Machine Learning Practical

Machine Learning - Get Your Hands Dirty by Solving Real Industry Challenges with Python

Last updated 2022-01-10 | 4.4

- You will know how real data science project looks like
- You will be able to include these Case Studies in your resume
- You will be able better market yourself as a Machine Learning Practioneer

What you'll learn

You will know how real data science project looks like
You will be able to include these Case Studies in your resume
You will be able better market yourself as a Machine Learning Practioneer
You will feel confident during Data Science interview
You will learn how to chain multiple ML algorithms together to achieve the goal
You will learn most advanced Data Visualization techniques with Seaborn and Matplotlib
You will learn Logistic Regression
You will learn L1 Regularization (Lasso)
You will learn Random Forest Classifier

* Requirements

* You need to know Python (Machine Learning A-Z level is enough) in order to complete this course.
* You need to know how to set up your working environment (Anaconda
* Jupyter Notebook
* Spyder)
* This should not be your first Machine Learning course. You need to understand main concepts.

Description

So you know the theory of Machine Learning and know how to create your first algorithms. Now what? 

There are tons of courses out there about the underlying theory of Machine Learning which don’t go any deeper – into the applications.


This course is not one of them.

Are you ready to apply all of the theory and knowledge to real life Machine Learning challenges?  

Then welcome to “Machine Learning Practical”.


We gathered best industry professionals with tons of completed projects behind.

Each presenter has a unique style, which is determined by his experience, and like in a real world, you will need adjust to it if you want successfully complete this course. We will leave no one behind!


This course will demystify how real Data Science project looks like. Time to move away from these polished examples which are only introducing you to the matter, but not giving any real experience.


If you are still dreaming where to learn Machine Learning through practice, where to take real-life projects for your CV, how to not look like a noob in the recruiter's eyes, then you came to the right place!


This course provides a hands-on approach to real-life challenges and covers exactly what you need to succeed in the real world of Data Science.

 

There are most exciting case studies including:

●      diagnosing diabetes in the early stages

●      directing customers to subscription products with app usage analysis

●      minimizing churn rate in finance

●      predicting customer location with GPS data

●      forecasting future currency exchange rates

●      classifying fashion

●      predicting breast cancer

●      and much more!

 

All real.

All true.

All helpful and applicable.

And as a final bonus:

 

In this course we will also cover Deep Learning Techniques and their practical applications.

So as you can see, our goal here is to really build the World’s leading practical machine learning course.

If your goal is to become a Machine Learning expert, you know how valuable these real-life examples really are. 

They will determine the difference between Data Scientists who just know the theory and Machine Learning experts who have gotten their hands dirty.

So if you want to get hands-on experience which you can add to your portfolio, then this course is for you.

Enroll now and we’ll see you inside.

Who this course is for:

  • Data Science and Machine Learning enthusiasts who want to understand how real data science projects look like.
  • Anyone with Machine Learning and Python knowledge who wants to practice their skills

Course content

8 sections • 82 lectures

Welcome to the course! Preview 01:38

BONUS: Learning Paths Preview 00:33

Where to get the materials Preview 00:02

Introduction Preview 00:45

Business Challenge Preview 02:50

Updates on Udemy Reviews Preview 01:09

Challenge in Machine Learning Vocabulary Preview 07:14

Data Visualisation Preview 16:57

Model Training Preview 08:06

Model Evaluation Preview 10:13

Improving the Model Preview 21:59

Conclusion Preview 02:46

Business Challenge Preview 04:39

Challenge in Machine Learning Vocabulary Preview 06:09

Data Visualisation Preview 15:24

Model Training Part I Preview 08:05

Model Training Part II Preview 07:05

Model Training Part III Preview 09:58

Model Training Part IV Preview 15:15

Model Evaluation Preview 09:00

Improving the Model Preview 02:35

Conclusion Preview 03:46

Fintech Case Studies Introduction Preview 01:42

Introduction Preview 02:13

Data Preview 03:53

Features Histograms Preview 09:46

Correlation Plot Preview 05:17

Correlation Matrix Preview 07:02

Feature Engineering - Response Preview 09:17

Feature Engineering - Screens Preview 09:58

Data Pre-Processing Preview 10:21

Model Building Preview 12:53

Model Conclusion Preview 03:59

Final Remarks Preview 02:09

Introduction Preview 02:13

Data Preview 08:16

Data Cleaning Preview 04:59

Features Histograms Preview 09:20

Pie Chart Distributions Preview 09:57

Correlation Plot Preview 08:14

Correlation Matrix Preview 09:29

One-Hot Encoding Preview 06:25

Feature Scaling & Balancing Preview 11:08

Model Building Preview 08:26

K-Fold Cross Validation Preview 04:44

Feature Selection Preview 07:54

Model Conclusion Preview 04:48

Final Remarks Preview 02:43

Introduction Preview 07:48

Section will be published sooner than you expect!

Data Preview 08:11

Data Housekeeping Preview 05:34

Histograms Preview 10:08

Correlation Plot Preview 05:17

Correlation Matrix Preview 07:04

Feature Engineering Preview 05:11

Data Preprocessing Preview 09:48

Model Building Part 1 Preview 07:29

Model Building Part 2 Preview 10:11

Grid Search Part 1 Preview 12:25

Grid Search Part 2 Preview 09:50

Model Conclusion Preview 03:06

Final Remarks Preview 03:31

Case Study Preview 03:30

Machine Learning Vocabulary Preview 03:15

Set Up Preview 03:07

Data Visualization Preview 03:17

Data Preprocessing Preview 04:21

Deep Learning Part 1 Preview 03:56

Deep Learning Part 2 Preview 07:23

Splitting the Data Preview 06:05

Training Preview 02:52

Metrics Preview 03:59

Confusion Matrix Preview 05:29

Machine Learning Classifiers Preview 07:42

Random Forest Preview 03:45

Decision Trees Preview 02:51

Sampling Preview 02:15

Undersampling Preview 05:15

Smote Preview 03:44

Final remarks Preview 03:00

THANK YOU bonus video Preview 02:40