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  5. R vs Scala

R vs Scala

OverviewDecisionsComparisonAlternatives

Overview

Scala
Scala
Stacks11.9K
Followers7.8K
Votes1.5K
GitHub Stars14.4K
Forks3.1K
R Language
R Language
Stacks3.9K
Followers1.9K
Votes418

R vs Scala: What are the differences?

Introduction

Both R and Scala are popular programming languages used in data science and analytics. While R is specifically designed for statistical analysis and data manipulation, Scala is a general-purpose programming language that is often used in big data processing. Here are the key differences between R and Scala:

  1. Syntax and Paradigm: R is a dynamically typed language with a functional programming paradigm, making it ideal for statistical analysis and data manipulation. On the other hand, Scala is a statically typed language with both functional and object-oriented programming paradigms, making it suitable for a wide range of applications beyond data analysis.

  2. Performance and Scalability: R is not known for its performance when handling large datasets or running computationally intensive algorithms. Scala, on the other hand, is built on the Java Virtual Machine (JVM) and can take advantage of its performance optimizations, making it well-suited for big data processing and distributed computing.

  3. Integration with Existing Code: R is primarily used as a standalone language for statistical analysis and data manipulation, and it may not be as easily integrated with existing codebases written in other languages. Scala, being a general-purpose language, can seamlessly integrate with existing Java codebases and libraries, allowing for more flexibility in software development.

  4. Community and Libraries: R has a large and active community of data scientists and statisticians, resulting in an extensive collection of libraries and packages specifically tailored for statistical analysis and data manipulation. Scala, although it has a smaller community, has a rich ecosystem of libraries for general-purpose programming, big data processing, and machine learning.

  5. Development Environment and Tooling: R has a dedicated development environment called RStudio, which provides an integrated development environment (IDE) for coding, debugging, and visualizing data. Scala, being a general-purpose language, can be developed using various IDEs and text editors such as IntelliJ IDEA, Eclipse, or Visual Studio Code, offering more options for developers.

  6. Learning Curve and Community Support: R is relatively easy to learn for beginners who have a background in statistics, as it provides a wide range of built-in functions and packages for statistical analysis. Scala, however, has a steeper learning curve due to its functional and object-oriented programming paradigms, but it benefits from a wider range of online resources, tutorials, and community support.

In summary, R is a specialized language for statistical analysis and data manipulation, while Scala is a versatile language suitable for various applications, including big data processing and distributed computing.

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Advice on Scala, R Language

Nicholas
Nicholas

Jan 29, 2021

Decided

I am working in the domain of big data and machine learning. I am helping companies with bringing their machine learning models to the production. In many projects there is a tendency to port Python, PySpark code to Scala and Scala Spark.

This yields to longer time to market and a lot of mistakes due to necessity to understand and re-write the code. Also many libraries/apis that data scientists/machine learning practitioners use are not available in jvm ecosystem.

Simply, refactoring (if necessary) and organising the code of the data scientists by following best practices of software development is less error prone and faster comparing to re-write in Scala.

Pipeline orchestration tools such as Luigi/Airflow is python native and fits well to this picture.

I have heard some arguments against Python such as, it is slow, or it is hard to maintain due to its dynamically typed language. However cost/benefit of time consumed porting python code to java/scala alone would be enough as a counter-argument. ML pipelines rarerly contains a lot of code (if that is not the case, such as complex domain and significant amount of code, then scala would be a better fit).

In terms of performance, I did not see any issues with Python. It is not the fastest runtime around but ML applications are rarely time-critical (majority of them is batch based).

I still prefer Scala for developing APIs and for applications where the domain contains complex logic.

198k views198k
Comments
Frank
Frank

CTO at Visionary AG

Aug 25, 2022

Decided

We're moving from Java to Kotlin with our Microservice Stack (Spring Boot) because it is excellently supported by framework and tools and the learning curve is not very steep Kotlin is way more straightforward and convenient to use while providing less boilerplate and more strictness, which finally leads to better code, which is more readable, maintainable and less error-prone. We especially like Kotlin's (functional) data structures, which are, e.g. compared to Scala, easier to understand and don't require deep knowledge in functional programming.

48.8k views48.8k
Comments
Samuel
Samuel

Oct 11, 2021

Decided

MACHINE LEARNING

Python is the default go-to for machine learning. It has a wide variety of useful packages such as pandas and numpy to aid with ML, as well as deep-learning frameworks. Furthermore, it is more production-friendly compared to other ML languages such as R.

Pytorch is a deep-learning framework that is both flexible and fast compared to Tensorflow + Keras. It is also well documented and has a large community to answer lingering questions.

158k views158k
Comments

Detailed Comparison

Scala
Scala
R Language
R Language

Scala is an acronym for “Scalable Language”. This means that Scala grows with you. You can play with it by typing one-line expressions and observing the results. But you can also rely on it for large mission critical systems, as many companies, including Twitter, LinkedIn, or Intel do. To some, Scala feels like a scripting language. Its syntax is concise and low ceremony; its types get out of the way because the compiler can infer them.

R provides a wide variety of statistical (linear and nonlinear modelling, classical statistical tests, time-series analysis, classification, clustering, ...) and graphical techniques, and is highly extensible.

Statistics
GitHub Stars
14.4K
GitHub Stars
-
GitHub Forks
3.1K
GitHub Forks
-
Stacks
11.9K
Stacks
3.9K
Followers
7.8K
Followers
1.9K
Votes
1.5K
Votes
418
Pros & Cons
Pros
  • 188
    Static typing
  • 178
    Pattern-matching
  • 175
    Jvm
  • 172
    Scala is fun
  • 138
    Types
Cons
  • 11
    Slow compilation time
  • 7
    Multiple ropes and styles to hang your self
  • 6
    Too few developers available
  • 4
    Complicated subtyping
  • 2
    My coworkers using scala are racist against other stuff
Pros
  • 86
    Data analysis
  • 64
    Graphics and data visualization
  • 55
    Free
  • 45
    Great community
  • 38
    Flexible statistical analysis toolkit
Cons
  • 6
    Very messy syntax
  • 4
    Tables must fit in RAM
  • 3
    Arrays indices start with 1
  • 2
    No push command for vectors/lists
  • 2
    Messy syntax for string concatenation
Integrations
Java
Java
No integrations available

What are some alternatives to Scala, R Language?

JavaScript

JavaScript

JavaScript is most known as the scripting language for Web pages, but used in many non-browser environments as well such as node.js or Apache CouchDB. It is a prototype-based, multi-paradigm scripting language that is dynamic,and supports object-oriented, imperative, and functional programming styles.

Python

Python

Python is a general purpose programming language created by Guido Van Rossum. Python is most praised for its elegant syntax and readable code, if you are just beginning your programming career python suits you best.

PHP

PHP

Fast, flexible and pragmatic, PHP powers everything from your blog to the most popular websites in the world.

Ruby

Ruby

Ruby is a language of careful balance. Its creator, Yukihiro “Matz” Matsumoto, blended parts of his favorite languages (Perl, Smalltalk, Eiffel, Ada, and Lisp) to form a new language that balanced functional programming with imperative programming.

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!

Golang

Golang

Go is expressive, concise, clean, and efficient. Its concurrency mechanisms make it easy to write programs that get the most out of multicore and networked machines, while its novel type system enables flexible and modular program construction. Go compiles quickly to machine code yet has the convenience of garbage collection and the power of run-time reflection. It's a fast, statically typed, compiled language that feels like a dynamically typed, interpreted language.

HTML5

HTML5

HTML5 is a core technology markup language of the Internet used for structuring and presenting content for the World Wide Web. As of October 2014 this is the final and complete fifth revision of the HTML standard of the World Wide Web Consortium (W3C). The previous version, HTML 4, was standardised in 1997.

C#

C#

C# (pronounced "See Sharp") is a simple, modern, object-oriented, and type-safe programming language. C# has its roots in the C family of languages and will be immediately familiar to C, C++, Java, and JavaScript programmers.

Elixir

Elixir

Elixir leverages the Erlang VM, known for running low-latency, distributed and fault-tolerant systems, while also being successfully used in web development and the embedded software domain.

Swift

Swift

Writing code is interactive and fun, the syntax is concise yet expressive, and apps run lightning-fast. Swift is ready for your next iOS and OS X project — or for addition into your current app — because Swift code works side-by-side with Objective-C.

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