BOOKS - Machine Learning for Cyber Agents: Attack and Defence
Machine Learning for Cyber Agents: Attack and Defence - Stanislav Abaimov January 1, 2022 PDF  BOOKS
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Machine Learning for Cyber Agents: Attack and Defence
Author: Stanislav Abaimov
Year: January 1, 2022
Format: PDF
File size: PDF 8.8 MB
Language: English



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The book "Machine Learning for Cyber Agents Attack and Defense" explores the use of machine learning techniques in cybersecurity, focusing on both offensive and defensive strategies. The book covers topics such as deep learning, reinforcement learning, and transfer learning, and provides practical examples of how these techniques can be applied in real-world scenarios. The author emphasizes the importance of understanding the process of technological evolution and the need for a personal paradigm for perceiving the development of modern knowledge as the basis for human survival and unity in a warring world. The book begins by discussing the current state of cybersecurity and the challenges it faces, including the increasing sophistication of attacks and the rapid pace of technological change. The author argues that traditional security measures are no longer sufficient and that new approaches are needed to stay ahead of attackers. They propose using machine learning algorithms to improve defense mechanisms and develop more effective attack strategies. The first chapter delves into the basics of machine learning, explaining the concepts of supervised, unsupervised, and reinforcement learning. The author also discusses the different types of machine learning algorithms, such as decision trees, neural networks, and support vector machines.
В книге «Machine arning for Cyber Agents Attack and Defense» (Машинное обучение для атак и защиты кибер-агентов) рассматривается использование методов машинного обучения в кибербезопасности с акцентом как на наступательных, так и на защитных стратегиях. Книга охватывает такие темы, как глубокое обучение, обучение с подкреплением и обучение с переносом, и содержит практические примеры того, как эти методы могут быть применены в реальных сценариях. Автор подчеркивает важность понимания процесса технологической эволюции и необходимость личностной парадигмы восприятия развития современных знаний как основы выживания и единства человека в воюющем мире. Книга начинается с обсуждения текущего состояния кибербезопасности и проблем, с которыми она сталкивается, включая растущую изощренность атак и быстрые темпы технологических изменений. Автор утверждает, что традиционных мер безопасности уже недостаточно и нужны новые подходы, чтобы опережать злоумышленников. Они предлагают использовать алгоритмы машинного обучения для улучшения защитных механизмов и разработки более эффективных стратегий атаки. Первая глава углубляется в основы машинного обучения, объясняя понятия контролируемого, неконтролируемого и подкрепляющего обучения. Автор также обсуждает различные типы алгоритмов машинного обучения, такие как деревья решений, нейронные сети и машины опорных векторов.
livre Machine arning for Cyber Agents Attack and Defense traite de l'utilisation des techniques d'apprentissage automatique en cybersécurité, en mettant l'accent sur les stratégies offensives et de défense. livre traite de sujets tels que l'apprentissage profond, l'apprentissage avec des renforts et l'apprentissage avec des transferts et fournit des exemples pratiques de la façon dont ces techniques peuvent être appliquées dans des scénarios réels. L'auteur souligne l'importance de comprendre le processus d'évolution technologique et la nécessité d'un paradigme personnel pour percevoir le développement des connaissances modernes comme la base de la survie et de l'unité de l'homme dans un monde en guerre. livre commence par discuter de l'état actuel de la cybersécurité et des défis auxquels elle est confrontée, y compris la sophistication croissante des attaques et le rythme rapide des changements technologiques. L'auteur affirme que les mesures de sécurité traditionnelles ne sont plus suffisantes et que de nouvelles approches sont nécessaires pour devancer les intrus. Ils proposent d'utiliser des algorithmes d'apprentissage automatique pour améliorer les mécanismes de défense et développer des stratégies d'attaque plus efficaces. premier chapitre approfondit les bases de l'apprentissage automatique, en expliquant les notions d'apprentissage contrôlé, incontrôlé et renforcé. L'auteur discute également de différents types d'algorithmes d'apprentissage automatique, tels que les arbres de décision, les réseaux neuronaux et les machines de vecteurs de référence.
libro Machine arning for Cyber Agents Attack and Defense (Aprendizaje automático para ataques y protección de agentes cibernéticos) examina el uso de técnicas de aprendizaje automático en ciberseguridad, con énfasis tanto en estrategias ofensivas como de protección. libro abarca temas como el aprendizaje profundo, el aprendizaje con refuerzo y el aprendizaje con transferencia, y contiene ejemplos prácticos de cómo se pueden aplicar estas técnicas en escenarios reales. autor subraya la importancia de comprender el proceso de evolución tecnológica y la necesidad de un paradigma personal para percibir el desarrollo del conocimiento moderno como base de la supervivencia y unidad del hombre en un mundo en guerra. libro comienza discutiendo el estado actual de la ciberseguridad y los desafíos que enfrenta, incluyendo la creciente sofisticación de los ataques y el rápido ritmo de los cambios tecnológicos. autor sostiene que las medidas de seguridad tradicionales ya no son suficientes y que se necesitan nuevos enfoques para superar a los intrusos. Proponen el uso de algoritmos de aprendizaje automático para mejorar los mecanismos de defensa y desarrollar estrategias de ataque más eficaces. primer capítulo profundiza en los fundamentos del aprendizaje automático, explicando los conceptos de aprendizaje controlado, incontrolado y reforzado. autor también discute diferentes tipos de algoritmos de aprendizaje automático, como árboles de decisión, redes neuronales y máquinas de vectores de referencia.
Il libro «Machine arning for Cyber Agents Attack and Defense» (L'apprendimento automatico per gli attacchi e la protezione dei cyber-agenti) descrive l'uso di tecniche di apprendimento automatico nella cybersecurity, focalizzate sia sulle strategie offensive che di difesa. Il libro affronta argomenti quali l'apprendimento approfondito, l'apprendimento con rinforzi e l'apprendimento con spostamento, e fornisce esempi pratici di come questi metodi possono essere applicati in scenari reali. L'autore sottolinea l'importanza di comprendere il processo di evoluzione tecnologica e la necessità di un paradigma personale per la percezione dello sviluppo della conoscenza moderna come base per la sopravvivenza e l'unità dell'uomo in un mondo in guerra. Il libro inizia con un dibattito sullo stato attuale della sicurezza informatica e sulle sfide che sta affrontando, tra cui la crescente sofisticazione degli attacchi e il rapido ritmo dei cambiamenti tecnologici. L'autore sostiene che le misure di sicurezza tradizionali non sono più sufficienti e che sono necessari nuovi approcci per superare gli aggressori. Suggeriscono di utilizzare algoritmi di apprendimento automatico per migliorare i meccanismi di difesa e sviluppare strategie di attacco più efficaci. Il primo capitolo si approfondisce sulle basi dell'apprendimento automatico, spiegando i concetti di apprendimento controllato, incontrollato e supportato. L'autore discute anche di diversi tipi di algoritmi di apprendimento automatico, come gli alberi delle soluzioni, le reti neurali e i vettori di supporto.
Das Buch Machine arning for Cyber Agents Attack and Defense (Maschinelles rnen für Angriffe und den Schutz von Cyber-Agenten) untersucht den Einsatz von maschinellen rntechniken in der Cybersicherheit mit Schwerpunkt auf offensiven und defensiven Strategien. Das Buch behandelt Themen wie Deep arning, Verstärkungslernen und Transferlernen und enthält praktische Beispiele dafür, wie diese Techniken in realen Szenarien angewendet werden können. Der Autor betont die Bedeutung des Verständnisses des Prozesses der technologischen Evolution und die Notwendigkeit eines persönlichen Paradigmas für die Wahrnehmung der Entwicklung des modernen Wissens als Grundlage für das Überleben und die Einheit des Menschen in einer kriegerischen Welt. Das Buch beginnt mit einer Diskussion über den aktuellen Stand der Cybersicherheit und die damit verbundenen Herausforderungen, einschließlich der zunehmenden Raffinesse von Angriffen und des rasanten technologischen Wandels. Der Autor argumentiert, dass traditionelle cherheitsmaßnahmen nicht mehr ausreichen und neue Ansätze erforderlich sind, um Angreifern voraus zu sein. e schlagen vor, maschinelle rnalgorithmen zu verwenden, um Abwehrmechanismen zu verbessern und effektivere Angriffsstrategien zu entwickeln. Das erste Kapitel befasst sich mit den Grundlagen des maschinellen rnens und erklärt die Konzepte des kontrollierten, unkontrollierten und verstärkenden rnens. Der Autor diskutiert auch verschiedene Arten von maschinellen rnalgorithmen wie Entscheidungsbäume, neuronale Netze und Stützvektormaschinen.
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ber Ajanlar için Makine Öğrenimi Saldırı ve Savunma, hem saldırı hem de savunma stratejilerine odaklanarak siber güvenlikte makine öğrenimi tekniklerinin kullanımını inceler. Kitap, derin öğrenme, pekiştirmeli öğrenme ve aktarmalı öğrenme gibi konuları kapsar ve bu tekniklerin gerçek dünya senaryolarında nasıl uygulanabileceğine dair pratik örnekler sunar. Yazar, teknolojik evrim sürecini anlamanın önemini ve savaşan bir dünyada insanın hayatta kalması ve birliği için temel olarak modern bilginin gelişiminin kişisel bir algı paradigmasına duyulan ihtiyacı vurgulamaktadır. Kitap, siber güvenliğin mevcut durumunu ve saldırıların artan karmaşıklığı ve teknolojik değişimin hızlı temposu da dahil olmak üzere karşılaştığı zorlukları tartışarak başlıyor. Yazar, geleneksel güvenlik önlemlerinin artık yeterli olmadığını ve saldırganların önüne geçmek için yeni yaklaşımlara ihtiyaç duyulduğunu savunuyor. Savunma mekanizmalarını geliştirmek ve daha etkili saldırı stratejileri geliştirmek için makine öğrenme algoritmalarının kullanılmasını öneriyorlar. İlk bölüm, kontrollü, kontrolsüz ve güçlendirici öğrenme kavramlarını açıklayan makine öğreniminin temellerini inceler. Yazar ayrıca karar ağaçları, sinir ağları ve destek vektör makineleri gibi çeşitli makine öğrenme algoritmalarını da tartışıyor.
「網絡代理攻擊和保護機器學習」一書著眼於網絡安全中使用機器學習技術,重點是進攻性和防禦性策略。該書涵蓋了深度學習,強化學習和轉移學習等主題,並提供了如何將這些技術應用於現實世界場景的實用示例。作者強調了理解技術進化過程的重要性,以及將現代知識發展視為交戰世界人類生存和團結的基礎的個人範式的必要性。本書首先討論了當前的網絡安全狀況及其面臨的挑戰,包括攻擊日益復雜和技術變革的快速步伐。作者認為,傳統安全措施已經不夠,需要新的方法來超越入侵者。他們建議使用機器學習算法來改善防禦機制並開發更有效的攻擊策略。第一章深入研究機器學習的基本原理,解釋了受控、無監督和強化學習的概念。作者還討論了不同類型的機器學習算法,例如決策樹,神經網絡和參考向量機器。

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