Get in Touch

Course Outline

Introduction

Setting up the R Development Environment

Deep Learning vs. Neural Networks vs. Machine Learning

Building an Unsupervised Learning Model

Case Study: Predicting an Outcome Using Existing Data

Preparing Test and Training Data Sets for Analysis

Clustering Data

Classifying Data

Visualizing Data

Evaluating Model Performance

Iterating Through Model Parameters

Hyper-parameter Tuning

Integrating a Model with a Real-World Application

Deploying a Machine Learning Application

Troubleshooting

Summary and Conclusion

Requirements

  • Experience with R programming
  • A solid understanding of machine learning concepts
 21 Hours

Testimonials (3)

Related Categories