Top Related Projects
Distributed Task Queue (development branch)
Simple job queues for Python
Beanstalk is a simple, fast work queue.
Mirror of Apache Kafka
Open source RabbitMQ: core server and tier 1 (built-in) plugins
Quick Overview
Disque is a distributed, in-memory, message broker that can be used as a scalable job queue system. It is designed to be fast, reliable, and easy to use, with features like persistence, replication, and sharding.
Pros
- Scalable and Distributed: Disque is designed to be highly scalable, with the ability to handle large volumes of messages and jobs across multiple nodes.
- Reliable and Durable: Disque provides persistence and replication, ensuring that messages and jobs are not lost even in the event of a node failure.
- Easy to Use: Disque has a simple and intuitive API, making it easy to integrate into existing applications.
- Flexible: Disque supports a variety of use cases, from job queues to pub/sub messaging, and can be customized to fit specific needs.
Cons
- Limited Language Support: Disque currently only provides official client libraries for a few programming languages (e.g., Redis, Python, Go), which may limit its adoption in some environments.
- Complexity: While Disque is designed to be easy to use, the underlying distributed architecture can add complexity to the setup and management of the system.
- Limited Documentation: The project's documentation, while generally good, could be more comprehensive and provide more examples and use cases.
- Potential Performance Overhead: Depending on the specific use case and workload, the overhead of the distributed architecture and persistence features may impact the overall performance of the system.
Code Examples
Enqueue a Job
import disque
client = disque.Disque('localhost', 7711)
client.enqueue('my_queue', 'my_job_data')
This code connects to a Disque server running on localhost:7711
and enqueues a job with the data 'my_job_data'
in the 'my_queue'
queue.
Dequeue a Job
import disque
client = disque.Disque('localhost', 7711)
job = client.dequeue('my_queue', timeout=10)
if job:
print(f'Dequeued job: {job.data}')
This code connects to the Disque server and dequeues a job from the 'my_queue'
queue, with a timeout of 10 seconds. If a job is available, it prints the job data.
Publish a Message
import disque
client = disque.Disque('localhost', 7711)
client.publish('my_channel', 'my_message_data')
This code connects to the Disque server and publishes a message with the data 'my_message_data'
to the 'my_channel'
channel.
Getting Started
To get started with Disque, follow these steps:
-
Install Disque:
- Download the latest release from the Disque GitHub repository.
- Extract the archive and navigate to the
src
directory. - Compile Disque by running
make
. - Install Disque by running
make install
.
-
Start the Disque server:
- Run the
disque
command to start the server. - By default, Disque will listen on
localhost:7711
.
- Run the
-
Use a Disque client library:
- Disque provides official client libraries for Redis, Python, and Go.
- For example, to use the Python client library, install it with
pip install disque-py
. - Refer to the Disque documentation for more information on available client libraries.
-
Interact with Disque:
- Use the client library to enqueue jobs, dequeue jobs, publish messages, and more.
- Refer to the Disque documentation for a complete list of commands and usage examples.
-
Configure and manage Disque:
- Disque supports various configuration options, such as persistence, replication, and sharding.
- Refer to the [Disque documentation](https://github.com/antirez/dis
Competitor Comparisons
Distributed Task Queue (development branch)
Pros of Celery
- More mature and widely adopted project with extensive documentation
- Supports multiple message brokers (Redis, RabbitMQ, etc.)
- Offers a rich set of features including task scheduling, retries, and monitoring
Cons of Celery
- Can be complex to set up and configure for beginners
- Requires a separate message broker, adding infrastructure complexity
Code Comparison
Celery task definition:
from celery import Celery
app = Celery('tasks', broker='redis://localhost:6379')
@app.task
def add(x, y):
return x + y
Disque job creation:
int job_id = addjob(disque, "queue_name", "job_data", 0, 0);
While Celery provides a higher-level abstraction for defining and executing tasks, Disque offers a simpler, lower-level API for job management. Celery's Python-based approach allows for more complex task definitions, while Disque's C implementation focuses on raw performance and simplicity.
Celery is better suited for larger, more complex distributed systems with diverse task requirements, while Disque excels in scenarios where raw speed and simplicity are paramount. The choice between the two depends on the specific needs of the project, including language preferences, scalability requirements, and desired feature set.
Simple job queues for Python
Pros of RQ
- Pure Python implementation, making it easier to integrate and extend in Python projects
- Supports multiple backends (Redis, SQLite, etc.) for job storage
- Provides a simple and intuitive API for job queuing and processing
Cons of RQ
- Limited to Python environments, unlike Disque's language-agnostic approach
- May have lower performance for high-throughput scenarios compared to Disque's C implementation
- Lacks some advanced features like job replication and automatic failover
Code Comparison
RQ:
from rq import Queue
from redis import Redis
q = Queue(connection=Redis())
job = q.enqueue(my_function, args=(1, 2), kwargs={'c': 3})
Disque:
di_job *job = di_create_job("queue_name", "job_data", strlen("job_data"));
di_add_job(job);
Summary
RQ is a Python-specific job queue library that offers simplicity and ease of use, while Disque is a distributed job queue system designed for high performance and reliability across multiple languages. RQ is better suited for Python-centric projects with moderate job processing needs, while Disque excels in high-throughput, multi-language environments requiring advanced features like job replication and automatic failover.
Beanstalk is a simple, fast work queue.
Pros of Beanstalkd
- Simpler and more lightweight, making it easier to set up and maintain
- Longer history and more widespread adoption, resulting in better community support
- Supports multiple programming languages through various client libraries
Cons of Beanstalkd
- Limited built-in persistence options compared to Disque's more robust approach
- Lacks advanced features like automatic replication and distribution
Code Comparison
Beanstalkd (using a Python client):
import beanstalkc
beanstalk = beanstalkc.Connection(host='localhost', port=11300)
beanstalk.put('job_data')
job = beanstalk.reserve()
job.delete()
Disque (using a Python client):
from pydisque import Client
c = Client(['localhost:7711'])
c.connect()
job_id = c.add_job('queue_name', 'job_data')
jobs = c.get_job(['queue_name'])
c.ack_job(jobs[0][1])
Both Beanstalkd and Disque are message queue systems, but they have different approaches. Beanstalkd focuses on simplicity and ease of use, while Disque offers more advanced features for distributed environments. The code examples show that both systems have similar basic operations, but Disque's API is more explicit about queue names and job IDs.
Mirror of Apache Kafka
Pros of Kafka
- Highly scalable and distributed architecture, capable of handling massive data streams
- Strong ecosystem with extensive tooling and integrations
- Supports complex stream processing and real-time analytics
Cons of Kafka
- Steeper learning curve and more complex setup compared to Disque
- Higher resource requirements for optimal performance
- Potential overkill for simpler messaging needs
Code Comparison
Disque (job queue example):
job_id = disque_add_job(client, "queue_name", "job_data", 0, "REPLICATE", "1");
Kafka (producer example):
ProducerRecord<String, String> record = new ProducerRecord<>("topic_name", "key", "value");
producer.send(record);
Summary
Kafka is a robust, distributed streaming platform suitable for large-scale data processing and analytics. It offers high scalability and a rich ecosystem but comes with increased complexity. Disque, on the other hand, is a simpler, in-memory job queue system designed for ease of use and quick setup. While Kafka excels in handling massive data streams and complex processing, Disque is more suitable for straightforward job queuing and messaging tasks with lower latency requirements.
Open source RabbitMQ: core server and tier 1 (built-in) plugins
Pros of RabbitMQ Server
- More mature and widely adopted, with extensive documentation and community support
- Supports multiple messaging protocols (AMQP, MQTT, STOMP)
- Offers advanced features like clustering, federation, and high availability
Cons of RabbitMQ Server
- Higher resource consumption and complexity compared to Disque
- Steeper learning curve for configuration and management
Code Comparison
RabbitMQ Server (Erlang):
basic_publish(Channel, Exchange, RoutingKey, Payload, Options) ->
amqp_channel:call(Channel, #'basic.publish'{
exchange = Exchange,
routing_key = RoutingKey
}, #amqp_msg{payload = Payload, props = Options}).
Disque (C):
int disqueAddJob(disque *d, const char *queue, const char *job,
mstime_t timeout, int retry, int replicate) {
return disqueCommand(d, "ADDJOB %s %s %lld RETRY %d REPLICATE %d",
queue, job, timeout, retry, replicate);
}
Summary
RabbitMQ Server is a more feature-rich and widely adopted message broker, offering support for multiple protocols and advanced clustering capabilities. However, it comes with increased complexity and resource requirements. Disque, on the other hand, is a simpler, lightweight job queue system focused on ease of use and performance for specific use cases. The code comparison highlights the different approaches: RabbitMQ uses Erlang and AMQP-specific constructs, while Disque employs a Redis-like command interface in C.
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Disque, an in-memory, distributed job queue
Disque is an ongoing experiment to build a distributed, in-memory, message broker. Its goal is to capture the essence of the "Redis as a jobs queue" use case, which is usually implemented using blocking list operations, and move it into an ad-hoc, self-contained, scalable, and fault tolerant design, with simple to understand properties and guarantees, but still resembling Redis in terms of simplicity, performance, and implementation as a C non-blocking networked server.
Currently (2 Jan 2016) the project is in release candidate state. People are encouraged to start evaluating it and report bugs and experiences.
WARNING: This is beta code and may not be suitable for production usage. The API is considered to be stable if not for details that may change in the next release candidates, however it's new code, so handle with care!
What is a message queue?
Hint: skip this section if you are familiar with message queues.
You know how humans use text messages to communicate, right? I could write my wife "please get the milk at the store", and she maybe will reply "Ok message received, I'll get two bottles on my way home".
A message queue is the same as human text messages, but for computer programs. For example a web application, when an user subscribes, may send another process, that handles sending emails, "please send the confirmation email to tom@example.net".
Message systems like Disque allow communication between processes using different queues. So a process can send a message to a queue with a given name, and only processes which fetch messages from this queue will return those messages. Moreover, multiple processes can listen for messages in a given queue, and multiple processes can send messages to the same queue.
The important part of a message queue is to be able to provide guarantees so that messages are eventually delivered even in the face of failures. So even if in theory implementing a message queue is very easy, to write a very robust and scalable one is harder than it may appear.
Give me the details!
Disque is a distributed and fault tolerant message broker, so it works as a middle layer among processes that want to exchange messages.
Producers add messages that are served to consumers. Since message queues are often used in order to process delayed jobs, Disque often uses the term "job" in the API and in the documentation, however jobs are actually just messages in the form of strings, so Disque can be used for other use cases. In this documentation "jobs" and "messages" are used in an interchangeable way.
Job queues with a producer-consumer model are pretty common, so the devil is in the details. A few details about Disque are:
Disque is a synchronously replicated job queue. By default when a new job is added, it is replicated to W nodes before the client gets an acknowledgement about the job being added. W-1 nodes can fail and the message will still be delivered.
Disque supports both at-least-once and at-most-once delivery semantics. At-least-once delivery semantics is where most effort was spent in the design and implementation, while at-most-once semantics is a trivial result of using a retry time set to 0 (which means, never re-queue the message again) and a replication factor of 1 for the message (not strictly needed, but it is useless to have multiple copies of a message around if it will be delivered at most one time). You can have, at the same time, both at-least-once and at-most-once jobs in the same queues and nodes, since this is a per message setting.
Disque at-least-once delivery is designed to approximate single delivery when possible, even during certain kinds of failures. This means that while Disque can only guarantee a number of deliveries equal or greater to one, it will try hard to avoid multiple deliveries whenever possible.
Disque is a distributed system where all nodes have the same role (aka, it is multi-master). Producers and consumers can attach to whatever node they like, and there is no need for producers and consumers of the same queue to stay connected to the same node. Nodes will automatically exchange messages based on load and client requests.
Disque is Available (it is an eventually consistent AP system in CAP terms): producers and consumers can make progress as long as a single node is reachable.
Disque supports optional asynchronous commands that are low latency for the client but provide less guarantees. For example a producer can add a job to a queue with a replication factor of 3, but may want to run away before knowing if the contacted node was really able to replicate it to the specified number of nodes or not. The node will replicate the message in the background in a best effort way.
Disque automatically re-queues messages that are not acknowledged as already processed by consumers, after a message-specific retry time. There is no need for consumers to re-queue a message if it was not processed.
Disque uses explicit acknowledges in order for a consumer to signal a message as delivered (or, using a different terminology, to signal a job as already processed).
Disque queues only provides best effort ordering. Each queue sorts messages based on the job creation time, which is obtained using the wall clock of the local node where the message was created (plus an incremental counter for messages created in the same millisecond), so messages created in the same node are normally delivered in the same order they were created. This is not causal ordering since correct ordering is violated in different cases: when messages are re-issued because they are not acknowledged, because of nodes local clock drifts, and when messages are moved to other nodes for load balancing and federation (in this case you end with queues having jobs originated in different nodes with different wall clocks). However all this also means that normally messages are not delivered in random order and usually messages created first are delivered first.
Note that since Disque does not provide strict FIFO semantics, technically speaking it should not be called a message queue, and it could better identified as a message broker. However I believe that at this point in the IT industry a message queue is often more lightly used to identify a generic broker that may or may not be able to guarantee order in all cases. Given that we document the semantics very clearly, I grant myself the right to call Disque a message queue anyway.
Disque provides the user with fine-grained control for each job using three time related parameters, and one replication parameter. For each job, the user can control:
- The replication factor (how many nodes have a copy).
- The delay time (the min time Disque will wait before putting the message in a queue, making the message deliverable).
- The retry time (how much time should elapse since the last time the job was queued and without an acknowledge about the job delivery, before the job is re-queued for delivery).
- The expire time (how much time should elapse for the job to be deleted regardless of whether it was successfully delivered, i.e. acknowledged, or not).
Finally, Disque supports optional disk persistence, which is not enabled by default, but that can be handy in single data center setups and during restarts.
Other minor features are:
- Ability to block queues.
- A few statistics about queue activity.
- Stateless iterators for queues and jobs.
- Commands to control the visibility of single jobs.
- Easy resize of the cluster (adding nodes is trivial).
- Graceful removal of nodes without losing job replicas.
ACKs and retries
Disque's implementation of at-least-once delivery semantics is designed in order to avoid multiple delivery during certain classes of failures. It is not able to guarantee that no multiple deliveries will occur. However there are many at-least-once workloads where duplicated deliveries are acceptable (or explicitly handled), but not desirable either. A trivial example is sending emails to users (it is not terrible if an user gets a duplicated email, but is important to avoid it when possible), or doing idempotent operations that are expensive (all the times where it is critical for performance to avoid multiple deliveries).
In order to avoid multiple deliveries when possible, Disque uses client ACKs. When a consumer processes a message correctly, it should acknowledge this fact to Disque. ACKs are replicated to multiple nodes, and are garbage collected as soon as the system believes it is unlikely that more nodes in the cluster have the job (the ACK refers to) still active. Under memory pressure or under certain failure scenarios, ACKs are eventually discarded.
More explicitly:
- A job is replicated to multiple nodes, but usually only queued in a single node. There is a difference between having a job in memory, and queueing it for delivery.
- Nodes having a copy of a message, if a certain amount of time has elapsed without getting the ACK for the message, will re-queue it. Nodes will run a best-effort protocol to avoid re-queueing the message multiple times.
- ACKs are replicated and garbage collected across the cluster so that eventually processed messages are evicted (this happens ASAP if there are no failures nor network partitions).
For example, if a node having a copy of a job gets partitioned away during the time the job gets acknowledged by the consumer, it is likely that when it returns (in a reasonable amount of time, that is, before the retry time is reached) it will be informed about the ACK and will avoid to re-queue the message. Similarly, jobs can be acknowledged during a partition to just a single available node, and when the partition heals the ACK will be propagated to other nodes that may still have a copy of the message.
So an ACK is just a proof of delivery that is replicated and retained for some time in order to make multiple deliveries less likely to happen in practice.
As already mentioned, in order to control replication and retries, a Disque job has the following associated properties: number of replicas, delay, retry and expire.
If a job has a retry time set to 0, it will get queued exactly once (and in this case a replication factor greater than 1 is useless, and signaled as an error to the user), so it will get delivered either a single time or will never get delivered. While jobs can be persisted on disk for safety, queues aren't, so this behavior is guaranteed even when nodes restart after a crash, whatever the persistence configuration is. However when nodes are manually restarted by the sysadmin, for example for upgrades, queues are persisted correctly and reloaded at startup, since the store/load operation is atomic in this case, and there are no race conditions possible (it is not possible that a job was delivered to a client and is persisted on disk as queued at the same time).
Fast acknowledges
Disque supports a faster way to acknowledge processed messages, via the
FASTACK
command. The normal acknowledge is very expensive from the point of
view of messages exchanged between nodes, this is what happens during a normal
acknowledge:
- The client sends ACKJOB to one node.
- The node sends a SETACK message to everybody it believes to have a copy.
- The receivers of SETACK reply with GOTACK to confirm.
- The node finally sends DELJOB to all the nodes.
Note: actual garbage collection is more complex in case of failures and is explained in the state machine later. The above is what happens 99% of times.
If a message is replicated to 3 nodes, acknowledging requires 1+2+2+2 messages, for the sake of retaining the ack if some nodes may not be reached when the message is acknowledged. This makes the probability of multiple deliveries of this message less likely.
However the alternative fast ack, while less reliable, is much faster and invovles exchanging less messages. This is how a fast acknowledge works:
- The client sends
FASTACK
to one node. - The node evicts the job and sends a best effort DELJOB to all the nodes that may have a copy, or to all the cluster if the node was not aware of the job.
If during a fast acknowledge a node having a copy of the message is not reachable, for example because of a network partition, the node will deliver the message again, since it has a non-acknowledged copy of the message and there is nobody able to inform it the message has been acknowledged when the partition heals.
If the network you are using is pretty reliable, and you are very concerned with
performance, and multiple deliveries in the context of your applications are
a non issue, then FASTACK
is probably the way to go.
Dead letter queue
Many message queues implement a feature called dead letter queue. It is a special queue used in order to accumulate messages that cannot be processed for some reason. Common causes could be:
- The message was delivered too many times but never correctly processed.
- The message time-to-live reached zero before it was processed.
- Some worker explicitly asked the system to flag the message as having issues.
The idea is that the administrator of the system checks (usually via automatic systems) if there is something in the dead letter queue in order to understand if there is some software error or other kind of error preventing messages from being processed as expected.
Since Disque is an in-memory system, the message time-to-live is an important property. When it is reached, we want messages to go away, since the TTL should be chosen so that after such a time it is no longer meaningful to process the message. In such a system, to use memory and create a queue in response to an error or to messages timing out looks like a non optimal idea. Moreover, due to the distributed nature of Disque, dead letters could end up spawning multiple nodes and having duplicated entries in them.
So Disque uses a different approach. Each node message representation has two counters: a nacks counter and an additional deliveries counter. The counters are not consistent among nodes having a copy of the same message, they are just best effort counters that may not increment in some node during network partitions.
The idea of these two counters is that one is incremented every time a worker
uses the NACK
command to tell the queue the message was not processed correctly
and should be put back on the queue ASAP. The other is incremented for every other condition (different than the NACK
call) that requires a message to be put back
on the queue again. This includes messages that get lost and are enqueued again
or messages that are enqueued on one side of the partition since the message
was processed on the other side and so forth.
Using the GETJOB
command with the WITHCOUNTERS
option, or using the
SHOW
command to inspect a job, it is possible to retrieve these two counters
together with the other job information, so if a worker, before processing
a message, sees the counters have values over some application-defined limit, it
can notify operations people in multiple ways:
- It may send an email.
- Set a flag in a monitoring system.
- Put the message in a special queue (simulating the dead letter feature).
- Attempt to process the message and report the stack trace of the error if any.
Basically the exact handling of the feature is up to the application using Disque. Note that the counters don't need to be consistent in the face of failures or network partitions: the idea is that eventually if a message has issues the counters will get incremented enough times to reach the limit selected by the application as a warning threshold.
The reason for having two distinct counters is that applications may want
to handle the case of explicit negative acknowledges via NACK
differently
than multiple deliveries because of timeouts or messages getting lost.
Disque and disk persistence
Disque can be operated in-memory only, using synchronous replication as a durability guarantee, or can be operated using the Append Only File where jobs creations and evictions are logged on disk (with configurable fsync policies) and reloaded at restart.
AOF is recommended especially if you run in a single availability zone where a mass reboot of all your nodes is possible.
Normally Disque only reloads job data in memory, without populating queues, since unacknowledged jobs are requeued eventually. Moreover, reloading queue data is not safe in the case of at-most-once jobs having the retry value set to 0. However a special option is provided in order to reload the full state from the AOF. This is used together with an option that allows shutting down the server just after the AOF is generated from scratch, in order to make it safe even to reload jobs with retry set to 0, since the AOF is generated while the server no longer accepts commands from clients, so no race condition is possible.
Even when running memory-only, Disque is able to dump its memory on disk and reload from disk on controlled restarts, for example in order to upgrade the software.
This is how to perform a controlled restart, that works whether AOF is enabled or not:
- CONFIG SET aof-enqueue-jobs-once yes
- CONFIG REWRITE
- SHUTDOWN REWRITE-AOF
At this point we have a freshly generated AOF on disk, and the server is
configured in order to load the full state only at the next restart
(aof-enqueue-jobs-once
is automatically turned off after the restart).
We can just restart the server with the new software, or in a new server, and
it will restart with the full state. Note that aof-enqueue-jobs-once
implies loading the AOF even if AOF support is switched off, so there is
no need to enable AOF just for the upgrade of an in-memory only server.
Job IDs
Disque jobs are uniquely identified by an ID like the following:
D-dcb833cf-8YL1NT17e9+wsA/09NqxscQI-05a1
Job IDs are composed of exactly 40 characters and start with the prefix D-
.
We can split an ID into multiple parts:
D- | dcb833cf | 8YL1NT17e9+wsA/09NqxscQI | 05a1
D-
is the prefix.dcb833cf
is the first 8 bytes of the node ID where the message was generated.8YL1NT17e9+wsA/09NqxscQI
is the 144 bit ID pseudo-random part encoded in base64.05a1
is the Job TTL in minutes. Because of it, message IDs can be expired safely even without having the job representation.
IDs are returned by ADDJOB when a job is successfully created, are part of the GETJOB output, and are used in order to acknowledge that a job was correctly processed by a worker.
Part of the node ID is included in the message so that a worker processing messages for a given queue can easily guess what are the nodes where jobs are created, and move directly to these nodes to increase efficiency instead of listening for messages in a node that will require to fetch messages from other nodes.
Only 32 bits of the original node ID is included in the message, however in a cluster with 100 Disque nodes, the probability of two nodes having identical 32 bit ID prefixes is given by the birthday paradox:
P(100,2^32) = .000001164
In case of collisions, the workers may just make a non-efficient choice.
Collisions in the 144 bits random part are believed to be impossible, since it is computed as follows.
144 bit ID = HIGH_144_BITS_OF_SHA1(seed || counter)
Where:
- seed is a seed generated via
/dev/urandom
at startup. - counter is a 64 bit counter incremented at every ID generation.
So there are 22300745198530623141535718272648361505980416 possible IDs, selected in a uniform way. While the probability of a collision is non-zero mathematically, in practice each ID can be regarded as unique.
The encoded TTL in minutes has a special property: it is always even for at most once jobs (job retry value set to 0), and is always odd otherwise. This changes the encoded TTL precision to 2 minutes, but allows to tell if a Job ID is about a job with deliveries guarantees or not. Note that this fact does not mean that Disque jobs TTLs have a precision of two minutes. The TTL field is only used to expire job IDs of jobs a given node does not actually have a copy, search "dummy ACK" in this documentation for more information.
Setup
To play with Disque please do the following:
- Compile Disque - if you can compile Redis, you can compile Disque, it's the usual "no external deps" thing. Just type
make
. Binaries (disque
anddisque-server
) will end up in thesrc
directory. - Run a few Disque nodes on different ports. Create different
disque.conf
files following the exampledisque.conf
in the source distribution. - After you have them running, you need to join the cluster. Just select a random node among the nodes you are running, and send the command
CLUSTER MEET <ip> <port>
for every other node in the cluster.
Please note that you need to open two TCP ports on each node, the base port of the Disque instance, for example 7711, plus the cluster bus port, which is always at a fixed offset, obtained summing 10000 to the base port, so in the above example, you need to open both 7711 and 17711. Disque uses the base port to communicate with clients and the cluster bus port to communicate with other Disque processes.
To run a node, just call ./disque-server
.
For example, if you are running three Disque servers in port 7711, 7712, 7713, in order to join the cluster you should use the disque
command line tool and run the following commands:
./disque -p 7711 cluster meet 127.0.0.1 7712
./disque -p 7711 cluster meet 127.0.0.1 7713
Your cluster should now be ready. You can try to add a job and fetch it back in order to test if everything is working:
./disque -p 7711
127.0.0.1:7711> ADDJOB queue body 0
D-dcb833cf-8YL1NT17e9+wsA/09NqxscQI-05a1
127.0.0.1:7711> GETJOB FROM queue
1) 1) "queue"
2) "D-dcb833cf-8YL1NT17e9+wsA/09NqxscQI-05a1"
3) "body"
Remember that you can add and get jobs from different nodes as Disque is multi master. Also remember that you need to acknowledge jobs otherwise they'll never go away from the server memory (unless the time-to-live is reached).
Main API
The Disque API is composed of a small set of commands, since the system solves a single very specific problem. The three main commands are:
ADDJOB queue_name job <ms-timeout> [REPLICATE <count>] [DELAY <sec>] [RETRY <sec>] [TTL <sec>] [MAXLEN <count>] [ASYNC]
Adds a job to the specified queue. Arguments are as follows:
- queue_name is the name of the queue, any string, basically. You don't need to create queues, if a queue does not exist, it gets created automatically. If one has no more jobs, it gets removed.
- job is a string representing the job. Disque is job meaning agnostic, for it a job is just a message to deliver. Job max size is 4GB.
- ms-timeout is the command timeout in milliseconds. If no ASYNC is specified, and the replication level specified is not reached in the specified number of milliseconds, the command returns with an error, and the node does a best-effort cleanup, that is, it will try to delete copies of the job across the cluster. However the job may still be delivered later. Note that the actual timeout resolution is 1/10 of second or worse with the default server hz.
- REPLICATE count is the number of nodes the job should be replicated to.
- DELAY sec is the number of seconds that should elapse before the job is queued by any server. By default there is no delay.
- RETRY sec period after which, if no ACK is received, the job is put into the queue again for delivery. If RETRY is 0, the job has at-most-once delivery semantics. The default retry time is 5 minutes, with the exception of jobs having a TTL so small that 10% of TTL is less than 5 minutes. In this case the default RETRY is set to TTL/10 (with a minimum value of 1 second).
- TTL sec is the max job life in seconds. After this time, the job is deleted even if it was not successfully delivered. If not specified, the default TTL is one day.
- MAXLEN count specifies that if there are already count messages queued for the specified queue name, the message is refused and an error reported to the client.
- ASYNC asks the server to let the command return ASAP and replicate the job to other nodes in the background. The job gets queued ASAP, while normally the job is put into the queue only when the client gets a positive reply.
The command returns the Job ID of the added job, assuming ASYNC is specified, or if the job was replicated correctly to the specified number of nodes. Otherwise an error is returned.
GETJOB [NOHANG] [TIMEOUT <ms-timeout>] [COUNT <count>] [WITHCOUNTERS] FROM queue1 queue2 ... queueN
Return jobs available in one of the specified queues, or return NULL if the timeout is reached. A single job per call is returned unless a count greater than 1 is specified. Jobs are returned as a three-element array containing the queue name, the Job ID, and the job body itself. If jobs are available in multiple queues, queues are processed left to right.
If there are no jobs for the specified queues, the command blocks, and messages are exchanged with other nodes, in order to move messages about these queues to this node, so that the client can be served.
Options:
- NOHANG: Ask the command to not block even if there are no jobs in all the specified queues. This way the caller can just check if there are available jobs without blocking at all.
- WITHCOUNTERS: Return the best-effort count of NACKs (negative acknowledges) received by this job, and the number of additional deliveries performed for this job. See the Dead Letters section for more information.
ACKJOB jobid1 jobid2 ... jobidN
Acknowledges the execution of one or more jobs via job IDs. The node receiving the ACK will replicate it to multiple nodes and will try to garbage collect both the job and the ACKs from the cluster so that memory can be freed.
A node receiving an ACKJOB command about a job ID it does not know will create a special empty job, with the state set to "acknowledged", called a "dummy ACK". The dummy ACK is used in order to retain the acknolwedge during a netsplit if the ACKJOB is sent to a node that does not have a copy of the job. When the partition heals, job garbage collection will be attempted.
However, since the job ID encodes information about the job being an "at-most- once" or an "at-least-once" job, the dummy ACK is only created for at-least- once jobs.
FASTACK jobid1 jobid2 ... jobidN
Performs a best-effort cluster-wide deletion of the specified job IDs. When the
network is well connected and there are no node failures, this is equivalent to
ACKJOB
but much faster (due to less messages being exchanged), however during
failures it is more likely that fast acknowledges will result in multiple
deliveries of the same messages.
WORKING jobid
Claims to be still working with the specified job, and asks Disque to postpone the next time it will deliver the job again. The next delivery is postponed for the job retry time, however the command works in a best effort way since there is no way to guarantee during failures that another node in a different network partition won't perform a delivery of the same job.
Another limitation of the WORKING
command is that it cannot be sent to
nodes not knowing about this particular job. In such a case the command replies
with a NOJOB
error. Similarly, if the job is already acknowledged an error
is returned.
Note that the WORKING
command is refused by Disque nodes if 50% of the job
time to live has already elapsed. This limitation makes Disque safer since
usually the retry time is much smaller than the time-to-live of a job, so
it can't happen that a set of broken workers monopolize a job with WORKING
and never process it. After 50% of the TTL has elapsed, the job will be delivered
to other workers anyway.
Note that WORKING
returns the number of seconds you (likely) postponed the
message visibility for other workers (the command basically returns the
retry time of the job), so the worker should make sure to send the next
WORKING
command before this time elapses. Moreover, a worker that may want
to use this interface may fetch the retry value with the SHOW
command
when starting to process a message, or may simply send a WORKING
command
ASAP, like in the following example (in pseudo code):
retry = WORKING(jobid)
RESET timer
WHILE ... work with the job still not finished ...
IF timer reached 80% of the retry time
WORKING(jobid)
RESET timer
END
END
NACK <job-id> ... <job-id>
The NACK
command tells Disque to put the job back in the queue ASAP. It
is very similar to ENQUEUE
but it increments the job nacks
counter
instead of the additional-deliveries
counter. The command should be used
when the worker was not able to process a message and wants the message to
be put back into the queue in order to be processed again.
Other commands
INFO
Generic server information / stats.
HELLO
Returns hello format version, this node ID, all the nodes IDs, IP addresses, ports, and priority (lower is better, means a node is more available). Clients should use this as a handshake command when connecting with a Disque node.
QLEN <queue-name>
Return the length of the queue.
QSTAT <queue-name>
Show information about a queue as an array of key-value pairs. Below is an example of the output, however, implementations should not rely on the order of the fields nor on the existence of the fields listed. They may be (unlikely) removed or more can be (likely) added in the future.
If a queue does not exist, NULL is returned. Note that queues are automatically evicted after some time if empty and without clients blocked waiting for jobs, even if there are active jobs for the queue. So the non existence of a queue does not mean there are not jobs in the node or in the whole cluster about this queue. The queue will be immediately created again when needed to serve requests.
Example output:
QSTAT foo
1) "name"
2) "foo"
3) "len"
4) (integer) 56520
5) "age"
6) (integer) 601
7) "idle"
8) (integer) 3
9) "blocked"
10) (integer) 50
11) "import-from"
12) 1) "dcb833cf8f42fbb7924d92335ff6d67d3cea6e3d"
2) "4377bdf656040a18d8caf4d9f409746f1f9e6396"
13) "import-rate"
14) (integer) 19243
15) "jobs-in"
16) (integer) 3462847
17) "jobs-out"
18) (integer) 3389522
19) "pause"
20) "none"
Most fields should be obvious. The import-from
field shows a list of node
IDs this node is importing jobs from, for this queue, in order to serve
clients requests. The import-rate
is the instantaneous amount of jos/sec
we import in order to handle our outgoing traffic (GETJOB commands).
blocked
is the number of clients blocked on this queue right now.
age
and idle
are reported in seconds. The jobs-in
and -out
counters are
incremented every time a job is enqueued or dequeued for any reason.
QPEEK <queue-name> <count>
Return, without consuming from the queue, count jobs. If count is positive the specified number of jobs are returned from the oldest to the newest (in the same best-effort FIFO order as GETJOB). If count is negative the commands changes behavior and shows the count newest jobs, from the newest from the oldest.
ENQUEUE <job-id> ... <job-id>
Queue jobs if not already queued.
DEQUEUE <job-id> ... <job-id>
Remove the job from the queue.
DELJOB <job-id> ... <job-id>
Completely delete a job from a node.
Note that this is similar to FASTACK
, but limited to a single node since
no DELJOB
cluster bus message is sent to other nodes.
SHOW <job-id>
Describe the job.
QSCAN [COUNT <count>] [BUSYLOOP] [MINLEN <len>] [MAXLEN <len>] [IMPORTRATE <rate>]
The command provides an interface to iterate all the existing queues in the local node, providing a cursor in the form of an integer that is passed to the next command invocation. During the first call, the cursor must be 0, in the next calls the cursor returned in the previous call is used in the next. The iterator guarantees to return all the elements but may return duplicated elements.
Options:
COUNT <count>
A hint about how much work to do per iteration.BUSYLOOP
Block and return all the elements in a busy loop.MINLEN <count>
Don't return elements with less thancount
jobs queued.MAXLEN <count>
Don't return elements with more thancount
jobs queued.IMPORTRATE <rate>
Only return elements with a job import rate (from other nodes)>=
rate
.
The cursor argument can be in any place, the first non matching option that has valid cursor form of an unsigned number will be sensed as a valid cursor.
JSCAN [<cursor>] [COUNT <count>] [BUSYLOOP] [QUEUE <queue>] [STATE <state1> STATE <state2> ... STATE <stateN>] [REPLY all|id]
The command provides an interface to iterate all the existing jobs in the local node, providing a cursor in the form of an integer that is passed to the next command invocation. During the first call the cursor must be 0, in the next calls the cursor returned in the previous call is used in the next. The iterator guarantees to return all the elements but may return duplicated elements.
Options:
COUNT <count>
A hint about how much work to do per iteration.BUSYLOOP
Block and return all the elements in a busy loop.QUEUE <queue>
Return only jobs in the specified queue.STATE <state>
Return jobs in the specified state. Can be used multiple times for a logical OR.REPLY <type>
Job reply type. Type can beall
orid
. Default is to report just the job ID. Ifall
is specified the full job state is returned like for the SHOW command.
The cursor argument can be in any place, the first non matching option that has valid cursor form of an unsigned number will be sensed as a valid cursor.
PAUSE <queue-name> option1 [option2 ... optionN]
Control the paused state of a queue, possibly broadcasting the command to other nodes in the cluster. Disque queues can be paused in both directions, input and output, or both. Pausing a queue makes it unavailable for input or output operations. Specifically:
A queue paused in input will have changed behavior in the following ways:
- ADDJOB returns a
-PAUSED
error for queues paused in input. - The node where the queue is paused, no longer accepts to replicate jobs for this queue when requested by other nodes. Since ADDJOB by default uses synchronous replication, it means that if the queue is paused in enough nodes, adding jobs with a specified level of replication may fail. In general the node where the queue is paused will not create new jobs in the local node about this queue.
- The job no longer accepts ENQUEUE messages from other nodes. Those messages are usually used by nodes in out of memory conditions that replicate jobs externally (not holding a copy), in order to put the job in the queue of some random node, among the nodes having a copy of a job.
- Active jobs that reach their retry time, are not put back into the queue. Instead their retry timer is updated and the node will try again later.
Basically a queue paused in input never creates new jobs for this queue, and never puts active jobs (jobs for which the node has a copy but are not currently queued) back in the queue, for all the time the queue is paused.
A queue paused in output instead will behave in the following way:
- GETJOB will block even if there are jobs available in the specified queue, instead of serving the jobs. But GETJOB will unblock if the queue output pause is cleared later.
- The node will not provide jobs to other nodes in the context of node federation, for paused queues.
So a queue paused in output will stop acting as a source of messages for both local and non local clients.
The paused state can be set for each queue using the PAUSE command followed by options to specify how to change the paused state. Possible options are:
- in: pause the queue in input.
- out: pause the queue in output.
- all: pause the queue in input and output (same as specifying both the in and out options).
- none: clear the paused state in input and output.
- state: just report the current queue state.
- bcast: send a PAUSE command to all the reachable nodes of the cluster to set the same queue in the other nodes to the same state.
The command always returns the state of the queue after the execution of the specified options, so the return value is one of in, out, all, none.
Queues paused in input or output are never evicted to reclaim memory, even if they are empty and inactive for a long time, since otherwise the paused state would be forgotten.
For example, in order to block output for the queue myqueue
in all the
currently reachable nodes, the following command should be send to a single node:
PAUSE myqueue out bcast
To specify all is the same as to specify both in and out, so the two following forms are equivalent:
PAUSE myqueue in out
PAUSE myqueue all
To just get the current state use:
PAUSE myqueue state
"none"
Special handling of messages with RETRY set to 0
In order to provide a coherent API, messages with at-most-once delivery semantics are still retained after being delivered a first time, and should be acknowledged like any other message. Of course, the acknowledge is not mandatory, since the message may be lost and there is no way for the receiver to get the same message again, since the message is associated with a retry value of 0.
In order to avoid non acknowledged messages with retry set to 0 from leaking into Disque and eating all the memory, when the Disque server memory is full and starts to evict, it does not just evict acknowledged messages, but also can evict non acknowledged messages having, at the same time, the following two properties:
- Their retry is set to 0.
- The job was already delivered.
In theory, acknowledging a job that will never be retried is a waste of time and resources, however this design has hidden advantages:
- The API is exactly the same for all the kinds of jobs.
- After the job is delivered, it is still possible to examine it. Observability is a very good property of messaging systems.
However, not acknowledging the job does not result in big issues since they are evicted eventually during memory pressure.
Adding and removing nodes at runtime
Adding nodes is trivial, and just consists in starting a new node and sending it
a CLUSTER MEET
command. Assuming the node you just started is located
at address 192.168.1.10 port 7714, and a random (you can use any) node of
the existing cluster is located at 192.168.1.9 port 7711, all you need to do
is:
./disque -h 192.168.1.10 -p 7714 cluster meet 192.168.1.9 7711
Note that you can invert the source and destination arguments and the new node will still join the cluster. It does not matter if it's the old node to meet the new one or the other way around.
In order to remove a node, it is possible to use the crude way of just
shutting it down, and then use CLUSTER FORGET <old-node-id>
in all the
other nodes in order to remove references to it from the configuration of
the other nodes. However this means that, for example, messages that had
a replication factor of 3, and one of the replicas was the node you are
shutting down, suddenly are left with just 2 replicas even if no actual
failure happened. Moreover if the node you are removing had messages in
queue, you'll need to wait the retry time before the messages will be
queued again. For all these reasons, Disque has a better way to remove nodes
which is described in the next section.
Gracefully removal of nodes
In order to empty a node of its content before removing it, it is possible to use a feature that puts a node in leaving state. To enable this feature just contact the node to remove, and use the following command:
CLUSTER LEAVING yes
The node will start advertising itself as leaving, so in a matter of seconds all the cluster will know (if there are partitions, when the partition heals all the nodes will eventually be informed), and this is what happens when the node is in this state:
- When the node receives
ADDJOB
commands, it performs external replication, like when a node is near the memory limits. This means that it will make sure to create the number of replicas of the message in the cluster without using itself as a replica. So no new messages are created in the context of a node which is leaving. - The node starts to send
-LEAVING
messages to all clients that useGETJOB
but would block waiting for jobs. The-LEAVING
error means the clients should connect to another node. Clients that were already blocked waiting for messages will be unblocked and a-LEAVING
error will be sent to them as well. - The node no longer sends
NEEDJOBS
messages in the context of Disque federation, so it will never ask other nodes to transfer messages to it. - The node and all the other nodes will advertise it with a bad priority in the
HELLO
command output, so that clients will select a different node. - The node will no longer create dummy acks in response to an
ACKJOB
command about a job it does not know.
All these behavior changes result in the node participating only as a source of messages, so eventually its message count will drop to zero (it is possible to check for this condition using INFO jobs
). When this happens the node can be stopped and removed from the other nodes tables using CLUSTER FORGET
as described in the section above.
Client libraries
Disque uses the same protocol as Redis itself. To adapt Redis clients, or to use them directly, should be pretty easy. However note that Disque's default port is 7711 and not 6379.
While a vanilla Redis client may work well with Disque, clients should optionally use the following protocol in order to connect with a Disque cluster:
- The client should be given a number of IP addresses and ports where nodes are located. The client should select random nodes and should try to connect until an available one is found.
- On a successful connection the
HELLO
command should be used in order to retrieve the Node ID and other potentially useful information (server version, number of nodes). - If a consumer sees a high message rate received from foreign nodes, it may optionally have logic in order to retrieve messages directly from the nodes where producers are producing the messages for a given topic. The consumer can easily check the source of the messages by checking the Node ID prefix in the messages IDs.
- The
GETJOB
command, or other commands, may return a-LEAVING
error instead of blocking. This error should be considered by the client library as a request to connect to a different node, since the node it is connected to is not able to serve the request since it is leaving the cluster. Nodes in this state have a very high priority number published viaHELLO
, so will be unlikely to be picked at the next connection attempt.
This way producers and consumers will eventually try to minimize node message exchanges whenever possible.
So basically you could perform basic usage using just a Redis client, however there are already specialized client libraries implementing a more specialized API on top of Disque:
C++
Common Lisp
Elixir
Erlang
Go
Java
Node.js
Perl
PHP
- phpque (PHP/HHVM)
- disque-php (Composer/Packagist)
- disque-client-php (Composer/Packagist)
- phloppy (Composer/Packagist)
Python
Ruby
Rust
.NET
Implementation details
Job replication strategy
- Disque tries to replicate to W-1 (or W during out of memory) reachable nodes, shuffled.
- The cluster REPLJOB message is used to replicate a job to multiple nodes, the job is sent together with the list of nodes that may have a copy.
- If the required replication is not reached promptly, the job is send to one additional node every 50 milliseconds. When this happens, a new REPLJOB message is also re-sent to each node that may already have a copy, in order to refresh the list of nodes that have a copy.
- If the specified synchronous replication timeout is reached, the node that originally received the ADDJOB command from the client gives up and returns an error to the client. When this happens the node performs a best-effort procedure to delete the job from nodes that may have already received a copy of the job.
Cluster topology
Disque is a full mesh, with each node connected to each other. Disque performs distributed failure detection via gossip, only in order to adjust the replication strategy (try reachable nodes first when trying to replicate a message), and in order to inform clients about non reachable nodes when they want the list of nodes they can connect to.
As Disque is multi-master, the event of nodes failing is not handled in any special way.
Cluster messages
Nodes communicate via a set of messages, using the node-to-node message bus. A few of the messages are used in order to check that other nodes are reachable and to mark nodes as failing. Those messages are PING, PONG and FAIL. Since failure detection is only used to adjust the replication strategy (talk with reachable nodes first in order to improve latency), the details are yet not described. Other messages are more important since they are used in order to replicate jobs, re-issue jobs while trying to minimize multiple deliveries, and in order to auto-federate to serve consumers when messages are produced in different nodes compared to where consumers are.
The following is a list of messages and what they do, split by category. Note that this is just an informal description, while in the next sections describing the Disque state machine, there is a more detailed description of the behavior caused by message reception, and in what cases they are generated.
Cluster messages related to jobs replication and queueing
- REPLJOB: ask the receiver to replicate a job, that is, to add a copy of the job among the registered jobs in the target node. When a job is accepted, the receiver replies with GOTJOB to the sender. A job may not be accepted if the receiving node is near out of memory. In this case GOTJOB is not sent and the message discarded.
- GOTJOB: The reply to REPLJOB to confirm the job was replicated.
- ENQUEUE: Ask a node to put a given job into its queue. This message is used when a job is created by a node that does not want to take a copy, so it asks another node (among the ones that acknowledged the job replication) to queue it for the first time. If this message is lost, after the retry time some node will try to re-queue the message, unless retry is set to zero.
- WILLQUEUE: This message is sent 500 milliseconds before a job is re-queued to all the nodes that may have a copy of the message, according to the sender table. If some of the receivers already have the job queued, they'll reply with QUEUED in order to prevent the sender to queue the job again (avoid multiple delivery when possible).
- QUEUED: When a node re-queues a job, it sends QUEUED to all the nodes that may have a copy of the message, so that the other nodes will update the time at which they'll retry to queue the job. Moreover, every node that already has the same job in queue, but with a node ID which is lexicographically smaller than the sending node, will de-queue the message in order to best-effort de-dup messages that may be queued in multiple nodes at the same time.
Cluster messages related to ACK propagation and garbage collection
- SETACK: This message is sent to force a node to mark a job as successfully delivered (acknowledged by the worker): the job will no longer be considered active, and will never be re-queued by the receiving node. Also SETACK is send to the sender if the receiver of QUEUED or WILLQUEUE message has the same job marked as acknowledged (successfully delivered) already.
- GOTACK: This message is sent in order to acknowledge a SETACK message. The receiver can mark a given node that may have a copy of a job, as informed about the fact that the job was acknowledged by the worker. Nodes delete (garbage collect) a message cluster wide when they believe all the nodes that may have a copy are informed about the fact the job was acknowledged.
- DELJOB: Ask the receiver to remove a job. Is only sent in order to perform garbage collection of jobs by nodes that are sure the job was already delivered correctly. Usually the node sending DELJOB only does that when its sure that all the nodes that may have a copy of the message already marked the message ad delivered, however after some time the job GC may be performed anyway, in order to reclaim memory, and in that case, an otherwise avoidable multiple delivery of a job may happen. The DELJOB message is also used in order to implement fast acknowledges.
Cluster messages related to nodes federation
-
NEEDJOBS(queue,count): The sender asks the receiver to obtain messages for a given queue, possibly count messages, but this is only an hit for congestion control and messages optimization, the receiver is free to reply with whatever number of messages. NEEDJOBS messages are delivered in two ways: broadcasted to every node in the cluster from time to time, in order to discover new source nodes for a given queue, or more often, to a set of nodes that recently replies with jobs for a given queue. This latter mechanism is called an ad hoc delivery, and is possible since every node remembers for some time the set of nodes that were recent providers of messages for a given queue. In both cases, NEEDJOBS messages are delivered with exponential delays, with the exception of queues that drop to zero-messages and have a positive recent import rate, in this case an ad hoc NEEDJOBS delivery is performed regardless of the last time the message was delivered in order to allow a continuous stream of messages under load.
-
YOURJOBS(array of messages): The reply to NEEDJOBS. An array of serialized jobs, usually all about the same queue (but future optimization may allow to send different jobs from different queues). Jobs into YOURJOBS replies are extracted from the local queue, and queued at the receiver node's queue with the same name. So even messages with a retry set to 0 (at most once delivery) still guarantee the safety rule since a given message may be in the source node, on the wire, or already received in the destination node. If a YOURJOBS message is lost, at least once delivery jobs will be re-queued later when the retry time is reached.
Disque state machine
This section shows the most interesting (as in less obvious) parts of the state machine each Disque node implements. While practically it is a single state machine, it is split in sections. The state machine description uses a convention that is not standard but should look familiar, since it is event driven, made of actions performed upon: message receptions in the form of commands received from clients, messages received from other cluster nodes, timers, and procedure calls.
Note that: job
is a job object with the following fields:
job.delivered
: A list of nodes that may have this message. This list does not need to be complete, is used for best-effort algorithms.job.confirmed
: A list of nodes that confirmed reception of ACK by replying with a GOTJOB message.job.id
: The job 48 chars ID.job.state
: The job state among:wait-repl
,active
,queued
,acked
.job.replicate
: Replication factor for this job.job.qtime
: Time at which we need to re-queue the job.
List fields such as .delivered
and .confirmed
support methods like .size
to get the number of elements.
States are as follows:
wait-repl
: the job is waiting to be synchronously replicated.active
: the job is active, either it reached the replication factor in the originating node, or it was created because the node received anREPLJOB
message from another node.queued
: the job is active and also is pending into a queue in this node.acked
: the job is no longer active since a client confirmed the reception using theACKJOB
command or another Disque node sent aSETACK
message for the job.
Generic functions
PROCEDURE LOOKUP-JOB(string job-id)
:
- If job with the specified id is found, returns the corresponding job object.
- Otherwise returns NULL.
PROCEDURE UNREGISTER(object job)
:
- Delete the job from memory, and if queued, from the queue.
PROCEDURE ENQUEUE(job)
:
- If
job.state == queued
return ASAP. - Add
job
intojob.queue
. - Change
job.state
toqueued
.
PROCEDURE DEQUEUE(job)
:
- If
job.state != queued
return ASAP. - Remove
job
fromjob.queue
. - Change
job.state
toactive
.
ON RECV cluster message: DELJOB(string job.id)
:
- job = Call
LOOKUP-JOB(job-id)
. - IF
job != NULL
THEN callUNREGISTER(job)
.
Job replication state machine
This part of the state machine documents how clients add jobs to the cluster and how the cluster replicates jobs across different Disque nodes.
ON RECV client command `ADDJOB(string queue-name, string body, integer replicate, integer retry, integer ttl, ...):
- Create a job object in
wait-repl
state, having as body, ttl, retry, queue name, the specified values. - Send REPLJOB(job.serialized) cluster message to
replicate-1
nodes. - Block the client without replying.
Step 3: We'll reply to the client in step 4 of GOTJOB
message processing.
ON RECV cluster message REPLJOB(object serialized-job)
:
- job = Call
LOOKUP-JOB(serialized-job.id)
. - IF
job != NULL
THEN: job.delivered = UNION(job.delivered,serialized-job.delivered). Return ASAP, since we have the job. - Create a job from serialized-job information.
- job.state =
active
. - Reply to the sender with
GOTJOB(job.id)
.
Step 1: We may already have the job, since REPLJOB may be duplicated.
Step 2: If we already have the same job, we update the list of jobs that may have a copy of this job, performing the union of the list of nodes we have with the list of nodes in the serialized job.
ON RECV cluster message GOTJOB(object serialized-job)
:
- job = Call
LOOKUP-JOB(serialized-job.id)
. - IF
job == NULL
ORjob.state != wait-repl
Return ASAP. - Add sender node to
job.confirmed
. - IF
job.confirmed.size == job.replicate
THEN changejob.state
toactive
, call ENQUEUE(job), and reply to the blocked client withjob.id
.
Step 4: As we receive enough confirmations via GOTJOB
messages, we finally reach the replication factor required by the user and consider the message active.
TIMER, firing every next 50 milliseconds while a job still did not reached the expected replication factor.
- Select an additional node not already listed in
job.delivered
, call itnode
. - Add
node
tojob.delivered
. - Send REPLJOB(job.serialized) cluster message to each node in
job.delivered
.
Step 3: We send the message to every node again, so that each node will have a chance to update job.delivered
with the new nodes. It is not required for each node to know the full list of nodes that may have a copy, but doing so improves our approximation of single delivery whenever possible.
Job re-queueing state machine
This part of the state machine documents how Disque nodes put a given job back into the queue after the specified retry time elapsed without the job being acknowledged.
TIMER, firing 500 milliseconds before the retry time elapses:
- Send
WILLQUEUE(job.id)
to every node injobs.delivered
.
TIMER, firing when job.qtime
time is reached.
- If
job.retry == 0
THEN return ASAP. - Call ENQUEUE(job).
- Update
job.qtime
to NOW + job.retry. - Send
QUEUED(job.id)
message to each node injob.delivered
.
Step 1: At most once jobs never get enqueued again.
Step 3: We'll retry again after the retry period.
ON RECV cluster message WILLQUEUE(string job-id)
:
- job = Call
LOOKUP-JOB(job-id)
. - IF
job == NULL
THEN return ASAP. - IF
job.state == queued
SENDQUEUED(job.id)
tojob.delivered
. - IF
job.state == acked
SENDSETACK(job.id)
to the sender.
Step 3: We broadcast the message since likely the other nodes are going to retry as well.
Step 4: SETACK processing is documented below in the acknowledges section of the state machine description.
ON RECV cluster message QUEUED(string job-id)
:
- job = Call
LOOKUP-JOB(job-id)
. - IF
job == NULL
THEN return ASAP. - IF
job.state == acked
THEN return ASAP. - IF
job.state == queued
THEN if sender node ID is greater than my node ID call DEQUEUE(job). - Update
job.qtime
setting it to NOW + job.retry.
Step 4: If multiple nodes re-queue the job about at the same time because of race conditions or network partitions that make WILLQUEUE
not effective, then QUEUED
forces receiving nodes to dequeue the message if the sender has a greater node ID, lowering the probability of unwanted multiple delivery.
Step 5: Now the message is already queued somewhere else, but the node will retry again after the retry time.
Acknowledged jobs garbage collection state machine
This part of the state machine is used in order to garbage collect acknowledged jobs, when a job finally gets acknowledged by a client.
PROCEDURE ACK-JOB(job)
:
- If job state is already
acked
, do nothing and return ASAP. - Change job state to
acked
, dequeue the job if queued, schedule first call to TIMER.
PROCEDURE START-GC(job)
:
- Send
SETACK(job.delivered.size)
to each node that is listed injob.delivered
but is not listed injob.confirmed
. - IF
job.delivered.size == 0
, THEN sendSETACK(0)
to every node in the cluster.
Step 2: this is an ACK about a job we donât know. In that case, we can just broadcast the acknowledged hoping somebody knows about the job and replies.
ON RECV client command ACKJOB(string job-id)
:
- job = Call
LOOKUP-JOB(job-id)
. - if job is
NULL
, ignore the message and return. - Call
ACK-JOB(job)
. - Call
START-GC(job)
.
ON RECV cluster message SETACK(string job-id, integer may-have)
:
- job = Call
LOOKUP-JOB(job-id)
. - Call ACK-JOB(job) IF job is not
NULL
. - Reply with GOTACK IF
job == NULL OR job.delivered.size <= may-have
. - IF
job != NULL
andjobs.delivered.size > may-have
THEN callSTART-GC(job)
. - IF
may-have == 0 AND job != NULL
, reply withGOTACK(1)
and callSTART-GC(job)
.
Steps 3 and 4 makes sure that among the reachable nodes that may have a message, garbage collection will be performed by the node that is aware of more nodes that may have a copy.
Step 5 instead is used in order to start a GC attempt if we received a SETACK message from a node just hacking a dummy ACK (an acknowledge about a job it was not aware of).
ON RECV cluster message GOTACK(string job-id, bool known)
:
- job = Call
LOOKUP-JOB(job-id)
. Return ASAP IFjob == NULL
. - Call
ACK-JOB(job)
. - IF
known == true AND job.delivered.size > 0
THEN add the sender node tojob.delivered
. - IF
(known == true) OR (known == false AND job.delivered.size > 0) OR (known == false AND sender is an element of job.delivered)
THEN add the sender node tojobs.confirmed
. - IF
job.delivered.size > 0 AND job.delivered.size == job.confirmed.size
, THEN sendDELJOB(job.id)
to every node in thejob.delivered
list and callUNREGISTER(job)
. - IF
job.delivered == 0 AND known == true
, THEN callUNREGISTER(job)
. - IF
job.delivered == 0 AND job.confirmed.size == cluster.size
THEN callUNREGISTER(job)
.
Step 3: If job.delivered.size
is zero, it means that the node just holds a dummy ack for the job. It means the node has an acknowledged job it created on the fly because a client acknowledged (via ACKJOB command) a job it was not aware of.
Step 6: we don't have to hold a dummy acknowledged jobs if there are nodes that have the job already acknowledged.
Step 7: this happens when nobody knows about a job, like when a client acknowledged a wrong job ID.
TIMER, from time to time (exponential backoff with random error), for every acknowledged job in memory:
- call
START-GC(job)
.
Limitations
- Disque is new code, not tested, and will require quite some time to reach production quality. It is likely very buggy and may contain wrong assumptions or tradeoffs.
- As long as the software is non stable, the API may change in random ways without prior notification.
- It is possible that Disque spends too much effort in approximating single delivery during failures. The fast acknowledge concept and command makes the user able to opt-out this efforts, but yet I may change the Disque implementation and internals in the future if I see the user base really not caring about multiple deliveries during partitions.
- There is yet a lot of Redis dead code inside probably that could be removed.
- Disque was designed a bit in astronaut mode, not triggered by an actual use case of mine, but more in response to what I was seeing people doing with Redis as a message queue and with other message queues. However I'm not an expert, if I succeeded to ship something useful for most users, this is kinda of an accomplishment. Otherwise it may just be that Disque is pretty useless.
- As Redis, Disque is single threaded. While in Redis there are stronger reasons to do so, in Disque there is no manipulation of complex data structures, so maybe in the future it should be moved into a threaded server. We need to see what happens in real use cases in order to understand if it's worth it or not.
- The number of jobs in a Disque process is limited to the amount of memory available. Again while this in Redis makes sense (IMHO), in Disque there are definitely simple ways in order to circumvent this limitation, like logging messages on disk when the server is out of memory and consuming back the messages when memory pressure is already acceptable. However in general, like in Redis, manipulating data structures in memory is a big advantage from the point of view of the implementation simplicity and the functionality we can provide to users.
- Disque is completely not optimized for speed, was never profiled so far. I'm currently not aware of the fact it's slow, fast, or average, compared to other messaging solutions. For sure it is not going to have Redis-alike numbers because it does a lot more work at each command. For example when a job is added, it is serialized and transmitted to other
N
servers. There is a lot more message passing between nodes involved, and so forth. The good news is that being totally unoptimized, there is room for improvements. - Ability of federation to handle well low and high loads without incurring into congestion or high latency, was not tested well enough. The algorithm is reasonable but may fail short under many load patterns.
- Amount of tested code path and possible states is not enough.
FAQ
Is Disque part of Redis?
No, it is a standalone project, however a big part of the Redis networking source code, nodes message bus, libraries, and the client protocol, were reused in this new project. In theory it was possible to extract the common code and release it as a framework to write distributed systems in C. However this is not a perfect solution as well, since the projects are expected to diverge more and more in the future, and to rely on a common foundation was hard. Moreover the initial effort to turn Redis into two different layers: an abstract server, networking stack and cluster bus, and the actual Redis implementation, was a huge effort, ways bigger than writing Disque itself.
However while it is a separated project, conceptually Disque is related to Redis, since it tries to solve a Redis use case in a vertical, ad-hoc way.
Who created Disque?
Disque is a side project of Salvatore Sanfilippo, aka @antirez.
There are chances for this project to be actively developed?
Currently I consider this just a public alpha: If I see people happy to use it for the right reasons (i.e. it is better in some use cases compared to other message queues) I'll continue the development. Otherwise it was anyway cool to develop it, I had much fun, and I definitely learned new things.
What happens when a node runs out of memory?
- Maxmemory setting is mandatory in Disque, and defaults to 1GB.
- When 75% of maxmemory is reached, Disque starts to replicate the new jobs only to external nodes, without taking a local copy, so basically if there is free RAM into other nodes, adding still works.
- When 95% of maxmemory is reached, Disque starts to evict data that does not violates the safety guarantees: For instance acknowledged jobs and inactive queues.
- When 100% of maxmemory is reached, commands that may result into more memory used are not processed at all and the client is informed with an error.
Are there plans to add the ability to hold more jobs than the physical memory of a single node can handle?
Yes. In Disque it should be relatively simple to use the disk when memory is not available, since jobs are immutable and don't need to necessarily exist in memory at a given time.
There are multiple strategies available. The current idea is that when an instance is out of memory, jobs are stored into a log file instead of memory. As more free memory is available in the instance, on disk jobs are loaded.
However in order to implement this, there is to observe strong evidence of its general usefulness for the user base.
When I consume and produce from different nodes, sometimes there is a delay in order for the jobs to reach the consumer, why?
Disque routing is not static, the cluster automatically tries to provide messages to nodes where consumers are attached. When there is an high enough traffic (even one message per second is enough) nodes remember other nodes that recently were sources for jobs in a given queue, so it is possible to aggressively send messages asking for more jobs, every time there are consumers waiting for more messages and the local queue is empty.
However when the traffic is very low, informations about recent sources of messages are discarded, and nodes rely on a more generic mechanism in order to discover other nodes that may have messages in the queues we need them (which is also used in high traffic conditions as well, in order to discover new sources of messages for a given queue).
For example imagine a setup with two nodes, A and B.
- A client attaches to node A and asks for jobs in the queue
myqueue
. Node A has no jobs enqueued, so the client is blocked. - After a few seconds another client produces messages into
myqueue
, but sending them to node B.
During step 1
if there was no recent traffic of imported messages for this queue, node A has no idea about who may have messages for the queue myqueue
. Every other node may have, or none may have. So it starts to broadcast NEEDJOBS
messages to the whole cluster. However we can't spam the cluster with messages, so if no reply is received after the first broadcast, the next will be sent with a larger delay, and so foth. The delay is exponential, with a maximum value of 30 seconds (this parameters will be configurable in the future, likely).
When there is some traffic instead, nodes send NEEDJOBS
messages ASAP to other nodes that were recent sources of messages. Even when no reply is received, the next NEEDJOBS
messages will be sent more aggressively to the subset of nodes that had messages in the past, with a delay that starts at 25 milliseconds and has a maximum value of two seconds.
In order to minimize the latency, NEEDJOBS
messages are not throttled at all when:
- A client consumed the last message from a given queue. Source nodes are informed immediately in order to receive messages before the node asks for more.
- Blocked clients are served the last message available in the queue.
For more information, please refer to the file queue.c
, especially the function needJobsForQueue
and its callers.
Are messages re-enqueued in the queue tail or head or what?
Messages are put into the queue according to their creation time attribute. This means that they are enqueued in a best effort order in the local node queue. Messages that need to be put back into the queue again because their delivery failed are usually (but not always) older than messages already in queue, so they'll likely be among the first to be delivered to workers.
What Disque means?
DIStributed QUEue but is also a joke with "dis" as negation (like in disorder) of the strict concept of queue, since Disque is not able to guarantee the strict ordering you expect from something called queue. And because of this tradeof it gains many other interesting things.
Community: how to get help and how to help
Get in touch with us in one of the following ways:
- Post on Stack Overflow using the
disque
tag. This is the preferred method to get general help about Disque: other users will easily find previous questions so we can incrementally build a knowledge base. - Join the
#disque
IRC channel at irc.freenode.net. - Create an Issue or Pull request if your question or issue is about the Disque implementation itself.
Thanks
I would like to say thank you to the following persons and companies.
- Pivotal, for allowing me to work on Disque, most in my spare time, but sometimes during work hours. Moreover Pivotal agreed to leave the copyright of the code to me. This is very generous. Thanks Pivotal!
- Michel Martens and Damian Janowski for providing early feedback about Disque while the project was still private.
- Everybody who is already writing client libraries, sending pull requests, creating issues in order to move this forward from alpha to something actually usable.
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