By completing this course, learners will be able to prepare datasets in R, apply statistical and visualization techniques, build regression models, and design, run, and evaluate neural networks. The course begins with data preparation essentials, including working with dataframes, descriptive statistics, and environment setup, ensuring learners can confidently manage their workflow. It then advances to data visualization, where learners generate line graphs, scatter plots, and advanced visualizations to interpret patterns and relationships. Regression modeling concepts are introduced to provide a solid predictive foundation. Finally, the course transitions to deep learning, guiding learners through dataset preparation, neural network coding, multilayer perceptron (MLP) architecture, and predictive testing.



Deep Learning with R: Build & Predict Neural Networks

Instructor: EDUCBA
Access provided by Equatorial Coca-Cola Bottling Company
What you'll learn
Prepare datasets, apply stats, and create visualizations in R.
Build and evaluate regression models for predictive analysis.
Design, run, and test neural networks using R and MLPs.
Skills you'll gain
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13 assignments
October 2025
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There are 3 modules in this course
This module introduces learners to the fundamentals of working with R for data science and deep learning projects. Learners will explore dataframes, descriptive statistics, directory setup, variable assignment, and essential R syntax. The module ensures that learners can confidently prepare their environment and datasets before advancing to complex modeling.
What's included
11 videos4 assignments1 plugin
This module focuses on building strong visualization and regression skills in R. Learners will generate various plots such as line graphs, scatter plots, and multiple plot frames to explore data patterns. The module also introduces regression modeling concepts, including linear and multiple regression, to establish a strong foundation for predictive modeling.
What's included
9 videos4 assignments
This module transitions learners from regression models to deep learning with neural networks in R. It covers preparing datasets, running neural network code, analyzing hidden layers, and evaluating model predictions. By the end of the module, learners will be able to design, execute, and test neural networks for real-world predictive tasks.
What's included
17 videos5 assignments
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