# Caching in Zulip Like any product with good performance characteristics, Zulip makes extensive use of caching. This article talks about our caching strategy, focusing on how we use `memcached` (since it's the thing people generally think about when they ask about how a server does caching). ## Backend caching with memcached On the backend, Zulip uses `memcached`, a popular key-value store, for caching. Our `memcached` caching helps let us optimize Zulip's performance and scalability, since we often avoid overhead related to database requests. With Django a typical trivial query can often take 3-10x as long as a memcached fetch. We use Django's built-in caching integration to manage talking to memcached, and then a small application-layer library (`zerver/lib/cache.py`). It's common for projects using a caching system like `memcached` to either have the codebase littered with explicit requests to interact with the cache (or flush data from a cache), or (worse) be littered with weird bugs that disappear after you flush memcached. Caching bugs are a pain to track down, because they generally require an extra and difficult-to-guess step to reproduce (namely, putting the wrong data into the cache). So we've designed our backend to ensure that if we write a small amount of Zulip's core caching code correctly, then the code most developers naturally write will both benefit from caching and not create any cache consistency problems. The overall result of this design is that for many places in the Zulip's Django codebase, all one needs to do is call the standard accessor functions for data (like `get_user` to fetch user objects, or, for view code, functions like `access_stream_by_id`, which checks permissions), and everything will work great. The data fetches automatically benefit from `memcached` caching, since those accessor methods have already been written to transparently use Zulip's memcached caching system, and the developer doesn't need to worry about whether the data returned is up-to-date: it is. In the following sections, we'll talk about how we make this work. As a side note, the policy of using these accessor functions wherever possible is a good idea, regardless of caching, because the functions also generally take care of details you might not think about (e.g. case-insensitive matching of stream names or email addresses). It's amazing how slightly tricky logic that's duplicated in several places invariably ends up buggy in some of those places, and in aggregate we call these accessor functions hundreds of times in Zulip. But the caching is certainly a nice bonus. ### The core implementation The `get_user` function is a pretty typical piece of code using this framework; as you can see, it's very little code on top of our `cache_with_key` decorator: ```python def user_profile_cache_key_id(email: str, realm_id: int) -> str: return f"user_profile:{hashlib.sha1(email.strip().encode()).hexdigest()}:{realm_id}" def user_profile_cache_key(email: str, realm: "Realm") -> str: return user_profile_cache_key_id(email, realm.id) @cache_with_key(user_profile_cache_key, timeout=3600 * 24 * 7) def get_user(email: str, realm: Realm) -> UserProfile: return UserProfile.objects.select_related("realm", "bot_owner").get( email__iexact=email.strip(), realm=realm ) ``` This decorator implements a pretty classic caching paradigm: - The `user_profile_cache_key` function defines a unique map from a canonical form of its arguments to a string. These strings are namespaced (the `user_profile:` part) so that they won't overlap with other caches, and encode the arguments so that two uses of this cache won't overlap. In this case, a hash of the email address and realm ID are those canonicalized arguments. (The `make_safe_digest` is important to ensure we don't send special characters to memcached). And we have two versions, depending whether the caller has access to a `Realm` or just a `realm_id`. - When `get_user` is called, `cache_with_key` will compute the key, and do a Django `cache_get` query for the key (which goes to memcached). If the key is in the cache, it just returns the value. Otherwise, it fetches the value from the database (using the actual code in the body of `get_user`), and then stores the value back to that memcached key before returning the result to the caller. - Cache entries expire after the timeout; in this case, a week. Though in frequently deployed environments like chat.zulip.org, often cache entries will stop being used long before that, because `KEY_PREFIX` is rotated every time we deploy to production; see below for details. We use this decorator in about 30 places in Zulip, and it saves a huge amount of otherwise very self-similar caching code. ### Cautions The one thing to be really careful with in using `cache_with_key` is that if an item is in the cache, the body of `get_user` (above) is never called. This means some things that might seem like clever code reuse are actually a really bad idea. For example: - Don't add a `get_active_user` function that uses the same cache key function as `get_user` (but with a different query that filters our deactivated users). If one called `get_active_user` to access a deactivated user, the right thing would happen, but if you called `get_user` to access that user first, then the `get_active_user` function would happily return the user from the cache, without ever doing your more restrictive query. So remember: Use separate cache key functions for different data sets, even if they feature the same objects. ### Cache invalidation after writes The caching strategy described above works pretty well for anything where the state it's storing is immutable (i.e. never changes). With mutable state, one needs to do something to ensure that the Python processes don't end up fetching stale data from the cache after a write to the database. We handle this using Django's longstanding [post_save signals][post-save-signals] feature. Django signals let you configure some code to run every time Django does something (for `post_save`, right after any write to the database using Django's `.save()`). There's a handful of lines in `zerver/models/*.py` like these that configure this: ```python post_save.connect(flush_realm, sender=Realm) post_save.connect(flush_user_profile, sender=UserProfile) ``` Once this `post_save` hook is registered, whenever one calls `user_profile.save(...)` with a UserProfile object in our Django project, Django will call the `flush_user_profile` function. Zulip is systematic about using the standard Django `.save()` function for modifying `user_profile` objects (and passing the `update_fields` argument to `.save()` consistently, which encodes which fields on an object changed). This means that all we have to do is write those cache-flushing functions correctly, and people writing Zulip code won't need to think about (or even know about!) the caching. Each of those flush functions basically just computes the list of cache keys that might contain data that was modified by the `.save(...)` call (based on the object changed and the `update_fields` data), and then sends a bulk delete request to `memcached` to remove those keys from the cache (if present). Maintaining these flush functions requires some care (every time we add a new cache, we need to look through them), but overall it's a pretty simple algorithm: If the changed data appears in any form in a given cache key, that cache key needs to be cleared. E.g. the `active_user_ids_cache_key` cache for a realm needs to be flushed whenever a new user is created in that realm, or user is deactivated/reactivated, even though it's just a list of IDs and thus doesn't explicitly contain the `is_active` flag. Once you understand how that works, it's pretty easy to reason about when a particular flush function should clear a particular cache; so the main thing that requires care is making sure we remember to reason about that when changing cache semantics. But the overall benefit of this cache system is that almost all the code in Zulip just needs to modify Django model objects and call `.save()`, and the caching system will do the right thing. ### Production deployments and database migrations When upgrading a Zulip server, it's important to avoid having one version of the code interact with cached objects from another version that has a different data layout. In Zulip, we avoid this through some clever caching strategies. Each "deployment directory" for Zulip in production has inside it a `var/remote_cache_prefix` file, containing a cache prefix (`KEY_PREFIX` in the code) that is automatically appended to the start of any cache keys accessed by that deployment directory (this is all handled internally by `zerver/lib/cache.py`). This completely solves the problem of potentially having contamination from inconsistent versions of the source code / data formats in the cache. ### Automated testing and memcached For Zulip's `test-backend` unit tests, we use the same strategy. In particular, we just edit `KEY_PREFIX` before each unit test; this means each of the thousands of test cases in Zulip has its own independent memcached key namespace on each run of the unit tests. As a result, we never have to worry about memcached caching causing problems across multiple tests. This is a really important detail. It makes it possible for us to do assertions in our tests on the number of database queries or memcached queries that are done as part of a particular function/route, and have those checks consistently get the same result (those tests are great for catching bugs where we accidentally do database queries in a loop). And it means one can debug failures in the test suite without having to consider the possibility that memcached is somehow confusing the situation. Further, this `KEY_PREFIX` model means that running the backend tests won't potentially conflict with whatever you're doing in a Zulip development environment on the same machine, which also saves a ton of time when debugging, since developers don't need to think about things like whether some test changed Hamlet's email address and that's why login is broken. More full-stack test suites like `test-js-with-puppeteer` or `test-api` use a similar strategy (set a random `KEY_PREFIX` at the start of the test run). ### Manual testing and memcached Zulip's development environment will automatically flush (delete all keys in) `memcached` when provisioning and when starting `run-dev`. You can run the server with that behavior disabled using `tools/run-dev --no-clear-memcached`. ### Performance One thing be careful about with memcached queries is to avoid doing them in loops (the same applies for database queries!). Instead, one should use a bulk query. We have a fancy function, `generate_bulk_cached_fetch`, which is super magical and handles this for us, with support for a bunch of fancy features like marshalling data before/after going into the cache (e.g. to compress `message` objects to minimize data transfer between Django and memcached). ## In-process caching in Django We generally try to avoid in-process backend caching in Zulip's Django codebase, because every Zulip production installation involves multiple servers. We do have a few, however: - `@return_same_value_during_entire_request`: We use this decorator to cache values in memory during the lifetime of a request. We use this for linkifiers and display recipients. The middleware knows how to flush the relevant in-memory caches at the start of a request. - Caches of various data, like the `SourceMap` object, that are expensive to construct, not needed for most requests, and don't change once a Zulip server has been deployed in production. ## Browser caching of state Zulip makes extensive use of caching of data in the browser and mobile apps; details like which users exist, with metadata like names and avatars, similar details for streams, recent message history, etc. This data is fetched in the `/register` endpoint (or `page_params` for the web app), and kept correct over time. The key to keeping these state up to date is Zulip's [real-time events system](events-system.md), which allows the server to notify clients whenever state that might be cached by clients is changed. Clients are responsible for handling the events, updating their state, and rerendering any UI components that might display the modified state. [post-save-signals]: https://docs.djangoproject.com/en/3.2/ref/signals/#post-save