What you’ll learn
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Understand and implement a Decision Tree in Python
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Understand about Gini and Information Gain algorithm
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Solve mathematical numerical related decision trees
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Learn about regression trees
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Learn about simple, multiple, polynomial and multivariate regression
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Learn about Ordinary Least Squares Algorithms
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Solve numerical related to Ordinary Least Squares algorithm
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Learn to create real world predictions and classification projects
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Learn about Gradient Descent
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Learn about Logistic Regression and hyper parameters
Who this course is for:
- Seasonal and Beginners Python developers who want to learn about different AI and ML algorithms
- Students who want to learn all the mathematics behind popular regression and classification models
- Students who want to learn to implement data science libraries to solve real world Machine Learning problems
Can I download Machine Learning – Regression and Classification (math Inc.) course?
You can download videos for offline viewing in the Android/iOS app. When course instructors enable the downloading feature for lectures of the course, then it can be downloaded for offline viewing on a desktop.Can I get a certificate after completing the course?
Yes, upon successful completion of the course, learners will get the course e-Certification from the course provider. The Machine Learning – Regression and Classification (math Inc.) course certification is a proof that you completed and passed the course. You can download it, attach it to your resume, share it through social media.Are there any other coupons available for this course?
You can check out for more Udemy coupons @ www.coursecouponclub.com
Note: 100% OFF Udemy coupon codes are valid for maximum 3 days only. Look for "ENROLL NOW" button at the end of the post.
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Disclosure: This post may contain affiliate links and we may get small commission if you make a purchase. Read more about Affiliate disclosure here.