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  • 1
    Language: English
    Pages: 1 online resource (76 pages)
    Edition: Second edition
    Keywords: Electronic books ; local ; Deep learning
    Abstract: We're in the midst of an AI research explosion. Deep learning has unlocked superhuman perception that has powered our push toward self-driving vehicles, the ability to defeat human experts at a variety of difficult games including Go and Starcraft, and even generate essays with shockingly coherent prose. But deciphering these breakthroughs often takes a Ph.D. education in machine learning and mathematics. This updated second edition describes the intuition behind these innovations without the jargon and complexity. By the end of this book, Python-proficient programmers, software engineering professionals, and computer science majors will be able to re-implement these breakthroughs on their own and reason about them with a level of sophistication that rivals some of the best in the field. New chapters cover recent advancements in the fields of generative modeling and interpretability. Code examples throughout the book are updated to TensorFlow 2 and PyTorch 1.4.
    Note: Online resource; Title from title page (viewed September 25, 2021) , Mode of access: World Wide Web.
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  • 2
    Online Resource
    Online Resource
    [Erscheinungsort nicht ermittelbar] : O'Reilly Media, Inc. | Boston, MA : Safari
    Language: English
    Pages: 1 online resource (46 pages)
    Edition: 1st edition
    Keywords: Electronic books ; local
    Abstract: This concise, easy-to-use reference puts one of the most popular frameworks for deep learning research and development at your fingertips. Author Joe Papa provides instant access to syntax, design patterns, and code examples to accelerate your development and reduce the time you spend searching for answers. Research scientists, machine learning engineers, and software developers will find clear, structured PyTorch code that covers every step of neural network development—from loading data to customizing training loops to model optimization and GPU/TPU acceleration. Quickly learn how to deploy your code to production using AWS, GCP, or Azure, and your ML models to mobile and edge devices. Learn basic PyTorch syntax and design patterns Create custom models and data transforms Train and deploy models using a GPU and TPU Train and test a deep learning classifier Accelerate training using optimization and distributed training Access useful PyTorch libraries and the PyTorch ecosystem
    Note: Online resource; Title from title page (viewed August 25, 2021) , Mode of access: World Wide Web.
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  • 3
    Online Resource
    Online Resource
    [Erscheinungsort nicht ermittelbar] : Packt Publishing | Boston, MA : Safari
    ISBN: 9781838983604
    Language: English
    Pages: 1 online resource (1 video file, approximately 2 hr., 13 min.)
    Edition: 1st edition
    Keywords: Electronic videos ; local
    Abstract: Build better PyTorch models with TensorBoard visualization About This Video Learn everything you need to know to start using TensorBoard in PyTorch with practical examples in Machine Learning, Image Classification, and Natural Language Processing (NLP) Launch TensorBoard from any developer environment, including Jupyter notebooks and Google Colab Visualize and optimize your PyTorch models using techniques such as model graphs, training curves, image data, text embeddings, and many more In Detail TensorBoard is a visualization library for TensorFlow that plots training runs, tensors, and graphs. TensorBoard has been natively supported since the PyTorch 1.1 release. In this course, you will learn how to perform Machine Learning visualization in PyTorch via TensorBoard. This course is full of practical, hands-on examples. You will begin with a quick introduction to TensorBoard and how it is used to plot your PyTorch training models. You will learn how to write TensorBoard events and run TensorBoard with PyTorch to obtain visualizations of the training progress of a neural network. You will visualize scalar values, images, text and more, and save them as events. You will log events in PyTorch–for example, scalar, image, audio, histogram, text, embedding, and back-propagation. By the end of the course, you will be confident enough to use TensorBoard visualizations in PyTorch for your real-world projects.
    Note: Online resource; Title from title screen (viewed March 31, 2020) , Mode of access: World Wide Web.
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  • 4
    Online Resource
    Online Resource
    [Erscheinungsort nicht ermittelbar] : dpunkt | Boston, MA : Safari
    Language: English , German
    Pages: 1 online resource (238 pages)
    Edition: 1st edition
    Keywords: Electronic books
    Abstract: Mit diesem benutzerfreundlichen Nachschlagewerk zu PyTorch haben Sie kompaktes Wissen zu einem der beliebtesten Frameworks für Deep Learning immer zur Hand. Der Autor Joe Papa bietet Ihnen mit dieser Referenz den sofortigen Zugriff auf Syntax, Design Patterns und gut nachvollziehbare Codebeispiele - eine Fülle an gesammelten Informationen, die Ihre Entwicklungsarbeit beschleunigen und die Zeit minimieren, die Sie mit der Suche nach Details verbringen. Data Scientists, Softwareentwickler:innen und Machine Learning Engineers finden in diesem Buch klaren, strukturierten PyTorch-Code, der jeden Schritt der Entwicklung neuronaler Netze abdeckt - vom Laden der Daten über die Anpassung von Trainingsschleifen bis hin zur Modelloptimierung und GPU/TPU-Beschleunigung. Lernen Sie in kurzer Zeit, wie Sie Ihren Code mit AWS, Google Cloud oder Azure in der Produktivumgebung einsetzen und Ihre ML-Modelle auf mobilen und Edge-Geräten bereitstellen.
    Note: Online resource; Title from title page (viewed December 21, 2021) , Mode of access: World Wide Web.
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