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The Artificial Intelligence Infrastructure Workshop

You're reading from   The Artificial Intelligence Infrastructure Workshop Build your own highly scalable and robust data storage systems that can support a variety of cutting-edge AI applications

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Product type Paperback
Published in Aug 2020
Publisher Packt
ISBN-13 9781800209848
Length 732 pages
Edition 1st Edition
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Authors (6):
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Bas Geerdink Bas Geerdink
Author Profile Icon Bas Geerdink
Bas Geerdink
Chinmay Arankalle Chinmay Arankalle
Author Profile Icon Chinmay Arankalle
Chinmay Arankalle
Kunal Gera Kunal Gera
Author Profile Icon Kunal Gera
Kunal Gera
Kevin Liao Kevin Liao
Author Profile Icon Kevin Liao
Kevin Liao
Gareth Dwyer Gareth Dwyer
Author Profile Icon Gareth Dwyer
Gareth Dwyer
Anand N.S. Anand N.S.
Author Profile Icon Anand N.S.
Anand N.S.
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Toc

Table of Contents (14) Chapters Close

Preface
1. Data Storage Fundamentals 2. Artificial Intelligence Storage Requirements FREE CHAPTER 3. Data Preparation 4. The Ethics of AI Data Storage 5. Data Stores: SQL and NoSQL Databases 6. Big Data File Formats 7. Introduction to Analytics Engine (Spark) for Big Data 8. Data System Design Examples 9. Workflow Management for AI 10. Introduction to Data Storage on Cloud Services (AWS) 11. Building an Artificial Intelligence Algorithm 12. Productionizing Your AI Applications Appendix

Introduction

In the previous chapters, you have learned ways to set up a data storage environment for AI. In this chapter, we will explore the final step: taking machine learning models into production, so that they can be used in live business applications. There are several methods for productionizing models, and we will elaborate on a few common ones.

Data scientists are trained to wrangle data, pick a machine learning algorithm, do feature engineering, and optimize the models they create. But even an excellent model has no value if it only runs in a machine learning environment or on the laptop of the data scientist; it has to be deployed in a production application. Furthermore, models have to be regularly updated to reflect the latest feedback from customers. Ideally, a model is continuously and automatically refreshed in a feedback loop; we call that reinforcement learning. An example of a system that uses reinforcement learning is a recommendation engine on a video...

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