BOOKS - Mathematical Engineering of Deep Learning
Mathematical Engineering of Deep Learning - Benoit Liquet, Sarat Moka, Yoni Nazarathy 2025 PDF | EPUB CRC Press BOOKS
ECO~18 kg CO²

1 TON

Views
45602

Telegram
 
Mathematical Engineering of Deep Learning
Author: Benoit Liquet, Sarat Moka, Yoni Nazarathy
Year: 2025
Pages: 415
Format: PDF | EPUB
File size: 39.8 MB
Language: ENG



Pay with Telegram STARS
Book Description: Mathematical Engineering of Deep Learning Benoit Liquet, Sarat Moka, Yoni Nazarathy 2025 Pages: 415 CRC Press Summary: Mathematical Engineering of Deep Learning provides a comprehensive and concise overview of Deep Learning using mathematical concepts. The book offers a self-contained background on Machine Learning and optimization algorithms, progressing through the fundamental ideas of Deep Learning, including deep neural networks, convolutional models, recurrent models, long-short term memory, the attention mechanism, transformers, variational autoencoders, diffusion models, generative adversarial networks, and reinforcement learning. These concepts are presented using simple mathematical equations, along with concise descriptions of relevant tricks of the trade. The content serves as the foundation for state-of-the-art Artificial Intelligence applications involving images, sound, large language models, and other domains.
Mathematical Engineering of Deep arning Benoit Liquet, Sarat Moka, Yoni Nazarathy 2025 Pages: 415 CRC Press Summary: Mathematical Engineering of Deep arning предоставляет всесторонний и краткий обзор Deep arning с использованием математических концепций. Книга предлагает автономный фон по машинному обучению и алгоритмам оптимизации, продвигаясь через фундаментальные идеи глубокого обучения, включая глубокие нейронные сети, сверточные модели, рекуррентные модели, долговременную кратковременную память, механизм внимания, трансформаторы, вариационные автоэнкодеры, диффузионные модели, генеративные состязательные сети и обучение с подкреплением. Эти понятия представлены с помощью простых математических уравнений вместе с краткими описаниями соответствующих уловок торговли. Контент служит основой для современных приложений искусственного интеллекта, включающих изображения, звук, большие языковые модели и другие домены.
Engineering mathématique de Deep arning Benoit Liquet, Sarat Moka, Yoni Nazarathy 2025 Pages : 415 CRC Press Summary : Mathematical Engineering de Deep arning fournit un aperçu complet et rapide de Deep arning concepts mathématiques. livre offre un fond autonome sur l'apprentissage automatique et les algorithmes d'optimisation, en progressant à travers les idées fondamentales de l'apprentissage profond, y compris les réseaux neuronaux profonds, les modèles convolutifs, les modèles récurrents, la mémoire à long terme, le mécanisme d'attention, les transformateurs, les encodeurs variés, les modèles de diffusion, les réseaux de compétition générative et l'apprentissage avec des renforts. Ces concepts sont présentés à l'aide d'équations mathématiques simples ainsi que de brèves descriptions des astuces commerciales correspondantes. contenu sert de base aux applications modernes de l'intelligence artificielle, y compris les images, le son, les grands modèles linguistiques et d'autres domaines.
Ingeniería matemática de Deep arning Benoit Liquet, Sarat Moka, Yoni Nazarathy 2025 Pages: 415 CRC Press Summary: Mathematical Enh gineering of Deep arning proporciona una visión general completa y concisa de Deep arning usando conceptos matemáticos. libro ofrece un fondo autónomo sobre aprendizaje automático y algoritmos de optimización, avanzando a través de ideas fundamentales de aprendizaje profundo, incluyendo redes neuronales profundas, modelos de perforación, modelos recurrativos, memoria de corto plazo a largo plazo, mecanismo de atención, transformadores, codificadores de auto variación, modelos de difusión, redes competitivas generadoras y entrenamiento con refuerzos. Estos conceptos se presentan a través de simples ecuaciones matemáticas junto con breves descripciones de los trucos correspondientes del comercio. contenido sirve de base para aplicaciones modernas de inteligencia artificial que incluyen imágenes, sonido, grandes modelos de lenguaje y otros dominios.
Mathematical Engineering of Deep arning Benefit Liquet, Sarat Moka, Yoni Nazarathy 2025 Page: 415 CRC Press Summit: Mathematical Engineering of Deep arning una breve panoramica di Deep arning con concetti matematici. Il libro offre uno sfondo autonomo sull'apprendimento automatico e sugli algoritmi di ottimizzazione, promuovendo idee fondamentali di apprendimento profondo, tra cui reti neurali profonde, modelli compressi, modelli ricettivi, memoria a lungo termine a lungo termine, meccanismo di attenzione, trasformatori, autocoder di variazione, modelli di diffusione, reti di competizione generative e apprendimento con rinforzi. Questi concetti sono presentati attraverso semplici equazioni matematiche insieme a brevi descrizioni dei rispettivi trucchi commerciali. I contenuti sono la base per applicazioni avanzate di intelligenza artificiale che includono immagini, audio, grandi modelli linguistici e altri domini.
Mathematical Engineering of Deep arning Benoit Liquet, Sarat Moka, Yoni Nazarathy 2025 Seiten: 415 CRC Zusammenfassung: Mathematical Engineering of Deep arning bietet einen umfassenden und prägnanten Überblick über Deep arning mit mathematischen Konzepten. Das Buch bietet einen autonomen Hintergrund für maschinelles rnen und Optimierungsalgorithmen, der durch grundlegende Ideen für Deep arning wie tiefe neuronale Netzwerke, Faltungsmodelle, wiederkehrende Modelle, Langzeitkurzzeitgedächtnis, Aufmerksamkeitsmechanismus, Transformatoren, variable Autoencoder, Diffusionsmodelle, generative Wettbewerbsnetzwerke und verstärkendes rnen voranschreitet. Diese Konzepte werden durch einfache mathematische Gleichungen zusammen mit kurzen Beschreibungen der entsprechenden Tricks des Handels dargestellt. Der Inhalt dient als Grundlage für moderne KI-Anwendungen, darunter Bilder, Ton, große Sprachmodelle und andere Domänen.
Inżynieria matematyczna z głęboko arning Benoit Liquet, Sarat Moka, Yoni Nazarathy 2025 Strony: 415 CRC Podsumowanie prasy: Inżynieria matematyczna głębokiego arning zapewnia kompleksowy i zwięzły przegląd głębokiego arning przy użyciu koncepcji matematycznych. Książka oferuje autonomiczne tło na temat algorytmów uczenia maszynowego i optymalizacji, postępując poprzez fundamentalne idee głębokiego uczenia się, w tym głębokie sieci neuronowe, modele konwolucyjne, modele nawracające, pamięć długoterminową krótkoterminową, mechanizm uwagi, transformatory, zmienne autoenkodery, modele dyfuzji, generacyjne sieci adversaryjne i uczenie się wzmacniające. Pojęcia te reprezentowane są przez proste równania matematyczne wraz z krótkimi opisami poszczególnych sztuczek handlu. Zawartość stanowi podstawę nowoczesnych aplikacji sztucznej inteligencji, w tym obrazów, dźwięku, dużych modeli językowych i innych domen.
Mathematical Engineering of Deep arning Benoit, Sarat Moka, Yoni Nazarathy 2025 Pages: 415 CRC Press Summary: Mathematical Engineering of of of of of DeEEEMMMMmatMMatmatmatematic matic estematic estestestematical leing leing leing eStecing esteStecing estementing הספר מציע רקע אוטונומי על אלגוריתמי למידת מכונה ואופטימיזציה, המתקדמים באמצעות רעיונות בסיסיים של למידה עמוקה, כולל רשתות עצביות עמוקות, מודלים קונבנציונליים, מודלים חוזרים, זיכרון לטווח ארוך, מנגנון קשב, שנאים, מודלים של דיפוזיה, רשתות יריבות מחוזקות ולמידה של חיזוק. מושגים אלה מיוצגים על ידי משוואות מתמטיות פשוטות יחד עם תיאורים קצרים של הטריקים של הסחר. תוכן משמש כבסיס ליישומי בינה מלאכותית מודרניים, כולל תמונות, סאונד, מודלים גדולים של שפות ותחומים אחרים.''
Derin arning Matematik Mühendisliği Benoit Liquet, Sarat Moka, Yoni Nazarathy 2025 Sayfalar: 415 CRC Basın Özeti: Derin arning Matematik Mühendisliği, matematiksel kavramları kullanarak Derin arning'e kapsamlı ve özlü bir genel bakış sağlar. Kitap, derin sinir ağları, konvolüsyonel modeller, tekrarlayan modeller, uzun süreli kısa süreli bellek, dikkat mekanizması, transformatörler, varyasyonel otomatik kodlayıcılar, difüzyon modelleri dahil olmak üzere derin öğrenmenin temel fikirleri ile ilerleyen, makine öğrenimi ve optimizasyon algoritmaları üzerine özerk bir arka plan sunmaktadır. üretken düşmanlık ağları ve takviye öğrenme. Bu kavramlar, ticaretin ilgili hilelerinin kısa açıklamalarıyla birlikte basit matematiksel denklemlerle temsil edilir. İçerik, görüntüler, ses, büyük dil modelleri ve diğer alanlar dahil olmak üzere modern yapay zeka uygulamalarının temelini oluşturur.
الهندسة الرياضية للتعلم العميق Benoit Liquet, Sarat Moka, Yoni Nazarathy 2025 Pages: 415 CRC Press Summary: الهندسة الرياضية للتعلم العميق تقدم لمحة شاملة وموجزة عن التعلم العميق باستخدام المفاهيم الرياضية. يقدم الكتاب خلفية مستقلة عن خوارزميات التعلم الآلي والتحسين، ويتقدم من خلال الأفكار الأساسية للتعلم العميق، بما في ذلك الشبكات العصبية العميقة، والنماذج التلافيفية، والنماذج المتكررة، والذاكرة قصيرة المدى طويلة المدى، وآلية الانتباه، والمحولات، والمشفرات الذاتية المتنوعة، نماذج الانتشار، وشبكات الخصومة المولدة، والتعلم المعزز. يتم تمثيل هذه المفاهيم من خلال معادلات رياضية بسيطة جنبا إلى جنب مع وصف موجز للحيل ذات الصلة من التجارة. يعمل المحتوى كأساس لتطبيقات الذكاء الاصطناعي الحديثة، بما في ذلك الصور والصوت ونماذج اللغة الكبيرة والمجالات الأخرى.
딥 러닝 베누아 리케의 수학 공학, Sarat Moka, Yoni Nazarathy 2025 페이지: 415 CRC 프레스 요약: 딥 러닝의 수학 공학은 수학적 개념을 사용하여 딥 러닝에 대한 포괄적이고 간결한 개요를 제공합니다. 이 책은 심층 신경망, 컨볼 루션 모델, 반복 모델, 장기 기억, 주의 메커니즘, 변압기, 변형 자동 인코더, 확산 모델, 생성 적대적 네트워크 및 강화 학습. 이러한 개념은 간단한 수학적 방정식과 거래의 각 트릭에 대한 간단한 설명으로 표시됩니다. 콘텐츠는 이미지, 사운드, 대형 언어 모델 및 기타 도메인을 포함한 최신 인공 지능 응용 프로그램의 기초가됩니다.
Deep arningの数学工学Benoit Liquet、 Sarat Moka、 Yoni Nazarathy 2025 Pages: 415 CRC Press Summary: Deep arningの数学的概念を用いたDeep arningの包括的かつ簡潔な概要を提供します。この本は、深層ニューラルネットワーク、畳み込みモデル、再発モデル、長期短期記憶、注意メカニズム、変圧器、変動オートエンコーダ、拡散モデル、生成的な敵対的ネットワーク、強化学習など、深層学習の基本的なアイデアを通じて進歩している機械学習と最適化アルゴリズムに関する自律的な背景を提供しています。これらの概念は、貿易のそれぞれのトリックの簡単な説明とともに、単純な数学的方程式によって表される。コンテンツは、画像、サウンド、大きな言語モデル、その他のドメインを含む、現代の人工知能アプリケーションの基礎となります。
深度學習數學工程Benoit Liquet,Sarat Moka,Yoni Nazarathy 2025頁:415 CRC新聞摘要:深度學習數學工程提供全面而簡短的評論使用數學概念學習。該書提供了有關機器學習和優化算法的獨立背景,並通過深度學習的基本思想發展,包括深度神經網絡,卷積模型,遞歸模型,長期短期記憶,註意力機制,變壓器,變分自動編碼器,擴散模型,生成對抗網絡和強化學習。這些概念通過簡單的數學方程以及相關貿易策略的簡要描述來表示。內容是現代人工智能應用程序的基礎,包括圖像,聲音,大型語言模型和其他域。

You may also be interested in:

Professional Learning Communities at Work(R)and High-Reliability Schools: Cultures of Continuous Learning (Ensure a viable and guaranteed curriculum) (Leading Edge Book 11)
Real-world Learning Framework for Secondary Schools: Digital Tools and Practical Strategies for Successful Implementation - bring about deeper and self-directed learning in students
Climate Change Impact on Water Resources: Proceedings of 26th International Conference on Hydraulics, Water Resources and Coastal Engineering (HYDRO 2021) (Lecture Notes in Civil Engineering, 313)
Advances in Enterprise Engineering XVI: 12th Enterprise Engineering Working Conference, EEWC 2022, Leusden, The Netherlands, November 2-3, 2022, … Notes in Business Information Processing)
Mathematics for Reliability Engineering: Modern Concepts and Applications (De Gruyter Series on the Applications of Mathematics in Engineering and Information Sciences, 8)
Engineering Software Products An Introduction to Modern Software Engineering
Outliers in Control Engineering: Fractional Calculus Perspective (Fractional Calculus in Applied Sciences and Engineering Book 10)
Learning in the Age of Digital and Green Transition: Proceedings of the 25th International Conference on Interactive Collaborative Learning (ICL2022), … (Lecture Notes in Networks and Systems, 6
Industry 4.0: The Power of Data: Selected Papers from the 15th International Conference on Industrial Engineering and Industrial Management (Lecture Notes in Management and Industrial Engineering)
Machine Learning for Business The Ultimate Artificial Intelligence & Machine Learning for Managers, Team Leaders and Entrepreneurs
Learning Google Cloud Vertex AI: Build, deploy, and manage machine learning models with Vertex AI (English Edition)
Agricultural Informatics Automation Using the IoT and Machine Learning (Advances in Learning Analytics for Intelligent Cloud-IoT Systems)
Building Machine Learning Systems Using Python Practice to Train Predictive Models and Analyze Machine Learning Results
Dynamics of a Social Language Learning Community: Beliefs, Membership and Identity (Psychology of Language Learning and Teaching, 9) (Volume 9)
Machine Learning for Beginners An Introductory Guide to Learn and Understand Artificial Intelligence, Neural Networks and Machine Learning
Machine Learning With Python 3 books in 1 Hands-On Learning for Beginners+An in-Depth Guide Beyond the Basics+A Practical Guide for Experts
Machine Learning in Production: Master the art of delivering robust Machine Learning solutions with MLOps (English Edition)
Lifelong Learning, the Arts and Community Cultural Engagement in the contemporary university: International Perspectives (Universities and Lifelong Learning MUP)
Teacher Education in Computer-Assisted Language Learning: A Sociocultural and Linguistic Perspective (Advances in Digital Language Learning and Teaching)
Constructivism Reconsidered in the Age of Social Media: New Directions for Teaching and Learning, Number 144 (J-B TL Single Issue Teaching and Learning)
Serverless Machine Learning with Amazon Redshift ML: Create, train, and deploy machine learning models using familiar SQL commands
Applied Machine Learning and High-Performance Computing on AWS: Accelerate the development of machine learning applications following architectural best practices
Differing visions of a Learning Society Vol 2: Research findings Volume 2 (ESRC Learning Society series)
Personality as a Factor Affecting the Use of Language Learning Strategies: The Case of University Students (Second Language Learning and Teaching)
Machine Learning for Data Streams with Practical Examples in MOA (Adaptive Computation and Machine Learning series)
Learning Pandas 2.0: A Comprehensive Guide to Data Manipulation and Analysis for Data Scientists and Machine Learning Professionals
Reinforcement Learning with TensorFlow: A beginner|s guide to designing self-learning systems with TensorFlow and OpenAI Gym
Machine Learning Master Machine Learning Fundamentals for Beginners, Business Leaders and Aspiring Data Scientists
Online Machine Learning: A Practical Guide with Examples in Python (Machine Learning: Foundations, Methodologies, and Applications)
Machine Learning The Ultimate Guide to Understand AI Big Data Analytics and the Machine Learning’s Building Block Application in Modern Life
Machine Learning For Beginners Guide Algorithms Supervised & Unsupervsied Learning. Decision Tree & Random Forest Introduction
Machine Learning A Guide to PyTorch, TensorFlow, and Scikit-Learn Mastering Machine Learning With Python
Robust Machine Learning: Distributed Methods for Safe AI (Machine Learning: Foundations, Methodologies, and Applications)
Active Machine Learning with Python: Refine and elevate data quality over quantity with active learning
Machine Learning for Beginners Build and deploy Machine Learning systems using Python, 2nd Edition
Learning Google Cloud Vertex AI Build, deploy, and manage machine learning models with Vertex AI
Human-in-the-Loop Machine Learning Active learning, annotation and human-computer interaction (MEAP)
Machine Learning with Core ML 2 and Swift A beginner-friendly guide to integrating machine learning into your apps
Machine Learning A Guide to PyTorch, TensorFlow, and Scikit-Learn Mastering Machine Learning With Python
Machine Learning: A Guide to PyTorch, TensorFlow, and Scikit-Learn: Mastering Machine Learning With Python