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Applied Deep Learning with TensorFlow 2 - Michelucci, Umberto

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        Présentation Applied Deep Learning With Tensorflow 2 de Michelucci, Umberto Format Broché

         - Livre Informatique

        Livre Informatique - Michelucci, Umberto - 28/02/2022 - Broché - Langue : Anglais

        . .

      • Auteur(s) : Michelucci, Umberto
      • Editeur : Apress L.P.
      • Langue : Anglais
      • Parution : 28/02/2022
      • Format : Moyen, de 350g à 1kg
      • Nombre de pages : 408
      • Expédition : 764
      • Dimensions : 25.4 x 17.8 x 2.3
      • ISBN : 1484280199



      • Résumé :
        Understand how neural networks work and learn how to implement them using TensorFlow 2.0 and Keras. This new edition focuses on the fundamental concepts and at the same time on practical aspects of implementing neural networks and deep learning for your research projects. This book is designed so that you can focus on the parts you are interested in. You will explore topics as regularization, optimizers, optimization, metric analysis, and hyper-parameter tuning. In addition, you will learn the fundamentals ideas behind autoencoders and generative adversarial networks. All the code presented in the book will be available in the form of Jupyter notebooks which would allow you to try out all examples and extend them in interesting ways. A companion online book is available with the complete code for all examples discussed in the book and additional material more related to TensorFlow and Keras. All the code will be available in Jupyter notebook format and can be openeddirectly in Google Colab (no need to install anything locally) or downloaded on your own machine and tested locally. You will: ? Understand the fundamental concepts of how neural networks work? Learn the fundamental ideas behind autoencoders and generative adversarial networks ? Be able to try all the examples with complete code examples that you can expand for your own projects ? Have available a complete online companion book with examples and tutorials. This book is for: Readers with an intermediate understanding of machine learning, linear algebra, calculus, and basic Python programming. ...

        Biographie:
        Umberto Michelucci has a PhD in Machine Learning and Physics from the University of Portsmouth. He is the cofounder and Chief AI scientist of TOELT LLC, a company aiming to develop new and modern teaching, coaching, and research methods for AI to make AI technologies and research accessible to every company and everyone. He's an expert in numerical simulation, statistics, data science, and machine learning. In addition to several years of research experience at the George Washington University (USA) and the University of Augsburg (DE), he has 15 years of practical experience in the fields of data warehouse, data science, and machine learning. His first book, Applied Deep Learning-A Case-Based Approach to Understanding Deep Neural Networks, was published by Apress in 2018. He followed with Convolutional and Recurrent Neural Networks Theory and Applications in 2019. He's very active in research in the field of artificial intelligence. He publishes his research results regularly in leading journals and gives regular talks at international conferences. Umberto studied physics and mathematics. Sharing is caring-for that, he is a lecturer at the ZHAW University of Applied Sciences for deep learning and neural networks theory and applications. He's also responsible at Helsana Versicherung AG for research and collaborations with universities in the area of AI. He is also a Google Developer Expert in Machine Learning based in Switzerland....

        Sommaire:
        Understand how neural networks work and learn how to implement them using TensorFlow 2.0 and Keras. This new edition focuses on the fundamental concepts and at the same time on practical aspects of implementing neural networks and deep learning for your research projects. This book is designed so that you can focus on the parts you are interested in. You will explore topics as regularization, optimizers, optimization, metric analysis, and hyper-parameter tuning. In addition, you will learn the fundamentals ideas behind autoencoders and generative adversarial networks. All the code presented in the book will be available in the form of Jupyter notebooks which would allow you to try out all examples and extend them in interesting ways. A companion online book is available with the complete code for all examples discussed in the book and additional material more related to TensorFlow and Keras. All the code will be available in Jupyter notebook format and can be openeddirectly in Google Colab (no need to install anything locally) or downloaded on your own machine and tested locally. You will: ? Understand the fundamental concepts of how neural networks work? Learn the fundamental ideas behind autoencoders and generative adversarial networks ? Be able to try all the examples with complete code examples that you can expand for your own projects ? Have available a complete online companion book with examples and tutorials. This book is for: Readers with an intermediate understanding of machine learning, linear algebra, calculus, and basic Python programming. ...

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