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    Practical Deep Learning, 2nd Edition

    Posted By: GFX_MAN
    Practical Deep Learning, 2nd Edition

    Practical Deep Learning, 2nd Edition
    English | 2025 | ISBN: 1718504209 | 669 Pages | True EPUB | 25.51MB

    Dip into deep learning without drowning in theory with this fully updated edition of Practical Deep Learning from experienced author and AI expert Ronald T. Kneusel.

    After a brief review of basic math and coding principles, you’ll dive into hands-on experiments and learn to build working models for everything from image analysis to creative writing, and gain a thorough understanding of how each technique works under the hood. Whether you’re a developer looking to add AI to your toolkit or a student seeking practical machine learning skills, this book will teach you

    How neural networks work and how they’re trained
    How to use classical machine learning models
    How to develop a deep learning model from scratch
    How to evaluate models with industry-standard metrics
    How to create your own generative AI models
    Each chapter emphasizes practical skill development and experimentation, building to a case study that incorporates everything you’ve learned to classify audio recordings. Examples of working code you can easily run and modify are provided, and all code is freely available on GitHub. With Practical Deep Learning, second edition, you’ll gain the skills and confidence you need to build real AI systems that solve real problems.

    New to this edition: Material on computer vision, fine-tuning and transfer learning, localization, self-supervised learning, generative AI for novel image creation, and large language models for in-context learning, semantic search, and retrieval-augmented generation (RAG).