Alternatives to Ratpack logo

Alternatives to Ratpack

Spring Boot, Spring, Node.js, Grails, and Dropwizard are the most popular alternatives and competitors to Ratpack.
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What is Ratpack and what are its top alternatives?

Ratpack is a lightweight, non-blocking web framework for Java that provides an efficient and high-performance alternative to traditional Java web frameworks. It offers features such as asynchronous programming, built-in support for websockets, and easy integration with other Java libraries. However, its documentation can sometimes be lacking, and its community size is smaller compared to more established frameworks.

  1. Spring Boot: A popular Java framework that provides a comprehensive solution for building web applications with a large community and extensive ecosystem. Pros include strong community support and a wide range of plugins, but it can be more complex than Ratpack.
  2. Micronaut: A modern, full-stack framework for building microservices and serverless applications in Java. Micronaut boasts fast startup times and low memory consumption, but it may have a smaller ecosystem compared to Ratpack.
  3. Vert.x: A polyglot toolkit for building reactive applications on the JVM that offers high performance and concurrency. While Vert.x is great for building event-driven applications, it may have a steeper learning curve compared to Ratpack.
  4. Play Framework: A full-stack framework for building web applications with Java or Scala that focuses on developer productivity and runtime performance. Play Framework offers hot code reloading for faster development, but it may be less lightweight than Ratpack.
  5. Spark: A simple and lightweight web framework for Java that is easy to set up and use for building RESTful web services. Spark is great for small projects, but it may lack some advanced features compared to Ratpack.
  6. Dropwizard: A high-performance Java framework for building RESTful web services that comes with curated libraries and tools for streamlined development. Dropwizard is opinionated and may not be as flexible as Ratpack.
  7. Jooby: A modern and modular web framework for Java and Kotlin that aims to simplify the development of web applications. Jooby offers a flexible and lightweight architecture, but it may not have as large of a community as Ratpack.
  8. Quarkus: A Kubernetes-native Java framework that optimizes Java specifically for containerized environments. Quarkus offers fast startup times and low memory usage, but it may have a different focus than Ratpack.
  9. Javalin: A lightweight web framework for Java and Kotlin that focuses on simplicity and ease of use for building RESTful APIs. Javalin is easy to get started with, but it may lack some advanced features of Ratpack.
  10. Ninja Framework: A full-stack web framework for Java that emphasizes modularity and low maintenance overhead. Ninja Framework includes features such as dependency injection and integrated testing, but it may not be as lightweight as Ratpack.

Top Alternatives to Ratpack

  • Spring Boot
    Spring Boot

    Spring Boot makes it easy to create stand-alone, production-grade Spring based Applications that you can "just run". We take an opinionated view of the Spring platform and third-party libraries so you can get started with minimum fuss. Most Spring Boot applications need very little Spring configuration. ...

  • Spring
    Spring

    A key element of Spring is infrastructural support at the application level: Spring focuses on the "plumbing" of enterprise applications so that teams can focus on application-level business logic, without unnecessary ties to specific deployment environments. ...

  • Node.js
    Node.js

    Node.js uses an event-driven, non-blocking I/O model that makes it lightweight and efficient, perfect for data-intensive real-time applications that run across distributed devices. ...

  • Grails
    Grails

    Grails is a framework used to build web applications with the Groovy programming language. The core framework is very extensible and there are numerous plugins available that provide easy integration of add-on features. ...

  • Dropwizard
    Dropwizard

    Dropwizard is a sneaky way of making fast Java web applications. Dropwizard pulls together stable, mature libraries from the Java ecosystem into a simple, light-weight package that lets you focus on getting things done. ...

  • Java
    Java

    Java is a programming language and computing platform first released by Sun Microsystems in 1995. There are lots of applications and websites that will not work unless you have Java installed, and more are created every day. Java is fast, secure, and reliable. From laptops to datacenters, game consoles to scientific supercomputers, cell phones to the Internet, Java is everywhere! ...

  • Micronaut Framework
    Micronaut Framework

    It is a modern, JVM-based, full-stack framework for building modular, easily testable microservice and serverless applications. It features a Dependency Injection and Aspect-Oriented Programming runtime that uses no reflection. ...

  • Apache Spark
    Apache Spark

    Spark is a fast and general processing engine compatible with Hadoop data. It can run in Hadoop clusters through YARN or Spark's standalone mode, and it can process data in HDFS, HBase, Cassandra, Hive, and any Hadoop InputFormat. It is designed to perform both batch processing (similar to MapReduce) and new workloads like streaming, interactive queries, and machine learning. ...

Ratpack alternatives & related posts

Spring Boot logo

Spring Boot

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1K
Create Spring-powered, production-grade applications and services with absolute minimum fuss
26K
23.6K
+ 1
1K
PROS OF SPRING BOOT
  • 149
    Powerful and handy
  • 134
    Easy setup
  • 128
    Java
  • 90
    Spring
  • 85
    Fast
  • 46
    Extensible
  • 37
    Lots of "off the shelf" functionalities
  • 32
    Cloud Solid
  • 26
    Caches well
  • 24
    Productive
  • 24
    Many receipes around for obscure features
  • 23
    Modular
  • 23
    Integrations with most other Java frameworks
  • 22
    Spring ecosystem is great
  • 21
    Auto-configuration
  • 21
    Fast Performance With Microservices
  • 18
    Community
  • 17
    Easy setup, Community Support, Solid for ERP apps
  • 15
    One-stop shop
  • 14
    Easy to parallelize
  • 14
    Cross-platform
  • 13
    Easy setup, good for build erp systems, well documented
  • 13
    Powerful 3rd party libraries and frameworks
  • 12
    Easy setup, Git Integration
  • 5
    It's so easier to start a project on spring
  • 4
    Kotlin
  • 1
    Microservice and Reactive Programming
  • 1
    The ability to integrate with the open source ecosystem
CONS OF SPRING BOOT
  • 23
    Heavy weight
  • 18
    Annotation ceremony
  • 13
    Java
  • 11
    Many config files needed
  • 5
    Reactive
  • 4
    Excellent tools for cloud hosting, since 5.x
  • 1
    Java 😒😒

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Praveen Mooli
Engineering Manager at Taylor and Francis · | 19 upvotes · 4M views

We are in the process of building a modern content platform to deliver our content through various channels. We decided to go with Microservices architecture as we wanted scale. Microservice architecture style is an approach to developing an application as a suite of small independently deployable services built around specific business capabilities. You can gain modularity, extensive parallelism and cost-effective scaling by deploying services across many distributed servers. Microservices modularity facilitates independent updates/deployments, and helps to avoid single point of failure, which can help prevent large-scale outages. We also decided to use Event Driven Architecture pattern which is a popular distributed asynchronous architecture pattern used to produce highly scalable applications. The event-driven architecture is made up of highly decoupled, single-purpose event processing components that asynchronously receive and process events.

To build our #Backend capabilities we decided to use the following: 1. #Microservices - Java with Spring Boot , Node.js with ExpressJS and Python with Flask 2. #Eventsourcingframework - Amazon Kinesis , Amazon Kinesis Firehose , Amazon SNS , Amazon SQS, AWS Lambda 3. #Data - Amazon RDS , Amazon DynamoDB , Amazon S3 , MongoDB Atlas

To build #Webapps we decided to use Angular 2 with RxJS

#Devops - GitHub , Travis CI , Terraform , Docker , Serverless

See more

Is learning Spring and Spring Boot for web apps back-end development is still relevant in 2021? Feel free to share your views with comparison to Django/Node.js/ ExpressJS or other frameworks.

Please share some good beginner resources to start learning about spring/spring boot framework to build the web apps.

See more
Spring logo

Spring

4K
4.8K
1.1K
Provides a comprehensive programming and configuration model for modern Java-based enterprise applications
4K
4.8K
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PROS OF SPRING
  • 230
    Java
  • 157
    Open source
  • 136
    Great community
  • 123
    Very powerful
  • 114
    Enterprise
  • 64
    Lot of great subprojects
  • 60
    Easy setup
  • 44
    Convention , configuration, done
  • 40
    Standard
  • 31
    Love the logic
  • 13
    Good documentation
  • 11
    Dependency injection
  • 11
    Stability
  • 9
    MVC
  • 6
    Easy
  • 3
    Makes the hard stuff fun & the easy stuff automatic
  • 3
    Strong typing
  • 2
    Code maintenance
  • 2
    Best practices
  • 2
    Maven
  • 2
    Great Desgin
  • 2
    Easy Integration with Spring Security
  • 2
    Integrations with most other Java frameworks
  • 1
    Java has more support and more libraries
  • 1
    Supports vast databases
  • 1
    Large ecosystem with seamless integration
  • 1
    OracleDb integration
  • 1
    Live project
CONS OF SPRING
  • 15
    Draws you into its own ecosystem and bloat
  • 3
    Verbose configuration
  • 3
    Poor documentation
  • 3
    Java
  • 2
    Java is more verbose language in compare to python

related Spring posts

Is learning Spring and Spring Boot for web apps back-end development is still relevant in 2021? Feel free to share your views with comparison to Django/Node.js/ ExpressJS or other frameworks.

Please share some good beginner resources to start learning about spring/spring boot framework to build the web apps.

See more

I am consulting for a company that wants to move its current CubeCart e-commerce site to another PHP based platform like PrestaShop or Magento. I was interested in alternatives that utilize Node.js as the primary platform. I currently don't know PHP, but I have done full stack dev with Java, Spring, Thymeleaf, etc.. I am just unsure that learning a set of technologies not commonly used makes sense. For example, in PrestaShop, I would need to work with JavaScript better and learn PHP, Twig, and Bootstrap. It seems more cumbersome than a Node JS system, where the language syntax stays the same for the full stack. I am looking for thoughts and advice on the relevance of PHP skillset into the future AND whether the Node based e-commerce open source options can compete with Magento or Prestashop.

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Node.js logo

Node.js

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160.2K
8.5K
A platform built on Chrome's JavaScript runtime for easily building fast, scalable network applications
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PROS OF NODE.JS
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    Npm
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    Javascript
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    Great libraries
  • 1K
    High-performance
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    Open source
  • 486
    Great for apis
  • 477
    Asynchronous
  • 424
    Great community
  • 390
    Great for realtime apps
  • 296
    Great for command line utilities
  • 85
    Websockets
  • 83
    Node Modules
  • 69
    Uber Simple
  • 59
    Great modularity
  • 58
    Allows us to reuse code in the frontend
  • 42
    Easy to start
  • 35
    Great for Data Streaming
  • 32
    Realtime
  • 28
    Awesome
  • 25
    Non blocking IO
  • 18
    Can be used as a proxy
  • 17
    High performance, open source, scalable
  • 16
    Non-blocking and modular
  • 15
    Easy and Fun
  • 14
    Easy and powerful
  • 13
    Future of BackEnd
  • 13
    Same lang as AngularJS
  • 12
    Fullstack
  • 11
    Fast
  • 10
    Scalability
  • 10
    Cross platform
  • 9
    Simple
  • 8
    Mean Stack
  • 7
    Great for webapps
  • 7
    Easy concurrency
  • 6
    Typescript
  • 6
    Fast, simple code and async
  • 6
    React
  • 6
    Friendly
  • 5
    Control everything
  • 5
    Its amazingly fast and scalable
  • 5
    Easy to use and fast and goes well with JSONdb's
  • 5
    Scalable
  • 5
    Great speed
  • 5
    Fast development
  • 4
    It's fast
  • 4
    Easy to use
  • 4
    Isomorphic coolness
  • 3
    Great community
  • 3
    Not Python
  • 3
    Sooper easy for the Backend connectivity
  • 3
    TypeScript Support
  • 3
    Blazing fast
  • 3
    Performant and fast prototyping
  • 3
    Easy to learn
  • 3
    Easy
  • 3
    Scales, fast, simple, great community, npm, express
  • 3
    One language, end-to-end
  • 3
    Less boilerplate code
  • 2
    Npm i ape-updating
  • 2
    Event Driven
  • 2
    Lovely
  • 1
    Creat for apis
  • 0
    Node
CONS OF NODE.JS
  • 46
    Bound to a single CPU
  • 45
    New framework every day
  • 40
    Lots of terrible examples on the internet
  • 33
    Asynchronous programming is the worst
  • 24
    Callback
  • 19
    Javascript
  • 11
    Dependency hell
  • 11
    Dependency based on GitHub
  • 10
    Low computational power
  • 7
    Very very Slow
  • 7
    Can block whole server easily
  • 7
    Callback functions may not fire on expected sequence
  • 4
    Breaking updates
  • 4
    Unstable
  • 3
    Unneeded over complication
  • 3
    No standard approach
  • 1
    Bad transitive dependency management
  • 1
    Can't read server session

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Shared insights
on
Node.jsNode.jsGraphQLGraphQLMongoDBMongoDB

I just finished the very first version of my new hobby project: #MovieGeeks. It is a minimalist online movie catalog for you to save the movies you want to see and for rating the movies you already saw. This is just the beginning as I am planning to add more features on the lines of sharing and discovery

For the #BackEnd I decided to use Node.js , GraphQL and MongoDB:

  1. Node.js has a huge community so it will always be a safe choice in terms of libraries and finding solutions to problems you may have

  2. GraphQL because I needed to improve my skills with it and because I was never comfortable with the usual REST approach. I believe GraphQL is a better option as it feels more natural to write apis, it improves the development velocity, by definition it fixes the over-fetching and under-fetching problem that is so common on REST apis, and on top of that, the community is getting bigger and bigger.

  3. MongoDB was my choice for the database as I already have a lot of experience working on it and because, despite of some bad reputation it has acquired in the last months, I still believe it is a powerful database for at least a very long list of use cases such as the one I needed for my website

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Nick Rockwell
SVP, Engineering at Fastly · | 46 upvotes · 4.1M views

When I joined NYT there was already broad dissatisfaction with the LAMP (Linux Apache HTTP Server MySQL PHP) Stack and the front end framework, in particular. So, I wasn't passing judgment on it. I mean, LAMP's fine, you can do good work in LAMP. It's a little dated at this point, but it's not ... I didn't want to rip it out for its own sake, but everyone else was like, "We don't like this, it's really inflexible." And I remember from being outside the company when that was called MIT FIVE when it had launched. And been observing it from the outside, and I was like, you guys took so long to do that and you did it so carefully, and yet you're not happy with your decisions. Why is that? That was more the impetus. If we're going to do this again, how are we going to do it in a way that we're gonna get a better result?

So we're moving quickly away from LAMP, I would say. So, right now, the new front end is React based and using Apollo. And we've been in a long, protracted, gradual rollout of the core experiences.

React is now talking to GraphQL as a primary API. There's a Node.js back end, to the front end, which is mainly for server-side rendering, as well.

Behind there, the main repository for the GraphQL server is a big table repository, that we call Bodega because it's a convenience store. And that reads off of a Kafka pipeline.

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Grails logo

Grails

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373
333
An Open Source, full stack, web application framework for the JVM
386
373
+ 1
333
PROS OF GRAILS
  • 56
    Groovy
  • 40
    Jvm
  • 38
    Rapid development
  • 37
    Gorm
  • 30
    Web framework
  • 25
    Open source
  • 21
    Plugins
  • 17
    Extensible
  • 17
    Easy
  • 14
    Dynamic
  • 6
    Clean architecture (Dependency Injection)
  • 6
    Gradle
  • 5
    Clear what everything does, lots of options
  • 4
    RAD
  • 4
    Agile
  • 4
    Great documentation
  • 3
    Android
  • 3
    Spring
  • 2
    Easy setup
  • 1
    Java web apps with steroid
CONS OF GRAILS
  • 3
    Frequent breaking changes
  • 2
    Undocumented features

related Grails posts

Alex A

Some may wonder why did we choose Grails ? Really good question :) We spent quite some time to evaluate what framework to go with and the battle was between Play Scala and Grails ( Groovy ). We have enough experience with both and, to be honest, I absolutely in love with Scala; however, the tipping point for us was the potential speed of development. Grails allows much faster development pace than Play , and as of right now this is the most important parameter. We might convert later though. Also, worth mentioning, by default Grails comes with Gradle as a build tool, so why change?

See more

Presently, a web-based ERP is developed in Groovy on Grails. Now the ERP is getting revamped with more functionalities. Is it advisable to continue with the same software and framework or try something new especially Node.js over ExpressJS?

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Dropwizard logo

Dropwizard

312
365
182
Java framework for developing ops-friendly, high-performance, RESTful web services
312
365
+ 1
182
PROS OF DROPWIZARD
  • 27
    Quick and easy to get a new http service going
  • 23
    Health monitoring
  • 20
    Metrics integration
  • 20
    Easy setup
  • 18
    Good conventions
  • 14
    Good documentation
  • 14
    Lightweight
  • 13
    Java Powered
  • 10
    Good Testing frameworks
  • 7
    Java powered, lightweight
  • 5
    Simple
  • 4
    Scalable
  • 3
    Great performance, Good in prod
  • 2
    Open source
  • 2
    All in one-productive-production ready-makes life easy
CONS OF DROPWIZARD
  • 2
    Slightly more confusing dependencies
  • 1
    Not on ThoughtWorks radar since 2014

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Matt Menzenski
Senior Software Engineering Manager at PayIt · | 16 upvotes · 1M views

Grafana and Prometheus together, running on Kubernetes , is a powerful combination. These tools are cloud-native and offer a large community and easy integrations. At PayIt we're using exporting Java application metrics using a Dropwizard metrics exporter, and our Node.js services now use the prom-client npm library to serve metrics.

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DevOps

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Cooperation Tools

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Java logo

Java

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3.7K
A concurrent, class-based, object-oriented, language specifically designed to have as few implementation dependencies as possible
135.2K
102.4K
+ 1
3.7K
PROS OF JAVA
  • 603
    Great libraries
  • 446
    Widely used
  • 401
    Excellent tooling
  • 396
    Huge amount of documentation available
  • 334
    Large pool of developers available
  • 208
    Open source
  • 203
    Excellent performance
  • 158
    Great development
  • 150
    Used for android
  • 148
    Vast array of 3rd party libraries
  • 60
    Compiled Language
  • 52
    Used for Web
  • 46
    Managed memory
  • 46
    High Performance
  • 45
    Native threads
  • 43
    Statically typed
  • 35
    Easy to read
  • 33
    Great Community
  • 29
    Reliable platform
  • 24
    Sturdy garbage collection
  • 24
    JVM compatibility
  • 22
    Cross Platform Enterprise Integration
  • 20
    Good amount of APIs
  • 20
    Universal platform
  • 18
    Great Support
  • 14
    Great ecosystem
  • 11
    Backward compatible
  • 11
    Lots of boilerplate
  • 10
    Everywhere
  • 9
    Excellent SDK - JDK
  • 7
    Cross-platform
  • 7
    It's Java
  • 7
    Static typing
  • 6
    Portability
  • 6
    Mature language thus stable systems
  • 6
    Better than Ruby
  • 6
    Long term language
  • 5
    Used for Android development
  • 5
    Clojure
  • 5
    Vast Collections Library
  • 4
    Best martial for design
  • 4
    Most developers favorite
  • 4
    Old tech
  • 3
    Testable
  • 3
    History
  • 3
    Javadoc
  • 3
    Stable platform, which many new languages depend on
  • 3
    Great Structure
  • 2
    Faster than python
  • 2
    Type Safe
  • 0
    Job
CONS OF JAVA
  • 33
    Verbosity
  • 27
    NullpointerException
  • 17
    Nightmare to Write
  • 16
    Overcomplexity is praised in community culture
  • 12
    Boiler plate code
  • 8
    Classpath hell prior to Java 9
  • 6
    No REPL
  • 4
    No property
  • 3
    Code are too long
  • 2
    Non-intuitive generic implementation
  • 2
    There is not optional parameter
  • 2
    Floating-point errors
  • 1
    Java's too statically, stronglly, and strictly typed
  • 1
    Returning Wildcard Types
  • 1
    Terrbible compared to Python/Batch Perormence

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Conor Myhrvold
Tech Brand Mgr, Office of CTO at Uber · | 44 upvotes · 12.7M views

How Uber developed the open source, end-to-end distributed tracing Jaeger , now a CNCF project:

Distributed tracing is quickly becoming a must-have component in the tools that organizations use to monitor their complex, microservice-based architectures. At Uber, our open source distributed tracing system Jaeger saw large-scale internal adoption throughout 2016, integrated into hundreds of microservices and now recording thousands of traces every second.

Here is the story of how we got here, from investigating off-the-shelf solutions like Zipkin, to why we switched from pull to push architecture, and how distributed tracing will continue to evolve:

https://eng.uber.com/distributed-tracing/

(GitHub Pages : https://www.jaegertracing.io/, GitHub: https://github.com/jaegertracing/jaeger)

Bindings/Operator: Python Java Node.js Go C++ Kubernetes JavaScript OpenShift C# Apache Spark

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Kamil Kowalski
Lead Architect at Fresha · | 28 upvotes · 4.1M views

When you think about test automation, it’s crucial to make it everyone’s responsibility (not just QA Engineers'). We started with Selenium and Java, but with our platform revolving around Ruby, Elixir and JavaScript, QA Engineers were left alone to automate tests. Cypress was the answer, as we could switch to JS and simply involve more people from day one. There's a downside too, as it meant testing on Chrome only, but that was "good enough" for us + if really needed we can always cover some specific cases in a different way.

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Micronaut Framework logo

Micronaut Framework

184
328
52
A JVM-based full-stack framework
184
328
+ 1
52
PROS OF MICRONAUT FRAMEWORK
  • 12
    Compilable to machine code
  • 8
    Tiny memory footprint
  • 7
    Open source
  • 7
    Almost instantaneous startup
  • 6
    Tiny compiled code size
  • 4
    High Escalability
  • 2
    Minimal overhead
  • 2
    Hasn't Servlet API
  • 2
    Simplified reactive programming
  • 1
    Serverless support
  • 1
    Jakarta EE
CONS OF MICRONAUT FRAMEWORK
  • 3
    No hot reload

related Micronaut Framework posts

Apache Spark logo

Apache Spark

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3.5K
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Fast and general engine for large-scale data processing
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PROS OF APACHE SPARK
  • 61
    Open-source
  • 48
    Fast and Flexible
  • 8
    One platform for every big data problem
  • 8
    Great for distributed SQL like applications
  • 6
    Easy to install and to use
  • 3
    Works well for most Datascience usecases
  • 2
    Interactive Query
  • 2
    Machine learning libratimery, Streaming in real
  • 2
    In memory Computation
CONS OF APACHE SPARK
  • 4
    Speed

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Eric Colson
Chief Algorithms Officer at Stitch Fix · | 21 upvotes · 6.1M views

The algorithms and data infrastructure at Stitch Fix is housed in #AWS. Data acquisition is split between events flowing through Kafka, and periodic snapshots of PostgreSQL DBs. We store data in an Amazon S3 based data warehouse. Apache Spark on Yarn is our tool of choice for data movement and #ETL. Because our storage layer (s3) is decoupled from our processing layer, we are able to scale our compute environment very elastically. We have several semi-permanent, autoscaling Yarn clusters running to serve our data processing needs. While the bulk of our compute infrastructure is dedicated to algorithmic processing, we also implemented Presto for adhoc queries and dashboards.

Beyond data movement and ETL, most #ML centric jobs (e.g. model training and execution) run in a similarly elastic environment as containers running Python and R code on Amazon EC2 Container Service clusters. The execution of batch jobs on top of ECS is managed by Flotilla, a service we built in house and open sourced (see https://github.com/stitchfix/flotilla-os).

At Stitch Fix, algorithmic integrations are pervasive across the business. We have dozens of data products actively integrated systems. That requires serving layer that is robust, agile, flexible, and allows for self-service. Models produced on Flotilla are packaged for deployment in production using Khan, another framework we've developed internally. Khan provides our data scientists the ability to quickly productionize those models they've developed with open source frameworks in Python 3 (e.g. PyTorch, sklearn), by automatically packaging them as Docker containers and deploying to Amazon ECS. This provides our data scientist a one-click method of getting from their algorithms to production. We then integrate those deployments into a service mesh, which allows us to A/B test various implementations in our product.

For more info:

#DataScience #DataStack #Data

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Patrick Sun
Software Engineer at Stitch Fix · | 10 upvotes · 60.7K views

As a frontend engineer on the Algorithms & Analytics team at Stitch Fix, I work with data scientists to develop applications and visualizations to help our internal business partners make data-driven decisions. I envisioned a platform that would assist data scientists in the data exploration process, allowing them to visually explore and rapidly iterate through their assumptions, then share their insights with others. This would align with our team's philosophy of having engineers "deploy platforms, services, abstractions, and frameworks that allow the data scientists to conceive of, develop, and deploy their ideas with autonomy", and solve the pain of data exploration.

The final product, code-named Dora, is built with React, Redux.js and Victory, backed by Elasticsearch to enable fast and iterative data exploration, and uses Apache Spark to move data from our Amazon S3 data warehouse into the Elasticsearch cluster.

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