: Absolute beginners in programming or mathematics, as the book lacks practice problems with answers and assumes a high level of prerequisite knowledge. Summary Table Reality Check Prerequisites Strong background in R and Advanced Math Code-to-Theory Ratio Theory-heavy (~80% math) Topics Covered CNNs, RNNs, Autoencoders, Optimization Primary Critique Mathematical inaccuracies and typos in early chapters
: Coverage of linear algebra, probability theory, and numerical computation. Introduction to Deep Learning Using R: A Step-b...
: Digital versions have been criticized for poor formatting, making complex formulas small and difficult to read. Key Features & Content : Absolute beginners in programming or mathematics, as
While the book provides a structured roadmap, community feedback from platforms like Amazon and ResearchGate highlights a significant divide between its theoretical promise and technical execution. Key Features & Content While the book provides
: Despite its "step-by-step" subtitle, readers often find that roughly 80% of the content focuses on theory and math rather than hands-on R coding.
: Multiple reviewers on Amazon have flagged critical errors in the mathematical foundations, particularly in the linear algebra and matrix multiplication sections. Experts note that some formulas and code dimensions may not align with standard mathematical definitions or actual R output.
If you are looking for more hands-on alternatives, you might consider the Deep Learning with R book by , which is often cited as a more practical, code-centric alternative.