BOOKS - Metaheuristic and Machine Learning Optimization Strategies for Complex System...
Metaheuristic and Machine Learning Optimization Strategies for Complex Systems - Thanigaivelan R., Suchithra M., Kaliappan S., T. Mothilal 2024 PDF | EPUB IGI Global BOOKS
ECO~18 kg CO²

1 TON

Views
89138

Telegram
 
Metaheuristic and Machine Learning Optimization Strategies for Complex Systems
Author: Thanigaivelan R., Suchithra M., Kaliappan S., T. Mothilal
Year: 2024
Pages: 423
Format: PDF | EPUB
File size: 19.6 MB
Language: ENG



Pay with Telegram STARS
Metaheuristic and Machine Learning Optimization Strategies for Complex Systems In today's fast-paced technological landscape, optimization and decision-making issues are crucial in various engineering domains. With the vast amounts of data being processed, processing times and memory usage can be substantial, making it imperative to develop and implement novel heuristic algorithms that can significantly reduce computational costs. This is where the need for metaheuristic and machine learning optimization strategies comes into play. These techniques have proven advantageous in addressing the challenges of optimization and decision-making in complex systems. The book "Metaheuristic and Machine Learning Optimization Strategies for Complex Systems" provides a comprehensive overview of the latest advancements in hyperheuristic models, hybrid metaheuristic models, nature-inspired computing models, and metaheuristic models. The key contribution of this book is the construction of a hyperheuristic approach for any general problem domain from a metaheuristic algorithm. It covers topics such as cloud computing, Internet of Things (IoT), and performance evaluation, making it an essential resource for researchers, postgraduate students, educators, data scientists, machine learning engineers, software developers, and policy makers.
Стратегии оптимизации метаэвристического и машинного обучения для сложных систем В современном быстро развивающемся технологическом ландшафте вопросы оптимизации и принятия решений имеют решающее значение в различных областях проектирования. С огромными объемами обрабатываемых данных время обработки и использование памяти могут быть значительными, что делает необходимым разработку и внедрение новых эвристических алгоритмов, которые могут значительно снизить затраты на вычисления. Здесь в дело вступает необходимость метаэвристических стратегий и стратегий оптимизации машинного обучения. Эти методы доказали свою эффективность в решении проблем оптимизации и принятия решений в сложных системах. В книге «Metaheuristic and Machine arning Optimization Strategies for Complex Systems» представлен всесторонний обзор последних достижений в области гиперэвристических моделей, гибридных метаэвристических моделей, моделей вычислений, вдохновленных природой, и метаэвристических моделей. Ключевым вкладом этой книги является построение гиперэвристического подхода для любой общей проблемной области из метаэвристического алгоритма. Он охватывает такие темы, как облачные вычисления, Интернет вещей (IoT) и оценка производительности, что делает его важным ресурсом для исследователей, аспирантов, преподавателей, специалистов по данным, инженеров по машинному обучению, разработчиков программного обеспечения и политиков.
Stratégies d'optimisation du métavrisme et de l'apprentissage automatique pour les systèmes complexes Dans le paysage technologique en évolution rapide d'aujourd'hui, les questions d'optimisation et de prise de décision sont essentielles dans différents domaines de la conception. Avec les énormes quantités de données à traiter, le temps de traitement et l'utilisation de la mémoire peuvent être importants, ce qui rend nécessaire le développement et la mise en œuvre de nouveaux algorithmes heuristiques qui peuvent réduire considérablement les coûts de calcul. C'est là que le besoin de stratégies métavristes et d'optimisation de l'apprentissage automatique entre en jeu. Ces méthodes se sont avérées efficaces pour résoudre les problèmes d'optimisation et de prise de décision dans des systèmes complexes. livre « Metaheuristic and Machine Arning Optimization Strategies for Complex Systems » présente un aperçu complet des dernières avancées dans les modèles hyperévristiques, les modèles métavristes hybrides, les modèles informatiques inspirés de la nature et les modèles métavristes. L'une des principales contributions de ce livre est de construire une approche hyperévristique pour tout domaine problématique commun à partir d'un algorithme métavriste. Il couvre des sujets tels que l'informatique en nuage, l'Internet des objets (IoT) et l'évaluation de la performance, ce qui en fait une ressource importante pour les chercheurs, les étudiants de troisième cycle, les enseignants, les spécialistes des données, les ingénieurs en apprentissage automatique, les développeurs de logiciels et les décideurs.
Estrategias de optimización del aprendizaje metaheverístico y automático para sistemas complejos En el panorama tecnológico en rápida evolución actual, las cuestiones de optimización y toma de decisiones son cruciales en diferentes áreas de diseño. Con enormes cantidades de datos procesados, el tiempo de procesamiento y el uso de la memoria pueden ser significativos, lo que hace necesario desarrollar e implementar nuevos algoritmos heurísticos que pueden reducir significativamente los costos de computación. Aquí entra en juego la necesidad de estrategias metaevrísticas y estrategias de optimización del aprendizaje automático. Estos métodos han demostrado ser eficaces para resolver problemas de optimización y toma de decisiones en sistemas complejos. libro Metaheuristic and Machine Arning Optimization Strategies for Complex Systems ofrece una visión general completa de los últimos avances en modelos hiperevrísticos, modelos metaevrísticos híbridos, modelos de computación inspirados en la naturaleza y modelos metaevrísticos. Una contribución clave de este libro es la construcción de un enfoque hiperevrístico para cualquier área problemática común a partir de un algoritmo metaeurístico. Abarca temas como la computación en la nube, el Internet de las Cosas (IoT) y la evaluación del rendimiento, lo que lo convierte en un recurso importante para investigadores, estudiantes de posgrado, profesores, especialistas en datos, ingenieros de aprendizaje automático, desarrolladores de software y políticos.
Strategie di ottimizzazione dell'apprendimento metaevristico e automatico per sistemi complessi In un panorama tecnologico in continua evoluzione, le questioni di ottimizzazione e decisionale sono fondamentali in diversi ambiti di progettazione. Con enormi quantità di dati elaborati, i tempi di elaborazione e l'utilizzo della memoria possono essere significativi, rendendo necessario lo sviluppo e l'implementazione di nuovi algoritmi euristici in grado di ridurre notevolmente i costi di calcolo. Questo include la necessità di strategie metaeuristiche e di ottimizzazione dell'apprendimento automatico. Questi metodi hanno dimostrato di essere efficaci nel risolvere i problemi di ottimizzazione e di decisione in sistemi complessi. Il libro Metaheuristic and Machine arning Ottimization Strategies for Complex Systems fornisce una panoramica completa degli ultimi sviluppi in materia di modelli iperavristici, modelli metaevristici ibridi, modelli di calcolo ispirati alla natura e modelli metaevristici. Il contributo chiave di questo libro è la costruzione di un approccio ipervristico per qualsiasi area comune problematica dall'algoritmo metaeuristico. occupa di temi quali cloud computing, Internet delle cose (IoT) e valutazione delle prestazioni, che lo rendono una risorsa importante per ricercatori, studenti di laurea, insegnanti, esperti di dati, ingegneri di apprendimento automatico, sviluppatori di software e politici.
Metaauristische und maschinelle rnoptimierungsstrategien für komplexe Systeme In der heutigen schnelllebigen Technologielandschaft sind Optimierungs- und Entscheidungsfragen in verschiedenen Designbereichen von entscheidender Bedeutung. Bei riesigen Datenmengen, die verarbeitet werden, können Verarbeitungszeit und Speicherauslastung erheblich sein, was die Entwicklung und Implementierung neuer heuristischer Algorithmen erforderlich macht, die die Rechenkosten erheblich senken können. Hier kommt die Notwendigkeit von metaauristischen Strategien und Strategien zur Optimierung des maschinellen rnens ins Spiel. Diese Methoden haben sich bei der Lösung von Optimierungs- und Entscheidungsproblemen in komplexen Systemen bewährt. Das Buch „Metaheuristic and Machine arning Optimization Strategies for Complex Systems“ bietet einen umfassenden Überblick über die neuesten Fortschritte bei hypereuristischen Modellen, hybriden metaeuristischen Modellen, von der Natur inspirierten Rechenmodellen und metaeuristischen Modellen. Ein wichtiger Beitrag dieses Buches ist die Konstruktion eines hypereuristischen Ansatzes für jeden gemeinsamen Problembereich aus einem metaeuristischen Algorithmus. Es deckt Themen wie Cloud Computing, Internet der Dinge (IoT) und istungsbewertung ab und ist damit eine wichtige Ressource für Forscher, Doktoranden, Dozenten, Datenspezialisten, maschinelle rningenieure, Softwareentwickler und politische Entscheidungsträger.
Metaheurystyka i uczenie maszynowe Strategie optymalizacji systemów złożonych W dzisiejszym szybko rozwijającym się krajobrazie technologicznym, optymalizacja i kwestie decyzyjne mają kluczowe znaczenie w różnych obszarach projektowania. Przy ogromnych ilościach przetwarzanych danych, czas przetwarzania i wykorzystanie pamięci mogą być znaczące, co wymaga opracowania i wdrożenia nowych algorytmów heurystycznych, które mogą znacznie zmniejszyć koszty obliczeniowe. Tutaj wchodzi w grę potrzeba strategii optymalizacji uczenia metaheurystycznego i maszynowego. Metody te okazały się skuteczne w rozwiązywaniu problemów optymalizacji i podejmowania decyzji w złożonych systemach. Książka „Metaheuristic and Machine arning Optimization Strategies for Complex Systems” zawiera kompleksowy przegląd najnowszych osiągnięć w modelach hipereurystycznych, modelach hybrydowych metaheurystycznych, modelach obliczeniowych inspirowanych naturą i modelach metaheurystycznych. Kluczowym wkładem tej książki jest budowa hipereurystycznego podejścia do każdej ogólnej domeny problemów z algorytmu metaheurystycznego. Obejmuje ona tematy takie jak chmura obliczeniowa, Internet Rzeczy (IoT) i ocena wydajności, co czyni go ważnym zasobem dla naukowców, absolwentów studiów, pedagogów, danych naukowców, inżynierów uczenia maszynowego, programistów i decydentów.
Metaheuristic and Machine arning Optimization Strategization for Complex Systems בנוף הטכנולוגי המתפתח במהירות, אופטימיזציה וקבלת החלטות הן קריטיות בתחומים שונים. עם כמויות עצומות של מידע להיות מעובד, זמן עיבוד ושימוש בזיכרון יכול להיות משמעותי, מה שהופך אותו הכרחי לפתח וליישם אלגוריתמים היוריסטיים חדשים שיכולים להפחית באופן משמעותי עלויות חישוביות. כאן נכנס למשחק הצורך באסטרטגיות אופטימיזציה מטהיוריסטיות ולמידת מכונה. שיטות אלו הוכיחו יעילות בפתרון בעיות אופטימיזציה וקבלת החלטות במערכות מורכבות. הספר Metaheuristic and Machine arning Optimization Strategies for Complex Systems מספק סקירה מקיפה של ההתקדמות האחרונה במודלים היפראיוריסטיים, מודלים מטאוריסטיים היברידיים, מודלים חישוביים בהשראת הטבע ומודלים מטאוריסטיים. תרומה מרכזית של ספר זה היא בניית גישה היפראיוריסטית לכל תחום בעיה כללי מאלגוריתם מטהיוריסטי. הוא מכסה נושאים כגון מחשוב ענן, האינטרנט של דברים (IoT) והערכת ביצועים, מה שהופך אותו למשאב חשוב עבור חוקרים, סטודנטים לתואר שני, מחנכים, מדעני נתונים, מהנדסי למידת מכונה, מפתחי תוכנה וקובעי מדיניות.''
Karmaşık stemler için Metaheuristik ve Makine Öğrenimi Optimizasyon Stratejileri Günümüzün hızla gelişen teknolojik ortamında, optimizasyon ve karar verme konuları çeşitli tasarım alanlarında kritik öneme sahiptir. Büyük miktarda veri işlendiğinde, işlem süresi ve bellek kullanımı önemli olabilir, bu da hesaplama maliyetlerini önemli ölçüde azaltabilecek yeni sezgisel algoritmaların geliştirilmesini ve uygulanmasını gerekli kılar. Metaheuristik ve makine öğrenimi optimizasyon stratejilerine duyulan ihtiyaç burada devreye giriyor. Bu yöntemlerin karmaşık sistemlerde optimizasyon ve karar verme problemlerinin çözümünde etkili olduğu kanıtlanmıştır. "Metaheuristic and Machine arning Optimization Strategies for Complex Systems" kitabı, hiperöristik modeller, hibrid metaheuristik modeller, doğadan ilham alan hesaplama modelleri ve metaheuristik modellerdeki son gelişmelere kapsamlı bir genel bakış sunmaktadır. Bu kitabın önemli bir katkısı, metaheuristik bir algoritmadan herhangi bir genel problem alanı için hiperöristik bir yaklaşımın oluşturulmasıdır. Bulut bilişim, Nesnelerin İnterneti (IoT) ve performans değerlendirmesi gibi konuları kapsar; bu da onu araştırmacılar, lisansüstü öğrenciler, eğitimciler, veri bilimcileri, makine öğrenimi mühendisleri, yazılım geliştiricileri ve politika yapıcılar için önemli bir kaynak haline getirir.
استراتيجيات تحسين التعلم الميتاهوري والآلي للأنظمة المعقدة في المشهد التكنولوجي سريع التطور اليوم، يعد التحسين وقضايا صنع القرار أمرًا بالغ الأهمية في مجالات التصميم المختلفة. مع معالجة كميات هائلة من البيانات، يمكن أن يكون استخدام وقت المعالجة والذاكرة مهمًا، مما يجعل من الضروري تطوير وتنفيذ خوارزميات استدلالية جديدة يمكن أن تقلل بشكل كبير من التكاليف الحسابية. هذا هو المكان الذي تلعب فيه الحاجة إلى استراتيجيات تحسين التعلم الميتاهويري والتعلم الآلي دورًا. أثبتت هذه الأساليب فعاليتها في حل مشاكل التحسين واتخاذ القرار في الأنظمة المعقدة. يقدم كتاب "Metaheuristic and Machine arning Optimization Strategies for Complex Systems'لمحة عامة شاملة عن التطورات الأخيرة في النماذج المفرطة، والنماذج الميتاهويستية الهجينة، ونماذج الحساب المستوحاة من الطبيعة، والنماذج الميتاهويستية. إحدى المساهمات الرئيسية لهذا الكتاب هي بناء نهج مفرط في التفكير لأي مجال مشكلة عام من خوارزمية ميتاهورية. يغطي موضوعات مثل الحوسبة السحابية وإنترنت الأشياء (IoT) وتقييم الأداء، مما يجعله مصدرًا مهمًا للباحثين وطلاب الدراسات العليا والمعلمين وعلماء البيانات ومهندسي التعلم الآلي ومطوري البرمجيات وصانعي السياسات.
針對復雜系統的元進氣和機器學習優化策略在當今快速發展的技術環境中,優化和決策問題在不同的設計領域至關重要。由於處理的數據量龐大,處理時間和內存使用量可能很大,因此有必要開發和實施新的啟發式算法,從而大大降低計算成本。在這裏,需要采用元分析策略和策略來優化機器學習。這些技術已被證明可以有效地解決復雜系統中的優化問題和決策問題。該書《復雜系統的金屬和機器檢測優化策略》全面概述了超濾波模型,混合元濾波模型,受自然啟發的計算模型和超濾波模型的最新進展。本書的主要貢獻是構建了一種超濾波方法,用於元濾波算法中的任何常見問題區域。它涵蓋了雲計算,物聯網(IoT)和性能評估等主題,使其成為研究人員,研究生,教職員工,數據專家,機器學習工程師,軟件開發人員和決策者的重要資源。

You may also be interested in:

English for Everyone: Level 2 Practice Book - Beginner English: ESL Workbook, Interactive English Learning for Adults
Python for Data Analysis Master Deep Learning With Python And Become Great At Programming.Python For Beginners
Chess Strategy: The Ultimate Guide to Learning Chess From Scratch (A Complete Informative Edition of Chess Notation to Gambits)
Learning PHP, MySQL & javascript With jQuery, CSS & HTML5, 5th Edition
Using SAP S 4HANA: An Introduction to Learning SAP for Beginners and Business Users (SAP PRESS)
Online Communication in a Second Language: Social Interaction, Language Use, and Learning Japanese (Second Language Acquisition, 66)
By Stephen McQuerry - Interconnecting Cisco Network Devices, Part 1 (ICND1): Foundation Learning for CCENT CCNA ICND1 Exam 640-822: 2nd (second) Edition
Algorithmic Learning Theory: 18th International Conference, ALT 2007, Sendai, Japan, October 1-4, 2007, Proceedings (Lecture Notes in Computer Science, 4754)
Study Less, Study Smart: A guide to effective study techniques and enhanced learning
Whittling Technique Guide Learning Whittling Through These Simple Patterns Whittling Ideas
Collaborative Teams That Transform Schools: The Next Step in PLCs (Improving Student Learning in PLCs; Effective Leaders and Team Collaboration That Bolster PLCs)
Learn Python The Ultimate Beginner’s Guide to Learning the Basics of Python in an Advanced Course Filled with Notions, Tips, and Tricks (Python for Beginners, Book 1)
Wraparound Guide: How to Gather Student Voice, Build Community (A wraparound service delivery handbook for helping students overcome barriers to wellness and learning)Partnerships, and Cultivate Hope
Learning Angular A Hands-On Guide to Angular 2 and Angular 4, 2nd Edition
Linux for Beginners A Practical and Comprehensive Guide to Learn Linux Operating System and Master Linux Command Line. Contains Self-Evaluation Tests to Verify Your Learning Level
Negotiating Learning and Identity in Higher Education: Access, Persistence and Retention (Understanding Student Experiences of Higher Education)
Engaging Dissonance: Developing Mindful Global Citizenship in Higher Education (Innovations in Higher Education Teaching and Learning, 9)
Latin Learning And English Lore: Studies in Anglo-Saxon Literature for Michael Lapidge (Toronto Old English Studies)
Intro to Python for Computer Science and Data Science Learning to Program with AI, Big Data and The Cloud, Global Edition
Second Language Teacher Professional Development: Technological Innovations for Post-Emergency Teacher Education (Digital Education and Learning)
Colorways Watercolor Flowers Tips, techniques, and step-by-step lessons for learning to paint whimsical artwork in vibrant watercolor
Cognitive Linguistics and Japanese Pedagogy: A Usage-Based Approach to Language Learning and Instruction (Applications of Cognitive Linguistics [ACL], 35)
Colorways Acrylic Animals Tips, techniques, and step-by-step lessons for learning to paint whimsical artwork in vibrant acrylic
Learning from the Children: Childhood, Culture and Identity in a Changing World (New Directions in Anthropology) (New Directions in Anthropology; 35) by Jacqueline Waldren (2012-06-01)
GMAT Prep 2024 2025 For Dummies with Online Practice (GMAT Focus Edition) (For Dummies: Learning Made Easy)
Instant Revit!: A Quick and Easy Guide to Learning Autodesk?de?ed??ede??d???de?ed???de??d??? Revit?de?ed??ede??d???de?ed???de??d??? 2016 by David Martin (2015-05-06)
Deep Learning for Multimedia Processing Applications Volume 1 Image Security and Intelligent Systems for Multimedia Processing
Deep Learning and XAI Techniques for Anomaly Detection: Integrate the theory and practice of deep anomaly explainability
Connecting Learning Across the Institution: New Directions for Higher Education, Number 165 (J-B HE Single Issue Higher Education)
Advancing and Consolidating Mathematical Modelling: Research from ICME-14 (International Perspectives on the Teaching and Learning of Mathematical Modelling)
Intercultural Learning in Language Education and Beyond: Evolving Concepts, Perspectives and Practices (Languages for Intercultural Communication and Education, 38)
Teens Talk About Learning Disabilities and Differences (Teen Voices: Real Teens Discuss Real Problems)
Deep Learning for Multimedia Processing Applications Volume 1 Image Security and Intelligent Systems for Multimedia Processing
Journal of Medieval Military History: Volume XV: Strategies (Journal of Medieval Military History, 15)
Cable-Driven Parallel Robots: Proceedings of the 6th International Conference on Cable-Driven Parallel Robots (Mechanisms and Machine Science Book 132)
Integration of Cloud Computing with Internet of Things Foundations, Analytics and Applications (Advances in Learning Analytics for Intelligent Cloud-IoT Systems)
Helping Soldiers Heal: How the US Army Created a Learning Mental Health Care System (The Culture and Politics of Health Care Work)
How to Draw and Find Your Style! Discover the Secret to Unleashing Your Personal Artistic Style While Learning How to Draw Fabulous Female Faces and Hands!
The Complete Node.js Guide A Detailed Guide to Learning Node.js, Featuring In-Depth Explanations, Practical Examples, and Best Practices for Professional Developers
The Complete Node.js Guide A Detailed Guide to Learning Node.js, Featuring In-Depth Explanations, Practical Examples, and Best Practices for Professional Developers