èż”ć›žćˆ° Exploratory Data Analysis for Machine Learning
IBM

Exploratory Data Analysis for Machine Learning

This first course in the IBM Machine Learning Professional Certificate introduces you to Machine Learning and the content of the professional certificate. In this course you will realize the importance of good, quality data. You will learn common techniques to retrieve your data, clean it, apply feature engineering, and have it ready for preliminary analysis and hypothesis testing. By the end of this course you should be able to: Retrieve data from multiple data sources: SQL, NoSQL databases, APIs, Cloud  Describe and use common feature selection and feature engineering techniques Handle categorical and ordinal features, as well as missing values Use a variety of techniques for detecting and dealing with outliers Articulate why feature scaling is important and use a variety of scaling techniques   Who should take this course? This course targets aspiring data scientists interested in acquiring hands-on experience  with Machine Learning and Artificial Intelligence in a business setting.   What skills should you have? To make the most out of this course, you should have familiarity with programming on a Python development environment, as well as fundamental understanding of Calculus, Linear Algebra, Probability, and Statistics.

状态Data Manipulation
状态Data Wrangling
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BD

5.0èŻ„èźș旄期Apr 23, 2024

The course includes hands-on exercises that allows us to apply the learned EDA techniques to real-world data. This practical approach helps solidify my understanding.

AP

5.0èŻ„èźș旄期Feb 25, 2023

This course was amazing. I always assumed that EDA was the challenging part of ML, But in this course I found it so cool. can't wait for the next course.

AK

5.0èŻ„èźș旄期Aug 12, 2021

This is by far the best course I've encountered. It has an in-depth explanation of the codes they provide. Smooth and easy to understand language.

ML

5.0èŻ„èźș旄期Sep 21, 2021

Excellent, very detailed. However, if the lessons can be expand for hypothesis testing and some of their common test like T test, Anova 1 and 2 way, chi square,..it would be better further.

NS

5.0èŻ„èźș旄期Nov 23, 2021

The course is exceptional and a huge learning opportunity for Exploratory Data Analysis. The final project is the best part of the course and helps to apply the concepts to real life data.

AM

4.0èŻ„èźș旄期Dec 17, 2020

Good introduction. The time estimates to complete assignments are off.Need a lot more material and direction for assignments to aid learning.

AK

4.0èŻ„èźș旄期Jul 17, 2025

More example in simplified way could help new learner to understand. Overall I really like this course. This help us to crack some of good area where I need to re-work .

SS

5.0èŻ„èźș旄期Nov 3, 2022

Very helpful for beginner but must have some basic knowledge on python and other libraries such as sklearn, spicy, pandas, etc,.... Thanks very much!

AE

5.0èŻ„èźș旄期Sep 26, 2021

Very detailed course of Exploratory Data Analysis for Machine learning. Ready to take the next step in data science or Machine learning, this is great course for taking you to the next level.

C

5.0èŻ„èźș旄期Aug 1, 2021

T​his course was really good for me because it went into depth on what I believe is the most important part of ML which is the data analysis and preparation.

MT

4.0èŻ„èźș旄期Feb 16, 2024

It was a very code course, however, it would be nice if the code was available on a notepad while videos played to make things faster. Also, some of the online notebooks were not working.

KG

5.0èŻ„èźș旄期Nov 4, 2022

Good introduction to the workflow in EDA for ML. I appreciate the code examples that provide a useful reference to code syntax and some practice with EDA.

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星ç€ș20/518

peker milas
1.0
èŻ„èźș旄期Nov 30, 2020
Arnold Dev
1.0
èŻ„èźș旄期Nov 28, 2020
Kevin Scaria
3.0
èŻ„èźș旄期Nov 8, 2020
Tusarkanti Nayak
3.0
èŻ„èźș旄期Nov 6, 2020
Charley Liu
2.0
èŻ„èźș旄期Nov 18, 2020
Sashank Talakola
1.0
èŻ„èźș旄期Jan 24, 2021
Christopher Welch
5.0
èŻ„èźș旄期Dec 31, 2020
Nihar Dutta
4.0
èŻ„èźș旄期Oct 19, 2020
Shangying Wang
3.0
èŻ„èźș旄期Sep 5, 2020
Pulkit Khanna
5.0
èŻ„èźș旄期Oct 9, 2021
Abhinav Sahai
1.0
èŻ„èźș旄期Jan 10, 2022
Minh LĂȘ
5.0
èŻ„èźș旄期Sep 22, 2021
Iddi Abdul Aziz
5.0
èŻ„èźș旄期Dec 7, 2020
Tao Kong
4.0
èŻ„èźș旄期Mar 19, 2021
Cevdet Ufuk Eskici
3.0
èŻ„èźș旄期Feb 28, 2021
Sneha Roy
2.0
èŻ„èźș旄期Aug 31, 2021
Zach Smith
1.0
èŻ„èźș旄期May 22, 2021
Noor-ul-ain Sarwar
5.0
èŻ„èźș旄期Nov 23, 2021
Ajay Kumar Saxena
5.0
èŻ„èźș旄期Aug 16, 2021
Ferley Ardila
5.0
èŻ„èźș旄期Jan 24, 2021