Book Image

Mastering Predictive Analytics with Python

By : Joseph Babcock
Book Image

Mastering Predictive Analytics with Python

By: Joseph Babcock

Overview of this book

The volume, diversity, and speed of data available has never been greater. Powerful machine learning methods can unlock the value in this information by finding complex relationships and unanticipated trends. Using the Python programming language, analysts can use these sophisticated methods to build scalable analytic applications to deliver insights that are of tremendous value to their organizations. In Mastering Predictive Analytics with Python, you will learn the process of turning raw data into powerful insights. Through case studies and code examples using popular open-source Python libraries, this book illustrates the complete development process for analytic applications and how to quickly apply these methods to your own data to create robust and scalable prediction services. Covering a wide range of algorithms for classification, regression, clustering, as well as cutting-edge techniques such as deep learning, this book illustrates not only how these methods work, but how to implement them in practice. You will learn to choose the right approach for your problem and how to develop engaging visualizations to bring the insights of predictive modeling to life
Table of Contents (16 chapters)
Mastering Predictive Analytics with Python
Credits
About the Author
About the Reviewer
www.PacktPub.com
Preface
Index

Summary


In this chapter, we described the three components of a basic prediction service: a client, the server, and the web application. We discussed how this design allows us to share the results of predictive modelling with other users or software systems, and scale our modeling horizontally and modularly to meet the demands of various use cases. Our code examples illustrate how to create a prediction service with generic model and data parsing functions that can be reused as we try different algorithms for a particular business use case. By utilizing background tasks through Celery worker threads and distributed training and scoring on Spark, we showed how to potentially scale this application to large datasets while providing intermediate feedback to the client on task status. We also showed how an on-demand prediction utility could be used to generate real-time scores for streams of data through a REST API.

Using this prediction service framework, in the next chapter we will extend this...