BOOKS - Python Deep Learning: Understand how deep neural networks work and apply them...
Python Deep Learning: Understand how deep neural networks work and apply them to real-world tasks - Ivan Vasilev November 24, 2023 PDF  BOOKS
ECO~32 kg CO²

2 TON

Views
417107

Telegram
 
Python Deep Learning: Understand how deep neural networks work and apply them to real-world tasks
Author: Ivan Vasilev
Year: November 24, 2023
Format: PDF
File size: PDF 16 MB
Language: English



Python Deep Learning: Understanding How Deep Neural Networks Work and Applying Them to Real-World Tasks As technology continues to evolve at an unprecedented pace, it's becoming increasingly important to understand the process of technological development and its impact on humanity. The field of deep learning is no exception, having rapidly expanded in recent years to encompass a wide range of applications, making it challenging to navigate without a solid foundation. In "Python Deep Learning we'll embark on a journey to explore the mathematical foundations, structure, and training algorithms of neural networks, delving into the essence of deep learning and its applications in computer vision and natural language processing. Part One: Machine Learning Foundations We'll begin by establishing a strong theoretical foundation for deep learning, covering the fundamental concepts of machine learning, including supervised and unsupervised learning, regression, classification, clustering, and dimensionality reduction. We'll explore the different paradigms of machine learning, such as linear regression, decision trees, random forests, support vector machines (SVMs), and neural networks. You'll learn how to apply these techniques to various problems and develop a personal paradigm for perceiving the technological process of developing modern knowledge.
Python Deep arning: Understanding How Deep Neural Networks Work and Applying Them to Real-World Tasks Поскольку технологии продолжают развиваться беспрецедентными темпами, все более важным становится понимание процесса технологического развития и его влияния на человечество. Область глубокого обучения не является исключением, быстро расширяясь в последние годы и охватывая широкий спектр приложений, что затрудняет навигацию без прочной основы. В «Python Deep arning» мы отправимся в путешествие, чтобы исследовать математические основы, структуру и алгоритмы обучения нейронных сетей, углубляясь в суть глубокого обучения и его применения в компьютерном зрении и обработке естественного языка. Часть первая: Основы машинного обучения Мы начнем с создания прочной теоретической основы для глубокого обучения, охватывающей фундаментальные концепции машинного обучения, включая обучение с учителем и без учителя, регрессию, классификацию, кластеризацию и уменьшение размерности. Мы рассмотрим различные парадигмы машинного обучения, такие как линейная регрессия, деревья решений, случайные леса, машины опорных векторов (SVM) и нейронные сети. Вы научитесь применять эти методы к различным проблемам и разработаете личную парадигму восприятия технологического процесса развития современных знаний.
Python Deep arning : Understanding How Deep Neural Networks Work and Applying Them to Real-World Tasks Alors que la technologie continue d'évoluer à un rythme sans précédent, il devient de plus en plus important de comprendre le processus de développement technologique et son impact sur l'humanité. domaine de l'apprentissage profond ne fait pas exception, s'étendant rapidement ces dernières années et couvrant un large éventail d'applications, ce qui rend difficile la navigation sans base solide. Dans « Python Deep arning », nous allons voyager pour explorer les bases mathématiques, la structure et les algorithmes d'apprentissage des réseaux neuronaux, en approfondissant l'essence de l'apprentissage profond et de ses applications dans la vision informatique et le traitement du langage naturel. Première partie : s bases de l'apprentissage automatique Nous commencerons par établir une base théorique solide pour l'apprentissage profond, couvrant les concepts fondamentaux de l'apprentissage automatique, y compris l'apprentissage avec et sans professeur, la régression, la classification, le regroupement et la réduction de la dimension. Nous examinerons différents paradigmes de l'apprentissage automatique, tels que la régression linéaire, les arbres de décision, les forêts aléatoires, les machines à vecteurs de référence (SVM) et les réseaux neuronaux. Vous apprendrez à appliquer ces techniques à différents problèmes et à développer un paradigme personnel de perception du processus technologique de développement des connaissances modernes.
Python Deep arning: Understanding How Deep Neural Networks Work and Applying Them to Real-World Tasks A medida que la tecnología continúa evolucionando a un ritmo sin precedentes, es cada vez más importante comprender el proceso de desarrollo tecnológico y su impacto en el desarrollo la humanidad. ámbito del aprendizaje profundo no es una excepción, ampliándose rápidamente en los últimos y abarcando una amplia gama de aplicaciones, lo que dificulta la navegación sin una base sólida. En «Python Deep arning» emprenderemos un viaje para explorar los fundamentos matemáticos, la estructura y los algoritmos del aprendizaje de las redes neuronales, profundizando en la esencia del aprendizaje profundo y sus aplicaciones en la visión computarizada y el procesamiento del lenguaje natural. Primera parte: Fundamentos del aprendizaje automático Comenzaremos con la creación de una sólida base teórica para el aprendizaje profundo que abarque conceptos fundamentales del aprendizaje automático, incluyendo el aprendizaje con y sin maestro, regresión, clasificación, agrupamiento y reducción de dimensión. Examinaremos diferentes paradigmas del aprendizaje automático, como la regresión lineal, los árboles de decisión, los bosques aleatorios, las máquinas de vectores de referencia (SVM) y las redes neuronales. Aprenderás a aplicar estas técnicas a diferentes problemas y desarrollarás un paradigma personal de percepción del proceso tecnológico del desarrollo del conocimiento moderno.
Python Deep arning: Understanding Wie Deep Neural Networks arbeiten und sie auf Real-World Tasks anwenden Da sich die Technologie in einem beispiellosen Tempo weiterentwickelt, wird es immer wichtiger, den technologischen Entwicklungsprozess und seine Auswirkungen auf die Menschheit zu verstehen. Der Bereich des Deep arning ist keine Ausnahme, der in den letzten Jahren rasant gewachsen ist und eine breite Palette von Anwendungen umfasst, was es schwierig macht, ohne eine solide Grundlage zu navigieren. In „Python Deep arning“ begeben wir uns auf eine Reise, um die mathematischen Grundlagen, die Struktur und die rnalgorithmen neuronaler Netzwerke zu erforschen und tiefer in die Essenz des Deep arning und seiner Anwendung auf Computer Vision und natürliche Sprachverarbeitung einzutauchen. Teil 1: Grundlagen des maschinellen rnens Wir werden damit beginnen, eine solide theoretische Grundlage für Deep arning zu schaffen, die grundlegende Konzepte des maschinellen rnens umfasst, einschließlich des rnens mit und ohne hrer, Regression, Klassifizierung, Clustering und Dimensionsreduktion. Wir werden verschiedene Paradigmen des maschinellen rnens wie lineare Regression, Entscheidungsbäume, Random Forests, Support Vector Machines (SVMs) und neuronale Netze untersuchen. e werden lernen, diese Techniken auf verschiedene Probleme anzuwenden und ein persönliches Paradigma für die Wahrnehmung des technologischen Prozesses der Entwicklung des modernen Wissens zu entwickeln.
''
Python Derin Öğrenme: Derin nir Ağlarının Nasıl Çalıştığını Anlamak ve Bunları Gerçek Dünya Görevlerine Uygulamak Teknoloji benzeri görülmemiş bir hızda ilerlemeye devam ettikçe, teknolojik gelişme sürecini ve insanlık üzerindeki etkisini anlamak daha önemli hale geliyor. Derin öğrenme alanı, son yıllarda çok çeşitli uygulamaları kapsayacak şekilde hızla genişleyen ve sağlam bir temel olmadan gezinmeyi zorlaştıran bir istisna değildir. Python Deep arning'de, sinir ağı öğreniminin matematiksel temellerini, yapısını ve algoritmalarını keşfetmek, derin öğrenmenin özünü ve bilgisayar vizyonuna ve doğal dil işlemeye uygulanmasını araştırmak için bir yolculuğa çıkıyoruz. Birinci Bölüm: Makine Öğreniminin Temelleri Denetimli ve denetimsiz öğrenme, regresyon, sınıflandırma, kümeleme ve boyutsallığın azaltılması dahil olmak üzere temel makine öğrenimi kavramlarını kapsayan derin öğrenme için sağlam bir teorik temel oluşturarak başlayacağız. Doğrusal regresyon, karar ağaçları, rastgele ormanlar, destek vektör makineleri (SVM'ler) ve sinir ağları gibi çeşitli makine öğrenme paradigmalarına bakacağız. Bu yöntemleri çeşitli problemlere nasıl uygulayacağınızı ve modern bilginin gelişiminin teknolojik sürecinin algılanması için kişisel bir paradigma geliştirmeyi öğreneceksiniz.
التعلم العميق في بايثون: فهم كيفية عمل الشبكات العصبية العميقة وتطبيقها على مهام العالم الحقيقي مع استمرار التكنولوجيا في التقدم بوتيرة غير مسبوقة، أصبح فهم عملية التطور التكنولوجي وتأثيرها على البشرية أكثر أهمية. ليس مجال التعلم العميق استثناءً، حيث توسع بسرعة في السنوات الأخيرة ليشمل مجموعة واسعة من التطبيقات، مما يجعل من الصعب التنقل بدون أساس متين. في Python Deep arning، نقوم برحلة لاستكشاف الأسس الرياضية والبنية والخوارزميات لتعلم الشبكة العصبية، والتعمق في جوهر التعلم العميق وتطبيقه على رؤية الكمبيوتر ومعالجة اللغة الطبيعية. الجزء الأول: أساسيات التعلم الآلي سنبدأ بإنشاء أساس نظري متين للتعلم العميق، يشمل مفاهيم التعلم الآلي الأساسية بما في ذلك التعلم الخاضع للإشراف وغير الخاضع للإشراف، والانحدار، والتصنيف، والتجميع، والحد من الأبعاد. سننظر في نماذج التعلم الآلي المختلفة مثل الانحدار الخطي وأشجار القرار والغابات العشوائية وآلات ناقلات الدعم (SVMs) والشبكات العصبية. سوف تتعلم كيفية تطبيق هذه الأساليب على مختلف المشاكل وتطوير نموذج شخصي لتصور العملية التكنولوجية لتطوير المعرفة الحديثة.

You may also be interested in:

Deep Learning with Python Comprehensive Beginners Guide to Learn and Understand the Realms of Deep Learning with Python
Python Deep Learning: Understand how deep neural networks work and apply them to real-world tasks
Deep Learning with Python The Crash Course for Beginners to Learn the Basics of Deep Learning with Python Using TensorFlow, Keras and PyTorch
Deep Learning With Python Simple and Effective Tips and Tricks to Learn Deep Learning with Python
Coding with Python The Ultimate Guide For Data Science, a Smart Way to Program With Python, Understand Data Analytics and Deep Learning Faster Computer Programming for Beginners (Book Python 3)
Deep Learning With Python Advanced and Effective Strategies of Using Deep Learning with Python Theories
Deep Learning for Data Architects: Unleash the power of Python|s deep learning algorithms (English Edition)
Deep Learning for Data Architects Unleash the power of Python|s deep learning algorithms
Deep Learning for Finance Creating Machine & Deep Learning Models for Trading in Python
Deep Learning for Finance Creating Machine & Deep Learning Models for Trading in Python
Deep Learning for Data Architects Unleash the power of Python|s deep learning algorithms
Deep Learning With Python Develop Deep Learning Models on Theano and TensorFlow using Keras
Deep Learning with Python The Ultimate Beginners Guide for Deep Learning with Python
Deep Learning with Python The ultimate beginners guide to Learn Deep Learning with Python Step by Step
Fundamentals of Machine & Deep Learning A Complete Guide on Python Coding for Machine and Deep Learning with Practical Exercises for Learners (Sachan Book 102)
Programming With Python 4 Manuscripts - Deep Learning With Keras, Convolutional Neural Networks In Python, Python Machine Learning, Machine Learning With Tensorflow
Computer Programming This Book Includes Machine Learning for Beginners, Machine Learning with Python, Deep Learning with Python, Python for Data Analysis
Deep Learning for Natural Language Processing Develop Deep Learning Models for Natural Language in Python
Python Machine Learning The Ultimate Guide for Beginners to Machine Learning with Python, Programming and Deep Learning, Artificial Intelligence, Neural Networks, and Data Science
Learn Autonomous Programming with Python Utilize Python|s capabilities in Artificial Intelligence, Machine Learning, Deep Learning and robotic process automation
Learn Autonomous Programming with Python Utilize Python|s capabilities in Artificial Intelligence, Machine Learning, Deep Learning and robotic process automation
Python Programming The Crash Course for Python – Learn the Secrets of Machine Learning, Data Science Analysis and Artificial Intelligence. Introduction to Deep Learning for Beginners
Python Programming, Deep Learning: 3 Books in 1: A Complete Guide for Beginners, Python Coding for AI, Neural Networks, and Machine Learning, Data Science Analysis … Learners (Python Programming
Python Programming The Crash Course for Python Projects – Learn the Secrets of Machine Learning, Data Science Analysis and Artificial Intelligence. Introduction to Deep Learning for Beginners
Learn Autonomous Programming with Python: Utilize Python|s capabilities in artificial intelligence, machine learning, deep learning and robotic process automation (English Edition)
Java Deep Learning Projects: Implement 10 real-world deep learning applications using Deeplearning4j and open source APIs
Deep Learning for the Life Sciences Applying Deep Learning to Genomics, Microscopy, Drug Discovery, and More First Edition
Getting started with Deep Learning for Natural Language Processing Learn how to build NLP applications with Deep Learning
Building Scalable Deep Learning Pipelines on AWS Develop, Train, and Deploy Deep Learning Models
Deep Learning fur die Biowissenschaften Einsatz von Deep Learning in Genomik, Biophysik, Mikroskopie und medizinischer Analyse
Python for Data Analysis Master Deep Learning With Python And Become Great At Programming.Python For Beginners
Deep Learning for the Life Sciences Applying Deep Learning to Genomics, Microscopy, Drug Discovery, and More
Anatomy of Deep Learning Principles: Writing a deep learning library from scratch (Japanese Edition)
Python Programming, Deep Learning 3 Books in 1 A Complete Guide for Beginners, Python Coding for AI, Neural Networks, & Machine Learning, Data Science/Analysis with Practical Exercises for Learners
Programming PyTorch for Deep Learning Creating and Deploying Deep Learning Applications First Edition
Machine Learning for Beginners A Math Guide to Mastering Deep Learning and Business Application. Understand How Artificial Intelligence, Data Science, and Neural Networks Work Through Real Examples
Practical Mathematics for AI and Deep Learning: A Concise yet In-Depth Guide on Fundamentals of Computer Vision, NLP, Complex Deep Neural Networks and Machine Learning (English Edition)
Hands-on Deep Learning A Guide to Deep Learning with Projects and Applications
Mastering Deep Learning: A Comprehensive Guide to Master Deep Learning
Mastering Deep Learning A Comprehensive Guide to Master Deep Learning