BOOKS - Probability, Statistics and Maths for AI A comprehensive guide to understandi...
Probability, Statistics and Maths for AI A comprehensive guide to understanding probability, statistics, and mathematics for AI - Et Tu Code 2024 EPUB Independently published BOOKS
ECO~23 kg CO²

2 TON

Views
26585

Telegram
 
Probability, Statistics and Maths for AI A comprehensive guide to understanding probability, statistics, and mathematics for AI
Author: Et Tu Code
Year: 2024
Pages: 657
Format: EPUB
File size: 29.5 MB
Language: ENG



Pay with Telegram STARS
Book Description: The book "Probability Statistics and Maths for AI" is a comprehensive guide to understanding probability, statistics, and mathematics for artificial intelligence (AI) applications. The book covers the fundamental concepts of probability, statistics, and mathematics that are essential for developing intelligent machines. It provides a detailed explanation of the mathematical concepts and their practical applications in AI, making it an ideal resource for students, researchers, and professionals working in the field of AI. The book begins by introducing the concept of probability and its importance in understanding machine learning algorithms. It explains how probability theory forms the foundation of AI and how it can be used to develop predictive models for various applications. The book then delves into statistical inference, which is critical for making predictions based on data. It covers topics such as hypothesis testing, confidence intervals, and regression analysis, providing readers with a solid understanding of statistical methods. The book also explores the principles of linear algebra, calculus, and differential equations, all of which are crucial for developing advanced AI systems. It discusses the use of these mathematical techniques in deep learning, natural language processing, computer vision, and other AI applications. Additionally, the book covers the basics of programming languages ​​such as Python and R, which are commonly used in AI development.
Книга «Probability Statistics and Maths for AI» является всеобъемлющим руководством по пониманию вероятностей, статистики и математики для приложений искусственного интеллекта (ИИ). Книга охватывает фундаментальные понятия вероятности, статистики и математики, которые необходимы для разработки интеллектуальных машин. Он содержит подробное объяснение математических концепций и их практического применения в ИИ, что делает его идеальным ресурсом для студентов, исследователей и профессионалов, работающих в области ИИ. Книга начинается с введения понятия вероятности и её важности в понимании алгоритмов машинного обучения. Он объясняет, как теория вероятностей формирует основу ИИ и как ее можно использовать для разработки прогностических моделей для различных приложений. Затем книга углубляется в статистический вывод, который имеет решающее значение для прогнозирования на основе данных. Он охватывает такие темы, как проверка гипотез, доверительные интервалы и регрессионный анализ, предоставляя читателям четкое понимание статистических методов. Книга также исследует принципы линейной алгебры, исчисления и дифференциальных уравнений, которые имеют решающее значение для разработки передовых систем ИИ. В нем обсуждается использование этих математических методов в глубоком обучении, обработке естественного языка, компьютерном зрении и других приложениях ИИ. Кроме того, книга охватывает основы таких языков программирования, как Python и R, которые обычно используются в разработке ИИ.
livre « Probability Statistics and Maths for AI » est un guide complet sur la compréhension des probabilités, des statistiques et des mathématiques pour les applications de l'intelligence artificielle (IA). livre couvre les notions fondamentales de probabilité, de statistiques et de mathématiques qui sont nécessaires au développement de machines intelligentes. Il fournit une explication détaillée des concepts mathématiques et de leur application pratique dans l'IA, ce qui en fait une ressource idéale pour les étudiants, les chercheurs et les professionnels travaillant dans le domaine de l'IA. livre commence par l'introduction de la notion de probabilité et de son importance dans la compréhension des algorithmes d'apprentissage automatique. Il explique comment la théorie des probabilités forme la base de l'IA et comment elle peut être utilisée pour développer des modèles prédictifs pour différentes applications. livre est ensuite approfondi dans une conclusion statistique qui est cruciale pour la prévision basée sur les données. Il couvre des sujets tels que la vérification des hypothèses, les intervalles de confiance et l'analyse de régression, fournissant aux lecteurs une compréhension claire des méthodes statistiques. livre explore également les principes de l'algèbre linéaire, du calcul et des équations différentielles qui sont essentiels au développement de systèmes avancés d'IA. Il traite de l'utilisation de ces méthodes mathématiques dans l'apprentissage profond, le traitement du langage naturel, la vision par ordinateur et d'autres applications de l'IA. En outre, le livre couvre les bases des langages de programmation tels que Python et R, qui sont généralement utilisés dans le développement de l'IA.
libro «Probability Statistics and Maths for AI» es una guía integral para la comprensión de probabilidades, estadísticas y matemáticas para aplicaciones de inteligencia artificial (IA). libro abarca los conceptos fundamentales de probabilidad, estadística y matemática, que son necesarios para el desarrollo de máquinas inteligentes. Contiene una explicación detallada de los conceptos matemáticos y sus aplicaciones prácticas en IA, lo que lo convierte en un recurso ideal para estudiantes, investigadores y profesionales que trabajan en el campo de la IA. libro comienza introduciendo el concepto de probabilidad y su importancia en la comprensión de los algoritmos de aprendizaje automático. Explica cómo la teoría de la probabilidad forma la base de la IA y cómo puede usarse para desarrollar modelos predictivos para diferentes aplicaciones. A continuación, el libro profundiza en la conclusión estadística, que es crucial para la predicción basada en datos. Abarca temas como la verificación de hipótesis, intervalos de confianza y análisis de regresión, proporcionando a los lectores una comprensión clara de los métodos estadísticos. libro también explora los principios del álgebra lineal, el cálculo y las ecuaciones diferenciales, que son cruciales para el desarrollo de sistemas avanzados de IA. Discute el uso de estas técnicas matemáticas en el aprendizaje profundo, el procesamiento del lenguaje natural, la visión por computadora y otras aplicaciones de IA. Además, el libro cubre los fundamentos de lenguajes de programación como Python y R, que se usan comúnmente en el desarrollo de IA.
Il libro «Probability Statistics and Maths for AI» è una guida completa per comprendere le probabilità, le statistiche e la matematica per le applicazioni di intelligenza artificiale (intelligenza artificiale). Il libro comprende i concetti fondamentali di probabilità, statistica e matematica necessari per lo sviluppo di macchine intelligenti. Esso fornisce una spiegazione dettagliata dei concetti matematici e della loro applicazione pratica nell'intelligenza artificiale, che lo rende una risorsa ideale per studenti, ricercatori e professionisti che lavorano nell'intelligenza artificiale. Il libro inizia introducendo il concetto di probabilità e la sua importanza nella comprensione degli algoritmi di apprendimento automatico. Spiega come la teoria delle probabilità costituisce la base dell'IA e come può essere utilizzata per sviluppare modelli predittivi per applicazioni diverse. Il libro viene poi approfondito in una conclusione statistica che è fondamentale per la previsione basata sui dati. Include argomenti quali la verifica delle ipotesi, gli intervalli di fiducia e l'analisi di regressione, fornendo ai lettori una chiara comprensione dei metodi statistici. Il libro esplora anche i principi di algebra lineare, calcolo e equazioni differenziali, che sono fondamentali per lo sviluppo di sistemi di IA avanzati. discute dell'uso di queste tecniche matematiche nell'apprendimento approfondito, nell'elaborazione del linguaggio naturale, nella visione informatica e in altre applicazioni di IA. Inoltre, il libro comprende le basi dei linguaggi di programmazione come Python e R, che vengono comunemente utilizzati nello sviluppo dell'IA.
Das Buch „Probability Statistics and Maths for AI“ ist ein umfassender itfaden zum Verständnis von Wahrscheinlichkeiten, Statistiken und Mathematik für Anwendungen der Künstlichen Intelligenz (KI). Das Buch behandelt grundlegende Konzepte von Wahrscheinlichkeit, Statistik und Mathematik, die für die Entwicklung intelligenter Maschinen unerlässlich sind. Es enthält eine detaillierte Erklärung mathematischer Konzepte und ihrer praktischen Anwendungen in der KI und ist damit eine ideale Ressource für Studenten, Forscher und Fachleute, die auf dem Gebiet der KI arbeiten. Das Buch beginnt mit der Einführung des Begriffs der Wahrscheinlichkeit und seiner Bedeutung für das Verständnis von Algorithmen des maschinellen rnens. Er erklärt, wie die Wahrscheinlichkeitstheorie die Grundlage der KI bildet und wie daraus prognostische Modelle für verschiedene Anwendungen entwickelt werden können. Das Buch geht dann tiefer in die statistische Schlussfolgerung, die für die datenbasierte Vorhersage entscheidend ist. Es umfasst Themen wie Hypothesentests, Konfidenzintervalle und Regressionsanalysen und vermittelt den sern ein klares Verständnis statistischer Methoden. Das Buch untersucht auch die Prinzipien der linearen Algebra, des Kalküls und der Differentialgleichungen, die für die Entwicklung fortschrittlicher KI-Systeme von entscheidender Bedeutung sind. Es diskutiert den Einsatz dieser mathematischen Methoden in Deep arning, natürlicher Sprachverarbeitung, Computer Vision und anderen KI-Anwendungen. Darüber hinaus behandelt das Buch die Grundlagen von Programmiersprachen wie Python und R, die üblicherweise in der KI-Entwicklung verwendet werden.
''
AI için Olasılık İstatistikleri ve Matematiği, yapay zeka (AI) uygulamaları için olasılıkları, istatistikleri ve matematiği anlamak için kapsamlı bir kılavuzdur. Kitap, akıllı makinelerin gelişimi için gerekli olan olasılık, istatistik ve matematiğin temel kavramlarını kapsar. Matematiksel kavramların ve AI'daki pratik uygulamalarının ayrıntılı bir açıklamasını içerir, bu da onu AI'da çalışan öğrenciler, araştırmacılar ve profesyoneller için ideal bir kaynak haline getirir. Kitap, olasılık kavramının tanıtılması ve makine öğrenimi algoritmalarının anlaşılmasındaki önemi ile başlıyor. Olasılık teorisinin AI'nın temelini nasıl oluşturduğunu ve farklı uygulamalar için öngörücü modeller geliştirmek için nasıl kullanılabileceğini açıklıyor. Kitap daha sonra veriye dayalı tahmin için çok önemli olan istatistiksel çıkarsamayı inceliyor. Hipotez testi, güven aralıkları ve regresyon analizi gibi konuları kapsar ve okuyuculara istatistiksel yöntemler hakkında net bir anlayış sağlar. Kitap ayrıca, gelişmiş AI sistemlerinin gelişimi için kritik olan doğrusal cebir, hesap ve diferansiyel denklemlerin ilkelerini de araştırıyor. Bu matematiksel tekniklerin derin öğrenme, doğal dil işleme, bilgisayar görüşü ve diğer AI uygulamalarında kullanımını tartışır. Buna ek olarak, kitap AI geliştirmede yaygın olarak kullanılan Python ve R gibi programlama dillerinin temellerini kapsar.
إحصاءات الاحتمالات والرياضيات للذكاء الاصطناعي هو دليل شامل لفهم الاحتمالات والإحصاءات والرياضيات لتطبيقات الذكاء الاصطناعي (AI). يغطي الكتاب المفاهيم الأساسية للاحتمال والإحصاء والرياضيات، وهي ضرورية لتطوير الآلات الذكية. يحتوي على شرح مفصل للمفاهيم الرياضية وتطبيقاتها العملية في الذكاء الاصطناعي، مما يجعله مصدرًا مثاليًا للطلاب والباحثين والمهنيين العاملين في مجال الذكاء الاصطناعي. يبدأ الكتاب بإدخال مفهوم الاحتمال وأهميته في فهم خوارزميات التعلم الآلي. يشرح كيف تشكل نظرية الاحتمال أساس الذكاء الاصطناعي وكيف يمكن استخدامها لتطوير نماذج تنبؤية لتطبيقات مختلفة. ثم يتعمق الكتاب في الاستدلال الإحصائي، وهو أمر بالغ الأهمية للتنبؤ القائم على البيانات. يغطي موضوعات مثل اختبار الفرضية، وفترات الثقة، وتحليل الانحدار، مما يوفر للقراء فهمًا واضحًا للطرق الإحصائية. يستكشف الكتاب أيضًا مبادئ الجبر الخطي وحساب التفاضل والتكامل والمعادلات التفاضلية التي تعتبر حاسمة لتطوير أنظمة الذكاء الاصطناعي المتقدمة. يناقش استخدام هذه التقنيات الرياضية في التعلم العميق ومعالجة اللغة الطبيعية ورؤية الكمبيوتر وتطبيقات الذكاء الاصطناعي الأخرى. بالإضافة إلى ذلك، يغطي الكتاب أساسيات لغات البرمجة مثل Python و R، والتي تستخدم بشكل شائع في تطوير الذكاء الاصطناعي.
「AI的可行性統計和數學」書是理解人工智能(AI)應用概率,統計和數學的全面指南。該書涵蓋了開發智能機器所需的概率,統計和數學的基本概念。它詳細解釋了數學概念及其在AI中的實際應用,使其成為在AI領域工作的學生,研究人員和專業人員的理想資源。本書首先介紹了概率概念及其在理解機器學習算法中的重要性。他解釋了概率論如何形成AI的基礎,以及如何將其用於開發各種應用的預測模型。該書隨後深入研究了統計推論,這對於基於數據的預測至關重要。它涵蓋了假設驗證,置信區間和回歸分析等主題,為讀者提供了對統計方法的清晰理解。該書還探討了線性代數,微積分和微分方程的原理,這些原理對於高級AI系統的開發至關重要。它討論了這些數學方法在深度學習,自然語言處理,計算機視覺和其他AI應用中的使用。此外,該書涵蓋了Python和R等編程語言的基礎,這些語言通常用於AI開發。

You may also be interested in:

Probability, Statistics and Maths for AI A comprehensive guide to understanding probability, statistics, and mathematics for AI
Proceedings of the Fifth Berkeley Symposium on Mathematical Statistics and Probability, Volume II, Part II: Contributions to Probability Theory
Proceedings of the Sixth Berkeley Symposium on Mathematical Statistics and Probability, Volume I: Theory of Statistics
Bayesian Statistics the Fun Way Understanding Statistics and Probability with Star Wars, LEGO, and Rubber Ducks
Bayesian Statistics the Fun Way: Understanding Statistics and Probability with Star Wars, LEGO, and Rubber Ducks
Advanced Statistics with Applications in R (Wiley Series in Probability and Statistics)
Statistics 101 From Data Analysis and Predictive Modeling to Measuring Distribution and Determining Probability, Your Essential Guide to Statistics (Adams 101)
Probability Theory: A First Course in Probability Theory and Statistics (De Gruyter Textbook)
Asymptotics in Statistics and Probability
Introduction to Probability and Statistics
Recent Advances in Statistics and Probability
Probability and Statistics (De Gruyter Textbook)
Probability and Statistics for Engineers, Fifth Edition
Probability, Statistics, and Random Signals
Probability and Statistics for Machine Learning A Textbook
Probability and Statistics for Machine Learning: A Textbook
Unsaturated Soil Mechanics with Probability and Statistics
Probability and Statistics for Machine Learning A Textbook
Probability and Statistics for Engineering and the Sciences, 9th Edition
Probability and Statistics for Engineering and the Sciences, Eighth Edition
Probability, Statistics, and Stochastic Processes for Engineers and Scientists
Probability and Statistics for Computer Scientists, 3rd Edition
Applied Statistics and Probability for Engineers, Seventh Edition
Statistics and Probability with Applications for Engineers and Scientists, 2nd Edition
Proceedings of the Third Berkeley Symposium on Mathematical Statistics and Probability : Volume 3
Schaum|s Outline of Probability and Statistics, 4th Edition
Introduction to Probability and Statistics, Fifteenth Edition, Metric Version
Chance and Stability: Stable Distributions and Their Applications (Modern Probability and Statistics)
Miller & Freund|s Probability and Statistics for Engineers, Ninth Edition
Moment-sos Hierarchy, The Lectures In Probability, Statistics, Computational Geometry, Control
Essential Math for AI Exploring Linear Algebra, Probability and Statistics, Calculus, Optimization Techniques, and More
Essential Math for AI Exploring Linear Algebra, Probability and Statistics, Calculus, Optimization Techniques, and More
Statistical Intervals A Guide for Practitioners and Researchers (Wiley Series in Probability and Statistics) 2nd Edition
Periodically Correlated Random Sequences: Spectral Theory and Practice (Wiley Series in Probability and Statistics)
Statistical Methods for Stochastic Differential Equations (Chapman and Hall CRC Monographs on Statistics and Applied Probability)
Hierarchical Modeling and Analysis for Spatial Data (Chapman and Hall CRC Monographs on Statistics and Applied Probability)
Sparse Graphical Modeling for High Dimensional Data (Chapman and Hall CRC Monographs on Statistics and Applied Probability)
Probability on Graphs: Random Processes on Graphs and Lattices (Institute of Mathematical Statistics Textbooks, Series Number 1)
Essential Math for Data Science Take Control of Your Data with Fundamental Linear Algebra, Probability, and Statistics (Third Early Release)
Probability and statistics for data science math + R + data