Produkte zum Begriff Deep Learning:
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Ekman, Magnus: Learning Deep Learning
Learning Deep Learning , NVIDIA's Full-Color Guide to Deep Learning: All StudentsNeed to Get Started and Get Results Learning Deep Learning is a complete guide to DL.Illuminating both the core concepts and the hands-on programming techniquesneeded to succeed, this book suits seasoned developers, data scientists,analysts, but also those with no prior machine learning or statisticsexperience. After introducing the essential building blocks of deep neural networks, such as artificial neurons and fully connected, convolutional, and recurrent layers,Magnus Ekman shows how to use them to build advanced architectures, includingthe Transformer. He describes how these concepts are used to build modernnetworks for computer vision and natural language processing (NLP), includingMask R-CNN, GPT, and BERT. And he explains how a natural language translatorand a system generating natural language descriptions of images. Throughout, Ekman provides concise, well-annotated code examples usingTensorFlow with Keras. Corresponding PyTorch examples are provided online, andthe book thereby covers the two dominating Python libraries for DL used inindustry and academia. He concludes with an introduction to neural architecturesearch (NAS), exploring important ethical issues and providing resources forfurther learning. Exploreand master core concepts: perceptrons, gradient-based learning, sigmoidneurons, and back propagation See how DL frameworks make it easier to developmore complicated and useful neural networks Discover how convolutional neuralnetworks (CNNs) revolutionize image classification and analysis Apply recurrentneural networks (RNNs) and long short-term memory (LSTM) to text and othervariable-length sequences Master NLP with sequence-to-sequence networks and theTransformer architecture Build applications for natural language translation andimage captioning , >
Preis: 49.28 € | Versand*: 0 € -
Evolutionary Deep Learning
Discover one-of-a-kind AI strategies never before seen outside of academic papers! Learn how the principles of evolutionary computation overcome deep learning's common pitfalls and deliver adaptable model upgrades without constant manual adjustment.In Evolutionary Deep Learning you will learn how to:Solve complex design and analysis problems with evolutionary computationTune deep learning hyperparameters with evolutionary computation (EC), genetic algorithms, and particle swarm optimizationUse unsupervised learning with a deep learning autoencoder to regenerate sample dataUnderstand the basics of reinforcement learning and the Q Learning equationApply Q Learning to deep learning to produce deep reinforcement learningOptimize the loss function and network architecture of unsupervised autoencodersMake an evolutionary agent that can play an OpenAI Gym gameEvolutionary Deep Learning is a guide to improving your deep learning models with AutoML enhancements based on the principles of biological evolution. This exciting new approach utilizes lesser-known AI approaches to boost performance without hours of data annotation or model hyperparameter tuning.about the technologyEvolutionary deep learning merges the biology-simulating practices of evolutionary computation (EC) with the neural networks of deep learning. This unique approach can automate entire DL systems and help uncover new strategies and architectures. It gives new and aspiring AI engineers a set of optimization tools that can reliably improve output without demanding an endless churn of new data.about the readerFor data scientists who know Python.
Preis: 56.7 € | Versand*: 0 € -
Engineering Deep Learning Systems
Design systems optimized for deep learning models. Written for software engineers, this book teaches you how to implement a maintainable platform for developing deep learning models.In Engineering Deep Learning Systems you will learn how to:Transfer your software development skills to deep learning systemsRecognize and solve common engineering challenges for deep learning systemsUnderstand the deep learning development cycleAutomate training for models in TensorFlow and PyTorchOptimize dataset management, training, model serving and hyperparameter tuningPick the right open-source project for your platformEngineering Deep Learning Systems is a practical guide for software engineers and data scientists who are designing and building platforms for deep learning. It's full of hands-on examples that will help you transfer your software development skills to implementing deep learning platforms. You'll learn how to build automated and scalable services for core tasks like dataset management, model training/serving, and hyperparameter tuning. This book is the perfect way to step into an excitingand lucrativecareer as a deep learning engineer.about the technologyBehind every deep learning researcher is a team of engineers bringing their models to production. To build these systems, you need to understand how a deep learning system's platform differs from other distributed systems. By mastering the core ideas in this book, you'll be able to support deep learning systems in a way that's fast, repeatable, and reliable.
Preis: 56.7 € | Versand*: 0 € -
Deep Learning Design Patterns
Deep learning has revealed ways to create algorithms for applications that we never dreamed were possible. For software developers, the challenge lies in taking cutting-edge technologies from R&D labs through to production. Deep Learning Design Patterns is here to help. In it, you'll find deep learning models presented in a unique new way: as extendable design patterns you can easily plug-and-play into your software projects. Written by Google deep learning expert Andrew Ferlitsch, it's filled with the latest deep learning insights and best practices from his work with Google Cloud AI. Each valuable technique is presented in a way that's easy to understand and filled with accessible diagrams and code samples.about the technologyYou don't need to design your deep learning applications from scratch! By viewing cutting-edge deep learning models as design patterns, developers can speed up their creation of AI models and improve model understandability for both themselves and other users.about the bookDeep Learning Design Patterns distills models from the latest research papers into practical design patterns applicable to enterprise AI projects. Using diagrams, code samples, and easy-to-understand language, Google Cloud AI expert Andrew Ferlitsch shares insights from state-of-the-art neural networks. You'll learn how to integrate design patterns into deep learning systems from some amazing examples, including a real-estate program that can evaluate house prices just from uploaded photos and a speaking AI capable of delivering live sports broadcasting. Building on your existing deep learning knowledge, you'll quickly learn to incorporate the very latest models and techniques into your apps as idiomatic, composable, and reusable design patterns. what's insideInternal functioning of modern convolutional neural networksProcedural reuse design pattern for CNN architecturesModels for mobile and IoT devicesComposable design pattern for automatic learning methodsAssembling large-scale model deploymentsComplete code samples and example notebooksAccompanying YouTube videosabout the readerFor machine learning engineers familiar with Python and deep learning.about the authorAndrew Ferlitsch is an expert on computer vision and deep learning at Google Cloud AI Developer Relations. He was formerly a principal research scientist for 20 years at Sharp Corporation of Japan, where he amassed 115 US patents and worked on emerging technologies in telepresence, augmented reality, digital signage, and autonomous vehicles. In his present role, he reaches out to developer communities, corporations and universities, teaching deep learning and evangelizing Google's AI technologies.
Preis: 58.84 € | Versand*: 0 €
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Warum Deep Learning im Vergleich zu Machine Learning?
Deep Learning unterscheidet sich von Machine Learning durch seine Fähigkeit, automatisch Merkmale aus den Daten zu extrahieren, anstatt dass diese manuell definiert werden müssen. Dadurch ist Deep Learning in der Lage, komplexere und abstraktere Muster in den Daten zu erkennen und zu lernen. Dies ermöglicht es Deep Learning-Modellen, in vielen Anwendungsbereichen, wie Bild- und Spracherkennung, bessere Leistungen zu erzielen als herkömmliche Machine Learning-Modelle.
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Was ist der Unterschied zwischen Deep Learning und Machine Learning?
Deep Learning ist eine spezielle Methode des Machine Learning, die auf künstlichen neuronalen Netzwerken basiert. Es ermöglicht das Lernen von hierarchischen und komplexen Merkmalsdarstellungen, um automatisch Muster und Strukturen in Daten zu erkennen. Im Gegensatz dazu ist Machine Learning ein breiterer Begriff, der verschiedene Algorithmen und Techniken umfasst, um Computermodelle zu erstellen, die aus Daten lernen und Vorhersagen treffen können. Deep Learning ist also eine Teilmenge des Machine Learning.
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Habe ich Deep Learning so richtig verstanden?
Das kann ich nicht beurteilen, da ich nicht weiß, was du über Deep Learning weißt. Deep Learning ist ein Teilbereich des maschinellen Lernens, bei dem neuronale Netzwerke mit vielen Schichten verwendet werden, um komplexe Muster und Zusammenhänge in Daten zu erkennen. Es wird oft für Aufgaben wie Bild- und Spracherkennung eingesetzt.
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Wie funktioniert die Gesichtserkennung mit Deep Learning?
Die Gesichtserkennung mit Deep Learning basiert auf neuronalen Netzwerken, die speziell für die Verarbeitung von Bildern entwickelt wurden. Das Modell wird mit einer großen Menge an Bildern von Gesichtern trainiert, um Muster und Merkmale zu erkennen. Anschließend kann das Modell verwendet werden, um Gesichter in neuen Bildern zu identifizieren und zu klassifizieren. Dabei werden verschiedene Schichten des neuronalen Netzwerks genutzt, um die Merkmale des Gesichts zu extrahieren und zu analysieren.
Ähnliche Suchbegriffe für Deep Learning:
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Deep Learning with Python
"The first edition of Deep Learning with Python is one of the best books on the subject. The second edition made it even better." - Todd CookThe bestseller revised! Deep Learning with Python, Second Edition is a comprehensive introduction to the field of deep learning using Python and the powerful Keras library. Written by Google AI researcher François Chollet, the creator of Keras, this revised edition has been updated with new chapters, new tools, and cutting-edge techniques drawn from the latest research. You'll build your understanding through practical examples and intuitive explanations that make the complexities of deep learning accessible and understandable.about the technologyMachine learning has made remarkable progress in recent years. We've gone from near-unusable speech recognition, to near-human accuracy. From machines that couldn't beat a serious Go player, to defeating a world champion. Medical imaging diagnostics, weather forecasting, and natural language question answering have suddenly become tractable problems. Behind this progress is deep learninga combination of engineering advances, best practices, and theory that enables a wealth of previously impossible smart applications across every industry sectorabout the bookDeep Learning with Python introduces the field of deep learning using the Python language and the powerful Keras library. You'll learn directly from the creator of Keras, François Chollet, building your understanding through intuitive explanations and practical examples. Updated from the original bestseller with over 50% new content, this second edition includes new chapters, cutting-edge innovations, and coverage of the very latest deep learning tools. You'll explore challenging concepts and practice with applications in computer vision, natural-language processing, and generative models. By the time you finish, you'll have the knowledge and hands-on skills to apply deep learning in your own projects.what's insideDeep learning from first principlesImage-classification, imagine segmentation, and object detectionDeep learning for natural language processingTimeseries forecastingNeural style transfer, text generation, and image generationabout the readerReaders need intermediate Python skills. No previous experience with Keras, TensorFlow, or machine learning is required.about the authorFrançois Chollet works on deep learning at Google in Mountain View, CA. He is the creator of the Keras deep-learning library, as well as a contributor to the TensorFlow machine-learning framework. He also does AI research, with a focus on abstraction and reasoning. His papers have been published at major conferences in the field, including the Conference on Computer Vision and Pattern Recognition (CVPR), the Conference and Workshop on Neural Information Processing Systems (NIPS), the International Conference on Learning Representations (ICLR), and others.
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Bishop, Christopher M.: Deep Learning
Deep Learning , This book offers a comprehensive introduction to the central ideas that underpin deep learning. It is intended both for newcomers to machine learning and for those already experienced in the field. Covering key concepts relating to contemporary architectures and techniques, this essential book equips readers with a robust foundation for potential future specialization. The field of deep learning is undergoing rapid evolution, and therefore this book focusses on ideas that are likely to endure the test of time. The book is organized into numerous bite-sized chapters, each exploring a distinct topic, and the narrative follows a linear progression, with each chapter building upon content from its predecessors. This structure is well-suited to teaching a two-semester undergraduate or postgraduate machine learning course, while remaining equally relevant to those engaged in active research or in self-study. A full understanding of machine learning requires some mathematical background and so the book includes a self-contained introduction to probability theory. However, the focus of the book is on conveying a clear understanding of ideas, with emphasis on the real-world practical value of techniques rather than on abstract theory. Complex concepts are therefore presented from multiple complementary perspectives including textual descriptions, diagrams, mathematical formulae, and pseudo-code. Chris Bishop is a Technical Fellow at Microsoft and is the Director of Microsoft Research AI4Science. He is a Fellow of Darwin College Cambridge, a Fellow of the Royal Academy of Engineering, and a Fellow of the Royal Society. Hugh Bishop is an Applied Scientist at Wayve, a deep learning autonomous driving company in London, where he designs and trains deep neural networks. He completed his MPhil in Machine Learning and Machine Intelligence at Cambridge University. ¿Chris Bishop wrote a terrific textbook on neural networks in 1995 and has a deep knowledge of the field and its core ideas. His many years of experience in explaining neural networks have made him extremely skillful at presenting complicated ideas in the simplest possible way and it is a delight to see these skills applied to the revolutionary new developments in the field.¿ -- Geoffrey Hinton "With the recent explosion of deep learning and AI as a research topic, and the quickly growing importance of AI applications, a modern textbook on the topic was badly needed. The "New Bishop" masterfully fills the gap, covering algorithms for supervised and unsupervised learning, modern deep learning architecture families, as well as how to apply all of this to various application areas." ¿ Yann LeCun ¿This excellent and very educational book will bring the reader up to date with the main concepts and advances in deep learning with a solid anchoring in probability. These concepts are powering current industrial AI systems and are likely to form the basis of further advances towards artificial general intelligence.¿ -- Yoshua Bengio , Studium & Erwachsenenbildung > Fachbücher, Lernen & Nachschlagen
Preis: 75.37 € | Versand*: 0 € -
Kneusel, Ronald T.: Practical Deep Learning
Practical Deep Learning , This book is for people with no experience with machine learning and who are looking for an intuition-based, hands-on introduction to deep learning using Python. Deep Learning for Complete Beginners: A Python-Based Introduction is for complete beginners in machine learning. It introduces fundamental concepts such as classes and labels, building a dataset, and what a model is and does before presenting classic machine learning models, neural networks, and modern convolutional neural networks. Experiments in Python--working with leading open-source toolkits and standard datasets--give you hands-on experience with each model and help you build intuition about how to transfer the examples in the book to your own projects. You'll start with an introduction to the Python language and the NumPy extension that is ubiquitous in machine learning. Prominent toolkits, like sklearn and Keras/TensorFlow are used as the backbone to enable you to focus on the elements of machine learning without the burden of writing implementations from scratch. An entire chapter on evaluating the performance of models gives you the knowledge necessary to understand claims on performance and to know which models are working well and which are not. The book culminates by presenting convolutional neural networks as an introduction to modern deep learning. Understanding how these networks work and how they are affected by parameter choices leaves you with the core knowledge necessary to dive into the larger, ever-changing world of deep learning. , Studium & Erwachsenenbildung > Fachbücher, Lernen & Nachschlagen , Erscheinungsjahr: 20210223, Produktform: Kartoniert, Themenüberschrift: COMPUTERS / Neural Networks, Keyword: programming gifts;gifts for geeks;geek gifts;gifts for nerds;tech gifts;machine learning books;NumPy;open source;Tensorflow;Keras;neural networks;machine learning for beginners;machine learning;deep learning;computers;technology;computer;code;coding;algorithm;computer programming;python;python programming;algorithms;python for data analysis;python machine learning;tech;computer books;programmer gifts;computer programmer gifts;programming;reference;statistics;engineering;guide;computer science, Fachschema: Englische Bücher / Naturwissenschaften~Fuzzy Logik - Fuzzy Set~Neuronales Netz - Neuronaler Computer - Neurocomputer~Programmiersprachen~Intelligenz / Künstliche Intelligenz~KI~Künstliche Intelligenz - AI, Fachkategorie: Programmier- und Skriptsprachen, allgemein~Maschinelles Lernen, Imprint-Titels: No Starch Press, Warengruppe: HC/Informatik, Fachkategorie: Neuronale Netze und Fuzzysysteme, Text Sprache: eng, Seitenanzahl: XXX, Seitenanzahl: 426, UNSPSC: 49019900, Warenverzeichnis für die Außenhandelsstatistik: 49019900, Verlag: Random House LLC US, Verlag: Random House LLC US, Länge: 234, Breite: 182, Höhe: 32, Gewicht: 882, Produktform: Kartoniert, Genre: Importe, Genre: Importe, Herkunftsland: VEREINIGTE STAATEN VON AMERIKA (US), Katalog: LIB_ENBOOK, Katalog: Gesamtkatalog, Katalog: Internationale Lagertitel, Katalog: internationale Titel, Katalog: Lagerartikel, Book on Demand, ausgew. Medienartikel, Relevanz: 0008, Tendenz: -1, Unterkatalog: AK, Unterkatalog: Bücher, Unterkatalog: Hardcover, Unterkatalog: Lagerartikel, WolkenId: 2412602
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Math and Architectures of Deep Learning
The mathematical paradigms that underlie deep learning typically start out as hard-to-read academic papers, often leaving engineers in the dark about how their models actually function. Math and Architectures of Deep Learning bridges the gap between theory and practice, laying out the math of deep learning side by side with practical implementations in Python and PyTorch. Written by deep learning expert Krishnendu Chaudhury, you'll peer inside the black box to understand how your code is working, and learn to comprehend cutting-edge research you can turn into practical applications.about the technologyIt's important to understand how your deep learning models work, both so that you can maintain them efficiently and explain them to other stakeholders. Learning mathematical foundations and neural network architecture can be challenging, but the payoff is big. You'll be free from blind reliance on pre-packaged DL models and able to build, customize, and re-architect for your specific needs. And when things go wrong, you'll be glad you can quickly identify and fix problems.about the bookMath and Architectures of Deep Learning sets out the foundations of DL in a way that's both useful and accessible to working practitioners. Each chapter explores a new fundamental DL concept or architectural pattern, explaining the underpinning mathematics and demonstrating how they work in practice with well-annotated Python code. You'll start with a primer of basic algebra, calculus, and statistics, working your way up to state-of-the-art DL paradigms taken from the latest research. By the time you're done, you'll have a combined theoretical insight and practical skills to identify and implement DL architecture for almost any real-world challenge.
Preis: 47.07 € | Versand*: 0 €
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Habe ich Deep Learning so richtig verstanden?
Um das zu beurteilen, müsste ich wissen, was du über Deep Learning weißt. Grundsätzlich handelt es sich bei Deep Learning um einen Teilbereich des maschinellen Lernens, bei dem künstliche neuronale Netzwerke mit vielen Schichten verwendet werden, um komplexe Muster und Zusammenhänge in Daten zu erkennen und zu lernen. Es wird oft für Aufgaben wie Bild- und Spracherkennung eingesetzt.
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Welche Anwendungsmöglichkeiten gibt es für Deep Learning in der heutigen Technologiebranche? In welchen Bereichen wird Deep Learning am häufigsten eingesetzt?
Deep Learning wird in der Technologiebranche für Bild- und Spracherkennung, automatisierte Übersetzungen, personalisierte Empfehlungen und autonomes Fahren eingesetzt. Am häufigsten wird Deep Learning in den Bereichen der Medizin, Finanzen, Marketing und Automobilindustrie eingesetzt.
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Was sind die Anwendungen von Deep Learning in der heutigen Technologie? Inwiefern hat Deep Learning die Entwicklungsprozesse in verschiedenen Branchen verändert?
Deep Learning wird in der Bilderkennung, Spracherkennung, autonomen Fahrzeugen und medizinischen Diagnosen eingesetzt. Es hat die Effizienz und Genauigkeit von Prozessen in Bereichen wie Gesundheitswesen, Finanzwesen und Einzelhandel verbessert. Deep Learning hat die Entwicklung von personalisierten Produkten und Dienstleistungen vorangetrieben und ermöglicht es Unternehmen, datengetriebene Entscheidungen zu treffen.
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Welche Voraussetzungen gibt es für Deep Learning mit Python?
Um Deep Learning mit Python durchführen zu können, benötigt man grundlegende Kenntnisse in Python-Programmierung sowie in den relevanten Bibliotheken wie TensorFlow oder PyTorch. Es ist auch hilfreich, ein Verständnis für lineare Algebra und Statistik zu haben, da diese Konzepte in Deep Learning eine wichtige Rolle spielen. Darüber hinaus ist es von Vorteil, über ausreichend Rechenleistung zu verfügen, da Deep Learning-Modelle oft große Datenmengen verarbeiten und komplexe Berechnungen durchführen.
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