Book Image

Scientific Computing with Scala

By : Vytautas Jancauskas
Book Image

Scientific Computing with Scala

By: Vytautas Jancauskas

Overview of this book

Scala is a statically typed, Java Virtual Machine (JVM)-based language with strong support for functional programming. There exist libraries for Scala that cover a range of common scientific computing tasks – from linear algebra and numerical algorithms to convenient and safe parallelization to powerful plotting facilities. Learning to use these to perform common scientific tasks will allow you to write programs that are both fast and easy to write and maintain. We will start by discussing the advantages of using Scala over other scientific computing platforms. You will discover Scala packages that provide the functionality you have come to expect when writing scientific software. We will explore using Scala's Breeze library for linear algebra, optimization, and signal processing. We will then proceed to the Saddle library for data analysis. If you have experience in R or with Python's popular pandas library you will learn how to translate those skills to Saddle. If you are new to data analysis, you will learn basic concepts of Saddle as well. Well will explore the numerical computing environment called ScalaLab. It comes bundled with a lot of scientific software readily available. We will use it for interactive computing, data analysis, and visualization. In the following chapters, we will explore using Scala's powerful parallel collections for safe and convenient parallel programming. Topics such as the Akka concurrency framework will be covered. Finally, you will learn about multivariate data visualization and how to produce professional-looking plots in Scala easily. After reading the book, you should have more than enough information on how to start using Scala as your scientific computing platform
Table of Contents (16 chapters)
Scientific Computing with Scala
Credits
About the Author
About the Reviewer
www.PacktPub.com
Preface
Index

Summary


In this chapter, we examined how to use the Breeze numerical computing library for common linear algebra, optimizations, and signal processing tasks. The basic operations with Breeze's vector and matrix types were described. We have seen how to add, multiply, subtract, and divide matrices and vectors element wise. You also learned how to apply mathematical functions to them element wise.

We have also seen how to create new matrices and vectors initialized with various initial data, Breeze's statistical distributions, and drawing samples from them. The optimization functionality available in Breeze was briefly described. We have seen how to optimize a simple function using the LBFGS optimization method. We have seen how to perform Fourier analysis on signals as well as how to plot the results of said analysis.

Upon reading this chapter, you should have a good idea how to perform common numerical computing tasks. Operations available in other numerical computing platforms such as NumPy...