Machine Learning in Ms. Excel

Machine Learning in Ms. Excel

https://www.udemy.com/course/machine-learning-in-ms-excel

 

 


 

English

What you'll learn: 

Machine Learning Algorithms in Excel

Data Clustering such as Fine Classing and Weight of Evidence

Data Wrangling and Transformation

Mathematics for Machine Learning

Credit Risk Modelling and Validation

Build a complete Credit Risk Model with Machine Learning by Using Excel

Impress interviews by adding a special skill in your Resume

Requirements:

No coding skills needed just a will to learn new skill

Real Statistics Add-In which we will show in this course

Description:

Hi and welcome to the Machine Learning with Excel course,

Machine Learning is shaping our everyday lives and it one of the most important features of innovations

in technology. The purpose of this course is to equip you with the newest methods that are applied in

Machine Learning by Using Microsoft Excel. It will introduce you to a different way of thinking about

data science and machine learning. This is a good way to start a career in Machine Learning since you

will understand some initial concepts and gain some hands-on experience on it. I am extremely happy

share with you everything that I know about Machine Learning with Excel. I promise you it is going to be

worth it and you will gain a valuable set of knowledge and skills by attending this course.

This is the only course in Udemy where Machine Learning is applied in Microsoft Excel. The reason why

we chose to go with Excel is because we know that many of you are already familiar with it. We will start

from ground zero and together we will continuously develop new skills from the beginning to the end of

this course. In this course together we will implement a complete data science project from start to

finish using Credit Risk Data. For this course we have data for around 40,000 consumers and a lot of

characteristics about them such as: their level of education, their age, their marital status, where they

live, if they own a home, and other useful details. We will get our hands dirty with these data and

explore them in depth and you can practice all this on your own too. Moreover, you will gain access to

valuable resources such as lectures, homework, quizzes, slides as well as some literature review in

regard to the modelling approaches. Let’s go ahead now and see how the course structure looks like!Who this course is for:Everyone that wants to learn new skills

Who this course is for:

Everyone that wants to learn new skills

 

Machine Learning in Ms. Excel


 TO MAC USERS: If RAR password doesn't work, use this archive program: 

RAR Expander 0.8.5 Beta 4  and extract password protected files without error.


 TO WIN USERS: If RAR password doesn't work, use this archive program: 

Latest Winrar  and extract password protected files without error.


 Solid   |  

Information
Members of Guests cannot leave comments.


SermonBox - Seasonal Collection

SermonBox - The Series Pack Collection

Top Rated News

  • Christmas Material
  • Laser Cut & Print Design Elements Bundle - ETSY
  • Daz3D - All Materials - SKU 37000-37999
  • Cgaxis - All Product - 2019 - All Retail! - UPDATED!!!
  • DigitalXModels Full Collections
  • Rampant Design Tools Full Collections Total: $4400
  • FilmLooks.Com Full Collection
  • All PixelSquid Product
  • The Pixel Lab Collection
  • Envato Elements Full Sources- 3200+ Files
  • Ui8.NET Full Sources
  • The History of The 20th Century
  • The Dover Collections
  • Snake Interiors Collections
  • Inspirational Collections
  • Veer Fancy Collections
  • All Ojo Images
  • All ZZVE Collections
  • All Sozaijiten Collections
  • All Image Broker Collections
  • Shuterstock Bundle Collections
  • Tattoo Collections
  • Blend Images Collections
  • Authors Tuorism Collections
  • Motion Mile - Big Bundle
  • PhotoBacks - All Product - 2018
  • Dekes Techniques - Photoshop & Illustrator Course - 1 to 673
Telegram GFXTRA Group
Udemy - Turkce Gorsel Ogrenme Setleri - Part 2
Videohive Wow Pack Series


rss