Book Image

Machine Learning in Biotechnology and Life Sciences

By : Saleh Alkhalifa
Book Image

Machine Learning in Biotechnology and Life Sciences

By: Saleh Alkhalifa

Overview of this book

The booming fields of biotechnology and life sciences have seen drastic changes over the last few years. With competition growing in every corner, companies around the globe are looking to data-driven methods such as machine learning to optimize processes and reduce costs. This book helps lab scientists, engineers, and managers to develop a data scientist's mindset by taking a hands-on approach to learning about the applications of machine learning to increase productivity and efficiency in no time. You’ll start with a crash course in Python, SQL, and data science to develop and tune sophisticated models from scratch to automate processes and make predictions in the biotechnology and life sciences domain. As you advance, the book covers a number of advanced techniques in machine learning, deep learning, and natural language processing using real-world data. By the end of this machine learning book, you'll be able to build and deploy your own machine learning models to automate processes and make predictions using AWS and GCP.
Table of Contents (17 chapters)
1
Section 1: Getting Started with Data
6
Section 2: Developing and Training Models
13
Section 3: Deploying Models to Users

Chapter 7: Supervised Machine Learning

As you begin to progress your career and skill set in the field of data science, you will encounter many different types of models that fall into one of the two categories of either supervised or unsupervised learning. Recall that in applications of unsupervised learning, models are generally trained to either cluster or transform data in order to group or reshape data to extract insights when labels are not available for the given dataset. Within this chapter, we will now discuss the applications of supervised learning as they apply to the areas of classification and regression to develop powerful predictive models to make educated guesses about a dataset's labels.

Over the course of this chapter, we will discuss the following topics:

  • Understanding supervised learning
  • Measuring success in supervised machine learning
  • Understanding classification in supervised machine learning
  • Understanding regression in supervised machine...