Explore the latest books of this year!
Bookbot

Python Machine Learning

Book rating

More about the book

From automated speech recognition on smartphones to email spam filters and movie recommendation systems, machine learning is integral to modern applications. The rise of powerful open-source libraries has made machine learning accessible to all, with Python serving as an ideal platform for developing these systems efficiently. This resource will guide you through the fundamentals of machine learning and its practical applications using Python. You will learn step-by-step best practices for transforming raw data into valuable insights, efficiently developing learning algorithms, and evaluating outcomes. The content covers various problem categories that machine learning addresses, including object classification, regression analysis for predicting continuous outcomes, and clustering to uncover hidden data structures. Additionally, you will create a sentiment analysis machine learning system and learn how to integrate your model into a web application to share with others.

Book purchase

Python Machine Learning, Sebastian Raschka, Randal S. Olson

Language
Released
2015
product-detail.submit-box.info.binding
(Paperback)
We’ll email you as soon as we track it down.

Payment methods

4.3
Very Good
513 Ratings

We’re missing your review here.

Title
Python Machine Learning
Language
English
Released
2015
Format
Paperback
Pages
454
ISBN10
1783555130
ISBN13
9781783555130
Series
Rating
4.25 out of 5
Description
From automated speech recognition on smartphones to email spam filters and movie recommendation systems, machine learning is integral to modern applications. The rise of powerful open-source libraries has made machine learning accessible to all, with Python serving as an ideal platform for developing these systems efficiently. This resource will guide you through the fundamentals of machine learning and its practical applications using Python. You will learn step-by-step best practices for transforming raw data into valuable insights, efficiently developing learning algorithms, and evaluating outcomes. The content covers various problem categories that machine learning addresses, including object classification, regression analysis for predicting continuous outcomes, and clustering to uncover hidden data structures. Additionally, you will create a sentiment analysis machine learning system and learn how to integrate your model into a web application to share with others.