Machine Learning Pocket Reference: Working with Structured Data in Python

Machine Learning Pocket Reference: Working with Structured Data in Python

by Matt Harrison
Machine Learning Pocket Reference: Working with Structured Data in Python

Machine Learning Pocket Reference: Working with Structured Data in Python

by Matt Harrison

Paperback(Revised)

$29.99 
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Overview

With detailed notes, tables, and examples, this handy reference will help you navigate the basics of structured machine learning. Author Matt Harrison delivers a valuable guide that you can use for additional support during training and as a convenient resource when you dive into your next machine learning project.

Ideal for programmers, data scientists, and AI engineers, this book includes an overview of the machine learning process and walks you through classification with structured data. You'll also learn methods for clustering, predicting a continuous value (regression), and reducing dimensionality, among other topics.

This pocket reference includes sections that cover:

  • Classification, using the Titanic dataset
  • Cleaning data and dealing with missing data
  • Exploratory data analysis
  • Common preprocessing steps using sample data
  • Selecting features useful to the model
  • Model selection
  • Metrics and classification evaluation
  • Regression examples using k-nearest neighbor, decision trees, boosting, and more
  • Metrics for regression evaluation
  • Clustering
  • Dimensionality reduction
  • Scikit-learn pipelines

Product Details

ISBN-13: 9781492047544
Publisher: O'Reilly Media, Incorporated
Publication date: 09/17/2019
Edition description: Revised
Pages: 318
Sales rank: 1,086,578
Product dimensions: 4.20(w) x 6.90(h) x 0.70(d)

About the Author

Matt runs MetaSnake, a Python and Data Science training and consulting company. He has over 15 years of experience using Python across a breadth of domains: Data Science, BI, Storage, Testing and Automation, Open Source Stack Management, and Search.
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