XGBoost Machine Learning for Data Science and Kaggle

Master XGBoost machine learning algorithm, join Kaggle contest and start Data Science career

3.85 (77 reviews)
Udemy
platform
English
language
Data & Analytics
category
instructor
XGBoost Machine Learning for Data Science and Kaggle
516
students
10 hours
content
Jun 2020
last update
$49.99
regular price

What you will learn

How is xgboost algorithm working to predict different model targets

What are the roles that decision trees play in gradient boost and Xgboost modeling

Why XGBoost is so far one of the most powerful and stable machine learning methods in Kaggle contests

How to explain and set appropriate Xgboost modeling parameters

How to apply data exploration, cleaning and preparation for Xgboost method

How to effectively implement the different types of xgboost models using the packages in Python

How to perform feature engineering in Xgboost predictive modeling

How to conduct statistical analysis and feature selection in Xgboost modeling

How to explain and select the typical evaluation measures and model objectives for building Xgboost models

How to perform cross validation and determine the best parameter thresholds

How to proceed parameter tuning in Xgboost model building

How to successfully apply Xgboost into solving various machine learning problems

Why take this course?

The future world is the AI era of machine learning, so mastering the application of machine learning is equivalent to getting a key to the future career. If you can only learn one tool or algorithm for machine learning or building predictive models now, what is this tool? Without a doubt, that is Xgboost! If you are going to participate in a Kaggle contest, what is your preferred modeling tool? Again, the answer is Xgboost! This is proven by countless experienced data scientists and new comers. Therefore, you must register for this course!

The Xgboost is so famous in Kaggle contests because of its excellent accuracy, speed and stability. For example, according to the survey, more than 70% the top kaggle winners said they have used XGBoost.

The Xgboost is really useful and performs manifold functionalities in the data science world; this powerful algorithm is so frequently utilized to predict various types of targets – continuous, binary, categorical data, it is also found Xgboost very effective to solve different multiclass or multilabel classification problems. In addition, the contests on Kaggle platform covered almost all the applications and industries in the world, such as retail business, banking, insurance, pharmaceutical research, traffic control and credit risk management.

The Xgboost is powerful, but it is not that easy to exercise it full capabilities without expert’s guidance. For example, to successfully implement the Xgboost algorithm, you also need to understand and adjust many parameter settings. For doing so, I will teach you the underlying algorithm so you are able to configure the Xgboost that tailor to different data and application scenarios. In addition, I will provide intensive lectures on feature engineering, feature selection and parameters tuning aiming at Xgboost. So, after training you should also be able to prepare the suitable data or features that can well feed the XGBoost model.

This course is really practical but not lacking in theory; we start from decision trees and its related concepts and components, transferring to constructing the gradient boot methods, then leading to the Xgboost modeling. The math and statistics are mildly applied to explain the mechanisms in all machine learning methods. We use the Python pandas data frames to deal with data exploration and cleaning. One significant feature of this course is that we have used many Python program examples to demonstrate every single knowledge point and skill you have learned in the lecture.

Reviews

Candice
April 14, 2023
The powerpoints are static & closed captioning would be helpful. Overall the course is not very interactive and is hard to stay engaged
Alejandro
August 8, 2022
Very basic, any answers to questions.... Perfect example why Udemy should review the content before leting any one up loads poor content and steal time from clients...
James
March 11, 2021
lectures are pretty good. It has a bit of the flavor of a standard academic lecture (not necessarily in a bad way though). Sometimes that kind of delivery is necessary, and I do appreciate that he does delve into technical details a little bit more than the typical udemy tutorial. As such, much of the lecture is in slide format. It would be nice if he provided the slides as part of the resources. One thign though, is he does not seem to answer the Q&A section
Terry
October 29, 2020
J'avais de bonnes bases en ML et en DL avec scikit learn et keras. Ce cours m'a permit d'étendre mes connaissances avec cette librairie très puissante. Merci beaucoup professeur Li.
Jesus
August 3, 2020
I'm very happy to have taken this course and I will try to put all my honest review in the following points: 1) This is a course exclusively for XGBoost (as its name says) so one waits for explanations for something like what its parameters means and so on. And this course explained a good part of it. 2) The teacher explained in a very clear way, if you can hear him in a 1.5x speed or 2x (like me) it is very understandable and dinamic. 3) The course gives you some valuable information regarding to how to create a xgboost model from the very beginning. ( please don't look for some preprocessing tricks here, of course you won't find them here) the last part of this course was very great for me. I hope he creates another short but well explained courses in maybe another algorithms
Carlos
July 1, 2020
I find this course and the lecture excellent. Very well explained and appropriate foundation being built throughout the course

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3214521
udemy ID
6/8/2020
course created date
6/14/2020
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