Information Technology
Hands on Training icon
Hands On Training
Hands on Training icon

Data Cleansing Master Class in Python

Course Cover
compare button icon

Course Features

icon

Duration

3.33 hours

icon

Delivery Method

Online

icon

Available on

Limited Access

icon

Accessibility

Desktop, Laptop

icon

Language

English

icon

Subtitles

English

icon

Level

Intermediate

icon

Teaching Type

Self Paced

icon

Video Content

3.33 hours

Course Description

This guide is aimed at individuals who want to become machine-learning engineers. The importance of data preparation in machine learning projects is emphasized, as it is essential for transforming raw data into a suitable format for modeling. The course covers various topics, such as data imputation, advanced techniques for data cleansing, and real-world data cleaning techniques. It also highlights the significance of avoiding data leakage and ensuring accurate model evaluation through proper data preparation.

To meet the expectations of machine learning algorithms, which typically require numerical input data, it may be necessary to convert non-numeric data types or values such as labels. Different algorithms have specific requirements regarding data types, scales, probability distributions, and relationships among input variables. Therefore, modifying the data to meet these expectations may be necessary.

This course is ideal for those serious about pursuing a career as a machine-learning engineer in the real world. It assumes a solid understanding of Python and the basics of machine learning, as well as familiarity with machine learning libraries. By completing this course, individuals will gain expertise in data cleaning and preprocessing, which are crucial skills for successful machine learning projects.

Course Overview

projects-img

International Faculty

projects-img

Post Course Interactions

projects-img

Hands-On Training,Instructor-Moderated Discussions

projects-img

Case Studies, Captstone Projects

Skills You Will Gain

What You Will Learn

Learn how to apply real-world data cleansing techniques to your data

Learn advanced data cleansing techniques

Learn how to prepare data in a way that avoids data leakage, and in turn, incorrect model evaluation

Target Students

This course is for you if you are serious about becoming a machine learning engineer in the real world

You will need a solid foundation in Python and should understand the basics of machine learning

Also, you should have some expertise with machine learning libraries

Course Instructors

Mike West

Instructor

Mike West is the instructor for this course
Course Cover