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Dimensionality Reduction in Python

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Course Report - Dimensionality Reduction in Python

Course Report

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Course Features

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Duration

4 hours

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Mobile, Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Intermediate

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Teaching Type

Self Paced

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Video Content

4 hours

Course Description

High-dimensional datasets can be overwhelming. A new dataset would be easier to visualize than an existing one. If you have multiple dimensions, traditional visualization techniques may not work. High-dimensional data can be visualized using many visualization methods. These techniques will be covered in the course. There are many features that lack information in data. This is often due to a lack of variation or duplicates. These features will be removed from your data to allow you to focus on the more informative. These features may also be used to build a model. You might find that some of these features don't affect what you are trying predict. You will also learn how you can identify and remove non-essential features in order to reduce complexity. You will also learn how feature extraction can reduce dimensionality by calculating uncorrelated principal components.

Course Overview

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Virtual Labs

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International Faculty

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Post Course Interactions

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Hands-On Training,Instructor-Moderated Discussions

Skills You Will Gain

Prerequisites/Requirements

Supervised Learning with scikit-learn

What You Will Learn

Understand the concept of reducing dimensionality in your data, and master the techniques to do so in Python

You’ll learn how to detect and drop these irrelevant features too, in order to reduce dimensionality and thus complexity

You’ll learn how to detect these features and drop them from the dataset so that you can focus on the informative ones

Course Instructors

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Aleksandra Vercauteren

Senior Data Scientist - Head of NLP @ Faktion

After 6 years as a researcher in Theoretical Linguistics, I decided to radically change careers and became a data scientist. I did not let go of my linguistic background and specialised in Natural La...
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Jeroen Boeye

Machine Learning Engineer @ Faktion

Jeroen is a machine learning engineer working at Faktion, an AI company from Belgium. He uses both R and Python for his analyses and has a PhD background in computational biology. His experience most...
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