Book Image

The Data Science Workshop - Second Edition

By : Anthony So, Thomas V. Joseph, Robert Thas John, Andrew Worsley, Dr. Samuel Asare
5 (1)
Book Image

The Data Science Workshop - Second Edition

5 (1)
By: Anthony So, Thomas V. Joseph, Robert Thas John, Andrew Worsley, Dr. Samuel Asare

Overview of this book

Where there’s data, there’s insight. With so much data being generated, there is immense scope to extract meaningful information that’ll boost business productivity and profitability. By learning to convert raw data into game-changing insights, you’ll open new career paths and opportunities. The Data Science Workshop begins by introducing different types of projects and showing you how to incorporate machine learning algorithms in them. You’ll learn to select a relevant metric and even assess the performance of your model. To tune the hyperparameters of an algorithm and improve its accuracy, you’ll get hands-on with approaches such as grid search and random search. Next, you’ll learn dimensionality reduction techniques to easily handle many variables at once, before exploring how to use model ensembling techniques and create new features to enhance model performance. In a bid to help you automatically create new features that improve your model, the book demonstrates how to use the automated feature engineering tool. You’ll also understand how to use the orchestration and scheduling workflow to deploy machine learning models in batch. By the end of this book, you’ll have the skills to start working on data science projects confidently. By the end of this book, you’ll have the skills to start working on data science projects confidently.
Table of Contents (16 chapters)
Preface
12
12. Feature Engineering

Strategies for Addressing High-Dimensional Datasets

In Activity 14.01, Fitting a Logistic Regression Model on a High-Dimensional Dataset, we witnessed the challenges of high-dimensional datasets. We saw how the resources were challenged when the replication factor was 300. You also saw that the notebook crashes when the replication factor is increased to 500. When the replication factor was 500, the number of features was around 750,000. In our case, our resources would fail to scale up even before we hit the 1 million mark on the number of features. Some modern-day datasets sometimes have hundreds of millions, or in many cases billions, of features. Imagine the kind of resources and time it would take to get any actionable insights from the dataset.

Luckily, we have many robust methods for addressing high-dimensional datasets. Many of these techniques are very effective and have helped to address the challenges raised by huge datasets.

Let's look at some of the techniques...