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Julia 1.0 Programming Complete Reference Guide

You're reading from   Julia 1.0 Programming Complete Reference Guide Discover Julia, a high-performance language for technical computing

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Product type Course
Published in May 2019
Publisher
ISBN-13 9781838822248
Length 466 pages
Edition 1st Edition
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Tools
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Author (1):
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Ivo Balbaert Ivo Balbaert
Author Profile Icon Ivo Balbaert
Ivo Balbaert
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Table of Contents (18) Chapters Close

Preface 1. Installing the Julia Platform FREE CHAPTER 2. Variables, Types, and Operations 3. Functions 4. Control Flow 5. Collection Types 6. More on Types, Methods, and Modules 7. Metaprogramming in Julia 8. I/O, Networking, and Parallel Computing 9. Running External Programs 10. The Standard Library and Packages 11. Creating Our First Julia App 12. Setting Up the Wiki Game 13. Building the Wiki Game Web Crawler 14. Adding a Web UI for the Wiki Game 15. Implementing Recommender Systems with Julia 16. Machine Learning for Recommender Systems 17. Other Books You May Enjoy

Summary

This concludes the first part of our journey into recommender systems. They are an extremely important part of today's online business models and their usefulness is ever-growing, in direct relation to the exponential growth of data generated by our connected software and hardware. Recommender systems are a very efficient solution to the information overload problem—or rather, an information filter problem. Recommenders provide a level of filtering that's appropriate for each user, turning information, yet again, into a vector of customer empowerment.

Although it's critical to understand how the various types of recommender systems work, in order to be able to choose the right algorithm for the types of problems you'll solve in your work as a data scientist, implementing production-grade systems by hand is not something most people do. As with...

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