Archive

The Dulin Report

Browsable archive from the WordPress export.

Results (57)

Strategic activity mapping for software architects May 25, 2025 On the role of Distinguished Engineer and CTO Mindset Apr 27, 2025 The future is bright Mar 30, 2025 Software Engineering is here to stay Mar 3, 2024 Some thoughts on recent RTO announcements Jun 22, 2023 Comparing AWS SQS, SNS, and Kinesis: A Technical Breakdown for Enterprise Developers Feb 11, 2023 Should today’s developers worry about AI code generators taking their jobs? Dec 11, 2022 Things to be Thankful for Nov 24, 2022 Book review: Clojure for the Brave and True Oct 2, 2022 Monolithic repository vs a monolith Aug 23, 2022 Scripting languages are tools for tying APIs together, not building complex systems Jun 8, 2022 There is no such thing as one grand unified full-stack programming language May 27, 2022 Most terrifying professional artifact May 14, 2022 Best practices for building a microservice architecture Apr 25, 2022 True identity verification should require a human Mar 16, 2020 On elephant graveyards Feb 15, 2020 TDWI 2019: Architecting Modern Big Data API Ecosystems May 30, 2019 Returning security back to the user Feb 2, 2019 Which AWS messaging and queuing service to use? Jan 25, 2019 Using Markov Chain Generator to create Donald Trump's state of union speech Jan 20, 2019 The religion of JavaScript Nov 26, 2018 Leaving Facebook and Twitter: here are the alternatives Mar 25, 2018 When politics and technology intersect Mar 24, 2018 TypeScript starts where JavaScript leaves off Aug 2, 2017 Node.js is a perfect enterprise application platform Jul 30, 2017 Rather than innovating Walmart bullies their tech vendors to leave AWS Jun 27, 2017 Architecting API ecosystems: my interview with Anthony Brovchenko of R. Culturi Jun 5, 2017 TDWI 2017, Chicago, IL: Architecting Modern Big Data API Ecosystems May 30, 2017 Apple’s recent announcements have been underwhelming Oct 29, 2016 Why I switched to Android and Google Project Fi and why should you Aug 28, 2016 Amazon Alexa is eating the retailers alive Jun 22, 2016 What can we learn from the last week's salesforce.com outage ? May 15, 2016 Why it makes perfect sense for Dropbox to leave AWS May 7, 2016 JEE in the cloud era: building application servers Apr 22, 2016 Managed IT is not the future of the cloud Apr 9, 2016 JavaScript as the language of the cloud Feb 20, 2016 OAuth 2.0: the protocol at the center of the universe Jan 1, 2016 Operations costs are the Achille's heel of NoSQL Nov 23, 2015 IT departments must transform in the face of the cloud revolution Nov 9, 2015 Banking Technology is in Dire Need of Standartization and Openness Sep 28, 2015 Top Ten Differences Between ActiveMQ and Amazon SQS Sep 5, 2015 We Live in a Mobile Device Notification Hell Aug 22, 2015 What Every College Computer Science Freshman Should Know Aug 14, 2015 The Three Myths About JavaScript Simplicity Jul 10, 2015 Book Review: "Shop Class As Soulcraft" By Matthew B. Crawford Jul 5, 2015 Your IT Department's Kodak Moment Jun 17, 2015 The longer the chain of responsibility the less likely there is anyone in the hierarchy who can actually accept it Jun 7, 2015 Smart IT Departments Own Their Business API and Take Ownership of Data Governance May 13, 2015 We Need a Cloud Version of Cassandra May 7, 2015 Building a Supercomputer in AWS: Is it even worth it ? Apr 13, 2015 Ordered Sets and Logs in Cassandra vs SQL Apr 8, 2015 Exploration of the Software Engineering as a Profession Apr 8, 2015 What can Evernote Teach Us About Enterprise App Architecture Apr 2, 2015 Why I am Tempted to Replace Cassandra With DynamoDB Nov 13, 2014 Infrastructure in the cloud vs on-premise Aug 25, 2014 Wall St. wakes up to underinvestment in OMS Aug 21, 2014 Cassandra: Lessons Learned Jun 6, 2014

Which AWS messaging and queuing service to use?

January 25, 2019

AWS offers a number of messaging and queuing services, each one with its own pros and cons. This post describes each service and when to use it.

AWS SQS: managed durable queues

img_0528

AWS SQS stands for Simple Queue Service. It is as simple as it gets -- you can send a message to a queue, you can receive it from a queue, and you can acknowledge the message by deleting it from the queue. Only one consumer can process the same message at a time. It is a native AWS service that requires the use of AWS REST API or an AWS SDK for your programming language.

It is a genuinely server-less managed service. The developers don't need to worry about scalability, storage, or performance. SQS queues scale as required. You only pay for what you use which turns out to be pennies per million messages.

SQS integrates well with other AWS services such as AWS Lambda. For example, SQS will trigger a lambda function for each message in the queue. While SQS is very simple in that it only supports "send," "receive," and "delete" operations, I recommend abstracting these routines at a bit of a higher level.

SQS scales horizontally. Roughly speaking, if you have a single consumer able to process, say, 1000 messages per second, two instances of the consumer will process 2000 messages per second. If you use Lambda triggers, AWS will scale both the queues and the consumers for you.

SQS is durable and supports Dead Letter Queues and configurable re-delivery policy. If for some reason your consumer took a message off the queue but failed to correctly process it, SQS will re-attempt delivery a few times (configurable) before eventually delivering the failed message to the Dead Letter Queue.

You can find SQS documentation here.

Also see: Top ten differences between ActiveMQ and AWS SQS

When to use SQS?



  • Your architecture requires asynchronous processing with guarantees that all tasks get processed

  • You need a durable and reliable queuing solution that will scale at low cost and require no management on your part

  • You are building a brand new AWS-native application

  • You are porting an existing application to server-less architecture

  • You are adding queueing functionality to your architecture in AWS


When not to use SQS?



  • Your application is sensitive to the latency associated with using AWS APIs via HTTP protocol.


AWS SNS

img_0530

AWS SNS is a Simple Notification Service. It delivers messages published to topics to one or more destinations. Destinations can be SQS queues, Lambda functions, HTTP POST endpoints, SMS text messages, mobile device push notifications, and more.

SNS offers some degree of durability. Messages are saved before producers get a confirmation. There is a configurable re-delivery policy depending on the destination. Applications requiring assurances that messages will eventually get delivered to their destinations should use SNS to route to SQS and then consume from SQS.

When to use SNS?



  • Your architecture requires delivering messages asynchronously to multiple consumers at a time but does not require journaling or strong delivery guarantees (if you need delivery guarantees you should use SQS queues)

  • You need to trigger asynchronous events across different parts of your application

  • You need to send mobile push notifications in a cross-platform manner

  • You need to send SMS text messages

  • You are building a brand new AWS-native application

  • You are porting an existing application to server-less architecture


When not to use SNS?



  • Your application sensitive to the latency associated with using AWS APIs via HTTP protocol and you have no need for specialized functions like SMS or mobile push


AWS Kinesis

img_0532

AWS Kinesis is a managed data streaming service. Although it does support video and multi-media streams, it is beyond the scope of this article.

Producers put data on a stream using Kinesis client library. Multiple different Kinesis data stream consumers can then process data from the stream concurrently. This is an important distinction from queues where only one kind of a consumer can take messages off the same queue.

For example, one consumer can archive product order data while another analyzes data for fraud in real-time, and yet another one uses the data to dynamically update pricing and inventory data.

It is possible to also arrange streams into direct acyclic graphs (DAG) such that messages are forwarded to other streams to create complex stream processing. This is another distinction from queues.

Kinesis integrates well with other AWS services, including AWS Lambda. Kinesis can trigger Lambda functions in response to messages. Additionally, AWS services such as S3 or Dynamo can publish data to Kinesis streams.

When to use Kinesis?



  • Your architecture requires complex real-time processing of data streams

  • You have complex real-time analytics requirements

  • You need to trigger asynchronous events across different parts of your application

  • You are building a brand new AWS-native application

  • You are adding stream-processing functionality to your AWS-native application

  • You are porting an existing application to AWS-native architecture


When not to use Kinesis?



  • You only need simple queues

  • You just need simple topics

  • Your architecture is sensitive to latencies. If that is the case consider AWS MSK (see below).


AWS MSK (managed Kafka)

img_0532

AWS MSK stands for "AWS Managed Streaming for Kafka." Conceptually, Kafka is similar to Kinesis: producers publish messages on Kafka topics (streams), while multiple different consumers can process messages concurrently.

Kafka is famous but can be "Kafkaesque" to maintain in production. MSK takes a lot of the operational difficulties out of running a Kafka cluster. MSK takes care of various maintenance tasks such as backups and routine upgrades.

MSK works similarly to AWS RDS (managed database service). MSK provisions and manages the underlying compute infrastructure on your behalf. You pay for this compute capacity regardless of the workload on your Kafka cluster. In other words, MSK is a managed service, but it is not server-less.

When to use AWS MSK?



  • You are migrating an existing Kafka-based application to AWS

  • You already use Kafka and have a significant investment in Kafka-dependent codebase

  • You want to reduce operational costs and difficulties out of running a Kafka cluster in AWS

  • Your application is sensitive to the latency associated with using AWS APIs via HTTP protocol.


When not to use AWS MSK?

There is little reason to introduce Kafka to an application that is not already using it and does not have requirements to use Kafka specifically (for example due to latency and performance considerations). Consider using Kinesis instead.

  • You are building a brand new AWS-native application

  • You are adding streaming functionality to an existing AWS-native application


AWS MQ (managed Apache ActiveMQ)

AWS MQ is a managed ActiveMQ service. Similar to MSK for Kafka, it takes operational complexity out of running an ActiveMQ cluster. It supports JMS, NMS, AMQP, STOMP, MQTT and other industry standard messaging protocols. Most legacy applications do not require significant changes to work in AWS.

AWS MQ supports various broker topologies, including mesh networks. By being ActiveMQ-based, it supports the full range of services including queues, topics, and multiple configurations of durability, re-delivery, and replication.

Also see: Top ten differences between ActiveMQ and AWS SQS (note: I wrote that post in 2015, long before Amazon had a managed ActiveMQ service)

When to use AWS MQ (Apache ActiveMQ)?



  • You are migrating an existing JMS or NMS-based application to AWS

  • You already use ActiveMQ or a compatible product and have a significant investment in the codebase

  • You want to reduce operational costs and difficulties out of running an ActiveMQ cluster in AWS

  • Your application is sensitive to the latency associated with using AWS APIs via HTTP protocol.


When not to use AWS MQ?



  • You are adding message queues to your AWS-native architecture and need something simple. Consider using SQS instead.

  • Your application is not sensitive to the latency associated with AWS SQS API.






Liked this post? In September 2020 I will ride my bicycle for 275 miles from Boston to NYC to help end AIDS. Please consider contributing to my fundraising goals.