5 Machine Learning Projects from Dataisgood / Great Reviews

Learn Complete Machine Learning Bootcamp with Python. Build 5 Complete Machine Learning Real World Projects with Python.

4.45 (720 reviews)
Udemy
platform
English
language
Data Science
category
5 Machine Learning Projects from Dataisgood / Great Reviews
39,604
students
26 hours
content
Apr 2022
last update
$79.99
regular price

What you will learn

Theory and practical implementation of linear regression using sklearn.

Theory and practical implementation of logistic regression using sklearn.

Feature selection using RFECV.

Data transformation with linear and logistic regression.

Evaluation metrics to analyze the performance of models.

Industry relevance of linear and logistic regression.

Mathematics behind KNN, SVM and Naive Bayes algorithms.

Implementation of KNN, SVM and Naive Bayes using sklearn.

Attribute selection methods- Gini Index and Entropy.

Mathematics behind Decision trees and random forest.

Boosting algorithms:- Adaboost, Gradient Boosting and XgBoost.

Different Algorithms for Clustering.

Different methods to deal with imbalanced data.

Implementation of Correlation Filtering.

Implementating Variance Filtering.

Implementation of PCA & LDA.

Implementation of Content and Collaborative based filtering.

Implementing Singular Value Decomposition.

Implementation of Different algorithms used for Time Series forecasting.

Case studies.

Hands on Real-World examples.

Why take this course?

Crazy about Data Science and Machine Learning?

This course created by expert instructors at Dataisgood is a perfect fit for you.

This course will take you step by step into the world of Machine Learning.

Machine Learning is the study of computer algorithms that automates analytical model building. It is a branch of Artificial Intelligence based on the idea that systems can learn from data, identify patterns and make decisions with minimal human intervention.

Machine Learning is actively being used today, perhaps in many more places than one world expects.

It contains a lot of topics and this course will cover all step by step.

This Machine Learning course will give you theoretical as well as practical knowledge of Machine Learning.

This Machine Learning course is fun as well as exciting.

It will cover all common and important algorithms and will give you the experience of working on some real-world projects.

This course will cover the following topics:-

1. Theory and practical implementation of linear regression using sklearn.

2. Theory and practical implementation of logistic regression using sklearn.

3. Feature selection using RFECV.

4. Data transformation with linear and logistic regression.

5. Evaluation metrics to analyze the performance of models.

6. Industry relevance of linear and logistic regression.

7. Mathematics behind KNN, SVM, and Naive Bayes algorithms.

8. Implementation of KNN, SVM, and Naive Bayes using sklearn.

9. Attribute selection methods- Gini Index and Entropy.

10. Mathematics behind Decision trees and random forest.

11. Boosting algorithms:- Adaboost, Gradient Boosting, and XgBoost.

12. Different algorithms for clustering.

13. Different methods to deal with imbalanced data.

14. Correlation filtering.

15. Variance filtering.

16. PCA & LDA.

17. Content and Collaborative based filtering.

18. Singular Value decomposition.

19. Different algorithms used for Time Series forecasting.

20. Case studies.


We have covered each and every topic in detail and also learned to apply them to real-world problems.


There are lots and lots of exercises for you to practice and also a  5 bonus Python Machine Learning Project "Employee Promotion Prediction", "Predicting Medical Health Expenses", "Determining Status for Loan Applicants" and "Optimizing Crop Production".

In this Python Machine Learning Employee Promotion Prediction project,  you will learn how to Implement a Predictive Model for Identifying the Right Employees deserving of Promotion. Also, learn how to balance Imbalanced Datasets.

In this Python Machine Learning Predicting Medical Health Expenses project, you will learn how to Implement a Regression Analysis Predictive Model for Predicting the Future Medical Expenses for People using Linear Regression, Random Forest, Gradient Boosting, etc.

In this Python Machine Learning Determining Status for Loan Applicants project, you will learn how to Implement a Classification Analysis Predictive Model for Determining whether a Person should be Granted a Loan or Not.

In this Python Machine Learning Optimizing Crop Production project, you will learn about Precision Farming using Data Science Technologies such as Clustering Analysis and Classification Analysis. You will be able to Recommend the best Crops to Farmers to Increase their Productivity.


You will make use of all the topics read in this course.

You will also have access to all the resources used in this course.


Enroll now and become a master in machine learning.

Screenshots

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Reviews

Shahinda
May 30, 2023
Good content but codes are not fully explained and in the 'quiz solution' you just state the correct answer without actually explaining the reason for it being the correct one.
Tejkumar
April 13, 2023
There is no experienced instructor teaching this, it is simply a person reading from a screen. That is not what I expected. This really reduces the quality of instruction a whole lot! Secondly, time is wasted in a random music and intro at the beginning and end of EVERY session.. So out of a 3 to 4 minute session about 1 minute is wasted. This bloats the course by 20-25% and wastes the students' time. Examples of gratuitous and useless comments that pervade almost every lesson - "without wasting any time, let us get started", "hurray we have the results", "I'm so excited", "do you know it? don't worry, I will tell you....", "I hope you've understood....", Another issue is that the course has been split into too many very short segments, which increases the overhead as each segment has some unnecessary fluff (music, intro, conclusion, what was covered in prev session, what will be convered in next session). What could have been covered in one 12-15 minute session is split into 3-4 sessions.
Lolitha
March 8, 2023
In name of detailed explanation, an over fed information is hard to observe or recollect. "Rich in Content" is unnecessary over complicating study material. Basically they just read out the pptx with an accent.
Akash
December 23, 2022
Awesome course! Much dedication and effort you put into delivering this course in the field of Machine Learning. The course was fully organized, structured, and simple to understand, with numerous examples. The instructor's clear explanations with engaging delivery of lectures made the course easy to learn. I will be forever grateful for all the knowledge I retrieved from this course.
Jack
November 14, 2022
The quizzes aren't formatted in a way in which indentation is apparent, and makes it unclear if code lines are within a function or not. Quiz #3 also contained two string methods that weren't mentioned in the video lectures.
Jatin
October 10, 2022
This online course is one of the best course that I have come across. Great course for someone who wants to learn from scratch. Learning through this course is really fun and interesting. The course covers all the aspects of machine learning, including Python, to start from scratch. I love this course, thanks to the instructor. Recommended to everyone who wants to learn.
Chrysante
August 19, 2022
I'm fond of this course. The lessons are well explained. Clearly. Different concepts are tackled with such a professionalism. I recommend this course to all the Machine learners. Chrys
Tek
August 11, 2022
Only thing that I was not impressed with this course so far is that they have used very simple dataset while implementing algorithms . e.g Irish dataset used in SVM implementation: Irish dataset is such a very very simple that you don't have to do anything much there. Rest of course material collection, concept quality is so good and in proper sequence
Arun
July 19, 2022
Amazing course. The explanation is really easy to follow, and clear!. Great course for learning various ML algorithms. I literally loved the course structure and the way the course instructors presented the course. Thank you for this course.
Syed
July 3, 2022
The course is very good. This is one of the most comprehensive, easy to follow and well structured course on Machine Learning. The examples make the topics much clearer and the material quality is great. This course is thorough and covers the fundamentals with easy to understand examples, and good exercises to practice what you've learned. Would recommend to anyone!
Sahand
July 3, 2022
Awful course, the quizzes are not related to topics covered, also she can't answer them, the topics are short and are not well described. Don't waste your time on this course...
Shivam
June 26, 2022
This course is the best and the most wholesome course you will ever find. Wonderful instruction and very detailed. This course includes plenty of code examples and exercises. This is one of the most comprehensive machine learning courses. Big thanks to the Instructors. Really recommended!
Piyush
June 25, 2022
A really great course! The explanation is very understandable and provides beneficial details. It has a detailed explanation of machine learning algorithms from supervised learning to unsupervised learning. Pretty good course for beginners in ML. Learned a lot from this course. Highly recommended for those starting on machine learning.
Samuel
June 8, 2022
Topics covered in the course are relevant for learning the fundamentals of machine learning (excluding deep learning) and their applications to real business cases. The course is designed to have short sections of 2-3 minutes, which is is more likely aiming for beginners to cope with eventual degrees of difficulties. However, the course could have been made better by increase the length of the sections to 6-10 minutes like for most of courses at Udemy. This will allow the full coverage of a topic and underlying concepts for a good understanding. This will also reduce the time used in between short sections for welcoming and ads, making the course length reasonable and the course contents wright on target. Except those remarks, the course is good and the instructors convey it with enthusiasm and motivate well.
Vaibhav
September 8, 2021
Above my expectations! Amazing course! I really loved the way we are learning Machine Learning. Thanks so much team Data is Good.

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3914652
udemy ID
3/15/2021
course created date
4/30/2021
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