#!/usr/bin/env python # Copyright 2021 The Matrix.org Foundation C.I.C. # # 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. # This script reads environment variables and generates a shared Synapse worker, # nginx and supervisord configs depending on the workers requested. # # The environment variables it reads are: # * SYNAPSE_SERVER_NAME: The desired server_name of the homeserver. # * SYNAPSE_REPORT_STATS: Whether to report stats. # * SYNAPSE_WORKER_TYPES: A comma separated list of worker names as specified in WORKERS_CONFIG # below. Leave empty for no workers. Add a ':' and a number at the end to # multiply that worker. Append multiple worker types with '+' to merge the # worker types into a single worker. Add a name and a '=' to the front of a # worker type to give this instance a name in logs and nginx. # Examples: # SYNAPSE_WORKER_TYPES='event_persister, federation_sender, client_reader' # SYNAPSE_WORKER_TYPES='event_persister:2, federation_sender:2, client_reader' # SYNAPSE_WORKER_TYPES='stream_writers=account_data+presence+typing' # * SYNAPSE_AS_REGISTRATION_DIR: If specified, a directory in which .yaml and .yml files # will be treated as Application Service registration files. # * SYNAPSE_TLS_CERT: Path to a TLS certificate in PEM format. # * SYNAPSE_TLS_KEY: Path to a TLS key. If this and SYNAPSE_TLS_CERT are specified, # Nginx will be configured to serve TLS on port 8448. # * SYNAPSE_USE_EXPERIMENTAL_FORKING_LAUNCHER: Whether to use the forking launcher, # only intended for usage in Complement at the moment. # No stability guarantees are provided. # * SYNAPSE_LOG_LEVEL: Set this to DEBUG, INFO, WARNING or ERROR to change the # log level. INFO is the default. # * SYNAPSE_LOG_SENSITIVE: If unset, SQL and SQL values won't be logged, # regardless of the SYNAPSE_LOG_LEVEL setting. # # NOTE: According to Complement's ENTRYPOINT expectations for a homeserver image (as defined # in the project's README), this script may be run multiple times, and functionality should # continue to work if so. import os import platform import re import subprocess import sys from collections import defaultdict from itertools import chain from pathlib import Path from typing import ( Any, Dict, List, Mapping, MutableMapping, NoReturn, Optional, Set, SupportsIndex, ) import yaml from jinja2 import Environment, FileSystemLoader MAIN_PROCESS_HTTP_LISTENER_PORT = 8080 MAIN_PROCESS_INSTANCE_NAME = "main" MAIN_PROCESS_LOCALHOST_ADDRESS = "127.0.0.1" MAIN_PROCESS_REPLICATION_PORT = 9093 # A simple name used as a placeholder in the WORKERS_CONFIG below. This will be replaced # during processing with the name of the worker. WORKER_PLACEHOLDER_NAME = "placeholder_name" # Workers with exposed endpoints needs either "client", "federation", or "media" listener_resources # Watching /_matrix/client needs a "client" listener # Watching /_matrix/federation needs a "federation" listener # Watching /_matrix/media and related needs a "media" listener # Stream Writers require "client" and "replication" listeners because they # have to attach by instance_map to the master process and have client endpoints. WORKERS_CONFIG: Dict[str, Dict[str, Any]] = { "pusher": { "app": "synapse.app.generic_worker", "listener_resources": [], "endpoint_patterns": [], "shared_extra_conf": {}, "worker_extra_conf": "", }, "user_dir": { "app": "synapse.app.generic_worker", "listener_resources": ["client"], "endpoint_patterns": [ "^/_matrix/client/(api/v1|r0|v3|unstable)/user_directory/search$" ], "shared_extra_conf": { "update_user_directory_from_worker": WORKER_PLACEHOLDER_NAME }, "worker_extra_conf": "", }, "media_repository": { "app": "synapse.app.generic_worker", "listener_resources": ["media"], "endpoint_patterns": [ "^/_matrix/media/", "^/_synapse/admin/v1/purge_media_cache$", "^/_synapse/admin/v1/room/.*/media.*$", "^/_synapse/admin/v1/user/.*/media.*$", "^/_synapse/admin/v1/media/.*$", "^/_synapse/admin/v1/quarantine_media/.*$", ], # The first configured media worker will run the media background jobs "shared_extra_conf": { "enable_media_repo": False, "media_instance_running_background_jobs": WORKER_PLACEHOLDER_NAME, }, "worker_extra_conf": "enable_media_repo: true", }, "appservice": { "app": "synapse.app.generic_worker", "listener_resources": [], "endpoint_patterns": [], "shared_extra_conf": { "notify_appservices_from_worker": WORKER_PLACEHOLDER_NAME }, "worker_extra_conf": "", }, "federation_sender": { "app": "synapse.app.generic_worker", "listener_resources": [], "endpoint_patterns": [], "shared_extra_conf": {}, "worker_extra_conf": "", }, "synchrotron": { "app": "synapse.app.generic_worker", "listener_resources": ["client"], "endpoint_patterns": [ "^/_matrix/client/(v2_alpha|r0|v3)/sync$", "^/_matrix/client/(api/v1|v2_alpha|r0|v3)/events$", "^/_matrix/client/(api/v1|r0|v3)/initialSync$", "^/_matrix/client/(api/v1|r0|v3)/rooms/[^/]+/initialSync$", ], "shared_extra_conf": {}, "worker_extra_conf": "", }, "client_reader": { "app": "synapse.app.generic_worker", "listener_resources": ["client"], "endpoint_patterns": [ "^/_matrix/client/(api/v1|r0|v3|unstable)/publicRooms$", "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/joined_members$", "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/context/.*$", "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/members$", "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/state$", "^/_matrix/client/v1/rooms/.*/hierarchy$", "^/_matrix/client/(v1|unstable)/rooms/.*/relations/", "^/_matrix/client/v1/rooms/.*/threads$", "^/_matrix/client/(api/v1|r0|v3|unstable)/login$", "^/_matrix/client/(api/v1|r0|v3|unstable)/account/3pid$", "^/_matrix/client/(api/v1|r0|v3|unstable)/account/whoami$", "^/_matrix/client/versions$", "^/_matrix/client/(api/v1|r0|v3|unstable)/voip/turnServer$", "^/_matrix/client/(r0|v3|unstable)/register$", "^/_matrix/client/(r0|v3|unstable)/register/available$", "^/_matrix/client/(r0|v3|unstable)/auth/.*/fallback/web$", "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/messages$", "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/event", "^/_matrix/client/(api/v1|r0|v3|unstable)/joined_rooms", "^/_matrix/client/(api/v1|r0|v3|unstable/.*)/rooms/.*/aliases", "^/_matrix/client/v1/rooms/.*/timestamp_to_event$", "^/_matrix/client/(api/v1|r0|v3|unstable)/search", "^/_matrix/client/(r0|v3|unstable)/user/.*/filter(/|$)", "^/_matrix/client/(r0|v3|unstable)/password_policy$", "^/_matrix/client/(api/v1|r0|v3|unstable)/directory/room/.*$", "^/_matrix/client/(r0|v3|unstable)/capabilities$", ], "shared_extra_conf": {}, "worker_extra_conf": "", }, "federation_reader": { "app": "synapse.app.generic_worker", "listener_resources": ["federation"], "endpoint_patterns": [ "^/_matrix/federation/(v1|v2)/event/", "^/_matrix/federation/(v1|v2)/state/", "^/_matrix/federation/(v1|v2)/state_ids/", "^/_matrix/federation/(v1|v2)/backfill/", "^/_matrix/federation/(v1|v2)/get_missing_events/", "^/_matrix/federation/(v1|v2)/publicRooms", "^/_matrix/federation/(v1|v2)/query/", "^/_matrix/federation/(v1|v2)/make_join/", "^/_matrix/federation/(v1|v2)/make_leave/", "^/_matrix/federation/(v1|v2)/send_join/", "^/_matrix/federation/(v1|v2)/send_leave/", "^/_matrix/federation/(v1|v2)/invite/", "^/_matrix/federation/(v1|v2)/query_auth/", "^/_matrix/federation/(v1|v2)/event_auth/", "^/_matrix/federation/v1/timestamp_to_event/", "^/_matrix/federation/(v1|v2)/exchange_third_party_invite/", "^/_matrix/federation/(v1|v2)/user/devices/", "^/_matrix/federation/(v1|v2)/get_groups_publicised$", "^/_matrix/key/v2/query", ], "shared_extra_conf": {}, "worker_extra_conf": "", }, "federation_inbound": { "app": "synapse.app.generic_worker", "listener_resources": ["federation"], "endpoint_patterns": ["/_matrix/federation/(v1|v2)/send/"], "shared_extra_conf": {}, "worker_extra_conf": "", }, "event_persister": { "app": "synapse.app.generic_worker", "listener_resources": ["replication"], "endpoint_patterns": [], "shared_extra_conf": {}, "worker_extra_conf": "", }, "background_worker": { "app": "synapse.app.generic_worker", "listener_resources": [], "endpoint_patterns": [], # This worker cannot be sharded. Therefore, there should only ever be one # background worker. This is enforced for the safety of your database. "shared_extra_conf": {"run_background_tasks_on": WORKER_PLACEHOLDER_NAME}, "worker_extra_conf": "", }, "event_creator": { "app": "synapse.app.generic_worker", "listener_resources": ["client"], "endpoint_patterns": [ "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/redact", "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/send", "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/(join|invite|leave|ban|unban|kick)$", "^/_matrix/client/(api/v1|r0|v3|unstable)/join/", "^/_matrix/client/(api/v1|r0|v3|unstable)/knock/", "^/_matrix/client/(api/v1|r0|v3|unstable)/profile/", "^/_matrix/client/(v1|unstable/org.matrix.msc2716)/rooms/.*/batch_send", ], "shared_extra_conf": {}, "worker_extra_conf": "", }, "frontend_proxy": { "app": "synapse.app.generic_worker", "listener_resources": ["client", "replication"], "endpoint_patterns": ["^/_matrix/client/(api/v1|r0|v3|unstable)/keys/upload"], "shared_extra_conf": {}, "worker_extra_conf": "", }, "account_data": { "app": "synapse.app.generic_worker", "listener_resources": ["client", "replication"], "endpoint_patterns": [ "^/_matrix/client/(r0|v3|unstable)/.*/tags", "^/_matrix/client/(r0|v3|unstable)/.*/account_data", ], "shared_extra_conf": {}, "worker_extra_conf": "", }, "presence": { "app": "synapse.app.generic_worker", "listener_resources": ["client", "replication"], "endpoint_patterns": ["^/_matrix/client/(api/v1|r0|v3|unstable)/presence/"], "shared_extra_conf": {}, "worker_extra_conf": "", }, "receipts": { "app": "synapse.app.generic_worker", "listener_resources": ["client", "replication"], "endpoint_patterns": [ "^/_matrix/client/(r0|v3|unstable)/rooms/.*/receipt", "^/_matrix/client/(r0|v3|unstable)/rooms/.*/read_markers", ], "shared_extra_conf": {}, "worker_extra_conf": "", }, "to_device": { "app": "synapse.app.generic_worker", "listener_resources": ["client", "replication"], "endpoint_patterns": ["^/_matrix/client/(r0|v3|unstable)/sendToDevice/"], "shared_extra_conf": {}, "worker_extra_conf": "", }, "typing": { "app": "synapse.app.generic_worker", "listener_resources": ["client", "replication"], "endpoint_patterns": [ "^/_matrix/client/(api/v1|r0|v3|unstable)/rooms/.*/typing" ], "shared_extra_conf": {}, "worker_extra_conf": "", }, } # Templates for sections that may be inserted multiple times in config files NGINX_LOCATION_CONFIG_BLOCK = """ location ~* {endpoint} {{ proxy_pass {upstream}; proxy_set_header X-Forwarded-For $remote_addr; proxy_set_header X-Forwarded-Proto $scheme; proxy_set_header Host $host; }} """ NGINX_UPSTREAM_CONFIG_BLOCK = """ upstream {upstream_worker_base_name} {{ {body} }} """ # Utility functions def log(txt: str) -> None: print(txt) def error(txt: str) -> NoReturn: print(txt, file=sys.stderr) sys.exit(2) def flush_buffers() -> None: sys.stdout.flush() sys.stderr.flush() def convert(src: str, dst: str, **template_vars: object) -> None: """Generate a file from a template Args: src: Path to the input file. dst: Path to write to. template_vars: The arguments to replace placeholder variables in the template with. """ # Read the template file # We disable autoescape to prevent template variables from being escaped, # as we're not using HTML. env = Environment(loader=FileSystemLoader(os.path.dirname(src)), autoescape=False) template = env.get_template(os.path.basename(src)) # Generate a string from the template. rendered = template.render(**template_vars) # Write the generated contents to a file # # We use append mode in case the files have already been written to by something else # (for instance, as part of the instructions in a dockerfile). with open(dst, "a") as outfile: # In case the existing file doesn't end with a newline outfile.write("\n") outfile.write(rendered) def add_worker_roles_to_shared_config( shared_config: dict, worker_types_set: Set[str], worker_name: str, worker_port: int, ) -> None: """Given a dictionary representing a config file shared across all workers, append appropriate worker information to it for the current worker_type instance. Args: shared_config: The config dict that all worker instances share (after being converted to YAML) worker_types_set: The type of worker (one of those defined in WORKERS_CONFIG). This list can be a single worker type or multiple. worker_name: The name of the worker instance. worker_port: The HTTP replication port that the worker instance is listening on. """ # The instance_map config field marks the workers that write to various replication # streams instance_map = shared_config.setdefault("instance_map", {}) # This is a list of the stream_writers that there can be only one of. Events can be # sharded, and therefore doesn't belong here. singular_stream_writers = [ "account_data", "presence", "receipts", "to_device", "typing", ] # Worker-type specific sharding config. Now a single worker can fulfill multiple # roles, check each. if "pusher" in worker_types_set: shared_config.setdefault("pusher_instances", []).append(worker_name) if "federation_sender" in worker_types_set: shared_config.setdefault("federation_sender_instances", []).append(worker_name) if "event_persister" in worker_types_set: # Event persisters write to the events stream, so we need to update # the list of event stream writers shared_config.setdefault("stream_writers", {}).setdefault("events", []).append( worker_name ) # Map of stream writer instance names to host/ports combos instance_map[worker_name] = { "host": "localhost", "port": worker_port, } # Update the list of stream writers. It's convenient that the name of the worker # type is the same as the stream to write. Iterate over the whole list in case there # is more than one. for worker in worker_types_set: if worker in singular_stream_writers: shared_config.setdefault("stream_writers", {}).setdefault( worker, [] ).append(worker_name) # Map of stream writer instance names to host/ports combos # For now, all stream writers need http replication ports instance_map[worker_name] = { "host": "localhost", "port": worker_port, } def merge_worker_template_configs( existing_dict: Optional[Dict[str, Any]], to_be_merged_dict: Dict[str, Any], ) -> Dict[str, Any]: """When given an existing dict of worker template configuration consisting with both dicts and lists, merge new template data from WORKERS_CONFIG(or create) and return new dict. Args: existing_dict: Either an existing worker template or a fresh blank one. to_be_merged_dict: The template from WORKERS_CONFIGS to be merged into existing_dict. Returns: The newly merged together dict values. """ new_dict: Dict[str, Any] = {} if not existing_dict: # It doesn't exist yet, just use the new dict(but take a copy not a reference) new_dict = to_be_merged_dict.copy() else: for i in to_be_merged_dict.keys(): if (i == "endpoint_patterns") or (i == "listener_resources"): # merge the two lists, remove duplicates new_dict[i] = list(set(existing_dict[i] + to_be_merged_dict[i])) elif i == "shared_extra_conf": # merge dictionary's, the worker name will be replaced later new_dict[i] = {**existing_dict[i], **to_be_merged_dict[i]} elif i == "worker_extra_conf": # There is only one worker type that has a 'worker_extra_conf' and it is # the media_repo. Since duplicate worker types on the same worker don't # work, this is fine. new_dict[i] = existing_dict[i] + to_be_merged_dict[i] else: # Everything else should be identical, like "app", which only works # because all apps are now generic_workers. new_dict[i] = to_be_merged_dict[i] return new_dict def insert_worker_name_for_worker_config( existing_dict: Dict[str, Any], worker_name: str ) -> Dict[str, Any]: """Insert a given worker name into the worker's configuration dict. Args: existing_dict: The worker_config dict that is imported into shared_config. worker_name: The name of the worker to insert. Returns: Copy of the dict with newly inserted worker name """ dict_to_edit = existing_dict.copy() for k, v in dict_to_edit["shared_extra_conf"].items(): # Only proceed if it's the placeholder name string if v == WORKER_PLACEHOLDER_NAME: dict_to_edit["shared_extra_conf"][k] = worker_name return dict_to_edit def apply_requested_multiplier_for_worker(worker_types: List[str]) -> List[str]: """ Apply multiplier(if found) by returning a new expanded list with some basic error checking. Args: worker_types: The unprocessed List of requested workers Returns: A new list with all requested workers expanded. """ # Checking performed: # 1. if worker:2 or more is declared, it will create additional workers up to number # 2. if worker:1, it will create a single copy of this worker as if no number was # given # 3. if worker:0 is declared, this worker will be ignored. This is to allow for # scripting and automated expansion and is intended behaviour. # 4. if worker:NaN or is a negative number, it will error and log it. new_worker_types = [] for worker_type in worker_types: if ":" in worker_type: worker_type_components = split_and_strip_string(worker_type, ":", 1) worker_count = 0 # Should only be 2 components, a type of worker(s) and an integer as a # string. Cast the number as an int then it can be used as a counter. try: worker_count = int(worker_type_components[1]) except ValueError: error( f"Bad number in worker count for '{worker_type}': " f"'{worker_type_components[1]}' is not an integer" ) # As long as there are more than 0, we add one to the list to make below. for _ in range(worker_count): new_worker_types.append(worker_type_components[0]) else: # If it's not a real worker_type, it will error out later. new_worker_types.append(worker_type) return new_worker_types def is_sharding_allowed_for_worker_type(worker_type: str) -> bool: """Helper to check to make sure worker types that cannot have multiples do not. Args: worker_type: The type of worker to check against. Returns: True if allowed, False if not """ return worker_type not in [ "background_worker", "account_data", "presence", "receipts", "typing", "to_device", ] def split_and_strip_string( given_string: str, split_char: str, max_split: SupportsIndex = -1 ) -> List[str]: """ Helper to split a string on split_char and strip whitespace from each end of each element. Args: given_string: The string to split split_char: The character to split the string on max_split: kwarg for split() to limit how many times the split() happens Returns: A List of strings """ # Removes whitespace from ends of result strings before adding to list. Allow for # overriding 'maxsplit' kwarg, default being -1 to signify no maximum. return [x.strip() for x in given_string.split(split_char, maxsplit=max_split)] def generate_base_homeserver_config() -> None: """Starts Synapse and generates a basic homeserver config, which will later be modified for worker support. Raises: CalledProcessError if calling start.py returned a non-zero exit code. """ # start.py already does this for us, so just call that. # note that this script is copied in in the official, monolith dockerfile os.environ["SYNAPSE_HTTP_PORT"] = str(MAIN_PROCESS_HTTP_LISTENER_PORT) subprocess.run(["/usr/local/bin/python", "/start.py", "migrate_config"], check=True) def parse_worker_types( requested_worker_types: List[str], ) -> Dict[str, Set[str]]: """Read the desired list of requested workers and prepare the data for use in generating worker config files while also checking for potential gotchas. Args: requested_worker_types: The list formed from the split environment variable containing the unprocessed requests for workers. Returns: A dict of worker names to set of worker types. Format: {'worker_name': {'worker_type', 'worker_type2'} } """ # A counter of worker_base_name -> int. Used for determining the name for a given # worker when generating its config file, as each worker's name is just # worker_base_name followed by instance number worker_base_name_counter: Dict[str, int] = defaultdict(int) # Similar to above, but more finely grained. This is used to determine we don't have # more than a single worker for cases where multiples would be bad(e.g. presence). worker_type_shard_counter: Dict[str, int] = defaultdict(int) # The final result of all this processing dict_to_return: Dict[str, Set[str]] = {} # Handle any multipliers requested for given workers. multiple_processed_worker_types = apply_requested_multiplier_for_worker( requested_worker_types ) # Process each worker_type_string # Examples of expected formats: # - requested_name=type1+type2+type3 # - synchrotron # - event_creator+event_persister for worker_type_string in multiple_processed_worker_types: # First, if a name is requested, use that — otherwise generate one. worker_base_name: str = "" if "=" in worker_type_string: # Split on "=", remove extra whitespace from ends then make list worker_type_split = split_and_strip_string(worker_type_string, "=") if len(worker_type_split) > 2: error( "There should only be one '=' in the worker type string. " f"Please fix: {worker_type_string}" ) # Assign the name worker_base_name = worker_type_split[0] if not re.match(r"^[a-zA-Z0-9_+-]*[a-zA-Z_+-]$", worker_base_name): # Apply a fairly narrow regex to the worker names. Some characters # aren't safe for use in file paths or nginx configurations. # Don't allow to end with a number because we'll add a number # ourselves in a moment. error( "Invalid worker name; please choose a name consisting of " "alphanumeric letters, _ + -, but not ending with a digit: " f"{worker_base_name!r}" ) # Continue processing the remainder of the worker_type string # with the name override removed. worker_type_string = worker_type_split[1] # Split the worker_type_string on "+", remove whitespace from ends then make # the list a set so it's deduplicated. worker_types_set: Set[str] = set( split_and_strip_string(worker_type_string, "+") ) if not worker_base_name: # No base name specified: generate one deterministically from set of # types worker_base_name = "+".join(sorted(worker_types_set)) # At this point, we have: # worker_base_name which is the name for the worker, without counter. # worker_types_set which is the set of worker types for this worker. # Validate worker_type and make sure we don't allow sharding for a worker type # that doesn't support it. Will error and stop if it is a problem, # e.g. 'background_worker'. for worker_type in worker_types_set: # Verify this is a real defined worker type. If it's not, stop everything so # it can be fixed. if worker_type not in WORKERS_CONFIG: error( f"{worker_type} is an unknown worker type! Was found in " f"'{worker_type_string}'. Please fix!" ) if worker_type in worker_type_shard_counter: if not is_sharding_allowed_for_worker_type(worker_type): error( f"There can be only a single worker with {worker_type} " "type. Please recount and remove." ) # Not in shard counter, must not have seen it yet, add it. worker_type_shard_counter[worker_type] += 1 # Generate the number for the worker using incrementing counter worker_base_name_counter[worker_base_name] += 1 worker_number = worker_base_name_counter[worker_base_name] worker_name = f"{worker_base_name}{worker_number}" if worker_number > 1: # If this isn't the first worker, check that we don't have a confusing # mixture of worker types with the same base name. first_worker_with_base_name = dict_to_return[f"{worker_base_name}1"] if first_worker_with_base_name != worker_types_set: error( f"Can not use worker_name: '{worker_name}' for worker_type(s): " f"{worker_types_set!r}. It is already in use by " f"worker_type(s): {first_worker_with_base_name!r}" ) dict_to_return[worker_name] = worker_types_set return dict_to_return def generate_worker_files( environ: Mapping[str, str], config_path: str, data_dir: str, requested_worker_types: Dict[str, Set[str]], ) -> None: """Read the desired workers(if any) that is passed in and generate shared homeserver, nginx and supervisord configs. Args: environ: os.environ instance. config_path: The location of the generated Synapse main worker config file. data_dir: The location of the synapse data directory. Where log and user-facing config files live. requested_worker_types: A Dict containing requested workers in the format of {'worker_name1': {'worker_type', ...}} """ # Note that yaml cares about indentation, so care should be taken to insert lines # into files at the correct indentation below. # First read the original config file and extract the listeners block. Then we'll # add another listener for replication. Later we'll write out the result to the # shared config file. listeners = [ { "port": MAIN_PROCESS_REPLICATION_PORT, "bind_address": MAIN_PROCESS_LOCALHOST_ADDRESS, "type": "http", "resources": [{"names": ["replication"]}], } ] with open(config_path) as file_stream: original_config = yaml.safe_load(file_stream) original_listeners = original_config.get("listeners") if original_listeners: listeners += original_listeners # The shared homeserver config. The contents of which will be inserted into the # base shared worker jinja2 template. This config file will be passed to all # workers, included Synapse's main process. It is intended mainly for disabling # functionality when certain workers are spun up, and adding a replication listener. shared_config: Dict[str, Any] = {"listeners": listeners} # List of dicts that describe workers. # We pass this to the Supervisor template later to generate the appropriate # program blocks. worker_descriptors: List[Dict[str, Any]] = [] # Upstreams for load-balancing purposes. This dict takes the form of the worker # type to the ports of each worker. For example: # { # worker_type: {1234, 1235, ...}} # } # and will be used to construct 'upstream' nginx directives. nginx_upstreams: Dict[str, Set[int]] = {} # A map of: {"endpoint": "upstream"}, where "upstream" is a str representing what # will be placed after the proxy_pass directive. The main benefit to representing # this data as a dict over a str is that we can easily deduplicate endpoints # across multiple instances of the same worker. The final rendering will be combined # with nginx_upstreams and placed in /etc/nginx/conf.d. nginx_locations: Dict[str, str] = {} # Create the worker configuration directory if it doesn't already exist os.makedirs("/conf/workers", exist_ok=True) # Start worker ports from this arbitrary port worker_port = 18009 # A list of internal endpoints to healthcheck, starting with the main process # which exists even if no workers do. healthcheck_urls = ["http://localhost:8080/health"] # Get the set of all worker types that we have configured all_worker_types_in_use = set(chain(*requested_worker_types.values())) # Map locations to upstreams (corresponding to worker types) in Nginx # but only if we use the appropriate worker type for worker_type in all_worker_types_in_use: for endpoint_pattern in WORKERS_CONFIG[worker_type]["endpoint_patterns"]: nginx_locations[endpoint_pattern] = f"http://{worker_type}" # For each worker type specified by the user, create config values and write it's # yaml config file for worker_name, worker_types_set in requested_worker_types.items(): # The collected and processed data will live here. worker_config: Dict[str, Any] = {} # Merge all worker config templates for this worker into a single config for worker_type in worker_types_set: copy_of_template_config = WORKERS_CONFIG[worker_type].copy() # Merge worker type template configuration data. It's a combination of lists # and dicts, so use this helper. worker_config = merge_worker_template_configs( worker_config, copy_of_template_config ) # Replace placeholder names in the config template with the actual worker name. worker_config = insert_worker_name_for_worker_config(worker_config, worker_name) worker_config.update( {"name": worker_name, "port": str(worker_port), "config_path": config_path} ) # Update the shared config with any worker_type specific options. The first of a # given worker_type needs to stay assigned and not be replaced. worker_config["shared_extra_conf"].update(shared_config) shared_config = worker_config["shared_extra_conf"] healthcheck_urls.append("http://localhost:%d/health" % (worker_port,)) # Update the shared config with sharding-related options if necessary add_worker_roles_to_shared_config( shared_config, worker_types_set, worker_name, worker_port ) # Enable the worker in supervisord worker_descriptors.append(worker_config) # Write out the worker's logging config file log_config_filepath = generate_worker_log_config(environ, worker_name, data_dir) # Then a worker config file convert( "/conf/worker.yaml.j2", "/conf/workers/{name}.yaml".format(name=worker_name), **worker_config, worker_log_config_filepath=log_config_filepath, ) # Save this worker's port number to the correct nginx upstreams for worker_type in worker_types_set: nginx_upstreams.setdefault(worker_type, set()).add(worker_port) worker_port += 1 # Build the nginx location config blocks nginx_location_config = "" for endpoint, upstream in nginx_locations.items(): nginx_location_config += NGINX_LOCATION_CONFIG_BLOCK.format( endpoint=endpoint, upstream=upstream, ) # Determine the load-balancing upstreams to configure nginx_upstream_config = "" for upstream_worker_base_name, upstream_worker_ports in nginx_upstreams.items(): body = "" for port in upstream_worker_ports: body += f" server localhost:{port};\n" # Add to the list of configured upstreams nginx_upstream_config += NGINX_UPSTREAM_CONFIG_BLOCK.format( upstream_worker_base_name=upstream_worker_base_name, body=body, ) # Finally, we'll write out the config files. # log config for the master process master_log_config = generate_worker_log_config(environ, "master", data_dir) shared_config["log_config"] = master_log_config # Find application service registrations appservice_registrations = None appservice_registration_dir = os.environ.get("SYNAPSE_AS_REGISTRATION_DIR") if appservice_registration_dir: # Scan for all YAML files that should be application service registrations. appservice_registrations = [ str(reg_path.resolve()) for reg_path in Path(appservice_registration_dir).iterdir() if reg_path.suffix.lower() in (".yaml", ".yml") ] workers_in_use = len(requested_worker_types) > 0 # If there are workers, add the main process to the instance_map too. if workers_in_use: instance_map = shared_config.setdefault("instance_map", {}) instance_map[MAIN_PROCESS_INSTANCE_NAME] = { "host": MAIN_PROCESS_LOCALHOST_ADDRESS, "port": MAIN_PROCESS_REPLICATION_PORT, } # Shared homeserver config convert( "/conf/shared.yaml.j2", "/conf/workers/shared.yaml", shared_worker_config=yaml.dump(shared_config), appservice_registrations=appservice_registrations, enable_redis=workers_in_use, workers_in_use=workers_in_use, ) # Nginx config convert( "/conf/nginx.conf.j2", "/etc/nginx/conf.d/matrix-synapse.conf", worker_locations=nginx_location_config, upstream_directives=nginx_upstream_config, tls_cert_path=os.environ.get("SYNAPSE_TLS_CERT"), tls_key_path=os.environ.get("SYNAPSE_TLS_KEY"), ) # Supervisord config os.makedirs("/etc/supervisor", exist_ok=True) convert( "/conf/supervisord.conf.j2", "/etc/supervisor/supervisord.conf", main_config_path=config_path, enable_redis=workers_in_use, ) convert( "/conf/synapse.supervisord.conf.j2", "/etc/supervisor/conf.d/synapse.conf", workers=worker_descriptors, main_config_path=config_path, use_forking_launcher=environ.get("SYNAPSE_USE_EXPERIMENTAL_FORKING_LAUNCHER"), ) # healthcheck config convert( "/conf/healthcheck.sh.j2", "/healthcheck.sh", healthcheck_urls=healthcheck_urls, ) # Ensure the logging directory exists log_dir = data_dir + "/logs" if not os.path.exists(log_dir): os.mkdir(log_dir) def generate_worker_log_config( environ: Mapping[str, str], worker_name: str, data_dir: str ) -> str: """Generate a log.config file for the given worker. Returns: the path to the generated file """ # Check whether we should write worker logs to disk, in addition to the console extra_log_template_args: Dict[str, Optional[str]] = {} if environ.get("SYNAPSE_WORKERS_WRITE_LOGS_TO_DISK"): extra_log_template_args["LOG_FILE_PATH"] = f"{data_dir}/logs/{worker_name}.log" extra_log_template_args["SYNAPSE_LOG_LEVEL"] = environ.get("SYNAPSE_LOG_LEVEL") extra_log_template_args["SYNAPSE_LOG_SENSITIVE"] = environ.get( "SYNAPSE_LOG_SENSITIVE" ) # Render and write the file log_config_filepath = f"/conf/workers/{worker_name}.log.config" convert( "/conf/log.config", log_config_filepath, worker_name=worker_name, **extra_log_template_args, include_worker_name_in_log_line=environ.get( "SYNAPSE_USE_EXPERIMENTAL_FORKING_LAUNCHER" ), ) return log_config_filepath def main(args: List[str], environ: MutableMapping[str, str]) -> None: config_dir = environ.get("SYNAPSE_CONFIG_DIR", "/data") config_path = environ.get("SYNAPSE_CONFIG_PATH", config_dir + "/homeserver.yaml") data_dir = environ.get("SYNAPSE_DATA_DIR", "/data") # override SYNAPSE_NO_TLS, we don't support TLS in worker mode, # this needs to be handled by a frontend proxy environ["SYNAPSE_NO_TLS"] = "yes" # Generate the base homeserver config if one does not yet exist if not os.path.exists(config_path): log("Generating base homeserver config") generate_base_homeserver_config() else: log("Base homeserver config exists—not regenerating") # This script may be run multiple times (mostly by Complement, see note at top of # file). Don't re-configure workers in this instance. mark_filepath = "/conf/workers_have_been_configured" if not os.path.exists(mark_filepath): # Collect and validate worker_type requests # Read the desired worker configuration from the environment worker_types_env = environ.get("SYNAPSE_WORKER_TYPES", "").strip() # Only process worker_types if they exist if not worker_types_env: # No workers, just the main process worker_types = [] requested_worker_types: Dict[str, Any] = {} else: # Split type names by comma, ignoring whitespace. worker_types = split_and_strip_string(worker_types_env, ",") requested_worker_types = parse_worker_types(worker_types) # Always regenerate all other config files log("Generating worker config files") generate_worker_files(environ, config_path, data_dir, requested_worker_types) # Mark workers as being configured with open(mark_filepath, "w") as f: f.write("") else: log("Worker config exists—not regenerating") # Lifted right out of start.py jemallocpath = "/usr/lib/%s-linux-gnu/libjemalloc.so.2" % (platform.machine(),) if os.path.isfile(jemallocpath): environ["LD_PRELOAD"] = jemallocpath else: log("Could not find %s, will not use" % (jemallocpath,)) # Start supervisord, which will start Synapse, all of the configured worker # processes, redis, nginx etc. according to the config we created above. log("Starting supervisord") flush_buffers() os.execle( "/usr/local/bin/supervisord", "supervisord", "-c", "/etc/supervisor/supervisord.conf", environ, ) if __name__ == "__main__": main(sys.argv, os.environ)