Книга Artificial Intelligence: Foundations of Computational Agents

Формат
Мова книги
Видавництво
Рік видання

A comprehensive learning resource for undergraduate and graduate students, with new chapters on deep learning, causality, and social impact.

Fully revised and updated, this third edition includes three new chapters on neural networks and deep learning including generative AI, causality, and the social, ethical and regulatory impacts of artificial intelligence. All parts have been updated with the methods that have been proven to work. The book's novel agent design space provides a coherent framework for learning, reasoning and decision making. Numerous realistic applications and examples facilitate student understanding. Every concept or algorithm is presented in pseudocode and open source AIPython code, enabling students to experiment with and build on the implementations. Five larger case studies are developed throughout the book and connect the design approaches to the applications. Each chapter now has a social impact section, enabling students to understand the impact of the various techniques as they learn them. An invaluable teaching package for undergraduate and graduate AI courses, this comprehensive textbook is accompanied by lecture slides, solutions, and code.

Код товару
20575118
Характеристики
Тип обкладинки
Тверда
Мова
Англійська
Доставка та оплата
Вказати місто доставки Щоб бачити точні умови доставки
Опис книги

A comprehensive learning resource for undergraduate and graduate students, with new chapters on deep learning, causality, and social impact.

Fully revised and updated, this third edition includes three new chapters on neural networks and deep learning including generative AI, causality, and the social, ethical and regulatory impacts of artificial intelligence. All parts have been updated with the methods that have been proven to work. The book's novel agent design space provides a coherent framework for learning, reasoning and decision making. Numerous realistic applications and examples facilitate student understanding. Every concept or algorithm is presented in pseudocode and open source AIPython code, enabling students to experiment with and build on the implementations. Five larger case studies are developed throughout the book and connect the design approaches to the applications. Each chapter now has a social impact section, enabling students to understand the impact of the various techniques as they learn them. An invaluable teaching package for undergraduate and graduate AI courses, this comprehensive textbook is accompanied by lecture slides, solutions, and code.

Відгуки
Виникли запитання? 0-800-335-425
3758 грн
Доставка з UK 20-30 днів
Паперова книга
Сплачуйте частинами
Щоб сплатити частинами: потрібно мати картки Monobank або Приватбанку під час оформлення замовлення оберіть спосіб оплати «Покупка частинами від Monobank» або «Оплата частинами від ПриватБанку»
ПриватБанк
2-4 платежі
Доставка та оплата
Вказати місто доставки Щоб бачити точні умови доставки