Welcome to this 2 hour long project-based course on Principal Component Analysis with NumPy and Python. In this project, you will do all the machine learning without using any of the popular machine learning libraries such as scikit-learn and statsmodels. The aim of this project and is to implement all the machinery of the various learning algorithms yourself, so you have a deeper understanding of the fundamentals. By the time you complete this project, you will be able to implement and apply PCA from scratch using NumPy in Python, conduct basic exploratory data analysis, and create simple data visualizations with Seaborn and Matplotlib. The prerequisites for this project are prior programming experience in Python and a basic understanding of machine learning theory.



Principal Component Analysis with NumPy

Instructor: Snehan Kekre
Access provided by L&T Corp - ATLNext
11,226 already enrolled
(298 reviews)
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What you'll learn
- Implement Principal Component Analysis (PCA) from scratch with NumPy and Python 
- Conduct basic exploratory data analysis (EDA) 
- Create simple data visualizations with Seaborn and Matplotlib 
Skills you'll practice
Details to know

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About this Guided Project
Learn step-by-step
In a video that plays in a split-screen with your work area, your instructor will walk you through these steps:
- Introduction and Overview 
- Load the Data and Libraries 
- Visualize the Data 
- Data Standardization 
- Compute the Eigenvectors and Eigenvalues 
- Singular Value Decomposition (SVD) 
- Selecting Principal Components Using the Explained Variance 
- Project Data Onto a Lower-Dimensional Linear Subspace 
Recommended experience
Prior programming experience in Python and machine learning theory is recommended.
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How you'll learn
- Skill-based, hands-on learning - Practice new skills by completing job-related tasks. 
- Expert guidance - Follow along with pre-recorded videos from experts using a unique side-by-side interface. 
- No downloads or installation required - Access the tools and resources you need in a pre-configured cloud workspace. 
- Available only on desktop - This Guided Project is designed for laptops or desktop computers with a reliable Internet connection, not mobile devices. 
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298 reviews
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Showing 3 of 298
Reviewed on Apr 24, 2020
Learned Applying PCAConcise course.Liked the method of teaching.
Reviewed on Aug 4, 2020
It's a good course for someone to try out his knowledge of the basic packages and the concepts and the maths behind PCA.
Reviewed on Oct 30, 2020
Good Introductory project to gain insights into PCA using Numpy and python.
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