Redis guidelines

Redis instances

GitLab uses Redis for the following distinct purposes:

  • Caching (mostly via Rails.cache).
  • As a job processing queue with Sidekiq.
  • To manage the shared application state.
  • To store CI trace chunks.
  • As a Pub/Sub queue backend for ActionCable.
  • Rate limiting state storage.
  • Sessions.

In most environments (including the GDK), all of these point to the same Redis instance.

On, we use separate Redis instances. See the Redis SRE guide for more details on our setup.

Every application process is configured to use the same Redis servers, so they can be used for inter-process communication in cases where PostgreSQL is less appropriate. For example, transient state or data that is written much more often than it is read.

If Geo is enabled, each Geo node gets its own, independent Redis database.

We have development documentation on adding a new Redis instance.

Key naming

Redis is a flat namespace with no hierarchy, which means we must pay attention to key names to avoid collisions. Typically we use colon-separated elements to provide a semblance of structure at application level. An example might be projects:1:somekey.

Although we split our Redis usage by purpose into distinct categories, and those may map to separate Redis servers in a Highly Available configuration like, the default Omnibus and GDK setups share a single Redis server. This means that keys should always be globally unique across all categories.

It is usually better to use immutable identifiers - project ID rather than full path, for instance - in Redis key names. If full path is used, the key stops being consulted if the project is renamed. If the contents of the key are invalidated by a name change, it is better to include a hook that expires the entry, instead of relying on the key changing.

Multi-key commands

We don't use Redis Cluster at the moment, but may wish to in the future: #118820.

This imposes an additional constraint on naming: where GitLab is performing operations that require several keys to be held on the same Redis server - for instance, diffing two sets held in Redis - the keys should ensure that by enclosing the changeable parts in curly braces. For example:


set_a and set_b are guaranteed to be held on the same Redis server, while set_c is not.

Currently, we validate this in the development and test environments with the RedisClusterValidator, which is enabled for the cache and shared_state Redis instances..

Redis in structured logging

For GitLab Team Members: There are basic and advanced videos that show how you can work with the Redis structured logging fields on

Our structured logging for web requests and Sidekiq jobs contains fields for the duration, call count, bytes written, and bytes read per Redis instance, along with a total for all Redis instances. For a particular request, this might look like:

Field Value
json.queue_duration_s 0.01
json.redis_cache_calls 1
json.redis_cache_duration_s 0
json.redis_cache_read_bytes 109
json.redis_cache_write_bytes 49
json.redis_calls 2
json.redis_duration_s 0.001
json.redis_read_bytes 111
json.redis_shared_state_calls 1
json.redis_shared_state_duration_s 0
json.redis_shared_state_read_bytes 2
json.redis_shared_state_write_bytes 206
json.redis_write_bytes 255

As all of these fields are indexed, it is then straightforward to investigate Redis usage in production. For instance, to find the requests that read the most data from the cache, we can just sort by redis_cache_read_bytes in descending order.

The slow log

NOTE: There is a video showing how to see the slow log (GitLab internal) on

On, entries from the Redis slow log are available in the pubsub-redis-inf-gprd* index with the redis.slowlog tag. This shows commands that have taken a long time and may be a performance concern.

The fluent-plugin-redis-slowlog project is responsible for taking the slowlog entries from Redis and passing to Fluentd (and ultimately Elasticsearch).

Analyzing the entire keyspace

The Redis Keyspace Analyzer project contains tools for dumping the full key list and memory usage of a Redis instance, and then analyzing those lists while eliminating potentially sensitive data from the results. It can be used to find the most frequent key patterns, or those that use the most memory.

Currently this is not run automatically for the Redis instances, but is run manually on an as-needed basis.

Utility classes

We have some extra classes to help with specific use cases. These are mostly for fine-grained control of Redis usage, so they wouldn't be used in combination with the Rails.cache wrapper: we'd either use Rails.cache or these classes and literal Redis commands.

Rails.cache or these classes and literal Redis commands. We prefer using Rails.cache so we can reap the benefits of future optimizations done to Rails. It is worth noting that Ruby objects are marshalled when written to Redis, so we need to pay attention to not to store huge objects, or untrusted user input.

Typically we would only use these classes when at least one of the following is true:

  1. We want to manipulate data on a non-cache Redis instance.
  2. Rails.cache does not support the operations we want to perform.


These classes wrap the Redis instances (using Gitlab::Redis::Wrapper) to make it convenient to work with them directly. The typical use is to call .with on the class, which takes a block that yields the Redis connection. For example:

# Get the value of `key` from the shared state (persistent) Redis
Gitlab::Redis::SharedState.with { |redis| redis.get(key) }

# Check if `value` is a member of the set `key`
Gitlab::Redis::Cache.with { |redis| redis.sismember(key, value) }


In Redis, every value is a string. Gitlab::Redis::Boolean makes sure that booleans are encoded and decoded consistently.


The Redis PFCOUNT, PFADD, and PFMERGE commands operate on HyperLogLogs, a data structure that allows estimating the number of unique elements with low memory usage. (In addition to the PFCOUNT documentation, Thoughtbot's article on HyperLogLogs in Redis provides a good background here.)

Gitlab::Redis::HLL provides a convenient interface for adding and counting values in HyperLogLogs.


For cases where we need to efficiently check the whether an item is in a group of items, we can use a Redis set. Gitlab::SetCache provides an #include? method that uses the SISMEMBER command, as well as #read to fetch all entries in the set.

This is used by the RepositorySetCache to provide a convenient way to use sets to cache repository data like branch names.