_state_ids=state_ids_before_event,
prev_group=state_group_before_event,
delta_ids=delta_ids,
)
@measure_func()
async def resolve_state_groups_for_events(
self, room_id: str, event_ids: Iterable[str]
) -> _StateCacheEntry:
"""Given a list of event_ids this method fetches the state at each
event, resolves conflicts between them and returns them.
Args:
room_id
event_ids
Returns:
The resolved state
"""
logger.debug("resolve_state_groups event_ids %s", event_ids)
# map from state group id to the state in that state group (where
# 'state' is a map from state key to event id)
# dict[int, dict[(str, str), str]]
state_groups_ids = await self.state_store.get_state_groups_ids(
room_id, event_ids
)
if len(state_groups_ids) == 0:
return _StateCacheEntry(state={}, state_group=None)
elif len(state_groups_ids) == 1:
name, state_list = list(state_groups_ids.items()).pop()
prev_group, delta_ids = await self.state_store.get_state_group_delta(name)
return _StateCacheEntry(
state=state_list,
state_group=name,
prev_group=prev_group,
delta_ids=delta_ids,
)
room_version = await self.store.get_room_version_id(room_id)
result = await self._state_resolution_handler.resolve_state_groups(
room_id,
room_version,
state_groups_ids,
None,
state_res_store=StateResolutionStore(self.store),
)
return result
async def resolve_events(
self,
room_version: str,
state_sets: Collection[Iterable[EventBase]],
event: EventBase,
) -> StateMap[EventBase]:
logger.info(
"Resolving state for %s with %d groups", event.room_id, len(state_sets)
)
state_set_ids = [
{(ev.type, ev.state_key): ev.event_id for ev in st} for st in state_sets
]
state_map = {ev.event_id: ev for st in state_sets for ev in st}
new_state = await self._state_resolution_handler.resolve_events_with_store(
event.room_id,
room_version,
state_set_ids,
event_map=state_map,
state_res_store=StateResolutionStore(self.store),
)
return {key: state_map[ev_id] for key, ev_id in new_state.items()}
@attr.s(slots=True)
class _StateResMetrics:
"""Keeps track of some usage metrics about state res."""
# System and User CPU time, in seconds
cpu_time = attr.ib(type=float, default=0.0)
# time spent on database transactions (excluding scheduling time). This roughly
# corresponds to the amount of work done on the db server, excluding event fetches.
db_time = attr.ib(type=float, default=0.0)
# number of events fetched from the db.
db_events = attr.ib(type=int, default=0)
_biggest_room_by_cpu_counter = Counter(
"synapse_state_res_cpu_for_biggest_room_seconds",
"CPU time spent performing state resolution for the single most expensive "
"room for state resolution",
)
_biggest_room_by_db_counter = Counter(
"synapse_state_res_db_for_biggest_room_seconds",
"Database time spent performing state resolution for the single most "
"expensive room for state resolution",
)
class StateResolutionHandler:
"""Responsible for doing state conflict resolution.
Note that the storage layer depends on this handler, so all functions must
be storage-independent.
"""
def __init__(self, hs):
self.clock = hs.get_clock()
self.resolve_linearizer = Linearizer(name="state_resolve_lock")
# dict of set of event_ids -> _StateCacheEntry.
self._state_cache: ExpiringCache[
FrozenSet[int], _StateCacheEntry
] = ExpiringCache(
cache_name="state_cache",
clock=self.clock,
max_len=100000,
expiry_ms=EVICTION_TIMEOUT_SECONDS * 1000,
iterable=True,
reset_expiry_on_get=True,
)
#
# stuff for tracking time spent on state-res by room
#
# tracks the amount of work done on state res per room
self._state_res_metrics: DefaultDict[str, _StateResMetrics] = defaultdict(
_StateResMetrics
)
self.clock.looping_call(self._report_metrics, 120 * 1000)
@log_function
async def resolve_state_groups(
self,
room_id: str,
room_version: str,
state_groups_ids: Dict[int, StateMap[str]],
event_map: Optional[Dict[str, EventBase]],
state_res_store: "StateResolutionStore",
) -> _StateCacheEntry:
"""Resolves conflicts between a set of state groups
Always generates a new state group (unless we hit the cache), so should
not be called for a single state group
Args:
room_id: room we are resolving for (used for logging and sanity checks)
room_version: version of the room
state_groups_ids:
A map from state group id to the state in that state group
(where 'state' is a map from state key to event id)
event_map:
a dict from event_id to event, for any events that we happen to
have in flight (eg, those currently being persisted). This will be
used as a starting point for finding the state we need; any missing
events will be requested via state_res_store.
If None, all events will be fetched via state_res_store.
state_res_store
Returns:
The resolved state
"""
group_names = frozenset(state_groups_ids.keys())
with (await self.resolve_linearizer.queue(group_names)):
cache = self._state_cache.get(group_names, None)
if cache:
return cache
logger.info(
"Resolving state for %s with groups %s",
room_id,
list(group_names),
)
state_groups_histogram.observe(len(state_groups_ids))
new_state = await self.resolve_events_with_store(
room_id,
room_version,
list(state_groups_ids.values()),
event_map=event_map,
state_res_store=state_res_store,
)
# if the new state matches any of the input state groups, we can
# use that state group again. Otherwise we will generate a state_id
# which will be used as a cache key for future resolutions, but
# not get persisted.
with Measure(self.clock, "state.create_group_ids"):
cache = _make_state_cache_entry(new_state, state_groups_ids)
self._state_cache[group_names] = cache
return cache
async def resolve_events_with_store(
self,
room_id: str,
room_version: str,
state_sets: Sequence[StateMap[str]],
event_map: Optional[Dict[str, EventBase]],
state_res_store: "StateResolutionStore",
) -> StateMap[str]:
"""
Args:
room_id: the room we are working in
room_version: Version of the room
state_sets: List of dicts of (type, state_key) -> event_id,
which are the different state groups to resolve.
event_map:
a dict from event_id to event, for any events that we happen to
have in flight (eg, those currently being persisted). This will be
used as a starting point for finding the state we need; any missing
events will be requested via state_map_factory.
If None, all events will be fetched via state_res_store.
state_res_store: a place to fetch events from
Returns:
a map from (type, state_key) to event_id.
"""
try:
with Measure(self.clock, "state._resolve_events") as m:
v = KNOWN_ROOM_VERSIONS[room_version]
if v.state_res == StateResolutionVersions.V1:
return await v1.resolve_events_with_store(
room_id, state_sets, event_map, state_res_store.get_events
)
else:
return await v2.resolve_events_with_store(
self.clock,
room_id,
room_version,
state_sets,
event_map,
state_res_store,
)
finally:
self._record_state_res_metrics(room_id, m.get_resource_usage())
def _record_state_res_metrics(self, room_id: str, rusage: ContextResourceUsage):
room_metrics = self._state_res_metrics[room_id]
room_metrics.cpu_time += rusage.ru_utime + rusage.ru_stime
room_metrics.db_time += rusage.db_txn_duration_sec
room_metrics.db_events += rusage.evt_db_fetch_count
def _report_metrics(self):
if not self._state_res_metrics:
# no state res has happened since the last iteration: don't bother logging.
return
self._report_biggest(
lambda i: i.cpu_time,
"CPU time",
_biggest_room_by_cpu_counter,
)
self._report_biggest(
lambda i: i.db_time,
"DB time",
_biggest_room_by_db_counter,
)
self._state_res_metrics.clear()
def _report_biggest(
self,
extract_key: Callable[[_StateResMetrics], Any],
metric_name: str,
prometheus_counter_metric: Counter,
) -> None:
"""Report metrics on the biggest rooms for state res
Args:
extract_key: a callable which, given a _StateResMetrics, extracts a single
metric to sort by.
metric_name: the name of the metric we have extracted, for the log line
prometheus_counter_metric: a prometheus metric recording the sum of the
the extracted metric
"""
n_to_log = 10
if not metrics_logger.isEnabledFor(logging.DEBUG):
# only need the most expensive if we don't have debug logging, which
# allows nlargest() to degrade to max()
n_to_log = 1
items = self._state_res_metrics.items()
# log the N biggest rooms
biggest: List[Tuple[str, _StateResMetrics]] = heapq.nlargest(
n_to_log, items, key=lambda i: extract_key(i[1])
)
metrics_logger.debug(
"%i biggest rooms for state-res by %s: %s",
len(biggest),
metric_name,
["%s (%gs)" % (r, extract_key(m)) for (r, m) in biggest],
)
# report info on the single biggest to prometheus
_, biggest_metrics = biggest[0]
prometheus_counter_metric.inc(extract_key(biggest_metrics))
def _make_state_cache_entry(
new_state: StateMap[str], state_groups_ids: Dict[int, StateMap[str]]
) -> _StateCacheEntry:
"""Given a resolved state, and a set of input state groups, pick one to base
a new state group on (if any), and return an appropriately-constructed
_StateCacheEntry.
Args:
new_state: resolved state map (mapping from (type, state_key) to event_id)
state_groups_ids:
map from state group id to the state in that state group (where
'state' is a map from state key to event id)
Returns:
The cache entry.
"""
# if the new state matches any of the input state groups, we can
# use that state group again. Otherwise we will generate a state_id
# which will be used as a cache key for future resolutions, but
# not get persisted.
# first look for exact matches
new_state_event_ids = set(new_state.values())
for sg, state in state_groups_ids.items():
if len(new_state_event_ids) != len(state):
continue
old_state_event_ids = set(state.values())
if new_state_event_ids == old_state_event_ids:
# got an exact match.
return _StateCacheEntry(state=new_state, state_group=sg)
# TODO: We want to create a state group for this set of events, to
# increase cache hits, but we need to make sure that it doesn't
# end up as a prev_group without being added to the database
# failing that, look for the closest match.
prev_group = None
delta_ids: Optional[StateMap[str]] = None
for old_group, old_state in state_groups_ids.items():
n_delta_ids = {k: v for k, v in new_state.items() if old_state.get(k) != v}
if not delta_ids or len(n_delta_ids) < len(delta_ids):
prev_group = old_group
delta_ids = n_delta_ids
return _StateCacheEntry(
state=new_state, state_group=None, prev_group=prev_group, delta_ids=delta_ids
)
@attr.s(slots=True)
class StateResolutionStore:
"""Interface that allows state resolution algorithms to access the database
in well defined way.
Args:
store (DataStore)
"""
store = attr.ib()
def get_events(
self, event_ids: Iterable[str], allow_rejected: bool = False
) -> Awaitable[Dict[str, EventBase]]:
"""Get events from the database
Args:
event_ids: The event_ids of the events to fetch
allow_rejected: If True return rejected events.
Returns:
An awaitable which resolves to a dict from event_id to event.
"""
return self.store.get_events(
event_ids,
redact_behaviour=EventRedactBehaviour.AS_IS,
get_prev_content=False,
allow_rejected=allow_rejected,
)
def get_auth_chain_difference(
self, room_id: str, state_sets: List[Set[str]]
) -> Awaitable[Set[str]]:
"""Given sets of state events figure out the auth chain difference (as
per state res v2 algorithm).
This equivalent to fetching the full auth chain for each set of state
and returning the events that don't appear in each and every auth
chain.
Returns:
An awaitable that resolves to a set of event IDs.
"""
return self.store.get_auth_chain_difference(room_id, state_sets)