You don't currently have access to this contentYou don't currently have access to this contentYou don't currently have access to this contentYou don't currently have access to this contentYou don't currently have access to this contentYou don't currently have access to this contentYou don't currently have access to this content
Data Science Premium Course

Practical Applications Of Machine Learning

Everyone can learn linear algebra but practical implementation of linear models is one of the essential key skills as a Machine Learning Engineer & we are going to master different concepts with application at the same time.

Subscribe for Full Access

Get this course and all premium content for as low as $33/month.

Subscribe now

Course Overview

Machine learning (ML) is the study of computer algorithms that improve automatically through experience and by the use of data. It is seen as a part of artificial intelligence. Machine learning algorithms build a model based on sample data, known as “training data”, in order to make predictions or decisions without being explicitly programmed to do so. Linear algebra helps in creating better machine learning algorithms You can use your learning of linear algebra to build better supervised as well as unsupervised machine learning algorithms. Logistic regression, linear regression, decision trees, and support vector machines (SVM) are a few supervised learning algorithms that you can create from scratch with the help of linear algebra.

In this course, we are going to understand what machine learning is, the core of linear algebra, and how we can optimize our ML solution using different linear algebra techniques. Further in the course, we’ll learn about the regression models, the reason behind optimizing techniques, and the classification models. We’ll also go through the topics, imbalance classification, and the ADASYN technique. Finally, after learning about dimensionality reduction and its needs, we’ll work on a project.

After the course completion, you’ll master linear algebra and modeling, and eventually machine learning. You will know how you can boost your model performance with different boosting techniques in machine learning. You’ll also know how clustering helps different sectors in industries.

What You
Will Learn

Inside
the ​Course

7 Lessons | 26 Topics | 6 Quizzes

Course Content

Expand All

Start Learning for as Little As $8 a Month!

Start Your FREE Two Week Trial

We are working day and night to bring you fresh courses every month. And we have brand new features in the works like guided career paths, hands-on labs and experiences, dedicated mentors, cyber range integration and so much more.

Related Courses

Featured Image for Advanced Machine Learning For Business Professionals Course.

Advanced Machine Learning For Business Professionals

Learn how Machine Learning and AI can add real value to your organization and start your digital transformation

Featured Image for Augmented Reality Course.

Augmented Reality

A beginners course on Augmented Reality. You’ll learn about the basics of Immersive Technologies, specifically AR, how it’s being used & how to create amazing AR apps for iOS & Android devices.

Featured Image for Data Wrangling with Pandas – Part 2 Course.

Data Wrangling with Pandas – Part 2

Explore the World of Data Processing with Pandas and Get a Chance to work on Exciting Real-life Data Scenarios!

Featured Image for Data Visualization Using Tableau – Part 3 Course.

Data Visualization Using Tableau – Part 3

Master Tableau Calculations and Create Your Own Dashboards!

« » page 1 / 6