Course Outline

Introduction

Installing and Configuring RapidMiner

Overview of RapidMiner Studio Interface and Mechanics

Recap of the Analytical Cycle

Overview of Repository

Importing Data

Preparing Data

Modeling 

Validation

Using Macros

Using Global Search

Buidling More Sophisticated Predictive Models

Evaluating Model Quality

Troubleshooting and Optimization

Summary and Conclusion

Requirements

  • An understanding of data science concepts
 14 Hours

Number of participants



Price per participant

Testimonials (5)

Related Courses

Advanced Analytics with RapidMiner

14 Hours

Artificial Intelligence (AI) with H2O

14 Hours

Big Data Business Intelligence for Telecom and Communication Service Providers

35 Hours

Big Data Business Intelligence for Criminal Intelligence Analysis

35 Hours

From Data to Decision with Big Data and Predictive Analytics

21 Hours

DataRobot

7 Hours

Introduction to R with Time Series Analysis

21 Hours

Matlab for Predictive Analytics

21 Hours

Predictive Modelling with R

14 Hours

Visual Analytics – Data science

14 Hours

AI-102T00: Designing and Implementing a Microsoft Azure AI Solution

28 Hours

AI-Augmented Software Engineering (AIASE)

14 Hours

Artificial Intelligence (AI) Strategy for Business and Professionals

35 Hours

AI Coding Assistants: Enhancing Developer Productivity

7 Hours

Introduction to Data Science and AI using Python

35 Hours

Related Categories