Free Coupon Machine Learning Modelling with RapidMiner
Unlock a 100% OFF coupon code coupon code for the course 'Machine Learning Modelling with RapidMiner' by Peyman Hessari on Udemy!
This highly-rated course boasts a 2.5-star-star rating from 1 reviews and has successfully guided 969 students in mastering Other IT & Software skills. Featuring 6 hour(s) 28 minute(s) of expert-led content delivered in English, this course offers thorough training to enhance your Social Science expertise. The course details were last updated on December 24, 2024. This coupon code is brought to you by Anonymous.
  • Expires on: 2025/12/31
  • Last Update: December 27, 2025
  • Price: 19.99 $ 0 $

About This Course

This intuitive program comprehensively introduces machine learning fundamentals and practical AI application development using RapidMiner.

You’ll gain hands-on experience in building, training, and evaluating machine learning models with RapidMiner.

The course covers a wide range of machine learning models, including both supervised and unsupervised techniques, such as linear regression, neural networks, decision trees, ensemble techniques, neural networks, clustering, dimensionality reduction, and recommender systems.

In addition, you'll develop the skills to evaluate and fine-tune models, enhance performance through data-driven techniques, and more.

By the end of this program, you will have a strong grasp of core machine learning concepts and practical skills, enabling you to confidently and quickly apply algorithms to solve complex, real-world challenges.


After completing this course, you will be capable of:


• Work with RapidMiner to build machine learning models.


• Build and train supervised machine learning models for prediction in regression and classification tasks.


• Build and train a neural network.


• Utilize machine learning development best practices to ensure that your models generalize well to new and unseen data.


• Build and use decision trees and ensemble methods.


• Use unsupervised learning algorithms such as clustering and dimensionality reduction.


• Build recommender systems with rank-based techniques, collaborative filtering approach (user-user, item-item, matrix decomposition, ...), and content-based methods.