Book Image

Hands-On Data Preprocessing in Python

By : Roy Jafari
5 (2)
Book Image

Hands-On Data Preprocessing in Python

5 (2)
By: Roy Jafari

Overview of this book

Hands-On Data Preprocessing is a primer on the best data cleaning and preprocessing techniques, written by an expert who’s developed college-level courses on data preprocessing and related subjects. With this book, you’ll be equipped with the optimum data preprocessing techniques from multiple perspectives, ensuring that you get the best possible insights from your data. You'll learn about different technical and analytical aspects of data preprocessing – data collection, data cleaning, data integration, data reduction, and data transformation – and get to grips with implementing them using the open source Python programming environment. The hands-on examples and easy-to-follow chapters will help you gain a comprehensive articulation of data preprocessing, its whys and hows, and identify opportunities where data analytics could lead to more effective decision making. As you progress through the chapters, you’ll also understand the role of data management systems and technologies for effective analytics and how to use APIs to pull data. By the end of this Python data preprocessing book, you'll be able to use Python to read, manipulate, and analyze data; perform data cleaning, integration, reduction, and transformation techniques, and handle outliers or missing values to effectively prepare data for analytic tools.
Table of Contents (24 chapters)
1
Part 1:Technical Needs
6
Part 2: Analytic Goals
11
Part 3: The Preprocessing
18
Part 4: Case Studies

Summary

Congratulations on your excellent progress on yet another exciting and important chapter. In this chapter, we learned about the concept of data reduction, its uniqueness, the different types, and saw a few examples of how knowing about the tools and techniques we can use for data reduction can be of significant value in our data analytic projects.

First, we understood the distinction between data redundancy and data reduction and then continued to learn about the overarching categories of data reduction: numerosity data reduction and dimensionality data reduction. For numerosity data reduction, we covered two methods and an example to showcase when and where they could be of value. For dimensionality reduction, we covered two categories: supervised and unsupervised dimension reduction.

Supervised dimension reduction is when we pick and choose the independent attributes for prediction or classification data mining tasks, while unsupervised dimension reduction is when we...