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    Home»Artificial Intelligence»Deep Learning with R, 2nd Edition
    Artificial Intelligence

    Deep Learning with R, 2nd Edition

    big tee tech hubBy big tee tech hubNovember 7, 2025004 Mins Read
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    cover

    Today we’re pleased to announce the launch of Deep Learning with R,
    2nd Edition
    . Compared to the first edition,
    the book is over a third longer, with more than 75% new content. It’s
    not so much an updated edition as a whole new book.

    This book shows you how to get started with deep learning in R, even if
    you have no background in mathematics or data science. The book covers:

    • Deep learning from first principles

    • Image classification and image segmentation

    • Time series forecasting

    • Text classification and machine translation

    • Text generation, neural style transfer, and image generation

    Only modest R knowledge is assumed; everything else is explained from
    the ground up with examples that plainly demonstrate the mechanics.
    Learn about gradients and backpropogation—by using tf$GradientTape()
    to rediscover Earth’s gravity acceleration constant (9.8 \(m/s^2\)). Learn
    what a keras Layer is—by implementing one from scratch using only
    base R. Learn the difference between batch normalization and layer
    normalization, what layer_lstm() does, what happens when you call
    fit(), and so on—all through implementations in plain R code.

    Every section in the book has received major updates. The chapters on
    computer vision gain a full walk-through of how to approach an image
    segmentation task. Sections on image classification have been updated to
    use {tfdatasets} and Keras preprocessing layers, demonstrating not just
    how to compose an efficient and fast data pipeline, but also how to
    adapt it when your dataset calls for it.

    The chapters on text models have been completely reworked. Learn how to
    preprocess raw text for deep learning, first by implementing a text
    vectorization layer using only base R, before using
    keras::layer_text_vectorization() in nine different ways. Learn about
    embedding layers by implementing a custom
    layer_positional_embedding(). Learn about the transformer architecture
    by implementing a custom layer_transformer_encoder() and
    layer_transformer_decoder(). And along the way put it all together by
    training text models—first, a movie-review sentiment classifier, then,
    an English-to-Spanish translator, and finally, a movie-review text
    generator.

    Generative models have their own dedicated chapter, covering not only
    text generation, but also variational auto encoders (VAE), generative
    adversarial networks (GAN), and style transfer.

    Along each step of the way, you’ll find sprinkled intuitions distilled
    from experience and empirical observation about what works, what
    doesn’t, and why. Answers to questions like: when should you use
    bag-of-words instead of a sequence architecture? When is it better to
    use a pretrained model instead of training a model from scratch? When
    should you use GRU instead of LSTM? When is it better to use separable
    convolution instead of regular convolution? When training is unstable,
    what troubleshooting steps should you take? What can you do to make
    training faster?

    The book shuns magic and hand-waving, and instead pulls back the curtain
    on every necessary fundamental concept needed to apply deep learning.
    After working through the material in the book, you will not only know
    how to apply deep learning to common tasks, but also have the context to
    go and apply deep learning to new domains and new problems.

    Deep Learning with R, Second Edition

    Enjoy this blog? Get notified of new posts by email:

    Posts also available at r-bloggers

    Reuse

    Text and figures are licensed under Creative Commons Attribution CC BY 4.0. The figures that have been reused from other sources don’t fall under this license and can be recognized by a note in their caption: “Figure from …”.

    Citation

    For attribution, please cite this work as

    Kalinowski (2022, May 31). Posit AI Blog: Deep Learning with R, 2nd Edition. Retrieved from 

    BibTeX citation

    @misc{kalinowskiDLwR2e,
      author = {Kalinowski, Tomasz},
      title = {Posit AI Blog: Deep Learning with R, 2nd Edition},
      url = {},
      year = {2022}
    }



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