• Introduction To Artificial Intelligence

Introduction To Artificial Intelligence

Introduction To Artificial Intelligence

( from 245 reviews )
  • Author
    Wolfgang Ertel
  • Publisher
    Springer
  • Publication date
    18 January 2018

UNLIMITED BOOKS, ALL IN ONE PLACE. FREE TO TRY 30 DAYS. SUBSCRIBE TO READ OR DOWNLOAD EBOOK FOR FREE. START YOUR FREE MONTH NOW!

eBook includes PDF, ePub, Mobi, Tuebl and Kindle version
FREE registration for 1 month TRIAL Account. DOWNLOAD as many books as you like (Personal use). CANCEL the membership at ANY TIME if not satisfied. Join Over 550.000 Happy Readers.

All secure, we guaranted 100% privacy and your information is safe
Recent Activity
Loading...

Loading ...

Loading...

Book Detail

  • Book Title

    Introduction To Artificial Intelligence

  • Author

    Wolfgang Ertel

  • Date Published

    18 January 2018

  • Publisher

    Springer

  • Pages

    356 pages

  • ISBN

    9783319584874

Book Description

The ultimate aim of artificial intelligence (A.I.) is to understand intelligence and to build intelligent software and robots that come close to the performance of humans. On their way towards this goal, A.I. researchers have developed a number of quite different subdisciplines.

This concise and accessible Introduction to Artificial Intelligence supports a foundation or module course on A.I., covering a broad selection of the subdisciplines within this field. The textbook presents concrete algorithms and applications in the areas of agents, logic, search, reasoning under uncertainty, machine learning, neural networks and reinforcement learning.

Topics and features: presents an application-focused and hands-on approach to learning the subject; provides study exercises of varying degrees of difficulty at the end of each chapter, with solutions given at the end of the book; supports the text with highlighted examples, definitions, theorems, and illustrative cartoons; includes chapters on predicate logic, PROLOG, heuristic search, probabilistic reasoning, machine learning and data mining, neural networks and reinforcement learning; contains an extensive bibliography for deeper reading on further topics; supplies additional teaching resources, including lecture slides and training data for learning algorithms, at the website http://www.hs-weingarten.de/~ertel/aibook.

Students of computer science and other technical natural sciences will find this easy-to-read textbook excellent for self-study, a high-school level of knowledge of mathematics being the only prerequisite to understanding the material. With its extensive tools and bibliography, it is an ideal, quick resource on A.I.

© euro-book.net 2021

1108 Members Online