Julia: High Performance Programming

Leverage the power of Julia to design and develop high performing programs

About This Book

Get to know the best techniques to create blazingly fast programs with Julia

Stand out from the crowd by developing code that runs faster than your peers' code

Complete an extensive data science project through the entire cycle from ETL to analytics and data visualization

Who This Book Is For

This learning path is for data scientists and for all those who work in technical and scientific computation projects. It will be great for Julia developers who are interested in high-performance technical computing.

This learning path assumes that you already have some basic working knowledge of Julia's syntax and high-level dynamic languages such as MATLAB, R, Python, or Ruby.

What You Will Learn

Set up your Julia environment to achieve the highest productivity

Solve your tasks in a high-level dynamic language and use types for your data only when needed

Apply Julia to tackle problems concurrently and in a distributed environment

Get a sense of the possibilities and limitations of Julia's performance

Use Julia arrays to write high performance code

Build a data science project through the entire cycle of ETL, analytics, and data visualization

Display graphics and visualizations to carry out modeling and simulation in Julia

Develop your own packages and contribute to the Julia Community

In Detail

In this learning path, you will learn to use an interesting and dynamic programming language—Julia! You will get a chance to tackle your numerical and data problems with Julia. You'll begin the journey by setting up a running Julia platform before exploring its various built-in types. We'll then move on to the various functions and constructs in Julia. We'll walk through the two important collection types—arrays and matrices in Julia.

You will dive into how Julia uses type information to achieve its performance goals, and how to use multiple dispatch to help the compiler emit high performance machine code. You will see how Julia's design makes code fast, and you'll see its distributed computing capabilities.

By the end of this learning path, you will see how data works using simple statistics and analytics, and you'll discover its high and dynamic performance—its real strength, which makes it particularly useful in highly intensive computing tasks.

This learning path combines some of the best that Packt has to offer in one complete, curated package. It includes content from the following Packt products:

Getting Started with Julia by Ivo Balvaert

Julia High Performance by Avik Sengupta

Mastering Julia by Malcolm Sherrington

Style and approach

This hands-on manual will give you great explanations of the important concepts related to Julia programming.

Starte deine 14-tägige kostenlose Probezeit

  • Voller Zugriff auf Hunderttausende von Hörbüchern und E-Books in unserer Bibliothek
  • Erstelle bis zu 4 Profile – inkl. Kinderprofile
  • Lies und höre offline
  • Abos ab 9,99 € pro Monat
Jetzt kostenlos testen

Jederzeit kündbar

Julia: High Performance Programming

Leverage the power of Julia to design and develop high performing programs

About This Book

Get to know the best techniques to create blazingly fast programs with Julia

Stand out from the crowd by developing code that runs faster than your peers' code

Complete an extensive data science project through the entire cycle from ETL to analytics and data visualization

Who This Book Is For

This learning path is for data scientists and for all those who work in technical and scientific computation projects. It will be great for Julia developers who are interested in high-performance technical computing.

This learning path assumes that you already have some basic working knowledge of Julia's syntax and high-level dynamic languages such as MATLAB, R, Python, or Ruby.

What You Will Learn

Set up your Julia environment to achieve the highest productivity

Solve your tasks in a high-level dynamic language and use types for your data only when needed

Apply Julia to tackle problems concurrently and in a distributed environment

Get a sense of the possibilities and limitations of Julia's performance

Use Julia arrays to write high performance code

Build a data science project through the entire cycle of ETL, analytics, and data visualization

Display graphics and visualizations to carry out modeling and simulation in Julia

Develop your own packages and contribute to the Julia Community

In Detail

In this learning path, you will learn to use an interesting and dynamic programming language—Julia! You will get a chance to tackle your numerical and data problems with Julia. You'll begin the journey by setting up a running Julia platform before exploring its various built-in types. We'll then move on to the various functions and constructs in Julia. We'll walk through the two important collection types—arrays and matrices in Julia.

You will dive into how Julia uses type information to achieve its performance goals, and how to use multiple dispatch to help the compiler emit high performance machine code. You will see how Julia's design makes code fast, and you'll see its distributed computing capabilities.

By the end of this learning path, you will see how data works using simple statistics and analytics, and you'll discover its high and dynamic performance—its real strength, which makes it particularly useful in highly intensive computing tasks.

This learning path combines some of the best that Packt has to offer in one complete, curated package. It includes content from the following Packt products:

Getting Started with Julia by Ivo Balvaert

Julia High Performance by Avik Sengupta

Mastering Julia by Malcolm Sherrington

Style and approach

This hands-on manual will give you great explanations of the important concepts related to Julia programming.


Format:

Dauer:

  • 846 seiten

Sprache:

Englisch


Verwandte Kategorien