Forward Chaining and Backward Chaining in AI
| Institution | Jomo Kenyatta University of Science and Technology |
| Course | Information Technolo... |
| Year | 3rd Year |
| Semester | Unknown |
| Posted By | Jeff Odhiambo |
| File Type | |
| Pages | 18 Pages |
| File Size | 467.75 KB |
| Views | 3636 |
| Downloads | 0 |
| Price: |
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Description
Buy "Forward Chaining and Backward Chaining in AI" now and learn more about how inference engines empower intelligent systems to infer new information from known facts. This engaging book takes you on a journey through the logical rules and algorithms that drive artificial intelligence, with detailed examples and practical applications that make complex concepts accessible to both beginners and seasoned professionals.
Discover the fascinating world of forward and backward chaining, essential components in AI that allow systems to reason and make informed decisions. Whether you're interested in the foundations of expert systems, diagnosis, or game theory, this book provides invaluable insights into the reasoning processes that underpin AI applications. Don't miss out on this essential read for anyone looking to deepen their understanding of artificial intelligence.
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BIT 2319: Artificial Intelligence
Institution: Jomo Kenyatta University of Science and Technology
Year: 2021/2022
Semester: 3rd Year, 1st Semester (3.1)
BIT 2319: Artificial Intelligence
Institution: Jomo Kenyatta University of Science and Technology
Year: 2021/2022
Semester: 3rd Year, 1st Semester (3.1)
BIT 2319: Artificial Intelligence
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BIT 2319: Artificial Intelligence
Institution: Jomo Kenyatta University of Science and Technology
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Semester: 3rd Year, 1st Semester (3.1)
BIT 2319: Artificial Intelligence
Institution: Jomo Kenyatta University of Science and Technology
Year: 2022/2023
Semester: 3rd Year, 1st Semester (3.1)
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