Learn Machine Learning in 3 Hours [Video]
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Free ChapterSetting Up a Machine Learning Project in Scikit-Learn
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Unsupervised K-Means Clustering in Scikit-Learn
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Supervised K-Nearest-Neighbor Classification in Scikit-Learn
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Supervised Support Vector Machine Classification in Scikit-Learn
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Support Vector Machine Regression in Scikit-Learn
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Supervised Gradient Boosting in Scikit-Learn
Given the constantly increasing amounts of data they're faced with, programmers have to come up with better solutions to make machines smarter and reduce manual work. In this Machine Learning course, you'll use Python to craft better solutions and process them effectively.
We start by focusing on key ML algorithms and how they can be trained for classification and regression. We will also work with Supervised and Unsupervised learning to help to get to grips with both types of algorithm. We will use the highly popular Scikit-learn library throughout the course while performing various ML tasks.
By the end of the course, you will be adept at using the concepts and algorithms involved in Machine Learning. This is a highly practical course and will equip you with sufficient hands-on training to help you implement ML skills right after finishing the course.
All the code and supporting files for this course are available on Github at https://github.com/PacktPublishing/Learn-Machine-Learning-in-3-Hours
Style and Approach
This course consists of a series of worked example problems; for each worked example problem, we make use of different supervised and unsupervised Machine Learning algorithms. We also look at some smaller one-video worked examples to define a series of fundamental concepts which are crucial for reliably deploying stable Machine Learning systems in the real world.
- Publication date:
- March 2018
- Publisher
- Packt
- Duration
- 2 hours 14 minutes
- ISBN
- 9781788995580