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Julia Cookbook

You're reading from   Julia Cookbook Over 40 recipes to get you up and running with programming using Julia

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Product type Paperback
Published in Sep 2016
Publisher
ISBN-13 9781785882012
Length 172 pages
Edition 1st Edition
Languages
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Authors (2):
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Raj R Jalem Raj R Jalem
Author Profile Icon Raj R Jalem
Raj R Jalem
Jalem Raj Rohit Jalem Raj Rohit
Author Profile Icon Jalem Raj Rohit
Jalem Raj Rohit
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Toc

Why should we use Julia for data science?

Now, you are all set up to learn and experience Julia for data science.

Data Science is simply doing science with data. It applies to a surprisingly wide range of domains, such as engineering, business, marketing, and automotive, owing to the availability of a large amount of data in all these industries from which valuable insights can be extracted and understood.

With the growth of industries, the speed, volume, and variety of the data being produced are drastically increasing. And the tools that have to deal with this data are continuously being adapted, which led to the emergence of more evolved, powerful tools such as Julia.

Julia has been growing steadily as a powerful alternative to the current data science tools. Julia's diverse range of statistical packages along with its powerful compiler features make it a very strong competitor to the current top two programming languages of data science: R and Python. However, advanced users of R and Python can use Julia alongside each of them to reap the maximum benefits from the features of both.

Julia, with its ability to compile code that looks and reads like Python into machine code that performs like C, has showed a lot of promise with its efficiency at generating efficient code using the type inference. It is also interesting to note that even the core mathematical library of Julia is written in Julia itself. As it supports distributed parallel execution, numerical accuracy, and a powerful type inference, such as Python, and diverse range of statistical packages, such as R, Julia is a very powerful programming language for the very rapidly evolving domain of data science.

Installing and spinning up the Julia terminal is very easy, as follows:

  1. Download the Julia package suited to your operating system from http://julialang.org/downloads/.
  2. Then, fire up Julia's interactive session, which is also called repl (read-eval-print loop). The terminal output would look like this:

    Why should we use Julia for data science?

  3. Installing and spinning up the Julia terminal is very easy:
  4. Download the Julia package suited to your operating system from http://julialang.org/downloads/.

Then, fire up Julia's interactive session, which is also called as repl (read-eval-print loop). The terminal output would look something like this:

Now, you are all set up to learn and experience Julia for Data Science.

You have been reading a chapter from
Julia Cookbook
Published in: Sep 2016
Publisher:
ISBN-13: 9781785882012
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