Artificial Intelligence: A Modern ApproachArtificial Intelligence: A Modern Approach, 3e offers the most comprehensive, up-to-date introduction to the theory and practice of artificial intelligence. Number one in its field, this textbook is ideal for one or two-semester, undergraduate or graduate-level courses in Artificial Intelligence. Dr. Peter Norvig, contributing Artificial Intelligence author and Professor Sebastian Thrun, a Pearson author are offering a free online course at Stanford University on artificial intelligence. According to an article in The New York Times , the course on artificial intelligence is "one of three being offered experimentally by the Stanford computer science department to extend technology knowledge and skills beyond this elite campus to the entire world." One of the other two courses, an introduction to database software, is being taught by Pearson author Dr. Jennifer Widom. Artificial Intelligence: A Modern Approach, 3e is available to purchase as an eText for your Kindle(TM), NOOK(TM), and the iPhone(R)/iPad(R). To learn more about the course on artificial intelligence, visit http: //www.ai-class.com. To read the full New York Times article, click here. |
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Artificial Intelligence | 1 |
Intelligent Agents | 34 |
Problemsolving | 60 |
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Artificial Intelligence: A Modern Approach, Global Edition Stuart Russell,Peter Norvig Podgląd niedostępny - 2016 |
Kluczowe wyrazy i wyrażenia
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